🎯 Inline Targeting Criteria

Statsig Product Updates
< All updates
5/20/2024

Margaret-Ann Seger

Head of Product, Statsig

🎯 Inline Targeting Criteria

Often, you may want to experiment on a specific group of people as defined by targeting criteria. To-date to accomplish this you’ve had to define a Feature Gate with your targeting criteria and then reference this Feature Gate from the experiment.

While this is useful if your targeting criteria is relatively common (and you’ll want to reuse it again in a future experiment or rollout), this can introduce extra configs and overhead if this targeting criteria is only serving the experiment in question.

We say- extra overhead and unnecessary configs cluttering up your catalog BE GONE!

Today, we’re starting to roll out the ability to define targeting criteria inline within your experiment setup. This will be accessible via the same entry point you can select an existing Feature Gate to target your experiment against (don’t worry, that capability isn’t going anywhere).

Read more in our docs here and don’t hesitate to reach out if you have any questions!

Inline Targeting Criteria

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