Esempio n. 1
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def test_two_matmul_transpose():
    class Net(nn.Cell):
        def __init__(self):
            super().__init__()
            self.matmul1 = P.MatMul()
            self.matmul2 = P.MatMul()
            self.transpose1 = P.Transpose()
            self.transpose2 = P.Transpose()

        def construct(self, x, y, b):
            out = self.matmul1(x, y)
            out = self.matmul2(out, b)
            out = self.transpose1(out, (1, 0))
            out = self.transpose2(out, (1, 0))
            return out

    size = 16
    context.set_auto_parallel_context(device_num=size, global_rank=0)
    x = Tensor(np.ones([128, 32]), dtype=ms.float32)
    y = Tensor(np.ones([32, 64]), dtype=ms.float32)
    b = Tensor(np.ones([64, 64]), dtype=ms.float32)

    net = NetWithLoss(Net())
    context.set_auto_parallel_context(parallel_mode="auto_parallel")
    net.set_auto_parallel()
    reset_op_id()

    _executor.compile(net, x, y, b, phase='train')
    strategies = _executor._get_strategy(net)
    expected_strategies = {'Default/network-Net/Transpose-op0': [[1, 16]],
                           'Default/network-Net/Transpose-op1': [[16, 1]],
                           'Default/network-Net/MatMul-op2': [[16, 1], [1, 1]],
                           'Default/network-Net/MatMul-op3': [[16, 1], [1, 1]]}
    assert strategies == expected_strategies
Esempio n. 2
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def test_train_64k_8p(epoch_size=3,
                      batch_size=32,
                      num_classes=65536):  #1048576 #131072 #32768 #8192
    dev_num = 8
    context.set_auto_parallel_context(parallel_mode=ParallelMode.AUTO_PARALLEL,
                                      device_num=dev_num)
    cost_model_context.set_cost_model_context(costmodel_gamma=0.001,
                                              costmodel_beta=400.0)
    set_algo_parameters(elementwise_op_strategy_follow=True)
    resset_op_id()
    np.random.seed(6)
    input_np = np.ones([batch_size, 3, 224, 224]).astype(np.float32)
    label_np = np.zeros([batch_size]).astype(np.int32)
    for i in range(0, batch_size):
        label_np[i] = i % num_classes
    dataset = DatasetLenet(Tensor(input_np), Tensor(label_np), 1)
    net = resnet50(num_classes)
    loss = SoftmaxCrossEntropyExpand(sparse=True)
    opt = Momentum(filter(lambda x: x.requires_grad, net.get_parameters()),
                   0.01, 0.9)
    model = Model(net, loss_fn=loss, optimizer=opt)
    model.train(5, dataset, dataset_sink_mode=False)
    strategies = _executor._get_strategy(model._train_network)
    for (k, v) in strategies.items():
        if re.search('Conv2D-op', k) is not None:
            assert v[0][0] == dev_num
        elif re.search('MatMul-op', k) is not None:
            assert v == [[1, 1], [dev_num, 1]]
        elif re.search('ReduceSum-op', k) is not None:
            assert v == [[1, dev_num]]
def test_auto_parallel_arithmetic_broadcast_both():
    class Net(nn.Cell):
        def __init__(self):
            super().__init__()
            self.matmul = P.MatMul()
            self.floordiv = P.FloorDiv()

        def construct(self, x, y, b):
            out = self.matmul(x, y)
            out = self.floordiv(out, b)
            return out

    context.set_auto_parallel_context(device_num=8, global_rank=0)
    net = NetWithLoss(Net())
    context.set_auto_parallel_context(parallel_mode="auto_parallel")
    reset_op_id()

    x = Tensor(np.ones([64, 32]), dtype=ms.float32)
    y = Tensor(np.ones([32, 1]), dtype=ms.float32)
    b = Tensor(np.ones([1, 64]), dtype=ms.float32)
    compile_net(net, x, y, b, phase='train')
    strategies = _executor._get_strategy(net)
    expected_strategies = {
        'Default/network-Net/FloorDiv-op0': [[8, 1], [1, 1]],
        'Default/network-Net/MatMul-op1': [[8, 1], [1, 1]]
    }
    assert strategies == expected_strategies
Esempio n. 4
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def test_matmul_prelu():
    class Net(nn.Cell):
        def __init__(self):
            super().__init__()
            self.mul1 = P.Mul()
            self.prelu = P.PReLU()

