Research Associate in Computer Vision for Autonomous Vehicles

Ulster University
Londonderry
1 year ago
Applications closed

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Research Associate in Computer Vision for Autonomous Vehicles

Role:   Research Associate in Computer Vision for Autonomous Vehicles
Department: School of Computing, Engineering and Intelligent Systems
Grade: 6/7 (£31,414 - £39,369 per annum)
Responsible to:  Principal Investigator
Campus: Derry~Londonderry
 
Fixed-Term until 30th September 2025 / Full-Time
 
Job Purpose:
 
The post-holder will conduct high quality research and development activities within the Cognitive Robotics Laboratory, Intelligent Systems Research Centre.
 
Please be advised that due to the minimum salary thresholds imposed by the UKVI, this post will not qualify for university sponsorship under the Skilled Worker visa route. 

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