Putting 2 scale for x-axis in the same plot

I've seen examples of how to add 2 scales for y-axis in a single plot, with the command `twinx()`. However, I still couldn't figure out how to add 2 scales for the x-axis. In my case, I import the [x,y] data from MATLAB and plot them. I would like to have my original data of x(we can call it `x1`) displayed at the bottom of the figure, and the normalized x-data(we can call it `x2`) on the top of the figure. My code is:

``````from scipy.io import loadmat
import matplotlib.pyplot as plt
import numpy as np

fid_1 = 'beta_sweep_020.mat'

x = m1['vt_dX']
x1 = np.reshape(x, x.size)
x2 = x1 / (-466.0)
y = m1['vt_beta']
y1 = np.reshape(y, y.size)

# plot
fig = plt.figure()

plt.plot(abs(x1),y1,'r')
plt.show()
``````

Can anyone help me with this? Thanks.

-

Use `ax.twiny()`:

``````import matplotlib.pyplot as plt
import numpy as np

x1 = np.linspace(0,1000000,100)
x2 = x1 / (-466.0)
y1 = np.log(x1)

fig = plt.figure()
The location of the `x1`s and `x2`s are not aligned. So although the same y values are achieved, they do not occur at the same location on the two x-axes. You can see this more clearly by changing the line styles to `'rx'` and `'bo'`. –  unutbu Nov 30 '12 at 21:36