cf.Data¶
-
class
cf.
Data
(data=None, units=None, fill_value=None, hardmask=True, chunk=True, loadd=None, dt=False)[source]¶ Bases:
object
An N-dimensional data array with units and masked values.
- Contains an N-dimensional, indexable and broadcastable array with
many similarities to a
numpy
array. - Contains the units of the array elements.
- Supports masked arrays, regardless of whether or not it was initialised with a masked array.
- Stores and operates on data arrays which are larger then the available memory.
Indexing
A data array is indexable in a similar way to numpy array:
>>> d.shape (12, 19, 73, 96) >>> d[...].shape (12, 19, 73, 96) >>> d[slice(0, 9), 10:0:-2, :, :].shape (9, 5, 73, 96)
There are three extensions to the numpy indexing functionality:
Size 1 dimensions are never removed bi indexing.
An integer index i takes the i-th element but does not reduce the rank of the output array by one:
>>> d.shape (12, 19, 73, 96) >>> d[0, ...].shape (1, 19, 73, 96) >>> d[:, 3, slice(10, 0, -2), 95].shape (12, 1, 5, 1)
Size 1 dimensions may be removed with the
squeeze
method.The indices for each axis work independently.
When more than one dimension’s slice is a 1-d boolean sequence or 1-d sequence of integers, then these indices work independently along each dimension (similar to the way vector subscripts work in Fortran), rather than by their elements:
>>> d.shape (12, 19, 73, 96) >>> d[0, :, [0, 1], [0, 13, 27]].shape (1, 19, 2, 3)
Boolean indices may be any object which exposes the numpy array interface.
>>> d.shape (12, 19, 73, 96) >>> d[..., d[0, 0, 0]>d[0, 0, 0].min()]
Cyclic axes
Miscellaneous
A
Data
object is picklable.A
Data
object is hashable, but note that, since it is mutable, its hash value is only valid whilst the data array is not changed in place.Initialization
Parameters: - data : array-like, optional
The data for the array.
- units : str or Units, optional
The units of the data. By default the array elements are dimensionless.
- fill_value : optional
The fill value of the data. By default, or if None, the numpy fill value appropriate to the array’s data type will be used.
- hardmask : bool, optional
If False then the mask is soft. By default the mask is hard.
- chunk : bool, optional
If False then the data array will be stored in a single partition. By default the data array will be partitioned if it is larger than the chunk size, as returned by the
cf.CHUNKSIZE
function.- dt : bool, optional
If True then strings (such as
'1990-12-1 12:00'
) given by the data argument are interpreted as date-times. By default they are not interpreted as date-times.- loadd : dict, optional
Initialise the data array from a dictionary serialization of a
cf.Data
object. All other arguments are ignored.
Examples: >>> d = cf.Data(5) >>> d = cf.Data([1,2,3], units='K') >>> import numpy >>> d = cf.Data(numpy.arange(10).reshape(2,5), units=cf.Units('m/s'), fill_value=-999) >>> d = cf.Data(tuple('fly'))
- Contains an N-dimensional, indexable and broadcastable array with
many similarities to a
Data attributes¶
array |
A numpy array copy the data array. |
data |
The data array object as an object identity. |
day |
The day of each data array element. |
dtarray |
An independent numpy array of date-time objects. |
dtvarray |
A numpy array view the data array converted to date-time objects. |
dtype |
The numpy data type of the data array. |
fill_value |
The data array missing data value. |
hardmask |
Whether the mask is hard (True) or soft (False). |
hour |
The hour of each data array element. |
ismasked |
True if the data array has any masked values. |
isscalar |
True if the data array is a 0-d scalar array. |
mask |
The boolean missing data mask of the data array. |
minute |
The minute of each data array element. |
month |
The month of each data array element. |
nbytes |
Total number of bytes consumed by the elements of the array. |
ndim |
Number of dimensions in the data array. |
second |
The second of each data array element. |
shape |
Tuple of the data array’s dimension sizes. |
size |
Number of elements in the data array. |
Units |
The cf.Units object containing the units of the data array. |
varray |
A numpy array view the data array. |
year |
The year of each data array element. |
Data methods¶
all |
Test whether all data array elements evaluate to True. | ||
allclose |
Returns True if two broadcastable arrays have equal values, False otherwise. | ||
max |
Collapse axes with their maximum. | ||
min |
Collapse axes with their minimum. | ||
any |
Test whether any data array elements evaluate to True. | ||
asdatetime |
Change the internal representation of data array elements from numeric reference times to datatime-like objects. | ||
asreftime |
Change the internal representation of data array elements from datatime-like objects to numeric reference times. | ||
binary_mask |
A binary (0 and 1) mask of the data array. | ||
chunk |
Partition the data array | ||
ceil |
Return the ceiling of the data array. | ||
clip |
Clip (limit) the values in the data array in place. | ||
close |
Close all files referenced by the data array. | ||
copy |
Return a deep copy. | ||
cos |
Take the trigonometric cosine of the data array in place. | ||
datum |
Return an element of the data array as a standard Python scalar. | ||
dump |
Return a string containing a full description of the instance. | ||
dumpd |
Return a dictionary serialization of the data array. | ||
equals |
True if two data arrays are logically equal, False otherwise. | ||
cf.Data.equivalent |
|||
expand_dims |
Expand the shape of the data array in place. | ||
files |
Return the names of files containing parts of the data array. | ||
flat |
Return a flat iterator over elements of the data array. | ||
flip |
Flip (reverse the direction of) axes of the data array in place. | ||
floor |
Return the floor of the data array. | ||
func |
Apply an element-wise array operation to the data array in place. | ||
HDF_chunks |
|||
