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I'm trying to import several files from CSV into a single dataframe and am getting the following error when trying to add the third dataframe.

AssertionError: cannot create BlockManager._ref_locs because block [ObjectBlock: [CompletionDate, Categories, DateEntered_x, <lots more columns here>...], dtype=object)] does not have _ref_locs set

The code is:

project = pandas.read_csv(read_csv('dbo_Project.csv')
project = pandas.read_csv(read_csv('dbo_ProjectEnergy.csv')
project = pandas.read_csv(read_csv('dbo_BuildingDescription.csv')
part_merged = pandas.merge(project, project_energy,
part_merged = pandas.merge(part_merged, project_energy_data,
part_merged = pandas.merge(part_merged, building_description,

How should I be joining these dataframes to avoid this problem?

Edited in response to answer from Stefan Jansen:

The new code up to the point where the new error occurs is:

project = pandas.read_csv(read_csv('dbo_Project.csv')
project = pandas.read_csv(read_csv('dbo_ProjectEnergy.csv')
part_merged = pandas.concat([project, project_energy],
part_merged = pandas.concat([self.part_merged,
share|improve this question
What version of pandas are you using? – Phillip Cloud Aug 11 '13 at 16:15
Just updated to 0.12 which is why I at least have a semi-intelligible error message now. – Jamie Bull Aug 11 '13 at 16:20
this bug is resolved in master, but concat is the right way to do this – Jeff Aug 11 '13 at 16:32

I prefer using pandas.concat() for multiple frames. Also has 'outer' option - see documentation.

This would work well in case the columns you want to merge on are index columns, which you can achieve using pandas.set_index(), possibly preceded by .reset_index().

share|improve this answer
I'll give that a try. What's the equivalent of on to select the column to combine on? – Jamie Bull Aug 11 '13 at 16:24
Documentation, axis=0, join='outer', join_axes=None, ignore_index=False, keys=None, levels=None, names=None, verify_integrity=False). The idea is to use row or column index (axis = 0 or 1). Your 'ProjectEnergyID' sound like they could reasonably be set to index by set_index(['ProjectEnergyID']) after loading and then concatenating all DataFrames on this index. – Stefan Aug 11 '13 at 17:39
I've tried that and it doesn't seem to be working. What I end up with is a stack of the three dataframes with blanks for all columns which aren't present in the other dataframe. What I'm looking for is for those blanks to be filled in from the other dataframe where there is a match in the column I'm merging on. – Jamie Bull Aug 11 '13 at 18:37
The axis=1 option allows you to concat horizontally using a common index for all DataFrames you want to merge. The default axis = 0 will lead to a vertical stack. – Stefan Aug 11 '13 at 18:44
Thanks, we're getting somewhere now I think. At least, it's working for the first concatenation - but then on the second one I get ValueError: Shape of passed values is (136, 5), indices imply (136, 3) – Jamie Bull Aug 11 '13 at 19:19
up vote 4 down vote accepted

A nice simple answer.

The issue was duplicated columns. The columns that caused the issue were not important and so I just dropped them before merging.

def remove_clashes(df):
    unwanted_cols = ['DataCompleteness', 'DeletedFlag','DateEntered', 'EnteredBy',
        'LastModified', 'MandatoryDataInput', 'ModifiedBy']
    return df.drop([col for col in unwanted_cols if col in df.columns], axis=1)
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