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core.py
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core.py
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## @package core
# Module caffe2.python.core
from collections import namedtuple, OrderedDict, defaultdict
from past.builtins import basestring
from future.utils import viewitems, viewkeys, viewvalues
from itertools import chain
from six import binary_type, string_types, text_type
from caffe2.proto import caffe2_pb2
from caffe2.python import scope, utils, workspace
from caffe2.python.lazy import TriggerLazyImport
from caffe2.python.control_ops_grad import \
gen_do_gradient, gen_if_gradient, gen_while_gradient, disambiguate_grad_if_op_output
import caffe2.python._import_c_extension as C
import copy
import pickle
import numpy as np
import sys
import traceback
import os
# Mac os specific message
if (sys.platform == 'darwin' and 'leveldb' in C.registered_dbs()):
print('If you are using homebrew leveldb on a Mac OS, you might see an '
'error warning you that malloc_zone_unregister() failed. This is '
'not a caffe2 issue but is due to the homebrew leveldb having an '
'incompatible memory allocator. It does not affect usage.')
# Convenience redirections to functions inside scope.
DeviceScope = scope.DeviceScope
NameScope = scope.NameScope
# Bring datatype enums to the main namespace
class DataType:
pass
def _InitDataType():
for name, value in caffe2_pb2.TensorProto.DataType.items():
setattr(DataType, name, value)
_InitDataType()
def _GetRegisteredOperators():
return set(workspace.RegisteredOperators())
_REGISTERED_OPERATORS = _GetRegisteredOperators()
def RefreshRegisteredOperators(trigger_lazy=True):
if trigger_lazy:
TriggerLazyImport()
global _REGISTERED_OPERATORS
_REGISTERED_OPERATORS = _GetRegisteredOperators()
_GLOBAL_INIT_ARGS = []
def GlobalInit(args):
TriggerLazyImport()
_GLOBAL_INIT_ARGS.extend(args[1:])
C.global_init(args)
def GetGlobalInitArgs():
return _GLOBAL_INIT_ARGS[:]
def IsOperator(op_type):
return IsOperatorWithEngine(op_type, engine='DEFAULT')
def IsOperatorWithEngine(op_type, engine):
TriggerLazyImport()
return C.op_registry_key(op_type, engine) in _REGISTERED_OPERATORS
def IsGPUDeviceType(device_type):
return device_type in {caffe2_pb2.CUDA, caffe2_pb2.HIP}
def DeviceOption(
device_type,
device_id=0,
random_seed=None,
node_name=None,
numa_node_id=None,
extra_info=None,
):
option = caffe2_pb2.DeviceOption()
option.device_type = device_type
option.device_id = device_id
if node_name is not None:
option.node_name = node_name
if random_seed is not None:
option.random_seed = random_seed
if numa_node_id is not None:
assert device_type == caffe2_pb2.CPU
option.numa_node_id = numa_node_id
if extra_info is not None:
option.extra_info.extend(extra_info)
return option
def device_option_equal(opt1, opt2, ignore_node_name=True, ignore_random_seed=True):
if not opt1 or not opt2:
return opt1 == opt2
if not ignore_node_name and opt1.node_name != opt2.node_name:
return False
if not ignore_random_seed and opt1.random_seed != opt2.random_seed:
return False
if not opt1.device_type or not opt2.device_type:
