I tried hard, but I'm stuck with matplotlib here. Please overlook, that the mpl docs are a bit confusing to me . My question concerns the following:

I draw a symmetrical n*n matrix

`D`

with`matshow`

function. That works.I want to do the same thing, just with different order of (the n) items in

`D`

`D = [:,neworder] D = [neworder,:]`

Now, how do I make the ticks reproduce this neworder, preferably using additionally `MaxNLocator`

?

As far as I understand...

`set_xticklabels`

assigns labels to the ticks by order, independently of where the ticks are set?!
`set_xticks`

(mpl docs: 'Set the x ticks with list of ticks') here I'm really not sure what it does. Can somebody explain it precisely? I don't know, whether these functions are helpful in my case at all. Maybe even things are different between using a common xy plot and matshow.

```
import numpy as np
import matplotlib.pyplot as plt
fig = plt.figure()
ax = fig.gca()
D = np.arange(100).reshape(10,10)
neworder = np.arange(10)
np.random.shuffle(neworder)
D = D[:,neworder]
D = D[neworder, :]
# modify ticks somehow...
ax.matshow(D)
plt.show()
```

Referring to Paul's answer, think I tried smth like this. Using the `neworder`

to define positions and using it for the labels, I added `plt.xticks(neworder, neworder)`

as tick-modifier. For example with `neworder = [9 8 4 7 2 6 3 0 1 5]`

I get is this

The order of the labels is correct, but the ticks are not. The labels should be independently show the correct element independently of *where* the ticks are set. So where is the mistake?