Practice Customer Engineer Ii, Cloud Ai, Manufacturing and Conglomerate

Google Google · Big Tech · Mumbai, Maharashtra, India

Customer Engineer specializing in AI for manufacturing and conglomerate industries, focusing on accelerating adoption of complex AI workloads, developing prototypes, and providing technical expertise to customers. The role involves integrating AI models with enterprise data using RAG and agent patterns, coding in Python/JS/Go/Java, and providing feedback to product development.

What you'd actually do

  1. Drive the technical solution for complex workloads within Artificial Intelligence (AI) product areas to ensure rapid and successful adoption, primarily supporting the sales 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

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

Nice to have

  • LangGraph
  • Semantic Kernel
  • Google AI Agent Development Kit (ADK)
  • SaaS applications
  • iPaaS
  • business automation solutions
  • Cloud infrastructure
  • Agentic AI
  • cloud networking
  • OpenAPI
  • Model Context Protocol (MCP)
  • distributed tracing
  • logging
  • audit logging

What the JD emphasized

  • AI product areas
  • technical sales teams
  • complex, specialized workloads
  • AI-centered customer issues
  • AI portfolio
  • AI Agent Development Kit (ADK)
  • Agentic AI
  • AI agents
  • AI applications

Other signals

  • customer-facing technical expert
  • accelerating adoption of complex workloads
  • prototyping and demos
  • solving AI-centered customer issues
  • feedback loop to influence product development