Data Structures¶
DataArray¶
xarray.DataArray is xarray’s implementation of a labeled,
multi-dimensional array. It has several key properties:
values: anumpy.ndarrayholding the array’s valuesdims: dimension names for each axis (e.g.,('x', 'y', 'z'))coords: a dict-like container of arrays (coordinates) that label each point (e.g., 1-dimensional arrays of numbers, datetime objects or strings)attrs:dictto hold arbitrary metadata (attributes)
Xarray uses dims and coords to enable its core metadata aware operations.
Dimensions provide names that xarray uses instead of the axis argument found
in many numpy functions. Coordinates enable fast label based indexing and
alignment, building on the functionality of the index found on a pandas
DataFrame or Series.
DataArray objects also can have a name and can hold arbitrary metadata in
the form of their attrs property. Names and attributes are strictly for
users and user-written code: xarray makes no attempt to interpret them, and
propagates them only in unambiguous cases
(see FAQ, What is your approach to metadata?).
Creating a DataArray¶
The DataArray constructor takes:
data: a multi-dimensional array of values (e.g., a numpy ndarray,Series,DataFrameorpandas.Panel)coords: a list or dictionary of coordinates. If a list, it should be a list of tuples where the first element is the dimension name and the second element is the corresponding coordinate array_like object.dims: a list of dimension names. If omitted andcoordsis a list of tuples, dimension names are taken fromcoords.attrs: a dictionary of attributes to add to the instancename: a string that names the instance
In [1]: data = np.random.rand(4, 3)
In [2]: locs = ["IA", "IL", "IN"]
In [3]: times = pd.date_range("2000-01-01", periods=4)
In [4]: foo = xr.DataArray(data, coords=[times, locs], dims=["time", "space"])
In [5]: foo
Out[5]:
<xarray.DataArray (time: 4, space: 3)>
array([[0.127, 0.967, 0.26 ],
[0.897, 0.377, 0.336],
[0.451, 0.84 , 0.123],
[0.543, 0.373, 0.448]])
Coordinates:
* time (time) datetime64[ns] 2000-01-01 2000-01-02 2000-01-03 2000-01-04
* space (space) <U2 'IA' 'IL' 'IN'
Only data is required; all of other arguments will be filled
in with default values:
In [6]: xr.DataArray(data)
Out[6]:
<xarray.DataArray (dim_0: 4, dim_1: 3)>
array([[0.127, 0.967, 0.26 ],
[0.897, 0.377, 0.336],
[0.451, 0.84 , 0.123],
[0.543, 0.373, 0.448]])
Dimensions without coordinates: dim_0, dim_1
As you can see, dimension names are always present in the xarray data model: if
you do not provide them, defaults of the form dim_N will be created.
However, coordinates are always optional, and dimensions do not have automatic
coordinate labels.
Note
This is different from pandas, where axes always have tick labels, which
default to the integers [0, ..., n-1].
Prior to xarray v0.9, xarray copied this behavior: default coordinates for each dimension would be created if coordinates were not supplied explicitly. This is no longer the case.
Coordinates can be specified in the following ways:
A list of values with length equal to the number of dimensions, providing coordinate labels for each dimension. Each value must be of one of the following forms:
A
DataArrayorVariableA tuple of the form
(dims, data[, attrs]), which is converted into arguments forVariableA pandas object or scalar value, which is converted into a
DataArrayA 1D array or list, which is interpreted as values for a one dimensional coordinate variable along the same dimension as it’s name
A dictionary of
{coord_name: coord}where values are of the same form as the list. Supplying coordinates as a dictionary allows other coordinates than those corresponding to dimensions (more on these later). If you supplycoordsas a dictionary, you must explicitly providedims.
