bundles / numpy 2.5.0.dev0+git20251130.2de293a / numpy / _core / _multiarray_umath / vdot
built-in
numpy._core._multiarray_umath:vdot
Signature
vdot ( a , b , / ) Summary
Return the dot product of two vectors.
Extended Summary
The vdot function handles complex numbers differently than dot: if the first argument is complex, it is replaced by its complex conjugate in the dot product calculation. vdot also handles multidimensional arrays differently than dot: it does not perform a matrix product, but flattens the arguments to 1-D arrays before taking a vector dot product.
Consequently, when the arguments are 2-D arrays of the same shape, this function effectively returns their Frobenius inner product (also known as the trace inner product or the standard inner product on a vector space of matrices).
Parameters
a: array_likeIf
ais complex the complex conjugate is taken before calculation of the dot product.b: array_likeSecond argument to the dot product.
Returns
output: ndarrayDot product of
aandb. Can be an int, float, or complex depending on the types ofaandb.
Examples
import numpy as np a = np.array([1+2j,3+4j]) b = np.array([5+6j,7+8j]) np.vdot(a, b) np.vdot(b, a)Note that higher-dimensional arrays are flattened!
a = np.array([[1, 4], [5, 6]]) b = np.array([[4, 1], [2, 2]]) np.vdot(a, b) np.vdot(b, a) 1*4 + 4*1 + 5*2 + 6*2
See also
- dot
Return the dot product without using the complex conjugate of the first argument.
Aliases
-
numpy._core._multiarray_umath.vdot