        def construct(self, x, y, b):
            out = self.mul1(x, y)
            out = self.prelu(out, b)
            return out

    size = 16
    context.set_auto_parallel_context(device_num=size, global_rank=0)
    x = Tensor(np.ones([16, 3, 128, 32]), dtype=ms.float32)
    y = Tensor(np.ones([16, 3, 128, 32]), dtype=ms.float32)
    b = Tensor(np.array([0.01, 0.02, 0.03]), dtype=ms.float32)

    net = NetWithLoss(Net())
    context.set_auto_parallel_context(parallel_mode="auto_parallel")
    net.set_auto_parallel()
    reset_op_id()

    _executor.compile(net, x, y, b, phase='train')
    strategies = _executor._get_strategy(net)
    for (k, v) in strategies.items():
        if re.search('PReLU-op', k) is not None:
            assert v == [[16, 1, 1, 1], [1]]
        elif re.search('Mul-op', k) is not None:
            assert v == [[16, 1, 1, 1], [16, 1, 1, 1]]
def test_matmul_prelu():
    class Net(nn.Cell):
        def __init__(self):
            super().__init__()
            self.mul1 = P.Mul()
            self.prelu = P.PReLU()

        def construct(self, x, y, b):
            out = self.mul1(x, y)
            out = self.prelu(out, b)
            return out

    size = 16
    context.set_auto_parallel_context(device_num=size, global_rank=0)
    x = Tensor(np.ones([16, 3, 128, 32]), dtype=ms.float32)
    y = Tensor(np.ones([16, 3, 128, 32]), dtype=ms.float32)
    b = Tensor(np.array([0.01, 0.02, 0.03]), dtype=ms.float32)

    net = NetWithLoss(Net())
    context.set_auto_parallel_context(parallel_mode="auto_parallel")
    reset_op_id()

    _executor.compile(net, x, y, b, phase='train')
    strategies = _executor._get_strategy(net)
    assert strategies['Default/network-Net/PReLU-op2'] == [[16, 1, 1, 1], [1]]
    assert strategies['Default/network-Net/Mul-op3'] == [[16, 1, 1, 1],
                                                         [16, 1, 1, 1]]
Esempio n. 6
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def test_common_parameter():
    class Net(nn.Cell):
        def __init__(self):
            super().__init__()
            self.matmul1 = P.MatMul()
            self.matmul2 = P.MatMul()
            self.matmul3 = P.MatMul()
            self.weight1 = Parameter(Tensor(
                np.ones([64, 64]).astype(np.float16) * 0.01),
                                     "w",
                                     requires_grad=True)
            self.cast1 = P.Cast()
            self.cast2 = P.Cast()

        def construct(self, x, y, z, w):
            m1_result = self.matmul1(x, self.cast1(self.weight1,
                                                   mstype.float32))
            m2_result = self.matmul2(z, self.cast2(self.weight1,
                                                   mstype.float32))
            m3_result = self.matmul3(m2_result, m1_result)

            return m3_result

    size = 8
    context.set_auto_parallel_context(device_num=size, global_rank=0)

    set_algo_parameters(elementwise_op_strategy_follow=True)
    x = Tensor(np.ones([64, 64]), dtype=ms.float32)
    y = Tensor(np.ones([64, 64]), dtype=ms.float32)
    z = Tensor(np.ones([64, 64]), dtype=ms.float32)
    w = Tensor(np.ones([64, 64]), dtype=ms.float32)

    net = NetWithLoss(Net())
    context.set_auto_parallel_context(parallel_mode="auto_parallel")
    net.set_auto_parallel()
    reset_op_id()

