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I would like to have an upper X axis with ticks at identical positions (on the axis) as the original x axis ticks (the tick labels can be different though). It seems easy enough to do, but I am not sure why the code below doesn't work:

import numpy as np
import matplotlib.pyplot as plt

fig = plt.figure()
ax1 = fig.add_subplot(111)

X = np.linspace(11,80,1000)
Y = 2*np.sin(X)*np.exp(-X/20.)

ax1.plot(X,Y)
ax2 = ax1.twiny()

old_ticks = ax1.get_xticks()
ax2.set_xticks(old_ticks)

plt.show()

The output is shown below: clearly, the ticks on the top axis are not in the same location on the axis as the ticks below (namely, on the top axis there are 7 ticks versus only 6 ticks on the bottom).

Why is this so?

Offset ticks on the second x axis

EDIT: Setting xlim (as suggested below) works only on initial plot, but not when one zooms in on different regions. I added a callback function to, upon zooming in/out, add the ticks on ax2 in the same location as they are on ax1, but this doesn't seem to work.

Also, the reason I'm using twiny is because eventually the shown tick values for ax2 will depend on the ax1 tick values in a non-linear way. I just want the ticks to be in the same position on the axis. import numpy as np import matplotlib.pyplot as plt

fig = plt.figure()
ax1 = fig.add_subplot(111)

X = np.linspace(11,80,1000)
Y = 2*np.sin(X)*np.exp(-X/20.)

ax1.plot(X,Y)
ax2 = ax1.twiny()

ax2.set_xlim(ax1.get_xlim())
ax2.set_xticks(ax1.get_xticks())

def on_xlim_changed(ax1):
    ax2.set_xlim(ax1.get_xlim())
    ax2.set_xticks(ax1.get_xticks())

ax1.callbacks.connect('xlim_changed',on_xlim_changed)

plt.show()
share|improve this question

try:

ax2.set_xlim(ax1.get_xlim())

also, if you just need ticks to be shown on the top, you do not need a twiny axis, and you may simply do

ax1.xaxis.set_ticks_position('both')
share|improve this answer
1  
this seems to work only when the plot is initially shown, but not when one zooms into different regions on the plot. The reason I want to use twiny is because I want to have the ticks in the same position (as on the bottom axis), but the tick labels will be different. I edited my question above to include the "zoom-in" clarification – Ron OGara Feb 24 '14 at 15:06

You should use the Locator functionality

import matplotlib.ticker as mticks

N = 5
ax1.get_xaxis().set_major_locator(mticks.LinearLocator(numticks=N))
ax2.get_xaxis().set_major_locator(mticks.LinearLocator(numticks=hN))

(doc) which will put N evenly spaced ticks on the axes.

The Formatters will then take care of formatting the labels.

Beware that this can lean to very strange looking labels. The reason the locations are jumping around is that AutoLocator, which is the default locator, tries to put the ticks at 'nice' locations (integers, even multiples etc) so you don't get tick labels that look like '1.52547841082'.

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