# Less frequent ticks on the x axis in Pyplot

In a python plot, I have used xticks to tell my plot what values to put on the xaxis:

``````plt.xticks(np.arange(grid_resid.shape[1]),xp_int,rotation="vertical")
``````

Both (np.arange(grid_resid.shape[1]) and xp_int have 1830 values each:

[ 0 1 2 ..., 1827 1828 1829]

[ 53293 53294 53295 ..., 55120 55121 55122]

I have realised that I don't need a tick for each of the 1830 values. I instead want a tick only every 100 or so. I'm hoping that there's a simple way to do this.

Any help would be gratefully received. Thank you.

-

xticks, as you see, takes two parameters. The first specifies the location of the ticks, the second the labels.

In your case, the locations happen to be integers that can be used as keys to your labels. Thus you could easily do a tick every 100:

``````locs = np.arange(grid_resid.shape[1],step=100) # locations
plt.xticks( locs, xp_int[locs], rotation="vertical" )
``````
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But if "locs" is a range of values, is xp_int[locs] a valid expression? –  user1551817 Jun 7 at 22:49
Yes; there are quite a few different indexing methods in numpy: you can use individual indexes, slices, arrays of true/false (useful for things like x[x>4]), arrays of indexes, and so on. –  cge Jun 7 at 22:58
I get the error: plt.xticks(locs,xp_int[locs],rotation="vertical") TypeError: only integer arrays with one element can be converted to an index –  user1551817 Jun 7 at 23:23
Oh! That will happen if `xp_int` is a Python list, not a Numpy array. Try plt.xticks(locs, np.array(xp_int)[locs], rotation="vertical"), which will create a numpy array from xp_int first. –  cge Jun 8 at 2:08