sharding_optimizer.py 64.2 KB
Newer Older
1 2 3 4 5 6 7 8 9 10 11 12 13 14
# 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.

15
import paddle
16 17 18
from paddle.fluid import unique_name, core
import paddle.fluid as fluid
from paddle.distributed.fleet.meta_optimizers.common import OpRole, OP_ROLE_VAR_KEY, CollectiveHelper
19
from paddle.distributed.fleet.meta_optimizers.common import is_backward_op, is_optimizer_op, is_update_op
20 21 22 23 24
from paddle.distributed.fleet.meta_optimizers.meta_optimizer_base import MetaOptimizerBase
from paddle.distributed.fleet.meta_optimizers.sharding.shard import Shard, ProgramSegment
from paddle.distributed.fleet.meta_optimizers.sharding.fp16_helper import FP16Utils
from paddle.distributed.fleet.meta_optimizers.sharding.weight_decay_helper import WeightDecayHelper
from paddle.distributed.fleet.meta_optimizers.sharding.gradient_clip_helper import GradientClipHelper
25
from .sharding.offload_helper import OffloadHelper
26 27
from paddle.distributed.fleet.meta_optimizers.sharding.prune import ProgramDeps
from paddle.distributed.fleet.meta_optimizers.sharding.utils import *
28 29 30
from paddle.fluid.framework import Program, Variable, name_scope, default_main_program, default_startup_program, device_guard
from paddle.fluid import layers

31
import logging
32 33 34 35 36 37
logger = logging.getLogger(__name__)
formatter = logging.Formatter(
    fmt='%(asctime)s %(levelname)-8s %(message)s', datefmt='%Y-%m-%d %H:%M:%S')
ch = logging.StreamHandler()
ch.setFormatter(formatter)
logger.addHandler(ch)
38 39 40 41 42 43
from functools import reduce

__all__ = ["ShardingOptimizer"]


class ShardingOptimizer(MetaOptimizerBase):
44 45
    """Sharding Optimizer."""

46 47 48 49 50 51
    def __init__(self, optimizer):
        super(ShardingOptimizer, self).__init__(optimizer)
        self.inner_opt = optimizer
        self.meta_optimizers_white_list = [
            "RecomputeOptimizer",
            "AMPOptimizer",
52 53
            "LarsOptimizer",
            "LambOptimizer",
54 55
            # "ModelParallelOptimizer",
            # "PipelineOptimizer",
56 57 58 59 60 61 62 63 64 65 66
        ]
        self.meta_optimizers_black_list = ["GraphExecutionOptimizer", ]
        self._main_program = None
        self._startup_program = None
        self._segments = []
        # params and fp16 params is for broadcast
        self._params = set([])
        self._broadcast_vars = set([])
        # reduced grads to param name
        self._reduced_grads_to_param = {}
        self._shard = Shard()
67 68 69 70
        self._verbose = False

        # use sharding as outer parallelism (e.g. inner:Megatron & outer sharding)
        self.mp_degree = 1
71 72 73 74 75 76 77 78 79 80 81 82 83 84

    def _can_apply(self):
        if not self.role_maker._is_collective:
            return False
        if self.role_maker._worker_num() <= 1:
            return False
        return self.user_defined_strategy.sharding

    def _disable_strategy(self, dist_strategy):
        dist_strategy.sharding = False
        dist_strategy.sharding_configs = {}

    def _enable_strategy(self, dist_strategy, context):
        dist_strategy.sharding = True
85
        dist_strategy.sharding_configs = {"segment_broadcast_MB": 32}
86 87 88 89 90 91

    def minimize_impl(self,
                      loss,
                      startup_program=None,
                      parameter_list=None,
                      no_grad_set=None):
92 93 94 95
        # TODO: (JZ-LIANG) support multiple comm in future
        # self._nrings = self.user_defined_strategy.nccl_comm_num
        self._nrings_sharding = 1
        self._nrings_dp = 1
96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116

        # segment
        self._sharding_segment_strategy = str(
            self.user_defined_strategy.sharding_configs[
                "sharding_segment_strategy"])
        if self._sharding_segment_strategy == "segment_broadcast_MB":
            self._broadcast_MB = self.user_defined_strategy.sharding_configs[
                "segment_broadcast_MB"]
            assert self._broadcast_MB > 0, "segment size should larger than zero !"
        elif self._sharding_segment_strategy == "segment_anchors":
            self._sharding_segment_anchors = self.user_defined_strategy.sharding_configs[
                "segment_anchors"]
            assert len(self._sharding_segment_anchors
                       ) > 0, "you should set the sharding segment anchors !"
            self._backward_remain_anchors = self._sharding_segment_anchors[:]
            self._forward_remain_anchors = []
        else:
            raise NotImplementedError(
                "the sharding segment strategy [{}] is not implemented".format(
                    str(self._sharding_segment_strategy)))

117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139
        # parallelism
        self.sharding_degree = int(self.user_defined_strategy.sharding_configs[
            "sharding_degree"])
        assert self.sharding_degree > 0, "sharding degree must be larger than zero"
        self.mp_degree = int(self.user_defined_strategy.sharding_configs[
            "mp_degree"])
        # pipeline setting
        # TODO (JZ-LIANG) should revise here for support mix parallelism with pipeline
        self.pp_degree = int(self.user_defined_strategy.sharding_configs[
            "pp_degree"])
        if self.pp_degree > 1:
            assert self.user_defined_strategy.pipeline == True

        self.dp_degree = int(self.user_defined_strategy.sharding_configs[
            'dp_degree'])
        assert self.role_maker._worker_num(
        ) == self.mp_degree * self.sharding_degree * self.pp_degree * self.dp_degree, "global work size [{}], mp_degree [{}], sharding_degree [{}], pp_degree [{}], dp_degree [{}].".format(
            self.role_maker._worker_num(),
            self.mp_degree,
            self.sharding_degree,
            self.pp_degree,
            self.dp_degree, )

J
JZ-LIANG 已提交
140 141
        # FIXME (JZ-LIANG) deprecated hybrid_dp
        if self.user_defined_strategy.sharding_configs["hybrid_dp"]:
142
            logger.warning(
J
JZ-LIANG 已提交
143 144 145 146 147 148 149 150
                "[hybrid_dp] API setting is deprecated. Now when dp_degree >= 2, its will be in hybrid dp mode automatically"
            )
            assert self.dp_degree >= 1
        if self.dp_degree > 1:
            self.hybrid_dp = True
        else:
            self.hybrid_dp = False

151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166
        # NOTE (JZ-LIANG) 
        # there 2 kind of modes for gradient-merge and hybrid-dp in mixed parallism [sharding] and [pipeline].
        # we distinguish this two modes since the gm/hybrid-dp related allreduce should be insert in different place according different mode to have best performance:
        # sharding: communication within node, and therefore should insert within backward segment to overlap with bw calc, conduct every micro step 
        # pipeline: communication accross nodes, and therefore should insert in update segemnt, conduct just once per global step        
        self.hybrid_dp_mode = None
        # dp here is the pure dp as the outest parallelism
        if self.hybrid_dp:
            assert self.dp_degree > 1, "hybrid dp is on, but dp degree is [{}]".format(
                self.dp_degree)
            if self.pp_degree > 1:
                self.hybrid_dp_mode = "pp_hybrid_dp"
            else:
                assert self.sharding_degree > 1, "by now we only support five kind of hybrid dp: sharding_hybrid_dp, mp_sharding_hybrid_dp, pp_hybrid_dp, mp_sharding_pp_hybrid_dp, sharding_pp_hybrid_dp."
                self.hybrid_dp_mode = "sharding_hybrid_dp"

167 168 169 170
        # gradient merge
        self._gradient_merge_acc_step = int(
            self.user_defined_strategy.sharding_configs[
                "gradient_merge_acc_step"])
171 172 173 174 175 176 177 178 179
        self.gradient_merge_mode = None
        if self.pp_degree <= 1:
            self.gradient_merge_mode = "sharding_gm"
            self._grad2merged_grad = dict()
        else:
            self.gradient_merge_mode = "pp_gm"
            self._gradient_merge_acc_step = self.user_defined_strategy.pipeline_configs[
                'accumulate_steps']
        if self._gradient_merge_acc_step > 1:
180
            logger.info("Gradient merge in [{}], acc step = [{}]".format(
181 182 183 184 185 186 187 188 189
                self.gradient_merge_mode, self._gradient_merge_acc_step))

