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.

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33 views

Numpy index into columns independently [duplicate]

Let's say I have an array like arr = np.arange(27).reshape(9,3) And I have a list of indices like so: idx = np.array([[0, 0, 0], [1, 0, 0], [1, 7, 1], ...
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How to index numpy array using ndenumerate?

The following is part of some code. import numpy as np nnet.temp = np.zeros(nnet.max_layer_size, dtype=np.float64) ##some code nnet.temp[i] = temp_val for index, x in np.ndenumerate(nnet.temp): ...
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what is the problem with my code linreg.predict() not giving out right answer?

SO The question given to me was Write a function that fits a polynomial LinearRegression model on the training data X_train for degrees 1, 3, 6, and 9. (Use PolynomialFeatures in sklearn....
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how to check if any two values of same or different numpy arrays are almost equal (with some different)?

I have set of different results. And, the results have following numpy arrays and each array actually contains 50 numbers, but here showing them as 5 numbers: Result_1: Array_1: array(159.60, 230, 0....
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34 views

Most efficient way to calculate numpy data with two independent variables

I'm fairly new to python/numpy and I'm calculating airflow based on a few different conditions. I have array x (consisting of 100 elements) and array y (consisting of 2 elements...but eventually will ...
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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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broadcasting only with specific dimensions of ndarray in python

Consider an TxFxM ndarray. I wish to multiply it with its conjugate, only for the M dimension while keeping the other dimensions the same as presented in the following code: import numpy as np T=2 ...
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Multiply each row of a matrix with it's conjugate transposed numpy

I have a numpy.ndarray variable A of size MxN. I wish to take each row and multiply with it's conjugate transposed. For the first row we will get: np.matmul(np.expand_dims(A[0,:],axis=1),np....
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Get all component stats of multiple arrays labeled by one of them

I already asked a similar question which got answered but now this is more in detail: I need a really fast way to get all important component stats of two arrays, where one array is labeled by ...
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Python: Fastest way to get all masks for an array

Is there a faster way than looping through all components of a 2d array to get all possible masks in a specific range like: import numpy as np numOfLabels = 80 array2D = np.random.choice(255,(512,512)...
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How to simplify numpy conditional statements to find neighbouring indices of elements given a value?

How to simplify conditional statement in numpy array to find neighbouring indices of all list elements V given search list bins. For example, if bins is a list of 100 elements ranging from 1.1 to 100....
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The faster way to do matrix multiplication between a matrix and a diagonal matrix?

I am coding a computational package in python using numpy, in the package, I would do the matrix multiplication between an arbitrary large square matrix (e.g of size 100*100) and a diagonal matrix of ...
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77 views

How to initialize Numpy array of list objects

I'm trying to create a numpy array that looks like array([[list([]), list([])], [list([]), list([])], [list([]), list([])]], dtype=object) This array has shape (3,2). However, whenever ...
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speeding up numpy code involving array slicing and broadcasting

I have the following code: x = sp.linspace(-2,2,1000) z = sp.linspace(-1,3,2000) X,Z = sp.meshgrid(x,z) X = X[:,:,sp.meshgrid] Z = Z[:,:,sp.meshgrid] E = sp.zeros((len(z),len(x),3), dtype=complex) #...
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Broadcasting outside main loop speeds up vectorized numpy ops?

I'm doing some vectorized algebra using numpy and the wall-clock performance of my algorithm seems weird. The program does roughly as follows: Create three matrices: Y (KxD), X (NxD), T (KxN) For ...
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Writing columns into a NumPy array

I have initialized a numpy array with zeros for memory management, and I am trying to write data into each column within the loop. I come from a Matlab background, so my code goes something like: ...
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61 views

Kronecker product of matrix array

I have two matrix arrays A and B such with identical shape: A.shape = B.shape = (M,N,P) I would like to compute the Kronecker product along the axis 0, so that: KP[ii,:,:] = A[ii,:,:]⊗B[ii,:,:] Is ...
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I dont understand why i get this error in my code. ValueError: operands could not be broadcast together with shapes (24,) (26,)

I keep getting this error im not entirely sure what it means. i just started coding about 2 weeks ago. All i want to do is change my velocity graph into an acceleration graph. i've tried changing the ...
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How to raise a matrix to the power of elements in an array that is increasing in an ascending order?

