Source code for pytorch_transformers.modeling_xlnet

# coding=utf-8
# Copyright 2018 Google AI, Google Brain and Carnegie Mellon University Authors and the HuggingFace Inc. team.
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""" PyTorch XLNet model.
"""
from __future__ import absolute_import, division, print_function, unicode_literals

import json
import logging
import math
import os
import sys
from io import open

import torch
from torch import nn
from torch.nn import functional as F
from torch.nn import CrossEntropyLoss, MSELoss

from .modeling_utils import (CONFIG_NAME, WEIGHTS_NAME, PretrainedConfig, PreTrainedModel,
                             SequenceSummary, PoolerAnswerClass, PoolerEndLogits, PoolerStartLogits,
                             add_start_docstrings)


logger = logging.getLogger(__name__)

XLNET_PRETRAINED_MODEL_ARCHIVE_MAP = {
    'xlnet-base-cased': "https://s3.amazonaws.com/models.huggingface.co/bert/xlnet-base-cased-pytorch_model.bin",
    'xlnet-large-cased': "https://s3.amazonaws.com/models.huggingface.co/bert/xlnet-large-cased-pytorch_model.bin",
}
XLNET_PRETRAINED_CONFIG_ARCHIVE_MAP = {
    'xlnet-base-cased': "https://s3.amazonaws.com/models.huggingface.co/bert/xlnet-base-cased-config.json",
    'xlnet-large-cased': "https://s3.amazonaws.com/models.huggingface.co/bert/xlnet-large-cased-config.json",
}


def build_tf_xlnet_to_pytorch_map(model, config, tf_weights=None):
    """ A map of modules from TF to PyTorch.
        I use a map to keep the PyTorch model as
        identical to the original PyTorch model as possible.
    """

    tf_to_pt_map = {}

    if hasattr(model, 'transformer'):
        if hasattr(model, 'lm_loss'):
            # We will load also the output bias
            tf_to_pt_map['model/lm_loss/bias'] = model.lm_loss.bias
        if hasattr(model, 'sequence_summary') and 'model/sequnece_summary/summary/kernel' in tf_weights:
            # We will load also the sequence summary
            tf_to_pt_map['model/sequnece_summary/summary/kernel'] = model.sequence_summary.summary.weight
            tf_to_pt_map['model/sequnece_summary/summary/bias'] = model.sequence_summary.summary.bias
        if hasattr(model, 'logits_proj') and config.finetuning_task is not None \
                and 'model/regression_{}/logit/kernel'.format(config.finetuning_task) in tf_weights:
            tf_to_pt_map['model/regression_{}/logit/kernel'.format(config.finetuning_task)] = model.logits_proj.weight
            tf_to_pt_map['model/regression_{}/logit/bias'.format(config.finetuning_task)] = model.logits_proj.bias

        # Now load the rest of the transformer
        model = model.transformer

    # Embeddings and output
    tf_to_pt_map.update({'model/transformer/word_embedding/lookup_table': model.word_embedding.weight,
                         'model/transformer/mask_emb/mask_emb': model.mask_emb})

    # Transformer blocks
    for i, b in enumerate(model.layer):
        layer_str = "model/transformer/layer_%d/" % i
        tf_to_pt_map.update({
            layer_str + "rel_attn/LayerNorm/gamma": b.rel_attn.layer_norm.weight,
            layer_str + "rel_attn/LayerNorm/beta": b.rel_attn.layer_norm.bias,
            layer_str + "rel_attn/o/kernel": b.rel_attn.o,
            layer_str + "rel_attn/q/kernel": b.rel_attn.q,
            layer_str + "rel_attn/k/kernel": b.rel_attn.k,
            layer_str + "rel_attn/r/kernel": b.rel_attn.r,
            layer_str + "rel_attn/v/kernel": b.rel_attn.v,
            layer_str + "ff/LayerNorm/gamma": b.ff.layer_norm.weight,
            layer_str + "ff/LayerNorm/beta": b.ff.layer_norm.bias,
            layer_str + "ff/layer_1/kernel": b.ff.layer_1.weight,
            layer_str + "ff/layer_1/bias": b.ff.layer_1.bias,
            layer_str + "ff/layer_2/kernel": b.ff.layer_2.weight,
            layer_str + "ff/layer_2/bias": b.ff.layer_2.bias,
        })

    # Relative positioning biases
    if config.untie_r:
        r_r_list = []
        r_w_list = []
        r_s_list = []
        seg_embed_list = []
        for b in model.layer:
            r_r_list.append(b.rel_attn.r_r_bias)
            r_w_list.append(b.rel_attn.r_w_bias)
            r_s_list.append(b.rel_attn.r_s_bias)
            seg_embed_list.append(b.rel_attn.seg_embed)
    else:
        r_r_list = [model.r_r_bias]
        r_w_list = [model.r_w_bias]
        r_s_list = [model.r_s_bias]
        seg_embed_list = [model.seg_embed]
    tf_to_pt_map.update({
        'model/transformer/r_r_bias': r_r_list,
        'model/transformer/r_w_bias': r_w_list,
        'model/transformer/r_s_bias': r_s_list,
        'model/transformer/seg_embed': seg_embed_list})
    return tf_to_pt_map

def load_tf_weights_in_xlnet(model, config, tf_path):
    """ Load tf checkpoints in a pytorch model
    """
    try:
        import numpy as np
        import tensorflow as tf
    except ImportError:
        logger.error("Loading a TensorFlow models in PyTorch, requires TensorFlow to be installed. Please see "
            "https://www.tensorflow.org/install/ for installation instructions.")
        raise
    # Load weights from TF model
    init_vars = tf.train.list_variables(tf_path)
    tf_weights = {}
    for name, shape in init_vars:
        logger.info("Loading TF weight {} with shape {}".format(name, shape))
        array = tf.train.load_variable(tf_path, name)
        tf_weights[name] = array

    # Build TF to PyTorch weights loading map
    tf_to_pt_map = build_tf_xlnet_to_pytorch_map(model, config, tf_weights)

    for name, pointer in tf_to_pt_map.items():
        logger.info("Importing {}".format(name))
        if name not in tf_weights:
            logger.info("{} not in tf pre-trained weights, skipping".format(name))
            continue
        array = tf_weights[name]
        # adam_v and adam_m are variables used in AdamWeightDecayOptimizer to calculated m and v
        # which are not required for using pretrained model
        if 'kernel' in name and ('ff' in name or 'summary' in name or 'logit' in name):
            logger.info("Transposing")
            array = np.transpose(array)
        if isinstance(pointer, list):
            # Here we will split the TF weigths
            assert len(pointer) == array.shape[0]
            for i, p_i in enumerate(pointer):
                arr_i = array[i, ...]
                try:
                    assert p_i.shape == arr_i.shape
                except AssertionError as e:
                    e.args += (p_i.shape, arr_i.shape)
                    raise
                logger.info("Initialize PyTorch weight {} for layer {}".format(name, i))
                p_i.data = torch.from_numpy(arr_i)
        else:
            try:
                assert pointer.shape == array.shape
            except AssertionError as e:
                e.args += (pointer.shape, array.shape)
                raise
            logger.info("Initialize PyTorch weight {}".format(name))
            pointer.data = torch.from_numpy(array)
        tf_weights.pop(name, None)
        tf_weights.pop(name + '/Adam', None)
        tf_weights.pop(name + '/Adam_1', None)

    logger.info("Weights not copied to PyTorch model: {}".format(', '.join(tf_weights.keys())))
    return model


def gelu(x):
    """ Implementation of the gelu activation function.
        XLNet is using OpenAI GPT's gelu (not exactly the same as BERT)
        Also see https://arxiv.org/abs/1606.08415
    """
    cdf = 0.5 * (1.0 + torch.tanh(math.sqrt(2 / math.pi) * (x + 0.044715 * torch.pow(x, 3))))
    return x * cdf


def swish(x):
    return x * torch.sigmoid(x)


