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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Python: Sum of all permutations of outer products of numpy arrays of arrays

I have a numpy array of arrays Ai and I want each outer product (np.outer(Ai[i],Ai[j])) to be summed with a scaling multiplier to produce H. I can step through and make them then tensordot them with ...
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Numpy einsum outer sum of 2d-arrays

I tried searching for an answer, but couldn't find what I needed. Apologies if this is a duplicate question. Suppose I have a 2d-array with shape (n, n*m). What I want to do is an outer sum of this ...
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Optimizing tensor multiplications

I've got a real-time image processing program I'm trying to optimize, and it all boils down to matrix multiplications. Consider 3 tensors I'm calculating in the initialization stage: A = np.arange(35 ...
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np.einsum performance of 4 matrix multiplications

Given the following 3 matrices: M = np.arange(35 * 37 * 59).reshape([35, 37, 59]) A = np.arange(35 * 51 * 59).reshape([35, 51, 59]) B = np.arange(37 * 51 * 51 * 59).reshape([37, 51, 51, 59]) C = np....
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2answers
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Compute sum of pairwise sums of two array's columns

I am looking for a way to avoid the nested loops in the following snippet, where A and B are two-dimensional arrays, each of shape (m, n) with m, n beeing arbitray positive integers: import numpy as ...
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Tensorflow: speed up multi-dimensional linear algebra

My code uses the following two functions rather intensively, so I would like to improve their efficiency if possible. def batch_inner_broadcast(density, core, opt_einsum=False): '''compute M_k=...
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2answers
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Numpy - Find 3-d distance to a testpoint for all gridpoints on 3-d grid

I tried np.hypot() and np.linalg.norm() but both of them have some issues (at least how I am using thm). I am pretty sure np.hypot can only calculate 2-d distance. If I have a test point P (1,1,1) ...
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Computation of variable interaction (dot product of vectors in a matrix)

If I multiply a vector x (1,n) with itself tansposed, i.e. np.dot(x.T, x) I will get a matrix in quadratic form. If I have a matrix Xmat (k, n), how can I efficiently compute rowwise dot product and ...
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60 views

Evaluating einstein summation using numexpr

I am currently working with large numpy array multiplications, using numpy.einsum, and have been facing MemoryError issue. That is why I'm trying to evaluate expressions, wherever possible, with ...
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48 views

Dot product B^t.D.B doesn't return a symmetric array

I'm trying to make a dot product of an expression and it was supposed to be symmetric. It turns out that it just isn't. B is a 4D array which I must transpose its last two dimensions to become B^t. ...
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109 views

numpy.einsum sometimes ignores dtype argument

Suppose I have two arrays of type int8. I want to use einsum on them in such a way that all the calculations will be done as int64, but I don't want to convert the whole arrays to int64. If I ...
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1answer
66 views

Python `expm` of an `(N,M,M)` matrix

Let A be an (N,M,M) matrix (with N very large) and I would like to compute scipy.linalg.expm(A[n,:,:]) for each n in range(N). I can of course just use a for loop but I was wondering if there was some ...
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Performance of double np.einsum and how to speed up

Consider this MWE: import numpy as np a = np.random.uniform(0,1,size=[14,25,25]) b = np.random.uniform(0,1,size=[14,25,25]) c = np.random.uniform(0,1,size=[14,25]) def my_func(a,b,c): InnerSum = ...
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Numpy Einsum Path Differences and the Optimize Argument

I have the following tensor execution, np.einsum('k,pjqk,yzjqk,yzk,ipqt->it', A, B, C, D, E) And I noticed that when 'z' or 'q' expanded in dimension the execution time really suffered, although ...
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Are there any known differences between einsum in python2 vs. python3?

Are there any known differences between einsum in Python2 and Python3? https://github.com/tscohen/GrouPy I was trying to run the code for Tensorflow here, and get a mismatch File "/home/----/.conda/...
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1answer
121 views

Einsum optimize fails for basic operation

With the recent update to Numpy (1.14), I found that it breaks my entire codebase. This is based on changing the default numpy einsum optimize argument from False to True. As a result, the following ...
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1answer
70 views

elementwise outer product of tensors using einsum

I have the following two arrays: foo = np.array([1,2,3,4,5,6,7,8,9]) and bar = np.array([k1, k2, k3]) where k1 = np.array([[1],[2]]) k2 = np.array([[4],[6]]) k3 = np.array([[9],[3]]) I want to ...
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94 views

How does einsum interact with numpy broadcasting?

