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import torch.nn as nn
import functools
import torch.optim as optim
import options as opt
import time

from helpers import *
from dataset import GridDataset, CharMap
from datetime import datetime as Datetime
from models.LipNet import LipNet
from tqdm.auto import tqdm
from PauseChecker import PauseChecker
from torch.utils.data import DataLoader
from torch.multiprocessing import Manager
from BaseTrainer import BaseTrainer


class Trainer(BaseTrainer):
    def __init__(
        self, name=opt.run_name, write_logs=True,
        num_workers=None, base_dir='', char_map=opt.char_map,
        pre_gru_repeats=None
    ):
        super().__init__(name=name, base_dir=base_dir)

        images_dir = opt.images_dir
        if opt.use_lip_crops:
            images_dir = opt.crop_images_dir
        if num_workers is None:
            num_workers = opt.num_workers
        if pre_gru_repeats is None:
            pre_gru_repeats = opt.pre_gru_repeats

        assert pre_gru_repeats >= 1
        assert isinstance(pre_gru_repeats, int)

        self.images_dir = images_dir
        self.num_workers = num_workers
        self.pre_gru_repeats = pre_gru_repeats
        self.char_map = char_map

        manager = Manager()
        if opt.cache_videos:
            shared_dict = manager.dict()
        else:
            shared_dict = None

        self.shared_dict = shared_dict
        self.dataset_kwargs = self.get_dataset_kwargs(
            shared_dict=shared_dict, base_dir=self.base_dir,
            char_map=self.char_map
        )

        self.best_test_loss = float('inf')
        self.train_dataset = None
        self.test_dataset = None
        self.model = None
        self.net = None

        if write_logs:
            self.init_tensorboard()

    def load_datasets(self):
        if self.train_dataset is None:
            self.train_dataset = GridDataset(
                **self.dataset_kwargs, phase='train',
                file_list=opt.train_list
            )
        if self.test_dataset is None:
            self.test_dataset = GridDataset(
                **self.dataset_kwargs, phase='test',
                file_list=opt.val_list
            )

    def create_model(self):
        output_classes = len(self.train_dataset.get_char_mapping())

        if self.model is None:
            self.model = LipNet(
                output_classes=output_classes,
                pre_gru_repeats=self.pre_gru_repeats
            )
            self.model = self.model.cuda()
        if self.net is None:
            self.net = nn.DataParallel(self.model).cuda()

    def load_weights(self, weights_path):
        self.load_datasets()
        self.create_model()

        weights_path = os.path.join(self.base_dir, weights_path)
        pretrained_dict = torch.load(weights_path)
        model_dict = self.model.state_dict()
        pretrained_dict = {
            k: v for k, v in pretrained_dict.items() if
            k in model_dict.keys() and v.size() == model_dict[k].size()
        }

        missed_params = [
            k for k, v in model_dict.items()
            if k not in pretrained_dict.keys()
        ]

        print('loaded params/tot params: {}/{}'.format(
            len(pretrained_dict), len(model_dict)
        ))
        print('miss matched params:{}'.format(missed_params))
        model_dict.update(pretrained_dict)
        self.model.load_state_dict(model_dict)

    @staticmethod
    def make_date_stamp():
        return Datetime.now().strftime("%y%m%d-%H%M")

    @staticmethod
    def dataset2dataloader(
        dataset, num_workers, shuffle=True
    ):
        return DataLoader(
            dataset,
            batch_size=opt.batch_size,
            shuffle=shuffle,
            num_workers=num_workers,
            drop_last=False
        )

    def test(self):
        dataset = self.test_dataset

        with torch.no_grad():
            print('num_test_data:{}'.format(len(dataset.data)))
            self.model.eval()
            loader = self.dataset2dataloader(
                dataset, shuffle=False, num_workers=self.num_workers
            )

            loss_list = []
            wer = []
            cer = []
            crit = nn.CTCLoss(zero_infinity=True)
            tic = time.time()
            print('RUNNING VALIDATION')

            pbar = tqdm(loader)
            for (i_iter, input_sample) in enumerate(pbar):
                PauseChecker.check()

                vid = input_sample.get('vid').cuda()
                vid_len = input_sample.get('vid_len').cuda()
                txt, txt_len = self.extract_char_output(input_sample)
                y = self.net(vid)

