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Scientific Lead - Forward Deployed AI Engineer, Applied Intelligence for Discovery

LinkedIn Eli Lilly and Company San Francisco, CA
Not Applicable Posted March 13, 2026 Job link
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Requirements
  • Contribute to a culture of experimentation, speed, and evidence-based impact measurement within the AI4D group and the broader LRL research community
  • PhD in computational biology, bioinformatics, data science, computer science, or a related field, with 3+ years of software/ML engineering or technical deployment experience; or equivalent demonstrated experience building and deploying AI/ML tools for scientific applications in biotech, pharma, or scientific software; MSin computational biology, bioinformatics, data science, computer science, or a related field, with 5+ years of software/ML engineering or technical deployment experience; or equivalent demonstrated experience building and deploying AI/ML tools for scientific applications in biotech, pharma, or scientific software
  • Strong programming skills in Python and familiarity with the modern AI/ML ecosystem, including experience with LLMs (API usage, prompt engineering, fine-tuning), and common frameworks (PyTorch, HuggingFace, LangChain/LlamaIndex, or similar)
  • Have owned AI deployments end-to-end from scoping through production adoption, and improved them through evaluation design, error analysis, and iterative evidence generation
  • Experience building data-driven applications including interactive dashboards, natural language interfaces, or automated analysis pipelines
  • Communicate clearly across scientific, computational, technical, and executive audiences, translating technical tradeoffs into decision quality and measurable outcomes; you build trust with scientists who have deep domain expertise and make complex technology approachable without being condescending
  • Familiarity with cloud computing environments (AWS preferred) and version control (Git)
  • Experience in pharmaceutical, biotech, or life sciences R&D environments
  • Familiarity with agentic AI frameworks and building AI-powered workflows that chain multiple models or tools together
  • Experience with biological foundation models (e.g., scGPT, Geneformer for single-cell; ESM for proteins; AlphaFold) or their application to research problems
  • Knowledge of biomedical ontologies, knowledge graphs, or experience integrating heterogeneous biological data sources
  • Track record of driving adoption of technical tools among non-engineering users
Preferred Skills
  • Strong programming skills in Python and familiarity with the modern AI/ML ecosystem, including experience with LLMs (API usage, prompt engineering, fine-tuning), and common frameworks (PyTorch, HuggingFace, LangChain/LlamaIndex, or similar)
  • Have owned AI deployments end-to-end from scoping through production adoption, and improved them through evaluation design, error analysis, and iterative evidence generation
  • Sufficient biological knowledge to have productive conversations with computational scientists and understand the research context behind their problems; prior experience working with multi-omics data (RNA-seq, proteomics, GWAS, spatial transcriptomics, or similar) is strongly preferred
  • Experience building data-driven applications including interactive dashboards, natural language interfaces, or automated analysis pipelines
  • Communicate clearly across scientific, computational, technical, and executive audiences, translating technical tradeoffs into decision quality and measurable outcomes; you build trust with scientists who have deep domain expertise and make complex technology approachable without being condescending
  • Familiarity with cloud computing environments (AWS preferred) and version control (Git)
  • Experience in pharmaceutical, biotech, or life sciences R&D environments
  • Familiarity with agentic AI frameworks and building AI-powered workflows that chain multiple models or tools together
  • Experience with biological foundation models (e.g., scGPT, Geneformer for single-cell; ESM for proteins; AlphaFold) or their application to research problems
  • Knowledge of biomedical ontologies, knowledge graphs, or experience integrating heterogeneous biological data sources
  • Track record of driving adoption of technical tools among non-engineering users
  • Contributions to open-source projects or a public portfolio of applied AI work
Education
  • (Not required) – PhD in computational biology, bioinformatics, data science, computer science, or a related field, with 3+ years of software/ML engineering or technical deployment experience; or equivalent demonstrated experience building and deploying AI/ML tools for scientific applications in biotech, pharma, or scientific software; MSin computational biology, bioinformatics, data science, computer science, or a related field, with 5+ years of software/ML engineering or technical deployment experience; or equivalent demonstrated experience building and deploying AI/ML tools for scientific applications in biotech, pharma, or scientific software