Open ramdhan1989 opened 3 years ago
My training took 1.25 min per epoch (2000 images, 224x224px) on a single GPU (GeForce 1080Ti), so on my hardware, it should take 6.25h when trained on 600k images. That’s almost half as much as your case. Data augmentation can slow down the training. Do you fully utilize the CPU?
Hi @akwasigroch , To increase CPU, do I need to increase num_workers in DataLoader like this ? train_loader = torch.utils.data.DataLoader(dataset, shuffle=True, batch_size=batch_size, num_workers=2) I tried to put number greater than 0 but it turns out an error below :
Saving representations to memory
Traceback (most recent call last):
File "<string>", line 1, in <module>
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\multiprocessing\spawn.py", line 105, in spawn_main
exitcode = _main(fd)
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\multiprocessing\spawn.py", line 114, in _main
prepare(preparation_data)
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\multiprocessing\spawn.py", line 225, in prepare
_fixup_main_from_path(data['init_main_from_path'])
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\multiprocessing\spawn.py", line 277, in _fixup_main_from_path
run_name="__mp_main__")
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\runpy.py", line 263, in run_path
pkg_name=pkg_name, script_name=fname)
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\runpy.py", line 96, in _run_module_code
mod_name, mod_spec, pkg_name, script_name)
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\runpy.py", line 85, in _run_code
exec(code, run_globals)
File "D:\R\Pretext-Invariant-Representations\jigsaw.py", line 127, in <module>
memory.initialize(net, train_loader)
File "D:\R\Pretext-Invariant-Representations\utils.py", line 221, in initialize
for step, batch in enumerate(train_loader):
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\site-packages\torch\utils\data\dataloader.py", line 352, in __iter__
return self._get_iterator()
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\site-packages\torch\utils\data\dataloader.py", line 294, in _get_iterator
return _MultiProcessingDataLoaderIter(self)
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\site-packages\torch\utils\data\dataloader.py", line 801, in __init__
w.start()
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\multiprocessing\process.py", line 112, in start
self._popen = self._Popen(self)
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\multiprocessing\context.py", line 223, in _Popen
return _default_context.get_context().Process._Popen(process_obj)
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\multiprocessing\context.py", line 322, in _Popen
return Popen(process_obj)
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\multiprocessing\popen_spawn_win32.py", line 46, in __init__
prep_data = spawn.get_preparation_data(process_obj._name)
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\multiprocessing\spawn.py", line 143, in get_preparation_data
_check_not_importing_main()
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\multiprocessing\spawn.py", line 136, in _check_not_importing_main
is not going to be frozen to produce an executable.''')
RuntimeError:
An attempt has been made to start a new process before the
current process has finished its bootstrapping phase.
This probably means that you are not using fork to start your
child processes and you have forgotten to use the proper idiom
in the main module:
if __name__ == '__main__':
freeze_support()
...
The "freeze_support()" line can be omitted if the program
is not going to be frozen to produce an executable.
Traceback (most recent call last):
File "jigsaw.py", line 127, in <module>
memory.initialize(net, train_loader)
File "D:\R\Pretext-Invariant-Representations\utils.py", line 221, in initialize
for step, batch in enumerate(train_loader):
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\site-packages\torch\utils\data\dataloader.py", line 352, in __iter__
return self._get_iterator()
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\site-packages\torch\utils\data\dataloader.py", line 294, in _get_iterator
return _MultiProcessingDataLoaderIter(self)
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\site-packages\torch\utils\data\dataloader.py", line 801, in __init__
w.start()
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\multiprocessing\process.py", line 112, in start
self._popen = self._Popen(self)
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\multiprocessing\context.py", line 223, in _Popen
return _default_context.get_context().Process._Popen(process_obj)
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\multiprocessing\context.py", line 322, in _Popen
return Popen(process_obj)
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\multiprocessing\popen_spawn_win32.py", line 89, in __init__
reduction.dump(process_obj, to_child)
File "C:\Users\Owner\Anaconda3\envs\nlp\lib\multiprocessing\reduction.py", line 60, in dump
ForkingPickler(file, protocol).dump(obj)
BrokenPipeError: [Errno 32] Broken pipe
any idea ?
thank you
Hi @akwasigroch , I increased num_workers to 5 in dataloader but it is still slow~ 13h per epoch. IMHO, for some reason I checked my GPU performance seems it doesn't work while GPU run successfully using other scripts. Any idea?
Hi, I just want to make sure, has the code been tested successfully using GPU ? although it is already stated to use device = torch.device('cuda:0'), it took very long time to run (13 hours per epoch for 600k images batch size 512, I set num_workers to 0 in dataloader) . do you have any suggestions to solve run time problem ?
thank you