@@ -6,13 +6,14 @@ | |||
 | |||
[](http://fastnlp.readthedocs.io/?badge=latest) | |||
fastNLP 是一款轻量级的 NLP 处理套件。你既可以使用它快速地完成一个命名实体识别(NER)、中文分词或文本分类任务; 也可以使用他构建许多复杂的网络模型,进行科研。它具有如下的特性: | |||
fastNLP 是一款轻量级的 NLP 处理套件。你既可以使用它快速地完成一个序列标注([NER](reproduction/seqence_labelling/ner/)、POS-Tagging等)、中文分词、文本分类、[Matching](reproduction/matching/)、指代消解、摘要等任务; 也可以使用它构建许多复杂的网络模型,进行科研。它具有如下的特性: | |||
- 统一的Tabular式数据容器,让数据预处理过程简洁明了。内置多种数据集的DataSet Loader,省去预处理代码。 | |||
- 各种方便的NLP工具,例如预处理embedding加载; 中间数据cache等; | |||
- 详尽的中文文档以供查阅; | |||
- 统一的Tabular式数据容器,让数据预处理过程简洁明了。内置多种数据集的DataSet Loader,省去预处理代码; | |||
- 多种训练、测试组件,例如训练器Trainer;测试器Tester;以及各种评测metrics等等; | |||
- 各种方便的NLP工具,例如预处理embedding加载(包括EMLo和BERT); 中间数据cache等; | |||
- 详尽的中文[文档](https://fastnlp.readthedocs.io/)、教程以供查阅; | |||
- 提供诸多高级模块,例如Variational LSTM, Transformer, CRF等; | |||
- 封装CNNText,Biaffine等模型可供直接使用; | |||
- 在序列标注、中文分词、文本分类、Matching、指代消解、摘要等任务上封装了各种模型可供直接使用; [详细链接](reproduction/) | |||
- 便捷且具有扩展性的训练器; 提供多种内置callback函数,方便实验记录、异常捕获等。 | |||
@@ -20,13 +21,14 @@ fastNLP 是一款轻量级的 NLP 处理套件。你既可以使用它快速地 | |||
fastNLP 依赖如下包: | |||
+ numpy | |||
+ torch>=0.4.0 | |||
+ tqdm | |||
+ nltk | |||
+ numpy>=1.14.2 | |||
+ torch>=1.0.0 | |||
+ tqdm>=4.28.1 | |||
+ nltk>=3.4.1 | |||
+ requests | |||
其中torch的安装可能与操作系统及 CUDA 的版本相关,请参见 PyTorch 官网 。 | |||
在依赖包安装完成的情况,您可以在命令行执行如下指令完成安装 | |||
其中torch的安装可能与操作系统及 CUDA 的版本相关,请参见 [PyTorch 官网](https://pytorch.org/) 。 | |||
在依赖包安装完成后,您可以在命令行执行如下指令完成安装 | |||
```shell | |||
pip install fastNLP | |||
@@ -77,8 +79,8 @@ fastNLP 在 modules 模块中内置了三种模块的诸多组件,可以帮助 | |||
fastNLP 为不同的 NLP 任务实现了许多完整的模型,它们都经过了训练和测试。 | |||
你可以在以下两个地方查看相关信息 | |||
- [介绍](reproduction/) | |||
- [源码](fastNLP/models/) | |||
- [模型介绍](reproduction/) | |||
- [模型源码](fastNLP/models/) | |||
## 项目结构 | |||
@@ -93,7 +95,7 @@ fastNLP的大致工作流程如上图所示,而项目结构如下: | |||
</tr> | |||
<tr> | |||
<td><b> fastNLP.core </b></td> | |||
<td> 实现了核心功能,包括数据处理组件、训练器、测速器等 </td> | |||
<td> 实现了核心功能,包括数据处理组件、训练器、测试器等 </td> | |||
</tr> | |||
<tr> | |||
<td><b> fastNLP.models </b></td> | |||
@@ -20,6 +20,7 @@ from collections import defaultdict | |||
import torch | |||
import torch.nn.functional as F | |||
from ..core.const import Const | |||
from .utils import _CheckError | |||
from .utils import _CheckRes | |||
from .utils import _build_args | |||
@@ -28,6 +29,7 @@ from .utils import _check_function_or_method | |||
from .utils import _get_func_signature | |||
from .utils import seq_len_to_mask | |||
class LossBase(object): | |||
""" | |||
所有loss的基类。如果想了解其中的原理,请查看源码。 | |||
@@ -95,22 +97,7 @@ class LossBase(object): | |||
# if func_spect.varargs: | |||
# raise NameError(f"Delete `*{func_spect.varargs}` in {get_func_signature(self.get_loss)}(Do not use " | |||
# f"positional argument.).") | |||
def _fast_param_map(self, pred_dict, target_dict): | |||
"""Only used as inner function. When the pred_dict, target is unequivocal. Don't need users to pass key_map. | |||
such as pred_dict has one element, target_dict has one element | |||
:param pred_dict: | |||
:param target_dict: | |||
:return: dict, if dict is not {}, pass it to self.evaluate. Otherwise do mapping. | |||
""" | |||
fast_param = {} | |||
if len(self._param_map) == 2 and len(pred_dict) == 1 and len(target_dict) == 1: | |||
fast_param['pred'] = list(pred_dict.values())[0] | |||
fast_param['target'] = list(target_dict.values())[0] | |||
return fast_param | |||
return fast_param | |||
def __call__(self, pred_dict, target_dict, check=False): | |||
""" | |||
:param dict pred_dict: 模型的forward函数返回的dict | |||
@@ -118,11 +105,7 @@ class LossBase(object): | |||
:param Boolean check: 每一次执行映射函数的时候是否检查映射表,默认为不检查 | |||
:return: | |||
""" | |||
fast_param = self._fast_param_map(pred_dict, target_dict) | |||
if fast_param: | |||
loss = self.get_loss(**fast_param) | |||
return loss | |||
if not self._checked: | |||
# 1. check consistence between signature and _param_map | |||
func_spect = inspect.getfullargspec(self.get_loss) | |||
@@ -212,7 +195,6 @@ class LossFunc(LossBase): | |||
if not isinstance(key_map, dict): | |||
raise RuntimeError(f"Loss error: key_map except a {type({})} but got a {type(key_map)}") | |||
self._init_param_map(key_map, **kwargs) | |||
class CrossEntropyLoss(LossBase): | |||
@@ -226,7 +208,7 @@ class CrossEntropyLoss(LossBase): | |||
:param seq_len: 句子的长度, 长度之外的token不会计算loss。。 | |||
:param padding_idx: padding的index,在计算loss时将忽略target中标号为padding_idx的内容, 可以通过该值代替 | |||
传入seq_len. | |||
:param str reduction: 支持'elementwise_mean'和'sum'. | |||
:param str reduction: 支持'mean','sum'和'none'. | |||
Example:: | |||
@@ -234,16 +216,16 @@ class CrossEntropyLoss(LossBase): | |||
""" | |||
def __init__(self, pred=None, target=None, seq_len=None, padding_idx=-100, reduction='elementwise_mean'): | |||
def __init__(self, pred=None, target=None, seq_len=None, padding_idx=-100, reduction='mean'): | |||
super(CrossEntropyLoss, self).__init__() | |||
self._init_param_map(pred=pred, target=target, seq_len=seq_len) | |||
self.padding_idx = padding_idx | |||
assert reduction in ('elementwise_mean', 'sum') | |||
assert reduction in ('mean', 'sum', 'none') | |||
self.reduction = reduction | |||
def get_loss(self, pred, target, seq_len=None): | |||
if pred.dim()>2: | |||
if pred.size(1)!=target.size(1): | |||
if pred.dim() > 2: | |||
if pred.size(1) != target.size(1): | |||
pred = pred.transpose(1, 2) | |||
pred = pred.reshape(-1, pred.size(-1)) | |||
target = target.reshape(-1) | |||
@@ -263,15 +245,18 @@ class L1Loss(LossBase): | |||
:param pred: 参数映射表中 `pred` 的映射关系,None表示映射关系为 `pred` -> `pred` | |||
:param target: 参数映射表中 `target` 的映射关系,None表示映射关系为 `target` >`target` | |||
:param str reduction: 支持'mean','sum'和'none'. | |||
""" | |||
def __init__(self, pred=None, target=None): | |||
def __init__(self, pred=None, target=None, reduction='mean'): | |||
super(L1Loss, self).__init__() | |||
self._init_param_map(pred=pred, target=target) | |||
assert reduction in ('mean', 'sum', 'none') | |||
self.reduction = reduction | |||
def get_loss(self, pred, target): | |||