    _executor.compile(net, x, y, z, w, phase='train')
    strategies = _executor._get_strategy(net)
    expected_strategies = {
        'Default/network-Net/MatMul-op1': [[8, 1], [1, 1]],
        'Default/network-Net/MatMul-op3': [[8, 1], [1, 1]],
        'Default/network-Net/Cast-op2': [[1, 1]],
        'Default/network-Net/MatMul-op0': [[8, 1], [1, 1]],
        'Default/network-Net/Cast-op4': [[1, 1]]
    }
    assert strategies == expected_strategies
Esempio n. 7
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def test_double_subgraphs():
    cost_model_context.set_cost_model_context(multi_subgraphs=True)
    context.set_context(save_graphs=True)
    context.set_auto_parallel_context(device_num=8, global_rank=0)
    net = TrainStepWarp(NetWithLoss(Net()))
    context.set_auto_parallel_context(parallel_mode="auto_parallel")

    x = Tensor(np.ones([8, 8, 8, 8]), dtype=ms.float32)
    reset_op_id()
    _executor.compile(net, x, phase='train')
    strategies = _executor._get_strategy(net)
    expected_strategies = {'Default/network-NetWithLoss/ReduceMean-op0': [[8, 1, 1, 1]],
                           'Default/network-NetWithLoss/net-Net/ReLU-op1': [[8, 1, 1, 1]],
                           'Default/network-NetWithLoss/net-Net/Mul-op2': [[8, 1, 1, 1], [8, 1, 1, 1]],
                           'Default/network-NetWithLoss/net-Net/Mul-op3': [[8, 1, 1, 1], [8, 1, 1, 1]],
                           'Default/network-NetWithLoss/ReduceSum-op4': [[8, 1, 1, 1]]}
    assert strategies == expected_strategies
Esempio n. 8
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def test_auto_parallel_assign_sub_with_ref_key():
    size = 8
    context.set_auto_parallel_context(device_num=size, global_rank=0)

    x = Tensor(np.random.rand(4, 4, 32, 64), dtype=ms.float32)

    net = NetWithLoss(nn.PReLU(4))
    context.set_auto_parallel_context(parallel_mode="auto_parallel")
    reset_op_id()

    _executor.compile(net, x, phase="train")
    strategies = _executor._get_strategy(net)
    for (k, v) in strategies.items():
        if re.search('PReLU-op', k) is not None:
            assert v == [[1, 1, 1, 8], [1]]
        elif re.search('ReLU-op', k) is not None:
            assert v == [[1]]
Esempio n. 9
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def test_auto_parallel_assign_sub_with_ref_key():
    size = 8
    context.set_auto_parallel_context(device_num=size, global_rank=0)

    x = Tensor(np.random.rand(4, 4, 32, 64), dtype=ms.float32)

    net = NetWithLoss(nn.PReLU(4))
    context.set_auto_parallel_context(parallel_mode="auto_parallel")
    reset_op_id()

    _executor.compile(net, x, phase="train")
    strategies = _executor._get_strategy(net)
    expected_strategies = {
        'Default/network-PReLU/PReLU-op2': [[1, 1, 1, 8], [1]],
        'Default/network-PReLU/ReLU-op3': [[1]]
    }
    assert strategies == expected_strategies
Esempio n. 10
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def all_to_all_common():
    learning_rate = 0.1
    momentum = 0.9
    epoch_size = 2

    context.reset_auto_parallel_context()
    context.set_auto_parallel_context(parallel_mode=ParallelMode.AUTO_PARALLEL, device_num=1, global_rank=0)
    predict = Tensor(np.ones([32, 128]), dtype=ms.float32)
    label = Tensor(np.ones([32]), dtype=ms.int32)
    dataset = Dataset(predict, label, 2)
    net = all_to_all_net()

    loss = SoftmaxCrossEntropyWithLogits(is_grad=False, sparse=True)
    opt = Momentum(net.trainable_params(), learning_rate, momentum)
    model = Model(net, loss, opt)

