Analysis for simulations produced with Model for Prediction Across Scales (MPAS) components and the Energy Exascale Earth System Model (E3SM), which used those components.
All platforms: |
Name | Downloads | Version | Platforms |
---|---|---|---|
https://mpas-dev.github.io/MPAS-Analysis/develop/
MPAS-Analysis is available as an anaconda package via the conda-forge
channel:
conda config --add channels conda-forge
conda create -n mpas-analysis mpas-analysis
conda activate mpas-analysis
To use the latest version for developers, get the code from: https://github.com/MPAS-Dev/MPAS-Analysis
Then, you will need to set up a conda environment from the MPAS-Analysis repo.
This environment will include the required dependencies for the development
branch from dev-spec.txt
and will install the mpas_analysis
package into
the conda environment in a way that points directly to the local branch (so
changes you make to the code directly affect mpas_analysis
in the conda
environment):
conda config --add channels conda-forge
conda config --set channel_priority strict
conda create -y -n mpas_dev --file dev-spec.txt
conda activate mpas_dev
python -m pip install --no-deps --no-build-isolation -e .
If you are developing another conda package at the same time (this is common
for MPAS-Tools or geometric_features), you should first comment out the other
package in dev-spec.txt
. Then, you can install both packages in the same
development environment, e.g.:
conda create -y -n mpas_dev --file tools/MPAS-Tools/conda_package/dev-spec.txt \
--file analysis/MPAS-Analysis/dev-spec.txt
conda activate mpas_dev
cd tools/MPAS-Tools/conda_package
python -m pip install --no-deps --no-build-isolation -e .
cd ../../../analysis/MPAS-Analysis
python -m pip install --no-deps --no-build-isolation -e .
Obviously, the paths to the repos may be different in your local clones. With
the mpas_dev
environment as defined above, you can make changes to both
mpas_tools
and mpas-analysis
packages in their respective branches, and
these changes will be reflected when refer to the packages or call their
respective entry points (command-line tools).
If you installed the mpas-analysis
package, download the data that is
necessary to MPAS-Analysis by running:
download_analysis_data -o /path/to/mpas_analysis/diagnostics
where /path/to/mpas_analysis/diagnostics
is the main folder that will contain
two subdirectories:
mpas_analysis
, which includes mapping and region mask files for
standard resolution MPAS meshesobservations
, which includes the pre-processed observations listed in the
Observations table
and used to evaluate the model resultsOnce you have downloaded the analysis data, you will point to its location
(your equivalent of path/to/mpas_analysis/diagnostics
above) in the config
option baseDirectory
in the [diagnostics]
section.
If you installed the mpas-analysis
package, list the available analysis tasks
by running:
mpas_analysis --list
This lists all tasks and their tags. These can be used in the generate
command-line option or config option. See mpas_analysis/default.cfg
for more details.
myrun.cfg
), copy example.cfg
,
or copy one of the example files in the configs
directory (if using a
git repo) or download one from the
example configs directory.mpas_analysis/default.cfg
(in a git repo) or directly
from GitHub:
default.cfg.mpas-analysis
package, run:
mpas_analysis myrun.cfg
. This will read the configuration
first from mpas_analysis/default.cfg
and then replace that
configuration with any changes from from myrun.cfg
If you want to run a subset of the analysis, you can either set the
generate
option under [output]
in your config file or use the
--generate
flag on the command line. See the comments in
mpas_analysis/default.cfg
for more details on this option.
Requirements for custom config files:
baseDirectory
under [output]
to the folder
where output is stored. NOTE this value should be a unique
directory for each run being analyzed. If multiple runs are analyzed in
the same directory, cached results from a previous analysis will not be
updated correctly.mpas_analysis/default.cfg
.
