program_translator.py 38.0 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.

from __future__ import print_function
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import collections
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import gast
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import inspect
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import six
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import textwrap
import threading
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import weakref
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from paddle.fluid import framework
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from paddle.fluid import in_dygraph_mode
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from paddle.fluid.dygraph import layers
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from paddle.fluid.data_feeder import check_type
from paddle.fluid.layers.utils import flatten
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from paddle.fluid.dygraph.base import param_guard
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from paddle.fluid.dygraph.base import switch_to_static_graph
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from paddle.fluid.dygraph.dygraph_to_static import DygraphToStaticAst
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from paddle.fluid.dygraph.dygraph_to_static import error
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from paddle.fluid.dygraph.dygraph_to_static import logging_utils
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from paddle.fluid.dygraph.dygraph_to_static.origin_info import attach_origin_info
from paddle.fluid.dygraph.dygraph_to_static.origin_info import create_and_update_origin_info_map
from paddle.fluid.dygraph.dygraph_to_static.origin_info import update_op_callstack_with_origin_info
from paddle.fluid.dygraph.dygraph_to_static.partial_program import partial_program_from
from paddle.fluid.dygraph.dygraph_to_static.utils import ast_to_func
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from paddle.fluid.dygraph.dygraph_to_static.utils import ast_to_source_code
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from paddle.fluid.dygraph.dygraph_to_static.utils import func_to_source_code
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from paddle.fluid.dygraph.dygraph_to_static.utils import type_name
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from paddle.fluid.dygraph.dygraph_to_static.utils import unwrap
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from paddle.fluid.dygraph.dygraph_to_static.utils import make_hashable
from paddle.fluid.dygraph.dygraph_to_static.function_spec import FunctionSpec
from paddle.fluid.dygraph.dygraph_to_static.function_spec import get_buffers, get_parameters
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from paddle.fluid.wrapped_decorator import signature_safe_contextmanager
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__all__ = ['ProgramTranslator', 'convert_to_static']
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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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class FunctionCache(object):
    """
    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}
        self._converted_static_func_caches = dict()
        # Caches the converted ast node for same source code. {source_code: ast_root}
        self._code_to_ast_caches = dict()
        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:
            root_wrapper = self._code_to_ast_caches[source_code]
        else:
            root = gast.parse(source_code)
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            root = attach_origin_info(root, func)
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            root_wrapper = self._dygraph_to_static.get_static_ast(root)
            self._code_to_ast_caches[source_code] = root_wrapper
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        # Get static function from AST
        static_func, file_name = ast_to_func(root_wrapper.node, func)
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        create_and_update_origin_info_map(root_wrapper.node, 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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    Args:
        function(callable): The function with dygraph layers that will be converted into static layers.
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    """
    with _CACHE_LOCK:
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        static_func = _FUNCTION_CACHE.convert_with_cache(function)
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        return static_func


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class CacheKey(object):
    """
    Cached key for ProgramCache.
    """
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    __slots__ = ['function_spec', 'input_with_spec', 'class_instance']
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    def __init__(self, function_spec, input_with_spec, class_instance):
        """
        Initializes a cache key.
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        Args:
            functions_spec(FunctionSpec): a FunctionSpec instance of decorated function.
            input_with_spec(list[InputSpec]): actual inputs with some arguments replaced by InputSpec.
            class_instance(object): a instance of class `Layer`.
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        """
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        self.function_spec = function_spec
        self.input_with_spec = input_with_spec
        self.class_instance = class_instance

    @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)
        input_with_spec = function_spec.args_to_input_spec(_args, _kwargs)

        # 3. check whether hit the cache or build a new program for the input arguments
        return CacheKey(function_spec, input_with_spec, class_instance)

    def __hash__(self):
        error_msg = "Arguments to a `@paddle.jit.to_static` must be a hashable Python objects (or nested structures of these types)."
        return hash((id(self.function_spec),
                     make_hashable(self.input_with_spec, error_msg),
                     self.class_instance))

    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):
        return "id(function_spec): {}, input_with_spec: {}, class_instance: {}".format(
            id(self.function_spec), self.input_with_spec, self.class_instance)


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(object):
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    """
    Wrapper class to Manage program conversion of decorated function.

