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/arrays.rst
.. _arrays: | |
************* | |
Array objects | |
************* | |
.. currentmodule:: numpy | |
NumPy provides an N-dimensional array type, the :ref:`ndarray | |
<arrays.ndarray>`, which describes a collection of "items" of the same | |
type. The items can be :ref:`indexed <arrays.indexing>` using for | |
example N integers. | |
All ndarrays are :term:`homogenous`: every item takes up the same size | |
block of memory, and all blocks are interpreted in exactly the same | |
way. How each item in the array is to be interpreted is specified by a | |
separate :ref:`data-type object <arrays.dtypes>`, one of which is associated | |
with every array. In addition to basic types (integers, floats, | |
*etc.*), the data type objects can also represent data structures. | |
An item extracted from an array, *e.g.*, by indexing, is represented | |
by a Python object whose type is one of the :ref:`array scalar types | |
<arrays.scalars>` built in Numpy. The array scalars allow easy manipulation | |
of also more complicated arrangements of data. | |
.. figure:: figures/threefundamental.png | |
**Figure** | |
Conceptual diagram showing the relationship between the three | |
fundamental objects used to describe the data in an array: 1) the | |
ndarray itself, 2) the data-type object that describes the layout | |
of a single fixed-size element of the array, 3) the array-scalar | |
Python object that is returned when a single element of the array | |
is accessed. | |
.. toctree:: | |
:maxdepth: 2 | |
arrays.ndarray | |
arrays.scalars | |
arrays.dtypes | |
arrays.indexing | |
arrays.nditer | |
arrays.classes | |
maskedarray | |
arrays.interface | |
arrays.datetime | |