Associate Director/Scientific Leader Oncology Translation Big Data Mining

GSK
Stevenage
2 months ago
Applications closed

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Job Description

Site Name: UK - Hertfordshire - Stevenage, USA - Pennsylvania - Upper Providence

Posted Date: Nov 25 2025

427061 Associate Director/Scientific Leader, Oncology Translation Big Data Mining

We are seeking a highly skilled and experienced individual to join our team as an Associate Director/Scientific Leader of Oncology Translation - Big Data Mining within the Oncology Translational Research Team. The successful candidate will have a key role in the analysis of large-scale cancer multiomic and clinical data, applying cutting edge algorithms and closely collaborating with AIML and project teams in supporting GSK oncology translational research.

They will need a solid understanding of computational multiomic approaches, cancer biology and translational research to derive meaningful and reproducible biological insights that can help project decision making. Documented expertise in the analyses of multi-omic datasets (in solid and/or haematological malignancies) and interpretation of analysis outcomes in a translational setting is necessary whilst experience in complex molecular data integration will be advantageous. The successful candidate will be part of multidisciplinary teams to answer complex scientific/clinical questions and will need to have stro...

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