eager_op_test.py 105.9 KB
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#   Copyright (c) 2023 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.

import functools
import os
import random
import struct
import sys
import unittest
import warnings
from collections import defaultdict
from copy import copy

import numpy as np
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from op import Operator
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from prim_op_test import OpTestUtils, PrimForwardChecker, PrimGradChecker
from testsuite import append_input_output, append_loss_ops, create_op, set_input
from white_list import (
    check_shape_white_list,
    compile_vs_runtime_white_list,
    no_check_set_white_list,
    no_grad_set_white_list,
    op_accuracy_white_list,
    op_threshold_white_list,
)
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import paddle
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from paddle import fluid
from paddle.fluid import core, unique_name
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from paddle.fluid.backward import append_backward
from paddle.fluid.executor import Executor
from paddle.fluid.framework import (
    OpProtoHolder,
    Program,
    _current_expected_place,
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    canonicalize_attrs,
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)
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from paddle.fluid.wrapped_decorator import signature_safe_contextmanager
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sys.path.append(os.path.abspath(os.path.dirname(__file__)))
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@signature_safe_contextmanager
def paddle_static_guard():
    try:
        paddle.enable_static()
        yield
    finally:
        paddle.disable_static()

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def check_out_dtype(api_fn, in_specs, expect_dtypes, target_index=0, **configs):
    """
    Determines whether dtype of output tensor is as expected.

    Args:
        api_fn(callable):  paddle api function
        in_specs(list[tuple]): list of shape and dtype information for constructing input tensor of api_fn, such as [(shape, dtype), (shape, dtype)].
        expected_dtype(list[str]): expected dtype of output tensor.
        target_index(int): indicate which one from in_specs to infer the dtype of output.
        config(dict): other arguments of paddle api function

    Example:
        check_out_dtype(fluid.layers.pad_constant_like, [([2,3,2,3], 'float64'), ([1, 3, 1,3], )], ['float32', 'float64', 'int64'], target_index=1, pad_value=0.)

    """
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    with paddle_static_guard():
        for i, expect_dtype in enumerate(expect_dtypes):
            with paddle.static.program_guard(paddle.static.Program()):
                input_t = []
                for index, spec in enumerate(in_specs):
                    if len(spec) == 1:
                        shape = spec[0]
                        dtype = (
                            expect_dtype if target_index == index else 'float32'
                        )
                    elif len(spec) == 2:
                        shape, dtype = spec
                    else:
                        raise ValueError(
                            "Value of in_specs[{}] should contains two elements: [shape, dtype]".format(
                                index
                            )
                        )
                    input_t.append(
                        paddle.static.data(
                            name='data_%s' % index, shape=shape, dtype=dtype
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                        )
                    )

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                out = api_fn(*input_t, **configs)
                out_dtype = fluid.data_feeder.convert_dtype(out.dtype)
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                if out_dtype != expect_dtype:
                    raise ValueError(
                        "Expected out.dtype is {}, but got {} from {}.".format(
                            expect_dtype, out_dtype, api_fn.__name__
                        )
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                    )


def _set_use_system_allocator(value=None):
    USE_SYSTEM_ALLOCATOR_FLAG = "FLAGS_use_system_allocator"
    old_value = core.globals()[USE_SYSTEM_ALLOCATOR_FLAG]
    value = old_value if value is None else value
    core.globals()[USE_SYSTEM_ALLOCATOR_FLAG] = value
    return old_value


def randomize_probability(batch_size, class_num, dtype='float32'):
    prob = np.random.uniform(0.1, 1.0, size=(batch_size, class_num)).astype(
        dtype
    )
    prob_sum = prob.sum(axis=1)
    for i in range(len(prob)):
        prob[i] /= prob_sum[i]
    return prob


def get_numeric_gradient(
    place,
    scope,
    op,
    inputs,
    input_to_check,
    output_names,
    delta=0.005,
    in_place=False,
):
    # FIXME: change this method by compile time concepts
    set_input(scope, op, inputs, place)

    def product(dim):
        return functools.reduce(lambda a, b: a * b, dim, 1)

    tensor_to_check = scope.find_var(input_to_check).get_tensor()
    tensor_size = product(tensor_to_check.shape())
    tensor_to_check_dtype = tensor_to_check._dtype()
    if tensor_to_check_dtype == core.VarDesc.VarType.FP32:
        tensor_to_check_dtype = np.float32
    elif tensor_to_check_dtype == core.VarDesc.VarType.FP64:
        tensor_to_check_dtype = np.float64
    elif tensor_to_check_dtype == core.VarDesc.VarType.FP16:
        tensor_to_check_dtype = np.float16
        # set delta as np.float16, will automatic convert to float32, float64
        delta = np.array(delta).astype(np.float16)
    elif tensor_to_check_dtype == core.VarDesc.VarType.BF16:
        tensor_to_check_dtype = np.float32
    elif tensor_to_check_dtype == core.VarDesc.VarType.COMPLEX64:
        tensor_to_check_dtype = np.complex64
    elif tensor_to_check_dtype == core.VarDesc.VarType.COMPLEX128:
        tensor_to_check_dtype = np.complex128
    else:
        raise ValueError(
            "Not supported data type "
            + str(tensor_to_check_dtype)
            + ", tensor name : "
            + str(input_to_check)
        )

    def get_output():
        sum = []
        op.run(scope, place)
        for output_name in output_names:
            output_numpy = np.array(scope.find_var(output_name).get_tensor())
            # numpy.dtype does not have bfloat16, thus we use numpy.uint16 to
            # store bfloat16 data, and need to be converted to float to check
            # the floating precision.
            if tensor_to_check._dtype() == core.VarDesc.VarType.BF16:
                output_numpy = convert_uint16_to_float(output_numpy)
            sum.append(output_numpy.astype(tensor_to_check_dtype).mean())
        return tensor_to_check_dtype(np.array(sum).sum() / len(output_names))

    gradient_flat = np.zeros(shape=(tensor_size,), dtype=tensor_to_check_dtype)

    def __get_elem__(tensor, i):
        if tensor_to_check_dtype == np.float16:
            numpy_tensor = np.array(tensor).astype(np.float16)
            numpy_tensor = numpy_tensor.flatten()
            return numpy_tensor[i]
        elif tensor_to_check._dtype() == core.VarDesc.VarType.BF16:
            numpy_tensor = np.array(tensor).astype(np.uint16)
            numpy_tensor = numpy_tensor.flatten()
            return struct.unpack(
                '<f',
                struct.pack('<I', np.uint32(numpy_tensor[i]) << np.uint32(16)),
            )[0]
        elif tensor_to_check_dtype == np.float32:
            return tensor._get_float_element(i)
        elif tensor_to_check_dtype == np.float64:
            return tensor._get_double_element(i)
        else:
            raise TypeError(
                "Unsupported test data type %s." % tensor_to_check_dtype
            )

    def __set_elem__(tensor, i, e):
        if tensor_to_check_dtype == np.float16:
            numpy_tensor = np.array(tensor).astype(np.float16)
            shape = numpy_tensor.shape
            numpy_tensor = numpy_tensor.flatten()
            numpy_tensor[i] = e
            numpy_tensor = numpy_tensor.reshape(shape)
            tensor.set(numpy_tensor, place)
        elif tensor_to_check._dtype() == core.VarDesc.VarType.BF16:
            numpy_tensor = np.array(tensor).astype(np.uint16)
            shape = numpy_tensor.shape
            numpy_tensor = numpy_tensor.flatten()
            numpy_tensor[i] = np.uint16(copy_bits_from_float_to_uint16(e))
            numpy_tensor = numpy_tensor.reshape(shape)
            tensor.set(numpy_tensor, place)
        elif tensor_to_check_dtype == np.float32:
            tensor._set_float_element(i, e)
        elif tensor_to_check_dtype == np.float64:
            tensor._set_double_element(i, e)
        else:
            raise TypeError(
                "Unsupported test data type %s." % tensor_to_check_dtype
            )

    # we only compute gradient of one element each time.
    # we use a for loop to compute the gradient of every element.
    for i in range(tensor_size):
        if in_place:
            set_input(scope, op, inputs, place)

        # get one input element throw it's index i.
        origin = __get_elem__(tensor_to_check, i)
        # add delta to it, run op and then get the sum of the result tensor.
        x_pos = origin + delta
        __set_elem__(tensor_to_check, i, x_pos)
        y_pos = get_output()

        if in_place:
            set_input(scope, op, inputs, place)

        x_neg = origin - delta
        __set_elem__(tensor_to_check, i, x_neg)
        y_neg = get_output()

        __set_elem__(tensor_to_check, i, origin)
        gradient_flat[i] = (y_pos - y_neg) / delta / 2

    return gradient_flat.reshape(tensor_to_check.shape())


def skip_check_grad_ci(reason=None):
    """Decorator to skip check_grad CI.

    Check_grad is required for Op test cases. However, there are some special
    cases that do not need to do check_grad. This decorator is used to skip the
    check_grad of the above cases.

    Note: the execution of unit test will not be skipped. It just avoids check_grad
    checking in tearDownClass method by setting a `no_need_check_grad` flag.

    Example:
        @skip_check_grad_ci(reason="For inference, check_grad is not required.")
        class TestInference(OpTest):
    """
    if not isinstance(reason, str):
        raise AssertionError("The reason for skipping check_grad is required.")

    def wrapper(cls):
        cls.no_need_check_grad = True
        return cls

    return wrapper


def skip_check_inplace_ci(reason=None):
    if not isinstance(reason, str):
        raise AssertionError(
            "The reason for skipping check_inplace is required."
        )

    def wrapper(cls):
        cls.no_need_check_inplace = True
        return cls

    return wrapper


def copy_bits_from_float_to_uint16(f):
    return struct.unpack('<I', struct.pack('<f', f))[0] >> 16


def convert_float_to_uint16(float_list, data_format="NCHW"):
    if data_format == "NHWC":
        float_list = np.transpose(float_list, [0, 3, 1, 2])

    new_output = []
    for x in np.nditer(float_list):
        new_output.append(np.uint16(copy_bits_from_float_to_uint16(x)))
    new_output = np.reshape(new_output, float_list.shape).view(np.uint16)

    if data_format == "NHWC":
        new_output = np.transpose(new_output, [0, 2, 3, 1])
    return new_output


def convert_uint16_to_float(in_list):
    in_list = np.asarray(in_list)
    out = np.vectorize(
        lambda x: struct.unpack(
            '<f', struct.pack('<I', np.uint32(x) << np.uint32(16))
        )[0],
        otypes=[np.float32],
    )(in_list.flat)
    return np.reshape(out, in_list.shape)


class OpTest(unittest.TestCase):
    @classmethod
    def setUpClass(cls):
        '''Fix random seeds to remove randomness from tests'''
        cls._np_rand_state = np.random.get_state()
        cls._py_rand_state = random.getstate()
        cls.call_once = False
        cls.dtype = None
        cls.outputs = {}
        cls.input_shape_is_large = True
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        cls.is_calc_ref = False
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        cls.check_prim = False
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        np.random.seed(123)
        random.seed(124)

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        cls._use_system_allocator = _set_use_system_allocator(True)
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    @classmethod
    def tearDownClass(cls):
        """Restore random seeds"""
        np.random.set_state(cls._np_rand_state)
        random.setstate(cls._py_rand_state)

        _set_use_system_allocator(cls._use_system_allocator)

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        if hasattr(cls, 'check_prim') and os.getenv('FLAGS_prim_test_log'):
            print("check prim end!")

