Quality Engineer

JR United Kingdom
West Midlands
2 weeks ago
Applications closed

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Born in racing, our expectations are high. All members of our team are multifaceted and highly driven to exceed targets. This is a unique opportunity to test yourself while leading a new area of expertise at Spark.

Your missions :

  • Support the creation and execution of quality policies aligned with Spark’s vision and strategy
  • Support the creation and development of the quality department and laboratory
  • Lead the design, implementation, and continuous improvement of lean processes and reporting tools related to :
  • Customer Issues Management
  • Supplier Qualification and Evaluation
  • Internal Quality (Project, Engineering, Purchasing, Workshop, etc.)
  • Lead problem solving activities for all production issues including root cause analysis, containment/corrective actions identification and implementation
  • Define, implement and perform internal quality inspections as required
  • Lead internal and external audits as required
  • Guarantee the certification and renewal of all quality standards (ISO 9001, etc.)

Your profile :

  • Bachelor’s or Master’s degree in a relevant engineering area (Mechanical Engineering, Electrical Engineering, Manufacturing Engineering or similar)
  • Good knowledge and understanding of quality methods and tools used in the Automotive industry
  • Experience in Motorsport or High Performance Vehicles
  • Excellent attention to detail and problem solving skills
  • Self‐starter with the ability to work with high level instruction and seek out data and support from other teams
  • Team‐oriented with excellent communication skills and the ability to challenge others
  • Fluent English and willingness to learn French

While knowledge and experience are important, motivation, attitude and drive to grow are key for Spark.

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