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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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Converting nested for loops into vectorised form for evaluting a function in using numpy

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. skimage.measure.compare_ssim(ft1, ...
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33 views

Numpy, for each element of one array, find its closest point in another array [duplicate]

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 ...
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40 views

numpy broadcasting boolean indexes

How to re-write this python loop using numpy broadcasting? >>> values.shape (50000,) >>> tests.shape # booleans (200, 50000) >>> extracted = values[tests] # FAILES >&...
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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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57 views

optimizing numpy vectorization on calculating distances and np.sum

I have the following code: # positions: np.ndarray of shape(N,d) # fitness: np.ndarray of shape(N,) # mass: np.ndarray of shape(N,) iteration = 1 while iteration <= maxiter: K = round((...
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34 views

Numpy: Find minimum of an expression over several parameters

Is there a numpy way to get the minimum of an expression over many parameters without explicit loops? #Randomly initialize samples SAMPLES_NUM = 200 L = np.random.rand(SAMPLES_NUM) q1 = np.random....
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69 views

Algorithm in Python equivalent to Q to manually generate identity matrix

I know about np.eye which generates identity matrix. This question is about the algorithm rather than about the final result. In Q (kdb+ language) I can generate identity matrix using the following ...
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44 views

Numpy/Keras: ValueError: could not broadcast input array from shape (7,5) into shape (7)

I am trying to convert some categorical features into one hot encodings for use in Keras. However, when I try to map these features, I end up receiving an error indicating the shapes are incompatible. ...
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37 views

python - broadcasting between arrays with the same 'outer' size

Numpy seems to have some (to me) unintuitive behaviour with broadcasting arrays. Let's say we have two arrays a = numpy.ones((2,2,3)) b = numpy.array([[1],[2]]) I would expect to be able to multiply ...
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Getting error code when subtracting arrays/matrices with numpy in python 3.7.0

I am writing a simple neural network to recognize and solve math problems. I get error code: ValueError: operands could not be broadcast together with shapes (1,4) (4,2) , when subtracting. Any ideas? ...
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masking a numpy 3D array by indexing OR make 3D new numpy array by using index

I have two lists r and L3. And, an array rv. I want to make a 3D numpy array called alpha. The size of array alpha is (len(L3[0]), len(r), len(rv)). #Referential Value rv = np.array([np.array([0.23, ...
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42 views

Is there a difference between adding a scalar to a vector inside a for loop and outside it, using numpy?

I was trying to take advantage of the Broadcasting property of Python while replacing the for loop of this snippet: import numpy as np B = np.random.randn(10,1) k = 25 for i in range(len(B)): B[i][...
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3answers
29 views

ValueError: Dimensions must be equal, but are 4096 and 9 for 'mul'. Why no broadcasting here?

I have a very simple example: import tensorflow as tf import pdb number_features = tf.random_uniform((4096,22)) probs = number_features probs_L = probs[:,:3] probs_S1 = probs[:,3:12] probs_S2 = ...
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1answer
24 views

Setting dataframe by using both iloc and a boolean mask (mask at multiple different index (row) values in the dataframe)

I want to change the values to Nan in a pandas dataframe based on the location of Nan values in a different pandas dataframe. I want to do this at multiple locations in the array. So it works if it is ...
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26 views

ValueError: operands could not be broadcast together with shapes (5197,) (5197,21)

So I'm trying to get the mean squared error for KNN missing data imputation by using the code below: # X is the complete data matrix # X_incomplete has the same values as X except a subset have been ...
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49 views

integral over a cone

Is there a fast way (standard or via some library) to compute integrals over cones in python? I.e. I have an array A containing some values and I want to compute and integral over an index cone ...
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23 views

Using 2d numpy mask np.where to address a 3d numpy array (pythonic??)

Say I have an image array: raster.shape => (3,100,100) I generate a mask of all the places where red is saturated: mask = np.where(raster[0,:,:] == 255) I want to modify the slice of those ...
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76 views

Python: Element-wise broadcasting for comparing two numpy arrays?

