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I'm working with a pandas.groupby object to which I have applied a function as such:

x = data.groupby(['congruent', 'contrast']).apply(lambda s: s.mean())[['cresp1', 'cresp2']]

Output of print x:

                      cresp1    cresp2
congruent contrast                    
False     1.0       0.423077  0.442308
          2.0       0.537037  0.481481
          2.5       0.576923  0.634615
          3.0       0.568182  0.500000
          3.5       0.675000  0.750000
          4.0       0.687500  0.604167
          5.0       0.687500  0.875000
          10.0      0.869565  0.913043
True      1.0       0.568182  0.386364
          2.0       0.547619  0.500000
          2.5       0.522727  0.477273
          3.0       0.557692  0.634615
          3.5       0.571429  0.928571
          4.0       0.770833  0.937500
          5.0       0.791667  0.937500
          10.0      0.820000  0.920000

I would like to plot these data into two distinct subplots, one for all values where congruent == False and the other for all values where congruent == True.

I tried doing x.plot(subplots=True), but this creates a subplot for each column (i.e. cresp1 vs cresp2), which is not what I want:

enter image description here

How can I do what I'm trying to do?

share|improve this question
up vote 3 down vote accepted

You can draw it yourself:

import pylab as pl
import io
import pandas as pd

txt = """congruent contrast  cresp1    cresp2
False     1.0       0.423077  0.442308
          2.0       0.537037  0.481481
          2.5       0.576923  0.634615
          3.0       0.568182  0.500000
          3.5       0.675000  0.750000
          4.0       0.687500  0.604167
          5.0       0.687500  0.875000
          10.0      0.869565  0.913043
True      1.0       0.568182  0.386364
          2.0       0.547619  0.500000
          2.5       0.522727  0.477273
          3.0       0.557692  0.634615
          3.5       0.571429  0.928571
          4.0       0.770833  0.937500
          5.0       0.791667  0.937500
          10.0      0.820000  0.920000"""

df = pd.read_csv(io.BytesIO(txt), delim_whitespace=True).ffill()
df = df.set_index(["congruent","contrast"])
levels = df.index.levels[0]
fig, axes = pl.subplots(len(levels))

for level, ax in zip(levels, axes):
    df.loc[level].plot(ax=ax, title=str(level))

output:

enter image description here

share|improve this answer
    
Beautiful, thank you! – blz Nov 19 '13 at 14:26
    
I really like this HYRY's solution. Is there a good way to use it to place 4 Graphs on an 2x2 grid? – Markus W Aug 4 '15 at 14:39

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