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string.txt contains the string (this data is unique) that has to be searched in second file ( input.csv) and when there is a match it has to redirect the output to a file.

Now I have created the code to do this , But when i run this script breaks saying "Out of memory"

Can someone please let me know the best way to do it with max speed and bypassing "Out of memory" error .

I believe its due to huge size of the file , and the complex hash data structure I am building there.

Record count of string.txt = 5611273 ( ~100 MB )

record count of input.csv = 65261242 ( ~2.4 GB)

Below is the sample file content

string.txt

alpha
beta
delta
gamma
bob
tom
jerry

input.csv

alpha|a1|b2|c3
delta|a2|b2|c3
beta|a1|b2|c3
gamma|a1|b2|c3
omega|a1|b2|c3
alpha|a1|b2|c3
delta|a2|b2|c3

Sample Hash DataStructure

   'gamma' => {
                       '4' => [
                                'a1',
                                'b2',
                                'c3'
                              ]
                     },
          'delta' => {
                       '7' => [
                                'a2',
                                'b2',
                                'c3'
                              ],
                       '2' => [
                                'a2',
                                'b2',
                                'c3'
                              ]
                     },

Code

#!/usr/bin/perl
use strict;
use warnings;
use Data::Dumper;
my %hash;
my $key;
local $"="|"; #"
my $count=1;

open(my $INPUT_FH,'<','/home/chidori/input.csv') or die "Can't open the file $!\n";

while(my $line = <$INPUT_FH>) {
  chomp($line);
  my @line = split (/\|/,$line);
  my $key = shift @line;
  push (@{$hash{$key}{$count}},@line);
  $count++;
}

#print Dumper (\%hash);
close($INPUT_FH);

open(my $STRING_FH,'<','/home/chidori/string.txt') or die "Can't open the file $!\n";

while( my $search_string = <$STRING_FH> ) {
  chomp($search_string);
  if (exists $hash{$search_string} ) {
    foreach my $k( keys %{$hash{$search_string}}) {
      my @line_to_print;
      push (@line_to_print,$search_string);
      push (@line_to_print,@{$hash{$search_string}{$k}});
      print "@line_to_print\n";  #Temporarily printing it to STDOUT. But need to redirect it to a outfile
    }
  }
}

close($STRING_FH)
share|improve this question
    
There is two solutions to your problem: 1. add more memories; 2. split your input.csv, process them one by one, then combine the results. By the way, one way to split that input is putting all lines starting with a to file a.csv, all lines starting with b to b.csv, and so on. –  Lee Duhem May 10 '14 at 11:57
    
@mpapec , Please tell me how i can achieve it –  chidori May 10 '14 at 11:59
    
@LeeDuhem On basis i shall split ? Based on size of the file ? Why is that my Hash datastructure causes the script run out of memory . Please tell me –  chidori May 10 '14 at 12:02
1  
@chidori Your input file has about 2.4G data, and you need to keep all of them in the main memory of your computer, so you need a 64-bit operating system and about 3G memory. Or you have to split your input file first, process those smaller files one by one, then combine the results. –  Lee Duhem May 10 '14 at 12:04
1  
Using database is another way to solve this kind of problem. –  Lee Duhem May 10 '14 at 12:08

3 Answers 3

up vote 1 down vote accepted

Chidori, there are several possible solutions, one of them trying to stay close to what you already have. An other one would treat the whole thing as a database.

So, here are first a few comments about your strategy:

  • At this moment, you try to build a huge data-structure from the 2.4GB file and after that, you read in the smaller, to see if there is a match. You could do it the other way around, read in the 'string.txt' into a hash, with the keys as each line of the file and whatever value (undef ?).

  • If you really want to use the input file as a CSV, with the '|' as a separator, use Text::CSV where possible. If it is a plain ASCII like file, then a split on '|' is appropriate and faster.

  • Since you want to print your @line_to_print, there is no real need to create that array first, push things onto it and then print out the elements. print provides a so called 'list context' and thus print $search_string, @{$hash->{$search_string}{$k}} would be sufficient and speed up again a bit.

  • Perl does have a built-in line-counter when reading a file

I hope this gives enough hints on how you can get it work in the limited memory constraints and even speed up the thing. There is then no need to sort the files first, the hash mechanisms have super fast lookup methods itself.

It's a rainy day, a nice moment to do some Perl coding if you need more help.

share|improve this answer

You can sort your csv file by the first value, and then read string.txt into memory, and process csv file in the while loop.

share|improve this answer
    
String.txt and input csv don't have the same number of records . Also not necessary that data in string.txt would be always present in input csv. –  chidori May 10 '14 at 13:46
    
@chidori that is why you make hash out of string.txt, and print only these csv lines which could be found in such hash. –  Сухой27 May 10 '14 at 13:48

Keeping working set small enough is the key to process huge data files on a machine with limited memory resources.

In the problem descripted in the original post, keeping all the contents of input.csv in memory, in other words, using all the contents of that file as working set, will get a working set too large to fit in memory. This is the cause of that "Out of memory" error. To solve this problem, we need to reduce the size of that working set.

Because we are only interested in the lines of input.csv that their first fields are in string.txt, so we can use that string.txt as a filter to filter out the lines of input.csv that we are not interested.

If the result of that filtering is still too large, we can split it to multiple files, process them one by one, then combine these results to get the final result.

  1. read string.txt to create a filter

  2. split input data file

    while (readline) {
            discard current line unless it in filter
            first_char = extract first character of current line
            store current line to file named first_char
    }
    

    It would be much simpler if we can open a file for each entity in string.txt. We cannot do that because file descriptor also a limited resource for a process.

    If after this step some data files are still too large to fit in memory, we need to split them recursively by using similar method.

  3. process each smaller data file, and generate a result file for it

  4. combine all these result files to the final result file

Instead of split input data file manually, you could use a database, and let the database management system do all those works for you. To solve the problem descripted in the original post, you can create a table in the database

    ID  | VALUE
    ----------
    id1 | val1
    id2 | val2

here IDs are the first fields of lines of input.csv, and VALUEs the rest of the corresponding lines.

If you want to use string.txt as a filter, you can insert all lines (as ID, with empty VALUE) of that files into that table first.

After that, you can process the input data file input.csv line by line:

    while (readline) {
            id = extract first field of current line
            search for record with `ID` equals id in table
            if that record exists, update it with a new value;
            else insert a new record
    }

When you finished data import, you can get the final result

    select all record from that table
    write them to a file one by one
share|improve this answer
    
If I have to copy this 2.4gb file into db , how much space would be required . I am using sybase db. –  chidori May 13 '14 at 2:44
    
@chidori I do not know. But normally it will cost about 3G harddisk space. –  Lee Duhem May 13 '14 at 3:14
    
I have around 10gb space for db.. but I think I will go with splitting the input.csv into smaller files and proceed further –  chidori May 13 '14 at 9:11

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