# At least one option is for CPU, check if both are for CPU.
return not opt1.device_type and not opt2.device_type
return opt1.device_id == opt2.device_id
def InferBlobDevices(net):
'''
Compute mapping from parameters to devices by looking at the
device option of the op that creates the blob has
'''
mapping = {}
for op in net.Proto().op:
op_device = op.device_option
if op_device is None:
op_device = caffe2_pb2.DeviceOption(caffe2_pb2.CPU)
# TODO: T18892922, use device annotations
for b in op.output:
mapping[b] = op_device
return mapping
def InferOpBlobDevicesAsDict(op):
input_dev_list, output_dev_list = InferOpBlobDevices(op)
input_dict = {
op.input[i]: input_dev_list[i]
for i in range(len(op.input))
}
output_dict = {
op.output[i]: output_dev_list[i]
for i in range(len(op.output))
}
return input_dict, output_dict
def InferOpBlobDevices(op):
device_info = C.infer_op_input_output_device(op.SerializeToString())
input_info = []
output_info = []
for dev_str in device_info[0]:
device_option = caffe2_pb2.DeviceOption()
device_option.ParseFromString(dev_str)
input_info.append(device_option)
for dev_str in device_info[1]:
device_option = caffe2_pb2.DeviceOption()
device_option.ParseFromString(dev_str)
output_info.append(device_option)
return input_info, output_info
def InferOpDeviceAsBlobDevices(op):
op_dev = op.device_option if op.device_option else caffe2_pb2.DeviceOption()
input_dev = [op_dev] * len(op.input)
output_dev = [op_dev] * len(op.output)
return input_dev, output_dev
GradientSlice = namedtuple('GradientSlice', ['indices', 'values'])
class BlobReference(object):
"""A wrapper around a blob in a net.
BlobReference gives us a way to refer to the network that the blob is
generated from. Note that blobs are, essentially, just strings in the
current workspace.
"""
def __init__(self, name, net=None):
"""Initializes a blob reference.
Note that this does not prepends the namescope. If needed, use
ScopedBlobReference() to prepend the existing namespace.
"""
if isinstance(name, string_types):
self._name = name
elif isinstance(name, binary_type):
self._name = name.decode('utf-8')
else:
self._name = str(name)
self._from_net = net
# meta allows helper functions to put whatever metainformation needed
# there.
self.meta = {}
def __hash__(self):
return hash(self._name)
def __eq__(self, other):
if isinstance(other, string_types):
return self._name == other
elif isinstance(other, binary_type):
return self._name == other.decode('utf-8')
elif isinstance(other, BlobReference):
return self._name == other._name
else:
return False
def __ne__(self, other):
return not(self == other)
def __str__(self):
return self._name
def __repr__(self):
return 'BlobReference("{}")'.format(self._name)
def __add__(self, other):
if not isinstance(other, string_types):
raise RuntimeError('Cannot add BlobReference to a non-string.')
return BlobReference(self._name + other, self._from_net)
def __radd__(self, other):
if not isinstance(other, string_types):
raise RuntimeError('Cannot add a non-string to BlobReference.')
return BlobReference(other + self._name, self._from_net)
def Net(self):
return self._from_net
def GetNameScope(self):
return self._name[:self._name.rfind(scope._NAMESCOPE_SEPARATOR) + 1]
def GetUnscopedName(self):
return self._name[self._name.rfind(scope._NAMESCOPE_SEPARATOR) + 1:]
def _CreateAndAddToNet(self, op_type, inputs=None, *args, **kwargs):
"""Internal function that routes the operator generation to the
network's __getattr__ function.
"""
inputs = [] if inputs is None else inputs
if isinstance(inputs, BlobReference) or isinstance(inputs, string_types):
inputs = [inputs]
# add self to the input list.
inputs.insert(0, self)
return self._from_net.__getattr__(op_type)(inputs, *args, **kwargs)
def __getattr__(self, op_type):
"""A wrapper allowing one to initiate operators from a blob reference.
Example: for a blob reference b that comes from network n, doing
b.Relu(...)
is equivalent to doing
net.Relu([b], ...)
"""
if op_type.startswith('__'):
raise AttributeError('Attribute {} not found.'.format(op_type))
if self._from_net is None:
raise AttributeError(
'You cannot use a blob reference that does not have a net '
'source to create operators. Create the operator from an '
'explicit net object.')
if not IsOperator(op_type):
raise AttributeError(
'Method ' + op_type + ' is not a registered operator.' +
' Did you mean: [' +
",".join(workspace.C.nearby_opnames(op_type)) + ']'
)
return lambda *args, **kwargs: self._CreateAndAddToNet(
op_type, *args, **kwargs)
def __dir__(self):
TriggerLazyImport()
additional_methods = [
op
for op in _REGISTERED_OPERATORS
if '_ENGINE_' not in op or '_ENGINE_CUDNN' in op]
return sorted(set(chain(
dir(type(self)),
viewkeys(self.__dict__),
additional_methods
)))
def ScopedName(name):
"""prefix the name with the current scope."""
if isinstance(name, binary_type):
name = name.decode('ascii')
return scope.CurrentNameScope() + name
def ScopedBlobReference(name, *args, **kwargs):
"""Returns a blob reference with scope prefixed."""
return BlobReference(ScopedName(name), *args, **kwargs)
def _RectifyInputOutput(blobs, net=None):
"""A helper function to rectify the input or output of the CreateOperator
interface.
