program_translator.py 61.2 KB
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# Copyright (c) 2020 PaddlePaddle Authors. All Rights Reserved.
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#
# 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.

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import collections
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import inspect
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import textwrap
import threading
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import warnings
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import weakref
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from paddle.fluid import core, framework
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from paddle.fluid.data_feeder import check_type
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from paddle.fluid.dygraph.base import (
    _switch_declarative_mode_guard_,
    param_guard,
    switch_to_static_graph,
)
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from paddle.framework import in_dynamic_mode
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from paddle.nn.layer import layers
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from paddle.utils import flatten, gast
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from . import error, logging_utils
from .ast_transformer import DygraphToStaticAst
from .function_spec import (
    FunctionSpec,
    _hash_spec_names,
    get_buffers,
    get_parameters,
)
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from .origin_info import (
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    attach_origin_info,
    create_and_update_origin_info_map,
    update_op_callstack_with_origin_info,
)
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from .partial_program import PartialProgramLayerHook, partial_program_from
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from .utils import (
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    ALREADY_D2S,
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    NO_SHAPE_VAR_TYPE,
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    ast_to_func,
    ast_to_source_code,
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    backend_guard,
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    func_to_source_code,
    input_specs_compatible,
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    is_paddle_func,
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    make_hashable,
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    prim_or_cinn_is_enabled,
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    type_name,
    unwrap,
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)
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__all__ = []
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# For each traced function, we set `max_traced_program_count` = 10 to consider caching performance.
# Once exceeding the threshold, we will raise warning to users to make sure the conversion is as expected.
MAX_TRACED_PROGRAM_COUNT = 10

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CONVERSION_OPTIONS = "__jst_not_to_static"

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def synchronized(func):
    func.__lock__ = threading.Lock()

    def lock_func(*args, **kwargs):
        with func.__lock__:
            return func(*args, **kwargs)

    return lock_func


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class FunctionCache:
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    """
    Caches the transformed functions to avoid redundant conversions of the same function.
    """

    def __init__(self):
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        # Caches the converted static functions. {dygraph_func: static_func}
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        self._converted_static_func_caches = weakref.WeakKeyDictionary()
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        # Caches the converted ast node for same source code. {source_code: ast_root}
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        self._code_to_ast_caches = {}
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        self._dygraph_to_static = DygraphToStaticAst()
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    def convert_with_cache(self, func):
        """
        Returns the cached static function or converts it when first encounters the function.
        """
        # If hit cache, return it directly.
        static_func = self._converted_static_func_caches.get(func, None)
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        if static_func is None:
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            static_func = self._convert(func)
            self._converted_static_func_caches[func] = static_func
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        return static_func

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    def _convert(self, func):
        """
        Converts dygraph function into static function. For two functions with same dedent code,
        the second function will reuse the transformed ast node of previous one.

        For example:
            # A.py
            def foo(x, y):
                z = x + y
                return z

            # B.py
            def foo(x, y):
                z = x + y
                return z

        If the conversion of A.foo happens after B.foo, it will reuse the transformed ast node of B.foo
        to speed up the conversion.
        """
        # Note: In Python2, it will raise OSError when inspect function
        # with decorator directly and function.__wrapped__ holds the actual function.
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        func = unwrap(func)
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        source_code = func_to_source_code(func)
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        # TODO(liym27):
        #  Consider this case: source_code in self._code_to_ast_caches,
        #  but actually they are methods in different classes.
        #  Maybe use (__class__, source_code) as key
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        if source_code in self._code_to_ast_caches:
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            root = self._code_to_ast_caches[source_code]
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        else:
            root = gast.parse(source_code)
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            root = attach_origin_info(root, func)
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            root = self._dygraph_to_static.get_static_ast(root)
            self._code_to_ast_caches[source_code] = root
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        # Get static function from AST
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        static_func, file_name = ast_to_func(root, func)
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        create_and_update_origin_info_map(root, static_func)
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        return static_func
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    def exist(self, func):
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        return func in self._converted_static_func_caches
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_CACHE_LOCK = threading.Lock()
_FUNCTION_CACHE = FunctionCache()


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def convert_to_static(function):
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    """
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    Transforms function of dygraph into static function using the cache mechanism.
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    Note(dev): It will return function.__func__ if encountering class method.

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    Args:
        function(callable): The function with dygraph layers that will be converted into static layers.
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    """
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    if getattr(function, ALREADY_D2S, None):
        return function
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    # Return directly if decorated with @not_to_static and DO NOT Cache it
    options = getattr(function, CONVERSION_OPTIONS, None)
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    # or ignore paddle api
    need_skip = (options is not None and options.not_convert) or is_paddle_func(
        function
    )
    if need_skip:
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        return function.__func__ if inspect.ismethod(function) else function

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    with _CACHE_LOCK:
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        static_func = _FUNCTION_CACHE.convert_with_cache(function)
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        setattr(static_func, ALREADY_D2S, True)
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        return static_func


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class CacheKey:
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    """
    Cached key for ProgramCache.
    """
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    __slots__ = [
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        'function_spec',
        'input_args_with_spec',
        'input_kwargs_with_spec',
        'class_instance',
        'kwargs',
        '_spec_names_id',
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    ]
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    def __init__(
        self,
        function_spec,
        input_args_with_spec,
        input_kwargs_with_spec,
        class_instance,
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        **kwargs,
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    ):
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        """
        Initializes a cache key.
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        Args:
            functions_spec(FunctionSpec): a FunctionSpec instance of decorated function.
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            input_args_with_spec(list[InputSpec]): actual input args with some arguments replaced by InputSpec.
            input_kwargs_with_spec(list[{string:InputSpec}]): actual input kwargs with some arguments replaced by InputSpec.
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            class_instance(object): a instance of class `Layer`.
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            **kwargs(dict): manage other arguments used for better scalability
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        """
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        self.function_spec = function_spec
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        self.input_args_with_spec = input_args_with_spec
        self.input_kwargs_with_spec = input_kwargs_with_spec
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        self.class_instance = class_instance
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        # NOTE: `kwargs` is usually not considered as basic member for `__hash__`
        self.kwargs = kwargs
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        self._spec_names_id = _hash_spec_names(
            input_args_with_spec, input_kwargs_with_spec
        )
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    @classmethod
    def from_func_and_args(cls, function_spec, args, kwargs, class_instance):
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        """
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        Generated a CacheKey instance by given inputs.

