peacock-data-public-datasets-idc-cronscript
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venv
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/python3.10
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/numpy
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/README.rst
================================== | |
A Guide to Masked Arrays in NumPy | |
================================== | |
.. Contents:: | |
See http://www.scipy.org/scipy/numpy/wiki/MaskedArray (dead link) | |
for updates of this document. | |
History | |
------- | |
As a regular user of MaskedArray, I (Pierre G.F. Gerard-Marchant) became | |
increasingly frustrated with the subclassing of masked arrays (even if | |
I can only blame my inexperience). I needed to develop a class of arrays | |
that could store some additional information along with numerical values, | |
while keeping the possibility for missing data (picture storing a series | |
of dates along with measurements, what would later become the `TimeSeries | |
Scikit <http://projects.scipy.org/scipy/scikits/wiki/TimeSeries>`__ | |
(dead link). | |
I started to implement such a class, but then quickly realized that | |
any additional information disappeared when processing these subarrays | |
(for example, adding a constant value to a subarray would erase its | |
dates). I ended up writing the equivalent of *numpy.core.ma* for my | |
particular class, ufuncs included. Everything went fine until I needed to | |
subclass my new class, when more problems showed up: some attributes of | |
the new subclass were lost during processing. I identified the culprit as | |
MaskedArray, which returns masked ndarrays when I expected masked | |
arrays of my class. I was preparing myself to rewrite *numpy.core.ma* | |
when I forced myself to learn how to subclass ndarrays. As I became more | |
familiar with the *__new__* and *__array_finalize__* methods, | |
I started to wonder why masked arrays were objects, and not ndarrays, | |
and whether it wouldn't be more convenient for subclassing if they did | |
behave like regular ndarrays. | |
The new *maskedarray* is what I eventually come up with. The | |
main differences with the initial *numpy.core.ma* package are | |
that MaskedArray is now a subclass of *ndarray* and that the | |
*_data* section can now be any subclass of *ndarray*. Apart from a | |
couple of issues listed below, the behavior of the new MaskedArray | |
class reproduces the old one. Initially the *maskedarray* | |
implementation was marginally slower than *numpy.ma* in some areas, | |
but work is underway to speed it up; the expectation is that it can be | |
made substantially faster than the present *numpy.ma*. | |
Note that if the subclass has some special methods and | |
attributes, they are not propagated to the masked version: | |
this would require a modification of the *__getattribute__* | |
method (first trying *ndarray.__getattribute__*, then trying | |
*self._data.__getattribute__* if an exception is raised in the first | |
place), which really slows things down. | |
Main differences | |
---------------- | |
* The *_data* part of the masked array can be any subclass of ndarray (but not recarray, cf below). | |
* *fill_value* is now a property, not a function. | |
* in the majority of cases, the mask is forced to *nomask* when no value is actually masked. A notable exception is when a masked array (with no masked values) has just been unpickled. | |
* I got rid of the *share_mask* flag, I never understood its purpose. | |
* *put*, *putmask* and *take* now mimic the ndarray methods, to avoid unpleasant surprises. Moreover, *put* and *putmask* both update the mask when needed. * if *a* is a masked array, *bool(a)* raises a *ValueError*, as it does with ndarrays. | |
* in the same way, the comparison of two masked arrays is a masked array, not a boolean | |
* *filled(a)* returns an array of the same subclass as *a._data*, and no test is performed on whether it is contiguous or not. | |
* the mask is always printed, even if it's *nomask*, which makes things easy (for me at least) to remember that a masked array is used. | |
* *cumsum* works as if the *_data* array was filled with 0. The mask is preserved, but not updated. | |
* *cumprod* works as if the *_data* array was filled with 1. The mask is preserved, but not updated. | |
New features | |
------------ | |
This list is non-exhaustive... | |
* the *mr_* function mimics *r_* for masked arrays. | |
* the *anom* method returns the anomalies (deviations from the average) | |
Using the new package with numpy.core.ma | |
---------------------------------------- | |
I tried to make sure that the new package can understand old masked | |
arrays. Unfortunately, there's no upward compatibility. | |
For example: | |
>>> import numpy.core.ma as old_ma | |
>>> import maskedarray as new_ma | |
>>> x = old_ma.array([1,2,3,4,5], mask=[0,0,1,0,0]) | |
>>> x | |
array(data = | |
[ 1 2 999999 4 5], | |
mask = | |
[False False True False False], | |
fill_value=999999) | |
>>> y = new_ma.array([1,2,3,4,5], mask=[0,0,1,0,0]) | |
>>> y | |
array(data = [1 2 -- 4 5], | |
mask = [False False True False False], | |
fill_value=999999) | |
>>> x==y | |
array(data = | |
[True True True True True], | |
mask = | |
[False False True False False], | |
