# 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.

217
questions

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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....

6
votes

1
answer

76
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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 ...

0
votes

1
answer

22
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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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1
answer

23
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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 ...

3
votes

2
answers

58
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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&...

0
votes

0
answers

45
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### Sort vertices of (multiple) triangles based on distance to (multiple) reference points

Consider a point (ptA) on the surface of a triangle (with normal nf). To sort the the vertices of a triangle (sx,sy,sz) based on their distance to the reference point (ptA), I do the following:
import ...

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votes

1
answer

32
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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 ...

0
votes

1
answer

49
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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 ...

2
votes

1
answer

50
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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.
...

1
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1
answer

37
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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 ...

2
votes

2
answers

116
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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):
...

1
vote

1
answer

116
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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 ...

0
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0
answers

72
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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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0
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50
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### Performance comparisons between different tensor contraction libraries

There areeinsum, opt-einsum, tensorflow.einsum, pytorch.einsum, tblis,ctf, perhaps more. Are there any systematic comparisons for the performance including lower-level approaches, i.e., loading BLAS ...

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29
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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 ...

0
votes

0
answers

51
views

### Elementwise summation of two arrays of different lengths and matrix manipulation using einsum

I am trying to way to solve the following equation:
where Q is a matrix and r and lambda are vectors, which can be of different lengths. The data I have is of the following form (note Q is (3,5,1) ...

1
vote

1
answer

60
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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 ...

1
vote

1
answer

54
views

### 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 ...

1
vote

1
answer

45
views

### 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)...

0
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0
answers

37
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### how to claculate pairwise distance correlation with np.einsum

I calculate pairwise distance correlation based on(pairwise distance correlation)and I want to use numpy.einsum for making it faster, but I do not know how? please help me.
from scipy.spatial.distance ...

0
votes

0
answers

23
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### Overhead time for einsum loading BLAS

Based on Is numpy.einsum efficient compared to fortran or C? (related comparison Benchmarking (python vs. c++ using BLAS) and (numpy))
einsum can load BLAS at least in some tensor contractions and it ...

0
votes

1
answer

50
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### Python numpy computing out matrix with shape 3,3,3 from input matrecies with shape 3,3

I am currently building NeuralNetwork in python only using numpy.
This is the layout of the problem area:
I have one array holding the values for the input neurons in the columns and the rows ...

0
votes

2
answers

69
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### Calculate every 4-element-product in a vector with python

I have a (500000,30) numpy array and we can look it as a length-500000 list of size-30 vectors. I want to choose arbitrary 4 elements in the vector, calculate its product, and store all the 4-element-...

1
vote

1
answer

43
views

### Why do torch.add and torch.einsum return different results?

t=m+n
x=torch.einsum('xyzw,xyzw->xyzw',m,n)
When I try this code, I get x that's different from t, which is surprising. Why does this happen?

2
votes

1
answer

75
views

### How to vectorize multiple matrix multiplication

I have a 2d matrix A[1000*90] and B[90*90*1000]
I would like to calculate C[1000*90]
For i in range(1000)
C[i,:]=np.matmul(A[i,:],B[:,:,i]
I understand if I use a vectorized formula it's going to ...

2
votes

2
answers

81
views

### How to perform matrix multiplication between two 3D tensors along the first dimension?

I wish to compute the dot product between two 3D tensors along the first dimension. I tried the following einsum notation:
import numpy as np
a = np.random.randn(30).reshape(3, 5, 2)
b = np.random....

2
votes

1
answer

264
views

### Memory usage of torch.einsum

I have been trying to debug a certain model that uses torch.einsum operator in a layer which is repeated a couple of times.
While trying to analyze the GPU memory usage of the model during training, I ...

0
votes

2
answers

49
views

### How to calculate the outer sum (not product) between 2 (1D) vectors

It seems like np.einsum should do the trick, but I haven't been able to make it work.
An example:
a = np.arange(3)
b = np.arange(2)
#that computes the outer product
res = np.einsum('i,j->ij',a,b)
...

0
votes

1
answer

56
views

### np.einsum multiplication of matrices with several indices?

Given m x n matrix A and n x r matrix B how to write the following formula in np.einsum notation?
f(i) = \sum_{j,k} a_ij * b_jk
What will change in np.einsum if r x p matrix C will be added?
f(i) = \...

2
votes

1
answer

59
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### Why is the optimize argument False by default in np.einsum?

Why is the default not optimize=True or one of the specific optimization options?
I'm asking this because as a user of course I want the most optimal computation by default.

4
votes

0
answers

81
views

### Comparing Tullio to numpy.einsum

I am currently importing a Julia script that uses Tullio because of its speed. The function is
using Tullio, LoopVectorization
function testfunction_tullio(my_arr, other_arr, sec_arr, third_arr)
...

0
votes

0
answers

86
views

### How to perform einsum for decomposed tensor operations?

I am trying to measure the speed up performance between np.einsum('bcd,bce,bef->df' tensor1, tensor2, tensor1) and np.einsum('...->...', decomposed_tensor1, tensor2, decomposed_tensor1) ...

