Senior Data Scientist

SF Recruitment (Tech)
Birmingham
3 days ago
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Job Description

Senior Data Scientist - Fintech | First Permanent DS Hire

£75,000-£85,000 + benefits | Fully Remote (UK)
Direct report to CDO | Build the DS capability | FCA-regulated product

This is a rare opportunity to join a fast-growing, FCA-regulated fintech as their first permanent Senior Data Scientist, shaping a brand-new data science capability from the ground up.

The business has built a highly succ...




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