return F.l1_loss(input=pred, target=target) | |||
return F.l1_loss(input=pred, target=target, reduction=self.reduction) | |||
class BCELoss(LossBase): | |||
@@ -282,14 +267,17 @@ class BCELoss(LossBase): | |||
:param pred: 参数映射表中`pred`的映射关系,None表示映射关系为`pred`->`pred` | |||
:param target: 参数映射表中`target`的映射关系,None表示映射关系为`target`->`target` | |||
:param str reduction: 支持'mean','sum'和'none'. | |||
""" | |||
def __init__(self, pred=None, target=None): | |||
def __init__(self, pred=None, target=None, reduction='mean'): | |||
super(BCELoss, self).__init__() | |||
self._init_param_map(pred=pred, target=target) | |||
assert reduction in ('mean', 'sum', 'none') | |||
self.reduction = reduction | |||
def get_loss(self, pred, target): | |||
return F.binary_cross_entropy(input=pred, target=target) | |||
return F.binary_cross_entropy(input=pred, target=target, reduction=self.reduction) | |||
class NLLLoss(LossBase): | |||
@@ -300,14 +288,20 @@ class NLLLoss(LossBase): | |||
:param pred: 参数映射表中`pred`的映射关系,None表示映射关系为`pred`->`pred` | |||
:param target: 参数映射表中`target`的映射关系,None表示映射关系为`target`->`target` | |||
:param ignore_idx: ignore的index,在计算loss时将忽略target中标号为ignore_idx的内容, 可以通过该值代替 | |||
传入seq_len. | |||
:param str reduction: 支持'mean','sum'和'none'. | |||
""" | |||
def __init__(self, pred=None, target=None): | |||
def __init__(self, pred=None, target=None, ignore_idx=-100, reduction='mean'): | |||
super(NLLLoss, self).__init__() | |||
self._init_param_map(pred=pred, target=target) | |||
assert reduction in ('mean', 'sum', 'none') | |||
self.reduction = reduction | |||
self.ignore_idx = ignore_idx | |||
def get_loss(self, pred, target): | |||
return F.nll_loss(input=pred, target=target) | |||
return F.nll_loss(input=pred, target=target, ignore_index=self.ignore_idx, reduction=self.reduction) | |||
class LossInForward(LossBase): | |||
@@ -319,7 +313,7 @@ class LossInForward(LossBase): | |||
:param str loss_key: 在forward函数中loss的键名,默认为loss | |||
""" | |||
def __init__(self, loss_key='loss'): | |||
def __init__(self, loss_key=Const.LOSS): | |||
super().__init__() | |||
if not isinstance(loss_key, str): | |||
raise TypeError(f"Only str allowed for loss_key, got {type(loss_key)}.") | |||
@@ -11,21 +11,35 @@ | |||
""" | |||
__all__ = [ | |||
'EmbedLoader', | |||
'DataInfo', | |||
'DataSetLoader', | |||
'CSVLoader', | |||
'JsonLoader', | |||
'ConllLoader', | |||
'SNLILoader', | |||
'SSTLoader', | |||
'PeopleDailyCorpusLoader', | |||
'Conll2003Loader', | |||
'ModelLoader', | |||
'ModelSaver', | |||
'SSTLoader', | |||
'MatchingLoader', | |||
'SNLILoader', | |||
'MNLILoader', | |||
'QNLILoader', | |||
'QuoraLoader', | |||
'RTELoader', | |||
] | |||
from .embed_loader import EmbedLoader | |||
from .dataset_loader import DataSetLoader, CSVLoader, JsonLoader, ConllLoader, \ | |||
SNLILoader, SSTLoader, PeopleDailyCorpusLoader, Conll2003Loader | |||
from .base_loader import DataInfo, DataSetLoader | |||
from .dataset_loader import CSVLoader, JsonLoader, ConllLoader, \ | |||
PeopleDailyCorpusLoader, Conll2003Loader | |||
from .model_io import ModelLoader, ModelSaver | |||
from .data_loader.sst import SSTLoader | |||
from .data_loader.matching import MatchingLoader, SNLILoader, \ | |||
MNLILoader, QNLILoader, QuoraLoader, RTELoader |
@@ -10,6 +10,7 @@ from typing import Union, Dict | |||
import os | |||
from ..core.dataset import DataSet | |||
class BaseLoader(object): | |||
""" | |||
各个 Loader 的基类,提供了 API 的参考。 | |||
@@ -55,8 +56,6 @@ class BaseLoader(object): | |||
return obj | |||
def _download_from_url(url, path): | |||
try: | |||
from tqdm.auto import tqdm | |||
@@ -115,13 +114,11 @@ class DataInfo: | |||
经过处理的数据信息,包括一系列数据集(比如:分开的训练集、验证集和测试集)及它们所用的词表和词嵌入。 | |||
:param vocabs: 从名称(字符串)到 :class:`~fastNLP.Vocabulary` 类型的dict | |||
:param embeddings: 从名称(字符串)到一系列 embedding 的dict,参考 :class:`~fastNLP.io.EmbedLoader` | |||
:param datasets: 从名称(字符串)到 :class:`~fastNLP.DataSet` 类型的dict | |||
""" | |||
def __init__(self, vocabs: dict = None, embeddings: dict = None, datasets: dict = None): | |||
def __init__(self, vocabs: dict = None, datasets: dict = None): | |||
self.vocabs = vocabs or {} | |||
self.embeddings = embeddings or {} | |||
self.datasets = datasets or {} | |||
def __repr__(self): | |||
@@ -133,6 +130,7 @@ class DataInfo: | |||
_str += '\t{} has {} entries.\n'.format(name, len(vocab)) | |||
return _str | |||
class DataSetLoader: | |||
""" | |||
别名::class:`fastNLP.io.DataSetLoader` :class:`fastNLP.io.dataset_loader.DataSetLoader` | |||
@@ -213,7 +211,6 @@ class DataSetLoader: | |||
返回的 :class:`DataInfo` 对象有如下属性: | |||
- vocabs: 由从数据集中获取的词表组成的字典,每个词表 | |||
- embeddings: (可选) 数据集对应的词嵌入 | |||
- datasets: 一个dict,包含一系列 :class:`~fastNLP.DataSet` 类型的对象。其中 field 的命名参考 :mod:`~fastNLP.core.const` | |||
:param paths: 原始数据读取的路径 | |||
@@ -0,0 +1,19 @@ | |||
""" | |||
用于读数据集的模块, 具体包括: | |||
这些模块的使用方法如下: | |||
""" | |||
__all__ = [ | |||
'SSTLoader', | |||
'MatchingLoader', | |||
'SNLILoader', | |||
'MNLILoader', | |||
'QNLILoader', | |||
'QuoraLoader', | |||
'RTELoader', | |||
] | |||
from .sst import SSTLoader | |||
from .matching import MatchingLoader, SNLILoader, \ | |||
MNLILoader, QNLILoader, QuoraLoader, RTELoader |
@@ -0,0 +1,430 @@ | |||
import os | |||
from typing import Union, Dict | |||
from ...core.const import Const | |||
from ...core.vocabulary import Vocabulary | |||
from ..base_loader import DataInfo, DataSetLoader | |||
from ..dataset_loader import JsonLoader, CSVLoader | |||
from ..file_utils import _get_base_url, cached_path, PRETRAINED_BERT_MODEL_DIR | |||
from ...modules.encoder._bert import BertTokenizer | |||
class MatchingLoader(DataSetLoader): | |||
""" | |||
别名::class:`fastNLP.io.MatchingLoader` :class:`fastNLP.io.dataset_loader.MatchingLoader` | |||
读取Matching任务的数据集 | |||
:param dict paths: key是数据集名称(如train、dev、test),value是对应的文件名 | |||
""" | |||
def __init__(self, paths: dict=None): | |||
self.paths = paths | |||
def _load(self, path): | |||
""" | |||
:param str path: 待读取数据集的路径名 | |||
