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what is the difference between running backgroundPool and parpool ('Threads') using a parfeval?

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parpool('Threads')
delete(gcp('nocreate'))
pool=parpool('Threads')
f(1:8) = parallel.FevalFuture;
for i = 1:8
f(i) = parfeval(pool, @task, 1, i, 'parpool');
end
afterEach(f, @disp, 0);
function output = task(taskID,poolType)
pause(5);
output = sprintf('Task %d is done in %s at %s', taskID, poolType,datetime('now'));
end
backgroundPool
b(1:8) = parallel.FevalFuture;
for i = 1:8
b(i) = parfeval(backgroundPool, @task, 1, i, 'backgroundPool');
end
afterEach(b, @disp, 0);
function output = task(taskID,poolType)
pause(5);
output = sprintf('Task %d is done in %s at %s', taskID, poolType,datetime('now'));
end
I don't think there's any difference between them

Risposte (1)

Walter Roberson
Walter Roberson il 25 Nov 2023
"Pools created using parpool('Threads') and backgroundPool are both thread-based pools which utilize the same resources. It is possible that activity on one pool may block activity on the other and vice versa. Additionally, persistent data and random number generation stream state are shared in between these pools."
Unfortunately that talks more about the similarities than the differences. The differences are more difficult to find documentation on.
Background pools only support parfeval and parfevalOnAll but do not need the Parallel Computing Toolbox
Thread pools support additional constructs including parfor, but requires the Parallel Computing Toolbox
I do not know if there are any MATLAB functions that support one but not the other
  3 Commenti
Jixiong Su
Jixiong Su il 27 Nov 2023
@Edric Ellis Thanks! However, I have another question.
My computer has 8 cores.
* The 8 process-based parallel pools and 8 background pools have all completed their tasks simultaneously.
delete(gcp('nocreate'))
pool=parpool('Processes')
% Asynchronously execute multiple tasks in the parallel pool
f(1:8) = parallel.FevalFuture;
for i = 1:8
f(i) = parfeval(pool, @task, 1, i, 'parpool'); % Call the task function with parameter i and perform parallel computation
end
afterEach(f, @disp, 0);
b(1:8) = parallel.FevalFuture;
for i = 1:8
b(i) = parfeval(backgroundPool, @task, 1, i, 'backgroundPool'); % Call the task function with parameter i and perform background computation
end
afterEach(b, @disp, 0);
function output = task(taskID,poolType)
pause(5);
output = sprintf('Task %d is done in %s at %s', taskID, poolType,datetime('now'));
end
Output:
Task 4 is done in parpool at 2023-11-25 11:41:46
Task 2 is done in parpool at 2023-11-25 11:41:46
Task 3 is done in parpool at 2023-11-25 11:41:46
Task 5 is done in parpool at 2023-11-25 11:41:46
Task 8 is done in parpool at 2023-11-25 11:41:46
Task 6 is done in parpool at 2023-11-25 11:41:46
Task 1 is done in parpool at 2023-11-25 11:41:46
Task 7 is done in parpool at 2023-11-25 11:41:46
Task 1 is done in backgroundPool at 2023-11-25 11:41:46
Task 7 is done in backgroundPool at 2023-11-25 11:41:46
Task 5 is done in backgroundPool at 2023-11-25 11:41:46
Task 2 is done in backgroundPool at 2023-11-25 11:41:46
Task 6 is done in backgroundPool at 2023-11-25 11:41:46
Task 3 is done in backgroundPool at 2023-11-25 11:41:46
Task 4 is done in backgroundPool at 2023-11-25 11:41:46
Task 8 is done in backgroundPool at 2023-11-25 11:41:46
The 8 thread-based parallel pools and 8 background pools are running simultaneously. The background pool can only grab one thread, and it can only use other threads to execute tasks after all tasks in the thread-based parallel pool are completed.
Why can backgroundPool still run in the background when eight threads are full?
delete(gcp('nocreate'))
pool=parpool('Threads')
% Asynchronously execute multiple tasks in the parallel pool
f(1:8) = parallel.FevalFuture;
for i = 1:8
f(i) = parfeval(pool, @task, 1, i, 'parpool'); % Call the task function with parameter i and perform parallel computation
end
afterEach(f, @disp, 0);
b(1:8) = parallel.FevalFuture;
for i = 1:8
b(i) = parfeval(backgroundPool, @task, 1, i, 'backgroundPool'); % Call the task function with parameter i and perform background computation
end
afterEach(b, @disp, 0);
function output = task(taskID,poolType)
pause(5);
output = sprintf('Task %d is done in %s at %s', taskID, poolType,datetime('now'));
end
Output:
Task 7 is done in parpool at 2023-11-25 11:48:19
Task 6 is done in parpool at 2023-11-25 11:48:19
Task 3 is done in parpool at 2023-11-25 11:48:19
Task 4 is done in parpool at 2023-11-25 11:48:19
Task 8 is done in parpool at 2023-11-25 11:48:19
Task 2 is done in parpool at 2023-11-25 11:48:19
Task 5 is done in parpool at 2023-11-25 11:48:19
Task 1 is done in backgroundPool at 2023-11-25 11:48:19
Task 1 is done in parpool at 2023-11-25 11:48:19
Task 2 is done in backgroundPool at 2023-11-25 11:48:24
Task 3 is done in backgroundPool at 2023-11-25 11:48:24
Task 7 is done in backgroundPool at 2023-11-25 11:48:24
Task 8 is done in backgroundPool at 2023-11-25 11:48:24
Task 5 is done in backgroundPool at 2023-11-25 11:48:24
Task 4 is done in backgroundPool at 2023-11-25 11:48:24
Task 6 is done in backgroundPool at 2023-11-25 11:48:24
Edric Ellis
Edric Ellis il 27 Nov 2023
Basically, although the pools share resources, they each have some exclusive resources to ensure that progress is never completely blocked by activity on the other pool.

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