Forward Deployed Engineering Manager, Genai, Google Cloud (korean, English)

Google Google · Big Tech · Singapore

Manager of a GenAI Forward Deployed Engineering (FDE) team leading AI/ML engineers to deploy bespoke agentic solutions within customer environments. Responsibilities include technical mentorship, strategic alignment, and resolving production-level obstacles related to data readiness, integration, and state management. The role involves leading hiring, identifying skill gaps, and collaborating with Product and Engineering to translate field insights into roadmaps.

What you'd actually do

  1. Serve as the technical lead, establishing code standards, architectural best practices, and benchmarks to elevate engineering excellence across the team.
  2. Partner with Sales and Tech Leadership to define requirements for high-value opportunities, deploying specialized experts (e.g., Machine Learning Operations (MLOps), GenMedia, or Agentic systems) to key accounts.
  3. Lead technical hiring for Forward Deployed Engineers (FDE), evaluating AI/ML expertise, systems engineering, and coding skills to build an exceptional engineering team.
  4. Identify skill gaps in emerging tech (e.g., Model Context Protocol (MCP), tool-calling, and foundation models), ensuring the team maintains subject matter expertise in an evolving AI stack.
  5. Collaborate with Product and Engineering to resolve blockers and translate field insights into roadmaps while building internal tools to drive organizational efficiency.

Skills

Required

  • Python
  • developing AI/GenAI solutions utilizing AI tools
  • designing multi-agent workflows
  • Retrieval-Augmented Generation (RAG) systems
  • English
  • Korean

Nice to have

  • Master’s degree or PhD in AI, Computer Science, or a related technical field
  • designing end-to-end secure, observable multi-agent systems using complex design patterns (e.g., ReAct, self-reflection), state management, and tool-calling protocols
  • designing intuitive interfaces for complex AI and agentic systems, prioritizing context engineering, transparency, and explainability to foster user trust
  • architecting AI solutions within complex infrastructures, ensuring data sovereignty and secure governance
  • performing discovery interviews to identify business problems and translate complex hardware/AI constraints for C-suites and technical teams

What the JD emphasized

  • deploying bespoke agentic solutions
  • state-management challenges
  • tool-calling

Other signals

  • leading AI/ML engineers
  • deploying bespoke agentic solutions
  • mentorship
  • resolve production-level obstacles
  • data readiness issues
  • integration complexities
  • state-management challenges