:return: fastNLP.DataSet ds: 返回一个DataSet对象,里面必须包含3个field:其中两个分别为两个句子 | |||
的原始字符串文本,第三个为标签 | |||
""" | |||
raise NotImplementedError | |||
def process(self, paths: Union[str, Dict[str, str]], dataset_name: str=None, | |||
to_lower=False, seq_len_type: str=None, bert_tokenizer: str=None, | |||
cut_text: int = None, get_index=True, auto_pad_length: int=None, | |||
auto_pad_token: str='<pad>', set_input: Union[list, str, bool]=True, | |||
set_target: Union[list, str, bool] = True, concat: Union[str, list, bool]=None, ) -> DataInfo: | |||
""" | |||
:param paths: str或者Dict[str, str]。如果是str,则为数据集所在的文件夹或者是全路径文件名:如果是文件夹, | |||
则会从self.paths里面找对应的数据集名称与文件名。如果是Dict,则为数据集名称(如train、dev、test)和 | |||
对应的全路径文件名。 | |||
:param str dataset_name: 如果在paths里传入的是一个数据集的全路径文件名,那么可以用dataset_name来定义 | |||
这个数据集的名字,如果不定义则默认为train。 | |||
:param bool to_lower: 是否将文本自动转为小写。默认值为False。 | |||
:param str seq_len_type: 提供的seq_len类型,支持 ``seq_len`` :提供一个数字作为句子长度; ``mask`` : | |||
提供一个0/1的mask矩阵作为句子长度; ``bert`` :提供segment_type_id(第一个句子为0,第二个句子为1)和 | |||
attention mask矩阵(0/1的mask矩阵)。默认值为None,即不提供seq_len | |||
:param str bert_tokenizer: bert tokenizer所使用的词表所在的文件夹路径 | |||
:param int cut_text: 将长于cut_text的内容截掉。默认为None,即不截。 | |||
:param bool get_index: 是否需要根据词表将文本转为index | |||
:param int auto_pad_length: 是否需要将文本自动pad到一定长度(超过这个长度的文本将会被截掉),默认为不会自动pad | |||
:param str auto_pad_token: 自动pad的内容 | |||
:param set_input: 如果为True,则会自动将相关的field(名字里含有Const.INPUT的)设置为input,如果为False | |||
则不会将任何field设置为input。如果传入str或者List[str],则会根据传入的内容将相对应的field设置为input, | |||
于此同时其他field不会被设置为input。默认值为True。 | |||
:param set_target: set_target将控制哪些field可以被设置为target,用法与set_input一致。默认值为True。 | |||
:param concat: 是否需要将两个句子拼接起来。如果为False则不会拼接。如果为True则会在两个句子之间插入一个<sep>。 | |||
如果传入一个长度为4的list,则分别表示插在第一句开始前、第一句结束后、第二句开始前、第二句结束后的标识符。如果 | |||
传入字符串 ``bert`` ,则会采用bert的拼接方式,等价于['[CLS]', '[SEP]', '', '[SEP]']. | |||
:return: | |||
""" | |||
if isinstance(set_input, str): | |||
set_input = [set_input] | |||
if isinstance(set_target, str): | |||
set_target = [set_target] | |||
if isinstance(set_input, bool): | |||
auto_set_input = set_input | |||
else: | |||
auto_set_input = False | |||
if isinstance(set_target, bool): | |||
auto_set_target = set_target | |||
else: | |||
auto_set_target = False | |||
if isinstance(paths, str): | |||
if os.path.isdir(paths): | |||
path = {n: os.path.join(paths, self.paths[n]) for n in self.paths.keys()} | |||
else: | |||
path = {dataset_name if dataset_name is not None else 'train': paths} | |||
else: | |||
path = paths | |||
data_info = DataInfo() | |||
for data_name in path.keys(): | |||
data_info.datasets[data_name] = self._load(path[data_name]) | |||
for data_name, data_set in data_info.datasets.items(): | |||
if auto_set_input: | |||
data_set.set_input(Const.INPUTS(0), Const.INPUTS(1)) | |||
if auto_set_target: | |||
if Const.TARGET in data_set.get_field_names(): | |||
data_set.set_target(Const.TARGET) | |||
if to_lower: | |||
for data_name, data_set in data_info.datasets.items(): | |||
data_set.apply(lambda x: [w.lower() for w in x[Const.INPUTS(0)]], new_field_name=Const.INPUTS(0), | |||
is_input=auto_set_input) | |||
data_set.apply(lambda x: [w.lower() for w in x[Const.INPUTS(1)]], new_field_name=Const.INPUTS(1), | |||
is_input=auto_set_input) | |||
if bert_tokenizer is not None: | |||
if bert_tokenizer.lower() in PRETRAINED_BERT_MODEL_DIR: | |||
PRETRAIN_URL = _get_base_url('bert') | |||
model_name = PRETRAINED_BERT_MODEL_DIR[bert_tokenizer] | |||
model_url = PRETRAIN_URL + model_name | |||
model_dir = cached_path(model_url) | |||
# 检查是否存在 | |||
elif os.path.isdir(bert_tokenizer): | |||
model_dir = bert_tokenizer | |||
else: | |||
raise ValueError(f"Cannot recognize BERT tokenizer from {bert_tokenizer}.") | |||
words_vocab = Vocabulary(padding='[PAD]', unknown='[UNK]') | |||
with open(os.path.join(model_dir, 'vocab.txt'), 'r') as f: | |||
lines = f.readlines() | |||
lines = [line.strip() for line in lines] | |||
words_vocab.add_word_lst(lines) | |||
words_vocab.build_vocab() | |||
tokenizer = BertTokenizer.from_pretrained(model_dir) | |||
for data_name, data_set in data_info.datasets.items(): | |||
for fields in data_set.get_field_names(): | |||
if Const.INPUT in fields: | |||
data_set.apply(lambda x: tokenizer.tokenize(' '.join(x[fields])), new_field_name=fields, | |||
is_input=auto_set_input) | |||
if isinstance(concat, bool): | |||
concat = 'default' if concat else None | |||
if concat is not None: | |||
if isinstance(concat, str): | |||
CONCAT_MAP = {'bert': ['[CLS]', '[SEP]', '', '[SEP]'], | |||
'default': ['', '<sep>', '', '']} | |||
if concat.lower() in CONCAT_MAP: | |||
concat = CONCAT_MAP[concat] | |||
else: | |||
concat = 4 * [concat] | |||
assert len(concat) == 4, \ | |||
f'Please choose a list with 4 symbols which at the beginning of first sentence ' \ | |||
f'the end of first sentence, the begin of second sentence, and the end of second' \ | |||
f'sentence. Your input is {concat}' | |||
for data_name, data_set in data_info.datasets.items(): | |||
data_set.apply(lambda x: [concat[0]] + x[Const.INPUTS(0)] + [concat[1]] + [concat[2]] + | |||
x[Const.INPUTS(1)] + [concat[3]], new_field_name=Const.INPUT) | |||
data_set.apply(lambda x: [w for w in x[Const.INPUT] if len(w) > 0], new_field_name=Const.INPUT, | |||
is_input=auto_set_input) | |||
if seq_len_type is not None: | |||
if seq_len_type == 'seq_len': # | |||
for data_name, data_set in data_info.datasets.items(): | |||
for fields in data_set.get_field_names(): | |||
if Const.INPUT in fields: | |||
data_set.apply(lambda x: len(x[fields]), | |||
new_field_name=fields.replace(Const.INPUT, Const.INPUT_LEN), | |||
is_input=auto_set_input) | |||
elif seq_len_type == 'mask': | |||
for data_name, data_set in data_info.datasets.items(): | |||
for fields in data_set.get_field_names(): | |||
if Const.INPUT in fields: | |||
data_set.apply(lambda x: [1] * len(x[fields]), | |||
new_field_name=fields.replace(Const.INPUT, Const.INPUT_LEN), | |||
is_input=auto_set_input) | |||