(I wasn't really sure what to call the title for this; better suggestions are appreciated!) Let's say I have an array like this: import numpy as np base_array = np.array([-13, -9, -11, -3, -3, -4, ...
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59 views

Numpy: Finding minimum and maximum values from associations through binning

Prerequisite This is a question derived from this post. So, some of the introduction of the problem will be similar to that post. Problem Let's say result is a 2D array and values is a 1D array. ...
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48 views

Numpy : Grouping/ binning values based on associations

Forgive me for a vague title. I honestly don't know which title will suit this question. If you have a better title, let's change it so that it will be apt for the problem at hand. The problem. Let'...
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40 views

Why can't I reshape numpy string arrays and ctype arrays?

Maybe there's a way around this that I'm missing. Long story short, I have a need for shared memory access, read only, of a large text file. Working with strings of course is necessary. So I'm trying ...
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1answer
32 views

Numpy broadcasting bitwise union upon no bitwise intersection

I am writing an algorithm that has a common scenario. I have two large arrays of integers. Call them k and j (because thats what I called them in my test code). I take each element of k, and I take ...
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25 views

Array index inside vectorization

Is there a way to utilize the array indices within a vectorized numpy equation? Specifically, I have this looping code that sets each value of a 2d array to the distance to some arbitrary center ...
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21 views

Get different result from broadcasting when changing dimension

I'm using sum(self.eval_h(self.x) * self.w.reshape(1, self.n)) / sum(self.w) to do a dot product and where eval_h is defined as def eval_h(self, x): """ evaluate h """ if "...
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39 views

Entry Point Not found (numpy python)

now i'm studying a numpy and still practice. but i'm get stuck on this one. it happen when i use inv() all time. ->python.exe - Entry Point not found `The procedure entry point mkl_blas_dgem2vu ...
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72 views

np.dot 3x3 with N 1x3 arrays

I have an ndarray of N 1x3 arrays I'd like to perform dot multiplication with a 3x3 matrix. I can't seem to figure out an efficient way to do this, as all the multi_dot and tensordot, etc methods seem ...
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19 views

mapping code to switch position pandas vectorization

I have a pandas dataframe which has one column that contains a binary code. Whenever it is 1, it turns on a switch, which keeps on for 5 timesteps. So if the code is Out[69]: 1990-01-01 1 1990-...
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1answer
15 views

Vectorisation of numpy.linalg.lstsq

I have two sets of points (A1, A2, B1, B2) for which I want to calculate the affine transformation (from A1 to B1, from A2 to B2). Using numpy.linalg.lstsq this is very straightforward for a single ...
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Numpy: Can you use broadcasting to replace values by row?

I have a M x N matrix X and a 1 x N matrix Y. What I would like to do is replace any 0-entry in X with the appropriate value from Y based on its column. So if X = np.array([[0, 1, 2], [3, 0, 5]]) ...
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Unable to divide a matrix and vector in keras

The matrix a has shape (4,3) and z has shape (4,). My intent is I want to divide every 3 dim vector in a with scalar in z. Consider the below example: Input: a = [[1,1,1], [2,2,2], [2,2,2], [5,5,...
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2answers
23 views

ValueError: operands could not be broadcast together with shapes (2501,201) (2501,)

I am new to python so please be nice. I am trying to compare two Numpy arrays with the np.logical_or function. When I run the below code an error appears on the Percentile = np.logical_or(data2 > ...
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67 views

How does pytorch broadcasting work?

torch.add(torch.ones(4,1), torch.randn(4)) produces a Tensor with size: torch.Size([4,4]). Can someone provide a logic behind this?
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broadcasting arrays in numpy

I got an array and reshaped it to the following dimentions: (-1,1,1,1) and (-1,1): Array A: [-0.888788523827 0.11842529285 0.319928774626 0.319928774626 0.378755429421 1.225877519716 3....
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120 views

Remove NaN from 2D numpy array

For example, if I have the 2D array as follows. [[1,2,3,NAN], [4,5,NAN,NAN], [6,NAN,NAN,NAN] ] The desired result is [[1,2,3], [4,5], [6] ] How should I transform? I find using x = x[~numpy....
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Multiply arrays along a given axis [duplicate]

