I'm using Seaborn's lmplot to plot a linear regression, dividing my dataset into two groups with a categorical variable.

For both x and y, I'd like to manually set the *lower bound* on both plots, but leave the *upper bound* at the Seaborn default.
Here's a simple example:

```
import pandas as pd
import seaborn as sns
import random
n = 200
random.seed(2014)
base_x = [random.random() for i in range(n)]
base_y = [2*i for i in base_x]
errors = [random.uniform(0,1) for i in range(n)]
y = [i+j for i,j in zip(base_y,errors)]
df = pd.DataFrame({'X': base_x,
'Y': y,
'Z': ['A','B']*(n/2)})
mask_for_b = df.Z == 'B'
df.loc[mask_for_b,['X','Y']] = df.loc[mask_for_b,] *2
sns.lmplot('X','Y',df,col='Z',sharex=False,sharey=False)
```

This outputs the following:

But in this example, I'd like the xlim and the ylim to be (0,*) . I tried using sns.plt.ylim and sns.plt.xlim but those only affect the right-hand plot. Example:

```
sns.plt.ylim(0,)
sns.plt.xlim(0,)
```

How can I access the xlim and ylim for each plot in the FacetGrid?

`numpy.random`

module, you can save yourself a lot of time generating random data (which can be a very useful thing to do!). For example, you could get`base_x`

and`base_y`

with`base_x = np.random.rand(n); base_y = base_x * 2`

. The`y`

variable can then be similarly generated with vectorized operations. – mwaskom Aug 8 '14 at 23:23