- Course
- Data
Explore Time-series Data with Kusto Query Language (KQL)
Learn to wrangle time series data with practical use cases. This course will teach you how to utilize time-series data with KQL to analyze trends, uncover patterns, and detect anomalies.
What you'll learn
Have you ever wondered how data can predict the next big storm? Dive into real-world weather events and discover the power of KQL to reveal patterns, spot anomalies, and forecast impacts—turning raw storm data into actionable insights. In this course, Explore Time-series Data with Kusto Query Language (KQL), you’ll learn how to use time-series data with KQL to analyze trends, uncover patterns, and detect anomalies. First, you’ll explore how to use binning and aggregating functions along with time-series functions and visualizations to find insights from your data. Next, you’ll discover how to use time-series functions like make-series and mv-expand for advanced analytics. Finally, you’ll learn how to use functions like series_decompose and series_outliers to find patterns and anomalies in practical data. When you’re finished with this course, you’ll have the skills and knowledge of exploring time-series data with KQL needed to gain valuable insights and take intelligent actions from your data.
Table of contents
About the author
Matt Stenzel is a Data and AI Cloud Solution Architect at Microsoft. He has 15+ years of experience in the data and analytics industry working in various roles including a software developer, data engineer, DW developer, DBA and integration architect. He has spent the last 8 years working at Microsoft helping companies across the US successfully implement Azure solutions that provide business value.