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        def is_empty_grad_op(op_type):
            all_op_kernels = core._get_all_register_op_kernels()
            grad_op = op_type + '_grad'
            if grad_op in all_op_kernels.keys():
                if is_mkldnn_op_test():
                    grad_op_kernels = all_op_kernels[grad_op]
                    for grad_op_kernel in grad_op_kernels:
                        if 'MKLDNN' in grad_op_kernel:
                            return False
                else:
                    return False
            return True

        def is_xpu_op_test():
            return hasattr(cls, "use_xpu") and cls.use_xpu

        def is_mkldnn_op_test():
            return hasattr(cls, "use_mkldnn") and cls.use_mkldnn

        def is_rocm_op_test():
            return core.is_compiled_with_rocm()

        def is_custom_device_op_test():
            return hasattr(cls, "use_custom_device") and cls.use_custom_device

        if not hasattr(cls, "op_type"):
            raise AssertionError(
                "This test do not have op_type in class attrs, "
                "please set self.__class__.op_type=the_real_op_type manually."
            )

        # case in NO_FP64_CHECK_GRAD_CASES and op in NO_FP64_CHECK_GRAD_OP_LIST should be fixed
        if not hasattr(cls, "no_need_check_grad") and not is_empty_grad_op(
            cls.op_type
        ):
            if cls.dtype is None or (
                cls.dtype == np.float16
                and cls.op_type
                not in op_accuracy_white_list.NO_FP16_CHECK_GRAD_OP_LIST
                and not hasattr(cls, "exist_check_grad")
            ):
                raise AssertionError(
                    "This test of %s op needs check_grad." % cls.op_type
                )

            # check for op test with fp64 precision, but not check mkldnn op test for now
            if (
                cls.dtype in [np.float32, np.float64]
                and cls.op_type
                not in op_accuracy_white_list.NO_FP64_CHECK_GRAD_OP_LIST
                and not hasattr(cls, 'exist_fp64_check_grad')
                and not is_xpu_op_test()
                and not is_mkldnn_op_test()
                and not is_rocm_op_test()
                and not is_custom_device_op_test()
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                and not cls.check_prim
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            ):
                raise AssertionError(
                    "This test of %s op needs check_grad with fp64 precision."
                    % cls.op_type
                )

            if (
                not cls.input_shape_is_large
                and cls.op_type
                not in check_shape_white_list.NEED_TO_FIX_OP_LIST
            ):
                raise AssertionError(
                    "Input's shape should be large than or equal to 100 for "
                    + cls.op_type
                    + " Op."
                )

    def try_call_once(self, data_type):
        if not self.call_once:
            self.call_once = True
            self.dtype = data_type

    def is_bfloat16_op(self):
        # self.dtype is the dtype of inputs, and is set in infer_dtype_from_inputs_outputs.
        # Make sure this function is called after calling infer_dtype_from_inputs_outputs.
        return (
            self.dtype == np.uint16
            or (
                hasattr(self, 'output_dtype') and self.output_dtype == np.uint16
            )
            or (
                hasattr(self, 'mkldnn_data_type')
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                and self.mkldnn_data_type == "bfloat16"
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            )
            or (
                hasattr(self, 'attrs')
                and 'mkldnn_data_type' in self.attrs
                and self.attrs['mkldnn_data_type'] == 'bfloat16'
            )
        )

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    def is_float16_op(self):
        # self.dtype is the dtype of inputs, and is set in infer_dtype_from_inputs_outputs.
        # Make sure this function is called after calling infer_dtype_from_inputs_outputs.
        return (
            self.dtype == np.float16
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            or self.dtype == "float16"
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            or (
                hasattr(self, 'output_dtype')
                and self.output_dtype == np.float16
            )
            or (
                hasattr(self, 'mkldnn_data_type')
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                and self.mkldnn_data_type == "float16"
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            )
            or (
                hasattr(self, 'attrs')
                and 'mkldnn_data_type' in self.attrs
                and self.attrs['mkldnn_data_type'] == 'float16'
            )
        )

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    def is_mkldnn_op(self):
        return (hasattr(self, "use_mkldnn") and self.use_mkldnn) or (
            hasattr(self, "attrs")
            and "use_mkldnn" in self.attrs
            and self.attrs["use_mkldnn"]
        )

    def is_xpu_op(self):
        return (hasattr(self, "use_xpu") and self.use_xpu) or (
            hasattr(self, "attrs")
            and "use_xpu" in self.attrs
            and self.attrs["use_xpu"]
        )

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    def is_fp16_compared_with_fp32(self):
        return self.is_float16_op() and (
            self.op_type
            not in op_accuracy_white_list.NO_FP16_COMPARED_WITH_FP32_OP_LIST
        )

    def enable_cal_ref_output(self):
        self.is_calc_ref = self.is_fp16_compared_with_fp32()

    def disable_cal_ref_output(self):
        self.is_calc_ref = False

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    # set the self.output_dtype .
    def infer_dtype_from_inputs_outputs(self, inputs, outputs):
        def is_np_data(input):
            return isinstance(input, (np.ndarray, np.generic))

        def infer_dtype(numpy_dict, dtype_set):
            assert isinstance(
                numpy_dict, dict
            ), "self.inputs, self.outputs must be numpy_dict"
            # the inputs are as follows:
            # case 1: inputs = {'X': x}
            # case 2: inputs = {'X': (x, x_lod)}
            # case 3: inputs = {"X": [("x0", x0), ("x1", x1), ("x2", x2)]}
            # case 4: inputs = {'X': [("x1", (x1, [x1_lod1])), ("x2", (x2, [x2_.lod2]))]}
            # TODO(juncaipeng) infer dtype from inputs maybe obtain wrong type.
            for _, var_value in numpy_dict.items():
                if is_np_data(var_value):  # case 1
                    dtype_set.add(var_value.dtype)
                elif isinstance(var_value, (list, tuple)):  # case 2, 3, 4
                    for sub_val_value in var_value:
                        if is_np_data(sub_val_value):  # case 2
                            dtype_set.add(sub_val_value.dtype)
                        elif len(sub_val_value) > 1 and is_np_data(
                            sub_val_value[1]
                        ):  # case 3
                            dtype_set.add(sub_val_value[1].dtype)
                        elif (
                            len(sub_val_value) > 1
                            and isinstance(sub_val_value[1], (list, tuple))
                            and is_np_data(sub_val_value[1][0])
                        ):  # case 4
                            dtype_set.add(sub_val_value[1][0].dtype)

        # infer dtype from inputs, and dtype means the precision of the test
        # collect dtype of all inputs
        input_dtype_set = set()
        infer_dtype(inputs, input_dtype_set)
        dtype_list = [
            np.dtype(np.float64),
            np.dtype(np.float32),
            np.dtype(np.float16),
            np.dtype(np.int64),
            np.dtype(np.int32),
            np.dtype(np.uint16),
            np.dtype(np.int16),
            np.dtype(np.int8),
            np.dtype(np.uint8),
            np.dtype(np.bool_),
        ]
        # check the dtype in dtype_list in order, select the first dtype that in dtype_set
        for dtype in dtype_list:
            if dtype in input_dtype_set:
                self.dtype = dtype
                break
        # save input dtype in class attr
        self.__class__.dtype = self.dtype

        # infer dtype of outputs
        output_dtype_set = set()
        infer_dtype(outputs, output_dtype_set)
        for dtype in dtype_list:
            if dtype in output_dtype_set:
                self.output_dtype = dtype
                break

    def feed_var(self, input_vars, place):
        feed_map = {}
        for var_name in input_vars:
            if isinstance(input_vars[var_name], list):
                for name, np_value in self.inputs[var_name]:
                    tensor = core.LoDTensor()
                    if isinstance(np_value, tuple):
                        tensor.set(np_value[0], place)
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                        dtype = np.array(np_value[1]).dtype
                        if self.is_calc_ref and dtype == np.float16:
                            if isinstance(np_value[1], list):
                                tensor.set_recursive_sequence_lengths(
                                    np.array(np_value[1]).astype(np.float32)
                                )
                            else:
                                tensor.set_recursive_sequence_lengths(
                                    np_value[1].astype(np.float32)
                                )
                        else:
                            tensor.set_recursive_sequence_lengths(np_value[1])
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                    else:
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                        if self.is_calc_ref and np_value.dtype == np.float16:
                            tensor.set(np_value.astype(np.float32), place)
                        else:
                            tensor.set(np_value, place)
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                    feed_map[name] = tensor
            else:
                tensor = core.LoDTensor()
                if isinstance(self.inputs[var_name], tuple):
                    tensor.set(self.inputs[var_name][0], place)
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                    if (
                        self.is_calc_ref
                        and self.inputs[var_name][1].dtype == np.float16
                    ):
                        tensor.set_recursive_sequence_lengths(
                            self.inputs[var_name][1].astype(np.float32)
                        )
                    else:
                        tensor.set_recursive_sequence_lengths(
                            self.inputs[var_name][1]
                        )
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                else:
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                    if (
                        self.is_calc_ref
                        and self.inputs[var_name].dtype == np.float16
                    ):
                        tensor.set(
                            self.inputs[var_name].astype(np.float32), place
                        )
                    else:
                        tensor.set(self.inputs[var_name], place)
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                feed_map[var_name] = tensor

        return feed_map

    def _append_ops(self, block):
        self.__class__.op_type = (
            self.op_type
        )  # for ci check, please not delete it for now
        if self.is_mkldnn_op():
            self.__class__.use_mkldnn = True

        if self.is_xpu_op():
            self.__class__.use_xpu = True

        op_proto = OpProtoHolder.instance().get_op_proto(self.op_type)
        "infer datatype from inputs and outputs for this test case"
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        if self.is_float16_op():
            self.dtype = np.float16
            self.__class__.dtype = self.dtype
            self.output_dtype = np.float16
        elif self.is_bfloat16_op():
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            self.dtype = np.uint16
            self.__class__.dtype = self.dtype
            self.output_dtype = np.uint16
        else:
            self.infer_dtype_from_inputs_outputs(self.inputs, self.outputs)
        inputs = append_input_output(
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            block, op_proto, self.inputs, True, self.dtype, self.is_calc_ref
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        )
        outputs = append_input_output(
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            block, op_proto, self.outputs, False, self.dtype, self.is_calc_ref
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        )

        if hasattr(self, "cache_name_list"):
            for name in self.cache_name_list:
                inputs[name] = block.create_var(
                    name=name,
                    persistable=True,
                    type=core.VarDesc.VarType.RAW,
                    stop_gradient=True,
                )
        op = block.append_op(
            type=self.op_type,
            inputs=inputs,
            outputs=outputs,
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            attrs=copy(self.attrs) if hasattr(self, "attrs") else {},
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        )
        # infer variable type and infer shape in compile-time
        op.desc.infer_var_type(block.desc)
        op.desc.infer_shape(block.desc)

        return op

    def _get_io_vars(self, block, numpy_inputs):
        inputs = {}
        for name, value in numpy_inputs.items():
            if isinstance(value, list):
                var_list = [
                    block.var(sub_name) for sub_name, sub_value in value
                ]
                inputs[name] = var_list
            else:
                inputs[name] = block.var(name)
        return inputs

    def _get_inputs(self, block):
        return self._get_io_vars(block, self.inputs)

    def _get_outputs(self, block):
        return self._get_io_vars(block, self.outputs)

    def calc_output(self, place):
        outs, _ = self._calc_output(place)
        return outs