        Args:
            functions_spec(FunctionSpec): a FunctionSpec instance of decorated function.
            args(tuple): tuple of actual inputs arguments.
            kwargs(dict): dict of actual inputs keyword arguments.
            class_instance(object): a instance of class `Layer`.
        """
        # 1. filter `self` in args
        if args and isinstance(args[0], layers.Layer):
            args = args[1:]
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        # 2. convert tensor and numpy array into InputSpec
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        _args, _kwargs = function_spec.unified_args_and_kwargs(args, kwargs)
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        (
            input_args_with_spec,
            input_kwargs_with_spec,
        ) = function_spec.args_to_input_spec(_args, _kwargs)
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        # 3. check whether hit the cache or build a new program for the input arguments
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        return CacheKey(
            function_spec,
            input_args_with_spec,
            input_kwargs_with_spec,
            class_instance,
        )
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    def __hash__(self):
        error_msg = "Arguments to a `@paddle.jit.to_static` must be a hashable Python objects (or nested structures of these types)."
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        with_hook = self.kwargs.get("with_hook", False)
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        is_train = self.kwargs.get("is_train", False)
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        return hash(
            (
                id(self.function_spec),
                make_hashable(self.input_args_with_spec, error_msg),
                make_hashable(self.input_kwargs_with_spec, error_msg),
                self._spec_names_id,
                self.class_instance,
                with_hook,
                is_train,
            )
        )
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    def __eq__(self, other):
        return (type(self) is type(other)) and hash(self) == hash(other)

    def __neq__(self, other):
        return not self == other

    def __repr__(self):
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        return "id(function_spec): {}, input_args_with_spec: {}, input_kwargs_with_spec: {}, class_instance: {}".format(
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            id(self.function_spec),
            self.input_args_with_spec,
            self.input_kwargs_with_spec,
            self.class_instance,
        )
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def unwrap_decorators(func):
    """
    Unwraps a decorated function and returns the decorator list and inner target.
    """
    decorators = []
    cur = func
    while True:
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        if isinstance(cur, StaticFunction):
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            decorators.append(cur)
            # Note: if `cur` is a method, keep it as bound method of class.
            instance = cur._class_instance
            if instance is not None:
                cur = cur.dygraph_function.__get__(instance)
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            else:
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                cur = cur.dygraph_function
        else:
            break
    return decorators, cur
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class StaticFunction:
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    """
    Wrapper class to Manage program conversion of decorated function.

    """

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    def __init__(self, function, input_spec=None, **kwargs):
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        """
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        Initializes a `StaticFunction`.
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        Args:
            function(callable): A function or method that will be converted into static program.
            input_spec(list[InputSpec]): list of InputSpec to specify the `shape/dtype/name` information for each input argument, default None.
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            **kwargs(dict): other arguments like `build_strategy` et.al.
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        """
        # save the instance `self` while decorating a method of class.
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        if inspect.ismethod(function):
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            self._dygraph_function = function.__func__
            self._class_instance = function.__self__
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            if not hasattr(self._class_instance, '_original_funcs'):
                raise TypeError(
                    "When using 'to_static' to convert method of a class, "
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                    "please ensure the class inherits from nn.Layer"
                )
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            self._class_instance._original_funcs[
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                function.__name__
            ] = self._dygraph_function
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        else:
            self._dygraph_function = function
            self._class_instance = None

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        if input_spec is not None and prim_or_cinn_is_enabled(
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            kwargs.get("build_strategy", None), kwargs.get("backend", None)
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        ):
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            from paddle.static import InputSpec

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            for spec in flatten(input_spec):
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                if isinstance(spec, InputSpec) and -1 in spec.shape:
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                    input_spec = None
                    warnings.warn(
                        'Now prim and cinn do not support -1 shape, but input_spec has -1 shape so we set it to None.'
                    )
                    break

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        self._input_spec = input_spec
        self._function_spec = FunctionSpec(function, input_spec)
        self._program_cache = ProgramCache()
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        self._descriptor_cache = weakref.WeakKeyDictionary()
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        # Note: Hold a reference to ProgramTranslator for switching `enable_to_static`.
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        self._program_trans = ProgramTranslator()
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        self._kwargs = kwargs
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        self._training = True
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        self._cuda_graph_capture_mode = ""
        self._cuda_graph_pool_id = 0
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        self._property = kwargs.get("property", False)

    @property
    def is_property(self):
        # whether is class proproty to be exported.
        return self._property

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    def train(self):
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        if (
            isinstance(self._class_instance, layers.Layer)
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            and self._class_instance.training is False
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        ):
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            raise RuntimeError(
                "Failed to switch train mode. {} is a Layer's method, "
                "please use Layer.train() to switch train mode.".format(
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                    self.dygraph_function
                )
            )
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        self._training = True

    def eval(self):
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        if (
            isinstance(self._class_instance, layers.Layer)
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            and self._class_instance.training is True
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        ):
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            raise RuntimeError(
                "Failed to switch eval mode. {} is a Layer's method, "
                "please use Layer.eval() to switch eval mode.".format(
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                    self.dygraph_function
                )
            )
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        self._training = False
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    def __get__(self, instance, owner):
        """
        Overrides this method to parse the class instance and call bound method correctly.

        For example:
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            '''
            class Net(Layer):
                def __init__(self):
                    pass
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                @paddle.jit.to_static
                def forward(self, x, y):
                    return x + y

            net = Net()
            out = net(x, y)
            '''
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        In above case, `net(x, y)` will call `net.forward(x, y)` firstly that is a bound method
        of `Net` instance. After decorated by `@paddle.jit.to_static`, it will firstly to call `__get__`
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        to parse the class instance correctly instead of the `StaticFunction` instance.
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        """
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        if instance not in self._descriptor_cache:
            if instance is None:
                return self
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            # Note(Aurelius84): To construct new instance of StaticFunction when we
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            # first encouter the bound function of layer and cache it.
            new_static_layer = self._clone()
            new_static_layer._class_instance = instance
            self._descriptor_cache[instance] = new_static_layer

        return self._descriptor_cache[instance]

    def _clone(self):
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        return self.__class__(
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            self.dygraph_function, self._input_spec, **self._kwargs
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        )
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    def __call__(self, *args, **kwargs):
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        """
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        Supports to call the returned instance with input `args` and `kwargs` directly.

        Args:
            *args(tuple): tuple of all input arguments from original decorated function.
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            **kwargs(dict): dict of all input keyward arguments from original decorated function.
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        Return:
            Outputs of decorated function.
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        """
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        if self._property:
            return self._call_dygraph_function(*args, **kwargs)
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        # 1. call dygraph function directly if not enable `declarative`
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        if not self._program_trans.enable_to_static:
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            # NOTE(liym27):
            # Here calls `warnings.warn` but not `logging_utils.warn` because by default warnings.warn(message)
            # will show up **only once**. StaticFunction.__call__ will run many times, it is appropriate to
            # display this warning message only once.
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            logging_utils.warn(
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                "The decorator '@paddle.jit.to_static' does NOT work when setting 'paddle.jit.enable_to_static' to False. "
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                "We will just return dygraph output. If you would like to get static graph output, please call API "
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                "paddle.jit.enable_to_static(True)"
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            )
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            return self._call_dygraph_function(*args, **kwargs)

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        if not in_dynamic_mode():
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            raise RuntimeError(
                "Failed to run the callable object {} decorated by '@paddle.jit.to_static', "
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                "because it is NOT in dynamic mode. Please disable the static graph mode to enter dynamic mode with the "
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                "following API: paddle.disable_static().".format(
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                    self.dygraph_function
                )
            )
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        # 2. trace ops from dygraph layers and cache the generated program.
        args, kwargs = self._function_spec.unified_args_and_kwargs(args, kwargs)
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        try:
            concrete_program, partial_program_layer = self.get_concrete_program(
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                *args, **kwargs, is_train=self._is_train_mode()
            )
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            # 3. synchronize self.training attribute.
            if isinstance(self._class_instance, layers.Layer):
                partial_program_layer.training = self._class_instance.training
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            else:
                partial_program_layer.training = self._training
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            partial_program_layer._cuda_graph_capture_mode = (
                self._cuda_graph_capture_mode
            )
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            partial_program_layer._cuda_graph_pool_id = self._cuda_graph_pool_id

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            # 4. return outputs.
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            try:
                return partial_program_layer(args)
            except Exception as e:
                if not hasattr(e, error.ERROR_DATA):
                    # runtime error
                    error.attach_error_data(e, in_runtime=True)
                    raise
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        except Exception as e:
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            error_data = getattr(e, error.ERROR_DATA, None)
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            if error_data:
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                error_data.raise_new_exception()
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            else:
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                logging_utils.warn(
                    "Please file an issue at 'https://github.com/PaddlePaddle/Paddle/issues'"
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                    " if you can't handle this {} yourself.".format(type(e))
                )
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                raise e
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    def _is_train_mode(self):
        if self._class_instance is not None:
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            if not hasattr(self._class_instance, 'training'):
                raise TypeError(
                    "When using 'to_static' to convert method of a class, "
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                    "please ensure the class inherits from nn.Layer"
                )
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            return self._class_instance.training
        else:
            return self._training

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    def _call_dygraph_function(self, *args, **kwargs):
        """
        Calls dygraph function directly and returns the outputs.

