# How do I use scipy.interpolate.splrep to interpolate a curve?

Using some experimental data, I cannot for the life of me work out how to use splrep to create a B-spline. The data are here: http://ubuntuone.com/4ZFyFCEgyGsAjWNkxMBKWD

Here is an excerpt:

``````#Depth  Temperature
1   14.7036
-0.02   14.6842
-1.01   14.7317
-2.01   14.3844
-3  14.847
-4.05   14.9585
-5.03   15.9707
-5.99   16.0166
-7.05   16.0147
``````

and here's a plot of it with depth on y and temperature on x:

Here is my code:

``````import numpy as np
from scipy.interpolate import splrep, splev

tdata = np.genfromtxt('t-data.txt',
depth = tdata[:, 0]
temp = tdata[:, 1]

# Find the B-spline representation of 1-D curve:
tck = splrep(depth, temp)
### fails here with "Error on input data" returned. ###
``````

I know I am doing something bleedingly stupid, but I just can't see it.

-

You just need to have your values from smallest to largest :). It shouldn't be a problem for you @a different ben, but beware readers from the future, `depth[indices]` will throw a `TypeError` if depth is a list instead of a numpy array!

``````>>> indices = np.argsort(depth)
>>> depth = depth[indices]
>>> temp = temp[indices]
>>> splrep(depth, temp)
(array([-7.05, -7.05, -7.05, -7.05, -5.03, -4.05, -3.  , -2.01, -1.01,
1.  ,  1.  ,  1.  ,  1.  ]), array([ 16.0147    ,  15.54473241,  16.90606794,  14.55343229,
15.12525673,  14.0717599 ,  15.19657895,  14.40437622,
14.7036    ,   0.        ,   0.        ,   0.        ,   0.        ]), 3)
``````

Hat tip to @FerdinandBeyer for the suggestion of `argsort` instead of my ugly "zip the values, sort the zip, re-assign the values" method.

-
You should probably use the `np.argsort()` function to sort the data: `indices = np.argsort(depth); depth = depth[indices]; temp = temp[indices]`. This saves you the list-of-tuples detour. –  Ferdinand Beyer Apr 16 '12 at 8:24
@FerdinandBeyer That's a much better solution than mine! Editing it in now. –  Nolen Royalty Apr 16 '12 at 8:25
I got an error when I tried to do `depth[indices]` but please let me know if there is a nicer way than `[depth[i] for i in indices]`. Either way it's a much cleaner solution, thanks. –  Nolen Royalty Apr 16 '12 at 8:31
`depth[indices]` is equivalent to `np.array([depth[i] for i in indices])`, but much faster! If you get an error (what error?!), make sure that `depth` is a NumPy array, not a list! I used this approach on the OP's posted data and it works fine. –  Ferdinand Beyer Apr 16 '12 at 8:45
@adifferentben: It is the advanced slicing syntax: `array[start:stop:step]`. `a[::-1]` means: whole array (implicit start and stop) with step -1, i.e., reversed. `x, y = tdata.T` is a convenient way to create views for the two columns. –  Ferdinand Beyer Apr 16 '12 at 12:46