    def _create_var_from_numpy(self, value):
        if isinstance(value, tuple):
            data = value[0]
            lod = value[1]
            v = fluid.dygraph.base.to_variable(value=data)
            v.value().get_tensor().set_recursive_sequence_lengths(lod)
            return v
        else:
            return fluid.dygraph.base.to_variable(value)

    def get_sequence_batch_size_1_input(self, lod=None, shape=None):
        """Get LoD input data whose batch size is 1.
        All sequence related OP unittests should call this function to contain the case of batch size = 1.
        Args:
            lod (list[list of int], optional): Length-based LoD, length of lod[0] should be 1. Default: [[13]].
            shape (list, optional): Shape of input, shape[0] should be equals to lod[0][0]. Default: [13, 23].
        Returns:
            tuple (ndarray, lod) : LoD input data whose batch size is 1.
        """
        if lod is None:
            lod = [[13]]
        if shape is None:
            shape = [13, 23]
        assert len(lod[0]) == 1
        assert lod[0][0] == shape[0]
        x = np.random.uniform(0.1, 1, shape).astype('float32')
        return (x, lod)

    def lod_has_single_zero(self, lod):
        for i in range(len(lod) - 2):
            if lod[i] != 0 and lod[i + 1] == 0 and lod[i + 2] != 0:
                return True
        return False

    def lod_has_continuous_zero(self, lod):
        for i in range(len(lod) - 3):
            if (
                lod[i] != 0
                and lod[i + 1] == 0
                and lod[i + 2] == 0
                and lod[i + 3] != 0
            ):
                return True
        return False

    def get_sequence_instance_size_0_input(self, lod=None, shape=None):
        """Get LoD input data whose instance size is 0.
        All sequence related OP unittests should call this function to contain the case of instance size is 0.
        Args:
            lod (list[list of int], optional): Length-based LoD, lod[0]'s size must at least eight, lod[0] must at least two zeros at the beginning and at least two zeros at the end, the middle position of lod[0] contains a single zero and multiple zero. Default: [[0, 0, 4, 0, 3, 0, 0, 5, 0, 0]].
            shape (list, optional): Shape of input, shape[0] should be equals to lod[0][0]. Default: [13, 23].
        Returns:
            tuple (ndarray, lod): LoD input data whose instance size is 0.
        """
        if lod is None:
            lod = [[0, 0, 4, 0, 3, 0, 0, 5, 0, 0]]
        if shape is None:
            shape = [12, 10]
        assert len(lod[0]) >= 8
        assert (
            lod[0][0] == 0
            and lod[0][1] == 0
            and lod[0][-1] == 0
            and lod[0][-2] == 0
        )
        assert self.lod_has_single_zero(lod[0]) is True
        assert self.lod_has_continuous_zero(lod[0]) is True
        assert sum(lod[0]) == shape[0]

        x = np.random.uniform(0.1, 1, shape).astype('float32')
        return (x, lod)

    def append_input_output_for_dygraph(
        self, op_proto, np_list, is_input, if_return_inputs_grad_dict, block
    ):
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        def create_var(
            np_value,
            name,
            is_input,
            if_return_inputs_grad_dict,
            is_calc_ref=False,
        ):
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            np_value_temp = np_value
            has_lod = False
            lod_temp = None
            if isinstance(np_value, tuple):
                np_value_temp = np_value[0]
                has_lod = True
                lod_temp = np_value[1]

            if is_input:
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                if self.is_calc_ref and np_value_temp.dtype == np.float16:
                    v = self._create_var_from_numpy(
                        np_value_temp.astype(np.float32)
                    )
                else:
                    v = self._create_var_from_numpy(np_value_temp)

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                if if_return_inputs_grad_dict:
                    v.stop_gradient = False
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                    v.retain_grads()
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                if has_lod:
                    v.value().get_tensor().set_recursive_sequence_lengths(
                        lod_temp
                    )
            else:
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                if self.is_calc_ref and np_value_temp.dtype == np.float16:
                    v = block.create_var(
                        name=name,
                        dtype=np.float32,
                        type=core.VarDesc.VarType.LOD_TENSOR,
                        persistable=False,
                        stop_gradient=False,
                    )
                else:
                    v = block.create_var(
                        name=name,
                        dtype=np_value_temp.dtype,
                        type=core.VarDesc.VarType.LOD_TENSOR,
                        persistable=False,
                        stop_gradient=False,
                    )
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            return v

        # prepare variable for input or output
        var_dict = defaultdict(list)
        if if_return_inputs_grad_dict:
            inputs_grad_dict = defaultdict()
        proto_list = op_proto.inputs if is_input else op_proto.outputs
        for var_proto in proto_list:
            name = var_proto.name
            if (name not in np_list) and var_proto.dispensable:
                continue
            if name not in np_list:
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                assert var_proto.intermediate, f"{name} not found"
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                v = block.create_var(
                    dtype='float32', type=core.VarDesc.VarType.LOD_TENSOR
                )
                var_dict[name].append(v)
                if if_return_inputs_grad_dict:
                    inputs_grad_dict[name] = v
                continue
            if var_proto.duplicable:
                assert isinstance(
                    np_list[name], list
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                ), f"Duplicable {name} should be set as list"
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                var_list = []
                slot_name = name
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                for (name, np_value) in np_list[slot_name]:
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                    v = create_var(
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                        np_value,
                        name,
                        is_input,
                        if_return_inputs_grad_dict,
                        self.is_calc_ref,
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                    )
                    var_list.append(v)
                    if if_return_inputs_grad_dict:
                        inputs_grad_dict[name] = v
                var_dict[slot_name] = var_list
            else:
                nplist_value_temp = None
                name_temp = None
                if isinstance(np_list[name], list):
                    nplist_value_temp = np_list[name][0]
                    name_temp = name
                else:
                    nplist_value_temp = np_list[name]
                    name_temp = unique_name.generate("%s_out" % (name))
                v = create_var(
                    nplist_value_temp,
                    name_temp,
                    is_input,
                    if_return_inputs_grad_dict,
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                    self.is_calc_ref,
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                )
                var_dict[name].append(v)
                if if_return_inputs_grad_dict:
                    inputs_grad_dict[name] = v

        if if_return_inputs_grad_dict:
            return var_dict, inputs_grad_dict
        else:
            return var_dict

    def _check_api_outs_by_dygraph_outs(self, api_outs, dygraph_outs, place):
        """for quick verify, here we take a simplest strategy:
        1. we only check variable in api_outs.
        2. we simply check the numpy (tensor) .
        3. we set atol and rtol as 1e-5, because they are unrelated to dtype.
        """
        for name in api_outs:
            np_api = np.array(api_outs[name])
            np_dyg = np.array(dygraph_outs[name])
            np.testing.assert_allclose(
                np_api,
                np_dyg,
                rtol=1e-05,
                equal_nan=False,
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                err_msg='Operator ('
                + self.op_type
                + ') Output ('
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                + name
                + ') has diff at '
                + str(place)
                + '\nExpect '
                + str(np_dyg)
                + '\n'
                + 'But Got'
                + str(np_api)
                + ' in class '
                + self.__class__.__name__,
            )

    def _calc_python_api_output(self, place, egr_inps=None, egr_oups=None):
        """set egr_inps and egr_oups = None if you want to create it by yourself."""

        def construct_output_dict_by_kernel_sig(ret_tuple, output_sig):
            if hasattr(self, "python_out_sig"):
                output_sig = self.python_out_sig
            if not isinstance(ret_tuple, (tuple, list)):
                ret_tuple = [ret_tuple]
            if len(output_sig) == len(ret_tuple):
                # [assumption]: we assume {"Out": [Tensor]}
                return {a: [b] for a, b in zip(output_sig, ret_tuple)}
            else:
                # [assumption]: return multi-Tensor in a single output. such as paddle.split()
                assert (
                    len(output_sig) == 1
                ), "Don't support multi-output with multi-tensor output. (May be you can use set `python_out_sig`, see `test_squeeze2_op` as a example.)"
                return {output_sig[0]: ret_tuple}

        def cal_python_api(python_api, args, kernel_sig):
            inputs_sig, attrs_sig, outputs_sig = kernel_sig
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            args = OpTestUtils.assumption_assert_and_transform(
                args, len(inputs_sig)
            )
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            ret_tuple = python_api(*args)
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            result = construct_output_dict_by_kernel_sig(ret_tuple, outputs_sig)
            if hasattr(self, "python_out_sig_sub_name"):
                for key in self.python_out_sig_sub_name.keys():
                    for i in range(len(self.python_out_sig_sub_name[key])):
                        result[key][0][i].name = self.python_out_sig_sub_name[
                            key
                        ][i]
            return result
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        with fluid.dygraph.base.guard(place=place):
            block = fluid.default_main_program().global_block()
            op_proto = OpProtoHolder.instance().get_op_proto(self.op_type)
            # prepare input variable
            dygraph_tensor_inputs = (
                egr_inps
                if egr_inps
                else self.append_input_output_for_dygraph(
                    op_proto, self.inputs, True, False, block
                )
            )
            # prepare output variable
            dygraph_tensor_outputs = (
                egr_oups
                if egr_oups
                else self.append_input_output_for_dygraph(
                    op_proto, self.outputs, False, False, block
                )
            )

            # prepare attributes
            attrs_outputs = {}
            if hasattr(self, "attrs"):
                for attrs_name in self.attrs:
                    if self.attrs[attrs_name] is not None:
                        attrs_outputs[attrs_name] = self.attrs[attrs_name]

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            kernel_sig = OpTestUtils._get_kernel_signature(
                self.op_type,
                dygraph_tensor_inputs,
                dygraph_tensor_outputs,
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                canonicalize_attrs(attrs_outputs, op_proto),
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            )
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            if not kernel_sig or (
                len(kernel_sig[0]) == 0
                and len(kernel_sig[1]) == 0
                and len(kernel_sig[2]) == 0
            ):
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                return None
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            if not hasattr(self, "python_api"):
                print(kernel_sig)
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            assert hasattr(self, "python_api"), (
                "Detect there is KernelSignature for `%s` op, please set the `self.python_api` if you set check_dygraph = True"
                % self.op_type
            )
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            args = OpTestUtils.prepare_python_api_arguments(
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                self.python_api,
                dygraph_tensor_inputs,
                attrs_outputs,
                kernel_sig,
            )
            """ we directly return the cal_python_api value because the value is already tensor.
            """
            return cal_python_api(self.python_api, args, kernel_sig)

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    def _calc_dygraph_output(
        self,
        place,
        parallel=False,
        no_check_set=None,
        egr_inps=None,
        egr_oups=None,
    ):
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        self.__class__.op_type = (
            self.op_type
        )  # for ci check, please not delete it for now
        with fluid.dygraph.base.guard(place=place):
            block = fluid.default_main_program().global_block()

            op_proto = OpProtoHolder.instance().get_op_proto(self.op_type)

            # prepare input variable
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            inputs = (
                egr_inps
                if egr_inps
                else self.append_input_output_for_dygraph(
                    op_proto, self.inputs, True, False, block
                )
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            )
            # prepare output variable
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            outputs = (
                egr_oups
                if egr_oups
                else self.append_input_output_for_dygraph(
                    op_proto, self.outputs, False, False, block
                )
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            )

