op_test.py 85.8 KB
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#   Copyright (c) 2018 PaddlePaddle Authors. All Rights Reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
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#
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#     http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

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from __future__ import print_function

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import os
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import unittest
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import warnings
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import numpy as np
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import random
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import six
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import struct
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import time
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import itertools
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import collections
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from collections import defaultdict
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from copy import copy
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import paddle
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import paddle.fluid as fluid
import paddle.fluid.core as core
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from paddle.fluid.framework import _in_eager_mode
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from paddle.fluid.framework import _test_eager_guard
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from paddle.fluid.backward import append_backward
from paddle.fluid.op import Operator
from paddle.fluid.executor import Executor
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from paddle.fluid.framework import Program, OpProtoHolder, Variable, _current_expected_place
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from paddle.fluid.tests.unittests.testsuite import (
    create_op,
    set_input,
    append_input_output,
    append_loss_ops, )
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from paddle.fluid import unique_name
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from paddle.fluid.tests.unittests.white_list import (
    op_accuracy_white_list,
    check_shape_white_list,
    compile_vs_runtime_white_list,
    no_check_set_white_list,
    op_threshold_white_list,
    no_grad_set_white_list, )
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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.)

    """
    paddle.enable_static()
    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))

            out = api_fn(*input_t, **configs)
            out_dtype = fluid.data_feeder.convert_dtype(out.dtype)

            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


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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)
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    for i in six.moves.xrange(len(prob)):
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        prob[i] /= prob_sum[i]
    return prob


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def get_numeric_gradient(place,
                         scope,
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                         op,
                         inputs,
                         input_to_check,
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                         output_names,
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                         delta=0.005,
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                         in_place=False):
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    # FIXME: change this method by compile time concepts
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    set_input(scope, op, inputs, place)
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    def product(dim):
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        return six.moves.reduce(lambda a, b: a * b, dim, 1)
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    tensor_to_check = scope.find_var(input_to_check).get_tensor()
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    tensor_size = product(tensor_to_check.shape())
    tensor_to_check_dtype = tensor_to_check._dtype()
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    if tensor_to_check_dtype == core.VarDesc.VarType.FP32:
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        tensor_to_check_dtype = np.float32
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    elif tensor_to_check_dtype == core.VarDesc.VarType.FP64:
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        tensor_to_check_dtype = np.float64
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    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)
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    elif tensor_to_check_dtype == core.VarDesc.VarType.BF16:
        tensor_to_check_dtype = np.float32
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    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_tp_check_dtype = np.complex128
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    else:
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        raise ValueError("Not supported data type " + str(tensor_to_check_dtype)
                         + ", tensor name : " + str(input_to_check))
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    def get_output():
        sum = []
        op.run(scope, place)
        for output_name in output_names:
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            output_numpy = np.array(scope.find_var(output_name).get_tensor())
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            # 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.
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            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())
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        return tensor_to_check_dtype(np.array(sum).sum() / len(output_names))

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

    def __get_elem__(tensor, i):
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        if tensor_to_check_dtype == np.float16:
            numpy_tensor = np.array(tensor).astype(np.float16)
            numpy_tensor = numpy_tensor.flatten()
            return numpy_tensor[i]
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        elif tensor_to_check._dtype() == core.VarDesc.VarType.BF16:
            numpy_tensor = np.array(tensor).astype(np.uint16)
            numpy_tensor = numpy_tensor.flatten()
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            return struct.unpack('<f',
                                 struct.pack('<I',
                                             np.uint32(numpy_tensor[i])
                                             << np.uint32(16)))[0]
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        elif tensor_to_check_dtype == np.float32:
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            return tensor._get_float_element(i)
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        elif tensor_to_check_dtype == np.float64:
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            return tensor._get_double_element(i)
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        else:
            raise TypeError("Unsupported test data type %s." %
                            tensor_to_check_dtype)
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    def __set_elem__(tensor, i, e):
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        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
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            numpy_tensor = numpy_tensor.reshape(shape)
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            tensor.set(numpy_tensor, place)
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        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)
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        elif tensor_to_check_dtype == np.float32:
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            tensor._set_float_element(i, e)
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        elif tensor_to_check_dtype == np.float64:
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            tensor._set_double_element(i, e)
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        else:
            raise TypeError("Unsupported test data type %s." %
                            tensor_to_check_dtype)
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    # we only compute gradient of one element each time.
    # we use a for loop to compute the gradient of every element.
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    for i in six.moves.xrange(tensor_size):
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        if in_place:
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            set_input(scope, op, inputs, place)
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        # get one input element throw it's index i.
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        origin = __get_elem__(tensor_to_check, i)
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        # add delta to it, run op and then get the sum of the result tensor.
        x_pos = origin + delta
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        __set_elem__(tensor_to_check, i, x_pos)
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        y_pos = get_output()

        if in_place:
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            set_input(scope, op, inputs, place)
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        x_neg = origin - delta
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        __set_elem__(tensor_to_check, i, x_neg)
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        y_neg = get_output()

