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Lead Genomics Data Scientist

Towards AI, Inc.
London
5 days ago
Applications closed

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Genomics England is seeking a Lead Genomics Data Scientist to enhance cancer genome analysis within their research environment. The role emphasizes technical and scientific leadership while actively contributing to the improvement of genome analysis practices. This position involves managing collaborations with external researchers and industrial partners and driving complex genomic analysis projects from design through to documentation. The successful candidate will produce high-quality solutions tailored to meet the unique demands of stakeholders, thus supporting the broader objectives of genomic healthcare and research.

Required Qualifications and Skills

A PhD degree or equivalent practical experience is required for this role. Candidates should possess expertise in cancer genomics, including an understanding of tumor drivers and the ability to interpret genomic data. Proficiency in Python for data analysis, along with experience in developing reusable code and using Git and CI/CD practices, is essential. The role also emphasizes the ability to evaluate and apply statistical or machine learning techniques effectively across practical scenarios. Demonstrated experience in leading analytical teams in an academic or industry context is also a necessary qualification.

Disclaimer: Job and company description information and some of the data fields may have been generated via GPT-4 summarisation and could contain inaccuracies. The full external job listing link should always be relied on for authoritative information.


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