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Data Analyst

Worcester
3 weeks ago
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Data Analyst
Worcester - Full-Time- On-Site
Up to £50,000

Overview

SF Technology are working exclusively with a Private Equity-backed business based in Worcester that's undergoing a major transformation project. As part of their journey to enhance internal reporting and decision-making, they're now looking to hire a permanent Data Analyst with strong Power BI and Business Central experience.

This is a full-time, office-based position, reporting directly into the Finance Team, with a strong focus on automating and improving how the business handles reporting and data insights.

What You'll Be Doing
Designing and building Power BI dashboards to support strategic decision-making
Extracting and modelling data from Microsoft Business Central
Replacing manual Excel-based reports with streamlined automated reporting
Working closely with finance, operations, and warehouse teams
Supporting external consultants during the wider transformation programme
Using SQL, DAX and Power Query to create clear, impactful reports
Helping upskill internal teams on reporting capabilities and best practices

What We're Looking For
Solid hands-on experience with Power BI, including dashboard/report development
Experience with Microsoft Business Central (essential)
Some technical understanding of DAX, Power Query, and SQL
Excellent data analysis and modelling skills
Ability to communicate effectively with both technical and non-technical stakeholders
Comfortable working full-time in an office environment (Worcester-based)

Nice to Have
Experience working with Microsoft Dynamics CRM
Exposure to reporting in PE-backed or high-growth businesses
Familiarity with field service or logistics sectors

What's on Offer
Salary: Up to £50,000
Location: Worcester - full-time, 5 days per week in the office
A business at an exciting stage of growth and transformation
A visible role with direct impact on company-wide decision making
The opportunity to take ownership of reporting automation and tooling

Apply Now

If you're a Data Analyst with proven experience in Power BI and Microsoft Business Central, and you're looking for a permanent, on-site opportunity with real impact, we want to hear from you.

Apply today via SF Technology

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