        Args:
            *args(tuple): tuple of all input arguments from original decorated function.
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            **kwargs(dict): dict of all input keyward arguments from original decorated function.
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        Return:
            Outputs of dygraph function.
        """
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        return self.dygraph_function(*args, **kwargs)
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    def _raise_when_property(self):
        """raise RuntimeError when property=True

        Raises:
            RuntimeError: can not call this func when property=True
        """
        if self.is_property:
            raise RuntimeError("Can not call the func when property=True.")

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    def get_concrete_program(self, *args, **kwargs):
        """
        Returns traced concrete program and inner executable partial layer.

        Args:
            *args(tuple): input arguments values or InputSpec
            **kwargs(dict) : input kwargs values.

        Returns:
            Traced ConcreteProgram and executable translated Layer.
        """
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        self._raise_when_property()
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        with_hook = kwargs.get("with_hook", False)
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        is_train = kwargs.get("is_train", True)
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        is_prim_infer = kwargs.get("is_prim_infer", False)
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        if "is_train" in kwargs:
            kwargs.pop("is_train")
        if "with_hook" in kwargs:
            kwargs.pop("with_hook")
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        if "is_prim_infer" in kwargs:
            kwargs.pop("is_prim_infer")
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        # 1. unify args/kwargs and replace Tensor with InputSpec
        if len(args) != len(self._function_spec.args_name):
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            args, kwargs = self._function_spec.unified_args_and_kwargs(
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                args, kwargs
            )
        (
            input_args_with_spec,
            input_kwargs_with_spec,
        ) = self._function_spec.args_to_input_spec(args, kwargs)
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        # 2. generate cache key
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        cache_key = CacheKey(
            self._function_spec,
            input_args_with_spec,
            input_kwargs_with_spec,
            self._class_instance,
            **self._kwargs,
            with_hook=with_hook,
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            is_train=is_train,
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        )
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        if is_prim_infer:
            (
                concrete_program,
                partial_program_layer,
            ) = self._program_cache.get_program_without_cache(cache_key)
        else:
            # 3. check whether hit the cache or build a new program for the input arguments
            concrete_program, partial_program_layer = self._program_cache[
                cache_key
            ]
        return concrete_program, partial_program_layer
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    def get_concrete_program_with_cache_key(self, cached_key):
        """
        Returns traced concrete program and inner executable partial layer by cached key.

        Args:
            cached_key(CacheKey): The cached key use to get concrete program.

        Returns:
            Traced ConcreteProgram and executable translated Layer.
        """
        self._raise_when_property()
        (
            concrete_program,
            partial_program_layer,
        ) = self._program_cache.get_program_without_cache(cached_key)
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        return concrete_program, partial_program_layer

    def get_traced_count(self):
        """
        Returns the number of traced programs for the decorated function.
        """
        return len(self._program_cache)

    @property
    def code(self):
        """
        Returns the source code of transformed static function for debugging.
        """
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        static_func = convert_to_static(self.dygraph_function)
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        source_code = func_to_source_code(static_func)
        return source_code

    @property
    def dygraph_function(self):
        """
        Returns the original decorated function.
        """
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        if self._class_instance is not None:
            return self._dygraph_function.__get__(self._class_instance)
        else:
            return self._dygraph_function
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    @property
    def concrete_program(self):
        """
        Returns recent ConcreteProgram instance of decorated function.
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        Examples:
            .. code-block:: python

                import paddle
                from paddle.jit import to_static
                from paddle.static import InputSpec

                paddle.disable_static()

                def foo(x, y):
                    z = x + y
                    return z
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                # usage 1:
                decorated_foo = to_static(foo, input_spec=[InputSpec([10], name='x'), InputSpec([10], name='y')])
                print(decorated_foo.concrete_program)

                # usage 2:
                decorated_foo = to_static(foo)
                out_foo = decorated_foo(paddle.rand([10]), paddle.rand([10]))
                print(decorated_foo.concrete_program)
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        """
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        return self.concrete_program_specify_input_spec(input_spec=None)

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    def concrete_program_specify_input_spec(
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        self, input_spec=None, with_hook=False, is_prim_infer=False
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    ):
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        """
        Returns recent ConcreteProgram instance of decorated function while
        specifying input_spec. If the self._function_spec already has
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        input_spec, it will check the compatibility of input input_spec and
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        the self._function_spec.input_spec. If input input_spec=None, then
        this method uses self._function_spec.input_spec

        args:
            input_spec (list[InputSpec], optional): Describes the input of
                the translate function.
        """
679
        self._raise_when_property()
680 681 682 683
        # if specific the `input_spec`, the length of program_cache will always 1,
        # else, return the last one.
        cached_program_len = len(self._program_cache)
        # If specific `input_spec`, apply convertion from dygraph layers into static Program.
684 685
        # NOTE(jiabin): is_prim_infer indicates this method called by paddle.jit.save and it is worked in prim mode

686
        if cached_program_len == 0:
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Chen Weihang 已提交
687 688 689
            desired_input_spec = input_spec
            if self._function_spec.input_spec is not None:
                if input_spec is not None and not input_specs_compatible(
690 691
                    flatten(input_spec), flatten(self._function_spec.input_spec)
                ):
692
                    raise ValueError(
693 694 695 696
                        "The `input_spec`: {} used to construct concrete_program is conflict with the `input_spec`: {} in `@paddle.jit.to_static`".format(
                            input_spec, self._function_spec.input_spec
                        )
                    )
C
Chen Weihang 已提交
697 698 699
                # NOTE(chenweihang): we should always translated program based on the `input_spec`
                # decorated on forward if it is valid
                desired_input_spec = self._function_spec.input_spec
700 701
                if input_spec is not None:
                    logging_utils.warn(
702 703 704 705
                        "\n\nYou have specified `input_spec` both in function definition (higher priority) and `paddle.jit.save` (will be ignored.)\n\n\t Using: {}\n\n\t Ignore: {}\n".format(
                            desired_input_spec, input_spec
                        )
                    )
706

