utils.py 51.2 KB
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# Copyright (c) 2020 PaddlePaddle Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

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import ast
import atexit
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import builtins
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import copy
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import functools
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import importlib.util
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import inspect
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import os
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import shutil
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import sys
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import tempfile
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import textwrap
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import types
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import warnings
from importlib.machinery import SourceFileLoader

import astor
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import numpy as np
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import paddle
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from paddle.fluid import core, unique_name
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from paddle.fluid.data_feeder import convert_dtype
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from paddle.fluid.layer_helper import LayerHelper
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from paddle.utils import gast
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__all__ = []

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# Note(Aurelius): Do not forget the dot `.` to distinguish other
# module such as paddlenlp.
PADDLE_MODULE_PREFIX = 'paddle.'
DYGRAPH_MODULE_PREFIX = 'paddle.fluid.dygraph'
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DYGRAPH_TO_STATIC_MODULE_PREFIX = 'paddle.jit.dy2static'
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GET_ARGS_FUNC_PREFIX = 'get_args'
SET_ARGS_FUNC_PREFIX = 'set_args'
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ALREADY_D2S = '__already_d2s'
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ARGS_NAME = '__args'
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# NOTE(liym27): Please use `getattr(ast_node, ORIGI_INFO)` instead of . operation to get the original information of ast node.
ORIGI_INFO = "Original information of source code for ast node."
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DEL_TEMP_DIR = True  # A flag to avoid atexit.register more than once
FOR_ITER_INDEX_PREFIX = '__for_loop_var_index'
FOR_ITER_TUPLE_PREFIX = '__for_loop_iter_tuple'
FOR_ITER_TARGET_PREFIX = '__for_loop_iter_target'
FOR_ITER_ITERATOR_PREFIX = '__for_loop_iter_iterator'
FOR_ITER_TUPLE_INDEX_PREFIX = '__for_loop_iter_tuple_index'
FOR_ITER_VAR_LEN_PREFIX = '__for_loop_var_len'
FOR_ITER_VAR_NAME_PREFIX = '__for_loop_iter_var'
FOR_ITER_ZIP_TO_LIST_PREFIX = '__for_loop_iter_zip'

RE_PYNAME = '[a-zA-Z0-9_]+'
RE_PYMODULE = r'[a-zA-Z0-9_]+\.'

# Assign not support float64, use float32 value as magic number.
RETURN_NO_VALUE_VAR_NAME = "__no_value_return_var"
RETURN_NO_VALUE_MAGIC_NUM = 1.77113e27

TRUE_FUNC_PREFIX = 'true_fn'
FALSE_FUNC_PREFIX = 'false_fn'

WHILE_CONDITION_PREFIX = 'while_condition'
WHILE_BODY_PREFIX = 'while_body'
FOR_CONDITION_PREFIX = 'for_loop_condition'
FOR_BODY_PREFIX = 'for_loop_body'

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class BaseNodeVisitor(gast.NodeVisitor):
    """
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    Implement customized NodeVisitor inherited from gast.NodeVisitor.
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    Ancestor nodes are traced to easily support more operations of currently
    visited node.
    """

    def __init__(self):
        self.ancestor_nodes = []

    def visit(self, node):
        """Visit a node."""
        self.ancestor_nodes.append(node)

        method = 'visit_' + node.__class__.__name__
        visitor = getattr(self, method, self.generic_visit)
        ret = visitor(node)
        self.ancestor_nodes.pop()
        return ret


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dygraph_class_to_static_api = {
    "CosineDecay": "cosine_decay",
    "ExponentialDecay": "exponential_decay",
    "InverseTimeDecay": "inverse_time_decay",
    "NaturalExpDecay": "natural_exp_decay",
    "NoamDecay": "noam_decay",
    "PiecewiseDecay": "piecewise_decay",
    "PolynomialDecay": "polynomial_decay",
}


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def data_layer_not_check(name, shape, dtype='float32', lod_level=0):
    """
    This function creates a Tensor on the global block. The created Tensor
    doesn't check the dtype and the shape of feed data because dygraph input
    data can be various-length. This API is used in translating dygraph into
    static graph.

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     Note:
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        The default :code:`stop_gradient` attribute of the Tensor created by
        this API is true, which means the gradient won't be passed backward
        through the data Tensor. Set :code:`var.stop_gradient = False` If
        user would like to pass backward gradient.

    Args:
       name (str): The name/alias of the Tensor, see :ref:`api_guide_Name`
           for more details.
       shape (list|tuple): List|Tuple of integers declaring the shape. You can
           set "None" at a dimension to indicate the dimension can be of any
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           size. For example, it is useful to set changeable batch size as "None"
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       dtype (np.dtype|VarType|str, optional): The type of the data. Supported
           dtype: bool, float16, float32, float64, int8, int16, int32, int64,
           uint8. Default: float32
       lod_level (int, optional): The LoD level of the LoDTensor. Usually users
           don't have to set this value. For more details about when and how to
           use LoD level, see :ref:`user_guide_lod_tensor` . Default: 0

    Returns:
        Tensor: The global Tensor that gives access to the data.
    """
    helper = LayerHelper('data', **locals())
    shape = list(shape)
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    for i in range(len(shape)):
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        if shape[i] is None:
            shape[i] = -1

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    return helper.create_global_variable(
        name=name,
        shape=shape,
        dtype=dtype,
        type=core.VarDesc.VarType.LOD_TENSOR,
        stop_gradient=True,
        lod_level=lod_level,
        is_data=True,
        need_check_feed=False,
    )
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def create_undefined_variable():
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    var = data_layer_not_check(
        unique_name.generate("undefined_var"), [1], "float64"
    )
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    var.stop_gradient = False
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    # the variable is created in block(0), we append assign in block(0) either.
    helper = LayerHelper('create_undefined_variable', **locals())
    saved_block_ids = helper.main_program.current_block_idx
    helper.main_program.current_block_idx = 0
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    paddle.assign(RETURN_NO_VALUE_MAGIC_NUM, var)
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    helper.main_program.current_block_idx = saved_block_ids
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    return var
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class UndefinedVar:
    def __init__(self, name):
        self.name = name

    def check(self):
        raise UnboundLocalError(
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            "local variable '{}' should be created before using it."
        )
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class Dygraph2StaticException(Exception):
    def __init__(self, message):
        super().__init__(message)


