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I have the following data frame in IPython, where each row is a single stock:

In [261]: bdata
Out[261]:
<class 'pandas.core.frame.DataFrame'>
Int64Index: 21210 entries, 0 to 21209
Data columns:
BloombergTicker      21206  non-null values
Company              21210  non-null values
Country              21210  non-null values
MarketCap            21210  non-null values
PriceReturn          21210  non-null values
SEDOL                21210  non-null values
yearmonth            21210  non-null values
dtypes: float64(2), int64(1), object(4)

I want to apply a groupby operation that computes cap-weighted average return across everything, per each date in the "yearmonth" column.

This works as expected:

In [262]: bdata.groupby("yearmonth").apply(lambda x: (x["PriceReturn"]*x["MarketCap"]/x["MarketCap"].sum()).sum())
Out[262]:
yearmonth
201204      -0.109444
201205      -0.290546

But then I want to sort of "broadcast" these values back to the indices in the original data frame, and save them as constant columns where the dates match.

In [263]: dateGrps = bdata.groupby("yearmonth")

In [264]: dateGrps["MarketReturn"] = dateGrps.apply(lambda x: (x["PriceReturn"]*x["MarketCap"]/x["MarketCap"].sum()).sum())
---------------------------------------------------------------------------
TypeError                                 Traceback (most recent call last)
/mnt/bos-devrnd04/usr6/home/espears/ws/Research/Projects/python-util/src/util/<ipython-input-264-4a68c8782426> in <module>()
----> 1 dateGrps["MarketReturn"] = dateGrps.apply(lambda x: (x["PriceReturn"]*x["MarketCap"]/x["MarketCap"].sum()).sum())

TypeError: 'DataFrameGroupBy' object does not support item assignment

I realize this naive assignment should not work. But what is the "right" Pandas idiom for assigning the result of a groupby operation into a new column on the parent dataframe?

In the end, I want a column called "MarketReturn" than will be a repeated constant value for all indices that have matching date with the output of the groupby operation.

One hack to achieve this would be the following:

marketRetsByDate  = dateGrps.apply(lambda x: (x["PriceReturn"]*x["MarketCap"]/x["MarketCap"].sum()).sum())

bdata["MarketReturn"] = np.repeat(np.NaN, len(bdata))

for elem in marketRetsByDate.index.values:
    bdata["MarketReturn"][bdata["yearmonth"]==elem] = marketRetsByDate.ix[elem]

But this is slow, bad, and unPythonic.

share|improve this question
    
You are assigning back to your grouped object instead of your original frame. –  Wouter Overmeire Aug 30 '12 at 16:24
    
I know that and I said so directly below the error, where I said: "I realize this naive assignment should not work. But what is the "right" Pandas idiom for assigning the result of a groupby operation into a new column on the parent dataframe?" Doing the assignment with my original data frame on the LHS doesn't work either, and is even less intuitive that adding the column at the GroupBy-object level. –  EMS Aug 30 '12 at 16:26
    
i`ll add an example. –  Wouter Overmeire Aug 30 '12 at 16:47
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4 Answers

up vote 7 down vote accepted
In [97]: df = pandas.DataFrame({'month': np.random.randint(0,11, 100), 'A': np.random.randn(100), 'B': np.random.randn(100)})

In [98]: df.join(df.groupby('month')['A'].sum(), on='month', rsuffix='_r')
Out[98]:
           A         B  month       A_r
0  -0.040710  0.182269      0 -0.331816
1  -0.004867  0.642243      1  2.448232
2  -0.162191  0.442338      4  2.045909
3  -0.979875  1.367018      5 -2.736399
4  -1.126198  0.338946      5 -2.736399
5  -0.992209 -1.343258      1  2.448232
6  -1.450310  0.021290      0 -0.331816
7  -0.675345 -1.359915      9  2.722156
share|improve this answer
    
This still requires me to save out the groupby computation, rather than having the assignment directly on the LHS on the line where I perform the groupby operation. Apply might be a bit better than the loop in my hack at the bottom of the question, but they are basically the same idea. –  EMS Aug 30 '12 at 17:36
    
Join can do this, but you will need to rename the added column. In this case A_r is new_col. –  Wouter Overmeire Aug 30 '12 at 18:45
    
The join example at the bottom does work, but it's not presented clearly. If you feel like deleting the first part of the answer and making the latter part a little more clear, I will upvote in addition to accepting. –  EMS Sep 8 '12 at 16:50
    
Nice to hear that you find a solution to your problem. Feel free to edit my answer if you think it will others. –  Wouter Overmeire Sep 8 '12 at 19:49
1  
I removed the first approach. To be honest i feel like the code speaks for itself, feel free to edit if you want to add some explanation or references to the docs. I`m not really into the so voting system, just here to support pandas a bit. –  Wouter Overmeire Sep 8 '12 at 20:30
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While I'm still exploring all of the incredibly smart ways that apply concatenates the pieces it's given, here's another way to add a new column in the parent after a groupby operation.

