Esempio n. 1
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    def wav_to_text(manifest, greedy=True):
        from ruamel.yaml import YAML
        yaml = YAML(typ="safe")
        with open(MODEL_YAML) as f:
            jasper_model_definition = yaml.load(f)
        labels = jasper_model_definition['labels']
        data_layer = nemo_asr.AudioToTextDataLayer(shuffle=False,
                                                   manifest_filepath=manifest,
                                                   labels=labels,
                                                   batch_size=1)
        audio_signal, audio_signal_len, _, _ = data_layer()
        processed_signal, processed_signal_len = data_preprocessor(
            input_signal=audio_signal, length=audio_signal_len)
        encoded, encoded_len = jasper_encoder(audio_signal=processed_signal,
                                              length=processed_signal_len)
        log_probs = jasper_decoder(encoder_output=encoded)
        predictions = greedy_decoder(log_probs=log_probs)

        if ENABLE_NGRAM:
            print('Running with beam search')
            beam_predictions = beam_search_with_lm(
                log_probs=log_probs, log_probs_length=encoded_len)
            eval_tensors = [beam_predictions]

        if greedy:
            eval_tensors = [predictions]

        tensors = neural_factory.infer(tensors=eval_tensors)
        if greedy:
            from nemo_asr.helpers import post_process_predictions
            prediction = post_process_predictions(tensors[0], labels)
        else:
            prediction = tensors[0][0][0][0][1]
        return prediction
Esempio n. 2
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        def wrong():
            with open("tests/data/jasper_smaller.yaml") as file:
                jasper_config = self.yaml.load(file)
            labels = jasper_config['labels']

            data_layer = nemo_asr.AudioToTextDataLayer(
                manifest_filepath=self.manifest_filepath,
                labels=labels,
                batch_size=4)
            data_preprocessor = nemo_asr.AudioToMelSpectrogramPreprocessor(
                **jasper_config['AudioToMelSpectrogramPreprocessor'])
            jasper_encoder = nemo_asr.JasperEncoder(
                feat_in=jasper_config['AudioToMelSpectrogramPreprocessor']
                ['features'],
                **jasper_config['JasperEncoder'])
            jasper_decoder = nemo_asr.JasperDecoderForCTC(
                feat_in=1024, num_classes=len(labels))
            # DAG definition
            audio_signal, audio_signal_len, transcript, transcript_len = \
                data_layer()
            processed_signal, processed_signal_len = data_preprocessor(
                input_signal=audio_signal, length=audio_signal_len)

            spec_augment = nemo_asr.SpectrogramAugmentation(rect_masks=5)
            aug_signal = spec_augment(input_spec=processed_signal)

            encoded, encoded_len = jasper_encoder(audio_signal=aug_signal,
                                                  length=processed_signal_len)
            log_probs = jasper_decoder(encoder_output=processed_signal)
    def transcribe(self, manifest_path):
        """Reads audio file and returns the recognized transcrition"""
        self.nf.logger.info('Started Transcribing Speech')
        data_layer = nemo_asr.AudioToTextDataLayer(
            manifest_filepath = manifest_path,
            sample_rate = self.sample_rate,
            labels = self.labels,
            batch_size = 1,
            **self.eval_dl_params)
#         os.remove("data.json")
        self.nf.logger.info('Loading {0} examples'.format(len(data_layer)))

        audio_sig_e1, a_sig_length_e1, transcript_e1, transcript_len_e1 = data_layer()

        # apply pre-processing 
        processed_signal_e1, p_length_e1 = self.preprocessor(
            input_signal = audio_sig_e1,
            length = a_sig_length_e1)

        # encode audio signal
        encoded_e1, encoded_len_e1 = self.jasper_encoder(
            audio_signal=processed_signal_e1,
            length=p_length_e1)
        # decode encoded signal
        log_probs_e1 = self.jasper_decoder(encoder_output=encoded_e1)

        # apply CTC decode
        if self.asr_conf["decoder"] == "beam":
            beam_predictions_e1 = self.ctc_decoder(
                    log_probs=log_probs_e1, log_probs_length=encoded_len_e1)
            evaluated_tensors = self.nf.infer(
                    tensors=[beam_predictions_e1,encoded_e1],
                    use_cache=False)
            hypotheses = []
            # Over mini-batch
            print("done1")
            return evaluated_tensors
            for i in evaluated_tensors[1]:
                hypotheses.append(i)
        else:
            greedy_predictions_e1 = self.ctc_decoder(log_probs=log_probs_e1)
            eval_tensors = [log_probs_e1, greedy_predictions_e1,
                            transcript_e1, transcript_len_e1, encoded_len_e1,encoded_e1]
            evaluated_tensors = self.nf.infer(
                tensors = eval_tensors,
                cache = True
            )
            
            print("done2")
            return evaluated_tensors

            hypotheses = post_process_predictions(
                evaluated_tensors[1],
                self.labels)
        
        return hypotheses
Esempio n. 4
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def create_infer_dags(neural_factory,
                      neural_modules,
                      tacotron2_params,
                      infer_dataset,
                      infer_batch_size,
                      cpu_per_dl=1):
    (_, text_embedding, t2_enc, t2_dec, t2_postnet, _, _) = neural_modules

    dl_params = copy.deepcopy(tacotron2_params["AudioToTextDataLayer"])
    dl_params.update(tacotron2_params["AudioToTextDataLayer"]["eval"])
    del dl_params["train"]
    del dl_params["eval"]

    data_layer = nemo_asr.AudioToTextDataLayer(
        manifest_filepath=infer_dataset,
        labels=tacotron2_params['labels'],
        batch_size=infer_batch_size,
        num_workers=cpu_per_dl,
        load_audio=False,
        **dl_params,
    )

    _, _, transcript, transcript_len = data_layer()

    transcript_embedded = text_embedding(char_phone=transcript)
    transcript_encoded = t2_enc(char_phone_embeddings=transcript_embedded,
                                embedding_length=transcript_len)
    if isinstance(t2_dec, nemo_tts.Tacotron2DecoderInfer):
        mel_decoder, gate, alignments, mel_len = t2_dec(
            char_phone_encoded=transcript_encoded,
            encoded_length=transcript_len)
    else:
        raise ValueError(
            "The Neural Module for tacotron2 decoder was not understood")
    mel_postnet = t2_postnet(mel_input=mel_decoder)

    return [mel_postnet, gate, alignments, mel_len]
def main():
    parser = argparse.ArgumentParser(description='Jasper')
    parser.add_argument("--local_rank", default=None, type=int)
    parser.add_argument("--batch_size", default=32, type=int)
    parser.add_argument("--model_config", type=str, required=True)
    parser.add_argument("--eval_datasets", type=str, required=True)
    parser.add_argument("--load_dir", type=str, required=True)
    parser.add_argument("--vocab_file", type=str, required=True)
    parser.add_argument("--save_logprob", default=None, type=str)
    parser.add_argument("--lm_path", default=None, type=str)
    parser.add_argument("--beam_width", default=50, type=int)
    parser.add_argument("--alpha", default=2.0, type=float)
    parser.add_argument("--beta", default=1.0, type=float)
    parser.add_argument("--cutoff_prob", default=0.99, type=float)
    parser.add_argument("--cutoff_top_n", default=40, type=int)

    args = parser.parse_args()
    batch_size = args.batch_size
    load_dir = args.load_dir

    if args.local_rank is not None:
        if args.lm_path:
            raise NotImplementedError(
                "Beam search decoder with LM does not currently support "
                "evaluation on multi-gpu.")
        device = nemo.core.DeviceType.AllGpu
    else:
        device = nemo.core.DeviceType.GPU

