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I'm trying to do a three way cross-match matching 3 elements between a text file and a CSV and as a result of each match we would be calling/getting certain elements to be appended to a string...

Text file item's should be split by two new lines /n/n

Textfile item line 1 should be matching up to a line(s) in CSV Element 2 Textfile item line 2 should be matching up to a line(s) in CSV Element 1

If both matches are a success then it needs to match the students name, in the first case "Tommy" with CSV Element 9

Once all three variables are matched we know what line CSV line we are matched on, now from this we need to record CSV Element 10, we also need to find "Data 2" from the textfile item

We need to then all again for the next few names, in our first example it's Jim, Elz M and Ben

At the end of running the script I should be able to do something like:

print Match1[0], Match3[0], Match1[0], Data1[0], Data2[0]
print Match1[1], Match3[1], Match1[1], Data1[1]
print Match1[2], Match3[2], Match1[2], Data1[2]

Which would output:

DMATCH1 MData (N/A) Tommy 55 Data2 $10.40
DMATCH1 MData (N/A) Jim 52
DMATCH1 MData (N/A) Elz M 22

My CSV looks like:

MATCH1,MATCH2,TITLE,TITLE,TITLE,TITLE,TITLE,TITLE,MATCH3,DATA,TITLE,TITLE
DMATCH1,MData (N/A),data,data,data,data,data,data,Tommy,55,data,data
DMATCH1,MData (N/A),data,data,data,data,data,data,Ben,54,data,data
DMATCH1,MData (N/A),data,data,data,data,data,data,Jim,52,data,data
DMATCH1,MData (N/A),data,data,data,data,data,data,Elz M,22,data,data
DMATCH2,MData (B/B),data,data,data,data,data,data,James Smith,15,data,data
DMATCH2,MData (B/B),data,data,data,data,data,data,Jessica Long,224,data,data
DMATCH2,MData (B/B),data,data,data,data,data,data,Mike,62,data,data
DMATCH3,Mdata,data,data,data,data,data,data,Joe Reane,66,data,data
DMATCH3,Mdata,data,data,data,data,data,data,Peter Jones,256,data,data
DMATCH3,Mdata,data,data,data,data,data,data,Lesley Lope,5226,data,data

My text file consists of:

MData (N/A)
DMATCH1
3 Tommy 144512/23332
1 Jim 90000/222311
1 Elz M 90000/222311
1 Ben 90000/222311
Data $50.90
Data2 $10.40
Data3 $20.20


MData (B/B) 
DMATCH2
4 James Smith 2333/114441
4 Mike 90000/222311
4 Jessica Long 2333/114441
Data $50.90
Data2 $5.44


Mdata
DMATCH3
5 Joe Reane 0/0
5 Peter Jones 90000/222311
Data $10.91
Data2 $420.00
Data3 $210.00

If it makes it easier I could modify the text file so it is also in csv format

Example:

MData (N/A),DMATCH1,3 Tommy 144512/23332,1 Jim 90000/222311,1 Elz M 90000/222311,   1 Ben 90000/222311,Data $50.90,Data2 $10.40,Data3 $20.20
share|improve this question
    
It might be better to import this into SQLite as separate tables and perform joins there instead. This is pretty convoluted and complex to try in Python. –  Makoto Oct 3 '13 at 5:45
    
@Makoto I thought someone would mention using SQL to do it, but unfortunately I can't use SQL unless python can easy control and use SQLLite to fully automate it... –  Ryflex Oct 3 '13 at 15:40

1 Answer 1

up vote 1 down vote accepted

This would be my attempt:

from collections import defaultdict
import re

# Nested defaultdict for data structure
def make_map():
    def make_map_dict():
        return defaultdict(dict)
    return defaultdict(make_map_dict)

# Read in the data
with open('/path/to/your/txt_file.txt', 'r') as f:
    txt_data = [map(str.strip, x.split('\n')) for x in map(str.strip, f.read().split('\n\n')) if x]

with open('/path/to/your/csv_file.csv', 'r') as f:
    header = f.readline()
    csv_data = [map(str.strip, x.split(',')) for x in map(str.strip, f.read().split('\n')) if x]

# Generate a mapping dictionaries
txt_map = defaultdict(make_map)
csv_map = defaultdict(make_map)

# Regex matches
name_re = re.compile(r'^(\d+) +(\w+(?: \w+)*) +(\d+/\d+)$')
data_re = re.compile(r'^(Data(?:\d+)?) +(\$\d+(?:\.\d{2})?)$')

# Make txt mapping
for datapoint in txt_data:
    names = [name_re.match(x).group(2) for x in datapoint[2:] if name_re.match(x)]
    data = {data_re.match(x).group(1): data_re.match(x).group(2) for x in datapoint[2:] if data_re.match(x)}
    for name in names:
        txt_map[datapoint[1]][datapoint[0]][name] = data

# Make csv mapping
for datapoint in csv_data:
    csv_map[datapoint[0]][datapoint[1]][datapoint[8]] = [datapoint[9]]

# Merge maps
final_map = defaultdict(make_map)
for x in txt_map:
    for y in txt_map[x]:
        for z in txt_map[x][y]:
            if csv_map[x][y][z] is not None:
                final_map[x][y][z] = csv_map[x][y][z] + [txt_map[x][y][z]]

# You now have final_map to do with what you will

This leaves you with a nested data structure. You could flatten and zip it if needed. Hope it helps!

share|improve this answer
    
Traceback (most recent call last): File "C:\test.py", line 13, in <module> txt_data = [map(str.strip, x.split('\n')) for x in map(str.strip, f.readall().split('\n\n')) if x] AttributeError: 'file' object has no attribute 'readall' Any ideas? –  Ryflex Oct 5 '13 at 1:28
    
maybe replace readall() with read() –  Josha Inglis Oct 5 '13 at 5:04

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