"""
if isinstance(blobs, string_types) or isinstance(blobs, binary_type):
# If blobs is a single string, prepend scope.CurrentNameScope()
# and put it as a list.
# TODO(jiayq): enforce using BlobReference instead of raw strings.
return [ScopedBlobReference(blobs, net=net)]
elif type(blobs) is BlobReference:
# If blob is a BlobReference, simply put it as a list.
return [blobs]
elif type(blobs) in (list, tuple):
# If blob is a list, we go through it and type check.
rectified = []
for blob in blobs:
if isinstance(blob, string_types) or isinstance(blob, binary_type):
rectified.append(ScopedBlobReference(blob, net=net))
elif type(blob) is BlobReference:
rectified.append(blob)
else:
raise TypeError(
"I/O blob #{} of unsupported type: {} of type {}"
.format(len(rectified), str(blob), type(blob)))
return rectified
else:
raise TypeError(
"Unknown input/output type: %s of type %s." %
(str(blobs), type(blobs))
)
def CreateOperator(
operator_type,
inputs,
outputs,
name='',
control_input=None,
device_option=None,
arg=None,
engine=None,
debug_info=None,
**kwargs
):
"""A function wrapper that allows one to create operators based on the
operator type. The type should be a string corresponding to an operator
registered with Caffe2.
"""
operator = caffe2_pb2.OperatorDef()
if (os.environ.get('CAFFE2_DEBUG')):
stack = traceback.format_stack()
operator.debug_info = "".join(stack[:-1])
operator.type = operator_type
operator.name = name
# Add rectified inputs and outputs
inputs = _RectifyInputOutput(inputs)
outputs = _RectifyInputOutput(outputs)
operator.input.extend([text_type(i) for i in inputs])
operator.output.extend([text_type(o) for o in outputs])
if control_input:
control_input = _RectifyInputOutput(control_input)
operator.control_input.extend([text_type(i) for i in control_input])
# Set device option:
# (1) If device_option is explicitly set, use device_option.
# (2) If not, but scope.CurrentDeviceScope() is set,
# then we use scope.CurrentDeviceScope().
# (3) Otherwise, do not set device option.
if device_option is not None:
operator.device_option.CopyFrom(device_option)
elif scope.CurrentDeviceScope() is not None:
operator.device_option.CopyFrom(scope.CurrentDeviceScope())
if engine is not None:
operator.engine = engine
if debug_info is not None:
operator.debug_info = debug_info
# random seed is defined in the device option, so we need to do special
# care.
if 'random_seed' in kwargs:
operator.device_option.random_seed = kwargs['random_seed']
del kwargs['random_seed']
# Add given arguments that do not need parsing
if arg is not None:
operator.arg.extend(arg)
# Add all other arguments
for key, value in viewitems(kwargs):
if value is not None:
operator.arg.add().CopyFrom(utils.MakeArgument(key, value))
if workspace.IsImmediate():
workspace.RunOperatorImmediate(operator)
return operator
def _RegisterPythonImpl(
f, grad_f=None, python_func_type=None, pass_workspace=False
):
if python_func_type:
func = python_func_type(f)
f = func.forward
grad_f = func.backward
else:
if isinstance(f, tuple):
f = f[0](*f[1], **f[2])
if isinstance(grad_f, tuple):
grad_f = grad_f[0](*grad_f[1], **grad_f[2])
token = C.register_python_op(f, pass_workspace, '')
if grad_f:
C.register_python_gradient_op(token, grad_f)
return token
def CreatePythonOperator(
f, inputs,
outputs,
grad_f=None,
pass_workspace=False,
python_func_type=None,
*args,
**kwargs
):
"""
`f` should have a signature (inputs, outputs)
If `pass_workspace` is True, the signature is changed to
(inputs, outputs, workspace) where `workspace` is the workspace the op
is going to run on. This is potentially dangerous (as the op can manipulate
the workspace directly), use on your own risk.