As a list of tuples:
In [7]: xr.DataArray(data, coords=[("time", times), ("space", locs)])
Out[7]:
<xarray.DataArray (time: 4, space: 3)>
array([[0.127, 0.967, 0.26 ],
[0.897, 0.377, 0.336],
[0.451, 0.84 , 0.123],
[0.543, 0.373, 0.448]])
Coordinates:
* time (time) datetime64[ns] 2000-01-01 2000-01-02 2000-01-03 2000-01-04
* space (space) <U2 'IA' 'IL' 'IN'
As a dictionary:
In [8]: xr.DataArray(
...: data,
...: coords={
...: "time": times,
...: "space": locs,
...: "const": 42,
...: "ranking": ("space", [1, 2, 3]),
...: },
...: dims=["time", "space"],
...: )
...:
Out[8]:
<xarray.DataArray (time: 4, space: 3)>
array([[0.127, 0.967, 0.26 ],
[0.897, 0.377, 0.336],
[0.451, 0.84 , 0.123],
[0.543, 0.373, 0.448]])
Coordinates:
* time (time) datetime64[ns] 2000-01-01 2000-01-02 2000-01-03 2000-01-04
* space (space) <U2 'IA' 'IL' 'IN'
const int64 42
ranking (space) int64 1 2 3
As a dictionary with coords across multiple dimensions:
In [9]: xr.DataArray(
...: data,
...: coords={
...: "time": times,
...: "space": locs,
...: "const": 42,
...: "ranking": (("time", "space"), np.arange(12).reshape(4, 3)),
...: },
...: dims=["time", "space"],
...: )
...:
Out[9]:
<xarray.DataArray (time: 4, space: 3)>
array([[0.127, 0.967, 0.26 ],
[0.897, 0.377, 0.336],
[0.451, 0.84 , 0.123],
[0.543, 0.373, 0.448]])
Coordinates:
* time (time) datetime64[ns] 2000-01-01 2000-01-02 2000-01-03 2000-01-04
* space (space) <U2 'IA' 'IL' 'IN'
const int64 42
ranking (time, space) int64 0 1 2 3 4 5 6 7 8 9 10 11
If you create a DataArray by supplying a pandas
Series, DataFrame or
pandas.Panel, any non-specified arguments in the
DataArray constructor will be filled in from the pandas object:
In [10]: df = pd.DataFrame({"x": [0, 1], "y": [2, 3]}, index=["a", "b"])
In [11]: df.index.name = "abc"
In [12]: df.columns.name = "xyz"
In [13]: df
Out[13]:
xyz x y
abc
a 0 2
b 1 3
In [14]: xr.DataArray(df)
Out[14]:
<xarray.DataArray (abc: 2, xyz: 2)>
array([[0, 2],
[1, 3]])
Coordinates:
* abc (abc) object 'a' 'b'
* xyz (xyz) object 'x' 'y'
DataArray properties¶
Let’s take a look at the important properties on our array:
In [15]: foo.values
Out[15]:
array([[0.127, 0.967, 0.26 ],
[0.897, 0.377, 0.336],
[0.451, 0.84 , 0.123],
[0.543, 0.373, 0.448]])
In [16]: foo.dims
Out[16]: ('time', 'space')
In [17]: foo.coords
Out[17]:
Coordinates:
* time (time) datetime64[ns] 2000-01-01 2000-01-02 2000-01-03 2000-01-04
* space (space) <U2 'IA' 'IL' 'IN'
In [18]: foo.attrs
Out[18]: {}
In [19]: print(foo.name)
None
You can modify values inplace:
In [20]: foo.values = 1.0 * foo.values
Note
The array values in a DataArray have a single
(homogeneous) data type. To work with heterogeneous or structured data
types in xarray, use coordinates, or put separate DataArray objects
in a single Dataset (see below).
