I know this question is a couple years old, but since there is no accepted answer, I'll add what works for me.

You could just plot the values in your graph, and then generate another set of values for the coordinates of the best fit line and plot that over your original graph. For example, see the following code:

```
import matplotlib.pyplot as plt
import numpy as np
# Some dummy data
x = [1,2,3,4,5,6,7]
y = [1,3,3,2,5,7,9]
# Find the slope and intercept of the best fit line
slope,intercept=np.polyfit(x,y,1)
# Create a list of values in the best fit line
ablineValues = []
for i in x:
ablineValues.append(slope*i+intercept)
# Plot the best fit line over the actual values
plt.plot(x,y,'--')
plt.plot(x, ablineValues, 'b')
plt.title(slope)
plt.show()
```

`axvline`

,`axvspan`

,`axhline`

, and`axhspan`

, which are similar vertical and horizontal functions, but the usual way in matplotlib is to just plot a line at the given slope (which means that you'll eventually zoom beyond it, if you're working interactively.). The "correct" way of doing it (i.e. so that it's always spans the axis no matter where you zoom) is actually a bit complicated, though the framework (`matplotlib.transforms`

) is there. – Joe Kington Oct 29 '11 at 21:11`base`

graphics system for which`abline`

exists) so less to worry about there (it's a good and bad thing I suppose). – crippledlambda Oct 29 '11 at 21:36