xarray supports direct serialization and IO to several file formats, from simple io.pickle
files to the more flexible io.netcdf
format.
python
import numpy as np import pandas as pd import xarray as xr np.random.seed(123456)
The simplest way to serialize an xarray object is to use Python's built-in pickle module:
python
import pickle
- ds = xr.Dataset({'foo': (('x', 'y'), np.random.rand(4, 5))},
- coords={'x': [10, 20, 30, 40],
'y': pd.date_range('2000-01-01', periods=5), 'z': ('x', list('abcd'))})
# use the highest protocol (-1) because it is way faster than the default # text based pickle format pkl = pickle.dumps(ds, protocol=-1)
pickle.loads(pkl)
Pickle support is important because it doesn't require any external libraries and lets you use xarray objects with Python modules like :pymultiprocessing
. However, there are two important caveats:
- To simplify serialization, xarray's support for pickle currently loads all array values into memory before dumping an object. This means it is not suitable for serializing datasets too big to load into memory (e.g., from netCDF or OPeNDAP).
- Pickle will only work as long as the internal data structure of xarray objects remains unchanged. Because the internal design of xarray is still being refined, we make no guarantees (at this point) that objects pickled with this version of xarray will work in future versions.
We can convert a Dataset
(or a DataArray
) to a dict using :py~xarray.Dataset.to_dict
:
python
d = ds.to_dict() d
We can create a new xarray object from a dict using :py~xarray.Dataset.from_dict
:
python
ds_dict = xr.Dataset.from_dict(d) ds_dict
Dictionary support allows for flexible use of xarray objects. It doesn't require external libraries and dicts can easily be pickled, or converted to json, or geojson. All the values are converted to lists, so dicts might be quite large.
The recommended way to store xarray data structures is netCDF, which is a binary file format for self-described datasets that originated in the geosciences. xarray is based on the netCDF data model, so netCDF files on disk directly correspond to :py~xarray.Dataset
objects.
NetCDF is supported on almost all platforms, and parsers exist for the vast majority of scientific programming languages. Recent versions of netCDF are based on the even more widely used HDF5 file-format.
Tip
If you aren't familiar with this data format, the netCDF FAQ is a good place to start.
Reading and writing netCDF files with xarray requires scipy or the netCDF4-Python library to be installed (the later is required to read/write netCDF V4 files and use the compression options described below).
We can save a Dataset to disk using the :pyDataset.to_netcdf <xarray.Dataset.to_netcdf>
method:
python
ds.to_netcdf('saved_on_disk.nc')
By default, the file is saved as netCDF4 (assuming netCDF4-Python is installed). You can control the format and engine used to write the file with the format
and engine
arguments.
We can load netCDF files to create a new Dataset using :py~xarray.open_dataset
:
python
ds_disk = xr.open_dataset('saved_on_disk.nc') ds_disk
Similarly, a DataArray can be saved to disk using the :pyDataArray.to_netcdf <xarray.DataArray.to_netcdf>
method, and loaded from disk using the :py~xarray.open_dataarray
function. As netCDF files correspond to :py~xarray.Dataset
objects, these functions internally convert the DataArray
to a Dataset
before saving, and then convert back when loading, ensuring that the DataArray
that is loaded is always exactly the same as the one that was saved.
A dataset can also be loaded or written to a specific group within a netCDF file. To load from a group, pass a group
keyword argument to the open_dataset
function. The group can be specified as a path-like string, e.g., to access subgroup 'bar' within group 'foo' pass '/foo/bar' as the group
argument. When writing multiple groups in one file, pass mode='a'
to to_netcdf
to ensure that each call does not delete the file.
Data is always loaded lazily from netCDF files. You can manipulate, slice and subset Dataset and DataArray objects, and no array values are loaded into memory until you try to perform some sort of actual computation. For an example of how these lazy arrays work, see the OPeNDAP section below.
It is important to note that when you modify values of a Dataset, even one linked to files on disk, only the in-memory copy you are manipulating in xarray is modified: the original file on disk is never touched.
Tip
xarray's lazy loading of remote or on-disk datasets is often but not always desirable. Before performing computationally intense operations, it is often a good idea to load a Dataset (or DataArray) entirely into memory by invoking the :py~xarray.Dataset.load
method.
Datasets have a :py~xarray.Dataset.close
method to close the associated netCDF file. However, it's often cleaner to use a with
statement:
python
# this automatically closes the dataset after use with xr.open_dataset('saved_on_disk.nc') as ds: print(ds.keys())
Although xarray provides reasonable support for incremental reads of files on disk, it does not support incremental writes, which can be a useful strategy for dealing with datasets too big to fit into memory. Instead, xarray integrates with dask.array (see dask
), which provides a fully featured engine for streaming computation.
