Product Updates

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Laurel Chan
Product Manager, Statsig
9/29/2025
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📈 Change Alerts

You can now set Change Alerts to track relative shifts in your metrics. Instead of relying on fixed thresholds, these alerts notify you when a metric moves up or down by the percentage or amount you choose.

What You Can Do Now

  • Create alerts that trigger on % increases or decreases

  • Catch major swings like a 20% drop in signups or a 50% jump in errors

  • Use Change Alerts with Threshold Alerts to cover both relative and topline changes

Getting Started

  1. In the left product menu, open Topline Alerts.

  2. Create a new alert and choose your desired Condition Type.

When to Use Each Alert Type

  • Threshold - use to monitor against a fixed limit. ("Alert me when total daily signups drops below 1000")

  • Change - use to monitor absolute shifts. ("Alert me when daily signups drop by 200 compared to yesterday")

  • Change (%) - use to monitor percentage shifts ("Alert me when daily signups drop 20% compared to yesterday")

change-alerts
Akin Olugbade
Product Manager, Statsig
9/24/2025
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🧪 Exposure Imbalance / Sample Ratio Mismatch (SRM) Debugging in Metrics Explorer

What is SRM?

Sample Ratio Mismatch (SRM) happens when the share of users in experiment groups is different from what you expected. For example, if you set up a 50/50 split between control and treatment but the actual traffic is 60/40, that’s an SRM.

What is the SRM p-value?

The SRM p-value is a statistical measure that tells you whether the observed imbalance could have happened by chance.

  • A p-value above 0.01 generally means the imbalance is within expected random variation.

  • A p-value below 0.01 suggests the imbalance is unlikely due to chance and may warrant investigation.

What You Can Do Now

  • View SRM results and p-values across experiment groups in Metrics Explorer

  • Group results by different properties to identify potential causes of imbalance

  • Start from experiment exposure diagnostics and click on suggested properties to pre-apply them as group-bys in Metrics Explorer

How It Works

Metrics Explorer applies the SRM formula across experiment groups and shows the resulting p-value. From there, you can add group-bys (such as country, platform, or custom properties) to spot where imbalance is happening.

Experiment diagnostics also highlight properties that may be driving the imbalance. Clicking the icon next to one of these properties takes you into Metrics Explorer with that property already grouped, so you can continue the investigation seamlessly.

Impact on Your Analysis

This workflow makes it faster to detect and understand exposure imbalances. By moving directly from diagnostics to group-by analysis, you save time and get clearer visibility into which properties are linked to the imbalance.

Sample Ratio Mismatch debugging is available now across Cloud and Warehouse Native.

Akin Olugbade
Product Manager, Statsig
9/22/2025
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✍️ Custom Chart Annotations in Drilldown

You can now add manual annotations directly to Drilldown charts in Metrics Explorer. This lets you document notable moments in your data and see them again whenever the same metrics are viewed.

What You Can Do Now

  • Click any data point on a Drilldown chart to add a custom annotation

  • Apply an annotation to the metric you clicked, or extend it to additional metrics

  • See annotation icons whenever a chart’s date range and metrics overlap with saved annotations

  • Edit existing annotations, including description, date, time, and associated metrics

How It Works

Each annotation is tied to a point in time and one or more metrics. When you load a Drilldown chart that includes both, an annotation icon appears. Click the icon to view or expand the note. You can adjust the description, date, time, and metrics at any point.

Impact on Your Analysis

Annotations help you connect changes in the data to events in the real world. For example, you can tag the day a feature shipped or note an outage that caused a traffic dip. These markers appear on charts whenever the same metrics are analyzed, so you never lose the context.

Akin Olugbade
Product Manager, Statsig
9/18/2025
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🔍 Conversion Drivers in Funnels on WHN

Conversion Drivers are now available in Warehouse Native and Cloud. They surface the most significant factors influencing funnel conversions or drop-offs, helping you quickly understand why users convert or drop off.

What You Can Do Now

  • Identify high-impact drivers of conversion or drop-off

  • Analyze event properties, user properties, and intermediary events

  • View summaries with conversion rate, share of participants, and impact

  • Drill into a driver for conversion matrices and correlation coefficients

  • Group funnels by any surfaced driver with one click

How It Works

Conversion Drivers analyze columns from the metric source used in the first step of the funnel. For best results, configure your metric source as a multi-event metric source on the setup page and ensure all funnel steps come from that source.

