← Serch more jobs

Scientific Lead, Applied Intelligence for Discovery

LinkedIn BioSpace San Francisco, CA
Not Applicable Posted April 4, 2026 Job link
Thinking about this job
Not Met Priorities
What still needs stronger evidence
Requirements
  • Experience building LLM-powered applications, including at least two of: RAG systems, text-to-SQL, agentic workflows, or fine-tuning pipelines
  • Strong software engineering skills in Python with experience building production-grade systems
  • Deep familiarity with the modern LLM ecosystem: embedding models, vector databases, and orchestration frameworks
  • Experience designing evaluation frameworks for LLM systems — systematic approaches to measuring accuracy, detecting hallucinations, and tracking regressions
  • Comfort working with complex, heterogeneous data — databases with hundreds of tables, specialized schemas, or domain-specific vocabularies
  • Familiarity with cloud computing environments (AWS preferred), containerization (Docker), and CI/CD practices
  • Experience in pharmaceutical, biotech, or life sciences environments
  • Familiarity with biomedical data types (omics, clinical, molecular) or scientific databases
  • Experience with MLOps/LLMOps tooling: experiment tracking, model registries, prompt versioning, A/B testing for AI systems
  • Knowledge of biomedical ontologies (Gene Ontology, MeSH, ChEBI) or experience integrating domain-specific knowledge into LLM systems
  • Experience building for regulated environments where auditability, reproducibility, and explainability are requirements
Preferred Skills
  • Experience building LLM-powered applications, including at least two of: RAG systems, text-to-SQL, agentic workflows, or fine-tuning pipelines
  • Strong software engineering skills in Python with experience building production-grade systems
  • Deep familiarity with the modern LLM ecosystem: embedding models, vector databases, and orchestration frameworks
  • Experience designing evaluation frameworks for LLM systems — systematic approaches to measuring accuracy, detecting hallucinations, and tracking regressions
  • Comfort working with complex, heterogeneous data — databases with hundreds of tables, specialized schemas, or domain-specific vocabularies
  • Familiarity with cloud computing environments (AWS preferred), containerization (Docker), and CI/CD practices
  • Experience in pharmaceutical, biotech, or life sciences environments
  • Familiarity with biomedical data types (omics, clinical, molecular) or scientific databases
  • Experience with MLOps/LLMOps tooling: experiment tracking, model registries, prompt versioning, A/B testing for AI systems
  • Knowledge of biomedical ontologies (Gene Ontology, MeSH, ChEBI) or experience integrating domain-specific knowledge into LLM systems
  • Experience building for regulated environments where auditability, reproducibility, and explainability are requirements
Education
  • (Not required) – PhD in Computer Science, Data Science, or a related technical field with 0-3+ years of experience; or equivalent experience building production LLM systems; MS in Computer Science, Data Science, or a related technical field with 5+ years of experience; or equivalent experience building production LLM systems