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Learning Apache Cassandra

You're reading from   Learning Apache Cassandra Build an efficient, scalable, fault-tolerant, and highly-available data layer into your application using Cassandra

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Product type Paperback
Published in Feb 2015
Publisher
ISBN-13 9781783989201
Length 246 pages
Edition 1st Edition
Languages
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Author (1):
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Matthew Brown Matthew Brown
Author Profile Icon Matthew Brown
Matthew Brown
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Table of Contents (14) Chapters Close

Preface 1. Getting Up and Running with Cassandra FREE CHAPTER 2. The First Table 3. Organizing Related Data 4. Beyond Key-Value Lookup 5. Establishing Relationships 6. Denormalizing Data for Maximum Performance 7. Expanding Your Data Model 8. Collections, Tuples, and User-defined Types 9. Aggregating Time-Series Data 10. How Cassandra Distributes Data A. Peeking Under the Hood B. Authentication and Authorization Index

Summary


In this chapter, we explored strategies for aggregating observed time-series data—in this case user behavior in viewing status updates in our application. While user behavior analytics are a fantastic and common use case for Cassandra, we could also take the same approach to aggregate scientific data, economic data, or anything else where we'd like to roll up discrete observations into high-level aggregate values.

Our structure for recording time-series data used a table containing discrete observations as the raw material and acting as the data record in case we want to introduce new aggregate dimensions down the line. We also used a table that precomputed aggregate observations by day; by keeping the aggregate up-to-date at write time, we built a structure that allows us to very efficiently retrieve aggregates over a given time period, without any expensive computation at read time. We can easily imagine constructing dozens of such tables, one for each level of granularity at which...

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