Software Engineer, Phd, Early Career, Ai/machine Learning, 2026 Start

Google Google · Big Tech · Sunnyvale, CA +3

Google is seeking PhD graduates for Software Engineer roles focused on AI/Machine Learning. The role involves developing and deploying advanced ML systems across the full stack, from hardware acceleration to production APIs, and transforming research expertise into scalable products. The position requires experience in ML/AI and coding, with a preference for large-scale distributed environments and deep learning frameworks.

What you'd actually do

  1. Collaborate or lead on team projects to carry out design, analysis, and development of advanced ML systems across the stack using your research expertise.
  2. Support building end-to-end ML Systems that involves working across the full stack, from low-level hardware acceleration and compiler optimizations to high-level model architecture and production APIs, transforming your research expertise into robust, scalable products.
  3. Optimize complex system performance by analyzing and fixing performance bottlenecks, memory inefficiencies, and errors in production systems to meet stringent customer goals.
  4. Elevate engineering excellence by writing well-tested code, conducting code reviews and fostering a culture of quality by advocating best engineering practices.

Skills

Required

  • PhD degree in Computer Science, ML/AI, or a related field
  • Experience coding in one of the following programming languages including but not limited to: Python, C, C++, Java, JavaScript or Golang.
  • Experience in Machine Learning or Artificial Intelligence.

Nice to have

  • Research experience in designing, developing, or applying ML/AI systems or applications in a large-scale distributed environment.
  • Experience in designing, training, or refining complex ML/AI models.
  • Experience in deep learning frameworks like TensorFlow/Jax/Pytorch.
  • Experience in building a stack for an AI-powered application, including data ingestion and processing pipelines, building APIs, and connecting the model to a user-facing interface.
  • Familiarity with model architectures (CNNs, NLP Transformers, Diffusion/Vision Transformers).

What the JD emphasized

  • PhD degree in Computer Science, ML/AI, or a related field
  • Experience in Machine Learning or Artificial Intelligence
  • Research experience in designing, developing, or applying ML/AI systems or applications in a large-scale distributed environment.
  • Experience in designing, training, or refining complex ML/AI models.

Other signals

  • PhD graduate
  • AI and Machine Learning solutions
  • ML and AI technology
  • ML software and custom ML hardware infrastructure