Data Engineer

Manufacturing Recruitment LTD
Diss
2 days ago
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Someone who can build Power Apps, learn ERP (Enterprise Resource Planning), help move toward a data platform using Power BI/Fabric.


(Not expecting this person to be able to be proficient in all areas but be willing to learn)


  • Power Query / ETL thinking
  • Familiarity with Microsoft Fabric or modern data platforms

Application Development (Internal + Customer-Facing)
  • Power Apps (Canvas + Dataverse) or equivalent low-code platform
  • REST API integration mindset
  • UX pragmatism (build usable tools, not demos)
  • Understanding of security boundaries (internal vs customer apps)

Epicor / ERP + Manufacturing Systems Capability (ideally)
  • Epicor (or similar ERP) experience very useful: BAQs, REST/API, upgrades
  • SQL literacy (views, joins, performance awareness)
  • Understanding of manufacturing concepts: BOMs, routings, work centres
  • Ability to extract ERP data cleanly for reporting & forecasting

Support IT Operations
  • Confident owning escalations (not just passing tickets)
  • Fortinet Firewall

Cyber Security & Risk Reduction
  • Baseline cyber frameworks (Cyber Essentials / ISO-aware)
  • Microsoft security stack familiarity (Defender, MFA, Conditional Access)
  • Patch management & vulnerability awareness
  • Can implement controls

Process, Documentation & Knowledge Capture
  • Comfortable documenting systems and processes


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