elif seq_len_type == 'bert': | |||
for data_name, data_set in data_info.datasets.items(): | |||
if Const.INPUT not in data_set.get_field_names(): | |||
raise KeyError(f'Field ``{Const.INPUT}`` not in {data_name} data set: ' | |||
f'got {data_set.get_field_names()}') | |||
data_set.apply(lambda x: [0] * (len(x[Const.INPUTS(0)]) + 2) + [1] * (len(x[Const.INPUTS(1)]) + 1), | |||
new_field_name=Const.INPUT_LENS(0), is_input=auto_set_input) | |||
data_set.apply(lambda x: [1] * len(x[Const.INPUT_LENS(0)]), | |||
new_field_name=Const.INPUT_LENS(1), is_input=auto_set_input) | |||
if auto_pad_length is not None: | |||
cut_text = min(auto_pad_length, cut_text if cut_text is not None else auto_pad_length) | |||
if cut_text is not None: | |||
for data_name, data_set in data_info.datasets.items(): | |||
for fields in data_set.get_field_names(): | |||
if (Const.INPUT in fields) or ((Const.INPUT_LEN in fields) and (seq_len_type != 'seq_len')): | |||
data_set.apply(lambda x: x[fields][: cut_text], new_field_name=fields, | |||
is_input=auto_set_input) | |||
data_set_list = [d for n, d in data_info.datasets.items()] | |||
assert len(data_set_list) > 0, f'There are NO data sets in data info!' | |||
if bert_tokenizer is None: | |||
words_vocab = Vocabulary(padding=auto_pad_token) | |||
words_vocab = words_vocab.from_dataset(*[d for n, d in data_info.datasets.items() if 'train' in n], | |||
field_name=[n for n in data_set_list[0].get_field_names() | |||
if (Const.INPUT in n)], | |||
no_create_entry_dataset=[d for n, d in data_info.datasets.items() | |||
if 'train' not in n]) | |||
target_vocab = Vocabulary(padding=None, unknown=None) | |||
target_vocab = target_vocab.from_dataset(*[d for n, d in data_info.datasets.items() if 'train' in n], | |||
field_name=Const.TARGET) | |||
data_info.vocabs = {Const.INPUT: words_vocab, Const.TARGET: target_vocab} | |||
if get_index: | |||
for data_name, data_set in data_info.datasets.items(): | |||
for fields in data_set.get_field_names(): | |||
if Const.INPUT in fields: | |||
data_set.apply(lambda x: [words_vocab.to_index(w) for w in x[fields]], new_field_name=fields, | |||
is_input=auto_set_input) | |||
if Const.TARGET in data_set.get_field_names(): | |||
data_set.apply(lambda x: target_vocab.to_index(x[Const.TARGET]), new_field_name=Const.TARGET, | |||
is_input=auto_set_input, is_target=auto_set_target) | |||
if auto_pad_length is not None: | |||
if seq_len_type == 'seq_len': | |||
raise RuntimeError(f'the sequence will be padded with the length {auto_pad_length}, ' | |||
f'so the seq_len_type cannot be `{seq_len_type}`!') | |||
for data_name, data_set in data_info.datasets.items(): | |||
for fields in data_set.get_field_names(): | |||
if Const.INPUT in fields: | |||
data_set.apply(lambda x: x[fields] + [words_vocab.to_index(words_vocab.padding)] * | |||
(auto_pad_length - len(x[fields])), new_field_name=fields, | |||
is_input=auto_set_input) | |||
elif (Const.INPUT_LEN in fields) and (seq_len_type != 'seq_len'): | |||
data_set.apply(lambda x: x[fields] + [0] * (auto_pad_length - len(x[fields])), | |||
new_field_name=fields, is_input=auto_set_input) | |||
for data_name, data_set in data_info.datasets.items(): | |||
if isinstance(set_input, list): | |||
data_set.set_input(*[inputs for inputs in set_input if inputs in data_set.get_field_names()]) | |||
if isinstance(set_target, list): | |||
data_set.set_target(*[target for target in set_target if target in data_set.get_field_names()]) | |||
return data_info | |||
class SNLILoader(MatchingLoader, JsonLoader): | |||
""" | |||
别名::class:`fastNLP.io.SNLILoader` :class:`fastNLP.io.dataset_loader.SNLILoader` | |||
读取SNLI数据集,读取的DataSet包含fields:: | |||
words1: list(str),第一句文本, premise | |||
words2: list(str), 第二句文本, hypothesis | |||
target: str, 真实标签 | |||
数据来源: https://nlp.stanford.edu/projects/snli/snli_1.0.zip | |||
""" | |||
def __init__(self, paths: dict=None): | |||
fields = { | |||
'sentence1_binary_parse': Const.INPUTS(0), | |||
'sentence2_binary_parse': Const.INPUTS(1), | |||
'gold_label': Const.TARGET, | |||
} | |||
paths = paths if paths is not None else { | |||
'train': 'snli_1.0_train.jsonl', | |||
'dev': 'snli_1.0_dev.jsonl', | |||
'test': 'snli_1.0_test.jsonl'} | |||
MatchingLoader.__init__(self, paths=paths) | |||
JsonLoader.__init__(self, fields=fields) | |||
def _load(self, path): | |||
ds = JsonLoader._load(self, path) | |||
parentheses_table = str.maketrans({'(': None, ')': None}) | |||
ds.apply(lambda ins: ins[Const.INPUTS(0)].translate(parentheses_table).strip().split(), | |||
new_field_name=Const.INPUTS(0)) | |||
ds.apply(lambda ins: ins[Const.INPUTS(1)].translate(parentheses_table).strip().split(), | |||
new_field_name=Const.INPUTS(1)) | |||
ds.drop(lambda x: x[Const.TARGET] == '-') | |||
return ds | |||
class RTELoader(MatchingLoader, CSVLoader): | |||
""" | |||
别名::class:`fastNLP.io.RTELoader` :class:`fastNLP.io.dataset_loader.RTELoader` | |||
读取RTE数据集,读取的DataSet包含fields:: | |||
words1: list(str),第一句文本, premise | |||
words2: list(str), 第二句文本, hypothesis | |||
target: str, 真实标签 | |||
数据来源: | |||
""" | |||
def __init__(self, paths: dict=None): | |||
paths = paths if paths is not None else { | |||
'train': 'train.tsv', | |||
'dev': 'dev.tsv', | |||
'test': 'test.tsv' # test set has not label | |||
} | |||
MatchingLoader.__init__(self, paths=paths) | |||
self.fields = { | |||
'sentence1': Const.INPUTS(0), | |||
'sentence2': Const.INPUTS(1), | |||
'label': Const.TARGET, | |||
} | |||
CSVLoader.__init__(self, sep='\t') | |||
def _load(self, path): | |||
ds = CSVLoader._load(self, path) | |||
for k, v in self.fields.items(): | |||
if v in ds.get_field_names(): | |||
ds.rename_field(k, v) | |||
for fields in ds.get_all_fields(): | |||
if Const.INPUT in fields: | |||
ds.apply(lambda x: x[fields].strip().split(), new_field_name=fields) | |||
return ds | |||
class QNLILoader(MatchingLoader, CSVLoader): | |||
""" | |||
别名::class:`fastNLP.io.QNLILoader` :class:`fastNLP.io.dataset_loader.QNLILoader` | |||
