AI4PD/ProtGPT3-10B
https://huggingface.co/AI4PD/ProtGPT3-10BProtGPT3-10B is a single-sequence autoregressive protein language model for protein sequence generation. It is the largest model in the ProtGPT3 family, an open-source suite of promptable and aligned protein language models ranging from 112M to 10B parameters.
Sourced from
- HuggingFace — AI4PD/ProtGPT3-10B
Related resources
ProtGPT3-MSA is a multiple-sequence, homolog-conditioned autoregressive protein language model. It is part of the ProtGPT3 family, an open-source suite of promptable and aligned protein language models for protein sequence generation.
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