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Associate Director, Computational Genomics and Informatics

Alnylam Pharmaceuticals
Full-time
Remote friendly (Cambridge, MA)
United States
$169,000 - $238,200 USD yearly
IT

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Role Summary

Associate Director to lead the Computational Genomics and Informatics capability with hands-on technical contributions and strategic guidance. Focus on enabling analysis of genetic data from millions of individuals across multiple biobanks, in a hybrid role primarily located in Cambridge, MA.

Responsibilities

  • Optimize internal infrastructure and capabilities for analyzing individual-level genetic data and performing meta-analysis across biobanks; manage partnerships with service providers to co-design analysis solutions.
  • Build and implement genomics pipelines on external cloud-based platforms to perform GWAS and RVAS efficiently.
  • Design and implement harmonization and meta-analysis solutions for GWAS and RVAS summary statistics; build a framework for searchable and accessible results.
  • Monitor usage and costs to optimize resource utilization in internal and external computing environments.
  • Collaborate with statistical geneticists, informatics group, and third-party providers; produce user-friendly documentation related to pipelines and meta-analysis.

Qualifications

  • PhD in Bioinformatics, Computer Science, Statistical Genetics or related field with 8+ years of relevant experience; title commensurate with experience.
  • Deep understanding of statistical genetics (GWAS, RVAS) and experience implementing GWAS packages (e.g., Regenie, PLINK).
  • Extensive experience with biobank-scale genetic and phenotypic data.
  • Proven track record implementing genomics workflows on cloud platforms (e.g., DNA Nexus, All of Us Researcher Workbench).
  • Hands-on experience building portable pipelines across cloud environments using workflow languages (CWL, WDL, Nextflow) and containerization.
  • Experience processing and QC of individual-level genetic data (WGS, WES, imputed); experience with tools for genetic data processing (VCFtools) and variant annotation (VEP/WGSA).
  • Experience with Linux command line and Python and R programming.
  • Familiarity with post-GWAS methods (statistical fine mapping, colocalization, Mendelian Randomization).
  • Proficiency in implementing web-based tools for genomics (dashboards, Shiny, PheWeb) is an advantage.

Skills

  • Genomics data analysis
  • Cloud-based workflow implementation
  • Data harmonization and meta-analysis
  • Pipeline development and documentation
  • Linux, Python, R

Education

  • PhD in Bioinformatics, Computer Science, Statistical Genetics or related field
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