add support for more lr scheduler config parameters to torch models #2218
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Summary
Adds support for more lr scheduler configuration parameters to TorchForecastingModels:
'epoch' updates the scheduler on epoch end whereas 'step'
updates it after a optimizer update)
scheduler.step()
. 1 corresponds to updating the learningrate after every epoch/step.)
ReduceLROnPlateau
)True
, will enforce that the value specified 'monitor'is available when the scheduler is updated, thus stopping
training if not found. If set to
False
, it will only produce a warning)LearningRateMonitor
callback to monitor thelearning rate progress, this keyword can be used to specify
a custom logged name)