        # optimize offload
        self.optimize_offload = self.user_defined_strategy.sharding_configs[
            "optimize_offload"]

        # this feature is design for ascend, and should NOT be used in GPU training
        self.pp_allreduce_in_optimize = self.user_defined_strategy.sharding_configs[
            "pp_allreduce_in_optimize"]
190

191 192 193
        if self.inner_opt is None:
            raise ValueError(
                "self.inner_opt of ShardingOptimizer should not be None.")
194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221

        if self.pp_degree > 1:
            pp_optimizer = fluid.optimizer.PipelineOptimizer(
                self.inner_opt, self._gradient_merge_acc_step)
            main_program = loss.block.program
            main_program._pipeline_opt = dict()
            self.schedule_mode = self.user_defined_strategy.pipeline_configs[
                'schedule_mode']
            main_program._pipeline_opt['schedule_mode'] = self.schedule_mode
            main_program._pipeline_opt[
                'micro_batch_size'] = self.user_defined_strategy.pipeline_configs[
                    'micro_batch_size']
            self.pp_rank_ = self.role_maker._worker_index() // (
                self.sharding_degree * self.mp_degree) % self.pp_degree
            main_program._pipeline_opt['local_rank'] = self.pp_rank_
            main_program._pipeline_opt[
                'global_rank'] = self.role_maker._worker_index()
            main_program._pipeline_opt['use_sharding'] = True
            # TODO (JZ-LIANG) should revise here for support mix parallelism with pipeline
            main_program._pipeline_opt['ring_id'] = 20
            main_program._pipeline_opt['global_ring_id'] = 3

            optimize_ops, params_grads, program_list, self.pipeline_pair, self.pp_ring_map = pp_optimizer.minimize(
                loss, startup_program, parameter_list, no_grad_set)
            self.pp_degree = len(program_list)
        else:
            optimize_ops, params_grads = self.inner_opt.minimize(
                loss, startup_program, parameter_list, no_grad_set)
222 223 224

        if startup_program is None:
            startup_program = default_startup_program()
225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242

        if self.pp_degree > 1:
            startup_program = startup_program._pipeline_opt['startup_program']
            #main_program = main_program._pipeline_opt['section_program']['program']
            print("pp_rank:", self.pp_rank_)
            main_program = program_list[self.pp_rank_]
            with open("main_%d" % self.role_maker._worker_index(), 'w') as f:
                f.writelines(str(main_program))
            main_block = main_program.global_block()
            new_params_grads = []
            for param, grad in params_grads:
                if main_block.has_var(param.name):
                    new_params_grads.append((param, grad))
            params_grads = new_params_grads

        else:
            main_block = loss.block

243 244 245 246
        startup_block = startup_program.global_block()
        self._main_program = main_block.program
        self._startup_program = startup_program

247 248 249 250 251
        if self.pp_degree > 1:
            pp_optimizer._rename_gradient_var_name(main_block)
            with open("main_%d" % self.role_maker._worker_index(), 'w') as f:
                f.writelines(str(main_program))

252 253 254
        # step0: _init_comm
        self._init_comm()

255
        if self.sharding_degree > 1:
256

257 258 259 260 261 262 263 264 265 266 267 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 289 290 291 292 293 294 295 296 297 298 299 300 301 302 303 304 305 306 307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322 323 324 325 326 327 328 329 330
            # step1: build shard
            self._build_shard(params_grads)

            # step2: split_program
            self._split_program(main_block)

            # step3: add broadcast and reduce ops
            self._add_broadcast_allreduce(main_block)
            main_block._sync_with_cpp()
            startup_block._sync_with_cpp()

            main_block._sync_with_cpp()

            # step4: remove unneeded ops and vars from block
            self._prune_main_program(main_block)
            self._prune_startup_program(startup_block)

        if self.pp_degree > 1:
            # sharding-pp related logic
            # pp_optimizer._rename_gradient_var_name(main_block)
            # crop ops
            if self.sharding_degree > 1:
                for idx, op in reversed(list(enumerate(main_block.ops))):
                    if is_update_op(op):
                        op_role_var = op.attr('op_role_var')
                        param_name = op_role_var[0]
                        if not self._shard.has_param(param_name):
                            main_block._remove_op(idx)

                for idx, op in reversed(list(enumerate(main_block.ops))):
                    if op.type != 'cast': continue
                    in_name = op.input_arg_names[0]
                    if in_name not in self._params: continue
                    #if self._shard.has_param(param_name): continue
                    if in_name not in main_block.vars:
                        main_block._remove_op(idx)

            accumulated_grad_names = pp_optimizer._accumulate_gradients(
                main_block)
            # accumulated_grad_names = sorted(accumulated_grad_names)
            if self.pp_allreduce_in_optimize:
                print("persistable FP32 grad: ")
                print(accumulated_grad_names)
                first_optimize_op_index = get_first_check_finite_and_unscale_op_idx(
                    main_block)
                insert_reduce_ops(
                    main_block,
                    first_optimize_op_index,
                    self.sharding_ring_id,
                    accumulated_grad_names,
                    self._shard,
                    core.op_proto_and_checker_maker.OpRole.Optimize,
                    use_calc_stream=True)
            if self.hybrid_dp and self.hybrid_dp_mode == "pp_hybrid_dp":
                first_optimize_op_index = get_first_check_finite_and_unscale_op_idx(
                    main_block)
                insert_allreduce_ops(
                    main_block,
                    first_optimize_op_index,
                    self.dp_ring_id,
                    accumulated_grad_names,
                    core.op_proto_and_checker_maker.OpRole.Optimize,
                    use_calc_stream=True)

        # if not use sharding, adapt amp/clip, for remain parallelism.
        # cast --> amp --> clip --> opt
        if self.sharding_degree <= 1:
            # amp
            FP16Utils.sync_amp_check_nan_inf(main_block, self.global_ring_id)

            # clip
            gradientclip_helper = GradientClipHelper(self.global_ring_id)
            gradientclip_helper.sync_global_norm(
                main_block, self.global_ring_id, self.dp_degree)
331

332 333 334 335 336
        # step6: loss div dp_degree 
        global_dp_degree = self.sharding_degree * self.dp_degree
        assert int(global_dp_degree) == global_dp_degree
        if global_dp_degree > 1:
            insert_scale_loss_grad_ops(main_block, scale=1.0 / global_dp_degree)
337

338 339
        main_block._sync_with_cpp()

340 341 342 343
        # TODO(wangxi): add optimize offload
        # opt offload should be enable while gradient merge is enable && acc_step is quite large (e.g. >> 100) 
        # sync its memcpy could not be overlap with calc, otherwise it will slower down training severely. 
        if self.optimize_offload:
344
            logger.info("Sharding with optimize offload !")
345 346 347 348 349 350
            offload_helper = OffloadHelper()
            offload_helper.offload(main_block, startup_block)
            offload_helper.offload_fp32param(main_block, startup_block)

        # step6: (optional) sharding gradient merge
        if self.gradient_merge_mode == "sharding_gm" and self._gradient_merge_acc_step > 1:
351 352 353 354 355 356 357
            self._sharding_gradient_merge(main_block)

        # # check op dependecy
        # FIXME (JZ-LIANG) enable checking in future.
        # check_broadcast(main_block)
        # check_allreduce_sum(main_block, self._shard, self.sharding_ring_id,
        #                     self.dp_ring_id)
358 359 360 361 362 363 364 365 366 367 368 369 370

        if self.hybrid_dp:
            # NOTE(JZ-LIANG) ensure in both sharding_hybrid_dp & pp_hybrid_dp 
            # init param broadcast should be called after startup pruning             
            self._initialization_broadcast(startup_block)

        with open("start_sharding_%d" % self.role_maker._worker_index(),
                  'w') as f:
            f.writelines(str(startup_block.program))
        with open("main_sharding_%d" % self.role_maker._worker_index(),
                  'w') as f:
            f.writelines(str(main_block.program))

