Marine - Data Analyst

Willis Towers Watson
Ipswich
3 weeks ago
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Description

We are hiring for the dynamic data professional. We know how companies can unlock potential through effective risk management. Our clients rely on us to craft strategies to quantify, mitigate, and transfer risk, taking advantage of our specialist industry experience and unparalleled market know-how. The result is a new way of embracing risk that drives superior results.


The Role


Reporting to the Head of Marine Market Services the successful applicant will be responsible for



  • Interpreting customer data packs to provide summaries / bespoke insights
  • Attending customer meetings to present data summaries
  • Designing new reports / delivery mechanisms
  • Performing ad hoc analysis to assist business initiatives
  • Assisting with the preparation of customer deliverables
  • Assisting the data collection team to drive data completion and quality
  • The role is Ipswich‑based, but the demands of the role will require occasional travel to London and potentially North America.

Qualifications

What you’ll bring



  • Analytical skills

    • Able to query, interpret and understand data to deduce insights.
    • Ability to acquire the fundamentals of business concepts and relate them to the available data sources


  • Communications

    • Data visualization: able to choose representations which help convey the messages within the data.
    • Good verbal / informal presentation skills. Comfortable in customer‑facing situations


  • Numeracy – finance, statistics
  • Technical – Power BI, MS Excel, MS Access, VBA, SQL, SSRS,
  • The candidate should be educated to at least A level or equivalent. A graduate level qualification is not essential, but would be considered in lieu of experience
  • An insurance background would be advantageous, but not essential

What we offer


Enjoy a benefits package designed to help you thrive, both professionally and personally. You'll receive 25 days of annual leave plus an extra WTW day to relax and recharge. Our comprehensive health and wellbeing offering includes private healthcare, life insurance, group income protection, and regular health assessments, all giving you peace of mind. Secure your future with our defined contribution pension scheme, featuring matched contributions up to 10% from the company.


We support your growth and balance with hybrid working options, access to an employee assistance programme, and a fully paid volunteer day to make a difference in your community. On top of these, you can opt into a variety of additional perks including an electric vehicle car scheme, share scheme, cycle‑to‑work programme, dental and optical cover, critical illness protection, and much more. Start making the most of your career and wellbeing with a range of benefits tailored for you.


Equal Opportunity Employer


We’re committed to equal employment opportunity and provide application, interview and workplace adjustments and accommodations to all applicants. If you foresee any barriers, from the application process through to joining WTW, please email


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