AI for Science Postdoctoral Researcher - Biomolecular AI & Experimental Data Integration

Microsoft Microsoft · Big Tech · Cambridge, MA, United Kingdom +2 · Research Sciences

Postdoctoral Researcher focused on integrating experimental biological data with machine learning models for biomolecular simulation and drug discovery. The role involves designing and scaling experimental datasets, developing methods to connect ML models with experimental observables, and creating closed-loop workflows between models and experiments.

What you'd actually do

  1. Develop methods to connect ML models with experimental observables, such as: cryo-em density maps, inding affinity / kinetics assays, proteomics / sequencing data
  2. Design high-quality, ML-ready experimental datasets (e.g., protein interactions, conformational dynamics, binding measurements, cryo-em density).
  3. Establish closed-loop workflows where experimental results refine models and vice versa.
  4. Build automated, reproducible pipelines for data ingestion, processing, and analysis (Python-based).
  5. Contribute to novel methods at the model–experiment interface.

Skills

Required

  • PhD or equivalent experience in a science or engineering discipline
  • Deep expertise in machine learning for biomolecular systems, molecular modeling and simulation, structural biology, experimental protein assays, or statistical mechanics
  • Strong Python skills and experience building data analysis, modeling, or machine learning pipelines
  • Experience working with real-world biological, structural, experimental, or molecular datasets
  • Ability to work across disciplines and communicate complex ideas clearly

Nice to have

  • Experience connecting computational models to experimental data, such as cryo-EM, X-ray, NMR, SPR, mass spectrometry, NGS, or other assay readouts
  • Background in generative models, diffusion models, representation learning, molecular dynamics, or statistical mechanics for biomolecular systems
  • Experience with large-scale dataset generation, curation, or automated analysis workflows
  • Familiarity with experimental workflows such as protein expression, purification, interaction assays, or high-throughput systems
  • Interest in closing the loop between modeling and experiment
  • Experience or interest in drug discovery, therapeutics, or real-world biomedical applications
  • Ability to collaborate with external partners and align research goals with practical health challenges

What the JD emphasized

  • Track record of independently owning and delivering research projects.

Other signals

  • novel methods
  • experimental data integration
  • biomolecular systems
  • drug discovery