Staff Machine Learning Engineer - Computer Vision (m/f/d)
cariad
Mönsheim
vor 5 Tg.

WHAT YOU WILL DO

  • Research and develop cutting edge machine learning algorithms for perception problems, such as semantic segmentation and object detection to be used in the online-perception system
  • Work on the deployment of these models to a fleet of vehicles
  • Guide the development of CV algorithms from prototype to production - including training on large scale datasets and deploying on a real time robotic platform
  • Work with a growing team of machine learning experts and software developers to develop novel solutions to challenging problems
  • WHO YOU ARE

  • Master's degree in computer science, robotics, or a similar quantitative area with exposure to computer vision techniques
  • 5+ years of professional experience coding in Python and C++
  • 5+ years of experience as a tech lead, significantly contributing in overarching system design and SW architecture matters
  • 3+ years of experience working with deep learning frameworks such as PyTorch and Tensorflow
  • Good knowledge of classical CV algorithms and deep learning for object detection, tracking, semantic segmentation and active learning
  • Experience with perception sensors including LIDAR, radar, and cameras
  • Strong oral and written communication skills in English
  • Experience with GPU programming is a plus
  • Expertise in probabilistic modeling, Bayesian methods, model compression, imitation learning, planning under uncertainty and / or low-level inference is a plus
  • NICE TO KNOW

  • 40-hour weeks
  • Remote / mobile work
  • Company pension plan
  • Annual professional development
  • YOUR RECRUITING CONTACT

    Marietta Holweger

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