Lead Computer Vision Engineer

Boston, Massachusetts
US$170000 - US$190000 per annum

LEAD COMPUTER VISION ENGINEER
ADVERTISING/MARKETING
BOSTON, MA
$170,000 - $190,000 + EQUITY + BONUS

Are you a heavily experienced computer vision professional looking for the next perfect opportunity? Keep reading to learn how you can become the next leader of the computer vision team at this growing company based in Boston.

THE COMPANY

This company is making advancements within an area of computer vision that hasn't really been explored before. They work with several clients within advertising to help them make the best decisions for their company and where/how to spend their money. Using computer vision allows the company to collect data and provide insightful information.

THE ROLE - LEAD COMPUTER VISION ENGINEER

As the lead of the Computer Vision team, you will report directly into the CTO. You will help manage the team while also being hands on.

  • You will help develop and maintain computer vision and deep learning models
  • You will be spearheading the newest projects that the team is working on and using your expertise in computer vision and deep learning to lead the team
  • You will be developing image/video processing, object detection, and facial recognition algorithms in both Python and C++
  • You will be actively researching new ideas and approaches in the computer vision, deep learning, and AI space

YOUR SKILLS AND EXPERIENCE

  • Masters or PhD in computer science or related field - with a focus in computer vision
  • At least 2 - 5 years in a leadership role, preferably in a start-up environment
  • Experience with being a part of the full product life cycle process
  • Proven commercial experience with Python, C++, and TensorFlow
  • Strong background in computer vision, machine learning, and deep learning
  • Background in facial recognition and object detection preferred

BENEFITS

As the Lead Computer Vision Engineer, you can expect to earn up to $190,000 (depending on experience).

HOW TO APPLY

Please register your interest by sending your resume to Annie Nasharr via the apply link on this page

KEYWORDS:

Computer vision, advertising, machine learning, python, c++, deep learning, keras, tensorflow, pytorch, algorithms, management, development, research, training, models, facial recognition, object detection, computer science, leadership

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