371 372
        if core.is_compiled_with_cuda():
            self._wait()
373 374
        return optimize_ops, params_grads

375
    def _init_comm(self):
376

377
        # config sharding & dp groups
378
        self._build_groups()
379

380
        # sync var
381 382 383 384 385 386 387
        startup_block = self._startup_program.global_block()
        self.startup_prog_sync_var = startup_block.create_var(
            name="startup_prog_sync_var",
            shape=[1],
            dtype=core.VarDesc.VarType.INT32,
            persistable=False)

388
        # global ring
389
        self._collective_helper._init_communicator(
390 391 392 393 394 395 396 397 398 399 400
            self._startup_program,
            self.current_endpoint,
            self.global_endpoints,
            self.global_rank,
            self.global_ring_id,
            False,
            global_ring_id=self.global_ring_id,
            sync=False)
        append_naive_sync(startup_block, self.startup_prog_sync_var,
                          self.global_ring_id)

401
        # mp ring
402 403 404 405 406 407 408 409 410 411 412 413 414
        if self.mp_degree > 1:
            self._collective_helper._init_communicator(
                self._startup_program,
                self.current_endpoint,
                self.mp_group_endpoints,
                self.mp_rank,
                self.mp_ring_id,
                False,
                global_ring_id=self.global_ring_id,
                sync=False)
            append_naive_sync(startup_block, self.startup_prog_sync_var,
                              self.global_ring_id)

415
        # sharding ring
416 417 418 419 420 421 422 423 424 425 426 427 428
        if self.sharding_degree > 1:
            self._collective_helper._init_communicator(
                self._startup_program,
                self.current_endpoint,
                self.sharding_group_endpoints,
                self.sharding_rank,
                self.sharding_ring_id,
                False,
                global_ring_id=self.global_ring_id,
                sync=False)
            append_naive_sync(startup_block, self.startup_prog_sync_var,
                              self.global_ring_id)

429 430 431 432 433 434 435 436 437 438 439 440 441 442 443 444 445 446 447 448 449 450 451 452 453 454 455 456 457 458 459 460 461 462 463 464 465 466 467 468 469 470 471 472 473 474 475 476 477 478 479 480 481 482 483 484 485 486 487
        # pp ring
        if self.pp_degree > 1:
            if self.schedule_mode == 'F-then-B':  # GPipe
                self._collective_helper._init_communicator(
                    self._startup_program,
                    self.current_endpoint,
                    self.pp_group_endpoints,
                    self.pp_rank,
                    self.pp_ring_id,
                    False,
                    global_ring_id=self.global_ring_id,
                    sync=False)
                # append_naive_sync(startup_block, self.startup_prog_sync_var,
                #                   self.global_ring_id)
                self._collective_helper._init_communicator(
                    self._startup_program,
                    self.current_endpoint,
                    self.pp_group_endpoints,
                    self.pp_rank,
                    self.pp_ring_id + 2,
                    False,
                    global_ring_id=self.global_ring_id,
                    sync=False)
                # append_naive_sync(startup_block, self.startup_prog_sync_var,
                #                   self.global_ring_id)
            else:
                assert self.schedule_mode == '1F1B'
                for pair in self.pipeline_pair:
                    pair_key = pair[0] * 1000 + pair[1]
                    ring_id = self.pp_ring_map[pair_key]
                    print("pp pair:{}, ring_id: {}".format(pair, ring_id))
                    if self.pp_rank not in pair: continue
                    pp_group_endpoints = [
                        self.pp_group_endpoints[pair[0]],
                        self.pp_group_endpoints[pair[1]],
                    ]
                    if pair[0] < pair[1]:
                        start_ring_id = self.pp_ring_id + pair[1] - pair[0] - 1
                    else:
                        start_ring_id = self.pp_ring_id + 2 + pair[0] - pair[
                            1] - 1
                    pp_rank = 0 if self.pp_rank == pair[0] else 1
                    self._collective_helper._init_communicator(
                        self._startup_program,
                        self.current_endpoint,
                        pp_group_endpoints,
                        pp_rank,
                        ring_id,
                        False,
                        global_ring_id=self.global_ring_id,
                        sync=False)
                    # append_naive_sync(startup_block, self.startup_prog_sync_var,
                    #                   self.global_ring_id)

                # TODO (JZ-LIANG) to unify this shit 
            assert self.pp_rank_ == self.pp_rank, "pp rank for pp opt [{}], pp rank for sharding opt [{}]".format(
                self.pp_rank_, self.pp_rank)

        # pure dp ring
488
        if self.dp_degree > 1:
489
            self._collective_helper._init_communicator(
490 491 492 493 494 495 496 497 498 499
                self._startup_program,
                self.current_endpoint,
                self.dp_group_endpoints,
                self.dp_rank,
                self.dp_ring_id,
                False,
                global_ring_id=self.global_ring_id,
                sync=False)
            append_naive_sync(startup_block, self.startup_prog_sync_var,
                              self.global_ring_id)
500

501 502
        startup_block._sync_with_cpp()

503
    def _build_shard(self, params_grads):
504 505
        # step 2: split params
        self._params = set([x[0].name for x in params_grads])
506
        self._shard.setup(params_grads, self.sharding_rank,
507
                          self.sharding_degree)
508 509 510 511 512 513

        # step 3: get broadcast vars
        self._broadcast_vars = self._shard.find_broadcast_params(
            self._main_program.global_block())

    def _wait(self, ):
514 515 516
        endpoints = self.global_endpoints[:]
        current_endpoint = endpoints[self.global_rank]
        if self.global_rank == 0:
517 518
            self._collective_helper._wait(current_endpoint, endpoints)

519 520 521 522 523 524 525 526
    def collect_segment(self, segment, op_idx, block):
        segment._start_idx = op_idx + 1
        self._segments.insert(0, segment)
        new_segment = ProgramSegment(block)
        new_segment._end_idx = op_idx + 1

        return new_segment

527 528 529 530 531
    def _split_program(self, block):
        for op_idx, op in reversed(list(enumerate(block.ops))):
            if int(op.attr('op_role')) != int(OpRole.Optimize):
                last_backward_op_idx = op_idx + 1
                break
532 533

        var2broadcast_time = dict()
534 535 536 537 538
        segment = ProgramSegment(block)
        segment._end_idx = last_backward_op_idx
        for op_idx in reversed(range(last_backward_op_idx)):
            op = block.ops[op_idx]
            assert (int(op.attr('op_role')) != int(OpRole.Optimize))
539 540 541 542 543 544 545 546 547 548 549 550 551 552 553 554 555 556 557 558 559 560 561 562 563 564 565 566 567
            if self._sharding_segment_strategy == "segment_broadcast_MB":
                if segment._param_mem >= self._broadcast_MB:
                    segment = self.collect_segment(segment, op_idx, block)

            elif self._sharding_segment_strategy == "segment_anchors":
                if int(op.attr('op_role')) == int(OpRole.Backward):
                    for input_name in op.desc.input_arg_names():

                        # NOTE (JZ-LIANG) naive rule to support amp, if amp change, should modify here accordingly
                        if self.user_defined_strategy.amp:
                            if ".cast_fp16@GRAD" not in input_name:
                                continue
                            else:
                                input_name = input_name[:input_name.find(
                                    ".cast_fp16@GRAD")]

                        if input_name in self._backward_remain_anchors:
                            segment = self.collect_segment(segment, op_idx,
                                                           block)
                            assert input_name not in self._forward_remain_anchors, "segment anchor [{}] met twice !".format(
                                input_name)
                            self._backward_remain_anchors.remove(input_name)
                            self._forward_remain_anchors.append(input_name)
                elif int(op.attr('op_role')) == int(OpRole.Forward):
                    for output_name in op.desc.output_arg_names():
                        if output_name in self._forward_remain_anchors:
                            segment = self.collect_segment(segment, op_idx,
                                                           block)
                            self._forward_remain_anchors.remove(output_name)
568 569 570 571 572 573 574 575 576 577 578 579 580 581 582 583 584

