给定datetime.timePython中的值,是否有一种标准方法可以为其添加整数秒,例如11:34:59+ 3 = 11:35:02?
这些明显的想法不起作用:
>>> datetime.time(11, 34, 59) + 3
TypeError: unsupported operand type(s) for +: 'datetime.time' and 'int'
>>> datetime.time(11, 34, 59) + datetime.timedelta(0, 3)
TypeError: unsupported operand type(s) for +: 'datetime.time' and 'datetime.timedelta'
>>> datetime.time(11, 34, 59) + datetime.time(0, 0, 3)
TypeError: unsupported operand type(s) for +: 'datetime.time' and 'datetime.time'
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最后我写了这样的函数:
def add_secs_to_time(timeval, secs_to_add):
secs = timeval.hour * 3600 + timeval.minute * 60 + timeval.second
secs += secs_to_add
return datetime.time(secs // 3600, …Run Code Online (Sandbox Code Playgroud) 我有以下文件(df_SOF1.csv),它是100万条记录长
Location,Transport,Transport1,DateOccurred,CostCentre,D_Time,count
0,Lorry,Car,07/09/2012,0,0:00:00,2
1,Lorry,Car,11/09/2012,0,0:00:00,5
2,Lorry,Car,14/09/2012,0,0:00:00,30
3,Lorry,Car,14/09/2012,0,0:07:00,2
4,Lorry,Car,14/09/2012,0,0:29:00,1
5,Lorry,Car,14/09/2012,0,3:27:00,3
6,Lorry,Car,14/09/2012,0,3:28:00,4
7,Lorry,Car,21/09/2012,0,0:00:00,13
8,Lorry,Car,27/09/2012,0,0:00:00,8
9,Lorry,Car,28/09/2012,0,0:02:00,1
10,Train,Bus,03/09/2012,2073,7:49:00,1
11,Train,Bus,05/09/2012,2073,7:50:00,1
12,Train,Bus,06/09/2012,2073,7:52:00,1
13,Train,Bus,07/09/2012,2073,7:48:00,1
14,Train,Bus,08/09/2012,2073,7:55:00,1
15,Train,Bus,11/09/2012,2073,7:49:00,1
16,Train,Bus,12/09/2012,2073,7:52:00,1
17,Train,Bus,13/09/2012,2073,7:50:00,1
18,Train,Bus,14/09/2012,2073,7:54:00,1
19,Train,Bus,18/09/2012,2073,7:51:00,1
20,Train,Bus,19/09/2012,2073,7:50:00,1
21,Train,Bus,20/09/2012,2073,7:51:00,1
22,Train,Bus,21/09/2012,2073,7:52:00,1
23,Train,Bus,22/09/2012,2073,7:53:00,1
24,Train,Bus,23/09/2012,2073,7:49:00,1
25,Train,Bus,24/09/2012,2073,7:54:00,1
26,Train,Bus,25/09/2012,2073,7:55:00,1
27,Train,Bus,26/09/2012,2073,7:53:00,1
28,Train,Bus,27/09/2012,2073,7:55:00,1
29,Train,Bus,28/09/2012,2073,7:53:00,1
30,Train,Bus,29/09/2012,2073,7:56:00,1
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我正在使用pandas来分析它我一直在尝试至少40个小时来找到一种方法来分组数据,我可以聚合时间列 D_Time
我已经加载了我创建数据帧所需的模块,请参阅下面DateOccured的索引
df_SOF1 = read_csv('/users/fabulous/documents/df_SOF1.csv', index_col=3, parse_dates=True) # read file from disk
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我可以按任何列分组或遍历任何行,例如
df_SOF1.groupby('Location').sum()
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但是我没有找到一种方法来总结并D_Time使用pandas 取出列的平均值.我已经阅读了20多篇关于timedeltas等的文章,但我仍然不是在大熊猫中如何做到这一点.
任何可以让我对D_Time列进行算术运算的解决方案都将受到赞赏.(即使它必须在熊猫之外完成).
我认为一种可能的解决方案是将D_Time列更改为秒.
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