Product Updates

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Shubham Singhal
Product Manager, Statsig
12/17/2025
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AI Stale Gate Cleanup

Until now, Statsig only detected feature gates that were no longer active and marked them "stale." With new Github AI Integration, you can directly generate a pull request to remove the dead code from Statsig UI in one click.

Why This Is Valuable

Cleaning up dead flags is usually painful and gets deprioritized. This turns it into a one-click workflow:

  • Click “remove from code”

  • Review the generated PR

  • Approve and merge

Teams reduce flag debt without risky manual cleanup.

Getting Started

Connect Statsig to your Github Org account to enable AI-powered stale gate code removal.

Shubham Singhal
Product Manager, Statsig
12/17/2025
Permalink ›

Github AI Integration

We’ve launched a new GitHub AI Integration that connects Statsig directly to your codebase. This is a foundational capability that powers a growing set of AI features across Statsig console.

github-ai

Why this matters

Through Github connection, Statsig understands where flags, experiments, and metrics live in your code. We then build a Knowledge Graph which maps relationship between code and Statsig entities. Once GitHub is connected, Statsig becomes "code-aware." This unlocks workflows that weren’t possible before, tying product insights directly back to the code that shipped them:

  1. Contextual Descriptions: AI-generated descriptions that understand code context behind each metric, flag, and experiment. Quickly understand what each entity in Statsig does and why it exists.

  2. Stale Gate Cleanup: One-click workflow to generate PRs to remove stale feature flags directly from Statsig console

  3. Metric Explorer Co-pilot (Coming Soon): Describe what you want to analyze in plain English and Statsig creates a chart with the right events, metrics, and breakdowns.

Getting started

To use this integration, navigate to Settings -> Integrations -> Github App page in your Statsig console. Authorize with your Github credentials and install the app on your desired repos. Please contact your Github Org admin to install Statsig App to use the above features! Read more here: https://docs.statsig.com/integrations/github-ai-integration

Shubham Singhal
Product Manager, Statsig
12/17/2025
Permalink ›

Contextual AI Descriptions

Bring your code context to automatically generate human-readable descriptions for feature gates, experiments, metrics, and events. Pre-requisite: This feature is powered by Statsig's new Github AI Integration.

Why this is valuable

We have observed that many Statsig users have empty descriptions for their entities (feature gates, metrics, experiments, etc.) in Statsig. This is despite users knowing that good descriptions are super useful in understanding the purpose of any entity.

Statsig AI can understand the meaning behind each feature gate, experiment, event, and metric from the code references that power these entities. As a result:

  • Anyone viewing a gate or experiment can quickly understand what it does and why it exists

  • In Metrics Explorer, users can see the semantic meaning of events and metrics, not just raw names

This dramatically improves self-serve understanding for PMs, engineers, and new team members.

How this works

  • If you empty description, Statsig will automatically pre-fill description fields with AI-generated context.

  • If you already have a description, Statsig will show an AI suggestion that can be more richer in context.

Akin Olugbade
Product Manager, Statsig
12/16/2025
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🧩 Segment Filters on Dashboards

We’ve expanded Global Dashboard Filters so you can filter a dashboard using ID List based Segments. This is an additional filter option. Existing global filtering (property filters and other criteria) continues to work the same way.

What You Can Do Now

  • Apply a Segment filter at the dashboard level where the segment is defined by an ID list

  • Combine an ID List Segment filter with your existing global property filters

  • Keep every chart on the dashboard scoped to the same audience without reapplying filters chart-by-chart

How It Works

  • Create or select an ID List based Segment (a segment defined by a fixed list of IDs, like user IDs, account IDs, or device IDs)

  • In your dashboard’s Global Dashboard Filters, choose that segment as a filter

  • The segment filter applies to all charts on the dashboard, alongside any other global filters you’ve set

Example: set the global filter to the segment “Enterprise accounts (ID list)” to ensure every chart reflects only those accounts.

Impact on Your Analysis

  • Use dashboards to answer questions about a specific, known set of users or accounts (for example, a customer list, beta cohort, or internal test group)

  • Reduce chart-to-chart inconsistencies caused by manually recreating the same ID-based audience filter

  • Iterate faster when you need to swap the audience across the entire dashboard (for example, compare two different customer lists)

Akin Olugbade
Product Manager, Statsig
12/16/2025
Permalink ›

🔎 Global Filters in Funnels

Funnels now support Global Filters. Global Filters apply across the entire funnel, so you can set shared constraints once instead of repeating them across steps.