Now fill in some of that missing metadata:
In [21]: foo.name = "foo"
In [22]: foo.attrs["units"] = "meters"
In [23]: foo
Out[23]:
<xarray.DataArray 'foo' (time: 4, space: 3)>
array([[0.127, 0.967, 0.26 ],
[0.897, 0.377, 0.336],
[0.451, 0.84 , 0.123],
[0.543, 0.373, 0.448]])
Coordinates:
* time (time) datetime64[ns] 2000-01-01 2000-01-02 2000-01-03 2000-01-04
* space (space) <U2 'IA' 'IL' 'IN'
Attributes:
units: meters
The rename() method is another option, returning a
new data array:
In [24]: foo.rename("bar")
Out[24]:
<xarray.DataArray 'bar' (time: 4, space: 3)>
array([[0.127, 0.967, 0.26 ],
[0.897, 0.377, 0.336],
[0.451, 0.84 , 0.123],
[0.543, 0.373, 0.448]])
Coordinates:
* time (time) datetime64[ns] 2000-01-01 2000-01-02 2000-01-03 2000-01-04
* space (space) <U2 'IA' 'IL' 'IN'
Attributes:
units: meters
DataArray Coordinates¶
The coords property is dict like. Individual coordinates can be
accessed from the coordinates by name, or even by indexing the data array
itself:
In [25]: foo.coords["time"]
Out[25]:
<xarray.DataArray 'time' (time: 4)>
array(['2000-01-01T00:00:00.000000000', '2000-01-02T00:00:00.000000000',
'2000-01-03T00:00:00.000000000', '2000-01-04T00:00:00.000000000'],
dtype='datetime64[ns]')
Coordinates:
* time (time) datetime64[ns] 2000-01-01 2000-01-02 2000-01-03 2000-01-04
In [26]: foo["time"]
Out[26]:
<xarray.DataArray 'time' (time: 4)>
array(['2000-01-01T00:00:00.000000000', '2000-01-02T00:00:00.000000000',
'2000-01-03T00:00:00.000000000', '2000-01-04T00:00:00.000000000'],
dtype='datetime64[ns]')
Coordinates:
* time (time) datetime64[ns] 2000-01-01 2000-01-02 2000-01-03 2000-01-04
These are also DataArray objects, which contain tick-labels
for each dimension.
Coordinates can also be set or removed by using the dictionary like syntax:
In [27]: foo["ranking"] = ("space", [1, 2, 3])
In [28]: foo.coords
Out[28]:
Coordinates:
* time (time) datetime64[ns] 2000-01-01 2000-01-02 2000-01-03 2000-01-04
* space (space) <U2 'IA' 'IL' 'IN'
ranking (space) int64 1 2 3
In [29]: del foo["ranking"]
In [30]: foo.coords
Out[30]:
Coordinates:
* time (time) datetime64[ns] 2000-01-01 2000-01-02 2000-01-03 2000-01-04
* space (space) <U2 'IA' 'IL' 'IN'
For more details, see Coordinates below.
Dataset¶
xarray.Dataset is xarray’s multi-dimensional equivalent of a
DataFrame. It is a dict-like
container of labeled arrays (DataArray objects) with aligned
dimensions. It is designed as an in-memory representation of the data model
from the netCDF file format.
In addition to the dict-like interface of the dataset itself, which can be used to access any variable in a dataset, datasets have four key properties:
dims: a dictionary mapping from dimension names to the fixed length of each dimension (e.g.,{'x': 6, 'y': 6, 'time': 8})data_vars: a dict-like container of DataArrays corresponding to variablescoords: another dict-like container of DataArrays intended to label points used indata_vars(e.g., arrays of numbers, datetime objects or strings)attrs:dictto hold arbitrary metadata
The distinction between whether a variable falls in data or coordinates (borrowed from CF conventions) is mostly semantic, and you can probably get away with ignoring it if you like: dictionary like access on a dataset will supply variables found in either category. However, xarray does make use of the distinction for indexing and computations. Coordinates indicate constant/fixed/independent quantities, unlike the varying/measured/dependent quantities that belong in data.
Here is an example of how we might structure a dataset for a weather forecast:
In this example, it would be natural to call temperature and
precipitation “data variables” and all the other arrays “coordinate
variables” because they label the points along the dimensions. (see 1 for
more background on this example).
Creating a Dataset¶
To make an Dataset from scratch, supply dictionaries for any
variables (data_vars), coordinates (coords) and attributes (attrs).
data_varsshould be a dictionary with each key as the name of the variable and each value as one of:A
DataArrayorVariableA tuple of the form
(dims, data[, attrs]), which is converted into arguments forVariableA pandas object, which is converted into a
DataArrayA 1D array or list, which is interpreted as values for a one dimensional coordinate variable along the same dimension as it’s name
coordsshould be a dictionary of the same form asdata_vars.attrsshould be a dictionary.
