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#
# Author: penhe@microsoft.com
# Date: 01/25/2019
#

from glob import glob
from collections import OrderedDict,defaultdict
from bisect import bisect
import copy
import math
from scipy.special import softmax
import numpy as np
import pdb
import os
import sys
import csv

import random
import torch
import re
import shutil
import ujson as json
from torch.utils.data import DataLoader
from .metrics import *
from .task import EvalData, Task
from .task_registry import register_task
from ...utils import xtqdm as tqdm
from ...data import ExampleInstance, ExampleSet, DynamicDataset,example_to_feature
from ...data.example import _truncate_segments
from ...data.example import *
from ...deberta import NNModule
from ...utils import get_logger,boolean_string
from ...training import DistributedTrainer, batch_to
from ...data import DistributedBatchSampler, SequentialSampler, BatchSampler, AsyncDataLoader
from ..models import MaskedLanguageModel,ReplacedTokenDetectionModel
from .mlm_task import NGramMaskGenerator
from .._utils import merge_distributed, join_chunks

logger=get_logger()

__all__ = ["RTDTask"]

class RTDModel(NNModule):
  def __init__(self, config, *wargs, **kwargs):
    super().__init__(config)
    gen_config = config.generator
    disc_config = config.discriminator
    self.config = config
    self.generator = MaskedLanguageModel(gen_config)
    self.discriminator = ReplacedTokenDetectionModel(disc_config)

    self.generator._register_load_state_dict_pre_hook(self._pre_load_hook)
    self.discriminator._register_load_state_dict_pre_hook(self._pre_load_hook)

    self.share_embedding = getattr(config, 'embedding_sharing', "none").lower()
    if self.share_embedding == 'gdes': # Gradient-disentangled weight/embedding sharing
      word_bias = torch.zeros_like(self.discriminator.deberta.embeddings.word_embeddings.weight)
      word_bias = torch.nn.Parameter(word_bias)
      position_bias = torch.zeros_like(self.discriminator.deberta.embeddings.position_embeddings.weight)
      position_bias = torch.nn.Parameter(position_bias)
      delattr(self.discriminator.deberta.embeddings.word_embeddings, 'weight')
      self.discriminator.deberta.embeddings.word_embeddings.register_parameter('_weight', word_bias)
      delattr(self.discriminator.deberta.embeddings.position_embeddings, 'weight')
      self.discriminator.deberta.embeddings.position_embeddings.register_parameter('_weight', position_bias)
    self.register_discriminator_fw_hook()

  def _pre_load_hook(self, state_dict, prefix, local_metadata, strict,
      missing_keys, unexpected_keys, error_msgs):
    new_state = dict()
    bert_prefix = prefix + 'bert.'
    deberta_prefix = prefix + 'deberta.'
    for k in list(state_dict.keys()):
      if k.startswith(bert_prefix):
        nk = deberta_prefix + k[len(bert_prefix):]
        value = state_dict[k]
        del state_dict[k]
        state_dict[nk] = value

  def forward(self, **kwargs):
    return self.generator_fw(**kwargs)

  def discriminator_fw(self, **kwargs):
    return self.discriminator(**kwargs)

  def generator_fw(self, **kwargs):
    return self.generator(**kwargs)

  def topk_sampling(self, logits, topk = 1, start=0, temp=1):
    top_p = torch.nn.functional.softmax(logits/temp, dim=-1)
    topk = max(1, topk)
    next_tokens = torch.multinomial(top_p, topk)
    return next_tokens, top_p
  
  def make_electra_data(self, input_data, temp=1, rand=None):
    new_data = input_data.copy()
    if rand is None:
      rand = random
    gen = self.generator_fw(**new_data)
    lm_logits = gen['logits']
    lm_labels = input_data['labels']
    lm_loss = gen['loss']
    mask_index = (lm_labels.view(-1)>0).nonzero().view(-1)
    gen_pred = torch.argmax(lm_logits, dim=1).detach().cpu().numpy()
    topk_labels, top_p = self.topk_sampling(lm_logits, topk=1, temp=temp)
    
    top_ids = torch.zeros_like(lm_labels.view(-1))
    top_ids.scatter_(index=mask_index, src=topk_labels.view(-1).int(), dim=-1)
    top_ids = top_ids.view(lm_labels.size())
    new_ids = torch.where(lm_labels>0, top_ids, input_data['input_ids'])
    new_data['input_ids'] = new_ids.detach()
    return new_data, lm_loss, gen

