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Advanced Python Programming

You're reading from   Advanced Python Programming Build high performance, concurrent, and multi-threaded apps with Python using proven design patterns

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Product type Course
Published in Feb 2019
Publisher Packt
ISBN-13 9781838551216
Length 672 pages
Edition 1st Edition
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Authors (3):
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Quan Nguyen Quan Nguyen
Author Profile Icon Quan Nguyen
Quan Nguyen
Sakis Kasampalis Sakis Kasampalis
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Sakis Kasampalis
Dr. Gabriele Lanaro Dr. Gabriele Lanaro
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Dr. Gabriele Lanaro
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Table of Contents (41) Chapters Close

Title Page
Copyright
About Packt
Contributors
Preface
Benchmarking and Profiling FREE CHAPTER Pure Python Optimizations Fast Array Operations with NumPy and Pandas C Performance with Cython Exploring Compilers Implementing Concurrency Parallel Processing Advanced Introduction to Concurrent and Parallel Programming Amdahl's Law Working with Threads in Python Using the with Statement in Threads Concurrent Web Requests Working with Processes in Python Reduction Operators in Processes Concurrent Image Processing Introduction to Asynchronous Programming Implementing Asynchronous Programming in Python Building Communication Channels with asyncio Deadlocks Starvation Race Conditions The Global Interpreter Lock The Factory Pattern The Builder Pattern Other Creational Patterns The Adapter Pattern The Decorator Pattern The Bridge Pattern The Facade Pattern Other Structural Patterns The Chain of Responsibility Pattern The Command Pattern The Observer Pattern 1. Appendix 2. Other Books You May Enjoy Index

Example implementation in Python


As we mentioned previously, due to their communicative and associative properties, reduction operators can have their partial tasks created and processed independently, and this is where concurrency can be applied. To truly understand how a reduction operator utilizes concurrency, let's try implementing a concurrent, multiprocessing reduction operator from scratch—specifically the add operator.

Similar to what we saw in the previous chapter, in this example, we will be using a task queue and a result queue to facilitate our interprocess communication. Specifically, the program will store all of the numbers in the input array in the task queue as individual tasks. As each of our consumers (individual processes) executes, it will call get() on the task queue twice to obtain two task numbers (except for some edge cases where there is no or only one number left in the task queue), add them together, and put the result in the result queue.

Similar to adding pairs...

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