Uber Technology Day: Automatic Algorithm Selection for Anomaly Detection
Yiren Lu, a New York City-based software engineer on Uber’s Observability Operations team, presented on how Uber is automating anomaly detection through a recent project called Metric Reliability Layer (MeRL) to better determine whether an algorithm will track bugs, outages, and other high tech hiccups with a high probability of accuracy.
Видео Uber Technology Day: Automatic Algorithm Selection for Anomaly Detection канала Uber Engineering
Видео Uber Technology Day: Automatic Algorithm Selection for Anomaly Detection канала Uber Engineering
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