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I'm trying to merge a series of dataframes in pandas. I have a list of dfs, dfs and a list of their corresponding labels labels and I want to merge all the dfs into 1 df in such that the common labels from a df get the suffix from its label in the labels list. i.e.:

def mymerge(dfs, labels):
  labels_dict = dict([(d, l) for d, l in zip(dfs, labels)])
  merged_df = reduce(lambda x, y:
                     pandas.merge(x, y, 
                                  suffixes=[labels_dict[x], labels_dict[y]]),
                     dfs)
  return merged_df

When I try this, I get the error:

pandas.tools.merge.MergeError: Combinatorial explosion! (boom)

I'm trying to make a series of merges that at each merge grows at most by number of columns N, where N is the number of columns in the "next" df in the list. The final DF should have as many columns as all the df columns added together, so it grow additively and not be combinatorial.

The behavior I'm looking for is: Join dfs on the column names that are specified (e.g. specified by on=) or that the dfs are indexed by. Unionize the non-common column names (as in outer join). If a column appears in multiple dfs, optionally overwrite it. Looking more at the docs, it sounds like update might be the best way to do this. Though when I try join='outer' it raises an exception signaling that it's not implemented.

EDIT:

Here is my attempt at an implementation of this, which does not handle suffixes but illustrates the kind of merge I'm looking for:

def my_merge(dfs_list, on):
    """ list of dfs, columns to merge on. """
    my_df = dfs_list[0]
    for right_df in dfs_list[1:]:
        # Only put the columns from the right df
        # that are not in the existing combined df (i.e. new)
        # or which are part of the columns to join on
        new_noncommon_cols = [c for c in right_df \
                              if (c not in my_df.columns) or \
                                 (c in on)]
        my_df = pandas.merge(my_df,
                             right_df[new_noncommon_cols],
                             left_index=True,
                             right_index=True,
                             how="outer",
                             on=on)
    return my_df

This assumes that the merging happens on the indices of each of the dfs. New columns are added in an outer-join style, but columns that are common (and not part of the index) are used in the join via the on= keyword.

Example:

df1 = pandas.DataFrame([{"employee": "bob",
                         "gender": "male",
                         "bob_id1": "a"},
                        {"employee": "john",
                         "gender": "male",
                         "john_id1": "x"}])
df1 = df1.set_index("employee")
df2 = pandas.DataFrame([{"employee": "mary",
                         "gender": "female",
                         "mary_id1": "c"},
                        {"employee": "bob",
                         "gender": "male",
                         "bob_id2": "b"}])
df2 = df2.set_index("employee")
df3 = pandas.DataFrame([{"employee": "mary",
                         "gender": "female",
                         "mary_id2": "d"}])
df3 = df3.set_index("employee")
merged = my_merge([df1, df2, df3], on=["gender"])
print "MERGED: "
print merged

The twist on this would be one where you arbitrarily tag a suffix to each df based on a set of labels for columns that are common, but that is less important. Is the above merge operation something that can be done more elegantly in pandas or that already exists as a builtin?

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1  
What a fun exception! Do you think you could give a small example of what you would like (e.g. a couple of small dataframes and their desired output from mymerge). –  Andy Hayden Jan 7 '13 at 15:57
    
@hayden: see my edit - i gave an example –  user248237dfsf Jan 7 '13 at 17:46
    
suffixes doesn't seem to do anything in your merge1 example (is it needed?) –  Andy Hayden Jan 7 '13 at 18:35
    
might want to try passing right_index=True and left_index=True. Are you merging by the index? –  Zelazny7 Jan 7 '13 at 18:59
    
At the moment, joining a list of dataframes is not supported with suffixes, will have a go adding it later this week. –  Andy Hayden Jan 7 '13 at 19:24

2 Answers 2

up vote 5 down vote accepted
+250

The output of your method:

In [29]: merged
Out[29]: 
         bob_id1  gender john_id1 bob_id2 mary_id1 mary_id2
employee                                                   
bob            a    male      NaN       b      NaN      NaN
john         NaN    male        x     NaN      NaN      NaN
mary         NaN  female      NaN     NaN        c        d

A solution with pandas built-in df.combine_first:

In [28]: reduce(lambda x,y: x.combine_first(y), [df1, df2, df3])
Out[28]: 
         bob_id1 bob_id2  gender john_id1 mary_id1 mary_id2
employee                                                   
bob            a       b    male      NaN      NaN      NaN
john         NaN     NaN    male        x      NaN      NaN
mary         NaN     NaN  female      NaN        c        d

To add a suffix to the columns of each frame, I'd suggest renaming the columns before calling combine_first.

On the other hand, you may want to look into an operation like pd.concat([df1, df2, df3], keys=['d1', 'd2', 'd3'], axis=1), which produces a dataframe with MultiIndex columns. In this case, may want to consider making gender part of the index or live with it's duplication.

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thank you, the reduce/combine_first solution is best and I agree that renaming the dfs before combining is the elegant solution. Can you explain though why this does not cause combinatorial issues while merge does? From the documentation, this seems like an outer join on an index with merge, but they behave very differently... –  user248237dfsf Jan 12 '13 at 16:10
    
Good question -- it seems to be a limitation of the current merge implementation. Opened github issue github.com/pydata/pandas/issues/2690 to follow up on Wes's question above. –  Garrett Jan 14 '13 at 15:47

from the sourcecode:

max_groups = 1L
for x in group_sizes:
    max_groups *= long(x)

if max_groups > 2**63:  # pragma: no cover
    raise Exception('Combinatorial explosion! (boom)')

And, in the same file

# max groups = largest possible number of distinct groups
left_key, right_key, max_groups = self._get_group_keys()

The line max_groups *= long(x) indicates that it is not additive, thus critical.

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