TL'DR, the vertical bar charts are shown in a conventional way -- things line up from left to right. However, when it is converted to horizontal bar chart (from bar to barh), everything is upside-down. I.e., for a grouped bar chart, not only the order of the grouped bar is wrong, the order of the each group is wrong as well.

For e.g., the graph from http://dwheelerau.com/2014/05/28/pandas-data-analysis-new-zealanders-and-their-sheep/

enter image description here

If you look closely, you will find that the the bar and legend are in reverse order -- Beef shows on top in legend but on bottom in the graph.

As the simplest demo, I changed kind='bar', to kind='barh', from this graph https://plot.ly/pandas/bar-charts/#pandas-grouped-bar-chart and the result looks like this: https://plot.ly/7/~xpt/

I.e., the bars in the horizontal grouped bar chart is ordered upside-down.

How to fix it?

EDIT: @Ajean, it is actually not only the order of the grouped bar is wrong, the order of the each group is wrong as well. The graph from Simple customization of matplotlib/pandas bar chart (labels, ticks, etc.) shows it clearly:

the order of the each group is wrong

We can see that the order is unconventional too, because people would expect the graph to be top-down, with "AAA" at the top, not the bottom.

If you search for "Excel upside-down", you will find people are complaining about this in Excel all over the places. The Microsoft Excel has a fix for it, do Matplotlib/Panda/Searborn/Ploty/etc has a fix for it?

  • You could pass the bar handles into plt.legend manually, and order them however you want. – DilithiumMatrix Dec 3 '15 at 21:23
  • Nah, the problem is not the legend, take a look at plot.ly/7/~xpt, A, B, C, D is in correct order. It is the bar that are in wrong order. – xpt Dec 3 '15 at 21:34
  • 2
    Hmmm .... I'm don't think this is a bug per se, as much as a convention issue. The bars are typically listed in ascending order (i.e. the first element is "0", the second element is "1", etc.). And in the the case on display here that is "bottom-up" ("up" means "higher"), it makes sense that the first bars are at the bottom of each group. The issue is, I think, that the convention for a legend is "top-down" rather than "bottom-up". If you really want to reverse it, probably changing the legend convention would be easiest. – Ajean Dec 3 '15 at 22:54

I believe the joint wrong order of groups and subgroups boils down to a single feature: that the y axis increases upwards, as in a usual plot. Try reversing the y axis of your axes as in this pandas-less example:

import numpy as np
import matplotlib.pyplot as plt


#plot1: bar

#plot2: barh, wrong order

#plot3: barh with correct order: top-down y axis

Specifically for pandas, pandas.DataFrame.plot and its various plotting submethods return a matplotlib axes object, so you can invert its y axis directly:

ax = df.plot.barh()  # or df.plot(), or similar
  • No, it will hardly do. You will end up reversing the order of years: 1994-2012 to its reverse order. – CT Zhu Dec 4 '15 at 17:37
  • @CTZhu but that's kinda the point, isn't it? If in a bar plot 1994->2012 goes from left to right, then for a barh one might want the same order from top to bottom. OP's edit saying "it is actually not only the order of the grouped bar is wrong, the order of the each group is wrong as well" suggested to me that this is a valid solution. If he comes and tells me that it's not, I'll delete the answer. – Andras Deak Dec 4 '15 at 18:46
  • @AndrasDeak, Yes, Andras, that's exactly what I wanted. Could you throw in a pandas solution as well please? This is as far I can go myself. You start from there if you like. Thanks. – xpt Dec 4 '15 at 20:37
  • 3
    @xpt 1. your gist won't load for me for some reason. 2. I don't have pandas installed, hence my pandas-free answer. 3. I think you should be able to use the same solution: plt.gca() is an axes, and df.plot is supposed to return an axes too. So you should be able to do something along the lines of ax=df.plot(...); ax.invert_yaxis(). Can you confirm? – Andras Deak Dec 4 '15 at 20:49
  • YEP! Thank you very much! Demo here: gist.github.com/suntong/6572c4d339bdb98388a9 – xpt Dec 4 '15 at 20:53

I believe the simplest solution for this problem is to reverse the pandas dataframe before plotting. For example:

df = df.iloc[::-1]

In my opinion that is a bug in the pandas barh function. At least users should be able to pass an argument like reverse_order = True etc.


I will consider this to be a bug, i.e., the y position of the bars are not assigned correctly. The patch is however relatively simple:

This is only one right order of bars, and that is called..., the right order. Anything that is not the right order, is thus a buggy order. :p

In [63]:

print df
      Total_beef_cattle  Total_dairy_cattle  Total_sheep  Total_deer  \
1994           0.000000            0.000000     0.000000    0.000000   
2002         -11.025827           34.444950   -20.002034   33.858009   
2003          -8.344764           32.882482   -20.041908   37.229441   
2004         -11.895128           34.207998   -20.609926   42.707754   
2005         -12.366101           32.506699   -19.379727   38.499840   

      Total_pigs  Total_horses  
1994    0.000000      0.000000  
2002  -19.100637     11.811093  
2003  -10.766476     18.504488  
2004   -8.072078     13.376472  
2005  -19.230733   -100.000000  
In [64]:

ax = df.plot(kind='barh', sort_columns=True)

#Get the actual bars
bars = [item for item in ax.get_children() if isinstance(item, matplotlib.patches.Rectangle)]
bars = bars[:df.size]

#Reset the y positions for each bar
bars_y = [plt.getp(item, 'y') for item in bars]
for B, Y in zip(bars, np.flipud(np.array(bars_y).reshape(df.shape[::-1])).ravel()):

enter image description here


General fix is simple:

handles, labels = axis.get_legend_handles_labels()
# reverse to keep order consistent
axis.legend(reversed(handles), reversed(labels), loc='upper left')

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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