This file will automatically be used for any options you do not include
in your custom config file.mpas_analysis/default.cfg
directly.mpaso.hist.am.timeSeriesStatsMonthly.*.nc
(Note: since OHC
anomalies are computed wrt the first year of the simulation,
if OHC diagnostics is activated, the analysis will need the
first full year of mpaso.hist.am.timeSeriesStatsMonthly.*.nc
files, no matter what [timeSeries]/startYear
and
[timeSeries]/endYear
are. This is especially important to know if
short term archiving is used in the run to analyze: in that case, set
[input]/runSubdirectory
, [input]/oceanHistorySubdirectory
and
[input]/seaIceHistorySubdirectory
to the appropriate run and archive
directories and choose [timeSeries]/startYear
and
[timeSeries]/endYear
to include only data that have been short-term
archived).mpaso.hist.am.meridionalHeatTransport.0001-03-01.nc
(or any
hist.am.meridionalHeatTransport
file)mpaso.rst.0002-01-01_00000.nc
(or any other mpas-o restart file)streams.ocean
mpaso_in
mpasseaice.hist.am.timeSeriesStatsMonthly.*.nc
mpasseaice.rst.0002-01-01_00000.nc
(or any other mpas-seaice restart
file)streams.seaice
mpassi_in
Note: for older runs, mpas-seaice files will be named:
mpascice.hist.am.timeSeriesStatsMonthly.*.nc
mpascice.rst.0002-01-01_00000.nc
streams.cice
mpas-cice_in
Also, for older runs mpaso_in
will be named:mpas-o_in
To purge old analysis (delete the whole output directory) before running run
the analysis, add the --purge
flag. If you installed mpas-analysis
as
a package, run:
mpas_analysis --purge <config.file>
All of the subdirectories listed in output
will be deleted along with the
climatology subdirectories in oceanObservations
and seaIceObservations
.
It is a good policy to use the purge flag for most changes to the config file, for example, updating the start and/or end years of climatologies (and sometimes time series), changing the resolution of a comparison grid, renaming the run, changing the seasons over which climatologies are computed for a given task, updating the code to the latest version.
Cases where it is reasonable not to purge would be, for example, changing
options that only affect plotting (color map, ticks, ranges, font sizes, etc.),
rerunning with a different set of tasks specified by the generate
option
(though this will often cause climatologies to be re-computed with new
variables and may not save time compared with purging), generating only the
final website with --html_only
, and re-running after the simulation has
progressed to extend time series (however, not recommended for changing the
bounds on climatologies, see above).
If you are running from a git repo:
configs/<machine_name>
to the root directory (or another directory
if preferred). The default script, configs/job_script.default.bash
, is
appropriate for a laptop or desktop computer with multiple cores.mpas-analysis
conda package, download the job script and/or
sample config file from the
example configs directory.If a job script for your machine is not available, try modifying the default
job script in configs/job_script.default.bash
or one of the job scripts for
another machine to fit your needs.
There are three main ways to either customize the plots that MPAS-Analysis already makes or creating new ones:
mpas_analysis/default.cfg
for available
customization for each analysis task.[baseDirectory]/clim/mpas/avg/unmasked_[mpasMeshName]
: MPAS-Ocean
and MPAS-seaice climatologies on the native grid.[baseDirectory]/clim/mpas/avg/remapped
: remapped climatologies
for each chosen task (climatology files are stored in different
subdirectories according to the task name).[baseDirectory]/clim/obs
: observational climatologies.[baseDirectory]/clim/mpas/avg/mocStreamfunction_years[startYear]-[endYear].nc
.[baseDirectory]/clim/mpas/avg/meridionalHeatTransport_years[startYear]-[endYear].nc
.[baseDirectory]/timeseries
: various time series data.
Custom scripts can then utilize these datasets to generate custom plots.Analysis tasks can be found in a directory corresponding to each component,
e.g., mpas_analysis/ocean
for MPAS-Ocean. Shared functionality is contained
within the mpas_analysis/shared
directory.
copying mpas_analysis/analysis_task_template.py
to
the appropriate folder (ocean
, sea_ice
, etc.) and modifying it as
described in the template. Take a look at
mpas_analysis/shared/analysis_task.py
for additional guidance.mpas_analysis/shared/analysis_task.py
mpas_analysis/default.cfg
(and possibly any machine-specific
config files in configs/<machine>
)mpas_analysis/<component>/__init__.py
mpas_analysis/__main__.py
under
build_analysis_list
, see below.A new analysis task can be added with:
analyses.append(<component>.MyTask(config, myArg='argValue'))
This will add a new object of the MyTask
class to a list of analysis tasks
created in build_analysis_list
. Later on in run_analysis
, it will first
go through the list to make sure each task needs to be generated
(by calling check_generate
, which is defined in AnalysisTask
), then,
will call setup_and_check
on each task (to make sure the appropriate AM is
on and files are present), and will finally call run
on each task that is
to be generated and is set up properly.
Create a development environment as described above in "Installation for
developers". Then run:
To generate the sphinx
documentation, run:
cd docs
make clean
make html
The results can be viewed in your web browser by opening:
_build/html/index.html