Power BI Data Analyst

Carmarthen
1 day ago
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Standard 8 is recruiting for a Data Analyst to join a well-established, tightly regulated organisation based in Carmarthenshire.

This isn’t a replacement hire. It’s a deliberate investment. The leadership team wants sharper insight, tighter controls and reporting that stands up to scrutiny. They need someone who understands what good looks like and is prepared to raise the bar.

You’ll act as the organisation’s go-to data specialist. Visible, trusted and involved. You won’t be hidden away patching broken spreadsheets. You’ll be working across operational teams, finance and leadership, shaping how data is captured, structured and reported.

Day to day, you’ll be:
• Designing and maintaining Power BI reports that decision-makers actually use
• Taking ownership of KPIs, performance packs and assurance reporting
• Making sure metrics are accurate, consistent and delivered on time
• Improving data quality at source rather than fixing problems at the end
• Producing statutory and regulatory returns with zero drama

You’ll need:
• Strong experience analysing large, mixed datasets in a live operational setting
• Proven capability building and managing Power BI models and dashboards
• Solid SQL skills and a clear grasp of data warehousing principles
• Experience working with cloud platforms (Azure or AWS) and integrating APIs
• The confidence to explain technical findings to non-technical stakeholders clearly

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