learning_rate_schedule_piecewise_constant_decay {keras3} | R Documentation |
A LearningRateSchedule
that uses a piecewise constant decay schedule.
Description
The function returns a 1-arg callable to compute the piecewise constant when passed the current optimizer step. This can be useful for changing the learning rate value across different invocations of optimizer functions.
Usage
learning_rate_schedule_piecewise_constant_decay(
boundaries,
values,
name = "PiecewiseConstant"
)
Arguments
boundaries |
A list of Python numbers with strictly increasing entries, and with all elements having the same type as the optimizer step. |
values |
A list of Python numbers that specifies the values for the
intervals defined by |
name |
A string. Optional name of the operation. Defaults to
|
Value
A 1-arg callable learning rate schedule that takes the current optimizer step and outputs the decayed learning rate, a scalar tensor of the same type as the boundary tensors.
The output of the 1-arg function that takes the step
is values[0]
when step <= boundaries[0]
,
values[1]
when step > boundaries[0]
and step <= boundaries[1]
,
..., and values[-1]
when step > boundaries[-1]
.
Examples
use a learning rate that's 1.0 for the first 100001 steps, 0.5 for the next 10000 steps, and 0.1 for any additional steps.
step <- 0 boundaries <- c(100000, 110000) values <- c(1.0, 0.5, 0.1) learning_rate_fn <- learning_rate_schedule_piecewise_constant_decay( boundaries, values) # Later, whenever we perform an optimization step, we pass in the step. learning_rate <- learning_rate_fn(step)
You can pass this schedule directly into a optimizer
as the learning rate. The learning rate schedule is also serializable and
deserializable using keras$optimizers$schedules$serialize
and
keras$optimizers$schedules$deserialize
.
Raises
ValueError: if the number of elements in the boundaries
and values
lists do not match.
See Also
Other optimizer learning rate schedules:
LearningRateSchedule()
learning_rate_schedule_cosine_decay()
learning_rate_schedule_cosine_decay_restarts()
learning_rate_schedule_exponential_decay()
learning_rate_schedule_inverse_time_decay()
learning_rate_schedule_polynomial_decay()