Google
AI

Machine Learning Engineer, Computer Vision

Google · Mountain View, CA · $141k - $202k

Actively hiring Posted 4 months ago

Responsibilities

  • Develop solutions in artificial intelligence and machine learning applications for smart manufacturing.
  • Implement and adapt deep learning architecture and the goal to land the factory test stations with a focus on automatic optical inspection solutions for production lines from new product introduction (NPI) to mass production (MP) stage.
  • Understand and be able to debug the computer vision or image processing algorithms to investigate camera or assembly failures.
  • Design and develop components of scalable Machine Learning infrastructure for manufacturing.
  • Maintain and improve existing AI platform to support advanced automatic optical inspection.

Basic qualifications

  • Bachelor's degree in Electrical Engineering, Computer Science, relevant technical field or equivalent practical experience.
  • 2 years of experience with software development in one or more programming languages (e.g., Java, Python, C/C++).
  • Experience with image processing, computer vision, and machine learning algorithms.
  • Experience with machine learning computer vision algorithm development and tools (e.g., tensorflow, flume, machine learning libraries), artificial intelligence, deep learning.
  • Experience with ML infrastructure (e.g., model deployment, model evaluation, data processing, debugging).

Preferred qualifications

  • Master or PhD degree in Engineering with a focus on Computer Vision or Camera, or equivalent practical experience.
  • Experience in building and testing consumer electronic products for manufacturing including design for manufacturing (DFM) and design for test (DFT).
  • Experience in building machine learning powered automatic-optical-inspection (AOI) systems including hardware, software, and algorithms.
  • Experience with Machine Learning infrastructure (e.g., model deployment, model evaluation, model serving, data processing, debugging, fine tuning).
  • Experience with generative AI and LLM related skills (e.g. Gemini AI suite, Vertex AI).
  • Ability to travel domestically or internationally up to 20% of the time as needed.

Tags & focus areas

Used for matching and alerts on DevFound
Fulltime Ai Machine Learning Deep Learning Computer Vision Tensorflow
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