Compare commits

...

256 Commits

Author SHA1 Message Date
Steven Palma
cdcb27f908 test(cameras): add opencv camera dependency injection tests suite 2025-04-17 00:41:10 +02:00
Simon Alibert
2bb73ac431 Add torque_disabled context 2025-04-15 11:43:22 +02:00
Simon Alibert
9afc4b771c Motors config & disconnect fixes 2025-04-15 11:20:42 +02:00
Simon Alibert
f71e224023 Fix tests 2025-04-15 11:18:44 +02:00
Simon Alibert
889de7c415 Add handshake, fix feetech _read_firmware_version 2025-04-14 17:14:06 +02:00
Simon Alibert
3539251b18 Merge remote-tracking branch 'origin/main' into user/aliberts/2025_02_25_refactor_robots 2025-04-14 15:30:35 +02:00
Simon Alibert
1f210bc8a3 Refactor tests 2025-04-14 15:26:29 +02:00
Simon Alibert
d70bc4bde9 Add more segmented tests (dynamixel) 2025-04-14 15:16:38 +02:00
Simon Alibert
bdbca09cb2 Add more segmented tests (base motor bus & feetech), add feetech protocol 1 support 2025-04-14 11:56:53 +02:00
Simon Alibert
e0b292ab51 Remove test_motors_bus fixtures 2025-04-11 12:24:30 +02:00
Simon Alibert
f960f4d8d4 Fix unormalize 2025-04-11 11:58:31 +02:00
Simon Alibert
9e57ec7837 Add support for feetech protocol 1 to _split_into_byte_chunks 2025-04-11 11:58:09 +02:00
Simon Alibert
0a7f51f0da Cleanup 2025-04-11 11:03:09 +02:00
Simon Alibert
4ca92a28e9 Make feetech broadcast ping faster in protocol 1 2025-04-11 11:02:54 +02:00
Simon Alibert
0464dc91b3 Add feetech sm8512bl 2025-04-11 11:02:01 +02:00
Simon Alibert
d32daebf75 Refactor & add _serialize_data 2025-04-11 11:01:12 +02:00
Simon Alibert
27cb0c40bd Add protocol 1 broadcast ping 2025-04-10 17:14:40 +02:00
Simon Alibert
12abc9ca86 Fix broadcast ping type hint 2025-04-10 00:53:17 +02:00
Simon Alibert
4005065223 (nit) move write 2025-04-10 00:51:23 +02:00
Simon Alibert
443fed216c Use constants from sdks 2025-04-10 00:49:03 +02:00
Simon Alibert
42a87e7211 Implement read 2025-04-10 00:35:14 +02:00
Steven Palma
5322417c03 fix(examples): removes extra backtick (#948) 2025-04-09 17:44:32 +02:00
Steven Palma
4041f57943 feat(visualization): replace cv2 GUI with Rerun (and solves ffmpeg versioning issues) (#903) 2025-04-09 17:33:01 +02:00
Simon Alibert
034171a89a Add Feetech protocol version 2025-04-09 10:26:30 +02:00
Simon Alibert
2c86fea78a Switch typos pre-commit to mirror (#953) 2025-04-08 12:44:09 +02:00
pre-commit-ci[bot]
782dff1163 [pre-commit.ci] auto fixes from pre-commit.com hooks
for more information, see https://pre-commit.ci
2025-04-08 08:48:18 +00:00
Simon Alibert
8924ccbbab Merge remote-tracking branch 'origin/main' into user/aliberts/2025_02_25_refactor_robots 2025-04-08 10:47:40 +02:00
Simon Alibert
792c3d961d Update dynamixel with motors bus & tables changes 2025-04-08 10:47:11 +02:00
Simon Alibert
e998dddcfa Add support for feetech scs series + various fixes 2025-04-08 10:46:29 +02:00
pre-commit-ci[bot]
437fc29e12 [pre-commit.ci] pre-commit autoupdate (#871)
Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>
2025-04-08 06:58:46 +02:00
Junwu Zhang
aee86b4b18 typo fix: example_1 python script (#631)
Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
2025-04-07 17:41:10 +02:00
mshukor
1c873df5c0 Support for PI0+FAST (#921)
Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>
Co-authored-by: Dana Aubakirova <118912928+danaaubakirova@users.noreply.github.com>
Co-authored-by: Remi <re.cadene@gmail.com>
Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
2025-04-04 11:51:11 +02:00
Steven Palma
99c0938b42 feat(teleop): thread-safe keyboard teleop implementation (#869)
Co-authored-by: Simon Alibert <75076266+aliberts@users.noreply.github.com>
2025-04-04 09:45:18 +02:00
Simon Alibert
716029b1e3 Remove old calibration 2025-04-03 18:42:39 +02:00
Simon Alibert
3848a8f9aa Rename viperx & widowx 2025-04-03 18:37:21 +02:00
Simon Alibert
f7672e14c7 Update viperx & widowx 2025-04-03 18:34:08 +02:00
Simon Alibert
e393af2d88 Add is_calibrated test 2025-04-03 17:35:10 +02:00
Simon Alibert
0dcb2caba8 Simplify motors mocks 2025-04-03 16:43:23 +02:00
Simon Alibert
4679725957 Revert feetech hack and monkeypatch instead 2025-04-03 15:53:54 +02:00
Simon Alibert
57319062aa Remove old calibration tests 2025-04-03 12:17:43 +02:00
Simon Alibert
078f59bfd1 Add calibration tests 2025-04-03 12:14:15 +02:00
Simon Alibert
36fcea2002 Merge remote-tracking branch 'origin/main' into user/aliberts/2025_02_25_refactor_robots 2025-04-03 08:40:39 +02:00
Simon Alibert
2971bdfed5 Rename Koch classes 2025-04-03 08:23:31 +02:00
Simon Alibert
28cd3a6f3a Rename SO-100 classes 2025-04-03 08:14:35 +02:00
Simon Alibert
c0570b3003 Improve format 2025-04-02 22:40:00 +02:00
Simon Alibert
eeb8490016 Update Koch & SO-100 2025-04-02 22:33:48 +02:00
Simon Alibert
854b78975a Update tests 2025-04-02 22:31:53 +02:00
Simon Alibert
e55d2ffe50 Hack feetech firmware bug 2025-04-02 22:31:45 +02:00
Simon Alibert
1ebd81552c Fix calibration 2025-04-02 22:27:49 +02:00
Steven Palma
145fe4cd17 fix(deps): avoid torchcodec in macos x86_64 (#925) 2025-04-01 15:51:59 +02:00
Simon Alibert
65569ba90e Add test_scan_port (TODO) 2025-03-31 18:40:23 +02:00
Simon Alibert
79293800f1 Implement Koch calibration 2025-03-31 18:18:27 +02:00
Simon Alibert
bc765f9e95 Implement SO-100 follower calibration 2025-03-31 18:17:20 +02:00
Simon Alibert
201311503f Implement SO-100 leader calibration 2025-03-31 18:16:42 +02:00
Simon Alibert
8cc0232e73 Format baudrate tables 2025-03-31 18:14:57 +02:00
Simon Alibert
6bfcc18e73 Add more calibration utilities 2025-03-31 18:14:11 +02:00
Mariusz Dubielecki
e004247ed4 docs: add tip for Mac users regarding Terminal permissions for keyboard (#917)
Signed-off-by: cranberrysoft <dubielecki.mariusz@gmail.com>
2025-03-31 09:44:05 +02:00
Simon Alibert
e096754d14 Rename test 2025-03-31 00:41:25 +02:00
Simon Alibert
02803f545d Add test_encoding_utils 2025-03-31 00:37:28 +02:00
Simon Alibert
8503e8e166 Move encoding functions to encoding_utils 2025-03-31 00:35:31 +02:00
Simon Alibert
d6007c6e7d Add calibration utilities 2025-03-30 15:41:39 +02:00
Simon Alibert
50963fcf13 Add scan_port utility 2025-03-30 15:32:25 +02:00
Steven Palma
b568de35ad fix(datasets): cast imgs_dir as Path (#915) 2025-03-28 18:08:12 +01:00
Yongjin Cho
ae9c81ac39 fix(docs): correct spelling of 'ffmpeg' in installation instructions (#914) 2025-03-28 17:43:33 +01:00
Steven Palma
78fd1a1e04 chore(docs): update docs (#911) 2025-03-27 09:55:06 +01:00
Steven Palma
90533e6b9f fix(docs): hot-fix updating installation instructions after #883 (#907) 2025-03-26 13:21:40 +01:00
Simon Alibert
051a52a4ce Remove todo 2025-03-25 21:32:30 +01:00
Simon Alibert
2292b514aa Fix calibration functions 2025-03-25 17:58:54 +01:00
Simon Alibert
1f1a01a798 Rename CalibrationMode -> MotorNormMode 2025-03-25 17:42:18 +01:00
Simon Alibert
faa476f0d2 Remove deprecated scripts 2025-03-25 17:33:05 +01:00
Simon Alibert
5130b69ece Merge remote-tracking branch 'origin/main' into user/aliberts/2025_02_25_refactor_robots 2025-03-25 16:25:47 +01:00
Simon Alibert
aed85241b7 Merge branch 'user/aliberts/2025_02_25_refactor_robots' of github.com:huggingface/lerobot into user/aliberts/2025_02_25_refactor_robots 2025-03-25 16:24:40 +01:00
Pepijn
21c3ac42ee Add new calibration method for robot refactor (#896)
Co-authored-by: Simon Alibert <simon.alibert@huggingface.co>
2025-03-25 16:24:04 +01:00
Simon Alibert
2d3a5fb2be (WIP) _async_read 2025-03-25 15:37:18 +01:00
Simon Alibert
a631e4c11c Rename idx -> id_ 2025-03-25 15:36:36 +01:00
Simon Alibert
222d6f104e Rename idx -> id_ 2025-03-25 14:20:12 +01:00
Simon Alibert
7a3b424cd3 Add calibration 2025-03-25 14:13:55 +01:00
AlexC
2c22f7d76d Add offline mode in the configuration for wandb logging (#897)
Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>
Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
2025-03-25 13:44:49 +01:00
Simon Alibert
af295fadb5 Fix imports 2025-03-25 12:48:58 +01:00
Simon Alibert
9644e2b086 Fix visualize_motors_bus 2025-03-25 12:47:44 +01:00
Simon Alibert
6ccf083127 Update so100 imports 2025-03-25 12:32:38 +01:00
Simon Alibert
bb774e7acd Update Koch imports 2025-03-25 12:31:51 +01:00
Simon Alibert
dcbbeab80b Move DriveMode & TorqueMode 2025-03-25 12:30:07 +01:00
Simon Alibert
b71ac34214 Add test_motors_bus 2025-03-25 12:11:56 +01:00
Qizhi Chen
a774af2eab fix pi0 action padding name (#893)
Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
2025-03-25 11:24:46 +01:00
Simon Alibert
c237d1379e Update tests 2025-03-25 11:12:52 +01:00
Simon Alibert
cf963eb1b0 Ensure motors exist at connection time 2025-03-25 11:12:26 +01:00
Simon Alibert
4293b6a4fb Fix feetech ping tests 2025-03-25 07:26:34 +01:00
Steven Palma
725b446ad6 fix(deps): constrain PyAV version to resolve OpenCV-python ffmpeg version conflict (#883)
Co-authored-by: Simon Alibert <75076266+aliberts@users.noreply.github.com>
2025-03-24 23:40:22 +01:00
Simon Alibert
7a75bb9f61 Improve errors 2025-03-24 21:13:26 +01:00
Simon Alibert
0c1d4cb323 Rename idx -> id_ 2025-03-24 20:58:56 +01:00
Simon Alibert
c6212d585d Add raw_values option 2025-03-24 20:56:58 +01:00
Simon Alibert
7c8ab8e2d6 Implement feetech broadcast ping 2025-03-24 20:46:36 +01:00
Simon Alibert
1de75c46c0 Return models (str) with pings 2025-03-24 20:42:43 +01:00
Simon Alibert
4ad109cff8 Merge remote-tracking branch 'origin/main' into user/aliberts/2025_02_25_refactor_robots 2025-03-24 13:25:29 +01:00
Simon Alibert
8994252019 Add _configure_motors & move ping methods 2025-03-24 12:19:03 +01:00
Simon Alibert
9832daf08d Fix dict 2025-03-24 12:16:54 +01:00
Simon Alibert
39d8f45810 Privatize methods & renames 2025-03-24 11:57:12 +01:00
Simon Alibert
30fcd3d417 Update so100 2025-03-23 20:15:47 +01:00
Simon Alibert
039b437ef0 Update ensure_safe_goal_position 2025-03-23 19:43:58 +01:00
Simon Alibert
7582a0a2b0 Caps dxl OperatingMode 2025-03-23 19:42:21 +01:00
Simon Alibert
25388d0947 Add feetech operating modes 2025-03-23 19:41:46 +01:00
Simon Alibert
7152bc8aa7 Update Koch 2025-03-23 19:32:26 +01:00
Simon Alibert
5b46dc0b6a Add is_connected in robots and teleops 2025-03-23 19:26:10 +01:00
Simon Alibert
4273f1f384 Add dxl operating modes 2025-03-23 19:25:21 +01:00
Simon Alibert
97194bf7f3 Nit 2025-03-23 17:05:08 +01:00
Simon Alibert
0ac026b521 Remove test skips & fix docstrings 2025-03-23 17:04:30 +01:00
Simon Alibert
ff7cfdaf40 Move mock_serial patch to dedicated file 2025-03-23 17:03:04 +01:00
Simon Alibert
57c97762e1 Simplify _is_comm_success & _is_error 2025-03-23 16:52:29 +01:00
Simon Alibert
a38bb15e79 Add feetech write test 2025-03-23 16:48:32 +01:00
Simon Alibert
3ceaee999d Refactor feetech tests by functionality 2025-03-23 16:25:12 +01:00
Simon Alibert
d485dc1313 Refactor _is_comm_success 2025-03-23 16:15:53 +01:00
Simon Alibert
329d103453 Add dxl write test 2025-03-23 16:12:24 +01:00
Simon Alibert
9f46a3d8f9 Refactor dxl tests by functionality 2025-03-23 16:11:24 +01:00
Simon Alibert
c9ca9e4316 Rename tests 2025-03-23 13:32:08 +01:00
Simon Alibert
5a57e6f4a7 Rename read/write -> sync_read/write, refactor, add write 2025-03-23 13:25:45 +01:00
Simon Alibert
a2f5c34625 Simplify split_int_bytes 2025-03-23 11:55:39 +01:00
Simon Alibert
1f1e1bcfe8 Add Motor in dxl robots 2025-03-23 11:08:20 +01:00
Simon Alibert
e047074825 Add CalibrationMode 2025-03-23 10:20:08 +01:00
Steven Palma
a6015a55f9 chore(scripts): remove deprecated script (#887) 2025-03-23 01:16:50 +01:00
Simon Alibert
c2e761437d Assert ping stub called 2025-03-22 18:53:57 +01:00
Simon Alibert
fedac994c3 Add autoclosing fixture 2025-03-22 18:16:13 +01:00
Simon Alibert
7d558d058e Nit 2025-03-22 17:03:18 +01:00
Simon Alibert
1d3e1cbdbd Add feetech write tests 2025-03-22 17:02:01 +01:00
Simon Alibert
0ccc957d5c Fix imports 2025-03-22 16:58:41 +01:00
Simon Alibert
a4d487bc1d Remove comment 2025-03-22 16:52:42 +01:00
Simon Alibert
8ca03a7255 Add dxl write tests 2025-03-22 14:50:05 +01:00
Simon Alibert
f2ed2bfb2f Improve logging & typing 2025-03-22 11:11:39 +01:00
Simon Alibert
40675ec76c Add logger, rm logs 2025-03-22 10:33:42 +01:00
Simon Alibert
9e34c1d731 Move feetech table & cleanup 2025-03-22 01:24:48 +01:00
Simon Alibert
857f335be9 Improve feetech mocking 2025-03-22 01:19:51 +01:00
Simon Alibert
fc4a95f187 Add CRC docstring 2025-03-22 00:50:01 +01:00
Simon Alibert
4fe1880887 Add ping testing 2025-03-22 00:40:22 +01:00
Simon Alibert
6fa859fa19 Improve dynamixel mocking 2025-03-22 00:39:41 +01:00
Simon Alibert
2abfa5838d Improve read ergonomics & typing, rm find_motor_indices 2025-03-22 00:34:07 +01:00
Simon Alibert
3d119c0ccb Add single value write 2025-03-21 12:31:41 +01:00
Simon Alibert
a32081757d Add Motor class 2025-03-21 12:13:44 +01:00
Simon Alibert
56c04ffc53 Move dxl table & cleanup 2025-03-21 11:28:11 +01:00
Simon Alibert
715d4557af Ruff ignore F401 & F403 for init files 2025-03-21 11:22:02 +01:00
Simon Alibert
6541982dff Merge remote-tracking branch 'origin/main' into user/aliberts/2025_02_25_refactor_robots 2025-03-20 14:48:19 +01:00
Simon Alibert
43bc9404bb Remove motors from koch teleop config 2025-03-20 14:47:53 +01:00
Simon Alibert
375499c323 Remove set_operating_mode 2025-03-20 14:47:17 +01:00
Simon Alibert
17a4447cef Add debugging init 2025-03-20 14:45:18 +01:00
Simon Alibert
287dc13d96 Remove CLI for calibration visualization + move to debugging 2025-03-20 14:44:23 +01:00
Simon Alibert
02a1cf6a4e Fix calibration visualization 2025-03-20 14:33:36 +01:00
Simon Alibert
34cd1e47bf Remove obsolete test 2025-03-20 14:07:55 +01:00
Simon Alibert
74d56834af Fix dxl calib import 2025-03-20 14:03:11 +01:00
Simon Alibert
dd80dbb4cd Simplify Dxl motors bus import 2025-03-20 14:01:34 +01:00
Simon Alibert
bc020ee0a4 Remove mock_feetech sdk & add feetech new tests 2025-03-20 14:00:10 +01:00
Simon Alibert
a15767aff1 Fix feetech reader/writer 2025-03-20 13:59:00 +01:00
Simon Alibert
9af0a9bf37 Add mock_feetech 2025-03-20 13:58:02 +01:00
Simon Alibert
e2c8bc6948 Fix packet length, remove bytearray for easier debug, improve doctrings 2025-03-20 13:57:15 +01:00
Simon Alibert
2c68c6ca40 Implement FeetechMotorsBus & move functions to calibration 2025-03-20 10:22:47 +01:00
Simon Alibert
dd1f33e5ed Add pytest param ids 2025-03-20 09:44:47 +01:00
Simon Alibert
2c1bb766ff Refactor MockMotors, add return values 2025-03-20 09:40:58 +01:00
Simon Alibert
c1c71fb994 Ignore patching when not on MacOS 2025-03-20 09:38:36 +01:00
Simon Alibert
2d56f35071 Improve formats & docstrings 2025-03-20 09:36:17 +01:00
Simon Alibert
64ce2669ca Add bytes stuffing 2025-03-20 09:33:33 +01:00
Cole
f39652707c add docs details for resolving firmware update issues (#627)
Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>
Co-authored-by: Simon Alibert <75076266+aliberts@users.noreply.github.com>
2025-03-19 19:17:07 +01:00
Simon Alibert
f527adf7a9 Add mock-serial 2025-03-19 19:03:34 +01:00
Simon Alibert
6a77189f50 Fix import 2025-03-19 19:02:58 +01:00
Simon Alibert
e4a6d035f9 Remove Dxl mock sdk & update tests 2025-03-19 19:02:25 +01:00
Simon Alibert
794f6e00fc Introduce Dxl packet mocking logic 2025-03-19 18:57:29 +01:00
Simon Alibert
97494c6a39 (WIP) Implement Dynamixel 2025-03-19 18:46:04 +01:00
Simon Alibert
9358d334c7 Rewrite MotorsBus 2025-03-19 18:44:05 +01:00
Steven Palma
712d5dae4f fix(os): fix default codec for windows (#875) 2025-03-18 22:04:21 +01:00
Pepijn
952e892fe5 Use float32 instead of int (#877) 2025-03-18 16:36:37 +01:00
Pepijn
e8159997c7 User/pepijn/2025 03 17 act different image shapes (#870) 2025-03-18 11:09:05 +01:00
Steven Palma
1c15bab70f fix(codec): hot-fix for default codec in linux arm platforms (#868) 2025-03-17 13:23:11 +01:00
Simon Alibert
c85a9253e7 Move imports 2025-03-15 23:43:26 +01:00
Simon Alibert
8d659a6aa9 Update mock SDKs 2025-03-15 22:26:47 +01:00
Simon Alibert
f6a2396484 Move test_configure_motors_all_ids_1 2025-03-15 22:19:50 +01:00
Simon Alibert
7a7af82e35 Nit docstring 2025-03-15 21:53:42 +01:00
Simon Alibert
7f23972f3f Add Feetech & Dxl basic tests 2025-03-15 21:45:05 +01:00
Simon Alibert
3362b665e6 Move test files 2025-03-15 21:44:01 +01:00
Simon Alibert
eeeccdba53 Update docstrings 2025-03-15 21:42:54 +01:00
Simon Alibert
bd5b181dfd Improve type hints 2025-03-15 21:33:45 +01:00
Simon Alibert
858678786a Remove unused functions 2025-03-15 19:22:40 +01:00
Simon Alibert
0f972661e1 Move imports & remove mock entirely 2025-03-15 19:22:12 +01:00
Simon Alibert
2e9b144c56 Merge remote-tracking branch 'origin/main' into user/aliberts/2025_02_25_refactor_robots 2025-03-15 13:15:28 +01:00
Simon Alibert
fa8ba9e4e2 Rename set_operating_mode arg 2025-03-15 13:14:29 +01:00
Simon Alibert
2037cc0219 Rename ID -> id 2025-03-15 13:14:05 +01:00
Simon Alibert
5006da72ff Update configure_motor script 2025-03-15 13:13:26 +01:00
Simon Alibert
ad0bacbfe4 Ass model_baudrate_table 2025-03-15 13:11:56 +01:00
Simon Alibert
e33ca2c980 Fix TorqueMode imports 2025-03-15 13:10:57 +01:00
Guillaume LEGENDRE
9f0a8a49d0 Update test-docker-build.yml 2025-03-15 11:34:17 +01:00
Huan Liu
a3cd18eda9 added wandb.run_id to allow resuming without wandb log; updated log m… (#841)
Co-authored-by: Simon Alibert <75076266+aliberts@users.noreply.github.com>
2025-03-15 09:40:39 +01:00
Simon Alibert
f0505e81cc Move common Feetech/Dxl code into MotorsBus base class 2025-03-14 22:00:09 +01:00
Huan Liu
7dc9ffe4c9 Update 10_use_so100.md (#840) 2025-03-14 17:07:14 +01:00
Jade Choghari
0e98c6ee96 Add torchcodec cpu (#798)
Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>
Co-authored-by: Remi <re.cadene@gmail.com>
Co-authored-by: Remi <remi.cadene@huggingface.co>
Co-authored-by: Simon Alibert <simon.alibert@huggingface.co>
Co-authored-by: Simon Alibert <75076266+aliberts@users.noreply.github.com>
2025-03-14 16:53:42 +01:00
Simon Alibert
1f7ddc1d76 New Feetech calibration (#859)
Co-authored-by: Pepijn <pepijn@huggingface.co>
Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>
2025-03-14 11:31:23 +01:00
Simon Alibert
ce63cfdb25 Merge remote-tracking branch 'origin/main' into user/aliberts/2025_02_25_refactor_robots 2025-03-13 14:24:50 +01:00
Simon Alibert
974028bd28 Organize test folders (#856)
Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
2025-03-13 14:05:55 +01:00
Simon Alibert
a36ed39487 Improve pre-commit config (#857) 2025-03-13 13:29:55 +01:00
Ermano Arruda
c37b1d45b6 parametrise tolerance_s in visualize_dataset scripts (#716) 2025-03-13 10:28:29 +01:00
Simon Alibert
d6f1359e69 Remove motors from Koch config 2025-03-12 17:16:09 +01:00
Simon Alibert
2357d4aceb Update base classes typing 2025-03-12 17:15:39 +01:00
pre-commit-ci[bot]
f994febca4 [pre-commit.ci] pre-commit autoupdate (#844)
Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>
2025-03-11 11:28:01 +01:00
Steven Palma
12f52632ed chore(docs): update instructions for change in device and use_amp (#843) 2025-03-10 21:03:33 +01:00
Steven Palma
8a64d8268b chore(deps): remove hydra dependency (#842) 2025-03-10 19:00:23 +01:00
Simon Alibert
d6ccdc222c Merge remote-tracking branch 'origin/main' into user/aliberts/2025_02_25_refactor_robots 2025-03-10 18:39:48 +01:00
Simon Alibert
9bd0788131 Update paths 2025-03-10 18:34:01 +01:00
Simon Alibert
1ae62c28f7 Move lekiwi files 2025-03-10 18:33:28 +01:00
Simon Alibert
baf6e66c3d Add init files 2025-03-10 18:29:58 +01:00
Simon Alibert
a065bd61ae Add keyboard teleop 2025-03-10 18:28:50 +01:00
Pepijn
84565c7c2e Fix camera rotation error (#839)
Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>
2025-03-10 17:02:19 +01:00
Ben Sprenger
05b54733da feat: add support for external plugin config dataclasses (#807)
Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
Co-authored-by: Simon Alibert <75076266+aliberts@users.noreply.github.com>
2025-03-10 13:25:47 +01:00
Simon Alibert
513b008bcc fix: deactivate tdmpc backward compatibility test with use_mpc=True (#838) 2025-03-10 10:19:54 +01:00
Joe Clinton
32fffd4bbb Fix delay in teleoperation start time (#676)
Co-authored-by: Simon Alibert <75076266+aliberts@users.noreply.github.com>
Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>
2025-03-08 11:40:07 +01:00
Simon Alibert
03c7cf8a63 Remove pr_style_bot (#832) 2025-03-08 09:39:07 +01:00
Simon Alibert
074f0ac8fe Fix gpu nightly (#829) 2025-03-07 13:21:58 +01:00
Mathias Wulfman
25c63ccf63 🐛 Remove map_location=device that no longer exists when loading DiffusionPolicy from_pretained after commit 5e94738 (#830)
Co-authored-by: Mathias Wulfman <mathias.wulfman@wandercraft.eu>
2025-03-07 13:21:11 +01:00
Simon Alibert
5dc3c74e64 Add WidowX 2025-03-06 21:31:35 +01:00
Steven Palma
5e9473806c refactor(config): Move device & amp args to PreTrainedConfig (#812)
Co-authored-by: Simon Alibert <75076266+aliberts@users.noreply.github.com>
2025-03-06 17:59:28 +01:00
Simon Alibert
4214b01703 Add ViperX 2025-03-06 12:53:55 +01:00
Simon Alibert
b974e5541f Update stretch teleop 2025-03-06 11:46:06 +01:00
Harsimrat Sandhawalia
10706ed753 Support for discrete actions (#810) 2025-03-06 10:27:29 +01:00
Simon Alibert
fd64dc84ae Move stretch3 teleop 2025-03-06 10:24:27 +01:00
Steven Palma
0b8205a8a0 chore(doc): add star history graph to the README.md (#815) 2025-03-06 09:44:21 +01:00
Simon Alibert
57ae509823 Revert "docs: update installation instructions to use uv instead of conda" (#827) 2025-03-06 09:43:27 +01:00
Steven Palma
5d24ce3160 chore(doc): add license header to all files (#818) 2025-03-05 17:56:51 +01:00
eDeveloperOZ
d694ea1d38 docs: update installation instructions to use uv instead of conda (#731)
Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
2025-03-05 10:07:35 +01:00
Tim Qian
a00936686f Fix doc (#793)
Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
2025-03-05 10:02:25 +01:00
yadunund
2feb5edc65 Fix printout in make_cameras_from_configs (#796)
Signed-off-by: Yadunund <yadunund@gmail.com>
Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
2025-03-05 10:01:24 +01:00
Yachen Kang
b80e55ca44 change "actions_id_pad" to "actions_is_pad"(🐛 Bug) (#774)
Co-authored-by: Steven Palma <imstevenpmwork@ieee.org>
2025-03-05 01:31:56 +01:00
Pepijn
e8ce388109 Add wired instructions for LeKiwi (#814)
Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>
2025-03-04 19:04:19 +01:00
Pepijn
a4c1da25de Add kiwi to readme (#803) 2025-03-04 18:43:27 +01:00
Pepijn
a003e7c081 change wheel setup in kinematics (#811)
Co-authored-by: pre-commit-ci[bot] <66853113+pre-commit-ci[bot]@users.noreply.github.com>
2025-03-04 18:42:45 +01:00
Simon Alibert
06988b2135 WIP stretch 3 robot & teleop 2025-03-04 13:32:58 +01:00
Simon Alibert
7ed7570b17 WIP Add stretch 2025-03-04 11:42:07 +01:00
Simon Alibert
e2d13ba7e4 Update paths 2025-03-04 11:38:31 +01:00
Simon Alibert
f6c1049474 Update errors 2025-03-04 11:24:05 +01:00
Simon Alibert
2b24feb604 Update constants 2025-03-04 11:07:15 +01:00
Mishig
a27411022d [visualization] Ignore 2d or 3d data for now (#809) 2025-03-04 10:53:01 +01:00
Steven Palma
3827974b58 refactor(test): remove duplicated code in conftest.py (#804) 2025-03-04 10:49:44 +01:00
Pepijn
b299cfea8a Add step assembly tutorial (#800) 2025-03-04 09:57:37 +01:00
Simon Alibert
a13e49073c Add Moss Robot 2025-03-03 20:42:48 +01:00
Simon Alibert
2c7e0f17b6 Add SO-100 teleop 2025-03-03 20:31:04 +01:00
Simon Alibert
418866007e Fixes for Koch robot 2025-03-03 20:19:23 +01:00
Simon Alibert
5ab418dbeb Add feetech calibration 2025-03-03 20:17:54 +01:00
Simon Alibert
95f61ee9d4 Add SO-100 robot 2025-03-03 20:17:18 +01:00
Simon Alibert
ac89c8d226 Add Koch teleop 2025-03-03 18:58:54 +01:00
Simon Alibert
d75d904e43 Add teleoperator base class 2025-03-03 18:55:59 +01:00
Simon Alibert
ea4d8d990c Add Koch robot 2025-03-03 18:53:45 +01:00
Simon Alibert
c93cbb8311 Fix base robot class 2025-03-03 18:49:40 +01:00
Simon Alibert
c0137e89b9 Add calibration dir 2025-03-03 18:44:39 +01:00
Simon Alibert
3111ba78ad Add errors 2025-03-03 18:44:15 +01:00
Simon Alibert
3d3a176940 Move & organize motors, add base class 2025-03-03 18:18:24 +01:00
Simon Alibert
212c6095a2 Move & organize cameras, add base class 2025-03-03 18:16:30 +01:00
Simon Alibert
48469ec674 Move motor files 2025-03-02 21:33:22 +01:00
Simon Alibert
c7dfd32b43 Update DynamixelMotorsBus signature 2025-03-02 21:29:35 +01:00
Simon Alibert
731fb6ebaf Fix import 2025-02-26 19:02:15 +01:00
Simon Alibert
13e124302f Merge remote-tracking branch 'origin/main' into user/aliberts/2025_02_25_refactor_robots 2025-02-26 18:49:18 +01:00
Simon Alibert
59bdd29106 Move more files & objects around 2025-02-26 18:48:58 +01:00
Simon Alibert
124829104b Merge remote-tracking branch 'origin/main' into user/aliberts/2025_02_25_refactor_robots 2025-02-26 16:26:03 +01:00
Simon Alibert
21cd2940a9 Reorganize files 2025-02-26 16:22:07 +01:00
318 changed files with 12506 additions and 8765 deletions

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# Misc
.git
tmp
@@ -59,7 +73,7 @@ pip-log.txt
pip-delete-this-directory.txt
# Unit test / coverage reports
!tests/data
!tests/artifacts
htmlcov/
.tox/
.nox/

14
.gitattributes vendored
View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
*.memmap filter=lfs diff=lfs merge=lfs -text
*.stl filter=lfs diff=lfs merge=lfs -text
*.safetensors filter=lfs diff=lfs merge=lfs -text

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
name: "\U0001F41B Bug Report"
description: Submit a bug report to help us improve LeRobot
body:

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# Inspired by
# https://github.com/huggingface/peft/blob/main/.github/workflows/build_docker_images.yml
name: Builds

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# Inspired by
# https://github.com/huggingface/peft/blob/main/.github/workflows/nightly.yml
name: Nightly

View File

@@ -1,161 +0,0 @@
# Adapted from https://github.com/huggingface/diffusers/blob/main/.github/workflows/pr_style_bot.yml
name: PR Style Bot
on:
issue_comment:
types: [created]
permissions: {}
env:
PYTHON_VERSION: "3.10"
jobs:
check-permissions:
if: >
contains(github.event.comment.body, '@bot /style') &&
github.event.issue.pull_request != null
runs-on: ubuntu-latest
outputs:
is_authorized: ${{ steps.check_user_permission.outputs.has_permission }}
steps:
- name: Check user permission
id: check_user_permission
uses: actions/github-script@v6
with:
script: |
const comment_user = context.payload.comment.user.login;
const { data: permission } = await github.rest.repos.getCollaboratorPermissionLevel({
owner: context.repo.owner,
repo: context.repo.repo,
username: comment_user
});
const authorized =
permission.permission === 'admin' ||
permission.permission === 'write';
console.log(
`User ${comment_user} has permission level: ${permission.permission}, ` +
`authorized: ${authorized} (admins & maintainers allowed)`
);
core.setOutput('has_permission', authorized);
run-style-bot:
needs: check-permissions
if: needs.check-permissions.outputs.is_authorized == 'true'
runs-on: ubuntu-latest
permissions:
contents: write
pull-requests: write
steps:
- name: Extract PR details
id: pr_info
uses: actions/github-script@v6
with:
script: |
const prNumber = context.payload.issue.number;
const { data: pr } = await github.rest.pulls.get({
owner: context.repo.owner,
repo: context.repo.repo,
pull_number: prNumber
});
// We capture both the branch ref and the "full_name" of the head repo
// so that we can check out the correct repository & branch (including forks).
core.setOutput("prNumber", prNumber);
core.setOutput("headRef", pr.head.ref);
core.setOutput("headRepoFullName", pr.head.repo.full_name);
- name: Check out PR branch
uses: actions/checkout@v4
env:
HEADREPOFULLNAME: ${{ steps.pr_info.outputs.headRepoFullName }}
HEADREF: ${{ steps.pr_info.outputs.headRef }}
with:
persist-credentials: true
# Instead of checking out the base repo, use the contributor's repo name
repository: ${{ env.HEADREPOFULLNAME }}
ref: ${{ env.HEADREF }}
# You may need fetch-depth: 0 for being able to push
fetch-depth: 0
token: ${{ secrets.GITHUB_TOKEN }}
- name: Debug
env:
HEADREPOFULLNAME: ${{ steps.pr_info.outputs.headRepoFullName }}
HEADREF: ${{ steps.pr_info.outputs.headRef }}
PRNUMBER: ${{ steps.pr_info.outputs.prNumber }}
run: |
echo "PR number: ${PRNUMBER}"
echo "Head Ref: ${HEADREF}"
echo "Head Repo Full Name: ${HEADREPOFULLNAME}"
- name: Set up Python
uses: actions/setup-python@v4
with:
python-version: ${{ env.PYTHON_VERSION }}
- name: Get Ruff Version from pre-commit-config.yaml
id: get-ruff-version
run: |
RUFF_VERSION=$(awk '/repo: https:\/\/github.com\/astral-sh\/ruff-pre-commit/{flag=1;next}/rev:/{if(flag){print $2;exit}}' .pre-commit-config.yaml)
echo "ruff_version=${RUFF_VERSION}" >> $GITHUB_OUTPUT
- name: Install Ruff
env:
RUFF_VERSION: ${{ steps.get-ruff-version.outputs.ruff_version }}
run: python -m pip install "ruff==${RUFF_VERSION}"
- name: Ruff check
run: ruff check --fix
- name: Ruff format
run: ruff format
- name: Commit and push changes
id: commit_and_push
env:
HEADREPOFULLNAME: ${{ steps.pr_info.outputs.headRepoFullName }}
HEADREF: ${{ steps.pr_info.outputs.headRef }}
PRNUMBER: ${{ steps.pr_info.outputs.prNumber }}
GITHUB_TOKEN: ${{ secrets.GITHUB_TOKEN }}
run: |
echo "HEADREPOFULLNAME: ${HEADREPOFULLNAME}, HEADREF: ${HEADREF}"
# Configure git with the Actions bot user
git config user.name "github-actions[bot]"
git config user.email "github-actions[bot]@users.noreply.github.com"
git config --local lfs.https://github.com/.locksverify false
# Make sure your 'origin' remote is set to the contributor's fork
git remote set-url origin "https://x-access-token:${GITHUB_TOKEN}@github.com/${HEADREPOFULLNAME}.git"
# If there are changes after running style/quality, commit them
if [ -n "$(git status --porcelain)" ]; then
git add .
git commit -m "Apply style fixes"
# Push to the original contributor's forked branch
git push origin HEAD:${HEADREF}
echo "changes_pushed=true" >> $GITHUB_OUTPUT
else
echo "No changes to commit."
echo "changes_pushed=false" >> $GITHUB_OUTPUT
fi
- name: Comment on PR with workflow run link
if: steps.commit_and_push.outputs.changes_pushed == 'true'
uses: actions/github-script@v6
with:
script: |
const prNumber = parseInt(process.env.prNumber, 10);
const runUrl = `${process.env.GITHUB_SERVER_URL}/${process.env.GITHUB_REPOSITORY}/actions/runs/${process.env.GITHUB_RUN_ID}`
await github.rest.issues.createComment({
owner: context.repo.owner,
repo: context.repo.repo,
issue_number: prNumber,
body: `Style fixes have been applied. [View the workflow run here](${runUrl}).`
});
env:
prNumber: ${{ steps.pr_info.outputs.prNumber }}

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
name: Quality
on:

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# Inspired by
# https://github.com/huggingface/peft/blob/main/.github/workflows/test-docker-build.yml
name: Test Dockerfiles
@@ -27,7 +41,7 @@ jobs:
- name: Get changed files
id: changed-files
uses: tj-actions/changed-files@v44
uses: tj-actions/changed-files@3f54ebb830831fc121d3263c1857cfbdc310cdb9 #v42
with:
files: docker/**
json: "true"

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
name: Tests
on:
@@ -112,7 +126,7 @@ jobs:
# portaudio19-dev is needed to install pyaudio
run: |
sudo apt-get update && \
sudo apt-get install -y libegl1-mesa-dev portaudio19-dev
sudo apt-get install -y libegl1-mesa-dev ffmpeg portaudio19-dev
- name: Install uv and python
uses: astral-sh/setup-uv@v5

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
on:
push:

16
.gitignore vendored
View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
.dev
# Logging
logs
tmp
@@ -64,7 +78,7 @@ pip-log.txt
pip-delete-this-directory.txt
# Unit test / coverage reports
!tests/data
!tests/artifacts
htmlcov/
.tox/
.nox/

View File

@@ -1,7 +1,28 @@
exclude: ^(tests/data)
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
exclude: "tests/artifacts/.*\\.safetensors$"
default_language_version:
python: python3.10
repos:
##### Meta #####
- repo: meta
hooks:
- id: check-useless-excludes
- id: check-hooks-apply
##### Style / Misc. #####
- repo: https://github.com/pre-commit/pre-commit-hooks
rev: v5.0.0
@@ -14,31 +35,37 @@ repos:
- id: check-toml
- id: end-of-file-fixer
- id: trailing-whitespace
- repo: https://github.com/crate-ci/typos
rev: v1.30.0
- repo: https://github.com/adhtruong/mirrors-typos
rev: v1.31.1
hooks:
- id: typos
args: [--force-exclude]
- repo: https://github.com/asottile/pyupgrade
rev: v3.19.1
hooks:
- id: pyupgrade
- repo: https://github.com/astral-sh/ruff-pre-commit
rev: v0.9.9
rev: v0.11.4
hooks:
- id: ruff
args: [--fix]
- id: ruff-format
##### Security #####
- repo: https://github.com/gitleaks/gitleaks
rev: v8.24.0
rev: v8.24.2
hooks:
- id: gitleaks
- repo: https://github.com/woodruffw/zizmor-pre-commit
rev: v1.4.1
rev: v1.5.2
hooks:
- id: zizmor
- repo: https://github.com/PyCQA/bandit
rev: 1.8.3
hooks:

