Technical Project Lead

EVONA
West Yorkshire
10 months ago
Applications closed

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Technical Project Manager

Midlands, Yorkshire

Full time: Remote

£45,000 - £65,000


Our client is an exciting start-up who are redefining the future of supply chain technology by leveraging AI and computer vision to bring unprecedented transparency and efficiency to global industries. Their cutting-edge solutions empower businesses to trace products end-to-end, ensuring safety, quality, and ethical standards while driving operational excellence.


With a focus on transforming how companies operate, this fast-growing organization is backed by a diverse, talented team passionate about making a tangible difference. Headquartered in a vibrant tech hub and serving clients worldwide, they offer an exciting, high-energy environment where creativity, innovation, and impact thrive.


If you're ready to join a mission-driven team at the forefront of technological transformation, this is your opportunity to make your mark and shape the future of supply chains.


The Role



We are seeking a Technical Project Manager/Lead with hands-on expertise in hardware and software deployments. You'll manage implementations of AI-driven solutions at food production facilities across the UK and Europe, working with customers, technical teams, and external partners to ensure seamless delivery. This role involves both remote work and regular visits to customer sites for 2-3 days at a time, with occasional planned weekend work (no more than twice a month).


  • Key ResponsibilitiesGather scope and requirements from customer sites.
  • Collaborate with customers to collect samples for AI model training.
  • Develop and manage detailed project plans.
  • Oversee relationships with local suppliers and installation partners.
  • Act as the customer’s voice to internal teams, ensuring alignment.
  • Coordinate diverse stakeholders, including software teams, contractors, and on-site IT staff.
  • Lead User Acceptance Testing (UAT) and ensure smooth workflow integration.
  • Maintain accountability for project reporting, priority setting, and high-quality deliverables.


  • Key Performance IndicatorsDeliver AI platform rollouts on time, within budget, and with high customer satisfaction.
  • Customize solutions for each facility, balancing customer needs with technical capabilities.


  • About YouSolid technical background with experience in hardware and software implementations.
  • Strong communication skills; able to work effectively with plant staff and management.
  • Exceptionally organized with a commitment to high-quality delivery.
  • Collaborative, proactive, and customer-focused.
  • Excited by innovation and technology, with a natural curiosity and problem-solving mindset.
  • Comfortable working in meat processing environments and managing diverse stakeholders.
  • Passionate about contributing to a mission-driven team transforming the global food industry.


  • Package DetailsLocation: Midlands/Yorkshire with travel across Europe
  • Salary: Competitive base salary, bonus structure, and benefits
  • Flexible work-from-home setup with travel to customer sites

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