Senior Research Engineer

ziprecruiter
London
11 months ago
Applications closed

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Job Description

Is this the next step in your career Find out if you are the right candidate by reading through the complete overview below.Senior Research EngineerLondon, UK (Hybrid, 3+ days onsite per week)IC Resources is seeking a Senior Research Engineer to join our client's team in London. The successful candidate will work on spatial AI solutions, creating 3D models from point-cloud data and overall, contributing to the development and enhancement of cutting-edge 3D mapping technologies.Essential ExperiencePhD in Computer Science or Physics with significant post-doc research after or MSc with 5+ years industry experience creating 3D models for computer vision, imaging, robotic systems.Expert use of 3D imaging data, modelling, and mappingC++ used in production of real-world productsDesirable ExperienceLiDAR, vision sensors, GPS, or IMUs.Solid understanding of SLAM and Spatial AI algorithms and toolsWhat’s On Offer£60-80k DOEStock optionsHybrid workingHow to ApplyIf interested, apply now for immediate consideration, and contact Chris Wyatt, Principal Recruitment Consultant, to discuss further. This is an excellent opportunity for a Senior Research Engineer eager to work on the development and enhancement of cutting-edge 3D mapping technologies.

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