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I would like to turn:

DateTime                     ColumnName        Min      Avg      Max                                                                                      
2012-10-14 11:29:23.810000   Percent_Used       24       24       24
2012-10-14 11:29:23.810000   Current_Count  254503   254503   254503
2012-10-14 11:29:23.810000   Max           1048576  1048576  1048576
2012-10-14 11:34:23.813000   Percent_Used       24       24       24
2012-10-14 11:34:23.813000   Current_Count  254116   254116   254116
2012-10-14 11:34:23.813000   Max           1048576  1048576  1048576

Into a dataframe where the the DateTimes are unique (an index) and the columns are:

DataTime, Percent_Used_Min, Percent_Used_Avg, Percent_Used_Max, Current_Count_Min, Current_Count_Avg, Current_Count_Max, Max_Min, Max_Avg, Max_Max

Basically, I want to mimic R's melt/cast without getting into hierarchical indexing or stacked dataframes. I can't seem to to get exactly the above playing with stack/unstack, melt, or pivot/pivot_table -- Is there a good way to do this?

As An example, in R it would be something like:

dynamic_melt = melt(dynamic, id = c("DateTime", "ColumnName"))
recast = data.frame(cast(dynamic_melt, DateTime ~ ...))

The above data will be variable (i.e. the values of ColumnName won't always be the same thing, there might be more or less of them, and different names).

share|improve this question
If there was only the 'Avg' Column for a value, I could get what I want with: '.pivot('DateTime', 'ColumnName', 'Avg')'. But since there are multiple values, I can't figure out a way to get "flat" version. – Kyle Brandt Oct 21 '12 at 18:17
up vote 7 down vote accepted

There is a melt in pandas.core.reshape:

In [52]: melted = reshape.melt(df, id_vars=['DateTime', 'ColumnName'])

In [53]: melted.set_index(['DateTime', 'ColumnName', 'variable']).value.unstack([1, 2])
ColumnName                  Percent_Used  Current_Count      Max  Percent_Used  Current_Count      Max  Percent_Used  Current_Count      Max
variable                             Min            Min      Min           Avg            Avg      Avg           Max            Max      Max
2012-10-14 11:29:23.810000            24         254503  1048576            24         254503  1048576            24         254503  1048576
2012-10-14 11:34:23.813000            24         254116  1048576            24         254116  1048576            24         254116  1048576

The columns end up being a MultiIndex, but if that's a deal breaker for you just concat the names and make it a regular Index.

share|improve this answer
How might you concat the names, that is where I was confused ("Basically, I want to mimic R's melt/cast without getting into hierarchical indexing or stacked dataframes" -- so was already aware of this, what I am confused on is how to get this into a flat structure with concatenated column names. – Kyle Brandt Oct 22 '12 at 0:48
result.columns = ['_'.join(x) for x in result.columns] – Chang She Oct 22 '12 at 3:35
Still don't follow how to use thta result.columns for the desired result :-/ – Kyle Brandt Oct 22 '12 at 12:43
Suppose result is the output from the answer. So the data is in the shape you want but the columns have 2 levels right? When you iterate over the columns, each element is a tuple (e.g., ('Percent_Used', 'Min')), so my previous comment will result in a flatten single level index. – Chang She Oct 22 '12 at 13:51
Ah, this works great. Somehow in my ipython session I messed up your example which is what lead to confusion. Yay for ipython notebook -- going to start using that -- makes it much easier to keep things straight :-) – Kyle Brandt Oct 22 '12 at 14:37

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