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How do you append a new column of data to an existing .txt file? Basically I'm generating 5 dictionaries and each time I generate one I want to write the values to a master text file in a new column. I'll display my code even though you won't be able to run it because it calls another program I wrote:

# Import personal module
import graphGenerator as gg
# Open file for writing data to
case=open(r'J:\FOIL\mediansandmeans.txt','w')
# Run code
for i in range(5):
    # create a graph using NetworkX and a code I wrote to read in an edgelist from a txt file
    G=gg.graph_creator(i+1)
    # calculate degree of all nodes using NetworkX--returns a dictionary
    d=nx.degree(G,weighted=True)
    # print dictionary values to text file
    for j in d.keys():
        case.write('%s\n' % d[j])

Now how do I have the program begin a new column for every dictionary?

share|improve this question
    
That is some weird indentation you have there. –  Asad May 23 '13 at 17:21
    
Please check your indentation, as python is whitespace sensitive. –  thegrinner May 23 '13 at 17:21
    
Why don't you use a database for this? If you want to stick with files, use pandas or numpy depending on what kind of data you are dealing with; otherwise you'll just have to read the entire file, add your column and then write the file again. –  Burhan Khalid May 23 '13 at 17:23
1  
You may also want to consider building up the CSV in transposed form, so instead of adding a new column each time, you're just adding a new row (which you can do by appending to the file in-place). If necessary, transpose it when you're done, which means rewriting the file once, but that's better than N times. –  abarnert May 23 '13 at 17:32
1  
Or, alternatively, keep each column in a separate file, and then merge them into one CSV when you're done. –  abarnert May 23 '13 at 17:33

4 Answers 4

Text files are stored sequentially; line two begins where line one ends. You can modify material in the middle, but to add even one character (or to delete even one), you need to read everything that follows and write it again in its new offset in the file. In other words, you must read and write out the whole file, or use a different storage model (e.g., a database), as others suggested.

If you really had to add information to a file column-wise, you could do it by writing out fixed-length lines, padded with spaces; you then seek through the file and overwrite some of the spaces with new data. I won't provide code because it's a terrible approach: fixed-length records went out with the 1970s. And I really don't think it's necessary or appropriate in your case.

Looking at your code, I don't think you need to be adding columns to a file. I think the best solution would actually be to collect the values in a two-dimensional array, so you can write them out all at once, in the desired format, when you're done. Unless you have gigabytes worth of points, there's no reason to write them out one column at a time.

Edit: Since you like the array idea, here's how to create it and write it out easily:

from collections import defaultdict
degrees = defaultdict(list)

for i in range(5):
    G=gg.graph_creator(i+1)
    d=nx.degree(G,weighted=True)
    for j in d.keys():
       degrees[j].append(d[j])

for k in sorted(degrees.keys()):
    case.write("%s: %s\n" % (k, "\t".join(degrees[k])))

The "two dimensional array" is actually a dictionary of lists, in keeping with your version. (I take it that all returned dictionaries have exactly the same keys.) The code uses two handy python features: The defaultdict class saves you the trouble of creating each array row explicitly when recording the first column. And the output code joins the five values into a single tab-separated string for output.

Note also that unless you sort the keys of a dictionary, you'll get them in arbitary order-- usually not what you want on output.

share|improve this answer
    
Thanks so much, I hadn't thought of a two-dimensional array, I think that will work great! –  user2414615 May 23 '13 at 18:30
    
+1. But if the keys are already sorted, or otherwise ordered in a consistent way, you can just use OrderedDict and skip the manual sorting. (There's a trick required to make a dict ordered and defaulted at the same time, but the trick is explained in the stdlib documentation.) –  abarnert May 23 '13 at 22:47
    
Thanks, @abarnert, good suggestion. But note that nx.degree() would need to return an OrderedDict for this to work. Anyway, there are other refinements possible with the code (e.g., no need to explicitly mention .keys() when iterating). I assume the OP is not an expert programmer, so I kept it clear and simple. –  alexis May 25 '13 at 19:50

As alexis explains, text files are not randomly accessible or modifiable. To insert new data into the middle of a text file, you have to write an entirely new file.

But is that really a problem? You're only doing this 5 times. And, since modern computers are pretty good at spamming huge amounts of sequential data to the hard drive, and not as good at randomly seeking and writing, the wasted time may not be that much. And this is dead simple. For example:

bakpath = path+'.bak'
os.rename(path, bakpath)
with open(path, 'rb') as infile, open(bakpath, 'wb') as outfile:
    writer = csv.writer(outfile)
    for row, newvalue in zip(csv.reader(infile), newvalues):
        row.append(newvalue)
        writer.writerow(row)

If it is, there are a few ways to improve things.