读取QNLI数据集,读取的DataSet包含fields:: | |||
words1: list(str),第一句文本, premise | |||
words2: list(str), 第二句文本, hypothesis | |||
target: str, 真实标签 | |||
数据来源: | |||
""" | |||
def __init__(self, paths: dict=None): | |||
paths = paths if paths is not None else { | |||
'train': 'train.tsv', | |||
'dev': 'dev.tsv', | |||
'test': 'test.tsv' # test set has not label | |||
} | |||
MatchingLoader.__init__(self, paths=paths) | |||
self.fields = { | |||
'question': Const.INPUTS(0), | |||
'sentence': Const.INPUTS(1), | |||
'label': Const.TARGET, | |||
} | |||
CSVLoader.__init__(self, sep='\t') | |||
def _load(self, path): | |||
ds = CSVLoader._load(self, path) | |||
for k, v in self.fields.items(): | |||
if v in ds.get_field_names(): | |||
ds.rename_field(k, v) | |||
for fields in ds.get_all_fields(): | |||
if Const.INPUT in fields: | |||
ds.apply(lambda x: x[fields].strip().split(), new_field_name=fields) | |||
return ds | |||
class MNLILoader(MatchingLoader, CSVLoader): | |||
""" | |||
别名::class:`fastNLP.io.MNLILoader` :class:`fastNLP.io.dataset_loader.MNLILoader` | |||
读取MNLI数据集,读取的DataSet包含fields:: | |||
words1: list(str),第一句文本, premise | |||
words2: list(str), 第二句文本, hypothesis | |||
target: str, 真实标签 | |||
数据来源: | |||
""" | |||
def __init__(self, paths: dict=None): | |||
paths = paths if paths is not None else { | |||
'train': 'train.tsv', | |||
'dev_matched': 'dev_matched.tsv', | |||
'dev_mismatched': 'dev_mismatched.tsv', | |||
'test_matched': 'test_matched.tsv', | |||
'test_mismatched': 'test_mismatched.tsv', | |||
# 'test_0.9_matched': 'multinli_0.9_test_matched_unlabeled.txt', | |||
# 'test_0.9_mismatched': 'multinli_0.9_test_mismatched_unlabeled.txt', | |||
# test_0.9_mathed与mismatched是MNLI0.9版本的(数据来源:kaggle) | |||
} | |||
MatchingLoader.__init__(self, paths=paths) | |||
CSVLoader.__init__(self, sep='\t') | |||
self.fields = { | |||
'sentence1_binary_parse': Const.INPUTS(0), | |||
'sentence2_binary_parse': Const.INPUTS(1), | |||
'gold_label': Const.TARGET, | |||
} | |||
def _load(self, path): | |||
ds = CSVLoader._load(self, path) | |||
for k, v in self.fields.items(): | |||
if k in ds.get_field_names(): | |||
ds.rename_field(k, v) | |||
if Const.TARGET in ds.get_field_names(): | |||
if ds[0][Const.TARGET] == 'hidden': | |||
ds.delete_field(Const.TARGET) | |||
parentheses_table = str.maketrans({'(': None, ')': None}) | |||
ds.apply(lambda ins: ins[Const.INPUTS(0)].translate(parentheses_table).strip().split(), | |||
new_field_name=Const.INPUTS(0)) | |||
ds.apply(lambda ins: ins[Const.INPUTS(1)].translate(parentheses_table).strip().split(), | |||
new_field_name=Const.INPUTS(1)) | |||
if Const.TARGET in ds.get_field_names(): | |||
ds.drop(lambda x: x[Const.TARGET] == '-') | |||
return ds | |||
class QuoraLoader(MatchingLoader, CSVLoader): | |||
""" | |||
别名::class:`fastNLP.io.QuoraLoader` :class:`fastNLP.io.dataset_loader.QuoraLoader` | |||
读取MNLI数据集,读取的DataSet包含fields:: | |||
words1: list(str),第一句文本, premise | |||
words2: list(str), 第二句文本, hypothesis | |||
target: str, 真实标签 | |||
数据来源: | |||
""" | |||
def __init__(self, paths: dict=None): | |||
paths = paths if paths is not None else { | |||
'train': 'train.tsv', | |||
'dev': 'dev.tsv', | |||
'test': 'test.tsv', | |||
} | |||
MatchingLoader.__init__(self, paths=paths) | |||
CSVLoader.__init__(self, sep='\t', headers=(Const.TARGET, Const.INPUTS(0), Const.INPUTS(1), 'pairID')) | |||
def _load(self, path): | |||
ds = CSVLoader._load(self, path) | |||
return ds |
@@ -16,8 +16,6 @@ __all__ = [ | |||
'CSVLoader', | |||
'JsonLoader', | |||
'ConllLoader', | |||
'SNLILoader', | |||
'SSTLoader', | |||
'PeopleDailyCorpusLoader', | |||
'Conll2003Loader', | |||
] | |||
@@ -30,7 +28,6 @@ from ..core.dataset import DataSet | |||
from ..core.instance import Instance | |||
from .file_reader import _read_csv, _read_json, _read_conll | |||
from .base_loader import DataSetLoader, DataInfo | |||
from .data_loader.sst import SSTLoader | |||
from ..core.const import Const | |||
from ..modules.encoder._bert import BertTokenizer | |||
@@ -111,7 +108,7 @@ class PeopleDailyCorpusLoader(DataSetLoader): | |||
else: | |||
instance = Instance(words=sent_words) | |||
data_set.append(instance) | |||
data_set.apply(lambda ins: len(ins["words"]), new_field_name="seq_len") | |||
data_set.apply(lambda ins: len(ins[Const.INPUT]), new_field_name=Const.INPUT_LEN) | |||
return data_set | |||
@@ -249,42 +246,6 @@ class JsonLoader(DataSetLoader): | |||
return ds | |||
class SNLILoader(JsonLoader): | |||
""" | |||
别名::class:`fastNLP.io.SNLILoader` :class:`fastNLP.io.dataset_loader.SNLILoader` | |||
读取SNLI数据集,读取的DataSet包含fields:: | |||
words1: list(str),第一句文本, premise | |||
words2: list(str), 第二句文本, hypothesis | |||
target: str, 真实标签 | |||
数据来源: https://nlp.stanford.edu/projects/snli/snli_1.0.zip | |||
""" | |||
def __init__(self): | |||
fields = { | |||
'sentence1_parse': Const.INPUTS(0), | |||
'sentence2_parse': Const.INPUTS(1), | |||
'gold_label': Const.TARGET, | |||
} | |||
super(SNLILoader, self).__init__(fields=fields) | |||
def _load(self, path): | |||
ds = super(SNLILoader, self)._load(path) | |||
def parse_tree(x): | |||
t = Tree.fromstring(x) | |||
return t.leaves() | |||
ds.apply(lambda ins: parse_tree( | |||
ins[Const.INPUTS(0)]), new_field_name=Const.INPUTS(0)) | |||
ds.apply(lambda ins: parse_tree( | |||
ins[Const.INPUTS(1)]), new_field_name=Const.INPUTS(1)) | |||
ds.drop(lambda x: x[Const.TARGET] == '-') | |||
return ds | |||
class CSVLoader(DataSetLoader): | |||
""" | |||
别名::class:`fastNLP.io.CSVLoader` :class:`fastNLP.io.dataset_loader.CSVLoader` | |||
@@ -8,35 +8,7 @@ from torch import nn | |||
from .base_model import BaseModel | |||
from ..core.const import Const | |||
from ..modules.encoder import BertModel | |||
class BertConfig: | |||
def __init__( | |||
self, | |||
vocab_size=30522, | |||
hidden_size=768, | |||
num_hidden_layers=12, | |||
num_attention_heads=12, | |||
intermediate_size=3072, | |||
hidden_act="gelu", | |||
hidden_dropout_prob=0.1, | |||