"""
kwargs["token"] = _RegisterPythonImpl(
f, grad_f, python_func_type, pass_workspace=pass_workspace
)
return CreateOperator("Python", inputs, outputs, *args, **kwargs)
def GetIndexFromGradientList(g_list, name):
"""A helper function to get the index from a gradient list, None if not
matching."""
for i, g in enumerate(g_list):
if g == name:
return i
elif type(g) is GradientSlice:
if (g.indices == name or g.values == name):
return i
return None
OpSSA = namedtuple('OpSSA', ['op', 'in_versions', 'out_versions'])
GradGenMeta = namedtuple('GradGenMeta',
['grad_op', 'idx', 'gradient', 'device_option'])
SparseGradGenMeta = namedtuple('SparseGradGenMeta', [
'grad_op_indices', 'idx_indices',
'grad_op_values', 'idx_values',
'gradient', 'device_option',
])
class IR(object):
"""A simple IR class to keep track of all intermediate representations used
in the gradient computation.
"""
def __init__(self, operators):
# The IR class holds multiple metadata from the forward pass:
# a) ssa: a list of [op, in_versions, out_versions] recording the
# input and the output version of each operator, similar
# to a normal SSA form.
# b) input_usages: a dictionary specifying for each blob and
# each of its version, how many times it is used as input for another
# op.
# c) frontier: maintaining the current versions of the blobs
# we are having in the workspace, after the execution of all the ops
# added to the IR so far. This is useful because if a gradient is
# trying to access an earlier version of a blob, we can sanity check
# that it is no longer there, and thus throw an error.
# d) gradient_frontier: maps the names of blobs to its version that the
# gradient corresponds to.
# e) gradient_generators: for each blob and each of its version, maps to
# a list of operators that generates its gradient together with the
# gradient name.
self.ssa = []
self.input_usages = defaultdict(lambda: defaultdict(list))
self.frontier = defaultdict(int)
self.gradient_frontier = {}
self.gradient_generators = defaultdict(lambda: defaultdict(list))
self.out_version_history = defaultdict(list)
self.in_version_history = defaultdict(list)
for op in operators:
self.Play(op)
self.SanityCheck(operators)
def SanityCheck(self, operators):
# Validate StopGradient usage by checking that StopGradient's output
# is actually passed forward
for op in operators:
if op.type == 'StopGradient':
if op.output[0] not in self.input_usages:
raise ValueError("""StopGradient's output '{}' is orphan.
You typically want to specify same input and output for
StopGradient. Op:\n\n{}""".format(op.output[0], str(op)))
def Play(self, op):
""""Adds an op to the current IR, and update the internal states to
reflect the blobs and versions after the execution of the op.
"""
# For input, they are the current version in the dict.
in_versions = {}
for s in op.input:
in_versions[s] = self.frontier[s]
self.input_usages[s][self.frontier[s]].append(len(self.ssa))
self.in_version_history[s].append((op, self.frontier[s]))
# For output, they are the current version plus one. If this is a
# newly created blob, its version starts with zero.
out_versions = {}
for s in op.output:
if s in self.frontier:
self.frontier[s] += 1
out_versions[s] = self.frontier[s]
self.out_version_history[s].append((op, self.frontier[s]))
# Add to SSA for bookkeeping.
self.ssa.append(OpSSA(op, in_versions, out_versions))
def CheckGradientOperatorInput(
self, grad_op_input, g_output, fwd_op_idx, locally_generated_blobs):
"""Checks if the gradient operators can be correctly carried out."""
