# Copyright 2020 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. # ============================================================================== """A variable which packs a list of variables distributed across devices.""" from __future__ import absolute_import from __future__ import division from __future__ import print_function from tensorflow.python.distribute import device_util from tensorflow.python.eager import context from tensorflow.python.framework import ops from tensorflow.python.ops import math_ops from tensorflow.python.ops import resource_variable_ops class PackedDistributedVariable(resource_variable_ops.BaseResourceVariable): """A variable which packs multiple variables distributed across devices. It's only supported when eager execution is enabled. For op-by-op execution, use an unpacked handle on the current device; for function execution, use the packed handle to reduce the overhead of function calls. """ def __init__(self, distributed_variables=None, name=None, **unused_kwargs): """Packs a list of variables which are distributed across devices. Args: distributed_variables: A list of distributed Variables to pack. name: Optional name for the variable. Defaults to `'Variable'` and gets uniquified automatically. """ if not ops.executing_eagerly_outside_functions(): raise ValueError( "PackedDistributedVariable should be created in eager mode.") if not distributed_variables: raise ValueError("Expect a non-empty list of variables to pack.") for i, var in enumerate(distributed_variables): if not resource_variable_ops.is_resource_variable(var): raise ValueError("Expect a list of ResourceVariables to pack, " "but the %d-th variable is %s" % (i, type(var))) self._distributed_variables = distributed_variables self._devices = [v.device for v in distributed_variables] with ops.init_scope(): with ops.name_scope(name, "Variable", skip_on_eager=False) as name: handle = ops.pack_eager_tensors( [var.handle for var in distributed_variables]) handle_name = ops.name_from_scope_name(name) unique_id = "%s_%d" % (handle_name, ops.uid()) super(PackedDistributedVariable, self).__init__( trainable=distributed_variables[0].trainable, shape=distributed_variables[0].shape, dtype=distributed_variables[0].dtype, handle=handle, synchronization=distributed_variables[0].synchronization, constraint=distributed_variables[0].constraint, aggregation=distributed_variables[0].aggregation, distribute_strategy=distributed_variables[0]._distribute_strategy, # pylint: disable=protected-access name=name, unique_id=unique_id, handle_name=handle_name, graph_element=None, initial_value=None, initializer_op=None, is_initialized_op=None, cached_value=None, caching_device=None, is_distributed_variables=True) @property def devices(self): return self._devices def on_device(self, device): return PackedVarAndDevice(self, device) def get_var_on_device(self, device): for i, d in enumerate(self._devices): if d == device: return self._distributed_variables[i] raise ValueError("Device %s is not found" % device) def get_var_on_current_device(self): current_device = device_util.canonicalize(device_util.current()) return self.get_var_on_device(current_device) def initial_value(self, device): """Returns the Tensor used as the initial value for the variable.""" return self.get_var_on_device(device).initial_value @property def handle(self): if context.executing_eagerly(): return self.get_var_on_current_device().handle else: return self._handle @property def packed_handle(self): return self._handle def _read_variable_op(self): if context.executing_eagerly(): return self.get_var_on_current_device().value() else: return super(PackedDistributedVariable, self)._read_variable_op() def value(self): return self._read_variable_op() def is_initialized(self, name=None): if context.executing_eagerly(): result = self._distributed_variables[0].is_initialized() for v in self._distributed_variables[1:-1]: result = math_ops.logical_and(result, v.is_initialized()) result = math_ops.logical_and( result, self._distributed_variables[-1].is_initialized(), name=name) else: with ops.device(self._devices[0]): result = super(PackedDistributedVariable, self).is_initialized(name) for d in self._devices[1:-1]: with ops.device(d): initialized = super(PackedDistributedVariable, self).is_initialized(name) result = math_ops.logical_and(result, initialized) with ops.device(self._devices[-1]): initialized = super(PackedDistributedVariable, self).is_initialized(name) result = math_ops.logical_and(result, initialized, name=name) return result def _update(self, update_fn, value, **kwargs): if context.executing_eagerly(): return update_fn(self.get_var_on_current_device(), value, **kwargs) else: return update_fn(super(PackedDistributedVariable, self), value, **kwargs) def assign_sub(self, delta, use_locking=None, name=None, read_value=True): assign_sub_fn = lambda var, *a, **kw: var.assign_sub(*a, **kw) return self._update( update_fn=assign_sub_fn, value=delta, use_locking=use_locking, name=name, read_value=read_value) def assign_add(self, delta, use_locking=None, name=None, read_value=True): assign_add_fn = lambda var, *a, **kw: var.assign_add(*a, **kw) return self._update( update_fn=assign_add_fn, value=delta, use_locking=use_locking, name=name, read_value=read_value) def