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Principal AI Engineer (GenAI) - Molecular Discovery

Bristol Myers Squibb
Full-time
Remote friendly (Princeton, NJ)
United States
IT

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Role Summary

Own the strategy and delivery of Gen AI- native applications, predictive-model workflows, and insight-driven analytics platforms that accelerate large and small-molecule invention. Translate scientific objectives into intuitive software products and robust model-ops practices that help chemists, protein engineers, and data scientists iterate faster, uncover deeper insights, and make better decisions.

Responsibilities

  • Champion predictive-model use-cases across small and large molecule discovery (e.g., property prediction, sequence optimization, generative design).
  • Design and build platforms that orchestrate cutting-edge structure- and sequence-prediction toolkits for CADD, sequence design and developability assessment.
  • Track, evaluate, and train latest molecular prediction & design models/tools from literature and open-source community.
  • Using agentic GenAI frameworks, build scientifically grounded conversational analytics, automated reports, and copilot workflows that guide scientists through complex SAR, sequence datasets and tools.
  • Deliver full-stack applications, React/Next.js fronts with Python/FastAPI & GraphQL services that surface models and analytics at scale.
  • Stand up automated pipelines for data curation, experiment tracking, CI/CD, and governed model release.
  • Package and deploy predictive applications and model endpoints to cloud-native MLOps or on-prem containers for scalable inference and performant access.
  • Codify reusable templates, inner-source libraries, and design systems that cut feature time-to-value.
  • Mentor a cross-disciplinary team of full-stack and ML engineers; foster practices in code quality, documentation, and UX research.
  • Partner with discovery leads, IT operations, and external vendors to align technical backlogs with portfolio milestones and data-quality standards.
  • Influence budgeting and make-vs-buy decisions for AI tooling and platform enhancements.

Qualifications

  • Deep Discovery & Molecular Tooling Context - 7+ years with advanced degree building/supporting platforms and tools for computational compound design and protein engineering workflows; fluent in SAR analysis, sequence/structure predictions, and assay lifecycles.
  • GenAI engineering depth - Demonstrated success building GenAI applications and agentic workflows; fine-tuning and deploying LLMs, diffusion models, structure-prediction models, or vision transformers for scientific or operational use-cases.
  • Modern MLOps - IaC, automated testing, secrets management, continuous model evaluation, lineage tracking.
  • Influence & communication - lead architecture reviews, map tech choices to scientific KPIs, mentor cross-functional teams, and guide roadmap workshops with executives and bench scientists alike.

Skills

  • Contributions to open-source molecular-design projects.
  • Advanced Python & React; shipped production apps that integrate APIs, scale model inference, and manage complex research datasets.
  • Packaging and operating applications/models on Kubernetes/EKS, serverless FaaS, or on-prem containers.
  • GPU runtime tuning or Triton-based multi-model serving.
  • Creating templates or inner-source libraries to accelerate team velocity.
  • Cloud-architect certifications (AWS Pro, Azure Expert, etc.).
  • Multi-cloud deployment mastery (AWS, Azure, GCP).

Education

  • M.S. or Ph.D. in Computer Science, Machine Learning, Computational Chemistry/Biology, or related field; Cloud-architect certification a plus.