    """

    def __init__(self, function, input_spec=None):
        """
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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.
        """
        # save the instance `self` while decorating a method of class.
        if inspect.ismethod(function):
            self._dygraph_function = getattr(function, '__func__')
            self._class_instance = getattr(function, '__self__')
        else:
            self._dygraph_function = function
            self._class_instance = None

        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()

    def __get__(self, instance, owner):
        """
        Overrides this method to parse the class instance and call bound method correctly.

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

            net = Net()
            out = net(x, y)
            '''
        
        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):
        return self.__class__(self._dygraph_function, self._input_spec)
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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.
            **kwargs(dict): dict of all input keyward arguments from original decorated function. 

        Return:
            Outputs of decorated function.
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        """
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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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            logging_utils.warn(
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                "The decorator '@paddle.jit.to_static' does NOT work when setting ProgramTranslator.enable to False. "
                "We will just return dygraph output. If you would like to get static graph output, please call API "
                "ProgramTranslator.enable(True)")
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            return self._call_dygraph_function(*args, **kwargs)

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        if not in_dygraph_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 mode to enter dynamic mode with the "
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                "following API: paddle.disable_static().".format(
                    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(
                *args, **kwargs)

            # 3. synchronize self.training attribute.
            if isinstance(self._class_instance, layers.Layer):
                partial_program_layer.training = self._class_instance.training

            # 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'"
                    " if you can't handle this {} yourself.".format(type(e)))
                raise e
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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.
            **kwargs(dict): dict of all input keyward arguments from original decorated function. 

        Return:
            Outputs of dygraph function.
        """
        if self._class_instance is not None:
            dygraph_function = self._dygraph_function.__get__(
                self._class_instance)
        else:
            dygraph_function = self._dygraph_function

        return dygraph_function(*args, **kwargs)

    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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        # 1. unify args/kwargs and replace Tensor with InputSpec
        if len(args) != len(self._function_spec.args_name):
            args, kwargs = self._function_spec.unified_args_and_kwargs(args,
                                                                       kwargs)
        input_with_spec = self._function_spec.args_to_input_spec(args, kwargs)

        # 2. generate cache key
        cache_key = CacheKey(self._function_spec, input_with_spec,
                             self._class_instance)

        # 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

    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.
        """
        static_func = convert_to_static(self._dygraph_function)
        source_code = func_to_source_code(static_func)
        return source_code

    @property
    def dygraph_function(self):
        """
        Returns the original decorated function.
        """
        return self._dygraph_function

    @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
                
                # 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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        """
        # 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.
        if cached_program_len == 0:
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            input_spec = self._function_spec.input_spec
            has_input_spec = (input_spec is not None and len(input_spec) > 0)
            if has_input_spec:
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                concrete_program, _ = self.get_concrete_program(*input_spec)
                return concrete_program
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            else:
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                raise ValueError(
                    "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))
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        # If more than one programs have been cached, return the recent converted program by default.
        elif cached_program_len > 1:
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            logging_utils.warn(
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                "Current {} has more than one cached programs: {}, the last traced progam will be return by default.".
                format(self._function_spec, cached_program_len))

        cache_key, (concrete_program,
                    partial_layer) = self._program_cache.last()
        return concrete_program
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    @property
    def inputs(self):
        """
        Returns input tensors of recent converted static program.
        """
        concrete_program = self.concrete_program
        inputs = [
            var for var in flatten(concrete_program.inputs)
            if isinstance(var, framework.Variable)
        ]
        return inputs
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    @property
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    def outputs(self):
        """
        Returns output tensors of recent converted static program.
        """
        concrete_program = self.concrete_program
        outputs = [
            var for var in flatten(concrete_program.outputs)
            if isinstance(var, framework.Variable)
        ]

