The jobs you can do by learning python are: 1. Software development; 2. Data mining; 3. Game development; 4. Big data analysis; 5. Python Web website engineer; 6. System operation and maintenance; 7. Python automated testing and more.

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Python is a very good programming language, many Everyone is learning, so what kind of jobs can you do after learning python? The following article will give you a brief summary, I hope it will be helpful to you.
1. Software development
Using python to make software is a job that many people are engaged in, whether it is B/S software or C/S software. And the demand is still quite large.
2. Data Mining
Python can make excellent crawler tools for data mining, and there are many data mining positions in many Internet companies.
3. Game development
Python is very scalable and has a library for game development, and game development is definitely a violent profession
4.Big data analysis
Now is the era of big data. It is also possible to use python to do big data. Big data analysis engineers are also hot positions.
5. Python Web website engineer
We all know that the Web has always been something that cannot be ignored. For the existence of , we cannot do without the Internet and the Web. We can use the Python framework to build websites, and they all have some exquisite front-end interfaces, as well as applications that we need to master some data.
6. System operation and maintenance
Python is supported in many Linux systems, and its syntax is very similar to shell scripts. It is also very good to do system operation and maintenance after learning Python
7. Python automated testing
As we all know, the Python language is very helpful for testing. The Python language is widely used in automated testing. It can be said that Python is too powerful. You must master and be familiar with the automated processes, methods and We always use various templates. So far, the most commonly used Python I know should be automated testing.
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