Applied AI Engineer, Audio, Xr

Google Google · Big Tech · Mountain View, CA +1

Applied AI Engineer focused on audio for Pixel devices, bridging research and deployment in hardware-constrained environments. Responsibilities include applied research in audio ML, developing novel models for speech recognition, TTS, and enhancement, and architecting ML systems for on-device and cloud platforms.

What you'd actually do

  1. Innovate in audio machine learning through fundamental and applied research, advancing the state-of-the-art in audio playback, capture, generation, and editing.
  2. Research and develop novel ML models for speech recognition, text-to-speech generation, and real-time speech enhancement.
  3. Design and implement generative models specifically for signal restoration, enhancement, and ambient audio understanding.
  4. Architect, prototype, and scale robust ML architectures for deployment across on-device (mobile/wearable) and cloud platforms.
  5. Collaborate with cross-functional hardware and software teams to translate research breakthroughs into integrated product features.

Skills

Required

  • Machine Learning
  • Electrical Engineering
  • Computer Engineering
  • Computer Science
  • Physics
  • Audio/DSP

Nice to have

  • Master's degree or PhD
  • generative AI
  • speech research
  • first-author publications
  • optimizing algorithms
  • real-time ML based voice processing algorithms
  • embedded systems
  • mobile platforms
  • technical leadership

What the JD emphasized

  • hardware-constrained environments
  • real-time
  • low latency

Other signals

  • research-driven innovation
  • strong engineering principles
  • bridge the gap between fundamental AI research and deployment
  • hardware-constrained environments
  • impactful features for phones, wearables, and future devices