forward_op, in_versions, out_versions = self.ssa[fwd_op_idx]
original_index = GetIndexFromGradientList(g_output, grad_op_input)
# Functions to generate debug help for version-mismatches
def versionMismatchInfoOut(name):
s = "DEBUG HELP:\n"
s += "Maybe you use same output blob twice for different ops?\n"
s += "== Version history of blob [{}]\n".format(name)
for (op, vers) in self.out_version_history[name]:
s += "Version (out) {} <-- {}".format(vers, op)
s += "\n"
return s
def versionMismatchInfoIn(name):
s = "DEBUG HELP:\n"
s += "Maybe the blob was overwritten by another op?\n"
s += "== Version history of blob [{}]\n".format(name)
for (op, vers) in self.in_version_history[name]:
s += "version (in) {} <-- {}".format(vers, op)
s += "\n"
return s
# If it is a dense or sparse gradient name, it should match the
# version of the corresponding output.
if original_index is not None:
original_name = forward_op.output[original_index]
if (out_versions[original_name] !=
self.gradient_frontier[original_name]):
raise RuntimeError(
'Gradient name "%s" is expected to correspond '
'to version %d of "%s", but currently we have '
'version %d.\n\n' % (
grad_op_input, out_versions[original_name],
original_name,
self.gradient_frontier[original_name]) +
versionMismatchInfoOut(original_name))
# If it is an output name, the current version should match the
# version when the operator was run.
elif grad_op_input in out_versions:
if self.frontier[grad_op_input] != out_versions[grad_op_input]:
raise RuntimeError(
'Gradient operator needs output "%s" at version'
' %d, but currently we have version %d.\n\n' % (
grad_op_input, out_versions[grad_op_input],
self.frontier[grad_op_input]
) + versionMismatchInfoOut(grad_op_input)
)
# If it is an input name, the current version should match the
# version when the operator was run.
elif grad_op_input in in_versions:
if (self.frontier[grad_op_input] != in_versions[grad_op_input]):
raise RuntimeError(
'Gradient operator needs input "%s" at version '
'%d, but currently we have version %d.\n\n' % (
grad_op_input, in_versions[grad_op_input],
self.frontier[grad_op_input]
) + versionMismatchInfoIn(grad_op_input)
)
# If it is none of the above, it should be a blob that is
# generated locally by one of the previous gradient operators.
else:
if grad_op_input not in locally_generated_blobs:
raise RuntimeError(
'Blob name "%s" not in the scope of operator: '
'%s\nand is not generated by any of the local '
'gradient operators.' % (grad_op_input, str(forward_op))
)
def AppendSparseGenerators(self, sparse_generators):
# merge indices and values generators for sparse gradients
for name, input_generators in viewitems(sparse_generators):
for version, generators in viewitems(input_generators):
if len(generators) == 1:
# either indices or values are generated (but not both)
generator = generators[0]
else:
# both indices and values are generated
assert(len(generators) == 2)
op1_i, idx1_i, op1_v, idx1_v, g1, dev_1 = generators[0]
op2_i, idx2_i, op2_v, idx2_v, g2, dev_2 = generators[1]
assert(g1 == g2)
assert dev_1 == dev_2, (
"Unequal devices for sparse generators: "
"{} and {}".format(dev1, dev2)
)
assert(op1_i is None or op2_i is None)
assert(op1_v is None or op2_v is None)
assert(idx1_i == 0 or idx2_i == 0)
assert(idx1_v == 0 or idx2_v == 0)
generator = SparseGradGenMeta(
op1_i or op2_i, idx1_i + idx2_i,
op1_v or op2_v, idx1_v + idx2_v,
g1, dev_1)
self.gradient_generators[name][version].append(generator)
def BuildGradientGenerators( # NOQA
self, fwd_op_idx, gradient_ops, g_output, g_input):
"""Updates gradient_generators and gradient_frontier"""
forward_op, in_versions, out_versions = self.ssa[fwd_op_idx]
locally_generated_blobs = []
sparse_generators = defaultdict(lambda: defaultdict(list))
for grad_op in gradient_ops:
# (1) check that inputs are valid
for s in grad_op.input:
self.CheckGradientOperatorInput(
s, g_output, fwd_op_idx, locally_generated_blobs)
# (2) add outputs to the locally generated blobs
# If an output corresponds to the gradient of an input, we also
# record it to gradient_generators
locally_generated_blobs.extend([str(s) for s in grad_op.output])
for i, output in enumerate(grad_op.output):
input_index = GetIndexFromGradientList(g_input, output)
if input_index is not None:
input_name = forward_op.input[input_index]
