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This is what my animation function (i.e. the one that gets called by `FuncAnimation`) looks like: import numpy as np ... def mpl_animation_function(n): print "animating timestep: ", n if n > 0: previous_relevant_patch_indices = np.ravel(patch_indices_per_timestep[n-1]) for index in previous_relevant_patch_indices: (patches[index]).set_visible(False) relevant_patch_indices = np.ravel(patch_indices_per_timestep[n]) for index in relevant_patch_indices: (patches[index]).set_visible(True) return patches, `patches` is a pre-generated list of patches (possibly large), that have already been added to an `axes` instance. This function is awfully time-consuming as the number of patches becomes large. One idea I had was to parallelize the `for` loop, but likely that won't work because of issues with the `axes` instance being accessed and modified in parallel -- so I am afraid of fruitlessly spending time there. Do I have any other options, or is parallelization possible? -- View this message in context: http://matplotlib.1069221.n5.nabble.com/What-are-my-options-for-speeding-up-a-custom-function-called-by-FuncAnimation-tp45562.html Sent from the matplotlib - users mailing list archive at Nabble.com.
Sorry Tom -- I missed your message, it seems. I suppose I'll leave the SO link for now because I got an answer which I accepted. In the future, I'll post the question here itself. -- View this message in context: http://matplotlib.1069221.n5.nabble.com/matplotlib-self-chachedRenderer-fails-assert-self-cachedRenderer-is-not-None-when-calling-draw-artis-tp45494p45561.html Sent from the matplotlib - users mailing list archive at Nabble.com.
This is coming out of the pandas plotting tools, you might get better answers on their mailing list. Tom On Sat, May 16, 2015 at 11:51 AM Juan Wu <wuj...@gm...> wrote: > Hi, List experts, > > I have a matplotlib problem when I tried to use a tool called HDDM. As > HDDM is another issue, I here just post my problem with Matplotlib. In > short, the error alarm appeard when I input fig = plt.figure(). I am a > beginner with those stuff. > > I would appreciate if anyone can give me any good pointers. > > Thanks so much, > Juan > > ================== > > In [8]: fig = plt.figure() > <matplotlib.figure.Figure at 0x13293890> > > In [9]: ax = fig.add_subplot(111, xlabel='RT', ylabel='count', > title='RT distributions') > > In [10]: for i, subj_data in data.groupby('subj_idx'): > ...: subj_data.rt.hist(bins=20, histtype='step', ax=ax) > ...: plt.savefig('hddm_demo_fig_00.pdf') > > <matplotlib.figure.Figure at 0x1354cb70> > Traceback (most recent call last): > > File "<ipython-input-15-3b0b3c83094c>", line 2, in <module> > subj_data.rt.hist(bins=20, histtype='step', ax=ax) > > File "C:\Anaconda\lib\site-packages\pandas\tools\plotting.py", line > 2830, in hist_series > raise AssertionError('passed axis not bound to passed figure') > > AssertionError: passed axis not bound to passed figure > > (relevant link: > https://groups.google.com/forum/#!topic/hddm-users/yBeIRJaHGwo > there very few experts view and reply questions) > > > ------------------------------------------------------------------------------ > One dashboard for servers and applications across Physical-Virtual-Cloud > Widest out-of-the-box monitoring support with 50+ applications > Performance metrics, stats and reports that give you Actionable Insights > Deep dive visibility with transaction tracing using APM Insight. > http://ad.doubleclick.net/ddm/clk/290420510;117567292;y > _______________________________________________ > Matplotlib-users mailing list > Mat...@li... > https://lists.sourceforge.net/lists/listinfo/matplotlib-users >
Hi, List experts, I have a matplotlib problem when I tried to use a tool called HDDM. As HDDM is another issue, I here just post my problem with Matplotlib. In short, the error alarm appeard when I input fig = plt.figure(). I am a beginner with those stuff. I would appreciate if anyone can give me any good pointers. Thanks so much, Juan ================== In [8]: fig = plt.figure() <matplotlib.figure.Figure at 0x13293890> In [9]: ax = fig.add_subplot(111, xlabel='RT', ylabel='count', title='RT distributions') In [10]: for i, subj_data in data.groupby('subj_idx'): ...: subj_data.rt.hist(bins=20, histtype='step', ax=ax) ...: plt.savefig('hddm_demo_fig_00.pdf') <matplotlib.figure.Figure at 0x1354cb70> Traceback (most recent call last): File "<ipython-input-15-3b0b3c83094c>", line 2, in <module> subj_data.rt.hist(bins=20, histtype='step', ax=ax) File "C:\Anaconda\lib\site-packages\pandas\tools\plotting.py", line 2830, in hist_series raise AssertionError('passed axis not bound to passed figure') AssertionError: passed axis not bound to passed figure (relevant link: https://groups.google.com/forum/#!topic/hddm-users/yBeIRJaHGwo there very few experts view and reply questions)