Customer Engineer Iii, AI Infrastructure, Google Cloud

Google Google · Big Tech · Sunnyvale, CA +3

Customer Engineer role focused on AI infrastructure and accelerators within Google Cloud, helping enterprise clients integrate and optimize AI/ML models. Responsibilities include advising on cloud strategy, demonstrating product differentiation, building reusable assets, and influencing product roadmaps. Requires strong cloud infrastructure experience and experience building/operationalizing ML models, with preferred experience in training large models and performance profiling.

What you'd actually do

  1. Be a trusted advisor to our customers, helping them understand and incorporate AI accelerators into their overall cloud strategy by recommending migration paths, integration strategies, and application architecture that incorporate Google Cloud AI optimized infrastructure.
  2. Demonstrate how Google Cloud is differentiated, highlighting the power of accelerators by working with customers on proof of concepts, demonstrating features, optimizing model performance, profiling, and benchmarking.
  3. Build repeatable assets to enable other customers and internal teams.
  4. Influence Google Cloud strategy at the intersection of infrastructure and AI/ML by advocating for enterprise customer requirements.
  5. Travel to customer sites and events as needed.

Skills

Required

  • cloud infrastructure
  • building and operationalizing machine learning models
  • delivering technical presentations
  • leading discovery and planning sessions

Nice to have

  • training and fine tuning large models
  • performance profiling tools
  • designing/architecting large-scale infrastructure farms for specialist AI use cases
  • containerization
  • Kubernetes
  • Kubernetes on Google Cloud
  • machine learning benchmarks
  • engaging with C-level or executive business leaders

What the JD emphasized

  • AI accelerators
  • optimizing model performance
  • large-scale infrastructure
  • training and fine tuning large models

Other signals

  • customer-facing role
  • AI infrastructure
  • AI accelerators
  • model performance optimization
  • large-scale infrastructure