Let’s create some fake data for the example we show above:
In [31]: temp = 15 + 8 * np.random.randn(2, 2, 3)
In [32]: precip = 10 * np.random.rand(2, 2, 3)
In [33]: lon = [[-99.83, -99.32], [-99.79, -99.23]]
In [34]: lat = [[42.25, 42.21], [42.63, 42.59]]
# for real use cases, its good practice to supply array attributes such as
# units, but we won't bother here for the sake of brevity
In [35]: ds = xr.Dataset(
....: {
....: "temperature": (["x", "y", "time"], temp),
....: "precipitation": (["x", "y", "time"], precip),
....: },
....: coords={
....: "lon": (["x", "y"], lon),
....: "lat": (["x", "y"], lat),
....: "time": pd.date_range("2014-09-06", periods=3),
....: "reference_time": pd.Timestamp("2014-09-05"),
....: },
....: )
....:
In [36]: ds
Out[36]:
<xarray.Dataset>
Dimensions: (x: 2, y: 2, time: 3)
Coordinates:
lon (x, y) float64 -99.83 -99.32 -99.79 -99.23
lat (x, y) float64 42.25 42.21 42.63 42.59
* time (time) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
reference_time datetime64[ns] 2014-09-05
Dimensions without coordinates: x, y
Data variables:
temperature (x, y, time) float64 11.04 23.57 20.77 ... 6.301 9.61 15.91
precipitation (x, y, time) float64 5.904 2.453 3.404 ... 3.435 1.709 3.947
Here we pass xarray.DataArray objects or a pandas object as values
in the dictionary:
In [37]: xr.Dataset(dict(bar=foo))
Out[37]:
<xarray.Dataset>
Dimensions: (time: 4, space: 3)
Coordinates:
* time (time) datetime64[ns] 2000-01-01 2000-01-02 2000-01-03 2000-01-04
* space (space) <U2 'IA' 'IL' 'IN'
Data variables:
bar (time, space) float64 0.127 0.9667 0.2605 ... 0.543 0.373 0.448
In [38]: xr.Dataset(dict(bar=foo.to_pandas()))
Out[38]:
<xarray.Dataset>
Dimensions: (time: 4, space: 3)
Coordinates:
* time (time) datetime64[ns] 2000-01-01 2000-01-02 2000-01-03 2000-01-04
* space (space) object 'IA' 'IL' 'IN'
Data variables:
bar (time, space) float64 0.127 0.9667 0.2605 ... 0.543 0.373 0.448
Where a pandas object is supplied as a value, the names of its indexes are used as dimension names, and its data is aligned to any existing dimensions.
You can also create an dataset from:
A
pandas.DataFrameorpandas.Panelalong its columns and items respectively, by passing it into theDatasetdirectlyA
pandas.DataFramewithDataset.from_dataframe, which will additionally handle MultiIndexes See Working with pandasA netCDF file on disk with
open_dataset(). See Reading and writing files.
Dataset contents¶
Dataset implements the Python mapping interface, with
values given by xarray.DataArray objects:
In [39]: "temperature" in ds
Out[39]: True
In [40]: ds["temperature"]
Out[40]:
<xarray.DataArray 'temperature' (x: 2, y: 2, time: 3)>
array([[[11.041, 23.574, 20.772],
[ 9.346, 6.683, 17.175]],
[[11.6 , 19.536, 17.21 ],
[ 6.301, 9.61 , 15.909]]])
Coordinates:
lon (x, y) float64 -99.83 -99.32 -99.79 -99.23
lat (x, y) float64 42.25 42.21 42.63 42.59
* time (time) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
reference_time datetime64[ns] 2014-09-05
Dimensions without coordinates: x, y
Valid keys include each listed coordinate and data variable.
Data and coordinate variables are also contained separately in the
data_vars and coords
dictionary-like attributes:
In [41]: ds.data_vars
Out[41]:
Data variables:
temperature (x, y, time) float64 11.04 23.57 20.77 ... 6.301 9.61 15.91
precipitation (x, y, time) float64 5.904 2.453 3.404 ... 3.435 1.709 3.947
In [42]: ds.coords
Out[42]:
Coordinates:
lon (x, y) float64 -99.83 -99.32 -99.79 -99.23
lat (x, y) float64 42.25 42.21 42.63 42.59
* time (time) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
reference_time datetime64[ns] 2014-09-05
Finally, like data arrays, datasets also store arbitrary metadata in the form of attributes:
In [43]: ds.attrs
Out[43]: {}
In [44]: ds.attrs["title"] = "example attribute"
In [45]: ds
Out[45]:
<xarray.Dataset>
Dimensions: (x: 2, y: 2, time: 3)
Coordinates:
lon (x, y) float64 -99.83 -99.32 -99.79 -99.23
lat (x, y) float64 42.25 42.21 42.63 42.59
* time (time) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
reference_time datetime64[ns] 2014-09-05
Dimensions without coordinates: x, y
Data variables:
temperature (x, y, time) float64 11.04 23.57 20.77 ... 6.301 9.61 15.91
precipitation (x, y, time) float64 5.904 2.453 3.404 ... 3.435 1.709 3.947
Attributes:
title: example attribute
Xarray does not enforce any restrictions on attributes, but serialization to
some file formats may fail if you use objects that are not strings, numbers
or numpy.ndarray objects.
