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ZeroDivisionError: float division by zero #475

Closed fty8788 closed 6 years ago

fty8788 commented 6 years ago

训练过程中出错:

[INFO 2017-11-16 10:52:46,895 train.py:225] Pass 0, Batch 1000, Cost 0.514772, {'__auc_evaluator_0__': 0.7693212628364563, 'classification_error_evaluator': 0.27489998936653137}
model type:  classification
Traceback (most recent call last):
  File "train.py", line 270, in <module>
  File "train.py", line 270, in <module>
    use_gpu=args.use_gpu)
  File "train.py", line 250, in train
    num_passes=num_passes)
  File "/home/yitengfei/python27-gcc482/lib/python2.7/site-packages/paddle/v2/trainer.py", line 178, in train
  File "/home/yitengfei/python27-gcc482/lib/python2.7/site-packages/paddle/v2/trainer.py", line 178, in train
    gm=self.__gradient_machine__))
  File "train.py", line 232, in _event_handler
    reader=test_reader, feeding=feeding)
  File "/home/yitengfei/python27-gcc482/lib/python2.7/site-packages/paddle/v2/trainer.py", line 220, in test
  File "/home/yitengfei/python27-gcc482/lib/python2.7/site-packages/paddle/v2/trainer.py", line 220, in test
    evaluator=evaluator, cost=total_cost / num_samples)
ZeroDivisionError: float division by zero

网络结构是DSSM-classification模型:

class DSSM(object):
    def __init__(self,
                 dnn_dims=[],
                 vocab_sizes=[],
                 model_type=ModelType.create_classification(),
                 model_arch=ModelArch.create_cnn(),
                 share_semantic_generator=False,
                 class_num=None,
                 share_embed=False,
                 is_infer=False):
        '''
        @dnn_dims: list of int
            dimentions of each layer in semantic vector generator.
        @vocab_sizes: 2-d tuple
            size of both left and right items.
        @model_type: int
            type of task, should be 'rank: 0', 'regression: 1' or 'classification: 2'
        @model_arch: int
            model architecture
        @share_semantic_generator: bool
            whether to share the semantic vector generator for both left and right.
        @share_embed: bool
            whether to share the embeddings between left and right.
        @class_num: int
            number of categories.
        '''
        assert len(
            vocab_sizes
        ) == 2, "vocab_sizes specify the sizes left and right inputs, and dim should be 2."
        assert len(dnn_dims) > 1, "more than two layers is needed."

        self.dnn_dims = dnn_dims
        self.vocab_sizes = vocab_sizes
        self.share_semantic_generator = share_semantic_generator
        self.share_embed = share_embed
        self.model_type = ModelType(model_type)
        self.model_arch = ModelArch(model_arch)
        self.class_num = class_num
        self.is_infer = is_infer
        logger.warning("build DSSM model with config of %s, %s" %
                       (self.model_type, self.model_arch))
        logger.info("vocabulary sizes: %s" % str(self.vocab_sizes))

        # bind model architecture
        _model_arch = {
            'cnn': self.create_cnn,
            'fc': self.create_fc,
            'rnn': self.create_rnn,
        }

        def _model_arch_creater(emb, prefix=''):
            sent_vec = _model_arch.get(str(model_arch))(emb, prefix)
            dnn = self.create_dnn(sent_vec, prefix)
            return dnn

        self.model_arch_creater = _model_arch_creater

        # build model type
        _model_type = {
            'classification': self._build_classification_model,
            'rank': self._build_rank_model,
            'regression': self._build_regression_model,
        }
        print 'model type: ', str(self.model_type)
        self.model_type_creater = _model_type[str(self.model_type)]

    def __call__(self):
        return self.model_type_creater()

    def create_embedding(self, input, prefix=''):
        '''
        Create an embedding table whose name has a `prefix`.
        '''
        logger.info("create embedding table [%s] which dimention is %d" %
                    (prefix, self.dnn_dims[0]))
        emb = paddle.layer.embedding(
            input=input,
            size=self.dnn_dims[0],
            param_attr=ParamAttr(name='%s_emb.w' % prefix))
        return emb

    def create_fc(self, emb, prefix=''):
        '''
        A multi-layer fully connected neural networks.

