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I'm trying to generate bar plots from a DataFrame like this:

            Pre    Post
 Measure1   0.4    1.9

These values are median values I calculated from elsewhere, and I have also their variance and standard deviation (and standard error, too). I would like to plot the results as a bar plot with the proper error bars, but specifying more than one error value to yerr yields an exception:

# Data is a DataFrame instance
fig = data.plot(kind="bar", yerr=[0.1, 0.3])

[...]
ValueError: In safezip, len(args[0])=1 but len(args[1])=2

If I specify a single value (incorrect) all is fine. How can I actually give each column its correct error bar?

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1 Answer 1

up vote 4 down vote accepted

What is your data shape ?

For an n-by-1 data vector, you need a n-by-2 error vector (positive error and negative error ) :

import pandas as pd 
import numpy as np
import matplotlib.pyplot as plt


df2 = pd.DataFrame( [  0.4 , 1.9 ] )
df2.plot(kind='bar', yerr = [ [0.1,3.0] , [3.0,0.1]]  )

plt.show()
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The shape is 1 row and 2 columns. I tried the above with my data and it still errors out. –  Einar Oct 23 '12 at 13:37
    
Can you just flatten your matrix into a vector like above ? Anyway, I've looked deeper into pandas.DataFrame.plot and I didn't find a way to plot errors bars for matrix datas. You may have to fall back on mathplotlib : MatplotlibBarPlots –  georgesl Oct 23 '12 at 14:06
    
I've had better luck by transposing the matrix: like that it works. –  Einar Oct 24 '12 at 15:48

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