Lead AI Engineer

Philadelphia, Pennsylvania
US$170000 - US$190000 per annum

LEAD AI ENGINEER - MEDICAL IMAGING
MEDICAL START-UP
PHILADELPHIA, PA
$170,000 - $190,000

If you have a strong background in software development, deep learning and computer vision in the healthcare domain - keep reading!

THE COMPANY
This well-established Philly based start-up is gaining attention around the country. They have recently secured a large amount of funding and are experiencing huge growth. They are developing AI software that is changing the healthcare space. They are partnering with thousands of doctors around the US to save lives.

THE ROLE - LEAD AI ENGINEER
As a Lead AI Engineer, you will be reporting directly into the VP of the R&D Team

  • You will be leading a small that is working on the development of software for medical imaging applications
  • You will be responsible for the software and system architecture and bringing code from research into development
  • You will be involved in the entire software and product development life cycle
  • You will be responsible for delegating tasks to your team and coming up with solutions for problems that the team encounters
  • You will be working cross-functionally with other teams to ensure success throughout the development lifecycle

YOUR SKILLS AND EXPERIENCE

  • MSc or PhD in computer science, statistics or engineering
  • At least 5 or more years of industry experience in software engineering
  • At least 1-3 years in a leadership role where you have been responsible for managing a team
  • Proven experience working with Python, TensorFlow and PyTorch
  • Strong background in software development for AI applications and being a part of the full product lifecycle
  • Prior experience working with the FDA and in the medical imaging domain is a huge bonus

BENEFITS
You can expect to earn up to $190,000 (depending on experience) as a Lead Software Engineer.
You can also expect to receive:

  • A competitive 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, software development, AWS

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102061/AN0301
Philadelphia, Pennsylvania
US$170000 - US$190000 per annum
  1. Permanent
  2. Medical Imaging

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