0
votes

0
answers

131
views

### Fast numpy multiplication of block matrix with normal matrix

I have to compute many matrix products of matrices that are block-diagonal in a minimisation procedure. In particular, I want to speed up two operations:
How do I construct the matrix a faster? (...

0
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0
answers

99
views

### Calculating custom Kernel matrix using numpy methods

I have a data of shape d X N (each column is a vector of features)
I have this code for calculating the kernel matrix:
def kernel(x1, x2):
return x1.T @ x2
data = np.array([[1,2,3], [1,2,3], [1,2,3]...

1
vote

1
answer

41
views

### Does numpy.einsum act differently on arrays loaded by cv2?

The example in numpy's documentation of einsum says np.einsum('ij->i', a) functions similar to np.sum(a, axis=1). Below, example 1 confirms this while example 2 contradicts it. Any idea what I am ...

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0
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166
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### Can einsum be used to reshape operand?

I trying to modify the following code snippet to not use reshape
a = np.random.randn(1, 2, 3, 5)
b = np.random.randn(2, 5, 10)
np.einsum("ijkl,mjl->kim", a, b.reshape(10,2,5))
At first ...

2
votes

1
answer

60
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### One line einsum functions with "interleaved" output indexing impossible to recreate using tensordot?

The similarities and differences between NumPy's tensordot and einsum functions are well documented and have been extensively discussed in this forum (e.g. [1], [2], [3], [4], [5]). However, I've run ...

0
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1
answer

71
views

### Elegant Numpy Tensor product

I need to take the product over two tensors in numpy (or pytorch):
I have
A = np.arange(1024).reshape(8,1,128)
B = np.arange(9216).reshape(8, 128, 9)
And want to obtain C, with dot products summing ...

2
votes

1
answer

54
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### Tensormultiplication with einsum

I have a tensor phi = np.random.rand(n, n, 3) and a matrix D = np.random.rand(3, 3). I want to multiply the matrix D along the last axis of phi so that the output has shape (n, n, 3). I have tried ...

1
vote

1
answer

130
views

### What is TDOT subroutine in BLAS?

I tried to use opt-einsum to generate contraction path for Fortran implementation and I came across an expression TDOT
https://optimized-einsum.readthedocs.io/en/stable/greedy_path.html?highlight=tdot
...

1
vote

1
answer

232
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### numpy einsum: Elementwise product between 3D matrix and 2D matrix

I have two numy matrices :
A with shape (N,M,d)
B with shape (N,d)
So, I am trying to get a Matrix with shape (N,M,d) in such manner that I do element wise product between B and each element of A (...

0
votes

1
answer

152
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### Using numpy matmul in row-wise manner with broadcasting

I have an array of 3D points (n,3) that are to be rotated about the origin using a 3x3rotation matrix that is stored in the form of a nx3x3 array.
At the moment I'm simply doing this in a for loop ...

0
votes

1
answer

65
views

### Efficient way to compute an array matrix multiplication for a batch of arrays

I want to parallelize the following problem. Given an array w with shape (dim1,) and a matrix A with shape (dim1, dim2), I want each row of A to be multiplied for the corresponding element of w.
That'...

0
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0
answers

30
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### Python understanding array shape using einsum

I'm using einsum, and I'm having an issue creating an inner product of two 5x2 matrices such that the resulting array has a size of (5,). I was able to use the code: print(np.einsum('ij,kj->ik', A, ...

0
votes

2
answers

59
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### extracting diagonals (sideway down) from 5d matrices using einsum

I only managed to extract one diagonal using Numpy einsum. How do I get the other diagonals like [6, 37, 68, 99] with help of einsum?
x = np.arange(1, 26 ).reshape(5,5)
y = np.arange(26, 51).reshape(...

0
votes

2
answers

170
views

### numpy einsum collapse all but first dimension

I have an array of dimension (5,...) (... can be anything) and I would like to form the dot product of all dimension after the 5 such that the resulting array has shape (5,). I thought the einsum
i...,...

0
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0
answers

37
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### Python: einsum inside for loop

Suppose A and B are two 4 dimensional numpy arrays with the same dimension.
A = np.random.rand(5,5,2,10)
B = np.random.rand(5,5,2,10)
a, b, c, d = A.shape
dat = []
for k in range(d):
sum = 0
...

2
votes

2
answers

182
views

### Combining sparse and einsum to perform large sparse sum

I have a matrix A with shape=(N, N) and a matrix B with the same shape=(N, N).
I am constructing a matrix M using the following einsum (using the opt_einsum library):
M = oe.contract('nm,in,jm,pn,qm-&...

1
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0
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166
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### Does einsum or opt-einsum optimized path consider the dimension of tensor?

Suppose I have a tensor contraction
A[ab] B[bc] C[cd] -> ABC[ad]
where tensors A and B are n*n tensors and C is n*m tensor, and n >> m.
There are two contractions
A[ab] B[bc] -> AB[ac], ...