input_version = in_versions[input_name]
g = g_input[input_index]
if type(g) is GradientSlice:
# the output corresponds either to the indices or the
# values of the sparse gradient. In either case we
# create a (partial) SparseGradGenMeta. If necessary,
# we'll merge indices and values generators
# corresponding to the same gradient in step (3)
if g.indices == output:
m = SparseGradGenMeta(
grad_op, i, None, 0, g, grad_op.device_option)
else:
assert(g.values == output)
m = SparseGradGenMeta(
None, 0, grad_op, i, g, grad_op.device_option)
sparse_generators[input_name][input_version].append(m)
else:
self.gradient_generators[input_name][input_version] \
.append(GradGenMeta(
grad_op, i, g, grad_op.device_option))
# (3) merge indices and values generators for sparse gradients, and
# add them to gradient_generators
self.AppendSparseGenerators(sparse_generators)
# (4) for ops (e.g., Add, Sum, Sub) which have gradient outputs directly
# passed from inputs (not computed from gradient ops), we create an
# GradGenMeta with None grad_op and idx so that the gradient_generators
# knows where the gradients are coming from. This is needed for creating
# Sum op to accumulate the gradients from multiple parents.
for input_index, g in enumerate(g_input):
input_name = forward_op.input[input_index]
input_version = in_versions[input_name]
if not g:
continue
if type(g) is GradientSlice:
if str(g.indices) not in locally_generated_blobs and \
str(g.values) not in locally_generated_blobs:
self.gradient_generators[input_name][input_version].append(
SparseGradGenMeta(None, 0, None, 0, g, forward_op.device_option))
else:
if str(g) not in locally_generated_blobs:
self.gradient_generators[input_name][input_version].append(
GradGenMeta(None, 0, g, forward_op.device_option))
# Finally, for the gradients specified in g_input, we update the
# gradient frontier to reflect the input versions that the gradients
# correspond to.
for i, g in enumerate(g_input):
if g is not None:
input_name = forward_op.input[i]
input_version = in_versions[input_name]
self.gradient_frontier[input_name] = input_version
def _GetSumOpOutputName(self, generator, input_name):
def remove_suffix(s, suffix):
if s.endswith(suffix):
return s[:-len(suffix)]
return s
for g in generator:
if type(g) is GradGenMeta:
grad_op, idx, _, _ = g
if grad_op:
return grad_op.output[idx]
else:
assert(type(g) is SparseGradGenMeta)
op_i, idx_i, op_v, idx_v, _, _ = g
if op_i:
return remove_suffix(op_i.output[idx_i], '_indices')
if op_v:
return remove_suffix(op_v.output[idx_v], '_values')
return input_name + '_grad'
IS_AUTO_GEN_SUM_OPS_TAG = "is_auto_gen_sum_ops"
ONLY_KEEP_IS_AUTO_GEN_SUM_OPS_TAG = "only_keep_is_auto_gen_sum_ops_tag"
def _SetSumOpsDeviceOption(self, sum_ops, generators):
only_keep_is_auto_gen_sum_ops_tag = False
for generator in generators:
# we already checked that device options are consistent so we can just
# break after finding the first clear_info request
for extra_info in generator.device_option.extra_info:
if extra_info == "{}:1".format(IR.ONLY_KEEP_IS_AUTO_GEN_SUM_OPS_TAG):
only_keep_is_auto_gen_sum_ops_tag = True
break
if only_keep_is_auto_gen_sum_ops_tag:
# if we find that device_option in the generator that
# requires clear the extra info for the auto gen sum
# Then we will try to clear them and only leave the
# IS_AUTO_GEN_SUM_OPS_TAG
for op in sum_ops:
op.device_option.extra_info.extend([
"{}:1".format(IR.IS_AUTO_GEN_SUM_OPS_TAG)
])
else:
# we already checked that device options are consistent so we can just
# use the first one we find
for generator in generators:
for op in sum_ops:
op.device_option.CopyFrom(generator.device_option)
op.device_option.extra_info.extend([
"{}:1".format(IR.IS_AUTO_GEN_SUM_OPS_TAG)
])
break
def _DisambiguateGradOpOutput(self, grad_op, idx, cnt):
new_grad_output = (
'_' + grad_op.output[idx] + '_autosplit_{}'.format(cnt))
if grad_op.type == "If":
disambiguate_grad_if_op_output(grad_op, idx, new_grad_output)
else:
grad_op.output[idx] = new_grad_output
return grad_op.output[idx], cnt + 1
def _CheckSumOpsConflict(self, out_base_name, g):
if str(out_base_name) == str(g):
# TODO not sure what this message really means
raise RuntimeError(
'The gradient output of empty gradient op can not '
'be the same as the normal name of the current '
'input gradient.')
