tfm.optimization.PowerDecayWithOffsetLrConfig

Configuration for power learning rate decay with step offset.

Inherits From: Config, ParamsDict

Learning rate equals to pre_offset_learning_rate if step < offset. Otherwise, learning rate equals to lr * (step - offset)^power.

name The name of the learning rate schedule. Defaults to PowerDecayWithOffset.
initial_learning_rate A float. The initial learning rate. Defaults to None.
power A float. Defaults to -0.5, for sqrt decay.
offset An integer. Power decay happens after offset steps.
pre_offset_learning_rate A float. The constant learning rate before offset steps.
BUILDER

default_params Dataclass field
restrictions Dataclass field

Methods

as_dict

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Returns a dict representation of params_dict.ParamsDict.

For the nested params_dict.ParamsDict, a nested dict will be returned.

from_args

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Builds a config from the given list of arguments.

from_json

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Wrapper for from_yaml.

from_yaml

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get

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Accesses through built-in dictionary get method.

lock

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Makes the ParamsDict immutable.

override

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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_params must be present in the ParamsDict. If False, keys in override_params can be different from what is currently defined in the ParamsDict. In this case, the ParamsDict will be extended to include the new keys.

replace

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Overrides/returns a unlocked copy with the current config unchanged.

validate

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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

  • a.a1 = 1 == b.ccc.a1 = 1
  • a.a2 = 2 <= b.bb.bb2 = 20

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__

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Implements the membership test operator.

__eq__

IMMUTABLE_TYPES (<class 'str'>, <class 'int'>, <class 'float'>, <class 'bool'>, <class 'NoneType'>)
RESERVED_ATTR ['_locked', '_restrictions']
SEQUENCE_TYPES (<class 'list'>, <class 'tuple'>)
default_params None
initial_learning_rate None
name 'PowerDecayWithOffset'
offset 0
power -0.5
pre_offset_learning_rate 1000000.0
restrictions None