View File

@@ -291,7 +291,7 @@ sudo apt-get install git-lfs
git lfs install
```
Pull artifacts if they're not in [tests/data](tests/data)
Pull artifacts if they're not in [tests/artifacts](tests/artifacts)
```bash
git lfs pull
```

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
.PHONY: tests
PYTHON_PATH := $(shell which python)
@@ -33,6 +47,7 @@ test-act-ete-train:
--policy.dim_model=64 \
--policy.n_action_steps=20 \
--policy.chunk_size=20 \
--policy.device=$(DEVICE) \
--env.type=aloha \
--env.episode_length=5 \
--dataset.repo_id=lerobot/aloha_sim_transfer_cube_human \
@@ -47,7 +62,6 @@ test-act-ete-train:
--save_checkpoint=true \
--log_freq=1 \
--wandb.enable=false \
--device=$(DEVICE) \
--output_dir=tests/outputs/act/
test-act-ete-train-resume:
@@ -58,11 +72,11 @@ test-act-ete-train-resume:
test-act-ete-eval:
python lerobot/scripts/eval.py \
--policy.path=tests/outputs/act/checkpoints/000004/pretrained_model \
--policy.device=$(DEVICE) \
--env.type=aloha \
--env.episode_length=5 \
--eval.n_episodes=1 \
--eval.batch_size=1 \
--device=$(DEVICE)
--eval.batch_size=1
test-diffusion-ete-train:
python lerobot/scripts/train.py \
@@ -70,6 +84,7 @@ test-diffusion-ete-train:
--policy.down_dims='[64,128,256]' \
--policy.diffusion_step_embed_dim=32 \
--policy.num_inference_steps=10 \
--policy.device=$(DEVICE) \
--env.type=pusht \
--env.episode_length=5 \
--dataset.repo_id=lerobot/pusht \
@@ -84,21 +99,21 @@ test-diffusion-ete-train:
--save_freq=2 \
--log_freq=1 \
--wandb.enable=false \
--device=$(DEVICE) \
--output_dir=tests/outputs/diffusion/
test-diffusion-ete-eval:
python lerobot/scripts/eval.py \
--policy.path=tests/outputs/diffusion/checkpoints/000002/pretrained_model \
--policy.device=$(DEVICE) \
--env.type=pusht \
--env.episode_length=5 \
--eval.n_episodes=1 \
--eval.batch_size=1 \
--device=$(DEVICE)
--eval.batch_size=1
test-tdmpc-ete-train:
python lerobot/scripts/train.py \
--policy.type=tdmpc \
--policy.device=$(DEVICE) \
--env.type=xarm \
--env.task=XarmLift-v0 \
--env.episode_length=5 \
@@ -114,15 +129,14 @@ test-tdmpc-ete-train:
--save_freq=2 \
--log_freq=1 \
--wandb.enable=false \
--device=$(DEVICE) \
--output_dir=tests/outputs/tdmpc/
test-tdmpc-ete-eval:
python lerobot/scripts/eval.py \
--policy.path=tests/outputs/tdmpc/checkpoints/000002/pretrained_model \
--policy.device=$(DEVICE) \
--env.type=xarm \
--env.episode_length=5 \
--env.task=XarmLift-v0 \
--eval.n_episodes=1 \
--eval.batch_size=1 \
--device=$(DEVICE)
--eval.batch_size=1

View File

@@ -23,15 +23,24 @@
</div>
<h2 align="center">
<p><a href="https://github.com/huggingface/lerobot/blob/main/examples/10_use_so100.md">New robot in town: SO-100</a></p>
<p><a href="https://github.com/huggingface/lerobot/blob/main/examples/10_use_so100.md">
Build Your Own SO-100 Robot!</a></p>
</h2>
<div align="center">
<img src="media/so100/leader_follower.webp?raw=true" alt="SO-100 leader and follower arms" title="SO-100 leader and follower arms" width="50%">
<p>We just added a new tutorial on how to build a more affordable robot, at the price of $110 per arm!</p>
<p>Teach it new skills by showing it a few moves with just a laptop.</p>
<p>Then watch your homemade robot act autonomously 🤯</p>
<p>Follow the link to the <a href="https://github.com/huggingface/lerobot/blob/main/examples/10_use_so100.md">full tutorial for SO-100</a>.</p>
<img src="media/so100/leader_follower.webp?raw=true" alt="SO-100 leader and follower arms" title="SO-100 leader and follower arms" width="50%">
<p><strong>Meet the SO-100 Just $110 per arm!</strong></p>
<p>Train it in minutes with a few simple moves on your laptop.</p>
<p>Then sit back and watch your creation act autonomously! 🤯</p>
<p><a href="https://github.com/huggingface/lerobot/blob/main/examples/10_use_so100.md">
Get the full SO-100 tutorial here.</a></p>
<p>Want to take it to the next level? Make your SO-100 mobile by building LeKiwi!</p>
<p>Check out the <a href="https://github.com/huggingface/lerobot/blob/main/examples/11_use_lekiwi.md">LeKiwi tutorial</a> and bring your robot to life on wheels.</p>
<img src="media/lekiwi/kiwi.webp?raw=true" alt="LeKiwi mobile robot" title="LeKiwi mobile robot" width="50%">
</div>
<br/>
@@ -89,14 +98,18 @@ conda create -y -n lerobot python=3.10
conda activate lerobot
```
When using `miniconda`, install `ffmpeg` in your environment:
```bash
conda install ffmpeg -c conda-forge
```
Install 🤗 LeRobot:
```bash
pip install -e .
```
> **NOTE:** Depending on your platform, If you encounter any build errors during this step
you may need to install `cmake` and `build-essential` for building some of our dependencies.
On linux: `sudo apt-get install cmake build-essential`
> **NOTE:** If you encounter build errors, you may need to install additional dependencies (`cmake`, `build-essential`, and `ffmpeg libs`). On Linux, run:
`sudo apt-get install cmake build-essential python-dev pkg-config libavformat-dev libavcodec-dev libavdevice-dev libavutil-dev libswscale-dev libswresample-dev libavfilter-dev pkg-config`. For other systems, see: [Compiling PyAV](https://pyav.org/docs/develop/overview/installation.html#bring-your-own-ffmpeg)
For simulations, 🤗 LeRobot comes with gymnasium environments that can be installed as extras:
- [aloha](https://github.com/huggingface/gym-aloha)
@@ -223,8 +236,8 @@ python lerobot/scripts/eval.py \
--env.type=pusht \
--eval.batch_size=10 \
--eval.n_episodes=10 \
--use_amp=false \
--device=cuda
--policy.use_amp=false \
--policy.device=cuda
```
Note: After training your own policy, you can re-evaluate the checkpoints with:
@@ -375,3 +388,6 @@ Additionally, if you are using any of the particular policy architecture, pretra
year={2024}
}
```
## Star History
[![Star History Chart](https://api.star-history.com/svg?repos=huggingface/lerobot&type=Timeline)](https://star-history.com/#huggingface/lerobot&Timeline)

View File

@@ -51,7 +51,7 @@ For a comprehensive list and documentation of these parameters, see the ffmpeg d
### Decoding parameters
**Decoder**
We tested two video decoding backends from torchvision:
- `pyav` (default)
- `pyav`
- `video_reader` (requires to build torchvision from source)
**Requested timestamps**

View File

@@ -17,12 +17,21 @@
import argparse
import datetime as dt
import os
import time
from pathlib import Path
import cv2
import rerun as rr
# see https://rerun.io/docs/howto/visualization/limit-ram
RERUN_MEMORY_LIMIT = os.getenv("LEROBOT_RERUN_MEMORY_LIMIT", "5%")
def display_and_save_video_stream(output_dir: Path, fps: int, width: int, height: int):
def display_and_save_video_stream(output_dir: Path, fps: int, width: int, height: int, duration: int):
rr.init("lerobot_capture_camera_feed")
rr.spawn(memory_limit=RERUN_MEMORY_LIMIT)
now = dt.datetime.now()
capture_dir = output_dir / f"{now:%Y-%m-%d}" / f"{now:%H-%M-%S}"
if not capture_dir.exists():
@@ -39,24 +48,21 @@ def display_and_save_video_stream(output_dir: Path, fps: int, width: int, height
cap.set(cv2.CAP_PROP_FRAME_HEIGHT, height)
frame_index = 0
while True:
start_time = time.time()
while time.time() - start_time < duration:
ret, frame = cap.read()
if not ret:
print("Error: Could not read frame.")
break
cv2.imshow("Video Stream", frame)
rr.log("video/stream", rr.Image(frame.numpy()), static=True)
cv2.imwrite(str(capture_dir / f"frame_{frame_index:06d}.png"), frame)
frame_index += 1
# Break the loop on 'q' key press
if cv2.waitKey(1) & 0xFF == ord("q"):
break
# Release the capture and destroy all windows
# Release the capture
cap.release()
cv2.destroyAllWindows()
# TODO(Steven): Add a graceful shutdown via a close() method for the Viewer context, though not currently supported in the Rerun API.
if __name__ == "__main__":
@@ -86,5 +92,11 @@ if __name__ == "__main__":
default=720,
help="Height of the captured images.",
)
parser.add_argument(
"--duration",
type=int,
default=20,
help="Duration in seconds for which the video stream should be captured.",
)
args = parser.parse_args()
display_and_save_video_stream(**vars(args))

View File

@@ -67,7 +67,7 @@ def parse_int_or_none(value) -> int | None:
def check_datasets_formats(repo_ids: list) -> None:
for repo_id in repo_ids:
dataset = LeRobotDataset(repo_id)
if dataset.video:
if len(dataset.meta.video_keys) > 0:
raise ValueError(
f"Use only image dataset for running this benchmark. Video dataset provided: {repo_id}"
)

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
This script demonstrates the use of `LeRobotDataset` class for handling and processing robotic datasets from Hugging Face.
It illustrates how to load datasets, manipulate them, and apply transformations suitable for machine learning tasks in PyTorch.
@@ -105,7 +119,7 @@ print(dataset.features[camera_key]["shape"])
delta_timestamps = {
# loads 4 images: 1 second before current frame, 500 ms before, 200 ms before, and current frame
camera_key: [-1, -0.5, -0.20, 0],
# loads 8 state vectors: 1.5 seconds before, 1 second before, ... 200 ms, 100 ms, and current frame
# loads 6 state vectors: 1.5 seconds before, 1 second before, ... 200 ms, 100 ms, and current frame
"observation.state": [-1.5, -1, -0.5, -0.20, -0.10, 0],
# loads 64 action vectors: current frame, 1 frame in the future, 2 frames, ... 63 frames in the future
"action": [t / dataset.fps for t in range(64)],
@@ -129,6 +143,6 @@ dataloader = torch.utils.data.DataLoader(
for batch in dataloader:
print(f"{batch[camera_key].shape=}") # (32, 4, c, h, w)
print(f"{batch['observation.state'].shape=}") # (32, 5, c)
print(f"{batch['observation.state'].shape=}") # (32, 6, c)
print(f"{batch['action'].shape=}") # (32, 64, c)
break

View File

@@ -1,10 +1,24 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
This scripts demonstrates how to evaluate a pretrained policy from the HuggingFace Hub or from your local
training outputs directory. In the latter case, you might want to run examples/3_train_policy.py first.
It requires the installation of the 'gym_pusht' simulation environment. Install it by running:
```bash
pip install -e ".[pusht]"`
pip install -e ".[pusht]"
```
"""
@@ -30,7 +44,7 @@ pretrained_policy_path = "lerobot/diffusion_pusht"
# OR a path to a local outputs/train folder.
# pretrained_policy_path = Path("outputs/train/example_pusht_diffusion")
policy = DiffusionPolicy.from_pretrained(pretrained_policy_path, map_location=device)
policy = DiffusionPolicy.from_pretrained(pretrained_policy_path)
# Initialize evaluation environment to render two observation types:
# an image of the scene and state/position of the agent. The environment

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""This scripts demonstrates how to train Diffusion Policy on the PushT environment.
Once you have trained a model with this script, you can try to evaluate it on

View File

@@ -1,5 +1,5 @@
This tutorial will explain the training script, how to use it, and particularly how to configure everything needed for the training run.
> **Note:** The following assume you're running these commands on a machine equipped with a cuda GPU. If you don't have one (or if you're using a Mac), you can add `--device=cpu` (`--device=mps` respectively). However, be advised that the code executes much slower on cpu.
> **Note:** The following assume you're running these commands on a machine equipped with a cuda GPU. If you don't have one (or if you're using a Mac), you can add `--policy.device=cpu` (`--policy.device=mps` respectively). However, be advised that the code executes much slower on cpu.
## The training script

View File

@@ -46,13 +46,6 @@ Using `uv`:
uv sync --extra "dynamixel"
```
/!\ For Linux only, ffmpeg and opencv requires conda install for now. Run this exact sequence of commands:
```bash
conda install -c conda-forge ffmpeg
pip uninstall opencv-python
conda install -c conda-forge "opencv>=4.10.0"
```
You are now ready to plug the 5V power supply to the motor bus of the leader arm (the smaller one) since all its motors only require 5V.
Then plug the 12V power supply to the motor bus of the follower arm. It has two motors that need 12V, and the rest will be powered with 5V through the voltage convertor.
@@ -62,6 +55,9 @@ Finally, connect both arms to your computer via USB. Note that the USB doesn't p
Now you are ready to configure your motors for the first time, as detailed in the sections below. In the upcoming sections, you'll learn about our classes and functions by running some python code in an interactive session, or by copy-pasting it in a python file.
If you have already configured your motors the first time, you can streamline the process by directly running the teleoperate script (which is detailed further in the tutorial):
> **NOTE:** To visualize the data, enable `--control.display_data=true`. This streams the data using `rerun`.
```bash
python lerobot/scripts/control_robot.py \
--robot.type=koch \
@@ -87,7 +83,7 @@ python lerobot/scripts/configure_motor.py \
--brand dynamixel \
--model xl330-m288 \
--baudrate 1000000 \
--ID 1
--id 1
```
Then unplug your first motor and plug the second motor and set its ID to 2.
@@ -97,7 +93,7 @@ python lerobot/scripts/configure_motor.py \
--brand dynamixel \
--model xl330-m288 \
--baudrate 1000000 \
--ID 2
--id 2
```
Redo the process for all your motors until ID 6.
@@ -292,6 +288,11 @@ Steps:
- Scan for devices. All 12 motors should appear.
- Select the motors one by one and move the arm. Check that the graphical indicator near the top right shows the movement.
** There is a common issue with the Dynamixel XL430-W250 motors where the motors become undiscoverable after upgrading their firmware from Mac and Windows Dynamixel Wizard2 applications. When this occurs, it is required to do a firmware recovery (Select `DYNAMIXEL Firmware Recovery` and follow the prompts). There are two known workarounds to conduct this firmware reset:
1) Install the Dynamixel Wizard on a linux machine and complete the firmware recovery
2) Use the Dynamixel U2D2 in order to perform the reset with Windows or Mac. This U2D2 can be purchased [here](https://www.robotis.us/u2d2/).
For either solution, open DYNAMIXEL Wizard 2.0 and select the appropriate port. You will likely be unable to see the motor in the GUI at this time. Select `Firmware Recovery`, carefully choose the correct model, and wait for the process to complete. Finally, re-scan to confirm the firmware recovery was successful.
**Read and Write with DynamixelMotorsBus**
To get familiar with how `DynamixelMotorsBus` communicates with the motors, you can start by reading data from them. Copy past this code in the same interactive python session:
@@ -386,14 +387,14 @@ When you connect your robot for the first time, the [`ManipulatorRobot`](../lero
Here are the positions you'll move the follower arm to:
| 1. Zero position | 2. Rotated position | 3. Rest position |
|---|---|---|
| 1. Zero position | 2. Rotated position | 3. Rest position |
| ----------------------------------------------------------------------------------------------------------------------------------------------------------------- | -------------------------------------------------------------------------------------------------------------------------------------------------------------------------- | ----------------------------------------------------------------------------------------------------------------------------------------------------------------- |
| <img src="../media/koch/follower_zero.webp?raw=true" alt="Koch v1.1 follower arm zero position" title="Koch v1.1 follower arm zero position" style="width:100%;"> | <img src="../media/koch/follower_rotated.webp?raw=true" alt="Koch v1.1 follower arm rotated position" title="Koch v1.1 follower arm rotated position" style="width:100%;"> | <img src="../media/koch/follower_rest.webp?raw=true" alt="Koch v1.1 follower arm rest position" title="Koch v1.1 follower arm rest position" style="width:100%;"> |
And here are the corresponding positions for the leader arm:
| 1. Zero position | 2. Rotated position | 3. Rest position |
|---|---|---|
| 1. Zero position | 2. Rotated position | 3. Rest position |
| ----------------------------------------------------------------------------------------------------------------------------------------------------------- | -------------------------------------------------------------------------------------------------------------------------------------------------------------------- | ----------------------------------------------------------------------------------------------------------------------------------------------------------- |
| <img src="../media/koch/leader_zero.webp?raw=true" alt="Koch v1.1 leader arm zero position" title="Koch v1.1 leader arm zero position" style="width:100%;"> | <img src="../media/koch/leader_rotated.webp?raw=true" alt="Koch v1.1 leader arm rotated position" title="Koch v1.1 leader arm rotated position" style="width:100%;"> | <img src="../media/koch/leader_rest.webp?raw=true" alt="Koch v1.1 leader arm rest position" title="Koch v1.1 leader arm rest position" style="width:100%;"> |
You can watch a [video tutorial of the calibration procedure](https://youtu.be/8drnU9uRY24) for more details.
@@ -829,16 +830,11 @@ It contains:
- `dtRphone:33.84 (29.5hz)` which is the delta time of capturing an image from the phone camera in the thread running asynchronously.
Troubleshooting:
- On Linux, if you encounter a hanging issue when using cameras, uninstall opencv and re-install it with conda:
```bash
pip uninstall opencv-python
conda install -c conda-forge opencv=4.10.0
```
- On Linux, if you encounter any issue during video encoding with `ffmpeg: unknown encoder libsvtav1`, you can:
- install with conda-forge by running `conda install -c conda-forge ffmpeg` (it should be compiled with `libsvtav1`),
- or, install [Homebrew](https://brew.sh) and run `brew install ffmpeg` (it should be compiled with `libsvtav1`),
- or, install [ffmpeg build dependencies](https://trac.ffmpeg.org/wiki/CompilationGuide/Ubuntu#GettheDependencies) and [compile ffmpeg from source with libsvtav1](https://trac.ffmpeg.org/wiki/CompilationGuide/Ubuntu#libsvtav1),
- and, make sure you use the corresponding ffmpeg binary to your install with `which ffmpeg`.
- install with conda-forge by running `conda install -c conda-forge ffmpeg` (it should be compiled with `libsvtav1`),
> **NOTE:** This usually installs `ffmpeg 7.X` for your platform (check the version installed with `ffmpeg -encoders | grep libsvtav1`). If it isn't `ffmpeg 7.X` or lacks `libsvtav1` support, you can explicitly install `ffmpeg 7.X` using: `conda install ffmpeg=7.1.1 -c conda-forge`
- or, install [ffmpeg build dependencies](https://trac.ffmpeg.org/wiki/CompilationGuide/Ubuntu#GettheDependencies) and [compile ffmpeg from source with libsvtav1](https://trac.ffmpeg.org/wiki/CompilationGuide/Ubuntu#libsvtav1),
- and, make sure you use the corresponding ffmpeg binary to your install with `which ffmpeg`.
- On Linux, if the left and right arrow keys and escape key don't have any effect during data recording, make sure you've set the `$DISPLAY` environment variable. See [pynput limitations](https://pynput.readthedocs.io/en/latest/limitations.html#linux).
At the end of data recording, your dataset will be uploaded on your Hugging Face page (e.g. https://huggingface.co/datasets/cadene/koch_test) that you can obtain by running:
@@ -898,14 +894,14 @@ python lerobot/scripts/train.py \
--policy.type=act \
--output_dir=outputs/train/act_koch_test \
--job_name=act_koch_test \
--device=cuda \
--policy.device=cuda \
--wandb.enable=true
```
Let's explain it:
1. We provided the dataset as argument with `--dataset.repo_id=${HF_USER}/koch_test`.
2. We provided the policy with `policy.type=act`. This loads configurations from [`configuration_act.py`](../lerobot/common/policies/act/configuration_act.py). Importantly, this policy will automatically adapt to the number of motor sates, motor actions and cameras of your robot (e.g. `laptop` and `phone`) which have been saved in your dataset.
4. We provided `device=cuda` since we are training on a Nvidia GPU, but you could use `device=mps` to train on Apple silicon.
4. We provided `policy.device=cuda` since we are training on a Nvidia GPU, but you could use `policy.device=mps` to train on Apple silicon.
5. We provided `wandb.enable=true` to use [Weights and Biases](https://docs.wandb.ai/quickstart) for visualizing training plots. This is optional but if you use it, make sure you are logged in by running `wandb login`.
For more information on the `train` script see the previous tutorial: [`examples/4_train_policy_with_script.md`](../examples/4_train_policy_with_script.md)

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
This script demonstrates how to use torchvision's image transformation with LeRobotDataset for data
augmentation purposes. The transformations are passed to the dataset as an argument upon creation, and

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""This script demonstrates how to slice a dataset and calculate the loss on a subset of the data.
This technique can be useful for debugging and testing purposes, as well as identifying whether a policy

View File

@@ -1,229 +0,0 @@
import shutil
from pathlib import Path
import numpy as np
from huggingface_hub import HfApi
from lerobot.common.constants import HF_LEROBOT_HOME
from lerobot.common.datasets.lerobot_dataset import CODEBASE_VERSION, LeRobotDataset
from lerobot.common.datasets.push_dataset_to_hub._download_raw import download_raw
PUSHT_TASK = "Push the T-shaped blue block onto the T-shaped green target surface."
PUSHT_FEATURES = {
"observation.state": {
"dtype": "float32",
"shape": (2,),
"names": {
"axes": ["x", "y"],
},
},
"action": {
"dtype": "float32",
"shape": (2,),
"names": {
"axes": ["x", "y"],
},
},
"next.reward": {
"dtype": "float32",
"shape": (1,),
"names": None,
},
"next.success": {
"dtype": "bool",
"shape": (1,),
"names": None,
},
"observation.environment_state": {
"dtype": "float32",
"shape": (16,),
"names": [
"keypoints",
],
},
"observation.image": {
"dtype": None,
"shape": (3, 96, 96),
"names": [
"channels",
"height",
"width",
],
},
}
def build_features(mode: str) -> dict:
features = PUSHT_FEATURES
if mode == "keypoints":
features.pop("observation.image")
else:
features.pop("observation.environment_state")
features["observation.image"]["dtype"] = mode
return features
def load_raw_dataset(zarr_path: Path):
try:
from lerobot.common.datasets.push_dataset_to_hub._diffusion_policy_replay_buffer import (
ReplayBuffer as DiffusionPolicyReplayBuffer,
)
except ModuleNotFoundError as e:
print("`gym_pusht` is not installed. Please install it with `pip install 'lerobot[gym_pusht]'`")
raise e
zarr_data = DiffusionPolicyReplayBuffer.copy_from_path(zarr_path)
return zarr_data
def calculate_coverage(zarr_data):
try:
import pymunk
from gym_pusht.envs.pusht import PushTEnv, pymunk_to_shapely
except ModuleNotFoundError as e:
print("`gym_pusht` is not installed. Please install it with `pip install 'lerobot[gym_pusht]'`")
raise e
block_pos = zarr_data["state"][:, 2:4]
block_angle = zarr_data["state"][:, 4]
num_frames = len(block_pos)
coverage = np.zeros((num_frames,), dtype=np.float32)
# 8 keypoints with 2 coords each
keypoints = np.zeros((num_frames, 16), dtype=np.float32)
# Set x, y, theta (in radians)
goal_pos_angle = np.array([256, 256, np.pi / 4])
goal_body = PushTEnv.get_goal_pose_body(goal_pos_angle)
for i in range(num_frames):
space = pymunk.Space()
space.gravity = 0, 0
space.damping = 0
# Add walls.
walls = [
PushTEnv.add_segment(space, (5, 506), (5, 5), 2),
PushTEnv.add_segment(space, (5, 5), (506, 5), 2),
PushTEnv.add_segment(space, (506, 5), (506, 506), 2),
PushTEnv.add_segment(space, (5, 506), (506, 506), 2),
]
space.add(*walls)
block_body, block_shapes = PushTEnv.add_tee(space, block_pos[i].tolist(), block_angle[i].item())
goal_geom = pymunk_to_shapely(goal_body, block_body.shapes)
block_geom = pymunk_to_shapely(block_body, block_body.shapes)
intersection_area = goal_geom.intersection(block_geom).area
goal_area = goal_geom.area
coverage[i] = intersection_area / goal_area
keypoints[i] = PushTEnv.get_keypoints(block_shapes).flatten()
return coverage, keypoints
def calculate_success(coverage: float, success_threshold: float):
return coverage > success_threshold
def calculate_reward(coverage: float, success_threshold: float):
return np.clip(coverage / success_threshold, 0, 1)
def main(raw_dir: Path, repo_id: str, mode: str = "video", push_to_hub: bool = True):
if mode not in ["video", "image", "keypoints"]:
raise ValueError(mode)
if (HF_LEROBOT_HOME / repo_id).exists():
shutil.rmtree(HF_LEROBOT_HOME / repo_id)
if not raw_dir.exists():
download_raw(raw_dir, repo_id="lerobot-raw/pusht_raw")
zarr_data = load_raw_dataset(zarr_path=raw_dir / "pusht_cchi_v7_replay.zarr")
env_state = zarr_data["state"][:]
agent_pos = env_state[:, :2]
action = zarr_data["action"][:]
image = zarr_data["img"] # (b, h, w, c)
if image.dtype == np.float32 and image.max() == np.float32(255):
# HACK: images are loaded as float32 but they actually encode uint8 data
image = image.astype(np.uint8)
episode_data_index = {
"from": np.concatenate(([0], zarr_data.meta["episode_ends"][:-1])),
"to": zarr_data.meta["episode_ends"],
}
# Calculate success and reward based on the overlapping area
# of the T-object and the T-area.
coverage, keypoints = calculate_coverage(zarr_data)
success = calculate_success(coverage, success_threshold=0.95)
reward = calculate_reward(coverage, success_threshold=0.95)
features = build_features(mode)
dataset = LeRobotDataset.create(
repo_id=repo_id,
fps=10,
robot_type="2d pointer",
features=features,
image_writer_threads=4,
)
episodes = range(len(episode_data_index["from"]))
for ep_idx in episodes:
from_idx = episode_data_index["from"][ep_idx]
to_idx = episode_data_index["to"][ep_idx]
num_frames = to_idx - from_idx
for frame_idx in range(num_frames):
i = from_idx + frame_idx
idx = i + (frame_idx < num_frames - 1)
frame = {
"action": action[i],
# Shift reward and success by +1 until the last item of the episode
"next.reward": reward[idx : idx + 1],
"next.success": success[idx : idx + 1],
"task": PUSHT_TASK,
}
frame["observation.state"] = agent_pos[i]
if mode == "keypoints":
frame["observation.environment_state"] = keypoints[i]
else:
frame["observation.image"] = image[i]
dataset.add_frame(frame)
dataset.save_episode()
if push_to_hub:
dataset.push_to_hub()
hub_api = HfApi()
hub_api.create_tag(repo_id, tag=CODEBASE_VERSION, repo_type="dataset")
if __name__ == "__main__":
# To try this script, modify the repo id with your own HuggingFace user (e.g cadene/pusht)
repo_id = "lerobot/pusht"
modes = ["video", "image", "keypoints"]
# Uncomment if you want to try with a specific mode
# modes = ["video"]
# modes = ["image"]
# modes = ["keypoints"]
raw_dir = Path("data/lerobot-raw/pusht_raw")
for mode in modes:
if mode in ["image", "keypoints"]:
repo_id += f"_{mode}"
# download and load raw dataset, create LeRobotDataset, populate it, push to hub
main(raw_dir, repo_id=repo_id, mode=mode)
# Uncomment if you want to load the local dataset and explore it
# dataset = LeRobotDataset(repo_id=repo_id)
# breakpoint()

View File

@@ -0,0 +1,4 @@
from .camera import Camera
from .configs import CameraConfig
__all__ = ["Camera", "CameraConfig"]

View File

@@ -0,0 +1,25 @@
import abc
import numpy as np
class Camera(abc.ABC):
@abc.abstractmethod
def connect(self):
pass
@abc.abstractmethod
def read(self, temporary_color_mode: str | None = None) -> np.ndarray:
pass
@abc.abstractmethod
def async_read(self) -> np.ndarray:
pass
@abc.abstractmethod
def disconnect(self):
pass
def __del__(self):
if getattr(self, "is_connected", False):
self.disconnect()

View File

@@ -0,0 +1,11 @@
import abc
from dataclasses import dataclass
import draccus
@dataclass
class CameraConfig(draccus.ChoiceRegistry, abc.ABC):
@property
def type(self) -> str:
return self.get_choice_name(self.__class__)

View File

@@ -0,0 +1,4 @@
from .camera_realsense import RealSenseCamera
from .configuration_realsense import RealSenseCameraConfig
__all__ = ["RealSenseCamera", "RealSenseCameraConfig"]

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
This file contains utilities for recording frames from Intel Realsense cameras.
"""
@@ -17,14 +31,15 @@ from threading import Thread
import numpy as np
from PIL import Image
from lerobot.common.robot_devices.cameras.configs import IntelRealSenseCameraConfig
from lerobot.common.robot_devices.utils import (
RobotDeviceAlreadyConnectedError,
RobotDeviceNotConnectedError,
from lerobot.common.errors import DeviceAlreadyConnectedError, DeviceNotConnectedError
from lerobot.common.utils.robot_utils import (
busy_wait,
)
from lerobot.common.utils.utils import capture_timestamp_utc
from ..camera import Camera
from .configuration_realsense import RealSenseCameraConfig
SERIAL_NUMBER_INDEX = 1
@@ -34,7 +49,7 @@ def find_cameras(raise_when_empty=True, mock=False) -> list[dict]:
connected to the computer.
"""
if mock:
import tests.mock_pyrealsense2 as rs
import tests.cameras.mock_pyrealsense2 as rs
else:
import pyrealsense2 as rs
@@ -86,7 +101,7 @@ def save_images_from_cameras(
serial_numbers = [cam["serial_number"] for cam in camera_infos]
if mock:
import tests.mock_cv2 as cv2
import tests.cameras.mock_cv2 as cv2
else:
import cv2
@@ -94,13 +109,11 @@ def save_images_from_cameras(
cameras = []
for cam_sn in serial_numbers:
print(f"{cam_sn=}")
config = IntelRealSenseCameraConfig(
serial_number=cam_sn, fps=fps, width=width, height=height, mock=mock
)
camera = IntelRealSenseCamera(config)
config = RealSenseCameraConfig(serial_number=cam_sn, fps=fps, width=width, height=height, mock=mock)
camera = RealSenseCamera(config)
camera.connect()
print(
f"IntelRealSenseCamera({camera.serial_number}, fps={camera.fps}, width={camera.width}, height={camera.height}, color_mode={camera.color_mode})"
f"RealSenseCamera({camera.serial_number}, fps={camera.fps}, width={camera.capture_width}, height={camera.capture_height}, color_mode={camera.color_mode})"
)
cameras.append(camera)
@@ -152,11 +165,11 @@ def save_images_from_cameras(
camera.disconnect()
class IntelRealSenseCamera:
class RealSenseCamera(Camera):
"""
The IntelRealSenseCamera class is similar to OpenCVCamera class but adds additional features for Intel Real Sense cameras:
The RealSenseCamera class is similar to OpenCVCamera class but adds additional features for Intel Real Sense cameras:
- is instantiated with the serial number of the camera - won't randomly change as it can be the case of OpenCVCamera for Linux,
- can also be instantiated with the camera's name — if it's unique using IntelRealSenseCamera.init_from_name(),
- can also be instantiated with the camera's name — if it's unique using RealSenseCamera.init_from_name(),
- depth map can be returned.
To find the camera indices of your cameras, you can run our utility script that will save a few frames for each camera:
@@ -164,15 +177,15 @@ class IntelRealSenseCamera:
python lerobot/common/robot_devices/cameras/intelrealsense.py --images-dir outputs/images_from_intelrealsense_cameras
```
When an IntelRealSenseCamera is instantiated, if no specific config is provided, the default fps, width, height and color_mode
When an RealSenseCamera is instantiated, if no specific config is provided, the default fps, width, height and color_mode
of the given camera will be used.
Example of instantiating with a serial number:
```python
from lerobot.common.robot_devices.cameras.configs import IntelRealSenseCameraConfig
from lerobot.common.robot_devices.cameras.configs import RealSenseCameraConfig
config = IntelRealSenseCameraConfig(serial_number=128422271347)
camera = IntelRealSenseCamera(config)
config = RealSenseCameraConfig(serial_number=128422271347)
camera = RealSenseCamera(config)
camera.connect()
color_image = camera.read()
# when done using the camera, consider disconnecting
@@ -181,21 +194,21 @@ class IntelRealSenseCamera:
Example of instantiating with a name if it's unique:
```
config = IntelRealSenseCameraConfig(name="Intel RealSense D405")
config = RealSenseCameraConfig(name="Intel RealSense D405")
```
Example of changing default fps, width, height and color_mode:
```python
config = IntelRealSenseCameraConfig(serial_number=128422271347, fps=30, width=1280, height=720)
config = IntelRealSenseCameraConfig(serial_number=128422271347, fps=90, width=640, height=480)
config = IntelRealSenseCameraConfig(serial_number=128422271347, fps=90, width=640, height=480, color_mode="bgr")
config = RealSenseCameraConfig(serial_number=128422271347, fps=30, width=1280, height=720)
config = RealSenseCameraConfig(serial_number=128422271347, fps=90, width=640, height=480)
config = RealSenseCameraConfig(serial_number=128422271347, fps=90, width=640, height=480, color_mode="bgr")
# Note: might error out upon `camera.connect()` if these settings are not compatible with the camera
```
Example of returning depth:
```python
config = IntelRealSenseCameraConfig(serial_number=128422271347, use_depth=True)
camera = IntelRealSenseCamera(config)
config = RealSenseCameraConfig(serial_number=128422271347, use_depth=True)
camera = RealSenseCamera(config)
camera.connect()
color_image, depth_map = camera.read()
```
@@ -203,16 +216,27 @@ class IntelRealSenseCamera:
def __init__(
self,
config: IntelRealSenseCameraConfig,
config: RealSenseCameraConfig,
):
self.config = config
if config.name is not None:
self.serial_number = self.find_serial_number_from_name(config.name)
else:
self.serial_number = config.serial_number
# Store the raw (capture) resolution from the config.
self.capture_width = config.width
self.capture_height = config.height
# If rotated by ±90, swap width and height.
if config.rotation in [-90, 90]:
self.width = config.height
self.height = config.width
else:
self.width = config.width
self.height = config.height
self.fps = config.fps
self.width = config.width
self.height = config.height
self.channels = config.channels
self.color_mode = config.color_mode
self.use_depth = config.use_depth
@@ -228,11 +252,10 @@ class IntelRealSenseCamera:
self.logs = {}
if self.mock:
import tests.mock_cv2 as cv2
import tests.cameras.mock_cv2 as cv2
else:
import cv2
# TODO(alibets): Do we keep original width/height or do we define them after rotation?
self.rotation = None
if config.rotation == -90:
self.rotation = cv2.ROTATE_90_COUNTERCLOCKWISE
@@ -258,27 +281,29 @@ class IntelRealSenseCamera:
def connect(self):
if self.is_connected:
raise RobotDeviceAlreadyConnectedError(
f"IntelRealSenseCamera({self.serial_number}) is already connected."
)
raise DeviceAlreadyConnectedError(f"RealSenseCamera({self.serial_number}) is already connected.")
if self.mock:
import tests.mock_pyrealsense2 as rs
import tests.cameras.mock_pyrealsense2 as rs
else:
import pyrealsense2 as rs
config = rs.config()
config.enable_device(str(self.serial_number))
if self.fps and self.width and self.height:
if self.fps and self.capture_width and self.capture_height:
# TODO(rcadene): can we set rgb8 directly?
config.enable_stream(rs.stream.color, self.width, self.height, rs.format.rgb8, self.fps)
config.enable_stream(
rs.stream.color, self.capture_width, self.capture_height, rs.format.rgb8, self.fps
)
else:
config.enable_stream(rs.stream.color)
if self.use_depth:
if self.fps and self.width and self.height:
config.enable_stream(rs.stream.depth, self.width, self.height, rs.format.z16, self.fps)
if self.fps and self.capture_width and self.capture_height:
config.enable_stream(
rs.stream.depth, self.capture_width, self.capture_height, rs.format.z16, self.fps
)
else:
config.enable_stream(rs.stream.depth)
@@ -302,7 +327,7 @@ class IntelRealSenseCamera:
"To find the serial number you should use, run `python lerobot/common/robot_devices/cameras/intelrealsense.py`."
)
raise OSError(f"Can't access IntelRealSenseCamera({self.serial_number}).")
raise OSError(f"Can't access RealSenseCamera({self.serial_number}).")
color_stream = profile.get_stream(rs.stream.color)
color_profile = color_stream.as_video_stream_profile()
@@ -314,20 +339,20 @@ class IntelRealSenseCamera:
if self.fps is not None and not math.isclose(self.fps, actual_fps, rel_tol=1e-3):
# Using `OSError` since it's a broad that encompasses issues related to device communication
raise OSError(
f"Can't set {self.fps=} for IntelRealSenseCamera({self.serial_number}). Actual value is {actual_fps}."
f"Can't set {self.fps=} for RealSenseCamera({self.serial_number}). Actual value is {actual_fps}."
)
if self.width is not None and self.width != actual_width:
if self.capture_width is not None and self.capture_width != actual_width:
raise OSError(
f"Can't set {self.width=} for IntelRealSenseCamera({self.serial_number}). Actual value is {actual_width}."
f"Can't set {self.capture_width=} for RealSenseCamera({self.serial_number}). Actual value is {actual_width}."
)
if self.height is not None and self.height != actual_height:
if self.capture_height is not None and self.capture_height != actual_height:
raise OSError(
f"Can't set {self.height=} for IntelRealSenseCamera({self.serial_number}). Actual value is {actual_height}."
f"Can't set {self.capture_height=} for RealSenseCamera({self.serial_number}). Actual value is {actual_height}."
)
self.fps = round(actual_fps)
self.width = round(actual_width)
self.height = round(actual_height)
self.capture_width = round(actual_width)
self.capture_height = round(actual_height)
self.is_connected = True
@@ -342,12 +367,12 @@ class IntelRealSenseCamera:
If you are reading data from other sensors, we advise to use `camera.async_read()` which is non blocking version of `camera.read()`.
"""
if not self.is_connected:
raise RobotDeviceNotConnectedError(
f"IntelRealSenseCamera({self.serial_number}) is not connected. Try running `camera.connect()` first."
raise DeviceNotConnectedError(
f"RealSenseCamera({self.serial_number}) is not connected. Try running `camera.connect()` first."
)
if self.mock:
import tests.mock_cv2 as cv2
import tests.cameras.mock_cv2 as cv2
else:
import cv2
@@ -358,7 +383,7 @@ class IntelRealSenseCamera:
color_frame = frame.get_color_frame()
if not color_frame:
raise OSError(f"Can't capture color image from IntelRealSenseCamera({self.serial_number}).")
raise OSError(f"Can't capture color image from RealSenseCamera({self.serial_number}).")
color_image = np.asanyarray(color_frame.get_data())
@@ -373,7 +398,7 @@ class IntelRealSenseCamera:
color_image = cv2.cvtColor(color_image, cv2.COLOR_RGB2BGR)
h, w, _ = color_image.shape
if h != self.height or w != self.width:
if h != self.capture_height or w != self.capture_width:
raise OSError(
f"Can't capture color image with expected height and width ({self.height} x {self.width}). ({h} x {w}) returned instead."
)
@@ -390,12 +415,12 @@ class IntelRealSenseCamera:
if self.use_depth:
depth_frame = frame.get_depth_frame()
if not depth_frame:
raise OSError(f"Can't capture depth image from IntelRealSenseCamera({self.serial_number}).")
raise OSError(f"Can't capture depth image from RealSenseCamera({self.serial_number}).")
depth_map = np.asanyarray(depth_frame.get_data())
h, w = depth_map.shape
if h != self.height or w != self.width:
if h != self.capture_height or w != self.capture_width:
raise OSError(
f"Can't capture depth map with expected height and width ({self.height} x {self.width}). ({h} x {w}) returned instead."
)
@@ -417,8 +442,8 @@ class IntelRealSenseCamera:
def async_read(self):
"""Access the latest color image"""
if not self.is_connected:
raise RobotDeviceNotConnectedError(
f"IntelRealSenseCamera({self.serial_number}) is not connected. Try running `camera.connect()` first."
raise DeviceNotConnectedError(
f"RealSenseCamera({self.serial_number}) is not connected. Try running `camera.connect()` first."
)
if self.thread is None:
@@ -444,8 +469,8 @@ class IntelRealSenseCamera:
def disconnect(self):
if not self.is_connected:
raise RobotDeviceNotConnectedError(
f"IntelRealSenseCamera({self.serial_number}) is not connected. Try running `camera.connect()` first."
raise DeviceNotConnectedError(
f"RealSenseCamera({self.serial_number}) is not connected. Try running `camera.connect()` first."
)
if self.thread is not None and self.thread.is_alive():
@@ -467,14 +492,14 @@ class IntelRealSenseCamera:
if __name__ == "__main__":
parser = argparse.ArgumentParser(
description="Save a few frames using `IntelRealSenseCamera` for all cameras connected to the computer, or a selected subset."
description="Save a few frames using `RealSenseCamera` for all cameras connected to the computer, or a selected subset."
)
parser.add_argument(
"--serial-numbers",
type=int,
nargs="*",
default=None,
help="List of serial numbers used to instantiate the `IntelRealSenseCamera`. If not provided, find and use all available camera indices.",
help="List of serial numbers used to instantiate the `RealSenseCamera`. If not provided, find and use all available camera indices.",
)
parser.add_argument(
"--fps",

View File

@@ -1,64 +1,35 @@
import abc
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from dataclasses import dataclass
import draccus
@dataclass
class CameraConfig(draccus.ChoiceRegistry, abc.ABC):
@property
def type(self) -> str:
return self.get_choice_name(self.__class__)
@CameraConfig.register_subclass("opencv")
@dataclass
class OpenCVCameraConfig(CameraConfig):
"""
Example of tested options for Intel Real Sense D405:
```python
OpenCVCameraConfig(0, 30, 640, 480)
OpenCVCameraConfig(0, 60, 640, 480)
OpenCVCameraConfig(0, 90, 640, 480)
OpenCVCameraConfig(0, 30, 1280, 720)
```
"""
camera_index: int
fps: int | None = None
width: int | None = None
height: int | None = None
color_mode: str = "rgb"
channels: int | None = None
rotation: int | None = None
mock: bool = False
def __post_init__(self):
if self.color_mode not in ["rgb", "bgr"]:
raise ValueError(
f"`color_mode` is expected to be 'rgb' or 'bgr', but {self.color_mode} is provided."
)
self.channels = 3
if self.rotation not in [-90, None, 90, 180]:
raise ValueError(f"`rotation` must be in [-90, None, 90, 180] (got {self.rotation})")
from ..configs import CameraConfig
@CameraConfig.register_subclass("intelrealsense")
@dataclass
class IntelRealSenseCameraConfig(CameraConfig):
class RealSenseCameraConfig(CameraConfig):
"""
Example of tested options for Intel Real Sense D405:
```python
IntelRealSenseCameraConfig(128422271347, 30, 640, 480)
IntelRealSenseCameraConfig(128422271347, 60, 640, 480)
IntelRealSenseCameraConfig(128422271347, 90, 640, 480)
IntelRealSenseCameraConfig(128422271347, 30, 1280, 720)
IntelRealSenseCameraConfig(128422271347, 30, 640, 480, use_depth=True)
IntelRealSenseCameraConfig(128422271347, 30, 640, 480, rotation=90)
RealSenseCameraConfig(128422271347, 30, 640, 480)
RealSenseCameraConfig(128422271347, 60, 640, 480)
RealSenseCameraConfig(128422271347, 90, 640, 480)
RealSenseCameraConfig(128422271347, 30, 1280, 720)
RealSenseCameraConfig(128422271347, 30, 640, 480, use_depth=True)
RealSenseCameraConfig(128422271347, 30, 640, 480, rotation=90)
```
"""

View File

@@ -0,0 +1,305 @@
# ruff: noqa: N802,N803
import abc
from typing import Optional, Tuple
import numpy as np
# --- Interface Definition ---
class IVideoCapture(abc.ABC):
"""Interface for the cv2.VideoCapture class."""
@abc.abstractmethod
def __init__(self, index: int | str, backend: Optional[int] = None):
pass
@abc.abstractmethod
def isOpened(self) -> bool:
pass
@abc.abstractmethod
def release(self) -> None:
pass
@abc.abstractmethod
def set(self, propId: int, value: float) -> bool:
pass
@abc.abstractmethod
def get(self, propId: int) -> float:
pass
@abc.abstractmethod
def read(self) -> Tuple[bool, Optional[np.ndarray]]:
pass
class IOpenCVSDK(abc.ABC):
"""Interface defining the contract for OpenCV SDK interactions."""
# --- Constants ---
CAP_PROP_FPS: int
CAP_PROP_FRAME_WIDTH: int
CAP_PROP_FRAME_HEIGHT: int
COLOR_BGR2RGB: int
ROTATE_90_COUNTERCLOCKWISE: int
ROTATE_90_CLOCKWISE: int
ROTATE_180: int
CAP_V4L2: int
CAP_DSHOW: int
CAP_AVFOUNDATION: int
CAP_ANY: int
# --- Inner Class Type Hint ---
VideoCapture: type[IVideoCapture]
# --- Methods ---
@abc.abstractmethod
def setNumThreads(self, nthreads: int) -> None:
pass
@abc.abstractmethod
def cvtColor(self, src: np.ndarray, code: int) -> np.ndarray:
pass
@abc.abstractmethod
def rotate(self, src: np.ndarray, rotateCode: int) -> np.ndarray:
pass
# --- Real SDK Adapter ---
class OpenCVSDKAdapter(IOpenCVSDK):
"""Adapts the real cv2 library to the IOpenCVSDK interface."""
_cv2 = None
def __init__(self):
try:
import cv2
OpenCVSDKAdapter._cv2 = cv2
except ImportError as e:
raise ImportError(
"OpenCV (cv2) is not installed. Please install it to use the real camera."
) from e
# --- Constants ---
self.CAP_PROP_FPS = self._cv2.CAP_PROP_FPS
self.CAP_PROP_FRAME_WIDTH = self._cv2.CAP_PROP_FRAME_WIDTH
self.CAP_PROP_FRAME_HEIGHT = self._cv2.CAP_PROP_FRAME_HEIGHT
self.COLOR_BGR2RGB = self._cv2.COLOR_BGR2RGB
self.ROTATE_90_COUNTERCLOCKWISE = self._cv2.ROTATE_90_COUNTERCLOCKWISE
self.ROTATE_90_CLOCKWISE = self._cv2.ROTATE_90_CLOCKWISE
self.ROTATE_180 = self._cv2.ROTATE_180
self.CAP_V4L2 = self._cv2.CAP_V4L2
self.CAP_DSHOW = self._cv2.CAP_DSHOW
self.CAP_AVFOUNDATION = self._cv2.CAP_AVFOUNDATION
self.CAP_ANY = self._cv2.CAP_ANY
# --- Inner Class Implementation ---
class RealVideoCapture(IVideoCapture):
def __init__(self, index: int | str, backend: Optional[int] = None):
self._cap = OpenCVSDKAdapter._cv2.VideoCapture(index, backend)
def isOpened(self) -> bool:
return self._cap.isOpened()
def release(self) -> None:
self._cap.release()
def set(self, propId: int, value: float) -> bool:
return self._cap.set(propId, value)
def get(self, propId: int) -> float:
return self._cap.get(propId)
def read(self) -> Tuple[bool, Optional[np.ndarray]]:
return self._cap.read()
def __del__(self):
if hasattr(self, "_cap") and self._cap and self._cap.isOpened():
self._cap.release()
self.VideoCapture = RealVideoCapture
# --- Methods ---
def setNumThreads(self, nthreads: int) -> None:
self._cv2.setNumThreads(nthreads)
def cvtColor(self, src: np.ndarray, code: int) -> np.ndarray:
return self._cv2.cvtColor(src, code)
def rotate(self, src: np.ndarray, rotateCode: int) -> np.ndarray:
return self._cv2.rotate(src, rotateCode)
# Emulates the cheap USB camera
VALID_INDICES = {0, 1, 2, "/dev/video0", "/dev/video1", "/dev/video2"}
DEFAULT_FPS = 30.0
DEFAULT_WIDTH = 1280
DEFAULT_HEIGHT = 720
# --- Fake SDK Adapter ---
class FakeOpenCVSDKAdapter(IOpenCVSDK):
"""Implements the IOpenCVSDK interface with fake behavior for testing."""
# --- Constants ---
CAP_PROP_FPS = DEFAULT_FPS
CAP_PROP_FRAME_WIDTH = DEFAULT_WIDTH
CAP_PROP_FRAME_HEIGHT = DEFAULT_HEIGHT
COLOR_BGR2RGB = 99
ROTATE_90_COUNTERCLOCKWISE = -90
ROTATE_90_CLOCKWISE = 90
ROTATE_180 = 180
CAP_V4L2 = 91
CAP_DSHOW = 92
CAP_AVFOUNDATION = 93
CAP_ANY = 90
_cameras_opened: dict[int | str, bool] = {}
_camera_properties: dict[tuple[int | str, int], float] = {}
_simulated_image: np.ndarray = np.random.randint(
0, 256, (DEFAULT_HEIGHT, DEFAULT_WIDTH, 3), dtype=np.uint8
)
_simulated_fps: float = DEFAULT_FPS
_image_read_count: int = 0
_fail_read_after: Optional[int] = None # Simulate read failure
@classmethod
def init_configure_fake(
cls,
simulated_image: Optional[np.ndarray] = None,
simulated_fps: Optional[float] = None,
fail_read_after: Optional[int] = None,
):
if simulated_image is not None:
cls._simulated_image = simulated_image
if simulated_fps is not None:
cls._simulated_fps = simulated_fps
cls._fail_read_after = fail_read_after
cls._image_read_count = 0
cls._cameras_opened = {}
cls._camera_properties = {}
@classmethod
def configure_fake_simulated_image(cls, simulated_image: Optional[np.ndarray] = None):
if simulated_image is not None:
cls._simulated_image = simulated_image
@classmethod
def configure_fail_read_after(cls, fail_read_after: Optional[int] = None):
cls._fail_read_after = fail_read_after
@classmethod
def configure_fake_simulated_fps(cls, simulated_fps: Optional[float] = None):
if simulated_fps is not None:
cls._simulated_fps = simulated_fps
# --- Inner Class Implementation ---
class FakeVideoCapture(IVideoCapture):
def __init__(self, index: int | str, backend: Optional[int] = None):
self.index = index
self.backend = backend
valid_indices = VALID_INDICES
if self.index in valid_indices:
FakeOpenCVSDKAdapter._cameras_opened[self.index] = True
print(f"[FAKE SDK] Opened camera {self.index}")
# Set some default fake properties
FakeOpenCVSDKAdapter._camera_properties[(self.index, FakeOpenCVSDKAdapter.CAP_PROP_FPS)] = (
DEFAULT_FPS
)
FakeOpenCVSDKAdapter._camera_properties[
(self.index, FakeOpenCVSDKAdapter.CAP_PROP_FRAME_WIDTH)
] = float(FakeOpenCVSDKAdapter._simulated_image.shape[1])
FakeOpenCVSDKAdapter._camera_properties[
(self.index, FakeOpenCVSDKAdapter.CAP_PROP_FRAME_HEIGHT)
] = float(FakeOpenCVSDKAdapter._simulated_image.shape[0])
else:
FakeOpenCVSDKAdapter._cameras_opened[self.index] = False
print(f"[FAKE SDK] Failed to open camera {self.index}")
def isOpened(self) -> bool:
return FakeOpenCVSDKAdapter._cameras_opened.get(self.index, False)
def release(self) -> None:
if self.index in FakeOpenCVSDKAdapter._cameras_opened:
FakeOpenCVSDKAdapter._cameras_opened[self.index] = False
print(f"[FAKE SDK] Released camera {self.index}")
# Clear properties on release
props_to_remove = [k for k in FakeOpenCVSDKAdapter._camera_properties if k[0] == self.index]
for k in props_to_remove:
del FakeOpenCVSDKAdapter._camera_properties[k]
def set(self, propId: int, value: float) -> bool:
if not self.isOpened():
return False
print(
f"[FAKE SDK] Ignoring set property {propId} = {value} for camera {self.index} to preserve state."
)
# FakeOpenCVSDKAdapter._camera_properties[(self.index, propId)] = value
# Simulate failure for specific unrealistic settings if needed
return True
def get(self, propId: int) -> float:
if not self.isOpened():
return 0.0 # Or raise error? Mimic cv2 behavior
val = FakeOpenCVSDKAdapter._camera_properties.get((self.index, propId))
print(f"[FAKE SDK] Get property {propId} for camera {self.index} -> {val}")
return val
def read(self) -> Tuple[bool, Optional[np.ndarray]]:
if not self.isOpened():
print(f"[FAKE SDK] Read failed: Camera {self.index} not open.")
return False, None
FakeOpenCVSDKAdapter._image_read_count += 1
if (
FakeOpenCVSDKAdapter._fail_read_after is not None
and FakeOpenCVSDKAdapter._image_read_count > FakeOpenCVSDKAdapter._fail_read_after
):
print(
f"[FAKE SDK] Simulated read failure for camera {self.index} after {FakeOpenCVSDKAdapter._fail_read_after} reads."
)
return False, None
print(
f"[FAKE SDK] Read image from camera {self.index} (read #{FakeOpenCVSDKAdapter._image_read_count})"
)
# Return a copy to prevent modification issues if the caller changes it
return True, FakeOpenCVSDKAdapter._simulated_image.copy()
def __del__(self):
# Ensure cleanup if garbage collected
self.release()
VideoCapture = FakeVideoCapture # Assign inner class
# --- Methods ---
def setNumThreads(self, nthreads: int) -> None:
print(f"[FAKE SDK] setNumThreads({nthreads}) called.")
# No actual behavior needed in fake
def cvtColor(self, src: np.ndarray, code: int) -> np.ndarray:
print(f"[FAKE SDK] cvtColor called with code {code}.")
# Just return the source image, or simulate channel swap if needed
if code == self.COLOR_BGR2RGB and src.shape[2] == 3:
print("[FAKE SDK] Simulating BGR -> RGB conversion.")
return src[..., ::-1]
return src.copy()
def rotate(self, src: np.ndarray, rotateCode: int) -> np.ndarray:
print(f"[FAKE SDK] rotate called with code {rotateCode}.")
if rotateCode == self.ROTATE_90_COUNTERCLOCKWISE:
print("[FAKE SDK] Simulating 90 degree counter-clockwise rotation.")
rotated_img = np.rot90(np.rot90(np.rot90(src.copy())))
return rotated_img
elif rotateCode == self.ROTATE_90_CLOCKWISE:
print("[FAKE SDK] Simulating 90 degree clockwise rotation.")
rotated_img = np.rot90(src.copy())
return rotated_img
elif rotateCode == self.ROTATE_180:
print("[FAKE SDK] Simulating 180 degree rotation.")
rotated_img = np.rot90(np.rot90(src.copy()))
return rotated_img
return src.copy()

View File

@@ -0,0 +1,4 @@
from .camera_opencv import OpenCVCamera
from .configuration_opencv import OpenCVCameraConfig
__all__ = ["OpenCVCamera", "OpenCVCameraConfig"]

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
This file contains utilities for recording frames from cameras. For more info look at `OpenCVCamera` docstring.
"""
@@ -10,19 +24,20 @@ import shutil
import threading
import time
from pathlib import Path
from threading import Thread
import numpy as np
from PIL import Image
from lerobot.common.robot_devices.cameras.configs import OpenCVCameraConfig
from lerobot.common.robot_devices.utils import (
RobotDeviceAlreadyConnectedError,
RobotDeviceNotConnectedError,
from lerobot.common.errors import DeviceAlreadyConnectedError, DeviceNotConnectedError
from lerobot.common.utils.robot_utils import (
busy_wait,
)
from lerobot.common.utils.utils import capture_timestamp_utc
from ..camera import Camera
from ..interface_camera_sdk import IOpenCVSDK, OpenCVSDKAdapter
from .configuration_opencv import OpenCVCameraConfig
# The maximum opencv device index depends on your operating system. For instance,
# if you have 3 cameras, they should be associated to index 0, 1, and 2. This is the case
# on MacOS. However, on Ubuntu, the indices are different like 6, 16, 23.
@@ -31,12 +46,17 @@ from lerobot.common.utils.utils import capture_timestamp_utc
MAX_OPENCV_INDEX = 60
def find_cameras(raise_when_empty=False, max_index_search_range=MAX_OPENCV_INDEX, mock=False) -> list[dict]:
def find_cameras(
raise_when_empty=False, max_index_search_range=MAX_OPENCV_INDEX, cv2_sdk: IOpenCVSDK = None
) -> list[dict]:
if cv2_sdk is None:
cv2_sdk = OpenCVSDKAdapter()
cameras = []
if platform.system() == "Linux":
print("Linux detected. Finding available camera indices through scanning '/dev/video*' ports")
possible_ports = [str(port) for port in Path("/dev").glob("video*")]
ports = _find_cameras(possible_ports, mock=mock)
ports = _find_cameras(possible_ports, cv2_sdk=cv2_sdk)
for port in ports:
cameras.append(
{
@@ -50,7 +70,7 @@ def find_cameras(raise_when_empty=False, max_index_search_range=MAX_OPENCV_INDEX
f"scanning all indices from 0 to {MAX_OPENCV_INDEX}"
)
possible_indices = range(max_index_search_range)
indices = _find_cameras(possible_indices, mock=mock)
indices = _find_cameras(possible_indices, cv2_sdk=cv2_sdk)
for index in indices:
cameras.append(
{
@@ -63,16 +83,14 @@ def find_cameras(raise_when_empty=False, max_index_search_range=MAX_OPENCV_INDEX
def _find_cameras(
possible_camera_ids: list[int | str], raise_when_empty=False, mock=False
possible_camera_ids: list[int | str], raise_when_empty=False, cv2_sdk: IOpenCVSDK = None
) -> list[int | str]:
if mock:
import tests.mock_cv2 as cv2
else:
import cv2
if cv2_sdk is None:
cv2_sdk = OpenCVSDKAdapter()
camera_ids = []
for camera_idx in possible_camera_ids:
camera = cv2.VideoCapture(camera_idx)
camera = cv2_sdk.VideoCapture(camera_idx)
is_open = camera.isOpened()
camera.release()
@@ -113,25 +131,28 @@ def save_images_from_cameras(
width=None,
height=None,
record_time_s=2,
mock=False,
cv2_sdk: IOpenCVSDK = None,
):
"""
Initializes all the cameras and saves images to the directory. Useful to visually identify the camera
associated to a given camera index.
"""
if cv2_sdk is None:
cv2_sdk = OpenCVSDKAdapter()
if camera_ids is None or len(camera_ids) == 0:
camera_infos = find_cameras(mock=mock)
camera_infos = find_cameras(cv2_sdk=cv2_sdk)
camera_ids = [cam["index"] for cam in camera_infos]
print("Connecting cameras")
cameras = []
for cam_idx in camera_ids:
config = OpenCVCameraConfig(camera_index=cam_idx, fps=fps, width=width, height=height, mock=mock)
camera = OpenCVCamera(config)
config = OpenCVCameraConfig(camera_index=cam_idx, fps=fps, width=width, height=height)
camera = OpenCVCamera(config, cv2_sdk=cv2_sdk)
camera.connect()
print(
f"OpenCVCamera({camera.camera_index}, fps={camera.fps}, width={camera.width}, "
f"height={camera.height}, color_mode={camera.color_mode})"
f"OpenCVCamera({camera.camera_index}, fps={camera.fps}, width={camera.capture_width}, "
f"height={camera.capture_height}, color_mode={camera.color_mode})"
)
cameras.append(camera)
@@ -176,7 +197,7 @@ def save_images_from_cameras(
print(f"Images have been saved to {images_dir}")
class OpenCVCamera:
class OpenCVCamera(Camera):
"""
The OpenCVCamera class allows to efficiently record images from cameras. It relies on opencv2 to communicate
with the cameras. Most cameras are compatible. For more info, see the [Video I/O with OpenCV Overview](https://docs.opencv.org/4.x/d0/da7/videoio_overview.html).
@@ -214,11 +235,16 @@ class OpenCVCamera:
```
"""
def __init__(self, config: OpenCVCameraConfig):
def __init__(self, config: OpenCVCameraConfig, cv2_sdk: IOpenCVSDK = None):
self.config = config
self.camera_index = config.camera_index
self.port = None
if cv2_sdk is None:
cv2_sdk = OpenCVSDKAdapter()
self.cv2_sdk = cv2_sdk
# Linux uses ports for connecting to cameras
if platform.system() == "Linux":
if isinstance(self.camera_index, int):
@@ -230,12 +256,21 @@ class OpenCVCamera:
else:
raise ValueError(f"Please check the provided camera_index: {self.camera_index}")
# Store the raw (capture) resolution from the config.
self.capture_width = config.width
self.capture_height = config.height
# If rotated by ±90, swap width and height.
if config.rotation in [-90, 90]:
self.width = config.height
self.height = config.width
else:
self.width = config.width
self.height = config.height
self.fps = config.fps
self.width = config.width
self.height = config.height
self.channels = config.channels
self.color_mode = config.color_mode
self.mock = config.mock
self.camera = None
self.is_connected = False
@@ -244,37 +279,38 @@ class OpenCVCamera:
self.color_image = None
self.logs = {}
if self.mock:
import tests.mock_cv2 as cv2
else:
import cv2
# TODO(aliberts): Do we keep original width/height or do we define them after rotation?
self.rotation = None
if config.rotation == -90:
self.rotation = cv2.ROTATE_90_COUNTERCLOCKWISE
self.rotation = cv2_sdk.ROTATE_90_COUNTERCLOCKWISE
elif config.rotation == 90:
self.rotation = cv2.ROTATE_90_CLOCKWISE
self.rotation = cv2_sdk.ROTATE_90_CLOCKWISE
elif config.rotation == 180:
self.rotation = cv2.ROTATE_180
self.rotation = cv2_sdk.ROTATE_180
def connect(self):
if self.is_connected:
raise RobotDeviceAlreadyConnectedError(f"OpenCVCamera({self.camera_index}) is already connected.")
raise DeviceAlreadyConnectedError(f"OpenCVCamera({self.camera_index}) is already connected.")
if self.mock:
import tests.mock_cv2 as cv2
else:
import cv2
cv2_sdk = self.cv2_sdk
# Use 1 thread to avoid blocking the main thread. Especially useful during data collection
# when other threads are used to save the images.
cv2.setNumThreads(1)
# Use 1 thread to avoid blocking the main thread. Especially useful during data collection
# when other threads are used to save the images.
cv2_sdk.setNumThreads(1)
backend = (
cv2_sdk.CAP_V4L2
if platform.system() == "Linux"
else cv2_sdk.CAP_DSHOW
if platform.system() == "Windows"
else cv2_sdk.CAP_AVFOUNDATION
if platform.system() == "Darwin"
else cv2_sdk.CAP_ANY
)
camera_idx = f"/dev/video{self.camera_index}" if platform.system() == "Linux" else self.camera_index
# First create a temporary camera trying to access `camera_index`,
# and verify it is a valid camera by calling `isOpened`.
tmp_camera = cv2.VideoCapture(camera_idx)
tmp_camera = cv2_sdk.VideoCapture(camera_idx, backend)
is_camera_open = tmp_camera.isOpened()
# Release camera to make it accessible for `find_camera_indices`
tmp_camera.release()
@@ -284,7 +320,7 @@ class OpenCVCamera:
# valid cameras.
if not is_camera_open:
# Verify that the provided `camera_index` is valid before printing the traceback
cameras_info = find_cameras()
cameras_info = find_cameras(cv2_sdk=cv2_sdk)
available_cam_ids = [cam["index"] for cam in cameras_info]
if self.camera_index not in available_cam_ids:
raise ValueError(
@@ -297,18 +333,18 @@ class OpenCVCamera:
# Secondly, create the camera that will be used downstream.
# Note: For some unknown reason, calling `isOpened` blocks the camera which then
# needs to be re-created.
self.camera = cv2.VideoCapture(camera_idx)
self.camera = cv2_sdk.VideoCapture(camera_idx, backend)
if self.fps is not None:
self.camera.set(cv2.CAP_PROP_FPS, self.fps)
if self.width is not None:
self.camera.set(cv2.CAP_PROP_FRAME_WIDTH, self.width)
if self.height is not None:
self.camera.set(cv2.CAP_PROP_FRAME_HEIGHT, self.height)
self.camera.set(cv2_sdk.CAP_PROP_FPS, self.fps)
if self.capture_width is not None:
self.camera.set(cv2_sdk.CAP_PROP_FRAME_WIDTH, self.capture_width)
if self.capture_height is not None:
self.camera.set(cv2_sdk.CAP_PROP_FRAME_HEIGHT, self.capture_height)
actual_fps = self.camera.get(cv2.CAP_PROP_FPS)
actual_width = self.camera.get(cv2.CAP_PROP_FRAME_WIDTH)
actual_height = self.camera.get(cv2.CAP_PROP_FRAME_HEIGHT)
actual_fps = self.camera.get(cv2_sdk.CAP_PROP_FPS)
actual_width = self.camera.get(cv2_sdk.CAP_PROP_FRAME_WIDTH)
actual_height = self.camera.get(cv2_sdk.CAP_PROP_FRAME_HEIGHT)
# Using `math.isclose` since actual fps can be a float (e.g. 29.9 instead of 30)
if self.fps is not None and not math.isclose(self.fps, actual_fps, rel_tol=1e-3):
@@ -316,19 +352,22 @@ class OpenCVCamera:
raise OSError(
f"Can't set {self.fps=} for OpenCVCamera({self.camera_index}). Actual value is {actual_fps}."
)
if self.width is not None and not math.isclose(self.width, actual_width, rel_tol=1e-3):
if self.capture_width is not None and not math.isclose(
self.capture_width, actual_width, rel_tol=1e-3
):
raise OSError(
f"Can't set {self.width=} for OpenCVCamera({self.camera_index}). Actual value is {actual_width}."
f"Can't set {self.capture_width=} for OpenCVCamera({self.camera_index}). Actual value is {actual_width}."
)
if self.height is not None and not math.isclose(self.height, actual_height, rel_tol=1e-3):
if self.capture_height is not None and not math.isclose(
self.capture_height, actual_height, rel_tol=1e-3
):
raise OSError(
f"Can't set {self.height=} for OpenCVCamera({self.camera_index}). Actual value is {actual_height}."
f"Can't set {self.capture_height=} for OpenCVCamera({self.camera_index}). Actual value is {actual_height}."
)
self.fps = round(actual_fps)
self.width = round(actual_width)
self.height = round(actual_height)
self.capture_width = round(actual_width)
self.capture_height = round(actual_height)
self.is_connected = True
def read(self, temporary_color_mode: str | None = None) -> np.ndarray:
@@ -339,10 +378,12 @@ class OpenCVCamera:
If you are reading data from other sensors, we advise to use `camera.async_read()` which is non blocking version of `camera.read()`.
"""
if not self.is_connected:
raise RobotDeviceNotConnectedError(
raise DeviceNotConnectedError(
f"OpenCVCamera({self.camera_index}) is not connected. Try running `camera.connect()` first."
)
cv2_sdk = self.cv2_sdk
start_time = time.perf_counter()
ret, color_image = self.camera.read()
@@ -361,21 +402,16 @@ class OpenCVCamera:
# However, Deep Learning framework such as LeRobot uses RGB format as default to train neural networks,
# so we convert the image color from BGR to RGB.
if requested_color_mode == "rgb":
if self.mock:
import tests.mock_cv2 as cv2
else:
import cv2
color_image = cv2.cvtColor(color_image, cv2.COLOR_BGR2RGB)
color_image = cv2_sdk.cvtColor(color_image, cv2_sdk.COLOR_BGR2RGB)
h, w, _ = color_image.shape
if h != self.height or w != self.width:
if h != self.capture_height or w != self.capture_width:
raise OSError(
f"Can't capture color image with expected height and width ({self.height} x {self.width}). ({h} x {w}) returned instead."
)
if self.rotation is not None:
color_image = cv2.rotate(color_image, self.rotation)
color_image = cv2_sdk.rotate(color_image, self.rotation)
# log the number of seconds it took to read the image
self.logs["delta_timestamp_s"] = time.perf_counter() - start_time
@@ -396,13 +432,13 @@ class OpenCVCamera:
def async_read(self):
if not self.is_connected:
raise RobotDeviceNotConnectedError(
raise DeviceNotConnectedError(
f"OpenCVCamera({self.camera_index}) is not connected. Try running `camera.connect()` first."
)
if self.thread is None:
self.stop_event = threading.Event()
self.thread = Thread(target=self.read_loop, args=())
self.thread = threading.Thread(target=self.read_loop, args=())
self.thread.daemon = True
self.thread.start()
@@ -418,7 +454,7 @@ class OpenCVCamera:
def disconnect(self):
if not self.is_connected:
raise RobotDeviceNotConnectedError(
raise DeviceNotConnectedError(
f"OpenCVCamera({self.camera_index}) is not connected. Try running `camera.connect()` first."
)