        @emb: paddle.layer
            output of the embedding layer
        @prefix: str
            prefix of layers' names, used to share parameters between more than one `fc` parts.
        '''
        _input_layer = paddle.layer.pooling(
            input=emb, pooling_type=paddle.pooling.Max())
        fc = paddle.layer.fc(input=_input_layer, size=self.dnn_dims[1])
        return fc

    def create_rnn(self, emb, prefix=''):
        '''
        A GRU sentence vector learner.
        '''
        gru = paddle.layer.gru_memory(
            input=emb, )
        sent_vec = paddle.layer.last_seq(gru)
        return sent_vec

    def create_cnn(self, emb, prefix=''):
        '''
        A multi-layer CNN.

        @emb: paddle.layer
            output of the embedding layer
        @prefix: str
            prefix of layers' names, used to share parameters between more than one `cnn` parts.
        '''

        def create_conv(context_len, hidden_size, prefix):
            key = "%s_%d_%d" % (prefix, context_len, hidden_size)
            conv = paddle.networks.sequence_conv_pool(
                input=emb,
                context_len=context_len,
                hidden_size=hidden_size,
                # set parameter attr for parameter sharing
                context_proj_param_attr=ParamAttr(name=key + 'contex_proj.w'),
                fc_param_attr=ParamAttr(name=key + '_fc.w'),
                fc_bias_attr=ParamAttr(name=key + '_fc.b'),
                pool_bias_attr=ParamAttr(name=key + '_pool.b'))
            return conv

        logger.info('create a sequence_conv_pool which context width is 3')
        conv_3 = create_conv(3, self.dnn_dims[1], "cnn")
        logger.info('create a sequence_conv_pool which context width is 4')
        conv_4 = create_conv(4, self.dnn_dims[1], "cnn")

        return conv_3, conv_4

    def create_dnn(self, sent_vec, prefix):
        # if more than three layers, than a fc layer will be added.
        if len(self.dnn_dims) > 1:
            _input_layer = sent_vec
            for id, dim in enumerate(self.dnn_dims[1:]):
                name = "%s_fc_%d_%d" % (prefix, id, dim)
                logger.info("create fc layer [%s] which dimention is %d" %
                            (name, dim))
                fc = paddle.layer.fc(
                    name=name,
                    input=_input_layer,
                    size=dim,
                    act=paddle.activation.Tanh(),
                    param_attr=ParamAttr(name='%s.w' % name),
                    bias_attr=ParamAttr(name='%s.b' % name))
                _input_layer = fc
        return _input_layer

    def _build_classification_model(self):
        logger.info("build classification model")
        assert self.model_type.is_classification()
        return self._build_classification_or_regression_model(
            is_classification=True)

    def _build_regression_model(self):
        logger.info("build regression model")
        assert self.model_type.is_regression()
        return self._build_classification_or_regression_model(
            is_classification=False)

    def _build_rank_model(self):
        '''
        Build a pairwise rank model, and the cost is returned.

        A pairwise rank model has 3 inputs:
          - source sentence
          - left_target sentence
          - right_target sentence
          - label, 1 if left_target should be sorted in front of right_target, otherwise 0.
        '''
        logger.info("build rank model")
        assert self.model_type.is_rank()
        source = paddle.layer.data(
            name='source_input',
            type=paddle.data_type.integer_value_sequence(self.vocab_sizes[0]))
        left_target = paddle.layer.data(
            name='left_target_input',
            type=paddle.data_type.integer_value_sequence(self.vocab_sizes[1]))
        right_target = paddle.layer.data(
            name='right_target_input',
            type=paddle.data_type.integer_value_sequence(self.vocab_sizes[1]))
        if not self.is_infer:
            label = paddle.layer.data(
                name='label_input', type=paddle.data_type.integer_value(1))

