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Task 1: Read each row from one csv file into one seprate txt file.

Task 2: Reverse: in one folder, read text from each txt file and put into a row in a single csv. So, read all txt files into one csv file.

How would you do this? Would Java or Python be good to get this task done in very quickly?

Update: For Java, there are already some quite useful libraries you can use, for example opencsv or javacsv. But better have a look at wikipedia about csv if no knowledge on csv. And this post tells you all the possibilities in Java.

Note: Due to the simplicity of the question, some one pre-assume this is a homework. I hereby declare it is not.

More background: I am working on my own experiments on machine learning and setting up a large scale test set. I need crawl, scrape and file type transfer as the basic utility for the experiment. Building a lot of things by myself for now, and suddenly want to learn Python due to some recent discoveries and get the feeling Python is more concise than Java for many parsing and file handling situations. Hence got this question.

I just want to save time for both you and me by getting to the gist without stating the not-so-related background. And my questions is more about the second question "Java vs Python". Because I run into few lines of code of Python using some csv library (? not sure, that's why I asked), but just do not know how to use Python. That are all the reasons why I got this question. Thanks.

share|improve this question
How would you do this? – Steven Rumbalski Oct 11 '11 at 14:59
To all who answered, why not just sit next to him in class, answer all the questions the prof asks and take his tests for him? – KevinDTimm Oct 11 '11 at 15:39
@KevinDTimm - Easy to say when the homework tag is added afterwards. – LuckyLuke Oct 11 '11 at 16:27
@BPDeveloper - I added it; you couldn't tell before the tag was in place? – KevinDTimm Oct 11 '11 at 16:50
@Flake, just because you mentioned machine learning, there are excellent tools for Python doing number crunching and data analysis. Take a look at it has probably all you need. For machine learning there is which makes use of those libraries you find on – Bernhard Oct 12 '11 at 7:40
up vote 3 down vote accepted

From what you write there is little need on using something specific for CSV files. In particular for Task 1, this is a pure data I/O operation on text files. In Python for instance:

for i,l in enumerate(open(the_file)):
   f = open('new_file_%i.csv' % i, 'w')

For Task 2, if you can guarantee that each file has the same structure (same number of fields per row) it is again a pure data I/O operation:

# glob files
files = glob('file_*.csv')
target = open('combined.csv', 'w')
for f in files:

Whether you do this in Java or Python depends on the availability on the target system and your personal preference only.

share|improve this answer
+1 for pointing out csv module is not needed. – Steven Rumbalski Oct 11 '11 at 15:08

In that case I would use python since it is often more concise than Java. Plus, the CSV files are really easy to handle with Python without installing something. I don't know for Java.

Task 1

It would roughly be this based on an example from the official documentation:

import csv
with open('some.csv', 'r') as f:
    reader = csv.reader(f)
    rownumber = 0
    for row in reader:
        rownumber = rownumber + 1

Task 2

f = open("csvfile.csv","w")
for fname in dirList:
    if fname[-4::] == ".txt":
       g = open("fname")
       for line in g: f.write(line)
share|improve this answer
can be improved with enumerate. Consider: for rownumber, row in enumerate(reader):. – Steven Rumbalski Oct 11 '11 at 15:04
Yes, you are right! – lc2817 Oct 11 '11 at 15:07

In python, Task 1:

import csv
with open('file.csv', 'rb') as df:
    reader = csv.reader(df)
    for rownumber, row in enumerate(reader):
        with open(''.join(str(rownumber),'.txt') as f:

Task 2:

from glob import glob
with open('output.csv', 'wb') as output:
    for f in glob('*.txt'):
        with open(f) as myFile:
            rows = myFile.readlines()

You will need to adjust these for your use cases.

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