View File

@@ -0,0 +1,37 @@
from dataclasses import dataclass
from ..configs import CameraConfig
@CameraConfig.register_subclass("opencv")
@dataclass
class OpenCVCameraConfig(CameraConfig):
"""
Example of tested options for Intel Real Sense D405:
```python
OpenCVCameraConfig(0, 30, 640, 480)
OpenCVCameraConfig(0, 60, 640, 480)
OpenCVCameraConfig(0, 90, 640, 480)
OpenCVCameraConfig(0, 30, 1280, 720)
```
"""
camera_index: int
fps: int | None = None
width: int | None = None
height: int | None = None
color_mode: str = "rgb"
channels: int | None = None
rotation: int | None = None
def __post_init__(self):
if self.color_mode not in ["rgb", "bgr"]:
raise ValueError(
f"`color_mode` is expected to be 'rgb' or 'bgr', but {self.color_mode} is provided."
)
self.channels = 3
if self.rotation not in [-90, None, 90, 180]:
raise ValueError(f"`rotation` must be in [-90, None, 90, 180] (got {self.rotation})")

View File

@@ -0,0 +1,21 @@
from .camera import Camera
from .configs import CameraConfig
def make_cameras_from_configs(camera_configs: dict[str, CameraConfig]) -> dict[str, Camera]:
cameras = {}
for key, cfg in camera_configs.items():
if cfg.type == "opencv":
from .opencv import OpenCVCamera
cameras[key] = OpenCVCamera(cfg)
elif cfg.type == "intelrealsense":
from .intel.camera_realsense import RealSenseCamera
cameras[key] = RealSenseCamera(cfg)
else:
raise ValueError(f"The motor type '{cfg.type}' is not valid.")
return cameras

View File

@@ -1,15 +1,31 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# keys
import os
from pathlib import Path
from huggingface_hub.constants import HF_HOME
OBS_ENV = "observation.environment_state"
OBS_ROBOT = "observation.state"
OBS_ENV_STATE = "observation.environment_state"
OBS_STATE = "observation.state"
OBS_IMAGE = "observation.image"
OBS_IMAGES = "observation.images"
ACTION = "action"
ROBOTS = "robots"
TELEOPERATORS = "teleoperators"
# files & directories
CHECKPOINTS_DIR = "checkpoints"
LAST_CHECKPOINT_LINK = "last"
@@ -21,12 +37,16 @@ OPTIMIZER_STATE = "optimizer_state.safetensors"
OPTIMIZER_PARAM_GROUPS = "optimizer_param_groups.json"
SCHEDULER_STATE = "scheduler_state.json"
# cache dir
default_cache_path = Path(HF_HOME) / "lerobot"
HF_LEROBOT_HOME = Path(os.getenv("HF_LEROBOT_HOME", default_cache_path)).expanduser()
if "LEROBOT_HOME" in os.environ:
raise ValueError(
f"You have a 'LEROBOT_HOME' environment variable set to '{os.getenv('LEROBOT_HOME')}'.\n"
"'LEROBOT_HOME' is deprecated, please use 'HF_LEROBOT_HOME' instead."
)
# cache dir
default_cache_path = Path(HF_HOME) / "lerobot"
HF_LEROBOT_HOME = Path(os.getenv("HF_LEROBOT_HOME", default_cache_path)).expanduser()
# calibration dir
default_calibration_path = HF_LEROBOT_HOME / ".calibration"
HF_LEROBOT_CALIBRATION = Path(os.getenv("HF_LEROBOT_CALIBRATION", default_calibration_path)).expanduser()

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import packaging.version
V2_MESSAGE = """

View File

@@ -67,11 +67,12 @@ from lerobot.common.datasets.utils import (
)
from lerobot.common.datasets.video_utils import (
VideoFrame,
decode_video_frames_torchvision,
decode_video_frames,
encode_video_frames,
get_safe_default_codec,
get_video_info,
)
from lerobot.common.robot_devices.robots.utils import Robot
from lerobot.common.robots.utils import Robot
CODEBASE_VERSION = "v2.1"
@@ -462,8 +463,8 @@ class LeRobotDataset(torch.utils.data.Dataset):
download_videos (bool, optional): Flag to download the videos. Note that when set to True but the
video files are already present on local disk, they won't be downloaded again. Defaults to
True.
video_backend (str | None, optional): Video backend to use for decoding videos. There is currently
a single option which is the pyav decoder used by Torchvision. Defaults to pyav.
video_backend (str | None, optional): Video backend to use for decoding videos. Defaults to torchcodec when available int the platform; otherwise, defaults to 'pyav'.
You can also use the 'pyav' decoder used by Torchvision, which used to be the default option, or 'video_reader' which is another decoder of Torchvision.
"""
super().__init__()
self.repo_id = repo_id
@@ -473,7 +474,7 @@ class LeRobotDataset(torch.utils.data.Dataset):
self.episodes = episodes
self.tolerance_s = tolerance_s
self.revision = revision if revision else CODEBASE_VERSION
self.video_backend = video_backend if video_backend else "pyav"
self.video_backend = video_backend if video_backend else get_safe_default_codec()
self.delta_indices = None
# Unused attributes
@@ -707,9 +708,7 @@ class LeRobotDataset(torch.utils.data.Dataset):
item = {}
for vid_key, query_ts in query_timestamps.items():
video_path = self.root / self.meta.get_video_file_path(ep_idx, vid_key)
frames = decode_video_frames_torchvision(
video_path, query_ts, self.tolerance_s, self.video_backend
)
frames = decode_video_frames(video_path, query_ts, self.tolerance_s, self.video_backend)
item[vid_key] = frames.squeeze(0)
return item
@@ -1029,7 +1028,7 @@ class LeRobotDataset(torch.utils.data.Dataset):
obj.delta_timestamps = None
obj.delta_indices = None
obj.episode_data_index = None
obj.video_backend = video_backend if video_backend is not None else "pyav"
obj.video_backend = video_backend if video_backend is not None else get_safe_default_codec()
return obj
@@ -1054,7 +1053,7 @@ class MultiLeRobotDataset(torch.utils.data.Dataset):
super().__init__()
self.repo_ids = repo_ids
self.root = Path(root) if root else HF_LEROBOT_HOME
self.tolerances_s = tolerances_s if tolerances_s else {repo_id: 1e-4 for repo_id in repo_ids}
self.tolerances_s = tolerances_s if tolerances_s else dict.fromkeys(repo_ids, 0.0001)
# Construct the underlying datasets passing everything but `transform` and `delta_timestamps` which
# are handled by this class.
self._datasets = [

View File

@@ -1,85 +0,0 @@
https://drive.google.com/file/d/1_SOJkgfP5yZyVjMhTt3nwhvyUjcnlI51/view?usp=drive_link
https://drive.google.com/file/d/1rmgN8UUzph1qwJnzG1d-uOafodn-gLvb/view?usp=drive_link
https://drive.google.com/file/d/1NYQ-XxsBVinB6dUoZmVWweT83367P3i2/view?usp=drive_link
https://drive.google.com/file/d/1oAv_j74zxxCJieMG7r5Vl2BeHK1__3s3/view?usp=drive_link
https://drive.google.com/file/d/1wFUJQROsrTJt64YRuIeExhFjr2wnK5uu/view?usp=drive_link
https://drive.google.com/file/d/1KzL3Tt0Le7jVl58XVRUcmigmXjyiuhbK/view?usp=drive_link
https://drive.google.com/file/d/1qy_YBladeHtianSSGtgAPSHtMin7msvf/view?usp=drive_link
https://drive.google.com/file/d/1rA_F0V_qL_nyuC_0aBKCisF4-0TIkF2Y/view?usp=drive_link
https://drive.google.com/file/d/1hw-8qMpz9VgSt62XoASqNRuPECpCwJQP/view?usp=drive_link
https://drive.google.com/file/d/1BpHOl9rKMzdvNGka6js7C0s40hH6vnDA/view?usp=drive_link
https://drive.google.com/file/d/1PazhkhiDnJ-OUMyDVDFxEZNKQQqHiNWS/view?usp=drive_link
https://drive.google.com/file/d/1lZ665R6ATl57dypxH4dGJ2NSt6XYnbuz/view?usp=drive_link
https://drive.google.com/file/d/1V9HzLaf-tlG15wUzT7KrTDCS_z1vi5NV/view?usp=drive_link
https://drive.google.com/file/d/1aKauWiXoKqbNwn_2xs4MrmLlaNYlVNmO/view?usp=drive_link
https://drive.google.com/file/d/1WVD5DFhriO1YmmOgiVHhacR6HWoTPxav/view?usp=drive_link
https://drive.google.com/file/d/1_X43WgeBAsfkhH9EmpyPki8U9joMeAGC/view?usp=drive_link
https://drive.google.com/file/d/1t8x0GqWoNKWtnBsB7_D40Z34nL9ak4kf/view?usp=drive_link
https://drive.google.com/file/d/15V_f26WaKOXjKnq2T3HRWAmtQUi4lbu2/view?usp=drive_link
https://drive.google.com/file/d/11VFIAsiSDsMOBANgrOcZBpKB9AFWnLy7/view?usp=drive_link
https://drive.google.com/file/d/1M0NS7vVaxJv3FHnuRYtdwTFYF7We4LxP/view?usp=drive_link
https://drive.google.com/file/d/1mR0OItTNqFnVLoczcyKYlm6drAy778lO/view?usp=drive_link
https://drive.google.com/file/d/1NbVFWDQAh-z4JJ4D-Zw6Lps9kdvpqh2j/view?usp=drive_link
https://drive.google.com/file/d/1JQoZGBzl4W3QG26-n39tefcGN0fDRMbB/view?usp=drive_link
https://drive.google.com/file/d/1VBjHl-TvZpncopvasIP5G9gecbB2a5f6/view?usp=drive_link
https://drive.google.com/file/d/1VzSf6zaB21nahm7MsPwroXbJ84NIwq0b/view?usp=drive_link
https://drive.google.com/file/d/1OtNnfMEydNtZOcivs4k6E_uJSpf8PkGy/view?usp=drive_link
https://drive.google.com/file/d/14nVvpvsrFr_03Pa_N7MKzwnRwibOUYM6/view?usp=drive_link
https://drive.google.com/file/d/1M8li6duiO2r3lv_9HhF_XJn0oZUIEK5F/view?usp=drive_link
https://drive.google.com/file/d/1Cpzea6fO14lxAaNfSBifqoa4ekhCiLD1/view?usp=drive_link
https://drive.google.com/file/d/1mbxRTm5vlbsY9UJ0jfjM6j9D7kPJjBpG/view?usp=drive_link
https://drive.google.com/file/d/1RXD1i6IfWsHRlCxVmG04h2h5Ycm_WwZN/view?usp=drive_link
https://drive.google.com/file/d/1QFqFSwDGOk1BkgGmqgCcc2BRWnJ6R3MA/view?usp=drive_link
https://drive.google.com/file/d/1bFqWR8DQM0ZUxxtS2bl-RANQvukeFLzp/view?usp=drive_link
https://drive.google.com/file/d/1pR-rH3yNGoyPdD4hJ6-3lXQ-PstBx9du/view?usp=drive_link
https://drive.google.com/file/d/107OAwLY-hva9HeQLIK7VCh-ytdDabVjr/view?usp=drive_link
https://drive.google.com/file/d/1Tpl08QOaSZ37GTO4awFWSdD8wBR9xdlT/view?usp=drive_link
https://drive.google.com/file/d/1MR164AOM-0S1T6RX8xKTV2IHyaCvpqAW/view?usp=drive_link
https://drive.google.com/file/d/1_wknJfVnStIhJ82lU_QtcrwahsqYIsr8/view?usp=drive_link
https://drive.google.com/file/d/1ZuEktWrbYkTx0l5pj3WiZ2CJrfbDOHNo/view?usp=drive_link
https://drive.google.com/file/d/15G_10hkkkq6yxvyI5NGZirlF-RzduR2F/view?usp=drive_link
https://drive.google.com/file/d/1DBKxg3ONqh7dhLuX6oh1Yyo2x383V1Hp/view?usp=drive_link
https://drive.google.com/file/d/1B5iDBkTUr5vopDddV_fHud18SqAHhauS/view?usp=drive_link
https://drive.google.com/file/d/1acwFV0eenRkki1QcjSKH5xqOtys-P3Pr/view?usp=drive_link
https://drive.google.com/file/d/1S47BI83xyrh-FKXsvAQqer98Biu_p8XK/view?usp=drive_link
https://drive.google.com/file/d/1JL6DmBZl3uyq9dyLfgSqtGF06e7E9JwM/view?usp=drive_link
https://drive.google.com/file/d/16WvRS4Kjog8Pxgr0E3sGGnI01YwL9Uql/view?usp=drive_link
https://drive.google.com/file/d/12ttGqL33IPWg0-s1SD44rr22M6LiSQBr/view?usp=drive_link
https://drive.google.com/file/d/1OyZqqnldTU_DliRbr6x0C4a_iWPwIN7j/view?usp=drive_link
https://drive.google.com/file/d/1oYk00IpLnR9fesLfD15Ebe7nVBffEbcS/view?usp=drive_link
https://drive.google.com/file/d/1eyE2-MQduCEqCd-5_kl5zsoOEERAzpZD/view?usp=drive_link
https://drive.google.com/file/d/1ir1Ya-vO0d97pfvbePlUeuKTTRc0qIMU/view?usp=drive_link
https://drive.google.com/file/d/1hOi-JnqlMt47gVnLZHMTqeojyYVErohl/view?usp=drive_link
https://drive.google.com/file/d/1NFFw5_PqigQ7xGqsL-MNq2B1r5yAscCf/view?usp=drive_link
https://drive.google.com/file/d/1uftq1-Zlh8d2sNLWrlVcKYQUwZTD7o24/view?usp=drive_link
https://drive.google.com/file/d/1-ax19dSLPacVgk000T-m3l4flPcg07pM/view?usp=drive_link
https://drive.google.com/file/d/126y-lgn86-ZmCz8hooF1THKJGGObw3OB/view?usp=drive_link
https://drive.google.com/file/d/1JiDniK0VmDIkk92AbBILb8J2Ba59PWML/view?usp=drive_link
https://drive.google.com/file/d/1kr8nPIRljiU0R4J9SMgj80o1FPQxzu9z/view?usp=drive_link
https://drive.google.com/file/d/1bbThWRij1pKBh_kFgV8FwK0sXtTHBoLX/view?usp=drive_link
https://drive.google.com/file/d/1WenzDW6lxk1xkOFm-OiGFfc0ROskAuKU/view?usp=drive_link
https://drive.google.com/file/d/1MiKRzuzUn1yN-k_6kPJJzIGy7dT-nnsD/view?usp=drive_link
https://drive.google.com/file/d/17rRg2tcmB-gNhQ0KoZJQmNfyFeoij1jH/view?usp=drive_link
https://drive.google.com/file/d/11mokBpvrY3ld6sY5WztREtJ1jgqfQV70/view?usp=drive_link
https://drive.google.com/file/d/1Il_6IOx9NDp1bX_KHizJfBwzTufTmn86/view?usp=drive_link
https://drive.google.com/file/d/1KswtJGsxJ7eeBDAmNA_aeLjOxcH6MIxa/view?usp=drive_link
https://drive.google.com/file/d/1gzMhi5uWu4C3Y6WbQ3L-08V96GxTZrRR/view?usp=drive_link
https://drive.google.com/file/d/1nRQFtaBxfUCYc2W90Qibh0kHCt6YQCfc/view?usp=drive_link
https://drive.google.com/file/d/1vs-gyW-KheqHbUATwAhA2mmR9GOGw7f_/view?usp=drive_link
https://drive.google.com/file/d/1MuxzGOA2fgLaHryq82KkQumtuRJGcUOC/view?usp=drive_link
https://drive.google.com/file/d/1IIwxZnGlqrXLUXqG6yMO0r7uhCvhpk9e/view?usp=drive_link
https://drive.google.com/file/d/1vE7XPyaFcXP4DtTY5Y9WKIt7zWgmX-Cr/view?usp=drive_link
https://drive.google.com/file/d/1j-bIV09gr21RC3-x1N_pK4RPLV3fmWKz/view?usp=drive_link
https://drive.google.com/file/d/1t3nW1rD3S-EL0Oymb5U7ZAj5UMkydkln/view?usp=drive_link
https://drive.google.com/file/d/14hbfHCdMKtJZ41F9CQReMec2jeRFTOqR/view?usp=drive_link
https://drive.google.com/file/d/1x-hUyOSne5BW0AzQ3W6_Pf4g5yXQWi9M/view?usp=drive_link
https://drive.google.com/file/d/1sw9JqRg6E-3P84I3ZhzTrJMu0vuiaMmP/view?usp=drive_link
https://drive.google.com/file/d/1LuqhQlL4MGZhB_6THmkovRxrlP26BbdC/view?usp=drive_link
https://drive.google.com/file/d/15C5K6v_lkjnMSmUvVyqHQKwh2N166e7K/view?usp=drive_link
https://drive.google.com/file/d/1ns_9eSsQeeoZ10nlbkLy8tu0GmJFSnkt/view?usp=drive_link
https://drive.google.com/file/d/1NpzWJeK6CqjxzjIMYe6aYdX8xGsQwD4o/view?usp=drive_link
https://drive.google.com/file/d/1NMLezwufKJ9_8xTc9KQThSzVVD71B9Ui/view?usp=drive_link
https://drive.google.com/file/d/1aa71DCUqs6oXlIxX35jgsmsgm-NlDxPV/view?usp=drive_link
https://drive.google.com/file/d/1UJzkIZzAL0j-D5YQBnoq7mHvttASy12O/view?usp=drive_link
https://drive.google.com/file/d/1nPgx36HIJFb7oI94VbRzWjpPP2GANxzG/view?usp=drive_link
https://drive.google.com/file/d/1NovAP-KVJjqcuvWy3d6G4ptGGAIDqcCx/view?usp=drive_link

