


How to Inherit Specific Packages in Virtualenv from Global Site-Packages?
Inheriting Specific Packages in Virtualenv from Global Site-Packages
To enhance the functionality of a virtual environment (virtualenv), you may desire to inherit specific packages from the global site-packages directory. This approach allows you to selectively incorporate vital libraries into your virtualenv without installing them directly.
Inheritance Method
To achieve this inheritance, create a new virtualenv using the following command:
<code class="bash">virtualenv --system-site-packages</code>
This command enables the virtualenv to access packages installed in the system's global site-packages directory.
Installing Within Virtualenv
Once the virtualenv is active, you can install packages specific to the virtualenv using the following commands:
<code class="bash">pip install --ignore-installed <package-name></code>
or
<code class="bash">pip install -I <package-name></code>
These commands will install the specified packages locally within the virtualenv, even if a system-wide version exists.
Package Precedence
By default, the Python interpreter will search for modules first in the virtualenv's package directory. This ensures that the packages installed locally take precedence over any global versions. Therefore, the packages inherited from the global site-packages effectively become shadowed within the virtualenv.
The above is the detailed content of How to Inherit Specific Packages in Virtualenv from Global Site-Packages?. For more information, please follow other related articles on the PHP Chinese website!

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