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strategy_compiler.py
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# Copyright (c) 2020 PaddlePaddle 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.
__all__ = []
def create_graph(optimizer_list):
nsize = len(optimizer_list)
edge = [[0] * nsize for _ in range(nsize)] # adjacency matrix
indegree = [0] * nsize
for i, opt in enumerate(optimizer_list):
for j, opt_inner in enumerate(optimizer_list):
if opt._can_update(opt_inner):
edge[i][j] = 1 # weight
indegree[j] += 1
return edge, indegree
def topo_sort(edge, indegree):
nsize = len(indegree)
topo = [-1] * nsize
for i in range(nsize):
j = 0
while j < nsize and indegree[j] != 0:
j += 1
assert j < nsize, 'The combination of meta optimizers contains ring'
topo[i] = j
indegree[j] = -1
for k in range(nsize):
if edge[j][k] != 0:
indegree[k] -= 1
return topo
def floyd(edge):
nsize = len(edge)
max_len = -1
max_edge = [-1, -1]
max_path = [[[] for _ in range(nsize)] for _ in range(nsize)]
for i in range(nsize):
for j in range(nsize):
if edge[i][j] > 0:
max_path[i][j] = [j]
if edge[i][j] > max_len:
max_len = edge[i][j]
max_edge = [i, j]
# use floyd algorithm to find max_path
for k in range(nsize):
for i in range(nsize):
for j in range(nsize):
# if a-->b-->c, but a-/->c, can only apply a-->b or b-->c,
# however if a-->b-->c, and a-->c, can apply a->b->c
if edge[i][j] == 0:
continue
if edge[i][k] == 0 or edge[k][j] == 0:
continue
if edge[i][j] < edge[i][k] + edge[k][j]:
edge[i][j] = edge[i][k] + edge[k][j]
max_path[i][j] = max_path[i][k] + max_path[k][j]
max_len = edge[i][j]
max_edge = [i, j]
if max_len == -1:
return [0]
return [max_edge[0]] + max_path[max_edge[0]][max_edge[1]]
def maximum_path_len_algo(optimizer_list):
if len(optimizer_list) == 0:
return None
edge, indegree = create_graph(optimizer_list)
topo_sort(edge, indegree)
max_path = floyd(edge)
candidate = []
for idx in max_path:
candidate.append(optimizer_list[idx])
for idx, opt in enumerate(candidate[:-1]):
opt._update_inner_optimizer(candidate[idx + 1])
return candidate
class StrategyCompilerBase:
def __init__(self):
pass
class StrategyCompiler(StrategyCompilerBase):
"""
StrategyCompiler is responsible for meta optimizers combination
Generally, a user can define serveral distributed strategies that
can generate serveral meta optimizer. The combination of these
meta optimizers should have the right order to apply the optimizers'
minimize function.
This class is responsible for the executable distributed optimizer
generation.
"""
def __init__(self):
super().__init__()
self._meta_optimizers = []
self._graph_optimizers = []
self._valid_optimizer_list = None
self._user_defined_strategy = None
self._meta_optimizer_candidates = []
self._graph_optimizer_candidates = []
def _get_applied_meta_optimizer(self):
return self._meta_optimizers
def _get_applied_meta_list(self):
return [type(opt).__name__ for opt in self._meta_optimizers]
def _get_applied_graph_list(self):
return [type(opt).__name__ for opt in self._graph_optimizers]
def _get_valid_strategy(self, dist_strategy, can_not_apply_optimizer_list):
import copy
valid_strategy = copy.deepcopy(dist_strategy)
invalid_optimizers = []
for candidate in self._meta_optimizer_candidates:
is_valid = False
for valid in self._meta_optimizers:
if candidate.__class__.__name__ == valid.__class__.__name__:
is_valid = True
break
if not is_valid:
invalid_optimizers.append(candidate)
for opt in invalid_optimizers:
opt._disable_strategy(valid_strategy)
for opt in can_not_apply_optimizer_list:
opt._disable_strategy(valid_strategy)
return valid_strategy
"""
Meta Optimizer Type A: rewrite forward, backward. e.g. recompute, async, sync, pipeline.
results will be splitted in async, sync, pipeline
Meta Optimizer Type B: rewrite forward,
e.g. AMP and the corresponding backward is generated by rewritten forward
Meta Opitmizer Type B: rewrite backward. e.g. gradient fusion
Meta Optimizer Type D: rewrite optimize. e.g. lars, lamb, localsgd, gradient merge, dgc
Meta Optimizer Type E: only transpile to Graph structure for runtime,
currently, grad fusion and kernel fusion, sync batch-norm included.
we will remove grad fusion and sync batch-norm
"""
def generate_optimizer(
self,
loss,
role_maker,
optimizer,
user_defined_strategy,
meta_optimizer_list,
graph_optimizer_list,
):
self._user_defined_strategy = user_defined_strategy
self._meta_optimizer_candidates = meta_optimizer_list
self._graph_optimizer_candidates = graph_optimizer_list
if len(meta_optimizer_list) == 0 and len(graph_optimizer_list) == 0:
return optimizer, None
else:
# currently, we use heuristic algorithm to select
# meta optimizers combinations
meta_optimizers = maximum_path_len_algo(meta_optimizer_list)
graph_optimizers = maximum_path_len_algo(graph_optimizer_list)
# should design a distributed strategy update interface
# when we have finally decided the combination of meta_optimizer
# and graph_optimizer, the corresponding distributed strategy
# should be updated.
self._meta_optimizers = (
[] if meta_optimizers is None else meta_optimizers
)
self._graph_optimizers = (
[] if graph_optimizers is None else graph_optimizers
)
return_meta = (
None if meta_optimizers is None else meta_optimizers[0]
)
return_graph = (
None if graph_optimizers is None else graph_optimizers[0]
)
if meta_optimizers is None or graph_optimizers is None:
return return_meta, return_graph
# do heuristic filter here, if any meta optimizer in graph optimizers is in
# any meta optimizers' black list, set return_graph to None
need_graph_opt = True
for graph_opt in graph_optimizers:
for program_opt in meta_optimizers:
if (
graph_opt.__class__.__name__
in program_opt.meta_optimizers_black_list
):
need_graph_opt = False
if not need_graph_opt:
return_graph = None
return return_meta, return_graph