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PyTorch Distributed |
The pytorch_distributed_example.py
script demonstrates integrating ClearML into code that uses the PyTorch Distributed Communications Package
(torch.distributed
).
The script initializes a main Task and spawns subprocesses, each for an instance of that Task. The Task in each subprocess trains a neural network over a partitioned dataset (the torchvision built-in MNIST dataset), and reports (uploads) the following to the main Task:
- Artifacts - A dictionary containing different key-value pairs.
- Scalars - Loss reported as a scalar during training in each Task in a subprocess.
- Hyperparameters - Hyperparameters created in each Task are added to the hyperparameters in the main Task.
Each Task in a subprocess references the main Task by calling Task.current_task, which always returns the main Task.
When the script runs, it creates an experiment named test torch distributed
, which is associated with the examples
project.
Artifacts
The example uploads a dictionary as an artifact in the main Task by calling the Task.upload_artifact
method on Task.current_task
(the main Task). The dictionary contains the dist.rank
of the subprocess, making each unique.
Task.current_task().upload_artifact(
'temp {:02d}'.format(dist.get_rank()),
artifact_object={'worker_rank': dist.get_rank()}
)
All of these artifacts appear in the main Task under ARTIFACTS > OTHER.
Scalars
Loss is reported to the main Task by calling the Logger.report_scalar
method on Task.current_task().get_logger
, which is the logger for the main Task. Since Logger.report_scalar
is called
with the same title (loss
), but a different series name (containing the subprocess' rank
), all loss scalar series are
logged together.
Task.current_task().get_logger().report_scalar(
'loss',
'worker {:02d}'.format(dist.get_rank()),
value=loss.item(),
iteration=i
)
The single scalar plot for loss appears in SCALARS.
Hyperparameters
ClearML automatically logs the argparse command line options. Since the Task.connect
method is called on Task.current_task
, they are logged in the main Task. A different hyperparameter key is used in each
subprocess, so they do not overwrite each other in the main Task.
param = {'worker_{}_stuff'.format(dist.get_rank()): 'some stuff ' + str(randint(0, 100))}
Task.current_task().connect(param)
All the hyperparameters appear in CONFIGURATION > HYPERPARAMETERS.
Console
Output to the console, including the text messages printed from the main Task object and each subprocess appear in CONSOLE.