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Beta
This lesson is in the beta phase, which means that it is ready for teaching by instructors outside of the original author team.
ESMValTool Tutorial
ESMValTool provides a reliable interface to analyse and evaluate
climate data
A large collection of recipes and diagnostic scripts is already
available
ESMValTool is built and maintained by an active community of
scientists and developers
The purpose of the quickstart guide is to enable a user of
ESMValTool to run ESMValTool as quickly as possible without having to go
through the whole tutorial
Use the module load
command to load the ESMValTool
environment, see the \[Installation\] \[lesson-installation\] episode for more
details and use esmvaltool --help
to check the ESMValTool
environment
Use esmvaltool config get_config_user
to create the
ESMValTool user configuration file
Use esmvaltool run <recipe>.yml
to run a
recipe
All the required packages can be installed using mamba.
You can find more information about installation in the documentation .
The config-user.yml
tells ESMValTool where to find
input data.
output_dir
defines the destination directory.
rootpath
defines the root path of the data.
drs
defines the directory structure of the data.
ESMValTool recipes work ‘out of the box’ (if input data is
available)
There are strong links between the recipe, log file, and output
folders
Recipes can easily be modified to re-use existing code for your own
use case
Individual mini-tutorials help work through a specific issue (not
developed yet).
We are constantly improving this tutorial.
A recipe can work with different preprocessors at the same
time.
The setting additional_datasets
can be used to add a
different dataset.
Variable groups are useful for defining different settings for
different variables.
Multiple ensemble members and experiments can be analysed in a
single recipe through concatenation.
A development installation is needed if you want to incorporate your
code into ESMValTool.
Contributions include adding a new or improved script or helping
with a review process.
There are several tools to help improve the quality of your
code.
It is possible to run tests on your machine.
You can preview documentation pages locally.
ESMValTool provides helper functions to interface a Python
diagnostic script with preprocessor output.
Existing diagnostics can be used as templates and modified to write
new diagnostics.
Helper functions can be imported from
esmvaltool.diag_scripts.shared
and used in your own
diagnostic script.
CMORizers are dataset-specific scripts that can be run once to
generate CMOR-compliant data.
ESMValTool comes with a set of CMORizers readily available, but you
can also add your own.
There are three different kinds of log files:
main_log.txt
, and main_log_debug.txt
and
log.txt
.