Forward Deployed Engineer, Applied Ai, Google Cloud

Google Google · Big Tech · London, United Kingdom +1

This role focuses on transforming conversational AI prototypes into production-ready agentic systems for enterprise customers on Google Cloud. It involves end-to-end engineering, including architecting and building agentic workflows, evaluation pipelines, and observability frameworks, while ensuring integration with customer infrastructure and adherence to best practices.

What you'd actually do

  1. Serve as the lead developer for complex Conversational AI and CX 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.
  2. Architect and code conversational flows that are not just functional, but optimized for the "connective tissue" between Google’s Conversational AI products and customers’ live infrastructure, including APIs, legacy data silos, and security perimeters.
  3. Build high-performance evaluation (Eval) pipelines and observability frameworks to optimize complex agentic workloads, focusing on reasoning loops, tool selection, and reducing latency while maintaining production-grade security and networking.
  4. Identify repeatable field patterns and technical "friction points" in Google’s AAI stack, converting them into reusable modules or product feature requests for 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 or similar coding languages
  • architecting AI systems on cloud platforms (e.g., Google Cloud Platform (GCP))
  • deploying resources using Terraform or similar tools
  • building full-stack applications that interact with enterprise IT infrastructures
  • developing external customer projects

Nice to have

  • implementing multi-agent systems using frameworks like ReAct and self-reflection
  • debugging Agent logic and optimizing tool selection
  • connecting agents to enterprise knowledge bases
  • optimizing Retrieval-augmented generation (RAG) chunking
  • troubleshooting live, high-traffic systems during critical windows

What the JD emphasized

  • production-grade agentic workflows
  • production-grade security
  • live, high-traffic systems

Other signals

  • end-to-end engineering life-cycle
  • production-ready solutions
  • customer-facing AI initiatives