        return outputs
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    @property
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    def main_program(self):
        """
        Returns recent converted static main program.
        """
        concrete_program = self.concrete_program
        main_program = concrete_program.main_program
        return main_program
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    @property
    def program_cache(self):
        return self._program_cache
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    @property
    def function_spec(self):
        return self._function_spec
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# Flag that indicates whether running code under `@declarative`
_in_declarative_mode_ = False


def in_declarative_mode():
    """
    Return a bool value that indicates whether running code under `@declarative`

    """
    return _in_declarative_mode_


@signature_safe_contextmanager
def _switch_declarative_mode_guard_(is_declarative=True):

    global _in_declarative_mode_
    original_val = _in_declarative_mode_
    _in_declarative_mode_ = is_declarative
    yield
    _in_declarative_mode_ = original_val


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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(
                    class_instance))


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class ConcreteProgram(object):
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    __slots__ = [
        'inputs', 'outputs', 'main_program', "startup_program", "parameters",
        "function"
    ]

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    def __init__(self,
                 inputs,
                 outputs,
                 parameters,
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                 function,
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                 main_program,
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                 startup_program=None):
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        self.inputs = inputs
        self.outputs = outputs
        self.main_program = main_program
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        self.startup_program = startup_program
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        self.parameters = parameters
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        self.function = function
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    @staticmethod
    @switch_to_static_graph
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    def from_func_spec(func_spec, input_spec, class_instance):
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        """
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        Builds the main_program with specialized inputs and returns outputs
        of program as fetch_list.
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        Args:
            func_spec(FunctionSpec): A FunctionSpec instance for decorated function.
            input_spec(list[InputSpec]): 
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        """
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        # verify the instance is initialized in imperative mode.
        _verify_init_in_dynamic_mode(class_instance)

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        # Transforms dygraph function into static function and caches it.
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        dygraph_function = func_spec.dygraph_function
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        static_func = convert_to_static(dygraph_function)
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        main_program, startup_program = framework.Program(), framework.Program()
        # Note: The random seed should be synchronized into cached program
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        # if set in `fluid.dygraph_guard` because some ops rely on it, such as
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        # `fluid.layers.dropout`.
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        main_program.random_seed = framework.default_main_program().random_seed
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        startup_program.random_seed = framework.default_startup_program(
        ).random_seed
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        with framework.program_guard(main_program, startup_program):
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            with _switch_declarative_mode_guard_(is_declarative=True):
                # 1. Adds `fluid.data` layers for input if needed
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                inputs = func_spec.to_static_inputs_with_spec(input_spec,
                                                              main_program)
                if class_instance:
                    inputs = tuple([class_instance] + list(inputs))
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                # 2. Gets all ParamBases and buffered VarBases in the function
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                all_parameters_and_buffers = _extract_indeed_params_buffers(
                    class_instance)
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                # 3. Builds program only once and returns the output Variables.
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                with param_guard(get_parameters(
                        class_instance, False)), param_guard(
                            get_buffers(class_instance, False)):
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                    try:
                        outputs = static_func(*inputs)
                    except BaseException as e:
                        # NOTE: If e is raised in compile time, e should be attached to ERROR_DATA here.
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                        error.attach_error_data(e)
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                        raise

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                if outputs is not None:
                    need_wrap_into_list = not isinstance(outputs, (
                        tuple, list)) or len(outputs) == 1
                    if need_wrap_into_list:
                        outputs = [outputs]
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        main_program = update_op_callstack_with_origin_info(main_program)

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        return ConcreteProgram(
            inputs=inputs,
            outputs=outputs,
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            parameters=all_parameters_and_buffers,
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            function=dygraph_function,
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            main_program=main_program,
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            startup_program=startup_program)
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def _extract_indeed_params_buffers(class_instance):
    """
    To filter not initialzed buffers.
    """
    params = list(get_parameters(class_instance).values())
    buffers = list(get_buffers(class_instance).values())
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    buffers = [buffer for buffer in buffers if len(buffer.shape) != 0]
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    return params + buffers