NetCDF files follow some conventions for encoding datetime arrays (as numbers with a "units" attribute) and for packing and unpacking data (as described by the "scale_factor" and "add_offset" attributes). If the argument decode_cf=True
(default) is given to open_dataset
, xarray will attempt to automatically decode the values in the netCDF objects according to CF conventions. Sometimes this will fail, for example, if a variable has an invalid "units" or "calendar" attribute. For these cases, you can turn this decoding off manually.
You can view this encoding information (among others) in the :pyDataArray.encoding <xarray.DataArray.encoding>
attribute:
In [1]: ds_disk['y'].encoding Out[1]: {'calendar': u'proleptic_gregorian', 'chunksizes': None, 'complevel': 0, 'contiguous': True, 'dtype': dtype('float64'), 'fletcher32': False, 'least_significant_digit': None, 'shuffle': False, 'source': 'saved_on_disk.nc', 'units': u'days since 2000-01-01 00:00:00', 'zlib': False}
Note that all operations that manipulate variables other than indexing will remove encoding information.
python
ds_disk.close() import os os.remove('saved_on_disk.nc')
Conversely, you can customize how xarray writes netCDF files on disk by providing explicit encodings for each dataset variable. The encoding
argument takes a dictionary with variable names as keys and variable specific encodings as values. These encodings are saved as attributes on the netCDF variables on disk, which allows xarray to faithfully read encoded data back into memory.
It is important to note that using encodings is entirely optional: if you do not supply any of these encoding options, xarray will write data to disk using a default encoding, or the options in the encoding
attribute, if set. This works perfectly fine in most cases, but encoding can be useful for additional control, especially for enabling compression.
In the file on disk, these encodings as saved as attributes on each variable, which allow xarray and other CF-compliant tools for working with netCDF files to correctly read the data.
These encoding options work on any version of the netCDF file format:
dtype
: Any valid NumPy dtype or string convertable to a dtype, e.g.,'int16'
or'float32'
. This controls the type of the data written on disk._FillValue
: Values ofNaN
in xarray variables are remapped to this value when saved on disk. This is important when converting floating point with missing values to integers on disk, becauseNaN
is not a valid value for integer dtypes. As a default, variables with float types are attributed a_FillValue
ofNaN
in the output file.scale_factor
andadd_offset
: Used to convert from encoded data on disk to to the decoded data in memory, according to the formuladecoded = scale_factor * encoded + add_offset
.
These parameters can be fruitfully combined to compress discretized data on disk. For example, to save the variable foo
with a precision of 0.1 in 16-bit integers while converting NaN
to -9999
, we would use encoding={'foo': {'dtype': 'int16', 'scale_factor': 0.1, '_FillValue': -9999}}
. Compression and decompression with such discretization is extremely fast.
zlib
, complevel
, fletcher32
, continguous
and chunksizes
can be used for enabling netCDF4/HDF5's chunk based compression, as described in the documentation for createVariable for netCDF4-Python. This only works for netCDF4 files and thus requires using format='netCDF4'
and either engine='netcdf4'
or engine='h5netcdf'
.
Chunk based gzip compression can yield impressive space savings, especially for sparse data, but it comes with significant performance overhead. HDF5 libraries can only read complete chunks back into memory, and maximum decompression speed is in the range of 50-100 MB/s. Worse, HDF5's compression and decompression currently cannot be parallelized with dask. For these reasons, we recommend trying discretization based compression (described above) first.
The units
and calendar
attributes control how xarray serializes datetime64
and timedelta64
arrays to datasets on disk as numeric values. The units
encoding should be a string like 'days since 1900-01-01'
for datetime64
data or a string like 'days'
for timedelta64
data. calendar
should be one of the calendar types supported by netCDF4-python: 'standard', 'gregorian', 'proleptic_gregorian' 'noleap', '365_day', '360_day', 'julian', 'all_leap', '366_day'.
By default, xarray uses the 'proleptic_gregorian' calendar and units of the smallest time difference between values, with a reference time of the first time value.
xarray includes support for OPeNDAP (via the netCDF4 library or Pydap), which lets us access large datasets over HTTP.
