GoB*_*Man 25 python datetime dataframe pandas pandas-groupby
我有一个列Date_Time,我希望按日期时间分组而不创建新列.这可能是我当前的代码不起作用.
df = pd.groupby(df,by=[df['Date_Time'].date()])
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jez*_*ael 32
您可以groupby按列Date_Time的日期使用dt.date:
df = df.groupby([df['Date_Time'].dt.date]).mean()
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样品:
df = pd.DataFrame({'Date_Time': pd.date_range('10/1/2001 10:00:00', periods=3, freq='10H'),
'B':[4,5,6]})
print (df)
B Date_Time
0 4 2001-10-01 10:00:00
1 5 2001-10-01 20:00:00
2 6 2001-10-02 06:00:00
print (df['Date_Time'].dt.date)
0 2001-10-01
1 2001-10-01
2 2001-10-02
Name: Date_Time, dtype: object
df = df.groupby([df['Date_Time'].dt.date])['B'].mean()
print(df)
Date_Time
2001-10-01 4.5
2001-10-02 6.0
Name: B, dtype: float64
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另一个解决方案resample:
df = df.set_index('Date_Time').resample('D')['B'].mean()
print(df)
Date_Time
2001-10-01 4.5
2001-10-02 6.0
Freq: D, Name: B, dtype: float64
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piR*_*red 23
resampledf.resample('D', on='Date_Time').mean()
B
Date_Time
2001-10-01 4.5
2001-10-02 6.0
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Grouper正如@JosephCottam所建议的那样
df.set_index('Date_Time').groupby(pd.Grouper(freq='D')).mean()
B
Date_Time
2001-10-01 4.5
2001-10-02 6.0
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TimeGrouper您可以将索引设置为'Date_Time'和使用pd.TimeGrouper
df.set_index('Date_Time').groupby(pd.TimeGrouper('D')).mean().dropna()
B
Date_Time
2001-10-01 4.5
2001-10-02 6.0
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小智 6
df.groupby(pd.Grouper(key='Date_Time', axis=0, freq='M')).sum()
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