| # Copyright 2018 The TensorFlow Authors. All Rights Reserved. |
| # |
| # Licensed under the Apache License, Version 2.0 (the "License"); |
| # you may not use this file except in compliance with the License. |
| # You may obtain a copy of the License at |
| # |
| # http://www.apache.org/licenses/LICENSE-2.0 |
| # |
| # Unless required by applicable law or agreed to in writing, software |
| # distributed under the License is distributed on an "AS IS" BASIS, |
| # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. |
| # See the License for the specific language governing permissions and |
| # limitations under the License. |
| # ============================================================================== |
| """Various classes representing distributed values.""" |
| |
| from __future__ import absolute_import |
| from __future__ import division |
| from __future__ import print_function |
| |
| import collections |
| import contextlib |
| import weakref |
| |
| from tensorflow.python.distribute import device_util |
| from tensorflow.python.distribute import distribute_lib |
| from tensorflow.python.distribute import distribution_strategy_context |
| from tensorflow.python.distribute import reduce_util |
| from tensorflow.python.eager import context |
| from tensorflow.python.eager import tape |
| from tensorflow.python.framework import composite_tensor |
| from tensorflow.python.framework import ops |
| from tensorflow.python.framework import tensor_util |
| from tensorflow.python.framework import type_spec |
| from tensorflow.python.ops import array_ops |
| from tensorflow.python.ops import control_flow_ops |
| from tensorflow.python.ops import gen_resource_variable_ops |
| from tensorflow.python.ops import math_ops |
| from tensorflow.python.ops import variable_scope as vs |
| from tensorflow.python.ops import variables as variables_lib |
| from tensorflow.python.tpu import tpu |
| from tensorflow.python.training import saver |
| from tensorflow.python.training.tracking import base as trackable |
| from tensorflow.python.util import nest |
| |
| |
| def _get_current_replica_id_as_int(): |
| """Returns the current replica ID as an integer, or `None`.""" |
| replica_context = distribution_strategy_context.get_replica_context() |
| if replica_context: |
| replica_id = replica_context.replica_id_in_sync_group |
| if not isinstance(replica_id, int): |
| replica_id = tensor_util.constant_value(replica_id) |
| else: |
| replica_id = distribute_lib.get_update_replica_id() |
| return replica_id |
| |
| |
| class DistributedValues(object): |
| """Holds a map from replica to values. Either PerReplica or Mirrored.""" |
| |
| def __init__(self, values): |
| self._values = tuple(values) |
| |
| def _get(self): |
| """Returns the value for the current device or raises a ValueError.""" |
| replica_id = _get_current_replica_id_as_int() |
| if replica_id is None: |
| return self._get_cross_replica() |
| else: |
| return self._values[replica_id] |
| |
| def _get_cross_replica(self): |
| raise NotImplementedError( |
| "This method should be overridden by sub-classes which support cross-" |
| "replica accesses.") |
| |
| def _get_closest(self): |
| """Returns value in same replica or device if possible, else the _primary.""" |
| replica_id = _get_current_replica_id_as_int() |
| if replica_id is None: |
| # Try to find a value on the current device. |
| current_device = device_util.canonicalize(device_util.current()) |
| for value in self._values: |
| if device_util.canonicalize(value.device) == current_device: |
| return value |
| return self._primary |
| else: |
| return self._values[replica_id] |
| |
| @property |
| def _primary(self): |
| """Returns a representative component.""" |
| return self._values[0] |
| |
| @property |
| def _devices(self): |
| return tuple(v.device for v in self._values) |
| |
| def __str__(self): |
| debug_str = ",\n".join( |
| " %d: %s" % (i, v) for i, v in enumerate(self._values)) |
| return "%s:{\n%s\n}" % (self.__class__.__name__, debug_str) |
| |
| def __repr__(self): |
| debug_repr = ",\n".join( |
| " %d: %r" % (i, v) for i, v in enumerate(self._values)) |
| return "%s:{\n%s\n}" % (self.__class__.__name__, debug_repr) |
| |
| |
| # NOTE(josh11b,apassos): It would be great if we could inspect the values this was |
| # initialized with and use that to generate the overloaded operators here. |
| # Unfortunately, Python's rules for special methods don't allow this, see |
| # https://docs.python.org/3/reference/datamodel.html#special-method-names |
| # "if a class defines a method named __getitem__(), and x is an instance of |
| # this class, then x[i] is roughly equivalent to type(x).__getitem__(x, i)." |
| # In particular, these special methods don't go through __getattr__, and |
| # it will only use those methods if they are defined in the class, not the |
| # object. |
| class DistributedDelegate(DistributedValues): |
| """A map from device to values; acts as the same type as the values.""" |
| |
| def __getattr__(self, name): |
| # The '_use_resource_variables' and the attrs starts with '_self' are used |
| # for restoring the saved_model proto, and '_attribute_sentinel' is used for |
| # Layer tracking. At the point these attrs are queried, the variable has not |
| # been initialized. Thus it should not query those of the underlying |
| # components. |
| if name.startswith("_self_") or name in ("_use_resource_variables", |
| "_attribute_sentinel", |
| "_distributed_container"): |
| return super(DistributedDelegate, self).__getattr__(name) |
| |
| # TODO(priyag): This needs to be made robust against pitfalls from mix use |
| # __getattr__ and @property. See b/120402273. |
| return getattr(self._get(), name) |
| |
| @property |
| def values(self): |
| """Returns the per replica values.""" |
| return self._values |
| |
| def _get_as_operand(self): |
| """Returns the value for operations for the current device. |
| |
| Some implementations, e.g. `TPUMirroredVariable`, are not able to return the |
| value type within a replica context. They can, however, return a value that |
| can be used by the operations below. |
| """ |
| return self._get() |
| |
| # pylint: disable=multiple-statements |
| def __add__(self, o): |
| return self._get_as_operand() + o |
| |
| def __radd__(self, o): |
| return o + self._get_as_operand() |
| |
| def __sub__(self, o): |
| return self._get_as_operand() - o |
| |
| def __rsub__(self, o): |
| return o - self._get_as_operand() |
| |
| def __mul__(self, o): |
| return self._get_as_operand() * o |
| |
| def __rmul__(self, o): |
| return o * self._get_as_operand() |
| |
| def __truediv__(self, o): |
| return self._get_as_operand() / o |
| |
| def __rtruediv__(self, o): |
| return o / self._get_as_operand() |
| |
| def __floordiv__(self, o): |
| return self._get_as_operand() // o |
| |
| def __rfloordiv__(self, o): |
| return o // self._get_as_operand() |
| |
| def __mod__(self, o): |
| return self._get_as_operand() % o |
| |
| def __rmod__(self, o): |
| return o % self._get_as_operand() |
| |
| def __lt__(self, o): |