    # Instantiate Neural Factory with supported backend
    neural_factory = nemo.core.NeuralModuleFactory(
        backend=nemo.core.Backend.PyTorch,
        local_rank=args.local_rank,
        optimization_level=nemo.core.Optimization.mxprO1,
        placement=device)
    logger = neural_factory.logger

    if args.local_rank is not None:
        logger.info('Doing ALL GPU')

    yaml = YAML(typ="safe")
    with open(args.model_config) as f:
        jasper_params = yaml.load(f)

    vocab = load_vocab(args.vocab_file)

    sample_rate = jasper_params['sample_rate']

    eval_datasets = args.eval_datasets

    eval_dl_params = copy.deepcopy(jasper_params["AudioToTextDataLayer"])
    eval_dl_params.update(jasper_params["AudioToTextDataLayer"]["eval"])
    eval_dl_params["normalize_transcripts"] = False
    del eval_dl_params["train"]
    del eval_dl_params["eval"]
    data_layer = nemo_asr.AudioToTextDataLayer(
        manifest_filepath=eval_datasets,
        sample_rate=sample_rate,
        labels=vocab,
        batch_size=batch_size,
        **eval_dl_params)

    n = len(data_layer)
    logger.info('Evaluating {0} examples'.format(n))

    data_preprocessor = nemo_asr.AudioPreprocessing(
        sample_rate=sample_rate,
        **jasper_params["AudioPreprocessing"])
    jasper_encoder = nemo_asr.JasperEncoder(
        feat_in=jasper_params["AudioPreprocessing"]["features"],
        **jasper_params["JasperEncoder"])
    jasper_decoder = nemo_asr.JasperDecoderForCTC(
        feat_in=jasper_params["JasperEncoder"]["jasper"][-1]["filters"],
        num_classes=len(vocab))
    greedy_decoder = nemo_asr.GreedyCTCDecoder()

    if args.lm_path:
        beam_width = args.beam_width
        alpha = args.alpha
        beta = args.beta
        cutoff_prob = args.cutoff_prob
        cutoff_top_n = args.cutoff_top_n
        beam_search_with_lm = nemo_asr.BeamSearchDecoderWithLM(
            vocab=vocab,
            beam_width=beam_width,
            alpha=alpha,
            beta=beta,
            cutoff_prob=cutoff_prob,
            cutoff_top_n=cutoff_top_n,
            lm_path=args.lm_path,
            num_cpus=max(os.cpu_count(), 1))

    logger.info('================================')
    logger.info(
        f"Number of parameters in encoder: {jasper_encoder.num_weights}")
    logger.info(
        f"Number of parameters in decoder: {jasper_decoder.num_weights}")
    logger.info(
        f"Total number of parameters in decoder: "
        f"{jasper_decoder.num_weights + jasper_encoder.num_weights}")
    logger.info('================================')

    audio_signal_e1, a_sig_length_e1, transcript_e1, transcript_len_e1 = \
        data_layer()
    processed_signal_e1, p_length_e1 = data_preprocessor(
        input_signal=audio_signal_e1,
        length=a_sig_length_e1)
    encoded_e1, encoded_len_e1 = jasper_encoder(
        audio_signal=processed_signal_e1,
        length=p_length_e1)
    log_probs_e1 = jasper_decoder(encoder_output=encoded_e1)
    predictions_e1 = greedy_decoder(log_probs=log_probs_e1)

    eval_tensors = [log_probs_e1, predictions_e1,
                    transcript_e1, transcript_len_e1, encoded_len_e1]

    if args.lm_path:
        beam_predictions_e1 = beam_search_with_lm(
            log_probs=log_probs_e1, log_probs_length=encoded_len_e1)
        eval_tensors.append(beam_predictions_e1)

    evaluated_tensors = neural_factory.infer(
        tensors=eval_tensors,
        checkpoint_dir=load_dir,
    )

    greedy_hypotheses = post_process_predictions(evaluated_tensors[1], vocab)
    references = post_process_transcripts(
        evaluated_tensors[2], evaluated_tensors[3], vocab)
    cer = word_error_rate(hypotheses=greedy_hypotheses,
                          references=references,
                          use_cer=True)
    logger.info("Greedy CER {:.2f}%".format(cer * 100))

    if args.lm_path:
        beam_hypotheses = []
        # Over mini-batch
        for i in evaluated_tensors[-1]:
            # Over samples
            for j in i:
                beam_hypotheses.append(j[0][1])

        cer = word_error_rate(
            hypotheses=beam_hypotheses, references=references, use_cer=True)
        logger.info("Beam CER {:.2f}".format(cer * 100))

    if args.save_logprob:
        # Convert logits to list of numpy arrays
        logprob = []
        for i, batch in enumerate(evaluated_tensors[0]):
            for j in range(batch.shape[0]):
                logprob.append(
                    batch[j][:evaluated_tensors[4][i][j], :].cpu().numpy())
        with open(args.save_logprob, 'wb') as f:
            pickle.dump(logprob, f, protocol=pickle.HIGHEST_PROTOCOL)
Esempio n. 6
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def main():
    parser = argparse.ArgumentParser(parents=[nm_argparse.NemoArgParser()],
                                     description='AN4 ASR',
                                     conflict_handler='resolve')

    # Overwrite default args
    parser.add_argument("--train_dataset",
                        type=str,
                        help="training dataset path")
    parser.add_argument("--eval_datasets",
                        type=str,
                        nargs=1,
                        help="validation dataset path")

    # Create new args
    parser.add_argument("--lm", default="./an4-lm.3gram.binary", type=str)
    parser.add_argument("--test_after_training", action='store_true')
    parser.add_argument("--momentum", type=float)
    parser.add_argument("--beta1", default=0.95, type=float)
    parser.add_argument("--beta2", default=0.25, type=float)
    parser.set_defaults(
        model_config="./configs/jasper_an4.yaml",
        train_dataset="/home/mrjenkins/TestData/an4_dataset/an4_train.json",
        eval_datasets="/home/mrjenkins/TestData/an4_dataset/an4_val.json",
        work_dir="./tmp",
        checkpoint_dir="./tmp",
        optimizer="novograd",
        num_epochs=50,
        batch_size=32,
        eval_batch_size=16,
        lr=0.02,
        weight_decay=0.005,
        checkpoint_save_freq=1000,
        eval_freq=100,
        amp_opt_level="O1")

    args = parser.parse_args()
    betas = (args.beta1, args.beta2)

    wer_thr = 0.20
    beam_wer_thr = 0.15

    nf = nemo.core.NeuralModuleFactory(local_rank=args.local_rank,
                                       optimization_level=args.amp_opt_level,
                                       random_seed=0,
                                       log_dir=args.work_dir,
                                       checkpoint_dir=args.checkpoint_dir,
                                       create_tb_writer=True,
                                       cudnn_benchmark=args.cudnn_benchmark)
    tb_writer = nf.tb_writer
    checkpoint_dir = nf.checkpoint_dir
    args.checkpoint_dir = nf.checkpoint_dir

    # Load model definition
    yaml = YAML(typ="safe")
    with open(args.model_config) as f:
        jasper_params = yaml.load(f)

    vocab = jasper_params['labels']
    sample_rate = jasper_params['sample_rate']

    # build train and eval model
    train_dl_params = copy.deepcopy(jasper_params["AudioToTextDataLayer"])
    train_dl_params.update(jasper_params["AudioToTextDataLayer"]["train"])
    del train_dl_params["train"]
    del train_dl_params["eval"]

    data_layer = nemo_asr.AudioToTextDataLayer(
        manifest_filepath=args.train_dataset,
        sample_rate=sample_rate,
        labels=vocab,
        batch_size=args.batch_size,
        **train_dl_params)

    num_samples = len(data_layer)
    total_steps = int(num_samples * args.num_epochs / args.batch_size)
    print("Train samples=", num_samples, "num_steps=", total_steps)

    data_preprocessor = nemo_asr.AudioPreprocessing(
        sample_rate=sample_rate, **jasper_params["AudioPreprocessing"])

