# Set a colormap under a graph

I know this is well documented, but I'm struggling to implement this in my code.

I would like to shade the area under my graph with a colormap. Is it possible to have a colour, i.e. red from any points over 30, and a gradient up until that point?

I am using the method fill_between, but I'm happy to change this if there is a better way to do it.

``````def plot(sd_values):

plt.figure()
sd_values=np.array(sd_values)
x=np.arange(len(sd_values))
plt.plot(x,sd_values, linewidth=1)
plt.fill_between(x,sd_values, cmap=plt.cm.jet)
plt.show()
``````

This is the result at the moment. I have tried `axvspan`, but this doesnt have `cmap` as an option. Why does the below graph not show a colormap?

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I'm not sure if the `cmap` argument should be part of the `fill_between` plotting command. In your case probably want to use the `fill()` command btw.

These fill commands create polygons or polygon collections. A polygon collection can take a `cmap` but with `fill` there is no way of providing the data on which it should be colored.

What's (for as far as i know) certainly not possible is to fill a single polygon with a gradient as you wish.

The next best thing is to fake it. You can plot a shaded image and clip it based on the created polygon.

``````# create some sample data
x = np.linspace(0, 1)
y = np.sin(4 * np.pi * x) * np.exp(-5 * x) * 120

fig, ax = plt.subplots()

# plot only the outline of the polygon, and capture the result
poly, = ax.fill(x, y, facecolor='none')

# get the extent of the axes
xmin, xmax = ax.get_xlim()
ymin, ymax = ax.get_ylim()

# create a dummy image
img_data = np.arange(ymin,ymax,(ymax-ymin)/100.)
img_data = img_data.reshape(img_data.size,1)

# plot and clip the image
im = ax.imshow(img_data, aspect='auto', origin='lower', cmap=plt.cm.Reds_r, extent=[xmin,xmax,ymin,ymax], vmin=y.min(), vmax=30.)

im.set_clip_path(poly)
``````

The image is given an extent which basically stretches it over the entire axes. Then the clip_path makes it only showup where the `fill` polygon is drawn.

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Thanks for the help, its, not quite what I wanted, as I really need it to be a colour over a certain value, but it will be useful! –  Ashleigh Clayton Oct 2 '13 at 8:32
Thats certainly possible with this method. Ive updated my answer a little. Notice how the `vmin` and `vmax` arguments of `imshow` control the shading. –  Rutger Kassies Oct 2 '13 at 8:46
in my code, what would `img_data` be? `sd_values`? also, strangely when I plot it, the colours are backwards, i.e. white at top, dark red at bottom –  Ashleigh Clayton Oct 2 '13 at 10:14
also, this is perfect, thankyou, if I can actually apply it! –  Ashleigh Clayton Oct 2 '13 at 10:15
`img_data` is an array with values running between the min and max values of the y-axis. You don't have to do anything with it. You can change the cmap from `Reds` to `Reds_r` to change the colors. –  Rutger Kassies Oct 2 '13 at 11:00

I think all you need is to do the plot of the data one at a time, like:

``````    import numpy
import matplotlib.pyplot as plt
import matplotlib.cm as cm
import matplotlib.colors as colors

# Create fake data
x = numpy.linspace(0,4)
y = numpy.exp(x)

# Now plot one by one
bar_width = x[1] - x[0]  # assuming x is linealy spaced
for pointx, pointy in zip(x,y):
current_color = cm.jet( min(pointy/30, 30)) # maximum of 30
plt.bar(pointx, pointy, bar_width, color = current_color)

plt.show()
``````

Resulting in:

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