Forward Deployed Engineer, Deepmind

Google Google · Big Tech · Mountain View, CA +3

This role embeds with strategic partners to architect, optimize, and build production-grade GenAI applications, driving joint evaluations and benchmarking to influence model development. It involves guiding partners on advanced implementation techniques like RAG and multimodal integrations, and building feedback loop tooling.

What you'd actually do

  1. Embed with strategic partners, own the technical relationship with top strategic partners, helping them architect, optimize, and build production-grade GenAI applications. Serve as the primary technical escalation path for strategic partners during critical launch windows and production issues.
  2. Drive joint evaluations and benchmarking, build and run systematic evals on partner-specific datasets to deliver high-fidelity performance signals directly to modeling teams.
  3. Optimize GenAI workloads, guide partners on advanced implementation techniques, including prompt engineering, complex Retrieval-Augmented Generation (RAG) architectures, and multimodal integrations.
  4. Author high-visibility case studies, developer blogs, and reference implementations to showcase Gemini's production capabilities.
  5. Build feedback loop tooling, collaborate with product engineering to develop tooling that aggregates and surfaces developer feedback patterns at scale.

Skills

Required

  • software development
  • Python
  • JavaScript/TypeScript
  • software design and architecture
  • Machine Learning systems
  • Large Language Models (LLMs)
  • customer-facing role
  • managing client relationships
  • external stakeholders

Nice to have

  • developer tools
  • APIs
  • SDKs
  • platform integration
  • technical capacity with external customers or partners
  • work independently with minimal oversight across global time zones
  • technical writing and communication skills
  • documentation, tutorials, or engineering case studies

What the JD emphasized

  • production-grade GenAI applications
  • systematic evaluations (evals)
  • high-fidelity technical signals
  • Gemini’s capabilities at scale
  • production issues
  • partner-specific datasets
  • Gemini's production capabilities

Other signals

  • Embedded with strategic partners to architect, optimize, and build production-grade GenAI applications.
  • Drive joint evaluations and benchmarking to deliver high-fidelity performance signals to modeling teams.
  • Optimize GenAI workloads, guide partners on advanced implementation techniques, including prompt engineering, RAG, and multimodal integrations.