Data Analyst

Morgan Gray
Malvern
5 days ago
Create job alert

A leading manufacturing company are looking for a Data Analyst to join their site in Worcestershire
The Data Analyst will support manufacturing and supply chain operations through hands-on data analysis, reporting, and system support.
This role works closely with Operations, Engineering, Supply Chain, Finance, IT, and Operational Excellence to ensure operational data is accurate, actionable, and aligned with business needs.
This is an excellent opportunity for an early- to mid-career analyst who enjoys working close to operations and technology, including ERP and shop-floor systems.
Key Responsibilities

  • Support operational IT/OT systems, including ERP, MES, and reporting platforms
  • Maintain ERP master data accuracy and support day-to-day system use
  • Build and maintain dashboards and KPI reports for operations teams
  • Perform routine and ad-hoc data analysis to support decision-making
  • Troubleshoot data and system issues in partnership with IT
  • Support continuous improvement and Industry 4.0 initiatives, including data integration and visualization
    What We’re Looking For
  • Bachelor’s degree in Business, Analytics, IT, Engineering, or related field
  • experience in a Data Analyst, Business Analyst, or similar role
  • Exposure to ERP systems (Dynamics 365 preferred) and operational environments
  • Strong Excel skills; experience with Power BI, Tableau, or SQL preferred
  • Analytical, detail-oriented, and comfortable managing multiple priorities
    This is an excellent opportunity with support, training and progression available. Benefits include

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