partial_program.py 41.2 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 16
from copy import deepcopy

17
import numpy as np
18

19
import paddle
20 21
from paddle import _legacy_C_ops
from paddle.fluid import backward, core, framework, program_guard
22
from paddle.fluid.compiler import BuildStrategy
23 24 25 26 27
from paddle.fluid.dygraph import layers
from paddle.fluid.dygraph.base import switch_to_static_graph
from paddle.fluid.framework import _apply_pass

from . import logging_utils
28
from .utils import RETURN_NO_VALUE_MAGIC_NUM, _out_grad_names, _param_grad_names
29

30 31
__all__ = []

32

33
class NestSequence:
34 35 36 37 38 39 40
    """
    A wrapper class that easily to flatten and restore the nest structure of
    given sequence.
    """

    def __init__(self, raw_input, need_check=False):
        self.__raw_input = raw_input
41
        self.__input_list = self.tolist()
42 43 44 45 46 47 48
        self.__var_ids = self._get_var_ids()
        self._check_non_variable(need_check)

    def tolist(self):
        """
        Flattens the nested sequences into single list.
        """
49
        return paddle.utils.flatten(self.__raw_input)
50 51 52 53 54

    def restore(self, value_list):
        """
        Restores the nested sequence from value list.
        """
55
        assert len(self.__input_list) == len(value_list)
56
        return paddle.utils.pack_sequence_as(self.__raw_input, value_list)
57 58 59

    def _get_var_ids(self):
        var_ids = []
60
        for idx, var in enumerate(self.__input_list):
61
            if isinstance(
62 63
                var, (framework.Variable, core.VarBase, core.eager.Tensor)
            ):
64 65 66 67 68 69 70 71 72 73
                var_ids.append(idx)

        return var_ids

    def _check_non_variable(self, need_check):
        """
        Raises warning if output of traced function contains non-tensor type values.
        """
        if need_check:
            warning_types = set()
74
            for var in self.__input_list:
75
                if not isinstance(
76 77
                    var, (framework.Variable, core.VarBase, core.eager.Tensor)
                ):
78 79
                    warning_types.add(type(var))
            if warning_types:
80
                logging_utils.warn(
81 82
                    "Output of traced function contains non-tensor type values: {}. "
                    "Currently, We don't support to update them while training and will return "
83 84 85 86
                    "what we first saw. Please try to return them as tensor.".format(
                        list(warning_types)
                    )
                )
87 88 89 90 91 92

    @property
    def var_ids(self):
        return self.__var_ids

    def __getitem__(self, item):
93
        return self.__input_list[item]
94

95

96
class LazyInitialized:
97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118
    """
    Descriptor to implement lazy initialization of property.
    """

    def __init__(self, function):
        self.function = function

    def __get__(self, instance, cls):
        val = self.function(instance)
        setattr(instance, self.function.__name__, val)
        return val


def _change_is_test_status(program, is_test):
    # change all `is_test` attributes
    for block in program.blocks:
        for op in block.ops:
            if op.has_attr('is_test'):
                op._set_attr('is_test', is_test)
    return program


119 120 121 122 123
class ProgramInfo:
    """
    A helper class to recoder Program information
    """

124
    def __init__(self):
125 126 127 128 129
        self.op_size = {
            'fp32': -1,
            'amp': -1,
            'fp16': -1,
        }
130 131 132 133 134 135 136 137 138 139 140 141 142 143
        self.programs = {}
        self.mode = "infer"

    def __call__(self, key, prog_creator):
        """
        Recoder infer program and op size.
        """
        assert key in ['fp32', 'amp', 'fp16']
        if key not in self.programs:
            infer_prog = prog_creator(is_infer_mode=True)
            self.programs[key] = infer_prog
            self.op_size[key] = infer_prog.desc.block(0).op_size()

        return self.programs[key], self.op_size[key]
144 145


X
xiongkun 已提交
146
class PartialProgramLayerHook:
147
    def before_append_backward(self, forward_program):
X
xiongkun 已提交
148 149
        ...

150
    def after_append_backward(self, whole_program, backward_start_idx):
X
xiongkun 已提交
151 152
        ...

153
    def after_infer(self, infer_program):
X
xiongkun 已提交
154 155 156
        ...


157
class PartialProgramLayer:
158
    """
H
hjyp 已提交
159
    PartialProgramLayer wraps all the ops from layers decorated by `@to_static`
160 161 162
    and execute them as a static subgraph.

    .. note::
163 164 165
        **1. This is a very low level API. Users should not use this API
             directly. Please use `partial_program_from(concrete_program)`
             to create it.
166 167 168 169
        **2. LoDTensorArray is not currently supported in the output.

    Args:
        main_program(Program): The main program that contains ops need to be executed.
H
hjyp 已提交
170 171
        inputs(list[Variable]): The input list of the decorated function by `@to_static`.
        outputs(list[Variable]): The output list of the decorated function by `@to_static`.
172 173 174
        parameters(list[VarBase]|None): All trainable parameters included in the program. Default None.

