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Questions tagged [array-broadcasting]

Broadcasting (or singleton expansion) applies a function element-wise across one or more multidimensional arrays, matching shapes of the arguments by repeating missing or singleton dimensions. Be sure to also tag the programming language; many languages with strong array support have implicit or explicit broadcasting behaviors, sometimes with idiosyncratic rules.

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Will the NumPy broadcast array ever be created during a binary operation?

I have two numpy.ndarray instances with different shapes. If I add these two arrays, broadcasting will occur between them: import numpy as np x = np.array([1, 2, 3]) y = np.array([[2, 3, 5], ...
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How can I vectorize this linalg.lstq() operation?

I am trying to implement a multi-frequency phase unwrapping algorithm using Python3 and NumPy. I have 7 single channel (gray scale) images of shape (1080, 1920). After stacking them along the third ...
Arun's user avatar
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Awkward Array broadcasting and linear indexing, reshaping an Awkward Array

I'm trying to use numpy-like syntax on an awkward.Array with variable sizes in the second dimension, but it's still confusing.. In numpy i have normals.shape # (N,3) idcs.shape # (m,k) normals[idcs]...
Nico's user avatar
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Why does this error when converting a python list of lists to a Numpy array only occur in specific circumstances?

I have a somewhat peculiar structure of python list of lists that I need to convert to a numpy array, so far I have managed to simply get by using np.array(myarray, dtype = object), however a ...
Arran's user avatar
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Numpy slicing gives unexpected result

Does anybody have an explanation for the unexpected numpy slicing results dislplayed below ? Unexpected behavior demo import torch import numpy as np some_array = np.zeros((1, 3, 42)) chooser_mask = ...
n0tis's user avatar
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Faster numpy calculations than reshaping with einsum

Consider the following in Python: A has dimension (T,), U has dimension (L,T) and G has dimension (K,T), Y is (L,L,T). My code outputs a numer1 and numer2 with dimensions (T, LK, 1), . Consider that ...
user9875321__'s user avatar
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Most efficient way to index a numpy array by the indices of another numpy array

I have a numpy array A with shape (a, b, c), and another integer array L with shape (a, b). I want to make an array B such that B[i, j, k] = A[L[i, j],j, k] (assume shapes and values of L permit this)....
Danny Duberstein's user avatar
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How to add each row of a matrix to the selected rows of another matrix?

I want to achieve the following result fast for i in range(n): C[index[i]] += A[i] where C is an d * m matrix, index is an array containing n integers ranging in [0, d), and A is an n * m matrix. ...
Chenming Zhang's user avatar
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ValueError: operands could not be broadcast together with shapes (0,) (5,4385)

I am working on PSO optimised LSTM for prediction of wind speed. I think i have built the code correctly but i am getting this error in PSO optimisation. The issue seems to be in the fitness function, ...
Tilak Gupta's user avatar
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ValueError: could not broadcast input array from shape (10,3) into shape (3,)

I am trying to make a N-body simulator that takes initial position and velocity and with output of position respect to time. I used create a function that produce the differential equation of velocity ...
DL_921221's user avatar
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Numpy Broadcasting - Need complete understanding

I am trying to understand Numpy Broadcasting. So I want to understand why is the below code working? a = np.arange(4).reshape(2,2) b = np.arange(6).reshape(3,2) a = a[:, np.newaxis] a + b I mean if ...
user3851878's user avatar
2 votes
3 answers
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Propagating true entries along axis in an array

I have to perform the operation below many times. Using numpy functions instead of loops I usually get a very good performance but I have not been able to replicate this for higher dimensional arrays. ...
Delosari's user avatar
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Getting distances of points in 2D space in an array in Fortran using the concept of broadcasting (Python)

I'm new to Fortran and I already have a hard time understanding the concept of broadcasting of arrays in Python, so it is even more difficult for me to implement it in Fortran Fortran code: program ...
Jakob Primosch's user avatar
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Efficient shift and roll in numpy without pd.Series

Consider the code below which gives the wanted output: import numpy as np import pandas as pd sumvalues = 2 touchdown = 3 arr = np.array([1, 2, 3, 4, 5, 6, 7]) series = pd.Series(arr) shifted = pd....
spline regressor's user avatar
1 vote
1 answer
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broadcasting tensor matmul over batches

how can i find dot product of each batch response and X data. y_yhat_allBatches_matmulX_allBatches = torch.matmul(yTrue_yHat_allBatches_tensorSub, interceptXY_data_allBatches[:, :, :-1]) expected ...
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Leverage broadcasting to make this subtraction more efficient

I have an array x of shape (N, T, d). I have two functions f and g which both take an array of shape (some_dimension, d) and return an array of shape (some_dimension, ). I would like to compute f on ...
Euler_Salter's user avatar
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Finding whether each element in matrix is reciprocal of it's transpose in 3d tensor

I have a numpy matrix of shape m * n * n, meaning I have m n*n square matrices. For each matrix, I must have elements present in such a way so that the transpose indexes are reciprocal of each other. ...
EESHAN ANAND's user avatar
2 votes
1 answer
108 views

Broadcasting with concatenate operator

numpy.broadcasting allows to perform basic operations (additions, multiplication, etc.) with arrays of different shapes (under certain conditions on these shapes). For example: >>> a = np....
Guillaume Mougeot's user avatar
1 vote
1 answer
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Nested indexing in NumPy einsum?

