Machine Learning Scientist - Synthesis Planning...
Role details
Job location
Tech stack
Job description
Join the small-molecule team within AI for Drug Discovery (AI4DD), formerly Prescient Design, at Roche and Genentech's Computational Sciences Center of Excellence as a Machine Learning Scientist / Senior Machine Learning Scientist in Synthesis Planning and Optimization. You will build ML methods that design molecules we can actually make - closing the loop between generative design and automated synthesis.
The Opportunity:
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Develop and advance machine learning methods for synthesis-aware molecular design across retrosynthesis, synthesis planning, molecular generation, and search in synthesizable chemical spaces.
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Integrate proprietary reaction and biochemical data to design the next generation of synthesis-aware models and workflows for hit finding and optimisation.
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Build robust, scalable pipelines for active-learning loops that interface directly with automated and high-throughput synthesis platforms.
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Design novel batch synthesis-planning algorithms that maximise chemical-space coverage, information gain and experimental efficiency.
Requirements
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You bring deep machine-learning expertise with a strong foundation in linear algebra, probability and optimization, and hands-on experience in modern machine learning approaches such as graph-neural networks, sequence/language models and reinforcement learning.
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You are familiar with chemistry concepts relevant to synthesis planning and molecular optimisation as well as small molecule data and cheminformatics toolkits such as RDKit or Openeye.
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You are fluent in Python and have experience with modern ML frameworks like PyTorch or JAX as well as scientific software development.
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You hold a PhD or equivalent research depth in machine learning, computational chemistry, chemical engineering or a related quantitative field such as physics or statistics.
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You have a record of scientific excellence evidenced by journal and conference publications or a public portfolio of relevant projects (e.g. hosted on GitHub/GitLab)..
Preferred:
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Experience with retrosynthesis or synthesis-planning models.
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Experience with automated/high-throughput synthesis.