Responsibilities
- Design, implement, and train discrete and continuous diffusion models for predicting biomolecular structure tokens
- Develop and iterate on structure tokenizers, including vector-quantized representations of 3D molecular and protein structure
- Build and maintain data processing pipelines for large-scale biomolecular structure datasets
- Train models on multi-GPU clusters, managing large-scale training runs
- Develop rigorous benchmarking and evaluation workflows; validate against external benchmarks while prioritizing internal discovery-relevant metrics
- Collaborate with ML scientists, computational chemists, and drug discovery teams to integrate models into discovery workflows
- Communicate results to internal teams, external partners, and at scientific conferences
- Mentor interns and junior team members through code reviews, technical guidance, and best practices (Senior level)
Requirements
- PhD in machine learning, computer science, computational chemistry, physics, or a related computational STEM field, or equivalent industry experience demonstrating comparable depth
- Strong Python and PyTorch skills, including end-to-end implementation and training of deep learning models
- Demonstrated experience in one or more of the following: 3D atomistic or molecular modeling, Vector quantization and learned discrete representations, Diffusion, flow-matching, or related generative modeling in continuous vector spaces
- Strong engineering practices: reproducible experimentation, clean code, testing, and performance-aware debugging
- Comfort with modern ML infrastructure (e.g., Docker, CUDA, Kubernetes, experiment tracking tools such as Weights & Biases)
Nice to Have
- Experience with discrete diffusion, masked generative or transfusion models
- Protein–ligand modeling, structure prediction, or structure-based drug discovery
- Geometric deep learning and/or equivariant architectures
- Multi-GPU / distributed training at scale
- Docking, molecular dynamics, or other biomolecular simulation methods
Work Arrangement
Hybrid
Additional Information
- Onsite available in Bristol, UK, and Boston, US.