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Finance Data Analyst (FP&A)

HFG
City of London
2 days ago
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Overview

A growing London market insurance business is looking for a Finance Data Analyst who can take initiative and work independently to enhance data analysis, lineage, visualizations, and reconciliations within BAU processes. The position also plays a key role in supporting Finance strategy initiatives.

Key Responsibilities
  • Develop SQL stored procedures and Power BI dashboards to meet business data analysis requirements, enabling efficient and insightful reporting
  • Facilitate stakeholder discussions to ensure accurate data extraction
  • Develop process improvements and system enhancements to support efficient and accurate data production
  • Understand data across finance teams to define and prepare data requirements for finance initiatives
  • Participate in various ad-hoc projects as needed to support the wider Finance Operations team
Qualifications

The successful candidate for this Finance Data Analyst role will need experience with large data sets and have SQL experience within the insurance industry, ideally within the London market. The candidate will also need to have either previous Power BI or TM1 system experience, ideally being involved in the implementation.


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