# Questions tagged [numpy-einsum]

NumPy's `einsum` function implements the Einstein summation convention for multidimensional array objects. Use this tag for questions about how `einsum` can be applied to a particular problem in NumPy, or more questions about how the function works.

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### Vectorizing Mahalanobis distance - numpy

I have been looking at the answer from @Danita's answer (Vectorizing code to calculate (squared) Mahalanobis Distiance), which uses np.einsum to calculate the squared Mahalanobis distance. In that ...

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### Python - How to optimize einsum?

I am trying to optimize my code and I don't know if I am already at the limit.
Here is my problem: I am solving the equation of motion for multiple trajectories. What this means is that I have an ...

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### Optimizing np.einsum calls in Python

I have two numpy arrays: X of dimension (N,N,N,N) and Y of dimension (N,N). My goal is to evaluate the following einsum call as fast as possible:
Z = np.einsum('iiii,ij,ik,il,im->jklm', X, Y, Y, Y, ...

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### Cupy Code Optimization: How to speed up nested for loops

I would like to optimize the python code between the 2 perf_counter functions.
By using cupy I already obtained substantial improvement compared to numpy.
I was asking myself if there is some ...

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### How to use numpy.einsum to add redundant indices

Suppose I have an N x N x N dimensional numpy array X with entries X[i,j,k]. I want to use X to define an N x N x N x N dimensional numpy array Y defined as follows:
Y[i,j,k,k] = X[i,j,k]
Y[i,j,k,l] = ...

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### Is it possible to invert this numpy einsum operation?

Is it possible to invert this einsum operation so I get back the input psi4d from it's output psi1 and psi2?
psi1 = np.einsum('jqik->ij', psi4d)
psi2= np.einsum('kiqj->ij', psi4d)...

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### How can I flip matrix elements in triple-wise rows in numpy?

I have a matrix with the shape (3*k, 3*l) (e.g.: k=2, l=1):
A = np.arange(18).reshape(6, 3)
array([[ 0, 1, 2],
[ 3, 4, 5],
[ 6, 7, 8],
[ 9, 10, 11],
[12, 13, 14],
...

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### rewrite einsum("bhwHW,bHWc->bhwc") without einstein notation

The example code of DDPM works well in python. But after I convert it into tensorflowjs model, and run it in web browser, this line failed with error.
tf.einsum("bhwHW,bHWc->bhwc", ...

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### In PyTorch, how can I avoid an expensive broadcast when adding two tensors then immediately collapsing?

I have two 2-d tensors, which align via broadcasting, so if I add/subtract them, I incur a huge 3-d tensor. I don't really need that though, since I'll be performing a mean on one dimension. In this ...

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### Write numpy einsum operation as eigen tensors

I want to write the following numpy einsum as a an Eigen Tensor op
import numpy as np
L = np.random.rand(2, 2, 136)
U = np.random.rand(2, 2, 136)
result = np.einsum('ijl,jkl->ikl', U, L)
I can ...

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### How to perform the MaxSim operator leveraging torch procedures?

Let T and L be two batches of matrices (MxN) and a function f(ti,lj) that calculates a score for matrices ti and lj. For instance, if
T, L= torch.rand(4,3,2), torch.rand(4,3,2)
# T = tensor([[[0.0017,...

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### Mapping timeseries sequence input shape to desired output shape using EinsumDense

Can anyone help me understand how to handle compressing/expanding the dimension of a tensor using EinsumDense?
I have a timeseries (not NLP) input tensor of the shape (batch, horizon, features) ...

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### Einsum matrix multiplication with missing dimensions

I want to modify this einsum to be more flexible. Right now it's doing a matrix multiplication of the last two dimensions of A against the last 3 of B:
tf.einsum("...xp,...pyz->...xyz", A,...

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### Einsum multiply each row with every one for 3X3X3 array

Hello could someone please help me figure out how to use np.einsum to produce the below code's result. I have a (3,3,3) tensor and I will like to get this results which I got from using two for loops. ...

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### convert python Einsum to fast C++

I have converted this python eimsum expression
psi_p = np.einsum('ij...,j...->i...', exp_p, psi_p)
to c++ like this:
int io=0;
`for (i=0; i < 4; i++){
ikauxop=i*nd;
for (j=...

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### Multiplication of 3d array using np.einsum

Hello I have just recently started working with python 3d arrays and I am not too familiar with how to multiply each block in the 3d array with all other blocks in the 3d array. I am working with a np ...

