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I have a file in which i provide steps and then based on the steps the content to follow. Here is the textfile that i read in:

[Steps]
step1 = WebAddress
step2 = Tab
step3 = SecurityType
step4 = Criteria
step5 = Date
step6 = Click1
step7 = Results
step8 = Download
[data]
WebAddress___________________________ Destination___________ Tab_____________ SecurityType___________________________________________________ Criteria___ Date_______ Click1_ Results_ Download    
https://mbsdisclosure.fanniemae.com/  q:\\%s\\raw\\fnmapool  Advanced Search  Interim MBS: Single-Family                                      Issue Date  09/01/2012  Search  100      CSV XML
https://mbsdisclosure.fanniemae.com/  q:\\%s\\raw\\fnmapool  Advanced Search  Preliminary Mega: Fannie Mae/Ginnie Mae backed Adjustable Rate  Issue Date  09/01/2012  Search  100      CSV XML
https://mbsdisclosure.fanniemae.com/  q:\\%s\\raw\\fnmapool  Advanced Search  Preliminary Mega: Fannie Mae/Ginnie Mae backed Fixed Rate       Issue Date  09/01/2012  Search  100      CSV XML

I already have a working model in reading the file, and then assignning the correct content to the correct header (e.g. the url to the header WebAdress). However, what i want to do is follow the looping based on the steps. Code to process the data:

from itertools import groupby
count =0
file_name = "FNMA.tbl"
with open(file_name) as f:
      pre_data,post_data =[s.strip() for s in (f.read()).split("[data]")]
post_data_lines = post_data.splitlines()
headers = post_data_lines[0].split()
headers2 = [s.replace("_"," ").strip() for s in headers]
for line in post_data_lines[1:]:
    tmpline  = []
    pos = 0
    for itm in headers:
        tmpline.append(line[pos:pos+len(itm)])
        pos += len(itm)+1
    myDict= dict(zip(headers2,tmpline))
    count += 1
    for key, group in groupby(myDict.iteritems(), lambda x: x[0]):
        for thing in group:
            print "step: %s header: %s" % (thing[1], key)
    print "Finished processing row %s" % count
share|improve this question
    
You don't need to use _ as column padding, .split() will collapse multiple spaces into one split position ("ab cd".split() -> ["ab", "cd"]), and you can pass in custom characters to strip (" ab____ ".strip('_ ') -> "ab". –  Martijn Pieters Sep 6 '12 at 15:08
    
@MartijnPieters: I think the _ padding is being used for column width information so that entries like "Advanced Search" don't need to be quoted. [Myself, I'd just quote them.] –  DSM Sep 6 '12 at 15:38
    
@DSM: Indeed; I'd use CSV here to leave the handling of quotes up to a specialized module. –  Martijn Pieters Sep 6 '12 at 15:41

1 Answer 1

up vote 0 down vote accepted

First, create a dictionary mapping the name of a step to a number, like this:

steps = dict((step.split()[2], pos) 
        for (pos, step) in enumerate(pre_data.splitlines()[1:]))

(Granted, this is a pretty ugly line of Python, but it seems to work)

Now, you can sort the items in your dict by those steps:

sorted_items = sorted(myDict.items(), 
        key=lambda item: steps[item[0]] if item[0] in steps else 999)

And iterate over those items:

for key, thing in sorted_items:
    print "step: %s header: %s" % (thing, key)
share|improve this answer
    
Thanks! it worked! –  user1582983 Sep 6 '12 at 15:40

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