What You Can Do Now

  • Apply a single set of filters to all steps in a funnel

  • Filter funnel results using additional artifacts, including:

    • Experiments (for example, only users in a specific experiment or variant)

    • Segments

    • Holdouts

    • ID list based segments

How It Works

  • Use the Global Filters section in the funnel builder to define who should be included in the funnel analysis.

  • Global Filters apply to every step in the funnel.

  • Example use cases:

    • Experiment analysis: Show funnel conversion for users in Variant B of an experiment.

    • Segmented funnel: Restrict the funnel to a specific Segment (for example, “Power users”).

    • Holdout-aware reporting: Exclude users in a Holdout to avoid mixing test and control populations.

    • Targeted cohorts: Use an ID list based Segment to analyze conversion for a specific account list.

Impact on Your Analysis

  • Keep funnel results consistent across steps by applying shared constraints once

  • Reduce setup time when iterating on funnel definitions

  • Make it easier to compare funnels across experiments, segments, and holdouts without reworking step logic

Global Filters make it faster to build funnels that match the exact population you want to analyze, especially when your audience is defined by experiments, segments, or holdouts.

Akin Olugbade
Product Manager, Statsig
12/16/2025
Permalink ›

📊 Session Analytics on Warehouse Native

You can now run Session Analytics on Warehouse Native data, as long as you are also logging events with the Statsig SDK. This is a new capability for Warehouse Native and does not replace any existing session analytics workflows.

What You Can Do Now

  • Analyze user sessions directly in Warehouse Native

  • Use Metric Drilldown charts to answer session questions like:

    • How many daily sessions are occurring?

    • What is the median (p50) session duration?

    • How does session duration vary by browser, device, or other properties?

How It Works

A session is defined as a period of user activity followed by at least 30 minutes of inactivity. Session Analytics uses a special statsig::session_end event, which includes a property for session duration in seconds. You can use this event in Metric Drilldown charts to slice, group, and compare session metrics.

This is supported only for customers who:

  • Use Warehouse Native

  • Log events with the Statsig SDK (so statsig::session_end is available)

Impact on Your Analysis

  • Run session-level metrics alongside your warehouse-native metrics without needing a separate session pipeline

  • Measure engagement using session counts and duration with the same segmentation and breakdowns you already use in Metric Drilldown charts

If you are already on Warehouse Native and logging with the SDK, you can start using Session Analytics right away.

Akin Olugbade
Product Manager, Statsig
12/16/2025
Permalink ›

🧭 Warehouse Explorer

Overview

Warehouse Explorer makes it easy to bring warehouse data into Statsig, without needing to know the “right” table upfront. Previously, if you wanted to analyze warehouse data in Statsig, you had to know the name, location, and schema of the table and configure a metric source for it. Now, Metrics Explorer includes a visual browser for your warehouse projects, folders, and tables so you can discover what you need first, then add it for analysis. This is a new capability and is only available for Warehouse Native customers.

What You Can Do Now

  • Browse your warehouse projects, folders, and tables directly in Statsig

  • Click into any table to quickly understand what’s inside:

    • Column names

    • Sample values for each column

    • Per-value row distribution metadata (what percent of rows each value represents)

  • Bring a table into Statsig for analysis in a few clicks:

    • Name the source

    • Provide light configuration (for example, whether it’s an event-based table)

  • Build self-serve visualizations from warehouse data faster, like:

    • Funnels from GA4 tables

    • Exploring Stripe data without manual setup work

How It Works

  1. Open Metrics Explorer and browse through your warehouse projects and folders.

  2. Select a table to preview its schema, sample values, and distribution metadata.

  3. When you find the table you want, name it and complete a small amount of configuration (for example, mark whether it’s event-based).

  4. Start analyzing the table in Statsig right away.

Impact on Your Analysis

  • Faster time to first chart because you can discover tables inside Statsig instead of tracking them down elsewhere

  • More self-serve exploration for teams with lots of warehouse datasets

  • Easier setup for common workflows like funnels and business-data analysis

Warehouse Explorer is available today for all Warehouse Native Analytics customers.

warehouse explorer
Helen Lu
Strategy + BizOps Associate
12/12/2025
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🔐 OAuth Support for Statsig MCP Server

We’ve upgraded authentication for the Statsig MCP Server to support OAuth — supplementing the previous key-based authentication flow. This brings a more secure, scalable, and standards-aligned approach to connecting your MCP tooling with Statsig.