I'm trying to write the following expression using the einsum function in NumPy: for j in range(100): p[j] = 0 for i in range(100): if i!=j: p[j] += S[i,j]*B[T[i,j], i] p....
FatPanda01's user avatar
2 votes
2 answers
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Recursive matrix construction with numpy array issues (broadcasting?)

The following is a seemingly simple recursion for finding a hybercube matrix. The recursion is defined as: (Formula) I tried to put it into code but I keep running into broadcasting issues with numpy. ...
mo-alowais's user avatar
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1 answer
94 views

Is there a dilated k-nearest neighbour solution available fast execution?

I am implementing the dilated k-nearest neighbors algorithm. The algorithm unfortunately has nested loops. The presence of loops severely hampers the execution speed. import torch dilation=3 nbd_size=...
Aleph's user avatar
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How do I compare 2-d tensor with 1-d tensor in Pytorch?

Example of what I want to compare these two: torch.tensor([[1,2],[1,2],[1,3]]) == torch.tensor([1,2]) I want this output: [True, True, False] But instead the broadcasting gets me: tensor([[ True, ...
JobHunter69's user avatar
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Pytorch broadcasting not working as expected

I am in the early stages of learning Pytorch for deep learning and have come across something I don't understand. I have written a very simple script to just make sure I fully understand the ...
Bruck's user avatar
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Numba vectorize a function if only one of its inputs could have different dimensions

Given an array of points with shape (2, n) the function returns the n interpolated values. The function should also work if points is a 1-d array (2,). I think numba vectorize could be used to solve ...
Max Frankenberg's user avatar
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1 answer
60 views

Fast orthogonal projection of vectors onto other vectors numpy

I have two large equal size 2D numpy arrays of cartesian vectors: A = [[ax1, ay1, az1], [a2], [a3], ...] where a1 = [ax1, ay1, az1] B = [[bx1, by1, bz1], [b2], [b3], ...] where b1 = [bx1, by1, bz1] I ...
Mark Huisjes's user avatar
1 vote
2 answers
54 views

Numpy argmin() to find the nearest tuple

I have an array of tuples, I need to find the tuple from that array that is the closes to a given tuple(element wise), that is by the absolute value difference between each element of these two tuples....
Josh's user avatar
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2 answers
68 views

NumPy row operations that depend on other rows/columns

Problem I am trying to avoid a for loop in NumPy (which is quite messy and obviously performance prohibiting). My challenge is that operations on each row depend on other rows. That is: I have a (very ...
Sterling Butters's user avatar
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How to change an array using advanced indexing and boolean array indexing without loops in numpy?

Problem: A is a multidimensional array of two dimensions (i,j) and B is a boolean array of the same shape that I want to define according to the values of A. I want to define B through two ...
Puco4's user avatar
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2 votes
3 answers
169 views

Fastest way to construct sparse block matrix in python

I want to construct a matrix of shape (N,2N) in Python. I can construct the matrix as follows import numpy as np N = 10 # 10,100,1000, whatever some_vector = np.random.uniform(size=N) some_matrix ...
user1887919's user avatar
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1 answer
172 views

Setting an array element with a sequence value error

Why do I get this error only for x_train? On commenting x_train out, no errors come. --------------------------------------------------------------------------- TypeError ...
Daksh's user avatar
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1 answer
29 views

Rewriting numpy function to handle 2d and 3d inputs

I am trying to rewrite an numpy function such that it can deal with 2d and 3d inputs. Consider the following code: import numpy as np def adstock_geometric(x: np.array, theta: np.array): x_decayed ...
richard baws's user avatar
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1 answer
84 views

Why is the KNN using pytorch broadcasting is so slow?

I'm trying to find knn for grid points. This is the code for generating the grid def grid_by(lims=[[0, 1], [0, 1]], size=[28, 28]): """ Creates a tensor of 2D grid points. ...
Hajin Lee's user avatar
1 vote
1 answer
72 views

How to compute the moving average over 3D array with a step size?

