问题:选择两个日期之间的DataFrame行
我正在从csv创建DataFrame,如下所示:
stock = pd.read_csv('data_in/' + filename + '.csv', skipinitialspace=True)
DataFrame有一个日期列。有没有一种方法来创建一个新的DataFrame(或仅覆盖现有的DataFrame),该DataFrame仅包含日期值在指定日期范围内或两个指定日期值之间的行?
I am creating a DataFrame from a csv as follows:
stock = pd.read_csv('data_in/' + filename + '.csv', skipinitialspace=True)
The DataFrame has a date column. Is there a way to create a new DataFrame (or just overwrite the existing one) which only contains rows with date values that fall within a specified date range or between two specified date values?
回答 0
有两种可能的解决方案:
- 使用布尔型掩码,然后使用
df.loc[mask]
- 将日期列设置为DatetimeIndex,然后使用
df[start_date : end_date]
使用布尔型掩码:
确保df['date']
是dtype系列datetime64[ns]
:
df['date'] = pd.to_datetime(df['date'])
制作一个布尔型面具。start_date
并且end_date
可以datetime.datetime
S,
np.datetime64
S,pd.Timestamp
S,甚至日期时间字符串:
#greater than the start date and smaller than the end date
mask = (df['date'] > start_date) & (df['date'] <= end_date)
选择子DataFrame:
df.loc[mask]
或重新分配给 df
df = df.loc[mask]
例如,
import numpy as np
import pandas as pd
df = pd.DataFrame(np.random.random((200,3)))
df['date'] = pd.date_range('2000-1-1', periods=200, freq='D')
mask = (df['date'] > '2000-6-1') & (df['date'] <= '2000-6-10')
print(df.loc[mask])
Yield
0 1 2 date
153 0.208875 0.727656 0.037787 2000-06-02
154 0.750800 0.776498 0.237716 2000-06-03
155 0.812008 0.127338 0.397240 2000-06-04
156 0.639937 0.207359 0.533527 2000-06-05
157 0.416998 0.845658 0.872826 2000-06-06
158 0.440069 0.338690 0.847545 2000-06-07
159 0.202354 0.624833 0.740254 2000-06-08
160 0.465746 0.080888 0.155452 2000-06-09
161 0.858232 0.190321 0.432574 2000-06-10
使用DatetimeIndex:
如果您打算按日期进行很多选择,则将date
列首先设置为索引可能会更快
。然后,您可以使用按日期选择行
df.loc[start_date:end_date]
。
import numpy as np
import pandas as pd
df = pd.DataFrame(np.random.random((200,3)))
df['date'] = pd.date_range('2000-1-1', periods=200, freq='D')
df = df.set_index(['date'])
print(df.loc['2000-6-1':'2000-6-10'])
Yield
0 1 2
date
2000-06-01 0.040457 0.326594 0.492136 # <- includes start_date
2000-06-02 0.279323 0.877446 0.464523
2000-06-03 0.328068 0.837669 0.608559
2000-06-04 0.107959 0.678297 0.517435
2000-06-05 0.131555 0.418380 0.025725
2000-06-06 0.999961 0.619517 0.206108
2000-06-07 0.129270 0.024533 0.154769
2000-06-08 0.441010 0.741781 0.470402
2000-06-09 0.682101 0.375660 0.009916
2000-06-10 0.754488 0.352293 0.339337
相反,虽然Python列表索引(例如seq[start:end]
包括start
但不包括),但end
Pandas 如果在索引中,则在结果中df.loc[start_date : end_date]
包括两个端点。但是,既不是start_date
也不end_date
是必须包含在索引中。
还要注意,具有可用于将date
列解析为datetime64
s的参数。因此,如果使用parse_dates
,则无需使用df['date'] = pd.to_datetime(df['date'])
。
There are two possible solutions:
- Use a boolean mask, then use
df.loc[mask]
- Set the date column as a DatetimeIndex, then use
df[start_date : end_date]
Using a boolean mask:
Ensure df['date']
is a Series with dtype datetime64[ns]
:
df['date'] = pd.to_datetime(df['date'])
Make a boolean mask. start_date
and end_date
can be datetime.datetime
s,
np.datetime64
s, pd.Timestamp
s, or even datetime strings:
#greater than the start date and smaller than the end date
mask = (df['date'] > start_date) & (df['date'] <= end_date)
Select the sub-DataFrame:
df.loc[mask]
or re-assign to df
df = df.loc[mask]
For example,
import numpy as np
import pandas as pd
df = pd.DataFrame(np.random.random((200,3)))
df['date'] = pd.date_range('2000-1-1', periods=200, freq='D')
mask = (df['date'] > '2000-6-1') & (df['date'] <= '2000-6-10')
print(df.loc[mask])
yields
0 1 2 date
153 0.208875 0.727656 0.037787 2000-06-02
154 0.750800 0.776498 0.237716 2000-06-03
155 0.812008 0.127338 0.397240 2000-06-04
156 0.639937 0.207359 0.533527 2000-06-05
157 0.416998 0.845658 0.872826 2000-06-06
158 0.440069 0.338690 0.847545 2000-06-07
159 0.202354 0.624833 0.740254 2000-06-08
160 0.465746 0.080888 0.155452 2000-06-09
161 0.858232 0.190321 0.432574 2000-06-10
Using a DatetimeIndex:
If you are going to do a lot of selections by date, it may be quicker to set the
date
column as the index first. Then you can select rows by date using
df.loc[start_date:end_date]
.