Currently I have a C matrix generated by: def c_matrix(n): exp = np.exp(1j*np.pi/n) exp_n = np.array([[exp, 0], [0, exp.conj()]], dtype=complex) c_matrix = np.array([exp_n**i for i in ...
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Is it possible to do linalg.multi_dot for an ndarray along an axis?

First of all, I have a group of 12 (2x2) matrices. II = np.identity(2, dtype=complex) X = np.array([[0, 1], [1, 0]], dtype=complex) Y = np.array([[0, -1j], [1j, 0]], dtype=complex) Z = np.array([[1, ...
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How does broadcasting work for multiplication between an array of numbers and a block matrix?

I have an array of n floats say [a, b, ..., z] and a block matrix [II, X, Y, Z] where II, X, Y, and Z are all 2x2 matrices. II = np.identity(2, dtype=complex) X = np.array([[0, 1], [1, 0]], dtype=...
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How to convert 1d array to 3d array (convert grayscale image so rgb format )?

I have an image in the numpy array format, I wrote the code assuming rgb image as input but I have found that the input consists of black and white image. for what should have been a RGB i.e (256,256,...
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How to modify np array by slicing through the broadcast of an index vector?

I have this m x n numpy array which I want to apply certain operation over the row elements. Although, it must be cast only on those elements whose index is prior to those specified by the entries on ...
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How to do numpy matmul broadcasting between two numpy tensors?

I have the Pauli matrices which are (2x2) and complex II = np.identity(2, dtype=complex) X = np.array([[0, 1], [1, 0]], dtype=complex) Y = np.array([[0, -1j], [1j, 0]], dtype=complex) Z = np.array([[...
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How to reshape Numpy array after applying n.where?

I have output and imarray, both have the same shapes. In the following code, I want to color the specific pixels to colors[0]: colors = [[0,0,255],[0,255,0]] output[np.where((imarray >= values[0])&...
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How can I vectorize this loop in numpy?

I am trying to vectorize this expression : np.vstack([np.dot(arr3d[k], arr2d.T[k]) for k in range(arr3d.shape[0])]). It's an extension of matrix.vector to cube.(matrix of vectors) Can I replace ...
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37 views

How to get numpy to broadcast an operation after a reduction operation

I am trying to normalize some data for the last dimensions. #sample data x = numpy.random.random((3, 1, 4, 16, 16)) x[1] = x[1]*2 x[2] = x[2]*4 I can get the mean, m = x.mean((-3, -2, -1)) Now, x....
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Calculating numpy array according to another numpy array values

I need to calculate array Z having array D (only using indexing, slicing and broadcasting, NO LOOPS): D = [0, 0, 0, 0, 12, 36, 24, 24, 0, 0, 0, 0, 0, 0, 0, 12, 0, 0, 0, 36] Z = [nan, nan, nan, nan, ...
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How to incorporate np.argmax into broadcasting to replace the given for-loop code (if possible)

I have been playing around with Numpy to speed-up code where I can. It really is beautifully fast. However, it does require some clever thinking at times. I suppose practice will make perfect. ...
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Advanced broadcasting in TensorFlow (or Numpy)

In TensorFlow I have a rank-2 tensor M (a matrix) of shape [D, D] and a rank-3 tensor T of shape [D, D, D]. I need to combine them to form a new matrix R as follows: the element R[a, b+c-a] is given ...
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248 views

How to fix “ operands broadcasting error”

I wanted to find gradient of function wrt variable T. I am getting error operand broadcasting. Why I am getting this error and how to fix it? l takes value from 0 to 4. def grad(l,d1,d2): ...
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36 views

How to mask an image gray scale using numpy array slicing

I need to replace 8 bits values (0 to 255) indexed set of an image (final image), following a "map values" from another image (second image) gray scale which related map indexes was chosen from a ...
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26 views

select fixed range elements from multiple index positions in numpy arrays [duplicate]

consider a 1D np.array below a = np.array([20, 70, 68, 36, 86, 12, 89, 32, 3, 52, 94, 6, 26, 95, 16, 82, 42,60, 5, 94]) i want to select fixed length sub-arrays from the above universe starting ...
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Numpy broadcasting inequality operator

Numpy broadcasting question. I have two arrays similar to these: >my_array = np.array([[3,1,2,0] , [4,5,2,1]]) >my_array array([[3, 1, 2, 0], [4, 5, 2, 1]]) >second_array = np.array(...
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How to get broadcasted shape from input shapes?