View File

@@ -1,55 +0,0 @@
https://drive.google.com/file/d/11M3Ye0r5agMaaicPbVGD0q2Hb3rGklbb/view?usp=drive_link
https://drive.google.com/file/d/1-tx7SvYYgSvXCvnf_EI2OVdwK-CkFY6S/view?usp=drive_link
https://drive.google.com/file/d/1EWJunmOpMHaU1hE106wwpbkGYcjQXYAF/view?usp=drive_link
https://drive.google.com/file/d/1IDn95Z7FSiCckrSENtGV4u3RyFHNQSDY/view?usp=drive_link
https://drive.google.com/file/d/1CwzvWj1i7QOtqrZvsCZ6BdZaKNDfpN32/view?usp=drive_link
https://drive.google.com/file/d/1HvAvlhm77nAD3Td24QPSeq8lw-Rl_aOh/view?usp=drive_link
https://drive.google.com/file/d/1t-suKYOPhXH666RpAYNRp2QU_DOy3AeM/view?usp=drive_link
https://drive.google.com/file/d/18xpKgWh7RWyjMN5PkLTOo-AxsAadAuRw/view?usp=drive_link
https://drive.google.com/file/d/1oci5Eto-ztv-AQNz8EnwZveBIhxvk-xJ/view?usp=drive_link
https://drive.google.com/file/d/1Y-t_4vxdE6NpHO0DLJR8f3mD0Q-Wj5-c/view?usp=drive_link
https://drive.google.com/file/d/1lylRqbbbB8bgtpsBWMPACmHJreuKmllv/view?usp=drive_link
https://drive.google.com/file/d/1yliSyMig_NXShWfQx6qyW7Ijf2Y5lFK6/view?usp=drive_link
https://drive.google.com/file/d/1XXhwJsJbeb7KXAooGvJapnm9bjnGUmxS/view?usp=drive_link
https://drive.google.com/file/d/1_xs1f3hW2JArKyvfF7UWubWjyROGTLs6/view?usp=drive_link
https://drive.google.com/file/d/1WVEHpr6EqKCZbkHapQSTXJq4xE4SWFT-/view?usp=drive_link
https://drive.google.com/file/d/1RqOHv9pEQGvW8NUA7ynffFmG999TL_Az/view?usp=drive_link
https://drive.google.com/file/d/1cu5AgD2gh-uA3PFJmzxxzNaF3qOSlYY1/view?usp=drive_link
https://drive.google.com/file/d/1SsrXqiPclNrnYToPZ9Uq-k3y0C4qdHT1/view?usp=drive_link
https://drive.google.com/file/d/1-J7EXf0vjkLIfSqT8ICEsP6CTjzSLBop/view?usp=drive_link
https://drive.google.com/file/d/11O7ewUmoZXfyyKjy_6B5RW4DpjICxqBT/view?usp=drive_link
https://drive.google.com/file/d/1iic44kZoCsjNsfAz2cMstZ9-WQvAhblF/view?usp=drive_link
https://drive.google.com/file/d/1yLV1lVX-2WnWQldGlnQZ0x7QBuDiVkL3/view?usp=drive_link
https://drive.google.com/file/d/1Tybp9ru98TTbGn4eyROpUQwDFuALWXmk/view?usp=drive_link
https://drive.google.com/file/d/13E9OTMiipVJByDs5-J19oWwAz7l94LTN/view?usp=drive_link
https://drive.google.com/file/d/1EeTpJQdMSliw4JzSMtJ6CyTvVdexjM4M/view?usp=drive_link
https://drive.google.com/file/d/1NHyNwoFqzeAu-1_PSpq5JfxaiD_xbpn9/view?usp=drive_link
https://drive.google.com/file/d/1fJcS0phDp4xm_FyGaJ5wr9Pe4KqtHaxD/view?usp=drive_link
https://drive.google.com/file/d/12AqrLUaewDPEcFRqPZeZFb_TQ0Lfi3At/view?usp=drive_link
https://drive.google.com/file/d/1x_hd4Qsq1oJS-aj2t3qM7WbbV7KZj05b/view?usp=drive_link
https://drive.google.com/file/d/14OUSUArmsB068hs6BuEIXQhI1Cyz8Sf0/view?usp=drive_link
https://drive.google.com/file/d/16zlzh1T5zeUJQnFf382NXkFEKEnDub4O/view?usp=drive_link
https://drive.google.com/file/d/1IbDltmN-NEFCNtr1TO4ILxEgQ94rtjWv/view?usp=drive_link
https://drive.google.com/file/d/15gmlf8Gx9455pZ1AlqcCSwh3nDPxMzSr/view?usp=drive_link
https://drive.google.com/file/d/1qHpRL1oZfIMo_vxnm8qfwQ-7l0BZIVva/view?usp=drive_link
https://drive.google.com/file/d/1H1xskIgiFZivkYn23rMzH3xePGOh3VTC/view?usp=drive_link
https://drive.google.com/file/d/1avls6Pv0kYiCMNVknbc1zQsgy64MUDMM/view?usp=drive_link
https://drive.google.com/file/d/1MmWVgCj5khc8KMIifmt3EzF1o-CtPyyn/view?usp=drive_link
https://drive.google.com/file/d/1U0kCc_xqW0WNppf4sbnK14euWKdPZtzB/view?usp=drive_link
https://drive.google.com/file/d/16CaEyQscOuhLj23PEGDTL9DeyNkohkMn/view?usp=drive_link
https://drive.google.com/file/d/1Iu8uM6UUJ0zW8tvN-9UiOe_4oSNzEutg/view?usp=drive_link
https://drive.google.com/file/d/1UImqiBaIxCR-1DNJaZhHqeHhaySOtVIr/view?usp=drive_link
https://drive.google.com/file/d/1VpU2V_leIoRIyv_lAvE7eLHBG8DxCTnp/view?usp=drive_link
https://drive.google.com/file/d/1_Q8J27OT3Xby7QY6yHvIJauFRWEMxkRm/view?usp=drive_link
https://drive.google.com/file/d/1bantmVo1L9Xz4tbiNw_a1UC2Z_HPO1wT/view?usp=drive_link
https://drive.google.com/file/d/1IRIXMJMCBDkBjbaHvAlEiBogSvZ1jK_3/view?usp=drive_link
https://drive.google.com/file/d/1mAHXKjiFbjwydypW2t5Lv8_H5x6nHegl/view?usp=drive_link
https://drive.google.com/file/d/1SfyY796fLrBCMY39OcyuxZafqSCRZPZk/view?usp=drive_link
https://drive.google.com/file/d/1X-44sZ8CcfzIskc0dvSx882o1yFhHaZB/view?usp=drive_link
https://drive.google.com/file/d/1BOIWCCCk6DLD4Bmvc75ZbbLi9AQm-1ao/view?usp=drive_link
https://drive.google.com/file/d/1RuyDtRE1kk76sw-wP8vx5SgLoPF3PA_H/view?usp=drive_link
https://drive.google.com/file/d/1c4eoQiBbGuy3CTAQDUSkd84Ponh1roAQ/view?usp=drive_link
https://drive.google.com/file/d/19PXB9z4Ljq6dsbf9TqcOrrP5SRbw2Tc_/view?usp=drive_link
https://drive.google.com/file/d/1nn1VVZVoIXWdYDozR7XHXE4mPLQG80PQ/view?usp=drive_link
https://drive.google.com/file/d/1MBdFGOKPV8GUhwoSsJ_Ky3qAMLM2Bv3K/view?usp=drive_link
https://drive.google.com/file/d/1of3k_M-7Nh3I1TndcWedxK4ca9dn8Sc5/view?usp=drive_link

View File

@@ -1,20 +0,0 @@
https://drive.google.com/file/d/12ctkOAdkCNGN1JLbZb5ww3XTBn2LFpGI/view?usp=drive_link
https://drive.google.com/file/d/1G_Vd46_4fq6O64gHHjUbJX5Ld44ZZx0y/view?usp=drive_link
https://drive.google.com/file/d/1uKgUy73B3xBogQAOUhfZjO0X5qZGsi2c/view?usp=drive_link
https://drive.google.com/file/d/1fu9cIrfI-fE2LhdGUxbx7-8Ci_PF8Ypm/view?usp=drive_link
https://drive.google.com/file/d/1Ygk9ZPJzx8xw2A9JF3NHbJ44TqnvSTQR/view?usp=drive_link
https://drive.google.com/file/d/18m5xPuccNsEB20WPshm3zhxmXc6k63ED/view?usp=drive_link
https://drive.google.com/file/d/1DiqqxC44rriviRQpqogcv0-EB-Y6nr9g/view?usp=drive_link
https://drive.google.com/file/d/1qPdaoTVDizJXkfXLioWU7iJ8hqCXSyOQ/view?usp=drive_link
https://drive.google.com/file/d/1Fj9kIA_mG7f67WFfACJEaZ7izcHG7vUm/view?usp=drive_link
https://drive.google.com/file/d/1WpYehZnI2P7dUdJPfkE-ij1rqCnjZEbB/view?usp=drive_link
https://drive.google.com/file/d/1_zwWkT4jPyzB38STWb6whlzsPzXmfA9r/view?usp=drive_link
https://drive.google.com/file/d/1U6-J4I_fPlSFFGfhZPxS5_YzKXwXIZYp/view?usp=drive_link
https://drive.google.com/file/d/1pRhxxcTfZp5tQo_EScvJUwfc3amiS6Vk/view?usp=drive_link
https://drive.google.com/file/d/1lWLntqra83RlYU_gN7Vostnfydf6gutd/view?usp=drive_link
https://drive.google.com/file/d/1vIBKo0x-NYEHV1FvRpco1lQMpRdAWAIL/view?usp=drive_link
https://drive.google.com/file/d/1pdrLV3JTQou_XH0Aap61Ssf60iVKm1jJ/view?usp=drive_link
https://drive.google.com/file/d/1QTsLoQ7SwmKdQHjBGVDaR2uTwfFwtrOf/view?usp=drive_link
https://drive.google.com/file/d/1Gytai8M_12J36GY6L_TulEcOC-035jwS/view?usp=drive_link
https://drive.google.com/file/d/14LJudNc629NT-i8xreXtzl27ce_DxOFJ/view?usp=drive_link
https://drive.google.com/file/d/1sBvPCODbzxGAI0S3lgN5cSG9Go3lRi00/view?usp=drive_link

View File

@@ -1,18 +0,0 @@
https://drive.google.com/file/d/1MJn9GbC8p9lN4gC9KDMLEkTkP_gGpXj0/view?usp=drive_link
https://drive.google.com/file/d/1-4LXgjl7ZCOgp-8GCJmFRD8OeqN5Jf7-/view?usp=drive_link
https://drive.google.com/file/d/1Ho06Ce0SPbqU3juaMxNUwAt3zCRLGC8W/view?usp=drive_link
https://drive.google.com/file/d/1ivHoj7_7olBSxH-Y8kqXEW7ttITK-45j/view?usp=drive_link
https://drive.google.com/file/d/1qjY4hM_IvZ8cq2II_n9MeJbvyeuN4oBP/view?usp=drive_link
https://drive.google.com/file/d/1rKVhO_f92-7sw13T8hTVrza3B9oAVgoy/view?usp=drive_link
https://drive.google.com/file/d/1pcLPHO8fBkc1-CRa88tyQtEueE4xiXNi/view?usp=drive_link
https://drive.google.com/file/d/1Vev_chCsIeEdvQ8poEYNsOJFGy_QU8kZ/view?usp=drive_link
https://drive.google.com/file/d/1l5G4zpRkxSLCQjvGPYSN4zfCvVRQuzMz/view?usp=drive_link
https://drive.google.com/file/d/14vgthE1eoakXkr2-DRw50E6lAqYOiUuE/view?usp=drive_link
https://drive.google.com/file/d/17nPSmKKmgQ2B7zkzWrZYiLM3RBuFod82/view?usp=drive_link
https://drive.google.com/file/d/1QcDsxplVvb_ID9BVrihl5FvlC-j7waXi/view?usp=drive_link
https://drive.google.com/file/d/18pEejBpI-eEVaWAAjBCyC0vgbX3T1Esj/view?usp=drive_link
https://drive.google.com/file/d/1H8eH6_IRODtEFT6WoM77ltR5OoOrqXmI/view?usp=drive_link
https://drive.google.com/file/d/1IWlpFRZhoxyG4nS13CWK4leZVk5wbNx4/view?usp=drive_link
https://drive.google.com/file/d/1PbZA8_OCGmMLxNP9xbkLRSChniL4uGxl/view?usp=drive_link
https://drive.google.com/file/d/1p9XAdmG2f_WeflNO4DIJ_tr1rK6M9B4B/view?usp=drive_link
https://drive.google.com/file/d/1nS59Et1cNAvKo3Y4SeSGRuZD5TvBbCF3/view?usp=drive_link

View File

@@ -1 +0,0 @@
https://drive.google.com/drive/folders/1S8eFg98IaGAIKVZ8QFWG1bx4mHa-O204

View File

@@ -1,4 +0,0 @@
https://drive.google.com/drive/folders/1tC_g1AJ8lglBLY-fjsQrG6DMBa3Ucp-0
https://drive.google.com/file/d/1fG_Yi2MJrFjiUVN3XoiWXLtTxHlwwaDv/view?usp=drive_link
https://drive.google.com/file/d/1WX32VWfzzX3Blmd06DRxLwFbMJfVe7P4/view?usp=drive_link
https://drive.google.com/file/d/18onsX3vXg3xkFwP5bVUCjdV4n9TRn0C9/view?usp=drive_link

View File

@@ -1,3 +0,0 @@
https://drive.google.com/drive/folders/1RgyD0JgTX30H4IM5XZn8I3zSV_mr8pyF
https://drive.google.com/file/d/18Cudl6nikDtgRolea7je8iF_gGKzynOP/view?usp=drive_link
https://drive.google.com/file/d/1C1kZYyROzs-PrLc0SkDgUgMi4-L3lauE/view?usp=drive_link

View File

@@ -1,3 +0,0 @@
https://drive.google.com/drive/folders/1TsojQQSXtHEoGnqgJ3gmpPQR2DPLtS2N
https://drive.google.com/file/d/1wfMSZ24oOh5KR_0aaP3Cnu_c4ZCveduB/view?usp=drive_link
https://drive.google.com/file/d/17EuCUWS6uCCr6yyNzpXdcdE-_TTNCKtf/view?usp=drive_link

View File

@@ -1,3 +0,0 @@
https://drive.google.com/drive/folders/1sc-E4QYW7A0o23m1u2VWNGVq5smAsfCo
https://drive.google.com/file/d/18smMymtr8tIxaNUQ61gW6dG50pt3MvGq/view?usp=drive_link
https://drive.google.com/file/d/1Nk7l53d9sJoGDBKAOnNrExX5nLacATc6/view?usp=drive_link

View File

@@ -1,3 +0,0 @@
https://drive.google.com/drive/folders/1aRyoOhQwxhyt1J8XgEig4s6kzaw__LXj
https://drive.google.com/file/d/1pnGIOd-E4-rhz2P3VxpknMKRZCoKt6eI/view?usp=drive_link
https://drive.google.com/file/d/1GKReZHrXU73NMiC5zKCq_UtqPVtYq8eo/view?usp=drive_link

View File

@@ -1,2 +0,0 @@
https://drive.google.com/drive/folders/19qS_n7vKgDcPeTMnvDHQ5-n73xEbJz5D
https://drive.google.com/file/d/1oC31By0A2bsBeHyUwBdQw1z4ng6yi9Za/view?usp=drive_link

View File

@@ -1,2 +0,0 @@
https://drive.google.com/drive/folders/1m5rQ6UVH8Q9RQp_6c0CxkQ88-L-ScO7q
https://drive.google.com/file/d/1wHz2qcmwcVG0C0CZ9MjQDQcmj4OY9_a3/view?usp=drive_link

View File

@@ -1,2 +0,0 @@
https://drive.google.com/drive/folders/1seQGay470nGQ-knBI5TjsTr8iL9Qws5q
https://drive.google.com/file/d/1T89hSX5U99wLGvGTE7yUBaQPOpyj6Sai/view?usp=drive_link

View File

@@ -1,2 +0,0 @@
https://drive.google.com/drive/folders/1t3eDc5Rg0DveyRe8oTm6Dia_FYU5mXyf
https://drive.google.com/file/d/1TXFaduTakvS0ZWJqKCX-HIvYglum_5CY/view?usp=drive_link

View File

@@ -1,2 +0,0 @@
https://drive.google.com/drive/folders/1Z9X3DNzd6LS0FFjQemNUMoMA5yk5VQOh
https://drive.google.com/file/d/1Wlyc0vTkjXuWB6zbaVOWhEfD7BmPgUV_/view?usp=drive_link

View File

@@ -1,53 +0,0 @@
https://drive.google.com/drive/folders/1DYgB4ifX4uIid9m9jnC0Zdz8Nf7ZC0fc
https://drive.google.com/file/d/1Eb-NRNk_FmVleCbU_Ng5Y4dfcjTKN7Rv/view?usp=drive_link
https://drive.google.com/file/d/1dkhjEADakT-44l9jf-nK4x89kr4yG_qb/view?usp=drive_link
https://drive.google.com/file/d/14hDhgcZkVqNExGb4tIXpSjMshhqZETch/view?usp=drive_link
https://drive.google.com/file/d/1zVMEHpHbuNyP5A_lYU7RPSLB-4V0yfZw/view?usp=drive_link
https://drive.google.com/file/d/1JtgDjBvy7FnRpFzrx_foC3quorYQFAR-/view?usp=drive_link
https://drive.google.com/file/d/1EHdneB6F-PP0dQlX8qPaXbxmKoBy_YwO/view?usp=drive_link
https://drive.google.com/file/d/17Z0jjVBy1OPKREPu77_n_rQzorDiapji/view?usp=drive_link
https://drive.google.com/file/d/1F4i23qPJ_qTf5jWjfLo4ARGJChznYWt3/view?usp=drive_link
https://drive.google.com/file/d/1kZtXWM3uS0-rLblydBfJ0mMcVnMMXw9w/view?usp=drive_link
https://drive.google.com/file/d/1mNODox87xFfY5Z_o5mcLsr8SHb39jDik/view?usp=drive_link
https://drive.google.com/file/d/1Ob44VdmEUA93FKDECiRb5Ogz2xQg5IWp/view?usp=drive_link
https://drive.google.com/file/d/1fdQLdjj3Cwv33R1wZhfrLz9Del8mqgHb/view?usp=drive_link
https://drive.google.com/file/d/1Yu3L3ft21zP__XL8pCfhb788ZleuW1n5/view?usp=drive_link
https://drive.google.com/file/d/1ozBBWXVZ9hXDh9ooHUNroHdYm8UDqnhJ/view?usp=drive_link
https://drive.google.com/file/d/1o0TGqvfWw_Lunxb5ubKDS21Lr_WC0h75/view?usp=drive_link
https://drive.google.com/file/d/1jZnd5eP5L6BH5l98BPN6OnoQx3fu8e9n/view?usp=drive_link
https://drive.google.com/file/d/1S5sYbz8wcLYp0V67v13i4PRcBxodn4Hg/view?usp=drive_link
https://drive.google.com/file/d/1rFeg_x6ftJYwPtBv34D3h2L2cpDLeR4G/view?usp=drive_link
https://drive.google.com/file/d/1GvS3lcm4o6nm_scUk0XxKeVFNmzjucDZ/view?usp=drive_link
https://drive.google.com/file/d/1-9i0riphC7NhhDahcQfD1QoBXP5gF90A/view?usp=drive_link
https://drive.google.com/file/d/15p_IqGsMbKuvzMS872THAZr-3SBtb1Fr/view?usp=drive_link
https://drive.google.com/file/d/1ToyYcBfJL8gbQn0q_59zPLsFmm7dmMJo/view?usp=drive_link
https://drive.google.com/file/d/1e_7PNH7CYafE4pAebP7ZdI7XFbmEcy_i/view?usp=drive_link
https://drive.google.com/file/d/1JoabvGVsIQdug2xOhUIhetEIyDM91y_Y/view?usp=drive_link
https://drive.google.com/file/d/1kOMw1y0lmnVaCjwZICfzCsx6e0Z8MNGR/view?usp=drive_link
https://drive.google.com/file/d/16it_wd1JOevUQTK2_CvF_pBACTgpIPgM/view?usp=drive_link
https://drive.google.com/file/d/1IRcCj9HnJSfbyMgr5XEERGlEnWeZQwOc/view?usp=drive_link
https://drive.google.com/file/d/1Z2dIJfq_S3liGmPN9Rphvkmucnmw7tlb/view?usp=drive_link
https://drive.google.com/file/d/1J3NoAjzndGx9yNyaBOJHdNny1epzUoBt/view?usp=drive_link
https://drive.google.com/file/d/18nOvxV1k8FSmBrhT4TPo2sKKSZXougyx/view?usp=drive_link
https://drive.google.com/file/d/1CT8FxclafFMjSd7gCWVw3VSeryeiF04i/view?usp=drive_link
https://drive.google.com/file/d/16M9KVqQMFfSsXfypK0bocFft8Nz3j2Rt/view?usp=drive_link
https://drive.google.com/file/d/18QPVkw6bj6HW8LTPrQLWrrUX4R6RcF42/view?usp=drive_link
https://drive.google.com/file/d/1hQTVtA5hBTE_StXpJafTZJ3tgt2VQQ_t/view?usp=drive_link
https://drive.google.com/file/d/1Dn-d5g69H6EgAWgsFdrcbJKtz7ySsCQ8/view?usp=drive_link
https://drive.google.com/file/d/13hMr16483P7ALYv73yMRUN37fJdVQM62/view?usp=drive_link
https://drive.google.com/file/d/1848yN3XMN5zJMEgApt6KzrWgfRPfimtv/view?usp=drive_link
https://drive.google.com/file/d/1oAD9kSnS0fTgj-CjD4u9VdZ5X67IOIMa/view?usp=drive_link
https://drive.google.com/file/d/1ilzIWLCCG5b_KgF5s0wdN2I5-lFNpwC1/view?usp=drive_link
https://drive.google.com/file/d/1rjsT2YBjnidxod1s9s-myAYz8boHr-WB/view?usp=drive_link
https://drive.google.com/file/d/18Gg48HTub15bd8qzbhiCUufbVy0fbN5G/view?usp=drive_link
https://drive.google.com/file/d/1WsSnQSqmMTVSRwrhT1Y-v782My2zcjLm/view?usp=drive_link
https://drive.google.com/file/d/1ea9ZCvoyc-xqiFXgeDcA_mOWsw7VUuoi/view?usp=drive_link
https://drive.google.com/file/d/1wv1v3-XhPgbNzp62BXbJTDzMPu2tlDUc/view?usp=drive_link
https://drive.google.com/file/d/18-ikzt8LoZ83Gi3goKCELs4U4z8hrRoF/view?usp=drive_link
https://drive.google.com/file/d/16Bjhp7JNCXkGuLvyNcZowAx3W-Y-15DV/view?usp=drive_link
https://drive.google.com/file/d/1Gc-KRI-xwcp1fMR55ugbrLg_5y3SPde-/view?usp=drive_link
https://drive.google.com/file/d/1oP72Q386Z4Sy5MMm-t5yNogIe5Van_9k/view?usp=drive_link
https://drive.google.com/file/d/112T90eDUDVH-SyOV7UnZl5bscAH2hcfq/view?usp=drive_link
https://drive.google.com/file/d/1y-uKOesRRhjgDtFbG_j65f4SGg0v8XDg/view?usp=drive_link
https://drive.google.com/file/d/1LOP05OagoI3km-ZKQBrS204A85UVk7Ok/view?usp=drive_link
https://drive.google.com/file/d/1QkHQKgasVzWsmdPvkXgGhWyQ84d93_Az/view?usp=drive_link

View File

@@ -1 +0,0 @@
https://drive.google.com/drive/folders/1Ut2cv6o6Pkfgg46DgwVUM7Z5PkNG8eJ-

View File

@@ -1 +0,0 @@
https://drive.google.com/drive/folders/1FqxPV0PgvgIu8XFjtvZSPSExuNcxVVAY

View File

@@ -1,2 +0,0 @@
https://drive.google.com/drive/folders/1SKtG0ct9q0nVdYssJNMWSOjikcXliT58
https://drive.google.com/file/d/1nchD21O30B3i3LDoqramo1zgW5YvpJIN/view?usp=drive_link

View File

@@ -1,2 +0,0 @@
https://drive.google.com/drive/folders/1_4DHf2cma0xsChLQFghwigX6Ukti5-zQ
https://drive.google.com/file/d/1_8vS4hDNDgUQY-SmekrNaa7dF67QJYU-/view?usp=drive_link

View File

@@ -1,2 +0,0 @@
https://drive.google.com/drive/folders/1_4DHf2cma0xsChLQFghwigX6Ukti5-zQ
https://drive.google.com/file/d/1_8vS4hDNDgUQY-SmekrNaa7dF67QJYU-/view?usp=drive_link

View File

@@ -1,2 +0,0 @@
https://drive.google.com/drive/folders/1fAD7vkyTGTFB_nGXIKofCU1U05oE3MFv
https://drive.google.com/file/d/1XzyQ2B6LLvcurIonOpEu4nij2qwNWshH/view?usp=drive_link

View File

@@ -1,53 +0,0 @@
https://drive.google.com/drive/folders/13EQsVsnxT86K20QAoyE_YpsFbQ7fZQdu
https://drive.google.com/file/d/1-W_JHghZG65FNTVhw1SXhtQrazdLL3Ue/view?usp=drive_link
https://drive.google.com/file/d/1VwRJgdWUo-2nQaNM7Bs77-fsm8iwUxEo/view?usp=drive_link
https://drive.google.com/file/d/1wFzGRo5iYA13WLi6IV1ry64RyahQBFio/view?usp=drive_link
https://drive.google.com/file/d/1IKtQzQ-n-UTv64hYpReu2R4cqUvmNQqD/view?usp=drive_link
https://drive.google.com/file/d/1GicVci9OiuuZZH79i5Mg7AtWod94MzwT/view?usp=drive_link
https://drive.google.com/file/d/1JVnIoR7EIQp70T4eAf9RX65JcTrzsjQc/view?usp=drive_link
https://drive.google.com/file/d/1W2xr4h23ucjPrc-mBEeqnACsfaImpc0p/view?usp=drive_link
https://drive.google.com/file/d/10xj_0V7A07o3uCa7v5omUrTC0YlPW8H3/view?usp=drive_link
https://drive.google.com/file/d/1FOc3EMaCy8Mb0_a7PuXLAwKwvxkbKmwU/view?usp=drive_link
https://drive.google.com/file/d/143PgDXBcf2GQ0Q07ZPMVMfBgZDd5sLJG/view?usp=drive_link
https://drive.google.com/file/d/1pE5Tyj0LlGbGWvUzuhixp86Ibu55Ez3I/view?usp=drive_link
https://drive.google.com/file/d/141668b1VzX80ncrVJPzhkoAeIFB4MEK9/view?usp=drive_link
https://drive.google.com/file/d/1bw12lo37p1ZvRvErHsll7cEYi2OxscvZ/view?usp=drive_link
https://drive.google.com/file/d/1zfnMFvbgBjl6SzYhksbaOzfbwLrCN6tb/view?usp=drive_link
https://drive.google.com/file/d/1-GIszA6mUJMaNB-tdh9r9skc77SWA0VX/view?usp=drive_link
https://drive.google.com/file/d/1fTB0zWFYU6zh4IIUFT2zX_OkwYqmElwY/view?usp=drive_link
https://drive.google.com/file/d/1gPIPNKGmrO9c7gKF7SP0SuUYbIBBq8z1/view?usp=drive_link
https://drive.google.com/file/d/12JeJ-dQd5lYyn6PlDOGdE-ChVeiZ-Uv0/view?usp=drive_link
https://drive.google.com/file/d/100_20cgCqerU6qoh3TfTbwLy9mlDAFEG/view?usp=drive_link
https://drive.google.com/file/d/111oAGJ76ku_pYgbBoIdZAC1_XEQcPI__/view?usp=drive_link
https://drive.google.com/file/d/1UhC8L-354ZQ2gblPFGI35EMsVwfpuKa0/view?usp=drive_link
https://drive.google.com/file/d/1sIXQSgUR_xdrNtGrL6QGBnkLMKErsIp1/view?usp=drive_link
https://drive.google.com/file/d/16Ax77bDSIXnsn4GFL8XYKKT1P6bPpfMd/view?usp=drive_link
https://drive.google.com/file/d/1pgRVYwwVIsWq_qsWqZpe1UBzZfF5Fa9D/view?usp=drive_link
https://drive.google.com/file/d/1jtimaZkWsY1P5gC2bbS64H_WCUU7HXN2/view?usp=drive_link
https://drive.google.com/file/d/1N6Bh02P-RiTEgtx1YH1Db_X3TGpP-X_r/view?usp=drive_link
https://drive.google.com/file/d/14Fy8EwJ8d9Vh97Yt1VOvUChSCrfIjBij/view?usp=drive_link
https://drive.google.com/file/d/1IRuv42dvIMPuKhcMZmuXaBjJ-lPFOmQd/view?usp=drive_link
https://drive.google.com/file/d/16XWzNY2D8ucVVn5geBgsVdhm3ppO4que/view?usp=drive_link
https://drive.google.com/file/d/1xsVOoQgthK_L_SDrmq_JvQgUpAvPEAY8/view?usp=drive_link
https://drive.google.com/file/d/1bZbw66DyEMvnJnzkdUUNbKjvNKg8KFYM/view?usp=drive_link
https://drive.google.com/file/d/1CyTVkdrNGGpouCXr4CfhKbMzE6Ah3oo3/view?usp=drive_link
https://drive.google.com/file/d/1hDRyeM-XEDpHXpptbT8LvNnlQUR3PWOh/view?usp=drive_link
https://drive.google.com/file/d/1XhHWxbra8Iy5irQZ83IvxwaJqHq9x4s1/view?usp=drive_link
https://drive.google.com/file/d/1haZcn6aM1o4JlmP9tJj3x2enrxiPaDSD/view?usp=drive_link
https://drive.google.com/file/d/1ypDyuUTbljaBZ34f-t7lj3O_0bRmyX2n/view?usp=drive_link
https://drive.google.com/file/d/1ILEEZo_tA9_ChIAprr2mPaNVKZi5vXsO/view?usp=drive_link
https://drive.google.com/file/d/1U7nVYFaGE8vVTfLCW33D74xOjDcqfgyJ/view?usp=drive_link
https://drive.google.com/file/d/1rZ93_rmCov5SMDxPkfM3qthcRELZrQX6/view?usp=drive_link
https://drive.google.com/file/d/1mYO1b_csddtyE3qT6cwLiw-m2w2_1Lxh/view?usp=drive_link
https://drive.google.com/file/d/1xz7Q5x2jikY8wJQjMRQpRws6AnfWlHm5/view?usp=drive_link
https://drive.google.com/file/d/1OO8GaO-0FrSZRd1kxMYwBmubyiLOWnbl/view?usp=drive_link
https://drive.google.com/file/d/1EXn4NVDmf-4_HCy34mYwT-vwK2CFI9ev/view?usp=drive_link
https://drive.google.com/file/d/10hH70XhXRL9C5SnAG4toHtfHqfJUJo4H/view?usp=drive_link
https://drive.google.com/file/d/18tiBcxea0guUai4lwsXQvt0q2LZ8ZnnJ/view?usp=drive_link
https://drive.google.com/file/d/1Q8R8qv37vk5PQ5kQ2ibx6BFLOySD0VpX/view?usp=drive_link
https://drive.google.com/file/d/17aNriHzjhdibCyuUjQoMFZqjybJZtggG/view?usp=drive_link
https://drive.google.com/file/d/1LVjEYHSdeKm6CotU1QguIeNEPaIaFl_1/view?usp=drive_link
https://drive.google.com/file/d/1ufAhE_EkgJ85slg2EW8aW_grOzE_Lmxd/view?usp=drive_link
https://drive.google.com/file/d/1wtzLtXrkw9eXRGESTPIOlpl1tInu-b2m/view?usp=drive_link
https://drive.google.com/file/d/1Mk5qvVtD_QHwGOUApRq76TUw2T5THu6f/view?usp=drive_link
https://drive.google.com/file/d/1y1WQ3hboWVJ68KEYQQ3OhreGuaUpSgwc/view?usp=drive_link

View File

@@ -1,52 +0,0 @@
https://drive.google.com/drive/folders/1dxWh6YFZUDt6qXIoxgD9bla3CiFjZ11C
https://drive.google.com/file/d/1hNBJN00SCAlOl0ZEgm7RRGbAGDjyBs0p/view?usp=drive_link
https://drive.google.com/file/d/17He0CVwXGeoMmXg4SHKo-osNn7YPKVL7/view?usp=drive_link
https://drive.google.com/file/d/1laNKUVID1x2CV6a2O2WQjwFewKu4lidL/view?usp=drive_link
https://drive.google.com/file/d/1pNf36xbZJGRArYLmNAvRj5y6CoqdC6kB/view?usp=drive_link
https://drive.google.com/file/d/1_4E1-y3JXk5I0ebycLYM70YDPK9g52gZ/view?usp=drive_link
https://drive.google.com/file/d/1PHfzhGPdbolKyOpS3FnR2w7Q8zUlJXSk/view?usp=drive_link
https://drive.google.com/file/d/17ls2PPN-Pi3tEuK059cwV2_iDT8aGhOO/view?usp=drive_link
https://drive.google.com/file/d/1LWsg6PmCT00Kv_N_slrmcwKmQPGoBT3k/view?usp=drive_link
https://drive.google.com/file/d/12LckrchoHTUVH7rxi8J7zD9dA19GXvoW/view?usp=drive_link
https://drive.google.com/file/d/1VqrJKjAIkj5gtFXL69grdSeu9CyaqnSw/view?usp=drive_link
https://drive.google.com/file/d/1g5rQYDBZvW-kUtYPeyF3qmd53v6k7kXu/view?usp=drive_link
https://drive.google.com/file/d/10kUgaSJ0TS7teaG83G3Rf_DG4XGrBt6A/view?usp=drive_link
https://drive.google.com/file/d/1je9XmneZQZvTma5adMJICUPDovW3ppei/view?usp=drive_link
https://drive.google.com/file/d/1v28r6bedwZGbUPVVTVImXhK-42XdtGfj/view?usp=drive_link
https://drive.google.com/file/d/1-TEEx9sGVvzMMaNXYfQMtY2JJ6cvl0dT/view?usp=drive_link
https://drive.google.com/file/d/1YdBKdJFP9rJWBUX7qrOYL_gfUA8o6J9M/view?usp=drive_link
https://drive.google.com/file/d/1X9vffwQHNUSKLXr2RlYNtbWDIFCIDfdF/view?usp=drive_link
https://drive.google.com/file/d/11hqesqa5kvEe5FABUnZRcvmOhR373cYM/view?usp=drive_link
https://drive.google.com/file/d/1ltTTECjEcbQPgS3UPRgMzaE2x9n6H7dC/view?usp=drive_link
https://drive.google.com/file/d/1Zxqfa29JdwT-bfMpivi6IG2vz34d21dD/view?usp=drive_link
https://drive.google.com/file/d/11LQlVxS5hz494dYUJ_PNRPx2NHIJbQns/view?usp=drive_link
https://drive.google.com/file/d/1i1JhNtnZpO_E8rAv8gxBP3ZTZRvcvsZi/view?usp=drive_link
https://drive.google.com/file/d/11jOXAr2EULUO4Qkm748634lg4UUFho5U/view?usp=drive_link
https://drive.google.com/file/d/1rj67wur8DdB_Pipwx24bY43xu4X1eQ5e/view?usp=drive_link
https://drive.google.com/file/d/15ZTm6lO6f_JQy_4SNfrOu3iPYn1Ro8mh/view?usp=drive_link
https://drive.google.com/file/d/1q4gBtqWPJtCwXEvknGgN0WHGp7Vfn1b9/view?usp=drive_link
https://drive.google.com/file/d/1t17keyre47AYqm8GgXiQ7EcvcUkeSiDQ/view?usp=drive_link
https://drive.google.com/file/d/1OYUPGxtZgOF86Ng_BEOTXm_XOYpuQPsO/view?usp=drive_link
https://drive.google.com/file/d/1cBjbGHi3dwWHtx6r9EQJi0JT_CE3LuHt/view?usp=drive_link
https://drive.google.com/file/d/14qaMyF0mcbCB-fCYKNyo5_2NahSC6D5u/view?usp=drive_link
https://drive.google.com/file/d/12FgX86eA7Y5co9ULBVK80XMsiKQSs-Ri/view?usp=drive_link
https://drive.google.com/file/d/1yvoHWidf-jdBVw6qCCXOFfkVwKj_2hPk/view?usp=drive_link
https://drive.google.com/file/d/1a2SugsSDlC8UtUrFzp-_KAwyZckQOvdQ/view?usp=drive_link
https://drive.google.com/file/d/1l8pILBFSAosypWJMza2K09Vm7rug9axm/view?usp=drive_link
https://drive.google.com/file/d/1hfPQ8dBCk97PnOhq6_MIISm3IEzcOxJG/view?usp=drive_link
https://drive.google.com/file/d/1PPAUwlJCFKpms8cqF_k1v2_fCgDBOc3S/view?usp=drive_link
https://drive.google.com/file/d/1lVKQZeqFfK3amEmLuFhYLUFQ2eyE8rOW/view?usp=drive_link
https://drive.google.com/file/d/1K9iPMLfDowcIFoyzpvgn88dQ6x6kVwNG/view?usp=drive_link
https://drive.google.com/file/d/1PNvMqG9tL7QxeLaYBGHiWYR6SYb5iIct/view?usp=drive_link
https://drive.google.com/file/d/1xkRtzbvIkUsylx9hrFLGQsJn0h1EYu-5/view?usp=drive_link
https://drive.google.com/file/d/1nxMRrJlSayjDIfr5CmHO1NzAw3COhsLi/view?usp=drive_link
https://drive.google.com/file/d/1Qs3WEyMGrmagiHIkkFEueWNnJhkUeR1s/view?usp=drive_link
https://drive.google.com/file/d/1D-G2_Q0SS3M8zyJbg_XzkF2ANPw1HTuX/view?usp=drive_link
https://drive.google.com/file/d/1mdmJsDGO-YtJAOF_yPKl6lq4PJOIbQhT/view?usp=drive_link
https://drive.google.com/file/d/11m9bwfop_sPmnQr_8amB6EEsrbAeG_z5/view?usp=drive_link
https://drive.google.com/file/d/19tyYt5FMn5kru0g9o2nMJhKPnsDqkIZv/view?usp=drive_link
https://drive.google.com/file/d/1XvTpUdsVTZ-vydvdYYmynbma--HfUGSl/view?usp=drive_link
https://drive.google.com/file/d/1MO3hFu68J6NohTzr9aB_fY02VA6QSOqj/view?usp=drive_link
https://drive.google.com/file/d/1Lh-UjwAk__04YOTWINF_QGVU8SjetVaY/view?usp=drive_link
https://drive.google.com/file/d/1jkSOUwZV5GJ7rZlVeErjcu0DBQs8Np0d/view?usp=drive_link
https://drive.google.com/file/d/1VIN1eLI-93WrVQwCjsv6XQr353DqqBYA/view?usp=drive_link

View File

@@ -1,8 +0,0 @@
https://drive.google.com/drive/folders/1EgKar7rWBmTIRmeJYZciSwjZx3uP2mHO
https://drive.google.com/file/d/12eYWQO15atK2hBjXhynPJd9MKAj_42pz/view?usp=drive_link
https://drive.google.com/file/d/1Ul4oEeICJDjgfYTl4H1uaisTzVYIM6wd/view?usp=drive_link
https://drive.google.com/file/d/1WSF-OG8lKSe2wVYCv5D1aJNipxpgddk-/view?usp=drive_link
https://drive.google.com/file/d/1_ppD5j5sFh26aWW0JmhLzJMeNB-lCArk/view?usp=drive_link
https://drive.google.com/file/d/1WUp846dgWXYhu4oJfhHxiU6YL_7N6s4W/view?usp=drive_link
https://drive.google.com/file/d/1HRZNAIoAQw_uYiPwnBvtBioQoqiqoXdA/view?usp=drive_link
https://drive.google.com/file/d/1hedGq-QDMnIn8GlXXBC3GiEJ_Y-LTxyt/view?usp=drive_link

