87 remote roles added today376 active tech employers🇺🇸 🇨🇦 🇲🇽 Tri-border network749 metros covered12 database updates this hourTN visa filter live87 remote roles added today376 active tech employers🇺🇸 🇨🇦 🇲🇽 Tri-border network749 metros covered12 database updates this hourTN visa filter live
Jobs/Austin/AI Analytics Engineer (AI & Analytics Platform)
Austin, TX

AI Analytics Engineer (AI & Analytics Platform)

Airtable is the no-code app platform that empowers people closest to the work to accelerate their most critical business processes. More than 500,000 organizations, including 80% of the Fortune 100, rely on Airtable to transform how work gets done.

Company
Airtable
Compensation
Not listed
Schedule
Full-Time
Role overview

What this role actually needs.

Airtable is the no-code app platform that empowers people closest to the work to accelerate their most critical business processes. More than 500,000 organizations, including 80% of the Fortune 100, rely on Airtable to transform how work gets done. Responsibilities: - Build and maintain context infrastructure: Translate institutional business knowledge into structured formats — business glossaries, DBT model enrichment, semantic layer definitions in Omni Analytics — so that AI tools can answer questions accurately, not just confidently. - Design and run evaluation frameworks: Develop predefined test cases, accuracy benchmarks, and validation workflows that measure whether AI-generated insights are trustworthy. Own the feedback loop between eval results and context improvements. - Build and orchestrate AI agent systems: Help design, build, and iterate on the agent architectures that power our analytics tools — including prompt pipelines, tool orchestration, query routing logic, and guardrails that determine when AI should answer autonomously vs. escalate for human validation. - Experiment and evaluate: Test prompt configurations, agent behaviors, and model outputs across different use cases — using eval results and accuracy metrics to drive continuous improvement. - Develop internal AI tooling and workflows: Build tools and automations that improve DS&A's own efficiency — identifying opportunities where AI can accelerate the team's work and executing on them. - Build automated insight generation systems: Design and develop AI-powered systems that proactively surface patterns, anomalies, and meaningful changes in business data — delivering the right insights to the right people without waiting to be asked. Think less "answer questions" and more "anticipate them." Requirements: - Technically curious and AI-forward: You're energized by LLMs, prompt engineering, and the evolving landscape of AI tooling. You've experimented with tools like Claude, ChatGPT, or Cursor — and you're eager to build systems around them, not just use them. - A builder at heart: You have a bias toward making things. Whether it's a prototype, a pipeline, or a quick script to test an idea — you default to building rather than theorizing. You may not have deep software engineering experience, but you're comfortable picking up new technical skills and exploring unfamiliar domains, especially with AI tooling accelerating what's possible. - Analytically grounded: You're SQL-proficient and have experience with modern data tools (dbt, Databricks, Snowflake, or similar). You have strong intuition for when data "looks wrong" and can validate query logic and troubleshoot issues independently. - Not married to legacy tooling: You're more interested in what's emerging than what's established. You evaluate tools based on what they enable, not how long they've been around — and you're quick to adopt new approaches when they're better. - A clear communicator and strong writer: Context engineering is fundamentally a writing discipline. You can translate complex business logic into precise, structured documentation that both humans and LLMs can interpret. - Business-minded: You're genuinely curious about how the business works — how we sell, how customers use the product, what metrics matter and why. You ask "what decision does this support?" not just "is the SQL correct?" Company context: Airtable builds collaborative software, AI-enhanced workflows, and enterprise platform tooling for modern operations teams.

Responsibilities

Day-to-day expectations

Airtable lists these responsibilities for the AI Analytics Engineer (AI & Analytics Platform) role.

