Perception Engineer

Detroit, Michigan
US$110000 - US$130000 per annum

PERCEPTION ENGINEER
ROBOTICS START UP
GREATER DETROIT AREA
$110,000 - $130,000

Are you a Robotics Engineer looking to join a well-established and fast-growing company? Keep reading to learn more about an exciting opportunity in the Greater Detroit area.

THE COMPANY

This Michigan based company has been operating for almost a decade now and they have been making huge advancements for autonomous aerial systems. Their systems serve a unique purpose that has not been done by many other companies in the robotics space. They are partnered with clients around the world and their systems have been proven to make a huge impact.

THE ROLE - Perpception Engineer

In this role, you will be working within a mid-size robotics team focused on navigation and perception

  • You will be developing code in C++ and deploying perception software onto the robotic systems
  • Your main focus will be to expand the perception capabilities of the systems
  • You will be fusing camera and lidar data using point cloud processing
  • You will be working in a collaborative environment to make sure the systems are running efficiently and making sure the customers needs are being met

YOUR SKILLS AND EXPERIENCE

  • MSc with a focus in robotics or other related area
  • 2 - 5 years of industry experience working with autonomous systems
  • Able to work both autonomously and in a collaborative team environment
  • Strong experience with developing C++ code from scratch
  • Background in deploying software onto robotic systems, not just simulation
  • Background in perception and working with lidar and camera data

BENEFITS

As a Perception Engineer, you can expect to earn up to $130,000 (depending on experience) along with competitive benefits.

HOW TO APPLY

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

KEYWORDS:

SLAM, C++, Python, algorithms, perception, localization, autonomous, software developer, robotics, mapping, OpenCV, ROS, computer vision, path planning, simultaneous localization and mapping, LiDAR, kalman filtering, particle filtering, state estimation

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106799/AN0318
Detroit, Michigan
US$110000 - US$130000 per annum
  1. Permanent
  2. Robotics & Autonomy

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