            # find broadcast vars
            for input_name in op.desc.input_arg_names():
                if input_name not in self._broadcast_vars:
                    continue
                if input_name in segment._param2broadcast:
                    # skip broadcast because it reuse the old broadcast var
                    broadcast_name = segment._param2broadcast[input_name]
                    if input_name != broadcast_name:
                        op._rename_input(input_name, broadcast_name)
                    continue
                if self._shard.has_param(input_name):
                    broadcast_var_name = input_name
                else:
                    broadcast_var_name = unique_name.generate(input_name +
                                                              "@BroadCast")
                    segment._fill_constant_vars.append(broadcast_var_name)
585 586 587 588 589 590 591 592 593 594 595 596 597 598 599

                # (JZ-LIANG) should use Param base name ?
                broadcast_var_base_name = input_name
                if "subprog" in broadcast_var_base_name:
                    # remove suffix
                    broadcast_var_base_name = broadcast_var_base_name[:
                                                                      broadcast_var_base_name.
                                                                      find(
                                                                          ".subprog"
                                                                      )]

                var2broadcast_time[
                    broadcast_var_base_name] = var2broadcast_time.get(
                        broadcast_var_base_name, 0) + 1

600 601 602 603 604 605 606
                segment._param2broadcast[input_name] = broadcast_var_name
                segment._broadcast_vars.append((broadcast_var_name,
                                                self._shard.device(input_name)))
                segment._param_mem += get_var_size(
                    self._main_program.global_block().var(input_name))

            # find reduce vars
607 608 609 610 611 612 613 614 615 616 617 618 619 620 621 622
            if self.pp_degree > 1 and self.pp_allreduce_in_optimize:
                # place pipeline gradient allreduce in optimize
                pass
            else:
                if is_backward_op(op) and \
                        OP_ROLE_VAR_KEY in op.attr_names:
                    op_role_var = op.all_attrs()[OP_ROLE_VAR_KEY]
                    if len(op_role_var) != 0:
                        assert len(op_role_var) % 2 == 0
                        for i in range(0, len(op_role_var), 2):
                            param, reduced_grad = op_role_var[i], op_role_var[
                                i + 1]
                            segment._allreduce_vars.append(reduced_grad)
                            assert (reduced_grad not in
                                    self._reduced_grads_to_param)
                            self._reduced_grads_to_param[reduced_grad] = param
623 624 625 626 627 628 629 630 631 632 633

            # find cast op
            if FP16Utils.is_fp16_cast_op(block, op, self._params):
                fp32_param = op.desc.input_arg_names()[0]
                fp16_param = op.desc.output_arg_names()[0]
                if self._shard.has_param(fp32_param):
                    segment._cast_ops[fp16_param] = fp32_param

        if segment._param_mem > 0:
            segment._start_idx = 0
            self._segments.insert(0, segment)
634 635 636 637 638 639 640 641 642 643 644 645 646

        if self._sharding_segment_strategy == "segment_anchors":
            assert len(
                self._forward_remain_anchors) == 0, "remain anchors {}".format(
                    self._forward_remain_anchors)
            assert len(
                self._backward_remain_anchors) == 0, "remain anchors {}".format(
                    self._backward_remain_anchors)

        if self._verbose:
            for varname in sorted(
                    var2broadcast_time, key=var2broadcast_time.get,
                    reverse=True):
647
                logger.info("Sharding broadcast: [{}] times [{}]".format(
648 649
                    var2broadcast_time[varname], varname))
            for idx_ in range(len(self._segments)):
650 651
                logger.info("segment [{}] :".format(idx_))
                logger.info("start op: [{}]  [{}]".format(block.ops[
652 653 654
                    self._segments[idx_]._start_idx].desc.type(), block.ops[
                        self._segments[idx_]._start_idx].desc.input_arg_names(
                        )))
655
                logger.info("end   op: [{}]  [{}]".format(block.ops[
656 657
                    self._segments[idx_]._end_idx].desc.type(), block.ops[
                        self._segments[idx_]._end_idx].desc.input_arg_names()))
658 659 660 661 662 663
        return

    def _prune_main_program(self, block):
        """
        calculate deps from allredce op to optimize op,
        remove ops and vars not needed in this worker
664 665 666 667 668 669

        1. prune regularization (weight decay)
        2. prune cast_fp32_to_fp16; update amp_infine_checking
        3. prune gradient_clip related; update global_norm_sum
        4. prune optimizer op + param + gradient
            
670 671 672
        """
        weightdecay_helper = WeightDecayHelper()
        weightdecay_helper.prune_weight_decay(block, self._shard)
673 674 675
        # NOTE (JZ-LIANG) the sync of FoundInfinite should among one entire Model Parallelism
        # group. and each Data Parallelism group should have its own sync of FoundInfinite
        # amp could use global group for sync
676
        FP16Utils.prune_fp16(block, self._shard, self._reduced_grads_to_param,
677 678 679 680 681 682 683 684 685 686 687
                             self.global_ring_id)
        # clipbyglobalnorm should only use the Model paramllelism group (mp-sharding-pp)
        if self.mp_degree * self.pp_degree == 1:
            # separate the sharding-hybrid senario to keep the accuracy
            gradientclip_helper = GradientClipHelper(self.sharding_ring_id)
            gradientclip_helper.prune_gradient_clip(
                block, self._shard, pure_dp_degree=1)
        else:
            gradientclip_helper = GradientClipHelper(self.global_ring_id)
            gradientclip_helper.prune_gradient_clip(
                block, self._shard, pure_dp_degree=self.dp_degree)
688 689 690 691 692 693 694 695 696 697 698

        # build prog deps
        reduced_grads = []
        for idx, op in enumerate(block.ops):
            input_names = op.desc.input_arg_names()
            output_names = op.desc.output_arg_names()
            if op.type == "c_allreduce_sum":
                assert (len(output_names) == 1)
                output_name = output_names[0]
                reduced_grads.append(output_name)

699
        # prune optimizer state and param
700 701 702 703 704 705 706 707 708 709 710 711 712 713
        pruned_opti_vars = []
        for var_name in list(block.vars.keys()):
            if self._shard.is_opti_var(var_name) and \
              not self._shard.has_opt_var(var_name):
                pruned_opti_vars.append(var_name)
        program_deps = ProgramDeps(block, reduced_grads, pruned_opti_vars)

        # Init
        for var_name in program_deps._end_vars:
            program_deps._should_removed_var.add(var_name)

        # Prune
        for idx, op in reversed(list(enumerate(block.ops))):
            if op.type in [
714 715 716 717 718 719 720
                    "c_allreduce_sum",
                    "c_sync_comm_stream",
                    "c_calc_comm_stream",
                    "c_gen_nccl_id",
                    "c_comm_init",
                    'send_v2',
                    'recv_v2',
721 722 723 724 725 726 727 728 729 730 731 732 733 734 735 736 737 738 739 740 741 742 743 744 745 746 747 748 749 750 751
            ]:
                pass
            elif op.type == "conditional_block":
                assert (op.desc.has_attr("sub_block"))
                subblock_idx = op.desc.attr("sub_block").id
                subblock_deps = program_deps.get_sub_block_deps(subblock_idx)
                # only prune amp subblock
                if subblock_deps is None or not self._is_amp_subblock(op):
                    continue
                # init
                reversed_output_vars = []
                for output_name in op.desc.output("Out"):
                    if output_name in program_deps._should_removed_var:
                        subblock_deps._should_removed_var.add(output_name)
                        program_deps.crop_output_var_from_op(idx, output_name)
                    else:
                        reversed_output_vars.append(output_name)
                # prune
                for sub_op_idx, _ in reversed(
                        list(enumerate(subblock_deps._block.ops))):
                    if subblock_deps.should_remove_op(sub_op_idx):
                        subblock_deps.remove_op(sub_op_idx)
                reversed_input_vars = []
                for input_name in op.desc.input('Input'):
                    if input_name not in subblock_deps._should_removed_var:
                        reversed_input_vars.append(input_name)
                    else:
                        program_deps.crop_input_var_from_op(idx, input_name)
                op.desc.set_input('Input', reversed_input_vars)
                op.desc.set_output('Out', reversed_output_vars)
            else:
752 753
                # if all outputs of this op are in _should_removed_var
                # _should_removed_var: opt state not cur shard
754 755 756
                if program_deps.should_remove_op(idx):
                    program_deps.remove_op(idx)

