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I have a set of 100 files. 50 files containing census information for each US state. The other fifty are geographic data that need to be merged with the correct file for each state.

For each state, the census file and its corresponding geo file are related by a common variable, LOGRECNO, that is the 10th column in the census file and the 7th column in the geo file.

The problem is that the geo file has more rows than the census file; my census data does not cover certain subsets of geographic locations and hence has fewer rows than the geo data file.

How can I merge the census data with the geographic date (keeping only the rows/geo locations where census data exists, don't care about the rest)?

I am a newbie to Python and I somewhat know how to do basic csv file i/o in python. Manipulating 2 csvs at the same time is proving confusing.

Example:

sample_state_census.csv

Varname 1 Varname 2 ... Varname 10 (LOGRECNO) ... Varname 16000
xxx       xxx    ...       1             ...               xxx
xxx       xxx    ...       2             ...               xxx
...
...
xxx       xxx   ...        514           ...                xxx
xxx       xxx   ...        1312          ...                xxx
...
...
xxx       xxx   ...        1500          ...                xxx

sample_state_geo.csv

GeoVarname 1 GeoVarname 2 ... GeoVarname 7 (LOGRECNO) ... GeoVarname 65
yyy       yyy    ...       1             ...               yyy
yyy       yyy    ...       2             ...               yyy
...
...
yyy      yyy  ...        514           ...                yyy
yyy      yyy   ...        515          ...                yyy
...
...
yyy     yyy  ...        1500          ...                yyy

Expected output (don't merge rows for values of LOGRECNO that don't exist in sample_state_census.csv)

Varname 1 Varname 2 ... Varname 10 (LOGRECNO) GeoVarname 1 GeoVarname 2 ... GeoVarname 65 Varname 11... Varname 16000 
xxx       xxx    ...       1  yyy yyy ... yyy xxx            ...               xxx
xxx       xxx    ...       2 yyy yyy ... yyy xxx            ...               xxx
...
...
xxx       xxx   ...        514    yyy yyy ... yyy xxx       ...                xxx
xxx       xxx   ...        1312      yyy yyy ... yyy xxx    ...                xxx
...
...
xxx       xxx   ...        1500    yyy yyy ... yyy xxx      ...                xxx
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2  
What do you expect the output to be? If you could show a toy example - two rows, three columns for one; three rows, two columns for the other; and "n rows, m columns" for the output - it would be easier for people to give you a workable answer. What did you try so far? –  Floris Sep 8 '13 at 22:58
    
Done. I have been trying to merge it in MATLAB, but the variables are so large that my system slows down a lot. Each census file is 1 GB or more in size. At the same time, I don't have experience coding in any other language. –  ankit Sep 8 '13 at 23:20
    
Does your OS have things like perl, grep, or awk (Mac, Linux, Ubuntu, Cygwin, ...? Those tools would give you very powerful processing of this type of file. –  Floris Sep 8 '13 at 23:46

1 Answer 1

up vote 0 down vote accepted

Read data from the shorter file into memory, into a dictionary keyed on the LOGRECNO row:

import csv

with open('sample_state_census.csv', 'rb') as census_file:
    reader = csv.reader(census_file, delimiter='\t')
    census_header = next(reader, None)  # store header
    census = {row[9]: row for row in reader}

then use this dictionary to match against the geo data, write out matches:

with open('sample_state_geo.csv', 'rb') as geo_file:
    with open('outputfile.csv', 'wd') as outfile:
        reader = csv.reader(geo_file, delimiter='\t')
        geo_header = next(reader, None)  # grab header
        geo_header.pop(6) # no need to list LOGRECNO header twice

        writer = csv.writer(outfile, delimiter='\t')
        writer.writerow(census_header + geo_header)

        for row in reader:
            if row[6] not in census:
                # no census data for this LOGRECNO entry
                continue
            # new row is all of the census data plus all of geo minus column 7
            newrow = census[row[6]] + row[:6] + row[7:]
            writer.writerow(newrow)

This all assumes the census file is not so big as to take up too much memory. If that's the case you'll have to use a database instead (read all data into a SQLite database, match in the same vein agains the geo data).

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