Readings Newsletter
Become a Readings Member to make your shopping experience even easier.
Sign in or sign up for free!
You’re not far away from qualifying for FREE standard shipping within Australia
You’ve qualified for FREE standard shipping within Australia
The cart is loading…
Get up to speed with Apache Kudu, the column-oriented data store for Hadoop that not only provides an architectural simplification of several existing use cases, but also allows use cases not possible before. With this practical guide, enterprise architects working on big data implemetations will learn how Kudu’s architecture and features solve a unique problem in the Hadoop ecosystem. For example, Kudu makes Hadoop viable for real-time IoT use cases in addition to making a transition from a massively parallel processing (MPP) SQL database engine plausible.
If you’re familiar with other storage layer projects such HDFS, HBase, Spanner, and Cassandra, you’ll quickly learn-and appreciate-the unique contribution Kudu makes to this ecosystem.
Explore how Kudu is compatible with data processing frameworks in the Hadoop environment
Understand Kudu’s architecture, internals, installation, and deployment
Learn how to fully administer a Kudu cluster
Become acquainted with low-level client APIs, how to integrate with SQL engines like Impala, and frameworks for integration
Learn about table and schema design
Get use cases, examples, best practices, and sample code
$9.00 standard shipping within Australia
FREE standard shipping within Australia for orders over $100.00
Express & International shipping calculated at checkout
Get up to speed with Apache Kudu, the column-oriented data store for Hadoop that not only provides an architectural simplification of several existing use cases, but also allows use cases not possible before. With this practical guide, enterprise architects working on big data implemetations will learn how Kudu’s architecture and features solve a unique problem in the Hadoop ecosystem. For example, Kudu makes Hadoop viable for real-time IoT use cases in addition to making a transition from a massively parallel processing (MPP) SQL database engine plausible.
If you’re familiar with other storage layer projects such HDFS, HBase, Spanner, and Cassandra, you’ll quickly learn-and appreciate-the unique contribution Kudu makes to this ecosystem.
Explore how Kudu is compatible with data processing frameworks in the Hadoop environment
Understand Kudu’s architecture, internals, installation, and deployment
Learn how to fully administer a Kudu cluster
Become acquainted with low-level client APIs, how to integrate with SQL engines like Impala, and frameworks for integration
Learn about table and schema design
Get use cases, examples, best practices, and sample code