Data Scientist in Environmental Health in Oxford

Data Scientist in Environmental Health in Oxford

Oxford Full-Time 47779 - 47779 £ / year (est.) No working from home possible
Economic History Society

At a Glance

  • Tasks: Join a multidisciplinary team to analyse climate change impacts on health.
  • Company: Oxford Population Health, a leader in population health research.
  • Benefits: Competitive salary, supportive environment, and opportunities for professional growth.
  • Other info: Full-time role with a fixed term of 2 years, based in Oxford.
  • Why this job: Make a real difference in environmental health with innovative research.
  • Qualifications: PhD or nearing completion in relevant fields and strong quantitative skills.

The predicted salary is between 47779 - 47779 £ per year.

Location: Old Road Campus, Headington, Oxford, OX3 7LF

Oxford Population Health (Nuffield Department of Population Health) contains world-renowned population health research groups and provides an excellent environment for multi-disciplinary research and teaching. The China Kadoorie Biobank (CKB) Study is a uniquely rich and powerful global resource for investigating the environmental and genetic determinants of common chronic diseases.

We are seeking a talented researcher with enthusiasm for cross‑disciplinary environmental epidemiology to join our team for a 7‑year Wellcome Trust‑funded programme on climate change and health based within the China Kadoorie Biobank. You will work within a multidisciplinary team to develop novel approaches and analyses at the intersection of environmental epidemiology, exposure science, molecular epidemiology, biostatistics, and data science in support of the project’s aims.

To be considered for the Data Scientist in Environmental Health post, you must hold a PhD (or be close to completion) in biostatistics, data science, environmental epidemiology, or a closely related discipline. You should have experience conducting quantitative research in environmental epidemiology, strong quantitative analysis skills, in‑depth knowledge of relevant statistical and data science methods, and demonstrated proficiency in relevant statistical programming software. Excellent communication and interpersonal skills are also essential for this role.

The position is full‑time and fixed term for 2 years (in the first instance). The closing date for applications is noon on 28 July 2026. You will be required to upload a CV and a Supporting Statement as part of your online application. The Supporting Statement should include a cover letter and should also clearly describe how you meet each of the selection criteria listed in the job description.

Contact Person: NDPH Recruitment Team

Contact Phone: 01865617933

Contact Email: recruit@ndph.ox.ac.uk

£39,424 to £47,779 per annum (including Oxford Weighting Allowance). Grade 7

Data Scientist in Environmental Health in Oxford employer: Economic History Society

At Oxford Population Health, located in the vibrant Old Road Campus in Headington, Oxford, we pride ourselves on fostering a collaborative and innovative work culture that encourages interdisciplinary research and personal growth. As a Data Scientist in Environmental Health, you will be part of a prestigious team dedicated to addressing critical global health challenges, with access to exceptional resources and support for your professional development. Our commitment to impactful research and a supportive environment makes us an outstanding employer for those seeking meaningful contributions to public health.

Economic History Society

Contact Details:

Economic History Society Recruitment Team

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We think you need these skills to ace Data Scientist in Environmental Health in Oxford

Quantitative Research
Environmental Epidemiology
Biostatistics
Data Science
Statistical Programming Software
Statistical Analysis
Communication Skills

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