Why this matters

OAuth makes it easier and safer for teams to integrate the Statsig MCP Server with their development workflows and in more tools. It enables clearer permission boundaries, smoother onboarding and persistent sessions, and better alignment with modern enterprise security practices.

Getting started

Follow the updated setup instructions in our docs to enable OAuth for your MCP Server connection. No changes are required to your existing Statsig feature flags or experimentation setup — just update your authentication method to take advantage of the new flow.

Learn more in the docs here: https://docs.statsig.com/integrations/mcp

Laurel Chan
Product Manager, Statsig
12/11/2025
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🕵 Traces Explorer now in Beta

Traces show how a single request moves through your system, one step at a time. Statsig new lets you explore those spans alongside experiments and feature rollouts.

Traces Explorer = faster root cause. You no longer need to jump between tools to understand slow or failing requests. Statsig brings traces, logs, metrics, and alerting into one place for critical launches.

Bring observability into your product decision loop.

Traces Explorer (Beta) is available for Cloud customers. View trace setup instructions here.

Traces Explorer
Lin Jia
Data Scientist, Statsig
11/25/2025
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🔌 Reverse Power

What is Reverse Power?

It shows the smallest effect size your test had power to detect based on actual sample size and standard error of the control group (it does not depend on the observed effect size of the experiment). It’s a great tool to leverage retrospectively near the end of an experiment to make more informed decisions.

reverse power

How is it used?

  • Helps you reflect on what your experiment actually could detect

  • Helps you with iteration decisions like extending the experiment, rerunning with greater sample, or re-evaluating the experiment design

Getting started

Toggle it on/off anytime in Settings → Product Configuration → Experimentation. To learn more about Reverse Power see our docs here.