I'm currently multiplying two arrays with different dimensions as follows x = np.ones((100, 10, 10)) y = np.arange(0, 100) for i in range(x.shape[1]): for j in range(x.shape[2]): x[:, i, ...
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2answers
113 views

Element-wise minimum of two numpy arrays indexed by another array

I have three arrays of shapes: A = a = np.random.exponential(1, [10, 1000000]) # of shape (10, 1000000) B = a = np.random.exponential(1, [10, 1000000]) # of shape (10, 1000000) I computed another ...
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1answer
67 views

NumPy indexing: broadcasting with Boolean arrays

Related to this question, I came across an indexing behaviour via Boolean arrays and broadcasting I do not understand. We know it's possible to index a NumPy array in 2 dimensions using integer ...
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1answer
110 views

Is NumPy broadcasting associative?

Say I have three numpy.ndarray's a,b,c such that when I multiply them a broadcasting happens. Does the result depend on the order of the multiplication? In other words, do there exist a,b,c such ...
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2answers
33 views

numpy indexing using 'None' for pairwise operations

If I had two numpy arrays that looked like this a = np.array([1, 2]) b = np.array([3, 4]) and I wanted to add all pairwise combinations, I could easily do c = a + b[:, None] c array([[4, 5], ...
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1answer
35 views

Broadcast operation on array of smaller size

I need to improve the performance of an operation performed on arrays of different shapes/sizes. The array pos has a shape of (2, 500) and the xa, xb, ya, yb arrays have shapes of (30,). The ...
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1answer
46 views

numpy.where() returns inconsisten dimensions

I pass an array of size (734,814,3) to a function but numpy.where() gives one dimensional result instead of the two-dimensional one, which it should for a 2D array def hsi2rgb(img): img_rgb = np....
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73 views

Taking specific 2d array from 3d in numpy

Is there a way to avoid using the for loop and get the result just by calling arr with some indexing? Potentially dim1 will be equal to 50 000, dim2 up to 1000, dim3 fixed to 3. import numpy as np ...
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1answer
34 views

Why the following operands could not be broadcasted together?

The arrays are of following dimensions: dists: (500,5000) train: (5000,) test:(500,) Why does the first two statements throw an error whereas the third one works fine? dists += train + test Error: ...
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2answers
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cosine similarity between a vector and pandas column(a linear vector)

I have a pandas data frame containing list of wines with their respective wine attributes. Then I made a new column vector that contains numpy vectors from these attributes. def get_wine_profile(id)...
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2answers
233 views

broadcast views irregularly numpy

Assuming I want have a numpy array of size (n,m) where n is very large, but with a lot of duplication, ie. 0:n1 are identical, n1:n2 are identical etc. (with n2%n1!=0, ie not regular intervals). Is ...
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1answer
42 views

Use selected Pandas columns with a function to create a matrix

I am trying to create a matrix of the results of a function, which involves a crosstab of dataframe columns. The function operates on a pair of dataframe columns in turn, so that the end result is a ...
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1answer
34 views

Broadcasting Multiple Arrays

I have the following function that generates a double Gaussian. def Model(wavelength_array, width): """Returns the model Parameters: wavelength_array: Full wavelength array. This is a ...
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37 views

idiom for getting contiguous copies

In the help of numpy.broadcst-array, an idiom is introduced. However, the idiom give exactly the same output as original command. Waht is the meaning of "getting contiguous copies instead of non-...
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1answer
32 views

TypeError: unsupported operand type(s) for /: 'float' and 'csr_matrix'

I want to write a sigmoid function: def fn(w, x): return 1.0 / (np.expm1(-w.dot(x))+0.0) Because -w.dot(x) is a sparse matrix, I used np.expm1() instead of np.exp(), but how to divide a float by ...
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1answer
53 views

Numpy 2D spatial mask to be filled with specific values from a 2D array to form a 3D structure

I'm quite new to programming in general, but I could not figure this problem out until now. I've got a two-dimensional numpy array mask, lets say mask.shape is (3800,3500)which is filled with 0s ...