huggingface-paper-publisher
Overview
This skill provides comprehensive tools for AI engineers and researchers to publish, manage, and link research papers on the Hugging Face Hub. It streamlines the workflow from paper creation to publication, including integration with arXiv, model/dataset linking, and authorship management.
Integration with HF Ecosystem
- Paper Pages: Index and discover papers on Hugging Face Hub
- arXiv Integration: Automatic paper indexing from arXiv IDs
- Model/Dataset Linking: Connect papers to relevant artifacts through metadata
- Authorship Verification: Claim and verify paper authorship
- Research Article Template: Generate professional, modern scientific papers
Version
1.0.0
Dependencies
The included script uses PEP 723 inline dependencies. Prefer uv run over
manual environment setup.
- huggingface_hub>=0.26.0
- pyyaml>=6.0.3
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