【问题标题】:Calculate difference of 2 dates in a pandas groupby object of the same 2 dates计算相同 2 个日期的 pandas groupby 对象中 2 个日期的差异
【发布时间】:2017-11-01 20:20:58
【问题描述】:

我正在尝试创建一个新的pandas.DataFrame 列,其中包含两个日期列之间的工作日数。我无法将日期列中的日期作为函数调用中的参数引用(我收到 TypeError:无法转换输入错误)。但是,我可以将系列中的值压缩到列表中,并使用 For 循环来引用参数。理想情况下,我更愿意从两个 Date 列创建一个 GroupBy 对象并计算差异。

创建数据框:

import pandas as pd

df = pd.DataFrame.from_dict({'Date1': ['2017-05-30 16:00:00',
  '2017-05-30 16:00:00',
  '2017-05-30 16:00:00'],
 'Date2': ['2017-06-16 16:00:00',
  '2017-07-21 16:00:00',
  '2017-08-18 16:00:00'],
 'Value1': [2.97, 3.3, 4.03],
 'Value2': [96L, 14L, 2L]})

df['Date1'] = pd.to_datetime(df['Date1'])
df['Date2'] = pd.to_datetime(df['Date2'])

df.dtypes

验证数据框:

Date1     datetime64[ns]
Date2     datetime64[ns]
Value1           float64
Value2             int64
dtype: object

定义函数:

def date_diff(startDate, endDate):
    return float(len(pd.bdate_range(startDate, endDate)) - 1)

尝试从 date_diff 函数调用的结果列:

df['DateDiff'] = date_diff(df['Date1'], df['Date2'])

类型错误:

TypeError: Cannot convert input [0   2017-05-30 16:00:00
1   2017-05-30 16:00:00
2   2017-05-30 16:00:00
Name: Date1, dtype: datetime64[ns]] of type <class 'pandas.core.series.Series'> to Timestamp

引用包含日期的元组列表的“For循环”有效:

date_List = list(zip(df['Date1'], df['Date2']))

for i in range(len(date_List)):
    df.loc[(df['Date1'] == date_List[i][0]) & (df['Date2'] == date_List[i][1]), 'diff'] = date_diff(date_List[i][0], date_List[i][1])

                Date1               Date2  Value1  Value2  diff
0 2017-05-30 16:00:00 2017-06-16 16:00:00    2.97      96  13.0
1 2017-05-30 16:00:00 2017-07-21 16:00:00    3.30      14  38.0
2 2017-05-30 16:00:00 2017-08-18 16:00:00    4.03       2  58.0

理想情况下,我想使用 GroupBy 对象(按 Date1 和 Date2):

grp = df.groupby(['Date1', 'Date2'])

期望的输出:

[((Timestamp('2017-05-30 16:00:00'), Timestamp('2017-06-16 16:00:00')),
                  Date1               Date2  Value1  Value2  diff
  0 2017-05-30 16:00:00 2017-06-16 16:00:00    2.97      96  13.0),
 ((Timestamp('2017-05-30 16:00:00'), Timestamp('2017-07-21 16:00:00')),
                  Date1               Date2  Value1  Value2  diff
  1 2017-05-30 16:00:00 2017-07-21 16:00:00     3.3      14  38.0),
 ((Timestamp('2017-05-30 16:00:00'), Timestamp('2017-08-18 16:00:00')),
                  Date1               Date2  Value1  Value2  diff
  2 2017-05-30 16:00:00 2017-08-18 16:00:00    4.03       2  58.0)]

【问题讨论】:

    标签: python pandas numpy python-datetime pandas-groupby


    【解决方案1】:

    你需要一个类型转换为 datetime64[D] 来让 numpy 开心,比如:

    代码:

    import numpy as np
    
    def date_diff(start_dates, end_dates):
        return np.busday_count(
            start_dates.values.astype('datetime64[D]'),
            end_dates.values.astype('datetime64[D]'))
    

    测试代码:

    import pandas as pd
    df = pd.DataFrame.from_dict({'Date1': ['2017-05-30 16:00:00',
                                           '2017-05-30 16:00:00',
                                           '2017-05-30 16:00:00'],
                                 'Date2': ['2017-06-16 16:00:00',
                                           '2017-07-21 16:00:00',
                                           '2017-08-18 16:00:00'],
                                 'Value1': [2.97, 3.3, 4.03],
                                 'Value2': [96L, 14L, 2L]})
    
    df['Date1'] = pd.to_datetime(df['Date1'])
    df['Date2'] = pd.to_datetime(df['Date2'])
    
    df['DateDiff'] = date_diff(df['Date1'], df['Date2'])
    print(df)
    

    结果:

                    Date1               Date2  Value1  Value2  DateDiff
    0 2017-05-30 16:00:00 2017-06-16 16:00:00    2.97      96        13
    1 2017-05-30 16:00:00 2017-07-21 16:00:00    3.30      14        38
    2 2017-05-30 16:00:00 2017-08-18 16:00:00    4.03       2        58
    

    【讨论】:

      猜你喜欢
      • 2015-08-23
      • 2013-08-20
      • 1970-01-01
      • 2021-02-18
      • 1970-01-01
      • 2011-02-06
      • 1970-01-01
      • 1970-01-01
      • 2014-04-27
      相关资源
      最近更新 更多