Customization¶
This section describes how to customize TorchElastic to fit your needs.
Launcher¶
The launcher program that ships with TorchElastic should be sufficient for most use-cases (see torchrun (Elastic Launch)). You can implement a custom launcher by programmatically creating an agent and passing it specs for your workers as shown below.
# my_launcher.py
if __name__ == "__main__":
args = parse_args(sys.argv[1:])
rdzv_handler = RendezvousHandler(...)
spec = WorkerSpec(
local_world_size=args.nproc_per_node,
fn=trainer_entrypoint_fn,
args=(trainer_entrypoint_fn args.fn_args,...),
rdzv_handler=rdzv_handler,
max_restarts=args.max_restarts,
monitor_interval=args.monitor_interval,
)
agent = LocalElasticAgent(spec, start_method="spawn")
try:
run_result = agent.run()
if run_result.is_failed():
print(f"worker 0 failed with: run_result.failures[0]")
else:
print(f"worker 0 return value is: run_result.return_values[0]")
except Exception ex:
# handle exception
Rendezvous Handler¶
To implement your own rendezvous, extend torch.distributed.elastic.rendezvous.RendezvousHandler
and implement its methods.
Warning
Rendezvous handlers are tricky to implement. Before you begin make sure you completely understand the properties of rendezvous. Please refer to Rendezvous for more information.
Once implemented you can pass your custom rendezvous handler to the worker spec when creating the agent.
spec = WorkerSpec(
rdzv_handler=MyRendezvousHandler(params),
...
)
elastic_agent = LocalElasticAgent(spec, start_method=start_method)
elastic_agent.run(spec.role)
Metric Handler¶
TorchElastic emits platform level metrics (see Metrics). By default metrics are emitted to /dev/null so you will not see them. To have the metrics pushed to a metric handling service in your infrastructure, implement a torch.distributed.elastic.metrics.MetricHandler and configure it in your custom launcher.
# my_launcher.py
import torch.distributed.elastic.metrics as metrics
class MyMetricHandler(metrics.MetricHandler):
def emit(self, metric_data: metrics.MetricData):
# push metric_data to your metric sink
def main():
metrics.configure(MyMetricHandler())
spec = WorkerSpec(...)
agent = LocalElasticAgent(spec)
agent.run()
Events Handler¶
TorchElastic supports events recording (see Events). The events module defines API that allows you to record events and implement custom EventHandler. EventHandler is used for publishing events produced during torchelastic execution to different sources, e.g. AWS CloudWatch. By default it uses torch.distributed.elastic.events.NullEventHandler that ignores events. To configure custom events handler you need to implement torch.distributed.elastic.events.EventHandler interface and configure it in your custom launcher.
# my_launcher.py
import torch.distributed.elastic.events as events
class MyEventHandler(events.EventHandler):
def record(self, event: events.Event):
# process event
def main():
events.configure(MyEventHandler())
spec = WorkerSpec(...)
agent = LocalElasticAgent(spec)
agent.run()