Questions tagged [numpy-broadcasting]
The term broadcasting describes how NumPy treats arrays with different shapes during arithmetic operations. Subject to certain constraints, the smaller array is “broadcast” across the larger array so that they have compatible shapes.
Is there a numpy broadcasting solution for creating a matrix that outputs the standard deviation between all columns in a DataFrame?
The following solution was very useful, but works only for the ...
I'm trying to broadcast a one-dimensional output to a three-dimensional array, using boolean indexing. I have an array I'd like to assign to:
output_array = np.zeros((2,4,3))
And then some sets of ...
I am trying to remove the loop from this matrix multiplication (and learn more about optimizing code in general), and I think I need some form of np.broadcasting or np.einsum, but after reading up on ...
There are 2 questions in the title. I am confused by both questions because tensorflow is such a static programming language (I really want to go back to either pytorch or chainer).
I give 2 examples....
I have quite a simple scenario where I'd like to test whether both elements of a two-dimensional array are (separately) members of a larger array - for example:
full_array = np.array(['A','B','C','D',...
I've been trying to figure something out in numpy and I'm hoping somebody with some experience with the package can help me out. I have a two-dimensional array of prices, and an accompanying array ...
I am trying to run some computations on DataFrames. I want to compute the average difference between two sets of rolling mean. To be more specific, the average of the difference between a long-term ...
I understand the basics of numpy (Pandas) broadcasting but got stuck on this simple example:
x = np.arange(5)
y = np.random.uniform(size = (2,5))
z = x*y
My understanding ...
Suppose I have the array [1,2,3,4,5].
I want to "add" the array [2,4,6,8] to it so I get
(or its transpose).
There is probably a ...
Is there a simple numpy method (numpy Version 1.11.3) that does the following without
list comprehension or loops ?
import numpy as np
a = np.array([[1,2],[3,4],[5,6]])
b = [0,0,1]
wanted_result = ...
I am trying to make an outer product of two vectors more efficient by removing zero elements, doing the outer product and then enlarging the resulting matrix with rows of zeros or inserting into a ...
I have a 200 x 200 array of vectors. Its shape is (200, 200, 3).
I also have an array of 22 vectors. Its shape is (22,3).
I want to subtract all 22 vectors in the second array from each vector in ...
I see a strange behavior with ufunc where clause for Numpy 1.15.3.
In : import numpy as np
In : x = np.array([[1,2],[3,4]])
In : y = np.ones(x.shape) * 2
In : print(x, "\n", y)
I want to subtract a column vector from a numpy matrix using another vector which is index of columns where the first column vector needs to be subtracted from the main matrix. For eg.
M = array([[ ...
I'm trying to apply an addition operator to an array where I want repeated indices to indicate repeated addition operations. From a Python Data Science Book (https://jakevdp.github.io/...
I am trying to make a very simple neural network to play 2048, but I keep getting errors when running the scipy optimizer. When running the network with the function
using weights of the ...
I have prediction stored in a numpy array with the following shape: [batch_size, time_steps, 3], I want to apply a smoothing function over each dimension in the vector's 3rd dimension. So I did the ...
I was doing some exercises in numpy, in particular for broadcasting, but I'm stuck..
Can someone please explain how assert should be used?
return np.zeros(n) -1
Given a 2D array and a 1D array in Numpy:
a = np.array([[1,2,3],[4,5,6]])
b = np.array([2,4,6])
I'd like to subtract a - b but instead of getting:
array([[-1, -2, -3],
[ 2, 1, 0]])
I am sorry that the title of my question may sound vague, since I do not know the exact name of such operation.
Given a tensor A (N×M×M) and a one-dimension array b (N), I would like to get another ...
I am attempting a multi-variate time series forecast using Principal Component Analysis and vector auto-regression.
My data is contained in a pandas dataframe with 4 variables of shape (14193, 4).
Consider the following setup:
import numpy as np
import itertools as it
A = np.random.rand(3,3,3,16,3,3,3,16) # sum elements of A to arrive at...
B = np.zeros((4,4)) # a 4x4 array (output)
I have ...
I've roughly got something like
A = np.random.random([n, 2])
B = np.random.random([3, 2])
ret = 0
for b in B:
for a in A:
start = np.max([a, b])
end = np.min([a, b]...
I would like stack together arrays that have different, but broadcast compatible arrays. Given 7x5, 7x1, 1x5 and 1x1 arrays I want to do something like
a475 = mkarr([a75, a71, a15, a11])
where a455 ...
