# Matplotlib, 3rd set of values as colors of colorbar

I have 3 sets of values. It's like I have the x-y coordinate plane which constitutes first two sets of values. And I have divided the plane region into small squares of unit size or some size in particular. Then I have another 2-D array that contains values corresponding to each square or small region.

Now, the problem:

I could plot the 2-D array as color points using a colorbar but the x axis and y axis how the column and row indices respectively! Rather than that I wanted to have x and y coordinates shown. I tried searching a lot and didn't get the solution.

It is similar to this. It's just that I want my set of x-y coordinate values instead of the row and column values shown.

EDIT:

After following the answer provided, I got this .

Instead I should have got the figure like this. Of course the axes as the previous figure and unlike below.

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Isn't that what `pcolor(X, Y, C)` does? –  Lev Levitsky Jun 28 '14 at 8:54
can you please give an example. I am really not comfortable with the docs written like in the link you provided.. please –  MycrofD Jun 28 '14 at 9:20
I can't give an example in the comment. But if you provide examples of `X`, `Y` and `C` in the question, as well as describe specifically the desired result for those values, then I or someone else may be able to provide a more confident answer. –  Lev Levitsky Jun 28 '14 at 9:25
Ok. I am on it. But can u help me as how to give you the array of 50*50 values here? any link I should use or follow? –  MycrofD Jun 28 '14 at 9:32
@MycrofD: it may be a problem of the order you do things. First `imshow` then `axis('normal')` and only after that `colorbar`. Look at the edited example code below. If you cannot make it work, please show the code. –  DrV Jun 28 '14 at 9:58

If you want to have something similar to the `imshow` example you linked to but with different coordinate axes, you may want to use the `extent` keyword of `imshow`:

``````import numpy as np
import matplotlib.pyplot as plt

# some random data (10x10)
image = np.random.uniform(size=(10, 10))

plt.figure()

# draw the pixel image
#   interpolation='nearest': draw blocky pixels, do not smooth
#   cmap=pl.cm.gray: use gray scale colormap (autoscale, no vmin or vmax defined
#   origin='lower': draw first row of the array to the bottom if the image
#   extent=[-3,3,-10,10]: draw the image so that it covers area (-3,-10)..(3,10)
plt.imshow(image, cmap=plt.cm.gray, interpolation='nearest', origin='lower', extent=[-3,3,-10,10])

# this is needed to make the pixels non-square if needed
plt.axis('normal')

plt.colorbar()

plt.show()
``````

This way you can create "pixels" whose size is exactly what you want:

Of course, you may plot more information onto the same plot if you want just by using `plot` or something else.

The `image` here is an array of scalars and the colouring is defined by the `cmap`, but it may also be an array of RGB or RGBA values if you want to do fancier coloring. For example:

How to create colormap of confidence estimates for k-Nearest Neighbor Classification

If you want to have transparent areas in your map, put `nan` values into `image`.

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Almost got what I needed.. But now, the y axis is shrunken. How to elongate it? I mean x varies from 4 to 22. And y varies from -75 to -70.5. So the prob is it looks like a rectangle with the figure having squeezed along vertical axis, i.e. y axis. –  MycrofD Jun 28 '14 at 9:46
@MycrofD: The `extent` keyword gives the size of the image in the plot area coordinates. Remember to give the `plt.axis('normal')` and then you can scale the axis ranges to be what you want by `plt.axis([-100,100,-50,50])` or whatever range you want to have. –  DrV Jun 28 '14 at 9:54
thank you very much. Thnx to you and @Lev Levitsky for such a quick response. :) –  MycrofD Jun 28 '14 at 14:31
I was using cbar.ax.set_ylabel('something'). It is not working. I can't label the colorbar. Help plz.. –  MycrofD Jun 28 '14 at 17:30
@MycrofD: Are you sure you want to set the Y label for the colorbar? That works well with `ax.set_ylabel`. But if you want to set the Y axis tick labels manually, you need `get_yticks().to_list()`, edit the list and `set_yticklabels`. The process has several kinks, see: stackoverflow.com/questions/11244514/… –  DrV Jun 29 '14 at 22:02