Project Manager - Predictive Analytics

Horwich Farrelly
London
1 day ago
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Job Title: Project Manager – Predictive Analytics

Location: United Kingdom

Working Pattern: Hybrid/Fully-Remote

Contract Type: Permanent

About HF

People. Not just lawyers

We’re not your typical law firm – we’re people with a passion for helping our clients and each other achieve the best possible outcomes. We are leading legal advisers to the insurance and commercial sectors across the UK & Ireland, known for our innovation, client focus, and long-lasting relationships. We do things differently, with a forward-thinking approach built around our clients’ needs, supported by cutting-edge technology and a culture built around people from a wide range of backgrounds who are taking an equally wide range of routes to building their careers in law.

About the team

Horwich Farrelly (HF) is driving innovation in claims management through advanced data insights and predictive analytics. The Predictive Analytics and Data Insights team plays a key role in HF’s transformation strategy, working collaboratively with legal experts, data scientists, and technology partners to deliver measurable improvements in client outcomes.

What you’ll be doing

  • Manage end-to-end delivery of predictive analytics projects, from planning through execution and post-impleme...

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