Full-Spectrum ML Model Monitoring at Lyft
摘要
Machine Learning models at Lyft make millions of high stakes decisions per day from physical safety classification to fraud detection to real-time price optimization. Since these ML model based actions impact the real world experiences of our riders and drivers as well as Lyft’s top and bottom line, it is critical to prevent models from degrading in performance and alert on malfunctions.
However, identifying and preventing model problems is hard. Unlike problems in deterministic systems whose errors are easier to spot, models’ performance tends to gradually decrease, which is more difficult to detect.
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