View File

@@ -1,634 +0,0 @@
#!/usr/bin/env python
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Helper code for loading PushT dataset from Diffusion Policy (https://diffusion-policy.cs.columbia.edu/)
Copied from the original Diffusion Policy repository and used in our `download_and_upload_dataset.py` script.
"""
from __future__ import annotations
import math
import numbers
import os
from functools import cached_property
import numcodecs
import numpy as np
import zarr
def check_chunks_compatible(chunks: tuple, shape: tuple):
assert len(shape) == len(chunks)
for c in chunks:
assert isinstance(c, numbers.Integral)
assert c > 0
def rechunk_recompress_array(group, name, chunks=None, chunk_length=None, compressor=None, tmp_key="_temp"):
old_arr = group[name]
if chunks is None:
chunks = (chunk_length,) + old_arr.chunks[1:] if chunk_length is not None else old_arr.chunks
check_chunks_compatible(chunks, old_arr.shape)
if compressor is None:
compressor = old_arr.compressor
if (chunks == old_arr.chunks) and (compressor == old_arr.compressor):
# no change
return old_arr
# rechunk recompress
group.move(name, tmp_key)
old_arr = group[tmp_key]
n_copied, n_skipped, n_bytes_copied = zarr.copy(
source=old_arr,
dest=group,
name=name,
chunks=chunks,
compressor=compressor,
)
del group[tmp_key]
arr = group[name]
return arr
def get_optimal_chunks(shape, dtype, target_chunk_bytes=2e6, max_chunk_length=None):
"""
Common shapes
T,D
T,N,D
T,H,W,C
T,N,H,W,C
"""
itemsize = np.dtype(dtype).itemsize
# reversed
rshape = list(shape[::-1])
if max_chunk_length is not None:
rshape[-1] = int(max_chunk_length)
split_idx = len(shape) - 1
for i in range(len(shape) - 1):
this_chunk_bytes = itemsize * np.prod(rshape[:i])
next_chunk_bytes = itemsize * np.prod(rshape[: i + 1])
if this_chunk_bytes <= target_chunk_bytes and next_chunk_bytes > target_chunk_bytes:
split_idx = i
rchunks = rshape[:split_idx]
item_chunk_bytes = itemsize * np.prod(rshape[:split_idx])
this_max_chunk_length = rshape[split_idx]
next_chunk_length = min(this_max_chunk_length, math.ceil(target_chunk_bytes / item_chunk_bytes))
rchunks.append(next_chunk_length)
len_diff = len(shape) - len(rchunks)
rchunks.extend([1] * len_diff)
chunks = tuple(rchunks[::-1])
# print(np.prod(chunks) * itemsize / target_chunk_bytes)
return chunks
class ReplayBuffer:
"""
Zarr-based temporal datastructure.
Assumes first dimension to be time. Only chunk in time dimension.
"""
def __init__(self, root: zarr.Group | dict[str, dict]):
"""
Dummy constructor. Use copy_from* and create_from* class methods instead.
"""
assert "data" in root
assert "meta" in root
assert "episode_ends" in root["meta"]
for value in root["data"].values():
assert value.shape[0] == root["meta"]["episode_ends"][-1]
self.root = root
# ============= create constructors ===============
@classmethod
def create_empty_zarr(cls, storage=None, root=None):
if root is None:
if storage is None:
storage = zarr.MemoryStore()
root = zarr.group(store=storage)
root.require_group("data", overwrite=False)
meta = root.require_group("meta", overwrite=False)
if "episode_ends" not in meta:
meta.zeros("episode_ends", shape=(0,), dtype=np.int64, compressor=None, overwrite=False)
return cls(root=root)
@classmethod
def create_empty_numpy(cls):
root = {"data": {}, "meta": {"episode_ends": np.zeros((0,), dtype=np.int64)}}
return cls(root=root)
@classmethod
def create_from_group(cls, group, **kwargs):
if "data" not in group:
# create from stratch
buffer = cls.create_empty_zarr(root=group, **kwargs)
else:
# already exist
buffer = cls(root=group, **kwargs)
return buffer
@classmethod
def create_from_path(cls, zarr_path, mode="r", **kwargs):
"""
Open a on-disk zarr directly (for dataset larger than memory).
Slower.
"""
group = zarr.open(os.path.expanduser(zarr_path), mode)
return cls.create_from_group(group, **kwargs)
# ============= copy constructors ===============
@classmethod
def copy_from_store(
cls,
src_store,
store=None,
keys=None,
chunks: dict[str, tuple] | None = None,
compressors: dict | str | numcodecs.abc.Codec | None = None,
if_exists="replace",
**kwargs,
):
"""
Load to memory.
"""
src_root = zarr.group(src_store)
if chunks is None:
chunks = {}
if compressors is None:
compressors = {}
root = None
if store is None:
# numpy backend
meta = {}
for key, value in src_root["meta"].items():
if len(value.shape) == 0:
meta[key] = np.array(value)
else:
meta[key] = value[:]
if keys is None:
keys = src_root["data"].keys()
data = {}
for key in keys:
arr = src_root["data"][key]
data[key] = arr[:]
root = {"meta": meta, "data": data}
else:
root = zarr.group(store=store)
# copy without recompression
n_copied, n_skipped, n_bytes_copied = zarr.copy_store(
source=src_store, dest=store, source_path="/meta", dest_path="/meta", if_exists=if_exists
)
data_group = root.create_group("data", overwrite=True)
if keys is None:
keys = src_root["data"].keys()
for key in keys:
value = src_root["data"][key]
cks = cls._resolve_array_chunks(chunks=chunks, key=key, array=value)
cpr = cls._resolve_array_compressor(compressors=compressors, key=key, array=value)
if cks == value.chunks and cpr == value.compressor:
# copy without recompression
this_path = "/data/" + key
n_copied, n_skipped, n_bytes_copied = zarr.copy_store(
source=src_store,
dest=store,
source_path=this_path,
dest_path=this_path,
if_exists=if_exists,
)
else:
# copy with recompression
n_copied, n_skipped, n_bytes_copied = zarr.copy(
source=value,
dest=data_group,
name=key,
chunks=cks,
compressor=cpr,
if_exists=if_exists,
)
buffer = cls(root=root)
return buffer
@classmethod
def copy_from_path(
cls,
zarr_path,
backend=None,
store=None,
keys=None,
chunks: dict[str, tuple] | None = None,
compressors: dict | str | numcodecs.abc.Codec | None = None,
if_exists="replace",
**kwargs,
):
"""
Copy a on-disk zarr to in-memory compressed.
Recommended
"""
if chunks is None:
chunks = {}
if compressors is None:
compressors = {}
if backend == "numpy":
print("backend argument is deprecated!")
store = None
group = zarr.open(os.path.expanduser(zarr_path), "r")
return cls.copy_from_store(
src_store=group.store,
store=store,
keys=keys,
chunks=chunks,
compressors=compressors,
if_exists=if_exists,
**kwargs,
)
# ============= save methods ===============
def save_to_store(
self,
store,
chunks: dict[str, tuple] | None = None,
compressors: str | numcodecs.abc.Codec | dict | None = None,
if_exists="replace",
**kwargs,
):
root = zarr.group(store)
if chunks is None:
chunks = {}
if compressors is None:
compressors = {}
if self.backend == "zarr":
# recompression free copy
n_copied, n_skipped, n_bytes_copied = zarr.copy_store(
source=self.root.store,
dest=store,
source_path="/meta",
dest_path="/meta",
if_exists=if_exists,
)
else:
meta_group = root.create_group("meta", overwrite=True)
# save meta, no chunking
for key, value in self.root["meta"].items():
_ = meta_group.array(name=key, data=value, shape=value.shape, chunks=value.shape)
# save data, chunk
data_group = root.create_group("data", overwrite=True)
for key, value in self.root["data"].items():
cks = self._resolve_array_chunks(chunks=chunks, key=key, array=value)
cpr = self._resolve_array_compressor(compressors=compressors, key=key, array=value)
if isinstance(value, zarr.Array):
if cks == value.chunks and cpr == value.compressor:
# copy without recompression
this_path = "/data/" + key
n_copied, n_skipped, n_bytes_copied = zarr.copy_store(
source=self.root.store,
dest=store,
source_path=this_path,
dest_path=this_path,
if_exists=if_exists,
)
else:
# copy with recompression
n_copied, n_skipped, n_bytes_copied = zarr.copy(
source=value,
dest=data_group,
name=key,
chunks=cks,
compressor=cpr,
if_exists=if_exists,
)
else:
# numpy
_ = data_group.array(name=key, data=value, chunks=cks, compressor=cpr)
return store
def save_to_path(
self,
zarr_path,
chunks: dict[str, tuple] | None = None,
compressors: str | numcodecs.abc.Codec | dict | None = None,
if_exists="replace",
**kwargs,
):
if chunks is None:
chunks = {}
if compressors is None:
compressors = {}
store = zarr.DirectoryStore(os.path.expanduser(zarr_path))
return self.save_to_store(
store, chunks=chunks, compressors=compressors, if_exists=if_exists, **kwargs
)
@staticmethod
def resolve_compressor(compressor="default"):
if compressor == "default":
compressor = numcodecs.Blosc(cname="lz4", clevel=5, shuffle=numcodecs.Blosc.NOSHUFFLE)
elif compressor == "disk":
compressor = numcodecs.Blosc("zstd", clevel=5, shuffle=numcodecs.Blosc.BITSHUFFLE)
return compressor
@classmethod
def _resolve_array_compressor(cls, compressors: dict | str | numcodecs.abc.Codec, key, array):
# allows compressor to be explicitly set to None
cpr = "nil"
if isinstance(compressors, dict):
if key in compressors:
cpr = cls.resolve_compressor(compressors[key])
elif isinstance(array, zarr.Array):
cpr = array.compressor
else:
cpr = cls.resolve_compressor(compressors)
# backup default
if cpr == "nil":
cpr = cls.resolve_compressor("default")
return cpr
@classmethod
def _resolve_array_chunks(cls, chunks: dict | tuple, key, array):
cks = None
if isinstance(chunks, dict):
if key in chunks:
cks = chunks[key]
elif isinstance(array, zarr.Array):
cks = array.chunks
elif isinstance(chunks, tuple):
cks = chunks
else:
raise TypeError(f"Unsupported chunks type {type(chunks)}")
# backup default
if cks is None:
cks = get_optimal_chunks(shape=array.shape, dtype=array.dtype)
# check
check_chunks_compatible(chunks=cks, shape=array.shape)
return cks
# ============= properties =================
@cached_property
def data(self):
return self.root["data"]
@cached_property
def meta(self):
return self.root["meta"]
def update_meta(self, data):
# sanitize data
np_data = {}
for key, value in data.items():
if isinstance(value, np.ndarray):
np_data[key] = value
else:
arr = np.array(value)
if arr.dtype == object:
raise TypeError(f"Invalid value type {type(value)}")
np_data[key] = arr
meta_group = self.meta
if self.backend == "zarr":
for key, value in np_data.items():
_ = meta_group.array(
name=key, data=value, shape=value.shape, chunks=value.shape, overwrite=True
)
else:
meta_group.update(np_data)
return meta_group
@property
def episode_ends(self):
return self.meta["episode_ends"]
def get_episode_idxs(self):
import numba
numba.jit(nopython=True)
def _get_episode_idxs(episode_ends):
result = np.zeros((episode_ends[-1],), dtype=np.int64)
for i in range(len(episode_ends)):
start = 0
if i > 0:
start = episode_ends[i - 1]
end = episode_ends[i]
for idx in range(start, end):
result[idx] = i
return result
return _get_episode_idxs(self.episode_ends)
@property
def backend(self):
backend = "numpy"
if isinstance(self.root, zarr.Group):
backend = "zarr"
return backend
# =========== dict-like API ==============
def __repr__(self) -> str:
if self.backend == "zarr":
return str(self.root.tree())
else:
return super().__repr__()
def keys(self):
return self.data.keys()
def values(self):
return self.data.values()
def items(self):
return self.data.items()
def __getitem__(self, key):
return self.data[key]
def __contains__(self, key):
return key in self.data
# =========== our API ==============
@property
def n_steps(self):
if len(self.episode_ends) == 0:
return 0
return self.episode_ends[-1]
@property
def n_episodes(self):
return len(self.episode_ends)
@property
def chunk_size(self):
if self.backend == "zarr":
return next(iter(self.data.arrays()))[-1].chunks[0]
return None
@property
def episode_lengths(self):
ends = self.episode_ends[:]
ends = np.insert(ends, 0, 0)
lengths = np.diff(ends)
return lengths
def add_episode(
self,
data: dict[str, np.ndarray],
chunks: dict[str, tuple] | None = None,
compressors: str | numcodecs.abc.Codec | dict | None = None,
):
if chunks is None:
chunks = {}
if compressors is None:
compressors = {}
assert len(data) > 0
is_zarr = self.backend == "zarr"
curr_len = self.n_steps
episode_length = None
for value in data.values():
assert len(value.shape) >= 1
if episode_length is None:
episode_length = len(value)
else:
assert episode_length == len(value)
new_len = curr_len + episode_length
for key, value in data.items():
new_shape = (new_len,) + value.shape[1:]
# create array
if key not in self.data:
if is_zarr:
cks = self._resolve_array_chunks(chunks=chunks, key=key, array=value)
cpr = self._resolve_array_compressor(compressors=compressors, key=key, array=value)
arr = self.data.zeros(
name=key, shape=new_shape, chunks=cks, dtype=value.dtype, compressor=cpr
)
else:
# copy data to prevent modify
arr = np.zeros(shape=new_shape, dtype=value.dtype)
self.data[key] = arr
else:
arr = self.data[key]
assert value.shape[1:] == arr.shape[1:]
# same method for both zarr and numpy
if is_zarr:
arr.resize(new_shape)
else:
arr.resize(new_shape, refcheck=False)
# copy data
arr[-value.shape[0] :] = value
# append to episode ends
episode_ends = self.episode_ends
if is_zarr:
episode_ends.resize(episode_ends.shape[0] + 1)
else:
episode_ends.resize(episode_ends.shape[0] + 1, refcheck=False)
episode_ends[-1] = new_len
# rechunk
if is_zarr and episode_ends.chunks[0] < episode_ends.shape[0]:
rechunk_recompress_array(self.meta, "episode_ends", chunk_length=int(episode_ends.shape[0] * 1.5))
def drop_episode(self):
is_zarr = self.backend == "zarr"
episode_ends = self.episode_ends[:].copy()
assert len(episode_ends) > 0
start_idx = 0
if len(episode_ends) > 1:
start_idx = episode_ends[-2]
for value in self.data.values():
new_shape = (start_idx,) + value.shape[1:]
if is_zarr:
value.resize(new_shape)
else:
value.resize(new_shape, refcheck=False)
if is_zarr:
self.episode_ends.resize(len(episode_ends) - 1)
else:
self.episode_ends.resize(len(episode_ends) - 1, refcheck=False)
def pop_episode(self):
assert self.n_episodes > 0
episode = self.get_episode(self.n_episodes - 1, copy=True)
self.drop_episode()
return episode
def extend(self, data):
self.add_episode(data)
def get_episode(self, idx, copy=False):
idx = list(range(len(self.episode_ends)))[idx]
start_idx = 0
if idx > 0:
start_idx = self.episode_ends[idx - 1]
end_idx = self.episode_ends[idx]
result = self.get_steps_slice(start_idx, end_idx, copy=copy)
return result
def get_episode_slice(self, idx):
start_idx = 0
if idx > 0:
start_idx = self.episode_ends[idx - 1]
end_idx = self.episode_ends[idx]
return slice(start_idx, end_idx)
def get_steps_slice(self, start, stop, step=None, copy=False):
_slice = slice(start, stop, step)
result = {}
for key, value in self.data.items():
x = value[_slice]
if copy and isinstance(value, np.ndarray):
x = x.copy()
result[key] = x
return result
# =========== chunking =============
def get_chunks(self) -> dict:
assert self.backend == "zarr"
chunks = {}
for key, value in self.data.items():
chunks[key] = value.chunks
return chunks
def set_chunks(self, chunks: dict):
assert self.backend == "zarr"
for key, value in chunks.items():
if key in self.data:
arr = self.data[key]
if value != arr.chunks:
check_chunks_compatible(chunks=value, shape=arr.shape)
rechunk_recompress_array(self.data, key, chunks=value)
def get_compressors(self) -> dict:
assert self.backend == "zarr"
compressors = {}
for key, value in self.data.items():
compressors[key] = value.compressor
return compressors
def set_compressors(self, compressors: dict):
assert self.backend == "zarr"
for key, value in compressors.items():
if key in self.data:
arr = self.data[key]
compressor = self.resolve_compressor(value)
if compressor != arr.compressor:
rechunk_recompress_array(self.data, key, compressor=compressor)

View File

@@ -1,202 +0,0 @@
#!/usr/bin/env python
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
This file contains download scripts for raw datasets.
Example of usage:
```
python lerobot/common/datasets/push_dataset_to_hub/_download_raw.py \
--raw-dir data/lerobot-raw/pusht_raw \
--repo-id lerobot-raw/pusht_raw
```
"""
import argparse
import logging
import warnings
from pathlib import Path
from huggingface_hub import snapshot_download
from lerobot.common.datasets.push_dataset_to_hub.utils import check_repo_id
# {raw_repo_id: raw_format}
AVAILABLE_RAW_REPO_IDS = {
"lerobot-raw/aloha_mobile_cabinet_raw": "aloha_hdf5",
"lerobot-raw/aloha_mobile_chair_raw": "aloha_hdf5",
"lerobot-raw/aloha_mobile_elevator_raw": "aloha_hdf5",
"lerobot-raw/aloha_mobile_shrimp_raw": "aloha_hdf5",
"lerobot-raw/aloha_mobile_wash_pan_raw": "aloha_hdf5",
"lerobot-raw/aloha_mobile_wipe_wine_raw": "aloha_hdf5",
"lerobot-raw/aloha_sim_insertion_human_raw": "aloha_hdf5",
"lerobot-raw/aloha_sim_insertion_scripted_raw": "aloha_hdf5",
"lerobot-raw/aloha_sim_transfer_cube_human_raw": "aloha_hdf5",
"lerobot-raw/aloha_sim_transfer_cube_scripted_raw": "aloha_hdf5",
"lerobot-raw/aloha_static_battery_raw": "aloha_hdf5",
"lerobot-raw/aloha_static_candy_raw": "aloha_hdf5",
"lerobot-raw/aloha_static_coffee_new_raw": "aloha_hdf5",
"lerobot-raw/aloha_static_coffee_raw": "aloha_hdf5",
"lerobot-raw/aloha_static_cups_open_raw": "aloha_hdf5",
"lerobot-raw/aloha_static_fork_pick_up_raw": "aloha_hdf5",
"lerobot-raw/aloha_static_pingpong_test_raw": "aloha_hdf5",
"lerobot-raw/aloha_static_pro_pencil_raw": "aloha_hdf5",
"lerobot-raw/aloha_static_screw_driver_raw": "aloha_hdf5",
"lerobot-raw/aloha_static_tape_raw": "aloha_hdf5",
"lerobot-raw/aloha_static_thread_velcro_raw": "aloha_hdf5",
"lerobot-raw/aloha_static_towel_raw": "aloha_hdf5",
"lerobot-raw/aloha_static_vinh_cup_left_raw": "aloha_hdf5",
"lerobot-raw/aloha_static_vinh_cup_raw": "aloha_hdf5",
"lerobot-raw/aloha_static_ziploc_slide_raw": "aloha_hdf5",
"lerobot-raw/umi_cup_in_the_wild_raw": "umi_zarr",
"lerobot-raw/pusht_raw": "pusht_zarr",
"lerobot-raw/unitreeh1_fold_clothes_raw": "aloha_hdf5",
"lerobot-raw/unitreeh1_rearrange_objects_raw": "aloha_hdf5",
"lerobot-raw/unitreeh1_two_robot_greeting_raw": "aloha_hdf5",
"lerobot-raw/unitreeh1_warehouse_raw": "aloha_hdf5",
"lerobot-raw/xarm_lift_medium_raw": "xarm_pkl",
"lerobot-raw/xarm_lift_medium_replay_raw": "xarm_pkl",
"lerobot-raw/xarm_push_medium_raw": "xarm_pkl",
"lerobot-raw/xarm_push_medium_replay_raw": "xarm_pkl",
"lerobot-raw/fractal20220817_data_raw": "openx_rlds.fractal20220817_data",
"lerobot-raw/kuka_raw": "openx_rlds.kuka",
"lerobot-raw/bridge_openx_raw": "openx_rlds.bridge_openx",
"lerobot-raw/taco_play_raw": "openx_rlds.taco_play",
"lerobot-raw/jaco_play_raw": "openx_rlds.jaco_play",
"lerobot-raw/berkeley_cable_routing_raw": "openx_rlds.berkeley_cable_routing",
"lerobot-raw/roboturk_raw": "openx_rlds.roboturk",
"lerobot-raw/nyu_door_opening_surprising_effectiveness_raw": "openx_rlds.nyu_door_opening_surprising_effectiveness",
"lerobot-raw/viola_raw": "openx_rlds.viola",
"lerobot-raw/berkeley_autolab_ur5_raw": "openx_rlds.berkeley_autolab_ur5",
"lerobot-raw/toto_raw": "openx_rlds.toto",
"lerobot-raw/language_table_raw": "openx_rlds.language_table",
"lerobot-raw/columbia_cairlab_pusht_real_raw": "openx_rlds.columbia_cairlab_pusht_real",
"lerobot-raw/stanford_kuka_multimodal_dataset_raw": "openx_rlds.stanford_kuka_multimodal_dataset",
"lerobot-raw/nyu_rot_dataset_raw": "openx_rlds.nyu_rot_dataset",
"lerobot-raw/io_ai_tech_raw": "openx_rlds.io_ai_tech",
"lerobot-raw/stanford_hydra_dataset_raw": "openx_rlds.stanford_hydra_dataset",
"lerobot-raw/austin_buds_dataset_raw": "openx_rlds.austin_buds_dataset",
"lerobot-raw/nyu_franka_play_dataset_raw": "openx_rlds.nyu_franka_play_dataset",
"lerobot-raw/maniskill_dataset_raw": "openx_rlds.maniskill_dataset",
"lerobot-raw/furniture_bench_dataset_raw": "openx_rlds.furniture_bench_dataset",
"lerobot-raw/cmu_franka_exploration_dataset_raw": "openx_rlds.cmu_franka_exploration_dataset",
"lerobot-raw/ucsd_kitchen_dataset_raw": "openx_rlds.ucsd_kitchen_dataset",
"lerobot-raw/ucsd_pick_and_place_dataset_raw": "openx_rlds.ucsd_pick_and_place_dataset",
"lerobot-raw/spoc_raw": "openx_rlds.spoc",
"lerobot-raw/austin_sailor_dataset_raw": "openx_rlds.austin_sailor_dataset",
"lerobot-raw/austin_sirius_dataset_raw": "openx_rlds.austin_sirius_dataset",
"lerobot-raw/bc_z_raw": "openx_rlds.bc_z",
"lerobot-raw/utokyo_pr2_opening_fridge_raw": "openx_rlds.utokyo_pr2_opening_fridge",
"lerobot-raw/utokyo_pr2_tabletop_manipulation_raw": "openx_rlds.utokyo_pr2_tabletop_manipulation",
"lerobot-raw/utokyo_xarm_pick_and_place_raw": "openx_rlds.utokyo_xarm_pick_and_place",
"lerobot-raw/utokyo_xarm_bimanual_raw": "openx_rlds.utokyo_xarm_bimanual",
"lerobot-raw/utokyo_saytap_raw": "openx_rlds.utokyo_saytap",
"lerobot-raw/robo_net_raw": "openx_rlds.robo_net",
"lerobot-raw/robo_set_raw": "openx_rlds.robo_set",
"lerobot-raw/berkeley_mvp_raw": "openx_rlds.berkeley_mvp",
"lerobot-raw/berkeley_rpt_raw": "openx_rlds.berkeley_rpt",
"lerobot-raw/kaist_nonprehensile_raw": "openx_rlds.kaist_nonprehensile",
"lerobot-raw/stanford_mask_vit_raw": "openx_rlds.stanford_mask_vit",
"lerobot-raw/tokyo_u_lsmo_raw": "openx_rlds.tokyo_u_lsmo",
"lerobot-raw/dlr_sara_pour_raw": "openx_rlds.dlr_sara_pour",
"lerobot-raw/dlr_sara_grid_clamp_raw": "openx_rlds.dlr_sara_grid_clamp",
"lerobot-raw/dlr_edan_shared_control_raw": "openx_rlds.dlr_edan_shared_control",
"lerobot-raw/asu_table_top_raw": "openx_rlds.asu_table_top",
"lerobot-raw/stanford_robocook_raw": "openx_rlds.stanford_robocook",
"lerobot-raw/imperialcollege_sawyer_wrist_cam_raw": "openx_rlds.imperialcollege_sawyer_wrist_cam",
"lerobot-raw/iamlab_cmu_pickup_insert_raw": "openx_rlds.iamlab_cmu_pickup_insert",
"lerobot-raw/uiuc_d3field_raw": "openx_rlds.uiuc_d3field",
"lerobot-raw/utaustin_mutex_raw": "openx_rlds.utaustin_mutex",
"lerobot-raw/berkeley_fanuc_manipulation_raw": "openx_rlds.berkeley_fanuc_manipulation",
"lerobot-raw/cmu_playing_with_food_raw": "openx_rlds.cmu_playing_with_food",
"lerobot-raw/cmu_play_fusion_raw": "openx_rlds.cmu_play_fusion",
"lerobot-raw/cmu_stretch_raw": "openx_rlds.cmu_stretch",
"lerobot-raw/berkeley_gnm_recon_raw": "openx_rlds.berkeley_gnm_recon",
"lerobot-raw/berkeley_gnm_cory_hall_raw": "openx_rlds.berkeley_gnm_cory_hall",
"lerobot-raw/berkeley_gnm_sac_son_raw": "openx_rlds.berkeley_gnm_sac_son",
"lerobot-raw/droid_raw": "openx_rlds.droid",
"lerobot-raw/droid_100_raw": "openx_rlds.droid100",
"lerobot-raw/fmb_raw": "openx_rlds.fmb",
"lerobot-raw/dobbe_raw": "openx_rlds.dobbe",
"lerobot-raw/usc_cloth_sim_raw": "openx_rlds.usc_cloth_sim",
"lerobot-raw/plex_robosuite_raw": "openx_rlds.plex_robosuite",
"lerobot-raw/conq_hose_manipulation_raw": "openx_rlds.conq_hose_manipulation",
"lerobot-raw/vima_raw": "openx_rlds.vima",
"lerobot-raw/robot_vqa_raw": "openx_rlds.robot_vqa",
"lerobot-raw/mimic_play_raw": "openx_rlds.mimic_play",
"lerobot-raw/tidybot_raw": "openx_rlds.tidybot",
"lerobot-raw/eth_agent_affordances_raw": "openx_rlds.eth_agent_affordances",
}
def download_raw(raw_dir: Path, repo_id: str):
check_repo_id(repo_id)
user_id, dataset_id = repo_id.split("/")
if not dataset_id.endswith("_raw"):
warnings.warn(
f"""`dataset_id` ({dataset_id}) doesn't end with '_raw' (e.g. 'lerobot/pusht_raw'). Following this
naming convention by renaming your repository is advised, but not mandatory.""",
stacklevel=1,
)
# Send warning if raw_dir isn't well formatted
if raw_dir.parts[-2] != user_id or raw_dir.parts[-1] != dataset_id:
warnings.warn(
f"""`raw_dir` ({raw_dir}) doesn't contain a community or user id `/` the name of the dataset that
match the `repo_id` (e.g. 'data/lerobot/pusht_raw'). Following this naming convention is advised,
but not mandatory.""",
stacklevel=1,
)
raw_dir.mkdir(parents=True, exist_ok=True)
logging.info(f"Start downloading from huggingface.co/{user_id} for {dataset_id}")
snapshot_download(repo_id, repo_type="dataset", local_dir=raw_dir)
logging.info(f"Finish downloading from huggingface.co/{user_id} for {dataset_id}")
def download_all_raw_datasets(data_dir: Path | None = None):
if data_dir is None:
data_dir = Path("data")
for repo_id in AVAILABLE_RAW_REPO_IDS:
raw_dir = data_dir / repo_id
download_raw(raw_dir, repo_id)
def main():
parser = argparse.ArgumentParser(
description=f"""A script to download raw datasets from Hugging Face hub to a local directory. Here is a
non exhaustive list of available repositories to use in `--repo-id`: {list(AVAILABLE_RAW_REPO_IDS.keys())}""",
)
parser.add_argument(
"--raw-dir",
type=Path,
required=True,
help="Directory containing input raw datasets (e.g. `data/aloha_mobile_chair_raw` or `data/pusht_raw).",
)
parser.add_argument(
"--repo-id",
type=str,
required=True,
help="""Repositery identifier on Hugging Face: a community or a user name `/` the name of
the dataset (e.g. `lerobot/pusht_raw`, `cadene/aloha_sim_insertion_human_raw`).""",
)
args = parser.parse_args()
download_raw(**vars(args))
if __name__ == "__main__":
main()

View File

@@ -1,184 +0,0 @@
#!/usr/bin/env python
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
Use this script to batch encode lerobot dataset from their raw format to LeRobotDataset and push their updated
version to the hub. Under the hood, this script reuses 'push_dataset_to_hub.py'. It assumes that you already
downloaded raw datasets, which you can do with the related '_download_raw.py' script.
For instance, for codebase_version = 'v1.6', the following command was run, assuming raw datasets from
lerobot-raw were downloaded in 'raw/datasets/directory':
```bash
python lerobot/common/datasets/push_dataset_to_hub/_encode_datasets.py \
--raw-dir raw/datasets/directory \
--raw-repo-ids lerobot-raw \
--local-dir push/datasets/directory \
--tests-data-dir tests/data \
--push-repo lerobot \
--vcodec libsvtav1 \
--pix-fmt yuv420p \
--g 2 \
--crf 30
```
"""
import argparse
from pathlib import Path
from lerobot.common.datasets.lerobot_dataset import CODEBASE_VERSION
from lerobot.common.datasets.push_dataset_to_hub._download_raw import AVAILABLE_RAW_REPO_IDS
from lerobot.common.datasets.push_dataset_to_hub.utils import check_repo_id
from lerobot.scripts.push_dataset_to_hub import push_dataset_to_hub
def get_push_repo_id_from_raw(raw_repo_id: str, push_repo: str) -> str:
dataset_id_raw = raw_repo_id.split("/")[1]
dataset_id = dataset_id_raw.removesuffix("_raw")
return f"{push_repo}/{dataset_id}"
def encode_datasets(
raw_dir: Path,
raw_repo_ids: list[str],
push_repo: str,
vcodec: str,
pix_fmt: str,
g: int,
crf: int,
local_dir: Path | None = None,
tests_data_dir: Path | None = None,
raw_format: str | None = None,
dry_run: bool = False,
) -> None:
if len(raw_repo_ids) == 1 and raw_repo_ids[0].lower() == "lerobot-raw":
raw_repo_ids_format = AVAILABLE_RAW_REPO_IDS
else:
if raw_format is None:
raise ValueError(raw_format)
raw_repo_ids_format = {id_: raw_format for id_ in raw_repo_ids}
for raw_repo_id, repo_raw_format in raw_repo_ids_format.items():
check_repo_id(raw_repo_id)
dataset_repo_id_push = get_push_repo_id_from_raw(raw_repo_id, push_repo)
dataset_raw_dir = raw_dir / raw_repo_id
dataset_dir = local_dir / dataset_repo_id_push if local_dir is not None else None
encoding = {
"vcodec": vcodec,
"pix_fmt": pix_fmt,
"g": g,
"crf": crf,
}
if not (dataset_raw_dir).is_dir():
raise NotADirectoryError(dataset_raw_dir)
if not dry_run:
push_dataset_to_hub(
dataset_raw_dir,
raw_format=repo_raw_format,
repo_id=dataset_repo_id_push,
local_dir=dataset_dir,
resume=True,
encoding=encoding,
tests_data_dir=tests_data_dir,
)
else:
print(
f"DRY RUN: {dataset_raw_dir} --> {dataset_dir} --> {dataset_repo_id_push}@{CODEBASE_VERSION}"
)
def main():
parser = argparse.ArgumentParser()
parser.add_argument(
"--raw-dir",
type=Path,
default=Path("data"),
help="Directory where raw datasets are located.",
)
parser.add_argument(
"--raw-repo-ids",
type=str,
nargs="*",
default=["lerobot-raw"],
help="""Raw dataset repo ids. if 'lerobot-raw', the keys from `AVAILABLE_RAW_REPO_IDS` will be
used and raw datasets will be fetched from the 'lerobot-raw/' repo and pushed with their
associated format. It is assumed that each dataset is located at `raw_dir / raw_repo_id` """,
)
parser.add_argument(
"--raw-format",
type=str,
default=None,
help="""Raw format to use for the raw repo-ids. Must be specified if --raw-repo-ids is not
'lerobot-raw'""",
)
parser.add_argument(
"--local-dir",
type=Path,
default=None,
help="""When provided, writes the dataset converted to LeRobotDataset format in this directory
(e.g. `data/lerobot/aloha_mobile_chair`).""",
)
parser.add_argument(
"--push-repo",
type=str,
default="lerobot",
help="Repo to upload datasets to",
)
parser.add_argument(
"--vcodec",
type=str,
default="libsvtav1",
help="Codec to use for encoding videos",
)
parser.add_argument(
"--pix-fmt",
type=str,
default="yuv420p",
help="Pixel formats (chroma subsampling) to be used for encoding",
)
parser.add_argument(
"--g",
type=int,
default=2,
help="Group of pictures sizes to be used for encoding.",
)
parser.add_argument(
"--crf",
type=int,
default=30,
help="Constant rate factors to be used for encoding.",
)
parser.add_argument(
"--tests-data-dir",
type=Path,
default=None,
help=(
"When provided, save tests artifacts into the given directory "
"(e.g. `--tests-data-dir tests/data` will save to tests/data/{--repo-id})."
),
)
parser.add_argument(
"--dry-run",
type=int,
default=0,
help="If not set to 0, this script won't download or upload anything.",
)
args = parser.parse_args()
encode_datasets(**vars(args))
if __name__ == "__main__":
main()

View File

@@ -1,326 +0,0 @@
#!/usr/bin/env python
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# imagecodecs/numcodecs.py
# Copyright (c) 2021-2022, Christoph Gohlke
# All rights reserved.
#
# Redistribution and use in source and binary forms, with or without
# modification, are permitted provided that the following conditions are met:
#
# 1. Redistributions of source code must retain the above copyright notice,
# this list of conditions and the following disclaimer.
#
# 2. Redistributions in binary form must reproduce the above copyright notice,
# this list of conditions and the following disclaimer in the documentation
# and/or other materials provided with the distribution.
#
# 3. Neither the name of the copyright holder nor the names of its
# contributors may be used to endorse or promote products derived from
# this software without specific prior written permission.
#
# THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS"
# AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE
# IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE
# ARE DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT HOLDER OR CONTRIBUTORS BE
# LIABLE FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR
# CONSEQUENTIAL DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF
# SUBSTITUTE GOODS OR SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS
# INTERRUPTION) HOWEVER CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN
# CONTRACT, STRICT LIABILITY, OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE)
# ARISING IN ANY WAY OUT OF THE USE OF THIS SOFTWARE, EVEN IF ADVISED OF THE
# POSSIBILITY OF SUCH DAMAGE.
# Copied from: https://github.com/real-stanford/universal_manipulation_interface/blob/298776ce251f33b6b3185a98d6e7d1f9ad49168b/diffusion_policy/codecs/imagecodecs_numcodecs.py#L1
"""Additional numcodecs implemented using imagecodecs."""
__version__ = "2022.9.26"
__all__ = ("register_codecs",)
import imagecodecs
import numpy
from numcodecs.abc import Codec
from numcodecs.registry import get_codec, register_codec
# TODO (azouitine): Remove useless codecs
def protective_squeeze(x: numpy.ndarray):
"""
Squeeze dim only if it's not the last dim.
Image dim expected to be *, H, W, C
"""
img_shape = x.shape[-3:]
if len(x.shape) > 3:
n_imgs = numpy.prod(x.shape[:-3])
if n_imgs > 1:
img_shape = (-1,) + img_shape
return x.reshape(img_shape)
def get_default_image_compressor(**kwargs):
if imagecodecs.JPEGXL:
# has JPEGXL
this_kwargs = {
"effort": 3,
"distance": 0.3,
# bug in libjxl, invalid codestream for non-lossless
# when decoding speed > 1
"decodingspeed": 1,
}
this_kwargs.update(kwargs)
return JpegXl(**this_kwargs)
else:
this_kwargs = {"level": 50}
this_kwargs.update(kwargs)
return Jpeg2k(**this_kwargs)
class Jpeg2k(Codec):
"""JPEG 2000 codec for numcodecs."""
codec_id = "imagecodecs_jpeg2k"
def __init__(
self,
level=None,
codecformat=None,
colorspace=None,
tile=None,
reversible=None,
bitspersample=None,
resolutions=None,
numthreads=None,
verbose=0,
):
self.level = level
self.codecformat = codecformat
self.colorspace = colorspace
self.tile = None if tile is None else tuple(tile)
self.reversible = reversible
self.bitspersample = bitspersample
self.resolutions = resolutions
self.numthreads = numthreads
self.verbose = verbose
def encode(self, buf):
buf = protective_squeeze(numpy.asarray(buf))
return imagecodecs.jpeg2k_encode(
buf,
level=self.level,
codecformat=self.codecformat,
colorspace=self.colorspace,
tile=self.tile,
reversible=self.reversible,
bitspersample=self.bitspersample,
resolutions=self.resolutions,
numthreads=self.numthreads,
verbose=self.verbose,
)
def decode(self, buf, out=None):
return imagecodecs.jpeg2k_decode(buf, verbose=self.verbose, numthreads=self.numthreads, out=out)
class JpegXl(Codec):
"""JPEG XL codec for numcodecs."""
codec_id = "imagecodecs_jpegxl"
def __init__(
self,
# encode
level=None,
effort=None,
distance=None,
lossless=None,
decodingspeed=None,
photometric=None,
planar=None,
usecontainer=None,
# decode
index=None,
keeporientation=None,
# both
numthreads=None,
):
"""
Return JPEG XL image from numpy array.
Float must be in nominal range 0..1.
Currently L, LA, RGB, RGBA images are supported in contig mode.
Extra channels are only supported for grayscale images in planar mode.
Parameters
----------
level : Default to None, i.e. not overwriting lossess and decodingspeed options.
When < 0: Use lossless compression
When in [0,1,2,3,4]: Sets the decoding speed tier for the provided options.
Minimum is 0 (slowest to decode, best quality/density), and maximum
is 4 (fastest to decode, at the cost of some quality/density).
effort : Default to 3.
Sets encoder effort/speed level without affecting decoding speed.
Valid values are, from faster to slower speed: 1:lightning 2:thunder
3:falcon 4:cheetah 5:hare 6:wombat 7:squirrel 8:kitten 9:tortoise.
Speed: lightning, thunder, falcon, cheetah, hare, wombat, squirrel, kitten, tortoise
control the encoder effort in ascending order.
This also affects memory usage: using lower effort will typically reduce memory
consumption during encoding.
lightning and thunder are fast modes useful for lossless mode (modular).
falcon disables all of the following tools.
cheetah enables coefficient reordering, context clustering, and heuristics for selecting DCT sizes and quantization steps.
hare enables Gaborish filtering, chroma from luma, and an initial estimate of quantization steps.
wombat enables error diffusion quantization and full DCT size selection heuristics.
squirrel (default) enables dots, patches, and spline detection, and full context clustering.
kitten optimizes the adaptive quantization for a psychovisual metric.
tortoise enables a more thorough adaptive quantization search.
distance : Default to 1.0
Sets the distance level for lossy compression: target max butteraugli distance,
lower = higher quality. Range: 0 .. 15. 0.0 = mathematically lossless
(however, use JxlEncoderSetFrameLossless instead to use true lossless,
as setting distance to 0 alone is not the only requirement).
1.0 = visually lossless. Recommended range: 0.5 .. 3.0.
lossess : Default to False.
Use lossess encoding.
decodingspeed : Default to 0.
Duplicate to level. [0,4]
photometric : Return JxlColorSpace value.
Default logic is quite complicated but works most of the time.
Accepted value:
int: [-1,3]
str: ['RGB',
'WHITEISZERO', 'MINISWHITE',
'BLACKISZERO', 'MINISBLACK', 'GRAY',
'XYB', 'KNOWN']
planar : Enable multi-channel mode.
Default to false.
usecontainer :
Forces the encoder to use the box-based container format (BMFF)
even when not necessary.
When using JxlEncoderUseBoxes, JxlEncoderStoreJPEGMetadata or
JxlEncoderSetCodestreamLevel with level 10, the encoder will
automatically also use the container format, it is not necessary
to use JxlEncoderUseContainer for those use cases.
By default this setting is disabled.
index : Selectively decode frames for animation.
Default to 0, decode all frames.
When set to > 0, decode that frame index only.
keeporientation :
Enables or disables preserving of as-in-bitstream pixeldata orientation.
Some images are encoded with an Orientation tag indicating that the
decoder must perform a rotation and/or mirroring to the encoded image data.
If skip_reorientation is JXL_FALSE (the default): the decoder will apply
the transformation from the orientation setting, hence rendering the image
according to its specified intent. When producing a JxlBasicInfo, the decoder
will always set the orientation field to JXL_ORIENT_IDENTITY (matching the
returned pixel data) and also align xsize and ysize so that they correspond
to the width and the height of the returned pixel data.
If skip_reorientation is JXL_TRUE: the decoder will skip applying the
transformation from the orientation setting, returning the image in
the as-in-bitstream pixeldata orientation. This may be faster to decode
since the decoder doesnt have to apply the transformation, but can
cause wrong display of the image if the orientation tag is not correctly
taken into account by the user.
By default, this option is disabled, and the returned pixel data is
re-oriented according to the images Orientation setting.
threads : Default to 1.
If <= 0, use all cores.
If > 32, clipped to 32.
"""
self.level = level
self.effort = effort
self.distance = distance
self.lossless = bool(lossless)
self.decodingspeed = decodingspeed
self.photometric = photometric
self.planar = planar
self.usecontainer = usecontainer
self.index = index
self.keeporientation = keeporientation
self.numthreads = numthreads
def encode(self, buf):
# TODO: only squeeze all but last dim
buf = protective_squeeze(numpy.asarray(buf))
return imagecodecs.jpegxl_encode(
buf,
level=self.level,
effort=self.effort,
distance=self.distance,
lossless=self.lossless,
decodingspeed=self.decodingspeed,
photometric=self.photometric,
planar=self.planar,
usecontainer=self.usecontainer,
numthreads=self.numthreads,
)
def decode(self, buf, out=None):
return imagecodecs.jpegxl_decode(
buf,
index=self.index,
keeporientation=self.keeporientation,
numthreads=self.numthreads,
out=out,
)
def _flat(out):
"""Return numpy array as contiguous view of bytes if possible."""
if out is None:
return None
view = memoryview(out)
if view.readonly or not view.contiguous:
return None
return view.cast("B")
def register_codecs(codecs=None, force=False, verbose=True):
"""Register codecs in this module with numcodecs."""
for name, cls in globals().items():
if not hasattr(cls, "codec_id") or name == "Codec":
continue
if codecs is not None and cls.codec_id not in codecs:
continue
try:
try: # noqa: SIM105
get_codec({"id": cls.codec_id})
except TypeError:
# registered, but failed
pass
except ValueError:
# not registered yet
pass
else:
if not force:
if verbose:
log_warning(f"numcodec {cls.codec_id!r} already registered")
continue
if verbose:
log_warning(f"replacing registered numcodec {cls.codec_id!r}")
register_codec(cls)
def log_warning(msg, *args, **kwargs):
"""Log message with level WARNING."""
import logging
logging.getLogger(__name__).warning(msg, *args, **kwargs)

View File

@@ -1,233 +0,0 @@
#!/usr/bin/env python
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
Contains utilities to process raw data format of HDF5 files like in: https://github.com/tonyzhaozh/act
"""
import gc
import shutil
from pathlib import Path
import h5py
import numpy as np
import torch
import tqdm
from datasets import Dataset, Features, Image, Sequence, Value
from PIL import Image as PILImage
from lerobot.common.datasets.lerobot_dataset import CODEBASE_VERSION
from lerobot.common.datasets.push_dataset_to_hub.utils import (
calculate_episode_data_index,
concatenate_episodes,
get_default_encoding,
save_images_concurrently,
)
from lerobot.common.datasets.utils import (
hf_transform_to_torch,
)
from lerobot.common.datasets.video_utils import VideoFrame, encode_video_frames
def get_cameras(hdf5_data):
# ignore depth channel, not currently handled
# TODO(rcadene): add depth
rgb_cameras = [key for key in hdf5_data["/observations/images"].keys() if "depth" not in key] # noqa: SIM118
return rgb_cameras
def check_format(raw_dir) -> bool:
# only frames from simulation are uncompressed
compressed_images = "sim" not in raw_dir.name
hdf5_paths = list(raw_dir.glob("episode_*.hdf5"))
assert len(hdf5_paths) != 0
for hdf5_path in hdf5_paths:
with h5py.File(hdf5_path, "r") as data:
assert "/action" in data
assert "/observations/qpos" in data
assert data["/action"].ndim == 2
assert data["/observations/qpos"].ndim == 2
num_frames = data["/action"].shape[0]
assert num_frames == data["/observations/qpos"].shape[0]
for camera in get_cameras(data):
assert num_frames == data[f"/observations/images/{camera}"].shape[0]
if compressed_images:
assert data[f"/observations/images/{camera}"].ndim == 2
else:
assert data[f"/observations/images/{camera}"].ndim == 4
b, h, w, c = data[f"/observations/images/{camera}"].shape
assert c < h and c < w, f"Expect (h,w,c) image format but ({h=},{w=},{c=}) provided."
def load_from_raw(
raw_dir: Path,
videos_dir: Path,
fps: int,
video: bool,
episodes: list[int] | None = None,
encoding: dict | None = None,
):
# only frames from simulation are uncompressed
compressed_images = "sim" not in raw_dir.name
hdf5_files = sorted(raw_dir.glob("episode_*.hdf5"))
num_episodes = len(hdf5_files)
ep_dicts = []
ep_ids = episodes if episodes else range(num_episodes)
for ep_idx in tqdm.tqdm(ep_ids):
ep_path = hdf5_files[ep_idx]
with h5py.File(ep_path, "r") as ep:
num_frames = ep["/action"].shape[0]
# last step of demonstration is considered done
done = torch.zeros(num_frames, dtype=torch.bool)
done[-1] = True
state = torch.from_numpy(ep["/observations/qpos"][:])
action = torch.from_numpy(ep["/action"][:])
if "/observations/qvel" in ep:
velocity = torch.from_numpy(ep["/observations/qvel"][:])
if "/observations/effort" in ep:
effort = torch.from_numpy(ep["/observations/effort"][:])
ep_dict = {}
for camera in get_cameras(ep):
img_key = f"observation.images.{camera}"
if compressed_images:
import cv2
# load one compressed image after the other in RAM and uncompress
imgs_array = []
for data in ep[f"/observations/images/{camera}"]:
imgs_array.append(cv2.imdecode(data, 1))
imgs_array = np.array(imgs_array)
else:
# load all images in RAM
imgs_array = ep[f"/observations/images/{camera}"][:]
if video:
# save png images in temporary directory
tmp_imgs_dir = videos_dir / "tmp_images"
save_images_concurrently(imgs_array, tmp_imgs_dir)
# encode images to a mp4 video
fname = f"{img_key}_episode_{ep_idx:06d}.mp4"
video_path = videos_dir / fname
encode_video_frames(tmp_imgs_dir, video_path, fps, **(encoding or {}))
# clean temporary images directory
shutil.rmtree(tmp_imgs_dir)
# store the reference to the video frame
ep_dict[img_key] = [
{"path": f"videos/{fname}", "timestamp": i / fps} for i in range(num_frames)
]
else:
ep_dict[img_key] = [PILImage.fromarray(x) for x in imgs_array]
ep_dict["observation.state"] = state
if "/observations/velocity" in ep:
ep_dict["observation.velocity"] = velocity
if "/observations/effort" in ep:
ep_dict["observation.effort"] = effort
ep_dict["action"] = action
ep_dict["episode_index"] = torch.tensor([ep_idx] * num_frames)
ep_dict["frame_index"] = torch.arange(0, num_frames, 1)
ep_dict["timestamp"] = torch.arange(0, num_frames, 1) / fps
ep_dict["next.done"] = done
# TODO(rcadene): add reward and success by computing them in sim
assert isinstance(ep_idx, int)
ep_dicts.append(ep_dict)
gc.collect()
data_dict = concatenate_episodes(ep_dicts)
total_frames = data_dict["frame_index"].shape[0]
data_dict["index"] = torch.arange(0, total_frames, 1)
return data_dict
def to_hf_dataset(data_dict, video) -> Dataset:
features = {}
keys = [key for key in data_dict if "observation.images." in key]
for key in keys:
if video:
features[key] = VideoFrame()
else:
features[key] = Image()
features["observation.state"] = Sequence(
length=data_dict["observation.state"].shape[1], feature=Value(dtype="float32", id=None)
)
if "observation.velocity" in data_dict:
features["observation.velocity"] = Sequence(
length=data_dict["observation.velocity"].shape[1], feature=Value(dtype="float32", id=None)
)
if "observation.effort" in data_dict:
features["observation.effort"] = Sequence(
length=data_dict["observation.effort"].shape[1], feature=Value(dtype="float32", id=None)
)
features["action"] = Sequence(
length=data_dict["action"].shape[1], feature=Value(dtype="float32", id=None)
)
features["episode_index"] = Value(dtype="int64", id=None)
features["frame_index"] = Value(dtype="int64", id=None)
features["timestamp"] = Value(dtype="float32", id=None)
features["next.done"] = Value(dtype="bool", id=None)
features["index"] = Value(dtype="int64", id=None)
hf_dataset = Dataset.from_dict(data_dict, features=Features(features))
hf_dataset.set_transform(hf_transform_to_torch)
return hf_dataset
def from_raw_to_lerobot_format(
raw_dir: Path,
videos_dir: Path,
fps: int | None = None,
video: bool = True,
episodes: list[int] | None = None,
encoding: dict | None = None,
):
# sanity check
check_format(raw_dir)
if fps is None:
fps = 50
data_dict = load_from_raw(raw_dir, videos_dir, fps, video, episodes, encoding)
hf_dataset = to_hf_dataset(data_dict, video)
episode_data_index = calculate_episode_data_index(hf_dataset)
info = {
"codebase_version": CODEBASE_VERSION,
"fps": fps,
"video": video,
}
if video:
info["encoding"] = get_default_encoding()
return hf_dataset, episode_data_index, info