def _MakeDenseSumOps(self, generators, out_base_name):
sum_op_input = []
cnt = 0
assert len(generators) > 1
first_grad_op = True
for generator in generators:
grad_op, idx, g, _ = generator
assert(type(g) is not GradientSlice)
if grad_op:
if first_grad_op:
first_grad_op = False
out = grad_op.output[idx]
else:
out, cnt = self._DisambiguateGradOpOutput(grad_op, idx, cnt)
sum_op_input.append(out)
else:
self._CheckSumOpsConflict(out_base_name, g)
sum_op_input.append(str(g))
if out_base_name in sum_op_input:
# Sum inplace mode works only for the first input
# So we do a swap
idx = sum_op_input.index(out_base_name)
sum_op_input[0], sum_op_input[idx] = (
sum_op_input[idx], sum_op_input[0]
)
sum_ops = [CreateOperator(
"Sum",
[BlobReference(x) for x in sum_op_input],
BlobReference(out_base_name))]
return sum_ops, out_base_name
def _MakeSparseSumOps(self, generators, out_base_name):
indices_concat_input = []
values_concat_input = []
cnt_i = 0
cnt_v = 0
for generator in generators:
assert(type(generator) is SparseGradGenMeta)
op_i, idx_i, op_v, idx_v, g, _ = generator
if op_i:
out, cnt_i = self._DisambiguateGradOpOutput(op_i, idx_i, cnt_i)
indices_concat_input.append(out)
else:
self._CheckSumOpsConflict(out_base_name, g.indices)
indices_concat_input.append(g.indices)
if op_v:
out, cnt_v = self._DisambiguateGradOpOutput(op_v, idx_v, cnt_v)
values_concat_input.append(out)
else:
self._CheckSumOpsConflict(out_base_name, g.values)
values_concat_input.append(g.values)
indices_concat_output = out_base_name + '_indices_concat'
indices_concat_split = out_base_name + '_indices_concat_split'
values_concat_output = out_base_name + '_values_concat'
values_concat_split = out_base_name + '_values_concat_split'
# Sum the given sparse representations by simply concatenating the
# indices (resp. values) tensors together. We don't do any deduplication
# of indices at this point. This will be done as needed before the
# optimizer is called
sum_ops = [
CreateOperator(
"Concat",
[BlobReference(x) for x in indices_concat_input],
[BlobReference(x) for x in
[indices_concat_output, indices_concat_split]],
axis=0
),
CreateOperator(
"Concat",
[BlobReference(x) for x in values_concat_input],
[BlobReference(x) for x in
[values_concat_output, values_concat_split]],
axis=0
),
]
sum_op_output = GradientSlice(
indices=indices_concat_output,
values=values_concat_output,
)
return sum_ops, sum_op_output
def _MakeSumOps(self, input_name, input_version):
generators = self.gradient_generators[input_name][input_version]
out_base_name = self._GetSumOpOutputName(generators, input_name)
types = list(set(type(x) for x in generators))
assert(len(types) == 1)
if types[0] is GradGenMeta:
sum_ops, g = self._MakeDenseSumOps(generators, out_base_name)
else:
assert(types[0] is SparseGradGenMeta)
sum_ops, g = self._MakeSparseSumOps(generators, out_base_name)
self._SetSumOpsDeviceOption(sum_ops, generators)
return sum_ops, g
def _VerifyGradientGenerators(self, generator):
# (1) check if all gradients are of the same type. Aggregating a mix of
# sparse and dense gradients is not supported yet
if len({type(g) for g in generator}) > 1:
raise RuntimeError(
'Automatic aggregation of a mix of sparse and dense gradients '
'is not supported yet')
