Add pusht dataset (TODO verify reward is aligned), Refactor visualize_dataset, Add video_dir, fps, state_dim, action_dim to config (Training works)
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@@ -5,18 +5,21 @@ from lerobot.common.datasets.simxarm import SimxarmExperienceReplay
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from rl.torchrl.data.replay_buffers.samplers import PrioritizedSliceSampler
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def make_offline_buffer(cfg):
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def make_offline_buffer(cfg, sampler=None):
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num_traj_per_batch = cfg.batch_size # // cfg.horizon
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# TODO(rcadene): Sampler outputs a batch_size <= cfg.batch_size.
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# We would need to add a transform to pad the tensordict to ensure batch_size == cfg.batch_size.
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sampler = PrioritizedSliceSampler(
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max_capacity=100_000,
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alpha=cfg.per_alpha,
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beta=cfg.per_beta,
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num_slices=num_traj_per_batch,
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strict_length=False,
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)
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overwrite_sampler = sampler is not None
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if not overwrite_sampler:
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num_traj_per_batch = cfg.batch_size # // cfg.horizon
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# TODO(rcadene): Sampler outputs a batch_size <= cfg.batch_size.
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# We would need to add a transform to pad the tensordict to ensure batch_size == cfg.batch_size.
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sampler = PrioritizedSliceSampler(
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max_capacity=100_000,
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alpha=cfg.per_alpha,
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beta=cfg.per_beta,
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num_slices=num_traj_per_batch,
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strict_length=False,
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)
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if cfg.env == "simxarm":
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# TODO(rcadene): add PrioritizedSliceSampler inside Simxarm to not have to `sampler.extend(index)` here
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@@ -30,9 +33,9 @@ def make_offline_buffer(cfg):
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)
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elif cfg.env == "pusht":
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offline_buffer = PushtExperienceReplay(
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f"xarm_{cfg.task}_medium",
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"pusht",
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# download="force",
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download=True,
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download=False,
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streaming=False,
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root="data",
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sampler=sampler,
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@@ -40,8 +43,9 @@ def make_offline_buffer(cfg):
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else:
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raise ValueError(cfg.env)
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num_steps = len(offline_buffer)
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index = torch.arange(0, num_steps, 1)
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sampler.extend(index)
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if not overwrite_sampler:
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num_steps = len(offline_buffer)
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index = torch.arange(0, num_steps, 1)
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sampler.extend(index)
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return offline_buffer
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