Bespoke Project Engineer

HAYS
Chichester
11 months ago
Applications closed

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Project Engineer

Project EngineerType: Temporary contractor, ongoing through Hays (inside IR35)Location: ChichesterWorking Environment: Hybrid, part office based on site at client offices/ part home basedPay type: Competitive hourly pay rateStart date: ASAP
The OpportunityThe world’s pre-eminent super-luxury automotive brand. Our base is in Goodwood, near Chichester, West Sussex, and comprises our global headquarters and Global Centre of Luxury Manufacturing Excellence.
For our clients, everything they do starts with passion. It turns a profession into a vocation. It drives us to keep reinventing mobility and to bring innovative ideas onto the roads. Enthusiasm for joint projects turns our departments into a strong team where every opinion is valued. It is only when expertise, highly professional processes and enjoyment of work are united that we can shape the future together.
Are you a dynamic and proactive engineer with a passion for continuous improvement and cross-functional collaboration? Join our team as a Bespoke Project Engineer and play a pivotal role in coordinating strategic deployment within a diverse team of engineering and supply chain disciplines.
Key Accountabilities:

Collaborate with senior stakeholders to drive continuous improvement and employee engagement through structured improvement programs and sprint projects, including digitalisation of tools and methods. Coordinate quality management actions, including audits and evaluations, to ensure work meets required standards. Influence and report on cross-functional steering activities, including budget, compliance, facilities, training, and communication event scheduling and facilitation.


What we’re looking forCritical Skills and Experience: Auditing, facilitation, agile/scrum, industry experience (engineering development, manufacturing, production), project facilitation, strategy deployment, big data analysis, cross-functional management and leadership, automotive environment.Preferred Qualifications: Essential degree in a relevant field, audit/QMS training, continuous improvement, agile/scrum.Certifications: ISO9001, TS16949, IATF 16949, VDA6.3. 
What we offerCompetitive hourly rate along with an annual performance-related bonusHybrid working model35 days annual leave (including bank holidays)Access to subsidised restaurantHybrid parking onsite
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