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Mastering Concurrency Programming with Java 8

You're reading from   Mastering Concurrency Programming with Java 8 Master the principles and techniques of multithreaded programming with the Java 8 Concurrency API

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Product type Paperback
Published in Feb 2016
Publisher Packt
ISBN-13 9781785886126
Length 430 pages
Edition 1st Edition
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Author (1):
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Javier Fernández González Javier Fernández González
Author Profile Icon Javier Fernández González
Javier Fernández González
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Toc

Table of Contents (13) Chapters Close

Preface 1. The First Step – Concurrency Design Principles FREE CHAPTER 2. Managing Lots of Threads – Executors 3. Getting the Maximum from Executors 4. Getting Data from the Tasks – The Callable and Future Interfaces 5. Running Tasks Divided into Phases – The Phaser Class 6. Optimizing Divide and Conquer Solutions – The Fork/Join Framework 7. Processing Massive Datasets with Parallel Streams – The Map and Reduce Model 8. Processing Massive Datasets with Parallel Streams – The Map and Collect Model 9. Diving into Concurrent Data Structures and Synchronization Utilities 10. Integration of Fragments and Implementation of Alternatives 11. Testing and Monitoring Concurrent Applications Index

An example of a document clustering application

This application will read a set of documents and will organize them using the k-means clustering algorithms. To achieve this, we will use four components:

  • The Reader system: This system will read all the documents and convert every document into a list of String objects.
  • The Indexer system: This system will process the documents and convert them into a list of words. At the same time, it will generate the global vocabulary of the set of documents with all the words that appear on them.
  • The Mapper system: This system will convert each list of words into a mathematical representation using the vector space model. The value of each item will be the Tf-Idf (short for term frequency–inverse document frequency) metric.
  • The Clustering system: This system will use the k-means clustering algorithm to cluster the documents.

All these systems are concurrent and use their own tasks to implement their functionality. Let's see how you can implement...

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