import numpy as np
import pandas as pd
df = pd.DataFrame(np.random.random((200,3)))
df['date'] = pd.date_range('2000-1-1', periods=200, freq='D')
df = df.set_index(['date'])
print(df.loc['2000-6-1':'2000-6-10'])
yields
0 1 2
date
2000-06-01 0.040457 0.326594 0.492136 # <- includes start_date
2000-06-02 0.279323 0.877446 0.464523
2000-06-03 0.328068 0.837669 0.608559
2000-06-04 0.107959 0.678297 0.517435
2000-06-05 0.131555 0.418380 0.025725
2000-06-06 0.999961 0.619517 0.206108
2000-06-07 0.129270 0.024533 0.154769
2000-06-08 0.441010 0.741781 0.470402
2000-06-09 0.682101 0.375660 0.009916
2000-06-10 0.754488 0.352293 0.339337
While Python list indexing, e.g. seq[start:end]
includes start
but not end
, in contrast, Pandas df.loc[start_date : end_date]
includes both end-points in the result if they are in the index. Neither start_date
nor end_date
has to be in the index however.
Also note that which you could use to parse the date
column as datetime64
s. Thus, if you use parse_dates
, you would not need to use df['date'] = pd.to_datetime(df['date'])
.
回答 1
我觉得最好的选择是使用直接检查而不是loc函数:
df = df[(df['date'] > '2000-6-1') & (df['date'] <= '2000-6-10')]
这个对我有用。
带有切片的loc函数的主要问题是限制应该出现在实际值中,否则,将导致KeyError。
I feel the best option will be to use the direct checks rather than using loc function:
df = df[(df['date'] > '2000-6-1') & (df['date'] <= '2000-6-10')]
It works for me.
Major issue with loc function with a slice is that the limits should be present in the actual values, if not this will result in KeyError.
回答 2
您也可以使用between
:
df[df.some_date.between(start_date, end_date)]
You can also use between
:
df[df.some_date.between(start_date, end_date)]
回答 3
您可以像这样使用列
isin
上的方法date
df[df["date"].isin(pd.date_range(start_date, end_date))]
注意:这仅适用于日期(如问题所述),而不适用于时间戳记。
例:
import numpy as np
import pandas as pd
# Make a DataFrame with dates and random numbers
df = pd.DataFrame(np.random.random((30, 3)))
df['date'] = pd.date_range('2017-1-1', periods=30, freq='D')
# Select the rows between two dates
in_range_df = df[df["date"].isin(pd.date_range("2017-01-15", "2017-01-20"))]
print(in_range_df) # print result
这使
0 1 2 date
14 0.960974 0.144271 0.839593 2017-01-15
15 0.814376 0.723757 0.047840 2017-01-16
16 0.911854 0.123130 0.120995 2017-01-17
17 0.505804 0.416935 0.928514 2017-01-18
18 0.204869 0.708258 0.170792 2017-01-19
19 0.014389 0.214510 0.045201 2017-01-20
You can use the isin
method on the date
column like so
df[df["date"].isin(pd.date_range(start_date, end_date))]
Note: This only works with dates (as the question asks) and not timestamps.