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### Translating np.einsum to something more performant

Using python/numpy, I have the following np.einsum:
np.einsum('abde,abc->bcde', X, Y)
Y is sparse: for each [a,b], only one c == 1; all others := 0.
For an example of relative size of the axes, X....

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### How to get numpy einsum to ignore nan's?

Let's say you use einsum to calculate the slope and intercept in a simple regression as follows:
slope = (np.einsum('ij,ij->i', y_norm, x_norm) /
np.einsum('ij,ij->i', x_norm, x_norm))...

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69
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### numpy.einsum with ellipses of different dimensionality

I often find that I'd like like to do an operation between the last few dimensions of two arrays, where the first dimensions don't necessarily match. As an example I'd like to do something like:
a = ...

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217
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### Einsum for shapes of different sizes or ranks

I have two PyTorch tensors. One is rank three and the other is rank four. Is there a way to get it so that it produce the rank and shape of the first tensor? For instance in this cross-attention bit:
...

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### How to multiply Tensorflow arrays across specified indicies

I would like to multiply two Tensorflow Arrays in a certain way as shown in the code below:
import tensorflow as tf
from tensorflow.keras import mixed_precision
policy = mixed_precision.Policy('...

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### More efficient nested sum in numpy

I am trying to calculate a vectorised nested sum
(so effectively doing a separate calculation for each row k)
The fastest way I have come up with is to define a lower triangular matrix of ones to ...

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1
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46
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### numpy einsum for multiplication looped along axis

I have an 2 x 2 matrix yy
yy = np.array([[0.5, 0], [0, 2]])
print(yy)
array([[0.5, 0. ],
[0. , 2. ]])
and n=3 x 4 x 2 matrix xy
xy = np.array([
[[1, 0.1], [2, 0.2], [3, 0.3], [4, 0.4]],
...

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### Improving the time for summing a stack of inverse matrices

I'm hoping to speed up a Python script that inverts a large number of small matrices (a 2D array of matrices basically) and then performs a matrix sum over one of the axes of the outer array. So far, ...

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### Standard operations equivalent of einsum expression

I have the following einsum expressions:
np.einsum("abc,ab->ac",a,b)
np.einsum("abc,abd->dc", a, b)
That I would need to convert to standard numpy operations. Can anyone help ...

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### What does np.einsum('mk,nk', D, D) do?

I'm reading over someone else's code and am unsure what np.einsum does in this case.
print(np.einsum('mk,nk', D, D)) # D is an np array with shape (3, 100)
This code outputs an array with shape (3, 3)...

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### Einsum is slow for tensor multiplication

I'm trying to optimize a particular piece of code to calculate the mahalanobis distance in a vectorized manner. I have a standard implementation which used traditional python multiplication, and ...

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### Can a numpy.prod array reduction be replaced by numpy.einsum?

I have an huge 8D array view that i want to reduce to 2D by multiplying the elements together over 4 axes and summing them over 2 axes. I didn´t find any example in the numpy.einsum documentation ...

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### Proving Properties of Matrices (Associativity) using np.einsum

I'm experimenting with np.einsum and I was wondering if there's a way to prove Associativity just using np.einsum.
Here's the data:
A = np.array([[1, 1, 1],
[2, 2, 2],
[5, ...

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282
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### How to compute the outer sum (similar to outer product

Given tensors x and y, each with shape (num_batches, d), how can I use PyTorch to compute the sum of every combination of x and y within a batch?
This is similar to outer product, except we don't want ...

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### numpy.einsum substantially speeds up computation - but numpy.einsum_path shows no speedup, what am I missing?

I have an odd case where I can see numpy.einsum speeding up a computation but can't see the same in einsum_path. I'd like to quantify/explain this possible speed-up but am missing something somewhere.....

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### NumPy einsum explicit mode with programmatic interface

NumPy's einsum lets you explicitly choose which axes are contracted with the so-called explicit mode, using ->:
>>> a = np.arange(9).reshape((3, 3))
>>> np.einsum('ij,ij->j', a,...

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### Efficient contractions with NumPy einsum paths

I have a set of contractions that I would like to optimize; for the contractions I am using np.einsum() from the NumPy module. The minimal reproducible example is here:
import numpy as np
from time ...

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### What does np.einsum act on? [duplicate]

I am facing with a problem!
How does np.einsum act on these tensors?
a = np.random.rand(2, 2, 5, 5)
b = np.random.rand(4, 5, 5, 1)
c = np.einsum('aijb,qwei->qweaj', b, a)
the output shape is: (2, ...

