Supondo os seguintes dados para esta resposta, salvos no arquivo 'dados.csv'
:
data,hora,numero
01/01/2018,10:30,0.1
01/01/2018,20:05,0.2
01/01/2018,07:00,0.3
02/01/2018,11:10,0.4
02/01/2018,22:35,0.5
03/01/2018,03:10,0.6
03/01/2018,20:45,0.7
03/01/2018,12:20,0.8
04/01/2018,15:15,0.9
04/01/2018,23:59,0.95
Ao carregar o DataFrame, especifique o tipo das colunas data
e hora
como datas, informando o nome das colunas no parâmetro parse_dates
do comando read_csv
:
import pandas as pd
import datetime
df = pd.read_csv('dados.csv', parse_dates=['data','hora'])
Saída:
Out[4]:
data hora numero
0 2018-01-01 2018-06-02 10:30:00 0.10
1 2018-01-01 2018-06-02 20:05:00 0.20
2 2018-01-01 2018-06-02 07:00:00 0.30
3 2018-02-01 2018-06-02 11:10:00 0.40
4 2018-02-01 2018-06-02 22:35:00 0.50
5 2018-03-01 2018-06-02 03:10:00 0.60
6 2018-03-01 2018-06-02 20:45:00 0.70
7 2018-03-01 2018-06-02 12:20:00 0.80
8 2018-04-01 2018-06-02 15:15:00 0.90
9 2018-04-01 2018-06-02 23:59:00 0.95
Para transformar a coluna hora
em formato de hora:
df['hora'] = pd.to_datetime(df['hora']).dt.time
Saída:
Out[6]:
data hora numero
0 2018-01-01 10:30:00 0.10
1 2018-01-01 20:05:00 0.20
2 2018-01-01 07:00:00 0.30
3 2018-02-01 11:10:00 0.40
4 2018-02-01 22:35:00 0.50
5 2018-03-01 03:10:00 0.60
6 2018-03-01 20:45:00 0.70
7 2018-03-01 12:20:00 0.80
8 2018-04-01 15:15:00 0.90
9 2018-04-01 23:59:00 0.95
Para criar o DataFrame com os dados do período "dia", informe a condição 'hora' entre 8 e 20 no filtro da consulta:
df_dia = df.loc[(df['hora'] >= datetime.time(hour=8)) & (df['hora'] <= datetime.time(hour=20))]
Resultado:
In [9]: df_dia
Out[9]:
data hora numero
0 2018-01-01 10:30:00 0.1
3 2018-02-01 11:10:00 0.4
7 2018-03-01 12:20:00 0.8
8 2018-04-01 15:15:00 0.9
Para criar o DataFrame noite, basta informar a condição contrária:
df_noite = df.loc[(df['hora'] < datetime.time(hour=8)) | (df['hora'] > datetime.time(hour=20))]
Resultado:
In [12]: df_noite
Out[12]:
data hora numero
1 2018-01-01 20:05:00 0.20
2 2018-01-01 07:00:00 0.30
4 2018-02-01 22:35:00 0.50
5 2018-03-01 03:10:00 0.60
6 2018-03-01 20:45:00 0.70
9 2018-04-01 23:59:00 0.95