707
            has_input_spec = desired_input_spec is not None
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Aurelius84 已提交
708
            if has_input_spec:
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Chen Weihang 已提交
709
                concrete_program, _ = self.get_concrete_program(
710 711
                    *desired_input_spec,
                    with_hook=with_hook,
712
                    is_train=self._is_train_mode(),
713
                    is_prim_infer=is_prim_infer,
714
                )
715
                return concrete_program
716
            else:
A
Aurelius84 已提交
717
                raise ValueError(
718 719 720 721
                    "No valid transformed program for {}.\n\t    Please specific `input_spec` in `@paddle.jit.to_static` or feed input tensor to call the decorated function at once.\n".format(
                        self._function_spec
                    )
                )
722 723 724
        elif with_hook:
            cache_key = self._program_cache._recent_cache_key
            cache_key.kwargs["with_hook"] = True
725 726 727 728 729 730 731 732
            if not is_prim_infer:
                concrete_program, _ = self._program_cache[cache_key]
                return concrete_program
            else:
                concrete_program, _ = self.get_concrete_program_with_cache_key(
                    cache_key
                )
                return concrete_program
733 734
        # If more than one programs have been cached, return the recent converted program by default.
        elif cached_program_len > 1:
735
            logging_utils.warn(
736 737 738 739
                "Current {} has more than one cached programs: {}, the last traced progam will be return by default.".format(
                    self._function_spec, cached_program_len
                )
            )
740 741 742 743 744 745 746 747 748 749 750 751
        if not is_prim_infer:
            cache_key, (
                concrete_program,
                partial_layer,
            ) = self._program_cache.last()
            return concrete_program
        else:
            cache_key = self._program_cache._recent_cache_key
            concrete_program, _ = self.get_concrete_program_with_cache_key(
                cache_key
            )
            return concrete_program
752

753 754 755
    def rollback(self):
        """
        Rollback into original dygraph functions for current class instance.
756

757 758 759 760 761 762 763 764 765 766
        Returns:
            Function or Method

        Example::
            .. code-block:: python

                import paddle

                class Net(paddle.nn.Layer):
                    def __init__(self):
767
                        super().__init__()
768 769 770 771 772 773 774 775 776

                    def forward(self, x, flag=True):
                        if flag:
                            out = x + 1
                        else:
                            out = x - 1
                        return out

                x = paddle.randn([10, 1], 'float32')
777
                net = paddle.jit.to_static(Net())  # convert into static graph mode
778
                out = net(x)
779

780 781 782 783 784 785 786 787 788 789 790 791 792 793 794 795
                net.forward.rollback()  # rollback into dygraph mode
                out = net(x)
        """

        def rollback_impl(class_instance):
            for name, func in class_instance._original_funcs.items():
                setattr(class_instance, name, func.__get__(class_instance))

            for sublayer in class_instance.sublayers(include_self=False):
                rollback_impl(sublayer)

        if self._class_instance is None:
            return self._dygraph_function

        # only rollback sub-functions on path of top _dygraph_function
        func_name = self._dygraph_function.__name__
796 797 798 799 800
        assert (
            func_name in self._class_instance._original_funcs
        ), "Not Found function '{}' in class '{}'.".format(
            func_name, self._class_instance.__name__
        )
801
        func = self._class_instance._original_funcs[func_name]
802 803 804
        setattr(
            self._class_instance, func_name, func.__get__(self._class_instance)
        )
805 806 807 808 809 810

        for sublayer in self._class_instance.sublayers(include_self=False):
            rollback_impl(sublayer)

        return getattr(self._class_instance, func_name)

811 812 813 814 815 816 817 818 819 820 821 822 823 824 825 826
    def __deepcopy__(self, memo):
        """
        Customized behavior for copy.deepcopy, return original decorated function instead
        of a new StaticFunction Object. StaticFunction itself is not copyable becuase it's
        associated with class_instance.

        We add __deepcopy__ here only for the following usage:

        Example::
            .. code-block:: python

                import copy
                import paddle

                class Net(paddle.nn.Layer):
                    def __init__(self):
827
                        super().__init__()
828 829 830 831 832 833 834 835 836

                    def forward(self, x, flag=True):
                        if flag:
                            out = x + 1
                        else:
                            out = x - 1
                        return out

                x = paddle.randn([10, 1], 'float32')
837
                net = paddle.jit.to_static(Net())  # convert into static graph mode
838 839

                copy_net = copy.deepcopy(net)      # deepcopy a new net without @to_static
840

841 842 843 844 845 846
        Please attention that original 'net' will unwrap @to_static and rollback into simple Layer.
        """
        if self._class_instance is not None:
            net_name = type(self._class_instance).__name__
            logging_utils.log(
                level=-1,
847 848 849 850 851
                msg="Not recommend to deepcopy '{}' decorated with @to_static, it has side effect that will"
                " rollback into original state before @to_static. Please deepcopy '{}' before applying @to_static.".format(
                    net_name, net_name
                ),
            )
852
            self.rollback()
853 854 855
            return self._dygraph_function.__get__(
                memo[id(self._class_instance)]
            )
856 857 858
        else:
            return self._dygraph_function

859 860 861 862 863
    @property
    def inputs(self):
        """
        Returns input tensors of recent converted static program.
        """
864
        self._raise_when_property()
865 866
        concrete_program = self.concrete_program
        inputs = [
867 868
            var
            for var in flatten(concrete_program.inputs)
869 870 871
            if isinstance(var, framework.Variable)
        ]
        return inputs
872

873
    @property
874 875 876 877
    def outputs(self):
        """
        Returns output tensors of recent converted static program.
        """
878
        self._raise_when_property()
879 880
        concrete_program = self.concrete_program
        outputs = [
881 882
            var
            for var in flatten(concrete_program.outputs)
883 884 885 886
            if isinstance(var, framework.Variable)
        ]

        return outputs
887

888
    @property
889 890 891 892
    def main_program(self):
        """
        Returns recent converted static main program.
        """
893
        self._raise_when_property()
894 895 896
        concrete_program = self.concrete_program
        main_program = concrete_program.main_program
        return main_program
897

898 899 900
    @property
    def program_cache(self):
        return self._program_cache
901

902 903 904
    @property
    def function_spec(self):
        return self._function_spec
905 906


907 908 909 910 911 912 913 914 915 916
def _verify_init_in_dynamic_mode(class_instance):
    """
    Verifies the instance is initialized in dynamic mode.
    """
    if isinstance(class_instance, layers.Layer):
        if not class_instance._init_in_dynamic_mode:
            raise RuntimeError(
                " `paddle.jit.to_static` is only available in dynamic mode. Please call `paddle.disable_static()` before "
                "initializing your Layer class `{}` . Because parameters of Layer class should be initialized firstly "
                "in dynamic mode while applying transformation.".format(
917 918 919
                    class_instance
                )
            )
920 921