View File

@@ -1,107 +0,0 @@
#!/usr/bin/env python
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
Contains utilities to process raw data format of png images files recorded with capture_camera_feed.py
"""
from pathlib import Path
import torch
from datasets import Dataset, Features, Image, Value
from PIL import Image as PILImage
from lerobot.common.datasets.lerobot_dataset import CODEBASE_VERSION
from lerobot.common.datasets.push_dataset_to_hub.utils import (
calculate_episode_data_index,
concatenate_episodes,
)
from lerobot.common.datasets.utils import hf_transform_to_torch
from lerobot.common.datasets.video_utils import VideoFrame
def check_format(raw_dir: Path) -> bool:
image_paths = list(raw_dir.glob("frame_*.png"))
if len(image_paths) == 0:
raise ValueError
def load_from_raw(raw_dir: Path, fps: int, episodes: list[int] | None = None):
if episodes is not None:
# TODO(aliberts): add support for multi-episodes.
raise NotImplementedError()
ep_dict = {}
ep_idx = 0
image_paths = sorted(raw_dir.glob("frame_*.png"))
num_frames = len(image_paths)
ep_dict["observation.image"] = [PILImage.open(x) for x in image_paths]
ep_dict["episode_index"] = torch.tensor([ep_idx] * num_frames)
ep_dict["frame_index"] = torch.arange(0, num_frames, 1)
ep_dict["timestamp"] = torch.arange(0, num_frames, 1) / fps
ep_dicts = [ep_dict]
data_dict = concatenate_episodes(ep_dicts)
total_frames = data_dict["frame_index"].shape[0]
data_dict["index"] = torch.arange(0, total_frames, 1)
return data_dict
def to_hf_dataset(data_dict, video) -> Dataset:
features = {}
if video:
features["observation.image"] = VideoFrame()
else:
features["observation.image"] = Image()
features["episode_index"] = Value(dtype="int64", id=None)
features["frame_index"] = Value(dtype="int64", id=None)
features["timestamp"] = Value(dtype="float32", id=None)
features["index"] = Value(dtype="int64", id=None)
hf_dataset = Dataset.from_dict(data_dict, features=Features(features))
hf_dataset.set_transform(hf_transform_to_torch)
return hf_dataset
def from_raw_to_lerobot_format(
raw_dir: Path,
videos_dir: Path,
fps: int | None = None,
video: bool = True,
episodes: list[int] | None = None,
encoding: dict | None = None,
):
if video or episodes or encoding is not None:
# TODO(aliberts): support this
raise NotImplementedError
# sanity check
check_format(raw_dir)
if fps is None:
fps = 30
data_dict = load_from_raw(raw_dir, videos_dir, fps, video, episodes)
hf_dataset = to_hf_dataset(data_dict, video)
episode_data_index = calculate_episode_data_index(hf_dataset)
info = {
"codebase_version": CODEBASE_VERSION,
"fps": fps,
"video": video,
}
return hf_dataset, episode_data_index, info

View File

@@ -1,233 +0,0 @@
#!/usr/bin/env python
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
Contains utilities to process raw data format from dora-record
"""
import re
import warnings
from pathlib import Path
import pandas as pd
import torch
from datasets import Dataset, Features, Image, Sequence, Value
from lerobot.common.datasets.lerobot_dataset import CODEBASE_VERSION
from lerobot.common.datasets.push_dataset_to_hub.utils import calculate_episode_data_index
from lerobot.common.datasets.utils import (
hf_transform_to_torch,
)
from lerobot.common.datasets.video_utils import VideoFrame
def check_format(raw_dir) -> bool:
assert raw_dir.exists()
leader_file = list(raw_dir.glob("*.parquet"))
if len(leader_file) == 0:
raise ValueError(f"Missing parquet files in '{raw_dir}'")
return True
def load_from_raw(raw_dir: Path, videos_dir: Path, fps: int, video: bool, episodes: list[int] | None = None):
# Load data stream that will be used as reference for the timestamps synchronization
reference_files = list(raw_dir.glob("observation.images.cam_*.parquet"))
if len(reference_files) == 0:
raise ValueError(f"Missing reference files for camera, starting with in '{raw_dir}'")
# select first camera in alphanumeric order
reference_key = sorted(reference_files)[0].stem
reference_df = pd.read_parquet(raw_dir / f"{reference_key}.parquet")
reference_df = reference_df[["timestamp_utc", reference_key]]
# Merge all data stream using nearest backward strategy
df = reference_df
for path in raw_dir.glob("*.parquet"):
key = path.stem # action or observation.state or ...
if key == reference_key:
continue
if "failed_episode_index" in key:
# TODO(rcadene): add support for removing episodes that are tagged as "failed"
continue
modality_df = pd.read_parquet(path)
modality_df = modality_df[["timestamp_utc", key]]
df = pd.merge_asof(
df,
modality_df,
on="timestamp_utc",
# "nearest" is the best option over "backward", since the latter can desynchronizes camera timestamps by
# matching timestamps that are too far apart, in order to fit the backward constraints. It's not the case for "nearest".
# However, note that "nearest" might synchronize the reference camera with other cameras on slightly future timestamps.
# are too far apart.
direction="nearest",
tolerance=pd.Timedelta(f"{1 / fps} seconds"),
)
# Remove rows with episode_index -1 which indicates data that correspond to in-between episodes
df = df[df["episode_index"] != -1]
image_keys = [key for key in df if "observation.images." in key]
def get_episode_index(row):
episode_index_per_cam = {}
for key in image_keys:
path = row[key][0]["path"]
match = re.search(r"_(\d{6}).mp4", path)
if not match:
raise ValueError(path)
episode_index = int(match.group(1))
episode_index_per_cam[key] = episode_index
if len(set(episode_index_per_cam.values())) != 1:
raise ValueError(
f"All cameras are expected to belong to the same episode, but getting {episode_index_per_cam}"
)
return episode_index
df["episode_index"] = df.apply(get_episode_index, axis=1)
# dora only use arrays, so single values are encapsulated into a list
df["frame_index"] = df.groupby("episode_index").cumcount()
df = df.reset_index()
df["index"] = df.index
# set 'next.done' to True for the last frame of each episode
df["next.done"] = False
df.loc[df.groupby("episode_index").tail(1).index, "next.done"] = True
df["timestamp"] = df["timestamp_utc"].map(lambda x: x.timestamp())
# each episode starts with timestamp 0 to match the ones from the video
df["timestamp"] = df.groupby("episode_index")["timestamp"].transform(lambda x: x - x.iloc[0])
del df["timestamp_utc"]
# sanity check
has_nan = df.isna().any().any()
if has_nan:
raise ValueError("Dataset contains Nan values.")
# sanity check episode indices go from 0 to n-1
ep_ids = [ep_idx for ep_idx, _ in df.groupby("episode_index")]
expected_ep_ids = list(range(df["episode_index"].max() + 1))
if ep_ids != expected_ep_ids:
raise ValueError(f"Episodes indices go from {ep_ids} instead of {expected_ep_ids}")
# Create symlink to raw videos directory (that needs to be absolute not relative)
videos_dir.parent.mkdir(parents=True, exist_ok=True)
videos_dir.symlink_to((raw_dir / "videos").absolute())
# sanity check the video paths are well formatted
for key in df:
if "observation.images." not in key:
continue
for ep_idx in ep_ids:
video_path = videos_dir / f"{key}_episode_{ep_idx:06d}.mp4"
if not video_path.exists():
raise ValueError(f"Video file not found in {video_path}")
data_dict = {}
for key in df:
# is video frame
if "observation.images." in key:
# we need `[0] because dora only use arrays, so single values are encapsulated into a list.
# it is the case for video_frame dictionary = [{"path": ..., "timestamp": ...}]
data_dict[key] = [video_frame[0] for video_frame in df[key].values]
# sanity check the video path is well formatted
video_path = videos_dir.parent / data_dict[key][0]["path"]
if not video_path.exists():
raise ValueError(f"Video file not found in {video_path}")
# is number
elif df[key].iloc[0].ndim == 0 or df[key].iloc[0].shape[0] == 1:
data_dict[key] = torch.from_numpy(df[key].values)
# is vector
elif df[key].iloc[0].shape[0] > 1:
data_dict[key] = torch.stack([torch.from_numpy(x.copy()) for x in df[key].values])
else:
raise ValueError(key)
return data_dict
def to_hf_dataset(data_dict, video) -> Dataset:
features = {}
keys = [key for key in data_dict if "observation.images." in key]
for key in keys:
if video:
features[key] = VideoFrame()
else:
features[key] = Image()
features["observation.state"] = Sequence(
length=data_dict["observation.state"].shape[1], feature=Value(dtype="float32", id=None)
)
if "observation.velocity" in data_dict:
features["observation.velocity"] = Sequence(
length=data_dict["observation.velocity"].shape[1], feature=Value(dtype="float32", id=None)
)
if "observation.effort" in data_dict:
features["observation.effort"] = Sequence(
length=data_dict["observation.effort"].shape[1], feature=Value(dtype="float32", id=None)
)
features["action"] = Sequence(
length=data_dict["action"].shape[1], feature=Value(dtype="float32", id=None)
)
features["episode_index"] = Value(dtype="int64", id=None)
features["frame_index"] = Value(dtype="int64", id=None)
features["timestamp"] = Value(dtype="float32", id=None)
features["next.done"] = Value(dtype="bool", id=None)
features["index"] = Value(dtype="int64", id=None)
hf_dataset = Dataset.from_dict(data_dict, features=Features(features))
hf_dataset.set_transform(hf_transform_to_torch)
return hf_dataset
def from_raw_to_lerobot_format(
raw_dir: Path,
videos_dir: Path,
fps: int | None = None,
video: bool = True,
episodes: list[int] | None = None,
encoding: dict | None = None,
):
# sanity check
check_format(raw_dir)
if fps is None:
fps = 30
else:
raise NotImplementedError()
if not video:
raise NotImplementedError()
if encoding is not None:
warnings.warn(
"Video encoding is currently done outside of LeRobot for the dora_parquet format.",
stacklevel=1,
)
data_df = load_from_raw(raw_dir, videos_dir, fps, episodes)
hf_dataset = to_hf_dataset(data_df, video)
episode_data_index = calculate_episode_data_index(hf_dataset)
info = {
"codebase_version": CODEBASE_VERSION,
"fps": fps,
"video": video,
}
if video:
info["encoding"] = "unknown"
return hf_dataset, episode_data_index, info

View File

@@ -1,312 +0,0 @@
#!/usr/bin/env python
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
For all datasets in the RLDS format.
For https://github.com/google-deepmind/open_x_embodiment (OPENX) datasets.
NOTE: You need to install tensorflow and tensorflow_datasets before running this script.
Example:
python lerobot/scripts/push_dataset_to_hub.py \
--raw-dir /path/to/data/bridge_dataset/1.0.0/ \
--repo-id your_hub/sampled_bridge_data_v2 \
--raw-format rlds \
--episodes 3 4 5 8 9
Exact dataset fps defined in openx/config.py, obtained from:
https://docs.google.com/spreadsheets/d/1rPBD77tk60AEIGZrGSODwyyzs5FgCU9Uz3h-3_t2A9g/edit?gid=0#gid=0&range=R:R
"""
import shutil
from pathlib import Path
import numpy as np
import tensorflow as tf
import tensorflow_datasets as tfds
import torch
import tqdm
from datasets import Dataset, Features, Image, Sequence, Value
from PIL import Image as PILImage
from lerobot.common.datasets.lerobot_dataset import CODEBASE_VERSION
from lerobot.common.datasets.push_dataset_to_hub.utils import (
calculate_episode_data_index,
concatenate_episodes,
get_default_encoding,
save_images_concurrently,
)
from lerobot.common.datasets.utils import (
hf_transform_to_torch,
)
from lerobot.common.datasets.video_utils import VideoFrame, encode_video_frames
np.set_printoptions(precision=2)
def tf_to_torch(data):
return torch.from_numpy(data.numpy())
def tf_img_convert(img):
if img.dtype == tf.string:
img = tf.io.decode_image(img, expand_animations=False, dtype=tf.uint8)
elif img.dtype != tf.uint8:
raise ValueError(f"Unsupported image dtype: found with dtype {img.dtype}")
return img.numpy()
def _broadcast_metadata_rlds(i: tf.Tensor, traj: dict) -> dict:
"""
In the RLDS format, each trajectory has some top-level metadata that is explicitly separated out, and a "steps"
entry. This function moves the "steps" entry to the top level, broadcasting any metadata to the length of the
trajectory. This function also adds the extra metadata fields `_len`, `_traj_index`, and `_frame_index`.
NOTE: adapted from DLimp library https://github.com/kvablack/dlimp/
"""
steps = traj.pop("steps")
traj_len = tf.shape(tf.nest.flatten(steps)[0])[0]
# broadcast metadata to the length of the trajectory
metadata = tf.nest.map_structure(lambda x: tf.repeat(x, traj_len), traj)
# put steps back in
assert "traj_metadata" not in steps
traj = {**steps, "traj_metadata": metadata}
assert "_len" not in traj
assert "_traj_index" not in traj
assert "_frame_index" not in traj
traj["_len"] = tf.repeat(traj_len, traj_len)
traj["_traj_index"] = tf.repeat(i, traj_len)
traj["_frame_index"] = tf.range(traj_len)
return traj
def load_from_raw(
raw_dir: Path,
videos_dir: Path,
fps: int,
video: bool,
episodes: list[int] | None = None,
encoding: dict | None = None,
):
"""
Args:
raw_dir (Path): _description_
videos_dir (Path): _description_
fps (int): _description_
video (bool): _description_
episodes (list[int] | None, optional): _description_. Defaults to None.
"""
ds_builder = tfds.builder_from_directory(str(raw_dir))
dataset = ds_builder.as_dataset(
split="all",
decoders={"steps": tfds.decode.SkipDecoding()},
)
dataset_info = ds_builder.info
print("dataset_info: ", dataset_info)
ds_length = len(dataset)
dataset = dataset.take(ds_length)
# "flatten" the dataset as such we can apply trajectory level map() easily
# each [obs][key] has a shape of (frame_size, ...)
dataset = dataset.enumerate().map(_broadcast_metadata_rlds)
# we will apply the standardization transform if the dataset_name is provided
# if the dataset name is not provided and the goal is to convert any rlds formatted dataset
# search for 'image' keys in the observations
image_keys = []
state_keys = []
observation_info = dataset_info.features["steps"]["observation"]
for key in observation_info:
# check whether the key is for an image or a vector observation
if len(observation_info[key].shape) == 3:
# only adding uint8 images discards depth images
if observation_info[key].dtype == tf.uint8:
image_keys.append(key)
else:
state_keys.append(key)
lang_key = "language_instruction" if "language_instruction" in dataset.element_spec else None
print(" - image_keys: ", image_keys)
print(" - lang_key: ", lang_key)
it = iter(dataset)
ep_dicts = []
# Init temp path to save ep_dicts in case of crash
tmp_ep_dicts_dir = videos_dir.parent.joinpath("ep_dicts")
tmp_ep_dicts_dir.mkdir(parents=True, exist_ok=True)
# check if ep_dicts have already been saved in /tmp
starting_ep_idx = 0
saved_ep_dicts = [ep.__str__() for ep in tmp_ep_dicts_dir.iterdir()]
if len(saved_ep_dicts) > 0:
saved_ep_dicts.sort()
# get last ep_idx number
starting_ep_idx = int(saved_ep_dicts[-1][-13:-3]) + 1
for i in range(starting_ep_idx):
episode = next(it)
ep_dicts.append(torch.load(saved_ep_dicts[i]))
# if we user specified episodes, skip the ones not in the list
if episodes is not None:
if ds_length == 0:
raise ValueError("No episodes found.")
# convert episodes index to sorted list
episodes = sorted(episodes)
for ep_idx in tqdm.tqdm(range(starting_ep_idx, ds_length)):
episode = next(it)
# if user specified episodes, skip the ones not in the list
if episodes is not None:
if len(episodes) == 0:
break
if ep_idx == episodes[0]:
# process this episode
print(" selecting episode idx: ", ep_idx)
episodes.pop(0)
else:
continue # skip
num_frames = episode["action"].shape[0]
ep_dict = {}
for key in state_keys:
ep_dict[f"observation.{key}"] = tf_to_torch(episode["observation"][key])
ep_dict["action"] = tf_to_torch(episode["action"])
ep_dict["next.reward"] = tf_to_torch(episode["reward"]).float()
ep_dict["next.done"] = tf_to_torch(episode["is_last"])
ep_dict["is_terminal"] = tf_to_torch(episode["is_terminal"])
ep_dict["is_first"] = tf_to_torch(episode["is_first"])
ep_dict["discount"] = tf_to_torch(episode["discount"])
# If lang_key is present, convert the entire tensor at once
if lang_key is not None:
ep_dict["language_instruction"] = [x.numpy().decode("utf-8") for x in episode[lang_key]]
ep_dict["timestamp"] = torch.arange(0, num_frames, 1) / fps
ep_dict["episode_index"] = torch.tensor([ep_idx] * num_frames)
ep_dict["frame_index"] = torch.arange(0, num_frames, 1)
image_array_dict = {key: [] for key in image_keys}
for im_key in image_keys:
imgs = episode["observation"][im_key]
image_array_dict[im_key] = [tf_img_convert(img) for img in imgs]
# loop through all cameras
for im_key in image_keys:
img_key = f"observation.images.{im_key}"
imgs_array = image_array_dict[im_key]
imgs_array = np.array(imgs_array)
if video:
# save png images in temporary directory
tmp_imgs_dir = videos_dir / "tmp_images"
save_images_concurrently(imgs_array, tmp_imgs_dir)
# encode images to a mp4 video
fname = f"{img_key}_episode_{ep_idx:06d}.mp4"
video_path = videos_dir / fname
encode_video_frames(tmp_imgs_dir, video_path, fps, **(encoding or {}))
# clean temporary images directory
shutil.rmtree(tmp_imgs_dir)
# store the reference to the video frame
ep_dict[img_key] = [
{"path": f"videos/{fname}", "timestamp": i / fps} for i in range(num_frames)
]
else:
ep_dict[img_key] = [PILImage.fromarray(x) for x in imgs_array]
path_ep_dict = tmp_ep_dicts_dir.joinpath(
"ep_dict_" + "0" * (10 - len(str(ep_idx))) + str(ep_idx) + ".pt"
)
torch.save(ep_dict, path_ep_dict)
ep_dicts.append(ep_dict)
data_dict = concatenate_episodes(ep_dicts)
total_frames = data_dict["frame_index"].shape[0]
data_dict["index"] = torch.arange(0, total_frames, 1)
return data_dict
def to_hf_dataset(data_dict, video) -> Dataset:
features = {}
for key in data_dict:
# check if vector state obs
if key.startswith("observation.") and "observation.images." not in key:
features[key] = Sequence(length=data_dict[key].shape[1], feature=Value(dtype="float32", id=None))
# check if image obs
elif "observation.images." in key:
if video:
features[key] = VideoFrame()
else:
features[key] = Image()
if "language_instruction" in data_dict:
features["language_instruction"] = Value(dtype="string", id=None)
features["action"] = Sequence(
length=data_dict["action"].shape[1], feature=Value(dtype="float32", id=None)
)
features["is_terminal"] = Value(dtype="bool", id=None)
features["is_first"] = Value(dtype="bool", id=None)
features["discount"] = Value(dtype="float32", id=None)
features["episode_index"] = Value(dtype="int64", id=None)
features["frame_index"] = Value(dtype="int64", id=None)
features["timestamp"] = Value(dtype="float32", id=None)
features["next.reward"] = Value(dtype="float32", id=None)
features["next.done"] = Value(dtype="bool", id=None)
features["index"] = Value(dtype="int64", id=None)
hf_dataset = Dataset.from_dict(data_dict, features=Features(features))
hf_dataset.set_transform(hf_transform_to_torch)
return hf_dataset
def from_raw_to_lerobot_format(
raw_dir: Path,
videos_dir: Path,
fps: int | None = None,
video: bool = True,
episodes: list[int] | None = None,
encoding: dict | None = None,
):
data_dict = load_from_raw(raw_dir, videos_dir, fps, video, episodes, encoding)
hf_dataset = to_hf_dataset(data_dict, video)
episode_data_index = calculate_episode_data_index(hf_dataset)
info = {
"codebase_version": CODEBASE_VERSION,
"fps": fps,
"video": video,
}
if video:
info["encoding"] = get_default_encoding()
return hf_dataset, episode_data_index, info

View File

@@ -1,275 +0,0 @@
#!/usr/bin/env python
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Process zarr files formatted like in: https://github.com/real-stanford/diffusion_policy"""
import shutil
from pathlib import Path
import numpy as np
import torch
import tqdm
import zarr
from datasets import Dataset, Features, Image, Sequence, Value
from PIL import Image as PILImage
from lerobot.common.datasets.lerobot_dataset import CODEBASE_VERSION
from lerobot.common.datasets.push_dataset_to_hub.utils import (
calculate_episode_data_index,
concatenate_episodes,
get_default_encoding,
save_images_concurrently,
)
from lerobot.common.datasets.utils import (
hf_transform_to_torch,
)
from lerobot.common.datasets.video_utils import VideoFrame, encode_video_frames
def check_format(raw_dir):
zarr_path = raw_dir / "pusht_cchi_v7_replay.zarr"
zarr_data = zarr.open(zarr_path, mode="r")
required_datasets = {
"data/action",
"data/img",
"data/keypoint",
"data/n_contacts",
"data/state",
"meta/episode_ends",
}
for dataset in required_datasets:
assert dataset in zarr_data
nb_frames = zarr_data["data/img"].shape[0]
required_datasets.remove("meta/episode_ends")
assert all(nb_frames == zarr_data[dataset].shape[0] for dataset in required_datasets)
def load_from_raw(
raw_dir: Path,
videos_dir: Path,
fps: int,
video: bool,
episodes: list[int] | None = None,
keypoints_instead_of_image: bool = False,
encoding: dict | None = None,
):
try:
import pymunk
from gym_pusht.envs.pusht import PushTEnv, pymunk_to_shapely
from lerobot.common.datasets.push_dataset_to_hub._diffusion_policy_replay_buffer import (
ReplayBuffer as DiffusionPolicyReplayBuffer,
)
except ModuleNotFoundError as e:
print("`gym_pusht` is not installed. Please install it with `pip install 'lerobot[gym_pusht]'`")
raise e
# as define in gmy-pusht env: https://github.com/huggingface/gym-pusht/blob/e0684ff988d223808c0a9dcfaba9dc4991791370/gym_pusht/envs/pusht.py#L174
success_threshold = 0.95 # 95% coverage,
zarr_path = raw_dir / "pusht_cchi_v7_replay.zarr"
zarr_data = DiffusionPolicyReplayBuffer.copy_from_path(zarr_path)
episode_ids = torch.from_numpy(zarr_data.get_episode_idxs())
assert len(
{zarr_data[key].shape[0] for key in zarr_data.keys()} # noqa: SIM118
), "Some data type dont have the same number of total frames."
# TODO(rcadene): verify that goal pose is expected to be fixed
goal_pos_angle = np.array([256, 256, np.pi / 4]) # x, y, theta (in radians)
goal_body = PushTEnv.get_goal_pose_body(goal_pos_angle)
imgs = torch.from_numpy(zarr_data["img"]) # b h w c
states = torch.from_numpy(zarr_data["state"])
actions = torch.from_numpy(zarr_data["action"])
# load data indices from which each episode starts and ends
from_ids, to_ids = [], []
from_idx = 0
for to_idx in zarr_data.meta["episode_ends"]:
from_ids.append(from_idx)
to_ids.append(to_idx)
from_idx = to_idx
num_episodes = len(from_ids)
ep_dicts = []
ep_ids = episodes if episodes else range(num_episodes)
for ep_idx, selected_ep_idx in tqdm.tqdm(enumerate(ep_ids)):
from_idx = from_ids[selected_ep_idx]
to_idx = to_ids[selected_ep_idx]
num_frames = to_idx - from_idx
# sanity check
assert (episode_ids[from_idx:to_idx] == ep_idx).all()
# get image
if not keypoints_instead_of_image:
image = imgs[from_idx:to_idx]
assert image.min() >= 0.0
assert image.max() <= 255.0
image = image.type(torch.uint8)
# get state
state = states[from_idx:to_idx]
agent_pos = state[:, :2]
block_pos = state[:, 2:4]
block_angle = state[:, 4]
# get reward, success, done, and (maybe) keypoints
reward = torch.zeros(num_frames)
success = torch.zeros(num_frames, dtype=torch.bool)
if keypoints_instead_of_image:
keypoints = torch.zeros(num_frames, 16) # 8 keypoints each with 2 coords
done = torch.zeros(num_frames, dtype=torch.bool)
for i in range(num_frames):
space = pymunk.Space()
space.gravity = 0, 0
space.damping = 0
# Add walls.
walls = [
PushTEnv.add_segment(space, (5, 506), (5, 5), 2),
PushTEnv.add_segment(space, (5, 5), (506, 5), 2),
PushTEnv.add_segment(space, (506, 5), (506, 506), 2),
PushTEnv.add_segment(space, (5, 506), (506, 506), 2),
]
space.add(*walls)
block_body, block_shapes = PushTEnv.add_tee(space, block_pos[i].tolist(), block_angle[i].item())
goal_geom = pymunk_to_shapely(goal_body, block_body.shapes)
block_geom = pymunk_to_shapely(block_body, block_body.shapes)
intersection_area = goal_geom.intersection(block_geom).area
goal_area = goal_geom.area
coverage = intersection_area / goal_area
reward[i] = np.clip(coverage / success_threshold, 0, 1)
success[i] = coverage > success_threshold
if keypoints_instead_of_image:
keypoints[i] = torch.from_numpy(PushTEnv.get_keypoints(block_shapes).flatten())
# last step of demonstration is considered done
done[-1] = True
ep_dict = {}
if not keypoints_instead_of_image:
imgs_array = [x.numpy() for x in image]
img_key = "observation.image"
if video:
# save png images in temporary directory
tmp_imgs_dir = videos_dir / "tmp_images"
save_images_concurrently(imgs_array, tmp_imgs_dir)
# encode images to a mp4 video
fname = f"{img_key}_episode_{ep_idx:06d}.mp4"
video_path = videos_dir / fname
encode_video_frames(tmp_imgs_dir, video_path, fps, **(encoding or {}))
# clean temporary images directory
shutil.rmtree(tmp_imgs_dir)
# store the reference to the video frame
ep_dict[img_key] = [
{"path": f"videos/{fname}", "timestamp": i / fps} for i in range(num_frames)
]
else:
ep_dict[img_key] = [PILImage.fromarray(x) for x in imgs_array]
ep_dict["observation.state"] = agent_pos
if keypoints_instead_of_image:
ep_dict["observation.environment_state"] = keypoints
ep_dict["action"] = actions[from_idx:to_idx]
ep_dict["episode_index"] = torch.tensor([ep_idx] * num_frames, dtype=torch.int64)
ep_dict["frame_index"] = torch.arange(0, num_frames, 1)
ep_dict["timestamp"] = torch.arange(0, num_frames, 1) / fps
# ep_dict["next.observation.image"] = image[1:],
# ep_dict["next.observation.state"] = agent_pos[1:],
# TODO(rcadene)] = verify that reward and done are aligned with image and agent_pos
ep_dict["next.reward"] = torch.cat([reward[1:], reward[[-1]]])
ep_dict["next.done"] = torch.cat([done[1:], done[[-1]]])
ep_dict["next.success"] = torch.cat([success[1:], success[[-1]]])
ep_dicts.append(ep_dict)
data_dict = concatenate_episodes(ep_dicts)
total_frames = data_dict["frame_index"].shape[0]
data_dict["index"] = torch.arange(0, total_frames, 1)
return data_dict
def to_hf_dataset(data_dict, video, keypoints_instead_of_image: bool = False):
features = {}
if not keypoints_instead_of_image:
if video:
features["observation.image"] = VideoFrame()
else:
features["observation.image"] = Image()
features["observation.state"] = Sequence(
length=data_dict["observation.state"].shape[1], feature=Value(dtype="float32", id=None)
)
if keypoints_instead_of_image:
features["observation.environment_state"] = Sequence(
length=data_dict["observation.environment_state"].shape[1],
feature=Value(dtype="float32", id=None),
)
features["action"] = Sequence(
length=data_dict["action"].shape[1], feature=Value(dtype="float32", id=None)
)
features["episode_index"] = Value(dtype="int64", id=None)
features["frame_index"] = Value(dtype="int64", id=None)
features["timestamp"] = Value(dtype="float32", id=None)
features["next.reward"] = Value(dtype="float32", id=None)
features["next.done"] = Value(dtype="bool", id=None)
features["next.success"] = Value(dtype="bool", id=None)
features["index"] = Value(dtype="int64", id=None)
hf_dataset = Dataset.from_dict(data_dict, features=Features(features))
hf_dataset.set_transform(hf_transform_to_torch)
return hf_dataset
def from_raw_to_lerobot_format(
raw_dir: Path,
videos_dir: Path,
fps: int | None = None,
video: bool = True,
episodes: list[int] | None = None,
encoding: dict | None = None,
):
# Manually change this to True to use keypoints of the T instead of an image observation (but don't merge
# with True). Also make sure to use video = 0 in the `push_dataset_to_hub.py` script.
keypoints_instead_of_image = False
# sanity check
check_format(raw_dir)
if fps is None:
fps = 10
data_dict = load_from_raw(raw_dir, videos_dir, fps, video, episodes, keypoints_instead_of_image, encoding)
hf_dataset = to_hf_dataset(data_dict, video, keypoints_instead_of_image)
episode_data_index = calculate_episode_data_index(hf_dataset)
info = {
"codebase_version": CODEBASE_VERSION,
"fps": fps,
"video": video if not keypoints_instead_of_image else 0,
}
if video:
info["encoding"] = get_default_encoding()
return hf_dataset, episode_data_index, info

View File

@@ -1,234 +0,0 @@
#!/usr/bin/env python
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Process UMI (Universal Manipulation Interface) data stored in Zarr format like in: https://github.com/real-stanford/universal_manipulation_interface"""
import logging
import shutil
from pathlib import Path
import torch
import tqdm
import zarr
from datasets import Dataset, Features, Image, Sequence, Value
from PIL import Image as PILImage
from lerobot.common.datasets.lerobot_dataset import CODEBASE_VERSION
from lerobot.common.datasets.push_dataset_to_hub._umi_imagecodecs_numcodecs import register_codecs
from lerobot.common.datasets.push_dataset_to_hub.utils import (
calculate_episode_data_index,
concatenate_episodes,
get_default_encoding,
save_images_concurrently,
)
from lerobot.common.datasets.utils import (
hf_transform_to_torch,
)
from lerobot.common.datasets.video_utils import VideoFrame, encode_video_frames
def check_format(raw_dir) -> bool:
zarr_path = raw_dir / "cup_in_the_wild.zarr"
zarr_data = zarr.open(zarr_path, mode="r")
required_datasets = {
"data/robot0_demo_end_pose",
"data/robot0_demo_start_pose",
"data/robot0_eef_pos",
"data/robot0_eef_rot_axis_angle",
"data/robot0_gripper_width",
"meta/episode_ends",
"data/camera0_rgb",
}
for dataset in required_datasets:
if dataset not in zarr_data:
return False
# mandatory to access zarr_data
register_codecs()
nb_frames = zarr_data["data/camera0_rgb"].shape[0]
required_datasets.remove("meta/episode_ends")
assert all(nb_frames == zarr_data[dataset].shape[0] for dataset in required_datasets)
def load_from_raw(
raw_dir: Path,
videos_dir: Path,
fps: int,
video: bool,
episodes: list[int] | None = None,
encoding: dict | None = None,
):
zarr_path = raw_dir / "cup_in_the_wild.zarr"
zarr_data = zarr.open(zarr_path, mode="r")
# We process the image data separately because it is too large to fit in memory
end_pose = torch.from_numpy(zarr_data["data/robot0_demo_end_pose"][:])
start_pos = torch.from_numpy(zarr_data["data/robot0_demo_start_pose"][:])
eff_pos = torch.from_numpy(zarr_data["data/robot0_eef_pos"][:])
eff_rot_axis_angle = torch.from_numpy(zarr_data["data/robot0_eef_rot_axis_angle"][:])
gripper_width = torch.from_numpy(zarr_data["data/robot0_gripper_width"][:])
states_pos = torch.cat([eff_pos, eff_rot_axis_angle], dim=1)
states = torch.cat([states_pos, gripper_width], dim=1)
episode_ends = zarr_data["meta/episode_ends"][:]
num_episodes = episode_ends.shape[0]
# We convert it in torch tensor later because the jit function does not support torch tensors
episode_ends = torch.from_numpy(episode_ends)
# load data indices from which each episode starts and ends
from_ids, to_ids = [], []
from_idx = 0
for to_idx in episode_ends:
from_ids.append(from_idx)
to_ids.append(to_idx)
from_idx = to_idx
ep_dicts_dir = videos_dir / "ep_dicts"
ep_dicts_dir.mkdir(exist_ok=True, parents=True)
ep_dicts = []
ep_ids = episodes if episodes else range(num_episodes)
for ep_idx, selected_ep_idx in tqdm.tqdm(enumerate(ep_ids)):
ep_dict_path = ep_dicts_dir / f"{ep_idx}"
if not ep_dict_path.is_file():
from_idx = from_ids[selected_ep_idx]
to_idx = to_ids[selected_ep_idx]
num_frames = to_idx - from_idx
# TODO(rcadene): save temporary images of the episode?
state = states[from_idx:to_idx]
ep_dict = {}
# load 57MB of images in RAM (400x224x224x3 uint8)
imgs_array = zarr_data["data/camera0_rgb"][from_idx:to_idx]
img_key = "observation.image"
if video:
fname = f"{img_key}_episode_{ep_idx:06d}.mp4"
video_path = videos_dir / fname
if not video_path.is_file():
# save png images in temporary directory
tmp_imgs_dir = videos_dir / "tmp_images"
save_images_concurrently(imgs_array, tmp_imgs_dir)
# encode images to a mp4 video
encode_video_frames(tmp_imgs_dir, video_path, fps, **(encoding or {}))
# clean temporary images directory
shutil.rmtree(tmp_imgs_dir)
# store the reference to the video frame
ep_dict[img_key] = [
{"path": f"videos/{fname}", "timestamp": i / fps} for i in range(num_frames)
]
else:
ep_dict[img_key] = [PILImage.fromarray(x) for x in imgs_array]
ep_dict["observation.state"] = state
ep_dict["episode_index"] = torch.tensor([ep_idx] * num_frames, dtype=torch.int64)
ep_dict["frame_index"] = torch.arange(0, num_frames, 1)
ep_dict["timestamp"] = torch.arange(0, num_frames, 1) / fps
ep_dict["episode_data_index_from"] = torch.tensor([from_idx] * num_frames)
ep_dict["episode_data_index_to"] = torch.tensor([from_idx + num_frames] * num_frames)
ep_dict["end_pose"] = end_pose[from_idx:to_idx]
ep_dict["start_pos"] = start_pos[from_idx:to_idx]
ep_dict["gripper_width"] = gripper_width[from_idx:to_idx]
torch.save(ep_dict, ep_dict_path)
else:
ep_dict = torch.load(ep_dict_path)
ep_dicts.append(ep_dict)
data_dict = concatenate_episodes(ep_dicts)
total_frames = data_dict["frame_index"].shape[0]
data_dict["index"] = torch.arange(0, total_frames, 1)
return data_dict
def to_hf_dataset(data_dict, video):
features = {}
if video:
features["observation.image"] = VideoFrame()
else:
features["observation.image"] = Image()
features["observation.state"] = Sequence(
length=data_dict["observation.state"].shape[1], feature=Value(dtype="float32", id=None)
)
features["episode_index"] = Value(dtype="int64", id=None)
features["frame_index"] = Value(dtype="int64", id=None)
features["timestamp"] = Value(dtype="float32", id=None)
features["index"] = Value(dtype="int64", id=None)
features["episode_data_index_from"] = Value(dtype="int64", id=None)
features["episode_data_index_to"] = Value(dtype="int64", id=None)
# `start_pos` and `end_pos` respectively represent the positions of the end-effector
# at the beginning and the end of the episode.
# `gripper_width` indicates the distance between the grippers, and this value is included
# in the state vector, which comprises the concatenation of the end-effector position
# and gripper width.
features["end_pose"] = Sequence(
length=data_dict["end_pose"].shape[1], feature=Value(dtype="float32", id=None)
)
features["start_pos"] = Sequence(
length=data_dict["start_pos"].shape[1], feature=Value(dtype="float32", id=None)
)
features["gripper_width"] = Sequence(
length=data_dict["gripper_width"].shape[1], feature=Value(dtype="float32", id=None)
)
hf_dataset = Dataset.from_dict(data_dict, features=Features(features))
hf_dataset.set_transform(hf_transform_to_torch)
return hf_dataset
def from_raw_to_lerobot_format(
raw_dir: Path,
videos_dir: Path,
fps: int | None = None,
video: bool = True,
episodes: list[int] | None = None,
encoding: dict | None = None,
):
# sanity check
check_format(raw_dir)
if fps is None:
# For umi cup in the wild: https://arxiv.org/pdf/2402.10329#table.caption.16
fps = 10
if not video:
logging.warning(
"Generating UMI dataset without `video=True` creates ~150GB on disk and requires ~80GB in RAM."
)
data_dict = load_from_raw(raw_dir, videos_dir, fps, video, episodes, encoding)
hf_dataset = to_hf_dataset(data_dict, video)
episode_data_index = calculate_episode_data_index(hf_dataset)
info = {
"codebase_version": CODEBASE_VERSION,
"fps": fps,
"video": video,
}
if video:
info["encoding"] = get_default_encoding()
return hf_dataset, episode_data_index, info

View File

@@ -1,200 +0,0 @@
#!/usr/bin/env python
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Process pickle files formatted like in: https://github.com/fyhMer/fowm"""
import pickle
import shutil
from pathlib import Path
import einops
import torch
import tqdm
from datasets import Dataset, Features, Image, Sequence, Value
from PIL import Image as PILImage
from lerobot.common.datasets.lerobot_dataset import CODEBASE_VERSION
from lerobot.common.datasets.push_dataset_to_hub.utils import (
calculate_episode_data_index,
concatenate_episodes,
get_default_encoding,
save_images_concurrently,
)
from lerobot.common.datasets.utils import (
hf_transform_to_torch,
)
from lerobot.common.datasets.video_utils import VideoFrame, encode_video_frames
def check_format(raw_dir):
keys = {"actions", "rewards", "dones"}
nested_keys = {"observations": {"rgb", "state"}, "next_observations": {"rgb", "state"}}
xarm_files = list(raw_dir.glob("*.pkl"))
assert len(xarm_files) > 0
with open(xarm_files[0], "rb") as f:
dataset_dict = pickle.load(f)
assert isinstance(dataset_dict, dict)
assert all(k in dataset_dict for k in keys)
# Check for consistent lengths in nested keys
expected_len = len(dataset_dict["actions"])
assert all(len(dataset_dict[key]) == expected_len for key in keys if key in dataset_dict)
for key, subkeys in nested_keys.items():
nested_dict = dataset_dict.get(key, {})
assert all(len(nested_dict[subkey]) == expected_len for subkey in subkeys if subkey in nested_dict)
def load_from_raw(
raw_dir: Path,
videos_dir: Path,
fps: int,
video: bool,
episodes: list[int] | None = None,
encoding: dict | None = None,
):
pkl_path = raw_dir / "buffer.pkl"
with open(pkl_path, "rb") as f:
pkl_data = pickle.load(f)
# load data indices from which each episode starts and ends
from_ids, to_ids = [], []
from_idx, to_idx = 0, 0
for done in pkl_data["dones"]:
to_idx += 1
if not done:
continue
from_ids.append(from_idx)
to_ids.append(to_idx)
from_idx = to_idx
num_episodes = len(from_ids)
ep_dicts = []
ep_ids = episodes if episodes else range(num_episodes)
for ep_idx, selected_ep_idx in tqdm.tqdm(enumerate(ep_ids)):
from_idx = from_ids[selected_ep_idx]
to_idx = to_ids[selected_ep_idx]
num_frames = to_idx - from_idx
image = torch.tensor(pkl_data["observations"]["rgb"][from_idx:to_idx])
image = einops.rearrange(image, "b c h w -> b h w c")
state = torch.tensor(pkl_data["observations"]["state"][from_idx:to_idx])
action = torch.tensor(pkl_data["actions"][from_idx:to_idx])
# TODO(rcadene): we have a missing last frame which is the observation when the env is done
# it is critical to have this frame for tdmpc to predict a "done observation/state"
# next_image = torch.tensor(pkl_data["next_observations"]["rgb"][from_idx:to_idx])
# next_state = torch.tensor(pkl_data["next_observations"]["state"][from_idx:to_idx])
next_reward = torch.tensor(pkl_data["rewards"][from_idx:to_idx])
next_done = torch.tensor(pkl_data["dones"][from_idx:to_idx])
ep_dict = {}
imgs_array = [x.numpy() for x in image]
img_key = "observation.image"
if video:
# save png images in temporary directory
tmp_imgs_dir = videos_dir / "tmp_images"
save_images_concurrently(imgs_array, tmp_imgs_dir)
# encode images to a mp4 video
fname = f"{img_key}_episode_{ep_idx:06d}.mp4"
video_path = videos_dir / fname
encode_video_frames(tmp_imgs_dir, video_path, fps, **(encoding or {}))
# clean temporary images directory
shutil.rmtree(tmp_imgs_dir)
# store the reference to the video frame
ep_dict[img_key] = [{"path": f"videos/{fname}", "timestamp": i / fps} for i in range(num_frames)]
else:
ep_dict[img_key] = [PILImage.fromarray(x) for x in imgs_array]
ep_dict["observation.state"] = state
ep_dict["action"] = action
ep_dict["episode_index"] = torch.tensor([ep_idx] * num_frames, dtype=torch.int64)
ep_dict["frame_index"] = torch.arange(0, num_frames, 1)
ep_dict["timestamp"] = torch.arange(0, num_frames, 1) / fps
# ep_dict["next.observation.image"] = next_image
# ep_dict["next.observation.state"] = next_state
ep_dict["next.reward"] = next_reward
ep_dict["next.done"] = next_done
ep_dicts.append(ep_dict)
data_dict = concatenate_episodes(ep_dicts)
total_frames = data_dict["frame_index"].shape[0]
data_dict["index"] = torch.arange(0, total_frames, 1)
return data_dict
def to_hf_dataset(data_dict, video):
features = {}
if video:
features["observation.image"] = VideoFrame()
else:
features["observation.image"] = Image()
features["observation.state"] = Sequence(
length=data_dict["observation.state"].shape[1], feature=Value(dtype="float32", id=None)
)
features["action"] = Sequence(
length=data_dict["action"].shape[1], feature=Value(dtype="float32", id=None)
)
features["episode_index"] = Value(dtype="int64", id=None)
features["frame_index"] = Value(dtype="int64", id=None)
features["timestamp"] = Value(dtype="float32", id=None)
features["next.reward"] = Value(dtype="float32", id=None)
features["next.done"] = Value(dtype="bool", id=None)
features["index"] = Value(dtype="int64", id=None)
# TODO(rcadene): add success
# features["next.success"] = Value(dtype='bool', id=None)
hf_dataset = Dataset.from_dict(data_dict, features=Features(features))
hf_dataset.set_transform(hf_transform_to_torch)
return hf_dataset
def from_raw_to_lerobot_format(
raw_dir: Path,
videos_dir: Path,
fps: int | None = None,
video: bool = True,
episodes: list[int] | None = None,
encoding: dict | None = None,
):
# sanity check
check_format(raw_dir)
if fps is None:
fps = 15
data_dict = load_from_raw(raw_dir, videos_dir, fps, video, episodes, encoding)
hf_dataset = to_hf_dataset(data_dict, video)
episode_data_index = calculate_episode_data_index(hf_dataset)
info = {
"codebase_version": CODEBASE_VERSION,
"fps": fps,
"video": video,
}
if video:
info["encoding"] = get_default_encoding()
return hf_dataset, episode_data_index, info

