Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

Currently, I have a large number of C# computations (method calls) residing in a queue that will be run sequentially. Each computation will use some high-latency service (network, disk...).

I was going to use Mono coroutines to allow the next computation in the computation queue to continue while a previous computation is waiting for the high latency service to return. However, I prefer to not depend on Mono coroutines.

Is there a design pattern that's implementable in pure C# that will enable me to process additional computations while waiting for high latency services to return?



I need to execute a huge number (>10000) of tasks, and each task will be using some high-latency service. On Windows, you can't create that much threads.


Basically, I need a design pattern that emulates the advantages (as follows) of tasklets in Stackless Python (http://www.stackless.com/)

  1. Huge # of tasks
  2. If a task blocks the next task in the queue executes
  3. No wasted cpu cycle
  4. Minimal overhead switching between tasks
share|improve this question
Can you make a stronger case for coroutines as a solution here? It seems to ask for (balanced) threading, like in dtb's answer. – Henk Holterman Aug 23 '09 at 21:05
Well, I need to execute a huge number (>10000) of tasks, and each task will be using some high-latency service. On Windows, you can't create that much threads. – jameszhao00 Aug 24 '09 at 0:04
Sounds like a job for ThreadPool, +1 for jscharf – Henk Holterman Aug 24 '09 at 7:40

10 Answers 10

up vote 9 down vote accepted

You can simulate cooperative microthreading using IEnumerable. Unfortunately this won't work with blocking APIs, so you need to find APIs that you can poll, or which have callbacks that you can use for signalling.

Consider a method

IEnumerable Thread ()
    //do some stuff
    Foo ();

    //co-operatively yield
    yield null;

    //do some more stuff
    Bar ();

    //sleep 2 seconds
    yield new TimeSpan (2000);

The C# compiler will unwrap this into a state machine - but the appearance is that of a co-operative microthread.

The pattern is quite straightforward. You implement a "scheduler" that keeps a list of all the active IEnumerators. As it cycles through the list, it "runs" each one using MoveNext (). If the value of MoveNext is false, the thread has ended, and the scheduler removes it from the list. If it's true, then the scheduler accesses the Current property to determine the current state of the thread. If it's a TimeSpan, the thread wishes to sleep, and the scheduler moved it onto some queue that can be flushed back into the main list when the sleep timespans have ended.

You can use other return objects to implement other signalling mechanisms. For example, define some kind of WaitHandle. If the thread yields one of these, it can be moved to a waiting queue until the handle is signalled. Or you could support WaitAll by yielding an array of wait handles. You could even implement priorities.

I did a simple implementation of this scheduler in about 150LOC but I haven't got round to blogging the code yet. It was for our PhyreSharp PhyreEngine wrapper (which won't be public), where it seems to work pretty well for controlling a couple of hundred characters in one of our demos. We borrowed the concept from the Unity3D engine -- they have some online docs that explain it from a user point of view.

share|improve this answer
Interesting stuff. I looked at this before, but I don't think you can properly yield from code that's more than 1 level deep. I.e. if you have a coroutine start function that calls another function that yields, the whole thing breaks. – jameszhao00 Aug 24 '09 at 19:36
In most cases, you can just implement the functions you want to call as ienumerables and foreach+yield over them, though of course you'd need a bit of indirection to get return values -- I can't remember whether ref params work with a yield, but if they don't, there are a bunch of other ways. You could pass in a reference to an object with fields and use that to get values back out of the function, or pass in lambdas that can set your locals, or filter a certain type from the yielded values, etc... – Mikayla Hutchinson Aug 24 '09 at 20:10
I.e. Thing returned = null; foreach (var o in Function ((x) => returned = x)) yield return o; – Mikayla Hutchinson Aug 24 '09 at 20:13

.NET 4.0 comes with extensive support for Task parallelism:

share|improve this answer
Yea that doesn't solve the problem of continuing the next computation when there's a latency-intensive operation. Task parallelism just makes parallel computing easier. – jameszhao00 Aug 23 '09 at 19:44
the task parallel library is free to use more threads than cores, thus if it spots that the threads in use are not using much CPU time it can schedule more tasks... This can lead to excessive IO so needs careful tuning, it is hoped that the library does much of this for you but benchmarking and checking is always a good idea... – ShuggyCoUk Aug 23 '09 at 19:47
True threads are a bit too heavy-weight for this project. I need 20k-80k computation tasks running at one time. – jameszhao00 Aug 23 '09 at 19:50
That's exactly what the task parallel library was designed for. Just fire off your tasks and let the library assign them to cores/threads. – dtb Aug 23 '09 at 19:54
"The TPL scales the degree of concurrency dynamically to most efficiently use all the processors that are available." From the Microsoft TPL documentation. I highly recommend looking into the TPL...it sounds like it is an ideal solution to your problem. – jrista Aug 24 '09 at 4:45

I'd recommend using the Thread Pool to execute multiple tasks from your queue at once in manageable batches using a list of active tasks that feeds off of the task queue.

