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QA Engineer, Scientific Workflows

LinkedIn Mithrl San Francisco, CA
Not Applicable Posted March 28, 2026 Job link
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Requirements
  • This role requires a PhD-level scientist or computational biologist who understands the drug development lifecycle and who has hands-on experience with omics data.
  • Deep understanding of the drug discovery and preclinical development lifecycle
  • Hands-on experience working with omics data such as transcriptomics, RNA-seq, proteomics, ATAC-seq, single cell datasets, or imaging-derived features
  • Ability to evaluate whether a result, analysis, or insight is scientifically correct based on domain knowledge
  • Familiarity with common discovery analyses such as differential expression, enrichment, pathway reasoning, target scoring, and feature importance
  • Experience with Python or similar languages and comfort with scientific computing workflows
  • Strong interest in software quality, reproducibility, and validation of ML driven scientific systems
  • Excellent communication skills and ability to partner with engineers and scientists
  • Experience building automated tests or QA frameworks for scientific or ML systems
  • Experience with workflow engines, scientific pipelines, or reproducibility tools
  • Familiarity with CI tools and modern software development practices
Preferred Skills
  • Experience building automated tests or QA frameworks for scientific or ML systems
  • Experience with workflow engines, scientific pipelines, or reproducibility tools
  • Familiarity with CI tools and modern software development practices
  • Experience validating outputs of AI powered analysis tools
  • Previous work in a tech bio company or computational platform environment
  • High ownership: You will be the guardian of scientific correctness and reliability inside the AI Co-Scientist
  • Impact: You will work with cutting edge ML, multi modal data, and real discovery workflowsTeam: Join a tight-knit, talent-dense team of engineers, scientists, and builders
Education
  • (Not required) – PhD in biology, computational biology, bioinformatics, systems biology, or a related discovery field