AI Customer Engineer, Conglomerates, Google Cloud

Google Google · Big Tech · Gurugram, Haryana, India +1

Customer Engineer specializing in AI for Google Cloud, focused on driving adoption of AI solutions (including agents, RAG, semantic search) for enterprise clients. This role involves technical sales support, developing prototypes and demos, and providing feedback to product teams. Requires experience with cloud-native architecture, AI model integration, and coding.

What you'd actually do

  1. Drive the technical solution for complex workloads within AI product areas to ensure rapid and successful adoption, primarily supporting the business cycle from technical evaluation through customer ramp.
  2. Combine sales strategies and direct development and prototyping to provide functional, customer-tailored solutions that secure buy-in from customer domain experts.
  3. Provide deep technical consultation to customers, acting as a technical advisor and building lasting customer relationships. Leverage learnings from customer engagements to contribute to reusable solutions and assets with the Go-To-Market team.
  4. Work within Product and Engineering management systems to document, prioritize, and drive resolution of customer feature requests and issues.
  5. Travel to customer sites, conferences, and other related events as required, acting as a public advocate for Google Cloud.

Skills

Required

  • cloud native architecture
  • customer-facing or support role
  • architecting solutions that integrate AI models using agents with enterprise data sources
  • Retrieval-Augmented Generation (RAG)
  • Text-to-SQL
  • semantic search
  • coding in Python, JavaScript or TypeScript, Go, or Java

Nice to have

  • developing agents using frameworks such as LangGraph, Semantic Kernel, or the Google AI Agent Development Kit (ADK)
  • cloud technologies including Software as a Service (SaaS) applications, Integration Platform as a Service (iPaaS), business automation solutions, Cloud infrastructure, Agentic AI, and cloud networking
  • engaging with, or presenting to, technical stakeholders or executive leaders
  • integration patterns using OpenAPI and Model Context Protocol (MCP) to connect AI agents with business systems and Application Programming Interface (API) Gateways
  • observability constructs including distributed tracing, logging, and audit logging for AI applications

What the JD emphasized

  • AI Customer Engineer
  • technical sales teams
  • accelerating technical wins
  • complex, specialized workloads
  • writing code
  • developing prototypes
  • proofs-of-concept
  • demos
  • AI-centered customer issues
  • customer feature requests
  • AI models using agents
  • enterprise data sources
  • Retrieval-Augmented Generation (RAG)
  • Text-to-SQL
  • semantic search
  • coding in Python, JavaScript or TypeScript, Go, or Java
  • developing agents using frameworks
  • Agentic AI

Other signals

  • customer-facing technical expert
  • accelerating adoption of complex, specialized workloads
  • writing code, developing prototypes, proofs-of-concept, and demos
  • solve AI-centered customer issues
  • partnering with technical sales teams
  • leveraging Google's brand credibility
  • world's most advanced AI portfolio, including frontier Gemini models, and the complete Vertex AI platform