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Data Analytics and Power BI Manager

DATAHEAD
London
1 day ago
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Claims Analytics Senior Manager (Fortune 500 FS/Insurance Firm) Location: London (Hybrid 2 days in office)
Salary: Up to 125,000 base + 20% bonus + excellent benefits

Be the architect of a new Claims Analytics function.

Were partnered with a Fortune 500 financial services firm seeking an experienced Claims Analytics Senior Manager to design and establish a best-in-class analytics capability that transforms how claims and underwriting decisions are made.

In this newly created position, youll work closely with claims leadership to build an analytics framework from the ground up delivering insights that drive performance, operational efficiency, and smarter strategic decisions across the international portfolio.

Lead the design and development of the Claims Analytics framework, defining key performance and operational metrics.
Deliver actionable insights through claims portfolio and operational analytics to inform underwriting and process improvement.
Partner with in-house data science teams to develop predictive models and advanced analytics tools.
Collaborate with underwriting, actuarial, and claims operations teams to enhance MI reporting and KPI dashboards.
Ensure robust data governance and integrity across all claims datasets.
Strong background in data science and analytics, with experience developing and deploying statistical or machine learning models.
Advanced skills in Python or R and SQL, with experience using Power BI or Tableau for data visualisation.
Proven ability to translate complex data into clear, actionable business recommendations.
Prior exposure to insurance or claims environments, ideally within the London Market or specialty lines.
Experience building or scaling analytics functions is highly desirable.

Work for a global Fortune 500 organisation known for empowering innovation in data and analytics.
Lead a high-impact initiative with direct visibility at executive level.
Enjoy a collaborative, hybrid environment with world-class benefits including 25 days holiday (plus bank holidays), pension, private medical, and a 20% performance bonus.

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