As a useful shortcut, you can use attribute style access for reading (but not setting) variables and attributes:
In [46]: ds.temperature
Out[46]:
<xarray.DataArray 'temperature' (x: 2, y: 2, time: 3)>
array([[[11.041, 23.574, 20.772],
[ 9.346, 6.683, 17.175]],
[[11.6 , 19.536, 17.21 ],
[ 6.301, 9.61 , 15.909]]])
Coordinates:
lon (x, y) float64 -99.83 -99.32 -99.79 -99.23
lat (x, y) float64 42.25 42.21 42.63 42.59
* time (time) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
reference_time datetime64[ns] 2014-09-05
Dimensions without coordinates: x, y
This is particularly useful in an exploratory context, because you can tab-complete these variable names with tools like IPython.
Dictionary like methods¶
We can update a dataset in-place using Python’s standard dictionary syntax. For example, to create this example dataset from scratch, we could have written:
In [47]: ds = xr.Dataset()
In [48]: ds["temperature"] = (("x", "y", "time"), temp)
In [49]: ds["temperature_double"] = (("x", "y", "time"), temp * 2)
In [50]: ds["precipitation"] = (("x", "y", "time"), precip)
In [51]: ds.coords["lat"] = (("x", "y"), lat)
In [52]: ds.coords["lon"] = (("x", "y"), lon)
In [53]: ds.coords["time"] = pd.date_range("2014-09-06", periods=3)
In [54]: ds.coords["reference_time"] = pd.Timestamp("2014-09-05")
To change the variables in a Dataset, you can use all the standard dictionary
methods, including values, items, __delitem__, get and
update(). Note that assigning a DataArray or pandas
object to a Dataset variable using __setitem__ or update will
automatically align the array(s) to the original
dataset’s indexes.
You can copy a Dataset by calling the copy()
method. By default, the copy is shallow, so only the container will be copied:
the arrays in the Dataset will still be stored in the same underlying
numpy.ndarray objects. You can copy all data by calling
ds.copy(deep=True).
Transforming datasets¶
In addition to dictionary-like methods (described above), xarray has additional methods (like pandas) for transforming datasets into new objects.
For removing variables, you can select and drop an explicit list of
variables by indexing with a list of names or using the
drop_vars() methods to return a new Dataset. These
operations keep around coordinates:
In [55]: ds[["temperature"]]
Out[55]:
<xarray.Dataset>
Dimensions: (x: 2, y: 2, time: 3)
Coordinates:
lat (x, y) float64 42.25 42.21 42.63 42.59
lon (x, y) float64 -99.83 -99.32 -99.79 -99.23
* time (time) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
reference_time datetime64[ns] 2014-09-05
Dimensions without coordinates: x, y
Data variables:
temperature (x, y, time) float64 11.04 23.57 20.77 ... 6.301 9.61 15.91
In [56]: ds[["temperature", "temperature_double"]]
Out[56]:
<xarray.Dataset>
Dimensions: (x: 2, y: 2, time: 3)
Coordinates:
lat (x, y) float64 42.25 42.21 42.63 42.59
lon (x, y) float64 -99.83 -99.32 -99.79 -99.23
* time (time) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
reference_time datetime64[ns] 2014-09-05
Dimensions without coordinates: x, y
Data variables:
temperature (x, y, time) float64 11.04 23.57 20.77 ... 9.61 15.91
temperature_double (x, y, time) float64 22.08 47.15 41.54 ... 19.22 31.82
In [57]: ds.drop_vars("temperature")
Out[57]:
<xarray.Dataset>
Dimensions: (x: 2, y: 2, time: 3)
Coordinates:
lat (x, y) float64 42.25 42.21 42.63 42.59
lon (x, y) float64 -99.83 -99.32 -99.79 -99.23
* time (time) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
reference_time datetime64[ns] 2014-09-05
Dimensions without coordinates: x, y
Data variables:
temperature_double (x, y, time) float64 22.08 47.15 41.54 ... 19.22 31.82
precipitation (x, y, time) float64 5.904 2.453 3.404 ... 1.709 3.947
To remove a dimension, you can use drop_dims() method.
