Python packages
PyPI packages
You can install your required PyPI packages and import them in your Python files using pip. Cortex looks for a requirements.txt
file in the top level Cortex project directory (i.e. the directory which contains cortex.yaml
):
If you want to use conda
to install your python packages, see the Conda section below.
Note that some packages are pre-installed by default (see "pre-installed packages" for your Predictor type in the Realtime API Predictor documentation and Batch API Predictor documentation).
Private PyPI packages
To install packages from a private PyPI index, create a pip.conf
inside the same directory as requirements.txt
, and add the following contents:
In same directory, create a dependencies.sh
script and add the following:
You may now add packages to requirements.txt
which are found in the private index.
GitHub packages
You can also install public/private packages from git registries (such as GitHub) by adding them to requirements.txt
. Here's an example for GitHub:
On GitHub, you can generate a personal access token by following these steps .
Installing with Setup
Python packages can also be installed by providing a setup.py
that describes your project's modules. Here's an example directory structure:
In this case, requirements.txt
will have this form:
Conda packages
Cortex supports installing Conda packages. We recommend only using Conda when your required packages are not available in PyPI. Cortex looks for a conda-packages.txt
file in the top level Cortex project directory (i.e. the directory which contains cortex.yaml
):
The conda-packages.txt
file follows the format of conda list --export
. Each line of conda-packages.txt
should follow this pattern: [channel::]package[=version[=buildid]]
.
Here's an example of conda-packages.txt
:
In situations where both requirements.txt
and conda-packages.txt
are provided, Cortex installs Conda packages in conda-packages.txt
followed by PyPI packages in requirements.txt
. Conda and Pip package managers install packages and dependencies independently. You may run into situations where Conda and pip package managers install different versions of the same package because they install and resolve dependencies independently from one another. To resolve package version conflicts, it may be in your best interest to specify their exact versions in conda-packages.txt
.
The current version of Python is 3.6.9
. Updating Python to a different version is possible with Conda, but there are no guarantees that Cortex's web server will continue functioning correctly. If there's a change in Python's version, the necessary core packages for the web server will be reinstalled. If you are using a custom base image, any other Python packages that are built in to the image won't be accessible at runtime.
Check the best practices on using pip
inside conda
.
Customizing Dependency Paths
Cortex allows you to specify different dependency paths other than the default ones. This can be useful when deploying different versions of the same API (e.g. CPU vs GPU dependencies).
To customize the path for your dependencies, you can specify predictor.dependencies
in your API's configuration file. You can set one or more fields to specify the path for each dependency type. Each path should be a relative path with respect to the current file.
For example:
Last updated