Data Science Manager

Compare the Market
London
2 months ago
Applications closed

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Job Description

Job Description

Data Science Manager

Function: Data

Location: Hybrid working, London or Peterborough office

Curious about what’s next?

So are we. Join Compare the Market and help to make financial decision making a breeze for millions.

At Compare the Market, we’re a purpose-driven business powered by tech and AI. We’re building high-performing, results-driven teams with the skills, mindset, and ambition to deliver outcomes at pace. Every role here plays a part in driving our mission forward, and we create an environment where you can bring your authentic self, grow a truly characterful career, and see the direct impact of your work on the lives of our customers.

We’ve carved a meerkat-shaped niche and we’re looking for ambitious, curious thinkers who thrive in a fast-moving, high-impact environment. If you love accountability, embrace challenge, and want to make a real difference, you’ll fit right in.

We’d love you to be part of our journey:

As a Data Science Manager, you’ll lead a team of data scientists focused on building applied AI solutions that drive measurable business impact, from intelligent personalisation to optimised customer journeys and decision systems. A hybrid role encompassing strong leadership as well as technical design...

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