ACT2FN = {"gelu": gelu, "relu": torch.nn.functional.relu, "swish": swish}


[docs]class XLNetConfig(PretrainedConfig): """Configuration class to store the configuration of a ``XLNetModel``. Args: vocab_size_or_config_json_file: Vocabulary size of ``inputs_ids`` in ``XLNetModel``. d_model: Size of the encoder layers and the pooler layer. n_layer: Number of hidden layers in the Transformer encoder. n_head: Number of attention heads for each attention layer in the Transformer encoder. d_inner: The size of the "intermediate" (i.e., feed-forward) layer in the Transformer encoder. ff_activation: The non-linear activation function (function or string) in the encoder and pooler. If string, "gelu", "relu" and "swish" are supported. untie_r: untie relative position biases attn_type: 'bi' for XLNet, 'uni' for Transformer-XL dropout: The dropout probabilitiy for all fully connected layers in the embeddings, encoder, and pooler. dropatt: The dropout ratio for the attention probabilities. initializer_range: The sttdev of the truncated_normal_initializer for initializing all weight matrices. layer_norm_eps: The epsilon used by LayerNorm. dropout: float, dropout rate. dropatt: float, dropout rate on attention probabilities. init: str, the initialization scheme, either "normal" or "uniform". init_range: float, initialize the parameters with a uniform distribution in [-init_range, init_range]. Only effective when init="uniform". init_std: float, initialize the parameters with a normal distribution with mean 0 and stddev init_std. Only effective when init="normal". mem_len: int, the number of tokens to cache. reuse_len: int, the number of tokens in the currect batch to be cached and reused in the future. bi_data: bool, whether to use bidirectional input pipeline. Usually set to True during pretraining and False during finetuning. clamp_len: int, clamp all relative distances larger than clamp_len. -1 means no clamping. same_length: bool, whether to use the same attention length for each token. finetuning_task: name of the glue task on which the model was fine-tuned if any """ pretrained_config_archive_map = XLNET_PRETRAINED_CONFIG_ARCHIVE_MAP def __init__(self, vocab_size_or_config_json_file=32000, d_model=1024, n_layer=24, n_head=16, d_inner=4096, ff_activation="gelu", untie_r=True, attn_type="bi", initializer_range=0.02, layer_norm_eps=1e-12, dropout=0.1, mem_len=None, reuse_len=None, bi_data=False, clamp_len=-1, same_length=False, finetuning_task=None, num_labels=2, summary_type='last', summary_use_proj=True, summary_activation='tanh', summary_last_dropout=0.1, start_n_top=5, end_n_top=5, **kwargs): """Constructs XLNetConfig. """ super(XLNetConfig, self).__init__(**kwargs) if isinstance(vocab_size_or_config_json_file, str) or (sys.version_info[0] == 2 and isinstance(vocab_size_or_config_json_file, unicode)): with open(vocab_size_or_config_json_file, "r", encoding='utf-8') as reader: json_config = json.loads(reader.read()) for key, value in json_config.items(): self.__dict__[key] = value elif isinstance(vocab_size_or_config_json_file, int): self.n_token = vocab_size_or_config_json_file self.d_model = d_model self.n_layer = n_layer self.n_head = n_head assert d_model % n_head == 0 self.d_head = d_model // n_head self.ff_activation = ff_activation self.d_inner = d_inner self.untie_r = untie_r self.attn_type = attn_type self.initializer_range = initializer_range self.layer_norm_eps = layer_norm_eps self.dropout = dropout self.mem_len = mem_len self.reuse_len = reuse_len self.bi_data = bi_data self.clamp_len = clamp_len self.same_length = same_length self.finetuning_task = finetuning_task self.num_labels = num_labels self.summary_type = summary_type self.summary_use_proj = summary_use_proj self.summary_activation = summary_activation self.summary_last_dropout = summary_last_dropout self.start_n_top = start_n_top self.end_n_top = end_n_top else: raise ValueError("First argument must be either a vocabulary size (int)" "or the path to a pretrained model config file (str)") @property def max_position_embeddings(self): return -1 @property def vocab_size(self): return self.n_token @vocab_size.setter def vocab_size(self, value): self.n_token = value @property def hidden_size(self): return self.d_model @property def num_attention_heads(self): return self.n_head @property def num_hidden_layers(self): return self.n_layer
try: from apex.normalization.fused_layer_norm import FusedLayerNorm as XLNetLayerNorm except ImportError: logger.info("Better speed can be achieved with apex installed from https://www.github.com/nvidia/apex .") class XLNetLayerNorm(nn.Module): def __init__(self, d_model, eps=1e-12): """Construct a layernorm module in the TF style (epsilon inside the square root). """ super(XLNetLayerNorm, self).__init__() self.weight = nn.Parameter(torch.ones(d_model)) self.bias = nn.Parameter(torch.zeros(d_model)) self.variance_epsilon = eps def forward(self, x): u = x.mean(-1, keepdim=True) s = (x - u).pow(2).mean(-1, keepdim=True) x = (x - u) / torch.sqrt(s + self.variance_epsilon) return self.weight * x + self.bias class XLNetRelativeAttention(nn.Module): def __init__(self, config): super(XLNetRelativeAttention, self).__init__() self.output_attentions = config.output_attentions if config.d_model % config.n_head != 0: raise ValueError( "The hidden size (%d) is not a multiple of the number of attention " "heads (%d)" % (config.d_model, config.n_head)) self.n_head = config.n_head self.d_head = config.d_head self.d_model = config.d_model self.scale = 1 / (config.d_head ** 0.5) self.q = nn.Parameter(torch.Tensor(config.d_model, self.n_head, self.d_head)) self.k = nn.Parameter(torch.Tensor(config.d_model, self.n_head, self.d_head)) self.v = nn.Parameter(torch.Tensor(config.d_model, self.n_head, self.d_head)) self.o = nn.Parameter(torch.Tensor(config.d_model, self.n_head, self.d_head)) self.r = nn.Parameter(torch.Tensor(config.d_model, self.n_head, self.d_head)) self.r_r_bias = nn.Parameter(torch.Tensor(self.n_head, self.d_head)) self.r_s_bias = nn.Parameter(torch.Tensor(self.n_head, self.d_head)) self.r_w_bias = nn.Parameter(torch.Tensor(self.n_head, self.d_head)) self.seg_embed = nn.Parameter(torch.Tensor(2, self.n_head, self.d_head)) self.layer_norm = XLNetLayerNorm(config.d_model, eps=config.layer_norm_eps) self.dropout = nn.Dropout(config.dropout) def prune_heads(self, heads): raise NotImplementedError @staticmethod def rel_shift(x, klen=-1): """perform relative shift to form the relative attention score.""" x_size = x.shape x = x.reshape(x_size[1], x_size[0], x_size[2], x_size[3]) x = x[1:, ...] x = x.reshape(x_size[0], x_size[1] - 1, x_size[2], x_size[3]) # x = x[:, 0:klen, :, :] x = torch.index_select(x, 1, torch.arange(klen, device=x.device, dtype=torch.long)) return x def rel_attn_core(self, q_head, k_head_h, v_head_h, k_head_r, seg_mat=None, attn_mask=None, head_mask=None): """Core relative positional attention operations.""" # content based attention score ac = torch.einsum('ibnd,jbnd->ijbn', q_head + self.r_w_bias, k_head_h) # position based attention score bd = torch.einsum('ibnd,jbnd->ijbn', q_head + self.r_r_bias, k_head_r) bd = self.rel_shift(bd, klen=ac.shape[1]) # segment based attention score if seg_mat is None: ef = 0 else: ef = torch.einsum('ibnd,snd->ibns', q_head + self.r_s_bias, self.seg_embed) ef = torch.einsum('ijbs,ibns->ijbn', seg_mat, ef) # merge attention scores and perform masking attn_score = (ac + bd + ef) * self.scale if attn_mask is not None: # attn_score = attn_score * (1 - attn_mask) - 1e30 * attn_mask attn_score = attn_score - 1e30 * attn_mask # attention probability attn_prob = F.softmax(attn_score, dim=1) attn_prob = self.dropout(attn_prob) # Mask heads if we want to if head_mask is not None: attn_prob = attn_prob * head_mask # attention output attn_vec = torch.einsum('ijbn,jbnd->ibnd', attn_prob, v_head_h) if self.output_attentions: return attn_vec, attn_prob return attn_vec def post_attention(self, h, attn_vec, residual=True): """Post-attention processing.""" # post-attention projection (back to `d_model`) attn_out = torch.einsum('ibnd,hnd->ibh', attn_vec, self.o) attn_out = self.dropout(attn_out) if residual: attn_out = attn_out + h output = self.layer_norm(attn_out) return output def forward(self, h, g, attn_mask_h, attn_mask_g, r, seg_mat, mems=None, target_mapping=None, head_mask=None): if g is not None: ###### Two-stream attention with relative positional encoding. # content based attention score if mems is not None and mems.dim() > 1: cat = torch.cat([mems, h], dim=0) else: cat = h # content-based key head k_head_h = torch.einsum('ibh,hnd->ibnd', cat, self.k) # content-based value head v_head_h = torch.einsum('ibh,hnd->ibnd', cat, self.v) # position-based key head k_head_r = torch.einsum('ibh,hnd->ibnd', r, self.r) ##### h-stream # content-stream query head q_head_h = torch.einsum('ibh,hnd->ibnd', h, self.q) # core attention ops attn_vec_h = self.rel_attn_core( q_head_h, k_head_h, v_head_h, k_head_r, seg_mat=seg_mat, attn_mask=attn_mask_h, head_mask=head_mask) if self.output_attentions: attn_vec_h, attn_prob_h = attn_vec_h # post processing output_h = self.post_attention(h, attn_vec_h) ##### g-stream # query-stream query head q_head_g = torch.einsum('ibh,hnd->ibnd', g, self.q) # core attention ops if target_mapping is not None: q_head_g = torch.einsum('mbnd,mlb->lbnd', q_head_g, target_mapping) attn_vec_g = self.rel_attn_core( q_head_g, k_head_h, v_head_h, k_head_r, seg_mat=seg_mat, attn_mask=attn_mask_g, head_mask=head_mask) if self.output_attentions: attn_vec_g, attn_prob_g = attn_vec_g attn_vec_g = torch.einsum('lbnd,mlb->mbnd', attn_vec_g, target_mapping) else: attn_vec_g = self.rel_attn_core( q_head_g, k_head_h, v_head_h, k_head_r, seg_mat=seg_mat, attn_mask=attn_mask_g, head_mask=head_mask) if self.output_attentions: attn_vec_g, attn_prob_g = attn_vec_g # post processing output_g = self.post_attention(g, attn_vec_g) if self.output_attentions: attn_prob = attn_prob_h, attn_prob_g else: ###### Multi-head attention with relative positional encoding if mems is not None and mems.dim() > 1: cat = torch.cat([mems, h], dim=0) else: cat = h # content heads q_head_h = torch.einsum('ibh,hnd->ibnd', h, self.q) k_head_h = torch.einsum('ibh,hnd->ibnd', cat, self.k) v_head_h = torch.einsum('ibh,hnd->ibnd', cat, self.v) # positional heads k_head_r = torch.einsum('ibh,hnd->ibnd', r, self.r) # core attention ops attn_vec = self.rel_attn_core( q_head_h, k_head_h, v_head_h, k_head_r, seg_mat=seg_mat, attn_mask=attn_mask_h, head_mask=head_mask) if self.output_attentions: attn_vec, attn_prob = attn_vec # post processing output_h = self.post_attention(h, attn_vec) output_g = None outputs = (output_h, output_g) if self.output_attentions: outputs = outputs + (attn_prob,) return outputs class XLNetFeedForward(nn.Module): def __init__(self, config): super(XLNetFeedForward, self).__init__() self.layer_norm = XLNetLayerNorm(config.d_model, eps=config.layer_norm_eps) self.layer_1 = nn.Linear(config.d_model, config.d_inner) self.layer_2 = nn.Linear(config.d_inner, config.d_model) self.dropout = nn.Dropout(config.dropout) if isinstance(config.ff_activation, str) or \ (sys.version_info[0] == 2 and isinstance(config.ff_activation, unicode)): self.activation_function = ACT2FN[config.ff_activation] else: self.activation_function = config.ff_activation def forward(self, inp): output = inp output = self.layer_1(output) output = self.activation_function(output) output = self.dropout(output) output = self.layer_2(output) output = self.dropout(output) output = self.layer_norm(output + inp) return output class XLNetLayer(nn.Module): def __init__(self, config): super(XLNetLayer, self).__init__() self.rel_attn = XLNetRelativeAttention(config) self.ff = XLNetFeedForward(config) self.dropout = nn.Dropout(config.dropout) def forward(self, output_h, output_g, attn_mask_h, attn_mask_g, r, seg_mat, mems=None, target_mapping=None, head_mask=None): outputs = self.rel_attn(output_h, output_g, attn_mask_h, attn_mask_g, r, seg_mat, mems=mems, target_mapping=target_mapping, head_mask=head_mask) output_h, output_g = outputs[:2] if output_g is not None: output_g = self.ff(output_g) output_h = self.ff(output_h) outputs = (output_h, output_g) + outputs[2:] # Add again attentions if there are there return outputs class XLNetPreTrainedModel(PreTrainedModel): """ An abstract class to handle weights initialization and a simple interface for dowloading and loading pretrained models. """ config_class = XLNetConfig pretrained_model_archive_map = XLNET_PRETRAINED_MODEL_ARCHIVE_MAP load_tf_weights = load_tf_weights_in_xlnet base_model_prefix = "transformer" def __init__(self, *inputs, **kwargs): super(XLNetPreTrainedModel, self).