10

I have this dataframe

df=pd.DataFrame([["2017-01-14",1],
    ["2017-01-14",30],
    ["2017-01-16",216],
    ["2017-02-17",23],
    ["2017-02-17",2],
    ["2017-03-19",745],
    ["2017-03-19",32],
    ["2017-03-20",11],
    ["2017-03-20",222],
    ["2017-03-21",4]],columns=["date","payout_value"])

To aggregate payout_value by date I use:

df_daily=df.groupby('date').agg(['sum'])

payout_value
sum
date    
2017-01-14  31
2017-01-16  216
2017-02-17  25
2017-03-19  777
2017-03-20  233
2017-03-21  4

How do I plot (bar chart) dates on x-axis and aggregated payout sum on y axis?

I tried using df.plot(x='date', y='payout_value',kind="bar") approach, but there is no 'date' column in df_daily dataframe, print(list(df_daily)) gives [('payout_value', 'sum')]

1

4 Answers 4

18

you are almost there, use reset_index and plot your by df_daily

df_daily=df.groupby('date').agg(['sum']).reset_index()
df_daily.plot(x='date', y='payout_value',kind="bar")
plt.show()

enter image description here

3

Try:

df.groupby('date').agg(['sum']).plot.bar(legend='')
plt.xlabel('date')
plt.ylabel('payout value sum')

enter image description here

3

You can set_index and sum

df.assign(date=pd.to_datetime(df.date)).set_index('date').payout_value.sum(level=0).plot(kind='bar')

enter image description here

0

The simplest I can code is:

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

df=pd.DataFrame([["2017-01-14",1],
    ["2017-01-14",30],
    ["2017-01-16",216],
    ["2017-02-17",23],
    ["2017-02-17",2],
    ["2017-03-19",745],
    ["2017-03-19",32],
    ["2017-03-20",11],
    ["2017-03-20",222],
    ["2017-03-21",4]], columns=["date","payout_value"])

df.groupby('date').agg('sum').plot(kind='bar', y='payout_value')
plt.show()

link to the bar plot

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.