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def saw(x):
    if isinstance(x, UndefinedVar):
        return x.check()
    else:
        return x


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def parse_arg_and_kwargs(function):
    """
    Returns full argument names as list. e.g ['x', 'y', 'z']
    """
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    fullargspec = inspect.getfullargspec(function)
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    arg_names = fullargspec.args
    if arg_names and 'self' == arg_names[0]:
        arg_names = fullargspec.args[1:]

    # parse default kwargs
    default_kwargs = {}
    default_values = fullargspec.defaults
    if default_values:
        assert len(default_values) <= len(arg_names)
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        default_kwarg_names = arg_names[-len(default_values) :]
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        default_kwargs = dict(zip(default_kwarg_names, default_values))

    return arg_names, default_kwargs


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def parse_varargs_name(function):
    """
    Returns varargs name string of function. e.g: 'input' from `foo(x, *input)`
    """
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    fullargspec = inspect.getfullargspec(function)
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    varargs = fullargspec.varargs
    return varargs


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def type_name(v):
    return type(v).__name__


def make_hashable(x, error_msg=None):
    """
    Makes input `x` hashable.

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    For some unhashable objects, such as `dict/list/set/np.ndarray`,applying hash function by using their values.
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    """
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    if isinstance(x, (tuple, list, set)):
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        return tuple(map(make_hashable, x))

    try:
        hash(x)
    except TypeError:
        if isinstance(x, np.ndarray):
            # Note: `tostring()` will return the binary data from np.ndarray that
            # means different value will lead to different hash code.
            return hash(x.tostring())
        elif isinstance(x, dict):
            return tuple(map(make_hashable, x.values()))

        error_msg = error_msg or "Requires a hashable object."
        raise ValueError(error_msg + " But received type: %s" % type_name(x))

    return x

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def _is_api_in_module_helper(obj, module_prefix):
    m = inspect.getmodule(obj)
    return m is not None and m.__name__.startswith(module_prefix)


def is_api_in_module(node, module_prefix):
    assert isinstance(node, gast.Call), "Input non-Call node for is_dygraph_api"
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    # Python can have gast.Call as function, for example: covert_call(func)(x)
    # We only check the most outside function
    func_node = node.func
    while isinstance(func_node, gast.Call):
        func_node = func_node.func

    func_str = astor.to_source(gast.gast_to_ast(func_node)).strip()
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    try:
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        import paddle  # noqa: F401
        import paddle.fluid as fluid  # noqa: F401
        import paddle.fluid.dygraph as dygraph  # noqa: F401
        import paddle.fluid.layers as layers  # noqa: F401
        import paddle.jit.dy2static as _jst  # noqa: F401
        from paddle import to_tensor  # noqa: F401
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        from paddle.fluid.dygraph import to_variable  # noqa: F401
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        return eval(
            "_is_api_in_module_helper({}, '{}')".format(func_str, module_prefix)
        )
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    except Exception:
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        return False


def is_dygraph_api(node):
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    # Note: A api in module dygraph_to_static is not a real dygraph api.
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    if is_api_in_module(node, DYGRAPH_TO_STATIC_MODULE_PREFIX):
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        return False

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    # TODO(liym27): A better way to determine whether it is a dygraph api.
    #  Consider the decorator @dygraph_only
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    return is_api_in_module(node, DYGRAPH_MODULE_PREFIX)
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def is_paddle_api(node):
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    return is_api_in_module(node, PADDLE_MODULE_PREFIX)


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# NOTE(Aurelius84): Consider the following paddle inner API as common case to
# apply @to_static code transformation as usual. Because they contains
# user-defined layer, like paddle.distributed.auto_parallel.helper.ProxyLayer.
AS_NOT_INNER_FUNC_LIST = set()


def as_not_paddle_func(path):
    """
    Append API or class as ignored case for is_paddle_func, and they
    will be retured False while calling is_paddle_func(func).
    """
    global INNER_FUNC_WHITE_LIST
    AS_NOT_INNER_FUNC_LIST.add(path)


def is_paddle_func(func, ignore_white_list=True):
    """
    Return True if function is defined in Paddle module.
    Skip to check APIs in white list if specifying ignore_white_list as True.
    """

    def in_white_list(module, func_name):
        if func_name is None:
            return False
        return (module.__name__ + '.' + func_name) in AS_NOT_INNER_FUNC_LIST

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    try:
        if isinstance(func, functools.partial):
            func = func.func

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        func_name = getattr(func, '__name__', None)
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        if inspect.ismethod(func):
            func_name = func.__self__.__class__.__name__
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            func = func.__func__

        m = inspect.getmodule(func)
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        flag = m is not None and m.__name__.startswith(PADDLE_MODULE_PREFIX)
        if ignore_white_list:
            flag = flag and not in_white_list(m, func_name)
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        return flag
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    except Exception:
        return False
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# Is numpy_api cannot reuse is_api_in_module because of numpy module problem
def is_numpy_api(node):
    assert isinstance(node, gast.Call), "Input non-Call node for is_numpy_api"
    func_str = astor.to_source(gast.gast_to_ast(node.func))
    try:
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        import numpy as np  # noqa: F401
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        module_result = eval(
            "_is_api_in_module_helper({}, '{}')".format(func_str, "numpy")
        )
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        # BUG: np.random.uniform doesn't have module and cannot be analyzed
        # TODO: find a better way
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        return module_result or (
            func_str.startswith("numpy.") or func_str.startswith("np.")
        )
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    except Exception:
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        return False


