Logarithmic 2D - Histogram using matplotlib

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]) ]

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.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()
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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

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

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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
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