In Pandas, I am doing:

bp = p_df.groupby('class').plot(kind='kde')

p_df is a dataframe object.

However, this is producing two plots, one for each class. How do I force one plot with both classes in the same plot?


Version 1:

You can create your axis, and then use the ax keyword of DataFrameGroupBy.plot to add everything to these axes:

import matplotlib.pyplot as plt

p_df = pd.DataFrame({"class": [1,1,2,2,1], "a": [2,3,2,3,2]})
fig, ax = plt.subplots(figsize=(8,6))
bp = p_df.groupby('class').plot(kind='kde', ax=ax)

This is the result:


Unfortunately, the labeling of the legend does not make too much sense here.

Version 2:

Another way would be to loop through the groups and plot the curves manually:

classes = ["class 1"] * 5 + ["class 2"] * 5
vals = [1,3,5,1,3] + [2,6,7,5,2]
p_df = pd.DataFrame({"class": classes, "vals": vals})

fig, ax = plt.subplots(figsize=(8,6))
for label, df in p_df.groupby('class'):
    df.vals.plot(kind="kde", ax=ax, label=label)

This way you can easily control the legend. This is the result:



Another approach would be using seaborn module. This would plot the two density estimates on the same axes without specifying a variable to hold the axes as follows (using some data frame setup from the other answer):

import pandas as pd
import seaborn as sns
import matplotlib.pyplot as plt
%matplotlib inline

# data to create an example data frame
classes = ["c1"] * 5 + ["c2"] * 5
vals = [1,3,5,1,3] + [2,6,7,5,2]
# the data frame 
df = pd.DataFrame({"cls": classes, "indices":idx, "vals": vals})

# this is to plot the kde
sns.kdeplot(df.vals[df.cls == "c1"],label='c1');
sns.kdeplot(df.vals[df.cls == "c2"],label='c2');

# beautifying the labels

This results in the following image.

Resulting image from the code given above.

  • what if I want the actual values and not the densities? – kRazzy R May 4 '18 at 13:30
  • 3
    Notice that in this way you aren't plotting grouped data, as the question requires, rather you are slicing the data frame in two sub-data frames and adding them to the same plot. This solution isn't applicable if you have many groups (especially if you don't know what the groups actually are). – gented Jan 7 '19 at 14:12
import matplotlib.pyplot as plt
p_df.groupby('class').plot(kind='kde', ax=plt.gca())

Maybe you can try this:

fig, ax = plt.subplots(figsize=(10,8))
classes = list(df.class.unique())
for c in classes:
    df2 = data.loc[data['class'] == c]
    df2.vals.plot(kind="kde", ax=ax, label=c)
  • There are two easy methods to plot each group in the same plot.
    1. When using pandas.DataFrame.groupby, the column to be plotted, (e.g. the aggregation column) should be specified.
    2. Use seaborn.kdeplot or seaborn.displot and specify the hue parameter
  • Using pandas v1.2.4, matplotlib 3.4.2, seaborn 0.11.1
  • The OP is specific to plotting the kde, but the steps are the same for many plot types (e.g. kind='line', sns.lineplot, etc.).

Imports and Sample Data

  • For the sample data, the groups are in the 'kind' column, and the kde of 'duration' will be plotted, ignoring 'waiting'.
import pandas as pd
import seaborn as sns

df = sns.load_dataset('geyser')

# display(df.head())
   duration  waiting   kind
0     3.600       79   long
1     1.800       54  short
2     3.333       74   long
3     2.283       62  short
4     4.533       85   long

Plot with pandas.DataFrame.plot

  • Reshape the data using .groupby or .pivot


  • Specify the aggregation column, ['duration'], and kind='kde'.
ax = df.groupby('kind')['duration'].plot(kind='kde', legend=True)


ax = df.pivot(columns='kind', values='duration').plot(kind='kde')

Plot with seaborn.kdeplot

  • Specify hue='kind'
ax = sns.kdeplot(data=df, x='duration', hue='kind')

Plot with seaborn.displot

  • Specify hue='kind' and kind='kde'
fig = sns.displot(data=df, kind='kde', x='duration', hue='kind')


enter image description here

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