45

I have a dataframe that looks like the following

   color  x   y
0    red  0   0
1    red  1   1
2    red  2   2
3    red  3   3
4    red  4   4
5    red  5   5
6    red  6   6
7    red  7   7
8    red  8   8
9    red  9   9
10  blue  0   0
11  blue  1   1
12  blue  2   4
13  blue  3   9
14  blue  4  16
15  blue  5  25
16  blue  6  36
17  blue  7  49
18  blue  8  64
19  blue  9  81

I ultimately want two lines, one blue, one red. The red line should essentially be y=x and the blue line should be y=x^2

When I do the following:

df.plot(x='x', y='y')

The output is this:

Is there a way to make pandas know that there are two sets? And group them accordingly. I'd like to be able to specify the column 'color' as the set differentiator

37

Another simple way is to use the pivot function to format the data as you need first.

df.plot() does the rest

df = pd.DataFrame([
    ['red', 0, 0],
    ['red', 1, 1],
    ['red', 2, 2],
    ['red', 3, 3],
    ['red', 4, 4],
    ['red', 5, 5],
    ['red', 6, 6],
    ['red', 7, 7],
    ['red', 8, 8],
    ['red', 9, 9],
    ['blue', 0, 0],
    ['blue', 1, 1],
    ['blue', 2, 4],
    ['blue', 3, 9],
    ['blue', 4, 16],
    ['blue', 5, 25],
    ['blue', 6, 36],
    ['blue', 7, 49],
    ['blue', 8, 64],
    ['blue', 9, 81],
], columns=['color', 'x', 'y'])

df = df.pivot(index='x', columns='color', values='y')

df.plot()

result

pivot effectively turns the data into:

enter image description here

  • 3
    this is much more elegant – nivniv Jan 21 at 19:56
  • agreed ^ found using pd.crosstab a tad easier, this works really well, thanks. – Datanovice Jan 31 at 9:36
60

You could use groupby to split the DataFrame into subgroups according to the color:

for key, grp in df.groupby(['color']):

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

df = pd.read_table('data', sep='\s+')
fig, ax = plt.subplots()

for key, grp in df.groupby(['color']):
    ax = grp.plot(ax=ax, kind='line', x='x', y='y', c=key, label=key)

plt.legend(loc='best')
plt.show()

yields enter image description here

  • ax = grp.plot(ax=ax, kind='line', x='x', y='y', c=key, label=key) adding the "label" kwarg would save you manipulating the legend afterwards. – ErnestScribbler Dec 24 '17 at 11:16
  • @ErnestScribbler: Thanks for the improvement! – unutbu Dec 24 '17 at 12:48
  • Couldn't make the solution work because my dataset wasn't colors and the parameter 'c' happens to be plot line color. In the OP's case it was fine but it will fail for everyone else. If you drop that parameter this fantastic solution will work on all other datasets as well. – JKJ Jun 17 at 16:41
7

If you have seaborn installed, an easier method that does not require you to perform pivot:

import seaborn as sns

sns.lineplot(data=df, x='x', y='y', hue='color')
-3

You can use this code to get your desire output

import pandas as pd
import matplotlib.pyplot as plt
df = pd.DataFrame({'color': ['red','red','red','blue','blue','blue'], 'x': [0,1,2,3,4,5],'y': [0,1,2,9,16,25]})
print df

  color  x   y
0   red  0   0
1   red  1   1
2   red  2   2
3  blue  3   9
4  blue  4  16
5  blue  5  25

To plot graph

a = df.iloc[[i for i in xrange(0,len(df)) if df['x'][i]==df['y'][i]]].plot(x='x',y='y',color = 'red')
df.iloc[[i for i in xrange(0,len(df)) if df['y'][i]== df['x'][i]**2]].plot(x='x',y='y',color = 'blue',ax=a)

plt.show()

Output The output result will look like this

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