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This is my first program in python, so there could be things that are "funny" in my program. The program reads 3 columns from the files it finds in a given directory. Then computes the histogram for each file and the results are added to a two dimensional matrix in order to create something like a 2D-Hist.

My difficulty is in my 3rd plot, where I would like the y-axis data to be on a logarithmic scale and the data to be presented according to the scale. In addition I would like to remove "zero" entries from my input entries. I tried to use numpy.where(matrix) for that, but I don't know if that really does what I want...

Here is my code:

#!/usr/bin/python
# Filename: untitled.py
# encoding: utf-8

from __future__ import division
from matplotlib.colors import LogNorm
import matplotlib
import numpy as np
import matplotlib.pylab as plt
import os
import matplotlib.cm as cm

def main():

   dataFiles = [filename for filename in os.listdir(".") if (filename[-4:]==".log" and filename[0]!='.')]
   dataFiles.sort()

   p = []
   matrix1 = []
   matrix2 = []
   matrix3 = []

   for dataFile in dataFiles:
            p += [ eval(dataFile[11:16]) ]
            data = np.loadtxt(dataFile, skiprows=7)[:,1:4]

            matrix1 += [ data[:,0] ]
            matrix2 += [ data[:,1] ]
            matrix3 += [ data[:,2] ]

    matrixList = [matrix1, matrix2, matrix3]

    #make histograms out of the matrices
    matrix1Hist = [  np.histogram( matrixColumn, bins=30,  range=(np.min(np.where(matrix1 != 0)), np.max(matrix1)))[0]   for matrixColumn in matrix1 ]
    matrix2Hist = [  np.histogram( matrixColumn, bins=200, range=(np.min(np.where(matrix2 != 0)), np.max(matrix2)))[0]   for matrixColumn in matrix2 ]
    matrix3Hist = [  np.histogram( matrixColumn, bins=50,  range=(np.min(np.where(matrix3 != 0)), np.max(matrix3)))[0]   for matrixColumn in matrix3 ]

    # convert the matrixHistogramsto numpy arrays and swap axes
    matrix1Hist = np.array(matrix1Hist).transpose()
    matrix2Hist = np.array(matrix2Hist).transpose()
    matrix3Hist = np.array(matrix3Hist).transpose() 

    matrixHistList = [matrix1Hist, matrix2Hist, matrix3Hist]

    fig = plt.figure(0)
    fig.clf()

    for i,matrixHist in enumerate( [matrix1Hist, matrix2Hist, matrix3Hist] ):
            ax = fig.add_subplot(2, 2, i+1)
            ax.grid(True)
            ax.set_title('matrix'+str(i+1))
            if i < 2:
                   result = ax.imshow(matrixHist,
                                      cmap=cm.gist_yarg,
                                      origin='lower',
                                      aspect='auto', #automatically span matrix to available space
                                      interpolation='hanning',
                                      extent= [ p[0], p[-1], np.floor( np.min( matrixList[i])), np.ceil( np.max( matrixList[i])) ] ,
                                      )

            elif i == 2:
                    result = ax.imshow(matrixHist,
                                       cmap=cm.gist_yarg,
                                       origin='lower',
                                       aspect='auto', #automatically span matrix to available space
                                       interpolation='hanning',
                                       extent= [ p[0], p[-1], 1, np.log10(np.max( matrixList[i])) ] ,
                                       )


            ticks_at = [ 0 , abs(matrixHist).max()]
            fig.colorbar(result, ticks=ticks_at,format='%1.2g')


    plt.show()


if __name__ == '__main__':
    main()
share|improve this question
    
Are you sure that this is your first Python program? Looking at you Python code it seems pretty well written, plus the LogNorm is imported but not used. Did I just do some homework? ;-) –  Brendan Aug 6 '11 at 18:26

1 Answer 1

For the first part of the question, you have the following options,

For the second part of your question - about filtering zero values from an array - try:

my_array = my_array[my_array != 0]

my_array != 0 creates a logical array of True and Falses which is then used in the slice. However this returns a one dimensional array which you probably don't want. To set the values to something else (and maintain the 2D shape), use the following (values are set to NaN) ...

my_array[my_array != 0] = np.NaN

share|improve this answer
    
thank for your answer. As i tried to find a solution to this log problem, i found as well the link you gave here, but the solution of set_yscale('log') is unfortunately not working with imshow. –  Eagle Aug 6 '11 at 11:56
1  
Ah ok, the 'histogram' is presented as a colour plot? In which case you can alter the cmap to one which scales logarithmically. I don't know how to do this off the top of my head but it is possible ... –  Brendan Aug 6 '11 at 12:06

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