Director, Oncology Genomics & Translational Data Science

GlaxoSmithKline
Stevenage
1 day ago
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A leading global biopharma company in Stevenage is seeking a Director in Translational Data Science to lead a team focused on oncology genomics. This key role involves overseeing computational biology projects, leading multidisciplinary teams, and applying advanced statistical methods to guide drug discovery efforts. Ideal candidates will possess a PhD in a relevant field and significant leadership experience. The position offers the opportunity to contribute to innovative cancer therapies and work alongside various specialists in a dynamic environment.
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