Search and explore AI-assisted scientific preprint rankings. Kurate helps researchers explore ranked papers using category-based leaderboards and AI-assisted paper comparison.
Latest papers added to the live Kurate ranking pipeline.
13,610 papers across all remaining fields.
A ranking and discovery layer for scientific preprints. The capabilities below reflect what is currently live on the platform.
Papers are compared using AI-assisted pairwise evaluation to produce category-level rankings.
Papers are organised within live arXiv categories so rankings can be read in their proper field context.
Score is the comparative tournament-based ranking score derived from AI-assisted paper comparisons within a category.
Rating is a standalone scientific impact rating on a 1 to 10 scale. It is independent of the tournament and does not come from pairwise comparison.
Gap shows how far the comparative Score sits from the standalone Rating, expressed as a percentile difference between the two signals. A high positive Gap may indicate a hyped topic or a paper that oversells its contribution despite methodological weaknesses. A high negative Gap may point to a methodologically strong paper in a niche area that is harder to distinguish in head-to-head matchups.
Recently ranked papers and updated categories are surfaced on the homepage, with search and time-period filtering across papers.
Planned features under active development. These are not yet part of the live platform.
Kurate compares papers using AI-assisted evaluation and produces category-based rankings that help researchers identify work worth closer inspection.
Kurate gathers scientific preprints from supported arXiv categories.
Papers are reviewed, rated, and compared through AI-assisted pairwise evaluation within each category. Three independent AI models judge each pair to produce robust rankings.
Pairwise comparisons produce a tournament-based Score using TrueSkill. Each paper also receives a standalone Rating (1 to 10) based on scientific impact, independent of the tournament. Gap measures how far the two signals diverge for a given paper.
Browse ranked papers by category, time period, or search to find work worth closer reading.
A robotics paper, a quantum physics paper, and an economics paper may all be important, but they should not be interpreted through the same field assumptions. Kurate uses category-based leaderboards so papers are ranked within more meaningful research contexts.
A paper's significance is easier to interpret when compared with other papers from the same arXiv category.
Important papers in smaller technical fields may be missed when discovery depends only on general popularity or social attention.
Move directly into the arXiv category you care about and inspect ranked papers within that context.
Kurate adds a ranking layer on top of preprint discovery, combining category-based leaderboards with AI-assisted comparison so users can explore work that may deserve closer reading.
Follow fast-moving fields, identify ranked preprints, and discover papers that may not yet have citation visibility.
Scan active arXiv categories, find relevant preprints for literature discovery, and follow which topics are moving quickly.
Recommend recent ranked papers, monitor category activity, and identify emerging work for discussion.
Track category activity, compare ranked papers within a field, and support reading-group paper selection.
Monitor emerging scientific areas and where attention is forming across research categories.
Identify ranked papers that may become important and follow early signals in the scientific literature.
Kurate rankings are discovery signals, not peer review. They are intended to help users prioritise papers for closer reading. Users should still inspect the paper, methodology, evidence, assumptions, limitations, and field context before forming conclusions.
Practical answers about what the platform does, how rankings are produced, and how they should be used in research workflows.