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Reinsurance Digital & Data Analyst at Aon – United Kingdom

Dataleum
London
2 months ago
Applications closed

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Description
Digital & Data Analyst

Aon is currently looking to broaden our Global Facultative Reinsurance team in London. In this role, you will be responsible for driving innovation through supporting the development of new product innovations, and building market-leading differentiated value-added tools for our colleagues and clients

Responsibilities include both the technical delivery of work and the communication of findings to brokers and clients. The candidate will be expected to engage with other colleagues, multi-disciplinary teams and clients as required.

Aon is in the business of better decisions

At Aon, we shape decisions for the better to protect and enrich the lives of people around the world.

As an organisation, we are united through trust as one inclusive team and we are passionate about helping our colleagues and clients succeed.

What the day will look like

  • Exploiting Aon’s data assets to produce MI for brokers, markets, and clients
  • Identify new automatic data capture tools & processes to enhance Aon’s data repository
  • Apply best-practice data validation techniques when preparing data for analysis
  • Collaborating with and coordinating analytical teams in the development of new portfolio solutions
  • Presentation of insights to senior stakeholders across your region(s)
  • Delivery of bespoke and recurring analytical reports
  • Developing segmentation solutions to better understand the Aon portfolio
  • Working collaboratively across a multi-disciplinary team environment with colleagues and client stakeholders
  • Demonstrating commitment to personal & team development

Skills and experience that will lead to success

  • Your skills and qualifications will include:
  • Highly numerate graduate (minimum 2.1 degree) with 2+ years’ experience in (re)insurance analysis (actuarial, business, reserving, underwriting)
  • Analytical skills – strong data analysis and manipulation.
  • Expert user in Excel, SQL, Tableau/PowerBI (R / Python would be beneficial)
  • Communicator – able to present complex ideas simply
  • Time management skills – managing own workload effectively
  • Strong project management skills – understanding of own role in supporting delivery
  • Critical thinking – problem diagnosis and problem solving
  • Creative, innovative and logical thinking
  • Excellent attention to detail
  • Ability to build and maintain positive relationships


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