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Statistics & Data Science Innovation Hub - Data Science Leader

GSK
Stevenage
1 day ago
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Statistics & Data Science Innovation Hub – Data Science Leader

Location: UK – London – New Oxford Street, Hertfordshire – Stevenage
Posted: Nov 24 2025


Join GSK to lead the Statistics & Data Science Innovation Hub (SDS‑IH) and drive transformative data‑driven decision‑making across R&D. In this role you will use cutting‑edge machine learning, statistical modeling, and GenAI to solve complex operational challenges that directly improve how we deliver medicines to patients.


In this role you will:

  • Design and implement advanced statistical models for clinical operations, utilizing techniques such as Bayesian modeling, survival analysis, and machine learning.
  • Develop high‑quality, production‑ready code to ensure scalability and reproducibility.
  • Collaborate with stakeholders to identify needs and align model development efforts with business objectives.
  • Disseminate research findings through publications in leading scientific journals and presentations at conferences.
  • Work closely with multidisciplinary teams to enhance ongoing projects in Clinical Operations and expand organisational capabilities.

Basic Qualifications & Skills

  • PhD (or equivalent) in statistics, data science, computer science, mathematics, engineering, or a related quantitative field.
  • Proven expertise in advanced statistical modelling, including Bayesian methods, survival analysis, and/or modern machine‑learning techniques.
  • Strong publication record in peer‑reviewed scientific journals, conferences, or other credible proceedings.
  • Hands‑on experience developing and deploying robust R or Python packages into production environments, with proficiency in version control tools.
  • Excellent communication skills, with the ability to explain complex concepts clearly and engage effectively with diverse stakeholders.
  • Expertise in translating business challenges into actionable insights through data‑driven approaches.

Preferred Qualifications & Skills

  • Extensive experience in pharmaceutical R&D or the healthcare industry, with a strong focus on clinical trial operations.
  • Proven ability to influence, engage, and collaborate effectively with stakeholders across varying levels of seniority.
  • A highly analytical problem‑solver with a commitment to continuous learning and professional growth.
  • Proficient in leveraging High‑Performance Computing (HPC) environments to execute computationally intensive methods and manage large‑scale simulations.
  • Exceptional project management skills, including the ability to prioritise tasks, meet tight deadlines, and thrive in dynamic, fast‑paced environments.

Closing Date for Applications: 8th December 2025 EOD


When applying for this role, please use the cover letter and CV to describe how you meet the competencies outlined above. The information you provide will be used to assess your application.


GSK is an Equal Opportunity Employer. This ensures that all qualified applicants will receive equal consideration for employment without regard to race, colour, religion, sex (including pregnancy, gender identity, and sexual orientation), parental status, national origin, age, disability, genetic information, military service or any basis prohibited under federal, state or local law.


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