View File

@@ -40,7 +40,7 @@ from lerobot.common.datasets.backward_compatibility import (
BackwardCompatibilityError,
ForwardCompatibilityError,
)
from lerobot.common.robot_devices.robots.utils import Robot
from lerobot.common.robots.utils import Robot
from lerobot.common.utils.utils import is_valid_numpy_dtype_string
from lerobot.configs.types import DictLike, FeatureType, PolicyFeature
@@ -240,7 +240,7 @@ def load_episodes_stats(local_dir: Path) -> dict:
def backward_compatible_episodes_stats(
stats: dict[str, dict[str, np.ndarray]], episodes: list[int]
) -> dict[str, dict[str, np.ndarray]]:
return {ep_idx: stats for ep_idx in episodes}
return dict.fromkeys(episodes, stats)
def load_image_as_numpy(

View File

@@ -27,7 +27,7 @@ from textwrap import dedent
from lerobot import available_datasets
from lerobot.common.datasets.v2.convert_dataset_v1_to_v2 import convert_dataset
from lerobot.common.robot_devices.robots.configs import AlohaRobotConfig
from lerobot.common.robots.aloha.configuration_aloha import AlohaRobotConfig
LOCAL_DIR = Path("data/")

View File

@@ -141,8 +141,8 @@ from lerobot.common.datasets.video_utils import (
get_image_pixel_channels,
get_video_info,
)
from lerobot.common.robot_devices.robots.configs import RobotConfig
from lerobot.common.robot_devices.robots.utils import make_robot_config
from lerobot.common.robots import RobotConfig
from lerobot.common.robots.utils import make_robot_config
V16 = "v1.6"
V20 = "v2.0"
@@ -481,7 +481,7 @@ def convert_dataset(
# Tasks
if single_task:
tasks_by_episodes = {ep_idx: single_task for ep_idx in episode_indices}
tasks_by_episodes = dict.fromkeys(episode_indices, single_task)
dataset, tasks = add_task_index_by_episodes(dataset, tasks_by_episodes)
tasks_by_episodes = {ep_idx: [task] for ep_idx, task in tasks_by_episodes.items()}
elif tasks_path:

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import logging
import traceback
from pathlib import Path

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
This script will help you convert any LeRobot dataset already pushed to the hub from codebase version 2.0 to
2.1. It will:

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from concurrent.futures import ThreadPoolExecutor, as_completed
import numpy as np

View File

@@ -13,6 +13,7 @@
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import importlib
import json
import logging
import subprocess
@@ -29,6 +30,46 @@ from datasets.features.features import register_feature
from PIL import Image
def get_safe_default_codec():
if importlib.util.find_spec("torchcodec"):
return "torchcodec"
else:
logging.warning(
"'torchcodec' is not available in your platform, falling back to 'pyav' as a default decoder"
)
return "pyav"
def decode_video_frames(
video_path: Path | str,
timestamps: list[float],
tolerance_s: float,
backend: str | None = None,
) -> torch.Tensor:
"""
Decodes video frames using the specified backend.
Args:
video_path (Path): Path to the video file.
timestamps (list[float]): List of timestamps to extract frames.
tolerance_s (float): Allowed deviation in seconds for frame retrieval.
backend (str, optional): Backend to use for decoding. Defaults to "torchcodec" when available in the platform; otherwise, defaults to "pyav"..
Returns:
torch.Tensor: Decoded frames.
Currently supports torchcodec on cpu and pyav.
"""
if backend is None:
backend = get_safe_default_codec()
if backend == "torchcodec":
return decode_video_frames_torchcodec(video_path, timestamps, tolerance_s)
elif backend in ["pyav", "video_reader"]:
return decode_video_frames_torchvision(video_path, timestamps, tolerance_s, backend)
else:
raise ValueError(f"Unsupported video backend: {backend}")
def decode_video_frames_torchvision(
video_path: Path | str,
timestamps: list[float],
@@ -127,6 +168,81 @@ def decode_video_frames_torchvision(
return closest_frames
def decode_video_frames_torchcodec(
video_path: Path | str,
timestamps: list[float],
tolerance_s: float,
device: str = "cpu",
log_loaded_timestamps: bool = False,
) -> torch.Tensor:
"""Loads frames associated with the requested timestamps of a video using torchcodec.
Note: Setting device="cuda" outside the main process, e.g. in data loader workers, will lead to CUDA initialization errors.
Note: Video benefits from inter-frame compression. Instead of storing every frame individually,
the encoder stores a reference frame (or a key frame) and subsequent frames as differences relative to
that key frame. As a consequence, to access a requested frame, we need to load the preceding key frame,
and all subsequent frames until reaching the requested frame. The number of key frames in a video
can be adjusted during encoding to take into account decoding time and video size in bytes.
"""
if importlib.util.find_spec("torchcodec"):
from torchcodec.decoders import VideoDecoder
else:
raise ImportError("torchcodec is required but not available.")
# initialize video decoder
decoder = VideoDecoder(video_path, device=device, seek_mode="approximate")
loaded_frames = []
loaded_ts = []
# get metadata for frame information
metadata = decoder.metadata
average_fps = metadata.average_fps
# convert timestamps to frame indices
frame_indices = [round(ts * average_fps) for ts in timestamps]
# retrieve frames based on indices
frames_batch = decoder.get_frames_at(indices=frame_indices)
for frame, pts in zip(frames_batch.data, frames_batch.pts_seconds, strict=False):
loaded_frames.append(frame)
loaded_ts.append(pts.item())
if log_loaded_timestamps:
logging.info(f"Frame loaded at timestamp={pts:.4f}")
query_ts = torch.tensor(timestamps)
loaded_ts = torch.tensor(loaded_ts)
# compute distances between each query timestamp and loaded timestamps
dist = torch.cdist(query_ts[:, None], loaded_ts[:, None], p=1)
min_, argmin_ = dist.min(1)
is_within_tol = min_ < tolerance_s
assert is_within_tol.all(), (
f"One or several query timestamps unexpectedly violate the tolerance ({min_[~is_within_tol]} > {tolerance_s=})."
"It means that the closest frame that can be loaded from the video is too far away in time."
"This might be due to synchronization issues with timestamps during data collection."
"To be safe, we advise to ignore this item during training."
f"\nqueried timestamps: {query_ts}"
f"\nloaded timestamps: {loaded_ts}"
f"\nvideo: {video_path}"
)
# get closest frames to the query timestamps
closest_frames = torch.stack([loaded_frames[idx] for idx in argmin_])
closest_ts = loaded_ts[argmin_]
if log_loaded_timestamps:
logging.info(f"{closest_ts=}")
# convert to float32 in [0,1] range (channel first)
closest_frames = closest_frames.type(torch.float32) / 255
assert len(timestamps) == len(closest_frames)
return closest_frames
def encode_video_frames(
imgs_dir: Path | str,
video_path: Path | str,
@@ -141,6 +257,7 @@ def encode_video_frames(
) -> None:
"""More info on ffmpeg arguments tuning on `benchmark/video/README.md`"""
video_path = Path(video_path)
imgs_dir = Path(imgs_dir)
video_path.parent.mkdir(parents=True, exist_ok=True)
ffmpeg_args = OrderedDict(

View File

@@ -1 +1,15 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from .configs import AlohaEnv, EnvConfig, PushtEnv, XarmEnv # noqa: F401

View File

@@ -1,9 +1,23 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import abc
from dataclasses import dataclass, field
import draccus
from lerobot.common.constants import ACTION, OBS_ENV, OBS_IMAGE, OBS_IMAGES, OBS_ROBOT
from lerobot.common.constants import ACTION, OBS_ENV_STATE, OBS_IMAGE, OBS_IMAGES, OBS_STATE
from lerobot.configs.types import FeatureType, PolicyFeature
@@ -39,7 +53,7 @@ class AlohaEnv(EnvConfig):
features_map: dict[str, str] = field(
default_factory=lambda: {
"action": ACTION,
"agent_pos": OBS_ROBOT,
"agent_pos": OBS_STATE,
"top": f"{OBS_IMAGE}.top",
"pixels/top": f"{OBS_IMAGES}.top",
}
@@ -80,8 +94,8 @@ class PushtEnv(EnvConfig):
features_map: dict[str, str] = field(
default_factory=lambda: {
"action": ACTION,
"agent_pos": OBS_ROBOT,
"environment_state": OBS_ENV,
"agent_pos": OBS_STATE,
"environment_state": OBS_ENV_STATE,
"pixels": OBS_IMAGE,
}
)
@@ -122,7 +136,7 @@ class XarmEnv(EnvConfig):
features_map: dict[str, str] = field(
default_factory=lambda: {
"action": ACTION,
"agent_pos": OBS_ROBOT,
"agent_pos": OBS_STATE,
"pixels": OBS_IMAGE,
}
)

View File

@@ -13,7 +13,11 @@
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import warnings
from typing import Any
import einops
import gymnasium as gym
import numpy as np
import torch
from torch import Tensor
@@ -86,3 +90,38 @@ def env_to_policy_features(env_cfg: EnvConfig) -> dict[str, PolicyFeature]:
policy_features[policy_key] = feature
return policy_features
def are_all_envs_same_type(env: gym.vector.VectorEnv) -> bool:
first_type = type(env.envs[0]) # Get type of first env
return all(type(e) is first_type for e in env.envs) # Fast type check
def check_env_attributes_and_types(env: gym.vector.VectorEnv) -> None:
with warnings.catch_warnings():
warnings.simplefilter("once", UserWarning) # Apply filter only in this function
if not (hasattr(env.envs[0], "task_description") and hasattr(env.envs[0], "task")):
warnings.warn(
"The environment does not have 'task_description' and 'task'. Some policies require these features.",
UserWarning,
stacklevel=2,
)
if not are_all_envs_same_type(env):
warnings.warn(
"The environments have different types. Make sure you infer the right task from each environment. Empty task will be passed instead.",
UserWarning,
stacklevel=2,
)
def add_envs_task(env: gym.vector.VectorEnv, observation: dict[str, Any]) -> dict[str, Any]:
"""Adds task feature to the observation dict with respect to the first environment attribute."""
if hasattr(env.envs[0], "task_description"):
observation["task"] = env.call("task_description")
elif hasattr(env.envs[0], "task"):
observation["task"] = env.call("task")
else: # For envs without language instructions, e.g. aloha transfer cube and etc.
num_envs = observation[list(observation.keys())[0]].shape[0]
observation["task"] = ["" for _ in range(num_envs)]
return observation

17
lerobot/common/errors.py Normal file
View File

@@ -0,0 +1,17 @@
class DeviceNotConnectedError(ConnectionError):
"""Exception raised when the device is not connected."""
def __init__(self, message="This device is not connected. Try calling `connect()` first."):
self.message = message
super().__init__(self.message)
class DeviceAlreadyConnectedError(ConnectionError):
"""Exception raised when the device is already connected."""
def __init__(
self,
message="This device is already connected. Try not calling `connect()` twice.",
):
self.message = message
super().__init__(self.message)

View File

@@ -0,0 +1 @@
from .motors_bus import Motor, MotorCalibration, MotorNormMode, MotorsBus

View File

@@ -0,0 +1,41 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import abc
from dataclasses import dataclass
import draccus
@dataclass
class MotorsBusConfig(draccus.ChoiceRegistry, abc.ABC):
@property
def type(self) -> str:
return self.get_choice_name(self.__class__)
@MotorsBusConfig.register_subclass("dynamixel")
@dataclass
class DynamixelMotorsBusConfig(MotorsBusConfig):
port: str
motors: dict[str, tuple[int, str]]
mock: bool = False
@MotorsBusConfig.register_subclass("feetech")
@dataclass
class FeetechMotorsBusConfig(MotorsBusConfig):
port: str
motors: dict[str, tuple[int, str]]
mock: bool = False

View File

@@ -0,0 +1,3 @@
from .dynamixel import DriveMode, DynamixelMotorsBus, OperatingMode, TorqueMode
from .dynamixel_calibration import run_arm_calibration
from .tables import *

View File

@@ -0,0 +1,206 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# TODO(aliberts): Should we implement FastSyncRead/Write?
# https://github.com/ROBOTIS-GIT/DynamixelSDK/pull/643
# https://github.com/ROBOTIS-GIT/DynamixelSDK/releases/tag/3.8.2
# https://emanual.robotis.com/docs/en/dxl/protocol2/#fast-sync-read-0x8a
# -> Need to check compatibility across models
import logging
from copy import deepcopy
from enum import Enum
from lerobot.common.utils.encoding_utils import decode_twos_complement, encode_twos_complement
from ..motors_bus import Motor, MotorCalibration, MotorsBus, NameOrID, Value
from .tables import (
AVAILABLE_BAUDRATES,
MODEL_BAUDRATE_TABLE,
MODEL_CONTROL_TABLE,
MODEL_ENCODING_TABLE,
MODEL_NUMBER_TABLE,
MODEL_RESOLUTION,
)
PROTOCOL_VERSION = 2.0
BAUDRATE = 1_000_000
DEFAULT_TIMEOUT_MS = 1000
NORMALIZED_DATA = ["Goal_Position", "Present_Position"]
CONVERT_UINT32_TO_INT32_REQUIRED = ["Goal_Position", "Present_Position"]
logger = logging.getLogger(__name__)
class OperatingMode(Enum):
# DYNAMIXEL only controls current(torque) regardless of speed and position. This mode is ideal for a
# gripper or a system that only uses current(torque) control or a system that has additional
# velocity/position controllers.
CURRENT = 0
# This mode controls velocity. This mode is identical to the Wheel Mode(endless) from existing DYNAMIXEL.
# This mode is ideal for wheel-type robots.
VELOCITY = 1
# This mode controls position. This mode is identical to the Joint Mode from existing DYNAMIXEL. Operating
# position range is limited by the Max Position Limit(48) and the Min Position Limit(52). This mode is
# ideal for articulated robots that each joint rotates less than 360 degrees.
POSITION = 3
# This mode controls position. This mode is identical to the Multi-turn Position Control from existing
# DYNAMIXEL. 512 turns are supported(-256[rev] ~ 256[rev]). This mode is ideal for multi-turn wrists or
# conveyer systems or a system that requires an additional reduction gear. Note that Max Position
# Limit(48), Min Position Limit(52) are not used on Extended Position Control Mode.
EXTENDED_POSITION = 4
# This mode controls both position and current(torque). Up to 512 turns are supported (-256[rev] ~
# 256[rev]). This mode is ideal for a system that requires both position and current control such as
# articulated robots or grippers.
CURRENT_POSITION = 5
# This mode directly controls PWM output. (Voltage Control Mode)
PWM = 16
class DriveMode(Enum):
NON_INVERTED = 0
INVERTED = 1
class TorqueMode(Enum):
ENABLED = 1
DISABLED = 0
def _split_into_byte_chunks(value: int, length: int) -> list[int]:
import dynamixel_sdk as dxl
if length == 1:
data = [value]
elif length == 2:
data = [dxl.DXL_LOBYTE(value), dxl.DXL_HIBYTE(value)]
elif length == 4:
data = [
dxl.DXL_LOBYTE(dxl.DXL_LOWORD(value)),
dxl.DXL_HIBYTE(dxl.DXL_LOWORD(value)),
dxl.DXL_LOBYTE(dxl.DXL_HIWORD(value)),
dxl.DXL_HIBYTE(dxl.DXL_HIWORD(value)),
]
return data
class DynamixelMotorsBus(MotorsBus):
"""
The Dynamixel implementation for a MotorsBus. It relies on the python dynamixel sdk to communicate with
the motors. For more info, see the Dynamixel SDK Documentation:
https://emanual.robotis.com/docs/en/software/dynamixel/dynamixel_sdk/sample_code/python_read_write_protocol_2_0/#python-read-write-protocol-20
"""
available_baudrates = deepcopy(AVAILABLE_BAUDRATES)
default_timeout = DEFAULT_TIMEOUT_MS
model_baudrate_table = deepcopy(MODEL_BAUDRATE_TABLE)
model_ctrl_table = deepcopy(MODEL_CONTROL_TABLE)
model_encoding_table = deepcopy(MODEL_ENCODING_TABLE)
model_number_table = deepcopy(MODEL_NUMBER_TABLE)
model_resolution_table = deepcopy(MODEL_RESOLUTION)
normalized_data = deepcopy(NORMALIZED_DATA)
def __init__(
self,
port: str,
motors: dict[str, Motor],
calibration: dict[str, MotorCalibration] | None = None,
):
super().__init__(port, motors, calibration)
import dynamixel_sdk as dxl
self.port_handler = dxl.PortHandler(self.port)
self.packet_handler = dxl.PacketHandler(PROTOCOL_VERSION)
self.sync_reader = dxl.GroupSyncRead(self.port_handler, self.packet_handler, 0, 0)
self.sync_writer = dxl.GroupSyncWrite(self.port_handler, self.packet_handler, 0, 0)
self._comm_success = dxl.COMM_SUCCESS
self._no_error = 0x00
def _assert_protocol_is_compatible(self, instruction_name: str) -> None:
pass
def _handshake(self) -> None:
self._assert_motors_exist()
def configure_motors(self) -> None:
# By default, Dynamixel motors have a 500µs delay response time (corresponding to a value of 250 on
# the 'Return_Delay_Time' address). We ensure this is reduced to the minimum of 2µs (value of 0).
for motor in self.motors:
self.write("Return_Delay_Time", motor, 0)
def disable_torque(self, motors: str | list[str] | None = None, num_retry: int = 0) -> None:
for name in self._get_motors_list(motors):
self.write("Torque_Enable", name, TorqueMode.DISABLED.value, num_retry=num_retry)
def enable_torque(self, motors: str | list[str] | None = None, num_retry: int = 0) -> None:
for name in self._get_motors_list(motors):
self.write("Torque_Enable", name, TorqueMode.ENABLED.value, num_retry=num_retry)
def _encode_sign(self, data_name: str, ids_values: dict[int, int]) -> dict[int, int]:
for id_ in ids_values:
model = self._id_to_model(id_)
encoding_table = self.model_encoding_table.get(model)
if encoding_table and data_name in encoding_table:
n_bytes = encoding_table[data_name]
ids_values[id_] = encode_twos_complement(ids_values[id_], n_bytes)
return ids_values
def _decode_sign(self, data_name: str, ids_values: dict[int, int]) -> dict[int, int]:
for id_ in ids_values:
model = self._id_to_model(id_)
encoding_table = self.model_encoding_table.get(model)
if encoding_table and data_name in encoding_table:
n_bytes = encoding_table[data_name]
ids_values[id_] = decode_twos_complement(ids_values[id_], n_bytes)
return ids_values
def _get_half_turn_homings(self, positions: dict[NameOrID, Value]) -> dict[NameOrID, Value]:
"""
On Dynamixel Motors:
Present_Position = Actual_Position + Homing_Offset
"""
half_turn_homings = {}
for motor, pos in positions.items():
model = self._get_motor_model(motor)
max_res = self.model_resolution_table[model] - 1
half_turn_homings[motor] = int(max_res / 2) - pos
return half_turn_homings
def _split_into_byte_chunks(self, value: int, length: int) -> list[int]:
return _split_into_byte_chunks(value, length)
def broadcast_ping(self, num_retry: int = 0, raise_on_error: bool = False) -> dict[int, int] | None:
for n_try in range(1 + num_retry):
data_list, comm = self.packet_handler.broadcastPing(self.port_handler)
if self._is_comm_success(comm):
break
logger.debug(f"Broadcast ping failed on port '{self.port}' ({n_try=})")
logger.debug(self.packet_handler.getTxRxResult(comm))
if not self._is_comm_success(comm):
if raise_on_error:
raise ConnectionError(self.packet_handler.getTxRxResult(comm))
return
return {id_: data[0] for id_, data in data_list.items()}

View File

@@ -1,14 +1,25 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Logic to calibrate a robot arm built with dynamixel motors"""
# TODO(rcadene, aliberts): move this logic into the robot code when refactoring
import numpy as np
from lerobot.common.robot_devices.motors.dynamixel import (
CalibrationMode,
TorqueMode,
convert_degrees_to_steps,
)
from lerobot.common.robot_devices.motors.utils import MotorsBus
from ..motors_bus import MotorNormMode, MotorsBus
from .dynamixel import TorqueMode
from .tables import MODEL_RESOLUTION
URL_TEMPLATE = (
"https://raw.githubusercontent.com/huggingface/lerobot/main/media/{robot}/{arm}_{position}.webp"
@@ -35,6 +46,17 @@ def apply_drive_mode(position, drive_mode):
return position
def convert_degrees_to_steps(degrees: float | np.ndarray, models: str | list[str]) -> np.ndarray:
"""This function converts the degree range to the step range for indicating motors rotation.
It assumes a motor achieves a full rotation by going from -180 degree position to +180.
The motor resolution (e.g. 4096) corresponds to the number of steps needed to achieve a full rotation.
"""
resolutions = [MODEL_RESOLUTION[model] for model in models]
steps = degrees / 180 * np.array(resolutions) / 2
steps = steps.astype(int)
return steps
def compute_nearest_rounded_position(position, models):
delta_turn = convert_degrees_to_steps(ROTATED_POSITION_DEGREE, models)
nearest_pos = np.round(position.astype(float) / delta_turn) * delta_turn
@@ -75,11 +97,11 @@ def run_arm_calibration(arm: MotorsBus, robot_type: str, arm_name: str, arm_type
# We arbitrarily chose our zero target position to be a straight horizontal position with gripper upwards and closed.
# It is easy to identify and all motors are in a "quarter turn" position. Once calibration is done, this position will
# correspond to every motor angle being 0. If you set all 0 as Goal Position, the arm will move in this position.
zero_target_pos = convert_degrees_to_steps(ZERO_POSITION_DEGREE, arm.motor_models)
zero_target_pos = convert_degrees_to_steps(ZERO_POSITION_DEGREE, arm.models)
# Compute homing offset so that `present_position + homing_offset ~= target_position`.
zero_pos = arm.read("Present_Position")
zero_nearest_pos = compute_nearest_rounded_position(zero_pos, arm.motor_models)
zero_nearest_pos = compute_nearest_rounded_position(zero_pos, arm.models)
homing_offset = zero_target_pos - zero_nearest_pos
# The rotated target position corresponds to a rotation of a quarter turn from the zero position.
@@ -93,7 +115,7 @@ def run_arm_calibration(arm: MotorsBus, robot_type: str, arm_name: str, arm_type
print("See: " + URL_TEMPLATE.format(robot=robot_type, arm=arm_type, position="rotated"))
input("Press Enter to continue...")
rotated_target_pos = convert_degrees_to_steps(ROTATED_POSITION_DEGREE, arm.motor_models)
rotated_target_pos = convert_degrees_to_steps(ROTATED_POSITION_DEGREE, arm.models)
# Find drive mode by rotating each motor by a quarter of a turn.
# Drive mode indicates if the motor rotation direction should be inverted (=1) or not (=0).
@@ -102,7 +124,7 @@ def run_arm_calibration(arm: MotorsBus, robot_type: str, arm_name: str, arm_type
# Re-compute homing offset to take into account drive mode
rotated_drived_pos = apply_drive_mode(rotated_pos, drive_mode)
rotated_nearest_pos = compute_nearest_rounded_position(rotated_drived_pos, arm.motor_models)
rotated_nearest_pos = compute_nearest_rounded_position(rotated_drived_pos, arm.models)
homing_offset = rotated_target_pos - rotated_nearest_pos
print("\nMove arm to rest position")
@@ -111,13 +133,13 @@ def run_arm_calibration(arm: MotorsBus, robot_type: str, arm_name: str, arm_type
print()
# Joints with rotational motions are expressed in degrees in nominal range of [-180, 180]
calib_mode = [CalibrationMode.DEGREE.name] * len(arm.motor_names)
calib_mode = [MotorNormMode.DEGREE.name] * len(arm.names)
# TODO(rcadene): make type of joints (DEGREE or LINEAR) configurable from yaml?
if robot_type in ["aloha"] and "gripper" in arm.motor_names:
if robot_type in ["aloha"] and "gripper" in arm.names:
# Joints with linear motions (like gripper of Aloha) are expressed in nominal range of [0, 100]
calib_idx = arm.motor_names.index("gripper")
calib_mode[calib_idx] = CalibrationMode.LINEAR.name
calib_idx = arm.names.index("gripper")
calib_mode[calib_idx] = MotorNormMode.LINEAR.name
calib_data = {
"homing_offset": homing_offset.tolist(),
@@ -125,6 +147,6 @@ def run_arm_calibration(arm: MotorsBus, robot_type: str, arm_name: str, arm_type
"start_pos": zero_pos.tolist(),
"end_pos": rotated_pos.tolist(),
"calib_mode": calib_mode,
"motor_names": arm.motor_names,
"motor_names": arm.names,
}
return calib_data

View File

@@ -0,0 +1,162 @@
# {data_name: (address, size_byte)}
# https://emanual.robotis.com/docs/en/dxl/x/{MODEL}/#control-table
X_SERIES_CONTROL_TABLE = {
"Model_Number": (0, 2),
"Model_Information": (2, 4),
"Firmware_Version": (6, 1),
"ID": (7, 1),
"Baud_Rate": (8, 1),
"Return_Delay_Time": (9, 1),
"Drive_Mode": (10, 1),
"Operating_Mode": (11, 1),
"Secondary_ID": (12, 1),
"Protocol_Type": (13, 1),
"Homing_Offset": (20, 4),
"Moving_Threshold": (24, 4),
"Temperature_Limit": (31, 1),
"Max_Voltage_Limit": (32, 2),
"Min_Voltage_Limit": (34, 2),
"PWM_Limit": (36, 2),
"Current_Limit": (38, 2),
"Acceleration_Limit": (40, 4),
"Velocity_Limit": (44, 4),
"Max_Position_Limit": (48, 4),
"Min_Position_Limit": (52, 4),
"Shutdown": (63, 1),
"Torque_Enable": (64, 1),
"LED": (65, 1),
"Status_Return_Level": (68, 1),
"Registered_Instruction": (69, 1),
"Hardware_Error_Status": (70, 1),
"Velocity_I_Gain": (76, 2),
"Velocity_P_Gain": (78, 2),
"Position_D_Gain": (80, 2),
"Position_I_Gain": (82, 2),
"Position_P_Gain": (84, 2),
"Feedforward_2nd_Gain": (88, 2),
"Feedforward_1st_Gain": (90, 2),
"Bus_Watchdog": (98, 1),
"Goal_PWM": (100, 2),
"Goal_Current": (102, 2),
"Goal_Velocity": (104, 4),
"Profile_Acceleration": (108, 4),
"Profile_Velocity": (112, 4),
"Goal_Position": (116, 4),
"Realtime_Tick": (120, 2),
"Moving": (122, 1),
"Moving_Status": (123, 1),
"Present_PWM": (124, 2),
"Present_Current": (126, 2),
"Present_Velocity": (128, 4),
"Present_Position": (132, 4),
"Velocity_Trajectory": (136, 4),
"Position_Trajectory": (140, 4),
"Present_Input_Voltage": (144, 2),
"Present_Temperature": (146, 1),
}
# https://emanual.robotis.com/docs/en/dxl/x/{MODEL}/#baud-rate8
X_SERIES_BAUDRATE_TABLE = {
0: 9_600,
1: 57_600,
2: 115_200,
3: 1_000_000,
4: 2_000_000,
5: 3_000_000,
6: 4_000_000,
}
# {data_name: size_byte}
X_SERIES_ENCODINGS_TABLE = {
"Homing_Offset": X_SERIES_CONTROL_TABLE["Homing_Offset"][1],
"Goal_PWM": X_SERIES_CONTROL_TABLE["Goal_PWM"][1],
"Goal_Current": X_SERIES_CONTROL_TABLE["Goal_Current"][1],
"Goal_Velocity": X_SERIES_CONTROL_TABLE["Goal_Velocity"][1],
"Present_PWM": X_SERIES_CONTROL_TABLE["Present_PWM"][1],
"Present_Current": X_SERIES_CONTROL_TABLE["Present_Current"][1],
"Present_Velocity": X_SERIES_CONTROL_TABLE["Present_Velocity"][1],
}
MODEL_ENCODING_TABLE = {
"x_series": X_SERIES_ENCODINGS_TABLE,
"xl330-m077": X_SERIES_ENCODINGS_TABLE,
"xl330-m288": X_SERIES_ENCODINGS_TABLE,
"xl430-w250": X_SERIES_ENCODINGS_TABLE,
"xm430-w350": X_SERIES_ENCODINGS_TABLE,
"xm540-w270": X_SERIES_ENCODINGS_TABLE,
"xc430-w150": X_SERIES_ENCODINGS_TABLE,
}
# {model: model_resolution}
# https://emanual.robotis.com/docs/en/dxl/x/{MODEL}/#specifications
MODEL_RESOLUTION = {
"x_series": 4096,
"xl330-m077": 4096,
"xl330-m288": 4096,
"xl430-w250": 4096,
"xm430-w350": 4096,
"xm540-w270": 4096,
"xc430-w150": 4096,
}
# {model: model_number}
# https://emanual.robotis.com/docs/en/dxl/x/{MODEL}/#control-table-of-eeprom-area
MODEL_NUMBER_TABLE = {
"xl330-m077": 1190,
"xl330-m288": 1200,
"xl430-w250": 1060,
"xm430-w350": 1020,
"xm540-w270": 1120,
"xc430-w150": 1070,
}
# {model: available_operating_modes}
# https://emanual.robotis.com/docs/en/dxl/x/{MODEL}/#operating-mode11
MODEL_OPERATING_MODES = {
"xl330-m077": [0, 1, 3, 4, 5, 16],
"xl330-m288": [0, 1, 3, 4, 5, 16],
"xl430-w250": [1, 3, 4, 16],
"xm430-w350": [0, 1, 3, 4, 5, 16],
"xm540-w270": [0, 1, 3, 4, 5, 16],
"xc430-w150": [1, 3, 4, 16],
}
MODEL_CONTROL_TABLE = {
"x_series": X_SERIES_CONTROL_TABLE,
"xl330-m077": X_SERIES_CONTROL_TABLE,
"xl330-m288": X_SERIES_CONTROL_TABLE,
"xl430-w250": X_SERIES_CONTROL_TABLE,
"xm430-w350": X_SERIES_CONTROL_TABLE,
"xm540-w270": X_SERIES_CONTROL_TABLE,
"xc430-w150": X_SERIES_CONTROL_TABLE,
}
MODEL_BAUDRATE_TABLE = {
"x_series": X_SERIES_BAUDRATE_TABLE,
"xl330-m077": X_SERIES_BAUDRATE_TABLE,
"xl330-m288": X_SERIES_BAUDRATE_TABLE,
"xl430-w250": X_SERIES_BAUDRATE_TABLE,
"xm430-w350": X_SERIES_BAUDRATE_TABLE,
"xm540-w270": X_SERIES_BAUDRATE_TABLE,
"xc430-w150": X_SERIES_BAUDRATE_TABLE,
}
AVAILABLE_BAUDRATES = [
9_600,
19_200,
38_400,
57_600,
115_200,
230_400,
460_800,
500_000,
576_000,
921_600,
1_000_000,
1_152_000,
2_000_000,
2_500_000,
3_000_000,
3_500_000,
4_000_000,
]

View File

@@ -0,0 +1,2 @@
from .feetech import DriveMode, FeetechMotorsBus, OperatingMode, TorqueMode
from .tables import *

View File

@@ -0,0 +1,367 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import logging
from copy import deepcopy
from enum import Enum
from pprint import pformat
from lerobot.common.utils.encoding_utils import decode_sign_magnitude, encode_sign_magnitude
from ..motors_bus import Motor, MotorCalibration, MotorsBus, NameOrID, Value
from .tables import (
FIRMWARE_MAJOR_VERSION,
FIRMWARE_MINOR_VERSION,
MODEL_BAUDRATE_TABLE,
MODEL_CONTROL_TABLE,
MODEL_ENCODING_TABLE,
MODEL_NUMBER,
MODEL_NUMBER_TABLE,
MODEL_PROTOCOL,
MODEL_RESOLUTION,
SCAN_BAUDRATES,
)
DEFAULT_PROTOCOL_VERSION = 0
BAUDRATE = 1_000_000
DEFAULT_TIMEOUT_MS = 1000
NORMALIZED_DATA = ["Goal_Position", "Present_Position"]
logger = logging.getLogger(__name__)
class OperatingMode(Enum):
# position servo mode
POSITION = 0
# The motor is in constant speed mode, which is controlled by parameter 0x2e, and the highest bit 15 is
# the direction bit
VELOCITY = 1
# PWM open-loop speed regulation mode, with parameter 0x2c running time parameter control, bit11 as
# direction bit
PWM = 2
# In step servo mode, the number of step progress is represented by parameter 0x2a, and the highest bit 15
# is the direction bit
STEP = 3
class DriveMode(Enum):
NON_INVERTED = 0
INVERTED = 1
class TorqueMode(Enum):
ENABLED = 1
DISABLED = 0
def _split_into_byte_chunks(value: int, length: int) -> list[int]:
import scservo_sdk as scs
if length == 1:
data = [value]
elif length == 2:
data = [scs.SCS_LOBYTE(value), scs.SCS_HIBYTE(value)]
elif length == 4:
data = [
scs.SCS_LOBYTE(scs.SCS_LOWORD(value)),
scs.SCS_HIBYTE(scs.SCS_LOWORD(value)),
scs.SCS_LOBYTE(scs.SCS_HIWORD(value)),
scs.SCS_HIBYTE(scs.SCS_HIWORD(value)),
]
return data
def patch_setPacketTimeout(self, packet_length): # noqa: N802
"""
HACK: This patches the PortHandler behavior to set the correct packet timeouts.
It fixes https://gitee.com/ftservo/SCServoSDK/issues/IBY2S6
The bug is fixed on the official Feetech SDK repo (https://gitee.com/ftservo/FTServo_Python)
but because that version is not published on PyPI, we rely on the (unofficial) on that is, which needs
patching.
"""
self.packet_start_time = self.getCurrentTime()
self.packet_timeout = (self.tx_time_per_byte * packet_length) + (self.tx_time_per_byte * 3.0) + 50
class FeetechMotorsBus(MotorsBus):
"""
The FeetechMotorsBus class allows to efficiently read and write to the attached motors. It relies on the
python feetech sdk to communicate with the motors, which is itself based on the dynamixel sdk.
"""
available_baudrates = deepcopy(SCAN_BAUDRATES)
default_timeout = DEFAULT_TIMEOUT_MS
model_baudrate_table = deepcopy(MODEL_BAUDRATE_TABLE)
model_ctrl_table = deepcopy(MODEL_CONTROL_TABLE)
model_encoding_table = deepcopy(MODEL_ENCODING_TABLE)
model_number_table = deepcopy(MODEL_NUMBER_TABLE)
model_resolution_table = deepcopy(MODEL_RESOLUTION)
normalized_data = deepcopy(NORMALIZED_DATA)
def __init__(
self,
port: str,
motors: dict[str, Motor],
calibration: dict[str, MotorCalibration] | None = None,
protocol_version: int = DEFAULT_PROTOCOL_VERSION,
):
super().__init__(port, motors, calibration)
self.protocol_version = protocol_version
self._assert_same_protocol()
import scservo_sdk as scs
self.port_handler = scs.PortHandler(self.port)
# HACK: monkeypatch
self.port_handler.setPacketTimeout = patch_setPacketTimeout.__get__(
self.port_handler, scs.PortHandler
)
self.packet_handler = scs.PacketHandler(protocol_version)
self.sync_reader = scs.GroupSyncRead(self.port_handler, self.packet_handler, 0, 0)
self.sync_writer = scs.GroupSyncWrite(self.port_handler, self.packet_handler, 0, 0)
self._comm_success = scs.COMM_SUCCESS
self._no_error = 0x00
if any(MODEL_PROTOCOL[model] != self.protocol_version for model in self.models):
raise ValueError(f"Some motors are incompatible with protocol_version={self.protocol_version}")
def _assert_same_protocol(self) -> None:
if any(MODEL_PROTOCOL[model] != self.protocol_version for model in self.models):
raise RuntimeError("Some motors use an incompatible protocol.")
def _assert_protocol_is_compatible(self, instruction_name: str) -> None:
if instruction_name == "sync_read" and self.protocol_version == 1:
raise NotImplementedError(
"'Sync Read' is not available with Feetech motors using Protocol 1. Use 'Read' sequentially instead."
)
if instruction_name == "broadcast_ping" and self.protocol_version == 1:
raise NotImplementedError(
"'Broadcast Ping' is not available with Feetech motors using Protocol 1. Use 'Ping' sequentially instead."
)
def _assert_same_firmware(self) -> None:
firmware_versions = self._read_firmware_version(self.ids)
if len(set(firmware_versions.values())) != 1:
raise RuntimeError(
"Some Motors use different firmware versions. Update their firmware first using Feetech's software. "
"Visit https://www.feetechrc.com/software."
)
def _handshake(self) -> None:
self._assert_motors_exist()
self._assert_same_firmware()
def configure_motors(self) -> None:
for motor in self.motors:
# By default, Feetech motors have a 500µs delay response time (corresponding to a value of 250 on
# the 'Return_Delay_Time' address). We ensure this is reduced to the minimum of 2µs (value of 0).
self.write("Return_Delay_Time", motor, 0)
# Set 'Maximum_Acceleration' to 254 to speedup acceleration and deceleration of the motors.
# Note: this address is not in the official STS3215 Memory Table
self.write("Maximum_Acceleration", motor, 254)
self.write("Acceleration", motor, 254)
def _get_half_turn_homings(self, positions: dict[NameOrID, Value]) -> dict[NameOrID, Value]:
"""
On Feetech Motors:
Present_Position = Actual_Position - Homing_Offset
"""
half_turn_homings = {}
for motor, pos in positions.items():
model = self._get_motor_model(motor)
max_res = self.model_resolution_table[model] - 1
half_turn_homings[motor] = pos - int(max_res / 2)
return half_turn_homings
def disable_torque(self, motors: str | list[str] | None = None, num_retry: int = 0) -> None:
for name in self._get_motors_list(motors):
self.write("Torque_Enable", name, TorqueMode.DISABLED.value, num_retry=num_retry)
self.write("Lock", name, 0, num_retry=num_retry)
def enable_torque(self, motors: str | list[str] | None = None, num_retry: int = 0) -> None:
for name in self._get_motors_list(motors):
self.write("Torque_Enable", name, TorqueMode.ENABLED.value, num_retry=num_retry)
self.write("Lock", name, 1, num_retry=num_retry)
def _encode_sign(self, data_name: str, ids_values: dict[int, int]) -> dict[int, int]:
for id_ in ids_values:
model = self._id_to_model(id_)
encoding_table = self.model_encoding_table.get(model)
if encoding_table and data_name in encoding_table:
sign_bit = encoding_table[data_name]
ids_values[id_] = encode_sign_magnitude(ids_values[id_], sign_bit)
return ids_values
def _decode_sign(self, data_name: str, ids_values: dict[int, int]) -> dict[int, int]:
for id_ in ids_values:
model = self._id_to_model(id_)
encoding_table = self.model_encoding_table.get(model)
if encoding_table and data_name in encoding_table:
sign_bit = encoding_table[data_name]
ids_values[id_] = decode_sign_magnitude(ids_values[id_], sign_bit)
return ids_values
def _split_into_byte_chunks(self, value: int, length: int) -> list[int]:
return _split_into_byte_chunks(value, length)
def _broadcast_ping_p1(
self, known_motors_only: bool = True, n_motors: int | None = None, num_retry: int = 0
) -> dict[int, int]:
if known_motors_only:
ids = self.ids
else:
import scservo_sdk as scs
ids = range(scs.MAX_ID + 1)
ids_models = {}
motors_found = 0
for id_ in ids:
model_number = self.ping(id_, num_retry)
if model_number is not None:
ids_models[id_] = model_number
motors_found += 1
if motors_found >= n_motors:
break
return ids_models
def _broadcast_ping_p0(self) -> tuple[dict[int, int], int]:
import scservo_sdk as scs
data_list = {}
status_length = 6
rx_length = 0
wait_length = status_length * scs.MAX_ID
txpacket = [0] * 6
tx_time_per_byte = (1000.0 / self.port_handler.getBaudRate()) * 10.0
txpacket[scs.PKT_ID] = scs.BROADCAST_ID
txpacket[scs.PKT_LENGTH] = 2
txpacket[scs.PKT_INSTRUCTION] = scs.INST_PING
result = self.packet_handler.txPacket(self.port_handler, txpacket)
if result != scs.COMM_SUCCESS:
self.port_handler.is_using = False
return data_list, result
# set rx timeout
self.port_handler.setPacketTimeoutMillis((wait_length * tx_time_per_byte) + (3.0 * scs.MAX_ID) + 16.0)
rxpacket = []
while True:
rxpacket += self.port_handler.readPort(wait_length - rx_length)
rx_length = len(rxpacket)
if self.port_handler.isPacketTimeout(): # or rx_length >= wait_length
break
self.port_handler.is_using = False
if rx_length == 0:
return data_list, scs.COMM_RX_TIMEOUT
while True:
if rx_length < status_length:
return data_list, scs.COMM_RX_CORRUPT
# find packet header
for idx in range(0, (rx_length - 1)):
if (rxpacket[idx] == 0xFF) and (rxpacket[idx + 1] == 0xFF):
break
if idx == 0: # found at the beginning of the packet
# calculate checksum
checksum = 0
for idx in range(2, status_length - 1): # except header & checksum
checksum += rxpacket[idx]
checksum = ~checksum & 0xFF
if rxpacket[status_length - 1] == checksum:
result = scs.COMM_SUCCESS
data_list[rxpacket[scs.PKT_ID]] = rxpacket[scs.PKT_ERROR]
del rxpacket[0:status_length]
rx_length = rx_length - status_length
if rx_length == 0:
return data_list, result
else:
result = scs.COMM_RX_CORRUPT
# remove header (0xFF 0xFF)
del rxpacket[0:2]
rx_length = rx_length - 2
else:
# remove unnecessary packets
del rxpacket[0:idx]
rx_length = rx_length - idx
def broadcast_ping(self, num_retry: int = 0, raise_on_error: bool = False) -> dict[int, int] | None:
self._assert_protocol_is_compatible("broadcast_ping")
for n_try in range(1 + num_retry):
ids_status, comm = self._broadcast_ping_p0()
if self._is_comm_success(comm):
break
logger.debug(f"Broadcast ping failed on port '{self.port}' ({n_try=})")
logger.debug(self.packet_handler.getTxRxResult(comm))
if not self._is_comm_success(comm):
if raise_on_error:
raise ConnectionError(self.packet_handler.getTxRxResult(comm))
return
ids_errors = {id_: status for id_, status in ids_status.items() if self._is_error(status)}
if ids_errors:
display_dict = {id_: self.packet_handler.getRxPacketError(err) for id_, err in ids_errors.items()}
logger.error(f"Some motors found returned an error status:\n{pformat(display_dict, indent=4)}")
return self._read_model_number(list(ids_status), raise_on_error)
def _read_firmware_version(self, motor_ids: list[int], raise_on_error: bool = False) -> dict[int, str]:
firmware_versions = {}
for id_ in motor_ids:
firm_ver_major, comm, error = self._read(
*FIRMWARE_MAJOR_VERSION, id_, raise_on_error=raise_on_error
)
if not self._is_comm_success(comm) or self._is_error(error):
return
firm_ver_minor, comm, error = self._read(
*FIRMWARE_MINOR_VERSION, id_, raise_on_error=raise_on_error
)
if not self._is_comm_success(comm) or self._is_error(error):
return
firmware_versions[id_] = f"{firm_ver_major}.{firm_ver_minor}"
return firmware_versions
def _read_model_number(self, motor_ids: list[int], raise_on_error: bool = False) -> dict[int, int]:
model_numbers = {}
for id_ in motor_ids:
model_nb, comm, error = self._read(*MODEL_NUMBER, id_, raise_on_error=raise_on_error)
if not self._is_comm_success(comm) or self._is_error(error):
return
model_numbers[id_] = model_nb
return model_numbers