__init__(*inputs, **kwargs) def init_weights(self, module): """ Initialize the weights. """ if isinstance(module, (nn.Linear, nn.Embedding)): # Slightly different from the TF version which uses truncated_normal for initialization # cf https://github.com/pytorch/pytorch/pull/5617 module.weight.data.normal_(mean=0.0, std=self.config.initializer_range) if isinstance(module, nn.Linear) and module.bias is not None: module.bias.data.zero_() elif isinstance(module, XLNetLayerNorm): module.bias.data.zero_() module.weight.data.fill_(1.0) elif isinstance(module, XLNetRelativeAttention): for param in [module.q, module.k, module.v, module.o, module.r, module.r_r_bias, module.r_s_bias, module.r_w_bias, module.seg_embed]: param.data.normal_(mean=0.0, std=self.config.initializer_range) elif isinstance(module, XLNetModel): module.mask_emb.data.normal_(mean=0.0, std=self.config.initializer_range) XLNET_START_DOCSTRING = r""" The XLNet model was proposed in `XLNet: Generalized Autoregressive Pretraining for Language Understanding`_ by Zhilin Yang*, Zihang Dai*, Yiming Yang, Jaime Carbonell, Ruslan Salakhutdinov, Quoc V. Le. XLnet is an extension of the Transformer-XL model pre-trained using an autoregressive method to learn bidirectional contexts by maximizing the expected likelihood over all permutations of the input sequence factorization order. The specific attention pattern can be controlled at training and test time using the `perm_mask` input. Do to the difficulty of training a fully auto-regressive model over various factorization order, XLNet is pretrained using only a sub-set of the output tokens as target which are selected with the `target_mapping` input. To use XLNet for sequential decoding (i.e. not in fully bi-directional setting), use the `perm_mask` and `target_mapping` inputs to control the attention span and outputs (see examples in `examples/run_generation.py`) This model is a PyTorch `torch.nn.Module`_ sub-class. Use it as a regular PyTorch Module and refer to the PyTorch documentation for all matter related to general usage and behavior. .. _`XLNet: Generalized Autoregressive Pretraining for Language Understanding`: http://arxiv.org/abs/1906.08237 .. _`torch.nn.Module`: https://pytorch.org/docs/stable/nn.html#module Parameters: config (:class:`~pytorch_transformers.XLNetConfig`): Model configuration class with all the parameters of the model. """ XLNET_INPUTS_DOCSTRING = r""" Inputs: **input_ids**: ``torch.LongTensor`` of shape ``(batch_size, sequence_length)``: Indices of input sequence tokens in the vocabulary. Indices can be obtained using :class:`pytorch_transformers.XLNetTokenizer`. See :func:`pytorch_transformers.PreTrainedTokenizer.encode` and :func:`pytorch_transformers.PreTrainedTokenizer.convert_tokens_to_ids` for details. **token_type_ids**: (`optional`) ``torch.LongTensor`` of shape ``(batch_size, sequence_length)``: A parallel sequence of tokens (can be used to indicate various portions of the inputs). The embeddings from these tokens will be summed with the respective token embeddings. Indices are selected in the vocabulary (unlike BERT which has a specific vocabulary for segment indices). **attention_mask**: (`optional`) ``torch.Tensor`` of shape ``(batch_size, sequence_length)``: Mask to avoid performing attention on padding token indices. Mask values selected in ``[0, 1]``: ``1`` for tokens that are NOT MASKED, ``0`` for MASKED tokens. **input_mask**: (`optional`) ``torch.Tensor`` of shape ``(batch_size, sequence_length)``: Mask to avoid performing attention on padding token indices. Negative of `attention_mask`, i.e. with 0 for real tokens and 1 for padding. Kept for compatibility with the original code base. You can only uses one of `input_mask` and `attention_mask` Mask values selected in ``[0, 1]``: ``1`` for tokens that are MASKED, ``0`` for tokens that are NOT MASKED. **mems**: (`optional`) list of ``torch.FloatTensor`` (one for each layer): that contains pre-computed hidden-states (key and values in the attention blocks) as computed by the model (see `mems` output below). Can be used to speed up sequential decoding and attend to longer context. **perm_mask**: (`optional`) ``torch.FloatTensor`` of shape ``(batch_size, sequence_length, sequence_length)``: Mask to indicate the attention pattern for each input token with values selected in ``[0, 1]``: If ``perm_mask[k, i, j] = 0``, i attend to j in batch k; if ``perm_mask[k, i, j] = 1``, i does not attend to j in batch k. If None, each token attends to all the others (full bidirectional attention). Only used during pretraining (to define factorization order) or for sequential decoding (generation). **target_mapping**: (`optional`) ``torch.FloatTensor`` of shape ``(batch_size, num_predict, sequence_length)``: Mask to indicate the output tokens to use. If ``target_mapping[k, i, j] = 1``, the i-th predict in batch k is on the j-th token. Only used during pretraining for partial prediction or for sequential decoding (generation). **head_mask**: (`optional`) ``torch.Tensor`` of shape ``(num_heads,)`` or ``(num_layers, num_heads)``: Mask to nullify selected heads of the self-attention modules. Mask values selected in ``[0, 1]``: ``1`` indicates the head is **not masked**, ``0`` indicates the head is **masked**. """
[docs]@add_start_docstrings("The bare XLNet Model transformer outputing raw hidden-states without any specific head on top.", XLNET_START_DOCSTRING, XLNET_INPUTS_DOCSTRING) class XLNetModel(XLNetPreTrainedModel): r""" Outputs: `Tuple` comprising various elements depending on the configuration (config) and inputs: **last_hidden_state**: ``torch.FloatTensor`` of shape ``(batch_size, sequence_length, hidden_size)`` Sequence of hidden-states at the last layer of the model. **mems**: list of ``torch.FloatTensor`` (one for each layer): that contains pre-computed hidden-states (key and values in the attention blocks) as computed by the model (see `mems` input above). Can be used to speed up sequential decoding and attend to longer context. **hidden_states**: (`optional`, returned when ``config.output_hidden_states=True``) list of ``torch.FloatTensor`` (one for the output of each layer + the output of the embeddings) of shape ``(batch_size, sequence_length, hidden_size)``: Hidden-states of the model at the output of each layer plus the initial embedding outputs. **attentions**: (`optional`, returned when ``config.output_attentions=True``) list of ``torch.FloatTensor`` (one for each layer) of shape ``(batch_size, num_heads, sequence_length, sequence_length)``: Attentions weights after the attention softmax, used to compute the weighted average in the self-attention heads. Examples:: >>> config = XLNetConfig.from_pretrained('xlnet-large-cased') >>> tokenizer = XLNetTokenizer.from_pretrained('xlnet-large-cased') >>> model = XLNetModel(config) >>> input_ids = torch.tensor(tokenizer.encode("Hello, my dog is cute")).unsqueeze(0) # Batch size 1 >>> outputs = model(input_ids) >>> last_hidden_states = outputs[0] # The last hidden-state is the first element of the output tuple """ def __init__(self, config): super(XLNetModel, self).