assign(self, value, use_locking=None, name=None, read_value=True): assign_fn = lambda var, *a, **kw: var.assign(*a, **kw) return self._update( update_fn=assign_fn, value=value, use_locking=use_locking, name=name, read_value=read_value) def scatter_sub(self, sparse_delta, use_locking=False, name=None): scatter_sub_fn = lambda var, *a, **kw: var.scatter_sub(*a, **kw) return self._update( update_fn=scatter_sub_fn, value=sparse_delta, use_locking=use_locking, name=name) def scatter_add(self, sparse_delta, use_locking=False, name=None): scatter_add_fn = lambda var, *a, **kw: var.scatter_add(*a, **kw) return self._update( update_fn=scatter_add_fn, value=sparse_delta, use_locking=use_locking, name=name) def scatter_mul(self, sparse_delta, use_locking=False, name=None): scatter_mul_fn = lambda var, *a, **kw: var.scatter_mul(*a, **kw) return self._update( update_fn=scatter_mul_fn, value=sparse_delta, use_locking=use_locking, name=name) def scatter_div(self, sparse_delta, use_locking=False, name=None): scatter_div_fn = lambda var, *a, **kw: var.scatter_div(*a, **kw) return self._update( update_fn=scatter_div_fn, value=sparse_delta, use_locking=use_locking, name=name) def scatter_min(self, sparse_delta, use_locking=False, name=None): scatter_min_fn = lambda var, *a, **kw: var.scatter_min(*a, **kw) return self._update( update_fn=scatter_min_fn, value=sparse_delta, use_locking=use_locking, name=name) def scatter_max(self, sparse_delta, use_locking=False, name=None): scatter_max_fn = lambda var, *a, **kw: var.scatter_max(*a, **kw) return self._update( update_fn=scatter_max_fn, value=sparse_delta, use_locking=use_locking, name=name) def scatter_update(self, sparse_delta, use_locking=False, name=None): scatter_update_fn = lambda var, *a, **kw: var.scatter_update(*a, **kw) return self._update( update_fn=scatter_update_fn, value=sparse_delta, use_locking=use_locking, name=name) def _dense_var_to_tensor(self, dtype=None, name=None, as_ref=False): if context.executing_eagerly(): return self.get_var_on_current_device()._dense_var_to_tensor( # pylint: disable=protected-access dtype=dtype, name=name, as_ref=as_ref) else: return super(PackedDistributedVariable, self)._dense_var_to_tensor( # pylint: disable=protected-access dtype=dtype, name=name, as_ref=as_ref) class PackedVarAndDevice(object): """Holds a packed distributed variable and a device.""" def __init__(self, var, device): self._var = var self._device = device def __getattr__(self, name): return getattr(self._var, name) def var(self): return self._var def value(self): with ops.device(self._device): return self._var.value() def read_value(self): with ops.device(self._device): return self._var.read_value() @property def initial_value(self): return self._var.initial_value(self._device) def initialized_value(self): with ops.device(self._device): return self._var.initialized_value() @property def device(self): return self._device @property def handle(self): with ops.device(self._device): return self._var.handle @property def op(self): with ops.device(self._device): return self._var.op def assign_sub(self, delta, use_locking=None, name=None, read_value=True): with ops.device(self._device): return self._var.assign_sub(delta, use_locking, name, read_value) def assign_add(self, delta, use_locking=None, name=None, read_value=True): with ops.device(self._device): return self._var.assign_add(delta, use_locking, name, read_value) def assign(self, value, use_locking=None, name=None, read_value=True): with ops.device(self._device): return self._var.assign(value, use_locking, name, read_value) def scatter_sub(self, sparse_delta, use_locking=False, name=None): with ops.device(self._device): return self._var.scatter_sub(sparse_delta, use_locking, name) def scatter_add(self, sparse_delta, use_locking=False, name=None): with ops.device(self._device): return self._var.scatter_add(sparse_delta, use_locking, name) def scatter_mul(self, sparse_delta, use_locking=False, name=None): with ops.device(self._device): return self._var.scatter_mul(sparse_delta, use_locking, name) def scatter_div(self, sparse_delta, use_locking=False, name=None): with ops.device(self._device): return self._var.scatter_div(sparse_delta, use_locking, name) def scatter_min(self, sparse_delta, use_locking=False, name=None): with ops.device(self._device): return self._var.scatter_min(sparse_delta, use_locking, name) def scatter_max(self, sparse_delta, use_locking=False, name=None): with ops.device(self._device): return self._var.scatter_max(sparse_delta, use_locking, name) def scatter_update(self, sparse_delta, use_locking=False, name=None): with ops.device(self._device): return self._var.scatter_update(sparse_delta, use_locking, name) def _dense_var_to_tensor(self, dtype=None, name=None, as_ref=False): with ops.device(self._device): return self._var._dense_var_to_tensor( # pylint: disable=protected-access dtype=dtype, name=name, as_ref=as_ref) def _as_graph_element(self): return self._var._as_graph_element() # pylint: disable=protected-access def _tensor_conversion_packed_var_and_device(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( PackedVarAndDevice, _tensor_conversion_packed_var_and_device)