Loved by customers at every stage of growth

See what our users have to say about building with Statsig
OpenAI
"Statsig's experimentation capabilities stand apart from other platforms we've evaluated. The ease of use, simplicity of integration help us efficiently get insight from every experiment we run. Statsig's infrastructure and experimentation workflows have also been crucial in helping us scale to hundreds of experiments across hundreds of millions of users."
Paul Ellwood
Head of Data Engineering
SoundCloud
"We evaluated Optimizely, LaunchDarkly, Split, and Eppo, but ultimately selected Statsig due to its comprehensive end-to-end integration. We wanted a complete solution rather than a partial one, including everything from the stats engine to data ingestion."
Don Browning
SVP, Data & Platform Engineering
Whatnot
"Excited to bring Statsig to Whatnot! We finally found a product that moves just as fast as we do and have been super impressed with how closely our teams collaborate."
Rami Khalaf
Product Engineering Manager
"Statsig has enabled us to quickly understand the impact of the features we ship."
Shannon Priem
Lead PM
Ancestry
"I know that we are able to impact our key business metrics in a positive way with Statsig. We are definitely heading in the right direction with Statsig."
Partha Sarathi
Director of Engineering
"Working with the Statsig team feels like we're working with a team within our own company."
Jeff To
Engineering Manager
"[Statsig] enables shipping software 10x faster, each feature can be in production from day 0 and no big bang releases are needed."
Matteo Hertel
Founder
OpenAI
"Statsig has been an amazing collaborator as we've scaled. Our product and engineering team have worked on everything from advanced release management to custom workflows to new experimentation features. The Statsig team is fast and incredibly focused on customer needs - mirroring OpenAI so much that they feel like an extension of our team."
Chris Beaumont
Data Scientist
"The ability to easily slice test results by different dimensions has enabled Product Managers to self-serve and uncover valuable insights."
Preethi Ramani
Chief Product Officer
"We decreased our average time to decision made for A/B tests by 7 days compared to our in-house platform."
Berengere Pohr
Team Lead - Experimentation
"Statsig is a powerful tool for experimentation that helped us go from 0 to 1."
Brooks Taylor
Data Science Lead
"We've processed over a billion events in the past year and gained amazing insights about our users using Statsig's analytics."
Ahmed Muneeb
Co-founder & CTO
SoundCloud
"Leveraging experimentation with Statsig helped us reach profitability for the first time in our 16-year history."
Zachary Zaranka
Director of Product
"Statsig enabled us to test our ideas rather than rely on guesswork. This unlocked new learnings and wins for the team."
David Sepulveda
Head of Data
Brex
"Brex's mission is to help businesses move fast. Statsig is now helping our engineers move fast. It has been a game changer to automate the manual lift typical to running experiments and has helped product teams ship the right features to their users quickly."
Karandeep Anand
President
Ancestry
"We only had so many analysts. Statsig provided the necessary tools to remove the bottleneck. I know that we are able to impact our key business metrics in a positive way with Statsig. We are definitely heading in the right direction with Statsig."
Partha Sarathi
Director of Engineering
Recroom
"Statsig has been a game changer for how we combine product development and A/B testing. It's made it a breeze to implement experiments with complex targeting logic and feel confident that we're getting back trusted results. It's the first commercially available A/B testing tool that feels like it was built by people who really get product experimentation."
Joel Witten
Head of Data
"We realized that Statsig was investing in the right areas that will benefit us in the long-term."
Omar Guenena
Engineering Manager
"Having a dedicated Slack channel and support was really helpful for ramping up quickly."
Michael Sheldon
Head of Data
"Statsig takes away all the pre-work of doing experiments. It's really easy to setup, also it does all the analysis."
Elaine Tiburske
Data Scientist
"We thought we didn't have the resources for an A/B testing framework, but Statsig made it achievable for a small team."
Paul Frazee
CTO
"We use Statsig's analytics to bring rigor to the decision-making process across every team at Wizehire."
Nick Carneiro
CTO
Notion
"We've successfully launched over 600 features behind Statsig feature flags, enabling us to ship at an impressive pace with confidence."
Wendy Jiao
Staff Software Engineer
"We chose Statsig because it offers a complete solution, from basic gradual rollouts to advanced experimentation techniques."
Carlos Augusto Zorrilla
Product Analytics Lead
"We have around 25 dashboards that have been built in Statsig, with about a third being built by non-technical stakeholders."
Alessio Maffeis
Engineering Manager
"Statsig beats any other tool in the market. Experimentation serves as the gateway to gaining a deeper understanding of our customers."
Toney Wen
Co-founder & CTO
"We finally had a tool we could rely on, and which enabled us to gather data intelligently."
Michael Koch
Engineering Manager
Notion
"At Notion, we're continuously learning what our users value and want every team to run experiments to learn more. It's also critical to maintain speed as a habit. Statsig's experimentation platform enables both this speed and learning for us."
Mengying Li
Data Science Manager
OpenAI
"At OpenAI, we want to iterate as fast as possible. Statsig enables us to grow, scale, and learn efficiently. Integrating experimentation with product analytics and feature flagging has been crucial for quickly understanding and addressing our users' top priorities."
Dave Cummings
Engineering Manager, ChatGPT
OpenAI
"Statsig has helped accelerate the speed at which we release new features. It enables us to launch new features quickly & turn every release into an A/B test."
Andy Glover
Engineer
"We knew upon seeing Statsig's user interface that it was something a lot of teams could use."
Laura Spencer
Chief of Staff
"The beauty is that Statsig allows us to both run experiments, but also track the impact of feature releases."
Evelina Achilli
Product Growth Manager
"Statsig is my most recommended product for PMs."
Erez Naveh
VP of Product
"Statsig helps us identify where we can have the most impact and quickly iterate on those areas."
John Lahr
Growth Product Manager
Whatnot
"With Warehouse Native, we add things on the fly, so if you mess up something during set up, there aren't any consequences."
Jared Bauman
Engineering Manager - Core ML
"In my decades of experience working with vendors, Statsig is one of the best."
Laura Spencer
Technical Program Manager
"Statsig is a one-stop shop for product, engineering, and data teams to come together."
Duncan Wang
Manager - Data Analytics & Experimentation
Whatnot
"Engineers started to realize: I can measure the magnitude of change in user behavior that happened because of something I did!"
Todd Rudak
Director, Data Science & Product Analytics
"For every feature we launch, Statsig saves us about 3-5 days of extra work."
Rafael Blay
Data Scientist
"I appreciate how easy it is to set up experiments and have all our business metrics in one place."
Paulo Mann
Senior Product Manager
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