| return self._get_as_operand() < o |
| |
| def __le__(self, o): |
| return self._get_as_operand() <= o |
| |
| def __gt__(self, o): |
| return self._get_as_operand() > o |
| |
| def __ge__(self, o): |
| return self._get_as_operand() >= o |
| |
| def __and__(self, o): |
| return self._get_as_operand() & o |
| |
| def __rand__(self, o): |
| return o & self._get_as_operand() |
| |
| def __or__(self, o): |
| return self._get_as_operand() | o |
| |
| def __ror__(self, o): |
| return o | self._get_as_operand() |
| |
| def __xor__(self, o): |
| return self._get_as_operand() ^ o |
| |
| def __rxor__(self, o): |
| return o ^ self._get_as_operand() |
| |
| def __getitem__(self, o): |
| return self._get_as_operand()[o] |
| |
| def __pow__(self, o, modulo=None): |
| return pow(self._get_as_operand(), o, modulo) |
| |
| def __rpow__(self, o): |
| return pow(o, self._get_as_operand()) |
| |
| def __invert__(self): |
| return ~self._get_as_operand() |
| |
| def __neg__(self): |
| return -self._get_as_operand() |
| |
| def __abs__(self): |
| return abs(self._get_as_operand()) |
| |
| def __div__(self, o): |
| try: |
| return self._get_as_operand().__div__(o) |
| except AttributeError: |
| # See https://docs.python.org/3/library/constants.html#NotImplemented |
| return NotImplemented |
| |
| def __rdiv__(self, o): |
| try: |
| return self._get_as_operand().__rdiv__(o) |
| except AttributeError: |
| # See https://docs.python.org/3/library/constants.html#NotImplemented |
| return NotImplemented |
| |
| def __matmul__(self, o): |
| try: |
| return self._get_as_operand().__matmul__(o) |
| except AttributeError: |
| # See https://docs.python.org/3/library/constants.html#NotImplemented |
| return NotImplemented |
| |
| def __rmatmul__(self, o): |
| try: |
| return self._get_as_operand().__rmatmul__(o) |
| except AttributeError: |
| # See https://docs.python.org/3/library/constants.html#NotImplemented |
| return NotImplemented |
| |
| # TODO(josh11b): Even more operator overloads. |
| |
| |
| class PerReplica(DistributedValues, composite_tensor.CompositeTensor): |
| """Holds a map from replica to unsynchronized values.""" |
| |
| @property |
| def _type_spec(self): |
| return PerReplicaSpec( |
| *(type_spec.type_spec_from_value(v) for v in self._values)) |
| |
| @property |
| def values(self): |
| """Returns the per replica values.""" |
| return self._values |
| |
| |
| class PerReplicaSpec(type_spec.TypeSpec): |
| """Type specification for a `PerReplica`.""" |
| |
| __slots__ = ["_value_specs"] |
| |
| value_type = property(lambda self: PerReplica) |
| |
| def __init__(self, *value_specs): |
| self._value_specs = tuple(value_specs) |
| |
| def _serialize(self): |
| return self._value_specs |
| |
| @property |
| def _component_specs(self): |
| return self._value_specs |
| |
| def _to_components(self, value): |
| replica_context = distribution_strategy_context.get_replica_context() |
| if replica_context is not None and replica_context.num_replicas_in_sync > 1: |
| raise ValueError( |
| "Flattening a PerReplica to components is not supported in replica " |
| "context.") |
| return value._values # pylint: disable=protected-access |
| |
| def _from_components(self, tensor_list): |
| return PerReplica(tensor_list) |
| |
| |
| # Note that unlike PerReplica, Mirrored values inherit from |
| # DistributedDelegate and so can be used directly in cross-replica mode. |
| # TODO(tomhennigan) Should this extend CompositeTensor? |
| class Mirrored(DistributedDelegate): |
| """Holds a map from replica to values which are kept in sync.""" |
| |
| def _get_cross_replica(self): |
| return self._get_closest() |
| |
| def _as_graph_element(self): |
| obj = self._get() |
| conv_fn = getattr(obj, "_as_graph_element", None) |
| if conv_fn and callable(conv_fn): |
| return conv_fn() |
| return obj |
| |
| |
| def _assign_on_device(device, variable, tensor): |
| with ops.device(device): |
| return variable.assign(tensor) |
| |
| |
| def _assign_add_on_device(device, variable, tensor): |
| with ops.device(device): |
| return variable.assign_add(tensor) |
| |
| |
| def _assign_sub_on_device(device, variable, tensor): |
| with ops.device(device): |
| return variable.assign_sub(tensor) |
| |
| |
| def _assert_strategy(strategy): |
| if not distribution_strategy_context.has_strategy(): |
| raise RuntimeError('Need to be inside "with strategy.scope()" for %s' % |
| (strategy,)) |
| current_strategy = distribution_strategy_context.get_strategy() |
| if current_strategy is not strategy: |
| raise RuntimeError( |
| "Mixing different tf.distribute.Strategy objects: %s is not %s" % |
| (current_strategy, strategy)) |
| |
| |
| @contextlib.contextmanager |
| def _enter_or_assert_strategy(strategy): |
| if not distribution_strategy_context.has_strategy(): |
| with strategy.scope(): |
| yield |
| else: |
| _assert_strategy(strategy) |
| yield |
| |
| |
| DistributedVarOp = collections.namedtuple( |
| "DistributedVarOp", ["name", "graph", "traceback", "type"]) |
| |
| |
| class DistributedVariable(DistributedDelegate, variables_lib.Variable): |
| """Holds a map from replica to variables.""" |
| |
| # TODO(josh11b): Support changing the set of variables if e.g. if new |
| # devices are joining or a device is to leave. |
| |
| def __init__(self, strategy, values): |
| self._distribute_strategy = strategy |
| super(DistributedVariable, self).__init__(values) |
| self._common_name = self._primary.name.split(":")[0] |
| # Use a weakref to make it easy to map from the contained values |
| # to the container without introducing a reference cycle. |
| for v in values: |
| v._distributed_container = weakref.ref(self) # pylint: disable=protected-access |
| # tf.keras keeps track of variables initialized using this attribute. When |
| # tf.keras gets the default session, it initializes all uninitialized vars. |
| # We need to make _keras_initialized a member of DistributedVariable because |
| # without this it will use `__getattr__` which will delegate to a component |
| # variable. |
| self._keras_initialized = False |
| # Typically, a `DistributedVariable`'s initializer is composed of the |
| # initializers of the components variables. However, in some cases, such as |
| # when restoring from a checkpoint, we may set the _initializer_op |
| # property on the entire `DistributedVariable`. |
| self._initializer_op = None |
| |
| def is_initialized(self, name=None): |
| """Identifies if all the component variables are initialized. |
| |
| Args: |
| name: Name of the final `logical_and` op. |
| |
| Returns: |
| The op that evaluates to True or False depending on if all the |
| component variables are initialized. |
| """ |
| result = self._primary.is_initialized() |
| # We iterate through the list of values except the last one to allow us to |
| # name the final `logical_and` op the same name that is passed by the user |
| # to the `is_initialized` op. For distributed variables, the |
| # `is_initialized` op is a `logical_and` op. |
| for v in self._values[1:-1]: |
| result = math_ops.logical_and(result, v.is_initialized()) |