            # prepare attributes
            attrs_outputs = {}
            if hasattr(self, "attrs"):
                for attrs_name in self.attrs:
                    if self.attrs[attrs_name] is not None:
                        attrs_outputs[attrs_name] = self.attrs[attrs_name]

            block.append_op(
                type=self.op_type,
                inputs=inputs,
                outputs=outputs,
                attrs=attrs_outputs if hasattr(self, "attrs") else None,
            )
            return outputs

    def _calc_output(
        self,
        place,
        parallel=False,
        no_check_set=None,
        loss=None,
        enable_inplace=None,
        for_inplace_test=None,
    ):
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        with paddle.fluid.framework._static_guard():
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            program = Program()
            block = program.global_block()
            op = self._append_ops(block)

            inputs = self._get_inputs(block)
            outputs = self._get_outputs(block)
            feed_map = self.feed_var(inputs, place)

            if for_inplace_test:
                # Some variables' tensors hold no buffer (tensor's _holder is NULL), like XShape in reshape2 op,
                # and the shapes of those variables contain 0 (eg. Xshape.shape = [0, 2, 5]).
                # Set persistable for those variables in order to get them from global_scope for inplace grad test directly other than feed them,
                # since feed op calls check_memory_size() which fails when tensor's holder_ is NULL.
                for out_name in op.output_arg_names:
                    var = block.var(out_name)
                    if 0 in var.shape:
                        var.persistable = True
            original_program = program
            if parallel:
                use_cuda = False
                if isinstance(place, fluid.CUDAPlace):
                    use_cuda = True
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                compiled_prog = fluid.CompiledProgram(program)
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                program = compiled_prog
            fetch_list = getattr(self, "fetch_list", [])
            # if the fetch_list is customized by user, we use it directly.
            # if not, fill the fetch_list by the user configured outputs in test.
            if len(fetch_list) == 0:
                for var_name, var in outputs.items():
                    if no_check_set is not None and var_name in no_check_set:
                        continue
                    if isinstance(var, list):
                        for v in var:
                            fetch_list.append(v.name)
                    else:
                        fetch_list.append(var.name)
            # if the fetch_list still empty, fill the fetch_list by the operator output.
            if len(fetch_list) == 0:
                for out_name, out_dup in Operator.get_op_outputs(self.op_type):
                    fetch_list.append(str(out_name))
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            if enable_inplace is not None:
                build_strategy = fluid.BuildStrategy()
                build_strategy.enable_inplace = enable_inplace
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                compiled_prog = fluid.CompiledProgram(
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                    program, build_strategy=build_strategy
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                )
                program = compiled_prog

            executor = Executor(place)
            outs = executor.run(
                program,
                feed=feed_map,
                fetch_list=fetch_list,
                return_numpy=False,
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            )
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            self.op = op
            self.program = original_program
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        if for_inplace_test:
            return outs, fetch_list, feed_map, original_program, op.desc
        else:
            return outs, fetch_list

    def _compare_expect_and_actual_outputs(
        self, place, fetch_list, expect_outs, actual_outs, inplace_atol=None
    ):
        """Compare expect outs and actual outs of an tested op.

        Args:
            place (CPUPlace | CUDAPlace): The place where the op runs.
            fetch_list (list): The outputs of tested op.
            expect_outs (list): The expect outs of tested op.
            actual_outs (list): The actual outs of tested op.
            inplace_atol (float): The tolerable error, only set when tested op doesn't ensure computational consistency, like group_norm op.

        Returns:
            None.
        """
        # compare expect_outs and actual_outs
        for i, name in enumerate(fetch_list):
            # Note(zhiqiu): inplace_atol should be only set when op doesn't ensure
            # computational consistency.
            # When inplace_atol is not None, the inplace check uses numpy.allclose
            # to check inplace result instead of numpy.array_equal.
            expect_out = np.array(expect_outs[i])
            actual_out = np.array(actual_outs[i])
            if inplace_atol is not None:
                np.testing.assert_allclose(
                    expect_out,
                    actual_out,
                    rtol=1e-05,
                    atol=inplace_atol,
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                    err_msg='Operator ('
                    + self.op_type
                    + ') Output ('
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                    + name
                    + ') has diff at '
                    + str(place)
                    + ' when using and not using inplace'
                    + '\nExpect '
                    + str(expect_out)
                    + '\n'
                    + 'But Got'
                    + str(actual_out)
                    + ' in class '
                    + self.__class__.__name__,
                )
            else:
                np.testing.assert_array_equal(
                    expect_out,
                    actual_out,
                    err_msg='Output ('
                    + name
                    + ') has diff at '
                    + str(place)
                    + ' when using and not using inplace'
                    + '\nExpect '
                    + str(expect_out)
                    + '\n'
                    + 'But Got'
                    + str(actual_out)
                    + ' in class '
                    + self.__class__.__name__
                    + '\n',
                )

    def _construct_grad_program_from_forward(
        self, fwd_program, grad_op_desc, op_grad_to_var
    ):
        """Generate grad_program which contains the grad_op.

        Args:
            fwd_program (tuple): The program that contains grad_op_desc's corresponding forward op.
            grad_op_desc (OpDesc): The OpDesc of grad op.
            op_grad_to_var (dict): The relation of variables in grad op and its forward op.

        Returns:
            grad_program (program): The program which contains the grad_op.
        """
        grad_program = Program()
        grad_block = grad_program.global_block()
        new_op_desc = grad_block.desc.append_op()
        new_op_desc.copy_from(grad_op_desc)
        grad_program._sync_with_cpp()

        # Create grad vars based on fwd vars (shape and dtype)
        for arg in (
            grad_op_desc.input_arg_names() + grad_op_desc.output_arg_names()
        ):
            fwd_var_name = op_grad_to_var.get(arg, None)
            if fwd_var_name is None:
                fwd_var_name = arg
            fwd_var = fwd_program.global_block().vars.get(fwd_var_name)
            assert fwd_var is not None, "{} cannot be found".format(
                fwd_var_name
            )
            grad_var = grad_block.create_var(
                name=arg,
                dtype=fwd_var.dtype,
                shape=fwd_var.shape,
                type=fwd_var.type,
                persistable=False,
            )

            # Some variables' tensors hold no buffer (tensor's _holder is NULL), like XShape in reshape2 op,
            # and the shapes of those variables contain 0 (eg. Xshape.shape = [0, 2, 5]).
            # Set persistable for those variables in order to get them from global_scope for inplace grad test directly other than feed them,
            # since feed op calls check_memory_size() which fails when tensor's holder_ is NULL.
            if 0 in grad_var.shape:
                grad_var.persistable = True
        grad_program._sync_with_cpp()
        return grad_program

    def _construct_grad_feed_map_from_forward(
        self, place, fwd_res, grad_op_desc, op_grad_to_var
    ):
        """Generate grad_feed_map for grad_program.

        since we don`t really check gradient accuracy, but check the consistency when using and not using inplace,
        we use fwd outs (also inputs sometimes) to construct grad inputs.

        Args:
            place (CPUPlace | CUDAPlace): The place where the op runs.
            fwd_res (tuple): The outputs of its forward op, in the same form as returns of _calc_outputs() when for_inplace_test is True.
                i.e., tuple(fwd_outs, fwd_fetch_list, fwd_feed_map, fwd_program, fwd_op_desc)
            grad_op_desc (OpDesc): The OpDesc of grad op.
            op_grad_to_var (dict): The relation of variables in grad op and its fwd_op.

        Returns:
            grad_feed_map (dict): The feed_map of grad_op.
        """
        (
            fwd_outs,
            fwd_fetch_list,
            fwd_feed_map,
            fwd_program,
            fwd_op_desc,
        ) = fwd_res
        p = core.Place()
        p.set_place(place)
        grad_feed_map = {}
        for arg in grad_op_desc.input_arg_names():
            if arg in fwd_feed_map.keys():
                grad_feed_map[arg] = fwd_feed_map[arg]._copy(p)
            else:
                fwd_var_name = op_grad_to_var.get(arg, None)
                if fwd_var_name is None:
                    fwd_var_name = arg

                for i, out_name in enumerate(fwd_fetch_list):
                    if out_name == fwd_var_name:
                        # don't feed variables whose tensors hold no buffer (shape contains 0 like shape = [0,2,5] and holder_ is NULL), like XShape in reshape2 op.
                        # get them from global_scope directly since we have set them persistable in fwd execution
                        if 0 in fwd_program.global_block().var(out_name).shape:
                            continue
                        else:
                            grad_feed_map[arg] = fwd_outs[i]._copy(p)

        return grad_feed_map

    def _get_need_run_ops(self, op_desc, fwd_op_desc=None):
        """Postorder traversal of the 'grad' tree to get all ops that need to run during inplace test.
        An op needs to run druing inplace check if,
        (1) it has infer_inplace,
        (2) it has infer_inplace in its grad descendants. (since we need its outputs as to construct its grad's inputs)

        Args:
            op_desc (OpDesc): The op_desc of current op.
            fwd_op_desc (OpDesc): The op_desc of current op's forward op, None if current op has no forward op.
                Eg. relu's fwd_op is None, relu_grad's fwd_op is relu, relu_grad_grad's fwd_op is relu_grad, etc.

        Returns:
            need_run_ops (list[(op_desc, fwd_op_desc)]): The ops that need to run during inplace test.
        """
        need_run_ops = []
        visited_ops = []

        def _dfs_grad_op(op_desc, fwd_op_desc=None):
            visited_ops.append(op_desc.type())
            has_infer_inplace = fluid.core.has_infer_inplace(op_desc.type())
            has_grad_op_maker = fluid.core.has_grad_op_maker(op_desc.type())
            has_infer_inplace_in_grad_descendants = False
            if not has_grad_op_maker:
                has_infer_inplace_in_descendants = False
            else:
                # get grad_op_desc
                grad_op_desc_list, op_grad_to_var = core.get_grad_op_desc(
                    op_desc, set(), []
                )
                if not grad_op_desc_list:
                    has_infer_inplace_in_grad_descendants = False
                else:
                    for i, grad_op_desc in enumerate(grad_op_desc_list):
                        if (
                            grad_op_desc.type() not in visited_ops
                            and _dfs_grad_op(grad_op_desc, fwd_op_desc=op_desc)
                        ):
                            has_infer_inplace_in_grad_descendants = True
            if has_infer_inplace or has_infer_inplace_in_grad_descendants:
                need_run_ops.append((op_desc, fwd_op_desc))
                return True
            else:
                return False

        _dfs_grad_op(op_desc, fwd_op_desc=fwd_op_desc)
        return need_run_ops

    def _check_forward_inplace(
        self, place, no_check_set=None, inplace_atol=None
    ):
        """Check the inplace correctness of given op (self.op_type).
        Run the op twice with same inputs, one enable inplace and another disable, compare their outputs.

        Args:
            place (CPUPlace | CUDAPlace): The place where the op runs.
            no_check_set (list): The names of outputs that needn't check, like XShape of reshape op.
            inplace_atol (float): The tolerable error, only set when op doesn't ensure computational consistency, like group_norm op.

