本文介绍了NumPy 广播:计算两个数组之间的平方差之和的处理方法,对大家解决问题具有一定的参考价值,需要的朋友们下面随着小编来一起学习吧!
问题描述
我有以下代码.它在 Python 中永远存在.一定有办法将这个计算转化为广播...
I have the following code. It is taking forever in Python. There must be a way to translate this calculation into a broadcast...
def euclidean_square(a,b): squares = np.zeros((a.shape[0],b.shape[0])) for i in range(squares.shape[0]): for j in range(squares.shape[1]): diff = a[i,:] - b[j,:] sqr = diff**2.0 squares[i,j] = np.sum(sqr) return squares 推荐答案您可以使用 np.einsum 在计算 广播方式,像这样-
You can use np.einsum after calculating the differences in a broadcasted way, like so -
ab = a[:,None,:] - b out = np.einsum('ijk,ijk->ij',ab,ab)或者使用scipy 的 cdist 其可选的度量参数设置为 'sqeuclidean' 为我们提供我们问题所需的平方欧几里德距离,就像这样 -
Or use scipy's cdist with its optional metric argument set as 'sqeuclidean' to give us the squared euclidean distances as needed for our problem, like so -
from scipy.spatial.distance import cdist out = cdist(a,b,'sqeuclidean')更多推荐
NumPy 广播:计算两个数组之间的平方差之和
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