                # assert not contains_nan_or_inf(y)
                assert (
                    self.pre_gru_repeats * vid_len.view(-1) >
                    2 * txt_len.view(-1)
                ).all()

                loss = crit(
                    y.transpose(0, 1).log_softmax(-1), txt,
                    self.pre_gru_repeats * vid_len.view(-1),
                    txt_len.view(-1)
                ).detach().cpu().numpy()

                loss_list.append(loss)
                pred_txt = dataset.ctc_decode(y)
                truth_txt = [
                    dataset.arr2txt(txt[_], start=1)
                    for _ in range(txt.size(0))
                ]

                wer.extend(dataset.wer(pred_txt, truth_txt))
                cer.extend(dataset.cer(pred_txt, truth_txt))

                if i_iter % opt.display == 0:
                    v = 1.0 * (time.time() - tic) / (i_iter + 1)
                    eta = v * (len(loader) - i_iter) / 3600.0

                    self.log_pred_texts(pred_txt, truth_txt, sub_samples=10)
                    print('test_iter={},eta={},wer={},cer={}'.format(
                        i_iter, eta, np.array(wer).mean(),
                        np.array(cer).mean()
                    ))
                    print(''.join(161 * '-'))

            return (
                np.array(loss_list).mean(), np.array(wer).mean(),
                np.array(cer).mean()
            )

    def extract_char_output(self, input_sample):
        """
        extract output character sequence from input_sample
        output character sequence is text if char_map is CharMap.letters
        output character sequence is phonemes if char_map is CharMap.phonemes
        """
        if self.char_map == CharMap.letters:
            txt = input_sample.get('txt').cuda()
            txt_len = input_sample.get('txt_len').cuda()
        elif self.char_map == CharMap.phonemes:
            txt = input_sample.get('phonemes').cuda()
            txt_len = input_sample.get('phonemes_len').cuda()
        elif self.char_map == CharMap.cmu_phonemes:
            txt = input_sample.get('cmu_phonemes').cuda()
            txt_len = input_sample.get('cmu_phonemes_len').cuda()
        else:
            raise ValueError(f'UNSUPPORTED CHAR_MAP: {self.char_map}')

        return txt, txt_len

    def train(self):
        self.load_datasets()
        self.create_model()

        dataset = self.train_dataset
        loader = self.dataset2dataloader(
            dataset, num_workers=self.num_workers
        )
        """
        optimizer = optim.Adam(
            self.model.parameters(), lr=opt.base_lr,
            weight_decay=0., amsgrad=True
        )
        """
        optimizer = optim.RMSprop(
            self.model.parameters(), lr=opt.base_lr
        )

        print('num_train_data:{}'.format(len(dataset.data)))
        # don't allow loss function to create infinite loss for
        # sequences that are too short
        crit = nn.CTCLoss(zero_infinity=True)
        tic = time.time()

        train_wer = []
        self.best_test_loss = float('inf')
        log_scalar = functools.partial(self.log_scalar, label='train')

        for epoch in range(opt.max_epoch):
            print(f'RUNNING EPOCH {epoch}')

            pbar = tqdm(loader)
            for (i_iter, input_sample) in enumerate(pbar):
                PauseChecker.check()

                self.model.train()
                vid = input_sample.get('vid').cuda()
                vid_len = input_sample.get('vid_len').cuda()
                txt, txt_len = self.extract_char_output(input_sample)

                optimizer.zero_grad()
                y = self.net(vid)
                assert not contains_nan_or_inf(y)
                assert (
                    self.pre_gru_repeats * vid_len.view(-1) >
                    2 * txt_len.view(-1)
                ).all()

