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I'm just looking in to the new .NET 4.0 features. With that, I'm attempting a simple calculation using Parallel.For and a normal for(x;x;x) loop.

However, I'm getting different results about 50% of the time.

long sum = 0;

Parallel.For(1, 10000, y =>
    {
        sum += y;
    }
);

Console.WriteLine(sum.ToString());

sum = 0;

for (int y = 1; y < 10000; y++)
{
   sum += y;
}
Console.WriteLine(sum.ToString());

My guess is that the threads are trying to update "sum" at the same time.
Is there an obvious way around it?

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4  
Concurrent programming comes in two parts, 1) executing on a separate thread, and 2) synchronizing\communicating across threads. parallel extensions enable 1), however 2) must be explicitly addressed by developer, and when you say sum += y; you are effectively having each thread say "add me to sum!" all at once. you need to synchronize their communication in regards to the shared resource sum –  johnny g May 5 '10 at 14:45
24  
my fears come true... parallel extensions let people write parallel code without understanding theory, including race conditions (as here) –  Andrey May 5 '10 at 14:46
21  
@Andrey - Yes, that's why some of us actually try to learn it first (ie. by posting questions on SO). –  Inisheer May 5 '10 at 14:47
3  
@Polaris878 - Same with LINQ, not sure why MS introduced that either. We have loops! /sarcasm –  Inisheer May 5 '10 at 15:00
4  
@Polaris: We are moving towards a world where computers have hundreds of cores. For this world, it makes sense to make programs multithreaded. Besides, why are you hating on a technology that makes programming something difficult much easier? –  BlueRaja - Danny Pflughoeft May 5 '10 at 15:20

7 Answers 7

up vote 61 down vote accepted

You can't do this. sum is being shared across you parallel threads. You need to make sure that the sum variable is only being accessed by one thread at a time:

// DON'T DO THIS!
Parallel.For(0, data.Count, i =>
{
    Interlocked.Add(ref sum, data[i]);
});

BUT... This is an anti-pattern because you've effectively serialised the loop because each thread will lock on the Interlocked.Add.

What you need to do is add sub totals and merge them at the end like this:

Parallel.For<int>(0, result.Count, () => 0, (i, loop, subtotal) =>
    {
        subtotal += result[i];
        return subtotal;
    },
    (x) => Interlocked.Add(ref sum, x)
);

You can find further discussion of this on MSDN: http://msdn.microsoft.com/en-us/library/dd460703.aspx

PLUG: You can find more on this in Chapter 2 on A Guide to Parallel Programming

The following is also definitely worth a read...

Patterns for Parallel Programming: Understanding and Applying Parallel Patterns with the .NET Framework 4 - Stephen Toub

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awesome answer! –  Andrey May 5 '10 at 14:51
1  
Where can I find the exact explanation of the overload you used in this answer? –  Alex Bagnolini May 5 '10 at 17:27
    
@Alex. You can find further discussion of it here: msdn.microsoft.com/en-us/library/dd460703.aspx. I updated the answer with the same link. –  Ade Miller May 5 '10 at 18:10

sum += y; is actually sum = sum + y;. You are getting incorrect results because of the following race condition:

  1. Thread1 reads sum
  2. Thread2 reads sum
  3. Thread1 calculates sum+y1, and stores the result in sum
  4. Thread2 calculates sum+y2, and stores the result in sum

sum is now equal to sum+y2, instead of sum+y1+y2.

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2  
+1 for explaining the race condition. –  Callum Rogers May 9 '10 at 21:18

Your surmise is correct.

When you write sum += y, the runtime does the following:

  1. Read the field onto the stack
  2. Add y to the stack
  3. Write the result back to the field

If two threads read the field at the same time, the change made by the first thread will be overwritten by the second thread.

You need to use Interlocked.Add, which performs the addition as a single atomic operation.

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4  
See below. The nieve way to use interlocked add simply serialized your loop. –  Ade Miller May 5 '10 at 14:45
    
I would add that best way it so use local variable and after cycle add them to single global, using Interlocked.Add of course. –  Andrey May 5 '10 at 14:46
1  
There's example of this in my answer below. –  Ade Miller May 5 '10 at 14:49
    
Joe Duffy's book has a good discussion on what actually happens under the hood on about page 21. bluebytesoftware.com/books/winconc/winconc_book_resources.html –  Ade Miller May 5 '10 at 15:55
    
you loose the benefit of multi threading this if you take it back to an atomic operation. Ade Miller has a great answer to this question. –  Jon May 6 '10 at 12:39

Incrementing a long isn't an atomic operation.

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Good point, SLaks. @TSS: there are two operations here, the addition and saving the value - you really do need to lock. –  Eric Mickelsen May 5 '10 at 14:43

I think it's important to distinguish that this loop is not capable of being partitioned for parallelism, because as has been mentioned above each iteration of the loop is dependent on the prior. The parallel for is designed for explicitly parallel tasks, such as pixel scaling etc. because each iteration of the loop cannot have data dependencies outside its iteration.

Parallel.For(0, input.length, x =>
{
    output[x] = input[x] * scalingFactor;
});

The above an example of code that allows for easy partitioning for parallelism. However a word of warning, parallelism comes with a cost, even the loop I used as an example above is far far too simple to bother with a parallel for because the set up time takes longer than the time saved via parallelism.

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You can partition it for parallelism, you just have to think about it in a different way, aggregation. –  Ade Miller May 16 '10 at 15:52
    
true... MPI_AllGather() would be a good example, however some cursory research on MSDN shows that you would have to turn to MPI# to get that functionality... as it doesn't seem to be included. You could however code your own. –  Mgetz May 23 '10 at 17:52

An important point no-one seems to have mentioned: For data-parallel operations (such as the OP's), it is often better (in terms of both efficiency and simplicity) to use PLINQ instead of the Parallel class. The OP's code is actually trivial to parallelize:

long sum = Enumerable.Range(1, 10000).AsParallel().Sum();

The above snippet uses the ParallelEnumerable.Sum method, although one could also use Aggregate for more general scenarios. Refer to the Parallel Loops chapter for an explanation of these approaches.

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if there are two parameters in this code. For example

long sum1 = 0; long sum2 = 0;

Parallel.For(1, 10000, y => { sum1 += y; sum2=sum1*y; } );

what will we do ? i am guessing that have to use array !

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