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I have a table which looks like this

enter image description here

I have the highlighted part as a matrix of which I want to do an imshow. I want to have the x-scale of the plot logarithmic, as one can understand by looking at the parameter values in the topmost row. How to do this is matplotlib?

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You cannot apply log scale on an image. It does not make any sense. imshow gets an array in a sense every value is a pixel value. So in your image (i.e., your table) 67 is just a pixel to which 64 is the next. It does not care to your scaling concept. –  Developer Dec 30 '13 at 11:37
    
@Developer it may not make sense for pure image analysis per se, but three dimensional data, displayed as an image, can have logarithmic scales. For this pcolor is appropriate per my answer. –  Paul H Dec 30 '13 at 17:46
    
@PaulH The confusing part is that SO says a matrix. Your pcolor solution is great however in which you're assigning coordinates for every cell! In Excel 2007+ one may easily colorise the matrix (conditional formatting) but the concept and usage here is still not clear. –  Developer Dec 31 '13 at 6:45
    
possible duplicate of Non-linear axes for imshow in matplotlib –  tcaswell Dec 31 '13 at 16:34
    
@Developer: I understand that a log scale in imshow does not make sense as it is a pixel by pixel representation of a matrix. But what I want to show by the color is a quantity which depends on two variables x and y and I have values of this quantity for x=10,100,1000 and so on, so I need to make the x-scale of the density plot logarithmic. @PaulH: Thanks for the answer –  lovespeed Jan 1 at 16:37

1 Answer 1

up vote 5 down vote accepted

You want to use pcolor, not imshow. Here's an example:

import numpy as np
import matplotlib.pyplot as plt
fig, ax = plt.subplots()
Z = np.random.random(size=(7,7))
x = 10.0 ** np.arange(-2, 5)
y = 10.0 ** np.arange(-4, 3)
ax.set_yscale('log')
ax.set_xscale('log')
ax.pcolor(x, y, Z)

Which give me:

log pcolor

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+1 for demonstrating different use of pcolor. –  Developer Dec 31 '13 at 6:49
    
It might be better to use pcolormesh (as it is faster) –  tcaswell Dec 31 '13 at 16:35

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