Consider ndarrays x0=np.ones((3,3)) and y0, which has y0.shape either (3,3) or (1,3). I want a single einsum command that computes the dot products of the rows of these two arrays; in the case that y0....
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1answer
127 views

Python Pandas SUMPRODUCT and L Matrix caluclation

i have to columns in a pandas dataframe format and want the output in the C D column as below A B C D 1 2 1*2 1*2 3 4 (1+3)*4 (1*2)+(3*4) 5 6 (1+3+5)*...
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2answers
80 views

Using numpy einsum to compute inner product of column-vectors of a matrix

Suppose I have a numpy matrix like this: [[ 1 2 3] [ 10 100 1000]] I would like to compute the inner product of each column with itself, so the result would be: [1*1 + 10*10 2*2 + 100*...
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1answer
78 views

Vectorising numpy.einsum

I have following four tensors H (h, r) A (a, r) D (d, r) T (a, t, r) For each i in a, there is a corresponding T[i] of the shape (t, r). I need to do a np.einsum to produce the following result (...
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1answer
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What causes different results by interchanging the tensors in an Eigen::Tensor contraction?

I am working on a C++ library that relies on tensor contractions. I won't post the full application here, but I've distilled it down to the following. We define a toy rank-4 tensor, which is nothing ...
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214 views

Additional information on numpy.einsum()

I am trying to understand numpy.einsum() function but the documentation as well as this answer from stackoverflow still leave me with some questions. Let's take the einstein sum and the matrices ...
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154 views

Sum of dot products

How to transform 100 of 8 element vectors into 10 16 element vectors using 1000 different (8,16) weight matrices? Each of the 10 output vectors is a sum of 100 dot products: A = np.random.randn(100,8)...
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1answer
120 views

Using more than 26 indices in tf.einsum?

Is it possible to use more than 26 lower case letters as indices in tf.einsum? Numpy allows for also using upper case letters i.e. np.einsum('zA,AB->zB',M1,M2) whereas tf.einsum returns an error. ...
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1answer
206 views

Numpy einsum behaving badly. What to look out for?

What is typically failing when numpy einsum throws the error: Traceback (most recent call last): File "rmse_iter.py", line 30, in <module> rmse_out = np.sqrt(np.einsum('ij,ij->i',diffs,...
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2answers
42 views

Multiplying elementwise over final axis of two arrays

Given a 3d array and a 2d array, a = np.arange(10*4*3).reshape((10,4,3)) b = np.arange(30).reshape((10,3)) How can I run elementwise-multiplication across the final axis of each, resulting in c ...
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3answers
237 views

numpy dot product of sub array?

I have two ndarray like n1 = np.array([1,2,3,4]) n2 = np.array([1,2,3,4]) While dot product of them can done easily with np.dot(n1, n2), which gives 30 as the right answer. What if I need the dot to ...
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1answer
247 views

Speed difference in np.einsum

I noticed that np.einsum is faster when it reduces one dimension import numpy as np a = np.random.random((100,100,100)) b = np.random.random((100,100,100)) %timeit np.einsum('ijk,ijk->ijk',a,b) # ...
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313 views

Pure NumPy 2D mean convolution derivative of input image

I have b 2d m x n greyscale images that I'm convolving with a p x q filter and then doing mean-pooling on. With pure numpy, I'd like to compute the derivative of the input image and the filter, but I'...
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1answer
383 views

Batch convolution 2d in numpy without scipy?

I have a batch of b m x n images stored in an array x, and a convolutional filter f of size p x q that I'd like to apply to each image (then use sum pooling and store in an array y) in the batch, i.e. ...
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1answer
238 views

numpy dot product for tensors (3d times 2d)

Currently I use Na = (3, 2, 4) Nb = Na[1:] A = np.arange(np.prod(Na)).reshape(Na) b = np.arange(np.prod(Nb)).reshape(Nb) I want to calculate: r = np.empty((A.shape[0], A.shape[2]) for i in range(A....
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1answer
132 views

How to vectorize/tensorize operations in numpy with irregular array shapes

I would like to perform the operation If had a regular shape, then I could use np.einsum, I believe the syntax would be np.einsum('ijp,ipk->ijk',X, alpha) Unfortunately, my data X has a non ...
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1answer
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Vectorized arange using np.einsum for raycast