__init__(config) self.output_attentions = config.output_attentions self.output_hidden_states = config.output_hidden_states self.mem_len = config.mem_len self.reuse_len = config.reuse_len self.d_model = config.d_model self.same_length = config.same_length self.attn_type = config.attn_type self.bi_data = config.bi_data self.clamp_len = config.clamp_len self.n_layer = config.n_layer self.word_embedding = nn.Embedding(config.n_token, config.d_model) self.mask_emb = nn.Parameter(torch.Tensor(1, 1, config.d_model)) self.layer = nn.ModuleList([XLNetLayer(config) for _ in range(config.n_layer)]) self.dropout = nn.Dropout(config.dropout) self.apply(self.init_weights) def _resize_token_embeddings(self, new_num_tokens): self.word_embedding = self._get_resized_embeddings(self.word_embedding, new_num_tokens) return self.word_embedding def _prune_heads(self, heads_to_prune): raise NotImplementedError
[docs] def create_mask(self, qlen, mlen): """ Creates causal attention mask. Float mask where 1.0 indicates masked, 0.0 indicates not-masked. Args: qlen: TODO Lysandre didn't fill mlen: TODO Lysandre didn't fill :: same_length=False: same_length=True: <mlen > < qlen > <mlen > < qlen > ^ [0 0 0 0 0 1 1 1 1] [0 0 0 0 0 1 1 1 1] [0 0 0 0 0 0 1 1 1] [1 0 0 0 0 0 1 1 1] qlen [0 0 0 0 0 0 0 1 1] [1 1 0 0 0 0 0 1 1] [0 0 0 0 0 0 0 0 1] [1 1 1 0 0 0 0 0 1] v [0 0 0 0 0 0 0 0 0] [1 1 1 1 0 0 0 0 0] """ attn_mask = torch.ones([qlen, qlen]) mask_up = torch.triu(attn_mask, diagonal=1) attn_mask_pad = torch.zeros([qlen, mlen]) ret = torch.cat([attn_mask_pad, mask_up], dim=1) if self.same_length: mask_lo = torch.tril(attn_mask, diagonal=-1) ret = torch.cat([ret[:, :qlen] + mask_lo, ret[:, qlen:]], dim=1) ret = ret.to(next(self.parameters())) return ret
[docs] def cache_mem(self, curr_out, prev_mem): """cache hidden states into memory.""" if self.mem_len is None or self.mem_len == 0: return None else: if self.reuse_len is not None and self.reuse_len > 0: curr_out = curr_out[:self.reuse_len] if prev_mem is None: new_mem = curr_out[-self.mem_len:] else: new_mem = torch.cat([prev_mem, curr_out], dim=0)[-self.mem_len:] return new_mem.detach()
@staticmethod def positional_embedding(pos_seq, inv_freq, bsz=None): sinusoid_inp = torch.einsum('i,d->id', pos_seq, inv_freq) pos_emb = torch.cat([torch.sin(sinusoid_inp), torch.cos(sinusoid_inp)], dim=-1) pos_emb = pos_emb[:, None, :] if bsz is not None: pos_emb = pos_emb.expand(-1, bsz, -1) return pos_emb
[docs] def relative_positional_encoding(self, qlen, klen, bsz=None): """create relative positional encoding.""" freq_seq = torch.arange(0, self.d_model, 2.0, dtype=torch.float) inv_freq = 1 / torch.pow(10000, (freq_seq / self.d_model)) if self.attn_type == 'bi': # beg, end = klen - 1, -qlen beg, end = klen, -qlen elif self.attn_type == 'uni': # beg, end = klen - 1, -1 beg, end = klen, -1 else: raise ValueError('Unknown `attn_type` {}.'.format(self.attn_type)) if self.bi_data: fwd_pos_seq = torch.arange(beg, end, -1.0, dtype=torch.float) bwd_pos_seq = torch.arange(-beg, -end, 1.0, dtype=torch.float) if self.clamp_len > 0: fwd_pos_seq = fwd_pos_seq.clamp(-self.clamp_len, self.clamp_len) bwd_pos_seq = bwd_pos_seq.clamp(-self.clamp_len, self.clamp_len) if bsz is not None: fwd_pos_emb = self.positional_embedding(fwd_pos_seq, inv_freq, bsz//2) bwd_pos_emb = self.positional_embedding(bwd_pos_seq, inv_freq, bsz//2) else: fwd_pos_emb = self.positional_embedding(fwd_pos_seq, inv_freq) bwd_pos_emb = self.positional_embedding(bwd_pos_seq, inv_freq) pos_emb = torch.cat([fwd_pos_emb, bwd_pos_emb], dim=1) else: fwd_pos_seq = torch.arange(beg, end, -1.0) if self.clamp_len > 0: fwd_pos_seq = fwd_pos_seq.clamp(-self.clamp_len, self.clamp_len) pos_emb = self.positional_embedding(fwd_pos_seq, inv_freq, bsz) pos_emb = pos_emb.to(next(self.parameters())) return pos_emb
[docs] def forward(self, input_ids, token_type_ids=None, input_mask=None, attention_mask=None, mems=None, perm_mask=None, target_mapping=None, head_mask=None): # the original code for XLNet uses shapes [len, bsz] with the batch dimension at the end # but we want a unified interface in the library with the batch size on the first dimension # so we move here the first dimension (batch) to the end input_ids = input_ids.transpose(0, 1).contiguous() token_type_ids = token_type_ids.transpose(0, 1).contiguous() if token_type_ids is not None else None input_mask = input_mask.transpose(0, 1).contiguous() if input_mask is not None else None attention_mask = attention_mask.transpose(0, 1).contiguous() if attention_mask is not None else None perm_mask = perm_mask.permute(1, 2, 0).contiguous() if perm_mask is not None else None target_mapping = target_mapping.permute(1, 2, 0).contiguous() if target_mapping is not None else None qlen, bsz = input_ids.shape[0], input_ids.shape[1] mlen = mems[0].shape[0] if mems is not None else 0 klen = mlen + qlen dtype_float = next(self.parameters()).dtype device = next(self.parameters()).device ##### Attention mask # causal attention mask if self.attn_type == 'uni': attn_mask = self.create_mask(qlen, mlen) attn_mask = attn_mask[:, :, None, None] elif self.attn_type == 'bi': attn_mask = None else: raise ValueError('Unsupported attention type: {}'.format(self.attn_type)) # data mask: input mask & perm mask assert input_mask is None or attention_mask is None, "You can only use one of input_mask (uses 1 for padding) " "or attention_mask (uses 0 for padding, added for compatbility with BERT). Please choose one." if input_mask is None and attention_mask is not None: input_mask = 1.0 - attention_mask if input_mask is not None and perm_mask is not None: data_mask = input_mask[None] + perm_mask elif input_mask is not None and perm_mask is None: data_mask = input_mask[None] elif input_mask is None and perm_mask is not None: data_mask = perm_mask else: data_mask = None if data_mask is not None: # all mems can be attended to mems_mask = torch.zeros([data_mask.shape[0], mlen, bsz]).to(data_mask) data_mask = torch.cat([mems_mask, data_mask], dim=1) if attn_mask is None: attn_mask = data_mask[:, :, :, None] else: attn_mask += data_mask[:, :, :, None] if attn_mask is not None: attn_mask = (attn_mask > 0).to(dtype_float) if attn_mask is not None: non_tgt_mask = -torch.eye(qlen).to(attn_mask) non_tgt_mask = torch.cat([torch.zeros([qlen, mlen]).to(attn_mask), non_tgt_mask], dim=-1) non_tgt_mask = ((attn_mask + non_tgt_mask[:, :, None, None]) > 0).to(attn_mask) else: non_tgt_mask = None ##### Word embeddings and prepare h & g hidden states word_emb_k = self.word_embedding(input_ids) output_h = self.dropout(word_emb_k) if target_mapping is not None: word_emb_q = self.mask_emb.expand(target_mapping.shape[0], bsz, -1) # else: # We removed the inp_q input which was same as target mapping # inp_q_ext = inp_q[:, :, None] # word_emb_q = inp_q_ext * self.mask_emb + (1 - inp_q_ext) * word_emb_k output_g = self.dropout(word_emb_q) else: output_g = None ##### Segment embedding if token_type_ids is not None: # Convert `token_type_ids` to one-hot `seg_mat` mem_pad = torch.zeros([mlen, bsz], dtype=torch.long, device=device) cat_ids = torch.cat([mem_pad, token_type_ids], dim=0) # `1` indicates not in the same segment [qlen x klen x bsz] seg_mat = (token_type_ids[:, None] != cat_ids[None, :]).long() seg_mat = F.one_hot(seg_mat, num_classes=2).to(dtype_float) else: seg_mat = None ##### Positional encoding pos_emb = self.relative_positional_encoding(qlen, klen, bsz=bsz) pos_emb = self.dropout(pos_emb) # Prepare head mask if needed # 1.0 in head_mask indicate we keep the head # attention_probs has shape bsz x n_heads x N x N # input head_mask has shape [num_heads] or [num_hidden_layers x num_heads] (a head_mask for each layer) # and head_mask is converted to shape [num_hidden_layers x qlen x klen x bsz x n_head] if head_mask is not None: if head_mask.dim() == 1: head_mask = head_mask.unsqueeze(0).unsqueeze(0).unsqueeze(0).unsqueeze(0) head_mask = head_mask.expand(self.n_layer, -1, -1, -1, -1) elif head_mask.dim() == 2: head_mask = head_mask.unsqueeze(1).unsqueeze(1).unsqueeze(1) head_mask = head_mask.to(dtype=next(self.parameters()).dtype) # switch to fload if need + fp16 compatibility else: head_mask = [None] * self.n_layer new_mems = () if mems is None: mems = [None] * len(self.layer) attentions = [] hidden_states = [] for i, layer_module in enumerate(self.layer): # cache new mems new_mems = new_mems + (self.cache_mem(output_h, mems[i]),) if self.output_hidden_states: hidden_states.append((output_h, output_g) if output_g is not None else output_h) outputs = layer_module(output_h, output_g, attn_mask_h=non_tgt_mask, attn_mask_g=attn_mask, r=pos_emb, seg_mat=seg_mat, mems=mems[i], target_mapping=target_mapping, head_mask=head_mask[i]) output_h, output_g = outputs[:2] if self.output_attentions: attentions.append(outputs[2]) # Add last hidden state if self.output_hidden_states: hidden_states.append((output_h, output_g) if output_g is not None else output_h) output = self.dropout(output_g if output_g is not None else output_h) # Prepare outputs, we transpose back here to shape [bsz, len, hidden_dim] (cf. beginning of forward() method) outputs = (output.permute(1, 0, 2).contiguous(), new_mems) if self.output_hidden_states: if output_g is not None: hidden_states = tuple(h.permute(1, 0, 2).contiguous() for hs in hidden_states for h in hs) else: hidden_states = tuple(hs.permute(1, 0, 2).contiguous() for hs in hidden_states) outputs = outputs + (hidden_states,) if self.output_attentions: attentions = tuple(t.permute(2, 3, 0, 1).contiguous() for t in attentions) outputs = outputs + (attentions,) return outputs # outputs, new_mems, (hidden_states), (attentions)
[docs]@add_start_docstrings("""XLNet Model with a language modeling head on top (linear layer with weights tied to the input embeddings). """, XLNET_START_DOCSTRING, XLNET_INPUTS_DOCSTRING) class XLNetLMHeadModel(XLNetPreTrainedModel): r""" **labels**: (`optional`) ``torch.LongTensor`` of shape ``(batch_size, sequence_length)``: Labels for language modeling. Note that the labels **are shifted** inside the model, i.e. you can set ``lm_labels = input_ids`` Indices are selected in ``[-1, 0, ..., config.vocab_size]`` All labels set to ``-1`` are ignored (masked), the loss is only computed for labels in ``[0, ..., config.vocab_size]`` Outputs: `Tuple` comprising various elements depending on the configuration (config) and inputs: **loss**: (`optional`, returned when ``labels`` is provided) ``torch.FloatTensor`` of shape ``(1,)``: Language modeling loss. **prediction_scores**: ``torch.FloatTensor`` of shape ``(batch_size, sequence_length, config.vocab_size)`` Prediction scores of the language modeling head (scores for each vocabulary token before SoftMax). **mems**: list of ``torch.FloatTensor`` (one for each layer): that contains pre-computed hidden-states (key and values in the attention blocks) as computed by the model (see `mems` input above). Can be used to speed up sequential decoding and attend to longer context. **hidden_states**: (`optional`, returned when ``config.output_hidden_states=True``) list of ``torch.FloatTensor`` (one for the output of each layer + the output of the embeddings) of shape ``(batch_size, sequence_length, hidden_size)``: Hidden-states of the model at the output of each layer plus the initial embedding outputs. **attentions**: (`optional`, returned when ``config.output_attentions=True``) list of ``torch.FloatTensor`` (one for each layer) of shape ``(batch_size, num_heads, sequence_length, sequence_length)``: Attentions weights after the attention softmax, used to compute the weighted average in the self-attention heads. Examples:: >>> config = XLNetConfig.from_pretrained('xlnet-large-cased') >>> tokenizer = XLNetTokenizer.from_pretrained('xlnet-large-cased') >>> model = XLNetLMHeadModel(config) >>> # We show how to setup inputs to predict a next token using a bi-directional context. >>> input_ids = torch.tensor(tokenizer.encode("Hello, my dog is very <mask>")).unsqueeze(0) # We will predict the masked token >>> perm_mask = torch.zeros((1, input_ids.shape[1], input_ids.shape[1]), dtype=torch.float) >>> perm_mask[:, :, -1] = 1.0 # Previous tokens don't see last token >>> target_mapping = torch.zeros((1, 1, input_ids.shape[1]), dtype=torch.float) # Shape [1, 1, seq_length] => let's predict one token >>> target_mapping[0, 0, -1] = 1.0 # Our first (and only) prediction will be the last token of the sequence (the masked token) >>> outputs = model(input_ids, perm_mask=perm_mask, target_mapping=target_mapping) >>> next_token_logits = outputs[0] # Output has shape [target_mapping.size(0), target_mapping.size(1), config.vocab_size] """ def __init__(self, config): super(XLNetLMHeadModel, self).__init__(config) self.attn_type = config.attn_type self.same_length = config.same_length self.transformer = XLNetModel(config) self.lm_loss = nn.Linear(config.d_model, config.n_token, bias=True) self.apply(self.init_weights) self.tie_weights()