    # data_augmentation = nemo_asr.SpectrogramAugmentation(
    #     **jasper_params['SpectrogramAugmentation']
    # )

    eval_dl_params = copy.deepcopy(jasper_params["AudioToTextDataLayer"])
    eval_dl_params.update(jasper_params["AudioToTextDataLayer"]["eval"])
    del eval_dl_params["train"]
    del eval_dl_params["eval"]

    data_layer_eval = nemo_asr.AudioToTextDataLayer(
        manifest_filepath=args.eval_datasets,
        sample_rate=sample_rate,
        labels=vocab,
        batch_size=args.eval_batch_size,
        **eval_dl_params)

    num_samples = len(data_layer_eval)
    nf.logger.info(f"Eval samples={num_samples}")

    jasper_encoder = nemo_asr.JasperEncoder(
        feat_in=jasper_params["AudioPreprocessing"]["features"],
        **jasper_params["JasperEncoder"])

    jasper_decoder = nemo_asr.JasperDecoderForCTC(
        feat_in=jasper_params["JasperEncoder"]["jasper"][-1]["filters"],
        num_classes=len(vocab))

    ctc_loss = nemo_asr.CTCLossNM(num_classes=len(vocab))

    greedy_decoder = nemo_asr.GreedyCTCDecoder()

    # Training model
    audio, audio_len, transcript, transcript_len = data_layer()
    processed, processed_len = data_preprocessor(input_signal=audio,
                                                 length=audio_len)
    encoded, encoded_len = jasper_encoder(audio_signal=processed,
                                          length=processed_len)
    log_probs = jasper_decoder(encoder_output=encoded)
    predictions = greedy_decoder(log_probs=log_probs)
    loss = ctc_loss(log_probs=log_probs,
                    targets=transcript,
                    input_length=encoded_len,
                    target_length=transcript_len)

    # Evaluation model
    audio_e, audio_len_e, transcript_e, transcript_len_e = data_layer_eval()
    processed_e, processed_len_e = data_preprocessor(input_signal=audio_e,
                                                     length=audio_len_e)
    encoded_e, encoded_len_e = jasper_encoder(audio_signal=processed_e,
                                              length=processed_len_e)
    log_probs_e = jasper_decoder(encoder_output=encoded_e)
    predictions_e = greedy_decoder(log_probs=log_probs_e)
    loss_e = ctc_loss(log_probs=log_probs_e,
                      targets=transcript_e,
                      input_length=encoded_len_e,
                      target_length=transcript_len_e)
    nf.logger.info("Num of params in encoder: {0}".format(
        jasper_encoder.num_weights))

    # Callbacks to print info to console and Tensorboard
    train_callback = nemo.core.SimpleLossLoggerCallback(
        tensors=[loss, predictions, transcript, transcript_len],
        print_func=lambda x: monitor_asr_train_progress(x, labels=vocab),
        get_tb_values=lambda x: [["loss", x[0]]],
        tb_writer=tb_writer,
    )

    checkpointer_callback = nemo.core.CheckpointCallback(
        folder=checkpoint_dir, step_freq=args.checkpoint_save_freq)

    eval_tensors = [loss_e, predictions_e, transcript_e, transcript_len_e]
    eval_callback = nemo.core.EvaluatorCallback(
        eval_tensors=eval_tensors,
        user_iter_callback=lambda x, y: process_evaluation_batch(
            x, y, labels=vocab),
        user_epochs_done_callback=process_evaluation_epoch,
        eval_step=args.eval_freq,
        tb_writer=tb_writer)

    nf.train(tensors_to_optimize=[loss],
             callbacks=[train_callback, eval_callback, checkpointer_callback],
             optimizer=args.optimizer,
             lr_policy=CosineAnnealing(total_steps=total_steps),
             optimization_params={
                 "num_epochs": args.num_epochs,
                 "max_steps": args.max_steps,
                 "lr": args.lr,
                 "momentum": args.momentum,
                 "betas": betas,
                 "weight_decay": args.weight_decay,
                 "grad_norm_clip": None
             },
             batches_per_step=args.iter_per_step)

    if args.test_after_training:
        # Create BeamSearch NM
        beam_search_with_lm = nemo_asr.BeamSearchDecoderWithLM(
            vocab=vocab,
            beam_width=64,
            alpha=2.,
            beta=1.5,
            lm_path=args.lm,
            num_cpus=max(os.cpu_count(), 1))
        beam_predictions = beam_search_with_lm(log_probs=log_probs_e,
                                               log_probs_length=encoded_len_e)
        eval_tensors.append(beam_predictions)

        evaluated_tensors = nf.infer(eval_tensors)
        greedy_hypotheses = post_process_predictions(evaluated_tensors[1],
                                                     vocab)
        references = post_process_transcripts(evaluated_tensors[2],
                                              evaluated_tensors[3], vocab)
        wer = word_error_rate(hypotheses=greedy_hypotheses,
                              references=references)
        nf.logger.info("Greedy WER: {:.2f}".format(wer * 100))
        assert wer <= wer_thr, (
            "Final eval greedy WER {:.2f}% > than {:.2f}%".format(
                wer * 100, wer_thr * 100))

        beam_hypotheses = []
        # Over mini-batch
        for i in evaluated_tensors[-1]:
            # Over samples
            for j in i:
                beam_hypotheses.append(j[0][1])

        beam_wer = word_error_rate(hypotheses=beam_hypotheses,
                                   references=references)
        nf.logger.info("Beam WER {:.2f}%".format(beam_wer * 100))
        assert beam_wer <= beam_wer_thr, (
            "Final eval beam WER {:.2f}%  > than {:.2f}%".format(
                beam_wer * 100, beam_wer_thr * 100))
        assert beam_wer <= wer, ("Final eval beam WER > than the greedy WER.")

        # Reload model weights and train for extra 10 epochs
        checkpointer_callback = nemo.core.CheckpointCallback(
            folder=checkpoint_dir,
            step_freq=args.checkpoint_save_freq,
            force_load=True)

        nf.reset_trainer()
        nf.train(tensors_to_optimize=[loss],
                 callbacks=[train_callback, checkpointer_callback],
                 optimizer=args.optimizer,
                 optimization_params={
                     "num_epochs": args.num_epochs + 10,
                     "lr": args.lr,
                     "momentum": args.momentum,
                     "betas": betas,
                     "weight_decay": args.weight_decay,
                     "grad_norm_clip": None
                 },
                 reset=True)

