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Computer Vision Scientist - GANs

Computer Vision Scientist - GANs

  • Location

    London, England

  • Sector:

    Machine Learning & AI

  • Job type:

    Permanent

  • Salary:

    £100000 - £110000 per annum + company benefits, flexible working

  • Contact:

    Anna Heneghan

  • Email:

    aheneghan@understandingrecruitment.co.uk

  • Job ref:

    BBBH9771_1631505621

  • Published:

    3 months ago

  • Expiry date:

    2021-09-20

  • Consultant:

    #

Computer Vision Scientist - GANs

We are currently looking for Computer Vision Scientists at various experience levels to join an organisation with bases in London and New York, who are using complex AI Research to create vision technology that will have a huge, positive impact on those across the globe.

The team are currently winning prestigious awards and have recently been in the press for their influence and disruption to Computer Vision Tech.

This Computer Vision Scientist will be part of a team of industry experts in Computer Vision, Deep Learning and Machine Learning Ops. You will be part of a Research Lab environment, where you will also see impact and progress on the products you are building.

This Scientist will have a hands-on opportunity and be able to leverage any previous research experience to create real products in some of the highest growth industry sectors worldwide. You will need to an individual who enjoys collaborating on Research based problems with huge complexity, and have experience in either industry/academia with Computer Vision or Deep Learning.

Interested? Computer Vision Scientist - GANs

Key Words; Computer Vision Scientist - GANs; Vision, Deep Learning, Deep Neural Networks, NIPS, ICML, CVPR, ACML, Publications, Journals, Conferences, Machine Learning, DNNs, CNNS, Robotics, ROS, Automation, PhD, Post Doctoral, Research, Researcher, Scientist, Computer Science, Electrical Engineering, Machine Vision, Reinforcement Learning, GANs, Generative Models