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In Python, with Matplotlib, how to simply do a scatter plot with transparency (alpha < 1), but with a color bar that represents their color value, but has alpha = 1?

Here is what one gets, with from pylab import *; scatter(range(10), arange(0, 100, 10), c=range(10), alpha=0.2); color_bar = colorbar():

alt text

How can the color bar be made non-transparent?

PS: I tried color_bar.set_alpha(1); draw(), but this did not do anything…

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But since it's a scatter plot, what would the color bar indicate? Should it correspond to the size of each point, s, or the color of each point, c? –  Steve Tjoa Dec 18 '10 at 16:17
    
@Steve: The color bar would map the color of the points. –  EOL Dec 18 '10 at 16:53

2 Answers 2

up vote 11 down vote accepted

Alright, I found one way to do it, that looks relatively clean: (using the ColorBar object from the question)

color_bar.set_alpha(1)
color_bar.draw_all()
# pylab.draw() or pyplot.draw() might be necessary

It would be great to get a confirmation that this is the most robust way to proceed, though! :)

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Oh, draw_all. Interesting. –  Steve Tjoa Dec 18 '10 at 21:36
    
What if I don't want the colorbar labels? draw_all() makes the labels appear even if I have set color_bar.ax.set_yticklabels([]). –  David Ketcheson Sep 24 at 6:12
    
I'm not sure how to do this… I tried to clear the color bar axes first (color_bar.ax.cla()), but then drawing the colorbar again with draw_all() fails. –  EOL Sep 24 at 8:56

This is a huge, ugly hack. But no other way would work. Maybe someone else can improve.

fig1 = pylab.figure()
fig2 = pylab.figure()
ax1 = fig1.add_subplot(111)
ax2 = fig2.add_subplot(111)
ax1.scatter(range(10), range(10), c=range(10), alpha=0.2)
im = ax2.scatter(range(10), range(10), c=range(10), alpha=1.0)
fig1.colorbar(im, ax=ax1)
fig1.show()

alt text

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+1: interesting idea! One drawback is that you get an additional figure when pyplot.show() is called (that could be destroyed, arguably…). –  EOL Dec 18 '10 at 21:35
    
Indeed, it creates a new figure. That was really a "last resort" solution. :-) –  Steve Tjoa Dec 18 '10 at 21:37

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