Most obviously, you can use a database (like sqlite3) or table system (like pandas or pytables) instead of a CSV file. On top of being already written and easy to use, they'll also probably be better optimized than whatever you come up with.


Or just use a separate file for each column. You can still access them almost as if they were one file, like this:

with closing_all([open(path, 'rb') for path in paths]) as files):
    for row in zip(*files):
        # each row is a tuple of columns

That closing_all isn't built into the stdlib, but you can write it trivially:

@contextmanager
def closing_all(things):
    try:
        yield things
    finally:
        for thing in things:
            thing.close()

If you need to merge them all into one file at the end, that's easy to do, and it means you're rewriting the whole thing 1 time instead of N times.


You could also build a random-access file yourself. If you know the max column lengths and number of columns in advance, you can just pad each column with spaces:

COLUMN_LENGTHS = 20, 15, 41, 12, 19
COLUMN_STARTS = [0] + list(itertools.accumulate(COLUMN_LENGTHS))
ROW_LENGTH = COLUMN_STARTS[-1] + 1

def read_cell(f, row, column):
    f.seek(row * ROW_LENGTH + COLUMN_STARTS[column])
    return f.read(COLUMN_LENGTHS[column]).rstrip()

def write_cell(f, row, column, value):
    f.seek(row * ROW_LENGTH + COLUMN_STARTS[column])
    padded = value.ljust(COLUMN_LENGTHS[column])
    f.write(padded)

If you don't know them in advance, but can roughly estimate, you can always use the same trick that list and similar classes use: Overestimate, and whenever you turn out to be wrote, multiply by some constant and copy over the old thing into a newly-expanded version. This means you're only rewriting the file log N times instead of N times.


Another alternative is to keep the file in transposed format, so you're just adding a new row instead of a new column. That you can do just by opening the file in 'a' mode and writing to it.

If necessary, you can always transpose it back at the end, which means you're rewriting the file once instead of N times.

share|improve this answer
    
Thanks. Actually, I intend to use this code to do this 133 times. ;) And unfortunately, I am working on a government computer, so I can't install any other libraries without a delay of several weeks while I get the Help Desk to authorize an installation and then perform it and hopefully get it correct. I only have basic Python. –  user2414615 May 23 '13 at 18:32
    
@user2414615: csv, os, contextlib, sqlite3, itertools, almost everything I mentioned, are part of "basic Python". (The only exceptions are pandas and pytables, which I mentioned in passing in parentheses.) If you're not using the standard library that comes with Python, you're not using Python; that's what "batteries included" is all about. –  abarnert May 23 '13 at 18:45
    
Thanks for all the help! I was not aware of some of these (sqlite3 and contextlib). I will research into them more. –  user2414615 May 23 '13 at 19:48
    
@user2414615: See docs.python.org/library for a list of all of the libraries that come with Python. (Make sure to select the right Python version in the option menu in the upper left.) –  abarnert May 28 '13 at 8:25
    
I don't mean to be pedantic, @abarnert, but text files are randomly accessible and modifiable: you can seek to any offset in the file, and you can read or write whatever you want. It's just that every byte you write will overwrite the byte that was there before: what you can't do is insert some bytes in the middle, and expect the rest of the file contents to shift down to accommodate them. –  alexis May 28 '13 at 20:10

It would be inefficient to append a new column to a text file. Either slurp the whole file in, add your column, and overwrite the existing file, or use something which has a native concept of columns, like a database, or xml file.

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I agree that it would be inefficient however if you must/really want to use files with columns, make a CSV with a ' ' delimiter like so:

For example, if you create a list for each row and then append each value you want for a column, you can write them like so:

import csv
with open('J:\FOIL\mediansandmeans.csv', 'wb') as case:
    writer = csv.writer(case, delimiter=' ',
                            quotechar='"', quoting=csv.QUOTE_MINIMAL)
    writer.writerow(['your', 'first list', 'of rows'])
    writer.writerow(['your', 'second list', 'of rows'])

You can read more in the csv documentation

But really you should be using a database for this kind of stuff. Have you looked at sqlite3?

share|improve this answer
    
Thanks! As noted above, unfortunately I am working on a government computer, so I can't install any other libraries without a delay of several weeks while I get the Help Desk to authorize an installation and then perform it and hopefully get it correct. I only have basic Python. –  user2414615 May 23 '13 at 18:32
2  
@user2414615: The csv library is built in to the stdlib, so you already have it. Same with sqlite3. If you click on the documentation links in kisamoto's answer, they go right to the python.org site and make this obvious. –  abarnert May 23 '13 at 18:43
    
Thanks @abarnert - beat me to it. Yup Both sqlite3 and csv are present in Python > 2.5 standard libraries. If you have python installed just import csv, sqlite3 –  Ewan May 23 '13 at 18:51
    
Thanks, will do –  user2414615 May 23 '13 at 19:25

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