    model.train(epoch_size, dataset, dataset_sink_mode=False)
    strategys = _executor._get_strategy(model._train_network)
    return strategys
Esempio n. 11
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def test_double_star_graph():
    class Net(nn.Cell):
        def __init__(self):
            super().__init__()
            self.matmul1 = P.MatMul()
            self.matmul2 = P.MatMul()
            self.matmul3 = P.MatMul()
            self.cast1 = P.Cast()
            self.cast2 = P.Cast()

        def construct(self, x, y, z, w):
            m1_result = self.matmul1(x, y)
            m2_result = self.matmul2(z, w)
            m3_result = self.matmul3(self.cast1(m2_result, mstype.float16),
                                     self.cast2(m1_result, mstype.float16))

            return m3_result

    size = 8
    context.set_auto_parallel_context(device_num=size, global_rank=0)

    x = Tensor(np.ones([32, 8]), dtype=ms.float32)
    y = Tensor(np.ones([8, 16]), dtype=ms.float32)
    z = Tensor(np.ones([8, 16]), dtype=ms.float32)
    w = Tensor(np.ones([16, 32]), dtype=ms.float32)

    net = NetWithLoss(Net())
    context.set_auto_parallel_context(parallel_mode="auto_parallel")
    net.set_auto_parallel()
    reset_op_id()

    _executor.compile(net, x, y, z, w, phase='train')
    strategies = _executor._get_strategy(net)
    expected_strategies = {
        'Default/network-Net/Cast-op0': [[8, 1]],
        'Default/network-Net/Cast-op1': [[1, 8]],
        'Default/network-Net/MatMul-op3': [[8, 1], [1, 1]],
        'Default/network-Net/MatMul-op4': [[1, 1], [1, 8]],
        'Default/network-Net/MatMul-op2': [[1, 8], [8, 1]]
    }
    assert strategies == expected_strategies
def test_two_bn():
    class Net(nn.Cell):
        def __init__(self):
            super().__init__()
            self.block1 = getBlock()
            self.block2 = getBlock()
            self.relu = P.ReLU()
            self.add = P.TensorAdd()
            self.bias = Tensor(np.ones([64, 64]), dtype=ms.float32)

        def construct(self, x):
            out = self.block1(x)
            out = self.relu(out)
            out = self.add(out, self.bias)
            out = self.block2(out)
            return out

    net = NetWithLoss(Net())
    x = Tensor(np.ones([64, 64]), dtype=ms.float32)
    context.set_context(save_graphs=True)
    context.set_auto_parallel_context(device_num=8, global_rank=0)
    context.set_auto_parallel_context(parallel_mode="auto_parallel")
    net.set_auto_parallel()
    set_algo_parameters(elementwise_op_strategy_follow=True)
    reset_op_id()

    _executor.compile(net, x, phase='train')
    strategies = _executor._get_strategy(net)
    assert len(strategies) == 4

    for (k, v) in strategies.items():
        if re.search('BatchNorm-op', k) is not None:
            assert v == [[8, 1], [1], [1], [1], [1]]
        elif re.search('TensorAdd-op', k) is not None:
            assert v == [[8, 1], [8, 1]]
        elif re.search('ReLU-op', k) is not None:
            assert v == [[8, 1]]
def test_common_parameter():
    class Net(nn.Cell):
        def __init__(self):
            super().__init__()
            self.matmul1 = P.MatMul()
            self.matmul2 = P.MatMul()
            self.matmul3 = P.MatMul()
            self.weight1 = Parameter(Tensor(np.ones([64, 64]).astype(np.float16) * 0.01), "w", requires_grad=True)
            self.cast1 = P.Cast()
            self.cast2 = P.Cast()

        def construct(self, x, y):
            m1_result = self.matmul1(x, self.cast1(self.weight1, mstype.float32))
            m2_result = self.matmul2(y, self.cast2(self.weight1, mstype.float32))
            m3_result = self.matmul3(m2_result, m1_result)

            return m3_result

    size = 8
    context.set_auto_parallel_context(device_num=size, global_rank=0)

    set_algo_parameters(elementwise_op_strategy_follow=True)
    x = Tensor(np.ones([64, 64]), dtype=ms.float32)
    y = Tensor(np.ones([64, 64]), dtype=ms.float32)

    net = NetWithLoss(Net())
    context.set_auto_parallel_context(parallel_mode="auto_parallel")
    net.set_auto_parallel()
    reset_op_id()

