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Sr. Developer Advocate, AI Agentic Systems

Job in Bellevue, King County, Washington, 98009, USA
Listing for: Databricks
Full Time position
Listed on 2025-12-05
Job specializations:
  • IT/Tech
    AI Engineer, Machine Learning/ ML Engineer
Job Description & How to Apply Below
Position: Sr. Developer Advocate, Databricks AI Agentic Systems

Sr. Developer Advocate, Databricks AI Agentic Systems

RDQ
426R238

Location: San Francisco, Bellevue, Amsterdam

Role Overview

Are you a recognized technical leader in Generative AI and MLOps, driven to define the future of production AI Agentic Systems? This Senior Developer Advocate role grants strategic ownership over developer adoption and technical discourse surrounding Agent Bricks on the Databricks Data Intelligence Platform.

More About the Dev Rel Team

At Databricks, we are passionate about enabling data and AI teams to solve the world’s most challenging problems. Our mission in Developer Relations (Dev Rel) is to empower data practitioners, data scientists, and the broader developer ecosystem by cultivating vibrant communities, crafting exceptional content, and fostering a truly reciprocal relationship with our users. Our primary goal is to drive awareness and adoption of the Databricks Data Intelligence Platform.

The

Impact You Will Have

You will leverage your technical depth, community-building skills, and market knowledge to drive awareness and adoption, positioning Databricks as the definitive technical leader in enterprise AI governance and Agentic Systems.

  • Strategic Roadmap Ownership:
    Define and execute the global technical advocacy strategy and roadmap for a critical pillar of Databricks AI Agentic Systems (e.g., RAG Architectures, AI Agent Evaluation, or LLM Governance), ensuring alignment with product goals and quantifiable metrics.
  • Evangelism:
    Work with the field AI engineers to design and deploy production-grade reference implementations and create high-impact live demonstrations (demos) that solve real-world enterprise GenAI challenges, showcasing best practices in performance, evaluation, and security. You will evangelize Agent Bricks as the definitive way to “Take your AI to your Data”.
  • Technical Content Scaling:
    Create high-quality, actionable educational resources, including comprehensive courseware, advanced tutorials, technical blog posts, and video content. This content will focus on accelerating the end-to-end AI Agentic workflows and LLMOps lifecycle, including vectorization, prompt engineering, and the use of MLflow, Agent Evaluation, and Agent Feedback for continuous refinement.
  • Product Influence and Advocacy:
    Serve as the primary internal technical advocate for the global AI/ML community, translating complex friction points in the developer experience into actionable engineering specifications and influencing the product direction of Agentic Systems.
  • Community Governance and Growth:
    Speak and build community by expanding and governing the MLOps and LLMOps communities (including MLflow meetups), mentoring new contributors, and enabling data teams to leverage tools for building MLOps/LLMOps infrastructure. You will establish thought leadership by articulating complex concepts, such as AI Guardrails, lineage tracking, and security controls, within RAG applications, ensuring that Agents are built on governed data.
What We Look For
  • Experience and Tenure: 5+ years of total technical experience, including a minimum of 3 years in a dedicated Developer Advocate, Developer Evangelist, Solution Architect, Data Scientist, or AI Field Engineering role.
  • Production Agentic Systems Track Record: A proven history of building, deploying, and operating production-grade AI Agentic Systems. Expertise in designing robust AI system interactions, implementing RAG chains, and developing autonomous agent applications using the Agent Bricks workflow.
  • Deep Technical Proficiency:
    Expert-level knowledge of Python, major machine learning frameworks (e.g., PyTorch, scikit-learn), and modern LLMOps orchestration tools (e.g., Lang Chain, Llama Index, DSPy). Proficient in using MLflow for MLOps; proficiency with Agent Eval and Agent Feedback preferred.
  • Databricks Ecosystem Mastery:
    Comprehensive understanding of the Databricks Intelligence Platform, particularly MLflow and Agent Bricks. Experience with Model Serving (DS/LLM), training models on the platform, and implementing data governance (Unity Catalog) to ensure Agents operate on governed data is essential.
  • Verifiable Portfolio and Community Leadership: A…
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