lightonai/RITA
RITA is a family of autoregressive protein models, developed by LightOn in collaboration with the OATML group at Oxford and the Debora Marks Lab at Harvard.
This project helps biological researchers and biochemists generate novel protein sequences. By providing a starting protein sequence, RITA can produce a variety of new, related protein sequences. It is designed for scientists working on protein design, engineering, or drug discovery who need to explore a diverse range of protein structures and functions.
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Use this if you need to rapidly explore and generate diverse protein sequences based on an initial input, for applications like drug discovery or enzyme engineering.
Not ideal if you require highly precise control over individual amino acid modifications or if your primary goal is to analyze existing protein structures rather than generate new ones.
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Language
Python
License
MIT
Category
Last pushed
Jan 24, 2023
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