We have introduced Cohort Analysis to our funnel feature, allowing you to filter your funnel analysis to specific cohorts or compare how different cohorts progress through the same funnel.
Filter Funnels by Cohort
You can now focus your funnel analysis on specific user cohorts. This means you can examine how particular groupsālike new users, users from a specific marketing campaign, or users who have completed a certain actionānavigate through your funnels. Filtering by cohort helps you identify unique behaviors and patterns within these groups, enabling you to tailor your strategies to improve their experience.
Compare Conversion Across Cohorts
In addition to filtering, you can compare how different cohorts convert across the same funnel. This comparative view lets you see how various segments of your user base perform relative to each other. For example, you might compare first-time users to returning users, users from different geographic regions, or users acquired during different time periods. Understanding these differences can inform targeted improvements and highlight areas where certain cohorts may need additional support.
Funnels in Metrics Explorer now complete in half the time. This improvement reduces wait times, allowing you to spend less time waiting and more time analyzing your data. With faster results, you can iterate more quickly, explore user behaviors efficiently, and make timely, data-driven decisions.
Weāve tripled the maximum number of steps allowed in funnels from 5 to 15. This change allows you to build more detailed funnels that capture longer and more complex user journeys. With up to 15 steps, you can analyze extended sequences of user actions, gain deeper insights into user behavior, and identify opportunities to optimize each stage of your funnel.
Weāve updated how Statsig processes events received from Segment to help you gain deeper insights without additional effort on your part. Now, when you send events from Segment into Statsig, we automatically extract and include extra properties such as UTM parameters, referrer information, and page details like URL, title, search parameters, and path.
By leveraging data youāre already collecting with Segment, you can:
Gain More Value Without Extra Work: Utilize the enriched data immediately, increasing the context available for your analysis without any additional implementation.
Analyze Marketing Campaigns More Effectively: Filter events by specific UTM parameters to assess which marketing campaigns drive the most engagement or conversions.
Understand User Acquisition Channels: Use referrer information to see where your users are coming from, helping you optimize outreach and partnerships.
Dive Deeper into User Behavior: Examine page-level details to understand how users interact with different parts of your site or app, allowing you to identify areas that perform well or need improvement.
These improvements make it easier to perform detailed analyses in Metrics Explorer, enabling you to make informed decisions based on comprehensive event dataāall from the data youāre already sending through Segment.
We're excited to announce a powerful new addition to Statsig's feature management capabilities: the Cross-Environment Feature Gate View. This new view provides DevOps teams, SREs, and Release Managers with unprecedented visibility into feature gate states across all environments from a single, unified interface.
Comprehensive grid view showing all feature gates and their states across Dev, Staging, and Production environments
At-a-glance status indicators and gate checks for quick state verification
Simplified Operations: Eliminate the need to navigate between different environments to check gate states
Enhanced Release Management: Quickly verify feature gate configurations across your deployment pipeline
Improved Collaboration: Give platform teams and operations staff the high-level view they need for effective feature management
Risk Reduction: Easily spot inconsistencies in gate states across environments before they issue becomes significant
You can turn this view on by clicking on the top-right toggle in the feature gates list page. Ready to get started? Let us know if you have any feedback on this feature for us.
Weāre reaching out to give you a heads-up about an important change we are making to the auto-generated event_dau
metric for Cloud customers in the Statsig Console.
Note: Customers on Statsig Warehouse Native will not be impacted.
In two weeks, from Wednesday, October 16 2024 onwards we plan to stop auto-generating new event_dau
metrics for incoming events in Statsig. We will continue to auto-generate an event_count
metric for each logged event as we do today.
Any existing event_dau
metrics that have been used in a gate, experiment, dashboard, or other Custom Metrics will NOT be affected by this change.
Existing event_dau
metrics that have been archived or not been used in another config will NO longer exist in the project. See āNext stepsā below if you want to retain the unused metrics.
Going forward, new event_dau
metrics will need to be created manually as a Custom Metric. See this guide to learn how to create a DAU metric.
We will be making this change on October 16, 2024. If you have any questions or concerns, please donāt hesitate to reach out!
Historically, we have automatically generated an event_count
and event_dau
metric for every incoming event into Statsig. After working closely with hundreds of customers, we have seen that auto generating two metrics for every event leads to confusion and clutter inside Statsig projects. The proposed change will lead to cleaner Metrics Catalog and faster Console performance, while still retaining your ability to create event_dau
metrics for the events you care about most.
If you wish to keep any unused event_dau
metrics going forward, you can earmark that metric by performing any of the below actions:
Adding a Tag (RECOMMENDED)
Adding a description
Referencing in a gate/experiment/dashboard
These actions will mark your unused metric as active, signaling us that you donāt want them to be deprecated.
Funnels are a first-class citizen on Statsig WHN Experimentation. You can specify order, conversion windows, sessions, and more to build a clear picture of user journeys in your product. Now, you can also use funnels to measure ātime to completeā a funnel in experiments.
These metrics, alongside the funnel completion rate, give a much richer view into whatās going on with users. For example - success rate didnāt change, but did your changes make your signup flow faster, or slower?
This is a valuable view for anyone who has a series of actions they care about their end users being able to do in a timely fashion - and itās available to all Statsig Warehouse Native users today!
Funnel metrics are one of the most popular metric types in product analytics. They are especially helpful to measure user journeys through a series of steps. For example, if you want to measure user conversion through a subscription flow, e.g. Start ā Description Page ā Payment Info ā Confirm; or identify pain points in a registration flow, e.g. Welcome Page ā Ask for Phone Number/Email ā Authentication ā Logged-in Page.
Statsig has had powerful funnels you can analyze for experiment impact in Warehouse Native for a while now, including session-level funnel metrics. Now, weāre rolling out even more enhancements. These include:
Configurable completion windows per-step, i.e. how long this step can take to occur after the previous step
Treating the āexposureā of the experiment as the implicit start event of the funnel, meaning your reported funnel conversion rate maps to the actual rate at which people finished them in your experiment
Built-in allowance for timestamp noise, which is useful to mitigate deviations in logging; this includes control over comparison type, and a configurable grace period for clock jitter
For more information about this feature, you can check the documentation. These features are available to all Statsig Warehouse Native users today.
You can now compare conversion funnels across different time periods. Now, you can select a specific comparison rangeā1, 7, or 28 days agoāand view a side-by-side comparison of the entire funnel for each step against the selected time period.
This feature allows you to observe how product changes impact user behavior over time. By comparing different periods, you can easily identify trends, assess the effectiveness of recent changes, and make data-driven decisions to improve your funnel strategy.
Time period comparisons are available in all funnel views including Conversion Rates, Time to Convert, and Conversion Rate over Time.
Weāre excited to announce a new feature that makes it easier to understand metrics in context. You can now view metrics broken down by (grouped-by) an event property, expressed as a percentage of the total metric value, available in both bar charts and time series line charts.
This update allows you to quickly gauge the proportionate impact of different segments or categories within your overall metrics. For instance, you can now see what percentage of total sales each product category represents over time, or what portion of total user sessions specific events constitute.
By presenting data in percentages, this feature simplifies comparative analysis and helps you focus on the relative significance of different data segments.