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I think this is quite easy but I searched the internet and matplotlib users mailing list and not able to find an answer. ax2 is an inset axes within the "ax" axes in figure "fig", which I make by following here: http://matplotlib.sourceforge.net/examples/pylab_examples/axes_demo.html

but now my problem is that I cannot fix the ax2 the exact position I want, it seems that draw() command change this:

In [352]:
ax2.set_position([0.125,0.63,0.25,0.25])

In [353]:
ax2.get_position()

Out[353]:
Bbox(array([[ 0.125,  0.63 ],
       [ 0.375,  0.88 ]]))

In [354]:
draw()

In [355]:
ax2.get_position()

Out[355]:
Bbox(array([[ 0.15625,  0.63   ],
       [ 0.34375,  0.88   ]]))

notice that, after "draw()" command, the x0 of ax2 changed. could anyone give any hints?

thanks!

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What data is being plotted? I'm particularly interested in the x axis scaling. –  Stacey Anne Jun 17 '12 at 18:02
    
what do you mean by a axis scaling? –  wiswit Jun 18 '12 at 19:58
    
I did a test on my side, and got different results: import matplotlib.pyplot as plt fig = plt.figure(figsize=plt.figaspect(0.75)) ax2 = fig.add_subplot(111) ax2.set_position([0.125,0.63,0.25,0.25]) ax2.get_position() Bbox(array([[ 0.125, 0.63 ],[ 0.375, 0.88 ]])) plt.draw() ax2.get_position() Bbox(array([[ 0.125, 0.63 ],[ 0.375, 0.88 ]])) –  Stacey Anne Jun 19 '12 at 17:15
    
As for x-axis scaling, I misunderstood the question originally. :) I was referring to the range in which the x-data falls. That shouldn't be relevant. –  Stacey Anne Jun 19 '12 at 17:27
    
yes. I forgot to add following comments. Actually in my script there is one step to set equal aspect. I guess when I use draw, it applies this command and the default anchor for set_aspect ('equal') is 'center' I guess. That's why the position changed. –  wiswit Jun 20 '12 at 20:36

1 Answer 1

Try setting the position by specifying the parameters as a Bbox object:

>>> ax2.set_position(matplotlib.transforms.Bbox(array([[0.125,0.63],[0.25,0.25]])))
>>> ax2.get_position()
Bbox(array([[ 0.125,  0.63 ],
       [ 0.25 ,  0.25 ]]))
>>> draw()
>>> ax2.get_position()
Bbox(array([[ 0.125,  0.63 ],
       [ 0.25 ,  0.25 ]]))

With this you can see the settings are round-tripping like you would expect.

In addition, you could instead look at the results as a tuple like so:

>>> a.set_position([0.125,0.63,0.25,0.25])
>>> a.get_position().bounds
(0.125, 0.63, 0.25, 0.25)

It just depends if you want to look at the location/position as a bounding box: x0,y0 by x1,y1, or instead by a location and size: x,y,width,height.

Currently you are telling it to set a x,y,width,height, then it's telling you the x0,y0,x1,y1.

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