Tagged Questions

72 views

Are element-wise operations faster with NumPy functions than operators?

I recently came across a great SO post in which a user suggests that numpy.sum is faster than Python's sum when it comes to dealing with NumPy arrays. This made me think, are element-wise operations ...
35 views

Efficiently copying slices of large numpy arrays to a smaller array of continuous memory

I have a need for copying slices from a large numpy array to another smaller array as efficiently as possible. Ultimately, the smaller array will be passed as a two dimensional array into a C function ...
25 views

Numpy : power or repeated multiplication [duplicate]

Could this results be explained by the overhead of the functions? I would guessed that numpy will be optimized at least to give times of the same order of magnitude. The following code gives the ...
495 views

Why is numpy.power 60x slower than in-lining?

Maybe I'm doing something odd, but maybe found a surprising performance loss when using numpy, seems consistent regardless of the power used. For instance when x is a random 100x100 array x = ...
106 views

Speeding up distance matrix computation with Numpy and Cython

Consider a numpy array A of dimensionality NxM. The goal is to compute Euclidean distance matrix D, where each element D[i,j] is Eucledean distance between rows i and j. What is the fastest way of ...
72 views

Speed up Pandas filtering

I have a 37456153 rows x 3 columns Pandas dataframe consisting of the following columns: [Timestamp, Span, Elevation]. Each Timestamp value has approximately 62000 rows of Span and Elevation data, ...
43 views

Increase performance of script (current method of using np.putmask)

So I was wondering if there was a quicker method than this for applying two equations on an array. d84, slope, q_dis, recking_parameter are all float arrays of 3000 by 3000. # Work out the equation ...
25 views

looking for a 3D version of numpy.linalg.norm

I'm looking for a build-in function in python. It should compute the frobenius norm of a 3D array. My current approach is: np.sqrt(np.sum(np.square(x[:,:,:]))) but this is too slow for the size ...
73 views

Python NUMPY HUGE Matrices multiplication

I need to multiply two big matrices and sort their columns. import numpy a= numpy.random.rand(1000000, 100) b= numpy.random.rand(300000,100) c= numpy.dot(b,a.T) sorted = [argsort(j)[:10] for j ...
97 views

Python code become slower after each iteration

I have following code which is supposed to do some operation over a vector of data and store the result, my problem is that when I run this code at first each iteration (each outter loop) takes about ...
50 views

Fastest way to get bounding boxes around segments in a label map

A 3D label map is matrix in which every pixel (voxel) has an integer label. These values are expected to be contiguous, meaning that a segment with label k will not be fragmented. Given such label ...
25 views

How can I efficiently expand a factored tensor in numpy?

I have a 3D tensor factored as three 2D matrices, like equation 22 in this paper: http://www.iro.umontreal.ca/~memisevr/pubs/pami_relational.pdf My question is, if I want to calculate the tensor ...
51 views

matrix multiplication performance

Code goes as follows, In [180]: rng = np.random.RandomState(123) In [181]: A1 = rng.uniform(size=(10000,80)) In [182]: B1 = rng.uniform(size=(10000,30)) In [183]: A2 = rng.uniform(size=(80,10000)) ...
74 views

Python: Fastest Way to Traverse 2-D Array

I have a 2-D float array, and want to count the number of fields greater that a threshold in each column and store it in a 1-D Array. Current I am using the following code but it takes a long of time ...
141 views

Column wise sum V row wise sum: Why don't I see a difference using NumPy?

I've tested an example demonstrated in this talk [pytables] using numpy (page 20/57). It is stated, that a[:,1].sum() takes 9.3 ms, whereas a[1,:].sum() takes only 72 us. I tried to reproduce it, ...
61 views

Why does numpy.float16 break the OpenBlas/Atlas functionalities?

Ok, I know float16 is not a real primitive type, but it's simulated by Python/numpy. However, the question is: if that exists and Python allows to use it in arrays multiplication using the numpy.dot() ...
49 views

Improving Python + numpy array allocation/initialization performance

I'm writing a python program, using some external functionality from DLL. My problem is passing matrices (numpy arrays in python) in and out of C code, now i'm using following code to receive data ...
79 views

efficient, fast numpy histograms

I have a 2D numpy array consisting of ca. 15'000'000 datapoints. Each datapoint has a timestamp and an integer value (between 40 and 200). I must create histograms of the datapoint distribution (16 ...
152 views

Multiplying very large 2D-array in Python

I have to multiply very large 2D-arrays in Python for around 100 times. Each matrix consists of 32000x32000 elements. I'm using np.dot(X,Y), but it takes very long time for each multiplication... ...
157 views

Why is Cython slower than vectorized NumPy?

Consider the following Cython code : cimport cython cimport numpy as np import numpy as np @cython.boundscheck(False) @cython.wraparound(False) def test_memoryview(double[:] a, double[:] b): ...
112 views

How to speed up Python code for running on a powerful machine? [closed]

I've completed writing a multiclass classification algorithm that uses boosted classifiers. One of the main calculations consists of weighted least squares regression. The main libraries I've used ...
51 views

Loops over list 20x faster than over ndarray

I can't figure out why among the following loop the f?c are 20 times slower than the f?. I understand type definition allows Cython to leverage C speed. What am I missing here? Thanks %%cython ...
56 views

numpy calculate polynom efficiently

I'm trying to evaluate polynomial (3'd degree) using numpy. I found that doing it by simpler python code will be much more efficient. import numpy as np import timeit m = [3,7,1,2] f = lambda m,x: ...
80 views

How to vectorize this loop in python?

