Computer Vision Engineer

Saffron Walden
4 weeks ago
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Location: Saffron Walden
Type: Permanent
Hours: Monday-Friday, 9.00am - 5.30pm
Salary: Competitive
Job Reference: 35946

Our client, based in Saffron Walden, is seeking a Computer Vision Engineer to design and develop advanced optical systems for monitoring, tracking and vision-based applications. This is a hands-on role covering the full product lifecycle-from concept and design to prototyping, testing and release. You will work on cutting-edge optical and machine-vision systems in a collaborative environment with significant influence over advanced system design.

Responsibilities:

  • Design and validate optical systems (lenses, mirrors, sensors)
  • Develop solutions for high-performance vision applications (visible, near-infrared, far-infrared)
  • Use ray-tracing and simulation tools to optimize optical components
  • Select materials and components for optical assemblies
  • Collaborate with multidisciplinary teams to ensure technical accuracy
  • Support prototype builds, integration and testing
  • Manage workstreams and deliver milestones independently

    Requirements:

  • Degree in Optical Engineering, Physics, Electrical Engineering or similar (Master's/PhD preferred)
  • Experience in optical system design, electro-optics or machine vision
  • Strong understanding of optical principles (ray tracing, lens design)
  • Familiarity with optical testing and validation methods
  • Knowledge of opto-mechanics, electronics and image processing
  • Proficiency with ray-tracing software (e.g., OpticStudio)
  • Strong organizational skills and ability to work onsite

    Desirable
  • Experience with laser systems and infrared optics
  • Background in multidisciplinary or agile engineering environments

    Please contact us as soon as possible for more details or apply below

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