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Scientist, Predictive Biology and AI

Bristol Myers Squibb
Full-time
Remote friendly (Seattle, WA)
United States
Other

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Role Summary

Scientist, Predictive Biology and AI. Location: Seattle, Brisbane CA, San Diego CA, Cambridge MA, Princeton NJ. The Predictive Biology and AI (PBAI) team develops and applies cutting-edge methods to address patient needs in Oncology, Neuroscience, and other areas. The role focuses on evaluating and adapting state-of-the-art AI models to challenges in cell engineering and target discovery, collaborating with wet-lab partners to test predictions and integrate data into models.

Responsibilities

  • Apply, adapt, and in some cases create multi-modal foundation models such as large language models (LLMs), diffusion models, and encoder architectures to answer biological domain-specific questions
  • Address real-world biological modeling challenges such as data sparsity, class imbalance, noise, experimental bias, and heterogeneity of effects
  • Thoughtful model evaluation that incorporates appropriate benchmarks, statistical tests, and problem understanding to support technical and business decisions
  • Work in close collaboration with partners across the organization including wet-lab scientists, Research IT, and other computational scientists to broaden the impact of AI developments
  • Maintain and share up-to-date knowledge of modern advances in the field, including presenting work at public conferences

Qualifications

  • Required: Bachelor's Degree with 5+ years of academic/industry experience; or Master's Degree with 3+ years; or PhD (no experience required)
  • Preferred: Ph.D. with 0+ years or M.S. with 3+ years in computer science, statistics, computational biology, or another quantitative field
  • Expert-level understanding of deep learning tools and approaches (transformer encoders/decoders, LLMs, reinforcement learning) demonstrated through publications or projects
  • Hands-on experience building and scaling deep learning training pipelines on multi-GPU infrastructure using PyTorch, Huggingface, and related tools
  • Knowledge of or ability to learn biological concepts and data types, with ability to work and communicate effectively with biologists
  • Excellent verbal and written communication skills in English
  • Experience building agentic workflows is a plus; prior experience in pharmaceutical applications is a plus

Skills

  • Machine learning and statistics
  • Multi-modal AI models (LLMs, diffusion models, encoders/decoders)
  • Data analysis with attention to sparsity, bias, and heterogeneity
  • Collaborative teamwork with wet-lab and computational partners
  • Communication of complex AI concepts to non-technical stakeholders
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