In this scenario your main worker thread would initially pop N tasks from the queue into the active tasks list to be dispatched to the thread pool (most likely using QueueUserWorkItem), where N represents a manageable amount that won't overload the thread pool, bog your app down with thread scheduling and synchronization costs, or suck up available memory due to the combined I/O memory overhead of each task.

Whenever a task signals completion to the worker thread, you can remove it from the active tasks list and add the next one from your task queue to be executed.

This will allow you to have a rolling set of N tasks from your queue. You can manipulate N to affect the performance characteristics and find what is best in your particular circumstances.

Since you are ultimately bottlenecked by hardware operations (disk I/O and network I/O, CPU) I imagine smaller is better. Two thread pool tasks working on disk I/O most likely won't execute faster than one.

You could also implement flexibility in the size and contents of the active task list by restricting it to a set number of particular type of task. For example if you are running on a machine with 4 cores, you might find that the highest performing configuration is four CPU-bound tasks running concurrently along with one disk-bound task and a network task.

If you already have one task classified as a disk IO task, you may choose to wait until it is complete before adding another disk IO task, and you may choose to schedule a CPU-bound or network-bound task in the meanwhile.

Hope this makes sense!

PS: Do you have any dependancies on the order of tasks?

share|improve this answer
No. There's no requirement on the order of execution. – jameszhao00 Aug 24 '09 at 1:18
Let me see if I got this. For each core a specific number of threads will reside in a thread pool. Initially, a task is assigned to a thread and it executes. Each time a task blocks (I/O, ...), the task notifies/wakes the controller thread for that CPU core and the controller starts a new thread or wakes a previously sleeping one. This continues until all the tasks have been processed. – jameszhao00 Aug 24 '09 at 1:23
You're a bit off but I think you have the gist of it. You should read the ThreadPool documentation (or Google for some tutorials using QueueUserWorkItem). There aren't really threads created for each core. Think of ThreadPool as an abstraction independant of cores. You simply throw multiple tasks at it that you need scheduled and executed concurrently whenever possible (which is usually). – jscharf Aug 24 '09 at 1:37
The solution you've given leads to 2 scenarios: it either creates a thread for each task, or it partitions the tasks among a few threads (where # of threads is close to the # of cores), and those threads executes those tasks assigned to it sequentially. The first scenario is not feasible since there will be way too many threads (# of tasks > 10000). In the second scenario, because the tasks in on thread are executed sequentially, a blocking operation will waste CPU cycles. – jameszhao00 Aug 24 '09 at 1:53
The solution I posted avoids your first scenario. You will not be queuing all 10000+ tasks at once. You will be queuing a small amount (e.g. 5) at once to be dispatched to the ThreadPool. When a task on the pool is complete, it is removed from your 'active tasks' list and another one is added. By maintaining your own 'active tasks' list being executed by the pool, you are assured that there will never be a cumbersome amount of threads running. – jscharf Aug 24 '09 at 2:20

You should definitely check out the Concurrency and Coordination Runtime. One of their samples describes exactly what you're talking about: you call out to long-latency services, and the CCR efficiently allows some other task to run while you wait. It can handle huge number of tasks because it doesn't need to spawn a thread for each one, though it will use all your cores if you ask it to.

share|improve this answer

Isn't this a conventional use of multi-threaded processing?

Have a look at patterns such as Reactor here

share|improve this answer
Sorry. I'm a bit confused as to how that can be used here. – jameszhao00 Aug 23 '09 at 19:52

Writing it to use Async IO might be sufficient.

This can lead to nasy, hard to debug code without strong structure in the design.

share|improve this answer
On a lower layer, yes I will be using AsyncIO to send/recieve network packets. However, on the higher layers I will be implementing some sort of synchronous RPC. – jameszhao00 Aug 23 '09 at 19:52

You should take a look at this:


This should do exactly what you want. It is a hack, though.

share|improve this answer

Some more information about the "Reactive" pattern (as mentioned by another poster) with respect to an implementation in .NET; aka "Linq to Events"



share|improve this answer
This looks like a "call dispatcher table" idea. I don't quite get how it can solve the issue at hand. – jameszhao00 Aug 24 '09 at 1:14

In fact, if you use one thread for a task, you will lose the game. Think about why Node.js can support huge number of conections. Using a few number of thread with async IO!!! Async and await functions can help on this.

foreach (var task in tasks)
    await SendAsync(task.value);

SendAsync() and ReadAsync() are faked functions to async IO call.

Task parallelism is also a good choose. But I am not sure which one is faster. You can test both of them in your case.

share|improve this answer

Yes of course you can. You just need to build a dispatcher mechanism that will call back on a lambda that you provide and goes into a queue. All the code I write in unity uses this approach and I never use coroutines. I wrap methods that use coroutines such as WWW stuff to just get rid of it. In theory, coroutines can be faster because there is less overhead. Practically they introduce new syntax to a language to do a fairly trivial task and furthermore you can't follow the stack trace properly on an error in a co-routine because all you'll see is ->Next. You'll have to then implement the ability to run the tasks in the queue on another thread. However, there is parallel functions in the latest .net and you'd be essentially writing similar functionality. It wouldn't be many lines of code really.

If anyone is interested I would send the code, don't have it on me.

share|improve this answer

Your Answer


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.