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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customize torch.einsum (put few restriction while dot product on each row-col)?

Thanks in advance for the help! Let say I have two tensor matrix: A,B A.shape=[10,4,3,3] B.shape=[10,4,3,6] Then, I would like to do following calculation while using torch.einsum('abcd,abdf->abcf') ...
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how do I interpret np.einsum(“ijij->ij”

I am trying to make sense of np.einsum, and there does not appear to be examples related to my specific context. There are many good examples in the numpy docs, a guide here, here, and a stackoverflow ...
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Replicating `np.einsum` result via normal matrix operations

I have implemented a TCB Spline in Python via Numpy. The critical piece of the code appears below: np.einsum('km,km,kl,lm->m',xdiffpow_knot, h_pow_knot[:,i], hermite_matrix, lag_knot[:,i]) where ...
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Example of numpy combining elementwise (hadamard) and outer product of 3D array by vectorization or einsum

Suppose I have 2 3D matrices A and B A.shape = [ 2, 50, 60] B.shape = [ 3, 50, 60] conceptually, I see the matrices like column vectors A = [ a0, a1 ] where a0, a1 are matrices of shape [50,60] [ ...
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tensordot equivalent of numpy-einsum

I am trying to figure out the tensordot equivalent of the following expression, as sparse package does not support einsum (the sparseness of the original problem is much better than the example below)....
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62 views

Making numpy einsum faster for multidimensional tensors

I have some code that uses the following einsum: y = np.einsum('wxyijk,ijkd->wxyd', x, f) where (for example) the shape of x is (64, 26, 26, 3, 3, 3) and the shape of f is (3, 3, 3, 1), both ...
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45 views

Outer product calculation by numpy einsum

I am trying to dive into the einsum notation. This question and answers have helped me a lot. But now I can't grasp the machinery of the einsum when calculating outer product: x = np.array([1, 2, 3]...
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Lazy evaluations of numpy.einsum to avoid storing intermediate large dimensional arrays in memory

Imagine that I have integers, n,q and vectors/arrays with these dimensions: import numpy as np n = 100 q = 102 A = np.random.normal(size=(n,n)) B = np.random.normal(size=(q, )) C = np.einsum("i, jk -...
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Efficient contraction of Levi-Civita tensor with Numpy einsum

I want to contract large, n dimensional vectors with the Levi Civita tensor. If I want to use Numpy's einsum function, I have to define the Levi Civita tensor in advance, which quickly blows up my ...
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38 views

Cannot understand einsum calculation

I'm trying to port some code from python to R (forewarning.. I know far less python than I do R). Anyway I've a complicated einsum command that I need to understand well in order to translate it and ...
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What is the precise meaning of question marks in an einsum-like gufunc signature?

For example: np.arange(3)@np.arange(2) # Traceback (most recent call last): # File "<stdin>", line 1, in <module> # ValueError: matmul: Input operand 1 has a mismatch in its core ...
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Numpy array addition made as simple as np.einsum()?

If I have a.shape = (3,4,5) and b.shape = (3,5), using np.einsum() makes broadcasting then multiplying the two arrays super easy and explicit: result = np.einsum('abc, ac -> abc', a, b) But if I ...
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Einsum notation to add a vector to every column in the matrix

I have a matrix A of size m X n and vector V of size m X 1 A = [1 2 3 4 5 6 8 9 10] V = [1 2 3] I want to compute A + V i.e., add the vector to every column of A A = [2 3 4 ...
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Matrix-Vector product using einsum or matmul?

I need to multiply a lot of vectors beta with the same matrix M. Let say that the matrix M has the shape (150,7), and that the beta-s are stored in a variable of shape (7,128,128). How would you ...
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69 views

Translating np.einsum() to MATLAB

I am having trouble understanding the documentation of np.einsum(). How are subscripts interpreted? I am trying to write np.einsum('a...c,b...c', Y, conj(Y)) where Y is a matrix of shape C, F, T on ...
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Implementing numpy einstein summation for sum of dot products

I need to optimize an algorithm, which needs to be fast as possible, for now, its a basic sum over the dot products of 2 vectors problem, but I think my solution is a bit redundant, and Einstein ...
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59 views

Python Numpy einsum klij->kijl and kijl->klij what do they mean?

