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Data Analyst

TRIA
Milton Keynes
1 week ago
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Data Analyst | Power BI Developer

Power BI | DAX

Finance | Actuary

Milton Keynes / Hybrid

£40,000 - £50,000

Are you a Power BI Engineer or Data Analyst with experience in an actuarial or finance function, looking for your next opportunity? Can you collaborate with a range of stakeholders to create insightful, engaging reports and dashboards? If so, read on.

You’ll be joining an innovative insurance company currently undergoing an exciting period of growth. Having recently migrated from Tableau to Power BI, they’re now looking for an experienced developer to take full ownership of their Power BI environment, ensuring existing reports run smoothly while designing and delivering new ones to support business needs.

What you’ll need to succeed:
  • Proven experience with Power BI and DAX
  • Strong troubleshooting and testing skills to ensure report accuracy
  • Confidence working independently as the sole Power BI Developer
  • Solid experience with SQL databases
  • Proficiency with Power Query (this is a nice to have)
  • Exposure to modern cloud environments, Snowflake experience is a bonus
Benefits of the opportunity:
  • Full ownership of Power BI reporting with the chance to shape its future
  • Competitive salary up to £50,000
  • Hybrid working, 1 to 2 days per week in Milton Keynes
  • Enhanced pension contributions up to 10.5%
  • Actuarial study support alongside your day to day role


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