Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.
//    parallel processing

    int processors = Runtime.getRuntime().availableProcessors();
    ExecutorService executorService = Executors.newFixedThreadPool(threads);


    final List<String> albumIds2 = new ArrayList<String>();
    long start2 = System.nanoTime();
    for (final HColumn<String, String> column : result.get().getColumns()) {
        Runnable worker = new Runnable() {

            @Override
            public void run() {
                albumIds2.add(column.getName());
            }
        };
        executorService.execute(worker);
    }
    long timeTaken2 = System.nanoTime() - start2;

i have code like the above example which creates a List<String> of album ids. the column is a slice from cassandra database. i record the time taken for the whole list of albums to be created.

the same i have done using the enhanced for loop like below.

        QueryResult<ColumnSlice<String, String>> result =  CassandraDAO.getRowColumns(AlbumIds_CF, customerId);
    long start = System.nanoTime();
    for (HColumn<String, String> column : result.get().getColumns()) {
        albumIds.add(column.getName());
    }
    long timeTaken = System.nanoTime() - start;

i am noting that no matter how large the number of albums, the for each loop always taking a shorter time to complete. Am i doing it wrong? or do i need a computer with multiple cores. I am really new to the whole concept of parallel computing please do pardon me if my question is stupid.

share|improve this question
    
"do i need a computer with multiple cores?" => yes. As said below try to group your columns in batches of at least 100 or more for better performance. –  assylias Mar 17 '13 at 9:26

2 Answers 2

up vote 6 down vote accepted

In your paralell example, you are submitting one task for each column. The overhead of enqueing the task is probably greater than the benefit of paralell execution. This is exacerbated by the "task" being really a fast one (insert a single element into an array and return). Indeed, the Executor adds each received task into a queue (and that addition is costly). Then you are adding N task to a queue, and each task adds an element to the array. The concurrent operation performs only the latter part

If the task were more complex, you could submit the work in "chunks" (for instance, if you have N elements and P processors, each chunk would have N/P elements or N/P+1 elements). That strategy helps reducing the overhead.

Note also that ArrayList is not synchronized, then the concurrent execution of several tasks may corrupt your list. You could use a concurrent collection for avoiding this issue, but the first observation remains.

share|improve this answer
    
Point noted very clear and precise answer. –  qualebs Mar 17 '13 at 8:48
2  
You could also mention Amdahl's law in a more general context. –  Szymon Biliński Mar 17 '13 at 8:51

It's a bad practise,the time and cpu consumed to create threads is much more than what your thread are doing :albumIds2.add(column.getName());

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.