In [236]: df
Out[236]: 
  yearmonth    return
0    201202  0.922132
1    201202  0.220270
2    201202  0.228856
3    201203  0.277170
4    201203  0.747347

In [237]: def add_mkt_return(grp):
   .....:     grp['mkt_return'] = grp['return'].sum()
   .....:     return grp
   .....: 

In [238]: df.groupby('yearmonth').apply(add_mkt_return)
Out[238]: 
  yearmonth    return  mkt_return
0    201202  0.922132    1.371258
1    201202  0.220270    1.371258
2    201202  0.228856    1.371258
3    201203  0.277170    1.024516
4    201203  0.747347    1.024516
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May I suggest the transform method (instead of aggregate)? If you use it in your original example it should do what you want (the broadcasting).

share|improve this answer
    
My understanding was that transform produces an object that looks like the one it was passed. So if you transform a DataFrame, you don't just get back a column, you get back a DataFrame. Whereas in my case, I want to append a new result to the original data frame. Or are you saying that I should write a separate function that takes a data frame, computes the new column, and appends the new column, and then transform with that function? –  EMS Sep 9 '12 at 23:41
    
I agree, transform is a better choice, df['A-month-sum'] = df.groupby('month')['A'].transform(sum) –  Wouter Overmeire Sep 10 '12 at 7:43
    
But why would it be better? It does the same, no? Is it faster? –  K.-Michael Aye Feb 28 '13 at 2:29
    
IMHO, transform looks cleaner. I don't have EMS data to confirm this, but this might work (though the lambda function might have to be modified): bdata['mkt_return'] = bdata.groupby("yearmonth").transform(lambda x: (x["PriceReturn"]*x["MarketCap"]/x["MarketCap"].sum()).sum()) –  cd98 Dec 2 '13 at 19:46
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Does this work?

capWeighting = lambda x: (x["PriceReturn"]*x["MarketCap"]/x["MarketCap"].sum()).sum()

bdata["MarketReturn"] = bdata.groupby("yearmonth").transform(capWeighting)

I use reindex_like for this:

summedbdata = bdata.groupby("yearmonth").apply(lambda x: (x["PriceReturn"]*x["MarketCap"]/x["MarketCap"].sum()).sum())
summedbdata.set_index('yearmonth').reindex_like(bdata.set_index('yearmonth').sort_index(), method='ffill')
share|improve this answer
    
This just fills the entire array with NaNs. Look at my middle example where the lines are "In[262]" and "Out[262]". I want the output of that operation to be directly assignable back as a column in bdata, such that the indices of that small output (two date values) are broadcasted back to the places where they came from in bdata (this info has to be in the groupby object, it's just not clear how to use it without resorting to looping over the groups themselves, which is specifically what I want to avoid doing). –  EMS Aug 31 '12 at 11:54
    
With summedbdata I meant your 'ln 262'. Then you reindex this result according to the original DataFrame, matching their indices on the 2 values in your example. The fill method I provided determines how to fill the rest of the columns (which are NaN by default). –  Def_Os Aug 31 '12 at 12:40
    
I think you're confused. There's only one column involved. For some indices (those which have the same date as date #1) the column will get one constant value. For other indices (those that have date equal to date #2) they'll get the other constant values. There aren't other "columns" to fill. I tested this method and it does not work as you are saying. It doesn't re-index something indexed by date and turn it into something indexed by identifier, which is what my example requires. The date indices derive from places where identifiers have that date, so groupby should know how to inverse-map. –  EMS Aug 31 '12 at 13:09
    
Sorry, I mean 'rows' instead of columns... Also, your bdata must be indexed by yearmonth and sorted with sortlevel(0) for this to work. –  Def_Os Aug 31 '12 at 13:33
    
Right, but I don't want bdata to be indexed by yearmonth. That's a big part of the problem. There are many many repeated yearmonths in bdata -- that's how I made the groupby groups in the first place! bdata can't be indexed by yearmonth, but each result for a yearmonth groupby group can trivially be propagated back as a constant values for all things having the same yearmonth in the original array.. it's just knowing how Pandas expresses this that is not clear to me. –  EMS Aug 31 '12 at 13:55
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