I think you have the right idea, except that the colors will be more distinguishable if you pass the colormap `hsv`

numbers which are spread out over the range (0,1):

```
hsv = plt.get_cmap('hsv')
hsv(float(i)/(len(data)-1))
```

or, using NumPy:

```
colors = hsv(np.linspace(0, 1.0, len(kinds)))
```

For example:

```
import matplotlib.pyplot as plt
import matplotlib.dates as md
import numpy as np
import datetime as dt
import scipy.interpolate as interpolate
dates = [dt.date(year, 9, 1) for year in range(2003, 2009)]
t = map(md.date2num, dates)
jec = (100, 70, 125, 150, 300, 250)
plt.plot(dates, jec, 'k.', markersize = 20)
new_t = np.linspace(min(t), max(t), 80)
new_dates = map(md.num2date, new_t)
kinds = ('cubic', 'quadratic', 'slinear', 'nearest', 'linear', 'zero', 4, 5)
colors = plt.get_cmap('jet')(np.linspace(0, 1.0, len(kinds)))
for kind, color in zip(kinds, colors):
new_jec = interpolate.interp1d(t, jec, kind=kind)(new_t)
plt.plot(new_t, new_jec, '-', label=str(kind), color=color)
plt.legend(loc = 'best')
plt.show()
```