Senior Data Scientist

LUMORA SOLUTIONS
London
3 days ago
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Role: Senior Data Scientist

Location: Cannon Street, Central London (3-Days a week)

Salary: £90,000 - £110,000

Our client, a global leader in payment services, is seeking a Senior Data Scientist to drive high-impact analytical and ML initiatives. You’ll work at the centre of their data strategy, shaping solutions that directly influence fraud, risk and customer experience. This is a hands-on role where your models will be deployed, scaled and used daily across a major financial ecosystem.

What you’ll work on

  • Identifying high-value Data Science and Machine Learning opportunities across payments, fraud, risk and customer domains
  • Scoping problems, designing experiments and building models end-to-end with engineering and product teams
  • Leading technical workstreams and guiding junior scientists to ensure high-quality delivery
  • Deploying models into production environments and monitoring performance to drive measurable business impact
  • Presenting insights and recommendations to senior stakeholders in clear, actionable terms

What you bring

  • Strong background in Data Science, Machine Learning or advanced analytics with proven end-to-end delivery
  • Ability to shape ambiguous problems, define analytical approaches and own delivery through to impact
  • Confident stakeholder eng...

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