922
class HookHelper:
923 924 925 926 927 928 929 930 931
    """
    Only For converting pre/post hooks operation in outermost layer while jit.save.
    Because hooks in sublayer have been processed automatically.
    """

    def __init__(self, func, class_instance, with_hook=False):
        self.func = func
        self.class_instance = class_instance
        self.with_hook = with_hook
932 933 934
        self.need_apply_hook = (
            with_hook
            and isinstance(self.class_instance, layers.Layer)
935
            and func.__name__ == "forward"
936
        )
937 938 939 940 941

    def apply_pre_hooks(self, inputs):
        """
        Apply _forward_pre_hooks from outermost layer
        """
942 943
        if not self.need_apply_hook:
            return inputs
944 945 946 947 948 949

        inputs = inputs[1:]
        for forward_pre_hook in self.class_instance._forward_pre_hooks.values():
            hook_result = forward_pre_hook(self.class_instance, inputs)
            if hook_result is not None:
                if not isinstance(hook_result, tuple):
950
                    hook_result = (hook_result,)
951 952 953 954 955 956 957 958
                inputs = hook_result

        return [self.class_instance] + list(inputs)

    def apply_post_hooks(self, inputs, outputs):
        """
        Apply _forward_post_hooks from outermost layer
        """
959 960
        if not self.need_apply_hook:
            return outputs
961 962

        inputs = inputs[1:]
963 964 965 966 967 968
        for (
            forward_post_hook
        ) in self.class_instance._forward_post_hooks.values():
            hook_result = forward_post_hook(
                self.class_instance, inputs, outputs
            )
969 970 971 972 973 974 975
            if hook_result is not None:
                outputs = hook_result

        inputs.insert(0, self.class_instance)
        return outputs


976
class ConcreteProgram:
977
    __slots__ = [
978 979 980 981 982 983 984
        'inputs',
        'outputs',
        'main_program',
        "startup_program",
        "parameters",
        "function",
        'kwargs',
985 986
    ]

987 988 989 990 991 992 993 994
    def __init__(
        self,
        inputs,
        outputs,
        parameters,
        function,
        main_program,
        startup_program=None,
995
        **kwargs,
996
    ):
997 998 999
        self.inputs = inputs
        self.outputs = outputs
        self.main_program = main_program
1000
        self.startup_program = startup_program
1001
        self.parameters = parameters
1002
        self.function = function
1003
        self.kwargs = kwargs
1004 1005 1006

    @staticmethod
    @switch_to_static_graph
1007 1008 1009
    def from_func_spec(
        func_spec, input_spec, input_kwargs_spec, class_instance, **kwargs
    ):
1010
        """
1011 1012
        Builds the main_program with specialized inputs and returns outputs
        of program as fetch_list.
1013 1014 1015

        Args:
            func_spec(FunctionSpec): A FunctionSpec instance for decorated function.
1016
            input_spec(list[InputSpec]):
1017
        """
1018 1019 1020
        # verify the instance is initialized in imperative mode.
        _verify_init_in_dynamic_mode(class_instance)

1021
        # Transforms dygraph function into static function and caches it.
1022
        dygraph_function = func_spec.dygraph_function
1023
        static_func = convert_to_static(dygraph_function)
1024
        # apply pre\post hook for outermost layer
1025 1026 1027
        hook_helper = HookHelper(
            dygraph_function, class_instance, kwargs.get("with_hook", False)
        )
1028

1029 1030
        main_program, startup_program = framework.Program(), framework.Program()
        # Note: The random seed should be synchronized into cached program
1031
        # if set in `fluid.dygraph_guard` because some ops rely on it, such as
1032
        # `fluid.layers.dropout`.
1033
        main_program.random_seed = framework.default_main_program().random_seed
1034 1035 1036
        startup_program.random_seed = (
            framework.default_startup_program().random_seed
        )
1037

1038
        with framework.program_guard(main_program, startup_program):
1039
            with _switch_declarative_mode_guard_(is_declarative=True):
1040
                # 1. Adds `paddle.static.data` layers for input if needed
1041
                static_inputs = func_spec.to_static_inputs_with_spec(
1042 1043
                    input_spec, main_program
                )
1044
                _kwargs = func_spec.to_static_inputs_with_spec(
1045 1046
                    input_kwargs_spec, main_program
                )
1047
                if class_instance:
1048 1049 1050
                    static_inputs = tuple(
                        [class_instance] + list(static_inputs)
                    )
1051

1052
                # 2. Builds program only once and returns the output Variables.
1053 1054 1055
                with param_guard(
                    get_parameters(class_instance, False)
                ), param_guard(get_buffers(class_instance, False)):
1056
                    try:
1057 1058
                        # only for jit.save, do nothing while train and eval process
                        inputs = hook_helper.apply_pre_hooks(static_inputs)
1059 1060
                        if _kwargs:
                            outputs = static_func(*inputs, **_kwargs)
1061 1062
                        else:
                            outputs = static_func(*inputs)
1063
                        outputs = hook_helper.apply_post_hooks(inputs, outputs)
1064 1065
                    except BaseException as e:
                        # NOTE: If e is raised in compile time, e should be attached to ERROR_DATA here.
1066
                        error.attach_error_data(e)
1067 1068 1069
                        error_data = getattr(e, error.ERROR_DATA, None)
                        if error_data:
                            error_data.raise_new_exception()
1070 1071
                        raise

1072 1073 1074 1075 1076 1077 1078
                # 3. Gets all ParamBases and buffered VarBases in the function
                all_parameters_and_buffers = (
                    ProgramTranslator.get_instance()._params_recorder.pop(
                        main_program
                    )
                )

1079
                if outputs is not None:
1080 1081 1082 1083
                    need_wrap_into_list = (
                        not isinstance(outputs, (tuple, list))
                        or len(outputs) == 1
                    )
1084 1085
                    if need_wrap_into_list:
                        outputs = [outputs]
1086

1087 1088
        main_program = update_op_callstack_with_origin_info(main_program)

1089 1090 1091 1092 1093 1094 1095
        return ConcreteProgram(
            inputs=static_inputs,
            outputs=outputs,
            parameters=all_parameters_and_buffers,
            function=dygraph_function,
            main_program=main_program,
            startup_program=startup_program,
1096
            **kwargs,
1097
        )
1098 1099


1100 1101 1102 1103 1104 1105 1106 1107 1108 1109 1110 1111 1112 1113 1114 1115 1116 1117 1118 1119 1120 1121 1122 1123 1124 1125 1126 1127
class ParametersRecorder:
    def __init__(self):
        self.params_dict = {}

    @synchronized
    def add(self, program, param):
        """use the default_program as key, append param the parameter list."""
        key = self._program_hash(program)
        if key not in self.params_dict:
            self.params_dict[key] = set()
        params = self.params_dict[key]
        params.add(param)

    def pop(self, program):
        params = self.params_dict.get(self._program_hash(program))
        if params is None:
            return []
        del self.params_dict[self._program_hash(program)]
        return list(params)

    def _program_hash(self, program):
        """
        because program is not deleted while calling from_func_spec.
        so it's ok to use id(program)
        """
        return id(program)


1128
class FallbackProgramLayer:
1129 1130 1131 1132 1133 1134 1135 1136 1137 1138 1139 1140 1141 1142 1143 1144 1145 1146 1147 1148 1149 1150 1151 1152 1153 1154 1155 1156 1157 1158 1159 1160 1161 1162 1163 1164 1165 1166 1167 1168 1169 1170
    __slots__ = [
        '_instance',
        '_dy_func',
        'training',
        '_cuda_graph_capture_mode',
        '_cuda_graph_pool_id',
    ]

    def __init__(self, instance, dy_func):
        self._instance = instance
        self._dy_func = dy_func

    def __call__(self, inputs):
        return self._dy_func(*inputs)

    def __getattr__(self, key):
        if key not in self.__slots__:
            raise RuntimeError(
                "There raises a exception after applying `@paddle.jit.to_static()` and already switch into fallback mode. \n"
                "You can't get attribute for a fallback program layer. Please check `to_static.error` file for detail."
            )
        elif key in ['training']:
            if self._instance is not None:
                return getattr(self._instance, key)
            return

        return super().__getattr__(key)

    def __setattr__(self, key, value):
        if key not in self.__slots__:
            raise RuntimeError(
                "There raises a exception after applying `@paddle.jit.to_static()` and already switch into fallback mode. \n"
                "You can't get attribute for a fallback program layer. Please check `to_static.error` file for detail."
            )
        elif key in ['training']:
            if self._instance is not None:
                return setattr(self._instance, key, value)
            return

        return super().__setattr__(key, value)