        Returns:
            expect_res (tuple(outs, fetch_list, feed_map, program, op_desc)): The results of given op.
                We return this to construct grad_program and grad_feed_map for grad inplace check.
        """
        # _calc_output() returns in the form tuple(outs, fetch_list, feed_map, program, op_desc) when for_inplace_test=True.
        expect_res = self._calc_output(
            place,
            no_check_set=no_check_set,
            enable_inplace=False,
            for_inplace_test=True,
        )
        actual_res = self._calc_output(
            place,
            no_check_set=no_check_set,
            enable_inplace=True,
            for_inplace_test=True,
        )
        # compare expect_outs and actual_outs
        self._compare_expect_and_actual_outputs(
            place,
            expect_res[1],
            expect_res[0],
            actual_res[0],
            inplace_atol=inplace_atol,
        )
        return expect_res

    def _calc_grad_output(
        self, place, fwd_res, grad_op_desc, enable_inplace=None
    ):
        """Calculate grad_output for given grad_op_desc.

        since we don`t really check gradient accuracy, but check the consistency when using and not using inplace,
        we use fwd outs (also inputs sometimes) to construct grad inputs.

        Args:
            place (CPUPlace | CUDAPlace): The place where the op runs.
            fwd_res (tuple): The outputs of its forward op, in the same form as returns of _calc_outputs() when for_inplace_test is True.
                i.e., tuple(fwd_outs, fwd_fetch_list, fwd_feed_map, fwd_program, fwd_op_desc).
            grad_op_desc (OpDesc): The OpDesc of grad op.
            enable_inplace (bool): Enable inplace or not.

        Returns:
            res (tuple(outs, fetch_list, feed_map, program, op_desc)): The results of given grad_op_desc.
        """
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        with paddle.fluid.framework._static_guard():
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            (
                fwd_outs,
                fwd_fetch_list,
                fwd_feed_map,
                fwd_program,
                fwd_op_desc,
            ) = fwd_res
            grad_op_desc_list, op_grad_to_var = core.get_grad_op_desc(
                fwd_op_desc, set(), []
            )
            grad_program = self._construct_grad_program_from_forward(
                fwd_program, grad_op_desc, op_grad_to_var
            )
            grad_feed_map = self._construct_grad_feed_map_from_forward(
                place, fwd_res, grad_op_desc, op_grad_to_var
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            )
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            grad_fetch_list = grad_op_desc.output_arg_names()
            exe = Executor(place)
            program = grad_program
            if enable_inplace is not None:
                build_strategy = fluid.BuildStrategy()
                build_strategy.enable_inplace = enable_inplace
                compiled_program = fluid.CompiledProgram(
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                    grad_program, build_strategy=build_strategy
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                )
                program = compiled_program
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            outs = exe.run(
                program,
                feed=grad_feed_map,
                fetch_list=grad_fetch_list,
                return_numpy=False,
            )
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        return outs, grad_fetch_list, grad_feed_map, grad_program, grad_op_desc

    def _check_grad_inplace(
        self, place, fwd_res, grad_op_desc, inplace_atol=None
    ):
        """Check the inplace correctness of given grad_op_desc.

        Run the grad op twice with same inputs, one enable inplace and another disable, compare their outputs.
        It works like _check_forward_inplace, but the way to construct program and feed_map differs.
        So we define a new function for grad, grad_grad, etc.

        Args:
            place (CPUPlace | CUDAPlace): The place where the op runs.
            fwd_res (tuple): The outputs of its forward op, in the same form as returns of _calc_outputs() when for_inplace_test is True.
                i.e., tuple(fwd_outs, fwd_fetch_list, fwd_feed_map, fwd_program, fwd_op_desc).
            grad_op_desc (OpDesc): The OpDesc of grad op.
            inplace_atol (float): The tolerable error, only set when op doesn't ensure computational consistency, like group_norm op.

        Returns:
            expect_res (tuple(outs, fetch_list, feed_map, program, op_desc)): The results of given op.
                We return this to construct grad_program and grad_feed_map for grad inplace check.
        """
        expect_res = self._calc_grad_output(
            place, fwd_res, grad_op_desc, enable_inplace=False
        )
        actual_res = self._calc_grad_output(
            place, fwd_res, grad_op_desc, enable_inplace=True
        )

        self._compare_expect_and_actual_outputs(
            place,
            expect_res[1],
            expect_res[0],
            actual_res[0],
            inplace_atol=inplace_atol,
        )
        return expect_res

    def check_inplace_output_with_place(
        self, place, no_check_set=None, inplace_atol=None
    ):
        """Chech the inplace correctness of given op, its grad op, its grad_grad op, etc.

        (1) Get all ops need to run. (see conditions in _get_need_run_ops())
        (2) Run op in need_run_ops, and do inplace check if it has infer_inplace.

        Args:
            place (CPUPlace | CUDAPlace): The place where the op runs.
            no_check_set (list): The names of outputs that needn't check, like XShape of reshape op.
            inplace_atol (float): The tolerable error, only set when op doesn't ensure computational consistency, like group_norm op.

        Returns:
            None
        """
        if getattr(self, "no_need_check_inplace", False):
            return

        has_infer_inplace = fluid.core.has_infer_inplace(self.op_type)
        has_grad_op_maker = fluid.core.has_grad_op_maker(self.op_type)
        fwd_res = self._calc_output(
            place, no_check_set=no_check_set, for_inplace_test=True
        )
        op_desc = fwd_res[4]
        need_run_ops = self._get_need_run_ops(op_desc)

        res = {}
        if hasattr(self, 'attrs') and bool(self.attrs.get('use_xpu', False)):
            return
        for op_desc, father_op_desc in reversed(need_run_ops):
            # The first one is the forward op
            has_infer_inplace = fluid.core.has_infer_inplace(op_desc.type())
            if op_desc.type() == self.op_type:
                if has_infer_inplace:
                    res[op_desc] = self._check_forward_inplace(
                        place,
                        no_check_set=no_check_set,
                        inplace_atol=inplace_atol,
                    )
                else:
                    res[op_desc] = self._calc_output(
                        place, no_check_set=no_check_set, for_inplace_test=True
                    )
            else:
                # TODO(zhiqiu): enhance inplace_grad test for ops (sum and activation) using mkldnn
                # skip op that use_mkldnn currently
                flags_use_mkldnn = fluid.core.globals()["FLAGS_use_mkldnn"]
                attrs_use_mkldnn = hasattr(self, 'attrs') and bool(
                    self.attrs.get('use_mkldnn', False)
                )
                if flags_use_mkldnn or attrs_use_mkldnn:
                    warnings.warn(
                        "check inplace_grad for ops using mkldnn is not supported"
                    )
                    continue
                if has_infer_inplace:
                    fwd_res = res[father_op_desc]
                    res[op_desc] = self._check_grad_inplace(
                        place, fwd_res, op_desc, inplace_atol=inplace_atol
                    )
                else:
                    res[op_desc] = self._calc_grad_output(
                        place, fwd_res, op_desc
                    )

    def check_output_with_place(
        self,
        place,
        atol=0,
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        rtol=0,
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        no_check_set=None,
        equal_nan=False,
        check_dygraph=True,
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        check_prim=False,
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        inplace_atol=None,
    ):
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        core._set_prim_all_enabled(False)
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        core.set_prim_eager_enabled(False)
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        if hasattr(self, "use_custom_device") and self.use_custom_device:
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            check_dygraph = False

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        def find_imperative_actual(target_name, dygraph_outs, place):
            for name in dygraph_outs:
                if name == target_name:
                    return dygraph_outs[name][0]
                var_list = dygraph_outs[name]
                for i, var in enumerate(var_list):
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                    if isinstance(var, list):
                        for tensor in var:
                            if tensor.name == target_name:
                                return tensor
                    elif (
                        isinstance(var, paddle.Tensor)
                        and var.name == target_name
                    ):
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                        return dygraph_outs[name][i]
            self.assertTrue(
                False,
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                f"Found failed {dygraph_outs.keys()} {target_name}",
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            )

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        def find_imperative_expect(target_name, dygraph_outs, place):
            for name in dygraph_outs:
                if name == target_name:
                    return dygraph_outs[name][0]
                var_list = dygraph_outs[name]
                for i, var in enumerate(var_list):
                    if var.name == target_name:
                        return dygraph_outs[name][i]
            self.assertTrue(
                False,
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                f"Found failed {dygraph_outs.keys()} {target_name}",
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            )

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        def find_actual(target_name, fetch_list):
            found = [
                i
                for i, var_name in enumerate(fetch_list)
                if var_name == target_name
            ]
            self.assertTrue(
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                len(found) == 1, f"Found {len(found)} {target_name}"
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            )
            return found[0]

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        def find_expect(target_name, fetch_list):
            found = [
                i
                for i, var_name in enumerate(fetch_list)
                if var_name == target_name
            ]
            self.assertTrue(
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                len(found) == 1, f"Found {len(found)} {target_name}"
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            )
            return found[0]

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        class Checker:
            """base class for check with self.outputs.
            currently don't support check between checkers.
            """

            def __init__(self, op_test, expect_dict):
                """expect_dict is the self.outputs
                support : {str: [numpy]} and {str: [(str, numpy), (str, numpy)]}
                """
                self.expects = expect_dict
                self.checker_name = "checker"
                self.op_test = op_test  # stop the op_test object.
                self.op_type = op_test.op_type

            def init(self):
                pass

            def convert_uint16_to_float(self, actual_np, expect_np):
                raise NotImplementedError("base class, not implement!")

            def calculate_output(self):
                """
                judge whether convert current output and expect to uint16.
                return True | False
                """

            def _is_skip_name(self, name):
                if name not in self.expects:
                    return True
                if no_check_set is not None and name in no_check_set:
                    return True
                return False

            def find_actual_value(self, name):
                """return: (actual_tensor(var_base), actual_numpy)"""
                raise NotImplementedError("base class, not implement!")

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            def find_expect_value(self, name):
                """return: (expect_tensor(var_base), actual_numpy)"""
                raise NotImplementedError("base class, not implement!")

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            def _compare_numpy(self, name, actual_np, expect_np):
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                if actual_np.shape == expect_np.shape:
                    np.testing.assert_allclose(
                        actual_np,
                        expect_np,
                        atol=atol,
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                        rtol=self.rtol if hasattr(self, 'rtol') else rtol,
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                        equal_nan=equal_nan,
                        err_msg=(
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                            "Operator ("
                            + self.op_type
                            + ") Output ("
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                            + name
                            + ") has diff at "
                            + str(place)
                            + " in "
                            + self.checker_name
                        ),
                    )
                    return
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                self.op_test.assertTrue(
                    np.allclose(
                        actual_np,
                        expect_np,
                        atol=atol,
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                        rtol=self.rtol if hasattr(self, 'rtol') else rtol,
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                        equal_nan=equal_nan,
                    ),
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                    "Operator ("
                    + self.op_type
                    + ") Output ("
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                    + name
                    + ") has diff at "
                    + str(place)
                    + " in "
                    + self.checker_name,
                )

            def _compare_list(self, name, actual, expect):
                """if expect is a tuple, we need to compare list."""
                raise NotImplementedError("base class, not implement!")

            def compare_single_output_with_expect(self, name, expect):
                actual, actual_np = self.find_actual_value(name)
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                # expect_np = expect[0] if isinstance(expect, tuple) else expect
                if self.op_test.is_fp16_compared_with_fp32():
                    expect, expect_np = self.find_expect_value(name)
                else:
                    expect_np = (
                        expect[0] if isinstance(expect, tuple) else expect
                    )
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                actual_np, expect_np = self.convert_uint16_to_float_ifneed(
                    actual_np, expect_np
                )
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                # modify there for fp32 check