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class ProgramCache(object):
    """
    Wrapper class for the program functions defined by dygraph function.
    """
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    def __init__(self):
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        self._caches = collections.OrderedDict()
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    def _build_once(self, cache_key):
        concrete_program = ConcreteProgram.from_func_spec(
            func_spec=cache_key.function_spec,
            input_spec=cache_key.input_with_spec,
            class_instance=cache_key.class_instance)
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        return concrete_program, partial_program_from(concrete_program)
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    def __getitem__(self, item):
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        if not isinstance(item, CacheKey):
            raise ValueError('type(item) should be CacheKey, but received %s' %
                             type_name(item))

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        if item not in self._caches:
            self._caches[item] = self._build_once(item)
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            # 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:
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                logging_utils.warn(
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                    "Current traced program number: {} > `max_tracing_count`:{}. Too much cached programs will bring expensive overhead. "
                    "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))

667
        return self._caches[item]
668

669
    def get_program(self, item):
670
        if not isinstance(item, CacheKey):
671 672
            raise ValueError(
                "Input item's type should be FunctionSpec, but received %s" %
673
                type_name(item))
674 675
        if item not in self._caches:
            raise RuntimeError(
676
                "Failed to find program for input item, please decorate input function by `@paddle.jit.to_static`."
677 678 679
            )
        return self._caches[item]

680 681 682 683 684 685
    def last(self):
        assert len(
            self._caches) >= 1, "No valid cached program in ProgramCache."
        key = next(reversed(self._caches.keys()))
        return key, self._caches[key]

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    def __len__(self):
        return len(self._caches)

    def concrete_programs(self):
690
        return [cp for key, (cp, _) in six.iteritems(self._caches)]
691

692

693 694
def synchronized(func):
    func.__lock__ = threading.Lock()
695

696 697 698
    def lock_func(*args, **kwargs):
        with func.__lock__:
            return func(*args, **kwargs)
699

700
    return lock_func
701 702


703
class ProgramTranslator(object):
704
    """
705 706 707 708 709 710 711 712 713 714 715 716
    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

717
            import paddle
718

719 720 721
            # Two methods get same object because ProgramTranslator is a singleton
            paddle.jit.ProgramTranslator()
            paddle.jit.ProgramTranslator.get_instance()
722

723 724
    """

725
    _singleton_lock = threading.Lock()
726 727 728 729 730 731
    _instance = None

    @synchronized
    def __new__(cls, *args, **kwargs):
        if cls._instance is None:
            cls._instance = object.__new__(cls, *args, **kwargs)
732
            cls._instance._initialized = False
733 734 735 736 737
        return cls._instance

    @classmethod
    def get_instance(cls):
        if cls._instance is None:
738 739
            with cls._singleton_lock:
                cls._instance = cls()
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        return cls._instance

    @classmethod
    def reset(cls):
        if cls._instance is not None:
745
            cls._instance._initialized = False
746 747
            cls._instance.__init__()

748
    def __init__(self):
749
        # To make sure that calls __init__ only once.
750
        if self._initialized:
751
            return
752 753
        self._initialized = True
        self._program_cache = ProgramCache()
754
        self.enable_to_static = True
755

756
    def enable(self, enable_to_static):
757
        """
758
        Enable or disable the converting from imperative to static graph by
759 760 761
        ProgramTranslator globally.

        Args:
762
            enable_to_static (bool): True or False to enable or disable converting to static.
763 764 765 766 767 768 769

        Returns:
            None.