1171
class ProgramCache:
1172 1173 1174
    """
    Wrapper class for the program functions defined by dygraph function.
    """
1175

1176 1177
    dy2static_error_file = "to_static.error"

1178
    def __init__(self):
1179
        # {hash_id : (concrete_program, partial_layer)}
1180
        self._caches = collections.OrderedDict()
1181
        # trace mostly recent used program
1182
        self._recent_key = None
1183
        self._recent_cache_key = None
1184

1185
    def _build_once(self, cache_key):
1186 1187
        # TODO(Aurelius84): Need a gloabl FLAGS to enable/disable to_prim
        enable_prim = cache_key.kwargs['build_strategy'].build_cinn_pass
1188

1189 1190 1191 1192 1193 1194 1195 1196
        # NOTE(xiongkun): Need a global FLAGS to enable/disable fallback
        enable_fallback = enable_prim
        try:
            concrete_program = ConcreteProgram.from_func_spec(
                func_spec=cache_key.function_spec,
                input_spec=cache_key.input_args_with_spec,
                input_kwargs_spec=cache_key.input_kwargs_with_spec,
                class_instance=cache_key.class_instance,
1197
                **cache_key.kwargs,
1198 1199 1200 1201 1202 1203 1204 1205 1206 1207 1208
            )
        except Exception as e:
            if enable_fallback:
                warnings.warn(
                    "Exception is thrown while applying @paddle.jit.to_static. It will fallback into dygraph mode for training.\n"
                    "1. You can check `to_static.error` file in current workspace directory for detail.\n"
                    "2. In fallback mode, you can only do training, can't call paddle.jit.save(). Please modify model code according `to_static.error` firstly"
                )
                # TODO(xiongkun) change different file name to avoid overwrite.
                with open(self.dy2static_error_file, "w") as fp:
                    fp.write(str(e))
1209

1210 1211 1212 1213 1214 1215 1216
                fallback_layer = FallbackProgramLayer(
                    cache_key.class_instance,
                    cache_key.function_spec.dygraph_function,
                )
                return fallback_layer, fallback_layer
            else:
                raise
1217

1218 1219
        backend = cache_key.kwargs['backend']
        if prim_or_cinn_is_enabled(cache_key.kwargs['build_strategy'], backend):
1220
            for var in concrete_program.main_program.list_vars():
1221
                if var.type not in NO_SHAPE_VAR_TYPE and -1 in var.shape:
1222 1223 1224 1225 1226
                    warnings.warn(
                        "Now prim and cinn do not support -1 shape, but the shape of var {} is {}".format(
                            var.name, var.shape
                        )
                    )
1227

1228 1229 1230
        partial_program = partial_program_from(
            concrete_program, cache_key.class_instance is not None
        )
1231 1232 1233 1234 1235
        with backend_guard(backend):
            if core._is_fwd_prim_enabled():
                partial_program.set_hooker(
                    PrimHooker(concrete_program.main_program, backend)
                )
1236 1237
        return concrete_program, partial_program

1238
    def __getitem__(self, item):
1239
        if not isinstance(item, CacheKey):
1240 1241 1242 1243
            raise ValueError(
                'type(item) should be CacheKey, but received %s'
                % type_name(item)
            )
1244
        item_id = hash(item)
1245
        self._recent_cache_key = item
1246
        self._recent_key = item_id
1247 1248
        if item_id not in self._caches:
            self._caches[item_id] = self._build_once(item)
1249 1250 1251
            # Note: raise warnings if number of traced program is more than `max_tracing_count`
            current_tracing_count = len(self._caches)
            if current_tracing_count > MAX_TRACED_PROGRAM_COUNT:
1252
                logging_utils.warn(
1253
                    "Current traced program number: {} > `max_tracing_count`:{}. Too much cached programs will bring expensive overhead. "
1254 1255 1256 1257
                    "The reason may be: (1) passing tensors with different shapes, (2) passing python objects instead of tensors.".format(
                        current_tracing_count, MAX_TRACED_PROGRAM_COUNT
                    )
                )
1258

1259
        return self._caches[item_id]
1260

1261 1262 1263
    def get_program_without_cache(self, cache_key):
        return self._build_once(cache_key=cache_key)

1264
    def get_program(self, item):
1265
        if not isinstance(item, CacheKey):
1266
            raise ValueError(
1267 1268 1269
                "Input item's type should be FunctionSpec, but received %s"
                % type_name(item)
            )
1270 1271
        item_id = hash(item)
        if item_id not in self._caches:
1272
            raise RuntimeError(
1273
                "Failed to find program for input item, please decorate input function by `@paddle.jit.to_static`."
1274
            )
1275
        return self._caches[item_id]
1276

1277
    def last(self):
1278 1279 1280
        assert (
            len(self._caches) >= 1
        ), "No valid cached program in ProgramCache."
1281 1282
        assert self._recent_key is not None
        return self._recent_key, self._caches[self._recent_key]
1283

1284 1285 1286 1287
    def __len__(self):
        return len(self._caches)

    def concrete_programs(self):
1288
        return [cp for key, (cp, _) in self._caches.items()]
1289

1290 1291 1292
    def clear(self):
        self._caches = collections.OrderedDict()

1293

1294
class PrimHooker(PartialProgramLayerHook):
1295
    def __init__(self, original_program, backend):
1296 1297 1298 1299
        if len(original_program.blocks) > 1:
            raise ValueError(
                'The primitive mode only support one block currently.'
            )
1300
        self.backend = backend
1301
        self.custom_vjps = set()
1302 1303 1304 1305 1306 1307 1308
        with backend_guard(self.backend):
            if core._is_all_prim_enabled():
                self.custom_vjps = {
                    op.type
                    for op in original_program.block(0).ops
                    if core.has_comp_grad_op_maker(op.type)
                }
1309 1310

    def before_append_backward(self, forward_program):
1311 1312 1313 1314
        with backend_guard(self.backend):
            if core._is_fwd_prim_enabled():
                _to_prim(forward_program.blocks, blacklist=self.custom_vjps)
            return forward_program
1315 1316

    def after_append_backward(self, whole_program, backward_start_idx):
1317 1318 1319 1320 1321 1322 1323 1324 1325 1326 1327 1328
        with backend_guard(self.backend):
            backward_length = (
                len(whole_program.block(0).ops) - backward_start_idx
            )
            if core._is_fwd_prim_enabled() and len(self.custom_vjps) != 0:
                # only process backward part of block
                _to_prim(whole_program.blocks, backward_length=backward_length)
            new_start_index = len(whole_program.block(0).ops) - backward_length
            if backward_length > 0:
                # only process forward part of block
                _to_prim(whole_program.blocks, start_idx=new_start_index)
            return whole_program, new_start_index
1329 1330

    def after_infer(self, infer_program):
1331 1332 1333 1334
        with backend_guard(self.backend):
            if core._is_fwd_prim_enabled():
                _to_prim(infer_program.block(0))
            return infer_program
1335 1336


1337
class ProgramTranslator:
1338
    """
1339 1340 1341 1342 1343 1344 1345 1346 1347 1348 1349 1350
    Class to translate dygraph function into static graph function. The object
    of this class is a singleton.

