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I need the advice from someone who knows very well java and the memory issues. I have a large file (something like 1.5GB) and I need to cut this file in many(100 small files for example) smaller files. I Know generally how to do it (using a BufferedReader), but I would like to know if you have any advice regarding the memory, or tips how to do it faster. My file containt text, it is not binary and I have about 20 character per line.

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Use byte APIs (e.g. FileInputStream, ByteChannel), rather than character APIs (BufferedReader, etc.). Otherwise, you are encoding and decoding needlessly. – Matthew Flaschen Mar 1 '10 at 13:43
Splitting a text file using bytes would be a bad idea. – james Mar 1 '10 at 16:23
up vote 19 down vote accepted

First, if your file contains binary data, then using BufferedReader would be a big mistake (because you would be converting the data to String, which is unnecessary and could easily corrupt the data); you should use a BufferedInputStream instead. If it's text data and you need to split it along linebreaks, then using BufferedReader is OK (assuming the file contains lines of a sensible length).

Regarding memory, there shouldn't be any problem if you use a decently sized buffer (I'd use at least 1MB to make sure the HD is doing mostly sequential reading and writing).

If speed turns out to be a problem, you could have a look at the java.nio packages - those are supposedly faster than,

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Yes, I will use BufferedReader because I have a text file and I need to read it line by line. Now I have another problem: I cannot detect the size of the new file when writing it. The idea is that when the size of the new file > xx MB then generate a new file. – CC. Mar 1 '10 at 14:49
@CC: you could simply keep adding up the String length of the lines you are copying. But it depends on the character encoding how that translates to file size (and doesn't work well at all with variable-length encodings such as UTF-8) – Michael Borgwardt Mar 1 '10 at 15:25
i would suggest adding a custom FilterOutputStream between the FileOutputStream (on the bottom) and OutputStreamWriter. Implement this filter to just keep track of the number of bytes going through it (apache commons io may have such a utility in it already). – james Mar 1 '10 at 16:25
Also, a common mis-perception is that "nio" is faster than "io". This may be the case in certain situations, but generally "nio" was written to be more scalable than "io", where "scalable" is not necessarily the same as "faster". – james Mar 1 '10 at 16:26
@james: the filter won't yield the correct result when there's a BufferedWriter above it, though the difference may not be large enough to matter. – Michael Borgwardt Mar 1 '10 at 16:31

To save memory, do not unnecessarily store/duplicate the data in memory (i.e. do not assign them to variables outside the loop). Just process the output immediately as soon as the input comes in.

It really doesn't matter whether you're using BufferedReader or not. It will not cost significantly much more memory as some implicitly seem to suggest. It will at highest only hit a few % from performance. The same applies on using NIO. It will only improve scalability, not memory use. It will only become interesting when you've hundreds of threads running on the same file.

Just loop through the file, write every line immediately to other file as you read in, count the lines and if it reaches 100, then switch to next file, etcetera.

Kickoff example:

String encoding = "UTF-8";
int maxlines = 100;
BufferedReader reader = null;
BufferedWriter writer = null;

try {
    reader = new BufferedReader(new InputStreamReader(new FileInputStream("/bigfile.txt"), encoding));
    int count = 0;
    for (String line; (line = reader.readLine()) != null;) {
        if (count++ % maxlines == 0) {
            writer = new BufferedWriter(new OutputStreamWriter(new FileOutputStream("/smallfile" + (count / maxlines) + ".txt"), encoding));
} finally {
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Yes, just pipe it from the FileInputStream to the FilOutputStream using only a suitably sized byte buffer array. – Martin Wickman Mar 1 '10 at 13:49
It does not work for me to count the lines. The thing is: I have a file and I need to split it in 200 (this can change, it will come from the database) files for example. How do I do that? Just counting the line does not work. How else ? – CC. Mar 1 '10 at 15:39
Then count the amount of bytes written instead of the amount of lines. You can know the file size in bytes beforehand. – BalusC Mar 1 '10 at 15:42
Using lineStr.getBytes().length ? – CC. Mar 1 '10 at 15:44
For example. Don't forget the specify the proper encoding! E.g. line.getBytes(encoding). Else it will mess up. The byte length depends on the character encoding used. If you actually don't worry about txt lines, then I would rather use InputStream/OutputStream instead and count the transferred bytes. By the way, it's unclear whether you mean to say that the files are stored in the DB or that the file split parameters are stored in the DB. If the files are actually also stored in the DB, then this may be memory hogging as wel. The exact solution will depend on the DB used. – BalusC Mar 1 '10 at 15:47

You can consider using memory-mapped files, via FileChannels .

Generally a lot faster for large files. There are performance trade-offs that could make it slower, so YMMV.

Related answer:

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If you are just reading straight through a file, this will most likely not get you much of anything. – james Mar 1 '10 at 16:28
Still worth mentioning :) – Ryan Emerle Mar 1 '10 at 18:18
Generally not a lot faster. Last time I benchmarked it I got 20% on reading. – EJP May 7 '14 at 6:36

This is a very good article:

In summary, for great performance, you should:

  1. Avoid accessing the disk.
  2. Avoid accessing the underlying operating system.
  3. Avoid method calls.
  4. Avoid processing bytes and characters individually.

For example, to reduce the access to disk, you can use a large buffer. The article describes various approaches.

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Does it have to be done in Java? I.e. does it need to be platform independent? If not, I'd suggest using the 'split' command in *nix. If you really wanted, you could execute this command via your java program. While I haven't tested, I imagine it perform faster than whatever Java IO implementation you could come up with.

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You can use java.nio which is faster than classical Input/Output stream:

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See my comment on Michael Borgwardt's post. – james Mar 1 '10 at 17:25

Don't use read without arguments. It's very slow. Better read it to buffer and move it to file quickly.

Use bufferedInputStream because it supports binary reading.

And it's all.

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Unless you accidentally read in the whole input file instead of reading it line by line, then your primary limitation will be disk speed. You may want to try starting with a file containing 100 lines and write it to 100 different files one line in each and make the triggering mechanism work on the number of lines written to the current file. That program will be easily scalable to your situation.

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Yes. I also think that using read() with arguments like read(Char[], int init, int end) is a better way to read a such a large file (Eg : read(buffer,0,buffer.length))

And I also experienced the problem of missing values of using the BufferedReader instead of BufferedInputStreamReader for a binary data input stream. So, using the BufferedInputStreamReader is a much better in this like case.

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