Supply Chain Data Engineer

Jonathan Lee Recruitment Ltd
Gaydon
1 year ago
Applications closed

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Join the Revolution: Supply Chain Data EngineerAre you ready to be at the forefront of digital transformation within the supply chain and logistics domain? A prestigious automotive company, renowned for innovation and excellence, is seeking a Senior Supply Chain Data Engineer to drive efficiency, reduce costs, and significantly contribute to the company's competitive advantage and profitable growth. This is your chance to be part of a team that values creativity, embraces technology-enabled change, and is committed to delivering outstanding results.What You Will Do:Lead the digital transformation within Operations & Logistics, identifying improvement opportunities and scoping projects.Translate business requirements into technical solutions alongside the Digital team.Implement data analytics and digital tools to drive business improvements and create value.Engage in day-to-day project management, including running workshops with stakeholders.Support the development and growth of analytics skills within the Operations teams.Contribute to the successful and timely delivery of key strategic projects.What You Will Bring:Proven experience in Supply Chain / Logistics, with hands-on experience in data analysis.Proficiency in SQL, Python, and Data Visualisation Platforms (e.g., Tableau, Power BI).Experience in Database Interrogation.Knowledge of Supply Chain Systems (ERP/MRP) and familiarity with automotive or similar supply chains.Strong analytical skills, capable of conducting detailed business process analysis.A degree in a STEM subject or equivalent experience, with a passion for driving change.Company Contribution & Industry Information:This role is pivotal in revolutionising how the company plans and manages its end-to-end Supply Chain, directly impacting the delivery of parts and finished vehicles. By joining the team, you will be contributing to a legacy of innovation within the automotive industry, collaborating with senior stakeholders across multiple functions to deliver rapid change and efficiencies.Location:The position is based at Gaydon, with a hybrid working model allowing for flexibility, requiring a minimum of 2/3 days per week in the office.Ready to Drive Your Career Forward?If you are a motivated Senior Supply Chain Data Engineer with a passion for supply chain innovation and digital transformation, we want to hear from you. This is a unique opportunity to make a significant impact within a leading automotive company. Apply now to take the first step towards a rewarding and challenging career.Your CV will be forwarded to Jonathan Lee Recruitment, a leading engineering and manufacturing recruitment consultancy established in 1978. The services advertised by Jonathan Lee Recruitment are those of an Employment Agency.In order for your CV to be processed effectively, please ensure your name, email address, phone number and location (post code OR town OR county, as a minimum) are included

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