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

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    return gradient_flat.reshape(tensor_to_check.shape())
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def skip_check_grad_ci(reason=None):
    """Decorator to skip check_grad CI.
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       Check_grad is required for Op test cases. However, there are some special
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       cases that do not need to do check_grad. This decorator is used to skip the
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       check_grad of the above cases.
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       Note: the execution of unit test will not be skipped. It just avoids check_grad
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       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


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


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

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    new_output = []
    for x in np.nditer(float_list):
        new_output.append(np.uint16(copy_bits_from_float_to_uint16(x)))
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    new_output = np.reshape(new_output, float_list.shape).view(np.uint16)
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    if data_format == "NHWC":
        new_output = np.transpose(new_output, [0, 2, 3, 1])
    return new_output
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def convert_uint16_to_float(in_list):
    in_list = np.asarray(in_list)
    out = np.vectorize(
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        lambda x: struct.unpack('<f', struct.pack('<I', np.uint32(x) << np.uint32(16)))[0],
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        otypes=[np.float32])(in_list.flat)
    return np.reshape(out, in_list.shape)
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class OpTest(unittest.TestCase):
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    @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()
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        cls.call_once = False
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        cls.dtype = None
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        cls.outputs = {}
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        cls.input_shape_is_large = True
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        np.random.seed(123)
        random.seed(124)

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

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        _set_use_system_allocator(cls._use_system_allocator)

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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():
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                if is_mkldnn_op_test():
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                    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

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

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        def is_mkldnn_op_test():
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            return hasattr(cls, "use_mkldnn") and cls.use_mkldnn == True
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        def is_rocm_op_test():
            return core.is_compiled_with_rocm()

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        def is_npu_op_test():
            return hasattr(cls, "use_npu") and cls.use_npu == True

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        def is_mlu_op_test():
            return hasattr(cls, "use_mlu") and cls.use_mlu == True

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        if not hasattr(cls, "op_type"):
            raise AssertionError(
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                "This test do not have op_type in class attrs, "
                "please set self.__class__.op_type=the_real_op_type manually.")
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        # 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") \
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            and not is_empty_grad_op(cls.op_type):
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            if cls.dtype is None or \
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                (cls.dtype == np.float16 \
                    and cls.op_type not in op_accuracy_white_list.NO_FP16_CHECK_GRAD_OP_LIST \
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                    and not hasattr(cls, "exist_check_grad")):
                raise AssertionError("This test of %s op needs check_grad." %
                                     cls.op_type)

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

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            if not cls.input_shape_is_large \
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                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.")
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    def try_call_once(self, data_type):
        if not self.call_once:
            self.call_once = True
            self.dtype = data_type

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    def is_bfloat16_op(self):
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        # 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.
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        return self.dtype == np.uint16 or (
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            hasattr(self, 'output_dtype') and
            self.output_dtype == np.uint16) or (
                hasattr(self, 'mkldnn_data_type') and
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                getattr(self, 'mkldnn_data_type') == "bfloat16") or (
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                    hasattr(self, 'attrs') and
                    'mkldnn_data_type' in self.attrs and
                    self.attrs['mkldnn_data_type'] == 'bfloat16')

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

    def is_xpu_op(self):
        return (hasattr(self, "use_xpu") and self.use_xpu == True) or (
            hasattr(self, "attrs") and "use_xpu" in self.attrs and
            self.attrs["use_xpu"] == True)
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    def infer_dtype_from_inputs_outputs(self, inputs, outputs):
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        def is_np_data(input):
            return isinstance(input, (np.ndarray, np.generic))

        def infer_dtype(numpy_dict, dtype_set):
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            assert isinstance(
                numpy_dict,
                dict), "self.inputs, self.outputs must be numpy_dict"
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            # 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 six.iteritems(numpy_dict):
                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
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        input_dtype_set = set()
        infer_dtype(inputs, input_dtype_set)
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        dtype_list = [
            np.dtype(np.float64), np.dtype(np.float32), np.dtype(np.float16),
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            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)
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        ]
        # check the dtype in dtype_list in order, select the first dtype that in dtype_set
        for dtype in dtype_list:
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            if dtype in input_dtype_set:
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                self.dtype = dtype
                break
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        # save input dtype in class attr
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        self.__class__.dtype = self.dtype
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        # 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

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    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()
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                    if isinstance(np_value, tuple):
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                        tensor.set(np_value[0], place)
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                        tensor.set_recursive_sequence_lengths(np_value[1])
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                    else:
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                        tensor.set(np_value, place)
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                    feed_map[name] = tensor
            else:
                tensor = core.LoDTensor()
                if isinstance(self.inputs[var_name], tuple):
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                    tensor.set(self.inputs[var_name][0], place)
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                    tensor.set_recursive_sequence_lengths(self.inputs[var_name][
                        1])
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                else:
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                    tensor.set(self.inputs[var_name], place)
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                feed_map[var_name] = tensor
        return feed_map

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

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        op_proto = OpProtoHolder.instance().get_op_proto(self.op_type)
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        "infer datatype from inputs and outputs for this test case"
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        if 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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        inputs = append_input_output(block, op_proto, self.inputs, True,
                                     self.dtype)
        outputs = append_input_output(block, op_proto, self.outputs, False,
                                      self.dtype)
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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)

