Model Card for Transformer based Diffusion Policy / PushT

Transformer based Diffusion Policy (as per Diffusion Policy: Visuomotor Policy Learning via Action Diffusion) trained for the PushT environment from gym-pusht.

How to Get Started with the Model

See the LeRobot library (particularly the evaluation script) for instructions on how to load and evaluate this model.

Training Details

The model was trained using LeRobot's training script and with the pusht dataset, using this command:

python lerobot/scripts/train.py \
  hydra.run.dir=outputs/train/diffusion_pusht \
  hydra.job.name=diffusion_pusht \
  policy=diffusion training.save_model=true \
  env=pusht \
  env.task=PushT-v0 \
  dataset_repo_id=lerobot/pusht \
  training.save_freq=25000 \
  training.eval_freq=10000 \
  wandb.enable=true \
  device=cuda

The training and eval curves may be found at https://api.wandb.ai/links/none7/rd2trav7

This took about 6 hours to train on an Nvida Tesla P100 GPU.

Evaluation

The model was evaluated on the PushT environment from gym-pusht and compared to a similar model trained with the original Diffusion Policy code. There are two evaluation metrics on a per-episode basis:

  • Maximum overlap with target (seen as eval/avg_max_reward in the charts above). This ranges in [0, 1].
  • Success: whether or not the maximum overlap is at least 95%.

Here are the metrics for 500 episodes worth of evaluation. The "Theirs" column is for an equivalent model from the experiments of original Diffusion Policy repository and evaluated on LeRobot (the model weights may be found in the original_dp_repo branch of this respository).

Ours Theirs
Average max. overlap ratio 0.799 0.605
Success rate for 500 episodes (%) 32.00 17.00

The results of each of the individual rollouts may be found in eval_info.json.

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Dataset used to train Amandee/diffusion_transformer_pusht