


Which direction is easier to find a job by learning Python?
First of all, let’s take a look at what tasks python can do?
1. Artificial Intelligence
Python is the golden language of artificial intelligence. It is natural to choose artificial intelligence as the employment direction, and the employment prospects are good and the salary is generally high. Lagou.com , the starting salary for recruitment of artificial intelligence engineers is generally 20K-35K. Of course, if you are a junior engineer, the starting salary has exceeded 12,500 yuan/month.
2. Big Data
We are currently in the era of big data. The language Python is more efficient than Java in big data. Although big data is difficult to learn, Python can better Connected with big data, the salary for using Python to do big data is at least 20K or more. Big data continues to be popular. In the future, the salary of being a big data engineer will gradually increase.
3. Web Crawler Engineer
As a powerful tool for data collection, web crawlers are very useful as the source of data in the era of big data. Using Python can quickly improve the accuracy and speed of data capture, which is a blessing for data analysts. Through web crawlers, BOSS no longer has to worry that you have no data. The salary of a crawler engineer starts at 20K. Of course, because of big data, the salary will also rise all the way.
4. Python web full-stack engineer
Full-stack engineer refers to a person who masters a variety of skills and can use multiple skills to independently complete products. Also called full-end engineer (having both front-end and back-end capabilities), English Full Stack developer. Full-stack engineers are the best among talents no matter which language they work in, and the salary of Python web full-stack engineer is basically 20K higher, so if you are capable enough, the first choice is Python web full-stack engineer.
5. Python Automated Operation and Maintenance
Operation and maintenance workers have a great demand for Python. Friends, please act quickly. You can also earn 10k-15k by learning Python for automated operation and maintenance. The salary is very good
6. Python automated testing
Python is a very efficient language. As long as it is related to automation, it can play a huge advantage. Currently, it is used for automated testing. Most workers need to learn Python to help improve testing efficiency. Testing with Python can also be said to be a must-have tool for testers. The starting salary for Python automated testing is generally around 15K, so test partners also need to learn Python!
In fact, within the scope of Python's application fields, any direction is a hot and sought-after position. As for which direction to choose, you need to decide based on your own interests and hobbies. If there is no direction, then do a crawler first. , after all, the crawler is simple and easy to use.
The above is the detailed content of Which direction is easier to find a job by learning Python?. For more information, please follow other related articles on the PHP Chinese website!

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