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1
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### einsum not giving overflow error when applied to int arrays

I just had a bug which was based on np.sum and an equivalent (or at least I thought so...) np.einsum command not giving the same result. Here is an example:
import numpy.random
array = np.random....

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### Determining the validity of a multi-hot encoding

Suppose I have N items and a multi-hot vector of values {0, 1} that represents inclusion of these items in a result:
N = 4
# items 1 and 3 will be included in the result
vector = [0, 1, 0, 1]
# item ...

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### einsum equivalent for ndarray multiplication

I have the following multiplication routine:
import numpy as np
a = np.random.rand(3,3)
b = np.random.rand(3,50,50)
res = np.zeros((3, 50, 50))
for i in range(50):
for j in range(50):
res[:...

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### Matrix Vector Product across Multiple Dimensions

I have two arrays:
A = torch.rand((64, 128, 10, 10))
B = torch.rand((64, 128, 10))
I would like to compute the product, represented by C, where we do a matrix-vector multiplication across the first ...

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### Speeding up einsum for specific matrix and vector size

I have 2 arrays, one is of size:
A = np.random.uniform(size=(48, 1000000, 2))
and the other is
B = np.random.uniform(size=(48))
I want to do the following summation:
np.einsum("i, ijk -> jk&...

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### Parallelize a matmul-like matrix computation (tensor product) in Numpy

I want to implement a tensor Tucker product s.t.,
Input: B in shape (m, n), C in shape (n, n, n) (cube).
Output: Y in shape (m, m, m), s.t. Y_ijk = ∑_{0≤a,b,c<n} B_ia * B_jb * B_kc * C_abc.
The ...

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### fastest way to stack ndarrays

Gist
Basically I want to perform an increase in dimension of two axes on a n-dimensonal tensor.
For some reason this operation seems very slow on bigger tensors.
If someone can give me a reason or ...

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### Einsum in python for a complex loop

I have complex loops in python that I'm trying to "vectorize" to improve computation time. I found the function np.einsum allowing it, I managed to use it, but I'm stuck with another loop.
...

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### Efficient way to "broadcast" the sum of elements of two 1D arrays to a 2D array

Is there a more efficient way (without loops) to do this with Numpy ?:
for i, x in enumerate(array1):
for j, y in enumerate(array2):
result[i, j] = x + y
I was trying to use einsum ...

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### Einsum formula for repeating dimensions

I have this piece of code:
other = np.random.rand((m,n,o))
prev = np.random.rand((m,n,o,m,n,o))
mu = np.zeros((m,n,o,m,n,o))
for c in range(m):
for i in range(n):
for j in range(o):
...

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### numpy einsum/tensordot with shared non-contracted axis

Suppose I have two arrays:
import numpy as np
a = np.random.randn(32, 6, 6, 20, 64, 3, 3)
b = np.random.randn(20, 128, 64, 3, 3)
and want to sum over the last 3 axes, and keep the shared axis. The ...

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### Vectorize this matmul like operation in Numpy, Numba, Cupy manner

Say I have an vector v(ij) and matrix M(jk).
v = np.array([1.0, 1.0, 0.0, 0.0], dtype=np.float32)
M = np.array([[0.0, 0.0, 0.2, 0.0],
[0.0, 0.0, 0.0, -0.1],
[0.0, 0.0, 0.0,...

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### Is there any DGEMM-type einsum in python?

In DGEMM http://www.netlib.org/lapack/explore-html/d1/d54/group__double__blas__level3_gaeda3cbd99c8fb834a60a6412878226e1.html#gaeda3cbd99c8fb834a60a6412878226e1
one can do C = alpha * A.B + beta*C
In ...

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### Why optimize in the einsum can accelerate binary contraction?

In https://numpy.org/doc/stable/reference/generated/numpy.einsum.html
optimize{False, True, ‘greedy’, ‘optimal’}, optional
Controls if intermediate optimization should occur. No optimization will ...

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### Performing simple custom operations with Einsum

I am new to Einsum and wanted a particular case - using einsum for multiplying all elements of a matrix with each other; say given a 2D matrix:-
np.random.rand((16,2))
Multiplying elements across an ...

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1
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### Simplify pytorch einsum

Consider the following pytorch snippet:
X = torch.einsum("rij, sij -> rs", A, A)
Y = torch.einsum("rij, sij -> rs", B, B)
Z = torch.einsum("rij, sij -> rs", C, C)...