


Use conda to build a reliable and durable Python virtual environment
Using conda to build a stable and reliable Python virtual environment requires specific code examples
With the rapid development of Python, more and more developers need to Different versions of Python and various dependent libraries are used in the project. Sharing the same Python environment with multiple projects may cause problems such as version conflicts. In order to solve these problems, using a virtual environment is a good choice. Conda is a very popular virtual environment management tool that can help us create and manage multiple stable and reliable Python virtual environments. This article will introduce how to use conda to build a stable and reliable Python virtual environment, and provide specific code examples.
First, we need to install conda. conda is a package manager in the Anaconda distribution that can be used to install, update, and manage Python packages and their dependencies. After installing the Anaconda distribution, conda is automatically installed into the system.
Next, we can use conda to create a new Python virtual environment. Suppose we want to create a virtual environment named "myenv", execute the following command:
conda create --name myenv
This command will create a new "myenv" in the current directory folder and install a clean Python environment in it.
Of course, we can also create a virtual environment by specifying the Python version. For example, if we want to create a Python 3.7 virtual environment, we can execute the following command:
conda create --name myenv python=3.7
After executing the above command, conda will automatically download And install the Python 3.7 environment.
Next, we can activate this newly created virtual environment. Under Windows system, execute the following command:
activate myenv
Under Mac or Linux system, execute the following command:
source activate myenv
Activate After creating a virtual environment, we can install various Python packages in it. For example, to install numpy you can execute the following command:
conda install numpy
Similarly, we can also specify the required package version. For example, to install a specific version of numpy, you can execute the following command:
conda install numpy=1.18.1
In addition, we can also install other commonly used Python libraries in the virtual environment, such as pandas, matplotlib etc.
After we install all the required software packages in the virtual environment, we can save the software packages installed in the virtual environment and their version information to a file so that we can quickly restore the environment later. Execute the following command to save the environment information to a file:
conda list --export > environment.yaml
It should be noted that the exported environment information file only contains software packages and their version information. , does not contain the configuration information of the Python environment.
The next time we need to use this virtual environment, we can create a new virtual environment and restore the environment through the following command:
conda env create --file environment.yaml
This command will re-create and install the virtual environment, as well as the software packages and their versions based on the contents of the environment information file.
In addition, if you want to delete a virtual environment, you can execute the following command:
conda remove --name myenv --all
This command will delete the name " myenv" virtual environment and the software packages in it.
In summary, it is very simple to use conda to build a stable and reliable Python virtual environment. We only need to use conda to create a new virtual environment, activate the environment, install the required software packages, and then export the environment information to a file. When the environment needs to be restored, the virtual environment can be re-created and installed through the environment information file. In this way, we can easily manage and use multiple stable and reliable Python virtual environments.
I hope this article can be helpful to everyone, and I also hope that everyone can make full use of conda, a powerful tool, to build a stable and reliable Python development environment.
The above is the detailed content of Use conda to build a reliable and durable Python virtual environment. For more information, please follow other related articles on the PHP Chinese website!

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