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Test whether an ndarray contains a specified value.
npm install @stdlib/ndarray-base-includes
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var includes = require( '@stdlib/ndarray-base-includes' );
Tests whether an ndarray contains a specified value.
var Float64Array = require( '@stdlib/array-float64' );
// Create a data buffer:
var xbuf = new Float64Array( [ 1.0, 2.0, 3.0, 4.0, 5.0, 6.0, 7.0, 8.0, 9.0, 10.0, 11.0, 12.0 ] );
// Define the shape of the input array:
var shape = [ 3, 1, 2 ];
// Define the array strides:
var sx = [ 4, 4, 1 ];
// Define the index offset:
var ox = 0;
// Create the input ndarray-like object:
var x = {
'dtype': 'float64',
'data': xbuf,
'shape': shape,
'strides': sx,
'offset': ox,
'order': 'row-major'
};
// Create the search element ndarray-like object:
var searchElement = {
'dtype': 'float64',
'data': new Float64Array( [ 6.0 ] ),
'shape': [],
'strides': [ 0 ],
'offset': 0,
'order': 'row-major'
};
// Perform reduction:
var out = includes( [ x, searchElement ] );
// returns true
The function accepts the following arguments:
- arrays: array-like object containing an input ndarray and a zero-dimensional search element ndarray.
Each provided ndarray should be an object with the following properties:
- dtype: data type.
- data: data buffer.
- shape: dimensions.
- strides: stride lengths.
- offset: index offset.
- order: specifies whether an ndarray is row-major (C-style) or column major (Fortran-style).
- For very high-dimensional ndarrays which are non-contiguous, one should consider copying the underlying data to contiguous memory before performing the operation in order to achieve better performance.
var discreteUniform = require( '@stdlib/random-array-discrete-uniform' );
var ndarray2array = require( '@stdlib/ndarray-base-to-array' );
var includes = require( '@stdlib/ndarray-base-includes' );
var x = {
'dtype': 'generic',
'data': discreteUniform( 10, 0, 10, {
'dtype': 'generic'
}),
'shape': [ 5, 2 ],
'strides': [ 2, 1 ],
'offset': 0,
'order': 'row-major'
};
console.log( ndarray2array( x.data, x.shape, x.strides, x.offset, x.order ) );
var v = {
'dtype': x.dtype,
'data': [ 1 ],
'shape': [],
'strides': [ 0 ],
'offset': 0,
'order': x.order
};
console.log( 'Search element: %d', v.data[ 0 ] );
var out = includes( [ x, v ] );
console.log( out );
Character codes for data types:
- x:
bool
(boolean). - z:
complex128
(double-precision floating-point complex number). - c:
complex64
(single-precision floating-point complex number). - f:
float32
(single-precision floating-point number). - d:
float64
(double-precision floating-point number). - k:
int16
(signed 16-bit integer). - i:
int32
(signed 32-bit integer). - s:
int8
(signed 8-bit integer). - t:
uint16
(unsigned 16-bit integer). - u:
uint32
(unsigned 32-bit integer). - b:
uint8
(unsigned 8-bit integer).
Function name suffix naming convention:
stdlib_ndarray_includes_<input_data_type><search_element_data_type>_<output_data_type>[_as_<input_cast_data_type><search_element_cast_data_type>_<output_data_type>]
For example,
void stdlib_ndarray_includes_dd_x(...) {...}
is a function which accepts one double-precision floating-point input ndarray, a double-precision floating-point search element ndarray, and one boolean output ndarray.
TODO: document casting convention
#include "stdlib/ndarray/base/includes.h"
// TODO
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