NumPy is a scientific and numerical computing extension to the Python programming language.

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Convert numpy array to tuple

Note: This is asking for the reverse of the usual tuple-to-array conversion. I have to pass an argument to a (wrapped c++) function as a nested tuple. For example, the following works X = ...
15
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2answers
602 views

Named dtype array: Difference between a[0]['name'] and a['name'][0]?

I came across the following oddity in numpy which may or may not be a bug: import numpy as np dt = np.dtype([('tuple', (int, 2))]) a = np.zeros(3, dt) type(a['tuple'][0]) # ndarray ...
15
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3answers
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Scipy sparse… arrays?

So, I'm doing some Kmeans classification using numpy arrays that are quite sparse-- lots and lots of zeroes. I figured that I'd use scipy's 'sparse' package to reduce the storage overhead, but I'm a ...
15
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4answers
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Improving Numpy Performance

I'd like to improve the performance of convolution using python, and was hoping for some insight on how to best go about improving performance. I am currently using scipy to perform the convolution, ...
15
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1answer
2k views

numpy on multicore hardware

What's the state of the art with regards to getting numpy to use mutliple cores (on Intel hardware) for things like inner and outer vector products, vector-matrix multiplications etc? I am happy to ...
15
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1answer
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OpenCV and Numpy interacting badly

Can anyone explain why importing cv and numpy would change the behaviour of python's struct.unpack? Here's what I observe: Python 2.7.3 (default, Aug 1 2012, 05:14:39) [GCC 4.6.3] on linux2 Type ...
15
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2answers
422 views

Why is numpy.array() is sometimes very slow?

I'm using the numpy.array() function to create numpy.float64 ndarrays from lists. I noticed that this is very slow when either the list contains None or a list of lists is provided. Below are some ...
15
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2answers
465 views

How to compute scipy sparse matrix determinant without turning it to dense?

I am trying to figure out the fastest method to find the determinant of sparse symmetric and real matrices in python. using scipy sparse module but really surprised that there is no determinant ...
15
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1answer
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How to integrate SQLAlchemy and a subclassed Numpy.ndarray smoothly and in a pythonic way?

I would like to store numpy-arrays with annotations (like name) via SQLAlchemy within a relational database. To do so, I seperate the numpy array from its data via an data transfere object ...
14
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4answers
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numpy replace negative values in array

Can anyone advise a simple way of replacing all negative values in an array with 0? I'm having a complete block on how to do it using a numpy array e.g. a = array([1, 2, 3, -4, 5]) i need to ...
14
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7answers
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numpy: frequency counts for unique values in an array

In numpy/scipy, is there an efficient way to get frequency counts for unique values in an array? Something along these lines: x = array([1,1,1,2,2,2,5,25,1,1]) y = freq_count(x) print y >> ...
14
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1answer
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Is shared readonly data copied to different processes for Python multiprocessing?

The piece of code that I have looks some what like this: glbl_array = # a 3 Gb array def my_func( args, def_param = glbl_array): #do stuff on args and def_param if __name__ == '__main__': ...
14
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3answers
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Pandas: Combine string and int columns

I have a following DataFrame: from pandas import * df = DataFrame({'foo':['a','b','c'], 'bar':[1, 2, 3]}) It looks like this: bar foo 0 1 a 1 2 b 2 3 c Now I want to have ...
14
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2answers
10k views

StringIO in python3

I am using python 3.2.1 and I can't import the StringIO module. I use io.StringIO and it works but i can't use it with genfromtxt of numpy like this: x="1 3\n 4.5 8" ...
14
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7answers
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changing the values of the diagonal of a matrix in numpy

how can I change the values of the diagonal of a matrix in numpy? I checked Numpy modify ndarray diagonal, but the function there is not implemented in numpy v 1.3.0. lets say we have a np.array X ...
14
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1answer
30k views

Convert list in tuple to numpy array?

