# How to plot a histogram by different groups in matplotlib?

I have a table like:

``````value    type
10       0
12       1
13       1
14       2
``````

Generate a dummy data:

``````import numpy as np

value = np.random.randint(1, 20, 10)
type = np.random.choice([0, 1, 2], 10)
``````

I want to accomplish a task in Python 3 with matplotlib (v1.4):

• plot a histogram of `value`
• group by `type`, i.e. use different colors to differentiate types
• the position of the "bars" should be "dodge", i.e. side by side
• since the range of value is small, I would use `identity` for bins, i.e. the width of a bin is 1

The questions are:

• how to assign colors to bars based on the values of `type` and draw colors from colormap (e.g. `Accent` or other cmap in matplotlib)? I don't want to use named color (i.e. `'b', 'k', 'r'`)
• the bars in my histogram overlap each other, how to "dodge" the bars?

Note

1. I have tried on Seaborn, matplotlib and `pandas.plot` for two hours and failed to get the desired histogram.
2. I read the examples and Users' Guide of matplotlib. Surprisingly, I found no tutorial about how to assign colors from colormap.
3. I have searched on Google but failed to find a succinct example.
4. I guess one could accomplish the task with `matplotlib.pyplot`, without import a bunch of modules such as `matplotlib.cm`, `matplotlib.colors`.

For your first question, we can create a dummy column equal to 1, and then generate counts by summing this column, grouped by value and type.

For your second question you can pass the colormap directly into `plot` using the `colormap` parameter:

``````import pandas as pd
import matplotlib.pyplot as plt
import matplotlib.cm as cm
import seaborn
seaborn.set() #make the plots look pretty

df = pd.DataFrame({'value': value, 'type': type})
df['dummy'] = 1
ag = df.groupby(['value','type']).sum().unstack()
ag.columns = ag.columns.droplevel()

ag.plot(kind = 'bar', colormap = cm.Accent, width = 1)
plt.show()
``````

• Thank you. Could I use `hist` to get the same result, without counting by pivot? Jul 7 '15 at 9:29
• Hmm i'm not sure how you'd achieve this with `hist`, I only have used hist to plot a single series. Jul 7 '15 at 23:33

Whenever you need to plot a variable grouped by another (using color), seaborn usually provides a more convenient way to do that than matplotlib or pandas. So here is a solution using the seaborn `histplot` function:

``````import numpy as np                 # v 1.19.2
import pandas as pd                # v 1.1.3
import matplotlib.pyplot as plt    # v 3.3.2
import seaborn as sns              # v 0.11.0

# Set parameters for random data
rng = np.random.default_rng(seed=1) # random number generator
size = 50
xmin = 1
xmax = 20

# Create random dataframe
df = pd.DataFrame(dict(value = rng.integers(xmin, xmax, size=size),
val_type = rng.choice([0, 1, 2], size=size)))

# Create histogram with discrete bins (bin width is 1), colored by type
fig, ax = plt.subplots(figsize=(10,4))
sns.histplot(data=df, x='value', hue='val_type', multiple='dodge', discrete=True,
edgecolor='white', palette=plt.cm.Accent, alpha=1)

# Create x ticks covering the range of all integer values of df['value']
ax.set_xticks(np.arange(df['value'].min(), df['value'].max()+1))

sns.despine()
ax.get_legend().set_frame_on(False)

plt.show()
``````

As you can notice, this being a histogram and not a bar plot, there is no space between the bars except where values of the x axis are not present in the dataset, like for values 12 and 14.

Seeing as the accepted answer provided a bar plot in pandas and that a bar plot may be a relevant choice for displaying a histogram in certain situations, here is how to create one with seaborn using the `countplot` function:

``````# For some reason the palette argument in countplot is not processed the
# same way as in histplot so here I fetch the colors from the previous
# example to make it easier to compare them
colors = [c for c in set([patch.get_facecolor() for patch in ax.patches])]

# Create bar chart of counts of each value grouped by type
fig, ax = plt.subplots(figsize=(10,4))
sns.countplot(data=df, x='value', hue='val_type', palette=colors,
saturation=1, edgecolor='white')