Data Analyst

Sellick Partnership
Wigan
3 weeks ago
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Data Analyst

Salary: £65,000 - £75,000

Location: Wigan (Hybrid - 2 days home / 3 days office; flexible for candidates further afield)

Sellick Partnership are proud to be partnered with a well-established industrial business who have a strong heritage in manufacturing. My client is now investing heavily in professionalising its data capability and they are looking for a Data Analyst to join the team. This is a greenfield opportunity to help design and build the foundations of a modern data platform that directly supports board-level decision making.

This is a newly created role designed to turn data into clear, actionable insight for the business. You'll work on top of the data platform being built, focusing on reporting, analysis, and decision support for senior stakeholders. The technology stack is Microsoft-led, with an Azure environment, Azure Data Lake, Power BI, and Power Apps, alongside a bespoke operational system and an ERP that need to be integrated.

Key Responsibilities

Build and maintain Power BI dashboards and reports for:

Board and PE stakeholders
Finance and operations teamsAnalyse large volumes of transactional data to identify:

Trends
Risks
Opportunities for efficiencyWork with the Data Engineer to define:

Data models
Reporting requirements
Business definitions and metrics
Support the development of self-service reporting
Use Power Apps where appropriate to support data capture or operational workflows
Help the business understand and trust its data through clear storytelling and insight
Respond to ad-hoc analysis requests from senior stakeholdersSkills & Experience

Strong experience as a Data Analyst in a commercial environment
Advanced skills in Power BI
Solid SQL and data interrogation skills
Experience working with large, high-volume datasets
Comfortable engaging with non-technical stakeholders
Able to work in a fast-moving, practical, industrial business
Sector background not important - attitude and analytical thinking are keyWe will be reviewing CVs on a daily basis and shortlisted candidates will be contacted in due course.

Sellick Partnership is proud to be an inclusive and accessible recruitment business and we support applications from candidates of all backgrounds and circumstances. Please note, our advertisements use years' experience, hourly rates, and salary levels purely as a guide and we assess applications based on the experience and skills evidenced on the CV. For information on how your personal details may be used by Sellick Partnership, please review our data processing notice on our website.

Sellick Partnership is proud to be an inclusive and accessible recruitment business and we support applications from candidates of all backgrounds and circumstances. Please note, our advertisements use years' experience, hourly rates, and salary levels purely as a guide and we assess applications based on the experience and skills evidenced on the CV. For information on how your personal details may be used by Sellick Partnership, please review our data processing notice on our website

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