Home > Backend Development > Python Tutorial > Python Development Advice: Master and Apply Best Software Engineering Practices

Python Development Advice: Master and Apply Best Software Engineering Practices

PHPz
Release: 2023-11-23 09:08:29
Original
890 people have browsed it

Python Development Advice: Master and Apply Best Software Engineering Practices

As a high-level programming language, Python is widely used in fields such as web application development, data science, and artificial intelligence. Although Python is simple and easy to learn, the complexity of software engineering will become more significant as the project grows. Therefore, it is crucial to master and apply best software engineering practices during Python development.

In this article, we will introduce some Python development suggestions to help developers more effectively utilize the power of Python while avoiding errors and bad practices.

  1. Use version control tools

The version control tool is a very important tool that can track code changes and ensure that the code will not be lost during the development process. Git is a widely used version control tool. It has functions such as branch management, team collaboration, and code review. It is an important tool.

The development team should make full use of Git's capabilities and establish branches and tags to track code changes. At the same time, team members should submit code in real time so that any issues can be resolved promptly. Git can also create test branches, which can help separate current development work from the main branch.

  1. Using virtual environment

In the Python development process, the virtual environment is a very important tool that can help us avoid problems caused by library conflicts.

The Python virtual environment allows developers to use different Python versions and libraries between different projects to ensure compatibility between libraries. Virtual environment tools include virtualenv and conda, which allow us to easily create and manage virtual environments.

  1. Writing documents

Writing documents is a very important job, which helps team members collaborate better in the team. In Python development, we can write documentation using docstrings, which are special comments in Python. Docstrings allow us to document the connections between functions, classes, and modules and how to use them.

When writing documentation, we can use documentation generation tools, such as Sphinx. Sphinx can convert docstrings into easy-to-read documentation and create a professional documentation website for your project.

  1. Testing

Testing is an important part of developing high-quality software. The official Python library includes a unittest framework for writing test cases. In addition, there are testing tools such as pytest and nose, which can conduct more extensive testing of Python code.

During the testing process, we should cover different parts of the code, such as unit tests, integration tests, and end-to-end tests, to ensure the correctness of the code.

  1. Code Review

Code review is another important software engineering practice. Since Python is a high-level language, many errors are caught before the code is run. Therefore, during the code review process we can find and correct these errors.

Code reviews also help ensure compliance with selected style specifications, such as PEP 8. Always keeping your code written in conventions makes your code more readable and maintainable.

  1. Database Management

Database is a common component of Python applications, and database management is very important for both software engineering and maintenance. The official Python library includes the sqlite3 module for managing SQLite databases, but you can also use other databases such as MySQL, PostgreSQL, and MongoDB.

In terms of database management, we can use ORM (Object Relational Mapping), such as Django's ORM and SQLAlchemy. ORMs map database tables to Python objects, eliminating the need to manually write SQL queries.

  1. Performance Optimization

Performance optimization is a necessary task for Python development. For example, you can use the built-in standard library to increase code execution speed. List comprehensions, generators, iterators and decorators in Python can effectively improve code execution efficiency.

In terms of performance optimization, Python can also use other tools, such as libraries such as numba, Cython and numpy, as well as specialized Python performance optimization tools such as pyperf.

Conclusion

With the above 7 suggestions, we can better utilize the power of Python while avoiding common mistakes and bad practices. Python is a very popular programming language, which is widely used in web development, data science, artificial intelligence, and other fields. Although Python has simple and easy-to-learn characteristics, the complexity of software engineering becomes more significant as the project grows . Therefore, in the Python development process, mastering and applying the best software engineering practices is crucial.

In this article, we will introduce some Python development tips to help developers make better use of Python's powerful features while avoiding errors and bad practices.

  1. Use Version Control Tools

Version control tool is an essential tool that can track code changes and ensure that the code is not lost during the development process. Git is a widely used version control tool that has branch management, team collaboration, and code review functions, making it an essential tool.

The development team should make full use of Git's function to establish branches and tags to track code changes. Meanwhile, team members should submit code in real-time to solve problems promptly. Git can also create a testing branch to help separate the current development work from the main branch.

  1. Use Virtual Environment

In the Python development process, a virtual environment is an important tool that can help us avoid problems caused by library conflicts.

Python virtual environment allows developers to use different Python versions and libraries between different projects to ensure compatibility between libraries. Virtual environment tools include virtualenv and conda, which make it easy for us to create and manage virtual environments.

  1. Write Documentation

Writing documentation is a crucial task that helps team members collaborate better in the team. In Python development, we can use docstrings to write documentation, which is a special comment in Python. Docstrings allow us to document the relationship between functions, classes, and modules, as well as how to use them.

In writing documentation, we can use documentation generation tools such as Sphinx. Sphinx can convert docstrings into readable documentation and make a professional documentation website for your project.

  1. Testing

Testing is an important part of developing high-quality software. The Python official library includes a unittest framework for writing test cases. Additionally, there are pytest, nose, and other testing tools that can test Python code more widely.

During the testing process, we should cover different parts of the code, such as unit testing, integration testing, and end-to-end testing, to ensure the correctness of the code.

  1. Code Review

Code review is another important software engineering practice. As Python is a high-level language, many errors are detected before the code is executed. Therefore, in the code review process, we can find and correct these errors.

Code review also helps ensure compliance with the selected style guide, such as PEP 8. Keeping the code always written in convention can improve its readability and maintainability.

  1. Database Management

The database is a common component of Python applications, and database management is essential for software engineering and maintenance. The Python official library includes the sqlite3 module to manage SQLite databases, but you can also use other databases such as MySQL, PostgreSQL, and MongoDB.

In database management, we can use Object-Relational Mapping (ORM), such as Django's ORM and SQLAlchemy. ORM can map database tables to Python objects, eliminating the need for manual SQL queries.

  1. Performance Optimization

Performance optimization is a necessary work in Python development. For example, we can use the built-in standard library to improve code execution speed. The list comprehension, generator, iterator, and decorator in Python can all effectively improve the code's execution efficiency.

In performance optimization, Python can also use other tools, such as numba, Cython, and numpy libraries, as well as specialized Python performance optimization tools such as pyperf.

Conclusion

Through the above 7 tips, we can make better use of Python's powerful features while avoiding common errors and bad practices.

The above is the detailed content of Python Development Advice: Master and Apply Best Software Engineering Practices. For more information, please follow other related articles on the PHP Chinese website!

source:php.cn
Statement of this Website
The content of this article is voluntarily contributed by netizens, and the copyright belongs to the original author. This site does not assume corresponding legal responsibility. If you find any content suspected of plagiarism or infringement, please contact admin@php.cn
Popular Tutorials
More>
Latest Downloads
More>
Web Effects
Website Source Code
Website Materials
Front End Template