    Returns:
175
        Layer: A Layer object that run all ops internally in static graph mode.
176 177
    """

178 179 180
    def __init__(
        self, main_program, inputs, outputs, parameters=None, **kwargs
    ):
181
        super().__init__()
182 183
        self._inputs = NestSequence(inputs)
        self._outputs = NestSequence(outputs, need_check=True)
184
        self._params = parameters if parameters is not None else []
185

186 187 188
        self._build_strategy = kwargs.get('build_strategy', BuildStrategy())
        assert isinstance(self._build_strategy, BuildStrategy)

189
        self._origin_main_program = self._verify_program(main_program)
190 191 192
        self._cuda_graph_vec = self._create_cuda_graph_vec()
        self._cuda_graph_capture_mode = ""
        self._cuda_graph_pool_id = 0
193
        # Set default mode to train
194
        self.training = True
195
        self._infer_info = ProgramInfo()
196
        self._forward_end_index_map = {}
197

198 199 200 201
        custom_white_list, custom_black_list = None, None
        tracer = framework._dygraph_tracer()
        if tracer:
            custom_white_list, custom_black_list = tracer._get_amp_op_list()
202
        # For AMP training
203
        self._amp_list = paddle.static.amp.fp16_lists.AutoMixedPrecisionLists(
204
            custom_white_list=custom_white_list,
205 206
            custom_black_list=custom_black_list,
        )
207

208 209
        # program_id -> list(scope)
        self._scope_cache = {}
X
xiongkun 已提交
210
        self._hooker = None
211

212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233
    def __call__(self, inputs):
        """
        Execute static graph by Interpreter and Return dynamic Tensors.
        """
        in_vars, out_vars = self._prepare(inputs)
        self._cast_fp16_if_pure_fp16(in_vars)
        attrs = self._prepare_attributes()

        _legacy_C_ops.run_program(
            self._valid_vars(in_vars),
            self._valid_vars(self._params),
            self._valid_vars(out_vars),
            self._create_scope_vec(
                program_id=self.program_id, use_scope_cache=True
            ),
            self._double_grads,
            self._cuda_graph_vec,
            *attrs
        )
        restored_nest_out = self._restore_out(out_vars)
        return self._remove_no_value(restored_nest_out)

X
xiongkun 已提交
234 235 236
    def set_hooker(self, hooker):
        self._hooker = hooker

237 238 239 240 241 242 243 244 245 246 247 248 249 250 251 252
    def _get_scope(self, program_id=None, use_scope_cache=False):
        if use_scope_cache:
            if program_id not in self._scope_cache:
                scope = core.Scope()
                self._scope_cache[program_id] = [scope]
                return scope
            else:
                for scope in self._scope_cache[program_id]:
                    if scope._can_reuesd:
                        return scope
                scope = core.Scope()
                self._scope_cache[program_id].append(scope)
                return scope
        else:
            return core.Scope()

253 254 255 256
    @LazyInitialized
    def _double_grads(self):
        return self._get_double_grads(self._origin_main_program)

257 258 259 260
    # whole
    @switch_to_static_graph
    def _create_program(self, is_infer_mode=False):
        if is_infer_mode:
X
xiongkun 已提交
261 262 263 264
            infer_program = self._origin_main_program.clone(
                for_test=is_infer_mode
            )
            if self._hooker:
265
                infer_program = self._hooker.after_infer(infer_program)
X
xiongkun 已提交
266
            return infer_program
267 268
        else:
            train_program = self._append_backward_desc(
269 270
                self._origin_main_program
            )
271 272 273
            # Note: Only set grad type once after initializing train program. So we put it here.
            self._set_grad_type(self._params, train_program)
            return train_program
274

275 276 277 278
    @switch_to_static_graph
    def _create_amp_program(self, is_infer_mode=False):
        amp_program = self._origin_main_program.clone(for_test=is_infer_mode)
        with program_guard(amp_program):
279 280 281
            paddle.static.amp.fp16_utils.rewrite_program(
                amp_program, self._amp_list
            )
282 283 284 285 286 287
        if is_infer_mode:
            return amp_program
        else:
            train_amp_program = self._append_backward_desc(amp_program)
            self._set_grad_type(self._params, train_amp_program)
            return train_amp_program
288

289 290 291
    @switch_to_static_graph
    def _create_pure_fp16_program(self, is_infer_mode=False):
        pure_fp16_program = self._origin_main_program.clone(
292 293
            for_test=is_infer_mode
        )
294
        with program_guard(pure_fp16_program):
295
            paddle.static.amp.fp16_utils.cast_model_to_fp16(
296 297
                pure_fp16_program, self._amp_list, use_fp16_guard=False
            )
J
Jiabin Yang 已提交
298

299
        if is_infer_mode:
300 301
            if self._hooker:
                pure_fp16_program = self._hooker.after_infer(pure_fp16_program)
302 303 304
            return pure_fp16_program
        else:
            train_pure_fp16_program = self._append_backward_desc(
305 306
                pure_fp16_program
            )
307 308
            self._set_grad_type(self._params, train_pure_fp16_program)
            return train_pure_fp16_program
309

310
    @switch_to_static_graph
311
    def _create_forward_backward_train_program(self):
312
        whole_program = self._train_program
X
xiongkun 已提交
313
        forward_end_op_index = self.get_forward_end_op_idx(whole_program)
314
        assert forward_end_op_index >= 0
315

316 317 318
        return self._get_forward_backward_program_form(
            whole_program, forward_end_op_index
        )
319

