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I use Task Parallel Library(TPL) and C# 4.5 to implement this business logic in a Windows Service Application:

  • Get JSON result (a list) from remote RESTful API
  • For each item, retrieve JSON result of details from another remote RESTful API
  • For each item's attached business objects(1000+), use Parallel.ForEach saving to database

Currently the problem is: It may take long time saving each item to database (Sync DAL), so Parallel.ForEach 1000 items takes forever and the Windows Service application appears slower and slower. Does anyone have good ideas or better approach to gain better performance?

Code snippet:

/* Download a list from RESTful API URL.... */
var task = Task.Factory.StartNew(() => { return DownloadListFromRestAPI(); }, TaskCreationOptions.LongRunning);
task.ContinueWith(i => {
     foreach (var r in i.Result)
          /* For each item, download the item details from RESTful API URL.... */
           var taskSecond = Task.Factory.StartNew(() => { return DownloadItemDetailFromRestAPI(r.id); }, TaskCreationOptions.LongRunning);
           taskSecond.ContinueWith(m => {
               /* For each  item detail, get the related business objects, and start Database operation on each object.... */
                List<Item> relatedItems_1000 = s.GetRelatedObjectsIds(m.Result.id);

              /* parallel.ForEach - 1000 or more items  */
                 Parallel.ForEach<Item>(relatedItems_1000, new ParallelOptions { MaxDegreeOfParallelism = 8 }, d => DBLongProcess(d)); /* The DB operation takes long time */

Update: (the code for DBLongProcess() and the lock (I added lock because concurrent threads may attempt to modify same object to DB))

 private void DBLongProcess(Item item)

 public class DBDAL
      private readonly object _lock = new object();

      public void InsertObjectDB(Item item)
          lock (_lock)
                 //insert item.detail1...
                //insert item.detail2
share|improve this question
How does DBLongProcess provide thread safety? If done wrong that easily could be the source of your slowness. Can you include the code for that too? –  Scott Chamberlain Dec 25 '13 at 5:41
@ScottChamberlain, please see my updates. Thanks you! –  xoyoja Dec 25 '13 at 5:59
it is not clear what is the actual problem. the UI slows down because the Background takes too many resources? –  Nahum Litvin Dec 25 '13 at 6:44
@NahumLitvin, the problem is the performance is bad. I have no UI and backgroundworker, it's a service application. My question is the line "parallel.foreach 1000 items" seems taking forever.... is there better approach to get better performance? –  xoyoja Dec 25 '13 at 6:50
isn't your server thread safe? why is the lock? –  Nahum Litvin Dec 25 '13 at 7:02

1 Answer 1

up vote 3 down vote accepted

In your case, using Parallel.ForEach() won't speed up anything, because the lock in InsertObjectDB() forces all items to be inserted in series.

What you need to do is to figure a way of making DBDAL thread-safe (possibly by using multiple instances of it). If that's not feasible, then you'll have to look for performance improvements elsewhere.

share|improve this answer
Thanks. If the lock is removed and DBDAL is thread-safe, the Parallel.ForEach (1000+ items) is the best approach of high performance in my case? –  xoyoja Dec 25 '13 at 13:25
That's hard to say, without knowing the details of your implementation. –  svick Dec 25 '13 at 13:54
Although I marked this as answer, it doesn't mean the problem is solved. First I will monitor/trace the code to see where most of the time is spent. Then I will try to remove the lock and make the DAL thread safe. I will use more thread-safe caching strategy and commit all the data to DB by batch at once. –  xoyoja Dec 26 '13 at 1:29

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