Software Engineer, Data

Airtable Airtable · Enterprise · San Francisco, CA · Data

Software Engineer, Data role focused on building and owning data pipelines for an AI-native platform. This includes instrumenting and measuring AI product usage, building event pipelines for AI agents, and developing AI-powered data discovery tooling like vector search. The role also involves using AI tools daily for pipeline development and debugging, and contributing to the data infrastructure that supports AI product analytics and business operations.

What you'd actually do

  1. Work across our engineering organization and stakeholders from data science, growth, sales, marketing, and product to understand the data needs of the business and produce pipelines, data marts, and other solutions that enable better decision-making.
  2. Design and maintain our foundational business tables in order to simplify analysis and reporting across the entire company, including AI usage metrics surfaced to executive stakeholders.
  3. Use AI tools as a daily part of how you work, from LLM-assisted pipeline development and debugging to exploring our catalog through AI-powered discovery, and bring a curiosity for where this tooling is heading next.
  4. Build and enforce a pattern language across our data stack, ensuring pipelines and tables are consistent, accurate, and well-understood.
  5. Continue to improve the performance and reliability of our data warehouse.

Skills

Required

  • 3-8+ years of professional experience designing, creating, and maintaining scalable data pipelines
  • Proficient in at least one programming language (preferably Python)
  • Highly effective with SQL
  • Understand how to write and tune complex queries
  • Curiosity about AI reshaping data engineering
  • Experimentation with AI tools
  • Clarity and precision in written communication
  • Experience conveying findings through graphs and visualizations

Nice to have

  • Experience in Airflow

What the JD emphasized

  • AI-native platform
  • AI agents
  • AI product usage
  • AI-powered data discovery tooling
  • vector search
  • AI tools as a daily part of how you work
  • LLM-assisted pipeline development
  • AI context guidance
  • instrumenting and measuring AI product usage
  • building event pipelines for AI agents
  • surfacing AI-native adoption metrics
  • developing AI-powered data discovery tooling
  • vector search over our catalog metadata
  • report AI usage metrics across the company
  • writing Claude skills
  • incorporating AI context guidance
  • AI is reshaping data engineering
  • actively experimenting
  • using LLMs to write and debug pipelines faster
  • model agent behavior as data
  • exploring what smarter data discovery could look like

Other signals

  • AI-native platform
  • AI agents
  • AI product usage
  • AI-powered data discovery tooling
  • vector search
  • AI tools as a daily part of how you work
  • LLM-assisted pipeline development
  • AI context guidance