| result = math_ops.logical_and( |
| result, self._values[-1].is_initialized(), name=name) |
| return result |
| |
| @property |
| def initializer(self): |
| if self._initializer_op: |
| init_op = self._initializer_op |
| else: |
| # return grouped ops of all the var initializations of component values of |
| # the mirrored variable |
| init_op = control_flow_ops.group( |
| tuple(v.initializer for v in self._values)) |
| return init_op |
| |
| def initialized_value(self): |
| return self._get_closest().initialized_value() |
| |
| @property |
| def initial_value(self): |
| return self._get_closest().initial_value |
| |
| @property |
| def constraint(self): |
| return self._primary.constraint |
| |
| @property |
| def graph(self): |
| return self._primary.graph |
| |
| @property |
| def _shared_name(self): |
| return self._common_name |
| |
| @property |
| def _unique_id(self): |
| return self._primary._unique_id # pylint: disable=protected-access |
| |
| @property |
| def _graph_key(self): |
| """Lets Optimizers know which graph this variable is from.""" |
| return self._primary._graph_key # pylint: disable=protected-access |
| |
| @property |
| def name(self): |
| return self._primary.name |
| |
| @property |
| def dtype(self): |
| return self._primary.dtype |
| |
| @property |
| def shape(self): |
| return self._primary.shape |
| |
| @property |
| def synchronization(self): |
| return self._primary.synchronization |
| |
| @property |
| def handle(self): |
| replica_id = _get_current_replica_id_as_int() |
| if replica_id is None: |
| raise ValueError("`handle` is not available outside the replica context" |
| " or a `tf.distribute.Strategy.update()` call.") |
| else: |
| return self._values[replica_id].handle |
| |
| def eval(self, session=None): |
| return self._get_closest().eval(session) |
| |
| @property |
| def _save_slice_info(self): |
| return self._primary._save_slice_info # pylint: disable=protected-access |
| |
| def _get_save_slice_info(self): |
| return self._primary._get_save_slice_info() # pylint: disable=protected-access |
| |
| def _set_save_slice_info(self, save_slice_info): |
| for v in self._values: |
| v._set_save_slice_info(save_slice_info) # pylint: disable=protected-access |
| |
| @property |
| def device(self): |
| return self._get_closest().device |
| |
| @property |
| def trainable(self): |
| return self._primary.trainable |
| |
| @property |
| def distribute_strategy(self): |
| return self._distribute_strategy |
| |
| def get_shape(self): |
| return self._primary.get_shape() |
| |
| def to_proto(self, export_scope=None): |
| return self._primary.to_proto(export_scope=export_scope) |
| |
| @property |
| def op(self): |
| # We want cross-replica code that does some var.op.X calls |
| # to work (even if the current device isn't in self._devices), but |
| # other uses of var.op in a cross-replica context to fail. |
| if distribution_strategy_context.in_cross_replica_context(): |
| return DistributedVarOp(self._primary.op.name, self._primary.op.graph, |
| self._primary.op.traceback, self._primary.op.type) |
| return self._get().op |
| |
| @property |
| def _in_graph_mode(self): |
| return self._primary._in_graph_mode # pylint: disable=protected-access |
| |
| def read_value(self): |
| with _enter_or_assert_strategy(self._distribute_strategy): |
| return array_ops.identity(self._get()) |
| |
| def value(self): |
| return self._get_closest().value() |
| |
| def _should_act_as_resource_variable(self): |
| """Pass resource_variable_ops.is_resource_variable check.""" |
| pass |
| |
| |
| ops.register_dense_tensor_like_type(DistributedVariable) |
| |
| |
| @contextlib.contextmanager |
| def _maybe_enter_graph(tensor): |
| # Note: might have an eager tensor but not be executing eagerly when |
| # building functions. |
| if (context.executing_eagerly() or isinstance(tensor, ops.EagerTensor) or |
| ops.has_default_graph()): |
| yield |
| else: |
| with tensor.graph.as_default(): |
| yield |
| |
| |
| def _make_raw_assign_fn(raw_assign_fn): # pylint: disable=missing-docstring |
| |
| def assign_fn(var, value, use_locking=False, name=None, read_value=True): # pylint: disable=missing-docstring |
| del use_locking # Unused. |
| |
| with _maybe_enter_graph(var.handle): |
| op = raw_assign_fn( |
| var.handle, ops.convert_to_tensor(value, dtype=var.dtype), name=name) |
| |
| with ops.control_dependencies([op]): |
| return var._read_variable_op() if read_value else op # pylint: disable=protected-access |
| |
| return assign_fn |
| |
| |
| class TPUVariableMixin(object): |
| """Mixin for TPU variables.""" |
| |
| def __init__(self, *args, **kwargs): |
| super(TPUVariableMixin, self).__init__(*args, **kwargs) |
| |
| # Handle ID is needed for `get_replicated_var_handle` to cache the variables |
| # correctly since in eager mode different variables can have the same name. |
| if ops.executing_eagerly_outside_functions(): |
| self._handle_id = self._common_name + "_" + str(id(self._primary)) |
| else: |
| self._handle_id = self._common_name |
| |
| def __getattr__(self, name): |
| if _enclosing_tpu_context() is None: |
| return super(TPUVariableMixin, self).__getattr__(name) |
| else: |
| raise AttributeError( |
| "'{}' not accessible within a TPU context.".format(name)) |
| |
| def get(self): |
| if _enclosing_tpu_context() is None: |
| return super(TPUVariableMixin, self).get() |
| else: |
| raise NotImplementedError( |
| "`TPUVariableMixin.get()` is not supported within a TPU context.") |
| |
| def _get_as_operand(self): |
| return self.read_value() |
| |
| def _get_closest(self): |
| if _enclosing_tpu_context() is None: |
| return super(TPUVariableMixin, self)._get_closest() |
| else: |
| return self._primary |
| |
| def numpy(self): |
| if context.executing_eagerly(): |
| return self.read_value().numpy() |
| else: |
| raise NotImplementedError( |
| "numpy() is only available when eager execution is enabled.") |
| |
| def _is_mirrored(self): |
| raise NotImplementedError( |
| "`TPUVariableMixin._is_mirrored()` must be implemented by subclasses.") |
| |
| @property |
| def handle(self): |
| # If we're in a tpu.rewrite(), return the replicated handle. |
| tpu_context = _enclosing_tpu_context() |
| if tpu_context is None: |
| return self._get_closest().handle |
| else: |
| return tpu_context.get_replicated_var_handle( |
| self._handle_id, self._values, self._is_mirrored()) |
| |
| @property |
| def device(self): |
| return self.handle.device |
| |
| def _read_variable_op(self): |
| if self.trainable: |
| tape.variable_accessed(self) |
| return gen_resource_variable_ops.read_variable_op(self.handle, self.dtype) |
| |
| def read_value(self): |
| if _enclosing_tpu_context() is None: |
| return super(TPUVariableMixin, self).read_value() |
| else: |
| return self._read_variable_op() |
| |
| def value(self): |
| if _enclosing_tpu_context() is None: |
| return super(TPUVariableMixin, self).value() |
| else: |
| return self._read_variable_op() |
| |
| def _as_graph_element(self): |
| if _enclosing_tpu_context() is None: |
| return super(TPUVariableMixin, self)._as_graph_element() # pylint: disable=protected-access |
