Loop sits in a rare position in post-purchase commerce: we have return and exchange data at a scale and depth that no one else can replicate. That asset only matters if we can make it useful, and that’s where this role lives.
As an Analytics Engineer at Loop, you’ll be the connective tissue between raw data and the analyses, dashboards, and data products that drive real merchant outcomes. Our data stack powers everything from self-serve analytics for our internal teams to the machine learning models that underpin Loop Intelligence, our merchant-facing insights layer. You’ll be building and maintaining the foundation that makes all of that possible.
In this role, you’ll work with meaningful autonomy, own new areas of the dbt project, and collaborate closely with your fellow analytics engineers, data analysts, data engineers, and the broader Data Team. You’ll also be expected to bring your own judgment: when to keep it simple, when something needs to be built the right way, and when to raise a flag.
We’ve laid out the experience we think is important to set you up for success in this role. But we appreciate that different humans will solve problems in different ways, so we don’t expect you to fit exactly in a box of requirements.
At Loop, we’re intentional about the way we work so that we can do our best work. We call this our Blended Working Environment. We work from our HQ in Columbus, OH, or one of our Hub or Secluded locations, and are distributed throughout the United States, select Canadian provinces, and the United Kingdom. For this position, we are looking for a teammate located in the United States.
Our Tech Stack
dbt, Snowflake, Hex, Fivetran, Streamkap, Secoda, GoodData, Gitlab