757 758 759 760 761 762 763 764 765 766
        # NOTE (JZ-LIANG) revise and unify logic here
        # sharding support fp16_allreduce logic            
        block._sync_with_cpp()
        for idx, op in reversed(list(enumerate(block.ops))):
            if op.type == 'concat' and is_optimizer_op(op):
                # remove inputs that not on this card
                reserved_x = []
                for var_name in op.desc.input("X"):
                    if block.has_var(var_name): reserved_x.append(var_name)
                op.desc.set_input('X', reserved_x)
767 768 769 770 771
        block._sync_with_cpp()
        return

    def _add_broadcast_allreduce(self, block):
        """
772 773
        add broadcast allreduce op
        if enable gradient_merge, insert related ops
774 775 776

        if combined with pipeline(grad accumulate), 
        the grad allreduce should be done in optimize role
777 778 779
        """
        if len(self._segments) < 1:
            return
780
        # sharding
781 782 783 784 785 786 787 788 789 790 791 792 793 794 795 796
        if self.pp_degree > 1 and self.pp_allreduce_in_optimize:
            for idx in range(len(self._segments)):
                assert len(self._segments[idx]._allreduce_vars) == 0

        # NOTE (JZ-LIANG) revise and unify logic here
        # fix the _end_idx for segments[-1] if pp is used.
        new_end_idx = self._segments[-1]._end_idx
        for idx in range(self._segments[-1]._end_idx - 1,
                         self._segments[-1]._start_idx - 1, -1):
            op = block.ops[idx]
            if op.type == "fill_constant" or op.type == "sum":
                if "MERGED" in op.output_arg_names[0]: new_end_idx = idx + 1
            elif op.type == "cast":
                if "@TMP" in op.output_arg_names[0]: new_end_idx = idx + 1
        self._segments[-1]._end_idx = new_end_idx

797
        if self._segments[-1]._allreduce_vars:
798 799
            shard_allredue_vars = self._shard.filter_grads(self._segments[-1]
                                                           ._allreduce_vars)
800 801 802
            if self.gradient_merge_mode != "sharding_gm" or self._gradient_merge_acc_step <= 1:
                if self.hybrid_dp and self.hybrid_dp_mode == "sharding_hybrid_dp" and len(
                        shard_allredue_vars) >= 1:
803 804 805 806 807
                    insert_sync_comm_ops(block, self._segments[-1]._end_idx,
                                         self.dp_ring_id, shard_allredue_vars)
                    insert_allreduce_ops(block, self._segments[-1]._end_idx,
                                         self.dp_ring_id, shard_allredue_vars)
            # gradient merge 
808
            elif self.gradient_merge_mode == "sharding_gm" and self._gradient_merge_acc_step > 1:
809 810 811 812 813 814
                self.create_persistable_gradients_and_insert_merge_ops(
                    block,
                    self._startup_program.global_block(),
                    self._segments[-1]._end_idx, shard_allredue_vars,
                    self._shard)

815
            insert_sync_comm_ops(block, self._segments[-1]._end_idx,
816
                                 self.sharding_ring_id,
817
                                 self._segments[-1]._allreduce_vars)
818
            # allreduce --> reduce 
819 820 821 822 823 824 825 826
            insert_reduce_ops(
                block,
                self._segments[-1]._end_idx,
                self.sharding_ring_id,
                self._segments[-1]._allreduce_vars,
                self._shard,
                op_role=OpRole.Backward,
                use_calc_stream=False)
827 828 829 830 831 832 833 834 835 836 837 838 839 840 841 842 843 844 845 846 847 848 849 850 851 852 853 854 855 856 857 858 859 860 861 862 863

        for idx, segment in reversed(list(enumerate(self._segments))):
            allreduce_vars = self._segments[
                idx - 1]._allreduce_vars if idx > 0 else []
            broadcast_vars = self._segments[idx +
                                            1]._broadcast_vars if idx < len(
                                                self._segments) - 1 else []
            fill_constant_vars = self._segments[
                idx + 2]._fill_constant_vars if idx < len(
                    self._segments) - 2 else []
            cast_ops = self._segments[idx + 2]._cast_ops if idx < len(
                self._segments) - 2 else {}

            for op_idx in reversed(range(segment._start_idx, segment._end_idx)):
                op = block.ops[op_idx]
                for input_name in op.desc.input_arg_names():
                    if input_name in segment._param2broadcast and \
                        input_name != segment._param2broadcast[input_name]:
                        op._rename_input(input_name,
                                         segment._param2broadcast[input_name])

            for param_name, broadcast_name in segment._param2broadcast.items():
                if param_name != broadcast_name:
                    block.create_var(
                        name=broadcast_name,
                        shape=self._main_program.global_block().var(
                            param_name).shape,
                        dtype=self._main_program.global_block().var(param_name)
                        .dtype,
                        persistable=False)

            # step1: remove cast ops
            block._sync_with_cpp()
            segment._end_idx += FP16Utils.remove_cast_op(block, self._params,
                                                         segment, 0)

            # step2: add Sync ops
864 865
            shard_allredue_vars = self._shard.filter_grads(allreduce_vars)

866 867 868
            if self.gradient_merge_mode != "sharding_gm" or self._gradient_merge_acc_step <= 1:
                if self.hybrid_dp and self.hybrid_dp_mode == "sharding_hybrid_dp" and len(
                        shard_allredue_vars) >= 1:
869 870 871 872 873 874 875 876 877 878 879 880 881 882 883 884 885
                    insert_sync_comm_ops(block, segment._end_idx,
                                         self.dp_ring_id, shard_allredue_vars)

                    broad_cast_vars = [x[0] for x in broadcast_vars]
                    if len(broad_cast_vars) > 0:
                        insert_sync_comm_ops(block, segment._end_idx,
                                             self.sharding_ring_id,
                                             broad_cast_vars)
                else:
                    comm_dep_vars = allreduce_vars + [
                        x[0] for x in broadcast_vars
                    ]
                    if len(comm_dep_vars) > 0:
                        insert_sync_comm_ops(block, segment._end_idx,
                                             self.sharding_ring_id,
                                             comm_dep_vars)
            # gradient merge
886
            elif self.gradient_merge_mode == "sharding_gm" and self._gradient_merge_acc_step > 1:
887 888 889 890 891
                broad_cast_vars = [x[0] for x in broadcast_vars]
                if len(broad_cast_vars) > 0:
                    insert_sync_comm_ops(block, segment._end_idx,
                                         self.sharding_ring_id, broad_cast_vars)

892 893 894 895 896 897 898 899 900 901 902 903 904 905 906 907
            calc_dep_vars = fill_constant_vars + [
                k for k, v in cast_ops.items()
            ] + self._segments[idx]._allreduce_vars

            if len(calc_dep_vars) > 0:
                insert_sync_calc_op(block, segment._end_idx,
                                    [calc_dep_vars[-1]])

            # step3: insert `fill_constant` ops 
            insert_fill_constant_ops(block, segment._end_idx,
                                     fill_constant_vars)

            # step4: add `cast` ops     
            insert_cast_ops(block, segment._end_idx, cast_ops)

            # step5: add broadcast ops
908
            # gradient merge
909
            if self.gradient_merge_mode == "sharding_gm" and self._gradient_merge_acc_step > 1:
910 911 912 913 914
                self.create_persistable_gradients_and_insert_merge_ops(
                    block,
                    self._startup_program.global_block(), segment._start_idx,
                    shard_allredue_vars, self._shard)

