--- library_name: lerobot tags: - molmoact2 - robotics - lerobot - vla base_model: allenai/MolmoAct2 --- # molmoact2_cable_clip_norm_fix Fine-tuned [MolmoAct2](https://huggingface.co/allenai/MolmoAct2) (action-expert-only) on SO101 data, with SO101 gripper normalization fix. | | | |---|---| | **Base model** | [allenai/MolmoAct2](https://huggingface.co/allenai/MolmoAct2) | | **Dataset** | [pravsels/cable_clip_remote_v2](https://huggingface.co/datasets/pravsels/cable_clip_remote_v2) | | **Task** | `cable_clip` | | **Action dim** | 6 (single-arm) | | **Cameras** | `top`, `wrist`, `front` | | **Normalization** | MEAN_STD (action + state + gripper), IDENTITY (visual) | | **Training** | Isambard GH200, batch 64, bf16, gradient checkpointing | | **W&B project** | [molmoact2_cable_clip](https://wandb.ai/pravsels/molmoact2_cable_clip) | | **W&B run** | [dw5rxtxp](https://wandb.ai/pravsels/molmoact2_cable_clip/runs/dw5rxtxp) | ## Checkpoints | Step | Path | |------|------| | 002000 | `checkpoints/002000/pretrained_model/` | The latest step (`002000`) is also copied to the **repository root** for direct loading. ## Usage ```python from lerobot.policies.molmoact2.modeling_molmoact2 import MolmoAct2Policy policy = MolmoAct2Policy.from_pretrained("pravsels/molmoact2_cable_clip_norm_fix") ```