AI Outcome Customer Engineer, Cloud AI Tech Gtm

Google Google · Big Tech · Zürich, Switzerland +1

Customer Engineer role focused on driving adoption and value realization of Google Cloud AI solutions for enterprise customers. This involves technical deployment planning, architectural validation, debugging, and acting as a bridge between customers and product/engineering teams to ensure successful production deployments of AI models and agents.

What you'd actually do

  1. Develop and orchestrate a structured, end-to-end technical deployment plan across customer and partner teams. Lead upfront architectural validation to ensure integration readiness before execution begins.
  2. Dive into complex technical workflows to diagnose, debug, and resolve implementation roadblocks. Act as a technical bridge to core product and support engineering teams to eliminate systemic friction and accelerate customer delivery.
  3. Drive and track the progress of the initial and ongoing ramp of Cloud AI license agreements, guiding enterprise workloads from agreement to active consumption as rapidly and securely as possible.
  4. Partner collaboratively with Account an CEs team during the technical evaluation phase of key deals to ensure proposed Cloud AI solutions are architected for viable, scalable long-term adoption.
  5. Drive sustainable, secure Cloud AI product usage to help customers continuously realize quantifiable business outcomes and secure future contract renewals.

Skills

Required

  • cloud-native architecture
  • technical delivery
  • customer engineering
  • enterprise architecture
  • customer-facing role
  • enterprise support role
  • technical deployment planning
  • architecture orchestration
  • technical delivery management
  • enterprise integrations (APIs, ECMs, identity)
  • Cloud infrastructure
  • AI/ML model deployments
  • programming languages
  • API integration
  • debugging
  • enterprise systems design
  • leading technical delivery strategies
  • interfacing with product/engineering organizations

Nice to have

  • L300/L400 level technical proficiency
  • AI/ML and Cloud architecture certifications
  • guiding customers through architectural and organizational transformations
  • deploy production-grade AI models or agents in enterprise environments
  • Cloud AI solutions
  • Enterprise Data Management
  • Data Analytics
  • Infrastructure Modernization
  • Security
  • Cloud Networking
  • dive deep into novel technical problems
  • decipher extreme ambiguity
  • diagnose bugs
  • emerge with credible architectural solution
  • interfacing directly with core product and engineering organizations
  • escalate product bugs
  • advocate for feature gaps
  • unblock systemic deployments

What the JD emphasized

  • technical delivery management
  • AI/ML model deployments
  • production-grade AI models or agents

Other signals

  • customer-facing
  • technical deployment plan
  • enterprise customers
  • Cloud AI investments
  • technical leadership
  • technical delivery management
  • Google Cloud AI solutions
  • AI/ML model deployments
  • production-grade AI models or agents