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Implements a piecewise stationary linear environment.
Inherits From: NonStationaryStochasticEnvironment
, BanditTFEnvironment
, TFEnvironment
tf_agents.bandits.environments.piecewise_stochastic_environment.PiecewiseStochasticEnvironment(
observation_distribution: types.Distribution,
interval_distribution: types.Distribution,
observation_to_reward_distribution: types.Distribution,
additive_reward_distribution: types.Distribution
)
Args | |
---|---|
observation_distribution
|
A distribution from tfp.distributions with
shape [batch_size, observation_dim] . Note that the values of
batch_size and observation_dim are deduced from the distribution.
|
interval_distribution
|
A scalar distribution from tfp.distributions . The
value is casted to int64 to update the time range.
|
observation_to_reward_distribution
|
A distribution from
tfp.distributions with shape [observation_dim, num_actions] . The
value observation_dim must match the second dimension of
observation_distribution .
|
additive_reward_distribution
|
A distribution from tfp.distributions with
shape [num_actions] . This models the non-contextual behavior of the
bandit.
|
Attributes | |
---|---|
batch_size
|
|
batched
|
|
environment_dynamics
|
|
name
|
Methods
action_spec
action_spec()
Describes the specs of the Tensors expected by step(action)
.
action
can be a single Tensor, or a nested dict, list or tuple of
Tensors.
Returns | |
---|---|
An single TensorSpec , or a nested dict, list or tuple of
TensorSpec objects, which describe the shape and
dtype of each Tensor expected by step() .
|
current_time_step
current_time_step()
Returns the current TimeStep
.
Returns | |
---|---|
A TimeStep namedtuple containing:
step_type: A StepType value.
reward: Reward at this time_step.
discount: A discount in the range [0, 1].
observation: A Tensor, or a nested dict, list or tuple of Tensors
corresponding to observation_spec() .
|
observation_spec
observation_spec()
Defines the TensorSpec
of observations provided by the environment.
Returns | |
---|---|
A TensorSpec , or a nested dict, list or tuple of
TensorSpec objects, which describe the observation.
|
render
render()
Renders a frame from the environment.
Raises | |
---|---|
NotImplementedError
|
If the environment does not support rendering. |
reset
reset()
Resets the environment and returns the current time_step.
Returns | |
---|---|
A TimeStep namedtuple containing:
step_type: A StepType value.
reward: Reward at this time_step.
discount: A discount in the range [0, 1].
observation: A Tensor, or a nested dict, list or tuple of Tensors
corresponding to observation_spec() .
|
reward_spec
reward_spec()
Defines the TensorSpec
of rewards provided by the environment.
Returns | |
---|---|
A TensorSpec , or a nested dict, list or tuple of
TensorSpec objects, which describe the reward.
|
step
step(
action
)
Steps the environment according to the action.
If the environment returned a TimeStep
with StepType.LAST
at the
previous step, this call to step
should reset the environment (note that
it is expected that whoever defines this method, calls reset in this case),
start a new sequence and action
will be ignored.
This method will also start a new sequence if called after the environment
has been constructed and reset()
has not been called. In this case
action
will be ignored.
Expected sequences look like:
time_step -> action -> next_time_step
The action should depend on the previous time_step for correctness.
Args | |
---|---|
action
|
A Tensor, or a nested dict, list or tuple of Tensors corresponding
to action_spec() .
|
Returns | |
---|---|
A TimeStep namedtuple containing:
step_type: A StepType value.
reward: Reward at this time_step.
discount: A discount in the range [0, 1].
observation: A Tensor, or a nested dict, list or tuple of Tensors
corresponding to observation_spec() .
|
time_step_spec
time_step_spec()
Describes the TimeStep
specs of Tensors returned by step()
.
Returns | |
---|---|
A TimeStep namedtuple containing TensorSpec objects defining the
Tensors returned by step() , i.e.
(step_type, reward, discount, observation).
|