I have tuple of lists. One of these lists is a list of scores. I want to convert the list of scores to a numpy array to take advantage of the pre-built stats that scipy provides. In this case the ...
14
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3answers
6k views

sigmoidal regression with scipy, numpy, python, etc

I have two variables (x and y) that have a somewhat sigmoidal relationship with each other, and I need to find some sort of prediction equation that will enable me to predict the value of y, given any ...
14
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2answers
266 views

numpy negative indexing a[:-0]

I want to use array slicing to trim my array i.e. a_trimmed = a[trim_left:-trim_right] this is great, except if trim_right is 0, I get a[trim_left:0], which is an empty array. I suppose I can ...
14
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5answers
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FFT-based 2D convolution and correlation in Python

Is there a FFT-based 2D cross-correlation or convolution function built into scipy (or another popular library)? There are functions like these: scipy.signal.correlate2d - "the direct method ...
14
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4answers
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How do I pass large numpy arrays between python subprocesses without saving to disk?

Is there a good way to pass a large chunk of data between two python subprocesses without using the disk? Here's a cartoon example of what I'm hoping to accomplish: import sys, subprocess, numpy ...
14
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1answer
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How do I catch a warning in python like it's an exception? Not just for testing

I have to make a LaGrange Polynomial in python for a project I'm doing. I'm doing a Barycentric style one to avoid using an explicit for-loop as opposed to a newton's divided difference style one. The ...
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2answers
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Julia's Python performance example in pypy

Julia is a new statistical programming language that claims significantly better performance than competing languages. I'm trying to verify this. Julia has a performance test written in Python: ...
14
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1answer
29k views

python interpolation

I have a set of data's as, Table-1 X1 | Y1 ------+-------- 0.1 | 0.52147 0.02 | 0.8879 0.08 | 0.901 0.11 | 1.55 0.15 | 1.82 0.152 | 1.95 Table-2 X2 ...
14
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2answers
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sort eigenvalues and associated eigenvectors after using numpy.linalg.eig in python

I'm using numpy.linalg.eig to obtain a list of eigenvalues and eigenvectors: A = someMatrixArray from numpy.linalg import eig as eigenValuesAndVectors solution = eigenValuesAndVectors(A) ...
14
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1answer
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extract upper/lower triangular part of a numpy matrix?

I have a matrix A and I want 2 matrices U and L such that U contains the upper triangular elements of A (all elements above and not including diagonal) and similarly for L(all elements below and not ...
14
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5answers
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How to use numpy with 'None' value in python?

i'm a pretty new user of python and numpy, so i hope my question won't annoy you. Well, i'd like to calculate the mean of an array in python in this form : Matrice = [1, 2, None] I'd just like to ...
14
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2answers
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Difference between map, applymap and apply methods in Pandas

Can you tell me when to use these vectorization methods with basic examples? I see that map is a Series method whereas the rest are DataFrame methods. I got confused about apply and applymap methods ...
14
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1answer
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How to create a legend for 3D bar in matplotlib?

Given ax = plt.subplot(): ax.bar()[0] can be passed to plt.legend(). However, ax.bar3d() returns None. How do I create legend for displayed bars? UPDATE: Passing legend="stuff" to ax.bar3d() and ...
14
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1answer
5k views

How find values in an array that meet two conditions using Python

I have an array a=[1,2,3,4,5,6,7,8,9] and I want to find the indices of the element s that meet two conditions i.e. a>3 and a<8 ans=[3,4,5,6] a[ans]=[4,5,6,7] I can use ...
14
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2answers
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Efficient evaluation of a function at every cell of a NumPy array

Given a NumPy array A, what is the fastest/most efficient way to apply the same function, f, to every cell? Suppose that we will assign to A(i,j) the f(A(i,j)). The function, f, doesn't have a ...
14
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4answers
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Clustering ~100,000 Short Strings in Python

I want to cluster ~100,000 short strings by something like q-gram distance or simple "bag distance" or maybe Levenshtein distance in Python. I was planning to fill out a distance matrix (100,000 ...
14
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1answer
3k views

Sort a numpy array by another array, along a particular axis

Similar to this answer, I have a pair of 3D numpy arrays, a and b, and I want to sort the entries of b by the values of a. Unlike this answer, I want to sort only along one axis of the arrays. My ...
14
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3answers
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Fastest 2D convolution or image filter in Python

Several users have asked about the speed or memory consumption of image convolutions in numpy or scipy [1, 2, 3, 4]. From the responses and my experience using Numpy, I believe this may be a major ...
14
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2answers
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Ruby equivalent of NumPy

