Data science programme lead

Kidney Research UK
Peterborough
3 weeks ago
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Data science programme lead


Location: Contracted to our Peterborough office with the flexibility for hybrid working
Salary: £42,000 - £48,000 depending on experience
Contract Type: Permanent
Full Time: 37.5 hours per week
Benefits: We want all our employees to feel valued and engaged and are committed to offering a positive working culture along with a good work-life balance. As well as ensuring we pay our employees fairly, we offer the following benefits: Flexible working, Generous annual leave, Private Medical Insurance, including dental and optical, Pension Scheme, Sick Pay, Death in Service, Employee Assistance Programme, Bike Loan Scheme, Cycle2Work Scheme, Eyecare, Discount Portal.

Closing date: Wednesday 18 February 2026

Telephone interviews will be held week commencing 23 February 2026
Interviews will be held week commencing 2 March 2026

No agencies please

Be a part of an energetic and vibrant team who are driven by the desire to improve the lives of people living with kidney disease. Our vision is the day when everyone lives free from kidney disease.

To achieve this, we are harnessing the power of data science and AI to accelerate research and deliver meaningful patient benefit. This is an exciting opportuni...

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