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                # NOTE(zhiqiu): np.allclose([], [1.]) returns True
                # see details: https://stackoverflow.com/questions/38331703/why-does-numpys-broadcasting-sometimes-allow-comparing-arrays-of-different-leng
                if expect_np.size == 0:
                    self.op_test.assertTrue(actual_np.size == 0)
                self._compare_numpy(name, actual_np, expect_np)
                if isinstance(expect, tuple):
                    self._compare_list(name, actual, expect)

            def compare_outputs_with_expects(self):
                for out_name, out_dup in Operator.get_op_outputs(self.op_type):
                    if self._is_skip_name(out_name):
                        continue
                    if out_dup:
                        # if self.output = {'name': [(subname, Tensor), (subname, Tensor)]}
                        sub_out = self.expects[out_name]
                        if not isinstance(sub_out, list):
                            raise AssertionError(
                                "sub_out type %s is not list", type(sub_out)
                            )
                        for item in sub_out:
                            sub_out_name, expect = item[0], item[1]
                            self.compare_single_output_with_expect(
                                sub_out_name, expect
                            )
                    else:
                        expect = self.expects[out_name]
                        self.compare_single_output_with_expect(out_name, expect)

            def check(self):
                """
                return None means ok, raise Error means failed.

                the main enter point of Checker class
                """
                self.init()
                self.calculate_output()
                self.compare_outputs_with_expects()

        class StaticChecker(Checker):
            def init(self):
                self.checker_name = "static checker"

            def calculate_output(self):
                outs, fetch_list = self.op_test._calc_output(
                    place, no_check_set=no_check_set
                )
                self.outputs = outs
                self.fetch_list = fetch_list
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                if self.op_test.is_fp16_compared_with_fp32():
                    self.op_test.enable_cal_ref_output()
                    ref_outs, ref_fetch_list = self.op_test._calc_output(
                        place, no_check_set=no_check_set
                    )
                    self.op_test.disable_cal_ref_output()
                    self.ref_outputs = ref_outs
                    self.ref_fetch_list = ref_fetch_list
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            def find_actual_value(self, name):
                idx = find_actual(name, self.fetch_list)
                actual = self.outputs[idx]
                actual_t = np.array(actual)
                return actual, actual_t

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            def find_expect_value(self, name):
                idx = find_expect(name, self.ref_fetch_list)
                expect = self.ref_outputs[idx]
                expect_t = np.array(expect)
                return expect, expect_t

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            def convert_uint16_to_float_ifneed(self, actual_np, expect_np):
                """
                judge whether convert current output and expect to uint16.
                return True | False
                """
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                if actual_np.dtype == np.uint16:
                    if expect_np.dtype in [np.float32, np.float64]:
                        actual_np = convert_uint16_to_float(actual_np)
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                    self.rtol = 1.0e-2
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                elif actual_np.dtype == np.float16:
                    self.rtol = 1.0e-3
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                else:
                    self.rtol = 1.0e-5
                if (
                    expect_np.dtype == np.uint16
                    and actual_np.dtype == np.uint16
                ):
                    nonlocal atol
                    expect_np = convert_uint16_to_float(expect_np)
                    actual_np = convert_uint16_to_float(actual_np)
                    atol = max(atol, 0.03)
                return actual_np, expect_np

            def _compare_list(self, name, actual, expect):
                """if expect is a tuple, we need to compare list."""
                self.op_test.assertListEqual(
                    actual.recursive_sequence_lengths(),
                    expect[1],
                    "Output (" + name + ") has different lod at " + str(place),
                )

        class DygraphChecker(Checker):
            def init(self):
                self.checker_name = "dygraph checker"

            def calculate_output(self):
                # we only check end2end api when check_dygraph=True
                self.is_python_api_test = True
                dygraph_outs = self.op_test._calc_python_api_output(place)
                if dygraph_outs is None:
                    self.is_python_api_test = False
                    # missing KernelSignature, fall back to eager middle output.
                    dygraph_outs = self.op_test._calc_dygraph_output(
                        place, no_check_set=no_check_set
                    )
                self.outputs = dygraph_outs
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                if self.op_test.is_fp16_compared_with_fp32():
                    self.op_test.enable_cal_ref_output()
                    self.is_python_api_test = True
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                    self.ref_outputs = self.op_test._calc_python_api_output(
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                        place
                    )
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                    if self.ref_outputs is None:
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                        self.is_python_api_test = False
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                        # missing KernelSignature, fall back to eager middle output.
                        self.ref_outputs = self.op_test._calc_dygraph_output(
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                            place, no_check_set=no_check_set
                        )
                    self.op_test.disable_cal_ref_output()

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            def _compare_numpy(self, name, actual_np, expect_np):
                if (
                    functools.reduce(lambda x, y: x * y, actual_np.shape, 1)
                    == 0
                    and functools.reduce(lambda x, y: x * y, expect_np.shape, 1)
                    == 0
                ):
                    pass
                else:
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                    if actual_np.shape == expect_np.shape:
                        np.testing.assert_allclose(
                            actual_np,
                            expect_np,
                            atol=atol,
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                            rtol=self.rtol if hasattr(self, 'rtol') else rtol,
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                            equal_nan=equal_nan,
                            err_msg=(
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                                "Operator ("
                                + self.op_type
                                + ") Output ("
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                                + name
                                + ") has diff at "
                                + str(place)
                                + " in "
                                + self.checker_name
                            ),
                        )
                        return
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                    self.op_test.assertTrue(
                        np.allclose(
                            actual_np,
                            expect_np,
                            atol=atol,
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                            rtol=self.rtol if hasattr(self, 'rtol') else rtol,
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                            equal_nan=equal_nan,
                        ),
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                        "Operator ("
                        + self.op_type
                        + ") Output ("
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                        + name
                        + ") has diff at "
                        + str(place)
                        + " in "
                        + self.checker_name,
                    )

            def convert_uint16_to_float_ifneed(self, actual_np, expect_np):
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                if actual_np.dtype == np.uint16:
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                    self.rtol = 1.0e-2
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                elif actual_np.dtype == np.float16:
                    self.rtol = 1.0e-3
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                else:
                    self.rtol = 1.0e-5
                if self.op_test.is_bfloat16_op():
                    if actual_np.dtype == np.uint16:
                        actual_np = convert_uint16_to_float(actual_np)
                    if expect_np.dtype == np.uint16:
                        expect_np = convert_uint16_to_float(expect_np)
                return actual_np, expect_np

            def find_actual_value(self, name):
                with fluid.dygraph.base.guard(place=place):
                    imperative_actual = find_imperative_actual(
                        name, self.outputs, place
                    )
                    imperative_actual_t = np.array(
                        imperative_actual.value().get_tensor()
                    )
                    return imperative_actual, imperative_actual_t

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            def find_expect_value(self, name):
                with fluid.dygraph.base.guard(place=place):
                    imperative_expect = find_imperative_expect(
                        name, self.ref_outputs, place
                    )
                    imperative_expect_t = np.array(
                        imperative_expect.value().get_tensor()
                    )
                    return imperative_expect, imperative_expect_t

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            def _compare_list(self, name, actual, expect):
                """if expect is a tuple, we need to compare list."""
                with fluid.dygraph.base.guard(place=place):
                    self.op_test.assertListEqual(
                        actual.value()
                        .get_tensor()
                        .recursive_sequence_lengths(),
                        expect[1],
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                        "Operator ("
                        + self.op_type
                        + ") Output ("
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                        + name
                        + ") has different lod at "
                        + str(place)
                        + " in dygraph mode",
                    )

            def _is_skip_name(self, name):
                # if in final state and kernel signature don't have name, then skip it.
                if (
                    self.is_python_api_test
                    and hasattr(self.op_test, "python_out_sig")
                    and name not in self.op_test.python_out_sig
                ):
                    return True
                return super()._is_skip_name(name)

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        if check_prim:
            prim_checker = PrimForwardChecker(self, place)
            prim_checker.check()
            # Support operators which are not in the NO_FP64_CHECK_GRAD_OP_LIST list can be test prim with fp32
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            self.__class__.check_prim = True
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            self.__class__.op_type = self.op_type
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        # set some flags by the combination of arguments.
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        if self.is_float16_op():
            self.dtype = np.float16
            self.__class__.dtype = self.dtype
            self.output_dtype = np.float16
        elif self.is_bfloat16_op():
            self.dtype = np.uint16
            self.__class__.dtype = self.dtype
            self.output_dtype = np.uint16
        else:
            self.infer_dtype_from_inputs_outputs(self.inputs, self.outputs)
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        if (
            self.dtype == np.float64
            and self.op_type
            not in op_threshold_white_list.NEED_FIX_FP64_CHECK_OUTPUT_THRESHOLD_OP_LIST
        ):
            atol = 0

        if self.is_bfloat16_op():
            if self.is_mkldnn_op():
                check_dygraph = False

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                if (
                    hasattr(self, 'force_fp32_output')
                    and self.force_fp32_output
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                ):
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                    atol = 1e-2 if atol < 1e-2 else atol
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                else:
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                    atol = 2 if atol < 2 else atol
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            else:
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                atol = 1e-2 if atol < 1e-2 else atol
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        if self.is_float16_op():
            atol = 1e-3 if atol < 1e-3 else atol
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        if no_check_set is not None:
            if (
                self.op_type
                not in no_check_set_white_list.no_check_set_white_list
            ):
                raise AssertionError(
                    "no_check_set of op %s must be set to None." % self.op_type
                )
        static_checker = StaticChecker(self, self.outputs)
        static_checker.check()
        outs, fetch_list = static_checker.outputs, static_checker.fetch_list
        if check_dygraph:
            dygraph_checker = DygraphChecker(self, self.outputs)
            dygraph_checker.check()
            dygraph_dygraph_outs = dygraph_checker.outputs

        # Note(zhiqiu): inplace_atol should be only set when op doesn't ensure
        # computational consistency.
        # For example, group_norm uses AtomicAdd on CUDAPlace, which do not ensure
        # computation order when multiple threads write the same address. So the
        # result of group_norm is non-deterministic when datatype is float.
        # When inplace_atol is not None, the inplace check uses numpy.allclose
        # to check inplace result instead of numpy.array_equal.
        if inplace_atol is not None:
            warnings.warn(
                "inplace_atol should only be set when op doesn't ensure computational consistency, please check it!"
            )
        # Check inplace for given op, its grad op, its grad_grad op, etc.
        # No effect on original OpTest
        # Currently not support ParallelExecutor on XPUPlace.
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        if not paddle.is_compiled_with_xpu() and not isinstance(
            place, core.CustomPlace
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        ):
            self.check_inplace_output_with_place(
                place, no_check_set=no_check_set, inplace_atol=inplace_atol
            )

        if check_dygraph:
            return outs, dygraph_dygraph_outs, fetch_list
        else:
            return outs, fetch_list

    def check_compile_vs_runtime(self, fetch_list, fetch_outs):
        def find_fetch_index(target_name, fetch_list):
            found = [
                i
                for i, var_name in enumerate(fetch_list)
                if var_name == target_name
            ]
            if len(found) == 0:
                return -1
            else:
                self.assertTrue(
                    len(found) == 1,
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                    f"Found {len(found)} {target_name}",
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                )
                return found[0]

        for name in self.op.desc.output_names():
            var_names = self.op.desc.output(name)
            for var_name in var_names:
                i = find_fetch_index(var_name, fetch_list)
                if i == -1:
                    # The output is dispensiable or intermediate.
                    break
                out = fetch_outs[i]
                if isinstance(out, core.LoDTensor):
                    lod_level_runtime = len(out.lod())
                else:
                    if isinstance(out, core.LoDTensorArray):
                        warnings.warn(
                            "The check of LoDTensorArray's lod_level is not implemented now!"
                        )
                    lod_level_runtime = 0

