Camera Software Engineer, Machine Learning

Google develops advanced technology products and services, focusing on mobile, search, and artificial intelligence.
Machine Learning
Mid-Level Software Engineer
In-Person
5+ years of experience
AI · Consumer

Description For Camera Software Engineer, Machine Learning

Google's Pixel team is at the forefront of mobile innovation, developing cutting-edge camera software systems to enhance the Pixel camera color photography experience. As a Camera Software Engineer specializing in Machine Learning, you'll be part of a team that focuses on improving tuning efficiency and accuracy for Pixel devices.

The role combines advanced algorithm development with practical implementation, directly impacting millions of Pixel phone users worldwide. You'll work on machine learning-based automation systems for auto white balance, color tuning, and quality evaluation, while collaborating with both software and hardware teams to achieve optimal image quality.

The position requires strong expertise in software development, particularly in C++ or Python, along with substantial experience in image processing and machine learning. You'll be working with state-of-the-art technology in computational photography and contributing to Google's mission of creating the world's most helpful mobile experience.

This is an excellent opportunity for someone passionate about the intersection of machine learning and camera technology, offering the chance to work on products that directly impact users' daily lives. You'll be part of Google's prestigious Pixel team, working alongside talented engineers and researchers in developing next-generation mobile camera technology.

The role offers the perfect blend of research and practical implementation, allowing you to see your innovations come to life in real products. If you're excited about pushing the boundaries of what's possible in mobile photography and want to be part of a team that's shaping the future of smartphone cameras, this position at Google offers an unparalleled opportunity to make your mark in this field.

Last updated 3 months ago

Responsibilities For Camera Software Engineer, Machine Learning

  • Develop machine learning based automation system or algorithms for auto white balance, color tuning, and quality evaluation
  • Participate in camera auto white balance, color tuning, and image quality evaluation
  • Collaborate with software teams and hardware teams to improve image quality

Requirements For Camera Software Engineer, Machine Learning

Python
  • Bachelor's degree in Computer Science or Electrical Engineering, or a related field, or equivalent practical experience
  • 5 years of experience with software development in C++ or Python with data structures or algorithms
  • 3 years of industry experience in developing software products
  • 1 year of experience with software design and architecture
  • 3 years of experience in image processing, machine learning or computational photography

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