faerber-lab/SQuAI
SQuAI: Scientific Question-Answering with Multi-Agent Retrieval-Augmented Generation (CIKM'25)
SQuAI helps researchers and academics quickly find accurate, citable answers to complex scientific questions. You input a scientific question, and it provides a clear answer along with fine-grained in-line citations to supporting scientific papers. This tool is designed for anyone needing to efficiently extract reliable information from vast scientific literature for research, literature reviews, or staying updated in their field.
Use this if you need to rapidly get precise, verifiable answers from a large collection of scientific papers, with confidence that the information is directly supported by evidence.
Not ideal if you're looking for answers to general knowledge questions outside of scientific domains, or if your questions don't require specific citation and evidence tracing.
Stars
8
Forks
1
Language
Python
License
BSD-3-Clause
Category
Last pushed
Feb 09, 2026
Commits (30d)
0
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