Data Analyst - Finance Data

SystemsAccountants
London
1 month ago
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Director | Expert in CPM recruitment, System Selection & Evaluation, Data & Analytics, and Power BI Delivery & Training | Over a Decade of Leadership…

Data Analyst – Finance Data

Location: Hybrid, London (Global Insurance Firm)

About the Role

SystemsAccountants is partnering with a global insurance leader to recruit a Data Analyst to join their expanding Finance Data & Reporting team.

This is a unique opportunity to work at the intersection of finance and technology, acting as the bridge between the Finance function and technical teams, ensuring data solutions meet business needs.

The successful candidate will be hands-on with data, lead small projects, manage offshore analysts, and contribute to shaping the company’s growing data strategy.

Key Responsibilities

  • Act as the liaison between Finance stakeholders and technical teams to translate business needs into technical requirements.
  • Analyse financial data using the company’s Data Platform, supporting both BAU and project delivery.
  • Manage and resolve issues, ensuring timely problem-solving and process improvement.
  • Lead small projects and oversee change requirements from initiation to delivery.
  • Manage and coordinate offshore technical BA resources.
  • Drive data quality and support the delivery of new finance data products.

Technical Skills

  • Advanced SQL proficiency.
  • Experience with SQL Server and Snowflake.
  • Knowledge of Master Data Services (MDS) and AWS architecture.
  • Familiarity with Power BI or other analytics tools.
  • Solid understanding of data warehousing concepts.

Business Skills

  • Strong finance experience
  • Insurance sector experience (preferred).
  • Proven ability to gather and translate business requirements into technical solutions.
  • Excellent stakeholder management and communication skills.

Personal Attributes

  • Independent, hands-on approach with a “go-getter” mindset.
  • Strong team player with leadership potential.
  • Curious and eager to learn the business.

Please forward your CV to

Seniority level

  • Seniority levelMid-Senior level

Employment type

  • Employment typeFull-time

Job function

  • Job functionInformation Technology
  • IndustriesStaffing and Recruiting

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