Lightning-AI/pytorch-lightning
Ver no GitHubMake lazy initialization in plugins more robust
Open
#7.650 aberto em 21 de mai. de 2021
distributedfeaturegood first issuehelp wantedlet's do it!
Métricas do repositório
- Stars
- (26.687 stars)
- Métricas de merge de PR
- (Mesclagem média 9d 15h) (3 fundiu PRs em 30d)
Description
🚀 Feature
We currently set some attributes like sync_batch_norm, num_nodes, devices etc. lazily in the accelerator connector, so the user does not have to provide them at instantiation.
Example:
Trainer(gpus=4, plugins=DDPPlugin(find_unused_parameters=True)) # plugin may require gpus, num_nodes etc.
# AcceleratorConnector does this:
training_type_plugin.num_nodes = ...
This is fragile. Some attributes may have to be recomputed based on the order in which others are set.
Pitch
Provide one single lazy init method that takes all arguments required. The plugin is responsible for making sure dependencies are resolved in one place:
class DDPPlugin(...):
def lazy_init(self, **kwargs):
self.num_nodes = kwargs.get("num_nodes")
self.num_processes = ...
With lazy_init, the _configure_launcher method (#11643) would become obsolete. It can be merged together into lazy_init.