November 27, 2019

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Detecting time series anomalies at Uber scale with recurrent neural networks

Detecting time series anomalies at Uber scale with recurrent neural networks

Time series forecasting and anomaly detection is of utmost importance at Uber. However, the scale of the problem, the need for speed, and the importance of accuracy make anomaly detection a challenging data science problem. Andrea Pasqua and Anny Chen explain how the use of recurrent neural networks is allowing Uber to meet this challenge.

Talk Title Detecting time series anomalies at Uber scale with recurrent neural networks
Speakers Andrea Pasqua (Uber), Anny Chen (Uber)
Conference Strata Data Conference
Conf Tag Big Data Expo
Location San Jose, California
Date March 6-8, 2018
URL Talk Page
Slides Talk Slides
Video

Time series forecasting and anomaly detection is of utmost importance at Uber. However, the scale of the problem, the need for speed, and the importance of accuracy make anomaly detection a challenging data science problem. Andrea Pasqua and Anny Chen explain how the use of recurrent neural networks is allowing Uber to meet this challenge. Topics include:

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