While using torch multiprocessing pool to paralelize the run of multiple equal experiences in multiple GPUs I ran into the fact that a lot of times the processes block in the transfer of the model from CPU to the assigned GPU. I don't understand the reason of the blocking.
I've tried manually deleting the model at the end of each run and collecting the not used GPU memory to no avail. I would like to understand why.
I'm running this on python 3.7 in a linux system with pytorch 1.2.0 and CUDA 10.0.130 with 4 NVIDIA 1080.
My main code is the following. VGG16 is just a big network. I can add the code of it too if you feel it's necessary.
import torch from torch.multiprocessing import Process, Manager, Pool from VGG16 import VGG16 def run_experiment(name, manager_dict, manager_lock): device_id = None manager_lock.acquire() for device_id in manager_dict.keys(): if device_id == "n_processes": continue if manager_dict[device_id] < manager_dict["n_processes"]: manager_dict[device_id] += 1 device_id = device_id break manager_lock.release() print(manager_dict, flush=True) device = torch.device(device_id) print(str(name)+ "selected device: " + str(device_id), flush=True) model = VGG16() print(str(name), "Initialized model", ) model = model.to(device) print(str(name), "LOADED MODEL to the device") manager_dict[device_id] -= 1 model_cpu = model.to(torch.device("cpu")) print(str(name), "Should have returned", flush=True) del model torch.cuda.ipc_collect() #return 1 return model_cpu.state_dict() def normal_experiments(): n_processes_per_gpu = 2 manager = Manager() manager_dict = manager.dict() manager_dict["n_processes"] = n_processes_per_gpu n_gpu = torch.cuda.device_count() print("Running on %d"%n_gpu, flush=True) for i in range(n_gpu): manager_dict[i] = 0 manager_lock = manager.Lock() with Pool(processes=n_processes_per_gpu*n_gpu) as pool: #We call run experiment with seeds with its type of arguments iterable_arguments = [(str(i), manager_dict, manager_lock) for i in range(30)] res = pool.starmap(run_experiment, iterable_arguments) print("Done") def main(): torch.multiprocessing.set_start_method('spawn') normal_experiments() if __name__ == "__main__": main()
In this code some processes block in
model = model.to(device)