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Below is an extract of a dataframe which I have created my merging multiple query log dataframes:

                keyword               hits         date         average time
1               the cat sat on        10           10-Jan       10
2               who is the sea        5            10-Jan       1.2
3               under the earth       30           1-Dec        2.5
4               what is this          100          1-Feb        9

Is there a way I can pivot the data using Pandas so that rows are daily dates (e.g. 1-Jan, 2-Jan etc.) and the corresponding 1 column to each date is the daily sum of hits (sum of the hits for that day e.g. sum of hits for 1-Jan) divided by the monthly sum of hits (e.g. for the whole of Jan) for that month (i.e. the month normalised daily hit percentage for each day)

Thanks in advance for any help.

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We're happy to help, but you didn't post any code or any error messages, so it's not clear what your problem is or what's confusing you. –  DSM May 23 '13 at 16:04
    
Thanks for the feedback DSM - have just edited the question to clarify. Let me know if its still ambiguos. –  user7289 May 23 '13 at 16:53
    
To help others with the sample problem, consider changing the title of your question. "Pivoting" means something else. Maybe "Normalized tallies in pandas?" –  Dan Allan May 23 '13 at 18:10
    
Thanks for that Dan - just done it –  user7289 May 24 '13 at 8:11
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1 Answer

up vote 1 down vote accepted

Parse the dates so we can extract the month later.

In [99]: df.date = df.date.apply(pd.Timestamp)

In [100]: df
Out[100]: 
           keyword  hits                date  average time
1   the cat sat on    10 2013-01-10 00:00:00          10.0
2   who is the sea     5 2013-01-10 00:00:00           1.2
3  under the earth    30 2013-12-01 00:00:00           2.5
4     what is this   100 2013-02-01 00:00:00           9.0

Group by day and sum the hits.

In [101]: daily_totals = df.groupby('date').hits.sum()

In [102]: daily_totals
Out[102]: 
date
2013-01-10     15
2013-02-01    100
2013-12-01     30
Name: hits, dtype: int64

Group by month, and divide each row (each daily total) by the sum of all the daily totals in that month.

In [103]: normalized_totals = daily_totals.groupby(lambda d: d.month).transform(lambda x: float(x)/x.sum())

In [104]: normalized_totals
Out[104]: 
date
2013-01-10    1
2013-02-01    1
2013-12-01    1
Name: hits, dtype: int64

Your simple example only gave one day in each month, so all these are 1.

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Dan, how do I do this (the normalisation) per keyword? Max. –  user7289 Jun 3 '13 at 10:57
    
To do it per keyword alone, change the argument of gropuby to 'keyword'. To do daily normalization broken down by keyword in addition to day, use a list as the argument: ['keyword', lambda d: d.month]. (That might not work -- you may need to spell it out as [daily_totals.keyword, lambda d: d.month].) The result will be multi-indexed on date and keyword. –  Dan Allan Jun 3 '13 at 12:29
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