I would like to get the shape of broadcast array from multiple input arrays. For example, I have several arrays of different but compatible shapes, I would like to know the shape of the sum of the ...
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How to gain speed in distance measurement for chi2_contingency by eliminating loop

I have an extremely slow loop I could use some help with. I have a pandas DataFrame of rows of which I need the chi-squared distance between every row. I cast it so that it is column wise and that got ...
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121 views

How to let stats.multivariate_normal.rvs return an array instead of scalar?

How to let stats.multivariate_normal.rvs return an array instead of scalar? I wan to keep the code structure of slicing [k] position of the returned value, so it would be great if it returns an one ...
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NumPy Slicing with Multiple Tuples

Consider the following: import numpy as np arr = np.arange(3 * 4 * 5).reshape((3, 4, 5)) If I slice arr using slices, I get, e.g.: arr[:, 0:2, :].shape # (3, 2, 5) If now I slice arr using a ...
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How to force a function to broadcast without invoking `np.vectorize`

I want to look for a way to force a function to broadcast. There are scenarios in which the function/method may be overwritten in a later instance, to constant function. In such case if arr = np....
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Need efficient method to broadcast a smaller Numpy array into a larger one

TL;DR: I'm looking for a way to shorten the following code without using loops # x = [m, n] Numpy array # y = [m, t*n] Numpy array of zeros (placeholder) for i in range(m): for j in range(n): ...
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Numpy array striping strings via broadcasting

I have the following code import numpy s = numpy.array([['210123278414410005', '101232784144610006']], dtype='object') print(s, type(s), s.shape) s[0][0] = s[0][0][13:] s[0][1] = s[0][1][13:] ...
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applying an elementwise rule while performing a numpy broadcasting operation

I want to multiply two numeric numpy objects t and speed without knowing a-priori whether each one is scalar or an array. The problem is that 0 is a legal value for t (or for elements of t), and inf ...
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How do I optimise this numpy array operation?

This numpy operation gives a memory error. (Here X and Y are 2D arrays with shape (5000, 3072) and (500, 3072)) dists[:,:] = np.sqrt(np.sum(np.square(np.subtract(X, Y[:,np.newaxis])), axis=2)) I ...
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List does not have attribute reshape

In the code given below I am getting an error on the last line that list has attribute of reshape cal should be a numpy array but cal.reshape is giving the error . Also while printing cal I am ...
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How to efficiently compare each pair of rows in a 2D matrix?

I am working on a subroutine where I need to process each row of a matrix and find which other rows are contained in the current row. For illustration of when a row contains another, consider a 3x3 ...
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How to calculate the sums of squares along one dimension of on ndarray?

One miltidimensional matrix with shape (2, 50, 25, 3): xx = np.random.randn(2, 50, 25, 3) I want to calculate the sum of squares of the last dimension. The result should be a matrix with a shape (2, ...
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64 views

Vectorized calculation of scaled/rotated pairwise squared euclidean distance

Given a set of n vectors of dimension d stored in a (n,d) array and a second set of m vectors of the same dimension (stored in (m,d) array) I want to calculate the squared point wise distance between ...
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Numpy outer equality comparison with more than one element [duplicate]

I have two numpy arrays with which I'm doing an outer equality comparison m = np.random.randint(4,size=(4,4,4)) ar = np.array([1,2,3]) x = np.equal.outer(ar,m) This works well if I'm interested in ...
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216 views

Python: Numpy Multiply each row of a array with each rows of another array

I know there has been some questions about this and it should be possible with broadcasting. But somehow I dont really get how broadcasting works with adding ann additional axis. There is a similar ...
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16 views

least square on np.array rais broadcast error

I am kind of a beginner with Python and I am stuck with trying to use optimize.curve_fit on a set of given data. this is the linear function I want to use Y=b*X+c X_data is a 5x10 matrix Y_data is ...