Staff Product Manager, Agentic AI Applications

Databricks Databricks · Data AI · Mountain View, CA · Integration, Data, Engineering and Applications

Staff Product Manager for Databricks' Agentic AI Applications Platform, focusing on strategy, roadmap, and execution of a platform that enables internal teams to build production-grade agentic applications. Responsibilities include defining the agent runtime, MCP connectors, intelligence layer, evaluation framework, developer experience, and governance, aiming to reduce time-to-production from months to weeks.

What you'd actually do

  1. Own the Agentic Platform strategy and roadmap.
  2. Define and drive the agent and runtime.
  3. Build the MCP connector ecosystem.
  4. Establish the intelligence layer.
  5. Ship the evaluation and quality framework.

Skills

Required

  • 8+ years of product management experience
  • at least 3 years on internal platform, infrastructure, or developer-experience products
  • Deep experience building platforms that other teams build on
  • Demonstrated experience with AI/ML platforms, agent frameworks, LLM-powered applications, or agentic systems
  • Strong technical foundation
  • Experience defining and shipping developer experiences: SDKs, CLIs, templates, documentation, and self service workflows
  • Proven ability to lead cross-functional initiatives across 4+ teams without direct authority
  • Strong written communication strategy documents, PRDs, and executive briefs
  • Comfort with ambiguity

Nice to have

  • Experience with Databricks, Lakehouse architecture, Unity Catalog, MLflow, or Delta Lake
  • Familiarity with LangGraph, LangChain, or similar agent orchestration frameworks
  • Familiarity with MCP (Model Context Protocol), A2A (Agent-to-Agent), or AG-UI protocols
  • Experience building AI evaluation frameworks LLM-as-judge, red-teaming, or automated quality scoring
  • Experience with design systems, component libraries, or frontend platform work
  • Background in enterprise SaaS platform consolidation or migration

What the JD emphasized

  • production grade agentic applications
  • agent runtime
  • evaluation framework
  • developer experience
  • production grade quality, security, and reliability
  • multi step orchestration
  • governed tool invocation
  • evaluation pipeline
  • quality and safety thresholds
  • self-service by construction
  • developer ergonomics
  • agent frameworks
  • agent runtime
  • RAG
  • evaluation is the hardest part

Other signals

  • Agentic Enterprise applications Platform
  • managed agent runtime
  • evaluation framework
  • developer experience
  • governance