I have the following function in which I wish to interpolate from a table at a specified value. The trick is that the table is defined in a log-log sense such that straight lines between points in log-log are really exponential. Thus I can't really use any of the typical scipy interpolate routines.

So here's what I have:

```
PSD = np.array([[5.0, 0.001],
[25.0, 0.03],
[30.0, 0.03],
[89.0, 0.321],
[90.0, 1.0],
[260.0, 1.0],
[261.0, 0.03],
[359.0, 0.03],
[360.0, 0.5],
[520.0, 0.5],
[540.0, 0.25],
[780.0, 0.25],
[781.0, 0.03],
[2000.0, 0.03]])
def W_F(freq):
'''
A line connecting two points in a log-log plot are exponential
'''
w_f = []
for f in freq:
index = np.searchsorted(PSD[:,0], f)
if index <= 0:
w_f.append(PSD[:,1][0])
elif index + 1>= PSD.shape[0]:
w_f.append(PSD[:,1][-1])
x0 = PSD[:,0][index-1]
F0 = PSD[:,1][index-1]
x1 = PSD[:,0][index]
F1 = PSD[:,1][index]
w_f.append(F0*(f/x0)**(math.log(F1/F0)/math.log(x1/x0)))
return np.array(w_f)
```

I'm looking for a better, cleaner, "numpy-ish" way to implement this

`for freq = in f:`

- is just a transcription typo or does your code not work? Also, shouldn't you be using freq in the second to last line instead of f? – Justin Peel Nov 19 '10 at 23:01