Hierarchical Decision Transformer for Hopper
This model extends the Decision Transformer architecture with hierarchical clustering capabilities for improved long-horizon task performance on the Hopper-v3 environment.
Model Description
- Model Type: Hierarchical Decision Transformer
- Training Environment: Hopper-v3
- Input: State observations (11 dimensions), desired returns
- Output: Actions (3 dimensions)
- Architecture Features:
- Hierarchical clustering head for subtask identification
- Subgoal-based weighting
- Multi-task capabilities
Usage
from transformers import DecisionTransformerModel
model = DecisionTransformerModel.from_pretrained("anna4142/hierarchical-decision-transformer")
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