Customer Engineer, AI Infrastructure Modernization, Google Cloud

Google Google · Big Tech · Sydney NSW, Australia +1

Customer Engineer focused on AI infrastructure modernization, helping customers deploy and optimize Google Cloud's AI accelerators (TPUs/GPUs) for training and inference. This role involves deep technical expertise in cloud-native architectures, networking, and AI/ML frameworks, acting as a trusted advisor to enterprise clients.

What you'd actually do

  1. Become a trusted advisor to customers, helping them understand and incorporate AI accelerators into their overall cloud and IT strategy by designing training and inferencing platforms.
  2. Demonstrate how Google Cloud is differentiated, highlighting the power of accelerators by working with customers on POCs, demonstrating features, optimizing model performance, profiling, and bench marking.
  3. Design and implement multi-host AI training and inferencing solutions on Google Cloud TPUs, focusing on scalability and performance tuning.
  4. Conduct performance profiling and optimization of customer models and data pipelines for the TPU architecture, identifying and resolving issues.
  5. Advise customers on best practices for integrating their MLOps workflows with the Google Cloud AI Platform ecosystem for TPU utilization.

Skills

Required

  • cloud native architectures
  • modern cloud infrastructure
  • networking
  • customer-facing roles
  • deep learning frameworks
  • TensorFlow
  • PyTorch
  • JAX

Nice to have

  • IT infrastructure consultant
  • enterprise architect
  • data center investment strategies
  • AI Infrastructure systems
  • DPU
  • RoCE
  • InfiniBand
  • cooling
  • AI compute clusters
  • AI infrastructure market

What the JD emphasized

  • AI Infrastructure
  • TPU/GPU
  • training and inferencing
  • performance tuning
  • profiling
  • bench marking

Other signals

  • customer-facing technical expert
  • AI infrastructure
  • TPU/GPU
  • training and inference