I have a D dimensional point and vector, p and v, respectively, a positive number n, and a resolution. I want to get all points after successively adding vector v*resolution to point p n/resolution ...
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2answers
77 views

Generating np.einsum evaluation graph

I was planning to teach np.einsum to colleagues, by hoping to show how it would be reduced to multiplications and summations. So, instead of numerical data, I thought to use alphabet chars. in the ...
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Why does `numpy.einsum` work faster with `float32` than `float16` or `uint16`? [duplicate]

In my benchmark using numpy 1.12.0, calculating dot products with float32 ndarrays is much faster than the other data types: In [3]: f16 = np.random.random((500000, 128)).astype('float16') In [4]: ...
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2answers
121 views

Fast way to set diagonals of an (M x N x N) matrix? Einsum / n-dimensional fill_diagonal?

I'm trying to write fast, optimized code based on matrices, and have recently discovered einsum as a tool for achieving significant speed-up. Is it possible to use this to set the diagonals of a ...
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numpy.einsum 'ij,kl->ik' how to do this by numpy.tensordot

I have two matrix , 5x4 and 3x2. I want to get a 5x3 matrix from them. >>>theta_ic = np.random.randint(5,size=(5,4)) >>>psi_tr = np.random.randint(5,size=(3,2)) I can do this by ...
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1answer
147 views

Replace sequential product and sum with a faster matrix operation in 3D

In my current theano script the bottleneck is the following code: import numpy as np axis = 0 prob = np.random.random( ( 1, 1000, 50 ) ) cases = np.random.random( ( 1000, 1000, 50 ) ) start = time....
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tensorflow einsum vs. matmul vs. tensordot

In tensorflow, the functions tf.einsum, tf.matmul, and tf.tensordot can all be used for the same tasks. (I realize that tf.einsum and tf.tensordot have more general definitions; I also realize that tf....
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108 views

4d Array Processing (using einsum?)

I have a matrix-based problem which I think could be solved (computationally cheaply) in a single line of code using numpy (perhaps einsum?), but can't get to the solution. I wonder if anyone can ...
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48 views

How do I do an einsum that mimics 'keepdims'?

a python question: I've got a np.einsum operation that I'm doing on a pair of 3d arrays: return np.einsum('ijk, ijk -> ik', input_array, self._beta_array) Problem I'm having is the result is 2d; ...
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1answer
63 views

How to go from np.tensordot to np.einsum

What I have in the code I was given is something like: C = np.tensordot(B, A, axes = (0,0)) A is a (20L, 50L) and B is (20L, 20L) I was supposed to change since someone told me it would be faster ...
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1answer
89 views

numpy: get rid of for loop by broadcasting

I am trying to implement the Expectation Maximization Algorithm for Gaussian Mixture Model in python. I have following line to compute the gaussian probability p of my data X given the mean mu and ...
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1answer
713 views

Efficient tensor contraction in python

I have a list L of tensors (ndarray objects), with several indices each. I need to contract these indices according to a graph of connections. The connections are encoded in a list of tuples in the ...
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214 views

What is the efficient way of multiplying chain of tensors in tensorflow

I have 3 sparse tensors of dimensions A = P*N, B = Q*N and C = R*N. What is the efficient way to compute the product matrix A*B*C such that dimension of the product matrix is P*Q*R in tensorflow.? I ...
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142 views

how to use batch_tensordot in theano like numpy.einsum

I have a tensor3 with shape (3, 4, 5) and another tensor4 with shape (3, 4, 7, 5). In numpy, result = np.einsum("ijk, ijmk->ijm", tensor3, tensor4) print result.shape (3, 4, 7) but in theano ,...
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270 views

Tensor multiplication in tensorflow (with indetermined number of axes)

I have a tensor a with an unknown number of axes (but at least one) and a square matrix M such that a.get_shape()[0] == M.get_shape()[0]==M.get_shape()[1]. What I would like to do is R = tf.einsum("...
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1answer
96 views

Mean tensor product

I have another question which is related to my last problem( Python tensor product). There I found a mistake in my calculation. With np.tensordot I am calculating the following equation: <..> ...
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1answer
240 views

Python tensor product

I have the following problem. For performance reasons I use numpy.tensordot and have thus my values stored in tensors and vectors. One of my calculations look like this: <w_j> is the ...