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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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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35 views

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 ...
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1answer
32 views

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 ...
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1answer
53 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 ...
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1answer
37 views

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 ...
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1answer
78 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 ...
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1answer
47 views

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 (...
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1answer
41 views

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 ...
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1answer
44 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'...
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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, ...
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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(...
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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...,...
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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 ...
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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-&...
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11 views

How can I take a np.einsum along a specific dimension?

I have 2 complex matricies, each of the shape (2,4,4,4,3). I would like to implement the following code without a for loop: ce2 = np.random.rand(2,4,4,4,3)+np.random.rand(2,4,4,4,3)*1j ce1 = np.random....
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48 views

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], ...
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Is there a way to do einsum in Python with boolean logic to optimize it?

Okay, so basically i'm working on some sort of image blending thing, and i have a function that will blend every image in the given array according to some specified weight, like in the code below: #...
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1answer
30 views

operation of Einstein sum of 3D matrices

The following code indicates that the Einstein sum of two 3D (2x2x2) matrices is a 4D (2x2x2x2) matrix. $ c_{ijlm} = \Sigma_k a_{i,j,k}b_{k,l,m} $ $ c_{0,0,0,0} = \Sigma_k a_{0,0,k}b_{k,0,0} = 1x9 + ...
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1answer
33 views

Numpy: multiplying (1/2)^k for each row of np.array for each array in a list

Suppose I have the following list of array dat = [np.array([[1,2],[3,4]]), np.array([[5,6]]), np.array([[1,2],[7,8],[2,3]]), np.array([[1,2],[3,4]])] Now, for each elements in the list, I want to ...
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1answer
33 views

Accumulated sum of 2D array [duplicate]

Suppose I have a 2D numpy array like below dat = np.array([[1,2],[3,4],[5,6],[7,8]) I want to get a new array with each row equals to the sum of its previous rows with itself, like the following ...
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1answer
138 views

Reshaping before as_strided for optimisation

def forward(x, f, s): B, H, W, C = x.shape # e.g. 64, 16, 16, 3 Fh, Fw, C, _ = f.shape # e.g. 4, 4, 3, 3 # C is redeclared to emphasise that the dimension is the same Sh, Sw = s #...
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66 views

How to avoid using a for loop using either tensors or einsum?

I have the following problem at hand. F is a NumPy array of dimensions 2 X 100 X 65. I want to generate another array V whose dimensions are 2 X 2 X 65. This array V must be computed in the following ...
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1answer
23 views

Multiply Tensor-Slice by Matrix-Row

I'm trying to find a way to efficiently compute the matrix-vector-product of each depth-wise 2d-slice of a tensor (shape: (n, n, m)) with each row of a matrix (shape: (n, m)). What I'm trying to do ...
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Trying to implement 2d image convolution with numpy throws ValueError: operands could not be broadcast together

I am trying to implement my own algorithm for convoluting an image with a certain filter and getting a bit of help from this post. What I have so far: My image in numpy with shape (510,510) ...
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66 views

How to improve this bottleneck calculation in Python (use of C++?)

I have been working on a project where at some point I require high optimization for the algorithm used in the calculations. I would like to know which way is better to go, if this can be done ...
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1answer
80 views

Dot-product a list of Matrices in numpy

Let's generate a 'list of three 2x2 matrices' that I call M1, M2 and M3: import numpy as np arr = np.arange(4*2*2).reshape((3, 2, 2)) I want to take the dot product of all these matrices: A = M1 @ ...
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Efficiently computing batched 2D vector localisation in numpy

I have an operation that localises one 2D vector into the frame of another. I don't know if there's a more technical linalg term for this operation. The operation can be expressed as [dot([vx, vy], [...
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1answer
121 views

Use numpy.einsum to calculate the covariance matrix of data

My aim is to calculate the covariance matrix of a set of data using numpy.einsum. Take for instance example_data = np.array([0.2, 0.3], [0.1, 0.2]]) The following is code I tried: import numpy as np ...
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2answers
88 views

Explination of numpy's einsum

I am currently doing some studies on computing a 4th order tensor in numpy with the einsum function. The tensor I am computing is written in Einstein notation and the function einsun does the work ...
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1answer
32 views

Compute distances between 2 dataframes based on boolean matrix as a mask

I have 2 dataframes where columns are features and rows are different items. import pandas as pd import numpy as np import random random.seed(0) data1 = {'x':random.sample(range(1,100), 4), 'y':...
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1answer
55 views

How to execute a matrix multiplication of to 3D arrays using numpy einsum function to obtain a product matrix of 2D?

how can I execute the following piece of code without using loop structure, instead using the numpy einsum function? I want the product matrix to be a 2D matrix and not 3D. Simply doing "D = np....
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1answer
29 views

How can i vectorize this operation?