View File

@@ -0,0 +1,202 @@
FIRMWARE_MAJOR_VERSION = (0, 1)
FIRMWARE_MINOR_VERSION = (1, 1)
MODEL_NUMBER = (3, 2)
# See this link for STS3215 Memory Table:
# https://docs.google.com/spreadsheets/d/1GVs7W1VS1PqdhA1nW-abeyAHhTUxKUdR/edit?usp=sharing&ouid=116566590112741600240&rtpof=true&sd=true
# data_name: (address, size_byte)
STS_SMS_SERIES_CONTROL_TABLE = {
# EPROM
"Firmware_Major_Version": FIRMWARE_MAJOR_VERSION, # read-only
"Firmware_Minor_Version": FIRMWARE_MINOR_VERSION, # read-only
"Model_Number": MODEL_NUMBER, # read-only
"ID": (5, 1),
"Baud_Rate": (6, 1),
"Return_Delay_Time": (7, 1),
"Response_Status_Level": (8, 1),
"Min_Position_Limit": (9, 2),
"Max_Position_Limit": (11, 2),
"Max_Temperature_Limit": (13, 1),
"Max_Voltage_Limit": (14, 1),
"Min_Voltage_Limit": (15, 1),
"Max_Torque_Limit": (16, 2),
"Phase": (18, 1),
"Unloading_Condition": (19, 1),
"LED_Alarm_Condition": (20, 1),
"P_Coefficient": (21, 1),
"D_Coefficient": (22, 1),
"I_Coefficient": (23, 1),
"Minimum_Startup_Force": (24, 2),
"CW_Dead_Zone": (26, 1),
"CCW_Dead_Zone": (27, 1),
"Protection_Current": (28, 2),
"Angular_Resolution": (30, 1),
"Homing_Offset": (31, 2),
"Operating_Mode": (33, 1),
"Protective_Torque": (34, 1),
"Protection_Time": (35, 1),
"Overload_Torque": (36, 1),
"Speed_closed_loop_P_proportional_coefficient": (37, 1),
"Over_Current_Protection_Time": (38, 1),
"Velocity_closed_loop_I_integral_coefficient": (39, 1),
# SRAM
"Torque_Enable": (40, 1),
"Acceleration": (41, 1),
"Goal_Position": (42, 2),
"Goal_Time": (44, 2),
"Goal_Speed": (46, 2),
"Torque_Limit": (48, 2),
"Lock": (55, 1),
"Present_Position": (56, 2), # read-only
"Present_Speed": (58, 2), # read-only
"Present_Load": (60, 2), # read-only
"Present_Voltage": (62, 1), # read-only
"Present_Temperature": (63, 1), # read-only
"Status": (65, 1), # read-only
"Moving": (66, 1), # read-only
"Present_Current": (69, 2), # read-only
# Not in the Memory Table
"Maximum_Acceleration": (85, 2),
}
SCS_SERIES_CONTROL_TABLE = {
# EPROM
"Firmware_Major_Version": FIRMWARE_MAJOR_VERSION, # read-only
"Firmware_Minor_Version": FIRMWARE_MINOR_VERSION, # read-only
"Model_Number": MODEL_NUMBER, # read-only
"ID": (5, 1),
"Baud_Rate": (6, 1),
"Return_Delay": (7, 1),
"Response_Status_Level": (8, 1),
"Min_Position_Limit": (9, 2),
"Max_Position_Limit": (11, 2),
"Max_Temperature_Limit": (13, 1),
"Max_Voltage_Limit": (14, 1),
"Min_Voltage_Limit": (15, 1),
"Max_Torque_Limit": (16, 2),
"Phase": (18, 1),
"Unloading_Condition": (19, 1),
"LED_Alarm_Condition": (20, 1),
"P_Coefficient": (21, 1),
"D_Coefficient": (22, 1),
"I_Coefficient": (23, 1),
"Minimum_Startup_Force": (24, 2),
"CW_Dead_Zone": (26, 1),
"CCW_Dead_Zone": (27, 1),
"Protective_Torque": (37, 1),
"Protection_Time": (38, 1),
# SRAM
"Torque_Enable": (40, 1),
"Acceleration": (41, 1),
"Goal_Position": (42, 2),
"Running_Time": (44, 2),
"Goal_Speed": (46, 2),
"Lock": (48, 1),
"Present_Position": (56, 2), # read-only
"Present_Speed": (58, 2), # read-only
"Present_Load": (60, 2), # read-only
"Present_Voltage": (62, 1), # read-only
"Present_Temperature": (63, 1), # read-only
"Sync_Write_Flag": (64, 1), # read-only
"Status": (65, 1), # read-only
"Moving": (66, 1), # read-only
}
STS_SMS_SERIES_BAUDRATE_TABLE = {
0: 1_000_000,
1: 500_000,
2: 250_000,
3: 128_000,
4: 115_200,
5: 57_600,
6: 38_400,
7: 19_200,
}
SCS_SERIES_BAUDRATE_TABLE = {
0: 1_000_000,
1: 500_000,
2: 250_000,
3: 128_000,
4: 115_200,
5: 57_600,
6: 38_400,
7: 19_200,
}
MODEL_CONTROL_TABLE = {
"sts_series": STS_SMS_SERIES_CONTROL_TABLE,
"scs_series": SCS_SERIES_CONTROL_TABLE,
"sms_series": STS_SMS_SERIES_CONTROL_TABLE,
"sts3215": STS_SMS_SERIES_CONTROL_TABLE,
"sts3250": STS_SMS_SERIES_CONTROL_TABLE,
"scs0009": SCS_SERIES_CONTROL_TABLE,
"sm8512bl": STS_SMS_SERIES_CONTROL_TABLE,
}
MODEL_RESOLUTION = {
"sts_series": 4096,
"sms_series": 4096,
"scs_series": 1024,
"sts3215": 4096,
"sts3250": 4096,
"sm8512bl": 65536,
"scs0009": 1024,
}
MODEL_BAUDRATE_TABLE = {
"sts_series": STS_SMS_SERIES_BAUDRATE_TABLE,
"sms_series": STS_SMS_SERIES_BAUDRATE_TABLE,
"scs_series": SCS_SERIES_BAUDRATE_TABLE,
"sm8512bl": STS_SMS_SERIES_BAUDRATE_TABLE,
"sts3215": STS_SMS_SERIES_BAUDRATE_TABLE,
"sts3250": STS_SMS_SERIES_BAUDRATE_TABLE,
"scs0009": SCS_SERIES_BAUDRATE_TABLE,
}
# Sign-Magnitude encoding bits
STS_SMS_SERIES_ENCODINGS_TABLE = {
"Homing_Offset": 11,
"Goal_Speed": 15,
}
MODEL_ENCODING_TABLE = {
"sts_series": STS_SMS_SERIES_ENCODINGS_TABLE,
"sms_series": STS_SMS_SERIES_ENCODINGS_TABLE,
"scs_series": {},
"sts3215": STS_SMS_SERIES_ENCODINGS_TABLE,
"sts3250": STS_SMS_SERIES_ENCODINGS_TABLE,
"sm8512bl": STS_SMS_SERIES_ENCODINGS_TABLE,
"scs0009": {},
}
SCAN_BAUDRATES = [
4_800,
9_600,
14_400,
19_200,
38_400,
57_600,
115_200,
128_000,
250_000,
500_000,
1_000_000,
]
MODEL_NUMBER_TABLE = {
"sts3215": 777,
"sts3250": 2825,
"sm8512bl": 11272,
"scs0009": 1284,
}
MODEL_PROTOCOL = {
"sts_series": 0,
"sms_series": 0,
"scs_series": 1,
"sts3215": 0,
"sts3250": 0,
"sm8512bl": 0,
"scs0009": 1,
}

View File

@@ -0,0 +1,987 @@
#!/usr/bin/env python
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# ruff: noqa: N802
# This noqa is for the Protocols classes: PortHandler, PacketHandler GroupSyncRead/Write
# TODO(aliberts): Add block noqa when feature below is available
# https://github.com/astral-sh/ruff/issues/3711
import abc
import logging
from contextlib import contextmanager
from dataclasses import dataclass
from enum import Enum
from functools import cached_property
from pprint import pformat
from typing import Protocol, TypeAlias
import serial
from deepdiff import DeepDiff
from tqdm import tqdm
from lerobot.common.errors import DeviceAlreadyConnectedError, DeviceNotConnectedError
from lerobot.common.utils.utils import enter_pressed, move_cursor_up
NameOrID: TypeAlias = str | int
Value: TypeAlias = int | float
MAX_ID_RANGE = 252
logger = logging.getLogger(__name__)
def get_ctrl_table(model_ctrl_table: dict[str, dict], model: str) -> dict[str, tuple[int, int]]:
ctrl_table = model_ctrl_table.get(model)
if ctrl_table is None:
raise KeyError(f"Control table for {model=} not found.")
return ctrl_table
def get_address(model_ctrl_table: dict[str, dict], model: str, data_name: str) -> tuple[int, int]:
ctrl_table = get_ctrl_table(model_ctrl_table, model)
addr_bytes = ctrl_table.get(data_name)
if addr_bytes is None:
raise KeyError(f"Address for '{data_name}' not found in {model} control table.")
return addr_bytes
def assert_same_address(model_ctrl_table: dict[str, dict], motor_models: list[str], data_name: str) -> None:
all_addr = []
all_bytes = []
for model in motor_models:
addr, bytes = get_address(model_ctrl_table, model, data_name)
all_addr.append(addr)
all_bytes.append(bytes)
if len(set(all_addr)) != 1:
raise NotImplementedError(
f"At least two motor models use a different address for `data_name`='{data_name}'"
f"({list(zip(motor_models, all_addr, strict=False))})."
)
if len(set(all_bytes)) != 1:
raise NotImplementedError(
f"At least two motor models use a different bytes representation for `data_name`='{data_name}'"
f"({list(zip(motor_models, all_bytes, strict=False))})."
)
class MotorNormMode(Enum):
DEGREE = 0
RANGE_0_100 = 1
RANGE_M100_100 = 2
VELOCITY = 3
@dataclass
class MotorCalibration:
id: int
drive_mode: int
homing_offset: int
range_min: int
range_max: int
@dataclass
class Motor:
id: int
model: str
norm_mode: MotorNormMode
class JointOutOfRangeError(Exception):
def __init__(self, message="Joint is out of range"):
self.message = message
super().__init__(self.message)
class PortHandler(Protocol):
def __init__(self, port_name):
self.is_open: bool
self.baudrate: int
self.packet_start_time: float
self.packet_timeout: float
self.tx_time_per_byte: float
self.is_using: bool
self.port_name: str
self.ser: serial.Serial
def openPort(self): ...
def closePort(self): ...
def clearPort(self): ...
def setPortName(self, port_name): ...
def getPortName(self): ...
def setBaudRate(self, baudrate): ...
def getBaudRate(self): ...
def getBytesAvailable(self): ...
def readPort(self, length): ...
def writePort(self, packet): ...
def setPacketTimeout(self, packet_length): ...
def setPacketTimeoutMillis(self, msec): ...
def isPacketTimeout(self): ...
def getCurrentTime(self): ...
def getTimeSinceStart(self): ...
def setupPort(self, cflag_baud): ...
def getCFlagBaud(self, baudrate): ...
class PacketHandler(Protocol):
def getTxRxResult(self, result): ...
def getRxPacketError(self, error): ...
def txPacket(self, port, txpacket): ...
def rxPacket(self, port): ...
def txRxPacket(self, port, txpacket): ...
def ping(self, port, id): ...
def action(self, port, id): ...
def readTx(self, port, id, address, length): ...
def readRx(self, port, id, length): ...
def readTxRx(self, port, id, address, length): ...
def read1ByteTx(self, port, id, address): ...
def read1ByteRx(self, port, id): ...
def read1ByteTxRx(self, port, id, address): ...
def read2ByteTx(self, port, id, address): ...
def read2ByteRx(self, port, id): ...
def read2ByteTxRx(self, port, id, address): ...
def read4ByteTx(self, port, id, address): ...
def read4ByteRx(self, port, id): ...
def read4ByteTxRx(self, port, id, address): ...
def writeTxOnly(self, port, id, address, length, data): ...
def writeTxRx(self, port, id, address, length, data): ...
def write1ByteTxOnly(self, port, id, address, data): ...
def write1ByteTxRx(self, port, id, address, data): ...
def write2ByteTxOnly(self, port, id, address, data): ...
def write2ByteTxRx(self, port, id, address, data): ...
def write4ByteTxOnly(self, port, id, address, data): ...
def write4ByteTxRx(self, port, id, address, data): ...
def regWriteTxOnly(self, port, id, address, length, data): ...
def regWriteTxRx(self, port, id, address, length, data): ...
def syncReadTx(self, port, start_address, data_length, param, param_length): ...
def syncWriteTxOnly(self, port, start_address, data_length, param, param_length): ...
class GroupSyncRead(Protocol):
def __init__(self, port, ph, start_address, data_length):
self.port: str
self.ph: PortHandler
self.start_address: int
self.data_length: int
self.last_result: bool
self.is_param_changed: bool
self.param: list
self.data_dict: dict
def makeParam(self): ...
def addParam(self, id): ...
def removeParam(self, id): ...
def clearParam(self): ...
def txPacket(self): ...
def rxPacket(self): ...
def txRxPacket(self): ...
def isAvailable(self, id, address, data_length): ...
def getData(self, id, address, data_length): ...
class GroupSyncWrite(Protocol):
def __init__(self, port, ph, start_address, data_length):
self.port: str
self.ph: PortHandler
self.start_address: int
self.data_length: int
self.is_param_changed: bool
self.param: list
self.data_dict: dict
def makeParam(self): ...
def addParam(self, id, data): ...
def removeParam(self, id): ...
def changeParam(self, id, data): ...
def clearParam(self): ...
def txPacket(self): ...
class MotorsBus(abc.ABC):
"""The main LeRobot class for implementing motors buses.
There are currently two implementations of this abstract class:
- DynamixelMotorsBus
- FeetechMotorsBus
Note: This class may evolve in the future should we add support for other manufacturers SDKs.
A MotorsBus allows to efficiently read and write to the attached motors.
It represents several motors daisy-chained together and connected through a serial port.
A MotorsBus subclass instance requires a port (e.g. `FeetechMotorsBus(port="/dev/tty.usbmodem575E0031751"`)).
To find the port, you can run our utility script:
```bash
python lerobot/scripts/find_motors_bus_port.py
>>> Finding all available ports for the MotorsBus.
>>> ['/dev/tty.usbmodem575E0032081', '/dev/tty.usbmodem575E0031751']
>>> Remove the usb cable from your MotorsBus and press Enter when done.
>>> The port of this MotorsBus is /dev/tty.usbmodem575E0031751.
>>> Reconnect the usb cable.
```
Example of usage for 1 Feetech sts3215 motor connected to the bus:
```python
motors_bus = FeetechMotorsBus(
port="/dev/tty.usbmodem575E0031751",
motors={"gripper": (6, "sts3215")},
)
motors_bus.connect()
position = motors_bus.read("Present_Position")
# Move from a few motor steps as an example
few_steps = 30
motors_bus.write("Goal_Position", position + few_steps)
# When done, properly disconnect the port using
motors_bus.disconnect()
```
"""
available_baudrates: list[int]
default_timeout: int
model_baudrate_table: dict[str, dict]
model_ctrl_table: dict[str, dict]
model_encoding_table: dict[str, dict]
model_number_table: dict[str, int]
model_resolution_table: dict[str, int]
normalized_data: list[str]
def __init__(
self,
port: str,
motors: dict[str, Motor],
calibration: dict[str, MotorCalibration] | None = None,
):
self.port = port
self.motors = motors
self.calibration = calibration if calibration else {}
self.port_handler: PortHandler
self.packet_handler: PacketHandler
self.sync_reader: GroupSyncRead
self.sync_writer: GroupSyncWrite
self._comm_success: int
self._no_error: int
self._id_to_model_dict = {m.id: m.model for m in self.motors.values()}
self._id_to_name_dict = {m.id: name for name, m in self.motors.items()}
self._model_nb_to_model_dict = {v: k for k, v in self.model_number_table.items()}
self._validate_motors()
def __len__(self):
return len(self.motors)
def __repr__(self):
return (
f"{self.__class__.__name__}(\n"
f" Port: '{self.port}',\n"
f" Motors: \n{pformat(self.motors, indent=8, sort_dicts=False)},\n"
")',\n"
)
@cached_property
def _has_different_ctrl_tables(self) -> bool:
if len(self.models) < 2:
return False
first_table = self.model_ctrl_table[self.models[0]]
return any(
DeepDiff(first_table, get_ctrl_table(self.model_ctrl_table, model)) for model in self.models[1:]
)
@cached_property
def names(self) -> list[str]:
return list(self.motors)
@cached_property
def models(self) -> list[str]:
return [m.model for m in self.motors.values()]
@cached_property
def ids(self) -> list[int]:
return [m.id for m in self.motors.values()]
def _model_nb_to_model(self, motor_nb: int) -> str:
return self._model_nb_to_model_dict[motor_nb]
def _id_to_model(self, motor_id: int) -> str:
return self._id_to_model_dict[motor_id]
def _id_to_name(self, motor_id: int) -> str:
return self._id_to_name_dict[motor_id]
def _get_motor_id(self, motor: NameOrID) -> int:
if isinstance(motor, str):
return self.motors[motor].id
elif isinstance(motor, int):
return motor
else:
raise TypeError(f"'{motor}' should be int, str.")
def _get_motor_model(self, motor: NameOrID) -> int:
if isinstance(motor, str):
return self.motors[motor].model
elif isinstance(motor, int):
return self._id_to_model_dict[motor]
else:
raise TypeError(f"'{motor}' should be int, str.")
def _get_motors_list(self, motors: str | list[str] | None) -> list[str]:
if motors is None:
return self.names
elif isinstance(motors, str):
return [motors]
elif isinstance(motors, list):
return motors.copy()
else:
raise TypeError(motors)
def _get_ids_values_dict(self, values: Value | dict[str, Value] | None) -> list[str]:
if isinstance(values, (int, float)):
return dict.fromkeys(self.ids, values)
elif isinstance(values, dict):
return {self.motors[motor].id: val for motor, val in values.items()}
else:
raise TypeError(f"'values' is expected to be a single value or a dict. Got {values}")
def _validate_motors(self) -> None:
if len(self.ids) != len(set(self.ids)):
raise ValueError(f"Some motors have the same id!\n{self}")
# Ensure ctrl table available for all models
for model in self.models:
get_ctrl_table(self.model_ctrl_table, model)
def _is_comm_success(self, comm: int) -> bool:
return comm == self._comm_success
def _is_error(self, error: int) -> bool:
return error != self._no_error
def _assert_motors_exist(self) -> None:
# TODO(aliberts): collect all wrong ids/models and display them at once
found_models = {}
for id_ in self.ids:
model_nb = self.ping(id_)
if model_nb is not None:
found_models[id_] = model_nb
expected_models = {m.id: self.model_number_table[m.model] for m in self.motors.values()}
if set(found_models) != set(self.ids):
raise RuntimeError(
f"{self.__class__.__name__} is supposed to have these motors: ({{id: model_nb}})"
f"\n{pformat(expected_models, indent=4, sort_dicts=False)}\n"
f"But it found these motors on port '{self.port}':"
f"\n{pformat(found_models, indent=4, sort_dicts=False)}\n"
)
for id_, model in expected_models.items():
if found_models[id_] != model:
raise RuntimeError(
f"Motor '{self._id_to_name(id_)}' (id={id_}) is supposed to be of model_number={model} "
f"('{self._id_to_model(id_)}') but a model_number={found_models[id_]} "
"was found instead for that id."
)
@abc.abstractmethod
def _assert_protocol_is_compatible(self, instruction_name: str) -> None:
pass
@property
def is_connected(self) -> bool:
return self.port_handler.is_open
def connect(self, handshake: bool = True) -> None:
if self.is_connected:
raise DeviceAlreadyConnectedError(
f"{self.__class__.__name__}('{self.port}') is already connected. Do not call `{self.__class__.__name__}.connect()` twice."
)
try:
if not self.port_handler.openPort():
raise OSError(f"Failed to open port '{self.port}'.")
elif handshake:
self._handshake()
except (FileNotFoundError, OSError, serial.SerialException) as e:
raise ConnectionError(
f"\nCould not connect on port '{self.port}'. Make sure you are using the correct port."
"\nTry running `python lerobot/scripts/find_motors_bus_port.py`\n"
) from e
self.set_timeout()
logger.debug(f"{self.__class__.__name__} connected.")
@abc.abstractmethod
def _handshake(self) -> None:
pass
@classmethod
def scan_port(cls, port: str, *args, **kwargs) -> dict[int, list[int]]:
bus = cls(port, {}, *args, **kwargs)
try:
bus.port_handler.openPort()
except (FileNotFoundError, OSError, serial.SerialException) as e:
raise ConnectionError(
f"Could not connect to port '{port}'. Make sure you are using the correct port."
"\nTry running `python lerobot/scripts/find_motors_bus_port.py`\n"
) from e
baudrate_ids = {}
for baudrate in tqdm(bus.available_baudrates, desc="Scanning port"):
bus.set_baudrate(baudrate)
ids_models = bus.broadcast_ping()
if ids_models:
tqdm.write(f"Motors found for {baudrate=}: {pformat(ids_models, indent=4)}")
baudrate_ids[baudrate] = list(ids_models)
return baudrate_ids
@abc.abstractmethod
def configure_motors(self) -> None:
pass
@abc.abstractmethod
def disable_torque(self, motors: str | list[str] | None = None, num_retry: int = 0) -> None:
pass
@abc.abstractmethod
def enable_torque(self, motors: str | list[str] | None = None, num_retry: int = 0) -> None:
pass
@contextmanager
def torque_disabled(self):
self.disable_torque()
try:
yield
finally:
self.enable_torque()
def set_timeout(self, timeout_ms: int | None = None):
timeout_ms = timeout_ms if timeout_ms is not None else self.default_timeout
self.port_handler.setPacketTimeoutMillis(timeout_ms)
def get_baudrate(self) -> int:
return self.port_handler.getBaudRate()
def set_baudrate(self, baudrate: int) -> None:
present_bus_baudrate = self.port_handler.getBaudRate()
if present_bus_baudrate != baudrate:
logger.info(f"Setting bus baud rate to {baudrate}. Previously {present_bus_baudrate}.")
self.port_handler.setBaudRate(baudrate)
if self.port_handler.getBaudRate() != baudrate:
raise OSError("Failed to write bus baud rate.")
@property
def is_calibrated(self) -> bool:
return self.calibration == self.read_calibration()
def read_calibration(self) -> dict[str, MotorCalibration]:
offsets = self.sync_read("Homing_Offset", normalize=False)
mins = self.sync_read("Min_Position_Limit", normalize=False)
maxes = self.sync_read("Max_Position_Limit", normalize=False)
try:
drive_modes = self.sync_read("Drive_Mode", normalize=False)
except KeyError:
drive_modes = dict.fromkeys(self.names, 0)
calibration = {}
for name, motor in self.motors.items():
calibration[name] = MotorCalibration(
id=motor.id,
drive_mode=drive_modes[name],
homing_offset=offsets[name],
range_min=mins[name],
range_max=maxes[name],
)
return calibration
def write_calibration(self, calibration_dict: dict[str, MotorCalibration]) -> None:
for motor, calibration in calibration_dict.items():
self.write("Homing_Offset", motor, calibration.homing_offset)
self.write("Min_Position_Limit", motor, calibration.range_min)
self.write("Max_Position_Limit", motor, calibration.range_max)
self.calibration = calibration_dict
def reset_calibration(self, motors: NameOrID | list[NameOrID] | None = None) -> None:
if motors is None:
motors = self.names
elif isinstance(motors, (str, int)):
motors = [motors]
elif not isinstance(motors, list):
raise TypeError(motors)
for motor in motors:
model = self._get_motor_model(motor)
max_res = self.model_resolution_table[model] - 1
self.write("Homing_Offset", motor, 0, normalize=False)
self.write("Min_Position_Limit", motor, 0, normalize=False)
self.write("Max_Position_Limit", motor, max_res, normalize=False)
self.calibration = {}
def set_half_turn_homings(self, motors: NameOrID | list[NameOrID] | None = None) -> dict[NameOrID, Value]:
"""
This assumes motors present positions are roughly in the middle of their desired range
Step 1: Set homing and min max to 0
Step 2: Read Present_Position which will be Actual_Position since
Present_Position = Actual_Position ± Homing_Offset (1)
and Homing_Offset = 0 from step 1
Step 3: We want to set the Homing_Offset such that the current Present_Position to be half range of 1
revolution. For instance, if 1 revolution corresponds to 4095 (4096 steps), this means we want the
current Present_Position to be 2047.
In that example:
Present_Position = 2047 (2)
Actual_Position = X (read in step 2)
from (1) and (2):
=> Homing_Offset = ±(X - 2048)
"""
if motors is None:
motors = self.names
elif isinstance(motors, (str, int)):
motors = [motors]
else:
raise TypeError(motors)
self.reset_calibration(motors)
actual_positions = self.sync_read("Present_Position", motors, normalize=False)
homing_offsets = self._get_half_turn_homings(actual_positions)
for motor, offset in homing_offsets.items():
self.write("Homing_Offset", motor, offset)
return homing_offsets
@abc.abstractmethod
def _get_half_turn_homings(self, positions: dict[NameOrID, Value]) -> dict[NameOrID, Value]:
pass
def record_ranges_of_motion(
self, motors: NameOrID | list[NameOrID] | None = None, display_values: bool = True
) -> tuple[dict[NameOrID, Value], dict[NameOrID, Value]]:
"""
This assumes that the homing offsets have been set such that all possible values in the range of
motion are positive and that the zero is not crossed. To that end, `set_half_turn_homings` should
typically be called prior to this.
"""
if motors is None:
motors = self.names
elif isinstance(motors, (str, int)):
motors = [motors]
elif not isinstance(motors, list):
raise TypeError(motors)
start_positions = self.sync_read("Present_Position", motors, normalize=False)
mins = start_positions.copy()
maxes = start_positions.copy()
while True:
positions = self.sync_read("Present_Position", motors, normalize=False)
mins = {motor: min(positions[motor], min_) for motor, min_ in mins.items()}
maxes = {motor: max(positions[motor], max_) for motor, max_ in maxes.items()}
if display_values:
print("\n-------------------------------------------")
print(f"{'NAME':<15} | {'MIN':>6} | {'POS':>6} | {'MAX':>6}")
for name in motors:
print(f"{name:<15} | {mins[name]:>6} | {positions[name]:>6} | {maxes[name]:>6}")
if enter_pressed():
break
if display_values:
# Move cursor up to overwrite the previous output
move_cursor_up(len(motors) + 3)
return mins, maxes
def _normalize(self, data_name: str, ids_values: dict[int, int]) -> dict[int, float]:
if not self.calibration:
raise RuntimeError(f"{self} has no calibration registered.")
normalized_values = {}
for id_, val in ids_values.items():
name = self._id_to_name(id_)
min_ = self.calibration[name].range_min
max_ = self.calibration[name].range_max
bounded_val = min(max_, max(min_, val))
if self.motors[name].norm_mode is MotorNormMode.RANGE_M100_100:
normalized_values[id_] = (((bounded_val - min_) / (max_ - min_)) * 200) - 100
elif self.motors[name].norm_mode is MotorNormMode.RANGE_0_100:
normalized_values[id_] = ((bounded_val - min_) / (max_ - min_)) * 100
else:
# TODO(alibers): velocity and degree modes
raise NotImplementedError
return normalized_values
def _unnormalize(self, data_name: str, ids_values: dict[int, float]) -> dict[int, int]:
if not self.calibration:
raise RuntimeError(f"{self} has no calibration registered.")
unnormalized_values = {}
for id_, val in ids_values.items():
name = self._id_to_name(id_)
min_ = self.calibration[name].range_min
max_ = self.calibration[name].range_max
if self.motors[name].norm_mode is MotorNormMode.RANGE_M100_100:
bounded_val = min(100.0, max(-100.0, val))
unnormalized_values[id_] = int(((bounded_val + 100) / 200) * (max_ - min_) + min_)
elif self.motors[name].norm_mode is MotorNormMode.RANGE_0_100:
bounded_val = min(100.0, max(0.0, val))
unnormalized_values[id_] = int((bounded_val / 100) * (max_ - min_) + min_)
else:
# TODO(alibers): velocity and degree modes
raise NotImplementedError
return unnormalized_values
@abc.abstractmethod
def _encode_sign(self, data_name: str, ids_values: dict[int, int]) -> dict[int, int]:
pass
@abc.abstractmethod
def _decode_sign(self, data_name: str, ids_values: dict[int, int]) -> dict[int, int]:
pass
def _serialize_data(self, value: int, length: int) -> list[int]:
"""
Converts an unsigned integer value into a list of byte-sized integers to be sent via a communication
protocol. Depending on the protocol, split values can be in big-endian or little-endian order.
Supported data length for both Feetech and Dynamixel:
- 1 (for values 0 to 255)
- 2 (for values 0 to 65,535)
- 4 (for values 0 to 4,294,967,295)
"""
if value < 0:
raise ValueError(f"Negative values are not allowed: {value}")
max_value = {1: 0xFF, 2: 0xFFFF, 4: 0xFFFFFFFF}.get(length)
if max_value is None:
raise NotImplementedError(f"Unsupported byte size: {length}. Expected [1, 2, 4].")
if value > max_value:
raise ValueError(f"Value {value} exceeds the maximum for {length} bytes ({max_value}).")
return self._split_into_byte_chunks(value, length)
@abc.abstractmethod
def _split_into_byte_chunks(self, value: int, length: int) -> list[int]:
"""Convert an integer into a list of byte-sized integers."""
pass
def ping(self, motor: NameOrID, num_retry: int = 0, raise_on_error: bool = False) -> int | None:
id_ = self._get_motor_id(motor)
for n_try in range(1 + num_retry):
model_number, comm, error = self.packet_handler.ping(self.port_handler, id_)
if self._is_comm_success(comm):
break
logger.debug(f"ping failed for {id_=}: {n_try=} got {comm=} {error=}")
if not self._is_comm_success(comm):
if raise_on_error:
raise ConnectionError(self.packet_handler.getTxRxResult(comm))
else:
return
if self._is_error(error):
if raise_on_error:
raise RuntimeError(self.packet_handler.getRxPacketError(error))
else:
return
return model_number
@abc.abstractmethod
def broadcast_ping(self, num_retry: int = 0, raise_on_error: bool = False) -> dict[int, int] | None:
pass
def read(
self,
data_name: str,
motor: str,
*,
normalize: bool = True,
num_retry: int = 0,
) -> Value:
if not self.is_connected:
raise DeviceNotConnectedError(
f"{self.__class__.__name__}('{self.port}') is not connected. You need to run `{self.__class__.__name__}.connect()`."
)
id_ = self.motors[motor].id
model = self.motors[motor].model
addr, length = get_address(self.model_ctrl_table, model, data_name)
err_msg = f"Failed to read '{data_name}' on {id_=} after {num_retry + 1} tries."
value, _, _ = self._read(addr, length, id_, num_retry=num_retry, raise_on_error=True, err_msg=err_msg)
id_value = self._decode_sign(data_name, {id_: value})
if normalize and data_name in self.normalized_data:
id_value = self._normalize(data_name, id_value)
return id_value[id_]
def _read(
self,
address: int,
length: int,
motor_id: int,
*,
num_retry: int = 0,
raise_on_error: bool = True,
err_msg: str = "",
) -> tuple[int, int]:
if length == 1:
read_fn = self.packet_handler.read1ByteTxRx
elif length == 2:
read_fn = self.packet_handler.read2ByteTxRx
elif length == 4:
read_fn = self.packet_handler.read4ByteTxRx
else:
raise ValueError(length)
for n_try in range(1 + num_retry):
value, comm, error = read_fn(self.port_handler, motor_id, address)
if self._is_comm_success(comm):
break
logger.debug(
f"Failed to read @{address=} ({length=}) on {motor_id=} ({n_try=}): "
+ self.packet_handler.getTxRxResult(comm)
)
if not self._is_comm_success(comm) and raise_on_error:
raise ConnectionError(f"{err_msg} {self.packet_handler.getTxRxResult(comm)}")
elif self._is_error(error) and raise_on_error:
raise RuntimeError(f"{err_msg} {self.packet_handler.getRxPacketError(error)}")
return value, comm, error
def write(
self, data_name: str, motor: str, value: Value, *, normalize: bool = True, num_retry: int = 0
) -> None:
if not self.is_connected:
raise DeviceNotConnectedError(
f"{self.__class__.__name__}('{self.port}') is not connected. You need to run `{self.__class__.__name__}.connect()`."
)
id_ = self.motors[motor].id
model = self.motors[motor].model
addr, length = get_address(self.model_ctrl_table, model, data_name)
if normalize and data_name in self.normalized_data:
value = self._unnormalize(data_name, {id_: value})[id_]
value = self._encode_sign(data_name, {id_: value})[id_]
err_msg = f"Failed to write '{data_name}' on {id_=} with '{value}' after {num_retry + 1} tries."
self._write(addr, length, id_, value, num_retry=num_retry, raise_on_error=True, err_msg=err_msg)
def _write(
self,
addr: int,
length: int,
motor_id: int,
value: int,
*,
num_retry: int = 0,
raise_on_error: bool = True,
err_msg: str = "",
) -> tuple[int, int]:
data = self._serialize_data(value, length)
for n_try in range(1 + num_retry):
comm, error = self.packet_handler.writeTxRx(self.port_handler, motor_id, addr, length, data)
if self._is_comm_success(comm):
break
logger.debug(
f"Failed to sync write @{addr=} ({length=}) on id={motor_id} with {value=} ({n_try=}): "
+ self.packet_handler.getTxRxResult(comm)
)
if not self._is_comm_success(comm) and raise_on_error:
raise ConnectionError(f"{err_msg} {self.packet_handler.getTxRxResult(comm)}")
elif self._is_error(error) and raise_on_error:
raise RuntimeError(f"{err_msg} {self.packet_handler.getRxPacketError(error)}")
return comm, error
def sync_read(
self,
data_name: str,
motors: str | list[str] | None = None,
*,
normalize: bool = True,
num_retry: int = 0,
) -> dict[str, Value]:
if not self.is_connected:
raise DeviceNotConnectedError(
f"{self.__class__.__name__}('{self.port}') is not connected. You need to run `{self.__class__.__name__}.connect()`."
)
self._assert_protocol_is_compatible("sync_read")
names = self._get_motors_list(motors)
ids = [self.motors[name].id for name in names]
models = [self.motors[name].model for name in names]
if self._has_different_ctrl_tables:
assert_same_address(self.model_ctrl_table, models, data_name)
model = next(iter(models))
addr, length = get_address(self.model_ctrl_table, model, data_name)
err_msg = f"Failed to sync read '{data_name}' on {ids=} after {num_retry + 1} tries."
ids_values, _ = self._sync_read(
addr, length, ids, num_retry=num_retry, raise_on_error=True, err_msg=err_msg
)
ids_values = self._decode_sign(data_name, ids_values)
if normalize and data_name in self.normalized_data:
ids_values = self._normalize(data_name, ids_values)
return {self._id_to_name(id_): value for id_, value in ids_values.items()}
def _sync_read(
self,
addr: int,
length: int,
motor_ids: list[int],
*,
num_retry: int = 0,
raise_on_error: bool = True,
err_msg: str = "",
) -> tuple[dict[int, int], int]:
self._setup_sync_reader(motor_ids, addr, length)
for n_try in range(1 + num_retry):
comm = self.sync_reader.txRxPacket()
if self._is_comm_success(comm):
break
logger.debug(
f"Failed to sync read @{addr=} ({length=}) on {motor_ids=} ({n_try=}): "
+ self.packet_handler.getTxRxResult(comm)
)
if not self._is_comm_success(comm) and raise_on_error:
raise ConnectionError(f"{err_msg} {self.packet_handler.getTxRxResult(comm)}")
values = {id_: self.sync_reader.getData(id_, addr, length) for id_ in motor_ids}
return values, comm
def _setup_sync_reader(self, motor_ids: list[int], addr: int, length: int) -> None:
self.sync_reader.clearParam()
self.sync_reader.start_address = addr
self.sync_reader.data_length = length
for id_ in motor_ids:
self.sync_reader.addParam(id_)
# TODO(aliberts, pkooij): Implementing something like this could get even much faster read times if need be.
# Would have to handle the logic of checking if a packet has been sent previously though but doable.
# This could be at the cost of increase latency between the moment the data is produced by the motors and
# the moment it is used by a policy.
# def _async_read(self, motor_ids: list[int], address: int, length: int):
# if self.sync_reader.start_address != address or self.sync_reader.data_length != length or ...:
# self._setup_sync_reader(motor_ids, address, length)
# else:
# self.sync_reader.rxPacket()
# self.sync_reader.txPacket()
# for id_ in motor_ids:
# value = self.sync_reader.getData(id_, address, length)
def sync_write(
self,
data_name: str,
values: Value | dict[str, Value],
*,
normalize: bool = True,
num_retry: int = 0,
) -> None:
if not self.is_connected:
raise DeviceNotConnectedError(
f"{self.__class__.__name__}('{self.port}') is not connected. You need to run `{self.__class__.__name__}.connect()`."
)
ids_values = self._get_ids_values_dict(values)
models = [self._id_to_model(id_) for id_ in ids_values]
if self._has_different_ctrl_tables:
assert_same_address(self.model_ctrl_table, models, data_name)
model = next(iter(models))
addr, length = get_address(self.model_ctrl_table, model, data_name)
if normalize and data_name in self.normalized_data:
ids_values = self._unnormalize(data_name, ids_values)
ids_values = self._encode_sign(data_name, ids_values)
err_msg = f"Failed to sync write '{data_name}' with {ids_values=} after {num_retry + 1} tries."
self._sync_write(addr, length, ids_values, num_retry=num_retry, raise_on_error=True, err_msg=err_msg)
def _sync_write(
self,
addr: int,
length: int,
ids_values: dict[int, int],
num_retry: int = 0,
raise_on_error: bool = True,
err_msg: str = "",
) -> int:
self._setup_sync_writer(ids_values, addr, length)
for n_try in range(1 + num_retry):
comm = self.sync_writer.txPacket()
if self._is_comm_success(comm):
break
logger.debug(
f"Failed to sync write @{addr=} ({length=}) with {ids_values=} ({n_try=}): "
+ self.packet_handler.getTxRxResult(comm)
)
if not self._is_comm_success(comm) and raise_on_error:
raise ConnectionError(f"{err_msg} {self.packet_handler.getTxRxResult(comm)}")
return comm
def _setup_sync_writer(self, ids_values: dict[int, int], addr: int, length: int) -> None:
self.sync_writer.clearParam()
self.sync_writer.start_address = addr
self.sync_writer.data_length = length
for id_, value in ids_values.items():
data = self._serialize_data(value, length)
self.sync_writer.addParam(id_, data)
def disconnect(self, disable_torque: bool = True) -> None:
if not self.is_connected:
raise DeviceNotConnectedError(
f"{self.__class__.__name__}('{self.port}') is not connected. Try running `{self.__class__.__name__}.connect()` first."
)
if disable_torque:
self.port_handler.clearPort()
self.port_handler.is_using = False
self.disable_torque(num_retry=5)
self.port_handler.closePort()
logger.debug(f"{self.__class__.__name__} disconnected.")

View File

@@ -0,0 +1,56 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from .configs import MotorsBusConfig
from .motors_bus import MotorsBus
def make_motors_buses_from_configs(motors_bus_configs: dict[str, MotorsBusConfig]) -> list[MotorsBus]:
motors_buses = {}
for key, cfg in motors_bus_configs.items():
if cfg.type == "dynamixel":
from .dynamixel import DynamixelMotorsBus
motors_buses[key] = DynamixelMotorsBus(cfg)
elif cfg.type == "feetech":
from lerobot.common.motors.feetech.feetech import FeetechMotorsBus
motors_buses[key] = FeetechMotorsBus(cfg)
else:
raise ValueError(f"The motor type '{cfg.type}' is not valid.")
return motors_buses
def make_motors_bus(motor_type: str, **kwargs) -> MotorsBus:
if motor_type == "dynamixel":
from .configs import DynamixelMotorsBusConfig
from .dynamixel import DynamixelMotorsBus
config = DynamixelMotorsBusConfig(**kwargs)
return DynamixelMotorsBus(config)
elif motor_type == "feetech":
from feetech import FeetechMotorsBus
from .configs import FeetechMotorsBusConfig
config = FeetechMotorsBusConfig(**kwargs)
return FeetechMotorsBus(config)
else:
raise ValueError(f"The motor type '{motor_type}' is not valid.")

View File

@@ -1 +1,15 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from .optimizers import OptimizerConfig as OptimizerConfig

View File

@@ -1,3 +1,17 @@
# Copyright 2024 The HuggingFace Inc. team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from .act.configuration_act import ACTConfig as ACTConfig
from .diffusion.configuration_diffusion import DiffusionConfig as DiffusionConfig
from .pi0.configuration_pi0 import PI0Config as PI0Config

Some files were not shown because too many files have changed in this diff Show More