--- license: mit tags: - protein - structural-biology - thermodynamic-stability --- # DeepEF Datasets Protein structure datasets used for training and evaluating [DeepEF](https://github.com/shaharec/DeepEF) — a deep learning framework for predicting protein thermodynamic stability. ## Contents | Path | Size | Description | |------|------|-------------| | `casp12_data_30/` | ~110GB | CASP12 structures with ProtT5 embeddings; per-protein `.pt` tensors split into train/test/valid-* | | `Processed_K50_dG_datasets/` | ~2.2GB | K50 ddG mutation datasets with AlphaFold PDB models | | `megascale_proteins.csv` | small | Megascale protein list | ## Data Format (casp12_data_30) Each protein is a folder under `train/`, `test/`, or `valid-*/`: ``` PROTEIN_ID/ ├── crd_backbone.pt # Backbone coordinates [seq_len, 4, 3] ├── ang.pt # Dihedral angles ├── mask.pt # Valid residue mask ├── seq_one_hot.pt # One-hot amino acid encoding [seq_len, 20] ├── seq.pt # Raw sequence string ├── seq_mut.pt # Mutant sequence string ├── proT5_emb.pt # ProtT5 embeddings [seq_len, 1024] ├── proT5_emb_cycle1-4.pt # Cyclic permutation embeddings └── proT5_emb_mut.pt # Mutant ProtT5 embeddings ``` ## Usage ```python from huggingface_hub import snapshot_download, hf_hub_download import torch # Download a single protein path = hf_hub_download( repo_id="shaharec/deepef-data", repo_type="dataset", filename="casp12_data_30/train/1A0C_1_A/crd_backbone.pt", ) coords = torch.load(path) # Download an entire split (large!) snapshot_download( repo_id="shaharec/deepef-data", repo_type="dataset", allow_patterns="casp12_data_30/train/*", local_dir="./data", ) ```