Research Scientist, Protein Design, Deepmind

Google Google · Big Tech · London, United Kingdom

Research Scientist at Google DeepMind focused on using generative machine learning models to design proteins with novel functions for wet-lab testing. The role involves developing models for in silico predictions of protein functions, troubleshooting design failures, and identifying research directions in protein design method development. Requires a PhD in a relevant field and experience with wet-lab experimental procedures and protein design tools.

What you'd actually do

  1. Use generative machine learning models to design proteins with novel functions, such as enzymes, for wet-lab testing.
  2. Develop models and procedures for making in silico predictions of the functions of designed proteins.
  3. Troubleshoot design failures using domain knowledge of protein design tools and sequence-structure-function relationships.
  4. Work collaboratively with teammates from scientific backgrounds to improve and expand the capabilities of protein design tools.
  5. Identify high-impact research directions in protein design method development and applications.

Skills

Required

  • PhD in a relevant field (protein design/engineering, machine learning, structural biology, or similar) or equivalent practical experience
  • 2 years of experience with wet-lab experimental procedures for characterizing protein function
  • Experience using and developing protein design tools
  • Experience in an application area of protein design or protein engineering

Nice to have

  • 2 years of post-PhD research experience
  • Experience training deep learning models and developing neural network architectures
  • Experience performing experiments to characterize protein function
  • Experience in mechanistic enzymology
  • Experience in biocatalysis
  • Experience in computational chemistry
  • Excellent computational, quantitative reasoning, and technical communication skills

What the JD emphasized

  • PhD in a relevant field (protein design/engineering, machine learning, structural biology, or similar) or equivalent practical experience.
  • 2 years of experience with wet-lab experimental procedures for characterizing protein function.
  • Experience using and developing protein design tools.
  • Experience in an application area of protein design or protein engineering

Other signals

  • generative machine learning models
  • design proteins
  • novel functions
  • wet-lab testing
  • in silico predictions
  • protein design tools