[docs] def tie_weights(self): """ Make sure we are sharing the embeddings """ self._tie_or_clone_weights(self.lm_loss, self.transformer.word_embedding)
[docs] def forward(self, input_ids, token_type_ids=None, input_mask=None, attention_mask=None, mems=None, perm_mask=None, target_mapping=None, labels=None, head_mask=None): transformer_outputs = self.transformer(input_ids, token_type_ids=token_type_ids, input_mask=input_mask, attention_mask=attention_mask, mems=mems, perm_mask=perm_mask, target_mapping=target_mapping, head_mask=head_mask) logits = self.lm_loss(transformer_outputs[0]) outputs = (logits,) + transformer_outputs[1:] # Keep mems, hidden states, attentions if there are in it if labels is not None: # Flatten the tokens loss_fct = CrossEntropyLoss(ignore_index=-1) loss = loss_fct(logits.view(-1, logits.size(-1)), labels.view(-1)) outputs = (loss,) + outputs return outputs # return (loss), logits, mems, (hidden states), (attentions)
[docs]@add_start_docstrings("""XLNet Model with a sequence classification/regression head on top (a linear layer on top of the pooled output) e.g. for GLUE tasks. """, XLNET_START_DOCSTRING, XLNET_INPUTS_DOCSTRING) class XLNetForSequenceClassification(XLNetPreTrainedModel): r""" **labels**: (`optional`) ``torch.LongTensor`` of shape ``(batch_size,)``: Labels for computing the sequence classification/regression loss. Indices should be in ``[0, ..., config.num_labels]``. If ``config.num_labels == 1`` a regression loss is computed (Mean-Square loss), If ``config.num_labels > 1`` a classification loss is computed (Cross-Entropy). Outputs: `Tuple` comprising various elements depending on the configuration (config) and inputs: **loss**: (`optional`, returned when ``labels`` is provided) ``torch.FloatTensor`` of shape ``(1,)``: Classification (or regression if config.num_labels==1) loss. **logits**: ``torch.FloatTensor`` of shape ``(batch_size, config.num_labels)`` Classification (or regression if config.num_labels==1) scores (before SoftMax). **mems**: list of ``torch.FloatTensor`` (one for each layer): that contains pre-computed hidden-states (key and values in the attention blocks) as computed by the model (see `mems` input above). Can be used to speed up sequential decoding and attend to longer context. **hidden_states**: (`optional`, returned when ``config.output_hidden_states=True``) list of ``torch.FloatTensor`` (one for the output of each layer + the output of the embeddings) of shape ``(batch_size, sequence_length, hidden_size)``: Hidden-states of the model at the output of each layer plus the initial embedding outputs. **attentions**: (`optional`, returned when ``config.output_attentions=True``) list of ``torch.FloatTensor`` (one for each layer) of shape ``(batch_size, num_heads, sequence_length, sequence_length)``: Attentions weights after the attention softmax, used to compute the weighted average in the self-attention heads. Examples:: >>> config = XLNetConfig.from_pretrained('xlnet-large-cased') >>> tokenizer = XLNetTokenizer.from_pretrained('xlnet-large-cased') >>> >>> model = XLNetForSequenceClassification(config) >>> input_ids = torch.tensor(tokenizer.encode("Hello, my dog is cute")).unsqueeze(0) # Batch size 1 >>> labels = torch.tensor([1]).unsqueeze(0) # Batch size 1 >>> outputs = model(input_ids, labels=labels) >>> loss, logits = outputs[:2] """ def __init__(self, config): super(XLNetForSequenceClassification, self).__init__(config) self.num_labels = config.num_labels self.transformer = XLNetModel(config) self.sequence_summary = SequenceSummary(config) self.logits_proj = nn.Linear(config.d_model, config.num_labels) self.apply(self.init_weights)
[docs] def forward(self, input_ids, token_type_ids=None, input_mask=None, attention_mask=None, mems=None, perm_mask=None, target_mapping=None, labels=None, head_mask=None): transformer_outputs = self.transformer(input_ids, token_type_ids=token_type_ids, input_mask=input_mask, attention_mask=attention_mask, mems=mems, perm_mask=perm_mask, target_mapping=target_mapping, head_mask=head_mask) output = transformer_outputs[0] output = self.sequence_summary(output) logits = self.logits_proj(output) outputs = (logits,) + transformer_outputs[1:] # Keep mems, hidden states, attentions if there are in it if labels is not None: if self.num_labels == 1: # We are doing regression loss_fct = MSELoss() loss = loss_fct(logits.view(-1), labels.view(-1)) else: loss_fct = CrossEntropyLoss() loss = loss_fct(logits.view(-1, self.num_labels), labels.view(-1)) outputs = (loss,) + outputs return outputs # return (loss), logits, mems, (hidden states), (attentions)
[docs]@add_start_docstrings("""XLNet Model with a span classification head on top for extractive question-answering tasks like SQuAD (a linear layers on top of the hidden-states output to compute `span start logits` and `span end logits`). """, XLNET_START_DOCSTRING, XLNET_INPUTS_DOCSTRING) class XLNetForQuestionAnswering(XLNetPreTrainedModel): r""" **start_positions**: (`optional`) ``torch.LongTensor`` of shape ``(batch_size,)``: Labels for position (index) of the start of the labelled span for computing the token classification loss. Positions are clamped to the length of the sequence (`sequence_length`). Position outside of the sequence are not taken into account for computing the loss. **end_positions**: (`optional`) ``torch.LongTensor`` of shape ``(batch_size,)``: Labels for position (index) of the end of the labelled span for computing the token classification loss. Positions are clamped to the length of the sequence (`sequence_length`). Position outside of the sequence are not taken into account for computing the loss. **is_impossible**: (`optional`) ``torch.LongTensor`` of shape ``(batch_size,)``: Labels whether a question has an answer or no answer (SQuAD 2.0) **cls_index**: (`optional`) ``torch.LongTensor`` of shape ``(batch_size,)``: Labels for position (index) of the classification token to use as input for computing plausibility of the answer. **p_mask**: (`optional`) ``torch.FloatTensor`` of shape ``(batch_size, sequence_length)``: Optional mask of tokens which can't be in answers (e.g. [CLS], [PAD], ...). 1.0 means token should be masked. 