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        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 dict())
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        # infer variable type and infer shape in compile-time
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        op.desc.infer_var_type(block.desc)
        op.desc.infer_shape(block.desc)
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        return op

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    def _get_io_vars(self, block, numpy_inputs):
        inputs = {}
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        for name, value in six.iteritems(numpy_inputs):
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            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

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

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    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)

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    def append_input_output_for_dygraph(self, op_proto, np_list, is_input,
                                        if_return_inputs_grad_dict, block):
        def create_var(np_value, name, is_input, if_return_inputs_grad_dict):
            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:
                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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                    if _in_eager_mode():
                        v.retain_grads()

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                if has_lod:
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                    v.value().get_tensor().set_recursive_sequence_lengths(
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                        lod_temp)
            else:
                v = block.create_var(
                    name=name,
                    dtype=np_value_temp.dtype,
                    type=core.VarDesc.VarType.LOD_TENSOR,
                    persistable=False,
                    stop_gradient=False)
            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:
                assert var_proto.intermediate, "{} not found".format(name)
                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), "Duplicable {} should be set as list".format(name)
                var_list = []
                slot_name = name
                for (name, np_value) in np_list[name]:
                    v = create_var(np_value, name, is_input,
                                   if_return_inputs_grad_dict)
                    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)
                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

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

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            op_proto = OpProtoHolder.instance().get_op_proto(self.op_type)
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            # prepare input variable
            inputs = 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 = self.append_input_output_for_dygraph(
                op_proto, self.outputs, False, False, block)

            # prepare attrbutes
            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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            block.append_op(
                type=self.op_type,
                inputs=inputs,
                outputs=outputs,
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                attrs=attrs_outputs if hasattr(self, "attrs") else None)
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            return outputs
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    def _calc_output(self,
                     place,
                     parallel=False,
                     no_check_set=None,
                     loss=None,
                     enable_inplace=None,
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                     for_inplace_test=None):
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        program = Program()
        block = program.global_block()
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        op = self._append_ops(block)
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        inputs = self._get_inputs(block)
        outputs = self._get_outputs(block)
        feed_map = self.feed_var(inputs, place)

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        if for_inplace_test:
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            # 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]).
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            # 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.
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            for out_name in op.output_arg_names:
                var = block.var(out_name)
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                if 0 in var.shape:
                    var.persistable = True
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        original_program = program
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        if parallel:
            use_cuda = False
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            if isinstance(place, fluid.CUDAPlace):
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                use_cuda = True
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            compiled_prog = fluid.CompiledProgram(program).with_data_parallel(
                loss_name=loss.name if loss else None, places=place)
            program = compiled_prog
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        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:
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            for var_name, var in six.iteritems(outputs):
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                if no_check_set is not None and var_name in no_check_set:
                    continue
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                if isinstance(var, list):
                    for v in var:
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                        fetch_list.append(v.name)
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                else:
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                    fetch_list.append(var.name)
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        # 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

            compiled_prog = fluid.CompiledProgram(program).with_data_parallel(
                build_strategy=build_strategy, places=place)
            program = compiled_prog

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        executor = Executor(place)
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        outs = executor.run(program,
                            feed=feed_map,
                            fetch_list=fetch_list,
                            return_numpy=False)
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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
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    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:
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            place (CPUPlace | CUDAPlace): The place where the op runs.
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            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):
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            # Note(zhiqiu): inplace_atol should be only set when op doesn't ensure
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            # computational consistency.
            # When inplace_atol is not None, the inplace check uses numpy.allclose
            # to check inplace result instead of numpy.array_equal.
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            expect_out = np.array(expect_outs[i])
            actual_out = np.array(actual_outs[i])
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            if inplace_atol is not None:
                self.assertTrue(
                    np.allclose(
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                        expect_out, actual_out, atol=inplace_atol),
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                    "Output (" + name + ") has diff at " + str(place) +
                    " when using and not using inplace" + "\nExpect " +
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                    str(expect_out) + "\n" + "But Got" + str(actual_out) +
                    " in class " + self.__class__.__name__)
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            else:
                self.assertTrue(
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                    np.array_equal(expect_out, actual_out),
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                    "Output (" + name + ") has diff at " + str(place) +
                    " when using and not using inplace" + "\nExpect " +
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                    str(expect_out) + "\n" + "But Got" + str(actual_out) +
                    " in class " + self.__class__.__name__ + '\n')
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    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.
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            op_grad_to_var (dict): The relation of variables in grad op and its forward op.
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        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)