        evaluated_tensors = nf.infer(eval_tensors[:-1])
        greedy_hypotheses = post_process_predictions(evaluated_tensors[1],
                                                     vocab)
        references = post_process_transcripts(evaluated_tensors[2],
                                              evaluated_tensors[3], vocab)
        wer_new = word_error_rate(hypotheses=greedy_hypotheses,
                                  references=references)
        nf.logger.info("New greedy WER: {:.2f}%".format(wer_new * 100))
        assert wer_new <= wer * 1.1, (
            f"Fine tuning: new WER {wer * 100:.2f}% > than the previous WER "
            f"{wer_new * 100:.2f}%")
def main():
    parser = argparse.ArgumentParser(description='Jasper')
    parser.add_argument("--local_rank", default=None, type=int)
    parser.add_argument("--batch_size", default=32, type=int)
    parser.add_argument("--model_config", type=str, required=True)
    parser.add_argument("--eval_datasets", type=str, required=True)
    parser.add_argument("--load_dir", type=str, required=True)
    parser.add_argument("--save_logprob", default=None, type=str)
    parser.add_argument("--lm_path", default=None, type=str)
    parser.add_argument('--alpha',
                        default=2.,
                        type=float,
                        help='value of LM weight',
                        required=False)
    parser.add_argument(
        '--alpha_max',
        type=float,
        help='maximum value of LM weight (for a grid search in \'eval\' mode)',
        required=False)
    parser.add_argument('--alpha_step',
                        type=float,
                        help='step for LM weight\'s tuning in \'eval\' mode',
                        required=False,
                        default=0.1)
    parser.add_argument('--beta',
                        default=1.5,
                        type=float,
                        help='value of word count weight',
                        required=False)
    parser.add_argument(
        '--beta_max',
        type=float,
        help='maximum value of word count weight (for a grid search in \
          \'eval\' mode',
        required=False)
    parser.add_argument(
        '--beta_step',
        type=float,
        help='step for word count weight\'s tuning in \'eval\' mode',
        required=False,
        default=0.1)
    parser.add_argument("--beam_width", default=128, type=int)

    args = parser.parse_args()
    batch_size = args.batch_size
    load_dir = args.load_dir

    if args.local_rank is not None:
        if args.lm_path:
            raise NotImplementedError(
                "Beam search decoder with LM does not currently support "
                "evaluation on multi-gpu.")
        device = nemo.core.DeviceType.AllGpu
    else:
        device = nemo.core.DeviceType.GPU

    # Instantiate Neural Factory with supported backend
    neural_factory = nemo.core.NeuralModuleFactory(
        backend=nemo.core.Backend.PyTorch,
        local_rank=args.local_rank,
        optimization_level=nemo.core.Optimization.mxprO1,
        placement=device)
    logger = neural_factory.logger

    if args.local_rank is not None:
        logger.info('Doing ALL GPU')

    yaml = YAML(typ="safe")
    with open(args.model_config) as f:
        jasper_params = yaml.load(f)
    vocab = jasper_params['labels']
    sample_rate = jasper_params['sample_rate']

    eval_datasets = args.eval_datasets

    eval_dl_params = copy.deepcopy(jasper_params["AudioToTextDataLayer"])
    eval_dl_params.update(jasper_params["AudioToTextDataLayer"]["eval"])
    del eval_dl_params["train"]
    del eval_dl_params["eval"]
    data_layer = nemo_asr.AudioToTextDataLayer(manifest_filepath=eval_datasets,
                                               sample_rate=sample_rate,
                                               labels=vocab,
                                               batch_size=batch_size,
                                               **eval_dl_params)

    N = len(data_layer)
    logger.info('Evaluating {0} examples'.format(N))

    data_preprocessor = nemo_asr.AudioToMelSpectrogramPreprocessor(
        sample_rate=sample_rate,
        **jasper_params["AudioToMelSpectrogramPreprocessor"])
    jasper_encoder = nemo_asr.JasperEncoder(
        feat_in=jasper_params["AudioToMelSpectrogramPreprocessor"]["features"],
        **jasper_params["JasperEncoder"])
    jasper_decoder = nemo_asr.JasperDecoderForCTC(
        feat_in=jasper_params["JasperEncoder"]["jasper"][-1]["filters"],
        num_classes=len(vocab))
    greedy_decoder = nemo_asr.GreedyCTCDecoder()

    logger.info('================================')
    logger.info(
        f"Number of parameters in encoder: {jasper_encoder.num_weights}")
    logger.info(
        f"Number of parameters in decoder: {jasper_decoder.num_weights}")
    logger.info(f"Total number of parameters in decoder: "
                f"{jasper_decoder.num_weights + jasper_encoder.num_weights}")
    logger.info('================================')

    audio_signal_e1, a_sig_length_e1, transcript_e1, transcript_len_e1 =\
        data_layer()
    processed_signal_e1, p_length_e1 = data_preprocessor(
        input_signal=audio_signal_e1, length=a_sig_length_e1)
    encoded_e1, encoded_len_e1 = jasper_encoder(
        audio_signal=processed_signal_e1, length=p_length_e1)
    log_probs_e1 = jasper_decoder(encoder_output=encoded_e1)
    predictions_e1 = greedy_decoder(log_probs=log_probs_e1)

    eval_tensors = [
        log_probs_e1, predictions_e1, transcript_e1, transcript_len_e1,
        encoded_len_e1
    ]

    evaluated_tensors = neural_factory.infer(tensors=eval_tensors,
                                             checkpoint_dir=load_dir,
                                             cache=True)

    greedy_hypotheses = post_process_predictions(evaluated_tensors[1], vocab)
    references = post_process_transcripts(evaluated_tensors[2],
                                          evaluated_tensors[3], vocab)
    wer = word_error_rate(hypotheses=greedy_hypotheses, references=references)
    logger.info("Greedy WER {:.2f}%".format(wer * 100))

    if args.lm_path:
        if args.alpha_max is None:
            args.alpha_max = args.alpha
        # include alpha_max in tuning range
        args.alpha_max += args.alpha_step / 10.0

        if args.beta_max is None:
            args.beta_max = args.beta
        # include beta_max in tuning range
        args.beta_max += args.beta_step / 10.0

        beam_wers = []

        for alpha in np.arange(args.alpha, args.alpha_max, args.alpha_step):
            for beta in np.arange(args.beta, args.beta_max, args.beta_step):
                logger.info('================================')
                logger.info(f'Infering with (alpha, beta): ({alpha}, {beta})')
                beam_search_with_lm = nemo_asr.BeamSearchDecoderWithLM(
                    vocab=vocab,
                    beam_width=args.beam_width,
                    alpha=alpha,
                    beta=beta,
                    lm_path=args.lm_path,
                    num_cpus=max(os.cpu_count(), 1))
                beam_predictions_e1 = beam_search_with_lm(
                    log_probs=log_probs_e1, log_probs_length=encoded_len_e1)

                evaluated_tensors = neural_factory.infer(
                    tensors=[beam_predictions_e1],
                    use_cache=True,
                    verbose=False)

                beam_hypotheses = []
                # Over mini-batch
                for i in evaluated_tensors[-1]:
                    # Over samples
                    for j in i:
                        beam_hypotheses.append(j[0][1])

                wer = word_error_rate(hypotheses=beam_hypotheses,
                                      references=references)
                logger.info("Beam WER {:.2f}%".format(wer * 100))
                beam_wers.append(((alpha, beta), wer * 100))

        logger.info('Beam WER for (alpha, beta)')
        logger.info('================================')
        logger.info('\n' + '\n'.join([str(e) for e in beam_wers]))
        logger.info('================================')
        best_beam_wer = min(beam_wers, key=lambda x: x[1])
        logger.info('Best (alpha, beta): '
                    f'{best_beam_wer[0]}, '
                    f'WER: {best_beam_wer[1]:.2f}%')
Esempio n. 8
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def create_eval_dags(neural_factory,
                     neural_modules,
                     tacotron2_params,
                     eval_datasets,
                     eval_batch_size,
                     eval_freq,
                     cpu_per_dl=1):
    (data_preprocessor, text_embedding, t2_enc, t2_dec, t2_postnet, t2_loss,
     makegatetarget) = neural_modules

    eval_dl_params = copy.deepcopy(tacotron2_params["AudioToTextDataLayer"])
    eval_dl_params.update(tacotron2_params["AudioToTextDataLayer"]["eval"])
    del eval_dl_params["train"]
    del eval_dl_params["eval"]