attention_probs_dropout_prob=0.1, | |||
max_position_embeddings=512, | |||
type_vocab_size=2, | |||
initializer_range=0.02 | |||
): | |||
self.vocab_size = vocab_size | |||
self.hidden_size = hidden_size | |||
self.num_hidden_layers = num_hidden_layers | |||
self.num_attention_heads = num_attention_heads | |||
self.intermediate_size = intermediate_size | |||
self.hidden_act = hidden_act | |||
self.hidden_dropout_prob = hidden_dropout_prob | |||
self.attention_probs_dropout_prob = attention_probs_dropout_prob | |||
self.max_position_embeddings = max_position_embeddings | |||
self.type_vocab_size = type_vocab_size | |||
self.initializer_range = initializer_range | |||
from ..modules.encoder._bert import BertConfig | |||
class BertForSequenceClassification(BaseModel): | |||
@@ -84,11 +56,17 @@ class BertForSequenceClassification(BaseModel): | |||
self.bert = BertModel.from_pretrained(bert_dir) | |||
else: | |||
if config is None: | |||
config = BertConfig() | |||
self.bert = BertModel(**config.__dict__) | |||
config = BertConfig(30522) | |||
self.bert = BertModel(config) | |||
self.dropout = nn.Dropout(config.hidden_dropout_prob) | |||
self.classifier = nn.Linear(config.hidden_size, num_labels) | |||
@classmethod | |||
def from_pretrained(cls, num_labels, pretrained_model_dir): | |||
config = BertConfig(pretrained_model_dir) | |||
model = cls(num_labels=num_labels, config=config, bert_dir=pretrained_model_dir) | |||
return model | |||
def forward(self, input_ids, token_type_ids=None, attention_mask=None, labels=None): | |||
_, pooled_output = self.bert(input_ids, token_type_ids, attention_mask, output_all_encoded_layers=False) | |||
pooled_output = self.dropout(pooled_output) | |||
@@ -151,11 +129,17 @@ class BertForMultipleChoice(BaseModel): | |||
self.bert = BertModel.from_pretrained(bert_dir) | |||
else: | |||
if config is None: | |||
config = BertConfig() | |||
self.bert = BertModel(**config.__dict__) | |||
config = BertConfig(30522) | |||
self.bert = BertModel(config) | |||
self.dropout = nn.Dropout(config.hidden_dropout_prob) | |||
self.classifier = nn.Linear(config.hidden_size, 1) | |||
@classmethod | |||
def from_pretrained(cls, num_choices, pretrained_model_dir): | |||
config = BertConfig(pretrained_model_dir) | |||
model = cls(num_choices=num_choices, config=config, bert_dir=pretrained_model_dir) | |||
return model | |||
def forward(self, input_ids, token_type_ids=None, attention_mask=None, labels=None): | |||
flat_input_ids = input_ids.view(-1, input_ids.size(-1)) | |||
flat_token_type_ids = token_type_ids.view(-1, token_type_ids.size(-1)) | |||
@@ -224,11 +208,17 @@ class BertForTokenClassification(BaseModel): | |||
self.bert = BertModel.from_pretrained(bert_dir) | |||
else: | |||
if config is None: | |||
config = BertConfig() | |||
self.bert = BertModel(**config.__dict__) | |||
config = BertConfig(30522) | |||
self.bert = BertModel(config) | |||
self.dropout = nn.Dropout(config.hidden_dropout_prob) | |||
self.classifier = nn.Linear(config.hidden_size, num_labels) | |||
@classmethod | |||
def from_pretrained(cls, num_labels, pretrained_model_dir): | |||
config = BertConfig(pretrained_model_dir) | |||
model = cls(num_labels=num_labels, config=config, bert_dir=pretrained_model_dir) | |||
return model | |||
def forward(self, input_ids, token_type_ids=None, attention_mask=None, labels=None): | |||
sequence_output, _ = self.bert(input_ids, token_type_ids, attention_mask, output_all_encoded_layers=False) | |||
sequence_output = self.dropout(sequence_output) | |||
@@ -302,12 +292,18 @@ class BertForQuestionAnswering(BaseModel): | |||
self.bert = BertModel.from_pretrained(bert_dir) | |||
else: | |||
if config is None: | |||
config = BertConfig() | |||
self.bert = BertModel(**config.__dict__) | |||
config = BertConfig(30522) | |||
self.bert = BertModel(config) | |||
# TODO check with Google if it's normal there is no dropout on the token classifier of SQuAD in the TF version | |||
# self.dropout = nn.Dropout(config.hidden_dropout_prob) | |||
self.qa_outputs = nn.Linear(config.hidden_size, 2) | |||
@classmethod | |||
def from_pretrained(cls, pretrained_model_dir): | |||
config = BertConfig(pretrained_model_dir) | |||
model = cls(config=config, bert_dir=pretrained_model_dir) | |||
return model | |||
def forward(self, input_ids, token_type_ids=None, attention_mask=None, start_positions=None, end_positions=None): | |||
sequence_output, _ = self.bert(input_ids, token_type_ids, attention_mask, output_all_encoded_layers=False) | |||
logits = self.qa_outputs(sequence_output) | |||
@@ -15,7 +15,8 @@ class MLP(nn.Module): | |||
多层感知器 | |||
:param List[int] size_layer: 一个int的列表,用来定义MLP的层数,列表中的数字为每一层是hidden数目。MLP的层数为 len(size_layer) - 1 | |||
:param Union[str,func,List[str]] activation: 一个字符串或者函数的列表,用来定义每一个隐层的激活函数,字符串包括relu,tanh和sigmoid,默认值为relu | |||
:param Union[str,func,List[str]] activation: 一个字符串或者函数的列表,用来定义每一个隐层的激活函数,字符串包括relu,tanh和 | |||
sigmoid,默认值为relu | |||
:param Union[str,func] output_activation: 字符串或者函数,用来定义输出层的激活函数,默认值为None,表示输出层没有激活函数 | |||
:param str initial_method: 参数初始化方式 | |||
:param float dropout: dropout概率,默认值为0 | |||
@@ -26,6 +26,7 @@ import sys | |||
CONFIG_FILE = 'bert_config.json' | |||
class BertConfig(object): | |||
"""Configuration class to store the configuration of a `BertModel`. | |||
""" | |||
@@ -339,13 +340,19 @@ class BertModel(nn.Module): | |||
如果你想使用预训练好的权重矩阵,请在以下网址下载. | |||
sources:: | |||
'bert-base-uncased': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-base-uncased.tar.gz", | |||
'bert-large-uncased': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-large-uncased.tar.gz", | |||
'bert-base-cased': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-base-cased.tar.gz", | |||
'bert-large-cased': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-large-cased.tar.gz", | |||
'bert-base-multilingual-uncased': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-base-multilingual-uncased.tar.gz", | |||