How can I vectorize this segment of pseudocode: for i from 1 to n y[i] := y[i-1] + Î± * (x[i] - y[i-1]) Thanks in advance.
91 views

Possible optimizations for calculating squared euclidean distance

I need to do a few hundred million euclidean distance calculations every day in a Python project. Here is what I started out with: def euclidean_dist_square(x, y): diff = np.array(x) - ...
68 views

Python pypy: Efficient sum of absolute array/vector difference

I am trying to reduce the computation time of my script,which is run with pypy. It has to calculate for a large number of lists/vectors/arrays the pairwise sums of absolute differences. The length of ...
50 views

Calculating event / stimulus triggered averages efficiently in Python

I would like to calculate event / stimulus triggered averages computationally efficient. Assuming I have got a signal, e.g. signal = [random.random() for i in xrange(0, 1000)] with n_signal ...
158 views

Counting Algorithm Performance Optimization in Pypy vs Python (Numpy vs List)

My expectation was that pypy could be as much as an order of magnitude faster than python, but the results indicate that pypy is in fact slower than expected. I have two questions: Why is pypy ...
91 views

Faster looping with itertools

I have a function def getSamples(): p = lambda x : mlab.normpdf(x,3,2) + mlab.normpdf(x,-5,1) q = lambda x : mlab.normpdf(x,5,14) k=30 goodSamples = [] rightCount = 0 ...
70 views

Numpy Double summation

My implementation is: def getGaussianValue(x, mean, covariance): part1 = 1/np.power(2*np.pi, x.shape[0]/2) part2 = 1/np.sqrt(np.linalg.det(covariance)) part3 = np.exp(-(0.5) * ...
114 views

Python/Numpy Code Optimisation

I have the following two matrix algebra calculations in a large iteration. I am therefore looking to optimize the cacluclation. 1: F = np.matrix(np.zeros(shape=(n+1,1))) F[0:n] = x - ...
47 views

Fast calculation of distances to each cluster center for an entire dataset

In a data clustering problem I have two numpy arrays, X and C, where X corresponds to observations and C corresponds to the centers of the clusters that can be formed with the data in X. Both of them ...
58 views

How to speed up a large number of inner products

I want to iterate over all 2^32 rows made up of -1s and 1s and perform an inner product operation on each one. Is there a way to speed up the code below? import itertools import operator n = 16 ...
247 views

How to speed up numpy code

I have the following code. In principle it takes 2^6 * 1000 = 64000 iterations which is quite a small number. However it takes 9s on my computer and I would like to run it for n = 15 at least. from ...
165 views

Find number of zeros before non-zero in a numpy array

I have a numpy array A. I would like to return the number of zeros before a non-zero in A in an efficient way as it is in a loop. If A = np.array([0,1,2]) then np.nonzero(A)[0][0] returns 1. ...
294 views

Optimize A*x = B solution for a tridiagonal coefficient matrix

I have a system of equations in the form of A*x = B where [A] is a tridiagonal coefficient matrix. Using the Numpy solver numpy.linalg.solve I can solve the system of equations for x. See example ...
133 views

Why is my Numpy test code 2X slower than in Matlab

I've been developing a Fresnel coefficient based reflectivity solver in Python and I've hit a bit of a roadblock as the performance in Python + Numpy is 2X slower than in Matlab. I've distilled the ...
100 views

Efficient element-wise matrix division when elements in denominator may be zero

I'm programming with Python 2.7.6 using numpy. I have this division between two numpy matrixes V/np.dot(W,H). Sometimes happens that the denominator has some cell values equal to 0, so i get a Runtime ...
72 views

How to Optimize the Python Code

All, I am going to compute some feature values using the following python codes. But, because the input sizes are too big, it is very time-consuming. Please help me to optimize the codes. ...
144 views

How to get the hardest part to take longest in python

I have some simple code as follows. count =0 iters = 1000000 l=10 k=10 for i in xrange(iters): t = np.random.choice([-1,1],size=l+k-1) v = np.random.choice([-1,1], size = l) if (not ...
64 views

Speed up counting number of distinct columns

I need to count the number of distinct columns in relatively large arrays. def nodistinctcols(M): setofcols = set() for column in M.T: setofcols.add(repr(column)) return ...
437 views

Efficiently Calculating a Euclidean Distance Matrix Using Numpy [duplicate]

I have a set of points in 2-dimensional space and need to calculate the distance from each point to each other point. I have a relatively small number of points, maybe at most 100. But since I need ...
70 views

Fast search for the coordinates of the maximum value in a gaussian kernel

I have a simple code that generates a 2D gaussian kernel using scipy.stats.gaussian_kde function. Here's the MWE: def random_data(N): # Generate some random data. return ...
63 views

Why computing Preferential Attachment is costly?

I have an undirected graph with 1034 vertices and 53498 edges. I'm computing the preferential attachment index for the vertices. The Preferential Attachment similarity between two vertices is defined ...
107 views

Pythonify Some Simple Loops

Currently, I am developing a huge test suite, where each file undergoes exactly 387,072 tests, and I have 269 files I need to test. I wrote all the logic in Python, and it all does what it is supposed ...
37 views

Selecting values in ndarray occuring after a NaN

I have a large 2D ndarray of floats, call it ar. It contains some NaNs. I am interested in the immediate neighbors of the NaNs to the right (eg. along axis=1). For example, if I know that say point ...
34 views

example to demonstrate that MKL works in multithread mode?

I have compiled numpy for python3, to make use of the MKL libraries. Python is correctly finding this numpy installation, since it shows its configuration: mkl_info: libraries = ['mkl_rt', ...
197 views

Can I speed up this basic linear algebra code?

I was wondering whether it is possible to optimise the following using Numpy or mathematical trickery. def f1(g, b, dt, t1, t2): p = np.copy(g) for i in range(dt): p += t1*np.tanh(np.dot(p, ...