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I want to create a bar chart of two series (say 'A' and 'B') contained in a Pandas dataframe. If I wanted to just plot them using a different y-axis, I can use secondary_y:

df = pd.DataFrame(np.random.uniform(size=10).reshape(5,2),columns=['A','B'])
df['A'] = df['A'] * 100
df.plot(secondary_y=['A'])

but if I want to create bar graphs, the equivalent command is ignored (it doesn't put different scales on the y-axis), so the bars from 'A' are so big that the bars from 'B' are cannot be distinguished:

df.plot(kind='bar',secondary_y=['A'])

How can I do this in pandas directly? or how would you create such graph?

I'm using pandas 0.10.1 and matplotlib version 1.2.1.

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What do you mean by equivalent command does not work? Do you have no figure, or is the figure not what you expect? –  Nipun Batra May 13 '13 at 14:41
    
please post the error or describe what is not working –  Ryan Saxe May 13 '13 at 14:48
    
What have you tried to implement this by hand? Have you looked at the gallery? –  tcaswell May 13 '13 at 15:00
    
No, everything goes smoothly. Do you get same sized bars? Which versions are you using? –  ancechu May 13 '13 at 15:37
    
I see, sorry, I was totally missing that crucial line (now obvious in retrospect). This doesn't work in pandas 0.11 either, I recommend submitting this as issue on github. –  Andy Hayden May 13 '13 at 16:23

1 Answer 1

up vote 1 down vote accepted

Don't think pandas graphing supports this. Did some manual matplotlib code.. you can tweak it further

import pylab as pl
fig = pl.figure()
ax1 = pl.subplot(111,ylabel='A')
#ax2 = gcf().add_axes(ax1.get_position(), sharex=ax1, frameon=False, ylabel='axes2')
ax2 =ax1.twinx()
ax2.set_ylabel('B')
ax1.bar(df.index,df.A.values, width =0.4, color ='g', align = 'center')
ax2.bar(df.index,df.B.values, width = 0.4, color='r', align = 'edge')
ax1.legend(['A'], loc = 'upper left')
ax2.legend(['B'], loc = 'upper right')
fig.show()

enter image description here

I am sure there are ways to force the one bar further tweak it. move bars further apart, one slightly transparent etc.

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