garage.tf.q_functions.discrete_mlp_q_function

Discrete MLP QFunction.

class DiscreteMLPQFunction(env_spec, name=None, hidden_sizes=(32, 32), hidden_nonlinearity=tf.nn.relu, hidden_w_init=tf.initializers.glorot_uniform(seed=deterministic.get_tf_seed_stream()), hidden_b_init=tf.zeros_initializer(), output_nonlinearity=None, output_w_init=tf.initializers.glorot_uniform(seed=deterministic.get_tf_seed_stream()), output_b_init=tf.zeros_initializer(), layer_normalization=False)

Bases: garage.tf.models.MLPModel

Inheritance diagram of garage.tf.q_functions.discrete_mlp_q_function.DiscreteMLPQFunction

Discrete MLP Q Function.

This class implements a Q-value network. It predicts Q-value based on the input state and action. It uses an MLP to fit the function Q(s, a).

Parameters
  • env_spec (EnvSpec) – Environment specification.

  • name (str) – Name of the q-function, also serves as the variable scope.

  • hidden_sizes (list[int]) – Output dimension of dense layer(s). For example, (32, 32) means the MLP of this q-function consists of two hidden layers, each with 32 hidden units.

  • hidden_nonlinearity (callable) – Activation function for intermediate dense layer(s). It should return a tf.Tensor. Set it to None to maintain a linear activation.

  • hidden_w_init (callable) – Initializer function for the weight of intermediate dense layer(s). The function should return a tf.Tensor.

  • hidden_b_init (callable) – Initializer function for the bias of intermediate dense layer(s). The function should return a tf.Tensor.

  • output_nonlinearity (callable) – Activation function for output dense layer. It should return a tf.Tensor. Set it to None to maintain a linear activation.

  • output_w_init (callable) – Initializer function for the weight of output dense layer(s). The function should return a tf.Tensor.

  • output_b_init (callable) – Initializer function for the bias of output dense layer(s). The function should return a tf.Tensor.

  • layer_normalization (bool) – Bool for using layer normalization.

property q_vals

Return the Q values, the output of the network.

Returns

Q values.

Return type

list[tf.Tensor]

property input

Get input.

Returns

QFunction Input.

Return type

tf.Tensor

property parameters

Parameters of the model.

Returns

Parameters

Return type

np.ndarray

property name

Name (str) of the model.

This is also the variable scope of the model.

Returns

Name of the model.

Return type

str

property output

Default output of the model.

When the model is built the first time, by default it creates the ‘default’ network. This property creates a reference to the output of the network.

Returns

Default output of the model.

Return type

tf.Tensor

property inputs

Default inputs of the model.

When the model is built the first time, by default it creates the ‘default’ network. This property creates a reference to the inputs of the network.

Returns

Default inputs of the model.

Return type

list[tf.Tensor]

property outputs

Default outputs of the model.

When the model is built the first time, by default it creates the ‘default’ network. This property creates a reference to the outputs of the network.

Returns

Default outputs of the model.

Return type

list[tf.Tensor]

property state_info_specs

State info specification.

Returns

keys and shapes for the information related to the

module’s state when taking an action.

Return type

List[str]

property state_info_keys

State info keys.

Returns

keys for the information related to the module’s state

when taking an input.

Return type

List[str]

build(state_input, name)

Build the symbolic graph for q-network.

Parameters
  • state_input (tf.Tensor) – The state input tf.Tensor to the network.

  • name (str) – Network variable scope.

Returns

The tf.Tensor output of Discrete MLP QFunction.

Return type

tf.Tensor

clone(name)

Return a clone of the Q-function.

It copies the configuration of the primitive and also the parameters.

Parameters

name (str) – Name of the newly created q-function.

Returns

Clone of this object

Return type

garage.tf.q_functions.DiscreteMLPQFunction

network_input_spec()

Network input spec.

Returns

List of key(str) for the network inputs.

Return type

list[str]

network_output_spec()

Network output spec.

Returns

List of key(str) for the network outputs.

Return type

list[str]

reset(do_resets=None)

Reset the module.

This is effective only to recurrent modules. do_resets is effective only to vectoried modules.

For a vectorized modules, do_resets is an array of boolean indicating which internal states to be reset. The length of do_resets should be equal to the length of inputs.

Parameters

do_resets (numpy.ndarray) – Bool array indicating which states to be reset.

terminate()

Clean up operation.

get_trainable_vars()

Get trainable variables.

Returns

A list of trainable variables in the current

variable scope.

Return type

List[tf.Variable]

get_global_vars()

Get global variables.

Returns

A list of global variables in the current

variable scope.

Return type

List[tf.Variable]

get_regularizable_vars()

Get all network weight variables in the current scope.

Returns

A list of network weight variables in the

current variable scope.

Return type

List[tf.Variable]

get_params()

Get the trainable variables.

Returns

A list of trainable variables in the current

variable scope.

Return type

List[tf.Variable]

get_param_shapes()

Get parameter shapes.

Returns

A list of variable shapes.

Return type

List[tuple]

get_param_values()

Get param values.

Returns

Values of the parameters evaluated in

the current session

Return type

np.ndarray

set_param_values(param_values)

Set param values.

Parameters

param_values (np.ndarray) – A numpy array of parameter values.

flat_to_params(flattened_params)

Unflatten tensors according to their respective shapes.

Parameters

flattened_params (np.ndarray) – A numpy array of flattened params.

Returns

A list of parameters reshaped to the

shapes specified.

Return type

List[np.ndarray]