Data Engineer

Leeds
4 months ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Do you have experience of moving data from legacy systems to new IT systems?

Have you worekd with D365 F&O previously?

This could be the role for you!

An exciting opportunity has arisen for a Date Engineer to join a well-established manufacturing business based. This role is crucial in supporting the successful implementation and ongoing operation of Microsoft Dynamics 365 Finance & Operations (D365 F&O).

You'll be responsible for migrating manufacturing-related data from a legacy system, ensuring its accuracy, and maintaining high-quality master data to support production processes.

Data Engineer - Key Responsibilities - D365, F&O, ERP, IT, Manufacturing

Cleanse and migrate manufacturing data (BOMs, routes, resources, inventory) into D365
Validate data accuracy and support test uploads
Maintain and update master data post-implementation
Monitor data integrity and provide first-line support to production staff
Document data processes and identify process improvements
Data Engineer - Requirements - D365, F&O, ERP, IT, Manufacturing

ERP experience (D365 F&O preferred)
Strong Excel skills (Power Query a plus)
Familiarity with manufacturing data and processes
Excellent analytical and problem-solving skills
Data Engineer, D365, F&O, ERP, IT, Manufacturing

If this role could appeal please do apply now

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