Awesome
cf-python
The Python cf
package is an Earth Science data analysis library that
is built on a complete implementation of the CF data model.
References
Dask
From version 3.14.0 the cf
package uses
Dask for all of its data manipulations.
Documentation
http://ncas-cms.github.io/cf-python
Installation
http://ncas-cms.github.io/cf-python/installation.html
Cheat Sheet
https://ncas-cms.github.io/cf-python/cheat_sheet.html
Recipes
https://ncas-cms.github.io/cf-python/recipes
Tutorial
https://ncas-cms.github.io/cf-python/tutorial.html
Functionality
The cf
package implements the CF data
model
for its internal data structures and so is able to process any
CF-compliant dataset. It is not strict about CF-compliance, however,
so that partially conformant datasets may be ingested from existing
datasets and written to new datasets. This is so that datasets which
are partially conformant may nonetheless be modified in memory.
A simple example of reading a field construct from a file and inspecting it:
>>> import cf
>>> f = cf.read('file.nc')
>>> print(f[0])
Field: air_temperature (ncvar%tas)
----------------------------------
Data : air_temperature(time(12), latitude(64), longitude(128)) K
Cell methods : time(12): mean (interval: 1.0 month)
Dimension coords: time(12) = [1991-11-16 00:00:00, ..., 1991-10-16 12:00:00] noleap
: latitude(64) = [-87.8638, ..., 87.8638] degrees_north
: longitude(128) = [0.0, ..., 357.1875] degrees_east
: height(1) = [2.0] m
The cf
package uses
Dask for all
of its array manipulation and can:
- read field constructs from netCDF, CDL, PP and UM datasets,
- create new field constructs in memory,
- write and append field and domain constructs to netCDF datasets on disk,
- read, create, and manipulate UGRID mesh topologies,
- read, write, and create coordinates defined by geometry cells,
- read netCDF and CDL datasets containing hierarchical groups,
- inspect field constructs,
- test whether two field constructs are the same,
- modify field construct metadata and data,
- create subspaces of field constructs,
- write field constructs to netCDF datasets on disk,
- incorporate, and create, metadata stored in external files,
- read, write, and create data that have been compressed by convention (i.e. ragged or gathered arrays, or coordinate arrays compressed by subsampling), whilst presenting a view of the data in its uncompressed form,
- combine field constructs arithmetically,
- manipulate field construct data by arithmetical and trigonometrical operations,
- perform weighted statistical collapses on field constructs, including those with geometry cells and UGRID mesh topologies,
- perform histogram, percentile and binning operations on field constructs,
- regrid structured grid, mesh and DSG field constructs with (multi-)linear, nearest neighbour, first- and second-order conservative and higher order patch recovery methods, including 3-d regridding,
- apply convolution filters to field constructs,
- create running means from field constructs,
- apply differential operators to field constructs,
- create derived quantities (such as relative vorticity).
Visualization
Powerful and flexible visualizations of cf
field constructs,
designed to be produced and configured in as few lines of code as
possible, are available with the cf-plot
package, which
needs to be installed separately to the cf
package.
See the cf-plot gallery for a range of plotting possibilities with example code.
Command line utilities
During installation the cfa
command line utility is also
installed, which
-
generates text descriptions of field constructs contained in files, and
-
creates new datasets aggregated from existing files.
Tests
Tests are run from within the cf/test
directory:
python run_tests.py