# Log x-scale in imshow :: matplotlib

I have a table which looks like this

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 '14 at 16:37

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:

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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