| else: |
| return None |
| |
| @property |
| def op(self): |
| return DistributedVarOp(self._primary.op.name, self._primary.op.graph, |
| self._primary.op.traceback, self._primary.op.type) |
| |
| def _dense_var_to_tensor(self, dtype=None, name=None, as_ref=False): |
| """Converts a variable to a tensor.""" |
| # pylint: disable=protected-access |
| if _enclosing_tpu_context() is None: |
| return super(TPUVariableMixin, self)._dense_var_to_tensor( |
| dtype=dtype, name=name, as_ref=as_ref) |
| # pylint: enable=protected-access |
| elif dtype is not None and dtype != self.dtype: |
| return math_ops.cast(self.read_value(), dtype) |
| else: |
| return self.handle if as_ref else self.read_value() |
| |
| |
| def _validate_colocate_extended(v, extended): |
| variable_strategy = v._distribute_strategy # pylint: disable=protected-access |
| if variable_strategy.extended is not extended: |
| raise ValueError( |
| "`colocate_vars_with` must only be passed a variable created in this " |
| "tf.distribute.Strategy.scope(), not %s created in scope: %s" % |
| (v, variable_strategy)) |
| |
| |
| def validate_colocate_distributed_variable(v, extended): |
| if not isinstance(v, DistributedVariable): |
| raise ValueError( |
| "`colocate_vars_with` must only be passed a variable created in this " |
| "tf.distribute.Strategy.scope(), not: %r" % (v,)) |
| _validate_colocate_extended(v, extended) |
| |
| |
| def validate_colocate(v, extended): |
| if not hasattr(v, "_distribute_strategy"): |
| raise ValueError( |
| "`colocate_vars_with` must only be passed a variable created in this " |
| "tf.distribute.Strategy.scope(), not: %r" % (v,)) |
| _validate_colocate_extended(v, extended) |
| |
| |
| def _apply_aggregation(strategy, value, aggregation, destinations): |
| if aggregation == vs.VariableAggregation.ONLY_FIRST_REPLICA: |
| return strategy.extended.broadcast_to( |
| strategy.experimental_local_results(value)[0], |
| destinations=destinations) |
| reduce_op = reduce_util.ReduceOp.from_variable_aggregation(aggregation) |
| return strategy.extended.reduce_to(reduce_op, value, destinations) |
| |
| |
| _aggregation_error_msg = ( |
| "You must specify an aggregation method to update a " |
| "{variable_type} in Replica Context. You can do so by passing " |
| "an explicit value for argument `aggregation` to tf.Variable(..)." |
| "e.g. `tf.Variable(..., aggregation=tf.VariableAggregation.SUM)`" |
| "`tf.VariableAggregation` lists the possible aggregation methods." |
| "This is required because {variable_type} should always be " |
| "kept in sync. When updating them or assigning to them in a " |
| "replica context, we automatically try to aggregate the values " |
| "before updating the variable. For this aggregation, we need to " |
| "know the aggregation method. " |
| "Another alternative is to not try to update such " |
| "{variable_type} in replica context, but in cross replica " |
| "context. You can enter cross replica context by calling " |
| "`tf.distribute.get_replica_context().merge_call(merge_fn, ..)`." |
| "Inside `merge_fn`, you can then update the {variable_type} " |
| "using `tf.distribute.StrategyExtended.update()`.") |
| |
| |
| class _MirroredSaveable(saver.BaseSaverBuilder.ResourceVariableSaveable): |
| """Class for defining how to restore a MirroredVariable.""" |
| |
| def __init__(self, mirrored_variable, primary_variable, name): |
| self._mirrored_variable = mirrored_variable |
| super(_MirroredSaveable, self).__init__(primary_variable, "", name) |
| |
| def restore(self, restored_tensors, restored_shapes): |
| """Restore the same value into all variables.""" |
| tensor, = restored_tensors |
| return control_flow_ops.group( |
| tuple( |
| _assign_on_device(v.device, v, tensor) |
| for v in self._mirrored_variable.values)) |
| |
| |
| def create_mirrored_variable( # pylint: disable=missing-docstring |
| strategy, real_mirrored_creator, mirrored_cls, sync_on_read_cls, **kwargs): |
| # Figure out what collections this variable should be added to. |
| # We'll add the MirroredVariable to those collections instead. |
| var_collections = kwargs.pop("collections", None) |
| if var_collections is None: |
| var_collections = [ops.GraphKeys.GLOBAL_VARIABLES] |
| kwargs["collections"] = [] |
| |
| synchronization = kwargs.get("synchronization", |
| vs.VariableSynchronization.ON_WRITE) |
| |
| if synchronization == vs.VariableSynchronization.NONE: |
| raise ValueError( |
| "`NONE` variable synchronization mode is not supported with `Mirrored` " |
| "distribution strategy. Please change the `synchronization` for " |
| "variable: " + str(kwargs["name"])) |
| elif synchronization == vs.VariableSynchronization.ON_READ: |
| is_sync_on_read = True |
| elif synchronization in (vs.VariableSynchronization.ON_WRITE, |
| vs.VariableSynchronization.AUTO): |
| # `AUTO` synchronization defaults to `ON_WRITE`. |
| is_sync_on_read = False |
| else: |
| raise ValueError( |
| "Invalid variable synchronization mode: %s for variable: %s" % |
| (synchronization, kwargs["name"])) |
| |
| aggregation = kwargs.pop("aggregation", vs.VariableAggregation.NONE) |
| |
| if aggregation not in (vs.VariableAggregation.NONE, |
| vs.VariableAggregation.SUM, |
| vs.VariableAggregation.MEAN, |
| vs.VariableAggregation.ONLY_FIRST_REPLICA): |
| raise ValueError("Invalid variable aggregation mode: %s for variable: %s" % |
| (aggregation, kwargs["name"])) |
| |
| # Ignore user-specified caching device, not needed for mirrored variables. |
| kwargs.pop("caching_device", None) |
| |
| # TODO(josh11b,apassos): It would be better if variable initialization |
| # was never recorded on the tape instead of having to do this manually |
| # here. |
| with tape.stop_recording(): |
| value_list = real_mirrored_creator(**kwargs) |
| var_cls = sync_on_read_cls if is_sync_on_read else mirrored_cls |
| result = var_cls(strategy, value_list, aggregation) |
| |
| # Add the wrapped variable to the requested collections. |
| # The handling of eager mode and the global step matches |
| # ResourceVariable._init_from_args(). |
| if not context.executing_eagerly(): |
| g = ops.get_default_graph() |
| # If "trainable" is True, next_creator() will add the member variables |
| # to the TRAINABLE_VARIABLES collection, so we manually remove |
| # them and replace with the MirroredVariable. We can't set |
| # "trainable" to False for next_creator() since that causes functions |
| # like implicit_gradients to skip those variables. |
| if kwargs.get("trainable", True): |
| var_collections.append(ops.GraphKeys.TRAINABLE_VARIABLES) |
| l = g.get_collection_ref(ops.GraphKeys.TRAINABLE_VARIABLES) |
| for value in value_list: |
| for i, trainable_variable in enumerate(l): |
| if value is trainable_variable: |
| del l[i] |
| break |
| |
| g.add_to_collections(var_collections, result) |
| elif ops.GraphKeys.GLOBAL_STEP in var_collections: |
| ops.add_to_collections(ops.GraphKeys.GLOBAL_STEP, result) |
| |
| return result |
| |
| |
| class MirroredVariable(DistributedVariable, Mirrored): |