                var = self.program.global_block().var(var_name)
                if var.type == core.VarDesc.VarType.LOD_TENSOR:
                    lod_level_compile = var.lod_level
                else:
                    lod_level_compile = 0
                self.assertEqual(
                    lod_level_compile,
                    lod_level_runtime,
                    "The lod_level of Output ("
                    + name
                    + ") is different between compile-time and runtime ("
                    + str(lod_level_compile)
                    + " vs "
                    + str(lod_level_runtime)
                    + ")",
                )

    def _get_places(self):
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        if self.dtype == np.float16 or self.dtype == "float16":
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            if core.is_compiled_with_cuda() and core.op_support_gpu(
                self.op_type
            ):
                place = core.CUDAPlace(0)
                if core.is_float16_supported(place):
                    return [place]
                else:
                    return []
            else:
                return []
        places = [fluid.CPUPlace()]
        cpu_only = self._cpu_only if hasattr(self, '_cpu_only') else False
        if (
            core.is_compiled_with_cuda()
            and core.op_support_gpu(self.op_type)
            and not cpu_only
        ):
            places.append(core.CUDAPlace(0))
        return places

    def check_output(
        self,
        atol=1e-5,
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        rtol=1e-5,
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        no_check_set=None,
        equal_nan=False,
        check_dygraph=True,
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        check_prim=False,
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        inplace_atol=None,
    ):

        self.__class__.op_type = self.op_type
        if self.is_mkldnn_op():
            self.__class__.use_mkldnn = True

        if self.is_xpu_op():
            self.__class__.use_xpu = True

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        if hasattr(self, "use_custom_device") and self.use_custom_device:
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            check_dygraph = False

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        places = self._get_places()
        for place in places:
            res = self.check_output_with_place(
                place,
                atol,
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                rtol,
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                no_check_set,
                equal_nan,
                check_dygraph=check_dygraph,
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                check_prim=check_prim,
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                inplace_atol=inplace_atol,
            )
            if check_dygraph:
                outs, dygraph_dygraph_outs, fetch_list = res
            else:
                outs, fetch_list = res
            if (
                self.op_type
                not in compile_vs_runtime_white_list.COMPILE_RUN_OP_WHITE_LIST
            ):
                self.check_compile_vs_runtime(fetch_list, outs)

    def check_output_customized(self, checker, custom_place=None):
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        self.__class__.op_type = self.op_type
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        places = self._get_places()
        if custom_place:
            places.append(custom_place)
        for place in places:
            outs = self.calc_output(place)
            outs = [np.array(out) for out in outs]
            outs.sort(key=len)
            checker(outs)

    def check_output_with_place_customized(self, checker, place):
        outs = self.calc_output(place)
        outs = [np.array(out) for out in outs]
        outs.sort(key=len)
        checker(outs)

    def _assert_is_close(
        self,
        numeric_grads,
        analytic_grads,
        names,
        max_relative_error,
        msg_prefix,
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        atol=1e-5,
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    ):
        for a, b, name in zip(numeric_grads, analytic_grads, names):
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            # Used by bfloat16 for now to solve precision problem
            if self.is_bfloat16_op():
                if a.size == 0:
                    self.assertTrue(b.size == 0)
                np.testing.assert_allclose(
                    b,
                    a,
                    rtol=max_relative_error,
                    atol=atol,
                    equal_nan=False,
                    err_msg=(
                        "Operator %s error, %s variable %s (shape: %s, dtype: %s) max gradient diff over limit"
                    )
                    % (
                        self.op_type,
                        msg_prefix,
                        name,
                        str(a.shape),
                        self.dtype,
                    ),
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                )
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            else:
                # It asserts np.abs(a - b) / np.abs(a) < max_relative_error, in which
                # max_relative_error is 1e-7. According to the value of np.abs(a), we
                # change np.abs(a) to achieve dynamic threshold. For example, if
                # the value of np.abs(a) is between 1e-10 and 1e-8, we set np.abs(a)*=1e4.
                # Therefore, it asserts np.abs(a - b) / (np.abs(a)*1e4) < max_relative_error,
                # which is the same as np.abs(a - b) / np.abs(a) < max_relative_error*1e4.
                abs_a = np.abs(a)
                if abs_a.ndim > 0:
                    if (
                        self.dtype == np.float64
                        and self.op_type
                        not in op_threshold_white_list.NEED_FIX_FP64_CHECK_GRAD_THRESHOLD_OP_LIST
                    ):
                        abs_a[abs_a < 1e-10] = 1e-3
                        abs_a[
                            np.logical_and(abs_a > 1e-10, abs_a <= 1e-8)
                        ] *= 1e4
                        abs_a[
                            np.logical_and(abs_a > 1e-8, abs_a <= 1e-6)
                        ] *= 1e2
                    elif self.is_bfloat16_op():
                        abs_a[abs_a < 1e-2] = 1
                    else:
                        abs_a[abs_a < 1e-3] = 1
                elif abs_a.ndim == 0:
                    if (
                        self.dtype == np.float64
                        and self.op_type
                        not in op_threshold_white_list.NEED_FIX_FP64_CHECK_GRAD_THRESHOLD_OP_LIST
                    ):
                        if abs_a < 1e-10:
                            abs_a = 1e-3
                        elif abs_a > 1e-10 and abs_a <= 1e-8:
                            abs_a = abs_a * 1e4
                        elif abs_a > 1e-8 and abs_a <= 1e-6:
                            abs_a = abs_a * 1e2
                    elif self.is_bfloat16_op():
                        abs_a = 1 if abs_a < 1e-2 else abs_a
                    else:
                        abs_a = 1 if abs_a < 1e-3 else abs_a

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                if self.dtype == np.bool_:
                    diff_mat = np.abs(a ^ b) / abs_a
                else:
                    diff_mat = np.abs(a - b) / abs_a
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                max_diff = np.max(diff_mat)

                def err_msg():
                    offset = np.argmax(diff_mat > max_relative_error)
                    return (
                        "Operator %s error, %s variable %s (shape: %s, dtype: %s) max gradient diff %e over limit %e, "
                        "the first error element is %d, expected %e, but got %e."
                    ) % (
                        self.op_type,
                        msg_prefix,
                        name,
                        str(a.shape),
                        self.dtype,
                        max_diff,
                        max_relative_error,
                        offset,
                        a.flatten()[offset],
                        b.flatten()[offset],
                    )
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                self.assertLessEqual(max_diff, max_relative_error, err_msg())
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    def _check_grad_helper(self):
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        if self.is_float16_op():
            self.dtype = np.float16
            self.__class__.dtype = self.dtype
            self.output_dtype = np.float16
        elif self.is_bfloat16_op():
            self.dtype = np.uint16
            self.__class__.dtype = self.dtype
            self.output_dtype = np.uint16
        else:
            self.infer_dtype_from_inputs_outputs(self.inputs, self.outputs)
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        self.__class__.op_type = self.op_type
        self.__class__.exist_check_grad = True
        if self.dtype == np.float64:
            self.__class__.exist_fp64_check_grad = True

    def check_grad(
        self,
        inputs_to_check,
        output_names,
        no_grad_set=None,
        numeric_grad_delta=0.005,
        in_place=False,
        max_relative_error=0.005,
        user_defined_grads=None,
        user_defined_grad_outputs=None,
        check_dygraph=True,
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        check_prim=False,
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        only_check_prim=False,
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        atol=1e-5,
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    ):
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        if hasattr(self, "use_custom_device") and self.use_custom_device:
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            check_dygraph = False

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        self._check_grad_helper()
        places = self._get_places()
        for place in places:
            self.check_grad_with_place(
                place,
                inputs_to_check,
                output_names,
                no_grad_set,
                numeric_grad_delta,
                in_place,
                max_relative_error,
                user_defined_grads,
                user_defined_grad_outputs,
                check_dygraph=check_dygraph,
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                check_prim=check_prim,
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                only_check_prim=only_check_prim,
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                atol=atol,
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            )

    def check_grad_with_place(
        self,
        place,
        inputs_to_check,
        output_names,
        no_grad_set=None,
        numeric_grad_delta=0.005,
        in_place=False,
        max_relative_error=0.005,
        user_defined_grads=None,
        user_defined_grad_outputs=None,
        check_dygraph=True,
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        check_prim=False,
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        only_check_prim=False,
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        numeric_place=None,
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        atol=1e-5,
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    ):
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        if hasattr(self, "use_custom_device") and self.use_custom_device:
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            check_dygraph = False

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        core._set_prim_all_enabled(False)
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        core.set_prim_eager_enabled(False)
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        if check_prim:
            prim_grad_checker = PrimGradChecker(
                self,
                place,
                inputs_to_check,
                output_names,
                no_grad_set,
                user_defined_grad_outputs,
            )
            prim_grad_checker.check()
            # Support operators which are not in the NO_FP64_CHECK_GRAD_OP_LIST list can be test prim with fp32
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            self.__class__.check_prim = True
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            self._check_grad_helper()
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            if only_check_prim:
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                return
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        self.scope = core.Scope()
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        op_inputs = self.inputs if hasattr(self, "inputs") else {}
        op_outputs = self.outputs if hasattr(self, "outputs") else {}
        op_attrs = self.attrs if hasattr(self, "attrs") else {}
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        self._check_grad_helper()
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        if self.is_bfloat16_op():
            if self.is_mkldnn_op():
                check_dygraph = False
                atol = 1e-2 if atol < 1e-2 else atol
            else:
                atol = 1e-1 if atol < 1e-1 else atol

        if self.is_float16_op():
            atol = 1e-3 if atol < 1e-3 else atol
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        if (
            self.dtype == np.float64
            and self.op_type
            not in op_threshold_white_list.NEED_FIX_FP64_CHECK_GRAD_THRESHOLD_OP_LIST
        ):
            numeric_grad_delta = 1e-5
            max_relative_error = 1e-7

        cache_list = None
        if hasattr(self, "cache_name_list"):
            cache_list = self.cache_name_list

        # oneDNN numeric gradient should use CPU kernel
        use_onednn = False
        if "use_mkldnn" in op_attrs and op_attrs["use_mkldnn"]:
            op_attrs["use_mkldnn"] = False
            use_onednn = True

        self.op = create_op(
            self.scope,
            self.op_type,
            op_inputs,
            op_outputs,
            op_attrs,
            cache_list=cache_list,
        )

        if use_onednn:
            op_attrs["use_mkldnn"] = True

        if no_grad_set is None:
            no_grad_set = set()
        else:
            if (
                (self.op_type not in no_grad_set_white_list.NEED_TO_FIX_OP_LIST)
                and (
                    self.op_type not in no_grad_set_white_list.NOT_CHECK_OP_LIST
                )
                and (not self.is_bfloat16_op())
            ):
                raise AssertionError(
                    "no_grad_set must be None, op_type is "
                    + self.op_type
                    + " Op."
                )

        for input_to_check in inputs_to_check:
            set_input(self.scope, self.op, self.inputs, place)
            tensor_to_check = self.scope.find_var(input_to_check).get_tensor()
            tensor_size = functools.reduce(
                lambda a, b: a * b, tensor_to_check.shape(), 1
            )
            tensor_ndim = len(tensor_to_check.shape())
            # for 0D Tensor, it's additional case for OP, so not raise error
            if tensor_ndim > 0 and tensor_size < 100:
                self.__class__.input_shape_is_large = False

        if not type(output_names) is list:
            output_names = [output_names]

        if numeric_place is None:
            numeric_place = place

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        if user_defined_grads is None and self.is_fp16_compared_with_fp32():
            self.enable_cal_ref_output()
            numeric_grads = self._get_gradient(
                inputs_to_check,
                place,
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                output_names,
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                no_grad_set,
                user_defined_grad_outputs,
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            )
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            self.disable_cal_ref_output()
        else:
            numeric_grads = user_defined_grads or [
                get_numeric_gradient(
                    numeric_place,
                    self.scope,
                    self.op,
                    self.inputs,
                    input_to_check,
                    output_names,
                    delta=numeric_grad_delta,
                    in_place=in_place,
                )
                for input_to_check in inputs_to_check
            ]

