Computer Vision Scientist

New York
US$120000 - US$140000 per annum

COMPUTER VISION SCIENTIST
GLOBAL LEADING BRAND
NEW YORK, NY
$120,000 - $140,000

If you are looking for the next opportunity within computer vision and data science, then keep reading!

THE COMPANY

This global leading company is looking to quickly grow its team. They are experiencing exciting growth in their data science team are looking for people with a computer vision background to join. There is lots of room for innovation and you'd get to work on "first of the kind" type of projects.

THE ROLE

  • You will be developing algorithms for image and video analysis to help determine how their products are being used in trials and by customers
  • You will be developing deep learning models from scratch in Python and bringing them into production
  • You will be doing working on supervised and unsupervised machine learning problems
  • You will be heavily involved in product research
  • You will have the opportunity to develop your own prototypes and be very innovative

SKILLS

  • MSc or PhD in Computer Science
  • Innovative mindset
  • Experience working with large data sets
  • Experience with building recommender systems
  • Experience with developing algorithms for image and video analysis
  • Strong experience with deep learning, machine learning and computer vision
  • Strong programming skills in Python and C++

BENEFITS
As a Computer Vision Scientist, you can receive up to $140,000, depending on experience.


HOW TO APPLY
Please register your interest by sending your resume to Annie Nasharr via the Apply link on this page.

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