| """Holds a map from replica to variables whose values are kept in sync.""" |
| |
| def __init__(self, strategy, values, aggregation): |
| super(MirroredVariable, self).__init__(strategy, values) |
| self._aggregation = aggregation |
| |
| # The arguments to update() are automatically unwrapped so the update() |
| # function would normally see regular variables, not MirroredVariables. |
| # However, the update function can still operate on wrapped MirroredVariables |
| # through object members, captured arguments, etc. This is more likely in an |
| # update_non_slot() function (like OptimizerV2._finish), which can |
| # update several non-slot variables in one call. |
| def _assign_func(self, *args, **kwargs): |
| with _enter_or_assert_strategy(self._distribute_strategy): |
| f = kwargs.pop("f") |
| if distribution_strategy_context.in_cross_replica_context(): |
| update_replica_id = distribute_lib.get_update_replica_id() |
| if update_replica_id is not None: |
| # We are calling an assign function on the mirrored variable in an |
| # update context. |
| return f(self._values[update_replica_id], *args, **kwargs) |
| |
| # We are calling assign on the mirrored variable in cross replica |
| # context, use `strategy.extended.update()` to update the variable. |
| return self._distribute_strategy.extended.update( |
| self, f, args=args, kwargs=kwargs) |
| else: |
| _assert_replica_context(self._distribute_strategy) |
| # We are calling an assign function on the mirrored variable in replica |
| # context. |
| # We reduce the value we want to assign/add/sub. More details about how |
| # we handle the different use cases can be found in the _reduce method. |
| # We call the function on each of the mirrored variables with the |
| # reduced value. |
| if self._aggregation == vs.VariableAggregation.NONE: |
| raise ValueError( |
| _aggregation_error_msg.format(variable_type="MirroredVariable")) |
| |
| def merge_fn(strategy, value, *other_args, **other_kwargs): # pylint: disable=missing-docstring |
| # Don't allow MEAN with non float dtype, since it may cause unexpected |
| # precision loss. Python3 and NumPy automatically upcast integers to |
| # float in division, but we should always preserve the type. |
| # |
| # Note that to be backward compatible we allow the case when the value |
| # is *always* the same on each replica. I.E. value is not a |
| # PerReplica. Refer to regroup() to see how values are grouped. |
| if self._aggregation == vs.VariableAggregation.MEAN and ( |
| not self.dtype.is_floating) and isinstance(value, PerReplica): |
| raise ValueError( |
| "Cannot update non-float variables with " |
| "tf.VariableAggregation.MEAN aggregation in replica context. " |
| "Either change the variable dtype to float or update it in " |
| "cross-replica context.") |
| |
| v = _apply_aggregation(strategy, value, self._aggregation, self) |
| return strategy.extended.update( |
| self, f, args=(v,) + other_args, kwargs=other_kwargs) |
| |
| return distribution_strategy_context.get_replica_context().merge_call( |
| merge_fn, args=args, kwargs=kwargs) |
| |
| def assign_sub(self, *args, **kwargs): |
| assign_sub_fn = lambda var, *a, **kw: var.assign_sub(*a, **kw) |
| return self._assign_func(f=assign_sub_fn, *args, **kwargs) |
| |
| def assign_add(self, *args, **kwargs): |
| assign_add_fn = lambda var, *a, **kw: var.assign_add(*a, **kw) |
| return self._assign_func(f=assign_add_fn, *args, **kwargs) |
| |
| def assign(self, *args, **kwargs): |
| assign_fn = lambda var, *a, **kw: var.assign(*a, **kw) |
| return self._assign_func(f=assign_fn, *args, **kwargs) |
| |
| @property |
| def aggregation(self): |
| return self._aggregation |
| |
| def _get_cross_replica(self): |
| # Return identity, to avoid directly exposing the variable to the user and |
| # allowing it to be modified by mistake. |
| return array_ops.identity(Mirrored._get_cross_replica(self)) |
| |
| def _as_graph_element(self): |
| return self._get_closest()._as_graph_element() # pylint: disable=protected-access |
| |
| def _gather_saveables_for_checkpoint(self): |
| """Overrides Trackable method. |
| |
| This allows both name-based and object-based save and restore of |
| MirroredVariables. |
| |
| Returns: |
| A dictionary mapping attribute names to `SaveableObject` factories. |
| """ |
| |
| def _saveable_factory(name=self._common_name): |
| return _MirroredSaveable(self, self._primary, name) |
| |
| return {trackable.VARIABLE_VALUE_KEY: _saveable_factory} |
| |
| def _dense_var_to_tensor(self, dtype=None, name=None, as_ref=False): |
| """Converts a variable to a tensor.""" |
| # Try to avoid assignments to and other mutations of MirroredVariable |
| # state except through a DistributionStrategy.extended.update() call. |
| assert not as_ref |
| return ops.convert_to_tensor( |
| self._get(), dtype=dtype, name=name, as_ref=as_ref) |
| |
| |
| # Register a conversion function which reads the value of the variable, |
| # allowing instances of the class to be used as tensors. |
| def _tensor_conversion_mirrored(var, dtype=None, name=None, as_ref=False): |
| return var._dense_var_to_tensor(dtype=dtype, name=name, as_ref=as_ref) # pylint: disable=protected-access |
| |
| |
| ops.register_tensor_conversion_function(MirroredVariable, |
| _tensor_conversion_mirrored) |
| |
| |
| def _tensor_conversion_mirrored_val(value, dtype=None, name=None, as_ref=False): |
| return ops.convert_to_tensor( |
| value._get(), dtype=dtype, name=name, as_ref=as_ref) # pylint: disable=protected-access |
| |
| |
| ops.register_tensor_conversion_function(Mirrored, |
| _tensor_conversion_mirrored_val) |
| |
| |
| def _enclosing_tpu_context(): |
| """Returns the TPUReplicateContext, which exists inside a tpu.rewrite().""" |
| graph = ops.get_default_graph() |
| while graph is not None: |
| # pylint: disable=protected-access |
| context_ = graph._get_control_flow_context() |
| # pylint: enable=protected-access |
| while context_ is not None: |
| if isinstance(context_, tpu.TPUReplicateContext): |
| return context_ |
| context_ = context_.outer_context |
| # This may be a FuncGraph due to defuns or v2 control flow. We need to |
| # find the original graph with the XLAControlFlowContext. |
| graph = getattr(graph, "outer_graph", None) |
| return None |
| |
| |
| def is_distributed_variable(v): |
| """Determine if a variable is ds variable or TPU mirrored variable.""" |
| return isinstance(v, DistributedVariable) |
| |
| |
| class TPUMirroredVariable(TPUVariableMixin, MirroredVariable): |
| """Holds a map from replica to TPU variables whose values are kept in sync.""" |
| |
| def _assign_func(self, *args, **kwargs): |
| with _enter_or_assert_strategy(self._distribute_strategy): |
| if (distribution_strategy_context.in_cross_replica_context() and |
| (_enclosing_tpu_context() is not None)): |
| f = kwargs.pop("f") |
| return self._distribute_strategy.extended.update( |
| self, f, args=args, kwargs=kwargs) |
| else: |
| return MirroredVariable._assign_func(self, *args, **kwargs) |
| |
| def assign_sub(self, *args, **kwargs): |
| assign_sub_fn = _make_raw_assign_fn( |
