I know this is a bit old, but a search brought me to this question. I put this together when I couldn't find a good module for it. It's not much, but it's a good start if somebody else finds themselves here.

```
import matplotlib.pylab as plt
import numpy as np
import scipy.signal
def bode(G,f=np.arange(.01,100,.01)):
plt.figure()
jw = 2*np.pi*f*1j
y = np.polyval(G.num, jw) / np.polyval(G.den, jw)
mag = 20.0*np.log10(abs(y))
phase = np.arctan2(y.imag, y.real)*180.0/np.pi % 360
plt.subplot(211)
#plt.semilogx(jw.imag, mag)
plt.semilogx(f,mag)
plt.grid()
plt.gca().xaxis.grid(True, which='minor')
plt.ylabel(r'Magnitude (db)')
plt.subplot(212)
#plt.semilogx(jw.imag, phase)
plt.semilogx(f,phase)
plt.grid()
plt.gca().xaxis.grid(True, which='minor')
plt.ylabel(r'Phase (deg)')
plt.yticks(np.arange(0, phase.min()-30, -30))
return mag, phase
f=scipy.signal.lti([1],[1,1])
bode(f)
```

Edit: I am back here because somebody upvoted this answer, you should try Control Systems Library. They have implemented the bulk of the Matlab control systems toolbox with matching syntax and everything.