Do players' rewarded video opt-in rates decline by more than 30% between D7 and D30, and what player features predict sustained engagement with rewarded ads?
Model the long-term trajectory of rewarded video engagement to understand sustainability and identify features that predict enduring ad engagement
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Bruin AI Data Analyst
Do players' rewarded video opt-in rates decline by more than 30% between D7 and D30, and what player features predict sustained engagement with rewarded ads?
Bruin connects to your Ad Monetization SDK, Telemetry, Data Warehouse and runs the analysis automatically.
It tracks Opt-in rate decay curve, feature importance, sustained engagement predictor accuracy and delivers the answer in seconds, in Slack, Discord, Teams, Google Chat, WhatsApp, Telegram, email, or your browser.
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