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Director, Data Science

LinkedIn Glyphic Biotechnologies Berkeley, CA
Not Applicable Posted April 5, 2026 Job link
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Requirements
  • 10+ years of post-academic experience in the omics space (genomics, proteomics, or related fields).
  • 4+ years of experience managing technical teams (data scientists, ML engineers, or bioinformaticians), including hiring responsibility.
  • Ability and willingness to operate as a player-coach: setting strategy while remaining hands-on with data, code, and models.
  • Exceptional ability to identify, hire, and develop talent while establishing and enforcing standards of excellence in data science
  • Capacity to develop both individual contributors and future managers within the team.
  • Deep expertise in one of the following:
  • Primary sequencing data analysis
  • Machine learning applied to biological data
  • Pipeline infrastructure and bioinformatics tooling
  • Solid understanding of signal processing, classification, and machine learning techniques (transformers, CNNs, RNNs) and comfort applying them to sequencing or time-series data
  • Practical familiarity with AWS, Nextflow, and modern bioinformatics tooling.
  • Demonstrated ability to work at the bench-to-computation interface in collaborative research environments
  • Ability to present complex technical results to non-technical stakeholders and to translate biological questions into computational approaches.
Preferred Skills
  • Direct experience with sequencing data, basecalling, read-level QC or nanopore signal-level analysis (strongly preferred).
  • Experience building data infrastructure and analytics platforms in early-stage biotech.
  • We're looking for a teammate that:
  • Navigates complex team dynamics, partnerships, and challenges with creativity and logic.
  • Operates with adaptability, urgency, and flexibility in evolving environments, thriving in ambiguity.
  • Drives work forward without needing to be asked, taking responsibility for outcomes rather than tasks.
  • Treats obstacles as problems to be creatively solved, not reasons something can't be done.
  • Applies sound judgment to the best available information, testing, learning, and iterating.
Education
  • (Not required) – MS or PhD in a quantitative field (Computer Science, Electrical Engineering, Computational Biology, Bioinformatics, Statistics, or related)