Commit Graph

67 Commits

Author SHA1 Message Date
Adil Zouitine
e8449e9630 remove breakpoint 2025-04-18 15:03:51 +02:00
Adil Zouitine
a0e2be8b92 [WIP] correct sac implementation 2025-04-18 15:03:51 +02:00
Eugene Mironov
d1d6ffd23c [Port HIL_SERL] Final fixes for the Reward Classifier (#598) 2025-04-18 15:03:01 +02:00
Michel Aractingi
e5801f467f added temporary fix for missing task_index key in online environment 2025-04-18 15:03:01 +02:00
Michel Aractingi
c6ca9523de split encoder for critic and actor 2025-04-18 15:03:01 +02:00
Michel Aractingi
642e3a3274 style fixes 2025-04-18 15:03:01 +02:00
KeWang1017
146148c48c Refactor SAC configuration and policy for improved action sampling and stability
- Updated SACConfig to replace standard deviation parameterization with log_std_min and log_std_max for better control over action distributions.
- Modified SACPolicy to streamline action selection and log probability calculations, enhancing stochastic behavior.
- Removed deprecated TanhMultivariateNormalDiag class to simplify the codebase and improve maintainability.

These changes aim to enhance the robustness and performance of the SAC implementation during training and inference.
2025-04-18 15:03:01 +02:00
KeWang1017
8f15835daa Refine SAC configuration and policy for enhanced performance
- Updated standard deviation parameterization in SACConfig to 'softplus' with defined min and max values for improved stability.
- Modified action sampling in SACPolicy to use reparameterized sampling, ensuring better gradient flow and log probability calculations.
- Cleaned up log probability calculations in TanhMultivariateNormalDiag for clarity and efficiency.
- Increased evaluation frequency in YAML configuration to 50000 for more efficient training cycles.

These changes aim to enhance the robustness and performance of the SAC implementation during training and inference.
2025-04-18 15:03:01 +02:00
KeWang1017
022bd65125 Refactor SACPolicy for improved action sampling and standard deviation handling
- Updated action selection to use distribution sampling and log probabilities for better stochastic behavior.
- Enhanced standard deviation clamping to prevent extreme values, ensuring stability in policy outputs.
- Cleaned up code by removing unnecessary comments and improving readability.

These changes aim to refine the SAC implementation, enhancing its robustness and performance during training and inference.
2025-04-18 15:03:01 +02:00
KeWang1017
63d8c96514 trying to get sac running 2025-04-18 15:03:01 +02:00
Michel Aractingi
4624a836e5 Added normalization schemes and style checks 2025-04-18 15:03:01 +02:00
Michel Aractingi
ad7eea132d added optimizer and sac to factory.py 2025-04-18 15:02:59 +02:00
Eugene Mironov
22a1899ff4 [HIL-SERL PORT] Fix linter issues (#588) 2025-04-18 15:02:44 +02:00
Michel Aractingi
1a8b99e360 added comments from kewang 2025-04-18 15:02:13 +02:00
KeWang1017
6db2154f28 Enhance SAC configuration and policy with new parameters and subsampling logic
- Added `num_subsample_critics`, `critic_target_update_weight`, and `utd_ratio` to SACConfig.
- Implemented target entropy calculation in SACPolicy if not provided.
- Introduced subsampling of critics to prevent overfitting during updates.
- Updated temperature loss calculation to use the new target entropy.
- Added comments for future UTD update implementation.

These changes improve the flexibility and performance of the SAC implementation.
2025-04-18 15:02:13 +02:00
KeWang
be3adda95f Port SAC WIP (#581)
Co-authored-by: KeWang1017 <ke.wang@helloleap.ai>
2025-04-18 15:02:13 +02:00
Michel Aractingi
9d48d236c1 completed losses 2025-04-18 15:02:13 +02:00