Does the new UGC recommendation algorithm (collaborative filtering) increase average plays per level by more than 20% versus the current popularity-based ranking, without reducing creator diversity below 100 unique creators featured per day?
Test whether personalized UGC discovery improves engagement while maintaining healthy content diversity across creators
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Does the new UGC recommendation algorithm (collaborative filtering) increase average plays per level by more than 20% versus the current popularity-based ranking, without reducing creator diversity below 100 unique creators featured per day?
Bruin connects to your A/B Testing, Telemetry, Data Warehouse and runs the analysis automatically.
It tracks Plays per level, unique creators surfaced, recommendation CTR and delivers the answer in seconds, in Slack, Discord, Teams, Google Chat, WhatsApp, Telegram, email, or your browser.
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