915 916
            insert_broadcast_ops(block, segment._start_idx,
                                 self.sharding_ring_id, broadcast_vars)
917

918
            # step6: add all_reduce ops
919
            # dp
920 921 922
            if self.gradient_merge_mode != "sharding_gm" or self._gradient_merge_acc_step <= 1:
                if self.hybrid_dp and self.hybrid_dp_mode == "sharding_hybrid_dp" and len(
                        shard_allredue_vars) >= 1:
923 924 925 926 927
                    insert_allreduce_ops(block, segment._start_idx,
                                         self.dp_ring_id, shard_allredue_vars)
                    insert_sync_comm_ops(block, segment._start_idx,
                                         self.sharding_ring_id, allreduce_vars)
            # gradient merge
928
            elif self.gradient_merge_mode == "sharding_gm" and self._gradient_merge_acc_step > 1:
929 930 931
                insert_sync_comm_ops(block, segment._start_idx,
                                     self.sharding_ring_id, allreduce_vars)
            # sharding
932
            # allreduce --> reduce 
933 934 935 936 937 938 939 940 941 942
            # TODO temp change
            if len(allreduce_vars) > 0:
                insert_reduce_ops(
                    block,
                    segment._start_idx,
                    self.sharding_ring_id,
                    allreduce_vars,
                    self._shard,
                    op_role=OpRole.Backward,
                    use_calc_stream=False)
943 944 945 946

            block._sync_with_cpp()

        if self._segments[0]._broadcast_vars:
947 948 949
            broadcast_vars = [x[0] for x in self._segments[0]._broadcast_vars]
            insert_sync_comm_ops(block, self._segments[0]._start_idx,
                                 self.sharding_ring_id, broadcast_vars)
950
            insert_broadcast_ops(block, self._segments[0]._start_idx,
951
                                 self.sharding_ring_id,
952 953 954 955 956 957 958 959 960 961 962 963 964 965 966 967 968 969 970 971 972 973 974 975 976 977 978 979 980 981 982 983 984 985 986 987 988 989 990 991
                                 self._segments[0]._broadcast_vars)

        fill_constant_vars = []
        for x in self._segments[:2]:
            fill_constant_vars += x._fill_constant_vars

        # Join
        cast_ops = {}
        for x in self._segments[:2]:
            for k, v in x._cast_ops.items():
                cast_ops[k] = v

        calc_deps_vars = fill_constant_vars + [k for k, v in cast_ops.items()]
        if fill_constant_vars or cast_ops:
            insert_sync_calc_op(block, self._segments[0]._start_idx,
                                [calc_deps_vars[-1]])

        if fill_constant_vars:
            insert_fill_constant_ops(block, self._segments[0]._start_idx,
                                     fill_constant_vars)

        if cast_ops:
            insert_cast_ops(block, self._segments[0]._start_idx, cast_ops)

        return

    def _prune_startup_program(self, block):
        for idx, op in reversed(list(enumerate(block.ops))):
            for output_name in op.desc.output_arg_names():
                if self._shard.has_var(output_name):
                    continue
                #TODO why do we remove op, when only one var is removed
                block._remove_op(idx, sync=False)
                break

        for var_name in list(block.vars.keys()):
            if self._shard.has_var(var_name):
                continue
            block._remove_var(var_name, sync=False)
        block._sync_with_cpp()
992

993
    def _build_groups(self):
994 995
        """
        pre-assign ring ids
996 997 998 999 1000
            mp: 0
            sharding: 1
            pure-dp: 2
            global: 3
            pp: >= 20
1001 1002 1003 1004 1005 1006 1007 1008 1009 1010 1011 1012 1013 1014 1015 1016 1017 1018 1019 1020 1021 1022 1023 1024 1025 1026 1027
        if one parallelism is not enable: -1
        and only support parallelism hierarchy: mp --> sharding --> pp --> dp        
        """
        # step 1: initialize nccl
        self.global_word_size = self.role_maker._worker_num()
        self.global_rank = self.role_maker._worker_index()
        self.global_endpoints = self.role_maker._get_trainer_endpoints()
        self.current_endpoint = self.global_endpoints[self.global_rank]
        self._collective_helper = CollectiveHelper(
            self.role_maker, nrings=self._nrings_sharding)
        assert self.global_word_size % self.mp_degree == 0, \
            "global_word_size: {} should be divisible to the mp_degree: {}".format(self.global_word_size, self.mp_degree)
        assert self.global_word_size % self.sharding_degree == 0, \
            "global_word_size: {} should be divisible to the sharding_degree: {}".format(self.global_word_size, self.sharding_degree)
        assert self.global_word_size % self.pp_degree == 0, \
            "global_word_size: {} should be divisible to the pp_degree: {}".format(self.global_word_size, self.pp_degree)
        assert self.global_word_size % self.dp_degree == 0, \
            "global_word_size: {} should be divisible to the dp_degree: {}".format(self.global_word_size, self.dp_degree)

        # mp group
        if self.mp_degree > 1:
            self.mp_ring_id = 0
            self.mp_rank = self.global_rank % self.mp_degree
            self.mp_group_id = self.global_rank // self.mp_degree
            self.mp_group_endpoints = [
                ep for idx, ep in enumerate(self.global_endpoints)
                if idx // self.mp_degree == self.mp_group_id
1028
            ]
1029 1030 1031 1032 1033 1034 1035 1036 1037 1038 1039 1040 1041 1042 1043 1044 1045 1046 1047 1048 1049 1050 1051 1052 1053 1054 1055 1056 1057 1058 1059 1060 1061 1062 1063 1064 1065 1066 1067 1068 1069
            assert self.current_endpoint in self.mp_group_endpoints
            assert len(
                self.mp_group_endpoints
            ) == self.mp_degree, "num of mp worker in group is [{}], but mp group size is [{}]".format(
                len(self.mp_group_endpoints), self.mp_degree)
        else:
            self.mp_degree = 1
            self.mp_ring_id = -1
            self.mp_rank = -1
            self.mp_group_id = -1
            self.mp_group_endpoints = []

        # sharding 
        if self.sharding_degree > 1:
            self.sharding_ring_id = 1
            self.sharding_rank = (self.global_rank //
                                  self.mp_degree) % self.sharding_degree
            self.sharding_group_id = self.global_rank // (self.mp_degree *
                                                          self.sharding_degree)
            # mp + sharding + ...
            if self.mp_degree > 1:
                self.sharding_group_endpoints = [
                    ep for idx, ep in enumerate(self.global_endpoints)
                    if (idx // (self.mp_degree * self.sharding_degree)) == self.
                    sharding_group_id and idx % self.mp_degree == self.mp_rank
                ]
            # sharding + ...    
            else:
                self.sharding_group_endpoints = [
                    ep for idx, ep in enumerate(self.global_endpoints)
                    if (idx // (self.mp_degree * self.sharding_degree)
                        ) == self.sharding_group_id
                ]
            assert self.current_endpoint in self.sharding_group_endpoints
        else:
            self.sharding_degree = 1
            self.sharding_ring_id = -1
            self.sharding_rank = -1
            self.sharding_group_id = -1
            self.sharding_group_endpoints = []

1070 1071 1072 1073 1074 1075 1076 1077 1078 1079 1080 1081 1082 1083 1084 1085 1086 1087 1088 1089 1090 1091 1092 1093
        # pp
        if self.pp_degree > 1:
            self.pp_ring_id = 20
            self.pp_rank = self.global_rank // (self.sharding_degree *
                                                self.mp_degree) % self.pp_degree
            # (NOTE): Already adjust for (outter-pure) dp
            self.pp_group_id = self.global_rank // (
                self.mp_degree * self.sharding_degree * self.pp_degree)
            pp_first_stage_idx = self.global_rank % (
                self.sharding_degree * self.mp_degree) + self.pp_group_id * (
                    self.mp_degree * self.sharding_degree * self.pp_degree)
            pp_stage_offset = self.sharding_degree * self.mp_degree
            self.pp_group_endpoints = []
            for i in range(self.pp_degree):
                self.pp_group_endpoints.append(self.global_endpoints[
                    pp_first_stage_idx + pp_stage_offset * i])
            assert self.current_endpoint in self.pp_group_endpoints
        else:
            self.pp_degree = 1
            self.pp_ring_id = -1
            self.pp_rank = -1
            self.pp_group_id = -1
            self.pp_group_endpoints = []

