tmp
/
pip-install-ghxuqwgs
/numpy_78e94bf2b6094bf9a1f3d92042f9bf46
/build
/lib.linux-x86_64-cpython-310
/numpy
/doc
/creation.py
""" | |
============== | |
Array Creation | |
============== | |
Introduction | |
============ | |
There are 5 general mechanisms for creating arrays: | |
1) Conversion from other Python structures (e.g., lists, tuples) | |
2) Intrinsic numpy array array creation objects (e.g., arange, ones, zeros, | |
etc.) | |
3) Reading arrays from disk, either from standard or custom formats | |
4) Creating arrays from raw bytes through the use of strings or buffers | |
5) Use of special library functions (e.g., random) | |
This section will not cover means of replicating, joining, or otherwise | |
expanding or mutating existing arrays. Nor will it cover creating object | |
arrays or record arrays. Both of those are covered in their own sections. | |
Converting Python array_like Objects to Numpy Arrays | |
==================================================== | |
In general, numerical data arranged in an array-like structure in Python can | |
be converted to arrays through the use of the array() function. The most | |
obvious examples are lists and tuples. See the documentation for array() for | |
details for its use. Some objects may support the array-protocol and allow | |
conversion to arrays this way. A simple way to find out if the object can be | |
converted to a numpy array using array() is simply to try it interactively and | |
see if it works! (The Python Way). | |
Examples: :: | |
>>> x = np.array([2,3,1,0]) | |
>>> x = np.array([2, 3, 1, 0]) | |
>>> x = np.array([[1,2.0],[0,0],(1+1j,3.)]) # note mix of tuple and lists, | |
and types | |
>>> x = np.array([[ 1.+0.j, 2.+0.j], [ 0.+0.j, 0.+0.j], [ 1.+1.j, 3.+0.j]]) | |
Intrinsic Numpy Array Creation | |
============================== | |
Numpy has built-in functions for creating arrays from scratch: | |
zeros(shape) will create an array filled with 0 values with the specified | |
shape. The default dtype is float64. | |
``>>> np.zeros((2, 3)) | |
array([[ 0., 0., 0.], [ 0., 0., 0.]])`` | |
ones(shape) will create an array filled with 1 values. It is identical to | |
zeros in all other respects. | |
arange() will create arrays with regularly incrementing values. Check the | |
docstring for complete information on the various ways it can be used. A few | |
examples will be given here: :: | |
>>> np.arange(10) | |
array([0, 1, 2, 3, 4, 5, 6, 7, 8, 9]) | |
>>> np.arange(2, 10, dtype=np.float) | |
array([ 2., 3., 4., 5., 6., 7., 8., 9.]) | |
>>> np.arange(2, 3, 0.1) | |
array([ 2. , 2.1, 2.2, 2.3, 2.4, 2.5, 2.6, 2.7, 2.8, 2.9]) | |
Note that there are some subtleties regarding the last usage that the user | |
should be aware of that are described in the arange docstring. | |
linspace() will create arrays with a specified number of elements, and | |
spaced equally between the specified beginning and end values. For | |
example: :: | |
>>> np.linspace(1., 4., 6) | |
array([ 1. , 1.6, 2.2, 2.8, 3.4, 4. ]) | |
The advantage of this creation function is that one can guarantee the | |
number of elements and the starting and end point, which arange() | |
generally will not do for arbitrary start, stop, and step values. | |
indices() will create a set of arrays (stacked as a one-higher dimensioned | |
array), one per dimension with each representing variation in that dimension. | |
An example illustrates much better than a verbal description: :: | |
>>> np.indices((3,3)) | |
array([[[0, 0, 0], [1, 1, 1], [2, 2, 2]], [[0, 1, 2], [0, 1, 2], [0, 1, 2]]]) | |
This is particularly useful for evaluating functions of multiple dimensions on | |
a regular grid. | |
Reading Arrays From Disk | |
======================== | |
This is presumably the most common case of large array creation. The details, | |
of course, depend greatly on the format of data on disk and so this section | |
can only give general pointers on how to handle various formats. | |
Standard Binary Formats | |
----------------------- | |
Various fields have standard formats for array data. The following lists the | |
ones with known python libraries to read them and return numpy arrays (there | |
may be others for which it is possible to read and convert to numpy arrays so | |
check the last section as well) | |
:: | |
HDF5: PyTables | |
FITS: PyFITS | |
Examples of formats that cannot be read directly but for which it is not hard to | |
convert are those formats supported by libraries like PIL (able to read and | |
write many image formats such as jpg, png, etc). | |
Common ASCII Formats | |
------------------------ | |
Comma Separated Value files (CSV) are widely used (and an export and import | |
option for programs like Excel). There are a number of ways of reading these | |
files in Python. There are CSV functions in Python and functions in pylab | |
(part of matplotlib). | |
More generic ascii files can be read using the io package in scipy. | |
Custom Binary Formats | |
--------------------- | |
There are a variety of approaches one can use. If the file has a relatively | |
simple format then one can write a simple I/O library and use the numpy | |
fromfile() function and .tofile() method to read and write numpy arrays | |
directly (mind your byteorder though!) If a good C or C++ library exists that | |
read the data, one can wrap that library with a variety of techniques though | |
that certainly is much more work and requires significantly more advanced | |
knowledge to interface with C or C++. | |
Use of Special Libraries | |
------------------------ | |
There are libraries that can be used to generate arrays for special purposes | |
and it isn't possible to enumerate all of them. The most common uses are use | |
of the many array generation functions in random that can generate arrays of | |
random values, and some utility functions to generate special matrices (e.g. | |
diagonal). | |
""" | |
from __future__ import division, absolute_import, print_function | |