320 321
    @switch_to_static_graph
    def _create_forward_backward_train_amp_program(self):
322
        whole_program = self._train_amp_program
323 324 325
        _, forward_end_op_index = self._infer_info(
            'amp', self._create_amp_program
        )
326
        assert forward_end_op_index >= 0
327

328 329 330
        return self._get_forward_backward_program_form(
            whole_program, forward_end_op_index
        )
331 332 333

    @switch_to_static_graph
    def _create_forward_backward_train_pure_fp16_program(self):
334
        whole_program = self._train_pure_fp16_program
335 336 337
        _, forward_end_op_index = self._infer_info(
            'fp16', self._create_pure_fp16_program
        )
338
        assert forward_end_op_index >= 0
339

340 341 342
        return self._get_forward_backward_program_form(
            whole_program, forward_end_op_index
        )
343 344

    @LazyInitialized
345 346
    def _train_program(self):
        return self._create_program()
347

348
    @LazyInitialized
349
    def _infer_program(self):
350 351
        program, op_size = self._infer_info('fp32', self._create_program)
        return self._build_infer_program(program, op_size)
352

353 354 355 356 357 358
    @LazyInitialized
    def _train_amp_program(self):
        return self._create_amp_program()

    @LazyInitialized
    def _infer_amp_program(self):
359 360
        program, op_size = self._infer_info('amp', self._create_amp_program)
        return self._build_infer_program(program, op_size)
361 362 363

    @LazyInitialized
    def _train_pure_fp16_program(self):
364
        return self._create_pure_fp16_program()
365

366
    @LazyInitialized
367
    def _infer_pure_fp16_program(self):
368 369
        program, op_size = self._infer_info(
            'fp16', self._create_pure_fp16_program
370
        )
371
        return self._build_infer_program(program, op_size)
372

373
    @LazyInitialized
374 375 376
    def _train_forward_backward_program(self):
        program = self._create_forward_backward_train_program()
        return program
377 378

    @LazyInitialized
379 380 381 382
    def _train_amp_forward_backward_program(self):
        program = self._create_forward_backward_train_amp_program()
        return program

383 384 385 386
    @LazyInitialized
    def _empty_backward_program_for_eval(self):
        return paddle.static.Program()

387 388 389 390 391
    @LazyInitialized
    def _train_pure_fp16_forward_backward_program(self):
        program = self._create_forward_backward_train_pure_fp16_program()
        return program

392 393
    @LazyInitialized
    def _train_program_id(self):
394
        program_id = paddle.utils._hash_with_id(self._train_program, self)
395 396 397
        core._set_cached_executor_build_strategy(
            program_id, self._build_strategy
        )
398
        return program_id
399

400 401
    @LazyInitialized
    def _infer_program_id(self):
402
        return paddle.utils._hash_with_id(self._infer_program, self)
403

404 405
    @LazyInitialized
    def _train_amp_program_id(self):
406
        program_id = paddle.utils._hash_with_id(self._train_amp_program, self)
407 408 409
        core._set_cached_executor_build_strategy(
            program_id, self._build_strategy
        )
410 411
        return program_id

412 413
    @LazyInitialized
    def _infer_amp_program_id(self):
414
        return paddle.utils._hash_with_id(self._infer_amp_program, self)
415

416 417
    @LazyInitialized
    def _train_pure_fp16_program_id(self):
418 419 420
        program_id = paddle.utils._hash_with_id(
            self._train_pure_fp16_program, self
        )
421 422 423
        core._set_cached_executor_build_strategy(
            program_id, self._build_strategy
        )
424 425
        return program_id

426 427
    @LazyInitialized
    def _infer_pure_fp16_program_id(self):
428
        return paddle.utils._hash_with_id(self._infer_pure_fp16_program, self)
429

430 431
    @LazyInitialized
    def _param_grad_names(self):
432
        return _param_grad_names(self._train_program.desc, self._params)
433

X
xiongkun 已提交
434
    def get_forward_end_op_idx(self, program):
435 436 437
        return self._forward_end_index_map[
            paddle.utils._hash_with_id(program, self)
        ]
X
xiongkun 已提交
438

439 440
    @LazyInitialized
    def _out_grad_names(self):
441 442
        return _out_grad_names(
            self._train_program.desc,
X
xiongkun 已提交
443
            self.get_forward_end_op_idx(self._train_program),
444 445
            len(self._outputs.var_ids),
        )
446

447
    @property
448 449 450 451 452 453 454 455 456 457 458 459 460 461
    def program(self):
        """
        Return current train or eval program.
        """
        if self.training:
            return self.train_program
        else:
            return self.infer_program

    @property
    def program_id(self):
        """
        Return current train or eval program hash id.
        """
J
Jiabin Yang 已提交
462 463
        from paddle.amp.auto_cast import _in_amp_guard, _in_pure_fp16_guard

464 465 466 467 468 469 470 471 472 473 474 475 476 477 478
        if self.training:
            if _in_amp_guard():
                return self._train_amp_program_id
            elif _in_pure_fp16_guard():
                return self._train_pure_fp16_program_id
            else:
                return self._train_program_id
        else:
            if _in_amp_guard():
                return self._infer_amp_program_id
            elif _in_pure_fp16_guard():
                return self._infer_pure_fp16_program_id
            else:
                return self._infer_program_id

