If you are self-study and learn python from scratch, it will take about half a year to a year and a half according to each person's understanding. Of course, if you have other programming Language experience, it is relatively fast to get started. It takes about 2 to 3 months to write some simple applications in Python language. Only by studying the system can you better master Python skills.
Beginners can send me a private message if they don’t understand anything - I have just compiled a set of the latest 0-basic introductory tutorials in 2018, and share them selflessly. How to obtain them: Add the Python learning exchange group 935711829 that I created myself. This is a place for Python learning and communication. Whether you are a novice or an expert, the editor welcomes you. I will share useful information from time to time, including a list of materials and introductory tutorials I compiled that are suitable for learning Python from scratch.
In fact, if you want to learn a language or any other skill well, it is impossible to learn it in a short time, unless you can put your hands on the back to teach the skills like in the TV series, or get the Nine Dragon Slaying Knife. Yin Zhenjing.
To learn Python well, in my opinion, as long as the same thing can help you do it, that is, hobbies-hobbies-hobbies! Say important things three times! In the magical world of Python, the best way to learn is to find your own points of interest to enter, and always find your points of interest to drive yourself!
Another question is, what do you want to learn python for? This determines the depth of learning you need.
If you just want to learn about python, then just watch some basic online video python introductory tutorials;
If you want to do data processing and processing, then still The key is to first learn some methods such as regularity, loops, arrays, and word segmentation, and then combine them with some practical examples. For example, how to parse the crawled page data into a structured format;
If you want to use python for data algorithm modeling, we have developed a combination of A tool for commonly used LR/GBDT/DT/RF/ARPIORI/K-MEANS, import commonly used data tables, data filtering and processing discrete binning, etc.;
If you are using python to make some pages For development, you need to learn everything about Django.
The above is the detailed content of How long does it take to learn python by yourself?. For more information, please follow other related articles on the PHP Chinese website!

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