    _executor.compile(net, x, y, phase='train')
    strategies = _executor._get_strategy(net)
    for (k, v) in strategies.items():
        if re.search('MatMul-op', k) is not None:
            assert v == [[8, 1], [1, 1]]
        elif re.search('Cast-op', k) is not None:
            assert v == [[1, 1]]
Esempio n. 14
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def test_two_matmul():
    class Net(nn.Cell):
        def __init__(self):
            super().__init__()
            self.matmul1 = P.MatMul()
            self.matmul2 = P.MatMul()

        def construct(self, x, y, b):
            out = self.matmul1(x, y)
            out = self.matmul2(out, b)
            return out

    size = 16
    context.set_auto_parallel_context(device_num=size, global_rank=0)
    cost_model_context.set_cost_model_context(
        device_memory_capacity=32.0 * 1024.0 * 1024.0 * 1024.0,
        costmodel_alpha=1.0,
        costmodel_beta=60.0,
        costmodel_gamma=0.1,
        costmodel_communi_threshold=1024.0,
        costmodel_communi_const=2222.0,
        costmodel_communi_bias=1111.0)
    dev_mem_cap = cost_model_context.get_cost_model_context(
        "device_memory_capacity")
    assert dev_mem_cap == 32.0 * 1024.0 * 1024.0 * 1024.0
    costmodel_alpha = cost_model_context.get_cost_model_context(
        "costmodel_alpha")
    assert costmodel_alpha == 1.0
    costmodel_beta = cost_model_context.get_cost_model_context(
        "costmodel_beta")
    assert costmodel_beta == 60.0
    costmodel_gamma = cost_model_context.get_cost_model_context(
        "costmodel_gamma")
    assert costmodel_gamma == 0.1
    costmodel_communi_threshold = cost_model_context.get_cost_model_context(
        "costmodel_communi_threshold")
    assert costmodel_communi_threshold == 1024.0
    costmodel_communi_const = cost_model_context.get_cost_model_context(
        "costmodel_communi_const")
    assert costmodel_communi_const == 2222.0
    costmodel_communi_bias = cost_model_context.get_cost_model_context(
        "costmodel_communi_bias")
    assert costmodel_communi_bias == 1111.0

    cost_model_context.reset_cost_model_context()
    dev_mem_cap = cost_model_context.get_cost_model_context(
        "device_memory_capacity")
    assert dev_mem_cap == 16.0 * 1024.0 * 1024.0 * 1024.0
    costmodel_alpha = cost_model_context.get_cost_model_context(
        "costmodel_alpha")
    assert costmodel_alpha == 1.0
    costmodel_beta = cost_model_context.get_cost_model_context(
        "costmodel_beta")
    assert costmodel_beta == 260.0
    costmodel_gamma = cost_model_context.get_cost_model_context(
        "costmodel_gamma")
    assert costmodel_gamma == 0.001
    costmodel_communi_threshold = cost_model_context.get_cost_model_context(
        "costmodel_communi_threshold")
    assert costmodel_communi_threshold == 2048.0
    costmodel_communi_const = cost_model_context.get_cost_model_context(
        "costmodel_communi_const")
    assert costmodel_communi_const == 3072.0
    costmodel_communi_bias = cost_model_context.get_cost_model_context(
        "costmodel_communi_bias")
    assert costmodel_communi_bias == 1024.0

    set_algo_parameters(simplify_cal=True,
                        tensor_slice_align_enable=False,
                        tensor_slice_align_size=32,
                        fully_use_devices=False,
                        elementwise_op_strategy_follow=False)
    para_simplify_cal = get_algo_parameters("simplify_cal")
    assert para_simplify_cal == True
    para_slice_align_enable = get_algo_parameters("tensor_slice_align_enable")
    assert para_slice_align_enable == False
    para_slice_align_size = get_algo_parameters("tensor_slice_align_size")
    assert para_slice_align_size == 32
    fully_use_devices = get_algo_parameters("fully_use_devices")
    assert fully_use_devices == False
    elementwise_op_strategy_follow = get_algo_parameters(
        "elementwise_op_strategy_follow")
    assert elementwise_op_strategy_follow == False