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            # 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]).
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            # 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:
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            place (CPUPlace | CUDAPlace): The place where the op runs.
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            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.
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            op_grad_to_var (dict): The relation of variables in grad op and its fwd_op.
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        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)
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        Args:
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            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.
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                Eg. relu's fwd_op is None, relu_grad's fwd_op is relu, relu_grad_grad's fwd_op is relu_grad, etc.
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        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:
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                # get grad_op_desc
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                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):
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        """Check the inplace correctness of given op (self.op_type).
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        Run the op twice with same inputs, one enable inplace and another disable, compare their outputs.
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        Args:
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            place (CPUPlace | CUDAPlace): The place where the op runs.
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            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:
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            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.
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        """
        # _calc_output() returns in the form tuple(outs, fetch_list, feed_map, program, op_desc) when for_inplace_test=True.
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        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)
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        # compare expect_outs and actual_outs
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        self._compare_expect_and_actual_outputs(
            place,
            expect_res[1],
            expect_res[0],
            actual_res[0],
            inplace_atol=inplace_atol)
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        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:
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            place (CPUPlace | CUDAPlace): The place where the op runs.
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            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.
        """
        fwd_outs, fwd_fetch_list, fwd_feed_map, fwd_program, fwd_op_desc = fwd_res
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        grad_op_desc_list, op_grad_to_var = core.get_grad_op_desc(fwd_op_desc,
1005
                                                                  set(), [])
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        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)
        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(
                grad_program).with_data_parallel(
                    loss_name="", build_strategy=build_strategy, places=place)
            program = compiled_program
        outs = exe.run(program,
                       feed=grad_feed_map,
                       fetch_list=grad_fetch_list,
                       return_numpy=False)
        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):
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        """Check the inplace correctness of given grad_op_desc.
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        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:
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            place (CPUPlace | CUDAPlace): The place where the op runs.
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            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:
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            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.
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        """
        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
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1060 1061 1062 1063 1064 1065 1066 1067 1068 1069
    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:
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            place (CPUPlace | CUDAPlace): The place where the op runs.
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            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
        """
        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 = {}
1086 1087
        if hasattr(self, 'attrs') and bool(self.attrs.get('use_xpu', False)):
            return
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        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:
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                # TODO(zhiqiu): enhance inplace_grad test for ops (sum and activation) using mkldnn
                # skip op that use_mkldnn currently
1103
                flags_use_mkldnn = fluid.core.globals()["FLAGS_use_mkldnn"]
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                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)
1116
                else:
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                    res[op_desc] = self._calc_grad_output(place, fwd_res,
                                                          op_desc)
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    def check_output_with_place(self,
                                place,
1122
                                atol=0,
1123
                                no_check_set=None,
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                                equal_nan=False,
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                                check_dygraph=True,
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                                inplace_atol=None,
                                check_eager=False):
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        self.infer_dtype_from_inputs_outputs(self.inputs, self.outputs)
        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

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        if self.is_bfloat16_op():
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            if self.is_mkldnn_op():
                check_dygraph = False
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                check_eager = False
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                if hasattr(self, 'force_fp32_output') and getattr(
                        self, 'force_fp32_output'):
                    atol = 1e-2
                else:
                    atol = 2
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            else:
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                atol = 1e-1
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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)
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        if check_dygraph:
            dygraph_outs = self._calc_dygraph_output(
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                place, no_check_set=no_check_set)
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        if check_eager:
            with _test_eager_guard():
                eager_dygraph_outs = self._calc_dygraph_output(
                    place, no_check_set=no_check_set)
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        outs, fetch_list = self._calc_output(place, no_check_set=no_check_set)
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        for out_name, out_dup in Operator.get_op_outputs(self.op_type):
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            if out_name not in self.outputs:
                continue
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            if no_check_set is not None and out_name in no_check_set:
                continue
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            def find_imperative_actual(target_name, dygraph_outs, place):
                with fluid.dygraph.base.guard(place=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, "Found failed {} {}".format(
                        dygraph_outs.keys(), target_name))

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

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            if out_dup:
                sub_out = self.outputs[out_name]
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                if not isinstance(sub_out, list):
                    raise AssertionError("sub_out type %s is not list",
                                         type(sub_out))
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                for item in sub_out:
                    sub_out_name, expect = item[0], item[1]
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                    if check_dygraph:
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                        imperative_actual = find_imperative_actual(
                            sub_out_name, dygraph_outs, place)
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                        imperative_actual_t = np.array(imperative_actual.value()
                                                       .get_tensor())
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                    if check_eager:
                        with _test_eager_guard():
                            eager_imperative_actual = find_imperative_actual(
                                sub_out_name, eager_dygraph_outs, place)
                            eager_imperative_actual_t = eager_imperative_actual.numpy(
                            )