  • Build and maintain context infrastructure: Translate institutional business knowledge into structured formats — business glossaries, DBT model enrichment, semantic layer definitions in Omni Analytics — so that AI tools can answer questions accurately, not just confidently.
  • Design and run evaluation frameworks: Develop predefined test cases, accuracy benchmarks, and validation workflows that measure whether AI-generated insights are trustworthy. Own the feedback loop between eval results and context improvements.
  • Build and orchestrate AI agent systems: Help design, build, and iterate on the agent architectures that power our analytics tools — including prompt pipelines, tool orchestration, query routing logic, and guardrails that determine when AI should answer autonomously vs. escalate for human validation.
  • Experiment and evaluate: Test prompt configurations, agent behaviors, and model outputs across different use cases — using eval results and accuracy metrics to drive continuous improvement.
  • Develop internal AI tooling and workflows: Build tools and automations that improve DS&A's own efficiency — identifying opportunities where AI can accelerate the team's work and executing on them.
  • Build automated insight generation systems: Design and develop AI-powered systems that proactively surface patterns, anomalies, and meaningful changes in business data — delivering the right insights to the right people without waiting to be asked. Think less "answer questions" and more "anticipate them."
Requirements

What a strong candidate brings

These requirements are extracted from the source listing and normalized for UpJobz readers.

  • Technically curious and AI-forward: You're energized by LLMs, prompt engineering, and the evolving landscape of AI tooling. You've experimented with tools like Claude, ChatGPT, or Cursor — and you're eager to build systems around them, not just use them.
  • A builder at heart: You have a bias toward making things. Whether it's a prototype, a pipeline, or a quick script to test an idea — you default to building rather than theorizing. You may not have deep software engineering experience, but you're comfortable picking up new technical skills and exploring unfamiliar domains, especially with AI tooling accelerating what's possible.
  • Analytically grounded: You're SQL-proficient and have experience with modern data tools (dbt, Databricks, Snowflake, or similar). You have strong intuition for when data "looks wrong" and can validate query logic and troubleshoot issues independently.
  • Not married to legacy tooling: You're more interested in what's emerging than what's established. You evaluate tools based on what they enable, not how long they've been around — and you're quick to adopt new approaches when they're better.
  • A clear communicator and strong writer: Context engineering is fundamentally a writing discipline. You can translate complex business logic into precise, structured documentation that both humans and LLMs can interpret.
  • Business-minded: You're genuinely curious about how the business works — how we sell, how customers use the product, what metrics matter and why. You ask "what decision does this support?" not just "is the SQL correct?"
UpJobz market context

Why this listing is more than a copied job post.

AI Analytics Engineer (AI & Analytics Platform) is framed against UpJobz source checks, country scope, compensation visibility, and work-authorization signals so candidates can make a faster go/no-go decision.

United States tech market

United States roles on UpJobz are filtered for high-tech relevance, source freshness, and actionable employer detail before they are allowed into SEO surfaces.

Compensation read

The employer source does not expose a reliable salary range, so candidates should ask for compensation early instead of waiting until late-stage interviews.

Work authorization read

Current extracted signal: United States residents. UpJobz treats this as a search signal, not legal advice, and links visa-sensitive roles back to the relevant visa hub where possible.

Location read

On-site roles in Austin should be compared against commute, local salary bands, and nearby employer demand.

Browse similar jobs

Subscriber playbook

Turn this listing into an application plan.

This is the first pass at the premium UpJobz layer: a fast brief that helps serious applicants move with more clarity.

Next moves

  • Tailor your resume around ai and llm instead of sending a generic application.
  • Use the first two bullets of your application to connect your background directly to ai analytics engineer (ai & analytics platform) is a high-signal on-site role in austin, and it is most realistic for united states residents.
  • Open the role quickly if it fits and bookmark three similar jobs before you leave the page.

Interview themes

Data and AnalyticsOn-siteaillmmachine-learningpython

Watchouts

  • Compensation is hidden, so get range clarity in the first recruiter conversation.
  • Use united states residents as part of your positioning so the recruiter does not have to infer it.
  • Show concrete examples of succeeding in on-site environments.
Role signals

Keywords to match against your background

Use these terms to decide whether your resume, portfolio, and recent projects line up with the role.

aillmmachine-learningpythonawsdatadbtplatformapiproductsoftware
Next step

Apply through the employer source

Open the source listing from job-boards.greenhouse.io, confirm the role is still active, then apply on the employer or ATS page.

Open employer application

Source: job-boards.greenhouse.io · Source ID: 8434287002 · Confidence: 91/100 · Last checked: May 7, 2026

How UpJobz verifies job sourcesContinue browsing tech jobs