    callbacks = []
    # assemble eval DAGs
    for eval_dataset in eval_datasets:
        data_layer_eval = nemo_asr.AudioToTextDataLayer(
            manifest_filepath=eval_dataset,
            labels=tacotron2_params['labels'],
            bos_id=len(tacotron2_params['labels']),
            eos_id=len(tacotron2_params['labels']) + 1,
            pad_id=len(tacotron2_params['labels']) + 2,
            batch_size=eval_batch_size,
            num_workers=cpu_per_dl,
            **eval_dl_params,
        )

        audio, audio_len, transcript, transcript_len = data_layer_eval()
        spec_target, spec_target_len = data_preprocessor(input_signal=audio,
                                                         length=audio_len)

        transcript_embedded = text_embedding(char_phone=transcript)
        transcript_encoded = t2_enc(char_phone_embeddings=transcript_embedded,
                                    embedding_length=transcript_len)
        mel_decoder, gate, alignments = t2_dec(
            char_phone_encoded=transcript_encoded,
            encoded_length=transcript_len,
            mel_target=spec_target)
        mel_postnet = t2_postnet(mel_input=mel_decoder)
        gate_target = makegatetarget(mel_target=spec_target,
                                     target_len=spec_target_len)
        loss = t2_loss(mel_out=mel_decoder,
                       mel_out_postnet=mel_postnet,
                       gate_out=gate,
                       mel_target=spec_target,
                       gate_target=gate_target,
                       target_len=spec_target_len,
                       seq_len=audio_len)

        # create corresponding eval callback
        tagname = os.path.basename(eval_dataset).split(".")[0]
        eval_tensors = [
            loss, spec_target, mel_postnet, gate, gate_target, alignments
        ]
        eval_callback = nemo.core.EvaluatorCallback(
            eval_tensors=eval_tensors,
            user_iter_callback=tacotron2_process_eval_batch,
            user_epochs_done_callback=partial(tacotron2_process_final_eval,
                                              tag=tagname),
            tb_writer_func=partial(tacotron2_eval_log_to_tb_func, tag=tagname),
            eval_step=eval_freq,
            tb_writer=neural_factory.tb_writer)

        callbacks.append(eval_callback)
    return callbacks
Esempio n. 9
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def create_train_dag(neural_factory,
                     neural_modules,
                     tacotron2_params,
                     train_dataset,
                     batch_size,
                     log_freq,
                     checkpoint_save_freq,
                     cpu_per_dl=1):
    (data_preprocessor, text_embedding, t2_enc, t2_dec, t2_postnet, t2_loss,
     makegatetarget) = neural_modules

    train_dl_params = copy.deepcopy(tacotron2_params["AudioToTextDataLayer"])
    train_dl_params.update(tacotron2_params["AudioToTextDataLayer"]["train"])
    del train_dl_params["train"]
    del train_dl_params["eval"]

    data_layer = nemo_asr.AudioToTextDataLayer(
        manifest_filepath=train_dataset,
        labels=tacotron2_params['labels'],
        bos_id=len(tacotron2_params['labels']),
        eos_id=len(tacotron2_params['labels']) + 1,
        pad_id=len(tacotron2_params['labels']) + 2,
        batch_size=batch_size,
        num_workers=cpu_per_dl,
        **train_dl_params,
    )

    N = len(data_layer)
    steps_per_epoch = math.ceil(N / (batch_size * neural_factory.world_size))
    nemo.logging.info(f'Have {N} examples to train on.')

    # Train DAG
    audio, audio_len, transcript, transcript_len = data_layer()
    spec_target, spec_target_len = data_preprocessor(input_signal=audio,
                                                     length=audio_len)

    transcript_embedded = text_embedding(char_phone=transcript)
    transcript_encoded = t2_enc(char_phone_embeddings=transcript_embedded,
                                embedding_length=transcript_len)
    mel_decoder, gate, alignments = t2_dec(
        char_phone_encoded=transcript_encoded,
        encoded_length=transcript_len,
        mel_target=spec_target)
    mel_postnet = t2_postnet(mel_input=mel_decoder)
    gate_target = makegatetarget(mel_target=spec_target,
                                 target_len=spec_target_len)
    loss_t = t2_loss(mel_out=mel_decoder,
                     mel_out_postnet=mel_postnet,
                     gate_out=gate,
                     mel_target=spec_target,
                     gate_target=gate_target,
                     target_len=spec_target_len,
                     seq_len=audio_len)

    # Callbacks needed to print info to console and Tensorboard
    train_callback = nemo.core.SimpleLossLoggerCallback(
        tensors=[
            loss_t, spec_target, mel_postnet, gate, gate_target, alignments
        ],
        print_func=lambda x: nemo.logging.info(f"Loss: {x[0].data}"),
        log_to_tb_func=partial(tacotron2_log_to_tb_func,
                               log_images=True,
                               log_images_freq=log_freq),
        tb_writer=neural_factory.tb_writer,
    )

    chpt_callback = nemo.core.CheckpointCallback(
        folder=neural_factory.checkpoint_dir, step_freq=checkpoint_save_freq)

    callbacks = [train_callback, chpt_callback]
    return loss_t, callbacks, steps_per_epoch
Esempio n. 10
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def create_dags(jasper_params, args, nf):
    vocab = jasper_params['labels']

    # build train and eval model
    train_dl_params = copy.deepcopy(jasper_params["AudioToTextDataLayer"])
    train_dl_params.update(jasper_params["AudioToTextDataLayer"]["train"])
    del train_dl_params["train"]
    del train_dl_params["eval"]

    data_layer = nemo_asr.AudioToTextDataLayer(
        manifest_filepath=args.train_dataset,
        labels=vocab,
        batch_size=args.batch_size,
        **train_dl_params)

    num_samples = len(data_layer)
    steps_per_epoch = math.ceil(
        num_samples / (args.batch_size * args.iter_per_step * nf.world_size))
    total_steps = steps_per_epoch * args.num_epochs
    print("Train samples=", num_samples, "num_steps=", total_steps)

    data_preprocessor = nemo_asr.AudioToMelSpectrogramPreprocessor(
        **jasper_params["AudioToMelSpectrogramPreprocessor"])

    # data_augmentation = nemo_asr.SpectrogramAugmentation(
    #     **jasper_params['SpectrogramAugmentation']
    # )

    eval_dl_params = copy.deepcopy(jasper_params["AudioToTextDataLayer"])
    eval_dl_params.update(jasper_params["AudioToTextDataLayer"]["eval"])
    del eval_dl_params["train"]
    del eval_dl_params["eval"]

    data_layer_eval = nemo_asr.AudioToTextDataLayer(
        manifest_filepath=args.eval_datasets,
        labels=vocab,
        batch_size=args.eval_batch_size,
        **eval_dl_params)

    num_samples = len(data_layer_eval)
    nemo.logging.info(f"Eval samples={num_samples}")

    jasper_encoder = nemo_asr.JasperEncoder(**jasper_params["JasperEncoder"])

    jasper_decoder = nemo_asr.JasperDecoderForCTC(
        num_classes=len(vocab), **jasper_params["JasperDecoderForCTC"])

    ctc_loss = nemo_asr.CTCLossNM(num_classes=len(vocab))

    greedy_decoder = nemo_asr.GreedyCTCDecoder()

    # Training model
    audio, audio_len, transcript, transcript_len = data_layer()
    processed, processed_len = data_preprocessor(input_signal=audio,
                                                 length=audio_len)
    encoded, encoded_len = jasper_encoder(audio_signal=processed,
                                          length=processed_len)
    log_probs = jasper_decoder(encoder_output=encoded)
    predictions = greedy_decoder(log_probs=log_probs)
    loss = ctc_loss(log_probs=log_probs,
                    targets=transcript,
                    input_length=encoded_len,
                    target_length=transcript_len)

