Head of Data Science, Analytics and Reporting

CANCER RESEARCH UK
London
1 month ago
Applications closed

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Head of Data Science & Analytics and Reporting

£90,000 - £97,000 (+ Benefits)

Reports to: Director of Data, Insight & Performance

Department: Marketing, Fundraising & Engagement

Contract: Permanent

Hours: Full time 35 hours per week

Location: Stratford, London. Office-based with high flexibility (1-2 days per week in the office).

Visa sponsorship: Cancer Research UK can consider visa sponsorship for this vacancy. If this applies to you, please ensure that this is clearly marked on your application.

Closing date: 25 January 2026 23:55

This vacancy may close earlier if a high volume of applications is received or once a suitable candidate is found, therefore we strongly recommend that you apply early to avoid disappointment. If you require more time to apply as part of a reasonable adjustment, please contact as soon as possible.

Recruitment process: One telephone interview followed by two competency-based interviews (the final stage will be face-to-face in our London office)

Interview date: We will be screening on an ongoing basis, first stage interviews will be from the 9th of February 2026...

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