I am trying to understand the following code from https://github.com/rezazad68/BCDU-Net/blob/master/Retina%20Blood%20Vessel%20Segmentation/evaluate.py: patches_imgs_test = np.einsum('klij->kijl', ...
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Combine two 3d numpy arrays to 2d arrays with einsum or broadcasting?

I have loop to multiplying slices from two 3-d numpy arrays to produce a 2-d array. I suspect there must be a more efficient way to do this with broadcasting or einsum, but I can't figure it out. A = ...
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How to write Z[i,k] = sqrt(sum_j((X[i,j] - Y[k,j])**2) in einsum notation? [duplicate]

Is it possible, and if so, how, to formulate this computation as an einsum formulation as described here (tensorflow) or here (numpy). def dist_np(X,Y,a,b): Z = np.ndarray(shape=(a,a), dtype=...
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transpose 3D array and multiply elementwise-memory contiguity

I have a huge 3D array that looks like A.shape = (100000, 5000, 50). I need to transpose it to have an array of the form A.shape = (50, 5000, 100000). Then I need to do the operation a = a.T @ a on ...
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How to parse numpy.einsum for two three-dimensional arrays “fid,fi->fd”

I can wrap my head around the two-dimensional examples, and I have an intuition about 'repeated' dimensions causing multiplication, and omitted dimensions in the explicit output causing summation ...
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How to use numpy.einsum to blend two frames?

Goal I want to use numpy.einsum to blend two frames together. The reason I really want to use einsum is because I would like to be able to understand how it works and how it can be applied. Problem ...
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85 views

Use np.einsum to replace for loop

I want to make the following computation, i use random arrays for demonstration: a = np.random.randint(10, size=(100,3)) b = np.random.randint(10, size=(3,2)) result = np.zeros(100) for i in range(...
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72 views

numpy.einsum('ij,ji', a, b) performance issue

Could someone expain, why numpy.einsum('ij,ji', A, B) is much slower than numpy.einsum('ij,ij', A, B), as it is shown below? In [1]: import numpy as np In [2]: a = np.random.rand(1000,1000) ...
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31 views

How do I rotate timeseries in a 5-d numpy matrix?

I am trying to rotate some seismic data held in a numpy nd-array. This array has dimensions (N-receiver, M-sources,3-source_channels, 3-receiver channels, K-time channels). I know how to set up the ...
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1answer
30 views

Efficiently compute the dot product on the last dimension of an array

What is the fastest way to compute the dot product on the last dimension of a multidimensional ndarray? For the moment I am doing that: import numpy as np a=np.reshape(np.arange(90),[3,3,2,5]) b=np....
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58 views

Output shape of numpy.einsum

Is there a elegant way to precompute the shape of the result from np.einsum given einsum's input arguments (without running the computation)? # Given a, b and signature with # a.shape == (1, 2, 5) # ...
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1answer
204 views

Outer subtraction with Numpy

I simply want to do: C_i=\Sum_k (A_i -B_k)^2 I saw that this calculation is faster with a simple for loop than with the numpy.subtract.outer! Anyway I feel that numpy.einsum would be the fastest. I ...
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1answer
81 views

For loop equivalent for einsum expression

I have the following Einstein Sum (einsum) expression, import numpy as np x = np.random.rand(1,8,2,8,10) y = np.random.rand(8,10,10) z = np.einsum('nkctv,kvw->nctw', x, y) print (z.shape) ...
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50 views

Meaning / equivalent of numpy.einsum expression

I'm desperately trying to find the python built-in equivalent of the following numpy.einsum expression: >>> a = np.array((((1, 2), (3, 4)), ((5, 6), (7, 8)))) >>> a array([[[1, 2], ...
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33 views

Component-wise Product of all Column Combinations of two Matrices

As the title says I want to calculate the component-wise product of all column combinations of two matrices. I already found a solution using numpy.einsum and numpy.hstack. I wonder if there is a ...
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In Python's Numpy, a dot product isn't equivalent to an einsum, and I'm not sure why not

But obviously I'm doing something wrong. I've been chasing a bug all night, and I've finally solved it. Consider: xs = np.arange(100 * 3).reshape(100, 3) W = np.arange(3 * 17).reshape(3, 17) a = np....
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CNN forward and backward with numpy einsum give different results to for loop implementation

I am trying to implement Convolutional Neural Network from scratch with Python numpy. I implemented forward and backward phases with numpy einsum (functions conv_forward and conv_backward). When I ...
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1answer
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Einstein notation for numpy dot product

