Senior Machine Learning Scientist

New York
US$170000 - US$190000 per annum

SENIOR MACHINE LEARNING ENGINEER
MEDICAL IMAGING

REMOTE
$170,000 - $190,000

Do you have experience in medical imaging and image reconstruction? This could be an opportunity for you!

THE COMPANY

This emerging telehealth company is developing cutting-edge artificial intelligence techniques in the medical imaging industry. This well-known company is improving the physical health and the mental health of their customers, all from the comfort of their homes. This company is investing heavily in artificial intelligence and is looking to add a Senior Machine Learning Engineer to their fast-growing team.

THE ROLE - SENIOR MACHINE LEARNING ENGINEER

As a Senior Machine Learning Engineer, you will be working in a brand-new team that is growing rapidly in 2021. Some of the responsibilities will include:

  • You will be developing deep learning and machine learning algorithms in their artificial intelligence team for the medical imaging industry.
  • You will serve as a technical lead for machine learning and deep learning products
  • You will be developing models from scratch and delivering those models into production.
  • You will be working on image processing, image analysis and 3D reconstruction for images and videos.
  • You will be working Python, Pytorch, and TensorFlow

YOUR SKILLS AND EXPERIENCE

  • MSc or PhD in biomedical engineering, computer vision, or related field
  • Experience developing machine learning and deep learning models from scratch.
  • Strong commercial experience working on medical images and 3D reconstruction.
  • Proven experience with delivering AI algorithms and putting them into production.
  • Strong technical skillset in Python,TensorFlow and PyTorch

BENEFITS
You can expect to earn up to $190,000 (depending on experience) as a Senior Machine Learning Engineer.

HOW TO APPLY

Please register your interest by sending your resume to Mitchell Resor via the apply link on this page.

KEYWORDS

Computer vision, healthcare, deep learning, medical imaging, object detection, image classification, computer science, artificial intelligence, C++, Python, Keras, TensorFlow, PyTorch, image analysis, research, MRI, CT , 3D Reconstruction, image processing

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16653-MR2
New York
US$170000 - US$190000 per annum
  1. Permanent
  2. Medical Imaging

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