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def _delete_keywords_from(node):
    assert isinstance(node, gast.Call)
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    func_src = astor.to_source(gast.gast_to_ast(node.func))
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    import paddle.fluid as fluid  # noqa: F401
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    full_args = eval(f"inspect.getfullargspec({func_src})")
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    full_args_name = full_args[0]

    node.keywords = [k for k in node.keywords if k.arg in full_args_name]
    return


def to_static_api(dygraph_class):
    if dygraph_class in dygraph_class_to_static_api:
        return dygraph_class_to_static_api[dygraph_class]
    else:
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        raise NotImplementedError(
            "Paddle dygraph API {} cannot be converted "
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            "to static graph at present.".format(dygraph_class)
        )
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def _add_keywords_to(node, dygraph_api_name):
    assert isinstance(node, gast.Call)
    if dygraph_api_name == "Linear":
        for ast_keyword in node.keywords:
            if ast_keyword.arg == "output_dim":
                ast_keyword.arg = "size"

        node.keywords.append(
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            gast.keyword(
                arg="num_flatten_dims", value=gast.Constant(value=-1, kind=None)
            )
        )
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    if dygraph_api_name == "BilinearTensorProduct":
        for ast_keyword in node.keywords:
            if ast_keyword.arg == "output_dim":
                ast_keyword.arg = "size"

    if dygraph_api_name == "PRelu":
        for ast_keyword in node.keywords:
            if ast_keyword.arg == "input":
                ast_keyword.arg = "x"
    return


def to_static_ast(node, class_node):
    assert isinstance(node, gast.Call)
    assert isinstance(class_node, gast.Call)
    static_api = to_static_api(class_node.func.attr)

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    node.func = gast.Attribute(
        attr=static_api,
        ctx=gast.Load(),
        value=gast.Attribute(
            attr='layers',
            ctx=gast.Load(),
            value=gast.Name(
                ctx=gast.Load(), id='fluid', annotation=None, type_comment=None
            ),
        ),
    )
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    update_args_of_func(node, class_node, 'forward')

    node.args.extend(class_node.args)
    node.keywords.extend(class_node.keywords)
    _add_keywords_to(node, class_node.func.attr)
    _delete_keywords_from(node)

    gast.fix_missing_locations(node)

    return node


def update_args_of_func(node, dygraph_node, method_name):
    assert isinstance(node, gast.Call)
    if method_name not in ["__init__", "forward"]:
        raise ValueError(
            "The method name of class to update args should be '__init__' or 'forward'"
        )

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    class_src = astor.to_source(gast.gast_to_ast(dygraph_node.func))
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    import paddle.fluid as fluid  # noqa: F401
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    if method_name == "__init__" or eval(
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        "issubclass({}, fluid.dygraph.Layer)".format(class_src)
    ):
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        full_args = eval(f"inspect.getfullargspec({class_src}.{method_name})")
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        full_args_name = [
            arg_name for arg_name in full_args[0] if arg_name != "self"
        ]
    else:
        full_args_name = []
    added_keywords = []
    for idx, arg in enumerate(node.args):
        added_keywords.append(gast.keyword(arg=full_args_name[idx], value=arg))

    node.args = []
    node.keywords = added_keywords + node.keywords
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def create_api_shape_node(tensor_shape_node):
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    assert isinstance(
        tensor_shape_node, (gast.Name, gast.Attribute, gast.Subscript)
    )
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    if isinstance(tensor_shape_node, gast.Name):
        api_shape_node = gast.Call(
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            func=gast.parse('paddle.shape').body[0].value,
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            args=[tensor_shape_node],
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            keywords=[],
        )
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        return api_shape_node
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    if isinstance(tensor_shape_node, gast.Attribute):
        api_shape_node = gast.Call(
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            func=gast.parse('paddle.shape').body[0].value,
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            args=[tensor_shape_node.value],
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            keywords=[],
        )
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        return api_shape_node

    if isinstance(tensor_shape_node, gast.Subscript):
        result_node = copy.deepcopy(tensor_shape_node)
        result_node.value = create_api_shape_node(result_node.value)
        return result_node
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def get_constant_variable_node(name, value, shape=[1], dtype='int64'):
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    return gast.parse(
        '%s = paddle.full(%s, "%s", %s)' % (name, str(shape), str(value), dtype)
    )
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def get_attribute_full_name(node):
    assert isinstance(
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        node, gast.Attribute
    ), "Input non-Attribute node to get attribute full name"
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    return astor.to_source(gast.gast_to_ast(node)).strip()


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def generate_name_node(name_ids, ctx=gast.Load(), gen_tuple_if_single=False):
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    """
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    If name_ids is list or tuple or set with multiple strings, this function
    generates gast.Tuple of gast.Name.
    If the name_ids is single string or contains only 1 string, this function
    returns gast.Name if gen_tuple_if_single==False else returns gast.Tuple
    with only one gast.Name

    This function is used at several gast.Return statements.
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    """
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    if isinstance(name_ids, str):
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        name_ids = [name_ids]
    if not isinstance(name_ids, (list, tuple, set)):
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        raise TypeError(
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            'name_ids must be list or tuple or set, but received %s'
            % type(type(name_ids))
        )
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    def create_node_for_name(name):
        if '.' not in name:
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            return gast.Name(
                id=name, ctx=ctx, annotation=None, type_comment=None
            )
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        return gast.parse(name).body[0].value

    gast_names = [create_node_for_name(name_id) for name_id in name_ids]
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    if len(gast_names) == 1 and not gen_tuple_if_single:
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        name_node = gast_names[0]
    else:
        name_node = gast.Tuple(elts=gast_names, ctx=ctx)
    return name_node


def create_funcDef_node(nodes, name, input_args, return_name_ids):
    """
    Wrapper all statements of nodes into one ast.FunctionDef, which can be
    called by ast.Call.
    """
    nodes = copy.copy(nodes)
    # add return statement
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    if return_name_ids:
        nodes.append(gast.Return(value=generate_name_node(return_name_ids)))
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    else:
        nodes.append(gast.Return(value=None))
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    func_def_node = gast.FunctionDef(
        name=name,
        args=input_args,
        body=nodes,
        decorator_list=[],
        returns=None,
        type_comment=None,
    )
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    return func_def_node


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def index_in_list(array_list, item):
    try:
        return array_list.index(item)
    except ValueError:
        # Item not in array_list
        return -1


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def create_assign_node(name, node):
    """
    Creates a `gast.Assign` node by given name_id as target and node as value.
    """
    targets = generate_name_node(name, ctx=gast.Store())
    assign_node = gast.Assign(targets=[targets], value=node)
    return targets, assign_node


