# Epsilon-Transformers Belief Analysis Dataset This dataset contains trained neural network models and their corresponding belief state regression analysis from the Epsilon-Transformers project. The models were trained on four different stochastic processes and analyzed for their ability to learn and represent belief states. ## Dataset Structure ``` epsilon-transformers-belief-analysis/ ├── README.md ├── models/ # Model checkpoints and configurations from S3 │ ├── {sweep_id}_{run_id}/ │ │ ├── 0.pt # Initial checkpoint │ │ ├── {final}.pt # Final checkpoint │ │ ├── run_config.yaml # Training configuration │ │ └── loss.csv # Training loss data │ └── ... └── analysis/ # Belief state regression analysis results ├── {sweep_id}_{run_id}/ │ ├── checkpoint_0.joblib # Initial checkpoint analysis │ ├── checkpoint_{final}.joblib # Final checkpoint analysis │ ├── ground_truth_data.joblib # Neural network ground truth │ ├── markov3_checkpoint_*.joblib # Classical Markov comparisons │ └── markov3_ground_truth_data.joblib # Classical ground truth └── ... ``` ## Model Mappings | Sweep ID | Run ID | Architecture | Process | Description | |----------|--------|--------------|---------|-------------| ### Mess3 | 20241121152808 | 55 | LSTM | Mess3 | LSTM trained on Mess3 | | 20241121152808 | 63 | GRU | Mess3 | GRU trained on Mess3 | | 20241121152808 | 71 | RNN | Mess3 | RNN trained on Mess3 | | 20241205175736 | 23 | Transformer | Mess3 | Transformer trained on Mess3 | ### FRDN | 20241121152808 | 53 | LSTM | FRDN | LSTM trained on FRDN | | 20241121152808 | 61 | GRU | FRDN | GRU trained on FRDN | | 20241121152808 | 69 | RNN | FRDN | RNN trained on FRDN | | 20250422023003 | 1 | Transformer | FRDN | Transformer trained on FRDN | ### Bloch Walk | 20241121152808 | 49 | LSTM | Bloch Walk | LSTM trained on Bloch Walk | | 20241121152808 | 57 | GRU | Bloch Walk | GRU trained on Bloch Walk | | 20241121152808 | 65 | RNN | Bloch Walk | RNN trained on Bloch Walk | | 20241205175736 | 17 | Transformer | Bloch Walk | Transformer trained on Bloch Walk | ### Moon Process | 20241121152808 | 48 | LSTM | Moon Process | LSTM trained on Moon Process | | 20241121152808 | 56 | GRU | Moon Process | GRU trained on Moon Process | | 20241121152808 | 64 | RNN | Moon Process | RNN trained on Moon Process | | 20250421221507 | 0 | Transformer | Moon Process | Transformer trained on Moon Process | ## Process Descriptions ### Mess3 (Classical Process) A classical stochastic process used as a baseline for comparison with quantum processes. ### FRDN (Finite Random Dynamics Networks) A quantum process representing finite random dynamics networks, modeling quantum systems with specific structural properties. ### Bloch Walk A quantum random walk process on the Bloch sphere, representing quantum state evolution in a geometric framework. ### Moon Process A post-quantum stochastic process that explores computational mechanics beyond standard quantum frameworks. ## Model Architectures ### RNN Models (LSTM, GRU, RNN) - **Layers**: 4 - **Hidden Units**: 64 - **Direction**: Unidirectional - **Configuration**: L4_H64_uni ### Transformer Models - **Layers**: 4 - **Attention Heads**: 4 - **Head Dimension**: 16 - **Model Dimension**: 64 - **Configuration**: L4_H4_DH16_DM64 ## File Formats ### Model Files (.pt) PyTorch model checkpoints containing trained model weights and optimizer states. ### Analysis Files (.joblib) Joblib-serialized files containing: - **checkpoint_*.joblib**: Regression analysis results mapping activations to belief states - **ground_truth_data.joblib**: True belief states and probabilities for the neural network data - **markov3_*.joblib**: Classical Markov model comparisons and baselines ## Usage ### Loading Models ```python import torch from pathlib import Path # Load a model checkpoint model_path = Path("models/20241121152808_57/4075724800.pt") checkpoint = torch.load(model_path, map_location='cpu') ``` ### Loading Analysis Data ```python import joblib from pathlib import Path # Load regression analysis results analysis_path = Path("analysis/20241121152808_57/checkpoint_4075724800.joblib") analysis_data = joblib.load(analysis_path) # Access layer-wise regression metrics for layer, metrics in analysis_data.items(): print(f"Layer {layer} RMSE: {metrics['rmse']}") ``` ## Citation If you use this dataset in your research, please cite: ```bibtex @misc{epsilon-transformers-belief-analysis, title={Epsilon-Transformers Belief Analysis Dataset}, author={[Your Name]}, year={2024}, howpublished={Hugging Face Datasets}, url={https://huggingface.co/datasets/[your-username]/epsilon-transformers-belief-analysis} } ``` ## License [Specify your license here] ## Contact [Your contact information]