


How to use Cython to write high-performance extension modules
How to use Cython to write high-performance extension modules
Introduction: Python is a simple and easy-to-learn programming language, but due to its interpreted nature, it may not perform well when processing large-scale data and computationally intensive tasks. As expected. Cython is a static compiler that converts Python code into C language. By using the syntax and features of the C programming language in Python, the execution speed of the program can be greatly improved. This article will introduce how to use Cython to write high-performance extension modules, and come with code examples to help readers better understand and apply Cython.
1. Introduction and installation of Cython
Cython is a compiler that converts Python code into C code. It combines the simplicity and flexibility of Python with the efficiency and powerful performance of C. When writing code written in Cython, we can use Python-like syntax, can call Python library functions, and can directly access C data structures and APIs.
First, we need to install Cython. It can be installed through the pip tool:
$ pip install Cython
After the installation is completed, we can start writing high-performance extension modules.
2. Write an extension module written in Cython
The following is a simple example showing how to use Cython to write an extension module that solves the Fibonacci sequence:
Create a file named fibonacci.pyx and write the following code in the file:
def fibonacci(n): if n <= 0: return 0 elif n == 1: return 1 else: return fibonacci(n-1) + fibonacci(n-2)
Copy after loginCreate a file named setup.py, And write the following code in the file:
from setuptools import setup from Cython.Build import cythonize setup( ext_modules = cythonize("fibonacci.pyx") )
Copy after loginExecute the following command in the command line to compile and install:
$ python setup.py build_ext --inplace
Copy after loginAfter the execution is completed, a file named The dynamic link library file of fibonacci.so.
Use this extension module in Python code:
import fibonacci result = fibonacci.fibonacci(10) print(result)
Copy after login
3. Performance test
In order to verify that it is written in Cython The performance of the extension module is improved compared to pure Python code. Let's conduct a simple performance test. We define a function to calculate the nth number of the Fibonacci sequence, then use pure Python code and an extension module written in Cython to perform the calculation, and compare their execution times.
The following is the test code:
import time import fibonacci def test_python(n): start = time.time() result = fibonacci_python.fibonacci(n) end = time.time() return result, end - start def test_cython(n): start = time.time() result = fibonacci.fibonacci(n) end = time.time() return result, end - start n = 30 result_python, time_python = test_python(n) result_cython, time_cython = test_cython(n) print("斐波那契数列的第{}个数".format(n)) print("纯Python实现的结果:{}".format(result_python)) print("纯Python实现的执行时间:{}秒".format(time_python)) print("使用Cython编写的扩展模块的结果:{}".format(result_cython)) print("使用Cython编写的扩展模块的执行时间:{}秒".format(time_cython))
After running the test code, we can see that the extension module written in Cython has obvious performance advantages compared to pure Python code, and the execution time is greatly shortened.
Conclusion:
By using Cython to write extension modules, we can give full play to the advantages of C language and improve the execution speed of Python code. When processing large amounts of data and computationally intensive tasks, using Cython can effectively improve program performance. Of course, in actual use, it is necessary to choose appropriate optimization methods according to specific circumstances, such as using C data structures and APIs, utilizing static types, etc.
I hope this article can help readers better apply Cython and write high-performance extension modules.
Reference:
- Cython Documentation. https://cython.readthedocs.io/en/latest/
- Cython Tutorial. https://cython. org/tutorial.html
The above is the detailed content of How to use Cython to write high-performance extension modules. For more information, please follow other related articles on the PHP Chinese website!

Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

Video Face Swap
Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Article

Hot Tools

Notepad++7.3.1
Easy-to-use and free code editor

SublimeText3 Chinese version
Chinese version, very easy to use

Zend Studio 13.0.1
Powerful PHP integrated development environment

Dreamweaver CS6
Visual web development tools

SublimeText3 Mac version
God-level code editing software (SublimeText3)

Hot Topics

How to use Swoole to implement a high-performance HTTP reverse proxy server Swoole is a high-performance, asynchronous, and concurrent network communication framework based on the PHP language. It provides a series of network functions and can be used to implement HTTP servers, WebSocket servers, etc. In this article, we will introduce how to use Swoole to implement a high-performance HTTP reverse proxy server and provide specific code examples. Environment configuration First, we need to install the Swoole extension on the server

PHP and WebSocket: Building high-performance real-time applications As the Internet develops and user needs increase, real-time applications are becoming more and more common. The traditional HTTP protocol has some limitations when processing real-time data, such as the need for frequent polling or long polling to obtain the latest data. To solve this problem, WebSocket came into being. WebSocket is an advanced communication protocol that provides two-way communication capabilities, allowing real-time sending and receiving between the browser and the server.

C++ is a high-performance programming language that provides developers with flexibility and scalability. Especially in large-scale data processing scenarios, the efficiency and fast computing speed of C++ are very important. This article will introduce some techniques for optimizing C++ code to cope with large-scale data processing needs. Using STL containers instead of traditional arrays In C++ programming, arrays are one of the commonly used data structures. However, in large-scale data processing, using STL containers, such as vector, deque, list, set, etc., can be more

With the continuous development of science and technology, speech recognition technology has also made great progress and application. Speech recognition applications are widely used in voice assistants, smart speakers, virtual reality and other fields, providing people with a more convenient and intelligent way of interaction. How to implement high-performance speech recognition applications has become a question worth exploring. In recent years, Go language, as a high-performance programming language, has attracted much attention in the development of speech recognition applications. The Go language has the characteristics of high concurrency, concise writing, and fast execution speed. It is very suitable for building high-performance

Use Go language to develop high-performance face recognition applications Abstract: Face recognition technology is a very popular application field in today's Internet era. This article introduces the steps and processes for developing high-performance face recognition applications using Go language. By using the concurrency, high performance, and ease-of-use features of the Go language, developers can more easily build high-performance face recognition applications. Introduction: In today's information society, face recognition technology is widely used in security monitoring, face payment, face unlocking and other fields. With the rapid development of the Internet

Java development: How to use Netty for high-performance network programming Summary: Netty is a high-performance, asynchronous event-driven network programming framework that simplifies the development process of network applications. This article will introduce the main features of Netty and how to use Netty for high-performance network programming. At the same time, we will also provide some specific Java code examples to help readers better understand and apply Netty. 1. Introduction to Netty Netty is a network programming box based on JavaNIO

Technical practice of Docker and SpringBoot: quickly build high-performance application services Introduction: In today's information age, the development and deployment of Internet applications have become increasingly important. With the rapid development of cloud computing and virtualization technology, Docker, as a lightweight container technology, has received widespread attention and application. SpringBoot has also been widely recognized as a framework for rapid development and deployment of Java applications. This article will explore how to combine Docker and SpringB

Summary of Java implementation ideas for high-performance database search algorithms: With the advent of the Internet and big data era, the storage and search performance of the database are crucial to the efficiency of data processing. This article will introduce a Java implementation idea for a high-performance database search algorithm and provide specific code examples. Introduction Database search is one of the key operations for fast querying in large-scale data collections. Traditional database search algorithms have the problem of low search efficiency and cannot meet the needs of the big data era. Therefore, high-performance database search algorithms are