| gen_resource_variable_ops.assign_sub_variable_op) |
| return self._assign_func(f=assign_sub_fn, *args, **kwargs) |
| |
| def assign_add(self, *args, **kwargs): |
| assign_add_fn = _make_raw_assign_fn( |
| gen_resource_variable_ops.assign_add_variable_op) |
| return self._assign_func(f=assign_add_fn, *args, **kwargs) |
| |
| def assign(self, *args, **kwargs): |
| assign_fn = _make_raw_assign_fn( |
| gen_resource_variable_ops.assign_variable_op) |
| return self._assign_func(f=assign_fn, *args, **kwargs) |
| |
| def _is_mirrored(self): |
| return True |
| |
| |
| class _SyncOnReadSaveable(saver.BaseSaverBuilder.SaveableObject): |
| """Class for defining how to restore a SyncOnReadVariable.""" |
| |
| def __init__(self, sync_on_read_variable, name): |
| self._sync_on_read_variable = sync_on_read_variable |
| |
| # We use a callable so that we don't have to evaluate this expression |
| # in the case where we are trying to restore instead of save. |
| def tensor(): |
| strategy = sync_on_read_variable._distribute_strategy # pylint: disable=protected-access |
| return strategy.extended.read_var(sync_on_read_variable) |
| |
| spec = saver.BaseSaverBuilder.SaveSpec( |
| tensor=tensor, |
| slice_spec="", |
| name=name, |
| dtype=sync_on_read_variable.dtype, |
| device=sync_on_read_variable._primary.device) # pylint: disable=protected-access |
| |
| super(_SyncOnReadSaveable, self).__init__(tensor, [spec], name) |
| |
| def restore(self, restored_tensors, restored_shapes): |
| """Restore the same value into all variables.""" |
| # To preserve the sum across save and restore, we have to divide the |
| # total across all devices when restoring a variable that was summed |
| # when saving. |
| tensor, = restored_tensors |
| if self._sync_on_read_variable.aggregation == vs.VariableAggregation.SUM: |
| tensor = math_ops.cast(tensor / len(self._sync_on_read_variable._devices), # pylint: disable=protected-access |
| self._sync_on_read_variable.dtype) |
| return control_flow_ops.group( |
| tuple( |
| _assign_on_device(v.device, v, tensor) |
| for v in self._sync_on_read_variable.values)) |
| |
| |
| def _assert_replica_context(strategy): |
| replica_context = distribution_strategy_context.get_replica_context() |
| if not replica_context: |
| raise RuntimeError( |
| "Replica-local variables may only be assigned in a replica context.") |
| if replica_context.strategy is not strategy: |
| raise RuntimeError( |
| "Replica-local variables may only be assigned in a replica context.") |
| |
| |
| class SyncOnReadVariable(DistributedVariable): |
| """Holds a map from replica to variables whose values are reduced on save.""" |
| |
| def __init__(self, strategy, values, aggregation): |
| super(SyncOnReadVariable, self).__init__(strategy, values) |
| self._aggregation = aggregation |
| |
| def assign_sub(self, *args, **kwargs): |
| with _enter_or_assert_strategy(self._distribute_strategy): |
| if distribution_strategy_context.in_cross_replica_context(): |
| if self._aggregation == vs.VariableAggregation.SUM: |
| raise ValueError( |
| "SyncOnReadVariable does not support `assign_sub` in " |
| "cross-replica context when aggregation is set to " |
| "`tf.VariableAggregation.SUM`.") |
| return control_flow_ops.group( |
| tuple( |
| _assign_sub_on_device(v.device, v, args[0]) |
| for v in self._values)) |
| else: |
| return self._get().assign_sub(*args, **kwargs) |
| |
| def assign_add(self, *args, **kwargs): |
| with _enter_or_assert_strategy(self._distribute_strategy): |
| if distribution_strategy_context.in_cross_replica_context(): |
| if self._aggregation == vs.VariableAggregation.SUM: |
| raise ValueError( |
| "SyncOnReadVariable does not support `assign_add` in " |
| "cross-replica context when aggregation is set to " |
| "`tf.VariableAggregation.SUM`.") |
| return control_flow_ops.group( |
| tuple( |
| _assign_add_on_device(v.device, v, args[0]) |
| for v in self._values)) |
| else: |
| return self._get().assign_add(*args, **kwargs) |
| |
| def assign(self, *args, **kwargs): |
| with _enter_or_assert_strategy(self._distribute_strategy): |
| if distribution_strategy_context.in_cross_replica_context(): |
| # To preserve the sum across save and restore, we have to divide the |
| # total across all devices when restoring a variable that was summed |
| # when saving. |
| tensor = args[0] |
| if self._aggregation == vs.VariableAggregation.SUM: |
| tensor = math_ops.cast(tensor / len(self._values), self.dtype) |
| return control_flow_ops.group( |
| tuple(_assign_on_device(v.device, v, tensor) for v in self._values)) |
| else: |
| return self._get().assign(*args, **kwargs) |
| |
| def value(self): |
| with _enter_or_assert_strategy(self._distribute_strategy): |
| if distribution_strategy_context.in_cross_replica_context(): |
| return self._get_cross_replica() |
| else: |
| # _get_closest() returns a Variable. |
| return self._get_closest().value() |
| |
| def numpy(self): |
| if context.executing_eagerly(): |
| return self.read_value().numpy() |
| else: |
| raise NotImplementedError( |
| "numpy() is only available when eager execution is enabled.") |
| |
| @property |
| def aggregation(self): |
| return self._aggregation |
| |
| def _get_cross_replica(self): |
| if self._aggregation == vs.VariableAggregation.ONLY_FIRST_REPLICA: |
| return self._primary |
| |
| with _enter_or_assert_strategy(self._distribute_strategy): |
| return self._distribute_strategy.reduce( |
| reduce_util.ReduceOp.from_variable_aggregation(self.aggregation), |
| self, |
| axis=None) |
| |
| def _as_graph_element(self): |
| # pylint: disable=protected-access |
| with _enter_or_assert_strategy(self._distribute_strategy): |
| if distribution_strategy_context.in_cross_replica_context(): |
| return ops.convert_to_tensor(self._get_cross_replica()) |
| return self._get()._as_graph_element() |
| |
| def _gather_saveables_for_checkpoint(self): |
| """Overrides Trackable method. |
| |
| This allows both name-based and object-based save and restore of |
| `SyncOnReadVariable`s. |
| |
| Returns: |
| A dictionary mapping attribute names to `SaveableObject` factories. |
| """ |
| |
| def _saveable_factory(name=self._common_name): |
| return _SyncOnReadSaveable(self, name) |
| |
| return {trackable.VARIABLE_VALUE_KEY: _saveable_factory} |
| |
| def _dense_var_to_tensor(self, dtype=None, name=None, as_ref=False): |
| """Converts a variable to a tensor.""" |
| with _enter_or_assert_strategy(self._distribute_strategy): |
| return ops.convert_to_tensor( |
| self._get(), dtype=dtype, name=name, as_ref=as_ref) |
| |
| |
| # Register a conversion function for SyncOnReadVariable which allows as_ref to |
| # be true. |
| def _tensor_conversion_sync_on_read(var, dtype=None, name=None, as_ref=False): |
| return var._dense_var_to_tensor(dtype=dtype, name=name, as_ref=as_ref) # pylint: disable=protected-access |
| |
| |
| ops.register_tensor_conversion_function(SyncOnReadVariable, |
| _tensor_conversion_sync_on_read) |
| |
| |
| class TPUSyncOnReadVariable(TPUVariableMixin, SyncOnReadVariable): |
| """Holds a map from replica to variables whose values are reduced on save.""" |