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                    idx = find_actual(sub_out_name, fetch_list)
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                    actual = outs[idx]
                    actual_t = np.array(actual)
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                    expect_t = expect[0] \
                        if isinstance(expect, tuple) else expect
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                    self.assertTrue(
                        np.allclose(
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                            actual_t, expect_t, atol=atol, equal_nan=equal_nan),
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                        "Output (" + sub_out_name + ") has diff at " +
                        str(place))
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                    if check_dygraph:
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                        self.assertTrue(
                            np.allclose(
                                imperative_actual_t,
                                expect_t,
                                atol=atol,
                                equal_nan=equal_nan),
                            "Output (" + sub_out_name + ") has diff at " +
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                            str(place) + " in dygraph mode")
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                    if check_eager:
                        with _test_eager_guard():
                            self.assertTrue(
                                np.allclose(
                                    eager_imperative_actual_t,
                                    expect_t,
                                    atol=atol,
                                    equal_nan=equal_nan),
                                "Output (" + sub_out_name + ") has diff at " +
                                str(place) + " in eager dygraph mode")
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                    if isinstance(expect, tuple):
                        self.assertListEqual(
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                            actual.recursive_sequence_lengths(), expect[1],
                            "Output (" + sub_out_name +
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                            ") has different lod at " + str(place))
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                        if check_dygraph:
                            self.assertListEqual(
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                                imperative_actual.value().get_tensor()
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                                .recursive_sequence_lengths(), expect[1],
                                "Output (" + out_name +
                                ") has different lod at " + str(place) +
                                " in dygraph mode")
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                        if check_eager:
                            with _test_eager_guard():
                                self.assertListEqual(
                                    eager_imperative_actual.value().get_tensor()
                                    .recursive_sequence_lengths(), expect[1],
                                    "Output (" + out_name +
                                    ") has different lod at " + str(place) +
                                    " in eager dygraph mode")
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            else:
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                if check_dygraph:
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                    imperative_actual = find_imperative_actual(
                        out_name, dygraph_outs, place)
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                    imperative_actual_t = np.array(imperative_actual.value()
                                                   .get_tensor())
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                if check_eager:
                    with _test_eager_guard():
                        eager_imperative_actual = find_imperative_actual(
                            out_name, eager_dygraph_outs, place)
                        eager_imperative_actual_t = eager_imperative_actual.numpy(
                        )

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                idx = find_actual(out_name, fetch_list)
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                actual = outs[idx]
                actual_t = np.array(actual)
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                expect = self.outputs[out_name]
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                expect_t = expect[0] if isinstance(expect, tuple) else expect
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                # np.uint16 represents bfloat16
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                if actual_t.dtype == np.uint16 and expect_t.dtype in [
                        np.float32, np.float64
                ]:
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                    actual_t = convert_uint16_to_float(actual_t)
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                    rtol = 1.e-2
                else:
                    rtol = 1.e-5
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                if expect_t.dtype == np.uint16 and actual_t.dtype == np.uint16:
                    expect_t = convert_uint16_to_float(expect_t)
                    actual_t = convert_uint16_to_float(actual_t)
                    atol = max(atol, 0.03)
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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_t.size == 0:
                    self.assertTrue(actual_t.size == 0)

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                self.assertTrue(
                    np.allclose(
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                        actual_t,
                        expect_t,
                        atol=atol,
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                        rtol=rtol,
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                        equal_nan=equal_nan),
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                    "Output (" + out_name + ") has diff at " + str(place) +
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                    "\nExpect " + str(expect_t) + "\n" + "But Got" +
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                    str(actual_t) + " in class " + self.__class__.__name__)
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                if check_dygraph:
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                    if self.is_bfloat16_op():
                        if imperative_actual_t.dtype == np.uint16:
                            imperative_actual_t = convert_uint16_to_float(
                                imperative_actual_t)
                        if expect_t.dtype == np.uint16:
                            expect_t = convert_uint16_to_float(expect_t)
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                    if six.moves.reduce(
                            lambda x, y: x * y, imperative_actual_t.shape,
                            1) == 0 and six.moves.reduce(
                                lambda x, y: x * y, expect_t.shape, 1) == 0:
                        pass
                    else:
                        self.assertTrue(
                            np.allclose(
                                imperative_actual_t,
                                expect_t,
                                atol=atol,
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                                rtol=rtol,
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                                equal_nan=equal_nan),
                            "Output (" + out_name + ") has diff at " +
                            str(place) + "\nExpect " + str(expect_t) + "\n" +
                            "But Got" + str(imperative_actual_t) + " in class "
                            + self.__class__.__name__)
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                if check_eager:
                    with _test_eager_guard():
                        if self.is_bfloat16_op():
                            if eager_imperative_actual_t.dtype == np.uint16:
                                eager_imperative_actual_t = convert_uint16_to_float(
                                    eager_imperative_actual_t)
                            if expect_t.dtype == np.uint16:
                                expect_t = convert_uint16_to_float(expect_t)
                        if six.moves.reduce(lambda x, y: x * y,
                                            eager_imperative_actual_t.shape,
                                            1) == 0 and six.moves.reduce(
                                                lambda x, y: x * y,
                                                expect_t.shape, 1) == 0:
                            pass
                        else:
                            self.assertTrue(
                                np.allclose(
                                    eager_imperative_actual_t,
                                    expect_t,
                                    atol=atol,
                                    rtol=rtol,
                                    equal_nan=equal_nan),
                                "Output (" + out_name + ") has diff at " +
                                str(place) + "\nExpect " + str(expect_t) + "\n"
                                + "But Got" + str(eager_imperative_actual_t) +
                                " in class " + self.__class__.__name__)
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                if isinstance(expect, tuple):
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                    self.assertListEqual(actual.recursive_sequence_lengths(),
                                         expect[1], "Output (" + out_name +
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                                         ") has different lod at " + str(place))
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                    if check_dygraph:
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                        self.assertListEqual(
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                            imperative_actual.value().get_tensor()
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                            .recursive_sequence_lengths(), expect[1],
                            "Output (" + out_name + ") has different lod at " +
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                            str(place) + " in eager dygraph mode")
                    if check_eager:
                        with _test_eager_guard():
                            self.assertListEqual(
                                eager_imperative_actual.value().get_tensor()
                                .recursive_sequence_lengths(), expect[1],
                                "Output (" + out_name +
                                ") has different lod at " + str(place) +
                                " in eager dygraph mode")
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        # Note(zhiqiu): inplace_atol should be only set when op doesn't ensure
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        # computational consistency.
        # For example, group_norm uses AtomicAdd on CUDAPlace, which do not ensure
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        # computation order when multiple threads write the same address. So the
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        # 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.
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        if inplace_atol is not None:
            warnings.warn(
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                "inplace_atol should only be set when op doesn't ensure computational consistency, please check it!"
            )
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        # Check inplace for given op, its grad op, its grad_grad op, etc.
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        # No effect on original OpTest
1386
        # Currently not support ParallelExecutor on XPUPlace.
1387
        if not paddle.is_compiled_with_xpu(
1388 1389
        ) and not paddle.is_compiled_with_npu(
        ) and not paddle.is_compiled_with_mlu():
1390 1391
            self.check_inplace_output_with_place(
                place, no_check_set=no_check_set, inplace_atol=inplace_atol)
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1393 1394 1395
        if check_eager:
            return outs, dygraph_outs, eager_dygraph_outs, fetch_list
        elif check_dygraph:
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            return outs, 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,
                    "Found {} {}".format(len(found), target_name))
                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) +
                    ")")

