Manager, Data Engineering

Airtable Airtable · Enterprise · Austin, TX +2 · Data

Manager for the GTM & Business Data Engineering team at Airtable, focusing on building and maintaining data pipelines and models that power go-to-market and business operations. The role involves leading a team, setting technical standards, ensuring reliability, and shaping how the team uses AI tools (like Claude skills and Hyperagent) to improve efficiency and deliver insights on AI feature adoption and business performance.

What you'd actually do

  1. Lead a team of data engineers. Coach and develop your reports, maintain team health, and stay close enough to the work to set the technical bar.
  2. Own team standards and operations. Set and enforce the pattern language that keeps pipelines, tables, and naming consistent at scale. Lead on call, incident response, monitoring, and the code review standards that keep the team shipping.
  3. Drive reliability as a system property. Anchor delivery around measurable reliability goals including SLAs for landing time and accuracy.
  4. Make data a product. Sharpen our data models for AI billings and usage so executive stakeholders can clearly see how our AI features are landing in the business. Treat the team's outputs as products with quality, observability, and trust built in from the start.
  5. Shape how the team uses AI. Set the bar for how Claude Code, Hyperagent, and emerging tooling are used on the team. Establish the patterns that make AI a high-trust collaborator on data work, with a team-level goal of roughly 30% time savings on pipeline development, debugging, and on call toil.

Skills

Required

  • 2+ years managing a data, analytics, or platform engineering team
  • 10+ years building scalable data pipelines
  • Proficient in Python
  • Highly effective with SQL, including tuning complex queries
  • Experience with SLAs, observability, and incident reduction
  • Experience treating data as a product
  • Experience establishing patterns for AI tooling adoption on a team

Nice to have

  • Experience with Airflow

What the JD emphasized

  • AI-native builder, not a spectator
  • AI tools
  • AI as a high-trust collaborator
  • concrete AI tooling you've shipped on a data team: Claude skills, LLM-assisted pipeline work, automated PR fixes, AI-powered discovery

Other signals

  • AI-native platform
  • AI agents
  • AI usage metrics
  • AI tools