  def register_discriminator_fw_hook(self, *wargs):
    def fw_hook(module, *inputs):
      if self.share_embedding == 'gdes': # Gradient-disentangled weight/embedding sharing
        g_w_ebd = self.generator.deberta.embeddings.word_embeddings
        d_w_ebd = self.discriminator.deberta.embeddings.word_embeddings
        self._set_param(d_w_ebd, 'weight', g_w_ebd.weight.detach() + d_w_ebd._weight)

        g_p_ebd = self.generator.deberta.embeddings.position_embeddings
        d_p_ebd = self.discriminator.deberta.embeddings.position_embeddings
        self._set_param(d_p_ebd, 'weight', g_p_ebd.weight.detach() + d_p_ebd._weight)
      elif self.share_embedding == 'es': # vallina embedding sharing
        g_w_ebd = self.generator.deberta.embeddings.word_embeddings
        d_w_ebd = self.discriminator.deberta.embeddings.word_embeddings
        self._set_param(d_w_ebd, 'weight', g_w_ebd.weight)

        g_p_ebd = self.generator.deberta.embeddings.position_embeddings
        d_p_ebd = self.discriminator.deberta.embeddings.position_embeddings
        self._set_param(d_p_ebd, 'weight', g_p_ebd.weight)
      return None
    self.discriminator.register_forward_pre_hook(fw_hook)

  @staticmethod
  def _set_param(module, param_name, value):
    if hasattr(module, param_name):
      delattr(module, param_name)
    module.register_buffer(param_name, value)

@register_task(name="RTD", desc="Replaced token detection pretraining task")
class RTDTask(Task):
  def __init__(self, data_dir, tokenizer, args, **kwargs):
    super().__init__(tokenizer, args, **kwargs)
    self.data_dir = data_dir
    self.mask_gen = NGramMaskGenerator(tokenizer, max_gram=1, keep_prob = 0, mask_prob = 1, max_seq_len = args.max_seq_length)

  def train_data(self, max_seq_len=512, **kwargs):
    data = self.load_data(os.path.join(self.data_dir, 'train.txt'))
    examples = ExampleSet(data)
    if self.args.num_training_steps is None:
      dataset_size = len(examples)
    else:
      dataset_size = self.args.num_training_steps*self.args.train_batch_size
    return DynamicDataset(examples, feature_fn = self.get_feature_fn(max_seq_len=max_seq_len, mask_gen=self.mask_gen), \
dataset_size = dataset_size, shuffle=True, **kwargs)

  def get_labels(self):
    return list(self.tokenizer.vocab.values())

  def eval_data(self, max_seq_len=512, **kwargs):
    ds = [
        self._data('dev', 'valid.txt', 'dev'),
        ]
   
    for d in ds:
      _size = len(d.data)
      d.data = DynamicDataset(d.data, feature_fn = self.get_feature_fn(max_seq_len=max_seq_len, mask_gen=self.mask_gen), dataset_size = _size, **kwargs)
    return ds

  def test_data(self, max_seq_len=512, **kwargs):
    """See base class."""
    raise NotImplemented('This method is not implemented yet.')

  def _data(self, name, path, type_name = 'dev', ignore_metric=False):
    if isinstance(path, str):
      path = [path]
    data = []
    for p in path:
      input_src = os.path.join(self.data_dir, p)
      assert os.path.exists(input_src), f"{input_src} doesn't exists"
      data.extend(self.load_data(input_src))

    predict_fn = self.get_predict_fn()
    examples = ExampleSet(data)
    return EvalData(name, examples,
      metrics_fn = self.get_metrics_fn(), predict_fn = predict_fn, ignore_metric=ignore_metric, critial_metrics=['accuracy'])

  def get_metrics_fn(self):
    """Calcuate metrics based on prediction results"""
    def metrics_fn(logits, labels):
      preds = logits
      acc = (preds==labels).sum()/len(labels)
      metrics =  OrderedDict(accuracy= acc)
      return metrics
    return metrics_fn

  def load_data(self, path):
    examples = []
    with open(path, encoding='utf-8') as fs:
      for l in fs:
        if len(l) > 1:
          example = ExampleInstance(segments=[l])
          examples.append(example)
    return examples

  def get_feature_fn(self, max_seq_len = 512, mask_gen = None):
    def _example_to_feature(example, rng=None, ext_params=None, **kwargs):
      return self.example_to_feature(self.tokenizer, example, max_seq_len = max_seq_len, \
        rng = rng, mask_generator = mask_gen, ext_params = ext_params, **kwargs)
    return _example_to_feature

  def example_to_feature(self, tokenizer, example, max_seq_len=512, rng=None, mask_generator = None, ext_params=None, **kwargs):
    if not rng:
      rng = random
    max_num_tokens = max_seq_len - 2

