Senior Data Scientist

DWP Digital
Manchester
1 month ago
Applications closed

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Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist


Job Title: Senior Data Scientist

Pay of up to £75,493, plus 28.97% employer pension contributions, hybrid working, flexible hours, and great work life balance.

A degree or higher in STEM ( Science, Technology, engineering, or mathematics) is essential for this role, and evidence of qualification will be requested.

Are you ready to take on a leadership role where your data science expertise can influence decisions, drive innovation, and inspire meaningful change?

Do you want the opportunity to harness one of the richest datasets in the UK to shape better experiences for millions of users?

Join us at DWP Digital the UK's largest government department.

We support people into work and deliver over £195bn in payments each year, helping some of the most vulnerable people in society.

We're transforming our services on a once in a generation scale, using new ideas and cutting-edge technologies to build innovative, scalable, and user centred digital solutions.

Join us as a Senior Data Scientist and help reimagine how government services work. Your expertise will drive better, quicker, and more impactful results for millions of citizens.

What skills, knowledge and experience will you need?

  • Extensive experience delivering innovative, data driven solutions using a range of data science techniques ...

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