Compute the multidimensional histogram of some data.
The data to be histogrammed.
Note the unusual interpretation of sample when an array_like:
histogramdd(np.array([p1, p2, p3])).histogramdd((X, Y, Z)).The first form should be preferred.
The bin specification:
A sequence of length D, each an optional (lower, upper) tuple giving the outer bin edges to be used if the edges are not given explicitly in bins. An entry of None in the sequence results in the minimum and maximum values being used for the corresponding dimension. The default, None, is equivalent to passing a tuple of D None values.
If False, the default, returns the number of samples in each bin. If True, returns the probability density function at the bin, bin_count / sample_count / bin_volume.
An array of values w_i weighing each sample (x_i, y_i, z_i, …). Weights are normalized to 1 if density is True. If density is False, the values of the returned histogram are equal to the sum of the weights belonging to the samples falling into each bin.
The multidimensional histogram of sample x. See density and weights for the different possible semantics.
A tuple of D arrays describing the bin edges for each dimension.
See also
histogram1-D histogram
histogram2d2-D histogram
>>> import numpy as np >>> rng = np.random.default_rng() >>> r = rng.normal(size=(100,3)) >>> H, edges = np.histogramdd(r, bins = (5, 8, 4)) >>> H.shape, edges[0].size, edges[1].size, edges[2].size ((5, 8, 4), 6, 9, 5)
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https://numpy.org/doc/2.4/reference/generated/numpy.histogramdd.html