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I'm trying to read multiple files that have been serialized with ProtoBuf.NET using .NET Tasks like this:

public static ResultsDump Amalgamate(RuntimeTypeModel model, IEnumerable<string> files)
  var readDumpTasks = 
    files.Select(fn =>
      Task<ResultsDump>.Factory.StartNew(() => {
        try {
          using (var dumpFile = new FileStream(fn, FileMode.Open))
            var miniDump = (ResultsDump)model.Deserialize(dumpFile, null, typeof(ResultsDump));
            if (miniDump == null) {
              throw new Exception(string.Format("Failed to deserialize dump file {0}", fn));
            return miniDump;
        catch (Exception e) {
          throw new Exception(string.Format("cannot read dump file {0}: {1}", fn, e.Message), e);


  var allDumps = readDumpTasks.Select(t => t.Result).ToList();

  // Goes on.. irrelevant to the question

For some reason, CPU usage doesn't really go above a single core. Is there something inherent lock in Protobuf.NET that doesn't like desrializing multiple file concurrently?

I've tried this with multiple RuntimeTypeModel instances as well as one, and it always seems to peak at a very "low" CPU usage level..

Am I even wrong to be blaming ProtoBuf.NET? Is this the .NET memory allocator / TPL?

share|improve this question
Given that you're loading files, it's highly likely that the disk I/O is taking so much time that the CPU overhead of the deserialization is comparatively trivial. In fact, parallel access of the disk from multiple threads may create resource contention at the disk access level and actually slow down the operation. – Dan Bryant Oct 25 '11 at 17:36
up vote 5 down vote accepted

There is intentionally very limited locking in protobuf-net; it only really locks while checking the types (first run) to see what is needed. Once the model is understood, it is lock-free, and it is designed to be trivially parallel.

As noted (comments) it is extremely likely that IO is your bottleneck. Indeed, parallelising access to the same physical disk / spindle will usually greatly reduce throughput, as the buffer is more contended and it has to do more seeking rather than contiguous reading.

This should be easy to test / validate: for a test run, instead of reading from disk, load them all into memory first;

var ms = new MemoryStream(

With all the files loaded, now do the same code but passing the MemoryStreams in as input. If it still doesn't scale, it might be a bug. I strogly suspect, however, that you will find it parallelises nicely at that point.

Here's a worked example, which for me saturates all my cores with concurrent deserialization:

using System.Collections.Generic;
using ProtoBuf;
using System;
using System.IO;
using System.Threading.Tasks;

internal class Program
    private static void Main()
        var foo = new Foo { Bars = new List<Bar>() };
        var rand = new Random(1234);
        for (int i = 0; i < 1000; i++)
            var bar = new Bar
                A = rand.Next(),
                B = rand.Next(),
                C = rand.Next(),
                D = rand.Next(),
                E = rand.Next(),
                F = rand.Next(),
                G = rand.Next(),
                H = rand.Next()
        var ms = new MemoryStream();
        Serializer.Serialize(ms, foo);
        var bytes = ms.ToArray();
        const int count = 100000;
        Parallel.For(0, count, x =>
            Serializer.Deserialize<Foo>(new MemoryStream(bytes));
internal class Foo
    public List<Bar> Bars { get; set; }
internal class Bar
    public int A { get; set; }
    public int B { get; set; }
    public int C { get; set; }
    public int D { get; set; }
    public int E { get; set; }
    public int F { get; set; }
    public int G { get; set; }
    public int H { get; set; }
share|improve this answer
I've tried using a memory stream, and I still can't see my CPU peaking beyond 25% on a 4 core machine (with HyperThreading turned on). I guess the problem is not in PorotoBuf.NET but perhaps somewhere in my code (There's quite a lot of Lock-Free data-structures that might not be playing nice) – damageboy Oct 25 '11 at 18:45
@damageboy testing locally, deserializing without using IO, I can get 8-of-8 cores running, totalling 95% of my machines active CPU (I have various other things running). I conclude: no - protobuf-net has no internal parallelisation limitations. Adding example to answer. – Marc Gravell Oct 25 '11 at 20:48

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