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    def _get_places(self):
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        if self.dtype == np.float16:
            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]
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                else:
                    return []
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            else:
                return []
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        places = [fluid.CPUPlace()]
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        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:
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            places.append(core.CUDAPlace(0))
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        return places

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    def check_output(self,
                     atol=1e-5,
                     no_check_set=None,
                     equal_nan=False,
1465
                     check_dygraph=True,
1466 1467
                     inplace_atol=None,
                     check_eager=False):
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        self.__class__.op_type = self.op_type
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        if self.is_mkldnn_op():
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            self.__class__.use_mkldnn = True
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        if self.is_xpu_op():
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            self.__class__.use_xpu = True

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        places = self._get_places()
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        for place in places:
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            res = self.check_output_with_place(
                place,
                atol,
                no_check_set,
                equal_nan,
                check_dygraph,
                inplace_atol,
                check_eager=check_eager)
            if check_eager:
                assert check_dygraph == True
                outs, dygraph_outs, eager_dygraph_outs, fetch_list = res
            elif check_dygraph:
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                outs, dygraph_outs, fetch_list = res
            else:
                outs, fetch_list = res
1492
            if self.op_type not in compile_vs_runtime_white_list.COMPILE_RUN_OP_WHITE_LIST:
1493
                self.check_compile_vs_runtime(fetch_list, outs)
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    def check_output_customized(self, checker, custom_place=None):
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        places = self._get_places()
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        if custom_place:
            places.append(custom_place)
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        for place in places:
            outs = self.calc_output(place)
            outs = [np.array(out) for out in outs]
1502
            outs.sort(key=len)
1503 1504
            checker(outs)

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    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)

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    def _assert_is_close(self, numeric_grads, analytic_grads, names,
                         max_relative_error, msg_prefix):
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        for a, b, name in six.moves.zip(numeric_grads, analytic_grads, names):
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            # 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.
1520
            abs_a = np.abs(a)
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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:
                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
1526 1527
            elif self.is_bfloat16_op():
                abs_a[abs_a < 1e-2] = 1
1528 1529
            else:
                abs_a[abs_a < 1e-3] = 1
1530 1531 1532 1533 1534 1535

            diff_mat = np.abs(a - b) / abs_a
            max_diff = np.max(diff_mat)

            def err_msg():
                offset = np.argmax(diff_mat > max_relative_error)
1536 1537 1538
                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,
1539
                    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):
        self.infer_dtype_from_inputs_outputs(self.inputs, self.outputs)
        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

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    def check_grad(self,
                   inputs_to_check,
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                   output_names,
1553
                   no_grad_set=None,
1554
                   numeric_grad_delta=0.005,
1555
                   in_place=False,
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                   max_relative_error=0.005,
1557
                   user_defined_grads=None,
1558
                   user_defined_grad_outputs=None,
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                   check_dygraph=True,
                   check_eager=False):
1561
        self._check_grad_helper()
1562
        places = self._get_places()
1563
        for place in places:
1564
            self.check_grad_with_place(
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                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_eager=check_eager)
1576 1577 1578 1579 1580 1581 1582 1583 1584

