numpy.in1d
- numpy.in1d(ar1, ar2, assume_unique=False, invert=False, *, kind=None)[source]
-
Test whether each element of a 1-D array is also present in a second array.
Returns a boolean array the same length as
ar1that is True where an element ofar1is inar2and False otherwise.- Parameters:
-
- ar1(M,) array_like
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Input array.
- ar2array_like
-
The values against which to test each value of
ar1. - assume_uniquebool, optional
-
If True, the input arrays are both assumed to be unique, which can speed up the calculation. Default is False.
- invertbool, optional
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If True, the values in the returned array are inverted (that is, False where an element of
ar1is inar2and True otherwise). Default is False.np.in1d(a, b, invert=True)is equivalent to (but is faster than)np.invert(in1d(a, b)). - kind{None, ‘sort’, ‘table’}, optional
-
The algorithm to use. This will not affect the final result, but will affect the speed and memory use. The default, None, will select automatically based on memory considerations.
- If ‘sort’, will use a mergesort-based approach. This will have a memory usage of roughly 6 times the sum of the sizes of
ar1andar2, not accounting for size of dtypes. - If ‘table’, will use a lookup table approach similar to a counting sort. This is only available for boolean and integer arrays. This will have a memory usage of the size of
ar1plus the max-min value ofar2.assume_uniquehas no effect when the ‘table’ option is used. - If None, will automatically choose ‘table’ if the required memory allocation is less than or equal to 6 times the sum of the sizes of
ar1andar2, otherwise will use ‘sort’. This is done to not use a large amount of memory by default, even though ‘table’ may be faster in most cases. If ‘table’ is chosen,assume_uniquewill have no effect.
New in version 1.8.0.
- If ‘sort’, will use a mergesort-based approach. This will have a memory usage of roughly 6 times the sum of the sizes of
- Returns:
-
- in1d(M,) ndarray, bool
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The values
ar1[in1d]are inar2.
See also
isin-
Version of this function that preserves the shape of ar1.
Notes
in1dcan be considered as an element-wise function version of the python keywordin, for 1-D sequences.in1d(a, b)is roughly equivalent tonp.array([item in b for item in a]). However, this idea fails ifar2is a set, or similar (non-sequence) container: Asar2is converted to an array, in those casesasarray(ar2)is an object array rather than the expected array of contained values.Using
kind='table'tends to be faster thankind=’sort’if the following relationship is true:log10(len(ar2)) > (log10(max(ar2)-min(ar2)) - 2.27) / 0.927, but may use greater memory. The default value forkindwill be automatically selected based only on memory usage, so one may manually setkind='table'if memory constraints can be relaxed.New in version 1.4.0.
Examples
>>> test = np.array([0, 1, 2, 5, 0]) >>> states = [0, 2] >>> mask = np.in1d(test, states) >>> mask array([ True, False, True, False, True]) >>> test[mask] array([0, 2, 0]) >>> mask = np.in1d(test, states, invert=True) >>> mask array([False, True, False, True, False]) >>> test[mask] array([1, 5])
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https://numpy.org/doc/2.0/reference/generated/numpy.in1d.html