Examples of environment template customizations
Follow the examples that show how to add custom libraries through conda
or pip
when you create an environment template, by using the provided templates for Python and R.
mamba
in place of conda
in the following examples. Remember to select the checkbox to install from mamba
if you add channels or packages from mamba
to the existing environment template.Examples exist for:
- Adding
conda
packages - Adding
pip
packages - Combining
conda
andpip
packages - Adding complex packages with internal dependencies
- Adding
conda
packages for R notebooks - Setting environment variables
Hints and tips:
Adding conda
packages
To get latest versions of pandas-profiling:
dependencies:
- pandas-profiling
This is equivalent to running conda install pandas-profiling
in a notebook.
Adding pip
packages
You can also customize an environment using pip
if a particular package is not available in conda
channels:
dependencies:
- pip:
- ibm_watsonx_ai
This is equivalent to running pip install ibm_watsonx_ai
in a notebook.
The customization will actually do more than just install the specified pip
package. The default behavior of conda
is to also look for a new version of pip
itself and then install it. Checking all the implicit
dependencies in conda
often takes several minutes and also gigabytes of memory. The following customization will shortcut the installation of pip
:
channels:
- empty
- nodefaults
dependencies:
- pip:
- ibm_watsonx_ai
The conda
channel empty
does not provide any packages. There is no pip
package in particular. conda
won't try to install pip
and will use the already pre-installed version instead.
Note that the keyword nodefaults
in the list of channels needs at least one other channel in the list. Otherwise conda
will silently ignore the keyword and use the default channels.
Combining conda
and pip
packages
You can list multiple packages with one package per line. A single customization can have both conda
packages and pip
packages.
dependencies:
- pandas-profiling
- scikit-learn=0.20
- pip:
- ibm_watsonx_ai
- sklearn-pandas==1.8.0
Note that the required template notation is sensitive to leading spaces. Each item in the list of conda
packages must have two leading spaces. Each item in the list of pip
packages must have four leading spaces. The
version of a conda
package must be specified using a single equals symbol (=
), while the version of a pip
package must be added using two equals symbols (==
).
Adding complex packages with internal dependencies
When you add many packages or a complex package with many internal dependencies, the conda
installation might take long or might even stop without returning any error messages. To avoid this:
- Specify the versions of the packages that you want to add. This reduces the search space for
conda
to resolve dependencies. - Increase the memory size of the environment.
- Use a specific channel instead of the default
conda
channels that are defined in the.condarc
file. This avoids running lengthy searches through large channels.
Example of a customization that doesn't use the default conda
channels:
# get latest version of the prophet package from the conda-forge channel
channels:
- conda-forge
- nodefaults
dependencies:
- prophet
This customization corresponds to the following command in a notebook:
!conda install -c conda-forge --override-channels prophet -y
Adding conda
packages for R notebooks
The following example shows you how to create a customization that adds conda
packages to use in an R notebook:
channels:
- defaults
dependencies:
- r-plotly
This customization corresponds to the following command in a notebook:
print(system("conda install r-plotly", intern=TRUE))
The names of R packages in conda
generally start with the prefix r-
. If you just use plotly
in your customization, the installation would succeed but the Python package would be installed instead of the
R package. If you then try to use the package in your R code as in library(plotly)
, this would return an error.
Setting environment variables
You can set environment variables in your environment by adding a variables
section to the software customization template as shown in the following example:
variables:
my_var: my_value
HTTP_PROXY: https://myproxy:3128
HTTPS_PROXY: https://myproxy:3128
NO_PROXY: cluster.local
The example also shows that you can use the variables
section to set a proxy server for an environment.
Limitation: You cannot override existing environment variables, for example LD_LIBRARY_PATH
, by using this approach.
Best practices
To avoid problems with missing packages and conflicting dependencies, start by manually installing the packages that you need through a notebook in a test environment. This way you can interactively check if packages can be installed without errors. After you verify that the packages are correctly installed, create a customization for your development or production environment and add the packages to the customization template.
Parent topic: Customizing environments