I have to analyze the activity of users who uses an application during a given period, periods are start and end timestamp. I tried with a bar chart but I do not know how to include hours in interval. Ex : user with uid=2 use the application at [18, 19, 20, 21]
My dataframe is like:
uid sex start end
1 0 2000-01-28 16:47:00 2000-01-28 17:47:00
2 1 2000-01-28 18:07:00 2000-01-28 21:47:00
3 1 2000-01-28 18:47:00 2000-01-28 20:17:00
4 0 2000-01-28 08:00:00 2000-01-28 10:00:00
5 1 2000-01-28 02:05:00 2000-01-28 02:30:00
6 0 2000-01-28 15:10:00 2000-01-28 18:04:00
7 0 2000-01-28 01:50:00 2000-01-28 03:00:00
df['hour_s'] = pd.to_datetime(df['start']).apply(lambda x: x.hour)
df['hour_e'] = pd.to_datetime(df['end']).apply(lambda x: x.hour)
uid sex start end hour_s hour_e
1 0 2000-01-28 16:47:00 2000-01-28 17:47:00 16 17
2 1 2000-01-28 18:07:00 2000-01-28 21:47:00 18 21
3 1 2000-01-28 18:47:00 2000-01-28 20:17:00 18 20
4 0 2000-01-28 08:00:00 2000-01-28 10:00:00 08 10
5 1 2000-01-28 02:05:00 2000-01-28 02:30:00 02 02
6 0 2000-01-28 15:10:00 2000-01-28 18:04:00 15 18
7 0 2000-01-28 01:50:00 2000-01-28 03:00:00 01 03
I have to find number of users in a specifc hours
I'm not sure whether you are looking for a Gantt Chart. If so, your hints by @Vinícius Aguiar, are in the comments.
From your last line
I have to find number of users in a specifc hours
It seems you need a histogram showing user amount (freqeuncy) pivoted by hour of day. If that is the case, you can do something like this:
#! /usr/bin/python3
import matplotlib.pyplot as plt
import pandas as pd
import numpy as np
# Read the data
df=pd.read_csv("data.csv")
# Get all hours per user (per observation)
def sum_hours(obs):
return(list(range(obs['hour_s'],obs['hour_e']+1,1)))
# Get all existing activity hours (No matter which user)
Hours2D=list(df.apply(sum_hours,axis=1))
# Get all existing hours
HoursFlat=[hour for sublist in Hours2D for hour in sublist]
plt.hist(HoursFlat,rwidth=0.5,range=(0,24))
plt.xticks(np.arange(0,24, 1.0))
plt.xlabel('Hour of day')
plt.ylabel('Users')
plt.show()
Where data.csv is the sample you provided:
uid, sex,start,end,hour_s,hour_e
1,0,2000-01-28 16:47:00,2000-01-28 17:47:00,16,17
2,1,2000-01-28 18:07:00,2000-01-28 21:47:00,18,21
3,1,2000-01-28 18:47:00,2000-01-28 20:17:00,18,20
4,0,2000-01-28 08:00:00,2000-01-28 10:00:00,08,10
5,1,2000-01-28 02:05:00,2000-01-28 02:30:00,02,02
6,0,2000-01-28 15:10:00,2000-01-28 18:04:00,15,18
7,0,2000-01-28 01:50:00,2000-01-28 03:00:00,01,03
You should get the following graph:

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