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        analytic_grads = self._get_gradient(
            inputs_to_check,
            place,
            output_names,
            no_grad_set,
            user_defined_grad_outputs,
        )
        # comparison of bf16 results will happen as fp32
        # loop over list of grads and convert bf16 to fp32
        fp32_analytic_grads = []
        for grad in analytic_grads:
            if grad.dtype == np.uint16:
                grad = convert_uint16_to_float(grad)
                max_relative_error = (
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                    0.01 if max_relative_error < 0.01 else max_relative_error
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                )
            fp32_analytic_grads.append(grad)
        analytic_grads = fp32_analytic_grads

        fp32_numeric_grads = []
        for grad in numeric_grads:
            if grad.dtype == np.uint16:
                grad = convert_uint16_to_float(grad)
                max_relative_error = (
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                    0.01 if max_relative_error < 0.01 else max_relative_error
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                )
            fp32_numeric_grads.append(grad)
        numeric_grads = fp32_numeric_grads

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        if self.is_float16_op():
            max_relative_error = (
                0.001 if max_relative_error < 0.001 else max_relative_error
            )

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        self._assert_is_close(
            numeric_grads,
            analytic_grads,
            inputs_to_check,
            max_relative_error,
            "Gradient Check On %s" % str(place),
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            atol=atol,
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        )

        if check_dygraph:
            with fluid.dygraph.base.guard(place):
                dygraph_dygraph_grad = self._get_dygraph_grad(
                    inputs_to_check,
                    place,
                    output_names,
                    user_defined_grad_outputs,
                    no_grad_set,
                    check_dygraph,
                )
                fp32_grads = []
                for grad in dygraph_dygraph_grad:
                    if grad.dtype == np.uint16:
                        grad = convert_uint16_to_float(grad)
                        max_relative_error = (
                            0.03
                            if max_relative_error < 0.03
                            else max_relative_error
                        )
                    fp32_grads.append(grad)
                dygraph_dygraph_grad = fp32_grads
                self._assert_is_close(
                    numeric_grads,
                    dygraph_dygraph_grad,
                    inputs_to_check,
                    max_relative_error,
                    "Gradient Check On %s" % str(place),
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                    atol=atol,
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                )

    def _find_var_in_dygraph(self, output_vars, name):
        if name in output_vars:
            return output_vars[name]
        else:
            for output_vars_index in output_vars:
                for output_vars_selected in output_vars[output_vars_index]:
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                    if isinstance(output_vars_selected, list):
                        for tensor in output_vars_selected:
                            if tensor.name == name:
                                return [tensor]
                    elif isinstance(output_vars_selected, paddle.Tensor):
                        if output_vars_selected.name == name:
                            return [output_vars_selected]
        raise AssertionError(name, " not in outputs:", output_vars.keys())
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    def _get_dygraph_grad(
        self,
        inputs_to_check,
        place,
        output_names,
        user_defined_grad_outputs=None,
        no_grad_set=None,
        check_dygraph=True,
    ):
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        if hasattr(self, "use_custom_device") and self.use_custom_device:
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            check_dygraph = False

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        with fluid.dygraph.base.guard(place=place):
            block = fluid.default_main_program().global_block()

            op_proto = OpProtoHolder.instance().get_op_proto(self.op_type)

            # prepare input variable
            inputs, inputs_grad_dict = self.append_input_output_for_dygraph(
                op_proto, self.inputs, True, True, block
            )

            # prepare output variable
            outputs = self.append_input_output_for_dygraph(
                op_proto, self.outputs, False, False, block
            )

            # prepare attributes
            attrs_outputs = {}
            if hasattr(self, "attrs"):
                for attrs_name in self.attrs:
                    if self.attrs[attrs_name] is not None:
                        attrs_outputs[attrs_name] = self.attrs[attrs_name]

            if check_dygraph:
                dygraph_outputs = self._calc_python_api_output(
                    place, inputs, outputs
                )
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                if dygraph_outputs is None:
                    # missing KernelSignature, fall back to eager middle output.
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                    dygraph_outputs = self._calc_dygraph_output(
                        place, egr_inps=inputs, egr_oups=outputs
                    )

            outputs = dygraph_outputs
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            if self.dtype == np.uint16:
                cast_inputs = self._find_var_in_dygraph(
                    outputs, output_names[0]
                )
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                if isinstance(cast_inputs, paddle.Tensor):
                    cast_outputs = paddle.cast(
                        cast_inputs, core.VarDesc.VarType.FP32
                    )
                elif isinstance(cast_inputs, list):
                    cast_outputs = []
                    for cast_input in cast_inputs:
                        if isinstance(cast_input, paddle.Tensor):
                            cast_outputs.append(
                                paddle.cast(
                                    cast_input, core.VarDesc.VarType.FP32
                                )
                            )
                        else:
                            raise TypeError(
                                "Unsupported test data type %s."
                                % type(cast_input)
                            )
                else:
                    raise TypeError(
                        "Unsupported test data type %s." % type(cast_inputs)
                    )
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                outputs = {output_names[0]: cast_outputs}

            outputs_valid = {}
            for output_name in output_names:
                outputs_valid[output_name] = self._find_var_in_dygraph(
                    outputs, output_name
                )

            if user_defined_grad_outputs is None:
                if len(outputs_valid) == 1:
                    for outputs_valid_key in outputs_valid:
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                        loss = paddle.mean(outputs_valid[outputs_valid_key][0])
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                else:
                    avg_sum = []
                    for cur_loss in outputs_valid:
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                        cur_avg_loss = paddle.mean(outputs_valid[cur_loss][0])
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                        avg_sum.append(cur_avg_loss)
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                    loss_sum = paddle.add_n(avg_sum)
                    loss = paddle.scale(
                        loss_sum, scale=1.0 / float(len(avg_sum))
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                    )
                loss.backward()

                fetch_list_grad = []
                for inputs_to_check_name in inputs_to_check:
                    a = inputs_grad_dict[inputs_to_check_name].gradient()
                    fetch_list_grad.append(a)
                return fetch_list_grad
            else:
                # user_defined_grad_outputs here are numpy arrays
                if not isinstance(user_defined_grad_outputs, list):
                    user_defined_grad_outputs = [user_defined_grad_outputs]
                grad_outputs = []
                for grad_out_value in user_defined_grad_outputs:
                    grad_outputs.append(paddle.to_tensor(grad_out_value))
                # delete the inputs which no need to calculate grad
                for no_grad_val in no_grad_set:
                    del inputs[no_grad_val]

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                grad_inputs = paddle.grad(
                    outputs=paddle.utils.flatten(outputs),
                    inputs=paddle.utils.flatten(inputs),
                    grad_outputs=grad_outputs,
                )
                return [grad.numpy() for grad in grad_inputs]
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    @staticmethod
    def _numpy_to_lod_tensor(np_value, lod, place):
        tensor = core.LoDTensor()
        tensor.set(np_value, place)
        if lod is not None:
            tensor.set_recursive_sequence_lengths(lod)
        return tensor

    @staticmethod
    def np_dtype_to_fluid_dtype(input):
        return input

    @staticmethod
    def fluid_dtype_to_np_dtype(self, dtype):
        return dtype

    @staticmethod
    def np_value_to_fluid_value(input):
        return input

    def _get_gradient(
        self,
        input_to_check,
        place,
        output_names,
        no_grad_set,
        user_defined_grad_outputs=None,
        parallel=False,
    ):
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        with paddle.fluid.framework._static_guard():
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            prog = Program()
            scope = core.Scope()
            block = prog.global_block()
            self._append_ops(block)
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            inputs = self._get_inputs(block)
            outputs = self._get_outputs(block)
            feed_dict = self.feed_var(inputs, place)
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            if user_defined_grad_outputs is None:
                if self.dtype == np.uint16:
                    cast_inputs = list(map(block.var, output_names))
                    cast_outputs = block.create_var(
                        dtype="float32", shape=cast_inputs[0].shape
                    )
                    cast_op = block.append_op(
                        inputs={"X": cast_inputs},
                        outputs={"Out": cast_outputs},
                        type="cast",
                        attrs={
                            "in_dtype": core.VarDesc.VarType.BF16,
                            "out_dtype": core.VarDesc.VarType.FP32,
                        },
                    )
                    cast_op.desc.infer_var_type(block.desc)
                    cast_op.desc.infer_shape(block.desc)
                    output_names = [cast_outputs.name]
                loss = append_loss_ops(block, output_names)
                param_grad_list = append_backward(
                    loss=loss,
                    parameter_list=input_to_check,
                    no_grad_set=no_grad_set,
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                )
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                fetch_list = [g for p, g in param_grad_list]
            else:
                assert (
                    parallel is False
                ), "unsupported parallel mode when giving custom grad outputs."
                # user_defined_grad_outputs here are numpy arrays
                if not isinstance(user_defined_grad_outputs, list):
                    user_defined_grad_outputs = [user_defined_grad_outputs]
                grad_outputs = []
                for grad_out_value in user_defined_grad_outputs:
                    # `presistable` is used to avoid executor create new var in local scope
                    var = block.create_var(
                        shape=grad_out_value.shape,
                        dtype=grad_out_value.dtype,
                        persistable=True,
                    )
                    true_var = scope.var(var.name)
                    tensor = true_var.get_tensor()
                    tensor.set(grad_out_value, place)
                    grad_outputs.append(var)
                targets = [
                    outputs[name] for name in outputs if name in output_names
                ]
                inputs = [
                    inputs[name] for name in input_to_check if name in inputs
                ]
                grad_inputs = paddle.static.gradients(
                    targets, inputs, grad_outputs, no_grad_set
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                )
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                fetch_list = grad_inputs

            if parallel:
                use_cuda = False
                if isinstance(place, fluid.CUDAPlace):
                    use_cuda = True
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                compiled_prog = fluid.CompiledProgram(prog)
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                prog = compiled_prog
            executor = fluid.Executor(place)
            res = list(
                map(
                    np.array,
                    executor.run(
                        prog,
                        feed_dict,
                        fetch_list,
                        scope=scope,
                        return_numpy=False,
                    ),
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                )
            )
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        return res
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class OpTestTool:
    @classmethod
    def skip_if(cls, condition: object, reason: str):
        return unittest.skipIf(condition, reason)

    @classmethod
    def skip_if_not_cpu_bf16(cls):
        return OpTestTool.skip_if(
            not (
                isinstance(_current_expected_place(), core.CPUPlace)
                and core.supports_bfloat16()
            ),
            "Place does not support BF16 evaluation",
        )

    @classmethod
    def skip_if_not_cpu(cls):
        return OpTestTool.skip_if(
            not isinstance(_current_expected_place(), core.CPUPlace),
            "OneDNN supports only CPU for now",
        )