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I have implemented a small IO class, which can read from multiple and same files on different disks (e.g two hard disks containing the same file). In sequential case, both disks read 60MB/s in average over the file, but when I do an interleaved (e.g. 4k disk 1, 4k disk 2 then combine), the effective read speed is reduced to 40MB/s instead of increasing?

Context: Win 7 + JDK 7b70, 2GB RAM, 2.2GB test file. Basically, I try to mimic Win7's ReadyBoost and RAID x in a poor man's fashion.

In the heart, when a read() is issued to the class, it creates two runnables with instructions to read a pre-opened RandomAccessFile from a certain position and length. Using an executor service and Future.get() calls, when both finish, the data read gets copied into a common buffer and returned to the caller.

Is there a conceptional error in my approach? (For example, the OS caching mechanism will always counteract?)

protected <T> List<T> waitForAll(List<Future<T>> futures) 
throws MultiIOException {
    MultiIOException mex = null;
    int i = 0;
    List<T> result = new ArrayList<T>(futures.size());
    for (Future<T> f : futures) {
        try {
            result.add(f.get());
        } catch (InterruptedException ex) {
            if (mex == null) {
                mex = new MultiIOException();
            }
            mex.exceptions.add(new ExceptionPair(metrics[i].file, ex));
        } catch (ExecutionException ex) {
            if (mex == null) {
                mex = new MultiIOException();
            }
            mex.exceptions.add(new ExceptionPair(metrics[i].file, ex));
        }
        i++;
    }
    if (mex != null) {
        throw mex;
    }
    return result;
}

public int read(long position, byte[] output, int start, int length) 
throws IOException {
    if (start < 0 || start + length > output.length) {
        throw new IndexOutOfBoundsException(
        String.format("start=%d, length=%d, output=%d", 
        start, length, output.length));
    }
    // compute the fragment sizes and positions
    int result = 0;
    final long[] positions = new long[metrics.length];
    final int[] lengths = new int[metrics.length];
    double speedSum = 0.0;
    double maxValue = 0.0;
    int maxIndex = 0;
    for (int i = 0; i < metrics.length; i++) {
        speedSum += metrics[i].readSpeed;
        if (metrics[i].readSpeed > maxValue) {
            maxValue = metrics[i].readSpeed;
            maxIndex = i;
        }
    }
    // adjust read lengths
    int lengthSum = length;
    for (int i = 0; i < metrics.length; i++) {
        int len = (int)Math.ceil(length * metrics[i].readSpeed / speedSum);
        lengths[i] = (len > lengthSum) ? lengthSum : len;
        lengthSum -= lengths[i];
    }
    if (lengthSum > 0) {
        lengths[maxIndex] += lengthSum;
    }
    // adjust read positions
    long positionDelta = position;
    for (int i = 0; i < metrics.length; i++) {
        positions[i] = positionDelta;
        positionDelta += (long)lengths[i]; 
    }        
    List<Future<byte[]>> futures = new LinkedList<Future<byte[]>>();
    // read in parallel
    for (int i = 0; i < metrics.length; i++) {
        final int j = i;
        futures.add(exec.submit(new Callable<byte[]>() {
            @Override
            public byte[] call() throws Exception {
                byte[] buffer = new byte[lengths[j]];
                long t = System.nanoTime();
                long t0 = t;

                long currPos = metrics[j].handle.getFilePointer();
                metrics[j].handle.seek(positions[j]);
                t = System.nanoTime() - t;
                metrics[j].seekTime = t * 1024.0 * 1024.0 / 
                    Math.abs(currPos - positions[j]) / 1E9 ;

                int c = metrics[j].handle.read(buffer);
                t0 = System.nanoTime() - t0;
                // adjust the read speed if we read something
                if (c > 0) {
                    metrics[j].readSpeed = (alpha * c * 1E9 / t0 / 1024 / 1024
                    + (1 - alpha) * metrics[j].readSpeed) ;
                }
                if (c < 0) {
                    return null;
                } else
                if (c == 0) {
                    return EMPTY_BYTE_ARRAY;
                } else
                if (c < buffer.length) {
                    return Arrays.copyOf(buffer, c);
                }
                return buffer;
            }
        }));
    }
    List<byte[]> data = waitForAll(futures);
    boolean eof = true;
    for (byte[] b : data) {
        if (b != null && b.length > 0) {
            System.arraycopy(b, 0, output, start + result, b.length);
            result += b.length;
            eof = false;
        } else {
            break; // the rest probably reached EOF
        }
    }
    // if there was no data at all, we reached the end of file
    if (eof) {
        return -1;
    }
    sequentialPosition = position + (long)result;

    // evaluate the fastest file to read
    double maxSpeed = 0;
    maxIndex = 0;
    for (int i = 0; i < metrics.length; i++) {
        if (metrics[i].readSpeed > maxSpeed) {
            maxSpeed = metrics[i].readSpeed;
            maxIndex = i;
        }
    }
    fastest = metrics[maxIndex];
    return result;
}

(FileMetrics in metrics array contain measurements of read speed to adaptively determine the buffer sizes of various input channels - in my test with alpha = 0 and readSpeed = 1 results equal distribution)

Edit I ran an non-entangled test (e.g read the two files independently in separate threads.) and I've got a combined effective speed of 110MB/s.

Edit2 I guess I know why is this happening.

When I read in parallel and in sequence, it is not a sequential read for the disks, but rather read-skip-read-skip pattern due the interleaving (and possibly riddled with allocation table lookups). This basically reduces the effective read speed per disk to half or worse.

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Its an interesting problem and good for you for finding the solution. I think you should write the solution as an answer and accept your own answer. –  Guss Sep 4 '09 at 22:40

4 Answers 4

up vote 3 down vote accepted

As you said, a sequential read on a disk is much faster than a read-skip-read-skip pattern. Hard disks are capable of high bandwidth when reading sequentially, but the seek time (latency) is expensive.

Instead of storing a copy of the file in each disk, try storing block i of the file on disk i (mod 2). This way you can read from both disks sequentially and recombine the result in memory.

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That was my idea too and it works. –  kd304 Sep 7 '09 at 7:25

If you want to do a parallel read, break the read into two sequential reads. Find the halfway point and read the first half from the first file and the second half from the second file.

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Thanks, I already rethought the base issue and found a better way to achieve the speed improvements. –  kd304 Sep 4 '09 at 11:19

If you are sure that you performing no more than one read per disk (otherwise you will have many disk misses), you still create contention on other parts in the computer - the bus, the raid controller (if exists) and so on.

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No, its not the case of bus contention. –  kd304 Sep 4 '09 at 11:18

Maybe http://stxxl.sourceforge.net/ might be of any interest for you, too.

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