Robotics Testing Engineer

Harnham
Bristol
1 year ago
Applications closed

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Robotics Test Engineer

Salary: £40,000

Bristol - 5 days a week in office


Join a dynamic team of Product Engineers testing a variety of autonomous vehicles, drones and other Engineering based Products.


ROLE AND RESPONSIBILITIES


  • Working closely within a small team, to test and optimise software on hardware products
  • Projects across SLAM, LiDAR, Computer Vision, Sensors and Cameras
  • Driving the latest innovative testing in a high quality indoor/outdoor testing lab
  • Working closely with a Senior and Lead in the team


SKILLS AND EXPERIENCE


Required

  • MSc or PhD in Engineering based subject
  • Proficiency in ROS, ROS2, and then experience across SLAM, Computer Vision, LiDAR, Sensors
  • Background in Robotics or Hardware Testing is beneficial
  • Excellent communication skills with proven experience working with stakeholders
  • Experience in a lab testing environment is greatly beneficial


This role can offer sponsorship to strong candidates


Apply below!

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