    Args:
        None.

    Returns:
        ProgramTranslator: the singleton object.

    Examples:
        .. code-block:: python

1351
            import paddle
1352

1353 1354 1355
            # Two methods get same object because ProgramTranslator is a singleton
            paddle.jit.ProgramTranslator()
            paddle.jit.ProgramTranslator.get_instance()
1356

1357 1358
    """

1359
    _singleton_lock = threading.Lock()
1360 1361 1362 1363 1364 1365
    _instance = None

    @synchronized
    def __new__(cls, *args, **kwargs):
        if cls._instance is None:
            cls._instance = object.__new__(cls, *args, **kwargs)
1366
            cls._instance._initialized = False
1367 1368 1369 1370 1371
        return cls._instance

    @classmethod
    def get_instance(cls):
        if cls._instance is None:
1372 1373
            with cls._singleton_lock:
                cls._instance = cls()
1374 1375 1376 1377 1378
        return cls._instance

    @classmethod
    def reset(cls):
        if cls._instance is not None:
1379
            cls._instance._initialized = False
1380 1381
            cls._instance.__init__()

1382
    def __init__(self):
1383
        # To make sure that calls __init__ only once.
1384
        if self._initialized:
1385
            return
1386 1387
        self._initialized = True
        self._program_cache = ProgramCache()
1388
        self._params_recorder = ParametersRecorder()
1389
        self.enable_to_static = True
1390

1391
    def enable(self, enable_to_static):
1392
        """
1393
        Enable or disable the converting from imperative to static graph by
1394 1395 1396
        ProgramTranslator globally.

        Args:
1397
            enable_to_static (bool): True or False to enable or disable converting to static.
1398 1399 1400 1401 1402 1403 1404

        Returns:
            None.

        Examples:
            .. code-block:: python

1405
                import paddle
1406 1407


1408 1409 1410 1411 1412 1413 1414
                @paddle.jit.to_static
                def func(x):
                    if paddle.mean(x) > 0:
                        x_v = x - 1
                    else:
                        x_v = x + 1
                    return x_v
1415

1416

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1417
                paddle.jit.enable_to_static(False)
1418 1419 1420

                x = paddle.ones([1, 2])
                # ProgramTranslator is disabled so the func is run in dygraph
1421
                print(func(x))  # [[0. 0.]]
L
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1422

1423
        """
1424 1425 1426 1427 1428 1429
        check_type(
            enable_to_static,
            "enable_to_static",
            bool,
            "ProgramTranslator.enable",
        )
1430
        self.enable_to_static = enable_to_static
1431

1432 1433
    def get_output(self, dygraph_func, *args, **kwargs):
        """
1434
        Returns the output dygraph Tensor for dygraph function. The dygraph
1435
        function will be translated into static graph function so the under
1436
        beneath numerical result will be calculated by static graph mode.
1437 1438 1439

        Args:
            dygraph_func (callable): the dygraph function.
1440 1441
            *args (tuple): the input argument of dygraph_func.
            **kwargs (dict): the input argument of dygraph_func.
1442 1443

        Returns:
1444
            Tensor or tuple of Tensors: the dygraph Tensor containing digital result.
1445 1446 1447 1448

        Examples:
            .. code-block:: python

1449 1450
                import paddle

1451 1452

                def func(x):
1453
                    if paddle.mean(x) > 0:
1454 1455 1456 1457 1458 1459
                        x_v = x - 1
                    else:
                        x_v = x + 1
                    return x_v


1460 1461 1462 1463
                prog_trans = paddle.jit.ProgramTranslator()

                x = paddle.ones([1, 2])
                x_v = prog_trans.get_output(func, x)
1464
                print(x_v)  # [[0. 0.]]
1465

1466
        """
1467 1468 1469
        assert callable(
            dygraph_func
        ), "Input dygraph_func is not a callable in ProgramTranslator.get_output"
1470

1471
        if not self.enable_to_static:
1472 1473
            # Here calls `warnings.warn` but not `logging_utils.warn` because by default warnings.warn(message)
            # will show up **only once**.
1474
            logging_utils.warn(
1475 1476 1477 1478
                "The ProgramTranslator.get_output doesn't work when setting ProgramTranslator.enable to False. "
                "We will just return dygraph output. "
                "Please call ProgramTranslator.enable(True) if you would like to get static output."
            )
1479
            return dygraph_func(*args, **kwargs)
1480
        try:
1481
            function_spec = FunctionSpec(dygraph_func)
1482
            cache_key = CacheKey.from_func_and_args(
1483 1484 1485 1486 1487
                function_spec,
                args,
                kwargs,
                getattr(dygraph_func, '__self__', None),
            )
1488 1489 1490 1491 1492 1493 1494 1495 1496 1497 1498 1499 1500 1501 1502 1503
            _, partial_program_layer = self._program_cache[cache_key]

            if args and isinstance(args[0], layers.Layer):
                # Synchronize self.training attribute.
                partial_program_layer.training = args[0].training
                args = args[1:]
            try:
                return partial_program_layer(args)
            except BaseException as e:
                # NOTE:
                # 1. If e is raised in compile time, e should have been attached to ERROR_DATA before;
                # 2. If e raised in runtime, e should be attached to ERROR_DATA here.
                if not hasattr(e, error.ERROR_DATA):
                    # runtime error
                    error.attach_error_data(e, in_runtime=True)
                raise
1504
        except BaseException as e:
1505 1506 1507 1508 1509 1510
            error_data = getattr(e, error.ERROR_DATA, None)
            if error_data:
                error_data.raise_new_exception()
            else:
                logging_utils.warn(
                    "Please file an issue at 'https://github.com/PaddlePaddle/Paddle/issues'"
1511 1512
                    " if you can't handle this {} yourself.".format(type(e))
                )
1513
                raise e
1514 1515 1516

    def get_func(self, dygraph_func):
        """
1517 1518 1519 1520 1521 1522 1523 1524 1525 1526 1527
        Returns a callable function which converts imperative dygraph APIs of
        the input dygraph_func into declarative net-building APIs, which means
        it doesn't return immediate digital result as get_output does.
        Users should handle Program and Executor by themselves.

        Args:
            dygraph_func (callable): the dygraph function.

        Returns:
            callable: converting imperative dygraph APIs into declarative
            net-building APIs.
1528 1529 1530 1531

        Examples:
            .. code-block:: python

1532 1533
                import paddle

1534 1535

                def func(x):
1536
                    if paddle.mean(x) > 0:
1537 1538 1539 1540 1541 1542
                        x_v = x - 1
                    else:
                        x_v = x + 1
                    return x_v


1543
                prog_trans = paddle.jit.ProgramTranslator()
1544 1545 1546
                static_func = prog_trans.get_func(func)
                print(callable(static_func)) # True

1547
        """
1548 1549 1550
        assert callable(
            dygraph_func
        ), "Input dygraph_func is not a callable in ProgramTranslator.get_func"
1551

1552
        if not self.enable_to_static:
1553
            logging_utils.warn(
1554 1555 1556
                "The ProgramTranslator.get_func doesn't work when setting ProgramTranslator.enable to False. We will "
                "just return dygraph output. Please call ProgramTranslator.enable(True) if you would like to get static output."
            )
1557
            return dygraph_func
1558

1559
        static_func = convert_to_static(dygraph_func)
1560 1561
        return static_func

1562 1563
    def get_program(self, dygraph_func, *args, **kwargs):
        """
1564
        Returns the translated static program and input/output Tensors from
1565 1566 1567 1568
        dygraph function. The users can use the program to run by executor.

