Machine Learning Engineer (l4/l5) - Emerging Game Technologies

Netflix Netflix · Big Tech · Los Gatos, CA +2 · Data & Insights

Machine Learning Engineer focused on MLOps, deployment, and performance optimization for AI-driven game concepts, bridging research and production for cloud and edge environments.

What you'd actually do

  1. Build and maintain MLOps pipelines: Develop robust CI/CD for ML, model registries, and automated deployment workflows to support rapid iteration.
  2. Optimize for performance: Profile and benchmark models across cloud GPUs and edge devices (e.g., Nsight, PyTorch Profiler) to identify bottlenecks and implement hardware acceleration.
  3. Scale deployment: Design and implement model deployment strategies for both Cloud and Edge environments, ensuring efficient, low-latency execution in game runtimes.
  4. Enhance model efficiency: Apply precision tuning and quantization techniques to meet latency, cost, and memory constraints without significant quality loss.
  5. Collaborate on integration: Work with game engineers to integrate ML models into game engine pipelines and APIs.

Skills

Required

  • MLOps
  • CI/CD for ML
  • model registries
  • automated deployment
  • model deployment
  • performance optimization
  • hardware acceleration
  • cloud GPUs
  • edge devices
  • low-latency execution
  • precision tuning
  • quantization
  • CUDA
  • Nsight
  • PyTorch Profiler
  • MLIR
  • LLVM
  • PyTorch
  • TensorFlow
  • JAX
  • software engineering
  • integration

Nice to have

  • edge deployment (iOS/Android)
  • model optimization
  • hardware-aware inference
  • game development
  • game engines (Unity, Unreal)
  • model distillation
  • model pruning
  • model compression

What the JD emphasized

  • MLOps & Deployment Expertise
  • Hardware Profiling & Acceleration
  • Compiler & Runtime Knowledge
  • Framework Proficiency
  • Strong Software Engineering

Other signals

  • MLOps pipelines
  • model deployment
  • performance optimization
  • hardware acceleration
  • edge devices