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Manager, Translational Genetics (Therapeutic Area Genetics)

Regeneron
Remote friendly (Tarrytown, NY)
United States
IT

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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