# If for all the operators that used the operator, none or only one
# produced the gradient, then no additional sum needs to be carried
# out.
if len(generator) < 2:
return False
all_gradient_names = []
all_device_options = []
for g in generator:
if g.device_option:
all_device_options.append(g.device_option)
if type(g) is GradGenMeta:
if g.grad_op:
all_gradient_names.append(g.gradient)
else:
assert(type(g) is SparseGradGenMeta)
if g.gradient.values:
all_gradient_names.append(g.gradient.values)
# Check if all grad op device options are the same.
if len(all_device_options) >= 2 and not all(
device_option_equal(d, all_device_options[0])
for d in all_device_options[1:]):
raise RuntimeError('Unexpected behavior: not all grad ops '
'have the same device option.')
return True
def DoGradientAccumulation(self, fwd_op_idx):
"""For each input name in the forward op, check if we will need to
add gradient accumulation. If so, do gradient accumulation and return
the list of gradient operators.
The criteria for doing gradient accumulation is:
(1) the specific input version has been used by multiple operators.
(2) the current fwd_op_idx is the first to use that input, i.e. in the
backward pass, is the last to optionally generate the gradient for
the op.
(3) For the operators that used the input, their gradient operators
have generated more than 1 gradient.
When accumulating operators, our current solution is to rename all the
created gradients with an internal intermediate name, and then add a
Sum() operator that adds up all the gradients. This may use more memory
due to intermediate storage, but is usually the fastest approach as one
can do one single sum for multiple intermediate gradients.
"""
forward_op, in_versions, out_versions = self.ssa[fwd_op_idx]
additional_sum_ops = []
grad_map = {}
for _i, input_name in enumerate(set(forward_op.input)):
input_version = in_versions[input_name]
input_usage = self.input_usages[input_name][input_version]
if (len(input_usage) <= 1 or fwd_op_idx != input_usage[0]):
# We do not need to do gradient accumulation yet.
continue
generator = self.gradient_generators[input_name][input_version]
try:
if not self._VerifyGradientGenerators(generator):
continue
except RuntimeError as err:
raise RuntimeError(
"Gradients for param ''{}'' failed to verify: {}".format(
input_name,
err
)
)
# Finally, let's create the sum operator.
sum_ops, g = self._MakeSumOps(input_name, input_version)
additional_sum_ops.extend(sum_ops)
grad_map[input_name] = g
return additional_sum_ops, grad_map
def _AppendAutoGradGenerator(self, y, grad, autograd_op):
# Gradient here is not sparse as it was generated by
# a ConstantFill operator. Autogeneration for sparse gradients is
# not supported
generator = GradGenMeta(
autograd_op, 0 if autograd_op else None, str(grad),
autograd_op.device_option)
self.gradient_generators[str(y)][self.frontier[str(y)]].append(
generator)
AUTOGEN_GRAD_SUFFIX = "_autogen_grad"
def _GetInitGradients(self, ys):
input_to_grad = {}
gradient_ops = []
for y, g in viewitems(ys):
autograd_op = None
if g is None:
autograd_op = CreateOperator(
"ConstantFill", [y], [str(y) + IR.AUTOGEN_GRAD_SUFFIX],
value=1.0)
gradient_ops.append(autograd_op)
g = autograd_op.output[0]
# Since the C++ gradient registry does not have notion of
# NameScopes, we will convert all references to strings.
input_to_grad[str(y)] = (
GradientSlice(str(g[0]), str(g[1]))
if isinstance(g, GradientSlice) else str(g))
# Autogenerated gradients are assumed to be provided for the last
# input version
if autograd_op is not None:
self._AppendAutoGradGenerator(y, g, autograd_op)
return input_to_grad, gradient_ops
def _GenerateGradientsForForwardOp(
self, forward_op_idx, input_to_grad):
new_input_to_grad = {}
gradient_ops = []