ray/rllib/models/tf/tf_modelv2.py
Sven Mika 22ccc43670
[RLlib] DQN torch version. (#7597)
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* Fix (SAC does currently not support eager).

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* Update rllib/evaluation/sampler.py

Co-Authored-By: Eric Liang <ekhliang@gmail.com>

* Update rllib/evaluation/sampler.py

Co-Authored-By: Eric Liang <ekhliang@gmail.com>

* Update rllib/utils/exploration/exploration.py

Co-Authored-By: Eric Liang <ekhliang@gmail.com>

* Update rllib/utils/exploration/exploration.py

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* Update rllib/utils/exploration/exploration.py

* Update rllib/policy/dynamic_tf_policy.py

Co-Authored-By: Eric Liang <ekhliang@gmail.com>

* Update rllib/policy/dynamic_tf_policy.py

Co-Authored-By: Eric Liang <ekhliang@gmail.com>

* Update rllib/policy/dynamic_tf_policy.py

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* Working SimpleQ learning cartpole on both torch AND tf.

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Co-authored-by: Eric Liang <ekhliang@gmail.com>
2020-04-06 11:56:16 -07:00

111 lines
3.9 KiB
Python

from ray.rllib.models.modelv2 import ModelV2
from ray.rllib.utils.annotations import PublicAPI
from ray.rllib.utils import try_import_tf
from ray.rllib.utils.annotations import override
tf = try_import_tf()
@PublicAPI
class TFModelV2(ModelV2):
"""TF version of ModelV2.
Note that this class by itself is not a valid model unless you
implement forward() in a subclass."""
def __init__(self, obs_space, action_space, num_outputs, model_config,
name):
"""Initialize a TFModelV2.
Here is an example implementation for a subclass
``MyModelClass(TFModelV2)``::
def __init__(self, *args, **kwargs):
super(MyModelClass, self).__init__(*args, **kwargs)
input_layer = tf.keras.layers.Input(...)
hidden_layer = tf.keras.layers.Dense(...)(input_layer)
output_layer = tf.keras.layers.Dense(...)(hidden_layer)
value_layer = tf.keras.layers.Dense(...)(hidden_layer)
self.base_model = tf.keras.Model(
input_layer, [output_layer, value_layer])
self.register_variables(self.base_model.variables)
"""
ModelV2.__init__(
self,
obs_space,
action_space,
num_outputs,
model_config,
name,
framework="tf")
self.var_list = []
if tf.executing_eagerly():
self.graph = None
else:
self.graph = tf.get_default_graph()
def context(self):
"""Returns a contextmanager for the current TF graph."""
if self.graph:
return self.graph.as_default()
else:
return ModelV2.context(self)
def forward(self, input_dict, state, seq_lens):
"""Call the model with the given input tensors and state.
Any complex observations (dicts, tuples, etc.) will be unpacked by
__call__ before being passed to forward(). To access the flattened
observation tensor, refer to input_dict["obs_flat"].
This method can be called any number of times. In eager execution,
each call to forward() will eagerly evaluate the model. In symbolic
execution, each call to forward creates a computation graph that
operates over the variables of this model (i.e., shares weights).
Custom models should override this instead of __call__.
Args:
input_dict (dict): dictionary of input tensors, including "obs",
"obs_flat", "prev_action", "prev_reward", "is_training"
state (list): list of state tensors with sizes matching those
returned by get_initial_state + the batch dimension
seq_lens (Tensor): 1d tensor holding input sequence lengths
Returns:
(outputs, state): The model output tensor of size
[BATCH, num_outputs]
Examples:
>>> def forward(self, input_dict, state, seq_lens):
>>> model_out, self._value_out = self.base_model(
... input_dict["obs"])
>>> return model_out, state
"""
raise NotImplementedError
def update_ops(self):
"""Return the list of update ops for this model.
For example, this should include any BatchNorm update ops."""
return []
def register_variables(self, variables):
"""Register the given list of variables with this model."""
self.var_list.extend(variables)
@override(ModelV2)
def variables(self, as_dict=False):
if as_dict:
return {v.name: v for v in self.var_list}
return list(self.var_list)
@override(ModelV2)
def trainable_variables(self, as_dict=False):
if as_dict:
return {
k: v
for k, v in self.variables(as_dict=True).items() if v.trainable
}
return [v for v in self.variables() if v.trainable]