Data Engineering Manager, Gtm & Marketing

Anthropic Anthropic · AI Frontier · San Francisco, CA · Data Science & Analytics

Manage and scale a data engineering team focused on GTM & Marketing data, transforming commercial data into trusted foundations for decision-making. This role involves hands-on technical leadership, people management, strategic vision setting, and overseeing data pipelines, models, and analytics solutions for CRM, marketing automation, billing, and usage data. The goal is to enable self-serve analytics and support data-driven decisions across GTM and Marketing.

What you'd actually do

  1. Build and scale the GTM & Marketing Data Engineering team, including hiring and mentoring data engineers
  2. Define and execute the strategic roadmap for GTM and Marketing data foundations and analytics capabilities
  3. Oversee the design and implementation of scalable data pipelines, data models, and analytics solutions that transform CRM (Salesforce), marketing automation, billing, usage, and third-party data sources into canonical datasets and data marts
  4. Partner with Data Science, RevOps, Marketing, Finance, and leadership to understand data needs and translate them into technical requirements
  5. Establish and maintain high data integrity standards, SLAs, alerting, and best practices for the team

Skills

Required

  • Experience managing data engineering teams in a high-growth environment
  • Deep expertise in data modeling, ETL pipelines, and data warehouse architecture
  • Strong proficiency in SQL, Python, dbt, and modern data stack tools
  • Experience modeling GTM and Marketing data domains — including Salesforce/CRM, marketing automation platforms (e.g., Marketo, HubSpot), and billing/subscription/usage data
  • Demonstrated experience building and leading high-performing data engineering teams
  • Track record of partnering with cross-functional stakeholders (Sales, Marketing, RevOps, Finance) to deliver pipeline, revenue, attribution, and funnel metrics
  • Ability to balance strategic thinking with hands-on technical leadership
  • Strong communication skills with the ability to translate complex technical concepts for non-technical audiences, including executive stakeholders

Nice to have

  • 8+ years of total experience in data engineering or similar data-focused roles, with 5+ years in a people management capacity
  • Prior experience in a scaling startup or B2B SaaS environment
  • Experience with multi-segment, multi-product B2B sales or commercial analytics, especially with consumption-based revenue models and product-led growth (PLG) motions
  • Experience with attribution modeling and account/lead/opportunity hierarchies
  • Track record of establishing data governance, quality standards, metric definitions, and best practices at scale
  • Experience scaling analytics functions from early stage to maturity in rapidly changing environments
  • Comfort operating in ambiguous, fast-moving environments where you must create structure and drive forward progress

What the JD emphasized

  • partner with Data Science to build innovative data tools using Claude