Is the drops fraud detection model identifying AFK/bot viewers at a rate above 95% precision, and are fraudulent drop claims accounting for less than 3% of total claims?
Monitor and improve fraud detection for streaming drops to ensure rewards go to genuine viewers rather than automated bots
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Bruin AI Data Analyst
Is the drops fraud detection model identifying AFK/bot viewers at a rate above 95% precision, and are fraudulent drop claims accounting for less than 3% of total claims?
Bruin connects to your Data Warehouse, Telemetry and runs the analysis automatically.
It tracks Detection precision/recall, fraudulent claim rate, bot viewer prevalence and delivers the answer in seconds, in Slack, Discord, Teams, Google Chat, WhatsApp, Telegram, email, or your browser.
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