    reset_algo_parameters()
    para_simplify_cal = get_algo_parameters("simplify_cal")
    assert para_simplify_cal == True
    para_slice_align_enable = get_algo_parameters("tensor_slice_align_enable")
    assert para_slice_align_enable == False
    para_slice_align_size = get_algo_parameters("tensor_slice_align_size")
    assert para_slice_align_size == 16
    fully_use_devices = get_algo_parameters("fully_use_devices")
    assert fully_use_devices == True
    elementwise_op_strategy_follow = get_algo_parameters(
        "elementwise_op_strategy_follow")
    assert elementwise_op_strategy_follow == False

    x = Tensor(np.ones([128, 32]), dtype=ms.float32)
    y = Tensor(np.ones([32, 64]), dtype=ms.float32)
    b = Tensor(np.ones([64, 64]), dtype=ms.float32)

    net = NetWithLoss(Net())
    context.set_auto_parallel_context(parallel_mode="auto_parallel")
    reset_op_id()

    _executor.compile(net, x, y, b, phase='train')
    strategies = _executor._get_strategy(net)
    expected_strategies = {
        'Default/network-Net/MatMul-op0': [[16, 1], [1, 1]],
        'Default/network-Net/MatMul-op1': [[16, 1], [1, 1]]
    }
    assert strategies == expected_strategies
def test_train_32k_8p(epoch_size=3, batch_size=32, num_classes=32768): #1048576 #131072 #32768 #8192
    dev_num = 8
    context.set_auto_parallel_context(parallel_mode=ParallelMode.AUTO_PARALLEL, device_num=dev_num)
    cost_model_context.set_cost_model_context(costmodel_gamma=0.001, costmodel_beta=260.0)
    cost_model_context.set_cost_model_context(costmodel_allreduce_fusion_algorithm=1)
    cost_model_context.set_cost_model_context(costmodel_allreduce_fusion_times=2)
    cost_model_context.set_cost_model_context(costmodel_allreduce_fusion_tail_percent=0.5)
    set_algo_parameters(elementwise_op_strategy_follow=True)
    resset_op_id()
    np.random.seed(6)
    input_np = np.ones([batch_size, 3, 224, 224]).astype(np.float32)
    label_np = np.zeros([batch_size]).astype(np.int32)
    for i in range(0, batch_size):
        label_np[i] = i % num_classes
    dataset = DatasetLenet(Tensor(input_np), Tensor(label_np), 1)
    net = resnet50(num_classes)
    loss = SoftmaxCrossEntropyExpand(sparse=True)
    opt = Momentum(filter(lambda x: x.requires_grad, net.get_parameters()), 0.01, 0.9)
    model = Model(net, loss_fn=loss, optimizer=opt)
    model.train(5, dataset, dataset_sink_mode=False)
    strategies = _executor._get_strategy(model._train_network)
    for (k, v) in strategies.items():
        if re.search('Conv2D-op', k) is not None:
            assert v[0][0] == dev_num
        elif re.search('MatMul-op', k) is not None:
            assert v == [[dev_num, 1], [1, 1]]
        elif re.search('ReduceSum-op', k) is not None:
            assert v == [[dev_num, 1]]

    allreduce_fusion_dict = _executor._get_allreduce_fusion(model._train_network)

