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I'm using C# and I write my data into csv files (for further use). However my files have grown into a large scale and i have to transpose them. what's the easiest way to do that. in any program?


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Transpose them how and to what? And why have you only accepted 25% of answers provided to you? – Jonathan Wood May 5 '11 at 16:34
Can you clarify what you mean by "transpose"? – Kyle Trauberman May 5 '11 at 16:34
Do you mean like a matrix transpose, turning row #1 into column #1, row #2 into column #2 and so on? – Anders Lindahl May 5 '11 at 16:44
exactly. but the table is pretty big. too big for excel – gilibi May 5 '11 at 16:45
I think you will need to provide an example of the data format (even if simplified). CSV doesn't natively support tables in a row, so I am guessing that you have something like ROWID, normaldata1, normaldata2, item11, item12, item21, item22, item31, item32? But that makes no sense as all transposing would require is reading and writing new headers in that case, so maybe you have multiple CSV files? Making the answering into a guessing game is going to make most just move on... – Godeke May 5 '11 at 16:58
up vote 2 down vote accepted

In increasing order of complexity (and also increasing order of ability to handle large files):

  • Read the whole thing into a 2-D array (or jagged array aka array-of-arrays).
    • Memory required: equal to size of file

  • Track the file offset within each row. Start by finding each (non-quoted) newline, storing the current position into a List<Int64>. Then iterate across all rows, for each row: seek to the saved position, copy one cell to the output, save the new position. Repeat until you run out of columns (all rows reach a newline).
    • Memory required: eight bytes per row
    • Frequent file seeks scattered across a file much larger than the disk cache results in disk thrashing and miserable performance, but it won't crash.

  • Like above, but working on blocks of e.g. 8k rows. This will create a set of files each with 8k columns. The input block and output all fit within disk cache, so no thrashing occurs. After building the stripe files, iterate across the stripes, reading one row from each and appending to the output. Repeat for all rows. This results in sequential scan on each file, which also has very reasonable cache behavior.
    • Memory required: 64k for first pass, (column count/8k) file descriptors for second pass.
    • Good performance for tables of up to several million in each dimension. For even larger data sets, combine just a few (e.g. 1k) of the stripe files together, making a smaller set of larger stripes, repeat until you have only a single stripe with all data in one file.

Final comment: You might squeeze out more performance by using C++ (or any language with proper pointer support), memory-mapped files, and pointers instead of file offsets.

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It really depends. Are you getting these out of a database? The you could use a MySql import statement. http://dev.mysql.com/doc/refman/5.1/en/load-data.html

Or you could use could loop through the data add it to a file stream using streamwriter object.

StreamWriter sw = new StreamWriter('pathtofile');
foreach(String[] value in lstValueList){
String something = value[1] + "," + value[2];
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the problem is that the file is large: 26000X10000 when transposed i can even process that in excel. apperantly SQL and MySql can't import that much – gilibi May 5 '11 at 16:44

I wrote a little proof-of-concept script here in python. I admit it's buggy and there are likely some performance improvements to be made, but it will do it. I ran it against a 40x40 file and got the desired result. I started to run it against something more like your example data set and it took too long for me to wait.

path = mkdtemp()
try :
    with open('/home/user/big-csv', 'rb') as instream:
        reader = csv.reader(instream)        
        for i, row in enumerate(reader):
            for j, field in enumerate(row):                
                with open(join(path, 'new row {0:0>2}'.format(j)), 'ab') as new_row_stream:
                    contents = [ '{0},'.format(field) ]
            print 'read row {0:0>2}'.format(i)
    with open('/home/user/transpose-csv', 'wb') as outstream:
        files = glob(join(path, '*'))
        for filename in files:
            with open(filename, 'rb') as row_file:
                contents = row_file.readlines()          
                outstream.writelines(contents + [ '\n' ]) 
    print "done"
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