Any variables using that dimension are dropped:
In [58]: ds.drop_dims("time")
Out[58]:
<xarray.Dataset>
Dimensions: (x: 2, y: 2)
Coordinates:
lat (x, y) float64 42.25 42.21 42.63 42.59
lon (x, y) float64 -99.83 -99.32 -99.79 -99.23
reference_time datetime64[ns] 2014-09-05
Dimensions without coordinates: x, y
Data variables:
*empty*
As an alternate to dictionary-like modifications, you can use
assign() and assign_coords().
These methods return a new dataset with additional (or replaced) values:
In [59]: ds.assign(temperature2=2 * ds.temperature)
Out[59]:
<xarray.Dataset>
Dimensions: (x: 2, y: 2, time: 3)
Coordinates:
lat (x, y) float64 42.25 42.21 42.63 42.59
lon (x, y) float64 -99.83 -99.32 -99.79 -99.23
* time (time) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
reference_time datetime64[ns] 2014-09-05
Dimensions without coordinates: x, y
Data variables:
temperature (x, y, time) float64 11.04 23.57 20.77 ... 9.61 15.91
temperature_double (x, y, time) float64 22.08 47.15 41.54 ... 19.22 31.82
precipitation (x, y, time) float64 5.904 2.453 3.404 ... 1.709 3.947
temperature2 (x, y, time) float64 22.08 47.15 41.54 ... 19.22 31.82
There is also the pipe() method that allows you to use
a method call with an external function (e.g., ds.pipe(func)) instead of
simply calling it (e.g., func(ds)). This allows you to write pipelines for
transforming your data (using “method chaining”) instead of writing hard to
follow nested function calls:
# these lines are equivalent, but with pipe we can make the logic flow
# entirely from left to right
In [60]: plt.plot((2 * ds.temperature.sel(x=0)).mean("y"))
Out[60]: [<matplotlib.lines.Line2D at 0x7f3d2ae791e0>]
In [61]: (ds.temperature.sel(x=0).pipe(lambda x: 2 * x).mean("y").pipe(plt.plot))
Out[61]: [<matplotlib.lines.Line2D at 0x7f3d2ad9fa90>]
Both pipe and assign replicate the pandas methods of the same names
(DataFrame.pipe and
DataFrame.assign).
With xarray, there is no performance penalty for creating new datasets, even if variables are lazily loaded from a file on disk. Creating new objects instead of mutating existing objects often results in easier to understand code, so we encourage using this approach.
Renaming variables¶
Another useful option is the rename() method to rename
dataset variables:
In [62]: ds.rename({"temperature": "temp", "precipitation": "precip"})
Out[62]:
<xarray.Dataset>
Dimensions: (x: 2, y: 2, time: 3)
Coordinates:
lat (x, y) float64 42.25 42.21 42.63 42.59
lon (x, y) float64 -99.83 -99.32 -99.79 -99.23
* time (time) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
reference_time datetime64[ns] 2014-09-05
Dimensions without coordinates: x, y
Data variables:
temp (x, y, time) float64 11.04 23.57 20.77 ... 9.61 15.91
temperature_double (x, y, time) float64 22.08 47.15 41.54 ... 19.22 31.82
precip (x, y, time) float64 5.904 2.453 3.404 ... 1.709 3.947
The related swap_dims() method allows you do to swap
dimension and non-dimension variables:
In [63]: ds.coords["day"] = ("time", [6, 7, 8])
In [64]: ds.swap_dims({"time": "day"})
Out[64]:
<xarray.Dataset>
Dimensions: (x: 2, y: 2, day: 3)
Coordinates:
lat (x, y) float64 42.25 42.21 42.63 42.59
lon (x, y) float64 -99.83 -99.32 -99.79 -99.23
time (day) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
reference_time datetime64[ns] 2014-09-05
* day (day) int64 6 7 8
Dimensions without coordinates: x, y
Data variables:
temperature (x, y, day) float64 11.04 23.57 20.77 ... 9.61 15.91
temperature_double (x, y, day) float64 22.08 47.15 41.54 ... 19.22 31.82
precipitation (x, y, day) float64 5.904 2.453 3.404 ... 1.709 3.947
Coordinates¶
Coordinates are ancillary variables stored for DataArray and Dataset
objects in the coords attribute:
In [65]: ds.coords
Out[65]:
Coordinates:
lat (x, y) float64 42.25 42.21 42.63 42.59
lon (x, y) float64 -99.83 -99.32 -99.79 -99.23
* time (time) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
reference_time datetime64[ns] 2014-09-05
day (time) int64 6 7 8
Unlike attributes, xarray does interpret and persist coordinates in operations that transform xarray objects. There are two types of coordinates in xarray:
dimension coordinates are one dimensional coordinates with a name equal to their sole dimension (marked by
*when printing a dataset or data array). They are used for label based indexing and alignment, like theindexfound on a pandasDataFrameorSeries. Indeed, these “dimension” coordinates use apandas.Indexinternally to store their values.non-dimension coordinates are variables that contain coordinate data, but are not a dimension coordinate. They can be multidimensional (see Working with Multidimensional Coordinates), and there is no relationship between the name of a non-dimension coordinate and the name(s) of its dimension(s). Non-dimension coordinates can be useful for indexing or plotting; otherwise, xarray does not make any direct use of the values associated with them. They are not used for alignment or automatic indexing, nor are they required to match when doing arithmetic (see Coordinates).
Note
Xarray’s terminology differs from the CF terminology, where the “dimension coordinates” are called “coordinate variables”, and the “non-dimension coordinates” are called “auxiliary coordinate variables” (see GH1295 for more details).
Modifying coordinates¶
To entirely add or remove coordinate arrays, you can use dictionary like syntax, as shown above.
To convert back and forth between data and coordinates, you can use the
set_coords() and
reset_coords() methods:
In [66]: ds.reset_coords()
Out[66]:
<xarray.Dataset>
Dimensions: (x: 2, y: 2, time: 3)
Coordinates:
* time (time) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
Dimensions without coordinates: x, y
Data variables:
temperature (x, y, time) float64 11.04 23.57 20.77 ... 9.61 15.91
temperature_double (x, y, time) float64 22.08 47.15 41.54 ... 19.22 31.82
precipitation (x, y, time) float64 5.904 2.453 3.404 ... 1.709 3.947
lat (x, y) float64 42.25 42.21 42.63 42.59
lon (x, y) float64 -99.83 -99.32 -99.79 -99.23
reference_time datetime64[ns] 2014-09-05
day (time) int64 6 7 8
In [67]: ds.set_coords(["temperature", "precipitation"])
Out[67]:
<xarray.Dataset>
Dimensions: (x: 2, y: 2, time: 3)
Coordinates:
temperature (x, y, time) float64 11.04 23.57 20.77 ... 9.61 15.91
precipitation (x, y, time) float64 5.904 2.453 3.404 ... 1.709 3.947
lat (x, y) float64 42.25 42.21 42.63 42.59
lon (x, y) float64 -99.83 -99.32 -99.79 -99.23
* time (time) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
reference_time datetime64[ns] 2014-09-05
day (time) int64 6 7 8
Dimensions without coordinates: x, y
Data variables:
temperature_double (x, y, time) float64 22.08 47.15 41.54 ... 19.22 31.82
In [68]: ds["temperature"].reset_coords(drop=True)
Out[68]:
<xarray.DataArray 'temperature' (x: 2, y: 2, time: 3)>
array([[[11.041, 23.574, 20.772],
[ 9.346, 6.683, 17.175]],
[[11.6 , 19.536, 17.21 ],
[ 6.301, 9.61 , 15.909]]])
Coordinates:
* time (time) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
Dimensions without coordinates: x, y
Notice that these operations skip coordinates with names given by dimensions, as used for indexing. This mostly because we are not entirely sure how to design the interface around the fact that xarray cannot store a coordinate and variable with the name but different values in the same dictionary. But we do recognize that supporting something like this would be useful.