1094 1095 1096 1097 1098 1099 1100
        # outter-pure-dp group
        # NOTE (JZ-LIANG) support outter-pure-dp to scale the throughput in 3D parallelism
        # e.g. mp-sharding-pp-dp
        # sharding-hybrid-dp as one senario of outter-pure-dp 
        assert self.global_word_size == self.mp_degree * self.sharding_degree * self.pp_degree * self.dp_degree, "mp_degree: [{}], sharding_degree: [{}], pp_degree: [{}], dp_degree: [{}]; BUT global nrank: [{}]".format(
            self.mp_degree, self.sharding_degree, self.pp_degree,
            self.dp_degree, self.global_word_size)
1101

1102 1103 1104 1105 1106 1107 1108 1109 1110 1111 1112 1113
        if self.dp_degree > 1:
            self.dp_ring_id = 2
            self.dp_rank = self.global_rank // (self.sharding_degree *
                                                self.mp_degree * self.pp_degree)
            dp_first_rank_idx = self.global_rank % (
                self.sharding_degree * self.mp_degree * self.pp_degree)
            dp_offset = (self.sharding_degree * self.mp_degree * self.pp_degree)
            self.dp_group_endpoints = []
            for i in range(self.dp_degree):
                self.dp_group_endpoints.append(self.global_endpoints[
                    dp_first_rank_idx + dp_offset * i])
            assert self.current_endpoint in self.dp_group_endpoints
1114
            logger.info("Hybrid DP mode turn on !")
1115 1116 1117
        else:
            self.dp_ring_id = -1
            self.dp_rank = -1
1118
            self.dp_group_endpoints = []
1119

1120
        # global group
1121 1122
        # use for gen_nccl_comm_sync, amp check nan inf, clip by global norm
        # NOTE (JZ-LIANG) when use global ring for calc global norm and dp_degree > 1, the allreduce result should be devided by dp_degree
1123
        self.global_ring_id = 3
1124

1125 1126 1127 1128 1129 1130 1131 1132 1133 1134 1135 1136 1137 1138 1139 1140 1141
        logger.info("global word size: {}".format(self.global_word_size))
        logger.info("global rank: {}".format(self.global_rank))
        logger.info("global endpoints: {}".format(self.global_endpoints))
        logger.info("global ring id: {}".format(self.global_ring_id))
        logger.info("#####" * 6)

        logger.info("mp group size: {}".format(self.mp_degree))
        logger.info("mp rank: {}".format(self.mp_rank))
        logger.info("mp group id: {}".format(self.mp_group_id))
        logger.info("mp group endpoints: {}".format(self.mp_group_endpoints))
        logger.info("mp ring id: {}".format(self.mp_ring_id))
        logger.info("#####" * 6)

        logger.info("sharding group size: {}".format(self.sharding_degree))
        logger.info("sharding rank: {}".format(self.sharding_rank))
        logger.info("sharding group id: {}".format(self.sharding_group_id))
        logger.info("sharding group endpoints: {}".format(
1142
            self.sharding_group_endpoints))
1143 1144 1145 1146 1147 1148 1149 1150 1151 1152 1153 1154 1155
        logger.info("sharding ring id: {}".format(self.sharding_ring_id))
        logger.info("#####" * 6)

        logger.info("pp group size: {}".format(self.pp_degree))
        logger.info("pp rank: {}".format(self.pp_rank))
        logger.info("pp group id: {}".format(self.pp_group_id))
        logger.info("pp group endpoints: {}".format(self.pp_group_endpoints))
        logger.info("pp ring id: {}".format(self.pp_ring_id))
        logger.info("#####" * 6)

        logger.info("pure dp group size: {}".format(self.dp_degree))
        logger.info("pure dp rank: {}".format(self.dp_rank))
        logger.info("pure dp group endpoints: {}".format(
1156
            self.dp_group_endpoints))
1157 1158
        logger.info("pure dp ring id: {}".format(self.dp_ring_id))
        logger.info("#####" * 6)
1159 1160

        return
1161

1162
    def _initialization_broadcast(self, startup_block):
1163 1164 1165 1166 1167
        """
        this funtion is to ensure the initialization between dp group to be 
        identical when hybrid-dp is used.
        """
        params = []
1168
        for param in startup_block.iter_parameters():
1169
            params.append(param)
1170
            startup_block.append_op(
1171 1172 1173 1174 1175 1176 1177 1178
                type='c_broadcast',
                inputs={'X': param},
                outputs={'Out': param},
                attrs={
                    'ring_id': self.dp_ring_id,
                    'root': 0,
                    OP_ROLE_KEY: OpRole.Forward
                })
1179
        startup_block.append_op(
1180 1181 1182 1183 1184 1185
            type='c_sync_comm_stream',
            inputs={'X': params},
            outputs={'Out': params},
            attrs={'ring_id': self.dp_ring_id,
                   OP_ROLE_KEY: OpRole.Forward})
        # sync within global group
1186
        append_naive_sync(startup_block, self.startup_prog_sync_var,
1187 1188 1189 1190 1191 1192 1193 1194 1195 1196 1197 1198 1199 1200 1201 1202 1203 1204 1205 1206 1207 1208 1209 1210 1211 1212 1213 1214 1215 1216 1217 1218 1219 1220 1221 1222 1223 1224 1225 1226 1227 1228 1229 1230 1231 1232 1233 1234 1235 1236 1237 1238 1239 1240 1241 1242 1243 1244 1245 1246 1247 1248 1249 1250 1251 1252 1253 1254 1255 1256 1257 1258 1259 1260 1261 1262 1263 1264 1265 1266 1267 1268 1269 1270 1271 1272 1273 1274 1275 1276 1277 1278 1279 1280 1281 1282 1283 1284 1285 1286 1287 1288 1289 1290 1291 1292 1293 1294 1295 1296 1297 1298 1299 1300 1301 1302 1303 1304 1305 1306 1307 1308 1309 1310 1311 1312 1313 1314 1315 1316 1317 1318 1319 1320 1321 1322 1323 1324 1325 1326 1327 1328 1329 1330 1331 1332 1333 1334 1335 1336 1337 1338 1339 1340 1341 1342 1343 1344 1345 1346 1347 1348 1349 1350 1351 1352 1353 1354 1355 1356 1357 1358 1359 1360 1361 1362 1363 1364 1365 1366 1367 1368 1369 1370 1371 1372 1373 1374 1375 1376 1377 1378 1379 1380 1381 1382 1383 1384 1385 1386 1387 1388 1389 1390 1391 1392 1393 1394 1395 1396 1397 1398 1399 1400 1401 1402 1403 1404 1405 1406 1407 1408 1409 1410 1411 1412 1413 1414 1415 1416 1417 1418 1419 1420 1421 1422 1423 1424 1425 1426 1427 1428 1429 1430 1431 1432 1433 1434 1435 1436 1437 1438 1439 1440 1441 1442 1443 1444 1445 1446 1447 1448 1449 1450 1451 1452 1453 1454 1455 1456 1457 1458 1459 1460 1461
                          self.global_ring_id)

    # sharding gradient merge
    def create_persistable_gradients_and_insert_merge_ops(
            self, main_block, startup_block, insert_idx, grad_names, shard):

        for grad_name in grad_names:
            assert get_grad_device(
                grad_name, shard
            ) == shard.worker_idx, "try to merge gradient not belong to current shard: [{}]".format(
                grad_name)
            persistable_grad_name = grad_name + '@GradiantMerge'
            assert grad_name not in self._grad2merged_grad, "grad [{}] already in grad2merged_grad, maybe you meet sharing weight case !".format(
                grad_name)
            self._grad2merged_grad[grad_name] = persistable_grad_name
            grad_var = main_block.var(grad_name)
            # create var
            gradient_merge_var = main_block.create_var(
                name=persistable_grad_name,
                shape=grad_var.shape,
                dtype=grad_var.dtype,
                persistable=True)
            startup_gradient_merge_var = startup_block.create_var(
                name=persistable_grad_name,
                shape=grad_var.shape,
                dtype=grad_var.dtype,
                persistable=True)