479 480
    @property
    def train_program(self):
J
Jiabin Yang 已提交
481 482
        from paddle.amp.auto_cast import _in_amp_guard, _in_pure_fp16_guard

483 484 485 486 487 488 489 490 491
        if _in_amp_guard():
            return self._train_amp_program
        elif _in_pure_fp16_guard():
            return self._train_pure_fp16_program
        else:
            return self._train_program

    @property
    def infer_program(self):
J
Jiabin Yang 已提交
492 493
        from paddle.amp.auto_cast import _in_amp_guard, _in_pure_fp16_guard

494 495 496 497 498 499 500 501 502
        if _in_amp_guard():
            return self._infer_amp_program
        elif _in_pure_fp16_guard():
            return self._infer_pure_fp16_program
        else:
            return self._infer_program

    @property
    def forward_program(self):
J
Jiabin Yang 已提交
503 504
        from paddle.amp.auto_cast import _in_amp_guard, _in_pure_fp16_guard

505 506 507 508 509 510 511 512 513 514 515 516 517
        if self.training:
            if _in_amp_guard():
                progs = self._train_amp_forward_backward_program
            elif _in_pure_fp16_guard():
                progs = self._train_pure_fp16_forward_backward_program
            else:
                progs = self._train_forward_backward_program
            return progs[0]
        else:
            return self.infer_program

    @property
    def backward_program(self):
J
Jiabin Yang 已提交
518 519
        from paddle.amp.auto_cast import _in_amp_guard, _in_pure_fp16_guard

520 521 522 523 524 525 526 527 528 529 530 531 532 533 534 535 536 537 538 539
        if self.training:
            if _in_amp_guard():
                progs = self._train_amp_forward_backward_program
            elif _in_pure_fp16_guard():
                progs = self._train_pure_fp16_forward_backward_program
            else:
                progs = self._train_forward_backward_program
            return progs[1]
        else:
            """
            Can't just return paddle.static.Program(), because self.backward_program is a property,
            whenever we call this method, a tmp Program() object is created and is gc immediatly
            after executed the following line in PartialProgramLayer.__call__.

            >>> self.backward_program.desc.block(0),

            When we access RunProgramAPI, it's possible to get an invalid backward_program address.
            """
            return self._empty_backward_program_for_eval

540 541 542 543 544 545 546 547 548 549 550 551
    def _verify_program(self, main_program):
        """
        Verify that the program parameter is initialized, prune some unused params,
        and remove redundant op callstack.
        """
        # 1. Check all params from main program can be found in self._params
        self._check_params_all_inited(main_program)
        # 2. Prune the parameters not used anywhere in the program.
        self._prune_unused_params(main_program)

        return main_program

552 553 554
    def prepare_gradient_aggregation(
        self, start_idx, main_program, target_program
    ):
555 556 557 558 559 560 561
        """
        Why we need add gradient aggregation operation ?
        In some cases, if non leaf nodes are used as output, gradient overwriting will occur, such as
        def forward(self, in):
            x = 2 * in  # <---- x is a non-leaf node in program.
            y = x + 3
            return x, y
562

563 564 565 566 567 568 569 570 571
        loss = forward(in)[0].sum()
        loss.backward()  # <----- x@grad will be overwrited by elementwise_add_grad Op
        """

        def _need_aggregation(var):
            """
            if exist a op whose inputs is var, then return True
            """
            if not isinstance(var, framework.Variable) or var.type not in [
572 573
                core.VarDesc.VarType.LOD_TENSOR,
                core.VarDesc.VarType.SELECTED_ROWS,
574 575 576 577 578 579 580 581 582 583 584 585 586 587 588 589
            ]:
                return False
            if var.dtype not in [paddle.float32, paddle.float64]:
                return False
            for op in main_program.block(0).ops:
                for in_arg in op.input_arg_names:
                    if in_arg == var.name:
                        return True
            return False

        def _insert_aggregation_ops_for_var(target_program, var):
            suffix = "@dy2static"
            var_grad_name = var.grad_name
            new_grad_name = var.name + suffix + "@GRAD"
            finded_ops = list(
                filter(
590 591 592 593 594 595 596 597 598 599
                    lambda x: x[0] >= start_idx
                    and any(
                        [
                            out_arg == var_grad_name
                            for out_arg in x[1].output_arg_names
                        ]
                    ),
                    enumerate(target_program.block(0).ops),
                )
            )
600 601 602 603 604 605

            # len(finded_ops) may equals zero when stop_gradient works.
            # len(finded_ops) may > 1, because we may have fill_constant op.
            if len(finded_ops) == 0:
                return None
            # step1: create a new var named var.name@GRAD
606 607 608 609 610 611
            target_program.block(0).create_var(
                name=new_grad_name,
                type=var.type,
                dtype=var.dtype,
                shape=var.shape,
            )
612 613 614 615 616 617 618 619 620 621
            # step2: rename the var.name@GRAD to var.name@GRAD@dy2static
            for idx, op in finded_ops:
                op._rename_input(var_grad_name, new_grad_name)
                op._rename_output(var_grad_name, new_grad_name)
            # step3: insert sum op to aggregate the gradient.
            #        var.name@GRAD = sum(var.name@dy2static@GRAD, var.name@GRAD)
            target_program.block(0)._insert_op(
                finded_ops[-1][0] + 1,
                type='sum',
                inputs={'X': [var_grad_name, new_grad_name]},
622 623
                outputs={"Out": var_grad_name},
            )
624 625 626
            return None

        to_processed_vars = list(
627 628
            filter(_need_aggregation, self._outputs.tolist())
        )
629 630 631
        for _var in to_processed_vars:
            _insert_aggregation_ops_for_var(target_program, _var)

