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Preface
Section 1: Analyzing Time Series and
Delivering Highluy Accurate Forecasts
With Amazon Forecast
1 An Overview of Time Series Analysis
2 An Overview of Amazon Forecast
3 Creating a Project and Ingesting Your Data
4 Training a Predictor With AutoML
5 Customizing Uour Predictor Training
6 Gemerating New Forecasts
7 Inoroving and Scaling Your Forecast Strategy
Section 2: Detecting Abnormal Behavior
in Multivariate Time Series With Amazon
Lookout for Equipment
8 An Overview of Amazon Lookout for Equopment
9 Greating a Dataset and Ingesting Your Data
10 Traomomg amd Eva;iatomg a Mpdel
11 Scheduling Regular Inferences
12 Reducing Time to Insights for Anomaly Detections
Section 3: Detecting Amomalies in Business
Metrics With Amazon Lookout forj Metrics
13 An Overview of Amawon Lookout for Metrics
14 Creating and Activating Detector
15 Viewing Anomalies and Providing Feedback
Index
Other Books You May Emkoy
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