Supply Chain Lead - EMEA

Geomiq
London
2 weeks ago
Applications closed

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We are Manufacturing the Future!
Geomiq is a London based start up, dedicated to revolutionising conventional manufacturing by offering engineers worldwide instant access to reliable production methods through our digital platform. As the UK’s leading Digital Manufacturing Marketplace, we provide an innovative B2B MaaS (Manufacturing as a Service) solution powered by AI, seamlessly connecting buyers and sellers to enhance efficiency and productivity.
Join us in our mission to work with leading brands like BMW, Rolls Royce, Brompton Bikes, and Google, and even support space missions.
Check out our website!

Our platform:
Geomiq offers a revolutionary platform that completely digitizes the quoting and ordering process for custom manufactured parts, ensuring the highest operational and quality outcomes. Our primary customers include Design Engineers, Mechanical Engineers, and Procurement teams, all of whom are involved in creating the world’s most innovative products.
See our platform in action!


About the Role

We are looking for a talented and motivatedSupply Chain Leadto join our growing team here at Geomiq in order to pioneer the future of online manufacturing. This role is an excellent opportunity for ananalytical and strategic thinker who is passionate about leveraging data to drive efficiency and innovation in supply chain operationswhile leading and developing a high-performing team. This exciting role will also have you traveling to our global hubs, including Europe, India, and China, where you will be helping to build and design our production processes and ensure best practices are upheld throughout. You will be reporting directly to the CEO and will play a key role in driving strategic decision-making through data-driven insights and strong leadership.

Key Responsibilities:

  • Planning and implementing the overall supply chain strategy
  • Lead the supplier growth strategy to ensure the acquisition scale meets buyer demand
  • Manage supplier performance through regular audits and data-driven insights
  • Helping to build out new hubs in India and Chin
  • Lead, develop, and coach a team across demand & supply planning, logistics, and logistics processes
  • Develop the quality assurance process
  • Leverage data analytics to optimize supply chain efficiency, reduce costs, and enhance forecasting accuracy
  • Implement and manage key performance indicators (KPIs) to assess operational success and identify areas for improvement
  • Utilize predictive analytics and market trends to drive supply chain decision-making
  • Foster a culture of continuous improvement by utilizing data insights to refine and innovate supply chain processes


Experience required:

  • Bachelor's degree in Mathematics, Computer Science, Economics, Statistics, or a related quantitative field
  • 5+ years’ experiencein a Supply Chain Manager role or similar
  • Strong leadership skillswith experience managing and mentoring a team in person and remotely
  • Provenexperience using data analyticsto drive supply chain decisions and process improvements
  • Proficiency in supply chain management software, data visualization tools, and forecasting models
  • Proficiency in SQLfor data analysis, reporting, and optimizing supply chain processes
  • Working with suppliersin APAC and EMEA region
  • Experience building, designing, and measuring complex production processes
  • Experience working in a fast-paced environment
  • Self-starterand problem solver
  • Excellent communication skills


Desired Experience:

  • Familiarity with customCNC and Injection Moulding
  • Experience working at a digital marketplace
  • Experience with AI-driven supply chain optimization tools
  • Knowledge of advanced analytics techniques such as machine learning for demand forecasting

Benefits:

  • Competitive Salary: We offer pay that reflects your skills and the value you bring.
  • 23 Days Annual Leave: Recharge with 23 days off, plus bank holidays.
  • Birthday Off: Take an extra day to celebrate your birthday.
  • Christmas Shutdown: Relax over the holidays with additional company-wide time off.
  • Team Events: Connect with colleagues through monthly team-building activities.
  • Career Growth: Benefit from our focus on internal promotions and development
  • Expanding Perks: Look forward to more benefits as we grow

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