12

I've a dataframe containing six month error logs, collected every day. I want to retrieve the last 30 days records from the last date. Last date isn't today.
For example: I've data for the months May, June, July and until August 15, I want to retrieve that data from August 15 to July 15 making it 30 days records.
Is there a way to do this in Python Pandas?

This is the sample dataframe:

Error_Description         Date        Weekend      Type
N17739 Limit switch X-    5/1/2015    5/3/2015    Critical
N17739 Limit switch Y-    5/1/2015    5/3/2015    Critical
N938 Key non-functional   5/1/2015    5/3/2015    Non-Critical
P124 Magazine is running  5/1/2015    5/3/2015    Non-Critical
N17738 Limit switch Z+    5/1/2015    5/3/2015    Critical
N938 Key non-functional   5/1/2015    5/3/2015    Non-Critical
     ...                    ...         ...          ...
P873 ENCLOSURE DOOR       8/24/2015   8/30/2015   Non-Critical
N3065 Reset M114          8/24/2015   8/30/2015   Non-Critical
N3065 Reset M114,         8/24/2015   8/30/2015   Non-Critical
N2853 Synchronization     8/24/2015   8/30/2015   Critical
P152 ENCLOSURE            8/24/2015   8/30/2015   Non-Critical
N6236 has stopped         8/24/2015   8/30/2015   Critical
7
  • You can just slice the df df.iloc[::30] no? – EdChum Nov 23 '15 at 13:21
  • @EdChum probably you mean df.iloc[-30:]? – Anton Protopopov Nov 23 '15 at 13:24
  • 1
    @AntonProtopopov op wants to generate 30 day blocks so it depends, `df.iloc[-30:] takes just the last 30 entries – EdChum Nov 23 '15 at 13:25
  • It gives me every 30th value from the dataframe beginning from 0. Also, in a day there are at least 1k error messages captured. – Naive Babes Nov 23 '15 at 13:34
  • @AntonProtopopov - The output was last 30 records while I'm interested in last 30 days data. As I mentioned, there are multiple records in a single day – Naive Babes Nov 23 '15 at 13:40
10

Date lastdayfrom is used for selecting last 30 days of DataFrame by function loc.

lastdayfrom = pd.to_datetime('8/24/2015')
print lastdayfrom
#2015-08-24 00:00:00

print df
#           Error_Description       Date    Weekend          Type
#0     N17739 Limit switch X- 2015-05-01 2015-05-03      Critical
#1     N17739 Limit switch Y- 2015-05-01 2015-05-03      Critical
#2    N938 Key non-functional 2015-05-01 2015-05-03  Non-Critical
#3   P124 Magazine is running 2015-05-01 2015-05-03  Non-Critical
#4     N17738 Limit switch Z+ 2015-02-01 2015-05-03      Critical
#5    N938 Key non-functional 2015-07-25 2015-05-03  Non-Critical
#6        P873 ENCLOSURE DOOR 2015-07-24 2015-08-30  Non-Critical
#7           N3065 Reset M114 2015-07-21 2015-08-21  Non-Critical
#8          N3065 Reset M114, 2015-08-22 2015-08-22  Non-Critical
#9      N2853 Synchronization 2015-08-23 2015-08-30      Critical
#10            P152 ENCLOSURE 2015-08-24 2015-08-30  Non-Critical
#11         N6236 has stopped 2015-08-24 2015-08-30      Critical

print df.dtypes
#Error_Description            object
#Date                 datetime64[ns]
#Weekend              datetime64[ns]
#Type                         object
#dtype: object

#set index from column Date
df = df.set_index('Date')
#if datetimeindex isn't order, order it
df= df.sort_index()

#last 30 days of date lastday
df = df.loc[lastdayfrom - pd.Timedelta(days=30):lastdayfrom].reset_index()
print df
#        Date      Error_Description    Weekend          Type
#0 2015-07-25       N3065 Reset M114 2015-08-21  Non-Critical
#1 2015-08-22      N3065 Reset M114, 2015-08-22  Non-Critical
#2 2015-08-23  N2853 Synchronization 2015-08-30      Critical
#3 2015-08-24         P152 ENCLOSURE 2015-08-30  Non-Critical
#4 2015-08-24      N6236 has stopped 2015-08-30      Critical
3

You can use DataFrame.last_valid_index() to find the label of the last line, and then subtract DateOffset(30, 'D') to go back 30 days:

df[df.last_valid_index()-pandas.DateOffset(30, 'D'):]
2
  • (assuming the index is a DatetimeIndex...) – faltarell Nov 23 '15 at 13:47
  • It is not clear which is the index in your example, but to use the solution I proposed above you need to set the column Date as index: df2 = df.reset_index().set_index('Date') – faltarell Nov 23 '15 at 13:59
0

The other two answers (currently) assume the date is the index, but in python3 at least, you can solve this with just simple masking (.query(..) doesn't work).

df[df["Date"] >= (pd.to_datetime('8/24/2015') - pd.Timedelta(days=30))]

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