    # Evaluation model
    audio_e, audio_len_e, transcript_e, transcript_len_e = data_layer_eval()
    processed_e, processed_len_e = data_preprocessor(input_signal=audio_e,
                                                     length=audio_len_e)
    encoded_e, encoded_len_e = jasper_encoder(audio_signal=processed_e,
                                              length=processed_len_e)
    log_probs_e = jasper_decoder(encoder_output=encoded_e)
    predictions_e = greedy_decoder(log_probs=log_probs_e)
    loss_e = ctc_loss(log_probs=log_probs_e,
                      targets=transcript_e,
                      input_length=encoded_len_e,
                      target_length=transcript_len_e)
    nemo.logging.info("Num of params in encoder: {0}".format(
        jasper_encoder.num_weights))

    # Callbacks to print info to console and Tensorboard
    train_callback = nemo.core.SimpleLossLoggerCallback(
        tensors=[loss, predictions, transcript, transcript_len],
        print_func=partial(monitor_asr_train_progress, labels=vocab),
        get_tb_values=lambda x: [["loss", x[0]]],
        tb_writer=nf.tb_writer,
    )

    checkpointer_callback = nemo.core.CheckpointCallback(
        folder=nf.checkpoint_dir, step_freq=args.checkpoint_save_freq)

    eval_tensors = [loss_e, predictions_e, transcript_e, transcript_len_e]
    eval_callback = nemo.core.EvaluatorCallback(
        eval_tensors=eval_tensors,
        user_iter_callback=partial(process_evaluation_batch, labels=vocab),
        user_epochs_done_callback=process_evaluation_epoch,
        eval_step=args.eval_freq,
        tb_writer=nf.tb_writer)
    callbacks = [train_callback, checkpointer_callback, eval_callback]
    return (loss, eval_tensors, callbacks, total_steps, vocab, log_probs_e,
            encoded_len_e)
Esempio n. 11
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eval_datasets = "/home/sergei/datasets/asr/val/manifest.json"

# Jasper Model definition
from ruamel.yaml import YAML

# Here we will be using separable convolutions
# with 12 blocks (k=12 repeated once r=1 from the picture above)
yaml = YAML(typ="safe")
with open("../../../examples/asr/configs/quartznet15x5_ru.yaml") as f:
    jasper_model_definition = yaml.load(f)
labels = jasper_model_definition['labels']

# Instantiate neural modules
data_layer = nemo_asr.AudioToTextDataLayer(manifest_filepath=train_dataset,
                                           labels=labels,
                                           batch_size=16,
                                           manifest_class=ManifestENRU,
                                           num_workers=8)
data_layer_val = nemo_asr.AudioToTextDataLayer(manifest_filepath=eval_datasets,
                                               labels=labels,
                                               batch_size=1,
                                               shuffle=False,
                                               manifest_class=ManifestENRU,
                                               num_workers=8)

data_preprocessor = nemo_asr.AudioToMelSpectrogramPreprocessor()
spec_augment = nemo_asr.SpectrogramAugmentation(rect_masks=5)

jasper_encoder = nemo_asr.JasperEncoder(
    feat_in=64, **jasper_model_definition['JasperEncoder'])
jasper_encoder.restore_from('./chkp/JasperEncoder-STEP-247400.pt')
Esempio n. 12
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def create_all_dags(args, neural_factory):
    '''
    creates train and eval dags as well as their callbacks
    returns train loss tensor and callbacks'''

    # parse the config files
    yaml = YAML(typ="safe")
    with open(args.model_config) as f:
        quartz_params = yaml.load(f)

    vocab = quartz_params['labels']
    sample_rate = quartz_params['sample_rate']

    # Calculate num_workers for dataloader
    total_cpus = os.cpu_count()
    cpu_per_traindl = max(int(total_cpus / neural_factory.world_size), 1)

    # create data layer for training
    train_dl_params = copy.deepcopy(quartz_params["AudioToTextDataLayer"])
    train_dl_params.update(quartz_params["AudioToTextDataLayer"]["train"])
    del train_dl_params["train"]
    del train_dl_params["eval"]
    # del train_dl_params["normalize_transcripts"]

    data_layer_train = nemo_asr.AudioToTextDataLayer(
        manifest_filepath=args.train_dataset,
        sample_rate=sample_rate,
        labels=vocab,
        batch_size=args.batch_size,
        num_workers=cpu_per_traindl,
        **train_dl_params,
        # normalize_transcripts=False
    )

    N = len(data_layer_train)
    steps_per_epoch = int(
        N / (args.batch_size * args.iter_per_step * args.num_gpus))

    # create separate data layers for eval
    # we need separate eval dags for separate eval datasets
    # but all other modules in these dags will be shared

    eval_dl_params = copy.deepcopy(quartz_params["AudioToTextDataLayer"])
    eval_dl_params.update(quartz_params["AudioToTextDataLayer"]["eval"])
    del eval_dl_params["train"]
    del eval_dl_params["eval"]

    data_layers_eval = []
    if args.eval_datasets:
        for eval_dataset in args.eval_datasets:
            data_layer_eval = nemo_asr.AudioToTextDataLayer(
                manifest_filepath=eval_dataset,
                sample_rate=sample_rate,
                labels=vocab,
                batch_size=args.eval_batch_size,
                num_workers=cpu_per_traindl,
                **eval_dl_params,
            )

            data_layers_eval.append(data_layer_eval)
    else:
        nemo.logging.warning("There were no val datasets passed")

    # create shared modules

    data_preprocessor = nemo_asr.AudioToMelSpectrogramPreprocessor(
        sample_rate=sample_rate,
        **quartz_params["AudioToMelSpectrogramPreprocessor"])

    # (QuartzNet uses the Jasper baseline encoder and decoder)
    encoder = nemo_asr.JasperEncoder(
        feat_in=quartz_params["AudioToMelSpectrogramPreprocessor"]["features"],
        **quartz_params["JasperEncoder"])

    decoder = nemo_asr.JasperDecoderForCTC(
        feat_in=quartz_params["JasperEncoder"]["jasper"][-1]["filters"],
        num_classes=len(vocab))

    ctc_loss = nemo_asr.CTCLossNM(num_classes=len(vocab))

    greedy_decoder = nemo_asr.GreedyCTCDecoder()

    # create augmentation modules (only used for training) if their configs
    # are present

    multiply_batch_config = quartz_params.get('MultiplyBatch', None)
    if multiply_batch_config:
        multiply_batch = nemo_asr.MultiplyBatch(**multiply_batch_config)

    spectr_augment_config = quartz_params.get('SpectrogramAugmentation', None)
    if spectr_augment_config:
        data_spectr_augmentation = nemo_asr.SpectrogramAugmentation(
            **spectr_augment_config)

    # assemble train DAG

    audio_signal_t, a_sig_length_t, \
        transcript_t, transcript_len_t = data_layer_train()

    processed_signal_t, p_length_t = data_preprocessor(
        input_signal=audio_signal_t, length=a_sig_length_t)

    if multiply_batch_config:
        processed_signal_t, p_length_t, transcript_t, transcript_len_t = \
            multiply_batch(
                in_x=processed_signal_t, in_x_len=p_length_t,
                in_y=transcript_t,
                in_y_len=transcript_len_t)

    if spectr_augment_config:
        processed_signal_t = data_spectr_augmentation(
            input_spec=processed_signal_t)

    encoded_t, encoded_len_t = encoder(audio_signal=processed_signal_t,
                                       length=p_length_t)
    log_probs_t = decoder(encoder_output=encoded_t)
    predictions_t = greedy_decoder(log_probs=log_probs_t)
    loss_t = ctc_loss(log_probs=log_probs_t,
                      targets=transcript_t,
                      input_length=encoded_len_t,
                      target_length=transcript_len_t)

