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I'd like to filter out weekend data and only look at data for weekdays (mon(0)-fri(4)). I'm new to pandas, what's the best way to accomplish this in pandas?

import datetime
from pandas import *

data = read_csv("data.csv")
data.my_dt 

Out[52]:
0     2012-10-01 02:00:39
1     2012-10-01 02:00:38
2     2012-10-01 02:01:05
3     2012-10-01 02:01:07
4     2012-10-01 02:02:03
5     2012-10-01 02:02:09
6     2012-10-01 02:02:03
7     2012-10-01 02:02:35
8     2012-10-01 02:02:33
9     2012-10-01 02:03:01
10    2012-10-01 02:08:53
11    2012-10-01 02:09:04
12    2012-10-01 02:09:09
13    2012-10-01 02:10:20
14    2012-10-01 02:10:45
...

I'd like to do something like:

weekdays_only = data[data.my_dt.weekday() < 5]

AttributeError: 'numpy.int64' object has no attribute 'weekday'

but this doesn't work, I haven't quite grasped how column datetime objects are accessed.

The eventual goal being to arrange hierarchically to weekday hour-range, something like:

monday, 0-6, 7-12, 13-18, 19-23
tuesday, 0-6, 7-12, 13-18, 19-23
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1  
not sure about your use case, but normally you would use my_dt as the index by passing parse_dates=True and index_col=<my_dt col> as keyword arguments to read_csv and read_csv will return a pandasTimeSeries. Then you can simply do weekdays = data[data.index.weekday < 5] –  bmu Dec 6 '12 at 20:37

2 Answers 2

up vote 9 down vote accepted

your call to the function "weekday" does not work as it operates on the index of data.my_dt, which is an int64 array (this is where the error message comes from)

you could create a new column in data containing the weekdays using something like:

data['weekday'] = data['my_dt'].apply(lambda x: x.weekday())

then you can filter for weekdays with:

weekdays_only = data[data['weekday'] < 5 ]

I hope this helps

share|improve this answer
    
great! that'll do it... ok, I also noticed that data.my_dt.map() can be used to do the same it seems. Do you know the difference between using .map() and .apply()? –  monkut Dec 6 '12 at 10:29
2  
In this case they're equivalent. Apply can also do aggregation and other things –  Wes McKinney Dec 13 '12 at 3:43

Faster way would be to use DatetimeIndex.weekday, like so:

temp = pd.DatetimeIndex(data['my_dt'])
data['weekday'] = temp.weekday

Much much faster, especially for a large number of rows. For further info, check this answer.

share|improve this answer
    
If you are running Pandas 0.15 you can just write data['my_dt'].dt.weekday, provided data['my_dt'] is datetime or timedelta or similar date based format (see pandas.pydata.org/pandas-docs/version/0.15.0/… for more information). If it is not, data['my_dt'] = pd.to_datetime(data['my_dt']) will convert it to datetime (you can also specify format and other things in pd.to_datetime(), see pandas.pydata.org/pandas-docs/stable/generated/…). –  Kartik Oct 24 '14 at 5:27

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