For example, we can open a connection to GBs of weather data produced by the PRISM project, and hosted by IRI at Columbia:
- In [3]: remote_data = xr.open_dataset(
...: 'http://iridl.ldeo.columbia.edu/SOURCES/.OSU/.PRISM/.monthly/dods', ...: decode_times=False)
In [4]: remote_data Out[4]: <xarray.Dataset> Dimensions: (T: 1422, X: 1405, Y: 621) Coordinates: * X (X) float32 -125.0 -124.958 -124.917 -124.875 -124.833 -124.792 -124.75 ... * T (T) float32 -779.5 -778.5 -777.5 -776.5 -775.5 -774.5 -773.5 -772.5 -771.5 ... * Y (Y) float32 49.9167 49.875 49.8333 49.7917 49.75 49.7083 49.6667 49.625 ... Data variables: ppt (T, Y, X) float64 ... tdmean (T, Y, X) float64 ... tmax (T, Y, X) float64 ... tmin (T, Y, X) float64 ... Attributes: Conventions: IRIDL expires: 1375315200
Note
Like many real-world datasets, this dataset does not entirely follow CF conventions. Unexpected formats will usually cause xarray's automatic decoding to fail. The way to work around this is to either set decode_cf=False
in open_dataset
to turn off all use of CF conventions, or by only disabling the troublesome parser. In this case, we set decode_times=False
because the time axis here provides the calendar attribute in a format that xarray does not expect (the integer 360
instead of a string like '360_day'
).
We can select and slice this data any number of times, and nothing is loaded over the network until we look at particular values:
In [4]: tmax = remote_data['tmax'][:500, ::3, ::3]
In [5]: tmax Out[5]: <xarray.DataArray 'tmax' (T: 500, Y: 207, X: 469)> [48541500 values with dtype=float64] Coordinates: * Y (Y) float32 49.9167 49.7917 49.6667 49.5417 49.4167 49.2917 ... * X (X) float32 -125.0 -124.875 -124.75 -124.625 -124.5 -124.375 ... * T (T) float32 -779.5 -778.5 -777.5 -776.5 -775.5 -774.5 -773.5 ... Attributes: pointwidth: 120 standard_name: air_temperature units: Celsius_scale expires: 1443657600
# the data is downloaded automatically when we make the plot In [6]: tmax[0].plot()
xarray can also read GRIB, HDF4 and other file formats supported by PyNIO, if PyNIO is installed. To use PyNIO to read such files, supply engine='pynio'
to :py~xarray.open_dataset
.
We recommend installing PyNIO via conda:
conda install -c dbrown pynio
For more options (tabular formats and CSV files in particular), consider exporting your objects to pandas and using its broad range of IO tools.
NetCDF files are often encountered in collections, e.g., with different files corresponding to different model runs. xarray can straightforwardly combine such files into a single Dataset by making use of :py~xarray.concat
.
Note
Version 0.5 includes support for manipulating datasets that don't fit into memory with dask. If you have dask installed, you can open multiple files simultaneously using :py~xarray.open_mfdataset
:
xr.open_mfdataset('my/files/*.nc')
This function automatically concatenates and merges multiple files into a single xarray dataset. It is the recommended way to open multiple files with xarray. For more details, see dask.io
and a blog post by Stephan Hoyer.
For example, here's how we could approximate MFDataset
from the netCDF4 library:
from glob import glob
import xarray as xr
def read_netcdfs(files, dim):
# glob expands paths with * to a list of files, like the unix shell
paths = sorted(glob(files))
datasets = [xr.open_dataset(p) for p in paths]
combined = xr.concat(dataset, dim)
return combined
combined = read_netcdfs('/all/my/files/*.nc', dim='time')
This function will work in many cases, but it's not very robust. First, it never closes files, which means it will fail one you need to load more than a few thousands file. Second, it assumes that you want all the data from each file and that it can all fit into memory. In many situations, you only need a small subset or an aggregated summary of the data from each file.
Here's a slightly more sophisticated example of how to remedy these deficiencies:
def read_netcdfs(files, dim, transform_func=None):
def process_one_path(path):
# use a context manager, to ensure the file gets closed after use
with xr.open_dataset(path) as ds:
# transform_func should do some sort of selection or
# aggregation
if transform_func is not None:
ds = transform_func(ds)
# load all data from the transformed dataset, to ensure we can
# use it after closing each original file
ds.load()
return ds
paths = sorted(glob(files))
datasets = [process_one_path(p) for p in paths]
combined = xr.concat(datasets, dim)
return combined
# here we suppose we only care about the combined mean of each file;
# you might also use indexing operations like .sel to subset datasets
combined = read_netcdfs('/all/my/files/*.nc', dim='time',
transform_func=lambda ds: ds.mean())
This pattern works well and is very robust. We've used similar code to process tens of thousands of files constituting 100s of GB of data.