train_class = train_df['Class'].value_counts().sortlevel()
my_colors = 'rgbkymc'  #red, green, blue, black, etc.
train_class.plot(kind='bar', color=my_colors)

I'm getting:

Value Error : Invalid RGBA argument : 'rgbkymc'

I can't get the reason why I'm getting this error as I have checked everything and it seems fine.

Can anyone help me identify the error, please?

KeyError                                  Traceback (most recent call last)
~\Anaconda3\lib\site-packages\matplotlib\colors.py in to_rgba(c, alpha)
131     try:
--> 132         rgba = _colors_full_map.cache[c, alpha]
133     except (KeyError, TypeError):  # Not in cache, or unhashable.

KeyError: ('rgbkymc', None)
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  • Perhaps you were looking for the colormap argument instead? – Martijn Pieters Jun 11 '18 at 16:52
  • Yeah, I'll try this – dhruv bhardwaj Jun 11 '18 at 16:54

Dataframe.plot() doesn't actually take a color argument. You'd have to drive a matplotlib.pyplot.bar() call directly if you wanted to use a simple sequence of colours (but note that there are better options, listed below).

If you do decide to use matplotlib.pyplot.bar() directly, then take into account that it's color argument then only takes either a single valid color value, so 'r' or 'k', or a sequence of such color values (the documentation for bar() calls it array like). A list of names would work:

my_colors = ['r', 'g', 'b', 'k', 'y', 'm', 'c']  # red, green, blue, black, etc.

plt.bar(len(train_class), train_class, color=my_colors)

The documentation states that the sequence should be equal in length to the number of bars plotted:

The optional arguments color, edgecolor, linewidth, xerr, and yerr can be either scalars or sequences of length equal to the number of bars.

However, it is just easier to pass in a color map to Dataframe.plot() here. Color maps as a handy and fast path towards distinct bar colors. You can pass one in as the colormap keyword argument, this can be a named map (as a string):

train_class.plot(kind='bar', colormap='Paired')

or an actual matplotlib colormap object from the matplotlib.cm module:

from matplotlib import cm

train_class.plot(kind='bar', colormap=cm.Paired)

If you wanted to stick with matplotlib.pyplot.bar(), but use a colormap, then create your series of colors from a colormap. Pandas uses np.linspace() for this so here we do too:

import numpy as np

paired_colors = cm.Paired(np.linspace(0, 1, num=len(train_class))
plt.bar(len(train_class), train_class, color=paired_colors)

For bar plots, I'd pick a qualitative colormap; each name is an attribute of the cm colormap module. In the above, cm.Paired is a one such color map. Calling the color map with a sequence of floats between 0.0 and 1.0 gives you back colours picked at each 'percentage' of the range. You could also pass in a sequence of integers to index individual colours instead.

Circling back to Pandas, you can create a colormap from a hand-picked sequence of colours too, with a matplotlib.colors.ListedColormap instance:

from matplotlib.colors import ListedColormap

my_colors = ['r', 'g', 'b', 'k', 'y', 'm', 'c']  # red, green, blue, black, etc.
my_colormap = ListedColormap(my_colors)

and then pass that to your dataframe .plot() call:

train_class.plot(kind='bar', colormap=my_colormap)
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  • @MartijnPieters Thanks for the update, but however i tried that and i made my colors list [(0.57999999999999996, 0.57999999999999996, 0.57999999999999996), (0.628, 0.628, 0.628), (0.628, 0.628, 0.628)...] and more and i do color=colors in the pandas plot function but it gives me all black bars... – U10-Forward Nov 18 '19 at 3:00
  • @U10-Forward: actually, I am misreading comments and getting things confused. DataFrame.plot doesn't take a colors argument. At all. Only a colormap is supported. Sorry about that, a commenter here confused me and threw me off. – Martijn Pieters Nov 18 '19 at 14:52
  • @U10-Forward: right, answer re-written to actually answer both the question correctly and your situation. – Martijn Pieters Nov 18 '19 at 15:07
  • Some of my values are zero so i get ValueError: Invalid RGBA argument: 0.0 – U10-Forward Nov 19 '19 at 2:44
  • Sorry to be wasting you time on this – U10-Forward Nov 19 '19 at 2:44

The question needs a slight modification as it would first raise the following error:

AttributeError: 'Series' object has no attribute 'sortlevel'

This is because sortlevel is deprecated since version 0.20.0. You should instead use sort_index in its place.

Plus, the letters symbolising the colors in the color parameter of the plot command need to be provided in a list and not in a string. You can read more about it on Specifying Colors on .

Hence, you can use this code:

train_class = train_df['Class'].value_counts().sort_index()
my_colors = ['r', 'g', 'b', 'k', 'y', 'm', 'c']  #red, green, blue, black, 'yellow', 'magenta' & 'cyan'
train_class.plot(kind = 'bar', color = my_colors)


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