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def get_temp_dir():
    """
    Return @to_static temp directory.
    """
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    dir_name = "paddle/to_static_tmp/{pid}".format(pid=os.getpid())
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    temp_dir = os.path.join(os.path.expanduser('~/.cache'), dir_name)
    is_windows = sys.platform.startswith('win')
    if is_windows:
        temp_dir = os.path.normpath(temp_dir)

    if not os.path.exists(temp_dir):
        os.makedirs(temp_dir)

    return temp_dir


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def ast_to_func(ast_root, dyfunc, delete_on_exit=True):
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    """
    Transform modified AST of decorated function into python callable object.
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    TODO: If only decorate one of inner function instead of decorating the main
    function, the other inner functions are invisible for the decorated function.
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    """
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    def remove_if_exit(dir_path):
        if os.path.exists(dir_path):
            shutil.rmtree(dir_path)

    def func_prefix(func):
        pre_fix = func.__name__
        if hasattr(func, '__self__'):
            try:
                pre_fix = func.__self__.__class__.__name__ + '_' + func.__name__
            except:
                pass
        return pre_fix
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    source = ast_to_source_code(ast_root)
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    source = _inject_import_statements() + source
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    temp_dir = get_temp_dir()
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    f = tempfile.NamedTemporaryFile(
        mode='w',
        prefix=func_prefix(dyfunc),
        suffix='.py',
        delete=False,
        dir=temp_dir,
        encoding='utf-8',
    )
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    with f:
        module_name = os.path.basename(f.name[:-3])
        f.write(source)

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    global DEL_TEMP_DIR
    if delete_on_exit and DEL_TEMP_DIR:
        # Clear temporary files in TEMP_DIR while exitting Python process
        atexit.register(remove_if_exit, dir_path=temp_dir)
        DEL_TEMP_DIR = False
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    func_name = dyfunc.__name__
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    loader = SourceFileLoader(module_name, f.name)
    spec = importlib.util.spec_from_loader(loader.name, loader)
    module = importlib.util.module_from_spec(spec)
    loader.exec_module(module)
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    # The 'forward' or 'another_forward' of 'TranslatedLayer' cannot be obtained
    # through 'func_name'. So set the special function name '__i_m_p_l__'.
    if hasattr(module, '__i_m_p_l__'):
        callable_func = getattr(module, '__i_m_p_l__')
        callable_func.__name__ = func_name
    elif hasattr(module, func_name):
        callable_func = getattr(module, func_name)
    else:
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        raise ValueError(
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            'Function: %s doesn\'t exist in the Module transformed from AST.'
            % func_name
        )
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    # After transform dygraph function into callable_func saved in tmp file,
    # it lost the global variables from imported statements or defined in source file.
    # Recovers the necessary variables by `__globals__`.
    recover_globals_attribute(dyfunc, callable_func)

    return callable_func, f.name


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def _inject_import_statements():
    import_statements = [
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        "import paddle",
        "from paddle import Tensor",
        "import paddle.fluid as fluid",
        "import paddle.jit.dy2static as _jst",
        "from typing import *",
        "import numpy as np",
        "import warnings",
        "warnings.filterwarnings('ignore', category=DeprecationWarning)",
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    ]
    return '\n'.join(import_statements) + '\n'


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def recover_globals_attribute(src_obj, dst_obj):
    attr_name = '__globals__'

    src_globals = getattr(src_obj, attr_name, {})
    dst_globals = getattr(dst_obj, attr_name, {})
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    for k, v in src_globals.items():
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        # ignore builtin attribute.
        if not (k.startswith('__') and k.endswith('__')):
            dst_globals[k] = v
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def func_to_source_code(function, dedent=True):
    """
    Transforms function into raw string of source code.
    """
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    if isinstance(function, functools.partial):
        function = function.func
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    if not (inspect.isfunction(function) or inspect.ismethod(function)):
        raise TypeError(
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            "The type of 'function' should be a function or method, but received {}.".format(
                type(function).__name__
            )
        )
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    source_code_list, _ = inspect.getsourcelines(function)
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    # Replace comments with blank lines so that error messages are not misplaced
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    source_code_list = [
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        line if not line.lstrip().startswith('#') else '\n'
        for line in source_code_list
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    ]
    source_code = ''.join(source_code_list)
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    if dedent:
        source_code = textwrap.dedent(source_code)

    return source_code


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def ast_to_source_code(ast_node):
    """
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    Transforms ast node into source code.
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    """
    if not isinstance(ast_node, (gast.AST, ast.AST)):
        raise TypeError(
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            "Type of ast_root should be gast.AST or ast.AST, but received %s."
            % type(ast_node)
        )
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    if isinstance(ast_node, gast.AST):
        ast_node = gast.gast_to_ast(ast_node)
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    # Do not wrap lines even if they are too long
    def pretty_source(source):
        return ''.join(source)

    source_code = astor.to_source(ast_node, pretty_source=pretty_source)
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    return source_code
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def is_candidate_node(node):
    """
    Nodes with specified type will be dependent on tensor.
    """
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    is_compare_node = isinstance(
        node,
        (
            gast.Compare,
            gast.BoolOp,
            gast.UnaryOp,
            gast.For,
            gast.If,
            gast.While,
        ),
    )
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    # TODO(Aurelius84): `.numpy()` may be an customized function,
    # and should consider a more elegant way to solve this problem.
    has_numpy_attr = ".numpy()" in ast_to_source_code(node)
    return is_compare_node or has_numpy_attr


def compare_with_none(node):
    """
    Whether the comparator of `gast.Compare` node is `None`.
    """
    if isinstance(node, gast.Compare):
        for child in [node.left, node.comparators]:
            # node.comparators is a list.
            if isinstance(child, list):
                child = child[0]
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            if (isinstance(child, gast.Constant) and child.value is None) or (
                isinstance(child, gast.Name) and child.id == 'None'
            ):
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                return True
    return False


class IsControlFlowVisitor(gast.NodeVisitor):
    """
    Judge whether the ast_node of control flow from Dygraph code dependent on paddle Tensor.
    `ast_node` can be gast.If, gast.For, gast.While, gast.If.test(gast.Compare, gast.BoolOp, gast.UnaryOp).

