Statistical Geneticist
OverviewOur client is a cutting-edge biotechnology organization working at the intersection of aging science, AI-driven biology, and drug discovery. Their mission is to develop therapies for age-related and chronic conditions by leveraging foundational models trained on large-scale longitudinal human data. Using advanced techniques to extract biological latent features and integrate genetics with multi-omics, the team is accelerating target discovery and therapeutic development beyond traditional clinical coding frameworks.The company is seeking a Statistical Geneticist, Computational Biologist, or Bioinformatics Scientist experienced in deep learning applications for variant annotation and functional genomics. The hire will contribute to a next-generation target discovery platform, working with AI models, multi-omics resources, and population-scale genetic datasets to identify therapeutic targets and accelerate drug discovery. Responsibilities include processing genetic datasets (GWAS/PheWAS), building robust pipelines, implementing state-of-the-art methods, and delivering production-quality code. Ideal candidates have strong computational genomics expertise and an interest in translating biological data into real therapeutic insights.ResponsibilitiesManage and preprocess genetics and tabular datasets, including plink-formatted data, GWAS summary statistics, and molQTL datasets.Conduct common and rare variant association studies (WGS/WES) and post-GWAS analyses, including colocalization, Mendelian randomization, and integration with transcriptomic/proteomic data.Apply classical machine learning and deep learning approaches to functional genomics problems.Develop, maintain, and scale automated pipelines for association studies while ensuring code quality and reproducibility.QualificationsEducation: MSc or PhD in Statistical Genetics, Bioinformatics, Biostatistics, Computer Science, or a related quantitative discipline.Experience Requirements:Demonstrated experience analysing large datasets using statistical inference and machine learning.Relevant scientific publications in reputable venues.Advanced Python and R programming skills.Comfort working in Unix/Linux environments.Practical experience with population genetics, GWAS, and post-GWAS analysis frameworks.HPC or cloud computing experience required.Training deep neural networks is considered a strong plus.The ideal candidate is proactive, resourceful, and thrives in fast-moving, highly autonomous settings. Adaptability and curiosity about emerging scientific technologies are essential.BenefitsCompetitive compensation aligned with industry expectations.Fully remote work environment with flexible scheduling.High-trust, low-bureaucracy culture emphasizing ownership and accountability.Direct impact on core therapeutic discovery efforts from day one.Support for scientific publication and research visibility.
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