    # create train callbacks
    train_callback = nemo.core.SimpleLossLoggerCallback(
        tensors=[loss_t, predictions_t, transcript_t, transcript_len_t],
        print_func=partial(monitor_asr_train_progress, labels=vocab),
        get_tb_values=lambda x: [["loss", x[0]]],
        tb_writer=neural_factory.tb_writer)

    callbacks = [train_callback]

    if args.checkpoint_dir or args.load_dir:
        chpt_callback = nemo.core.CheckpointCallback(
            folder=args.checkpoint_dir,
            load_from_folder=args.load_dir,
            step_freq=args.checkpoint_save_freq)

        callbacks.append(chpt_callback)

    # assemble eval DAGs
    for i, eval_dl in enumerate(data_layers_eval):

        audio_signal_e, a_sig_length_e, transcript_e, transcript_len_e = \
            eval_dl()
        processed_signal_e, p_length_e = data_preprocessor(
            input_signal=audio_signal_e, length=a_sig_length_e)
        encoded_e, encoded_len_e = encoder(audio_signal=processed_signal_e,
                                           length=p_length_e)
        log_probs_e = decoder(encoder_output=encoded_e)
        predictions_e = greedy_decoder(log_probs=log_probs_e)
        loss_e = ctc_loss(log_probs=log_probs_e,
                          targets=transcript_e,
                          input_length=encoded_len_e,
                          target_length=transcript_len_e)

        # create corresponding eval callback
        tagname = os.path.basename(args.eval_datasets[i]).split(".")[0]

        eval_callback = nemo.core.EvaluatorCallback(
            eval_tensors=[
                loss_e, predictions_e, transcript_e, transcript_len_e
            ],
            user_iter_callback=partial(process_evaluation_batch, labels=vocab),
            user_epochs_done_callback=partial(process_evaluation_epoch,
                                              tag=tagname),
            eval_step=args.eval_freq,
            tb_writer=neural_factory.tb_writer)

        callbacks.append(eval_callback)

    return loss_t, callbacks, steps_per_epoch
Esempio n. 13
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    def test_simple_dags(self):
        # module instantiation
        with open("tests/data/jasper_smaller.yaml") as file:
            jasper_model_definition = self.yaml.load(file)
        labels = jasper_model_definition['labels']

        data_layer = nemo_asr.AudioToTextDataLayer(
            manifest_filepath=self.manifest_filepath,
            labels=labels,
            batch_size=4)
        data_preprocessor = nemo_asr.AudioToMelSpectrogramPreprocessor(
            **jasper_model_definition['AudioToMelSpectrogramPreprocessor'])
        jasper_encoder = nemo_asr.JasperEncoder(
            feat_in=jasper_model_definition[
                'AudioToMelSpectrogramPreprocessor']['features'],
            **jasper_model_definition['JasperEncoder'])
        jasper_decoder = nemo_asr.JasperDecoderForCTC(feat_in=1024,
                                                      num_classes=len(labels))
        ctc_loss = nemo_asr.CTCLossNM(num_classes=len(labels))
        greedy_decoder = nemo_asr.GreedyCTCDecoder()

        # DAG definition
        audio_signal, audio_signal_len, transcript, transcript_len = \
            data_layer()
        processed_signal, processed_signal_len = data_preprocessor(
            input_signal=audio_signal, length=audio_signal_len)

        spec_augment = nemo_asr.SpectrogramAugmentation(rect_masks=5)
        aug_signal = spec_augment(input_spec=processed_signal)

        encoded, encoded_len = jasper_encoder(audio_signal=aug_signal,
                                              length=processed_signal_len)
        log_probs = jasper_decoder(encoder_output=encoded)
        predictions = greedy_decoder(log_probs=log_probs)
        loss = ctc_loss(log_probs=log_probs,
                        targets=transcript,
                        input_length=encoded_len,
                        target_length=transcript_len)

        def wrong():
            with open("tests/data/jasper_smaller.yaml") as file:
                jasper_config = self.yaml.load(file)
            labels = jasper_config['labels']

            data_layer = nemo_asr.AudioToTextDataLayer(
                manifest_filepath=self.manifest_filepath,
                labels=labels,
                batch_size=4)
            data_preprocessor = nemo_asr.AudioToMelSpectrogramPreprocessor(
                **jasper_config['AudioToMelSpectrogramPreprocessor'])
            jasper_encoder = nemo_asr.JasperEncoder(
                feat_in=jasper_config['AudioToMelSpectrogramPreprocessor']
                ['features'],
                **jasper_config['JasperEncoder'])
            jasper_decoder = nemo_asr.JasperDecoderForCTC(
                feat_in=1024, num_classes=len(labels))
            # DAG definition
            audio_signal, audio_signal_len, transcript, transcript_len = \
                data_layer()
            processed_signal, processed_signal_len = data_preprocessor(
                input_signal=audio_signal, length=audio_signal_len)

            spec_augment = nemo_asr.SpectrogramAugmentation(rect_masks=5)
            aug_signal = spec_augment(input_spec=processed_signal)

            encoded, encoded_len = jasper_encoder(audio_signal=aug_signal,
                                                  length=processed_signal_len)
            log_probs = jasper_decoder(encoder_output=processed_signal)

        self.assertRaises(NeuralPortNmTensorMismatchError, wrong)
Esempio n. 14
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def create_dag(args, cfg, logger, num_gpus):

    # Defining nodes
    data = nemo_asr.AudioToTextDataLayer(
        manifest_filepath=args.train_dataset,
        labels=cfg['target']['labels'],
        batch_size=cfg['optimization']['batch_size'],
        eos_id=cfg['target']['eos_id'],
        **cfg['AudioToTextDataLayer']['train'])
    data_evals = []
    if args.eval_datasets:
        for val_path in args.eval_datasets:
            data_evals.append(
                nemo_asr.AudioToTextDataLayer(
                    manifest_filepath=val_path,
                    labels=cfg['target']['labels'],
                    batch_size=cfg['inference']['batch_size'],
                    eos_id=cfg['target']['eos_id'],
                    **cfg['AudioToTextDataLayer']['eval']))
    else:
        logger.info("There were no val datasets passed")
    data_preprocessor = nemo_asr.AudioToMelSpectrogramPreprocessor(
        **cfg['AudioToMelSpectrogramPreprocessor'])
    data_augmentation = nemo_asr.SpectrogramAugmentation(
        **cfg['SpectrogramAugmentation'])
    encoder = nemo_asr.JasperEncoder(
        feat_in=cfg["AudioToMelSpectrogramPreprocessor"]["features"],
        **cfg['JasperEncoder'])
    if args.encoder_checkpoint is not None \
            and os.path.exists(args.encoder_checkpoint):
        if cfg['JasperEncoder']['load']:
            encoder.restore_from(args.encoder_checkpoint, args.local_rank)
            logger.info(f'Loaded weights for encoder'
                        f' from {args.encoder_checkpoint}')
        if cfg['JasperEncoder']['freeze']:
            encoder.freeze()
            logger.info(f'Freeze encoder weights')
    connector = nemo_asr.JasperRNNConnector(
        in_channels=cfg['JasperEncoder']['jasper'][-1]['filters'],
        out_channels=cfg['DecoderRNN']['hidden_size'])
    decoder = nemo.backends.pytorch.DecoderRNN(voc_size=len(
        cfg['target']['labels']),
                                               bos_id=cfg['target']['bos_id'],
                                               **cfg['DecoderRNN'])
    if args.decoder_checkpoint is not None \
            and os.path.exists(args.decoder_checkpoint):
        if cfg['DecoderRNN']['load']:
            decoder.restore_from(args.decoder_checkpoint, args.local_rank)
            logger.info(f'Loaded weights for decoder'
                        f' from {args.decoder_checkpoint}')
        if cfg['DecoderRNN']['freeze']:
            decoder.freeze()
            logger.info(f'Freeze decoder weights')
            if cfg['decoder']['unfreeze_attn']:
                for name, param in decoder.attention.named_parameters():
                    param.requires_grad = True
                logger.info(f'Unfreeze decoder attn weights')
    num_data = len(data)
    batch_size = cfg['optimization']['batch_size']
    num_epochs = cfg['optimization']['params']['num_epochs']
    steps_per_epoch = int(num_data / (batch_size * num_gpus))
    total_steps = num_epochs * steps_per_epoch
    vsc = ValueSetterCallback
    tf_callback = ValueSetterCallback(
        decoder,
        'teacher_forcing',
        policies=[vsc.Policy(vsc.Method.Const(1.0), start=0.0, end=1.0)],
        total_steps=total_steps)
    seq_loss = nemo.backends.pytorch.SequenceLoss(
        pad_id=cfg['target']['pad_id'],
        smoothing_coef=cfg['optimization']['smoothing_coef'],
        sample_wise=cfg['optimization']['sample_wise'])
    se_callback = ValueSetterCallback(seq_loss,
                                      'smoothing_coef',
                                      policies=[
                                          vsc.Policy(vsc.Method.Const(
                                              seq_loss.smoothing_coef),
                                                     start=0.0,
                                                     end=1.0),
                                      ],
                                      total_steps=total_steps)
    beam_search = nemo.backends.pytorch.BeamSearch(
        decoder=decoder,
        pad_id=cfg['target']['pad_id'],
        bos_id=cfg['target']['bos_id'],
        eos_id=cfg['target']['eos_id'],
        max_len=cfg['target']['max_len'],
        beam_size=cfg['inference']['beam_size'])
    uf_callback = UnfreezeCallback(
        [encoder, decoder], start_epoch=cfg['optimization']['start_unfreeze'])
    saver_callback = nemo.core.ModuleSaverCallback(
        save_modules_list=[encoder, connector, decoder],
        folder=args.checkpoint_dir,
        step_freq=args.eval_freq)

