After plotting in Matlab we do
caxis(max(caxis()) - [0.5, 0]) to scale the color limits to go from the current max color limit to, say, 0.5 below this max. This works because
caxis() in Matlab both gets and sets the color limits. How does one do this in matplotlib?
That is, I want to achieve the following:
import numpy.random, numpy, pylab arr = numpy.random.randn(100,100) pylab.figure() pylab.imshow(arr) pylab.colorbar() pylab.clim([numpy.max(arr.ravel())-0.5, numpy.max(arr.ravel())]) # [*] pylab.show()
without the asterisked call to
pylab.clim() having recourse to
arr, the array being plotted. In other words, how can I get the current figure's "clim" in matplotlib?