0.0 mean token is not masked. Outputs: `Tuple` comprising various elements depending on the configuration (config) and inputs: **loss**: (`optional`, returned if both ``start_positions`` and ``end_positions`` are provided) ``torch.FloatTensor`` of shape ``(1,)``: Classification loss as the sum of start token, end token (and is_impossible if provided) classification losses. **start_top_log_probs**: (`optional`, returned if ``start_positions`` or ``end_positions`` is not provided) ``torch.FloatTensor`` of shape ``(batch_size, config.start_n_top)`` Log probabilities for the top config.start_n_top start token possibilities (beam-search). **start_top_index**: (`optional`, returned if ``start_positions`` or ``end_positions`` is not provided) ``torch.LongTensor`` of shape ``(batch_size, config.start_n_top)`` Indices for the top config.start_n_top start token possibilities (beam-search). **end_top_log_probs**: (`optional`, returned if ``start_positions`` or ``end_positions`` is not provided) ``torch.FloatTensor`` of shape ``(batch_size, config.start_n_top * config.end_n_top)`` Log probabilities for the top ``config.start_n_top * config.end_n_top`` end token possibilities (beam-search). **end_top_index**: (`optional`, returned if ``start_positions`` or ``end_positions`` is not provided) ``torch.LongTensor`` of shape ``(batch_size, config.start_n_top * config.end_n_top)`` Indices for the top ``config.start_n_top * config.end_n_top`` end token possibilities (beam-search). **cls_logits**: (`optional`, returned if ``start_positions`` or ``end_positions`` is not provided) ``torch.FloatTensor`` of shape ``(batch_size,)`` Log probabilities for the ``is_impossible`` label of the answers. **mems**: list of ``torch.FloatTensor`` (one for each layer): that contains pre-computed hidden-states (key and values in the attention blocks) as computed by the model (see `mems` input above). Can be used to speed up sequential decoding and attend to longer context. **hidden_states**: (`optional`, returned when ``config.output_hidden_states=True``) list of ``torch.FloatTensor`` (one for the output of each layer + the output of the embeddings) of shape ``(batch_size, sequence_length, hidden_size)``: Hidden-states of the model at the output of each layer plus the initial embedding outputs. **attentions**: (`optional`, returned when ``config.output_attentions=True``) list of ``torch.FloatTensor`` (one for each layer) of shape ``(batch_size, num_heads, sequence_length, sequence_length)``: Attentions weights after the attention softmax, used to compute the weighted average in the self-attention heads. Examples:: >>> config = XLMConfig.from_pretrained('xlm-mlm-en-2048') >>> tokenizer = XLMTokenizer.from_pretrained('xlm-mlm-en-2048') >>> >>> model = XLMForQuestionAnswering(config) >>> input_ids = torch.tensor(tokenizer.encode("Hello, my dog is cute")).unsqueeze(0) # Batch size 1 >>> start_positions = torch.tensor([1]) >>> end_positions = torch.tensor([3]) >>> outputs = model(input_ids, start_positions=start_positions, end_positions=end_positions) >>> loss, start_scores, end_scores = outputs[:2] """ def __init__(self, config): super(XLNetForQuestionAnswering, self).__init__(config) self.start_n_top = config.start_n_top self.end_n_top = config.end_n_top self.transformer = XLNetModel(config) self.start_logits = PoolerStartLogits(config) self.end_logits = PoolerEndLogits(config) self.answer_class = PoolerAnswerClass(config) self.apply(self.init_weights)
[docs] def forward(self, input_ids, token_type_ids=None, input_mask=None, attention_mask=None, mems=None, perm_mask=None, target_mapping=None, start_positions=None, end_positions=None, cls_index=None, is_impossible=None, p_mask=None, head_mask=None): transformer_outputs = self.transformer(input_ids, token_type_ids=token_type_ids, input_mask=input_mask, attention_mask=attention_mask, mems=mems, perm_mask=perm_mask, target_mapping=target_mapping, head_mask=head_mask) hidden_states = transformer_outputs[0] start_logits = self.start_logits(hidden_states, p_mask=p_mask) outputs = transformer_outputs[1:] # Keep mems, hidden states, attentions if there are in it if start_positions is not None and end_positions is not None: # If we are on multi-GPU, let's remove the dimension added by batch splitting for x in (start_positions, end_positions, cls_index, is_impossible): if x is not None and x.dim() > 1: x.squeeze_(-1) # during training, compute the end logits based on the ground truth of the start position end_logits = self.end_logits(hidden_states, start_positions=start_positions, p_mask=p_mask) loss_fct = CrossEntropyLoss() start_loss = loss_fct(start_logits, start_positions) end_loss = loss_fct(end_logits, end_positions) total_loss = (start_loss + end_loss) / 2 if cls_index is not None and is_impossible is not None: # Predict answerability from the representation of CLS and START cls_logits = self.answer_class(hidden_states, start_positions=start_positions, cls_index=cls_index) loss_fct_cls = nn.BCEWithLogitsLoss() cls_loss = loss_fct_cls(cls_logits, is_impossible) # note(zhiliny): by default multiply the loss by 0.5 so that the scale is comparable to start_loss and end_loss total_loss += cls_loss * 0.5 outputs = (total_loss,) + outputs else: # during inference, compute the end logits based on beam search bsz, slen, hsz = hidden_states.size() start_log_probs = F.softmax(start_logits, dim=-1) # shape (bsz, slen) start_top_log_probs, start_top_index = torch.topk(start_log_probs, self.start_n_top, dim=-1) # shape (bsz, start_n_top) start_top_index_exp = start_top_index.unsqueeze(-1).expand(-1, -1, hsz) # shape (bsz, start_n_top, hsz) start_states = torch.gather(hidden_states, -2, start_top_index_exp) # shape (bsz, start_n_top, hsz) start_states = start_states.unsqueeze(1).expand(-1, slen, -1, -1) # shape (bsz, slen, start_n_top, hsz) hidden_states_expanded = hidden_states.unsqueeze(2).expand_as(start_states) # shape (bsz, slen, start_n_top, hsz) p_mask = p_mask.unsqueeze(-1) if p_mask is not None else None end_logits = self.end_logits(hidden_states_expanded, start_states=start_states, p_mask=p_mask) end_log_probs = F.softmax(end_logits, dim=1) # shape (bsz, slen, start_n_top) end_top_log_probs, end_top_index = torch.topk(end_log_probs, self.end_n_top, dim=1) # shape (bsz, end_n_top, start_n_top) end_top_log_probs = end_top_log_probs.view(-1, self.start_n_top * self.end_n_top) end_top_index = end_top_index.view(-1, self.start_n_top * self.end_n_top) start_states = torch.einsum("blh,bl->bh", hidden_states, start_log_probs) # get the representation of START as weighted sum of hidden states cls_logits = self.answer_class(hidden_states, start_states=start_states, cls_index=cls_index) # Shape (batch size,): one single `cls_logits` for each sample outputs = (start_top_log_probs, start_top_index, end_top_log_probs, end_top_index, cls_logits) + outputs # return start_top_log_probs, start_top_index, end_top_log_probs, end_top_index, cls_logits # or (if labels are provided) (total_loss,) return outputs