Python learning resources: From getting started to mastering
This article will dive into the best books for learning Python, covering different levels from beginners to advanced programmers, as well as different fields and learning methods. Ready? Let's sneak into the world of Python! ?
We also recently reviewed the best books for learning HTML, CSS, JavaScript, PHP, Node.js and SQL.
Catalog:
- What is Python?
- How to choose the best Python book?
- Beginner Python Books
- 《Python Programming: A Guide to Getting Started with Quick Python in 7 Days》
- "Learn Python in One Day and Being Proficient: A Guide to Beginners in Python for Hands-Original Projects"
- 《Python Pocket Reference: Carry Python》
- "Learning Python: Powerful Object-Oriented Programming"
- 《Smooth Python: Clear, concise, and efficient programming》
- 《Python Beginner's Guide: Quick Python in a Week》
- 《Python Quick-Study: Introduction to Python Programming in Hands-On Python》
- 《Automatic Office with Python: Practical Programming for Absolute Beginners》
- Python books for learning computer science
- "In-depth Learning Python 3: An Initial Preparation for a Very Simple, Fearing and Beautiful World of Computers and Code"
- "Children's Programming: Python: Learn programming through 50 wonderful games and activities"
- 《Python Programming: Introduction to Computer Science》
- "Thinking Python like a computer scientist"
- Professional Python books
- 《Python Everyone Learns: Exploring Data with Python 3》
- 《Using Python for Data Analysis: Using Pandas, NumPy and IPython for Data Organization》
- 《Writing Your Own Computer Games in Python》
- "Beginner of Python Machine Learning: A Guide to Data Scientists"
- 《Python for Excel: A modern environment for automation and data analysis》
- 《Python Finance: Mastering Data-Driven Finance》
- Hacking Python books
- "Efficient Python: 90 Ways to Write Better Python Code"
- 《Python Skills: Wonderful Python Features Buffet》
- "Hacking Python: Python Programming for Hackers and Penetration Testers"
- Python books for all levels
- Python: Bible
- Additional resources: Quick lookup table!
- Additional resources: SitePoint Library
What is Python?
Python is a versatile programming language. It is fun, well designed, elegant, widely adopted, and relatively easy to learn.
Python is really very powerful in general programming:
- Web Development
- Machine Learning and Artificial Intelligence
- Data Science and Data Analysis
- Software Test
- (To some extent) game development and microcontrollers
If you want to learn more about Python, please check out what Python is and what it is for?
How to choose the best Python book?
Although Python itself is easy to learn, there is a lot of content to master. This is because you can do a lot of things with it! As expected, there are a lot of great books.
When choosing Python books, consider the following factors:
- Your current programming skills
- The area of ??interest you are interested in
- Your learning method (is it academic, practical or "hacker" style?)
Beginner Python Books
It's logical to start with the introductory books, here are some of our favorite books.
Python Programming: 7-Day Quick Python Getting Started Guide
- Author: Ramsey Hamilton
- Publisher: Independent Publishing (June 14, 2016)
- Paperback: 90 pages
- Amazon Ranking: 4.4/5 (5,822 Reviews)
Python Programming is a very direct and concise book, only 90 pages long! It is written in simple language and is perfect for absolute beginners. It covers the basics of Python and its data structures, and also covers topics such as functions, classes, modules, and exceptions.
There are reported quality issues in e-books, such as typos and poor formatting, which may annoy readers a little. Even so, it still has nearly 6,000 reviews on Amazon, so if you want a quick, short guide and a fairly cheap book, it might be worth a look.
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... (Please rewritten the other books according to the above format) ...
Conclusion
Python is one of the most popular programming languages ??in history, and its popularity is growing because it is very versatile and can be used for a wide variety of tasks.
Although our list of books and resources is extensive, we certainly missed many other options for learning Python. We wish you all the best on finding your path to Python expertise – whether through these books or other avenues. ??
(The FAQ part also needs to be rewritten according to the same principle, so I will not repeat it here)
The above is the detailed content of Top 22 Python Book for Beginners and Advanced Coders. For more information, please follow other related articles on the PHP Chinese website!

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