    If returns True,
    gast.If.test must meet at least one of the following requirements:
        1. involves at least one var whose type is Tensor.
        2. the Tensor var calls `.numpy()[]` interface or Tensor.shape is [1].
        3. involves Tensor.shape[i] and the shape[i] is unknown in compile time.
    gast.While must meet at least one of the requirements 1 to 5:
        4. has `break` statement.
        5. has `continue` statement.
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    gast.For must meet at least one of the requirements 4 to 8:
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        6. calls `range` function in `for` statement and the argument of range is Tensor.
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        7. calls `enumerate` function in `for` statement and the argument of enumerate is Tensor.
        8. the iterable varaible in `for` statement is Tensor.
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        TODO: Support non-range case

    The following examples should not be considered as control_flow_if:
        1. `if Tensor_var` or `if Tensor_var is None`
        2. if Tensor.shape[i] is determined with fixed value (not -1 or None)

    Note: pred in ConditionalBlock require variable, which means all vars should be Tensor
          or transformed into Tensor, like fill_constant(shape=[1], dtype='int32', value=Tensor.shape[i]).

    TODO: 1. need to deal with `tensor.shape[i]` which need to eval the data of shape[i],
             because reshape_op may be called before this statement.
    """

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    def __init__(
        self, ast_node, static_analysis_visitor=None, node_var_type_map=None
    ):
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        assert isinstance(
            ast_node, gast.AST
        ), "Type of input node should be gast.AST, but received %s." % type(
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            ast_node
        )
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        self.ast_root = ast_node
        if static_analysis_visitor is None:
            from .static_analysis import StaticAnalysisVisitor
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            static_analysis_visitor = StaticAnalysisVisitor(ast_node)
        self.static_analysis_visitor = static_analysis_visitor
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        self.node_to_wrapper_map = (
            self.static_analysis_visitor.get_node_to_wrapper_map()
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        )
        self.node_var_type_map = node_var_type_map

        self.is_control_flow_num = 0
        self._compare_node_tenor_set = set()

    def transform(self):
        node = self.ast_root
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        if isinstance(node, gast.If):
            self._visit_If(node)
        elif isinstance(node, gast.For):
            self._visit_For(node)
        elif isinstance(node, gast.While):
            self._visit_While(node)
        else:
            self.visit(node)
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        return self.is_control_flow_num > 0

    def _visit_If(self, node):
        assert isinstance(node, gast.If)
        self.visit(node.test)
        return

    def _visit_For(self, node):
        assert isinstance(node, gast.For)
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        if isinstance(node.iter, gast.Call):
            # for in range(var[0]|var.numpy()[0]) or for in enumerate(var|var.numpy())
            if isinstance(node.iter.func, gast.Name):
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                if (
                    node.iter.func.id == "range"
                    or node.iter.func.id == "enumerate"
                ):
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                    for arg in node.iter.args:
                        self.visit(arg)
                else:
                    return
            # for in var.numpy()
            elif isinstance(node.iter.func, gast.Attribute):
                if node.iter.func.attr == 'numpy':
                    self._visit_Call(node.iter)
                else:
                    return
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            else:
                return
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        elif isinstance(node.iter, gast.Name):
            # for in var
            self.visit(node.iter)
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        else:
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            return

        for child_node in gast.walk(node):
            if isinstance(child_node, (gast.Continue, gast.Break)):
                self._visit_break_continue(child_node)
        return

    def _visit_While(self, node):
        assert isinstance(node, gast.While)
        test = node.test
        self.generic_visit(test)
        for child_node in gast.walk(node):
            if isinstance(child_node, (gast.Continue, gast.Break)):
                self._visit_break_continue(child_node)
        return

    def _visit_break_continue(self, node):
        assert isinstance(node, (gast.Break, gast.Continue))
        wrapper_node = self.node_to_wrapper_map.get(node)
        if not wrapper_node:
            # Transformed node is not in node_to_wrapper_map
            return

        while wrapper_node.parent:
            parent_node = wrapper_node.parent.node
            if isinstance(parent_node, (gast.For, gast.While)):
                if parent_node is self.ast_root:
                    self.is_control_flow_num += 1
                    return
                else:
                    return

            wrapper_node = wrapper_node.parent

        return

    def visit_BoolOp(self, node):
        for i, child in enumerate(node.values):
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            self.visit(child)
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        return node

    def visit_Compare(self, node):
        pre_control_flow_num = self.is_control_flow_num
        if not compare_with_none(node):
            self.generic_visit(node)
            for child in gast.walk(node):
                if isinstance(child, gast.Subscript):
                    self._visit_Subscript(child)
        if self.is_control_flow_num > pre_control_flow_num:
            self._compare_node_tenor_set.add(node)
        return node

    def _visit_Subscript(self, node):
        self.generic_visit(node)
        if hasattr(node, 'value') and isinstance(node.value, gast.Call):
            self._visit_Call(node.value)
        return node

    def _visit_Call(self, node):
        assert isinstance(node, gast.Call)
        if isinstance(node.func, gast.Attribute):
            attr_node = node.func
            if attr_node.attr == 'numpy':
                self.is_control_flow_num += 1

    def visit_Call(self, node):
        self._visit_Call(node)
        if is_paddle_api(node):
            self.is_control_flow_num += 1
        return node

    def visit_Name(self, node):
        if self._is_node_with_tensor(node, node.id):
            self.is_control_flow_num += 1
        return node

    def visit_Constant(self, node):
        if self._is_node_with_tensor(node, node.value):
            self.is_control_flow_num += 1
        return node

    def _is_node_with_tensor(self, node, name_id):
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        from paddle.jit.dy2static.static_analysis import NodeVarType
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        # Look up the node_var_type_map by name_id.
        if self.node_var_type_map:
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            if name_id and isinstance(name_id, str):
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                var_type = self.node_var_type_map.get(name_id, None)
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                if var_type and var_type & NodeVarType.TENSOR_TYPES:
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                    return True
        # if not found, look up the node_to_wrapper_map by node.
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        wrapper_node = self.node_to_wrapper_map.get(node, None)
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        if wrapper_node is not None:
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            if wrapper_node.node_var_type & NodeVarType.TENSOR_TYPES:
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                return True

        return False

    def get_compare_nodes_with_tensor(self):
        return self._compare_node_tenor_set
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# NOTE: inspect.unwrap() exits in PY3 but not in PY2.
def unwrap(func):
    """
    Returns the object wrapped by decorators.
    """

    def _is_wrapped(f):
        return hasattr(f, '__wrapped__')

    unwrapped_f = func
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    while _is_wrapped(unwrapped_f):
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        unwrapped_f = unwrapped_f.__wrapped__

    return unwrapped_f
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def input_specs_compatible(src_input_specs, desired_input_specs):
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    """
    Returns True if the two input specs are compatible, otherwise False.

