Transformers
Safetensors
Inference Endpoints

Model Card for ACT/AlohaTransferCube

Action Chunking Transformer Policy (as per Learning Fine-Grained Bimanual Manipulation with Low-Cost Hardware) trained for the AlohaTransferCube environment from gym-aloha.

demo

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

Trained with LeRobot@d747195.

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

python lerobot/scripts/train.py \
  hydra.job.name=act_aloha_sim_transfer_cube_human \
  hydra.run.dir=outputs/train/act_aloha_sim_transfer_cube_human \
  policy=act \
  policy.use_vae=true \
  env=aloha \
  env.task=AlohaTransferCube-v0 \
  dataset_repo_id=lerobot/aloha_sim_transfer_cube_human \
  training.eval_freq=10000 \
  training.log_freq=250 \
  training.offline_steps=100000 \
  training.save_model=true \
  training.save_freq=25000 \
  eval.n_episodes=50 \
  eval.batch_size=50 \
  wandb.enable=true \
  device=cuda

The training curves may be found at https://wandb.ai/alexander-soare/Alexander-LeRobot/runs/hjdard15.

This took about 2.5 hours to train on an Nvida RTX 3090.

Evaluation

The model was evaluated on the AlohaTransferCube environment from gym-aloha and compared to a similar model trained with the original ACT repository. Each episode marks a success if the cube is successfully picked by one robot arm and transferred to the other robot arm.

Here are the success rate results for 500 episodes worth of evaluation. The first row is the naive mean. The second row assumes a uniform prior and computes the beta posterior, then calculates the mean and lower/upper confidence bounds (with a 68.2% confidence interval centered on the mean). The "Theirs" column is for an equivalent model trained on the original ACT repository and evaluated on LeRobot (the model weights may be found in the original_act_repo branch of this respository). The results of each of the individual rollouts may be found in eval_info.json.

Ours Theirs
Success rate for 500 episodes (%) 87.6 68.0
Beta distribution lower/mean/upper (%) 86.0 / 87.5 / 88.9 65.8 / 67.9 / 70.0

The original code was heavily refactored, and some bugs were spotted along the way. The differences in code may account for the difference in success rate. Another possibility is that our simulation environment may use slightly different heuristics to evaluate success (we've observed that success is registered as soon as the second arm's gripper makes antipodal contact with the cube). Finally, one should observe that the in-training evaluation jumps up towards the end of training. This may need further investigation (Is it statistically significant? If so, what is the cause?).

Downloads last month
191
Safetensors
Model size
51.7M params
Tensor type
F32
·
Inference API
Unable to determine this model’s pipeline type. Check the docs .

Dataset used to train lerobot/act_aloha_sim_transfer_cube_human