From a funnel, click a step and select “View Drop-Off & Conversion Drivers.” You’ll see a ranked list of factors with conversion likelihood, conversion rates, and share of participants. Clicking into a factor opens detailed comparisons and lets you regroup the funnel by that property.

Impact on Your Analysis

Funnels show what your conversion rate is. Conversion Drivers explain why, so you can investigate drop-offs, explore new funnels, and validate which user groups or behaviors matter most.

Available Now

Conversion Drivers are available now for all Warehouse Native customers. For Cloud customers, read more about how Conversion Drivers work on Cloud.

Kaz Haruna
Product Manager, Statsig
9/16/2025
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🚢 Custom Experiment Decision Framework

We’ve expanded the Decision Framework feature beyond templates.

Now, you can directly configure and manage decision frameworks for each experiment. This gives teams a place to codify decision-making so that users can quickly move to action at the conclusion of an experiment.

To add a decision framework to your experiment select “Add Decision Framework” from the experiment menu.

Screenshot 2025-09-16 at 11.59.45 AM
Shubham Singhal
Product Manager, Statsig
9/15/2025
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Personal Console API Keys

You can now generate personal Console API keys in Statsig. These keys are automatically scoped to your role, ensuring the same access restrictions you already have. Each key is tied to its owner, making it easier to track usage and maintain clean audit logs.

Why it matters:

  • Simplifies multi-user projects by giving every user their own key

  • Provides clear ownership visibility for better security and compliance

  • Admins can control the ability to generate personal keys in the organization settings

personal-capi
Shubham Singhal
Product Manager, Statsig
9/10/2025
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Dynamic Configs Archive and Unarchive API Endpoints

DC-CAPI

We've added two more endpoints to our Console API for Dynamic Configs. Now you can archive and unarchive a Dynamic Config in your project programmatically!

Access the endpoints here: https://docs.statsig.com/console-api/dynamic_configs

Akin Olugbade
Product Manager, Statsig

🧪 Sampling Across All Charts

You can now enable sampling in all major chart types to speed up queries on large datasets—while still getting directionally accurate results.

What You Can Do Now

  • Use user-level sampling in Funnel, Distribution, Retention, and User Journey charts

  • Use event-level sampling in Metric Drilldown

  • Toggle sampling on or off in chart settings

  • See when sampling is active, and disable it at any time for exact results

How It Works

Sampling is off by default. When toggled on, it only applies under high-volume conditions:

  • Warehouse Native: Sampling applies if metric sources exceed 100K rows/day or row counts can’t be determined. For User Journeys, sampling is always applied when toggled on.

  • Cloud: Sampling applies if the event volume in the query exceeds 100K. For Journeys, we look at total event volume across the company.

In Drilldown, event-level sampling is used for high-volume events unless the variance is too high, in which case we fall back to full data.

Impact on Your Analysis

Sampling helps you move faster through exploratory workflows. In early results, User Journey query times dropped by over 60% when sampling was applied.

It’s a small precision tradeoff for a much faster iteration loop.

Akin Olugbade
Product Manager, Statsig
8/21/2025
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🧪 Analyze Exposures in Metrics Explorer (Warehouse Native)

Experiment exposure events are now supported in Metrics Explorer on Warehouse Native. You can select them like any other event, filter or group by properties (variant, metadata), and tie rollout data directly to product metrics.

More details here: Exposures in Metrics Explorer

Akin Olugbade
Product Manager, Statsig
8/20/2025
Permalink ›

✅ Verified Cohorts and Dashboards

Admins can now mark specific cohorts and dashboards as verified. This signals that they are the trusted, official versions while also protecting them from accidental edits.

What You Can Do Now

  • Mark cohorts and dashboards as verified to indicate they are the approved versions

  • Prevent edits to verified entities unless you are an admin

  • Clone verified cohorts and dashboards to create your own editable versions

How It Works

  • Cohorts: Mark as verified when creating a new cohort or by editing an existing one

  • Dashboards: Mark as verified from the settings cog in the top right of the dashboard page

Impact on Your Analysis

Teams can align on a single source of truth for key cohorts and dashboards while still allowing individuals to explore their own versions without risking changes to the verified originals.

This keeps shared analysis reliable and consistent.

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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