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I'm attempting to do real-time plotting of data in matplotlib, in a "production" application that uses wxPython. I had been using Chaco for this purpose, but I'm trying to avoid Chaco in the future for many reasons, one of which is that since it's not well-documented I often must spend a long time reading the Chaco source code when I want to add even the smallest feature to one of my plots. One aspect where Chaco wins out over matplotlib is in speed, so I'm exploring ways to get acceptable performance from matplotlib.

One technique I've seen widely used for fast plots in matplotlib is to set animated to True for elements of the plot which you wish to update often, then draw the background (axes, tick marks, etc.) only once, and use the canvas.copy_from_bbox() method to save the background. Then, when drawing a new foreground (the plot trace, etc.), you use canvas.restore_region() to simply copy the pre-rendered background to the screen, then draw the new foreground with axis.draw_artist() and canvas.blit() it to the screen.

I wrote up a fairly simple example that embeds a FigureCanvasWxAgg in a wxPython Frame and tries to display a single trace of random data at 45 FPS. When the program is running with the Frame at the default size (hard-coded in my source), it achieves ~13-14 frames per second on my machine. When I maximize the window, the refresh drops to around 5.5 FPS. I don't think this will be fast enough for my application, especially once I start adding additional elements to be rendered in real-time.

My code is posted here: basic_fastplot.py

I wondered if this could be made faster, so I profiled the code and found that by far the largest consumers of processing time are the calls to canvas.blit() at lines 99 and 109. I dug a little further, instrumenting the matplotlib code itself to find that most of this time is spent in a specific call to MemoryDC.SelectObject(). There are several calls to SelectObject in surrounding code, but only the one marked below takes any appreciable amount of time.

From the matplotlib source, backend_wxagg.py:

class FigureCanvasWxAgg(FigureCanvasAgg, FigureCanvasWx):
    # ...

    def blit(self, bbox=None):
    Transfer the region of the agg buffer defined by bbox to the display.
    If bbox is None, the entire buffer is transferred.
    if bbox is None:
        self.bitmap = _convert_agg_to_wx_bitmap(self.get_renderer(), None)

    l, b, w, h = bbox.bounds
    r = l + w
    t = b + h
    x = int(l)
    y = int(self.bitmap.GetHeight() - t)

    srcBmp = _convert_agg_to_wx_bitmap(self.get_renderer(), None)
    srcDC = wx.MemoryDC()
    srcDC.SelectObject(srcBmp)          # <<<< Most time is spent here, 30milliseconds or more!

    destDC = wx.MemoryDC()

    destDC.Blit(x, y, int(w), int(h), srcDC, x, y)


My questions:

  • What could SelectObject() be doing that is taking so long? I had sort of assumed it would just be setting up pointers, etc., not doing much copying or computation.
  • Is there any way I might be able to speed this up (to get maybe 10 FPS at full-screen)?
share|improve this question
I have done some of this in pyqt and this was helpful to me [eli.thegreenplace.net/2009/08/07/… –  Matt May 7 '12 at 21:16
Any chance that srcBmp is doing lazy evaluation? –  Mark Ransom May 7 '12 at 21:27
@MarkRansom -- You may be on to something there. I tried stepping through the blit() code in a debugger and found that srcBmp was a SWIG wrapper around a wxBitmap* (C++ pointer to a wxBitmap). Do you know of any way to tell (based on the object state) whether a wxBitmap will be "lazily evaluated?" I may need to find a way to trace into the C++ implementation of SelectObject() to continue the investigation. –  jeremytrimble May 8 '12 at 11:43

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