        Args:
            dygraph_func (callable): the dygraph function.
1569 1570
            *args (tuple): the input argument of dygraph_func.
            **kwargs (dict): the input argument of dygraph_func.
1571 1572 1573

        Returns:
            tuple of (main_program, startup_program, inputs, outputs) whose
1574
            types are (Program, Program, list of Tensors, list of Tensors).
1575 1576
            main_program: the converted main program.
            startup_program: the converted startup program.
1577 1578
            inputs: list of input Tensors which need to be fed.
            outputs: list of output Tensors which users can fetch.
1579 1580 1581 1582

        Examples:
            .. code-block:: python

1583 1584
                import paddle

1585 1586

                def func(x):
1587
                    if paddle.mean(x) > 0:
1588 1589 1590 1591 1592 1593
                        x_v = x - 1
                    else:
                        x_v = x + 1
                    return x_v


1594 1595
                prog_trans = paddle.jit.ProgramTranslator()
                x = paddle.ones([1, 2])
1596 1597
                main_prog, start_prog, inputs, outputs = prog_trans.get_program(func, x)
                print([i.name for i in inputs])
1598
                # [u'generated_tensor_0'] the feed input Tensor name representing x
1599
                print([o.name for o in outputs])
1600
                # [u'_generated_var_4'] the fetch output Tensor name representing x_v
1601

1602
        """
1603 1604 1605
        assert callable(
            dygraph_func
        ), "Input dygraph_func is not a callable in ProgramTranslator.get_program"
1606

1607
        if not self.enable_to_static:
1608
            logging_utils.warn(
1609 1610 1611 1612
                "The ProgramTranslator.get_program doesn't work when setting ProgramTranslator.enable to False."
                "We will just return dygraph output. "
                "Please call ProgramTranslator.enable(True) if you would like to get static output."
            )
1613
            return dygraph_func(*args, **kwargs)
1614

1615
        function_spec = FunctionSpec(dygraph_func)
1616
        cache_key = CacheKey.from_func_and_args(
1617 1618
            function_spec, args, kwargs, getattr(dygraph_func, '__self__', None)
        )
1619 1620
        concrete_program, partial_program_layer = self._program_cache[cache_key]

1621 1622
        # Note: concrete_program hold all input/output infos include non-Variable
        input_vars = [
1623 1624
            var
            for var in concrete_program.inputs
1625 1626 1627
            if isinstance(var, framework.Variable)
        ]
        output_vars = [
1628 1629
            var
            for var in concrete_program.outputs
1630 1631 1632
            if isinstance(var, framework.Variable)
        ]

1633 1634 1635 1636 1637 1638
        return (
            concrete_program.main_program,
            concrete_program.startup_program,
            input_vars,
            output_vars,
        )
1639

1640 1641
    def get_code(self, dygraph_func):
        """
1642 1643 1644 1645 1646 1647
        Returns the translated static function string code from dygraph function.

        Args:
            dygraph_func (callable): the dygraph function.

        Returns:
1648 1649 1650 1651 1652
            str: the string code of translated static function.

        Examples:
            .. code-block:: python

1653 1654 1655 1656 1657 1658 1659 1660 1661
                import paddle


                def func(x):
                    if paddle.mean(x) > 0:
                        x_v = x - 1
                    else:
                        x_v = x + 1
                    return x_v
1662 1663


1664
                prog_trans = paddle.jit.ProgramTranslator()
1665

1666 1667
                code = prog_trans.get_code(func)
                print(type(code)) # <class 'str'>
1668

1669
        """
1670 1671 1672
        assert callable(
            dygraph_func
        ), "Input dygraph_func is not a callable in ProgramTranslator.get_code"
1673
        # Gets AST from dygraph function
1674 1675 1676

        unwrap_func = unwrap(dygraph_func)
        raw_code = inspect.getsource(unwrap_func)
1677 1678 1679 1680 1681
        code = textwrap.dedent(raw_code)
        root = gast.parse(code)

        # Transform AST
        dygraph_to_static = DygraphToStaticAst()
1682
        root = dygraph_to_static.get_static_ast(root)
1683 1684

        # Get source_code
1685
        source_code = ast_to_source_code(root)
1686 1687
        return source_code

1688
    def get_program_cache(self):
1689
        """
1690 1691 1692 1693 1694 1695 1696 1697 1698
        Returns the ProgramCache instance. This method is used by PaddlePaddle
        developers to manage program cache in ProgramTranslator. Normal users
        don't have to call this method.

        Returns:
            ProgramCache: ProgramCache instance of ProgramTranslator.

        Examples:
            .. code-block:: python
1699

1700
                import paddle
1701

1702
                prog_trans = paddle.jit.ProgramTranslator()
1703 1704
                prog_cache = prog_trans.get_program_cache()

1705
        """
1706
        return self._program_cache
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1707 1708 1709 1710 1711 1712 1713 1714 1715 1716 1717 1718 1719 1720 1721 1722 1723 1724 1725 1726 1727 1728 1729 1730 1731 1732 1733 1734 1735 1736 1737 1738 1739 1740 1741 1742 1743 1744 1745 1746 1747 1748 1749


def enable_to_static(enable_to_static_bool):
    """
    Enable or disable the converting from imperative to static graph by
    ProgramTranslator globally.

    Args:
        enable_to_static_bool (bool): True or False to enable or disable converting to static.

    Returns:
        None.

    Examples:
        .. code-block:: python

            import paddle


            @paddle.jit.to_static
            def func(x):
                if paddle.mean(x) > 0:
                    x_v = x - 1
                else:
                    x_v = x + 1
                return x_v


            paddle.jit.enable_to_static(False)

            x = paddle.ones([1, 2])
            # ProgramTranslator is disabled so the func is run in dygraph
            print(func(x))  # [[0. 0.]]

    """
    check_type(
        enable_to_static_bool,
        "enable_to_static_bool",
        bool,
        "paddle.jit.enable_to_static",
    )
    _program_trans = ProgramTranslator()
    _program_trans.enable(enable_to_static_bool)
1750 1751 1752


@switch_to_static_graph
1753 1754 1755 1756 1757 1758 1759
def _to_prim(
    blocks,
    blacklist=frozenset(),
    whitelist=frozenset(),
    start_idx=-1,
    backward_length=-1,
):
1760
    """Swith to static graph and call to_prim."""
1761 1762 1763
    # TODO(Aurelius84): Fix this cycle import problem
    from paddle.incubate.autograd import primapi

1764 1765 1766 1767 1768 1769 1770
    primapi.to_prim(
        blocks,
        blacklist=blacklist,
        whitelist=whitelist,
        start_idx=start_idx,
        backward_length=backward_length,
    )