Senior / Staff Software Engineer, Data Platform
Role Overview
This is a senior-level role as the first dedicated data engineer at AirOps, responsible for owning end-to-end data pipelines and serving layers that power customer-facing analytics. Day-to-day, you will design and maintain systems delivering data to customers across AI platforms, build enrichment pipelines, and collaborate with product and engineering to ship data-powered features, with a focus on accuracy, freshness, and latency. The hire will have foundational impact by setting the data engineering foundation and driving data-intensive product growth.
Perks & Benefits
The role is fully remote with flexible time off and a competitive benefits package tailored to your location, including equity in a fast-growing startup and parental leave. You'll join a fun-loving, nerdy team that values extreme ownership, quality, curiosity, and respectful candor, offering career growth as the first data hire working closely with the VP of Engineering. While time zone expectations aren't specified, typical remote tech roles may require some overlap with team hours in San Francisco, New York, or Montevideo.
Full Job Description
About AirOps
AirOps is the first end-to-end content engineering platform built for the AI era. In a world where discovery is shifting from traditional search to AI-driven platforms, we help brands get found—and stay found. We are currently in a phase of hyper-growth, having 5x’d our revenue in the last year by helping marketing teams at Ramp, Chime, Carta, and Rippling turn content quality into a durable competitive advantage.
Our platform equips marketers to navigate the new discovery landscape, prioritize high-impact opportunities, and create accurate, on-brand content that earns citations from AI and trust from humans. Backed by Greylock, Unusual Ventures, Wing VC, and Founder Collective, we are building the intelligent systems that will empower the next generation of marketing leaders. AirOps is headquartered in San Francisco, New York and Montevideo.
Why this role, why now
These are some of of the most important technical hires we’ll make this year. AirOps customers rely on us to understand exactly how they show up across AI search — and that data has to be fast, accurate, and trusted.
We’ve outgrown “data engineering as a side quest.” These are foundational Data Platform hires at AirOps. You’ll own the layer end-to-end: pipelines, serving, and the guarantees that make customer-facing analytics feel rock solid. If you want true ownership over a data product surface that external users depend on — and the latitude to build it the right way — you’ll be excited about this role.
What you'll do
The data pipelines that power customer-facing analytics: you define what done means, you ship it, and you stand behind it
The serving layer that delivers citation rates, share of voice, and mention trends to customers across ChatGPT, Perplexity, Gemini, and beyond — with strong guarantees on accuracy, freshness, and latency
Enrichment pipelines that shape raw data into the derived entities the product depends on — you go beyond the ask when you see a better path
Direct collaboration with product and engineering to ship data-powered features: you move fluidly between a product spec and a query plan without losing momentum
The data engineering foundation itself: you build for what the team will need, not just what is asked of you today
Who you are
5+ years of hands-on engineering experience with clear evidence of owning a data-powered product surface that external users interact with — not an internal dashboard, not a BI report
Strong Python and SQL with hands-on experience in ClickHouse, Redshift, or similar OLAP systems at product scale
You know the difference between a query that works and one that holds up under real customer load
The range to hold your own in a technical architecture discussion and ship the thing the same week
Ownership mentality: scope does not constrain you, outcomes do
Nice to have
Experience at a company where data is the product: Propel, Tinybird, Hex, Amplitude, Mixpanel, or similar
Familiarity with the AWS-native stack: Glue, S3, Redshift
Experience integrating LLMs into data pipelines for enrichment, classification, or tagging
Our Guiding Principles
Extreme Ownership
Quality
Curiosity and Play
Make Our Customers Heroes
Respectful Candor
Benefits
Equity in a fast-growing startup
Competitive benefits package tailored to your location
Flexible time off policy
Parental Leave
A fun-loving and (just a bit) nerdy team that loves to move fast!
Similar jobs
Found 6 similar jobs