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Is there any way to merge on a single level of a MultiIndex without resetting the index?

I have a "static" table of time-invariant values, indexed by an ObjectID, and I have a "dynamic" table of time-varying fields, indexed by ObjectID+Date. I'd like to join these tables together.

Right now, the best I can think of is:

dynamic.reset_index().merge(static, left_on=['ObjectID'], right_index=True)

However, the dynamic table is very big, and I don't want to have to muck around with its index in order to combine the values.

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What if you created an additional column with the level of the MultiIndex you want to join on and then merged/joined on that on that? Might not be totally efficient, but at least you maintain the index. – Jeff Tratner May 20 '13 at 19:50
    
Yes, that would work. It'd cost some memory, and it wouldn't help speed. At that point, though, I think I might as well drop the index entirely, if it's not going to help speed up merges. – Johann Hibschman May 20 '13 at 21:27
2  
corresponding github issue github.com/pydata/pandas/issues/3662 – Wouter Overmeire May 21 '13 at 19:59
up vote 5 down vote accepted

Yes, since pandas 0.14.0, it is now possible to merge a singly-indexed DataFrame with a level of a multi-indexed DataFrame using .join.

df1.join(df2, how='inner')

The 0.14 pandas docs describes this as equivalent but more memory efficient and faster than:

merge(df1.reset_index(),
      df2.reset_index(),
      on=['index1'],
      how='inner'
     ).set_index(['index1','index2'])

The docs also mention that .join can not be used to merge two multiindexed DataFrames on a single level and from the GitHub tracker discussion for the previous issue, it seems like this might not of priority to implement:

so I merged in the single join, see #6363; along with some docs on how to do a multi-multi join. THat's fairly complicated to actually implement. and IMHO not worth the effort as it really doesn't change the memory usage/speed that much at all.

However, there is a GitHub conversation regarding this, where there has been some recent development https://github.com/pydata/pandas/issues/6360. It is also possible achieve this by resetting the indices as mentioned earlier and described in the docs as well.

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For your first example, how do you select the level of the MultiIndex to use for the join? – Carl G yesterday
    
nvm, the docs say that it joins based upon the index level having the same name as the single-level index. – Carl G yesterday

I get around this by reindexing the dataframe merging to have the full multiindex so that a left join is possible.

# Create the left data frame
import pandas as pd
idx = pd.MultiIndex(levels=[['a','b'],['c','d']],labels=[[0,0,1,1],[0,1,0,1]], names=['lvl1','lvl2'])
df = pd.DataFrame([1,2,3,4],index=idx,columns=['data'])

#Create the factor to join to the data 'left data frame'
newFactor = pd.DataFrame(['fact:'+str(x) for x in df.index.levels[0]], index=df.index.levels[0], columns=['newFactor'])

Do the join on the subindex by reindexing the newFactor dataframe to contain the index of the left data frame

df.join(newFactor.reindex(df.index,level=0))
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