Unlock feature-level insights with data
Split pairs feature flags with data. Analyze the impact of every feature on all your business, product, and performance metrics.
Import data from your data pipeline to unlock monitoring, alerting and experimentation. Export impressions and audit log entries for downstream analysis.
Quickly connect to existing data pipelines
Split ingests events from a wide variety of data sources and matches them to your feature flag data. Split automatically measures the impact of every feature that you release.
Import event data from your favorite tools. Split has integrations out of the box for Segment, mParticle, and Sentry.
Want to connect other data sources? Track events from your app using our SDKs or send them via API.
Easily Customize to Your Business Objectives
Traffic types define the unique IDs you care about. Users? Accounts? Patients? Logged-in shoppers? Any event that references those IDs can easily become a metric in Split.
Measure once, match to any KPI
Metrics aggregate raw event streams. Define them to meet your exact definitions — sum, count, ratio, percent, average, per user, and more. Metric properties give you even more control. Collect an event once that includes multiple attributes and then create precisely tailored metrics.
Count of checkout events where the purchase was a meal kit? Done.
Enrich external data sources
Our SDKs generate an impression each time a feature variant is exposed to a user, which you can use to run an email campaign or analyze customer cohorts.
Easily export impressions to destinations such as Segment, mParticle, and Google Analytics.
Want to use other systems? Our impression listener can forward data anywhere.
Customer Stories
“Split allowed us to establish an “experiment-driven process” without having to invest the time to build out an extensive framework ourselves.”
Patti Chan, Former VP Product, Imperfect Foods
Connect data to your features in a click
Improve engineering efficiency and empower teams to solve customer problems by measuring feature-level impact.