        Examples:
            .. code-block:: python

770
                import paddle
771 772


773 774 775 776 777 778 779
                @paddle.jit.to_static
                def func(x):
                    if paddle.mean(x) > 0:
                        x_v = x - 1
                    else:
                        x_v = x + 1
                    return x_v
780

781 782 783 784 785 786 787

                prog_trans = paddle.jit.ProgramTranslator()
                prog_trans.enable(False)

                x = paddle.ones([1, 2])
                # ProgramTranslator is disabled so the func is run in dygraph
                print(func(x).numpy())  # [[0. 0.]]
L
liym27 已提交
788

789
        """
790
        check_type(enable_to_static, "enable_to_static", bool,
791
                   "ProgramTranslator.enable")
792
        self.enable_to_static = enable_to_static
793

794 795
    def get_output(self, dygraph_func, *args, **kwargs):
        """
796
        Returns the output dygraph Tensor for dygraph function. The dygraph
797
        function will be translated into static graph function so the under
798
        beneath numerical result will be calculated by static graph mode.
799 800 801

        Args:
            dygraph_func (callable): the dygraph function.
802 803
            *args (tuple): the input argument of dygraph_func.
            **kwargs (dict): the input argument of dygraph_func.
804 805

        Returns:
806
            Tensor or tuple of Tensors: the dygraph Tensor containing digital result.
807 808 809 810

        Examples:
            .. code-block:: python

811 812
                import paddle

813 814

                def func(x):
815
                    if paddle.mean(x) > 0:
816 817 818 819 820 821
                        x_v = x - 1
                    else:
                        x_v = x + 1
                    return x_v


822 823 824 825 826
                prog_trans = paddle.jit.ProgramTranslator()

                x = paddle.ones([1, 2])
                x_v = prog_trans.get_output(func, x)
                print(x_v.numpy())  # [[0. 0.]]
827

828
        """
829 830 831
        assert callable(
            dygraph_func
        ), "Input dygraph_func is not a callable in ProgramTranslator.get_output"
832

833
        if not self.enable_to_static:
834
            logging_utils.warn(
835 836 837 838
                "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."
            )
839
            return dygraph_func(*args, **kwargs)
840
        try:
841 842 843 844 845 846 847 848 849 850 851 852 853 854 855 856 857 858 859 860
            function_spec = FunctionSpec(dygraph_func)
            cache_key = CacheKey.from_func_and_args(function_spec, args, kwargs,
                                                    getattr(dygraph_func,
                                                            '__self__', None))
            _, 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
861
        except BaseException as e:
862 863 864 865 866 867 868 869
            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'"
                    " if you can't handle this {} yourself.".format(type(e)))
                raise e
870 871 872

    def get_func(self, dygraph_func):
        """
873 874 875 876 877 878 879 880 881 882 883
        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.
884 885 886 887

        Examples:
            .. code-block:: python

888 889
                import paddle

890 891

                def func(x):
892
                    if paddle.mean(x) > 0:
893 894 895 896 897 898
                        x_v = x - 1
                    else:
                        x_v = x + 1
                    return x_v


899
                prog_trans = paddle.jit.ProgramTranslator()
900 901 902
                static_func = prog_trans.get_func(func)
                print(callable(static_func)) # True

903
        """
904 905 906
        assert callable(
            dygraph_func
        ), "Input dygraph_func is not a callable in ProgramTranslator.get_func"
907

908
        if not self.enable_to_static:
909
            logging_utils.warn(
910 911 912
                "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."
            )
913
            return dygraph_func
914

915
        static_func = convert_to_static(dygraph_func)
916 917
        return static_func

918 919
    def get_program(self, dygraph_func, *args, **kwargs):
        """
920
        Returns the translated static program and input/output Tensors from
921 922 923 924
        dygraph function. The users can use the program to run by executor.

