Data Analyst

Napthens LLP
Preston
1 week ago
Create job alert

We’re growing our Technology team at Napthens LLP and looking for a Data Analyst who can turn raw numbers into real business insight.

If you love building smart dashboards, solving data problems, and influencing decisions across a modern legal firm, you’ll fit right in.

  • Build Power BI dashboards and reports that drive performance
  • Translate BI needs into clear, actionable outputs
  • Own and develop our SQL & Power BI environments
  • Extract, model and present data for both day‑to‑day and strategic use
  • Support colleagues with reporting and promote data‑driven working
  • Improve data accuracy, processes and security
  • Contribute to firm‑wide projects including our Data Strategy, System Design, CRM and Customer Insights
What you’ll bring
  • Strong analytical mindset and problem‑solving skills
  • Advanced Power BI / Power Apps experience
  • Solid understanding of data management and security
  • Ability to communicate insights clearly to non‑technical audiences
  • Experience in the legal or professional services sector (ideal)
  • Bonus: experience with Proclaim CMS
Why Napthens?

You’ll join a collaborative, ambitious firm where your work genuinely shapes decisions. Expect hybrid working, 2–3 days a week in our Preston, Lancashire HQ, and a team that values innovation, clarity and impact.

If you’re ready to make data matter, we’d love to hear from you.

NB: This role is based in Preston, Lancashire, Northwest England and requires attending the Preston office 3 days per week. If you’re within a reasonable distance from Preston, we’d love to see your application.


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