Lead Computer Vision Engineer - Defense

Washington, District of Columbia
US$150000 - US$170000 per annum

LEAD COMPUTER VISION ENGINEER - DEFENSE
GOVERNMENT FUNDED COMPANY
GREATER WASHINGTON DC AREA
$150,000 - $170,000 + BENEFITS

Are you a well experienced computer vision engineer that has had exposure to a wide variety of projects? Are you a strong leader that has experience guiding others and proposing new ways of thinking? Keep reading to learn more about an exciting new opportunity.

THE COMPANY

This company has been partnering with the government for several decades. They are well established and are looking to bring a strong leader to the team. You would have the opportunity to work with state-of-the-art technology and be a part of several projects with different autonomous systems.

THE ROLE - LEAD COMPUTER VISION ENGINEER

As a Lead Computer Vision Engineer, you will be leading a team of about ten people and working in an exciting environment where you are placed next to the systems you are creating.

  • You will be developing computer vision and AI software in Python and C++
  • You will be guiding your team members on a variety of projects and finding solutions for the US government
  • You will be exposed to several types of systems, which could include - ground vehicles, unmanned aerial systems, underwater systems, etc.
  • You will be heavily involved in R&D projects for the DoD

YOUR SKILLS AND EXPERIENCE

  • Due to the nature of the work, you must be a US Citizen and preferably have an active Security Clearance
  • Masters or PhD in electrical engineering, computer science, or related field
  • 5 or more years of proven experience in a relevant field, preferably defense/government
  • Strong background and experience in robotics, computer vision, artificial intelligence, and machine learning
  • Proven commercial experience using C++, Python and ROS
  • Strong communication skills and leadership experience

BENEFITS

As a Lead Computer Vision Engineer, you can expect to earn up to $170,000 (depending on experience).

You can also expect to receive:

  • Competitive benefits (401K, Health/Life/Disability Insurance)
  • Exposure to advanced technology
  • Fun work environment

HOW TO APPLY

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

KEYWORDS:

Robotics, autonomous, artificial intelligence, machine learning, research, electrical engineer, computer science, autonomous systems, development, computer vision, C++, Python, ROS, SLAM, defense, leadership, UAV, UGV, space

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85792/ASN03166
Washington, District of Columbia
US$150000 - US$170000 per annum
  1. Permanent
  2. Robotics & Autonomy

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