    args:
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        src_input_spec (list or tuple[InputSpec et.al]): list/tuple of
            paddle.static.InputSpec or int/str et.al
        desired_input_specs (list or tuple[InputSpec et.al]): list/tuple of
            paddle.static.InputSpec or int/str et.al
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    """
    len_specs = len(src_input_specs)
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    if len_specs != len(desired_input_specs):
        # NOTE(chenweihang): if the input_spec of jit.save is a subset of
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        # input_spec of to_static, also compatible
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        for spec in src_input_specs:
            if spec not in desired_input_specs:
                return False
    else:
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        for (src_spec, desired_spec) in zip(
            src_input_specs, desired_input_specs
        ):
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            if isinstance(src_spec, paddle.static.InputSpec) or isinstance(
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                desired_spec, paddle.static.InputSpec
            ):
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                if not _compatible_tensor_spec(src_spec, desired_spec):
                    return False
            else:
                if not _compatible_non_tensor_spec(src_spec, desired_spec):
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                    return False

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    return True


def _compatible_tensor_spec(src_spec, desired_spec):
    """
    Check whether two tensor type spec is compatible.
    """
    for spec in [src_spec, desired_spec]:
        if not isinstance(spec, paddle.static.InputSpec):
            return False
    src_shape = src_spec.shape
    other_shape = desired_spec.shape
    len_shape = len(src_shape)
    if len_shape != len(other_shape):
        return False
    for j in range(len_shape):
        if src_shape[j] is None or src_shape[j] < 0:
            continue
        if other_shape[j] is None or other_shape[j] < 0:
            continue
        if src_shape[j] != other_shape[j]:
            return False

    src_dtype = convert_dtype(src_spec.dtype)
    other_dtype = convert_dtype(desired_spec.dtype)
    if src_dtype != other_dtype:
        return False
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    return True
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def _compatible_non_tensor_spec(src_spec, desired_spec):
    """
    Check whether two non-tensor type spec is compatible.
    """

    def hash_value(spec):
        try:
            hash_val = make_hashable(spec)
        except:
            hash_val = None
        return hash_val

    src_hash_val = hash_value(src_spec)
    desired_hash_val = hash_value(desired_spec)

    if src_hash_val != desired_hash_val:
        return False
    else:
        return True

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class NameScope:
    def __init__(self):
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        """
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        A NameScope is a object which manager all the variable names.
        only FunctionDef and Controlflow node will have a namescope property.
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1068
        type can be "function" and "controlflow"
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        we don't analyze the read only variable because they don't affect the analysis.
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        """
        self.globals = set()
        self.nonlocals = set()
        self.args = set()
        self.father = None  # point to the nearest function name scope.
        self.w_vars = set()  # all qualified + normal names been stored
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        self.created = set()  # useful for control flow compatibility
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        # only valid in control_flow nodes
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        # may be remove later.
        self.push_pop_vars = set()  # we call push and pop in the vars
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    def set_father(self, father):
        self.father = father

    def existed_vars(self):
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        """vars existing in current scope.
        they must not contain qualified names.
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        """
        local_vars = self.w_vars - self.globals - self.nonlocals - self.args
        return set(filter(lambda x: '.' not in x, local_vars))

    def created_vars(self):
        return self.created

    def modified_vars(self):
        # may be globals / non-locals / args / qualified names and created_vars
        return self.w_vars

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    def variadic_length_vars(self):
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        """
1101
        At present, we do not support global append, such as
1102

1103 1104 1105 1106 1107 1108 1109 1110 1111 1112 1113 1114 1115
        import numpy as np
        a = []
        def func():
            a.append() # global names `a`, we will raise a warning.
            p.append(a, 1) # global names `np`, we will raise a warning.
        """
        non_global_push_pop_names = []
        for var in self.push_pop_vars:
            if self._is_simple_name(var) and self.is_global_var(var):
                warnings.warn(
                    f"Find variable `{var}` defined in global scope"
                    f" and call `{var}.append() or {var}.pop()`"
                    f", which will be ignored and never be transfered into"
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                    f" tensor array."
                )
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            else:
                non_global_push_pop_names.append(var)
        return set(non_global_push_pop_names)
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    def control_flow_vars(self):
        valid_names = self.w_vars
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        tmp = (self.father.global_vars & valid_names,)
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        return {"global": tmp, "nonlocal": self.w_vars - tmp}

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    def _is_simple_name(self, name):
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        if '.' in name or '[' in name:
            return False
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        return True

    def is_global_var(self, name):
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        """
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        Return whether the name is a var created in global scope.
1135
        Search from bottom to top. If it is not created or modified,
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        it means global vars; otherwise, it means local vars.
        Only valid after FunctionNameLivenessAnalysis visitor.
        """
        assert self._is_simple_name(
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            name
        ), "is_global_var accept a simple name, but get `{name}`."
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        ancestor = self
        while ancestor is not None:
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            if name in ancestor.globals:
                return True
            if name in (ancestor.nonlocals | ancestor.w_vars):
                return False
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            ancestor = ancestor.father
        return True

    def is_local_var(self, name):
        return not self.is_global_var(name)
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    def merge_from(self, name_scope):
        self.globals |= name_scope.globals
        self.nonlocals |= name_scope.nonlocals
        self.args |= name_scope.args
        self.w_vars |= name_scope.w_vars
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        self.push_pop_vars |= name_scope.push_pop_vars
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class FunctionNameLivenessAnalysis(gast.NodeVisitor):
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    """analyze the liveness of a function.

    every variables stored in this scope will be collected,
    in addition with global/nonlocal information and
    push_pop information.

    1. global variable is stored in node.var_globals.
    2. nonlocal variable is stored in node.var_nonlocals.
    3. arguments is stored in node.var_args.
    4. if a variable's push and pop attribute is called,
       it will be collected in push_pop_vars. They are
       used for transformation to tensor_array.
       NOTE: push_pop_vars **may not** in w_vars.
       a.push(0) don't modify the variable a, but the content
       of a.