632
    @switch_to_static_graph
633
    def _append_backward_desc(self, main_program):
634 635
        # make sure all status of is_test are False in train mode.
        program = _change_is_test_status(main_program.clone(), is_test=False)
X
xiongkun 已提交
636
        if self._hooker:
637
            program = self._hooker.before_append_backward(program)
638
        targets = []
639
        for out in self._outputs.tolist():
640 641 642
            if isinstance(out, framework.Variable):
                targets.append(program.global_block().var(out.name))

X
xiongkun 已提交
643
        start_idx = len(program.block(0).ops) + len(self._outputs.tolist())
644
        if targets:
645 646
            # TODO(CZ): later when use cinn, set_prim_all_enabled and check_and_set_prim_all_enabled will be set at else branch.
            core.check_and_set_prim_all_enabled()
647
            start_idx = len(program.block(0).ops) + len(self._outputs.tolist())
648
            backward.gradients(targets=targets, inputs=[])
649

X
xiongkun 已提交
650 651
            if self._hooker:
                program, start_idx = self._hooker.after_append_backward(
652
                    program, start_idx
X
xiongkun 已提交
653
                )
654 655 656
            self.prepare_gradient_aggregation(
                start_idx + 1, main_program, program
            )
657

X
xiongkun 已提交
658
        self._forward_end_index_map[
659
            paddle.utils._hash_with_id(program, self)
X
xiongkun 已提交
660
        ] = start_idx - len(self._outputs.tolist())
661 662
        return program

663 664 665
    def _prune_unused_params(self, program):
        """
        Prune the parameters not used anywhere in the program.
H
hjyp 已提交
666
        The `@to_static` may only decorated a sub function which
667 668 669 670 671 672
        contains some unused parameters created in `__init__`.
        So prune these parameters to avoid unnecessary operations in
        `run_program_op`.
        """
        required_params = []
        for param in self._params:
673
            found_param = False
674
            for block in program.blocks:
675
                for op in block.ops:
676 677 678 679
                    if (
                        param.name in op.input_arg_names
                        or param.name in op.output_arg_names
                    ):
680 681 682 683
                        required_params.append(param)
                        found_param = True
                        break
                if found_param:
684 685 686 687
                    break

        self._params = required_params

688 689 690 691 692 693
    def _get_double_grads(self, program):
        double_grads = []
        for block in program.blocks:
            for name in block.vars:
                if "@GRAD" in name:
                    var_desc = block.vars[name].desc
J
Jiabin Yang 已提交
694
                    var_base = None
695
                    if not framework.global_var._in_eager_mode_:
696 697 698 699 700 701 702
                        var_base = core.VarBase(
                            var_desc.dtype(),
                            var_desc.shape(),
                            var_desc.name(),
                            var_desc.type(),
                            False,
                        )
J
Jiabin Yang 已提交
703
                    else:
704 705 706 707 708 709 710
                        var_base = core.eager.Tensor(
                            var_desc.dtype(),
                            var_desc.shape(),
                            var_desc.name(),
                            var_desc.type(),
                            False,
                        )
711
                    double_grads.append(var_base)
712
        return self._valid_vars(double_grads)
713

714
    def _cast_fp16_if_pure_fp16(self, in_vars):
J
Jiabin Yang 已提交
715 716
        from paddle.amp.auto_cast import _in_pure_fp16_guard

717 718 719 720 721 722 723 724 725 726
        if _in_pure_fp16_guard():
            for i, var in enumerate(in_vars):
                name = var.name
                if (
                    self.program.global_block().has_var(name)
                    and self.program.global_block().var(name).dtype
                    == paddle.float16
                ):
                    in_vars[i] = var.astype('float16')
                    in_vars[i].name = name
727

728
    def _prepare_attributes(self):
729
        attrs = [
730 731 732 733
            'forward_global_block',
            self.forward_program.desc.block(0),
            'backward_global_block',
            self.backward_program.desc.block(0),
734 735 736 737
            'is_test',
            not self.training,
            'program_id',
            self.program_id,
738
        ]
X
xiongkun 已提交
739

740 741 742 743 744 745 746 747 748 749 750 751
        if self.training:
            # NOTE: In the case of higher-order gradient, the names of the parameter grads may be like
            # `grad/grad/grad/linear_0.w_0@GRAD` instead of simply `linear_0.w_0@GRAD`, so we get
            # the correct names of the parameter grads from program. And out grads are similar to above.
            attrs.extend(
                (
                    'param_grad_names',
                    self._param_grad_names,
                    'out_grad_names',
                    self._out_grad_names,
                )
            )
752 753
        if self._cuda_graph_capture_mode:
            attrs.extend(
754 755 756 757 758 759 760
                (
                    'cuda_graph_capture_mode',
                    self._cuda_graph_capture_mode,
                    'cuda_graph_pool_id',
                    self._cuda_graph_pool_id,
                )
            )
761
        return attrs
762

