alan-turing-institute/t0-1
Application of Retrieval-Augmented Reasoning on a domain-specific body of knowledge
This project helps medical professionals quickly find relevant information from large medical knowledge bases, such as the NHS A to Z condition pages. You input a medical query in plain language, and it retrieves and summarizes relevant information about conditions, treatments, or symptoms. This is ideal for healthcare providers, medical students, or researchers who need to access specific medical knowledge efficiently.
Use this if you need to quickly retrieve and understand information from a specialized body of medical knowledge, like an archive of health articles or clinical guidelines.
Not ideal if you're looking for real-time diagnostic tools or applications that directly interact with patient data, as this focuses on information retrieval from static knowledge bases.
Stars
34
Forks
10
Language
Jupyter Notebook
License
MIT
Category
Last pushed
Feb 27, 2026
Commits (30d)
0
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