Forward Deployed Engineer Ii, Genai, Google Cloud

Google Google · Big Tech · Mexico City, CDMX, Mexico

Google Cloud is seeking a Forward Deployed Engineer II to build and deploy agentic AI solutions within customer environments. This role involves coding, debugging, and integrating Google's AI products with customer infrastructure, addressing production blockers, and providing feedback to the product roadmap. The engineer will also build evaluation pipelines and observability frameworks, and instill best practices with customer teams.

What you'd actually do

  1. Serve as a developer for AI applications, transitioning from rapid prototypes to production-grade agentic workflows (e.g., multi-agent systems, model context protocol (MCP) servers) that drive measurable Return on Investment (ROI).
  2. Architect and code the "connective tissue" between Google’s AI products and customers' live infrastructure, including APIs, legacy data silos, and security perimeters as part of an expert team.
  3. Build high-performance evaluation pipelines and observability frameworks to ensure agentic systems meet requirements for accuracy, safety, and latency.
  4. Identify repeatable field patterns and friction points in Google’s AI stack, converting them into reusable modules or formal feature requests for the Engineering teams.
  5. Co-build with customer engineering teams to instill Google-grade development best practices, ensuring long-term project success and high end-user adoption.

Skills

Required

  • Python
  • Keras
  • PyTorch
  • HF Transformers
  • prompt engineering
  • fine-tuning
  • Retrieval-augmented generation (RAG)
  • orchestrating model interactions with external tools
  • architecting solutions on a Cloud Platform
  • deploying solutions on a Cloud Platform
  • managing solutions on a Cloud Platform

Nice to have

  • Master’s degree or PhD in AI, Computer Science, or a related technical field
  • implementing multi-agent systems using frameworks (e.g., LangGraph, CrewAI, or Google’s Agent Development Kit (ADK))
  • patterns like ReAct, self-reflection, and hierarchical delegation
  • LLM-native metrics (e.g., tokens/sec, cost-per-request)
  • optimizing state management
  • granular tracing

What the JD emphasized

  • production-grade agentic workflows
  • agentic systems
  • evaluation pipelines
  • observability frameworks
  • multi-agent systems
  • agent development

Other signals

  • building bespoke agentic solutions
  • addressing blockers to production
  • feedback loop to product roadmap
  • deploying AI systems