        Args:
            dygraph_func (callable): the dygraph function.
925 926
            *args (tuple): the input argument of dygraph_func.
            **kwargs (dict): the input argument of dygraph_func.
927 928 929

        Returns:
            tuple of (main_program, startup_program, inputs, outputs) whose
930
            types are (Program, Program, list of Tensors, list of Tensors).
931 932
            main_program: the converted main program.
            startup_program: the converted startup program.
933 934
            inputs: list of input Tensors which need to be fed.
            outputs: list of output Tensors which users can fetch.
935 936 937 938

        Examples:
            .. code-block:: python

939 940
                import paddle

941 942

                def func(x):
943
                    if paddle.mean(x) > 0:
944 945 946 947 948 949
                        x_v = x - 1
                    else:
                        x_v = x + 1
                    return x_v


950 951
                prog_trans = paddle.jit.ProgramTranslator()
                x = paddle.ones([1, 2])
952 953
                main_prog, start_prog, inputs, outputs = prog_trans.get_program(func, x)
                print([i.name for i in inputs])
954
                # [u'generated_tensor_0'] the feed input Tensor name representing x
955
                print([o.name for o in outputs])
956
                # [u'_generated_var_4'] the fetch output Tensor name representing x_v        
957

958
        """
959 960 961
        assert callable(
            dygraph_func
        ), "Input dygraph_func is not a callable in ProgramTranslator.get_program"
962

963
        if not self.enable_to_static:
964
            logging_utils.warn(
965 966 967 968
                "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."
            )
969
            return dygraph_func(*args, **kwargs)
970

971 972 973 974 975 976
        function_spec = FunctionSpec(dygraph_func)
        cache_key = CacheKey.from_func_and_args(function_spec, args, kwargs,
                                                getattr(dygraph_func,
                                                        '__self__', None))
        concrete_program, partial_program_layer = self._program_cache[cache_key]

977 978 979 980 981 982 983 984 985 986
        # Note: concrete_program hold all input/output infos include non-Variable
        input_vars = [
            var for var in concrete_program.inputs
            if isinstance(var, framework.Variable)
        ]
        output_vars = [
            var for var in concrete_program.outputs
            if isinstance(var, framework.Variable)
        ]

987 988
        return concrete_program.main_program, \
               concrete_program.startup_program, \
989 990
               input_vars, \
               output_vars
991

992 993
    def get_code(self, dygraph_func):
        """
994 995 996 997 998 999
        Returns the translated static function string code from dygraph function.

        Args:
            dygraph_func (callable): the dygraph function.

        Returns:
1000 1001 1002 1003 1004
            str: the string code of translated static function.

        Examples:
            .. code-block:: python

1005 1006 1007 1008 1009 1010 1011 1012 1013
                import paddle


                def func(x):
                    if paddle.mean(x) > 0:
                        x_v = x - 1
                    else:
                        x_v = x + 1
                    return x_v
1014 1015


1016
                prog_trans = paddle.jit.ProgramTranslator()
1017

1018 1019
                code = prog_trans.get_code(func)
                print(type(code)) # <class 'str'>
1020

1021
        """
1022 1023 1024
        assert callable(
            dygraph_func
        ), "Input dygraph_func is not a callable in ProgramTranslator.get_code"
1025
        # Gets AST from dygraph function
1026 1027 1028

        unwrap_func = unwrap(dygraph_func)
        raw_code = inspect.getsource(unwrap_func)
1029 1030 1031 1032 1033 1034 1035 1036 1037 1038 1039
        code = textwrap.dedent(raw_code)
        root = gast.parse(code)

        # Transform AST
        dygraph_to_static = DygraphToStaticAst()
        root_wrapper = dygraph_to_static.get_static_ast(root)

        # Get source_code
        source_code = ast_to_source_code(root_wrapper.node)
        return source_code

1040
    def get_program_cache(self):
1041
        """
1042 1043 1044 1045 1046 1047 1048 1049 1050
        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
1051

1052
                import paddle
1053

1054
                prog_trans = paddle.jit.ProgramTranslator()
1055 1056
                prog_cache = prog_trans.get_program_cache()

1057
        """
1058
        return self._program_cache