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I've an interactive figure on which plot is drawn incrementally, one chunk at time.

That is, in a loop I get some sampling data, then I add them to existing curves in the plot and redraw the picture. For this, I'm using get/set_x/ydata functions. Something on this line:

# Get initial data
time = [1, 2, 3, 4, 5]
samples = [0.1, 0.2, 0.3, 0.4, 0.5]
c = plot_curve(time, samples)
# Get new data
time2 = [6, 7, 8]
samp2 = [0.6, 0.7, 0.8]
c.set_xdata(append(c.get_xdata(), time2))
c.set_ydata(append(c.get_ydata(), samp2))

Problem is, I'm also filling some area near the curve (e.g. the space between the curve and the x axis), using fill_between. Currently, I'm creating lots of small chunks in this way:

# Filling initial chunk
fill_between(time, samples, [0 for i in time])
# Filling next chunk
fill_between(time[-1] + time2, samples[-1] + samp2, [0 for i in time2] + [0])

(I know this code stinks, but it's for giving an idea).

So, problem is: there is one curve, but filled areas are 2 (one for each data chunk). This creates small artifacts in the drawing, because each filled area is very near to the next one, with a very little space among them.

Is there a way to do this kind of incremental work also on the filling area?

For example, could be nice to keep 2 curves (one equal to c.get_ydata() and one of zeros) and having matplotlib to automatically fill the area between them, without having to call the command explicitly - so that the filled area would always be up-to-date with the sampling points.

Or, another nice way, would be to represent the filled area using the sampling points, instead of a polygon, so that I could update the area with method similar to get/set_x/ydata.

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Did you get this sorted out? –  tcaswell Jun 1 '13 at 4:05
    
Unluckily not... –  AkiRoss Jun 1 '13 at 14:54
1  
I suggest sending an email to the mailing list or create and issue on github. –  tcaswell Jun 1 '13 at 15:12
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1 Answer

A slightly less hackish way to do this is to do

pc = fill_between(time, samples)

(note that the default is y2 = 0, so you don't need that list comprehension)

Then, when you update your figure

time2 = [6, 7, 8]
samp2 = [0.6, 0.7, 0.8]
time_update = append(c.get_xdata(), time2)
samp_update = append(c.get_ydata(), samp2)
c.set_xdata(time_update)
c.set_ydata(samp_update)
pc.remove()
pc = fill_between(time_update, samp_update)

Instead of making a new smaller region every time, just wipe out the old one and fully re-create it for all of the data. No idea how this will affect your speed, but I would be suprised if it is slower than what you are doing now.

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Well, I didn't try a performance comparison, but you should know that sampling points can be in high number, like million (>1, <100), and update frequency can be relatively high (once every 1000 samples or less). –  AkiRoss Feb 6 '13 at 16:46
    
@AkiRoss Is the data pretty smooth? You might be able to get away with aggressively down-sampling before calling fill_between (as you only have ~1k pixel across on your monitor, it is being down sample anyway) –  tcaswell Feb 6 '13 at 16:50
    
Unluckly I've already considered that option... Data is not smooth at all. Consider that the plot is saved in a vectorial format allowing a representation wider than the monitor. –  AkiRoss Feb 7 '13 at 11:01
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