763 764 765 766 767 768 769 770 771 772 773 774
    @switch_to_static_graph
    def _build_infer_program(self, infer_program, forward_end_op_index):
        forward_skip_vars = self._parse_skip_gc_vars(infer_program)
        builded_infer_program = add_build_strategy_for(
            infer_program,
            0,
            forward_end_op_index,
            self._build_strategy,
            forward_skip_vars,
        )
        self._apply_inplace_pass(builded_infer_program, None)
        return builded_infer_program
775

776
    @switch_to_static_graph
777 778 779
    def _get_forward_backward_program_form(
        self, whole_program, forward_end_op_index
    ):
780 781
        # NOTE(dev): We apply build_strategy for backward firstly to
        # avoid skipping more gc variables.
782
        backward_start_op_index = forward_end_op_index + len(
783 784
            self._outputs.var_ids
        )
785
        backward_end_op_index = whole_program.desc.block(0).op_size()
786 787 788 789 790
        # For Backward process in CINN, all param@GRAD shoule be skipped for GC, because
        # they will be shared in scope and used by optimizer.
        backward_skip_vars = (
            self._parse_skip_gc_vars(whole_program) + self._param_grad_names
        )
791
        backward_builded_program = add_build_strategy_for(
792 793 794 795
            whole_program,
            backward_start_op_index,
            backward_end_op_index,
            self._build_strategy,
796 797 798 799 800 801 802 803 804 805 806 807
            backward_skip_vars,
        )

        forward_skip_vars = self._parse_skip_gc_vars(
            whole_program, backward_builded_program
        )
        forward_builded_program = add_build_strategy_for(
            whole_program,
            0,
            forward_end_op_index,
            self._build_strategy,
            forward_skip_vars,
808
        )
809

810 811 812
        self._apply_inplace_pass(
            forward_builded_program, backward_builded_program
        )
813 814 815 816 817 818
        return [forward_builded_program, backward_builded_program]

    def _apply_inplace_pass(self, forward_program, backward_program):
        attr_types = {
            "use_cuda": "bool",
            "mem_opt_skip_vars": "list[str]",
819
            "for_partial_block": "bool",
820 821 822 823
        }
        empty_startup_program = paddle.static.Program()
        use_cuda = True if core.is_compiled_with_cuda() else False
        # skip data var
824 825 826 827
        forward_mem_opt_skip_vars = self._parse_skip_gc_vars(
            forward_program, backward_program
        )
        backward_mem_opt_skip_vars = self._parse_skip_gc_vars(forward_program)
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
        if forward_program:
            attrs = {
                "use_cuda": use_cuda,
                "mem_opt_skip_vars": forward_mem_opt_skip_vars,
                "for_partial_block": True,
            }
            _apply_pass(
                forward_program,
                empty_startup_program,
                "buffer_shared_inplace_pass",
                attrs,
                attr_types,
            )
        if backward_program:
            attrs = {
                "use_cuda": use_cuda,
                "mem_opt_skip_vars": backward_mem_opt_skip_vars,
                "for_partial_block": True,
            }
            _apply_pass(
                backward_program,
                empty_startup_program,
                "buffer_shared_inplace_pass",
                attrs,
                attr_types,
            )
854

855 856 857 858 859 860 861 862 863 864 865 866 867 868 869 870 871 872 873 874 875 876 877 878 879 880 881
    @LazyInitialized
    def _inout_var_names(self):
        """
        Returns Variable Names from self._inputs and self.outputs
        """
        var_names = []
        for var in self._inputs:
            if isinstance(var, paddle.fluid.framework.Variable):
                var_names.append(var.desc.name())
        for var in self._outputs:
            if isinstance(var, paddle.fluid.framework.Variable):
                var_names.append(var.desc.name())
        return var_names

    def _parse_skip_gc_vars(self, program, backward_program=None):
        """
        Parse variables that need to skip GC after execute it.
        If specify backward_program, it will keep the variables used in backward.
        """
        # skip data var, DO NOT ignore this deepcopy
        skip_vars = deepcopy(self._inout_var_names)
        for var_name, var in program.global_block().vars.items():
            if var.is_data:
                skip_vars.append(var_name)

        if backward_program:
            for var_name in core.parse_safe_eager_deletion_skip_vars(
882
                backward_program.desc, True
883 884 885 886
            ):
                skip_vars.append(var_name)
        return skip_vars

