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I have data that looks like this:

Observation 1  
Type : 1  
Color: 2  

Observation 2  
Color: 2  

Resolution: 3

Originally what I had done was to attempt to create a csv that looked like:

1,2  
2,3  # Only problem here is that the data should look like this 1,2,\n ,2,3 #  

I performed the following operation:

while linecache.getline(filename, curline):  
    for i in range(2):    
        data_manipulated = linecache.getline(filename, curline).rstrip()    
        datamanipulated2 = data_manipulated.split(":")  
        datamanipulated2.pop(0)  
        lines.append(':'.join(datamanipulated2))  

This is quite a large dataset and I tried to find ways to verify that the above problem doesn't happen so that I can compile the data appropriately and with checks. I came across dictionaries, however, performance is a big issue for me and I would prefer lists if that's possible (at least, my understanding is that dictionaries can be significantly slower?). I was just wondering if anyone had any suggestions on the quickest and most robust way to do this?

Thanks in advance.

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3  
Umm, what exactly is your problem? –  Falmarri May 25 '12 at 1:31

1 Answer 1

How about something like:

input_file = open('/path/to/input.file')
results = []
for row in file:
    m = re.match('Observation (\d+)', row)
    if m:
        observation = m.group(1)
        continue
    m = re.match('Color: (\d+)', row)
    if m:
        results.append((observation, m.group(1),))
        print "{0},{1}".format(*results[-1])

You can speedup using precompiled regular expressions.

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