    print(allreduce_fusion_dict)
    expect_dict = {'end_point.bias': 2,
                   'end_point.weight': 2,
                   'layer4.2.bn3.beta': 2,
                   'layer4.2.bn3.gamma': 2,
                   'layer4.2.conv3.weight': 2,
                   'layer4.2.bn2.beta': 2,
                   'layer4.2.bn2.gamma': 2,
                   'layer4.2.conv2.weight': 2,
                   'layer4.2.bn1.beta': 2,
                   'layer4.2.bn1.gamma': 2,
                   'layer4.2.conv1.weight': 2,
                   'layer4.1.bn3.beta': 2,
                   'layer4.1.bn3.gamma': 2,
                   'layer4.1.conv3.weight': 2,
                   'layer4.1.bn2.beta': 2,
                   'layer4.1.bn2.gamma': 2,
                   'layer4.1.conv2.weight': 2,
                   'layer4.1.bn1.beta': 2,
                   'layer4.1.bn1.gamma': 2,
                   'layer4.1.conv1.weight': 2,
                   'layer4.0.bn_down_sample.beta': 2,
                   'layer4.0.bn_down_sample.gamma': 2,
                   'layer4.0.conv_down_sample.weight': 2,
                   'layer4.0.bn3.beta': 2,
                   'layer4.0.bn3.gamma': 2,
                   'layer4.0.conv3.weight': 2,
                   'layer4.0.bn2.beta': 2,
                   'layer4.0.bn2.gamma': 2,
                   'layer4.0.conv2.weight': 2,
                   'layer4.0.bn1.beta': 2,
                   'layer4.0.bn1.gamma': 2,
                   'layer4.0.conv1.weight': 2,
                   'layer3.5.bn3.beta': 2,
                   'layer3.5.bn3.gamma': 2,
                   'layer3.5.conv3.weight': 2,
                   'layer3.5.bn2.beta': 2,
                   'layer3.5.bn2.gamma': 2,
                   'layer3.5.conv2.weight': 2,
                   'layer3.5.bn1.beta': 2,
                   'layer3.5.bn1.gamma': 2,
                   'layer3.5.conv1.weight': 2,
                   'layer3.4.bn3.beta': 2,
                   'layer3.4.bn3.gamma': 2,
                   'layer3.4.conv3.weight': 2,
                   'layer3.4.bn2.beta': 2,
                   'layer3.4.bn2.gamma': 2,
                   'layer3.4.conv2.weight': 2,
                   'layer3.4.bn1.beta': 2,
                   'layer3.4.bn1.gamma': 2,
                   'layer3.4.conv1.weight': 2,
                   'layer3.3.bn3.beta': 2,
                   'layer3.3.bn3.gamma': 2,
                   'layer3.3.conv3.weight': 2,
                   'layer3.3.bn2.beta': 2,
                   'layer3.3.bn2.gamma': 2,
                   'layer3.3.conv2.weight': 2,
                   'layer3.3.bn1.beta': 2,
                   'layer3.3.bn1.gamma': 2,
                   'layer3.3.conv1.weight': 2,
                   'layer3.2.bn3.beta': 2,
                   'layer3.2.bn3.gamma': 2,
                   'layer3.2.conv3.weight': 2,
                   'layer3.2.bn2.beta': 2,
                   'layer3.2.bn2.gamma': 2,
                   'layer3.2.conv2.weight': 2,
                   'layer3.2.bn1.beta': 2,
                   'layer3.2.bn1.gamma': 2,
                   'layer3.2.conv1.weight': 2,
                   'layer3.1.bn3.beta': 2,
                   'layer3.1.bn3.gamma': 2,
                   'layer3.1.conv3.weight': 2,
                   'layer3.1.bn2.beta': 2,
                   'layer3.1.bn2.gamma': 2,
                   'layer3.1.conv2.weight': 2,
                   'layer3.1.bn1.beta': 2,
                   'layer3.1.bn1.gamma': 2,
                   'layer3.1.conv1.weight': 2,
                   'layer3.0.bn_down_sample.beta': 1,
                   'layer3.0.bn_down_sample.gamma': 1,
                   'layer3.0.conv_down_sample.weight': 2,
                   'layer3.0.bn3.beta': 1,
