This method seems to be pretty effective. We can "linearize" the parallel for loop by simply having each parallel loop increment a counter:
Parallel.For(0, n, (i) => { Thread.Sleep(1000); Interlocked.Increment(ref cnt); });
(Note, thanks to Niclas, that ++
is not atomic and one must use lock
or Interlocked.Increment
)
Each loop, running in parallel, will increment cnt
. The effect is that cnt
is monotonically increasing to n
, and cnt/n
is the percentage of how much the for is complete. Since there is no contention for cnt
, there are no concurrency issues and it is very fast and very perfectly accurate.
We can measure the percentage of completion of the parallel For
loop at any time during the execution by simply computing cnt/n
The total computation time can be easily estimated by dividing the elapsed time since the start of the loop with the percentage the loop is at. These two quantities should have approximately the same rates of change when each loop takes approximately the same amount of time is relatively well behaved (can average out small fluctuation too).
Obviously the more unpredictable each task is, the more inaccurate the remaining computation time will be. This is to be expected and in general, there is no solution (which is why it's called an approximation). We can still get the elapsed computation time or percentage with complete accuracy.
The underlying assumption of any estimation of "time left" algorithms is each sub task takes approximately the same computation time (assuming one wants a linear result). For example, if we have a parallel approach where 99 tasks are very quick and 1 task is very slow, our estimation will be grossly inaccurate. Our counter will zip up to 99 pretty quick then sit on the last percentage until the slow task completes. We could linearly interpolate and do further estimation to get a smoother countdown but ultimately there is a breaking point.
The following code demonstrates how to measure the parallel for efficiently. Note the time at 100% is the true total execution time and can be used as a reference.
using System;
using System.Collections.Generic;
using System.Linq;
using System.Text;
using System.Threading;
using System.Threading.Tasks;
using System.Diagnostics;
namespace ParallelForTiming
{
class Program
{
static void Main(string[] args)
{
var sw = new Stopwatch();
var pct = 0.000001;
var iter = 20;
var time = 20 * 1000 / iter;
var p = new ParallelOptions(); p.MaxDegreeOfParallelism = 4;
var Done = false;
Parallel.Invoke(() =>
{
sw.Start();
Parallel.For(0, iter, p, (i) => { Thread.Sleep(time); lock(p) { pct += 1 / (double)iter; }});
sw.Stop();
Done = true;
}, () =>
{
while (!Done)
{
Console.WriteLine(Math.Round(pct*100,2) + " : " + ((pct < 0.1) ? "oo" : (sw.ElapsedMilliseconds / pct /1000.0).ToString()));
Thread.Sleep(2000);
}
}
);
Console.WriteLine(Math.Round(pct * 100, 2) + " : " + sw.ElapsedMilliseconds / pct / 1000.0);
Console.ReadKey();
}
}
}