


What are the differences and similarities in the usage and functions of pip and pip3?
pip and pip3 are Python package management tools used to install, upgrade and manage Python packages and dependencies. While they all accomplish the same task, there are some similarities and differences in certain situations.
One of the similarities and differences is the Python version they correspond to. pip corresponds to Python2, and pip3 corresponds to Python3. Due to the differences between Python version branches, especially Python2 and Python3, pip and pip3 exist. If you have both Python2 and Python3 installed, you can use pip2 and pip3 to distinguish them.
First let’s look at how to use pip. Its basic usage is:
pip install package_name pip install package_name==version pip uninstall package_name
For example, if you want to install a package named requests, you can execute the following command:
pip install requests
If you want to install a specific version of requests, you can execute the following Command:
pip install requests==2.25.1
To uninstall a package, you can use the following command:
pip uninstall requests
The usage of pip3 is basically the same as pip, except that pip is replaced with pip3. For example, the command to install the requests package is:
pip3 install requests
The command to uninstall the requests package is:
pip3 uninstall requests
However, in some cases, there may be problems using pip because it uses Python2 environment. This is one of the reasons why it is recommended to use pip3 with Python3.
Another difference is the support for some advanced commands. pip3 has more features and options than pip, allowing more flexibility in managing Python packages. The following are some commonly used pip3 commands:
pip3 freeze pip3 search package_name pip3 show package_name pip3 list
These commands are used to list currently installed packages and versions, search for package information, display package details, and list installed packages.
In summary, pip and pip3 are Python package management tools. Their basic functions and usage methods are similar, but the corresponding Python versions are different. When using it, it is recommended to use the tool corresponding to your current Python version to ensure correct installation and management of Python packages.
This is a sample code that uses pip3 to install the requests package:
# 引入相关模块 import requests # 发起HTTP请求 response = requests.get("https://www.google.com") # 打印响应内容 print(response.text)
The above code will use pip3 to install the requests package, then initiate an HTTP request and print out the response content.
I hope this article will help you understand the functions and uses of pip and pip3.
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