fill_value=?) | |
>>> old_ma.getmask(x) == new_ma.getmask(x) | |
array([True, True, True, True, True]) | |
>>> old_ma.getmask(y) == new_ma.getmask(y) | |
array([True, True, False, True, True]) | |
>>> old_ma.getmask(y) | |
False | |
Using maskedarray with matplotlib | |
--------------------------------- | |
Starting with matplotlib 0.91.2, the masked array importing will work with | |
the maskedarray branch) as well as with earlier versions. | |
By default matplotlib still uses numpy.ma, but there is an rcParams setting | |
that you can use to select maskedarray instead. In the matplotlibrc file | |
you will find:: | |
#maskedarray : False # True to use external maskedarray module | |
# instead of numpy.ma; this is a temporary # | |
setting for testing maskedarray. | |
Uncomment and set to True to select maskedarray everywhere. | |
Alternatively, you can test a script with maskedarray by using a | |
command-line option, e.g.:: | |
python simple_plot.py --maskedarray | |
Masked records | |
-------------- | |
Like *numpy.core.ma*, the *ndarray*-based implementation | |
of MaskedArray is limited when working with records: you can | |
mask any record of the array, but not a field in a record. If you | |
need this feature, you may want to give the *mrecords* package | |
a try (available in the *maskedarray* directory in the scipy | |
sandbox). This module defines a new class, *MaskedRecord*. An | |
instance of this class accepts a *recarray* as data, and uses two | |
masks: the *fieldmask* has as many entries as records in the array, | |
each entry with the same fields as a record, but of boolean types: | |
they indicate whether the field is masked or not; a record entry | |
is flagged as masked in the *mask* array if all the fields are | |
masked. A few examples in the file should give you an idea of what | |
can be done. Note that *mrecords* is still experimental... | |
Optimizing maskedarray | |
---------------------- | |
Should masked arrays be filled before processing or not? | |
-------------------------------------------------------- | |
In the current implementation, most operations on masked arrays involve | |
the following steps: | |
* the input arrays are filled | |
* the operation is performed on the filled arrays | |
* the mask is set for the results, from the combination of the input masks and the mask corresponding to the domain of the operation. | |
For example, consider the division of two masked arrays:: | |
import numpy | |
import maskedarray as ma | |
x = ma.array([1,2,3,4],mask=[1,0,0,0], dtype=numpy.float_) | |
y = ma.array([-1,0,1,2], mask=[0,0,0,1], dtype=numpy.float_) | |
The division of x by y is then computed as:: | |
d1 = x.filled(0) # d1 = array([0., 2., 3., 4.]) | |
d2 = y.filled(1) # array([-1., 0., 1., 1.]) | |
m = ma.mask_or(ma.getmask(x), ma.getmask(y)) # m = | |
array([True,False,False,True]) | |
dm = ma.divide.domain(d1,d2) # array([False, True, False, False]) | |
result = (d1/d2).view(MaskedArray) # masked_array([-0. inf, 3., 4.]) | |
result._mask = logical_or(m, dm) | |
Note that a division by zero takes place. To avoid it, we can consider | |
to fill the input arrays, taking the domain mask into account, so that:: | |
d1 = x._data.copy() # d1 = array([1., 2., 3., 4.]) | |
d2 = y._data.copy() # array([-1., 0., 1., 2.]) | |
dm = ma.divide.domain(d1,d2) # array([False, True, False, False]) | |
numpy.putmask(d2, dm, 1) # d2 = array([-1., 1., 1., 2.]) | |
m = ma.mask_or(ma.getmask(x), ma.getmask(y)) # m = | |
array([True,False,False,True]) | |
result = (d1/d2).view(MaskedArray) # masked_array([-1. 0., 3., 2.]) | |
result._mask = logical_or(m, dm) | |
Note that the *.copy()* is required to avoid updating the inputs with | |
*putmask*. The *.filled()* method also involves a *.copy()*. | |
A third possibility consists in avoid filling the arrays:: | |
d1 = x._data # d1 = array([1., 2., 3., 4.]) | |
d2 = y._data # array([-1., 0., 1., 2.]) | |
dm = ma.divide.domain(d1,d2) # array([False, True, False, False]) | |
m = ma.mask_or(ma.getmask(x), ma.getmask(y)) # m = | |
array([True,False,False,True]) | |
result = (d1/d2).view(MaskedArray) # masked_array([-1. inf, 3., 2.]) | |
result._mask = logical_or(m, dm) | |
Note that here again the division by zero takes place. | |
A quick benchmark gives the following results: | |
* *numpy.ma.divide* : 2.69 ms per loop | |
* classical division : 2.21 ms per loop | |
* division w/ prefilling : 2.34 ms per loop | |
* division w/o filling : 1.55 ms per loop | |
So, is it worth filling the arrays beforehand ? Yes, if we are interested | |
in avoiding floating-point exceptions that may fill the result with infs | |
and nans. No, if we are only interested into speed... | |
Thanks | |
------ | |
I'd like to thank Paul Dubois, Travis Oliphant and Sasha for the | |
original masked array package: without you, I would never have started | |
that (it might be argued that I shouldn't have anyway, but that's | |
another story...). I also wish to extend these thanks to Reggie Dugard | |
and Eric Firing for their suggestions and numerous improvements. | |
Revision notes | |
-------------- | |
* 08/25/2007 : Creation of this page | |
* 01/23/2007 : The package has been moved to the SciPy sandbox, and is regularly updated: please check out your SVN version! | |