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Configuration for linear warmup schedule config.
Inherits From: Config, ParamsDict
tfm.optimization.LinearWarmupConfig(
    default_params: dataclasses.InitVar[Optional[Mapping[str, Any]]] = None,
    restrictions: dataclasses.InitVar[Optional[List[str]]] = None,
    name: str = 'linear',
    warmup_learning_rate: float = 0,
    warmup_steps: Optional[int] = None
)
This class is a container for the linear warmup schedule configs. Warmup_learning_rate is the initial learning rate, the final learning rate of the warmup period is the learning_rate of the optimizer in use. The learning rate at each step linearly increased according to the following formula: warmup_learning_rate = warmup_learning_rate + step / warmup_steps * (final_learning_rate - warmup_learning_rate). Using warmup overrides the learning rate schedule by the number of warmup steps.
Methods
as_dict
as_dict()
Returns a dict representation of params_dict.ParamsDict.
For the nested params_dict.ParamsDict, a nested dict will be returned.
from_args
@classmethodfrom_args( *args, **kwargs )
Builds a config from the given list of arguments.
from_json
@classmethodfrom_json( file_path: str )
Wrapper for from_yaml.
from_yaml
@classmethodfrom_yaml( file_path: str )
get
get(
    key, value=None
)
Accesses through built-in dictionary get method.
lock
lock()
Makes the ParamsDict immutable.
override
override(
    override_params, is_strict=True
)
Override the ParamsDict with a set of given params.
| Args | |
|---|---|
| override_params | a dict or a ParamsDict specifying the parameters to be overridden. | 
| is_strict | a boolean specifying whether override is strict or not. If
True, keys in override_paramsmust be present in the ParamsDict. If
False, keys inoverride_paramscan be different from what is currently
defined in the ParamsDict. In this case, the ParamsDict will be extended
to include the new keys. | 
replace
replace(
    **kwargs
)
Overrides/returns a unlocked copy with the current config unchanged.
validate
validate()
Validate the parameters consistency based on the restrictions.
This method validates the internal consistency using the pre-defined list of restrictions. A restriction is defined as a string which specifies a binary operation. The supported binary operations are {'==', '!=', '<', '<=', '>', '>='}. Note that the meaning of these operators are consistent with the underlying Python immplementation. Users should make sure the define restrictions on their type make sense.
For example, for a ParamsDict like the following
a:
  a1: 1
  a2: 2
b:
  bb:
    bb1: 10
    bb2: 20
  ccc:
    a1: 1
    a3: 3
one can define two restrictions like this ['a.a1 == b.ccc.a1', 'a.a2 <= b.bb.bb2']
| What it enforces are | |
|---|---|
| 
 | 
| Raises | |
|---|---|
| KeyError | if any of the following happens (1) any of parameters in any of restrictions is not defined in ParamsDict, (2) any inconsistency violating the restriction is found. | 
| ValueError | if the restriction defined in the string is not supported. | 
__contains__
__contains__(
    key
)
Implements the membership test operator.
__eq__
__eq__(
    other
)