Starbucks

director, engineering – Data Governance & AI Experience

Starbucks  •  Seattle, WA (Onsite)  •  4 days ago
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Job Description

Now Brewing – director, engineering (Data Governance & AI Experience)
From the beginning, Starbucks set out to be a different kind of company—one that celebrates connection and innovation. We’re looking for a Director of Engineering to lead the next generation of enterprise data platforms and AI-ready systems, shaping how data is governed, discovered, and activated across the company.
This role will define and scale critical capabilities across data governance, catalog, semantic layer, metadata, and AI data readiness, powering intuitive, self-serve experiences such as natural language to SQL and data exploration.
You’ll lead a multi-layered engineering organization (engineering managers, data engineers, ML engineers, and contractors) to deliver high-impact, scalable platforms that unify data, AI, and user experience.
As a director, engineering, you will…
Governance & Architecture Leadership
  • Own the vision, architecture, and execution of enterprise data platform capabilities, including:
    • Data governance & stewardship frameworks
    • Enterprise data catalog & discovery
    • Semantic layer and context modeling
    • Metadata management & lineage systems
    • AI-ready data pipelines and feature readiness
  • Build a cohesive data & AI experience layer enabling self-serve analytics and intelligent applications
  • Drive development of natural language to SQL and conversational data interfaces
AI & Data Experience Innovation
  • Enable agent-driven and AI-assisted data interactions, accelerating decision-making across partners and leadership
  • Partner with data science teams to operationalize ML-ready datasets, feature stores, and experimentation platforms
  • Modernize data access patterns to support self-service at scale while maintaining governance and trust
Engineering Execution & Scale
  • Lead multiple engineering managers and distributed teams (onshore/offshore, FTE + contract)
  • Drive delivery of scalable, reliable platforms supporting enterprise-wide data usage
  • Establish engineering standards for performance, reliability, observability, and data quality
Governance, Trust & Compliance
  • Operationalize data governance policies, controls, and standards across all platforms
  • Ensure alignment with privacy, security, and regulatory requirements
  • Balance self-service access with enterprise-grade data controls
Cross-Functional Leadership
  • Partner with data science, product, analytics, and business leaders to translate needs into scalable platform capabilities
  • Drive alignment across data platform, BI, and AI initiatives to reduce fragmentation
  • Influence senior leadership with clear articulation of technical strategy and business value
Talent & Organization
  • Build and scale a high-performing org of engineering managers and senior ICs
  • Lead globally distributed teams, including onshore/offshore engineering and vendors
  • Foster a culture of ownership, innovation, and continuous improvement
We’d love to hear from leaders who…
  • Have deep expertise in data platforms, governance, metadata, and semantic modeling
  • Have built self-service data ecosystems with strong adoption across business users
  • Understand both AI/ML lifecycle needs and enterprise data architecture
  • Have delivered platforms enabling natural language querying, data discovery, and analytics democratization
  • Can integrate fragmented data systems into unified, scalable architectures
Basic Qualifications
  • 12+ years in data/platform/software engineering
  • 5+ years leading engineering managers and large distributed teams
  • Proven experience building enterprise-scale data platforms (governance, catalog, semantic layer)
  • Hands-on expertise with modern data stacks (cloud, batch/streaming, metadata systems)
  • Strong executive communication and stakeholder alignment skills
Preferred Qualifications
  • Experience with AI-driven data platforms, LLM-powered interfaces, or agent frameworks
  • Experience delivering natural language to SQL or conversational analytics solutions
  • Deep understanding of data governance, lineage, and compliance frameworks
  • Experience in retail, supply chain, or high-scale operational environments
  • Demonstrated track record of driving enterprise transformation and platform adoption

Starbucks Coffee Company is an equal opportunity employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, age, national origin, disability, or protected veteran status, or any other characteristic protected by law.
Qualified applicants with criminal histories will be considered for employment in a manner consistent with all federal, state and local ordinances.
Starbucks Coffee Company is committed to offering reasonable accommodations to job applicants with disabilities. If you need assistance or an accommodation due to a disability, please contact us at applicantaccommodation@starbucks.com or 1(888) 611-2258.
Starbucks

About Starbucks

At Starbucks, we like to say that we are not in the coffee business serving people, but in the people business serving coffee. Here, our employees - who we call partners – are the heart of the Starbucks experience, and being a partner means aspiring to become part of something bigger: inspiring positive change in the world and growing in your career and in your community. ​

It’s an opportunity to be your personal best. ​ Starbucks is an equal opportunity employer of all qualified individuals, including minorities, veterans and individuals with disabilities.​​

In everything we do, we are dedicated to our mission: To be the premier purveyor of the finest coffee in the world, inspiring and nurturing the human spirit — one person, one cup and one neighborhood at a time.

Explore opportunities, benefits and more at careers.starbucks.com

Industry
Retail & Ecommerce
Company Size
10,000+ employees
Headquarters
Seattle, WA
Year Founded
Unknown
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