| |
| def assign_sub(self, *args, **kwargs): |
| if _enclosing_tpu_context() is None: |
| return SyncOnReadVariable.assign_sub(self, *args, **kwargs) |
| else: |
| return _make_raw_assign_fn( |
| gen_resource_variable_ops.assign_sub_variable_op)(self, *args, |
| **kwargs) |
| |
| def assign_add(self, *args, **kwargs): |
| if _enclosing_tpu_context() is None: |
| return SyncOnReadVariable.assign_add(self, *args, **kwargs) |
| else: |
| return _make_raw_assign_fn( |
| gen_resource_variable_ops.assign_add_variable_op)(self, *args, |
| **kwargs) |
| |
| def assign(self, *args, **kwargs): |
| if _enclosing_tpu_context() is None: |
| return SyncOnReadVariable.assign(self, *args, **kwargs) |
| else: |
| return _make_raw_assign_fn(gen_resource_variable_ops.assign_variable_op)( |
| self, *args, **kwargs) |
| |
| def _is_mirrored(self): |
| return False |
| |
| |
| def regroup(values, wrap_class=PerReplica): |
| """Makes a nest per-replica into a nest of PerReplica/Mirrored values.""" |
| v0 = values[0] |
| |
| if isinstance(v0, list): |
| for v in values[1:]: |
| assert isinstance(v, list) |
| assert len(v) == len(v0), ("len(v) == %d, len(v0) == %d, v: %s, v0: %s" % |
| (len(v), len(v0), v, v0)) |
| return [ |
| regroup(tuple(v[i] for v in values), wrap_class) |
| for i in range(len(v0)) |
| ] |
| |
| if isinstance(v0, tuple): |
| for v in values[1:]: |
| assert isinstance(v, tuple) |
| assert len(v) == len(v0) |
| regrouped_tuple = tuple( |
| regroup(tuple(v[i] for v in values), wrap_class) |
| for i in range(len(v0))) |
| if hasattr(v0, "_fields"): |
| # This tuple is in fact a namedtuple! Create a new namedtuple instance |
| # and initialize it with the regrouped values: |
| assert hasattr(type(v0), "_make") |
| return type(v0)._make(regrouped_tuple) |
| else: |
| return regrouped_tuple |
| |
| if isinstance(v0, dict): |
| v0keys = set(v0.keys()) |
| for v in values[1:]: |
| assert isinstance(v, dict), ("v[0]: %r v[i]: %r" % (v0, v)) |
| assert set(v.keys()) == v0keys, ("v[0].keys: %s v[i].keys: %s" % |
| (v0keys, set(v.keys()))) |
| # Use the actual type in case it is a class inherited from a dict. |
| return type(v0)({ |
| key: regroup(tuple(v[key] for v in values), wrap_class) |
| for key in v0keys |
| }) |
| |
| # If exactly the same object across all devices, return it unwrapped. |
| same_id = True |
| for v in values[1:]: |
| if v is not v0: |
| same_id = False |
| break |
| # Consider three cases where same_id is true: |
| # * If v0 is a DistributedVariable (a MirroredVariable or |
| # SyncOnReadVariable, and same_id means it is the same across all |
| # devices), we want to return it. We check DistributedVariable |
| # specifically since it can look like it has a |
| # _distributed_container member since its members do. |
| # * If v0 is a member of a distributed variable, in which case |
| # hasattr(v0, "_distributed_container") is true, we want to |
| # return the DistributedVariable that contains it using the |
| # _distributed_container logic below. This case can trigger |
| # same_id when there is only one device. |
| # * In any other situation, same_id means we return v0. |
| if same_id and (isinstance(v0, DistributedVariable) or |
| not hasattr(v0, "_distributed_container")): |
| return v0 |
| |
| # Detect the case where each device has a parallel component of the |
| # same MirroredVariable (or SyncOnReadVariable). In this case we |
| # want to return the containing MirroredVariable, after a bunch of |
| # sanity checking. In particular, each component should have the |
| # same container, and the devices of the variables should match the |
| # keys of the per-replica dictionary. |
| if hasattr(v0, "_distributed_container"): |
| # pylint: disable=protected-access |
| assert not isinstance(v0, MirroredVariable), ( |
| "ids = %s, values = %s" % ([id(v) for v in values], values)) |
| distributed_container = v0._distributed_container() |
| assert distributed_container is not None |
| for v in values[1:]: |
| assert distributed_container is v._distributed_container() |
| return distributed_container |
| # pylint: enable=protected-access |
| |
| return wrap_class(values) |
| |
| |
| def select_replica(replica_id, structured): |
| """Specialize a nest of regular & per-replica values for one replica.""" |
| |
| def _get(x): |
| # `DistributedValues` would be sliced according to replica unless it is a |
| # `DistributedVariable` because `DistributedVariable` can be handled |
| # directly in the replica context. |
| if (isinstance(x, DistributedVariable) or |
| not isinstance(x, DistributedValues)): |
| return x |
| else: |
| return x.values[replica_id] |
| |
| return nest.map_structure(_get, structured) |
| |
| |
| def select_replica_mirrored(replica_id, structured): |
| """Specialize a nest of regular & mirrored values for one replica.""" |
| |
| def _get_mirrored(x): |
| if isinstance(x, DistributedValues): |
| if not isinstance(x, Mirrored): |
| raise TypeError( |
| "Expected value to be mirrored across replicas: %s in %s." % |
| (x, structured)) |
| return x.values[replica_id] |
| else: |
| return x |
| |
| return nest.map_structure(_get_mirrored, structured) |
| |
| |
| def update_regroup(extended, updates, group): |
| """Regroup for an update, with dependencies to ensure all updates execute.""" |
| if not group: |
| regrouped = regroup(updates, Mirrored) |
| return nest.map_structure(extended._local_results, regrouped) # pylint: disable=protected-access |
| |
| def _make_grouped_mirrored(values): |
| """Convert per-replica list `values` into Mirrored type with grouping.""" |
| if len(values) == 1: |
| return Mirrored(values) |
| |
| # Make sure we run all updates. Without this, something like |
| # session.run(extended.update(...)) may only update one replica. |
| g = control_flow_ops.group(values) |
| |
| # If values is just ops, the grouping is enough. Everything in values |
| # should have the same type, since we expect every replica to be performing |
| # the same computation. |
| if not all(tensor_util.is_tensor(v) for v in values): |
| return g |
| |
| # Otherwise we need tensors with the same values as `values`, but |
| # that have a dependency on `g`. |
| with_dep = [] |
| for v in values: |
| with ops.device(v.device), ops.control_dependencies([g]): |
| with_dep.append(array_ops.identity(v)) |
| |
| return Mirrored(with_dep) |
| |
| return regroup(updates, _make_grouped_mirrored) |
| |
| |
| def value_container(val): |
| """Returns the container that this per-replica `value` belongs to. |
| |
| Args: |
| val: A value returned by `call_for_each_replica()` or a variable created in |
| `scope()`. |
| |
| Returns: |
| A container that `value` belongs to. |
| If value does not belong to any container (including the case of |
| container having been destroyed), returns the value itself. |
| """ |
| if (hasattr(val, "_distributed_container") and |
| # DistributedVariable has _distributed_container defined |
| # but we don't want to return it. |
| not isinstance(val, DistributedVariable)): |
