Manufacturing Data Engineer

Hadley
1 month ago
Applications closed

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Location: Telford
Contract Duration: 12 months
Hourly Rate: £200 - £220 per day (Inside IR35, Umbrella)
Start Date: ASAP
Working Hours: 37.5 hours per week (4 days at 8.25 hours, 1 day at 4 hours)

Flexible/Remote Work: Ideally onsite, though flexible working options may be discussed.

83zero is partnering with a manufacturing client in Telford to find an experienced Manufacturing Data Engineer. This role is essential for modernizing their operations by implementing a new MRP system and integrating Power BI reporting. You will collaborate closely with the integration team on this standalone project, helping transition the company from a manual, spreadsheet-dependent workflow to a more efficient, digital approach.

Key Responsibilities:

Design, develop, and modify software applications for the target system using agile methodologies.

Collect client requirements and enhance workflows through automation.

Create new application code and refine existing code.

Utilize automated testing tools for software testing and maintenance.

Required Experience:

Proven experience in manufacturing environments.

Expertise in Power BI, EAP, QAD, or MRP systems.

Strong understanding of the software development life cycle.

Minimum of 3 years of experience working with systems and software.

Please send your CV to AARON . PERDESI @ 83ZERO . COM to Apply

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