Example:
import numpy as np
import pandas as pd
# Make a DataFrame with dates and random numbers
df = pd.DataFrame(np.random.random((30, 3)))
df['date'] = pd.date_range('2017-1-1', periods=30, freq='D')
# Select the rows between two dates
in_range_df = df[df["date"].isin(pd.date_range("2017-01-15", "2017-01-20"))]
print(in_range_df) # print result
which gives
0 1 2 date
14 0.960974 0.144271 0.839593 2017-01-15
15 0.814376 0.723757 0.047840 2017-01-16
16 0.911854 0.123130 0.120995 2017-01-17
17 0.505804 0.416935 0.928514 2017-01-18
18 0.204869 0.708258 0.170792 2017-01-19
19 0.014389 0.214510 0.045201 2017-01-20
回答 4
保持解决方案简单和Pythonic,建议您尝试一下。
如果您要经常执行此操作,最好的解决方案是首先将date列设置为索引,这将转换DateTimeIndex中的列,并使用以下条件来分割任何日期范围。
import pandas as pd
data_frame = data_frame.set_index('date')
df = data_frame[(data_frame.index > '2017-08-10') & (data_frame.index <= '2017-08-15')]
Keeping the solution simple and pythonic, I would suggest you to try this.
In case if you are going to do this frequently the best solution would be to first set the date column as index which will convert the column in DateTimeIndex and use the following condition to slice any range of dates.
import pandas as pd
data_frame = data_frame.set_index('date')
df = data_frame[(data_frame.index > '2017-08-10') & (data_frame.index <= '2017-08-15')]
回答 5
通过对pandas
版本的测试,0.22.0
您现在只需使用即可使用更具可读性的代码更轻松地回答此问题between
。
# create a single column DataFrame with dates going from Jan 1st 2018 to Jan 1st 2019
df = pd.DataFrame({'dates':pd.date_range('2018-01-01','2019-01-01')})
假设您想获取2018年11月27日至2019年1月15日之间的日期:
# use the between statement to get a boolean mask
df['dates'].between('2018-11-27','2019-01-15', inclusive=False)
0 False
1 False
2 False
3 False
4 False
# you can pass this boolean mask straight to loc
df.loc[df['dates'].between('2018-11-27','2019-01-15', inclusive=False)]
dates
331 2018-11-28
332 2018-11-29
333 2018-11-30
334 2018-12-01
335 2018-12-02
注意包含参数。当您想明确说明范围时非常有用。请注意,设置为True时,我们也将在2018年11月27日返回:
df.loc[df['dates'].between('2018-11-27','2019-01-15', inclusive=True)]
dates
330 2018-11-27
331 2018-11-28
332 2018-11-29
333 2018-11-30
334 2018-12-01
此方法也比前面提到的isin
方法快:
%%timeit -n 5
df.loc[df['dates'].between('2018-11-27','2019-01-15', inclusive=True)]
868 µs ± 164 µs per loop (mean ± std. dev. of 7 runs, 5 loops each)
%%timeit -n 5
df.loc[df['dates'].isin(pd.date_range('2018-01-01','2019-01-01'))]
1.53 ms ± 305 µs per loop (mean ± std. dev. of 7 runs, 5 loops each)
但是,仅当已创建遮罩时,它才比unutbu提供的当前接受的答案快。但是,如果掩码是动态的,并且需要一遍又一遍地重新分配,则我的方法可能会更有效:
# already create the mask THEN time the function
start_date = dt.datetime(2018,11,27)
end_date = dt.datetime(2019,1,15)
mask = (df['dates'] > start_date) & (df['dates'] <= end_date)
%%timeit -n 5
df.loc[mask]
191 µs ± 28.5 µs per loop (mean ± std. dev. of 7 runs, 5 loops each)
With my testing of pandas
version 0.22.0
you can now answer this question easier with more readable code by simply using between
.