            # merge gradient
            main_block._insert_op_without_sync(
                insert_idx,
                type="elementwise_add",
                inputs={'X': grad_name,
                        'Y': gradient_merge_var},
                outputs={'Out': gradient_merge_var},
                attrs={
                    'axis': -1,
                    'use_mkldnn': False,
                    OP_ROLE_KEY: OpRole.Backward
                })

            # startup initialization
            startup_block.append_op(
                type="fill_constant",
                outputs={"Out": startup_gradient_merge_var},
                attrs={
                    "shape": grad_var.shape,
                    "dtype": grad_var.dtype,
                    "value": float(0),
                })

        main_block._sync_with_cpp()
        startup_block._sync_with_cpp()

    def _create_gm_cond(self, main_block):
        # Add const var
        acc_step_var = layers.create_global_var(
            name="gradient_merge_acc_step",
            shape=[1],
            value=int(self._gradient_merge_acc_step),
            dtype='int32',
            persistable=True,
            force_cpu=True)

        zero_var = layers.create_global_var(
            name="gradient_merge_zero",
            shape=[1],
            value=int(0),
            dtype='int32',
            persistable=True,
            force_cpu=True)

        # Add step var & cond var
        current_step_var = layers.create_global_var(
            name="gradient_merge_current_step",
            shape=[1],
            value=int(0),
            dtype='int32',
            persistable=True,
            force_cpu=True)

        cond_var = layers.create_global_var(
            name="gradient_merge_cond",
            shape=[1],
            value=bool(0),
            dtype='bool',
            persistable=False,
            force_cpu=True)

        with device_guard("cpu"):
            # step_var = (step_var + 1) % k_step
            main_block.append_op(
                type='increment',
                inputs={'X': [current_step_var]},
                outputs={'Out': [current_step_var]},
                attrs={'step': float(1),
                       OP_ROLE_KEY: OpRole.Optimize})

            main_block.append_op(
                type='elementwise_mod',
                inputs={'X': current_step_var,
                        'Y': acc_step_var},
                outputs={'Out': current_step_var},
                attrs={
                    'axis': -1,
                    OP_ROLE_KEY: OpRole.Optimize,
                    'use_mkldnn': False
                })

            # cond_var = (step_var == 0)
            main_block.append_op(
                type='equal',
                inputs={'X': current_step_var,
                        'Y': zero_var},
                outputs={'Out': cond_var},
                attrs={OP_ROLE_KEY: OpRole.Optimize})
        # paddle.static.Print(current_step_var, message="in FWBW last conditional")
        return cond_var

    def _true_apply_gradient(self):
        """
        allreduce grad@gradientmerge in dp group
        grad@gradientmerge / acc_step
        re-create all optimize ops of origin main block and rename them
            cast(backward)
            amp 
            clip
            opt
        # fill constant grad@gradientmerge

        """
        # current conditional block
        main_block = self._main_program.global_block()
        cur_block_idx = self._main_program.current_block_idx
        cur_block = self._main_program.current_block()
        self.cond_block = self._main_program.current_block()

        # cur_block's forward_block & backward_block is itself
        cur_block._set_forward_block_idx(cur_block_idx)

        # allreduce grad@gradientmerge  
        if self.hybrid_dp:
            assert self.dp_ring_id >= 0, "dp_ring_id should larger than 0 when in sharding&DP mode"
            for grad, merged_grad in self._grad2merged_grad.items():
                merged_grad_var = main_block.var(merged_grad)
                cur_block.append_op(
                    type='c_allreduce_sum',
                    inputs={'X': merged_grad_var},
                    outputs={'Out': merged_grad_var},
                    attrs={
                        'ring_id': self.dp_ring_id,
                        'use_calc_stream': True,
                        OP_ROLE_KEY: OpRole.Optimize
                    })

        # grad@gradientmerge / acc_step
        for grad, merged_grad in self._grad2merged_grad.items():
            # grad /= k_steps
            merged_grad_var = main_block.var(merged_grad)
            cur_block.append_op(
                type='scale',
                inputs={'X': merged_grad_var},
                outputs={'Out': merged_grad_var},
                attrs={
                    'scale': 1.0 / float(self._gradient_merge_acc_step),
                    'bias': 0.0,
                    'bias_after_scale': False,
                    OP_ROLE_KEY: OpRole.Optimize
                })

        # re-create optimize ops
        already_moved_var_names = []
        for op_desc in self.original_optimize_ops_desc:
            new_op_desc = cur_block.desc.append_op()
            new_op_desc.copy_from(op_desc)

            for input_name in new_op_desc.input_arg_names():
                if input_name in self._grad2merged_grad:
                    new_op_desc._rename_input(
                        input_name, self._grad2merged_grad[input_name])

            for output_name in new_op_desc.output_arg_names():
                if output_name in self._grad2merged_grad:
                    new_op_desc._rename_output(
                        output_name, self._grad2merged_grad[output_name])

                # move non temp optimize vars from block0 to cond block
                if output_name not in already_moved_var_names and output_name not in self._grad2merged_grad.keys(
                ):
                    var_ = self._main_program.global_block().var(output_name)
                    if not var_.persistable:
                        # move
                        name_ = var_.name
                        shape_ = var_.shape
                        type_ = var_.dtype
                        self._main_program.global_block()._remove_var(
                            var_.name, sync=False)
                        self.cond_block.create_var(
                            name=name_,
                            shape=shape_,
                            dtype=type_,
                            persistable=False)
                        already_moved_var_names.append(name_)

        self._main_program.global_block()._sync_with_cpp()
        cur_block._sync_with_cpp()

        # fill zero to grad@gradientmerge
        for grad, merged_grad in self._grad2merged_grad.items():
            merged_grad_var = main_block.var(merged_grad)
            cur_block.append_op(
                type='fill_constant',
                outputs={'Out': merged_grad_var},
                attrs={
                    "shape": merged_grad_var.shape,
                    "dtype": merged_grad_var.dtype,
                    "value": float(0),
                    OP_ROLE_KEY: OpRole.Optimize
                })

        # lr_var = main_block.var("gradient_merge_current_step")
        # paddle.static.Print(lr_var, message="in OPTIMIZE last conditional")

    def _sharding_gradient_merge(self, main_block):
        """
        copy all optimize ops in origin main block
        remove all optimize ops in origin main block
        create cond block

        """
        # copy original optimize ops to temp ops desc list
        # remove them from block 0
        tmp_copy_block = self._main_program._create_block()

        self.original_optimize_ops_desc = []
        for op_idx, op in reversed(list(enumerate(main_block.ops))):
            if int(op.attr('op_role')) != int(OpRole.Optimize):
                continue
            else:
                tmp_op_desc = tmp_copy_block.desc.append_op()
                tmp_op_desc.copy_from(op.desc)
                self.original_optimize_ops_desc.append(tmp_op_desc)
                main_block._remove_op(op_idx, sync=False)
        tmp_copy_block._sync_with_cpp()
        self.original_optimize_ops_desc = list(
            reversed(self.original_optimize_ops_desc))

        # back to block 0
        self._main_program._rollback()

        # create cond vars and ops at the end of block 0
        cond = self._create_gm_cond(main_block)

        # create cond block
        cond_block = self._main_program._create_block()
        self._true_apply_gradient()

        # back to block 0
        self._main_program._rollback()

        # cond op
        step_scope = self._main_program.global_block().create_var(
            type=core.VarDesc.VarType.STEP_SCOPES)
        conditional_block_op = self._main_program.global_block().append_op(
            type='conditional_block',
            inputs={
                'Cond': cond,
                'Input': [],
            },
            outputs={'Out': [],
                     'Scope': [step_scope]},
            attrs={
                'sub_block': cond_block,
                'is_scalar_condition': True,
            })