--- license: apache-2.0 pretty_name: graphjepa-psf-requests-200 tags: - temporal-graph - code-graph - graph-ssl - jepa --- # graphjepa-psf-requests-200 Precomputed (TemporalGraph, node_features) cache for the [graphjepa](https://github.com/IDMedicine/code-transformer) project. Avoids repeated git-checkout + tree-sitter + BERT-feature preprocessing on every training run. ## Contents | File | Description | |---|---| | `graph.pkl` | Pickle of `{'graph': TemporalGraph, 'features': dict_by_kind}` | ## Source - Source repo: `./data/psf_requests` - First `n_commits`: **200** - Source HEAD at build time: `514c1623fefff760bfa15a693aa38e474aba8560` - AST expansion: **enabled** - Features: BERT base uncased, frozen embedding lookup (not forward pass) * `content_vec`: BERT-mean-pool of node.content * `type_vec`: BERT-mean-pool of node.type_description ## SHA-256 `9267fb1c7157cf3d9ca9f9e26f4802e28c530c08e15a184a2b1c7938a9c8af70` ## Usage ```python from huggingface_hub import hf_hub_download import pickle path = hf_hub_download( repo_id="IDMedicine/graphjepa-psf-requests-200", filename="graph.pkl", repo_type="dataset", ) with open(path, 'rb') as f: payload = pickle.load(f) graph, features = payload['graph'], payload['features'] ``` Requires the `graphjepa` package to be importable so the pickled dataclasses resolve. Install from the source tree: ```bash pip install -e /path/to/code-transformer ```