Translate decades of protein knowledge into designs that bend chemistry to our will.
The role
We are looking for a self-directed leader looking to push the frontier of ML for enzyme design, focusing on data, representations, and architectures that capture sequence-structure-dynamics-function relationships.
- Develop novel approaches to modeling our proprietary simulation-derived data.
- Develop conditional generators that propose designs satisfying catalytic geometry, stability, and manufacturability constraints.
- Design optimization loops that explore and improve the design space efficiently.
- Ship production-grade code: models that run on our cluster today, not “interesting ideas” parked on a branch.
- Collaborate with simulation physicists and wet-lab scientists to close the design-build-test-learn cycle in weeks, not quarters.
You might be a fit if you
- PhD (or equivalent experience) in Computer Science, Computational Biology, Biophysics, or a related discipline.
- Strong publication or project record in top ML or life-science venues (NeurIPS, ICML, ICLR, Nature, Science, Nature Methods, etc.)
- Proven track record applying deep learning to protein sequence–structure–dynamics-function problems (e.g. property prediction, structure prediction, de novo design, directed evolution, etc).
- Strong software-engineering skills and fluency in PyTorch or JAX.
- Familiarity with modern generative approaches (diffusion and flow matching models).
- Understand practical wet-lab constraints: expression systems, thermostability, assay variability.
Bonus points
- Experience with equivariant models, graph neural networks, and other 3D modeling approaches.
- Contributions to open-source protein ML libraries.
- Hands-on background in ML-driven protein engineering.
- An understanding of molecular biology, biocatalysis and/or protein science.