                   'layer3.0.bn3.gamma': 1,
                   'layer3.0.conv3.weight': 2,
                   'layer3.0.bn2.beta': 2,
                   'layer3.0.bn2.gamma': 2,
                   'layer3.0.conv2.weight': 2,
                   'layer3.0.bn1.beta': 2,
                   'layer3.0.bn1.gamma': 2,
                   'layer3.0.conv1.weight': 2,
                   'layer2.3.bn3.beta': 2,
                   'layer2.3.bn3.gamma': 2,
                   'layer2.3.conv3.weight': 2,
                   'layer2.3.bn2.beta': 2,
                   'layer2.3.bn2.gamma': 2,
                   'layer2.3.conv2.weight': 2,
                   'layer2.3.bn1.beta': 2,
                   'layer2.3.bn1.gamma': 2,
                   'layer2.3.conv1.weight': 2,
                   'layer2.2.bn3.beta': 2,
                   'layer2.2.bn3.gamma': 2,
                   'layer2.2.conv3.weight': 2,
                   'layer2.2.bn2.beta': 2,
                   'layer2.2.bn2.gamma': 2,
                   'layer2.2.conv2.weight': 2,
                   'layer2.2.bn1.beta': 2,
                   'layer2.2.bn1.gamma': 2,
                   'layer2.2.conv1.weight': 2,
                   'layer2.1.bn3.beta': 1,
                   'layer2.1.bn3.gamma': 1,
                   'layer2.1.conv3.weight': 2,
                   'layer2.1.bn2.beta': 2,
                   'layer2.1.bn2.gamma': 2,
                   'layer2.1.conv2.weight': 2,
                   'layer2.1.bn1.beta': 2,
                   'layer2.1.bn1.gamma': 2,
                   'layer2.1.conv1.weight': 2,
                   'layer2.0.bn_down_sample.beta': 1,
                   'layer2.0.bn_down_sample.gamma': 1,
                   'layer2.0.conv_down_sample.weight': 2,
                   'layer2.0.bn3.beta': 1,
                   'layer2.0.bn3.gamma': 1,
                   'layer2.0.conv3.weight': 2,
                   'layer2.0.bn2.beta': 2,
                   'layer2.0.bn2.gamma': 2,
                   'layer2.0.conv2.weight': 2,
                   'layer2.0.bn1.beta': 2,
                   'layer2.0.bn1.gamma': 2,
                   'layer2.0.conv1.weight': 2,
                   'layer1.2.bn3.beta': 2,
                   'layer1.2.bn3.gamma': 2,
                   'layer1.2.conv3.weight': 2,
                   'layer1.2.bn2.beta': 2,
                   'layer1.2.bn2.gamma': 2,
                   'layer1.2.conv2.weight': 2,
                   'layer1.2.bn1.beta': 2,
                   'layer1.2.bn1.gamma': 2,
                   'layer1.2.conv1.weight': 2,
                   'layer1.1.bn3.beta': 1,
                   'layer1.1.bn3.gamma': 1,
                   'layer1.1.conv3.weight': 2,
                   'layer1.1.bn2.beta': 2,
                   'layer1.1.bn2.gamma': 2,
                   'layer1.1.conv2.weight': 2,
                   'layer1.1.bn1.beta': 2,
                   'layer1.1.bn1.gamma': 2,
                   'layer1.1.conv1.weight': 2,
                   'layer1.0.bn_down_sample.beta': 1,
                   'layer1.0.bn_down_sample.gamma': 1,
                   'layer1.0.conv_down_sample.weight': 2,
                   'layer1.0.bn3.beta': 1,
                   'layer1.0.bn3.gamma': 1,
                   'layer1.0.conv3.weight': 2,
                   'layer1.0.bn2.beta': 2,
                   'layer1.0.bn2.gamma': 2,
                   'layer1.0.conv2.weight': 2,
                   'layer1.0.bn1.beta': 2,
                   'layer1.0.bn1.gamma': 2,
                   'layer1.0.conv1.weight': 2,
                   'bn1.beta': 1,
                   'bn1.gamma': 1,
                   'conv1.weight': 2}

    assert (allreduce_fusion_dict == expect_dict)
    cost_model_context.reset_cost_model_context()