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Manager, Translational Genetics (Therapeutic Area Genetics)

Regeneron
Full-time
Remote friendly (Tarrytown, NY)
United States
IT

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Role Summary

Manager, Translational Genetics (Therapeutic Area Genetics) overseeing Translational Genetics software development to analyze and interpret large-scale genomic data and translate findings into biological insights for Regeneron.

Responsibilities

  • Architect elegant solutions and design robust, reusable functions and packages that abstract complex genetic analyses into scalable tools; transform analyses into production-grade R packages used across the team.
  • Mine large sequencing datasets to uncover biological insights that drive drug development in cardiometabolic disease.
  • Optimize algorithms for performance at scale, refactor legacy code, and implement modern software engineering practices (version control, CI/CD, containerization) in a scientific context.
  • Debug issues, write comprehensive documentation, and provide technical mentorship to tool users.
  • Collaborate with geneticists, clinicians, and bioinformaticians to translate analytical needs into software solutions and co-develop novel analysis strategies.
  • Stay at the forefront of statistical genetics, applying latest GWAS and post-GWAS methods, integrating diverse data types, and generating testable hypotheses about human disease.

Qualifications

  • Masters or PhD in Bioinformatics or Statistical Genetics with a heavy computational component, or degree in Computer Science, Applied Mathematics, Physics, or other quantitative field with specialization in genetics.
  • Hands-on experience with statistical genetics, GWAS and post-GWAS.
  • Strong expertise in writing efficient scientific code in R, Python, or other languages.
  • Experience developing scientific packages and/or web applications.
  • Experience developing and deploying in a cloud infrastructure (e.g., AWS, GCP, DNAnexus) using CI/CD and containerization (Docker).
  • Familiarity with standard bioinformatics tools (e.g., PLINK2, HTSlib, tabix) and data formats (VCF, BED, BGEN).
  • Experience with Linux/UNIX command line and SQL databases.

Skills

  • Quantitative analysis and coding best practices; ability to write clean, maintainable code.
  • Proficiency in statistical genetics concepts such as polygenic scores, LD, GWAS, and post-GWAS analyses.
  • Ability to design composable, reusable software solutions and avoid duplication.
  • Collaborative mindset to work with multidisciplinary teams and translate analytical needs into software tools.
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