isclose |
Return a boolean data array showing where two broadcastable arrays have equal values within a tolerance. | ||
loadd |
Reset the data array in place from a dictionary serialization. | ||
mask_invalid |
Mask the array where invalid values occur (NaN or inf). | ||
mean |
Collapse axes with their weighted mean. | ||
mid_range |
Collapse axes with the unweighted average of their maximum and minimum values. | ||
ndindex |
Return an iterator over the N-dimensional indices of the data array. | ||
outerproduct |
Compute the outer product with another data array. | ||
override_calendar |
Override the data array calendar. | ||
override_units |
Override the data array units. | ||
partition_boundaries |
Return the partition boundaries for each partition matrix dimension. | ||
range |
Collapse axes with the absolute difference between their maximum and minimum values. | ||
rint |
Round elements of the data array to the nearest integer. | ||
roll |
A lot like numpy.roll |
||
save_to_disk |
|||
sample_size |
|
||
sd |
Collapse axes by calculating their standard deviation. | ||
sin |
Take the trigonometric sine of the data array in place. | ||
squeeze |
Remove size 1 axes from the data array. | ||
sum |
Collapse axes with their sum. | ||
sum_of_weights |
Missing data array elements are omitted from the calculation. | ||
sum_of_weights2 |
Missing data array elements are omitted from the calculation. | ||
swapaxes |
Interchange two axes of an array. | ||
tan |
Take the trigonometric tangent of the data array element-wise. | ||
to_disk |
Store the data array on disk in place. | ||
to_memory |
Store each partition’s data in memory in place if the master array is smaller than the chunk size. | ||
transpose |
Permute the axes of the data array. | ||
trunc |
Return the truncated values of the data array. | ||
unique |
The unique elements of the array. | ||
var |
Collapse axes with their weighted variance. | ||
where |
Set data array elements depending on a condition. |
Data static methods¶
mask_fpe |
Masking of floating-point errors in the results of arithmetic operations. |
seterr |
Set how floating-point errors in the results of arithmetic operations are handled. |
Data arithmetic and comparison operations¶
Arithmetic, bitwise and comparison operations are defined as
element-wise data array operations which yield a new cf.Data
object
or, for augmented assignments, modify the data array in-place.
Comparison operators
__lt__ |
The rich comparison operator < |
__le__ |
The rich comparison operator <= |
__eq__ |
The rich comparison operator == |
__ne__ |
The rich comparison operator != |
__gt__ |
The rich comparison operator > |
__ge__ |
The rich comparison operator >= |
Truth value of an array
__nonzero__ |
Truth value testing and the built-in operation bool |
Binary arithmetic operators
__add__ |
The binary arithmetic operation + |
__sub__ |
The binary arithmetic operation - |
__mul__ |
The binary arithmetic operation * |
__div__ |
The binary arithmetic operation / |
__truediv__ |
The binary arithmetic operation / (true division) |
__floordiv__ |
The binary arithmetic operation // |
__pow__ |
The binary arithmetic operations ** and pow |
__mod__ |
The binary arithmetic operation % |
Binary arithmetic operators with reflected (swapped) operands
__radd__ |
The binary arithmetic operation + with reflected operands |
__rsub__ |
The binary arithmetic operation - with reflected operands |
__rmul__ |
The binary arithmetic operation * with reflected operands |
__rdiv__ |
The binary arithmetic operation / with reflected operands |
__rtruediv__ |
The binary arithmetic operation / (true division) with reflected |
__rfloordiv__ |
The binary arithmetic operation // with reflected operands |
__rpow__ |
The binary arithmetic operations ** and pow with reflected |
__rmod__ |
The binary arithmetic operation % with reflected operands |
Augmented arithmetic assignments
__iadd__ |
The augmented arithmetic assignment += |
__isub__ |
The augmented arithmetic assignment -= |
__imul__ |
The augmented arithmetic assignment *= |
__idiv__ |
The augmented arithmetic assignment /= |
__itruediv__ |
The augmented arithmetic assignment /= (true division) |
__ifloordiv__ |
The augmented arithmetic assignment //= |
__ipow__ |
The augmented arithmetic assignment **= |
__imod__ |
The binary arithmetic operation %= |
Unary arithmetic operators
__neg__ |
The unary arithmetic operation - |
__pos__ |
The unary arithmetic operation + |
__abs__ |
The unary arithmetic operation abs |
Binary bitwise operators
__and__ |
The binary bitwise operation & |
__or__ |
The binary bitwise operation | |
__xor__ |
The binary bitwise operation ^ |
__lshift__ |
The binary bitwise operation << |
__rshift__ |
The binary bitwise operation >> |
Binary bitwise operators with reflected (swapped) operands
__rand__ |
The binary bitwise operation & with reflected operands |
__ror__ |
The binary bitwise operation | with reflected operands |
__rxor__ |
The binary bitwise operation ^ with reflected operands |
__rlshift__ |
The binary bitwise operation << with reflected operands |
__rrshift__ |
The binary bitwise operation >> with reflected operands |
Augmented bitwise assignments
__iand__ |
The augmented bitwise assignment &= |
__ior__ |
The augmented bitwise assignment |= |
__ixor__ |
The augmented bitwise assignment ^= |
__ilshift__ |
The augmented bitwise assignment <<= |
__irshift__ |
The augmented bitwise assignment >>= |
Unary bitwise operators
__invert__ |
The unary bitwise operation ~ |
Data special methods¶
Standard library functions
__deepcopy__ |
Used if copy.deepcopy is called. |
__hash__ |
The built-in function hash |
Container customization
__len__ |
The built-in function len |
__getitem__ |
Implement indexing |
__iter__ |
Efficient iteration. |
__setitem__ |
Implement indexed assignment |
__contains__ |
Membership test operator in |
String representations
__repr__ |
The built-in function repr |
__str__ |
The built-in function str |