How can I write the following dot product using einstein notation? import numpy as np LHS = np.ones((5,20,2)) RHS = np.ones((20,2)) np.sum([ np.dot(LHS[:,:,0], RHS[:,0]), np.dot(LHS[:,:,1], ...
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Matrix multiplication but only between specific rows and columns [duplicate]

I have three two matrices A and B, the matrix product I want is diagonal(A.B.A^T), where A^T is transpose of a matrix. The dimensions of the matrices are as follows A - (2^n, n) B - (n, n) where is ...
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Matrix left division of stacked arrays using numpy

I'm working on a program to solve the Bloch (or more precise the Bloch McConnell) equations in python. So the equation to solve is: where A is a NxN matrix, A+ its pseudoinverse and M0 and B are ...
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Tensor contractions for indices “pqrs,pt -> sqrt” in jupyter

I have two tensors I_pqrs and C_st with dimensions (170,170,170,170) and (170,170) respectively. I tried to contract them using np.einsum("pqrt,st->sqrt", I, C), but I keep getting a memory error. ...
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optimization scheme of numpy.einsum

What is the optimization scheme of numpy.einsum ? Does it optimize the memory consumption or the CPU or anything else ? I don't see this discussed anywhere. Maybe it's related to the different ‘...
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1answer
97 views

Ignore dimension when using np.einsum

I use np.einsum to calculate the flow of material in a graph (1 node to 4 nodes in this example). The amount of flow is given by amount (amount.shape == (1, 1, 2) the dimensions define certain ...
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What are the meanings of subscripts passed to numpy.einsum()?

I am trying to understand a python code, which uses numpy.einsum() to convert a 4-dimensional numpy array, A, to 2- or 3-dimensional arrays. The subscripts passed to numpy.einsum() are as follows: ...
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numpy.einsum error: too many subscripts for operand

I am trying to use einsum to perform tensor multiplication. I am working in MATLAB, but am using the python interface to call numpy.einsum as described in this Q&A. Below is the code I'm using to ...
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1answer
233 views

Element-wise matrix multiplication for multi-dimensional array

I want to realize component-wise matrix multiplication in MATLAB, which can be done using numpy.einsum in Python as below: import numpy as np M = 2 N = 4 I = 2000 J = 300 A = np.random.randn(M, M, I)...
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Understanding PyTorch einsum

I'm familiar with how einsum works in NumPy. A similar functionality is also offered by PyTorch: torch.einsum(). What are the similarities and differences, either in terms of functionality or ...
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How can I speed up the performance by using numpy einsum and numexpr in calculating kernel functions?

I am trying to define a few of famous kernels like RBF, hyperbolic tangent, Fourier and etc for svm.SVR method in sklearn library. I started working on rbf (I know there's a default kernel in svm for ...
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130 views

Fastest way to determine if two points are closest to one another

My problems consists of the following: I am given two pairs angles (in spherical coordinates) which consists of two parts--an azimuth and a colatitude angle. If we extend both angles (thereby ...
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121 views

Ultimate flexibility with einsum ellipses

I have a question about einsum ellipsis that I thought would be somewhere on StackExchange for sure, but somehow I can't seem to find. Essentially I have some code which does lots of matrix and ...
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307 views

Using numpy einsum to perform high dimensional subtraction broadcasting

I'm having troubles in using a broadcasting subtraction. My problem is the following. I have an array x of shape [L,N], where L is an integer and N is the number of variables of my problem. I need to ...
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181 views

What's the old version of matmul() in Numpy for matrix multiplication?

I need to use an older version of NumPy which doesn't have matmul() in it. What's the original way to multiply matrices in NumPy? I know * is elementwise multiplication and that .dot() is different in ...
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2answers
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reshape batch matrices (3d array, each matrix is an image) to 2d (a grid of images)

Let's say we have a 3d array A.shape = (100, 5, 5), each small matrix (5,5) is an image, now I want to reshape this 3d array into a square grid of images B.shape=(50,50), so that the images are laid ...
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Vectorizing multidimensional matrix products with numpy (einsum)

I would like to perform a series of rotations with mxm arrays on a series nxm matrices in a vectorized fashion (1000xmxm dot 1000xnxm --> 1000xnxm). This question seems to have the answer if my nxm ...