Staff Datacloud Blackbelt Engineer, Data and AI

Google Google · Big Tech · Sunnyvale, CA +2

Staff Blackbelt Engineer focused on building, deploying, and optimizing sophisticated Data and AI agents and solutions for enterprise customers using Google's AI technologies. The role involves architecting solutions, optimizing performance, and codifying reusable assets for broader adoption, bridging platform primitives with customer needs.

What you'd actually do

  1. Act as the lead technical architect for incubation projects, while working to stitch Google’s Data and AI primitives (e.g., Vertex AI, BigQuery, Gemini) into high-value solutions like agentic workflows and new solutions.
  2. Own the resolution of ambiguous hurdles that prevent adoption and debug integration issues, optimize inference latency, and architect security layers to turn "demos" into production-ready assets.
  3. Drive the "codify" phase by transforming bespoke solutions into reusable assets, author "golden path" code repositories and reference architectures to enable the broader ecosystem to scale your work.
  4. Provide direction and mentorship to the squad’s builder engineers, while establishing coding standards, review architectural designs, and ensure the team delivers high-quality, secure software.
  5. Partner with customer Chief Technology Officers (CTOs) and chief data officers to validate technical feasibility and align our proposed architectures with their existing enterprise stacks.

Skills

Required

  • 7 years of experience in software engineering, solution architecture, or technical consulting
  • 2 years of experience with generative AI techniques (e.g., LLMs, multimodal, large vision models) or with generative AI-related concepts (e.g., language modeling, computer vision)
  • Experience writing production-level code in one or more programming languages

Nice to have

  • 10 years of experience in software engineering, solution architecture, or technical consulting
  • 6 years of experience designing and deploying cloud-native distributed systems, data pipelines, or AI/ML workflows in an enterprise environment
  • 3 years of experience with SQL and modern data warehousing concepts
  • 1 year of experience in prompt developing, model evaluation, and the creative application of AI

What the JD emphasized

  • optimize inference latency
  • production-ready assets
  • reusable assets
  • scale your work
  • enterprise environment

Other signals

  • building and deploying AI agents
  • optimizing inference latency
  • transforming bespoke solutions into reusable assets
  • partnering with enterprise customers