    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,
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                              user_defined_grads=None,
1586
                              user_defined_grad_outputs=None,
1587
                              check_dygraph=True,
1588 1589
                              numeric_place=None,
                              check_eager=False):
1590
        self.scope = core.Scope()
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        op_inputs = self.inputs if hasattr(self, "inputs") else dict()
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        op_outputs = self.outputs if hasattr(self, "outputs") else dict()
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        op_attrs = self.attrs if hasattr(self, "attrs") else dict()
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        self._check_grad_helper()
        if self.is_bfloat16_op() and self.is_mkldnn_op():
1597
            check_dygraph = False
1598
            check_eager = False
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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
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        cache_list = None
        if hasattr(self, "cache_name_list"):
            cache_list = self.cache_name_list
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        # oneDNN numeric gradient should use CPU kernel
        use_onednn = False
        if "use_mkldnn" in op_attrs and op_attrs["use_mkldnn"] == True:
            op_attrs["use_mkldnn"] = False
            use_onednn = True

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        self.op = create_op(
            self.scope,
            self.op_type,
            op_inputs,
            op_outputs,
            op_attrs,
            cache_list=cache_list)
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        if use_onednn:
            op_attrs["use_mkldnn"] = True

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        if no_grad_set is None:
            no_grad_set = set()
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        else:
            if (self.op_type not in no_grad_set_white_list.NEED_TO_FIX_OP_LIST
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                ) and (
                    self.op_type not in no_grad_set_white_list.NOT_CHECK_OP_LIST
                ) and (not self.is_bfloat16_op()):
1633 1634
                raise AssertionError("no_grad_set must be None, op_type is " +
                                     self.op_type + " Op.")
1635

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        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 = six.moves.reduce(lambda a, b: a * b,
                                           tensor_to_check.shape(), 1)
            if tensor_size < 100:
                self.__class__.input_shape_is_large = False

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

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        if numeric_place is None:
            numeric_place = place

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        numeric_grads = user_defined_grads or [
1651
            get_numeric_gradient(
1652
                numeric_place,
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                self.scope,
                self.op,
                self.inputs,
                input_to_check,
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                output_names,
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                delta=numeric_grad_delta,
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                in_place=in_place) for input_to_check in inputs_to_check
1660
        ]
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        analytic_grads = self._get_gradient(inputs_to_check, place,
1662 1663
                                            output_names, no_grad_set,
                                            user_defined_grad_outputs)
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        # comparison of bf16 results will happen as fp32
        # loop over list of grads and convert bf16 to fp32
1666
        fp32_analytic_grads = []
1667 1668 1669
        for grad in analytic_grads:
            if grad.dtype == np.uint16:
                grad = convert_uint16_to_float(grad)
1670
                max_relative_error = 0.04 if max_relative_error < 0.04 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)
1678
                max_relative_error = 0.04 if max_relative_error < 0.04 else max_relative_error
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            fp32_numeric_grads.append(grad)
        numeric_grads = fp32_numeric_grads
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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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1686
        if check_dygraph:
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            dygraph_grad = self._get_dygraph_grad(
                inputs_to_check, place, output_names, user_defined_grad_outputs,
                no_grad_set)
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            fp32_grads = []
            for grad in dygraph_grad:
                if grad.dtype == np.uint16:
                    grad = convert_uint16_to_float(grad)
1694
                    max_relative_error = 0.03 if max_relative_error < 0.03 else max_relative_error
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                fp32_grads.append(grad)
            dygraph_grad = fp32_grads
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            self._assert_is_close(numeric_grads, dygraph_grad, inputs_to_check,
                                  max_relative_error,
                                  "Gradient Check On %s" % str(place))

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        if check_eager:
            with _test_eager_guard():
                eager_dygraph_grad = self._get_dygraph_grad(
                    inputs_to_check, place, output_names,
                    user_defined_grad_outputs, no_grad_set)
                fp32_grads = []
                for grad in eager_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)
                eager_dygraph_grad = fp32_grads
                self._assert_is_close(numeric_grads, eager_dygraph_grad,
                                      inputs_to_check, max_relative_error,
                                      "Gradient Check On %s" % str(place))

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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]:
                    if output_vars_selected.name == name:
                        return output_vars_selected

    def _get_dygraph_grad(self,
                          inputs_to_check,
                          place,
                          output_names,
1730
                          user_defined_grad_outputs=None,
1731 1732 1733 1734 1735 1736 1737 1738 1739 1740 1741 1742 1743 1744 1745 1746 1747 1748 1749 1750
                          no_grad_set=None):
        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 attrbutes
            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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1752 1753 1754 1755 1756 1757
            block.append_op(
                type=self.op_type,
                inputs=inputs,
                outputs=outputs,
                attrs=attrs_outputs if hasattr(self, "attrs") else None)

1758 1759 1760 1761 1762 1763 1764 1765 1766 1767 1768 1769 1770 1771 1772
            if self.dtype == np.uint16:
                cast_inputs = self._find_var_in_dygraph(outputs,
                                                        output_names[0])
                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
                    })
                outputs = {output_names[0]: cast_outputs}

