Deep Learning Engineer - Medical Imaging

New York
US$160000 - US$180000 per annum

DEEP LEARNING ENGINEER - MEDICAL IMAGING
MEDICAL START-UP

NEW YORK CITY
$160,000 - $180,000

Do you possess a strong background in medical imaging and computer vision? Do you want to save lives? If so, you could be joining a fast-growing company that is passionate about improving issues in healthcare and is dedicated to helping patients across the country.

THE COMPANY

This growing start up in NYC has dedicated itself to using AI to change the healthcare world. They are well established and are working on many projects within medical imaging that you would get to be a part of. This company has a collaborative work environment that allows teams to work together and solve problems.

THE ROLE - SENIOR DEEP LEARNING ENGINEER

As a Senior Deep Learning Engineer, you will be working with a group of diverse individuals that are passionate about the company's mission. You will be exposed to different projects within medical imaging, which will require you to use your skills you have acquired through your previous experiences.

  • As a Senior Deep Learning Engineer, you will be using your skillset in both C++ and Python to develop algorithms for image processing and analysis
  • You will be working with deep learning frameworks, such as Keras and TensorFlow
  • You will be developing, training and deploying deep learning and computer vision models
  • You will be analyzing images and making improvements

YOUR SKILLS AND EXPERIENCE

  • PhD in computer science with an emphasis in computer vision or medical imaging
  • At least 2-5 or more years of post-doctoral industry experience in medical imaging
  • Proven experience working with C++, Python, Keras, TensorFlow and PyTorch
  • Prior experience with developing algorithms and working with different types of medical imaging modalities

BENEFITS

You can expect to earn up to $180,000 (depending on experience) as a Senior Deep Learning Engineer.

You can also expect to receive:

  • A generous benefits package
  • An inclusive and healthy work environment

HOW TO APPLY

Please register your interest by sending your resume to Annie Nasharr 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

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75552/AN0406
New York
US$160000 - US$180000 per annum
  1. Permanent
  2. Medical Imaging

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