887 888 889 890 891
    def _prepare(self, inputs):
        """
        Prepare inputs, outputs, attrs.
        """
        assert isinstance(inputs, (tuple, list))
892
        # Flatten inputs with nested structure into single list.
893
        flatten_inputs = paddle.utils.flatten(inputs)
894 895
        # Convert variable into VarBase and feed in training data.
        input_vars = []
896
        expected_place = framework._current_expected_place()
897
        for i, value in enumerate(flatten_inputs):
898
            if isinstance(value, np.ndarray):
J
Jiabin Yang 已提交
899
                var = None
900
                if not framework.global_var._in_eager_mode_:
901 902 903 904 905 906 907
                    var = core.VarBase(
                        value=value,
                        name=self._inputs[i].desc.name(),
                        persistable=False,
                        place=expected_place,
                        zero_copy=True,
                    )
J
Jiabin Yang 已提交
908
                else:
909 910 911 912 913 914 915
                    var = core.eager.Tensor(
                        value=value,
                        name=self._inputs[i].desc.name(),
                        persistable=False,
                        place=expected_place,
                        zero_copy=True,
                    )
J
Jiabin Yang 已提交
916
            elif isinstance(value, (core.VarBase, core.eager.Tensor)):
917 918 919 920
                # NOTE(Aurelius84): If var is on CPUPlace, it will be transformed multi times
                # into CUDAPlace when it's as input of multi Ops. so we move it in advance
                # to avoid this problem.
                if value.stop_gradient and not value.place._equals(
921 922
                    expected_place
                ):
923 924
                    var = value._copy_to(expected_place, False)
                    var.stop_gradient = True
925 926
                else:
                    var = value
927
                var.name = self._inputs[i].desc.name()
928 929 930
            else:
                continue
            input_vars.append(var)
931

932 933 934
        # mapping from name(string) -> VarBase
        out_varbase_map = {}

935 936
        def create_out(var_id):
            var = self._outputs[var_id]
937
            assert isinstance(var, framework.Variable)
938
            var_desc = var.desc
J
Jiabin Yang 已提交
939
            varbase = None
940 941 942 943

            if var_desc.name() in out_varbase_map:
                return out_varbase_map[var_desc.name()]

944
            if not framework.global_var._in_eager_mode_:
945 946 947 948 949 950 951
                var_base = core.VarBase(
                    var_desc.dtype(),
                    var_desc.shape(),
                    var_desc.name(),
                    var_desc.type(),
                    False,
                )
J
Jiabin Yang 已提交
952
            else:
953 954 955 956 957 958 959
                var_base = core.eager.Tensor(
                    var_desc.dtype(),
                    var_desc.shape(),
                    var_desc.name(),
                    var_desc.type(),
                    False,
                )
960
            var_base.stop_gradient = var.stop_gradient
961
            out_varbase_map[var_desc.name()] = var_base
962 963 964 965 966 967
            return var_base

        # Create VarBase to receive output data.
        out_vars = list(map(create_out, self._outputs.var_ids))

        return input_vars, out_vars
968

969
    def _create_scope_vec(self, program_id=None, use_scope_cache=False):
970
        # Hold forward variables
J
Jiabin Yang 已提交
971
        tmp_scope_vec = None
972 973 974
        inner_scope = self._get_scope(
            program_id=program_id, use_scope_cache=use_scope_cache
        )
975
        if not framework.global_var._in_eager_mode_:
976 977 978 979 980 981 982
            tmp_scope_vec = core.VarBase(
                core.VarDesc.VarType.FP32,
                [],
                "program_out_scope",
                core.VarDesc.VarType.STEP_SCOPES,
                True,
            )
J
Jiabin Yang 已提交
983
            tmp_scope_vec.value().set_scope(inner_scope)
984 985
        else:
            tmp_scope_vec = [inner_scope]
986
        return tmp_scope_vec
987

988
    def _create_cuda_graph_vec(self):
989 990 991 992 993 994 995
        var = core.VarBase(
            core.VarDesc.VarType.FP32,
            [],
            "cuda_graph",
            core.VarDesc.VarType.RAW,
            True,
        )
996 997 998
        var.stop_gradient = True
        return var

999 1000 1001 1002 1003 1004 1005 1006 1007
    def _restore_out(self, out_vars):
        """
        Restores same nested outputs by only replacing the Variable with VarBase.
        """

        flatten_outputs = self._outputs.tolist()
        for i, idx in enumerate(self._outputs.var_ids):
            flatten_outputs[idx] = out_vars[i]
        outs = self._outputs.restore(flatten_outputs)
1008
        if outs is not None and len(outs) == 1:
1009 1010 1011 1012
            outs = outs[0]

        return outs

1013 1014 1015 1016
    @switch_to_static_graph
    def _clone_for_test(self, main_program):
        return main_program.clone(for_test=True)

1017
    def _is_no_value(self, var):
1018 1019 1020
        if isinstance(var, (core.VarBase, core.eager.Tensor)) and var.shape == [
            1
        ]:
1021 1022
            # NOTE: .numpy() will insert MemcpySync operation, it hits performance.
            if var.numpy()[0] == RETURN_NO_VALUE_MAGIC_NUM:
1023 1024 1025 1026 1027 1028 1029
                return True
        return False

    def _remove_no_value(self, out_vars):
        """
        Removes invalid value for various-length return statement
        """
J
Jiabin Yang 已提交
1030
        if isinstance(out_vars, (core.VarBase, core.eager.Tensor)):
1031 1032 1033 1034 1035
            if self._is_no_value(out_vars):
                return None
            return out_vars
        elif isinstance(out_vars, (tuple, list)):
            if isinstance(out_vars, tuple):
1036 1037 1038
                res = tuple(
                    var for var in out_vars if not self._is_no_value(var)
                )
1039 1040 1041 1042
            else:
                # isinstance(out_vars, list)
                res = [var for var in out_vars if not self._is_no_value(var)]