1773 1774 1775 1776 1777
            outputs_valid = {}
            for output_name in output_names:
                outputs_valid[output_name] = self._find_var_in_dygraph(
                    outputs, output_name)

1778 1779 1780 1781 1782 1783 1784 1785 1786 1787 1788 1789 1790 1791 1792 1793 1794 1795 1796 1797 1798 1799 1800 1801 1802 1803 1804 1805 1806 1807 1808 1809 1810 1811
            if user_defined_grad_outputs is None:
                if len(outputs_valid) == 1:
                    loss = block.create_var(
                        dtype=self.dtype,
                        type=core.VarDesc.VarType.LOD_TENSOR,
                        persistable=False,
                        stop_gradient=False,
                        shape=[1])
                    for outputs_valid_key in outputs_valid:
                        block.append_op(
                            type="mean",
                            inputs={"X": outputs_valid[outputs_valid_key]},
                            outputs={"Out": [loss]},
                            attrs=None)
                else:
                    avg_sum = []
                    for cur_loss in outputs_valid:
                        cur_avg_loss = block.create_var(
                            dtype=self.dtype,
                            type=core.VarDesc.VarType.LOD_TENSOR,
                            persistable=False,
                            stop_gradient=False)
                        block.append_op(
                            type="mean",
                            inputs={"X": outputs_valid[cur_loss]},
                            outputs={"Out": [cur_avg_loss]},
                            attrs=None)
                        avg_sum.append(cur_avg_loss)
                    loss_sum = block.create_var(
                        dtype=self.dtype,
                        type=core.VarDesc.VarType.LOD_TENSOR,
                        persistable=False,
                        stop_gradient=False,
                        shape=[1])
1812
                    block.append_op(
1813 1814 1815
                        type='sum',
                        inputs={"X": avg_sum},
                        outputs={"Out": loss_sum},
1816
                        attrs=None)
1817
                    loss = block.create_var(
1818 1819 1820
                        dtype=self.dtype,
                        type=core.VarDesc.VarType.LOD_TENSOR,
                        persistable=False,
1821 1822
                        stop_gradient=False,
                        shape=[1])
1823
                    block.append_op(
1824 1825 1826 1827
                        type='scale',
                        inputs={"X": loss_sum},
                        outputs={"Out": loss},
                        attrs={'scale': 1.0 / float(len(avg_sum))})
1828

1829
                loss.backward()
1830

1831 1832 1833 1834 1835 1836 1837 1838 1839 1840 1841 1842
                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))
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                # delete the inputs which no need to calculate grad
                for no_grad_val in no_grad_set:
                    del (inputs[no_grad_val])

1847 1848 1849 1850 1851 1852 1853 1854 1855 1856 1857 1858 1859 1860 1861
                if _in_eager_mode():
                    core.eager.run_backward(
                        fluid.layers.utils.flatten(outputs), grad_outputs,
                        False)
                    grad_inputs = []
                    for inputs_list in inputs.values():
                        for inp in inputs_list:
                            grad_inputs.append(inp.grad.numpy())
                    return grad_inputs
                else:
                    grad_inputs = paddle.grad(
                        outputs=fluid.layers.utils.flatten(outputs),
                        inputs=fluid.layers.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:
1868
            tensor.set_recursive_sequence_lengths(lod)
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        return tensor

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

    @staticmethod
    def np_value_to_fluid_value(input):
        return input

1883 1884 1885 1886 1887
    def _get_gradient(self,
                      input_to_check,
                      place,
                      output_names,
                      no_grad_set,
1888
                      user_defined_grad_outputs=None,
1889
                      parallel=False):
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        prog = Program()
1891
        scope = core.Scope()
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        block = prog.global_block()
1893
        self._append_ops(block)
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1895
        inputs = self._get_inputs(block)
1896
        outputs = self._get_outputs(block)
1897
        feed_dict = self.feed_var(inputs, place)
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1899
        if user_defined_grad_outputs is None:
1900 1901 1902 1903 1904 1905 1906 1907 1908 1909 1910 1911 1912 1913 1914
            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]
1915 1916 1917 1918 1919 1920 1921 1922 1923 1924 1925 1926 1927 1928 1929 1930 1931 1932 1933 1934 1935 1936 1937 1938 1939
            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)
            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
            ]
1940
            inputs = [inputs[name] for name in input_to_check if name in inputs]
1941 1942 1943 1944
            grad_inputs = paddle.static.gradients(targets, inputs, grad_outputs,
                                                  no_grad_set)
            fetch_list = grad_inputs

1945 1946
        if parallel:
            use_cuda = False
1947
            if isinstance(place, fluid.CUDAPlace):
1948
                use_cuda = True
1949 1950 1951 1952
            compiled_prog = fluid.CompiledProgram(prog).with_data_parallel(
                loss_name=loss.name, places=place)
            prog = compiled_prog
        executor = fluid.Executor(place)
1953 1954
        return list(
            map(np.array,
1955 1956 1957 1958 1959
                executor.run(prog,
                             feed_dict,
                             fetch_list,
                             scope=scope,
                             return_numpy=False)))
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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")
1973 1974 1975 1976 1977 1978

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