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I am trying to read a space delimited file with hierarchical indexes in a separate part of a file. This is what I have come up with:

import pandas as pd
o = open(doc, 'rU')
for i in o:
    if i.startswith("DATA="):
        meta_ends=o.tell() + 5
        break
dp = pd.read_table(o, delim_whitespace=True, 
  lineterminator='\n', header=None, index_col=None)

File looks like this:

 META (the exact structure is probably not relevant for this example)
 DATA=1 2 3 4
 5 6 7 9
 10 11 12 13    

Data has space delimited columns and line break separated rows.

I have created MultiIndexes for rows and columns with pd.MultiIndex.from_arrays, which I parse separately. This is what I should end up with:

                               Column 1                Column 2
Row label 1 Row label 2
Koko maa    1989               2008231.0               4891866.0   
            1990               2036693.0               4924388.0   
Akaa        1989                  6436.0                 15637.0   
            1990                  6548.0                 15775.0   
Alajärvi    1989                  3777.0                 11653.0   
            1990                  3831.0                 11747.0   

My previous approach was to read the data portion to memory and then create a DataFrame like so:

col_index = pd.MultiIndex.from_arrays(cols)
row_index = pd.MultiIndex.from_arrays(rows)
return pd.DataFrame(data, index=row_index, columns=col_index)

With 500Mb+ data and 5M row labels and 50+ columns Pandas reads all available memory (16Gt with swap, which does not work). With read_table, I can save memory by reading the data portion only once.

My question is how to set MultiIndexes for both rows and columns to an existing DataFrame?

Or is there a way to give read_table an external MultiIndex?

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1 Answer

up vote 1 down vote accepted

You can set the column and row index after the fact using

df.index = row_index
df.columns = col_index

For example,

import pandas as pd
import io

content = '''\
    176.792 -2.30523 0.430772 32016 1 1 2
    177.042 -1.87729 0.430562 32016 1 1 1
    177.047 -1.54957 0.431853 31136 1 1 1
    177.403 -0.657246 0.432905 31152 1 1 1
'''
df = pd.read_table(io.BytesIO(content), sep='\s+', header=None)
arrays = [['bar', 'bar', 'baz', 'baz', 'foo', 'foo', 'qux', 'qux'],
          ['one', 'two', 'one', 'two', 'one', 'two', 'one', 'two']]
tuples = zip(*arrays)
row_index = pd.MultiIndex.from_tuples(tuples[:len(df)])
col_index = pd.MultiIndex.from_tuples(tuples[:len(df.columns)])
df.index = row_index
df.columns = col_index
print(df)

yields

             bar                 baz         foo       qux
             one       two       one    two  one  two  one
bar one  176.792 -2.305230  0.430772  32016    1    1    2
    two  177.042 -1.877290  0.430562  32016    1    1    1
baz one  177.047 -1.549570  0.431853  31136    1    1    1
    two  177.403 -0.657246  0.432905  31152    1    1    1
share|improve this answer
    
Thank you. This answers my question perfectly. Using this I realised (yet again) that my data is actually delimited only by space and chunked into parts by number of columns. I will create a new question for that. –  jarpineh Apr 8 '13 at 14:15
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