    segments = [ example.segments[0].strip().split() ]
    segments = _truncate_segments(segments, max_num_tokens, rng)
    _tokens = ['[CLS]'] + segments[0] + ['[SEP]']
    if mask_generator:
      tokens, lm_labels = mask_generator.mask_tokens(_tokens, rng)
    token_ids = tokenizer.convert_tokens_to_ids(tokens)

    features = OrderedDict(input_ids = token_ids,
      position_ids = list(range(len(token_ids))),
      input_mask = [1]*len(token_ids),
      labels = lm_labels)
    
    for f in features:
      features[f] = torch.tensor(features[f] + [0]*(max_seq_len - len(token_ids)), dtype=torch.int)
    return features

  def get_model_class_fn(self):
    def partial_class(*wargs, **kwargs):
      model = RTDModel.load_model(*wargs, **kwargs)
      if self.args.init_generator is not None:
        logger.info(f'Load generator from {self.args.init_generator}')
        generator = torch.load(self.args.init_generator, map_location='cpu')
        missing_keys, unexpected_keys = model.generator.load_state_dict(generator, strict=False)
        if missing_keys and (len(missing_keys) > 0):
          logger.warning(f'Load generator with missing keys: {missing_keys}')
        if unexpected_keys and (len(unexpected_keys) > 0):
          logger.warning(f'Load generator with unexptected keys: {unexpected_keys}')
      if self.args.init_discriminator is not None:
        logger.info(f'Load discriminator from {self.args.init_discriminator}')
        discriminator = torch.load(self.args.init_discriminator, map_location='cpu')
        missing_keys, unexpected_keys = model.discriminator.load_state_dict(discriminator, strict=False)
        if missing_keys and (len(missing_keys) > 0):
          logger.warning(f'Load discriminator with missing keys: {missing_keys}')
        if unexpected_keys and (len(unexpected_keys) > 0):
          logger.warning(f'Load discriminator with unexptected keys: {unexpected_keys}')
      return model
    return partial_class

  def get_train_fn(self, args, model):
    def train_fn(args, model, device, data_fn, eval_fn, loss_fn):
      if args.decoupled_training:
        gen_args = copy.deepcopy(args)
        gen_args.checkpoint_dir = os.path.join(gen_args.output_dir, 'generator')
        os.makedirs(gen_args.checkpoint_dir, exist_ok=True)
        with open(os.path.join(gen_args.checkpoint_dir, 'model_config.json'), 'w') as fs:
          fs.write(model.config.generator.to_json_string() + '\n')
        shutil.copy(args.vocab_path, gen_args.checkpoint_dir)
        loss_fn = self.get_decoupled_loss_fn(args, model, data_fn, device, args.num_training_steps)
        trainer = DistributedTrainer(gen_args, gen_args.output_dir, model.generator, device, data_fn, loss_fn = loss_fn, eval_fn = eval_fn, dump_interval = args.dump_interval, name='G')
      else:
        trainer = DistributedTrainer(args, args.output_dir, model, device, data_fn, loss_fn = loss_fn, eval_fn = eval_fn, dump_interval = args.dump_interval)
      trainer.train()
    return train_fn

  def get_eval_fn(self):
    def eval_fn(args, model, device, eval_data, prefix=None, tag=None, steps=None):
      # Run prediction for full data
      prefix = f'{tag}_{prefix}' if tag is not None else prefix
      eval_results=OrderedDict()
      eval_metric=0
      no_tqdm = (True if os.getenv('NO_TQDM', '0')!='0' else False) or args.rank>0
      for eval_item in eval_data:
        name = eval_item.name
        eval_sampler = SequentialSampler(len(eval_item.data))
        batch_sampler = BatchSampler(eval_sampler, args.eval_batch_size)
        batch_sampler = DistributedBatchSampler(batch_sampler, rank=args.rank, world_size=args.world_size)
        eval_dataloader = DataLoader(eval_item.data, batch_sampler=batch_sampler, num_workers=args.workers)
        model.eval()
        eval_loss, eval_accuracy = 0, 0
        nb_eval_steps, nb_eval_examples = 0, 0
        predicts=[]
        labels=[]
        for batch in tqdm(AsyncDataLoader(eval_dataloader), ncols=80, desc='Evaluating: {}'.format(prefix), disable=no_tqdm):
          batch = batch_to(batch, device)
          with torch.no_grad():
            output = model(**batch)
          logits = output['logits'].detach().argmax(dim=-1)
          tmp_eval_loss = output['loss'].detach()
          if 'labels' in output:
            label_ids = output['labels'].detach().to(device)
          else:
            label_ids = batch['labels'].to(device)
          predicts.append(logits)
          labels.append(label_ids)
          eval_loss += tmp_eval_loss.mean()
          input_ids = batch['input_ids']
          nb_eval_examples += input_ids.size(0)
          nb_eval_steps += 1
    
