Which features have below 30% discovery rate in soft launch, and should undiscovered features be removed or repositioned before global launch?
Map feature discovery and usage patterns to identify dead features and prioritize UI changes before launch
Metrics & KPIs
Required Data
Data Sources
Works with tools like
How Bruin answers this
Bruin AI Data Analyst
Which features have below 30% discovery rate in soft launch, and should undiscovered features be removed or repositioned before global launch?
Bruin connects to your Telemetry and runs the analysis automatically.
It tracks Feature discovery rate, feature usage frequency, feature retention correlation and delivers the answer in seconds, in Slack, Discord, Teams, Google Chat, WhatsApp, Telegram, email, or your browser.
Related use cases
D7 Retention by Tutorial Exit Step
Which tutorial step has the highest drop-off rate among users who churn before Day 7?
Product AnalyticsEarly Loss Churn Correlation
How much does a 3-match losing streak in onboarding damage 48-hour retention, and should we rig early matchmaking?
Product AnalyticsInterstitial Ad Timing Optimization
What is the minimum session length threshold after which showing an interstitial ad does not reduce D1 return rate?
Bruin for mobile gaming
Use cases across every team in your studio, from monetisation to LiveOps, product to engineering. One AI that speaks your data.
Get this answer in seconds
Connect your data, ask the question, get the answer. No SQL needed.