Arxiv Sanity

Browse recent arXiv papers based on semantic similarity.
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Arxiv Sanity OPEN SOURCE Interdisciplinary
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ArXiv Sanity is a web-interface tool developed to help researchers navigate the large and fast-growing set of pre-prints on arXiv, especially in machine learning and related fields.  The core idea is to go beyond just listing new papers: it offers semantic search, similarity ranking, user libraries and recommendations so that you can find “what’s relevant to me” rather than simply “what’s new”.

It’s particularly useful for ML/AI researchers, PhD students, and anyone trying to keep up with the flood of pre-prints. Key features include:

  • Creating a personal library of interesting papers, which then influences algorithmic recommendations of new or related papers. 
  • Searching and filtering by similarity rather than only by keywords — e.g., showing papers “like” a paper you already like. 
  • Sorting or ranking papers by popularity, by how many users added them, or by date. 
Discover Abstracts, Semantic Search, Discover Research Projects, Search Engine