        eval_loss = eval_loss / nb_eval_steps
        predicts = merge_distributed(predicts)
        labels = merge_distributed(labels)

        result=OrderedDict()
        metrics_fn = eval_item.metrics_fn
        metrics = metrics_fn(predicts.numpy(), labels.numpy())
        result.update(metrics)
        result['perplexity'] = torch.exp(eval_loss).item()
        critial_metrics = set(metrics.keys()) if eval_item.critial_metrics is None or len(eval_item.critial_metrics)==0 else eval_item.critial_metrics
        eval_metric = np.mean([v for k,v in metrics.items() if  k in critial_metrics])
        result['eval_loss'] = eval_loss.item()
        result['eval_metric'] = eval_metric
        result['eval_samples'] = len(labels)
        if args.rank<=0:
          logger.info("***** Eval results-{}-{} *****".format(name, prefix))
          for key in sorted(result.keys()):
            logger.info("  %s = %s", key, str(result[key]))
        eval_results[name]=(eval_metric, predicts, labels)

      return eval_results
    return eval_fn

  def get_decoupled_loss_fn(self, args, model, data_fn, device, num_training_steps):
    rand = random.Random(0)
  
    def eval_fn(trainer, model, device, tag):
      return 0
  
    def d_loss_fn(trainer, model, data):
      train_losses = OrderedDict()
      with_mlm_loss = True
      disc = model(**data)
      rtd_loss = disc['loss']
      loss = args.rtd_lambda*rtd_loss.mean()
      return loss, data['input_ids'].size(0)
  
    disc_args = copy.deepcopy(args)
    disc_args.checkpoint_dir = os.path.join(disc_args.output_dir, 'discriminator')
    os.makedirs(disc_args.checkpoint_dir, exist_ok=True)
    with open(os.path.join(disc_args.checkpoint_dir, 'model_config.json'), 'w') as fs:
      fs.write(model.config.discriminator.to_json_string() + '\n')
    shutil.copy(args.vocab_path, disc_args.checkpoint_dir)
    if disc_args.discriminator_learning_rate > 0:
      disc_args.learning_rate = disc_args.discriminator_learning_rate
    disc_trainer = DistributedTrainer(disc_args, args.output_dir, model.discriminator, device, data_fn, loss_fn = d_loss_fn, eval_fn = eval_fn, dump_interval = args.dump_interval, name='D')
    disc_trainer.initialize()
  
    def post_g_loss_fn(outputs):
      if outputs is None or len(outputs) == 0:
        return None
      datas = [o['new_data'] for o in outputs]
      new_data = defaultdict(list)
      for d in datas:
        for k in d:
          new_data[k].append(d[k])
      for k in new_data:
        new_data[k] = torch.cat(new_data[k], dim=0)
      disc_trainer._train_step(new_data, 1)
  
    def g_loss_fn(trainer, _model, data):
      new_data, mlm_loss, gen_output = model.make_electra_data(data, rand=rand)
      trainer.post_loss_fn = post_g_loss_fn
      loss = mlm_loss.mean()
  
      return {'loss': loss.mean(),
          'batch_size': data['input_ids'].size(0),
          'new_data': new_data}
    return g_loss_fn

  def get_loss_fn(self, args):
    rand = random.Random(0)
    def loss_fn(trainer, model, data):
      train_losses = OrderedDict()
      new_data, mlm_loss, gen_output = model.make_electra_data(data, rand=rand)
      disc = model.discriminator_fw(**new_data)
      rtd_loss = disc['loss']
      loss = mlm_loss.mean() +  args.rtd_lambda*rtd_loss.mean()
      return loss.mean(), data['input_ids'].size(0)
    return loss_fn

  @classmethod
  def add_arguments(cls, parser):
    """Add task specific arguments
      e.g. parser.add_argument('--data_dir', type=str, help='The path of data directory.')
    """
    parser.add_argument('--rtd_lambda', type=float, default=10, help='Weight of RTD loss')
    parser.add_argument('--decoupled_training', type=boolean_string, default=True, help='Whether to use decoupled training')
    parser.add_argument('--num_training_steps', type=int, default=None, help='Maxium pre-training steps')
    parser.add_argument('--discriminator_learning_rate', type=float, default=-1, help='The learning rate of the discriminator')
    parser.add_argument('--init_generator', type=str, default=None, help='The model that used to initialize the generator')
    parser.add_argument('--init_discriminator', type=str, default=None, help='The model that used to initialize the discriminator')