I need to calculate a moving average over a 3D array with a step size set by me. What I am doing right now is img = np.ones(10,10,50) img_new = bottleneck.move.move_mean(img, window=5, axis=2) ...
emely_pi's user avatar
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1 answer
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Using Numpy Broadcast to achieve array/Matrix subtraction without looping over the indices

I was trying to perform mean clustering on my dataset. The dataset X is of the dimension (182,108,130). The mean is calculated using np.mean(X, axis = 1). The mean is of dimension (182,130). Now I'd ...
HSCLHD's user avatar
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1 answer
101 views

Numpy array broadcasting vs explicit dimension expansion space inefficiency

Why is the explicit dimension expansion so space inefficient as compared to leveraging implicit numpy broadcasting, which technically does the same thing i.e. copies the matrix over on a given ...
A. Boa's user avatar
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0 answers
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Python Global Sensitivity Analysis using SALib for Stiff ODEs

I have used SALib previously to do GSA of system of ODEs. I am trying to use it again, but now my ODEs are stiff. Therefore, odeint() is failing and I am switching to solve_ivp(). Somehow I am ...
Kris L's user avatar
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0 votes
1 answer
66 views

Multiplying 2D matrices to get a 3D matrix

I have two matrices A and B of dimensions (n_m, n_u) and (n_m, n). I want a 3D matrix with dimensions (n, n_m, n_u) such that the first column of B is multiplied (element-wise) with every column of A ...
Shashwat Gupta's user avatar
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1 answer
37 views

How to use a mask to limit broadcasted operations between two numpy arrays?

I have an array like so: data = np.array([ [[10, 10, 10], [10, 10, 10], [10, 10, 10]], [[20, 20, 20], [20, 20, 20], [20, 20, 20]], [[30, 30, 30], [30, 30, 30], ...
Edy Bourne's user avatar
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How to replace a value by another value only in certain columns of a 3d Numpy array?

I have a 3d numpy array and a list of columns (axis = 1) in which I would like to replace all zeroes by a constant value: My sample data is like so: data = np.array([ [[10, 10, 10], [0, 10, 10], [...
Edy Bourne's user avatar
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5 votes
1 answer
85 views

Broadcasting when setting on a boolean slice of a DataFrame gives weird results

Consider the following code: import numpy as np import pandas as pd df = pd.DataFrame( {"AAA": [4, 5, 6, 7], "BBB": [10, 20, 30, 40], "CCC": [100, 50, -30, -50]} ) ...
P.Jo's user avatar
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1 vote
2 answers
71 views

For each element in a 1D numpy array, find the lowest index element from second array such that the value and index both are greater than the first

I have two 1D numpy arrays of length 1 million approx. For each element x in the first array, I want the lowest index element y from the second array such that y > x and arg(y) > arg(x) i.e. ...
kanhaai's user avatar
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3 votes
2 answers
184 views

Is there a numpy function similar to np.isin that allows for a tolerance instead of requiring that values be identical?

I have two arrays of different sizes and want to determine where elements of one array can be found in the other array. I would like to be able to allow for a tolerance between elements. The goal ...
celery's user avatar
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1 vote
1 answer
49 views

How to broadcast this array with Numpy?

In this Python 3.11 code snippet: import numpy as np state = np.arange(48, dtype='u1').reshape((2, 8, 3)) pixels = [3, 4, 5] colors = [[42, 43, 44], [0, 1, 2]] state[0, pixels] = colors[0] # line 1 ...
Paul Jurczak's user avatar
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Vectorizing taking longer than loop

My function that computes Lorentzian given freq, fwhm, amp. I want to vectorize it so that it does the computation for a list of freqs, fwhms and amps: def lorz1(freq_series, freq, fwhm, amp): ...
Prasad Mani's user avatar
-1 votes
2 answers
71 views

Generate counts along axis in numpy?

I am wondering if there is a numpy way to do the following with multiple axes: Desired Input: np.array([[1,2,3], [4,5,5]]) Desired Output: np.array([[0,1,1,1,0,0], [0,0,0,0,1,2]]) ...
Mason Wang's user avatar
3 votes
1 answer
237 views

Is there a standard method for broadcasting a 1d numpy array along the first axis of a higher-dimensional array?

My data often takes the form of a single numpy array made from a stack of N n-dimensional arrays of arbitrary shape (e.g. data.shape = (N, a, b, c, ...), where a, b, c, ... are unknown ahead of time),...
TomVincentUK's user avatar
1 vote
1 answer
61 views

Numba typing error when multiplying a single vector with an array of vectors using broadcasting

I'm having a problem applying numba to a set of functions I'm trying to optimise for performance. All the functions work fine without numba but I get a compilation error when I try to use numba. Here'...
jpmorr's user avatar
  • 624
0 votes
2 answers
52 views

How to create a 3-d array from 1-d array?

Let's say I have a 1d array a = np.array([1, 2, 3]) What's the best way to get the array b with shape (3, 4, 5) from a? Every value of the array a is used to initialize a 4x5 array and stacking all ...
J. Daay's user avatar
  • 93
0 votes
2 answers
33 views

Broadcasting a numpy array into an array of larger size using an index array

I have a very large 2D numpy array (A) and a smaller 2D array (B) that is smaller in both dimensions. B is square. I have an index array that is the same length as B. Like this: A = np.array([[0, 0, 0,...
E. V. Hadzen's user avatar
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1 answer
27 views

How do I sparsely add the rows of a numpy array to another numpy array?

I have a large 2D array (A) and a smaller 2D array of the same number of columns but fewer number of rows (B). I want to add the rows of my smaller array to rows of my larger array, but there are rows ...
E. V. Hadzen's user avatar

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