Coordinates methods¶
Coordinates objects also have a few useful methods, mostly for converting
them into dataset objects:
In [69]: ds.coords.to_dataset()
Out[69]:
<xarray.Dataset>
Dimensions: (x: 2, y: 2, time: 3)
Coordinates:
lat (x, y) float64 42.25 42.21 42.63 42.59
lon (x, y) float64 -99.83 -99.32 -99.79 -99.23
* time (time) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
reference_time datetime64[ns] 2014-09-05
day (time) int64 6 7 8
Dimensions without coordinates: x, y
Data variables:
*empty*
The merge method is particularly interesting, because it implements the same logic used for merging coordinates in arithmetic operations (see Computation):
In [70]: alt = xr.Dataset(coords={"z": [10], "lat": 0, "lon": 0})
In [71]: ds.coords.merge(alt.coords)
Out[71]:
<xarray.Dataset>
Dimensions: (time: 3, z: 1)
Coordinates:
* time (time) datetime64[ns] 2014-09-06 2014-09-07 2014-09-08
reference_time datetime64[ns] 2014-09-05
day (time) int64 6 7 8
* z (z) int64 10
Data variables:
*empty*
The coords.merge method may be useful if you want to implement your own
binary operations that act on xarray objects. In the future, we hope to write
more helper functions so that you can easily make your functions act like
xarray’s built-in arithmetic.
Indexes¶
To convert a coordinate (or any DataArray) into an actual
pandas.Index, use the to_index() method:
In [72]: ds["time"].to_index()
Out[72]: DatetimeIndex(['2014-09-06', '2014-09-07', '2014-09-08'], dtype='datetime64[ns]', name='time', freq='D')
A useful shortcut is the indexes property (on both DataArray and
Dataset), which lazily constructs a dictionary whose keys are given by each
dimension and whose the values are Index objects:
In [73]: ds.indexes
Out[73]: time: DatetimeIndex(['2014-09-06', '2014-09-07', '2014-09-08'], dtype='datetime64[ns]', name='time', freq='D')
MultiIndex coordinates¶
Xarray supports labeling coordinate values with a pandas.MultiIndex:
In [74]: midx = pd.MultiIndex.from_arrays(
....: [["R", "R", "V", "V"], [0.1, 0.2, 0.7, 0.9]], names=("band", "wn")
....: )
....:
In [75]: mda = xr.DataArray(np.random.rand(4), coords={"spec": midx}, dims="spec")
In [76]: mda
Out[76]:
<xarray.DataArray (spec: 4)>
array([0.642, 0.275, 0.462, 0.871])
Coordinates:
* spec (spec) MultiIndex
- band (spec) object 'R' 'R' 'V' 'V'
- wn (spec) float64 0.1 0.2 0.7 0.9
For convenience multi-index levels are directly accessible as “virtual” or
“derived” coordinates (marked by - when printing a dataset or data array):
In [77]: mda["band"]
Out[77]:
<xarray.DataArray 'band' (spec: 4)>
array(['R', 'R', 'V', 'V'], dtype=object)
Coordinates:
* spec (spec) MultiIndex
- band (spec) object 'R' 'R' 'V' 'V'
- wn (spec) float64 0.1 0.2 0.7 0.9
In [78]: mda.wn
Out[78]:
<xarray.DataArray 'wn' (spec: 4)>
array([0.1, 0.2, 0.7, 0.9])
Coordinates:
* spec (spec) MultiIndex
- band (spec) object 'R' 'R' 'V' 'V'
- wn (spec) float64 0.1 0.2 0.7 0.9
Indexing with multi-index levels is also possible using the sel method
(see Multi-level indexing).
Unlike other coordinates, “virtual” level coordinates are not stored in
the coords attribute of DataArray and Dataset objects
(although they are shown when printing the coords attribute).
Consequently, most of the coordinates related methods don’t apply for them.
It also can’t be used to replace one particular level.
Because in a DataArray or Dataset object each multi-index level is
accessible as a “virtual” coordinate, its name must not conflict with the names
of the other levels, coordinates and data variables of the same object.
Even though xarray sets default names for multi-indexes with unnamed levels,
it is recommended that you explicitly set the names of the levels.
- 1
Latitude and longitude are 2D arrays because the dataset uses projected coordinates.
reference_timerefers to the reference time at which the forecast was made, rather thantimewhich is the valid time for which the forecast applies.