                loss = crit(
                    y.transpose(0, 1).log_softmax(-1), txt,
                    self.pre_gru_repeats * vid_len.view(-1),
                    txt_len.view(-1)
                )

                if contains_nan_or_inf(loss):
                    print(f'LOSS IS INVALID. SKIPPING {i_iter}')
                    # print('Y', y)
                    # print('txt', txt)
                    continue

                loss.backward()
                params = self.model.parameters()
                # Check for NaNs in gradients
                if any(torch.isnan(p.grad).any() for p in params):
                    optimizer.zero_grad()  # Clear gradients to prevent update
                    print('SKIPPING NAN GRADS')
                    continue

                if opt.is_optimize:
                    optimizer.step()

                assert not contains_nan_or_inf(self.model.conv1.weight)
                tot_iter = i_iter + epoch * len(loader)
                pred_txt = dataset.ctc_decode(y)
                truth_txt = [
                    dataset.arr2txt(txt[_], start=1)
                    for _ in range(txt.size(0))
                ]
                train_wer.extend(dataset.wer(pred_txt, truth_txt))

                if tot_iter % opt.display == 0:
                    v = 1.0 * (time.time() - tic) / (tot_iter + 1)
                    eta = (len(loader) - i_iter) * v / 3600.0
                    wer = np.array(train_wer).mean()

                    log_scalar('loss', loss, tot_iter)
                    log_scalar('wer', wer, tot_iter)

                    self.log_pred_texts(pred_txt, truth_txt, sub_samples=3)
                    print('epoch={},tot_iter={},eta={},loss={},train_wer={}'
                        .format(
                            epoch, tot_iter, eta, loss,
                            np.array(train_wer).mean()
                        )
                    )
                    print(''.join(161 * '-'))

                if (tot_iter > 0) and (tot_iter % opt.test_step == 0):
                    # if tot_iter % opt.test_step == 0:
                    self.run_test(tot_iter, optimizer)

    @staticmethod
    def log_pred_texts(pred_txt, truth_txt, pad=80, sub_samples=None):
        line_length = 2 * pad + 1
        print(''.join(line_length * '-'))
        print('{:<{pad}}|{:>{pad}}'.format(
            'predict', 'truth', pad=pad
        ))

        print(''.join(line_length * '-'))
        zipped_samples = list(zip(pred_txt, truth_txt))
        if sub_samples is not None:
            zipped_samples = zipped_samples[:sub_samples]

        for (predict, truth) in zipped_samples:
            print('{:<{pad}}|{:>{pad}}'.format(
                predict, truth, pad=pad
            ))

        print(''.join(line_length * '-'))

    def run_test(self, tot_iter, optimizer):
        log_scalar = functools.partial(self.log_scalar, label='test')

        (loss, wer, cer) = self.test()
        print('i_iter={},lr={},loss={},wer={},cer={}'.format(
            tot_iter, show_lr(optimizer), loss, wer, cer
        ))
        log_scalar('loss', loss, tot_iter)
        log_scalar('wer', wer, tot_iter)
        log_scalar('cer', cer, tot_iter)

        if loss < self.best_test_loss:
            print(f'NEW BEST LOSS: {loss}')
            self.best_test_loss = loss

            savename = 'I{}-L{:.4f}-W{:.4f}-C{:.4f}'.format(
                tot_iter, loss, wer, cer
            )

            savename = savename.replace('.', '') + '.pt'
            savepath = os.path.join(self.weights_dir, savename)

            (save_dir, name) = os.path.split(savepath)
            if not os.path.exists(save_dir):
                os.makedirs(save_dir)

            torch.save(self.model.state_dict(), savepath)
            print(f'best model saved at {savepath}')

            if not opt.is_optimize:
                exit()

    def predict_sample(self, input_sample):
        self.model.eval()
        vid = input_sample.get('vid').cuda()
        return self.predict_video(vid)

    def predict_video(self, video):
        video = video.cuda()
        vid = video.unsqueeze(0)
        y = self.net(vid)
        pred_txt = self.train_dataset.ctc_decode(y)
        return pred_txt