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I have a barplot with different colors. I would like to make one bar stand out with brighter colors and the others faded. My guess is to use the keyword alpha on the bars to fade them, but I can not figure out how to make one keep the original color (= not faded with alpha keyword). I need help on this Here is my code:

from matplotlib import pyplot as plt
from itertools import cycle, islice
import pandas as pd, numpy as np 

ds2=ds[['Factors', 'contribution']]

it = cycle(['b', 'green', 'y', 'pink','orange','cyan','darkgrey'])
my_colors=[next(it) for i in xrange(len(ds))]

figure(1, figsize=(10,8))

# Specify this list of colors as the `color` option to `plot`.
ds3.plot(kind='barh', stacked=True, color=my_colors, alpha=0.95)
plt.title('xxxxxxxxxxxxxx', fontsize = 10)

enter image description here

Here is my simple dataframe ds3

A            0.188137
B            0.160208
C            0.160208
D            0.151654
E            0.149489
F            0.135975
G            0.063206
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2 Answers 2

up vote 4 down vote accepted

I think mgilson's approach is the best were you add the data from Pandas in a Matplotlib command. You could however also capture the axes object which Pandas returns and then iterate over the artists to modify them.

This gets really tricky, because the bars don't have a label (its "_no_legend_") as an identifier, the only way to target a specific bar is to look-up its position in the index of the original DataFrame. Any change, like sorting, in the order between plotting and looking it up will give a wrong result!

import pandas as pd

df = pd.DataFrame({'contribution': [0.188137,0.160208,0.160208,0.151654,0.149489,0.135975,0.063206]}

colors = ['b', 'green', 'y', 'pink','orange','cyan','darkgrey']

ax = df.plot(kind='barh', color=colors, legend=False)

for bar in ax.patches:

highlight = 'D'
pos = df.index.get_loc(highlight)


enter image description here

So this example gives only a little bit of insight in how Pandas and Matplotlib work together. I don't recommend actually using it and suggest just to go with mgnilson's approach.

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Thank you and also thanks for the robustness tip!! –  jonas Dec 5 '13 at 13:09

Why not plot the special bar in a separate plot command?

import matplotlib.pyplot as plt

fig = plt.figure()
ax = fig.add_subplot(111)

colors = list('rgbkm')
data_y = [1,2,4,5,6]
data_x = [1,1,1,1,1]

ax.barh(data_y, data_x, color=colors, alpha=0.25)

# Plot the special bar separately ...
ax.barh([3], [1], color='b')

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I wonder if you could mix a matplotlib xkcd type plot with a standard bar chart... That would really emphasize some bars over others... –  mgilson Dec 5 '13 at 7:54
@mgilsen, objects are only affected if they are created after xkdc(), so if you plot the single bar before and the rest after there wont be a problem. For example: nbviewer.ipython.org/gist/RutgerK/7801831 –  Rutger Kassies Dec 5 '13 at 8:16
@RutgerKassies -- Neat. I really didn't expect that to work. I don't currently even have maplotlib1.3 installed, so I couldn't play around with it... But I did want to mention it just for fun :). –  mgilson Dec 5 '13 at 8:18
Thanks, however do you have any suggestions to how I can integrate this into my code above... –  jonas Dec 5 '13 at 8:24
@jonas -- Unfortunately I'm not at all familiar with pandas... just numpy and matplotlib. I'll add the pandas tag and see if any of that crowd can chime in here... –  mgilson Dec 5 '13 at 8:30

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