# create a single column DataFrame with dates going from Jan 1st 2018 to Jan 1st 2019
df = pd.DataFrame({'dates':pd.date_range('2018-01-01','2019-01-01')})
Let’s say you want to grab the dates between Nov 27th 2018 and Jan 15th 2019:
# use the between statement to get a boolean mask
df['dates'].between('2018-11-27','2019-01-15', inclusive=False)
0 False
1 False
2 False
3 False
4 False
# you can pass this boolean mask straight to loc
df.loc[df['dates'].between('2018-11-27','2019-01-15', inclusive=False)]
dates
331 2018-11-28
332 2018-11-29
333 2018-11-30
334 2018-12-01
335 2018-12-02
Notice the inclusive argument. very helpful when you want to be explicit about your range. notice when set to True we return Nov 27th of 2018 as well:
df.loc[df['dates'].between('2018-11-27','2019-01-15', inclusive=True)]
dates
330 2018-11-27
331 2018-11-28
332 2018-11-29
333 2018-11-30
334 2018-12-01
This method is also faster than the previously mentioned isin
method:
%%timeit -n 5
df.loc[df['dates'].between('2018-11-27','2019-01-15', inclusive=True)]
868 µs ± 164 µs per loop (mean ± std. dev. of 7 runs, 5 loops each)
%%timeit -n 5
df.loc[df['dates'].isin(pd.date_range('2018-01-01','2019-01-01'))]
1.53 ms ± 305 µs per loop (mean ± std. dev. of 7 runs, 5 loops each)
However, it is not faster than the currently accepted answer, provided by unutbu, only if the mask is already created. but if the mask is dynamic and needs to be reassigned over and over, my method may be more efficient:
# already create the mask THEN time the function
start_date = dt.datetime(2018,11,27)
end_date = dt.datetime(2019,1,15)
mask = (df['dates'] > start_date) & (df['dates'] <= end_date)
%%timeit -n 5
df.loc[mask]
191 µs ± 28.5 µs per loop (mean ± std. dev. of 7 runs, 5 loops each)
回答 6
我宁愿不更改df
。
一种选择是检索index
的start
和end
日期:
import numpy as np
import pandas as pd
#Dummy DataFrame
df = pd.DataFrame(np.random.random((30, 3)))
df['date'] = pd.date_range('2017-1-1', periods=30, freq='D')
#Get the index of the start and end dates respectively
start = df[df['date']=='2017-01-07'].index[0]
end = df[df['date']=='2017-01-14'].index[0]
#Show the sliced df (from 2017-01-07 to 2017-01-14)
df.loc[start:end]
结果是:
0 1 2 date
6 0.5 0.8 0.8 2017-01-07
7 0.0 0.7 0.3 2017-01-08
8 0.8 0.9 0.0 2017-01-09
9 0.0 0.2 1.0 2017-01-10
10 0.6 0.1 0.9 2017-01-11
11 0.5 0.3 0.9 2017-01-12
12 0.5 0.4 0.3 2017-01-13
13 0.4 0.9 0.9 2017-01-14
I prefer not to alter the df
.
An option is to retrieve the index
of the start
and end
dates:
import numpy as np
import pandas as pd
#Dummy DataFrame
df = pd.DataFrame(np.random.random((30, 3)))
df['date'] = pd.date_range('2017-1-1', periods=30, freq='D')
#Get the index of the start and end dates respectively
start = df[df['date']=='2017-01-07'].index[0]
end = df[df['date']=='2017-01-14'].index[0]
#Show the sliced df (from 2017-01-07 to 2017-01-14)
df.loc[start:end]
which results in:
0 1 2 date
6 0.5 0.8 0.8 2017-01-07
7 0.0 0.7 0.3 2017-01-08
8 0.8 0.9 0.0 2017-01-09
9 0.0 0.2 1.0 2017-01-10
10 0.6 0.1 0.9 2017-01-11
11 0.5 0.3 0.9 2017-01-12
12 0.5 0.4 0.3 2017-01-13
13 0.4 0.9 0.9 2017-01-14
回答 7
实现此目标的另一种方法是使用方法。让我为您展示有关以下数据框的示例df
。
>>> df = pd.DataFrame(np.random.random((5, 1)), columns=['col_1'])
>>> df['date'] = pd.date_range('2020-1-1', periods=5, freq='D')
>>> print(df)
col_1 date
0 0.015198 2020-01-01
1 0.638600 2020-01-02
2 0.348485 2020-01-03
3 0.247583 2020-01-04
4 0.581835 2020-01-05
作为参数,使用如下条件进行过滤:
>>> start_date, end_date = '2020-01-02', '2020-01-04'
>>> print(df.query('date >= @start_date and date <= @end_date'))
col_1 date
1 0.244104 2020-01-02
2 0.374775 2020-01-03
3 0.510053 2020-01-04
如果您不想包括边界,则只需更改条件,如下所示:
>>> print(df.query('date > @start_date and date < @end_date'))
col_1 date
2 0.374775 2020-01-03
Another option, how to achieve this, is by using method. Let me show you an example on the following data frame called df
.
>>> df = pd.DataFrame(np.random.random((5, 1)), columns=['col_1'])
>>> df['date'] = pd.date_range('2020-1-1', periods=5, freq='D')
>>> print(df)
col_1 date
0 0.015198 2020-01-01
1 0.638600 2020-01-02
2 0.348485 2020-01-03
3 0.247583 2020-01-04
4 0.581835 2020-01-05
As an argument, use the condition for filtering like this:
>>> start_date, end_date = '2020-01-02', '2020-01-04'
>>> print(df.query('date >= @start_date and date <= @end_date'))
col_1 date
1 0.244104 2020-01-02
2 0.374775 2020-01-03
3 0.510053 2020-01-04
If you do not want to include boundaries, just change the condition like following:
>>> print(df.query('date > @start_date and date < @end_date'))
col_1 date
2 0.374775 2020-01-03
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