1043
            has_removed = len(out_vars) > len(res)
1044 1045 1046 1047 1048 1049 1050 1051 1052 1053
            # len(out_vars) > len(res) means we have removed var. This is
            # preventing out_vars is empty or just one element at the beginning
            if len(res) == 0 and has_removed:
                return None
            elif len(res) == 1 and has_removed:
                return res[0]
            return res

        return out_vars

1054
    def _set_grad_type(self, params, train_program):
1055 1056 1057 1058 1059 1060 1061 1062
        # NOTE: if user set sparse gradient mode, the param's gradient
        # will be SelectedRows, not LoDTensor. But tracer will just
        # set param grad VarBase by forward VarBase(LoDTensor)
        # If we don't change grad_var type here, RunProgramOp need
        # transform SelectedRows to LoDTensor forcibly, it may not
        # be user wanted result.
        for param in params:
            grad_name = param.name + core.grad_var_suffix()
1063
            grad_var = train_program.desc.block(0).find_var(grad_name.encode())
1064 1065 1066 1067 1068
            # NOTE: cannot find var desc maybe no problem, such as in batch_norm
            if grad_var is None:
                continue
            param._set_grad_type(grad_var.type())

1069 1070 1071 1072 1073 1074 1075 1076 1077 1078 1079 1080 1081
    def _remove_op_call_stack(self, main_program):
        """
        Remove op's python call stack with redundant low-level error messages related to
        transforamtions to avoid confusing users.
        """
        assert isinstance(main_program, framework.Program)
        for block in main_program.blocks:
            for op in block.ops:
                if op.has_attr("op_callstack"):
                    op._remove_attr("op_callstack")

        return main_program

1082 1083 1084 1085 1086 1087 1088 1089 1090 1091
    def _check_params_all_inited(self, main_program):
        """
        Check all params from main program are already initialized, see details as follows:
            1. all parameters in self._params should be type `framework.ParamBase` which are created in dygraph.
            2. all parameters from transformed program can be found in self._params.
               Because they share same data with ParamBase of original dygraph.
        """
        if not isinstance(self._params, (list, tuple)):
            raise TypeError(
                "Type of self._params in PartialProgramLayer should be list or tuple, but received %s."
1092 1093
                % type(self._params)
            )
1094

1095 1096 1097
        param_and_buffer_names_set = set()
        for i, var in enumerate(self._params):
            # self._params constains parameters and buffers with persistable=True.
J
Jiabin Yang 已提交
1098
            if not isinstance(var, (core.VarBase, core.eager.Tensor)):
1099
                raise TypeError(
1100 1101 1102 1103
                    'Type of self._params[{}] in PartialProgramLayer should be Parameter or Variable, but received {}.'.format(
                        i, type(var)
                    )
                )
1104
            param_and_buffer_names_set.add(var.name)
1105 1106

        for block in main_program.blocks:
1107
            for name, var in block.vars.items():
1108
                if isinstance(var, framework.Parameter):
1109
                    if name not in param_and_buffer_names_set:
1110
                        raise ValueError(
1111 1112 1113 1114 1115 1116
                            "\n\tWe don't support to define layer with parameters in the function decorated by `@to_static`."
                            "\n\tBut we found parameter(%s) was created in the decorated function."
                            "\n"
                            "\n\tRevise suggestion: "
                            "\n\t\t1. Please ensure all your sublayers are inheritted from nn.Layer."
                            "\n\t\t2. Please use nn.ParameterList and nn.LayerList as container instead of using a native Python container such as List"
1117 1118
                            % name
                        )
1119

1120
    def _valid_vars(self, vars):
1121
        return vars if vars else None
1122

1123 1124 1125 1126 1127 1128

def partial_program_from(concrete_program):
    inputs = concrete_program.inputs
    if inputs and isinstance(inputs[0], layers.Layer):
        inputs = inputs[1:]

1129 1130 1131 1132 1133 1134 1135
    return PartialProgramLayer(
        concrete_program.main_program,
        inputs,
        concrete_program.outputs,
        concrete_program.parameters,
        **concrete_program.kwargs
    )
1136 1137 1138


@switch_to_static_graph
1139
def add_build_strategy_for(
1140
    program, start_op_index, end_op_index, build_strategy=None, skip_vars=None
1141 1142
):
    if start_op_index < end_op_index:
1143 1144
        compiled_program = paddle.static.CompiledProgram(
            core.Graph(program.desc, start_op_index, end_op_index),
1145 1146
            build_strategy=build_strategy,
        )
1147 1148 1149
        if skip_vars:
            # TODO(Aurelius84): Need to unify name with C++, such as kSkipVarNames.
            compiled_program._graph.set("skip_gc_vars", set(skip_vars))
1150 1151 1152
        compiled_program._compile(
            core.Scope(), framework._current_expected_place()
        )
1153 1154 1155 1156 1157
        ir_graph = framework.IrGraph(compiled_program._graph)
        builded_program = ir_graph.to_program()
        if hasattr(compiled_program._program, 'lr_sheduler'):
            builded_program.lr_sheduler = compiled_program._program.lr_sheduler
    else:
X
xiongkun 已提交
1158
        # can't just create a new program, we need copy the vardesc.
1159
        builded_program = paddle.static.Program()
X
xiongkun 已提交
1160 1161
        for var in program.block(0).vars.values():
            builded_program.block(0)._clone_variable(var, False)
1162
    return builded_program