‪💫 We just released the weights of the #FeNNixBio1 foundation machine learning model for drug design! 💫

Weights: https://github.com/FeNNol-tools/FeNNol-PMC
FeNNol code: https://github.com/FeNNol-tools/FeNNol
The models are distributed under the open source ASL license (non-commercial academic research). #compchem #compbio

GitHub - FeNNol-tools/FeNNol-PMC: FeNNol Pretrained Models Collection

FeNNol Pretrained Models Collection. Contribute to FeNNol-tools/FeNNol-PMC development by creating an account on GitHub.

GitHub

#compchem #machinelearning You can also check the updated preprint:
"A Foundation Model for Accurate Atomistic Simulations in Drug Design"

https://doi.org/10.26434/chemrxiv-2025-f1hgn-v4

A Foundation Model for Accurate Atomistic Simulations in Drug Design

While artificial intelligence has revolutionized the prediction of static protein structures, characterizing their dynamics and interactions with drug candidates remains a computational bottleneck. Here, we introduce FeNNix-Bio1, a foundation machine learning model designed to power accurate, reactive atomistic simulations of biological systems at an unprecedented speed and scalability. Trained exclusively on synthetic quantum chemistry data, FeNNix-Bio1 accurately captures complex condensed-phase phenomena such as ion solvation and subtle liquid water properties for which it outperforms state-of-the-art specialized force fields. We demonstrate its versatility across a full spectrum of drug design applications, including the calculation of hydration free energies (HFEs), the reversible folding of small proteins, the simulation of protein-ligand absolute binding free energies and chemical reactions. Notably, FeNNix-Bio1 sets a new standard for the precise prediction of HFEs for the more than 600 molecules of the Freesolv dataset, providing sub-kcal/mol accuracy. By enabling scalable, quantum-accurate molecular dynamics without the need for manual parametrization, FeNNix-Bio1 bridges the gap between static structure prediction and dynamic biological reality: it is likely to have a strong impact in Drug Design.

ChemRxiv