    For example:

    def func(*args, **kargs):
        a = 12
        global i,j
        nonlocal x,y
        print(a)
        i = k
        b = []
        c = [1,2,3]
        for m in range(10):
            q = 12
            b.push(1)
            c.pop()

    After this visitor we have:
    # node is the FunctionDef node with name: "func"
    node.pd_scope = NameScope(
        globals = ['i', 'j'],
        nonlocals = ['x', 'y'],
        args = ['args', 'kargs'],
        wr_vars = ['a', 'i', 'q', 'm', 'c', 'b']
        push_pop_vars = ['b', 'c']
    )
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    """

    def __init__(self, root_node):
        self.scope_node_stack = []  # controlflow, functiondef node
        self.visit(root_node)

    def _reset_name_scope(self, node):
        # always reset the node as empty namescope.
        setattr(node, "pd_scope", NameScope())

    def _get_name_scope(self, node):
        if not hasattr(node, "pd_scope"):
            setattr(node, "pd_scope", NameScope())
        return node.pd_scope

    def _current_name_scope(self):
        return self._get_name_scope(self.scope_node_stack[-1])

    def _father_name_scope(self):
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        if len(self.scope_node_stack) == 1:
            return None
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        return self._get_name_scope(self.scope_node_stack[-2])

    def _nearest_function_scope(self):
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        if len(self.scope_node_stack) == 1:
            return None
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        for node in self.scope_node_stack[-2::-1]:
            if isinstance(node, gast.FunctionDef):
                return self._get_name_scope(node)

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    def visit_ListComp(self, node):
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        """[ i for i in range(10) ]
        In this case, `i` will not created in FunctionScope.
        We don't collect `i` by not calling generic_visit.
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        """
        pass

    def visit_DictComp(self, node):
1241
        """the same as ListComp."""
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        pass

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    def visit_Name(self, node):
        self.generic_visit(node)
        write_context = (gast.Store, gast.AugStore, gast.Del)
        if isinstance(node.ctx, write_context):
            self._current_name_scope().w_vars.add(node.id)

    def visit_FunctionDef(self, node):
        def pre_func():
            self._current_name_scope().args |= set(
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                self._get_argument_names(node)
            )
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        def post_func():
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            """NOTE: why we need merge w_vars and push_pop_vars here ?
            because we do ifelse_transformer after loop_transformer. Loops will changed into functioons. but we know this function will be called in if. so we add w_vars to father function scope.
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            """
            control_flow_function_def = [
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                WHILE_BODY_PREFIX,
                WHILE_BODY_PREFIX,
                FOR_CONDITION_PREFIX,
                FOR_BODY_PREFIX,
                TRUE_FUNC_PREFIX,
                FALSE_FUNC_PREFIX,
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            ]

            def is_control_flow_def_node():
                for prefix in control_flow_function_def:
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                    if node.name.startswith(prefix):
                        return True
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                return False

            if self._father_name_scope() and is_control_flow_def_node():
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                self._father_name_scope().w_vars |= (
                    self._current_name_scope().w_vars
                )
                self._father_name_scope().push_pop_vars |= (
                    self._current_name_scope().push_pop_vars
                )
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        self._visit_scope_node(node, pre_func, post_func)

    def _visit_scope_node(self, node, pre_func, post_func):
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        """scope node main visit logic.
        pre_func and post_func is callbacks
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        """
        self._reset_name_scope(node)
        self.scope_node_stack.append(node)
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        self._current_name_scope().set_father(self._nearest_function_scope())
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        if pre_func:
            pre_func()
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        self.generic_visit(node)
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        if post_func:
            post_func()
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        self.scope_node_stack.pop()

    def _visit_controlflow_node(self, node):
        def post_func():
            self._father_name_scope().merge_from(self._current_name_scope())
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            self._nearest_function_scope().merge_from(
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                self._current_name_scope()
            )
            self._current_name_scope().created = (
                self._nearest_function_scope().existed_vars()
                - node.before_created
            )
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            # gather created vars into father and used in CreateUndefinedVarTransform
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            self._nearest_function_scope().created |= (
                self._current_name_scope().created
            )
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        def pre_func():
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            setattr(
                node,
                "before_created",
                self._nearest_function_scope().existed_vars(),
            )
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        self._visit_scope_node(node, pre_func, post_func)

    def visit_For(self, node):
        self._visit_controlflow_node(node)

    def visit_While(self, node):
        self._visit_controlflow_node(node)

    def visit_If(self, node):
        self._visit_controlflow_node(node)

    def visit_Global(self, node):
        self._current_name_scope().globals |= set(node.names)

    def visit_Nonlocal(self, node):
        self._current_name_scope().nonlocals |= set(node.names)

    def visit_Attribute(self, node):
        self.generic_visit(node)
        write_context = (gast.Store, gast.AugStore, gast.Del)
        if isinstance(node.ctx, write_context):
            name = ast_to_source_code(node).strip()
            self._current_name_scope().w_vars.add(name)

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    def visit_Subscript(self, node):
        self.generic_visit(node)
        write_context = (gast.Store, gast.AugStore, gast.Del)
        if isinstance(node.ctx, write_context):
            while isinstance(node.value, gast.Subscript):
                node = node.value
            if isinstance(node.value, gast.Name):
                self._current_name_scope().w_vars.add(node.value.id)

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    def visit_Call(self, node):
        self.generic_visit(node)
        if not isinstance(node.func, gast.Attribute):
            return
        variadic_length_method = ['append', 'pop']
        if node.func.attr not in variadic_length_method:
            return
        # we don't treat push and pop as a write operator. such as a[i]=10 is not modify a.
        name = ast_to_source_code(node.func.value).strip()
        self._current_name_scope().push_pop_vars.add(name)

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    def _get_argument_names(self, node):
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        """get all arguments name in the functiondef node.
        this node is local to the function and shouldn't
        be created.
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        """
        assert isinstance(
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            node, gast.FunctionDef
        ), "Input node is not function define node"
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        names = [a for a in node.args.args]
        names.append(node.args.vararg)
        names.append(node.args.kwarg)
        names = [i.id for i in names if i is not None]
        return names


