--- base_model: sentence-transformers/all-MiniLM-L6-v2 library_name: transformers pipeline_tag: feature-extraction tags: - author-embedding - embeddings - m5 - repository-library - research-library - t1_metadata --- # Author Embedding Learns author and community representations from paper metadata and graph context. ## Model Details - Artifact type: full fine-tuned model - Base model: `sentence-transformers/all-MiniLM-L6-v2` - Backbone type: `encoder` - Model ID: `M5` - Tier: `T1_metadata` - Role in stack: metadata-layer component in the paper understanding stack This model is part of the Repository Library stack, a research system for indexing, retrieving, aligning, and reasoning over scientific papers, structured paper content, repositories, and cross-domain links between them. ## Model Sources - Hugging Face repo: `https://huggingface.co/PeytonT/author-embedding` - Hugging Face collection: `https://huggingface.co/collections/PeytonT/research-library-6a49c589ef4d763f7539b50d` - GitHub repository: `https://github.com/peytontolbert/research_library` - Experiment config: `https://github.com/peytontolbert/research_library/blob/main/models/experiments/m5_author_embedding.json` - Models directory: `https://github.com/peytontolbert/research_library/tree/main/models` ## Intended Use - Primary use: Learns author and community representations from paper metadata and graph context. - Downstream use: retrieval, ranking, planning, paper understanding, or cross-domain reasoning inside the broader Repository Library system, depending on the model family. - Out of scope: production safety claims, benchmark claims beyond the tracked experiment config, or deployment without task-specific validation. ## Training Data The training inputs for this package were assembled from the following Repository Library data sources: - Source `arxiv_metadata`: arXiv metadata records spanning titles, abstracts, authors, and category labels. ## Training Procedure - Sources: `arxiv_metadata` - Input fields: `author_id, graph_neighbors` - Target fields: `author_embedding` - Train/val/test split: `[0.9, 0.1, 0.0]` - Max samples: `4000` - Batch size: `8` - Precision: `bf16` - Objective: `contrastive` - Learning rate: `5e-05` - Max source tokens: `256` - Max target tokens: `128` - Fine-tune strategy: `full_finetune` - Max steps: `1000` ## Compute - Hardware: 4x RTX_3090 (24 GB) - Distributed strategy: `ddp` - Estimated GPU hours in config: `0` ## Evaluation - Declared metrics: `recall_at_10, ndcg_at_10` - Status: this card reflects the current tracked experiment configuration and packaged weights in the Repository Library model stack. ## Usage ```python from transformers import AutoModel, AutoTokenizer repo_id = "PeytonT/author-embedding" tokenizer = AutoTokenizer.from_pretrained(repo_id) model = AutoModel.from_pretrained(repo_id) ``` ## Limitations - These cards are generated from tracked experiment metadata and packaged artifacts, not from a separate benchmark report or external audit. - Several training sources are pipeline outputs from the Repository Library codebase rather than standalone public datasets. - These models are components of a larger research system and should be validated in their target workflow before deployment. ## Project Context - GitHub repository: `https://github.com/peytontolbert/research_library` - Model collection: `https://huggingface.co/collections/PeytonT/research-library-6a49c589ef4d763f7539b50d` - Publisher: `PeytonT`