Like @pwagner, I would go for a polar plot, but for 3D one. Basically what you can do is re-map your winds to polar degrees, as in example below:

```
angles = {'east':0, 'northeast':np.pi/4, 'north':np.pi/2, 'northwest':3*np.pi/4,
'west':np.pi, 'southwest':5*np.pi/4, 'south':3*np.pi/2, 'southeast':7*np.pi/4}
wind_angle = np.array([angles[i] for i in wind])
```

This will give you wind directions; then you can transform your (wind, speed) coordinates to cartesian and plot it by 3D scatter. You even can code your temperature in colormap, with full example shown below:

```
import numpy as np
from matplotlib import cm
from matplotlib import pyplot as plt
fig = plt.figure()
ax = fig.add_subplot(111, projection='3d')
wind_dirs = ['east', 'northeast', 'north', 'northwest',
'west', 'southwest', 'south', 'southeast']
# data
speed = np.random.uniform(0,1.25,100)
temp = np.random.uniform(-10,20,100)
wind = [wind_dirs[i] for i in np.random.randint(8, size=100)]
#transform data to cartesian
angles = {'east':0, 'northeast':np.pi/4, 'north':np.pi/2, 'northwest':3*np.pi/4,
'west':np.pi, 'southwest':5*np.pi/4, 'south':3*np.pi/2, 'southeast':7*np.pi/4}
wind_angle = np.array([angles[i] for i in wind])
X,Y = speed*np.cos(wind_angle),speed*np.sin(wind_angle)
ax.scatter3D(X, Y, temp, c = temp, cmap=cm.bwr)
ax.set_zlabel('Temp')
plt.show()
```

which results in a nice graph which can be rotated and zoomed at: