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Data Analyst

Steamship Mutual
City of London
1 day ago
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About the Company

Steamship Mutual is a P&I insurance company with 240 employees worldwide. The main office is based near Liverpool Street station, London. We also have offices in Bermuda, Brazil, Cyprus, Greece, Hong Kong, New York, Japan, and Singapore.


Overall Job Purpose

To support data‑driven decision‑making across the organisation by analysing complex datasets, identifying trends, providing accurate information, delivering actionable insights, and maximising efficiencies in existing sets of reports. The role plays a key part in improving underwriting, claims, capital management, and customer experience strategies within the insurance business.


Key Responsibilities

  • Timely, accurate and relevant reporting to agreed deadlines
  • Collect, clean, and validate large datasets from internal and external sources
  • Perform statistical analysis to support underwriting and claims
  • Constantly review the format and content of reports provided and liaise with relevant business areas to ensure that data / report provided meets the needs of the business and is "value add."
  • Develop dashboards and reports using tools like SAP Business Objects, Power BI
  • Collaborate with actuaries, underwriting, claims, and IT teams to understand data needs and deliver insights
  • Support regulatory reporting and compliance through accurate data analysis
  • Identify opportunities for process automation and efficiency improvements
  • Provide support and guidance to business users with the interpretation and use of management information

Person Specification

  • Bachelor's degree in data science, statistics, mathematics, actuarial science, computer science, or a related field, but not essential
  • Must have substantial experience in data analysis
  • IT literate in Microsoft applications with advanced Excel skills, SQL, Business Intelligence (SAP Business Objects, Power BI)
  • Ability to present complex data in a clear and concise manner
  • Previous history of working with insurance/financial data – interpretation, analytical and reporting skills
  • Understanding of statistical methods

Key Competencies

  • Analytical thinking and problem solving
  • Attention to detail
  • Collaboration and stakeholder engagement
  • Adaptability and continuous learning

Benefits

  • Become part of a collaborative, supportive, and friendly working environment, with opportunities to enhance skills and knowledge. We prioritise a healthy work‑life balance and offer a competitive hybrid working policy.
  • Clear and transparent career pathways with continuous support for skill enhancement and opportunities for professional development, including access to the Protection & Indemnity Qualification, created by the International Group of P&I Clubs.
  • Attractive benefits package includes private healthcare and a competitive wellbeing subsidy.

Company Values

  • Mutuality – ensuring fairness amongst Club Members
  • Integrity – upholding high ethical, legal, and regulatory standards
  • Safety and Sustainability – contributing to safety of life at sea and the preservation of the environment
  • Transparency – building strong relationships based on trust and open communication
  • Excellence – enabling our people to realise their full potential as team members, industry experts, leaders, and managers
  • Collaborative – embracing flexibility, diversity, and inclusivity

Seniority Level

Associate


Employment Type

Full-time


Job Function

Other


Industries

Technology, Information and Internet


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