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Redis Stack for Application Modernization

You're reading from   Redis Stack for Application Modernization Build real-time multi-model applications at any scale with Redis

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Product type Paperback
Published in Dec 2023
Publisher Packt
ISBN-13 9781837638185
Length 336 pages
Edition 1st Edition
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Authors (2):
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Mirko Ortensi Mirko Ortensi
Author Profile Icon Mirko Ortensi
Mirko Ortensi
Luigi Fugaro Luigi Fugaro
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Luigi Fugaro
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Toc

Table of Contents (18) Chapters Close

Preface 1. Part 1: Introduction to Redis Stack
2. Chapter 1: Introducing Redis Stack FREE CHAPTER 3. Chapter 2: Developing Modern Use Cases with Redis Stack 4. Chapter 3: Getting Started with Redis Stack 5. Chapter 4: Setting Up Client Libraries 6. Part 2: Data Modeling
7. Chapter 5: Redis Stack as a Document Store 8. Chapter 6: Redis Stack as a Vector Database 9. Chapter 7: Redis Stack as a Time Series Database 10. Chapter 8: Understanding Probabilistic Data Structures 11. Part 3: From Development to Production
12. Chapter 9: The Programmability of Redis Stack 13. Chapter 10: RedisInsight – the Data Management GUI 14. Chapter 11: Using Redis Stack as a Primary Database 15. Chapter 12: Managing Development and Production Environments 16. Index 17. Other Books You May Enjoy

Adding labels to data points

Labels are metadata attached to time series data points to provide additional context or information about the data. They are key-value pairs that help group, query, filter, or aggregate data. This makes it easier to manage and analyze large volumes of time-series data. For example, you might use labels to indicate the data source, measurement units, or the device or location from which the data was collected. By using labels, you can perform more granular and focused queries on your time-series data, making it easier to understand trends, relationships, and patterns.

Let’s apply a few labels to the mortensi.com site. Since its time series already exists, we can add labels by modifying the current time series as follows:

TS.ALTER mortensi.com LABELS dev python database redis

After applying the labels, the TS.INFO command for the mortensi.com time series will display them as shown here:

TS.INFO mortensi.com
1) "totalSamples"
2...
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