I'd like to be able to get averages, medians, percentiles, etc. I've been looking all over and can't find anything like it. I realize that Ruby isn't used very much in the scientific world, but there ...
14
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2answers
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numpy and Global Interpreter Lock

I am about to write some computationally-intensive Python code that'll almost certainly spend most of its time inside numpy's linear algebra functions. The problem at hand is embarrassingly parallel. ...
14
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1answer
828 views

Memory profiler for numpy

I have a numpy script that -- according to top -- is using about 5GB of RAM: PID USER PR NI VIRT RES SHR S %CPU %MEM TIME+ COMMAND 16994 aix 25 0 5813m 5.2g 5.1g S 0.0 22.1 ...
14
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1answer
3k views

What is the preferred way to preallocate NumPy arrays?

I am new to NumPy/SciPy. From the documentation, it seems more efficient to preallocate a single array rather than call append/insert/concatenate. For example, to add a column of 1's to an array, i ...
14
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1answer
3k views

append versus resize for numpy array

I would like to append a value at the end of my numpy.array. I saw numpy.append function but this performs an exact copy of the original array adding at last my new value. I would like to avoid copies ...
14
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2answers
550 views

Interpolating a 3D surface known by its corner nodes and coloring it with a colormap

I want to construct a 3D representation of experimental data to track the deformation of a membrane. Experimentally, only the corner nodes are known. However I want to plot the deformaiton of the ...
14
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1answer
482 views

f2py: Exposing parameters from “used” modules

I assume that this question has been addressed somewhere, but I have spent an inordinate amount of time looking around for the answer including digging into the source code a bit. I have tried to put ...
14
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2answers
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Installing numpy as a dependency with setuptools

This might be a follow up question of this one. I am using setuptools to install a package of mine. As a dependency I have listed numpy. I am using Python2.7 and when I do python setup.py install ...
14
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2answers
558 views

What is this import_umath function?

When compiling a bunch of Cython-generated C files that interface with Numpy, I get the warning: /usr/lib/pymodules/python2.7/numpy/core/include/numpy/__ufunc_api.h:226:1: warning: ‘_import_umath’ ...
14
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3answers
428 views

Python particles simulator: out-of-core processing

Problem description In writing a Monte Carlo particle simulator (brownian motion and photon emission) in python/numpy. I need to save the simulation output (>>10GB) to a file and process the data in ...
14
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2answers
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Multiprocessing incompatible with NumPy [duplicate]

I am trying to run a simple test using multiprocessing. The test works well until I import numpy (even though it is not used in the program). Here is the code: from multiprocessing import Pool import ...
14
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1answer
590 views

Floating Point Exception with Numpy and PyTables

I have a rather large HDF5 file generated by PyTables that I am attempting to read on a cluster. I am running into a problem with NumPy as I read in an individual chunk. Let's go with the example: ...
14
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1answer
772 views

Array order in `numpy.dot`

In Python's numerical library NumPy, how does the numpy.dot function deal with arrays of different memory-order? numpy.dot(c-order, f-order) vs. dot(f-order, c-order) etc. The reason I ask is that ...
13
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4answers
23k views

Iterating through a multidimensional array in Python

I have created a multidimensional array in Python like this: self.cells = np.empty((r,c),dtype=np.object) Now I want to iterate through all elements of my twodimensional array, and I do not care ...
13
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3answers
6k views

Python out of memory on large CSV file (numpy)

I have a 3GB CSV file that I try to read with python, I need the median column wise. from numpy import * def data(): return genfromtxt('All.csv',delimiter=',') data = data() # This is where it ...
13
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5answers
13k views

NumPy, PIL adding an image

I'm trying to add two images together using NumPy and PIL. The way I would do this in MATLAB would be something like: >> M1 = imread('_1.jpg'); >> M2 = imread('_2.jpg'); >> resM = ...
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2answers
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What is the equivalent of “zip()” in Python's numpy?

I am trying to do the following but with numpy arrays: x = [(0.1, 1.), (0.1, 2.), (0.1, 3.), (0.1, 4.), (0.1, 5.)] normal_result = zip(*x) This should give a result of: normal_result = [(0.1, 0.1, ...