Customer Engineer Ai, Financial Services, Google Cloud

Google Google · Big Tech · Melbourne VIC, Australia +1

Customer Engineer specializing in Gemini Enterprise, partnering with Technical Sales to integrate generative AI into enterprise environments. The role involves architecting secure, data-connected solutions beyond chat interfaces, engaging with customers to understand requirements, and presenting solutions on Google Cloud. It requires blending business expertise, market knowledge, and technical engagement to demonstrate the value of Google Cloud's AI portfolio.

What you'd actually do

  1. Drive the technical win for workloads within Gemini enterprise to ensure adoption, support the business cycle from technical evaluation through customer ramp. Recommend integration strategies, enterprise architectures, platforms, and application infrastructure required to implement a complete solution on Google Cloud.
  2. Combine business strategies with development and prototyping to provide functional, customer-tailored solutions that secure buy-in from customer domain experts.
  3. Provide technical consultation to customers on enterprise AI integration patterns, act as a technical advisor and build customer relationships.
  4. Work with Google Cloud products to demonstrate and prototype integrations in customer and partner environments. 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 needed, acting as a public advocate for Google Cloud.

Skills

Required

  • cloud-native architecture
  • application development and integration
  • coding in Python, JavaScript or TypeScript, Go, or Java
  • architecting solutions that integrate AI models using agents with enterprise data sources using patterns like Retrieval-Augmented Generation (RAG), Text-to-SQL, and semantic search
  • search systems including retrieval, ranking, and search quality tuning
  • presenting to technical stakeholders and executive leaders

Nice to have

  • developing agents using frameworks such as langgraph, semantic kernel, or Google AI Agent Development Kit (ADK)
  • iPaaS, API Gateways, or Enterprise Service Buses (ESBs) in a cloud environment
  • functional evaluation metrics used to assess model quality and agent quality
  • observability constructs including distributed tracing, logging, and audit logging for AI applications
  • application integration governance and security, including short-lived credential management
  • integration patterns using OpenAPI and Model Context Protocol (MCP) to connect AI agents with business systems and API Gateways

What the JD emphasized

  • architecting secure, and data-connected solutions
  • enterprise AI integration patterns
  • architecting solutions that integrate AI models using agents with enterprise data sources using patterns like Retrieval-Augmented Generation (RAG), Text-to-SQL, and semantic search
  • Experience with search systems including retrieval, ranking, and search quality tuning

Other signals

  • integrating generative AI into enterprise environments
  • architecting secure, and data-connected solutions
  • customer-tailored solutions
  • enterprise AI integration patterns