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def create_get_args_node(names):
    """
    Create get_args function as follows:

        def get_args_0():
            nonlocal x, y
            return x, y
    """

    def empty_node():
        func_def = """
        def {func_name}():
            return
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        """.format(
            func_name=unique_name.generate(GET_ARGS_FUNC_PREFIX)
        )
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        return gast.parse(textwrap.dedent(func_def)).body[0]

    assert isinstance(names, (list, tuple))
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    node = create_nonlocal_stmt_nodes(names)
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    if not names:
        return empty_node()
1402
    if node == []:
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        nonlocal_vars = "\n"
    else:
1405
        nonlocal_vars = ast_to_source_code(node[0])
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    template = """
    def {func_name}():
1408
        {nonlocal_vars}
1409
        return {vars},
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    """
    func_def = template.format(
        func_name=unique_name.generate(GET_ARGS_FUNC_PREFIX),
1413
        nonlocal_vars=nonlocal_vars,
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        vars=",".join(names),
    )
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    return gast.parse(textwrap.dedent(func_def)).body[0]


def create_set_args_node(names):
    """
    Create set_args function as follows:

        def set_args_0(__args):
            nonlocal x, y
            x, y = __args
    """

    def empty_node():
        func_def = """
        def {func_name}({args}):
            pass
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        """.format(
            func_name=unique_name.generate(SET_ARGS_FUNC_PREFIX), args=ARGS_NAME
        )
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        return gast.parse(textwrap.dedent(func_def)).body[0]

    assert isinstance(names, (list, tuple))
1438
    node = create_nonlocal_stmt_nodes(names)
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    if not names:
        return empty_node()
1441
    if node == []:
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        nonlocal_vars = "\n"
    else:
1444
        nonlocal_vars = ast_to_source_code(node[0])
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    template = """
    def {func_name}({args}):
1447
        {nonlocal_vars}
1448
        {vars}, = {args}
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    """
    func_def = template.format(
        func_name=unique_name.generate(SET_ARGS_FUNC_PREFIX),
        args=ARGS_NAME,
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        nonlocal_vars=nonlocal_vars,
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        vars=",".join(names),
    )
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    return gast.parse(textwrap.dedent(func_def)).body[0]


1459
def create_nonlocal_stmt_nodes(names):
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    assert isinstance(names, (list, tuple))

    mapped = list(filter(lambda n: '.' not in n, names))
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    mapped = list(filter(lambda n: '[' not in n, mapped))
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    names = sorted(
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        mapped, key=mapped.index
    )  # to keep the order, we can't use set() to unique
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    if not names:
        return []
1469
    func_code = "nonlocal {}".format(','.join(names))
1470
    return [gast.parse(func_code).body[0]]
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class GetterSetterHelper:
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    """we have two classes of names in setter and getter function:
    w_vars(loop_vars) + push_pop_vars
    To simplify the setter logic in convert_while and convert_cond,
    we extract the helper class here.
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    """

    def __init__(self, getter_func, setter_func, *name_lists):
        name_lists = map(lambda x: [] if x is None else x, name_lists)
        name_sets = map(lambda x: set(x), name_lists)
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        self._union = list(
            functools.reduce(lambda x, y: x | y, name_sets, set())
        )
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        self._union.sort()
        self.getter = getter_func
        self.setter = setter_func
        self.name2id = {name: idx for idx, name in enumerate(self._union)}

    def union(self):
        return self._union

    def get(self, names):
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        if names is None:
            names = []
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        vars = self.getter()
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        if vars is None:
            return tuple()
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        for n in names:
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            assert (
                n in self.name2id
            ), "the name `{}` not in name union set`{}`.".format(
                n, self.name2id.keys()
            )
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        return tuple(map(lambda n: vars[self.name2id[n]], names))

    def set(self, names, values):
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        if names is None:
            names = []
        if values is None:
            values = []
1513
        vars = self.getter()
1514 1515
        if vars is None:
            return
1516
        for n in names:
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            assert (
                n in self.name2id
            ), "the name `{}` not in name union set`{}`.".format(
                n, self.name2id.keys()
            )
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        vars = list(vars)
        indices = list(map(lambda n: self.name2id[n], names))
        for i, v in zip(indices, values):
            vars[i] = v
        self.setter(vars)


def create_name_str(name_ids):
    """
    Return "('x', 'y')" for [x, y]
    """
    if not name_ids:
        return 'None'

1536
    names_str = ["'%s'" % (name.replace("'", "\\'")) for name in name_ids]
1537
    return "(%s, )" % ','.join(names_str)
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def _param_grad_names(program_desc, params):
    """
    Parse PARAM@GARD name from original train and infer program.
    """
    names = []
1545
    # NOTE: `names` and `params` must be in the same order so that
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    # the param grad name can be set correctly in the run_program.
    for param in params:
        candidate = [
            var.name()
            for var in program_desc.block(0).all_vars()
            if var.name().endswith(param.name + '@GRAD')
        ]
        if candidate:
            names.append(max(candidate, key=lambda name: name.count('grad/')))
        else:
            names.append(param.name + '@GRAD')

    return names


def _out_grad_names(program_desc, fwd_end_op_index, out_size):
    """
    Parse Out@GARD name from original train and infer program.
    """
    names = []
    for i in range(
1567 1568
        fwd_end_op_index,
        min(fwd_end_op_index + out_size, program_desc.block(0).op_size()),
1569 1570
    ):
        op = program_desc.block(0).op(i)
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xiongkun 已提交
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        if op.type() in ['fill_any_like', "fill_constant"]:
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            var_name = op.output('Out')[0]
            names.append(var_name)
    return names
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def prim_or_cinn_is_enabled(build_strategy):
    if build_strategy is not None and build_strategy.build_cinn_pass:
        return True

    if core._is_bwd_prim_enabled() or core._is_fwd_prim_enabled():
        return True

    env_flags = [
        'FLAGS_prim_forward',
        'FLAGS_prim_backward',
        'FLAGS_prim_all',
        'FLAGS_use_cinn',
    ]
    for flag in env_flags:
        value = os.getenv(flag)
        if value is None:
            continue
        elif value.lower() in ['true', '1']:
            return True
    return False
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def is_builtin(func, name=None):
    """predict whether a function is a builtin function with name={name}.
    if name == None, then any builtin function will return True
    """

    def name_judge():
        return name is None or func.__name__ == name

    if isinstance(func, types.BuiltinFunctionType) and name_judge():
        return True
    elif func in builtins.__dict__.values() and name_judge():
        return True
    else:
        return False