'bert-base-multilingual-cased': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-base-multilingual-cased.tar.gz", | |||
'bert-base-chinese': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-base-chinese.tar.gz", | |||
'bert-base-uncased': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-base-uncased-pytorch_model.bin", | |||
'bert-large-uncased': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-large-uncased-pytorch_model.bin", | |||
'bert-base-cased': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-base-cased-pytorch_model.bin", | |||
'bert-large-cased': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-large-cased-pytorch_model.bin", | |||
'bert-base-multilingual-uncased': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-base-multilingual-uncased-pytorch_model.bin", | |||
'bert-base-multilingual-cased': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-base-multilingual-cased-pytorch_model.bin", | |||
'bert-base-chinese': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-base-chinese-pytorch_model.bin", | |||
'bert-base-german-cased': "https://int-deepset-models-bert.s3.eu-central-1.amazonaws.com/pytorch/bert-base-german-cased-pytorch_model.bin", | |||
'bert-large-uncased-whole-word-masking': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-large-uncased-whole-word-masking-pytorch_model.bin", | |||
'bert-large-cased-whole-word-masking': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-large-cased-whole-word-masking-pytorch_model.bin", | |||
'bert-large-uncased-whole-word-masking-finetuned-squad': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-large-uncased-whole-word-masking-finetuned-squad-pytorch_model.bin", | |||
'bert-large-cased-whole-word-masking-finetuned-squad': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-large-cased-whole-word-masking-finetuned-squad-pytorch_model.bin", | |||
'bert-base-cased-finetuned-mrpc': "https://s3.amazonaws.com/models.huggingface.co/bert/bert-base-cased-finetuned-mrpc-pytorch_model.bin" | |||
用预训练权重矩阵来建立BERT模型:: | |||
@@ -562,6 +569,7 @@ class WordpieceTokenizer(object): | |||
output_tokens.extend(sub_tokens) | |||
return output_tokens | |||
def load_vocab(vocab_file): | |||
"""Loads a vocabulary file into a dictionary.""" | |||
vocab = collections.OrderedDict() | |||
@@ -692,6 +700,7 @@ class BasicTokenizer(object): | |||
output.append(char) | |||
return "".join(output) | |||
def _is_whitespace(char): | |||
"""Checks whether `chars` is a whitespace character.""" | |||
# \t, \n, and \r are technically contorl characters but we treat them | |||
@@ -3,6 +3,8 @@ | |||
复现的模型有: | |||
- [Star-Transformer](Star_transformer/) | |||
- [Biaffine](https://github.com/fastnlp/fastNLP/blob/999a14381747068e9e6a7cc370037b320197db00/fastNLP/models/biaffine_parser.py#L239) | |||
- [CNNText](https://github.com/fastnlp/fastNLP/blob/999a14381747068e9e6a7cc370037b320197db00/fastNLP/models/cnn_text_classification.py#L12) | |||
- ... | |||
# 任务复现 | |||
@@ -11,11 +13,11 @@ | |||
## Matching (自然语言推理/句子匹配) | |||
- [Matching 任务复现](matching/) | |||
- [Matching 任务复现](matching) | |||
## Sequence Labeling (序列标注) | |||
- still in progress | |||
- [NER](seqence_labelling/ner) | |||
## Coreference resolution (指代消解) | |||
@@ -2,7 +2,8 @@ import torch | |||
import json | |||
import os | |||
from fastNLP import Vocabulary | |||
from fastNLP.io.dataset_loader import ConllLoader, SSTLoader, SNLILoader | |||
from fastNLP.io.dataset_loader import ConllLoader | |||
from fastNLP.io.data_loader import SSTLoader, SNLILoader | |||
from fastNLP.core import Const as C | |||
import numpy as np | |||
@@ -16,12 +16,11 @@ class MatchingLoader(DataSetLoader): | |||
别名::class:`fastNLP.io.MatchingLoader` :class:`fastNLP.io.dataset_loader.MatchingLoader` | |||
读取Matching任务的数据集 | |||
:param dict paths: key是数据集名称(如train、dev、test),value是对应的文件名 | |||
""" | |||
def __init__(self, paths: dict=None): | |||
""" | |||
:param dict paths: key是数据集名称(如train、dev、test),value是对应的文件名 | |||
""" | |||
self.paths = paths | |||
def _load(self, path): | |||
@@ -173,7 +172,7 @@ class MatchingLoader(DataSetLoader): | |||
new_field_name=Const.INPUT_LENS(1), is_input=auto_set_input) | |||
if auto_pad_length is not None: | |||
cut_text = min(auto_pad_length, cut_text if cut_text is not None else 0) | |||
cut_text = min(auto_pad_length, cut_text if cut_text is not None else auto_pad_length) | |||
if cut_text is not None: | |||
for data_name, data_set in data_info.datasets.items(): | |||
@@ -209,15 +208,18 @@ class MatchingLoader(DataSetLoader): | |||
is_input=auto_set_input, is_target=auto_set_target) | |||
if auto_pad_length is not None: | |||
if seq_len_type == 'seq_len': | |||
raise RuntimeError(f'the sequence will be padded with the length {auto_pad_length}, ' | |||
f'so the seq_len_type cannot be `{seq_len_type}`!') | |||
for data_name, data_set in data_info.datasets.items(): | |||
for fields in data_set.get_field_names(): | |||
if Const.INPUT in fields: | |||
data_set.apply(lambda x: x[fields] + [words_vocab.padding] * (auto_pad_length - len(x[fields])), | |||
new_field_name=fields, is_input=auto_set_input) | |||
elif (Const.INPUT_LEN in fields) and (seq_len_type != 'seq_len'): | |||
data_set.apply(lambda x: x[fields] + [words_vocab.to_index(words_vocab.padding)] * | |||
(auto_pad_length - len(x[fields])), new_field_name=fields, | |||
is_input=auto_set_input) | |||
elif (Const.INPUT_LEN in fields) and (seq_len_type != 'seq_len'): | |||
data_set.apply(lambda x: x[fields] + [0] * (auto_pad_length - len(x[fields])), | |||
new_field_name=fields, is_input=auto_set_input) | |||
for data_name, data_set in data_info.datasets.items(): | |||
if isinstance(set_input, list): | |||
@@ -284,7 +286,7 @@ class RTELoader(MatchingLoader, CSVLoader): | |||
paths = paths if paths is not None else { | |||
'train': 'train.tsv', | |||
'dev': 'dev.tsv', | |||
# 'test': 'test.tsv' # test set has not label | |||
'test': 'test.tsv' # test set has not label | |||
} | |||
MatchingLoader.__init__(self, paths=paths) | |||
self.fields = { | |||
