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emeryberger/CSrankings

A web app for ranking computer science departments according to their research output in selective venues, and for finding active faculty across a wide range of areas.

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What it does

CSrankings is a website that ranks computer science university departments based on how often their professors publish research in the most competitive academic conferences, rather than relying on opinion surveys. It gives anyone — from prospective students to hiring managers — an objective, data-driven way to compare which universities are actually producing cutting-edge research in specific fields like AI, security, or systems.

Why it matters

For founders and investors, this tool is a powerful recruiting and due diligence resource — it surfaces which universities are hotbeds of talent in specific technical areas, helping teams target PhD hires or academic partnerships more strategically. It also demonstrates strong market demand for transparent, metrics-based alternatives to legacy ranking systems like US News, a model that could inspire similar products in other industries dominated by survey-based rankings.

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On the radar — signal detected

Stars
3.1k
Forks
3.9k
Contributors
3125
Language
Python

Score updated Mar 1, 2026

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