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This is my first attempt at playing with Pandas library after attending Wesley's tutorial at pycon.

After poking around a bit with the dataframe I am glad I was able to massage the data in the way I wanted but having trouble in plotting it. I guess it also points to my naiveness with the matplotlib library.

What I have is pandas Series object with the following data. I would like to plot as a barplot with col 1 ('file') as the labels oriented vertically.

sample data here: http://pastebin.com/y2w0uJPQ

Thanks! -Abhi

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I assume you want something more than myserie.plot(kind='bar')? –  Avaris Mar 30 '12 at 7:03

2 Answers 2

up vote 11 down vote accepted

I've just implemented a stacked bar plot function in the git repository for pandas, will be part of the upcoming 0.7.3 release:

In [7]: df
Out[7]: 
          a         b         c
0  0.425199  0.564161  0.727342
1  0.174849  0.071170  0.679178
2  0.224619  0.331846  0.468959
3  0.654766  0.189413  0.868011
4  0.617331  0.715088  0.387540
5  0.444001  0.069016  0.417990
6  0.203908  0.689652  0.227135
7  0.382930  0.874078  0.571042
8  0.658687  0.493955  0.245392
9  0.758986  0.385871  0.455357

In [8]: df.plot(kind='barh', stacked=True)

Stacked Bar Plot

It properly handles positive and negative values (stacking negative values below the origin and positive values above)

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wow! looks what I was looking for! How do you make the vertical? –  moldovean Apr 14 at 14:26

Recently I have programmed a function to do something very similar. Here you have a simplified version:

from matplotlib.backends.backend_agg import FigureCanvasAgg as FigureCanvas
from matplotlib.figure import Figure
from matplotlib.colors import colorConverter
import matplotlib.lines as mlines
import matplotlib

def _add_legend(axes):
    'It adds the legend to the plot'
    box = axes.get_position()
    axes.set_position([box.x0, box.y0, box.width * 0.9, box.height])

    handles, labels = axes.get_legend_handles_labels()

    # sort by the labels
    handel_lables = sorted(zip(handles, labels), key=operator.itemgetter(1))
    handles, labels = zip(*handel_lables)

    axes.legend(handles, labels, bbox_to_anchor=(1.05, 1), loc=2,
                borderaxespad=0., prop={'size':LEGEND_FONT_SIZE},
                fancybox=True, numpoints=1)


def stacked_bars(matrix, fhand, bar_colors=None):
    'It draws stacked columns'
    bar_width = 1
    fig = Figure(figsize=FIGURE_SIZE)
    canvas = FigureCanvas(fig)
    axes = fig.add_subplot(111)
    nrows, ncols = matrix.shape

    bar_locs = range(0, nrows)
    cum_heights = numpy.zeros(nrows)
    for col_index, (col_name, column) in enumerate(matrix.iteritems()):
        color = bar_colors[col_index] if bar_colors is not None else None
        values = column.values
        axes.bar(bar_locs, values, color=color, bottom=cum_heights,
                 width=bar_width, label=col_name)
        cum_heights += values
    min_y, max_y = axes.get_ylim()

    #bar labels
    axes.set_xticks([l + bar_width * 0.4 for l in bar_locs])
    labels = axes.set_xticklabels([str(l) + '  ' for l in matrix.index.values],
                                  fontsize=AXIS_LABELS_FONT_SIZE)
    for label in labels:
        label.set_rotation('vertical')

    _add_legend(axes)

    canvas.print_figure(fhand, format=_get_format_from_fname(fhand.name))
fhand.flush()

I hope it helps you to get an idea.

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I think this function only handles positive values (you need to separate the positive and negative values when computing the cumulative heights) –  Wes McKinney Apr 8 '12 at 16:34
    
You're right, I was only concerned with positive values because in my case negative ones weren't allowed. –  Jose Blanca Apr 10 '12 at 9:01

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