Through-Life Data Strategy Engineer

hackajob
Barrow-in-Furness
4 days ago
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A leading engineering firm is seeking an Engineering Consultant (Through Life Data Strategy) to drive strategic data initiatives in Barrow-in-Furness. This role involves leading the development and implementation of data strategies to optimize asset performance and decision-making. Candidates should have a degree in a technical discipline and experience in defence-related engineering. The position offers a competitive salary and flexible working arrangements, with relocation support available.
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