I have a rgb semantic segmentation label, if there exists 3 classes in it, and each RGB value is one of:
[255, 255, 0],[0, 255, 255],[255, 255, 255]
respectively, then I want to map all values in ...
I am looking for a nice way to "clean up" the dimensions of two arrays which I would like to combine together using broadcasting.In particular I would like to broadcast a one dimensional array up to ...
If I have the following
import numpy as np
mid_img = np.array([[0, 0, 1],
[2, 0, 2],
[3, 1, 0]])
values = np.array([0, 1, 2, 3, 4])
I have the following line of code.
v = chemcepterize_mol(mol, embed=10, res=0.2)
The function chemcepterize_mol takes some arguments like mol, embed, res.
This function chemcepterize_mol return a ...
below attached the algorithm which i'm implementing. (which is a well known algorithm for competitive learning)
this is to cluster iris data using competitive learning(neural network).
i have written ...
I have a 2D array, say
x = np.random.rand(10, 3)
array([[ 0.51158246, 0.51214272, 0.1107923 ],
[ 0.5210391 , 0.85308284, 0.63227215],
[ 0.57239625, 0.06276943, 0.1069803 ],
So here's what I already have:
import numpy as np
import matplotlib.pyplot as plt
np.random.seed() #seed the random number generator
y = np.random.rand(n)...
I have an Nx2 matrix such as:
M = [[10, 1000],
I have this DataFrame like this:
1 2 1 3 1 4
2 4 5 1 1 4
1 3 5 3 1 4
1 3 1 3 1 4
Another like this
1 1 0 0 0 0
I want to multiply them such as that I get
1 2 0 0 0 0
I'm referring the following link
While using cvxpy module,problem exists when I'm implementing sparse signal recovery on image ...
I want to multiply an n-dim stack of m* m matrices by an n-dim stack of vectors (length m), so that the resulting m*n array contains the result of the dot product of the matrix and vector in the nth ...
I want to calculate the determinant of mm subarrays of a mm*n dimensional arrays, and would like to do this in a fast/more elegant way. The brute-force approach works:
import numpy as n
I'm trying to generate a kernel function for GP using only Matrix operations (no loops).
Vectors where no problem taking advantage of broadcasting
I'd like to copy smaller array A into bigger array B, like so:
The obvious way to do this is to calculate which part of A would fit into B and copy only this part to the also precalculated part of ...
For a 4D array A with dimensions of (60,64,2,2), need to calculate the dot product with its transpose A_t.
A_t is of dimension(2,2,64,60). Below is what I do.
A_t = np.transpose(A)
A_At = A_t.dot(A)...
I am trying to create a mandelbrot set by starting with a whole array of complex numbers and iterating on the appropriate values
# int array
int_array = np.array([i for i in range(10)])
I don't understand what's wrong. I'm getting the error:
p = np.concatenate((p,np.asarray(delta*vfunc(t=(p_x+1/2)*delta,k=k0))),axis=1)
numpy.core._internal.AxisError: axis 1 is out of bounds for ...
Here's what I want to achieve with numpy and have no idea how. To be clear, I'd like to do it as concisely as possible.
# shape (5, 2)
data = np.array([
Say I have two 2D arrays A and B with shape: (10, 10) and (3, 3) respectively.
I would like to know if there is a way to compute A - B such that the shape is: (10, 10, 9) without using a loop.
I am using numpy for calculations in Abaqus FEA. I have a stiffness tensor of dimensions (nodes,elements,time,6,6) and am looking to calculate the compliance tensor (inverse of the stiffness tensor) ...
I have a problem with Numpy broadcasting between two matrix. I need to compute the euclidean distance between 2 matrix for a knn classifier. I have already done it with two loop and one loop but it ...
out_frame = np.zeros((frame.shape,frame.shape,4),dtype = np.uint8)
b,g,r = cv2.split(frame)
alpha = np.zeros_like(b , dtype=np.uint8)
I am working on a new standard histogram class for Python (ideally to contribute to numpy, given the numerous severe drawbacks I experienced using the standard implementation when performing density ...
I have similar problem as defined below, how can I use vectorization instead of nested loops here?
the func is below
and arr1 and ar1 are ft1 and ft2 respectively.
I have two arrays like
a == array([[x0, y0], [x1, y1], ... ,[xn, yn]])
b == array([[u0, v0], [u1, v1], ... ,[un, vn]])
e.g. for (x0, y0) in a, I need to find its closest correspondent (e.g. based on ...
How to re-write this python loop using numpy broadcasting?
>>> tests.shape # booleans
>>> extracted = values[tests]