86

I have a Pandas DataFrame with a 'date' column. Now I need to filter out all rows in the DataFrame that have dates outside of the next two months. Essentially, I only need to retain the rows that are within the next two months.

What is the best way to achieve this?

144

If date column is the index, then use .loc for label based indexing or .iloc for positional indexing.

For example:

df.loc['2014-01-01':'2014-02-01']

See details here http://pandas.pydata.org/pandas-docs/stable/dsintro.html#indexing-selection

If the column is not the index you have two choices:

  1. Make it the index (either temporarily or permanently if it's time-series data)
  2. df[(df['date'] > '2013-01-01') & (df['date'] < '2013-02-01')]

See here for the general explanation

Note: .ix is deprecated.

  • 1
    Thank you, will read. The date is a seperate column and not the index in my case. I should have probably given that information in the first place. MY question was not very informative. – AMM Apr 6 '14 at 19:35
  • 24
    You can use query here as well. df.query('20130101 < date < 20130201'). – Phillip Cloud Apr 6 '14 at 19:56
  • 7
    You should mention that the filters for index (via .loc and .ix) and columns in your examples are not equivalent. df.ix['2014-01-01':'2014-02-01'] includes 2014-02-01 while df[(df['date'] > '2013-01-01') & (df['date'] < '2013-02-01')] does not include 2013-02-01, it will only match rows up to 2013-01-31. – Rafael Barbosa Jul 26 '16 at 12:57
  • 2
    This call is deprecated now! – M-T-A Dec 29 '17 at 20:39
  • 3
    What if one doesn't want to filter on a date range, but on multiple datetimes ? – Salem Ben Mabrouk Jul 6 '18 at 8:42
33

Previous answer is not correct in my experience, you can't pass it a simple string, needs to be a datetime object. So:

import datetime 
df.loc[datetime.date(year=2014,month=1,day=1):datetime.date(year=2014,month=2,day=1)]
  • 7
    I can absolutely pass a string with no issues. – Ninjakannon Aug 20 '16 at 10:27
  • 7
    ix indexer is deprecated, use loc - pandas.pydata.org/pandas-docs/stable/… – Nick May 15 '17 at 14:00
  • 1
    pandas will convert any "datetime" string into a datetime object.. so it's correct – janscas Mar 16 '18 at 10:04
  • 3
    I recieve the following error using this: TypeError: '<' not supported between instances of 'int' and 'datetime.date' – Haris Khaliq Aug 28 '18 at 17:43
24

And if your dates are standardized by importing datetime package, you can simply use:

df[(df['date']>datetime.date(2016,1,1)) & (df['date']<datetime.date(2016,3,1))]  

For standarding your date string using datetime package, you can use this function:

import datetime
datetime.datetime.strptime
13

If your datetime column have the Pandas datetime type (e.g. datetime64[ns]), for proper filtering you need the pd.Timestamp object, for example:

from datetime import date

import pandas as pd

value_to_check = pd.Timestamp(date.today().year, 1, 1)
filter_mask = df['date_column'] < value_to_check
filtered_df = df[filter_mask]
  • Any reasons to downvote? – VMAtm Aug 9 '18 at 2:33
10

If the dates are in the index then simply:

df['20160101':'20160301']
  • Great answer! Works perfectly when you have dates indexed. – arjones Jul 5 '17 at 14:40
0

You can use pd.Timestamp to perform a query and a local reference

import pandas as pd
import numpy as np

df = pd.DataFrame()
ts = pd.Timestamp

df['date'] = np.array(np.arange(10) + datetime.now().timestamp(), dtype='M8[s]')

print(df)
print(df.query('date > @ts("20190515T071320")')

with the output

                 date
0 2019-05-15 07:13:16
1 2019-05-15 07:13:17
2 2019-05-15 07:13:18
3 2019-05-15 07:13:19
4 2019-05-15 07:13:20
5 2019-05-15 07:13:21
6 2019-05-15 07:13:22
7 2019-05-15 07:13:23
8 2019-05-15 07:13:24
9 2019-05-15 07:13:25


                 date
5 2019-05-15 07:13:21
6 2019-05-15 07:13:22
7 2019-05-15 07:13:23
8 2019-05-15 07:13:24
9 2019-05-15 07:13:25

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