I have to execute the below operation several thousand times and it is slowing down my code substantially: T = 50 D = 10 K = 20 x = np.random.randn(T, D) y = np.random.randn(T, K) result = np.zeros((...
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1answer
58 views

Inner product of Tensors

Can someone please explain me how to do inner product of two tensors in python to get one dimensional array. For example, I have two tensors with size (6,6,6,6,6) and (6,6,6,6). I need an one ...
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1answer
31 views

Einsum in python

Please explain me what exactly happening in the einsum of the below code. The output of the code gives a size of (6,6,6,6,6) tensor. Does is actually performing a outer product? import numpy as np a1 =...
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186 views

removing loops with numpy.einsum

I have a some nested loops (three total) where I'm trying to use numpy.einsum to speed up the calculations, but I'm struggling to get the notation correct. I managed to get rid of one loop, but I can'...
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0answers
178 views

einsum for sparse tensor(s) in Tensorflow TF

I want to multiply two tensors, one sparse and the other dense. The sparse one is 3D and the dense one 2D. I cannot convert the sparse tensor to a dense tensor (i.e., avoid using tf.sparse.to_dense(......
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1answer
47 views

torch.einsum doesn't accept float tensors?

I get the following error: RuntimeError: Expected object of scalar type Long but got scalar type Float for argument #3 'mat2' in call to _th_addmm_out I use torch.einsum as follows: mu = torch....
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2answers
462 views

How exactly does torch / np einsum work internally

This is a query regarding the internal working of torch.einsum in the GPU. I know how to use einsum. Does it perform all possible matrix multiplications, and just pick out the relevant ones, or does ...
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1answer
127 views

Python fast array multiplication for multidimensional arrays

I have two 3-dimensional arrays, A, B, where A has dimensions (500 x 500 x 80), and B has dimensions (500 x 80 x 2000). In both arrays the dimension that has the size 80 can be called 'time' (e.g. ...
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2answers
100 views

Numpy einsum compute outer product along axis

I have two numpy arrays that contain compatible matrices and want to compute the element wise outer product of using numpy.einsum. The shapes of the arrays would be: A1 = (i,j,k) A2 = (i,k,j) ...
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126 views

Tensordot equivalent of einsum 'ij, ijk -> ik'

I am not using numpy but Eigen::Tensor C++ API, which only has contraction operations, this is just to enable me think through implementation from python. So 'ij, ijk -> ik' is basically like doing ...
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1answer
169 views

PyTorch: How to use `torch.einsum()` to find the trace between the dot product of a nested tensor and another tensor

Suppose I have a nested tensor A: import torch.nn as nn X = np.array([[1, 3, 2], [2, 3, 5], [1, 2, 3]]) X = torch.DoubleTensor(X) rows = X.shape[0] cols = X.shape[1] A = torch.matmul(X.view(rows, ...
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21 views

Strange behaivior of numpy.einsum using list for indexing

While numpy.einsum seems to work for normal lists as indices(e1 and e2 agree), it does not seem to work for numpy arrays, which have been converted to a list before. import numpy as np a=np.random....
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18 views

Indexing sub arrays within input arrays with numpy einsum

I am wondering if there is a way to encode indices in numpy einsum, that are dependent on each other, such that they index only a subpart of the inputs matrices. So for example, for two arrays [0,1,2,...
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2answers
34 views

Increase speed of numpy operations on large number of vectors

I would like a faster implementation of the functions shown below. Ideally the code should work when number_points variable is set to 400-500. Is there any way I can improve the function definitions ...
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1answer
70 views

Multiplying a 4D tensor with a 3D tensor using numpy einsum or tensordot

I have a (2, 5, 3) 3D tensor and a (2, 5, 4, 3) 4D tensor and I am trying to compute a row-wise product between them in the following manner: As an example, consider the following 3D and 4D tensor: A ...
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2answers
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Looping over np.einsum many times… Is there a faster way?

I have a likelihood function that I am trying to sample with MCMC. I have used no for loops in the log likelihood itself, but I do call np.einsum() once. Here's a sample of what my current code looks ...
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4answers
109 views

Numpy make the product between all elemens and then insert into a triangular 2d array

Suppose we got a 1D array below arr = np.array([a,b,c]) The first thing I need to do is the make the product of all of the elments, i.e [ab,ac,bc] Then construct a 2d triangular array with this ...
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1answer
64 views

Making a np.einsum faster when inputs are many identical arrays? (Or any other faster method)

I have a piece of code of type: nnt = np.real(np.einsum('xa,xb,yc,yd,abcde->exy',evec,evec,evec,evec,quartic)) where evec is (say) an L x L np.float32 array, and quartic is a L x L x L x L x T np....
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1answer
381 views

torch.einsum 'RuntimeError: dimension mismatch for operand 0: equation 4 tensor 2'

I'm trying to manually calculate a gradient of a matrix and I can do it by using numpy but I don't know to do the same thing in pytorch. the equation in NumPy is def grad(A, W0, W1, X): dim = A....