@@ -298,7 +300,8 @@ class RTELoader(MatchingLoader, CSVLoader): | |||
ds = CSVLoader._load(self, path) | |||
for k, v in self.fields.items(): | |||
ds.rename_field(k, v) | |||
if v in ds.get_field_names(): | |||
ds.rename_field(k, v) | |||
for fields in ds.get_all_fields(): | |||
if Const.INPUT in fields: | |||
ds.apply(lambda x: x[fields].strip().split(), new_field_name=fields) | |||
@@ -323,7 +326,7 @@ class QNLILoader(MatchingLoader, CSVLoader): | |||
paths = paths if paths is not None else { | |||
'train': 'train.tsv', | |||
'dev': 'dev.tsv', | |||
# 'test': 'test.tsv' # test set has not label | |||
'test': 'test.tsv' # test set has not label | |||
} | |||
MatchingLoader.__init__(self, paths=paths) | |||
self.fields = { | |||
@@ -337,7 +340,8 @@ class QNLILoader(MatchingLoader, CSVLoader): | |||
ds = CSVLoader._load(self, path) | |||
for k, v in self.fields.items(): | |||
ds.rename_field(k, v) | |||
if v in ds.get_field_names(): | |||
ds.rename_field(k, v) | |||
for fields in ds.get_all_fields(): | |||
if Const.INPUT in fields: | |||
ds.apply(lambda x: x[fields].strip().split(), new_field_name=fields) | |||
@@ -349,7 +353,7 @@ class MNLILoader(MatchingLoader, CSVLoader): | |||
""" | |||
别名::class:`fastNLP.io.MNLILoader` :class:`fastNLP.io.dataset_loader.MNLILoader` | |||
读取SNLI数据集,读取的DataSet包含fields:: | |||
读取MNLI数据集,读取的DataSet包含fields:: | |||
words1: list(str),第一句文本, premise | |||
words2: list(str), 第二句文本, hypothesis | |||
@@ -367,6 +371,7 @@ class MNLILoader(MatchingLoader, CSVLoader): | |||
'test_mismatched': 'test_mismatched.tsv', | |||
# 'test_0.9_matched': 'multinli_0.9_test_matched_unlabeled.txt', | |||
# 'test_0.9_mismatched': 'multinli_0.9_test_mismatched_unlabeled.txt', | |||
# test_0.9_mathed与mismatched是MNLI0.9版本的(数据来源:kaggle) | |||
} | |||
MatchingLoader.__init__(self, paths=paths) | |||
@@ -400,6 +405,17 @@ class MNLILoader(MatchingLoader, CSVLoader): | |||
class QuoraLoader(MatchingLoader, CSVLoader): | |||
""" | |||
别名::class:`fastNLP.io.QuoraLoader` :class:`fastNLP.io.dataset_loader.QuoraLoader` | |||
读取MNLI数据集,读取的DataSet包含fields:: | |||
words1: list(str),第一句文本, premise | |||
words2: list(str), 第二句文本, hypothesis | |||
target: str, 真实标签 | |||
数据来源: | |||
""" | |||
def __init__(self, paths: dict=None): | |||
paths = paths if paths is not None else { | |||
@@ -1,5 +1,5 @@ | |||
numpy | |||
torch>=0.4.0 | |||
tqdm | |||
nltk | |||
numpy>=1.14.2 | |||
torch>=1.0.0 | |||
tqdm>=4.28.1 | |||
nltk>=3.4.1 | |||
requests |
@@ -1,7 +1,7 @@ | |||
import unittest | |||
import os | |||
from fastNLP.io import Conll2003Loader, PeopleDailyCorpusLoader, CSVLoader, SNLILoader, JsonLoader | |||
from fastNLP.io.dataset_loader import SSTLoader | |||
from fastNLP.io import Conll2003Loader, PeopleDailyCorpusLoader, CSVLoader, JsonLoader | |||
from fastNLP.io.data_loader import SSTLoader, SNLILoader | |||
from reproduction.text_classification.data.yelpLoader import yelpLoader | |||
@@ -61,3 +61,12 @@ class TestDatasetLoader(unittest.TestCase): | |||
print(info.vocabs) | |||
print(info.datasets) | |||
os.remove(train), os.remove(test) | |||
def test_import(self): | |||
import fastNLP | |||
from fastNLP.io import SNLILoader | |||
ds = SNLILoader().process('test/data_for_tests/sample_snli.jsonl', to_lower=True, | |||
get_index=True, seq_len_type='seq_len') | |||
assert 'train' in ds.datasets | |||
assert len(ds.datasets) == 1 | |||
assert len(ds.datasets['train']) == 3 |
@@ -8,8 +8,9 @@ from fastNLP.models.bert import * | |||
class TestBert(unittest.TestCase): | |||
def test_bert_1(self): | |||
from fastNLP.core.const import Const | |||
from fastNLP.modules.encoder._bert import BertConfig | |||
model = BertForSequenceClassification(2) | |||
model = BertForSequenceClassification(2, BertConfig(32000)) | |||
input_ids = torch.LongTensor([[31, 51, 99], [15, 5, 0]]) | |||
input_mask = torch.LongTensor([[1, 1, 1], [1, 1, 0]]) | |||
@@ -22,8 +23,9 @@ class TestBert(unittest.TestCase): | |||
def test_bert_2(self): | |||
from fastNLP.core.const import Const | |||
from fastNLP.modules.encoder._bert import BertConfig | |||
model = BertForMultipleChoice(2) | |||
model = BertForMultipleChoice(2, BertConfig(32000)) | |||
input_ids = torch.LongTensor([[31, 51, 99], [15, 5, 0]]) | |||
input_mask = torch.LongTensor([[1, 1, 1], [1, 1, 0]]) | |||
@@ -36,8 +38,9 @@ class TestBert(unittest.TestCase): | |||
def test_bert_3(self): | |||
from fastNLP.core.const import Const | |||
from fastNLP.modules.encoder._bert import BertConfig | |||
model = BertForTokenClassification(7) | |||
model = BertForTokenClassification(7, BertConfig(32000)) | |||
input_ids = torch.LongTensor([[31, 51, 99], [15, 5, 0]]) | |||
input_mask = torch.LongTensor([[1, 1, 1], [1, 1, 0]]) | |||
@@ -50,8 +53,9 @@ class TestBert(unittest.TestCase): | |||
def test_bert_4(self): | |||
from fastNLP.core.const import Const | |||
from fastNLP.modules.encoder._bert import BertConfig | |||
model = BertForQuestionAnswering() | |||
model = BertForQuestionAnswering(BertConfig(32000)) | |||
input_ids = torch.LongTensor([[31, 51, 99], [15, 5, 0]]) | |||
input_mask = torch.LongTensor([[1, 1, 1], [1, 1, 0]]) | |||
@@ -8,8 +8,9 @@ from fastNLP.models.bert import BertModel | |||
class TestBert(unittest.TestCase): | |||
def test_bert_1(self): | |||
model = BertModel(vocab_size=32000, hidden_size=768, | |||
num_hidden_layers=12, num_attention_heads=12, intermediate_size=3072) | |||
from fastNLP.modules.encoder._bert import BertConfig | |||
config = BertConfig(32000) | |||
model = BertModel(config) | |||
input_ids = torch.LongTensor([[31, 51, 99], [15, 5, 0]]) | |||
input_mask = torch.LongTensor([[1, 1, 1], [1, 1, 0]]) | |||
@@ -18,4 +19,4 @@ class TestBert(unittest.TestCase): | |||
all_encoder_layers, pooled_output = model(input_ids, token_type_ids, input_mask) | |||
for layer in all_encoder_layers: | |||
self.assertEqual(tuple(layer.shape), (2, 3, 768)) | |||
self.assertEqual(tuple(pooled_output.shape), (2, 768)) | |||
self.assertEqual(tuple(pooled_output.shape), (2, 768)) |