Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

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
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


This outputs the following: enter image description here

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:


enter image description here

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

share|improve this question
By the way, if you familiarize yourself with the 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
Ah! I did not know about np.random, that's great. –  exp1orer Aug 8 '14 at 23:31

2 Answers 2

up vote 10 down vote accepted

You need to get hold of the axes themselves. Probably the cleanest way is to change your last row:

lm = sns.lmplot('X','Y',df,col='Z',sharex=False,sharey=False)

Then you can get hold of the axes objects (an array of axes):

axes = lm.axes

After that you can tweak the axes properties



enter image description here

share|improve this answer

The lmplot function returns a FacetGrid instance. This object has a method called set, to which you can pass key=value pairs and they will be set on each Axes object in the grid.

Secondly, you can set only one side of an Axes limit in matplotlib by passing None for the value you want to remain as the default.

Putting these together, we have:

g = sns.lmplot('X', 'Y', df, col='Z', sharex=False, sharey=False)
g.set(ylim=(0, None))

enter image description here

share|improve this answer
Whoa, that's easy. Looking in the docs, it seems g.set changes every subplot. Is the g.axes approach the recommended way to set each of them separately? –  exp1orer Aug 8 '14 at 23:39
Yep, if you wanted to set some property on one (or more, but not all) of the facets then you should use the g.axes array, as DrV suggests. –  mwaskom Aug 8 '14 at 23:57

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.