Model Description
ProtGPT3-112M is a single-sequence autoregressive protein language model for protein sequence generation. It is the smallest model in the ProtGPT3 family, an open-source suite of promptable and aligned protein language models ranging from 112M to 10B parameters. ProtGPT3 models use a causal Mixtral-style Mixture-of-Experts architecture and are trained for causal language modeling on protein sequences.
For more info and guidance on how to generate sequences with ProtGPT3-112M check out the extensive description provided in ProtGPT3-1.3B, just replacing the model name (i.e., model_name=AI4PD/ProtGPT3-112M).
Also consider using the ProtGPT3-112M-dpo version for an equivalent model size, but with improved sequence generation.
Out-of-Scope Use
The model should not be used as the sole basis for experimental, clinical, environmental, or safety-critical decisions. Generated proteins require downstream computational and experimental validation. The model is not guaranteed to generate functional, soluble, safe, or synthesizable proteins.
Bias, Risks, and Limitations
ProtGPT3-112M learns from public protein sequence datasets and may reproduce biases present in those datasets. Generated sequences may be low-complexity, nonfunctional, unstable, insoluble, or biologically implausible. Protein generation models may also present dual-use risks if used irresponsibly.
Citation
BibTeX:
@article{protgpt3,
title={ProtGPT3: an Open-source family of Promptable and Aligned Protein Language Models},
author={Anonymous Authors},
year={2026}
}
For guidance on how to generate sequences with ProtGPT3-112M check out the extensive description provided in ProtGPT3-1.3B.
All models and code are released through the Hugging Face ecosystem and accompanying code repository.