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Learning Python Application Development

You're reading from   Learning Python Application Development Take Python beyond scripting to build robust, reusable, and efficient applications

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Product type Paperback
Published in Sep 2016
Publisher Packt
ISBN-13 9781785889196
Length 454 pages
Edition 1st Edition
Languages
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Author (1):
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Ninad Sathaye Ninad Sathaye
Author Profile Icon Ninad Sathaye
Ninad Sathaye
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Table of Contents (12) Chapters Close

Preface 1. Developing Simple Applications FREE CHAPTER 2. Dealing with Exceptions 3. Modularize, Package, Deploy! 4. Documentation and Best Practices 5. Unit Testing and Refactoring 6. Design Patterns 7. Performance – Identifying Bottlenecks 8. Improving Performance – Part One 9. Improving Performance – Part Two, NumPy and Parallelization 10. Simple GUI Applications Index

Identifying the bottlenecks


In the previous section, we saw how a different choice of input parameters degrades the application runtime. Now, we need some way to accurately measure the execution time and find out the performance bottlenecks or the time consuming blocks of the code.

Measuring the execution time

Let's start by monitoring the time taken by the application. To do this, we will use Python's built-in time module. The time.perf_counter function is a performance counter that returns a clock with the highest available resolution. This function can be used to determine the time interval or the system-wide time difference between the two consecutive calls to the function.

Tip

The time.perf_counter function is available in Python versions 3.3 onwards. If you have an older version of Python (for example, version 2.7), use time.clock() instead. On Unix, time.clock() returns a floating point number within seconds that represents the processor time. On Windows, it returns the elapsed wall-clock...

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