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I would like to hash (MD5) all the files of a given directory, which holds 1000 2MB photos. I tried just running a for loop and hashing a file at a time, but that caused memory issues.

I need a method to hash each file in an efficient manner (memory wise).

I have posted 3 questions with my problem, but now instead of fixing my code, I want to see what would be the best general approach to my requirement.

Thank you very much for the help.

public class MD5 {

public static void main(String[] args) throws IOException {
    File file = new File("/Users/itaihay/Desktop/test");
    for (File f : file.listFiles()) {
        try {
        } catch (Exception e) {
            e.printStackTrace();  //To change body of catch statement use File | Settings | File Templates.


private static MessageDigest md;
private static BufferedInputStream fis;
private static byte[] dataBytes;
private static byte[] mdbytes;

private static void clean() throws NoSuchAlgorithmException {
    md = MessageDigest.getInstance("MD5");
    dataBytes = new byte[8192];
public static void hash(File file) {
    try {
    } catch (NoSuchAlgorithmException e) {
    try {
        fis = new BufferedInputStream(new FileInputStream(file));
        int nread = 0;
        while ((nread = fis.read(dataBytes)) != -1) {
            md.update(dataBytes, 0, nread);
        nread = 0;
        mdbytes = md.digest();  System.out.println(javax.xml.bind.DatatypeConverter.printHexBinary(mdbytes).toLowerCase());

    } catch (FileNotFoundException e) {
    } catch (IOException e) {
    } finally {
        try {
            dataBytes = null;
            md = null;
            mdbytes = null;
        } catch (IOException e) {
share|improve this question
Can we see your code? We can't tell how to optimize your code if we don't know what it's doing. –  Louis Wasserman Sep 12 '13 at 18:09
@LouisWasserman Added the code. –  Itai Hay Sep 13 '13 at 0:33

3 Answers 3

As others have said, using built-in Java MD5 code, you should be able to keep your memory footprint very small. I do something similar when hashing a large number of Jar files (up to a few MB apiece, usually 500MB-worth at a time) and get decent performance. You'll definitely want to play around with different buffer sizes until you find the optimal size for your system configuration. The following code-snippet uses no more than bufSize+128 bytes at a time, plus a negligible amount of overhead for the File, MessageDigest, and InputStream objects used to compute the md5 hash:

InputStream is = null;
File f = ...
int bufSize = ...
byte[] md5sum = null;

try {
    MessageDigest digest = MessageDigest.getInstance("MD5");
    is = new FileInputStream(f);
    byte[] buffer = new byte[bufSize];

    int read = 0;
    while((read = is.read(buffer)) > 0) digest.update(buffer,0,read);
    md5sum = digest.digest();
} catch (Exception e){
} finally {
        if(is != null) is.close();
    } catch (IOException e){}
share|improve this answer

Increasing your Java heap space could solve it short term.

Long term, you want to look into reading images into a fixed-size queue that can fit in the memory. Don't read them all in at once. Enqueue the most recent image and dequeue the earliest image.

share|improve this answer

MD5 updates its state in 64 byte chunks, so you only need 16 bytes of a file in memory at a time. The MD5 state itself is 128 bits, as is the output size.

The most memory conservative approach would be to read 64 bytes at a time from each file, file-by-file, and use it to update that file's MD5 state. You would need at most 999 * 16 + 64 = 16048 ~= 16k of memory.

But such small reads would be very inefficient, so from there you can increase the read size from a file to fit within your memory constraints.

share|improve this answer

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