        prefixs = '_ _ _'.split(
        ) if self.share_semantic_generator else 'source left right'.split()
        embed_prefixs = '_ _'.split(
        ) if self.share_embed else 'source target target'.split()

        word_vecs = []
        for id, input in enumerate([source, left_target, right_target]):
            x = self.create_embedding(input, prefix=embed_prefixs[id])
            word_vecs.append(x)

        semantics = []
        for id, input in enumerate(word_vecs):
            x = self.model_arch_creater(input, prefix=prefixs[id])
            semantics.append(x)

        # cossim score of source and left_target
        left_score = paddle.layer.cos_sim(semantics[0], semantics[1])
        # cossim score of source and right target
        right_score = paddle.layer.cos_sim(semantics[0], semantics[2])

        if not self.is_infer:
            # rank cost
            cost = paddle.layer.rank_cost(left_score, right_score, label=label)
            # prediction = left_score - right_score
            # but this operator is not supported currently.
            # so AUC will not used.
            return cost, None, label
        return None, [left_score, right_score], label

    def _build_classification_or_regression_model(self, is_classification):
        '''
        Build a classification/regression model, and the cost is returned.

        A Classification has 3 inputs:
          - source sentence
          - target sentence
          - classification label

        '''
        if is_classification:
            # prepare inputs.
            assert self.class_num

        source = paddle.layer.data(
            name='source_input',
            type=paddle.data_type.integer_value_sequence(self.vocab_sizes[0]))
        target = paddle.layer.data(
            name='target_input',
            type=paddle.data_type.integer_value_sequence(self.vocab_sizes[1]))
        label = paddle.layer.data(
            name='label_input',
            type=paddle.data_type.integer_value(self.class_num)
            if is_classification else paddle.data_type.dense_vector(1))

        prefixs = '_ _'.split(
        ) if self.share_semantic_generator else 'left right'.split()
        embed_prefixs = '_ _'.split(
        ) if self.share_embed else 'left right'.split()

        word_vecs = []
        for id, input in enumerate([source, target]):
            x = self.create_embedding(input, prefix=embed_prefixs[id])
            word_vecs.append(x)

        semantics = []
        for id, input in enumerate(word_vecs):
            x = self.model_arch_creater(input, prefix=prefixs[id])
            semantics.append(x)

        if is_classification:
            concated_vector = paddle.layer.concat(semantics)
            name = "final"
            logger.info("create fc layer [%s] which dimention is %d" %
                            (name, 32))
            final = paddle.layer.fc(
                    name=name,
                    input=concated_vector,
                    size=32,
                    act=paddle.activation.Tanh(),
                    param_attr=ParamAttr(name='%s.w' % name),
                    bias_attr=ParamAttr(name='%s.b' % name))
            name = "final2"
            logger.info("create fc layer [%s] which dimention is %d" %
                            (name, 16))
            final2 = paddle.layer.fc(
                    name=name,
                    input=final,
                    size=16,
                    act=paddle.activation.Tanh(),
                    param_attr=ParamAttr(name='%s.w' % name),
                    bias_attr=ParamAttr(name='%s.b' % name))
            prediction = paddle.layer.fc(
                input=final2,
                size=self.class_num,
                act=paddle.activation.Softmax())
            cost = paddle.layer.classification_cost(
                input=prediction, label=label)
        else:
            prediction = paddle.layer.cos_sim(*semantics)
            cost = paddle.layer.mse_cost(prediction, label)

        if not self.is_infer:
            return cost, prediction, label, semantics
        return None, prediction, label
wanghaoshuang commented 6 years ago

test相关的代码也贴一下? 根据报错,应该是你的data_read返回了一个空的batch https://github.com/PaddlePaddle/Paddle/blob/develop/python/paddle/v2/trainer.py#L225

fty8788 commented 6 years ago

发现原因了,test数据集为空。可能是之前不明原因的误操作。谢谢