2

Given Data

Can Someone tell how can I Find Monthly Revenue, sort it and Visualize it.

  Month&Year  |   Monthly Revenue
0   2016-11   |   261.9600
1   2016-11   |   731.9400
2   2016-06   |   14.6200
3   2015-10   |   957.5775
4   2015-10   |  22.3680
9989    2014-01  |  25.2480
9990    2017-02  |   91.9600
9991    2017-02  |  258.5760
9992    2017-02  |   29.6000
9993    2017-05  |   243.1600

How can I Display the sum of revenue on basis of individual months of different year

0

1 Answer 1

4
import pandas as pd
import matplotlib.pyplot as plt

# setup dataframe
data = {'Month&Year': ['2016-11', '2016-11', '2016-06', '2015-10', '2015-10', '2014-01', '2017-02', '2017-02', '2017-02', '2017-05'],
        'Monthly Revenue': [261.96, 731.94, 14.62, 957.5775, 22.368, 25.248, 91.96, 258.576, 29.6, 243.16]}

df = pd.DataFrame(data)

# convert the Month&Year column to a datetime column
df['Month&Year'] = pd.to_datetime(df['Month&Year'], format='%Y-%m')

# use the .dt accessor to groupby year and month and sum Monthly Revenue
dfg = df.groupby([df['Month&Year'].dt.year, df['Month&Year'].dt.month]).agg({'Monthly Revenue': sum})

# rename the index columns
dfg.index = dfg.index.set_names(['year', 'month'])

# display(dfg)
            Monthly Revenue
year month                 
2014 1              25.2480
2015 10            979.9455
2016 6              14.6200
     11            993.9000
2017 2             380.1360
     5             243.1600

# plot
dfg.plot.barh(figsize=(8, 5), legend=False)
plt.xlabel('Revenue')
plt.xscale('log')
plt.show()

enter image description here

Alternatively

  • Instead of grouping by year and month, groupby date.
# groupby 
dfg = df.groupby(df['Month&Year'].dt.date).agg({'Monthly Revenue': sum})

# plot
dfg.plot.barh(figsize=(8, 5), legend=False)
plt.xlabel('Revenue')
plt.ylabel('Date')
plt.xscale('log')
plt.show()

enter image description here

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.