| container = val._distributed_container() # pylint: disable=protected-access |
| if container is not None: |
| return container |
| return val |
| |
| |
| class AggregatingVariable(variables_lib.Variable): |
| """A wrapper around a variable that aggregates updates across replicas.""" |
| |
| def __init__(self, strategy, v, aggregation): |
| self._distribute_strategy = strategy |
| self._v = v |
| # NOTE: We don't use "_distributed_container" here because we don't want |
| # to trigger that code path in regroup(). |
| v._aggregating_container = weakref.ref(self) # pylint: disable=protected-access |
| self._aggregation = aggregation |
| |
| def get(self): |
| return self._v |
| |
| @property |
| def distribute_strategy(self): |
| return self._distribute_strategy |
| |
| def __getattr__(self, name): |
| return getattr(self._v, name) |
| |
| def _assign_func(self, *args, **kwargs): |
| with _enter_or_assert_strategy(self._distribute_strategy): |
| f = kwargs.pop("f") |
| if distribution_strategy_context.in_cross_replica_context(): |
| if distribute_lib.get_update_replica_id() is not None: |
| # We are calling an assign function in an update context. |
| return f(self._v, *args, **kwargs) |
| |
| # We are calling an assign function in cross replica context, wrap it in |
| # an update call. |
| return self._distribute_strategy.extended.update( |
| self, f, args=args, kwargs=kwargs) |
| else: |
| replica_context = distribution_strategy_context.get_replica_context() |
| assert replica_context |
| # We are calling an assign function in replica context. |
| # We reduce the value we want to assign/add/sub. More details about how |
| # we handle the different use cases can be found in the _reduce method. |
| # We call the function with the reduced value. |
| if self._aggregation == vs.VariableAggregation.NONE: |
| raise ValueError( |
| _aggregation_error_msg.format( |
| variable_type="AggregatingVariable")) |
| |
| def merge_fn(strategy, value, *other_args, **other_kwargs): |
| v = _apply_aggregation(strategy, value, self._aggregation, self) |
| return strategy.extended.update( |
| self, f, args=(v,) + other_args, kwargs=other_kwargs) |
| |
| return replica_context.merge_call(merge_fn, args=args, kwargs=kwargs) |
| |
| def assign_sub(self, *args, **kwargs): |
| assign_sub_fn = lambda var, *a, **kw: var.assign_sub(*a, **kw) |
| return self._assign_func(f=assign_sub_fn, *args, **kwargs) |
| |
| def assign_add(self, *args, **kwargs): |
| assign_add_fn = lambda var, *a, **kw: var.assign_add(*a, **kw) |
| return self._assign_func(f=assign_add_fn, *args, **kwargs) |
| |
| def assign(self, *args, **kwargs): |
| assign_fn = lambda var, *a, **kw: var.assign(*a, **kw) |
| return self._assign_func(f=assign_fn, *args, **kwargs) |
| |
| @property |
| def initializer(self): |
| return self._v.initializer |
| |
| def initialized_value(self): |
| return self._v.initialized_value() |
| |
| @property |
| def initial_value(self): |
| return self._v.initial_value |
| |
| @property |
| def op(self): |
| return self._v.op |
| |
| def read_value(self): |
| return self._v.read_value() |
| |
| def eval(self, session=None): |
| return self._v.eval(session) |
| |
| @property |
| def graph(self): |
| return self._v.graph |
| |
| @property |
| def device(self): |
| return self._v.device |
| |
| @property |
| def shape(self): |
| return self._v.shape |
| |
| @property |
| def aggregation(self): |
| return self._aggregation |
| |
| @property |
| def synchronization(self): |
| return self._v.synchronization |
| |
| @property |
| def name(self): |
| return self._v.name |
| |
| @property |
| def trainable(self): |
| return self._v.trainable |
| |
| @property |
| def dtype(self): |
| return self._v.dtype |
| |
| # TODO(josh11b): Test saving & restoring. |
| def _gather_saveables_for_checkpoint(self): |
| return {trackable.VARIABLE_VALUE_KEY: self._v} |
| |
| # pylint: disable=multiple-statements |
| def __add__(self, o): |
| return self._v + o |
| |
| def __radd__(self, o): |
| return o + self._v |
| |
| def __sub__(self, o): |
| return self._v - o |
| |
| def __rsub__(self, o): |
| return o - self._v |
| |
| def __mul__(self, o): |
| return self._v * o |
| |
| def __rmul__(self, o): |
| return o * self._v |
| |
| def __truediv__(self, o): |
| return self._v / o |
| |
| def __rtruediv__(self, o): |
| return o / self._v |
| |
| def __floordiv__(self, o): |
| return self._v // o |
| |
| def __rfloordiv__(self, o): |
| return o // self._v |
| |
| def __mod__(self, o): |
| return self._v % o |
| |
| def __rmod__(self, o): |
| return o % self._v |
| |
| def __lt__(self, o): |
| return self._v < o |
| |
| def __le__(self, o): |
| return self._v <= o |
| |
| def __gt__(self, o): |
| return self._v > o |
| |
| def __ge__(self, o): |
| return self._v >= o |
| |
| def __and__(self, o): |
| return self._v & o |
| |
| def __rand__(self, o): |
| return o & self._v |
| |
| def __or__(self, o): |
| return self._v | o |
| |
| def __ror__(self, o): |
| return o | self._v |
| |
| def __xor__(self, o): |
| return self._v ^ o |
| |
| def __rxor__(self, o): |
| return o ^ self._v |
| |
| def __getitem__(self, o): |
| return self._v[o] |
| |
| def __pow__(self, o, modulo=None): |
| return pow(self._v, o, modulo) |
| |
| def __rpow__(self, o): |
| return pow(o, self._v) |
| |
| def __invert__(self): |
| return ~self._v |
| |
| def __neg__(self): |
| return -self._v |
| |
| def __abs__(self): |
| return abs(self._v) |
| |
| def __div__(self, o): |
| try: |
| return self._v.__div__(o) |
| except AttributeError: |
| # See https://docs.python.org/3/library/constants.html#NotImplemented |
| return NotImplemented |
| |
| def __rdiv__(self, o): |
| try: |
| return self._v.__rdiv__(o) |
| except AttributeError: |
| # See https://docs.python.org/3/library/constants.html#NotImplemented |
| return NotImplemented |
| |
| def __matmul__(self, o): |
| try: |
| return self._v.__matmul__(o) |
| except AttributeError: |
| # See https://docs.python.org/3/library/constants.html#NotImplemented |
| return NotImplemented |
| |
| def __rmatmul__(self, o): |
| try: |
| return self._v.__rmatmul__(o) |
| except AttributeError: |
| # See https://docs.python.org/3/library/constants.html#NotImplemented |
| return NotImplemented |
| |
| def __str__(self): |
| return str(self._v) |
| |
| def __repr__(self): |
| return repr(self._v) |
| |
| def _should_act_as_resource_variable(self): |
| """Pass resource_variable_ops.is_resource_variable check.""" |
| pass |
| |
| def _dense_var_to_tensor(self, dtype=None, name=None, as_ref=False): |
| return ops.convert_to_tensor(self.get(), dtype=dtype, name=name, |
| as_ref=as_ref) |
| |
| |
| # Register a conversion function which reads the value of the variable, |
| # allowing instances of the class to be used as tensors. |
| def _tensor_conversion_aggregate(var, dtype=None, name=None, as_ref=False): |
| return var._dense_var_to_tensor(dtype, name, as_ref) # pylint: disable=protected-access |
| |
| |
| ops.register_tensor_conversion_function(AggregatingVariable, |
| _tensor_conversion_aggregate) |
| ops.register_dense_tensor_like_type(AggregatingVariable) |