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The Azure IoT Handbook

You're reading from  The Azure IoT Handbook

Product type Book
Published in Dec 2023
Publisher Packt
ISBN-13 9781837633616
Pages 248 pages
Edition 1st Edition
Languages
Author (1):
Dan Clark Dan Clark
Profile icon Dan Clark

Table of Contents (18) Chapters

Preface 1. Part 1: Capturing Data from Remote Devices
2. Chapter 1: An Introduction to the IoT 3. Chapter 2: Exploring the IoT Hub Service 4. Chapter 3: Provisioning Devices with the Device Provisioning Service 5. Chapter 4: Exploring Device Management and Monitoring 6. Chapter 5: Securing IoT Systems 7. Part 2: Processing the Data
8. Chapter 6: Creating Message Routing 9. Chapter 7: Exploring Azure Stream Analytics 10. Chapter 8: Investigating IoT Data with Azure Data Explorer 11. Chapter 9: Exploring IoT Edge Computing 12. Part 3: Processing the Data
13. Chapter 10: Visualizing Streaming Data in Power BI 14. Chapter 11: Integrating Machine Learning 15. Chapter 12: Responding to Device Events 16. Index 17. Other Books You May Enjoy

Lab – creating an anomaly detection system

Azure Stream Analytics (ASA) simplifies the process of creating and training custom ML models by incorporating built-in anomaly detection powered by ML. It offers the convenience of performing anomaly detection through straightforward function calls. Two novel unsupervised ML functions have been introduced by Microsoft to identify two prevalent types of anomalies: transient and enduring. These are common anomalies, so you don’t have to create your own detection algorithm but can use the ones provided by Microsoft.

The AnomalyDetection_SpikeAndDip function is designed to pinpoint transient or short-lived anomalies, such as spikes or dips, leveraging the widely recognized kernel density estimation (KDE) algorithm.

On the other hand, the AnomalyDetection_ChangePoint function is employed to identify persistent or long-lasting anomalies, such as bi-level shifts, gradual increases, and gradual decreases. It relies on the established...

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