Supply Chain Data Analyst

Brighouse
2 weeks ago
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Supply Chain Data Analyst required for an leading precision engineering company, serving industries such as Nuclear, Oil & Gas, Food & Beverage and Chemical Processing with critical components from multiple global locations including 4 UK sites.

This opportunity is based in Huddersfield, meaning the successful Supply Chain Data Analyst will be able to commute from surrounding areas.

Key Responsibilities of the Supply Chain Data Analyst will include;

Use advanced data analytic techniques to identify trends, cost saving and supply chain optimisation.
Analyse spend data across various business units to make strategic sourcing decisions
Monitor and report on cost saving initiatives ensuring alignment with business objectives
Work in collaboration with supply chain and finance teams to ensure data insights are shared and actioned
Develop thorough KPI's, using them to provide metrics and reports on performanceFor the role of Supply Chain Data Analyst we are keen to receive applications from individuals who have;

Experience as Supply Chain Data Analyst or similar within an Engineering or Manufacturing environment
Strong analytical and problem solving skills
Experience using data analytics tools such as Excel, SQL and visualisation software
Excellent communication and presentation skillsSalary & Benefits;

Extremely competitive salary
Up to 25% Annual bonus
26 Days annual leave + Bank holidays
Up to 8% employer contributions
Mon - Thur 8am - 4.30pm
Fri - 8am - 1pm
Enhanced company sick pay
Optical vouchers, employee assistance, Discounts, cash back and offersTo apply for the Supply Chain Data Analyst position, please click "Apply Now" and attach an updated copy of your CV. Alternatively, please contact Alex Feather at E3 Recruitment for more information

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