Book Image

Distributed Computing with Python

Book Image

Distributed Computing with Python

Overview of this book

CPU-intensive data processing tasks have become crucial considering the complexity of the various big data applications that are used today. Reducing the CPU utilization per process is very important to improve the overall speed of applications. This book will teach you how to perform parallel execution of computations by distributing them across multiple processors in a single machine, thus improving the overall performance of a big data processing task. We will cover synchronous and asynchronous models, shared memory and file systems, communication between various processes, synchronization, and more.
Table of Contents (15 chapters)
Distributed Computing with Python
Credits
About the Author
About the Reviewer
www.PacktPub.com
Preface
Index

A useful strategy – simulating components


A good, although possibly expensive in terms of time and effort, test strategy is to simulate some or all of the components of our system. The reasons are multiple; on one hand, simulating or mocking software components allows us to test our interfaces to them more directly. In this respect, mock testing libraries, such as unittest.mock (part of the Python 3.5 standard library), are truly useful.

Another reason to simulate software components is to make them fail or misbehave on demand and see how our application responds. For instance, we could increase the response time of services such as REST APIs or databases, to worst-case scenario levels and see what happens. Sometimes, we might exceed timeout values in some network calls leading our application to incorrectly assume that the server has crashed.

Especially early on in the design and development of a complex distributed application, one can make overly optimistic assumptions about things such...