Data Analyst

Talent Media
Glasgow
2 months ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst (Manufacturing / Engineering) Location: Glasgow
Contract: Full-time, Permanent
Hours: 40 hours per week, Monday to Friday

About the Role Talent Media is proud to be working in partnership with a leading high-precision manufacturing business operating across multiple UK and European sites. The organisation is investing heavily in data, systems, and digital capability to support smarter, data-driven decision-making across engineering and manufacturing operations.
They are now seeking a commercially minded Data Analyst to join their team in Glasgow, playing a key role in transforming operational and MRP data into actionable business insight.
Job Overview As Data Analyst, you will focus on extracting, analysing, and transforming manufacturing and MRP data into meaningful insights and intuitive Power BI reports. You will work closely with stakeholders across Operations, Supply Chain, Engineering, Finance, and Manufacturing to improve performance visibility, identify trends, and drive continuous improvement.
This is a highly influential role for someone who enjoys turning complex data into real business value.
Key Duties & Responsibilities Data Analysis & Insight Analyse MRP and operational data relating to materials, production, inventory, dema...

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