    # Creating DAG
    audios, audio_lens, transcripts, _ = data()
    processed_audios, processed_audio_lens = data_preprocessor(
        input_signal=audios, length=audio_lens)
    augmented_spec = data_augmentation(input_spec=processed_audios)
    encoded, _ = encoder(audio_signal=augmented_spec,
                         length=processed_audio_lens)
    encoded = connector(tensor=encoded)
    log_probs, _ = decoder(targets=transcripts, encoder_outputs=encoded)
    train_loss = seq_loss(log_probs=log_probs, targets=transcripts)
    evals = []
    for i, data_eval in enumerate(data_evals):
        audios, audio_lens, transcripts, _ = data_eval()
        processed_audios, processed_audio_lens = data_preprocessor(
            input_signal=audios, length=audio_lens)
        encoded, _ = encoder(audio_signal=processed_audios,
                             length=processed_audio_lens)
        encoded = connector(tensor=encoded)
        log_probs, _ = decoder(targets=transcripts, encoder_outputs=encoded)
        loss = seq_loss(log_probs=log_probs, targets=transcripts)
        predictions, aw = beam_search(encoder_outputs=encoded)
        evals.append((args.eval_datasets[i], (loss, log_probs, transcripts,
                                              predictions, aw)))

    # Update config
    cfg['num_params'] = {
        'encoder': encoder.num_weights,
        'connector': connector.num_weights,
        'decoder': decoder.num_weights
    }
    cfg['num_params']['total'] = sum(cfg['num_params'].values())
    cfg['input']['train'] = {'num_data': num_data}
    cfg['optimization']['steps_per_epoch'] = steps_per_epoch
    cfg['optimization']['total_steps'] = total_steps

    return (train_loss, evals), cfg, [
        tf_callback, se_callback, uf_callback, saver_callback
    ]
Esempio n. 15
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def create_dag(args, cfg, num_gpus):
    # Defining nodes
    data = nemo_asr.TranscriptDataLayer(
        path=args.train_dataset,
        labels=cfg['target']['labels'],
        eos_id=cfg['target']['eos_id'],
        pad_id=cfg['target']['pad_id'],
        batch_size=cfg['optimization']['batch_size'],
        drop_last=True,
    )
    data_eval = nemo_asr.AudioToTextDataLayer(
        manifest_filepath=args.eval_datasets,
        labels=cfg['target']['labels'],
        eos_id=cfg['target']['eos_id'],
        batch_size=cfg['inference']['batch_size'],
        load_audio=False
    )
    decoder = nemo.backends.pytorch.DecoderRNN(
        voc_size=len(cfg['target']['labels']),
        bos_id=cfg['target']['bos_id'],
        **cfg['DecoderRNN']
    )
    num_data = len(data)
    batch_size = cfg['optimization']['batch_size']
    num_epochs = cfg['optimization']['params']['num_epochs']
    steps_per_epoch = int(num_data / (batch_size))
    total_steps = num_epochs * steps_per_epoch
    vsc = ValueSetterCallback
    tf_callback = ValueSetterCallback(
        decoder, 'teacher_forcing',
        policies=[
            vsc.Policy(vsc.Method.Const(1.0), start=0.0, end=1.0),
        ],
        total_steps=total_steps
    )
    seq_loss = nemo.backends.pytorch.SequenceLoss(
        pad_id=cfg['target']['pad_id'],
        smoothing_coef=cfg['optimization']['smoothing_coef']
    )
    saver_callback = nemo.core.ModuleSaverCallback(
        save_modules_list=[decoder],
        folder=args.checkpoint_dir,
        step_freq=args.checkpoint_save_freq
    )

    # Creating DAG
    texts, _ = data()
    log_probs, _ = decoder(
        targets=texts
    )
    train_loss = seq_loss(
        log_probs=log_probs,
        targets=texts
    )
    evals = []
    _, _, texts, _ = data_eval()
    log_probs, _ = decoder(
        targets=texts
    )
    eval_loss = seq_loss(
        log_probs=log_probs,
        targets=texts
    )
    evals.append((args.eval_datasets,
                  (eval_loss, log_probs, texts)))

    # Update config
    cfg['num_params'] = {'decoder': decoder.num_weights}
    cfg['num_params']['total'] = sum(cfg['num_params'].values())
    cfg['input']['train'] = {'num_data': num_data}
    cfg['optimization']['steps_per_epoch'] = steps_per_epoch
    cfg['optimization']['total_steps'] = total_steps

    return (train_loss, evals), cfg, [tf_callback, saver_callback]
Esempio n. 16
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def create_all_dags(args, neural_factory):
    logger = neural_factory.logger
    yaml = YAML(typ="safe")
    with open(args.model_config) as f:
        jasper_params = yaml.load(f)
    vocab = jasper_params['labels']
    sample_rate = jasper_params['sample_rate']

    # Calculate num_workers for dataloader
    total_cpus = os.cpu_count()
    cpu_per_traindl = max(int(total_cpus / neural_factory.world_size), 1)

    # perturb_config = jasper_params.get('perturb', None)
    train_dl_params = copy.deepcopy(jasper_params["AudioToTextDataLayer"])
    train_dl_params.update(jasper_params["AudioToTextDataLayer"]["train"])
    del train_dl_params["train"]
    del train_dl_params["eval"]
    # del train_dl_params["normalize_transcripts"]

    data_layer = nemo_asr.AudioToTextDataLayer(
        manifest_filepath=args.train_dataset,
        sample_rate=sample_rate,
        labels=vocab,
        batch_size=args.batch_size,
        num_workers=cpu_per_traindl,
        **train_dl_params,
        # normalize_transcripts=False
    )

    N = len(data_layer)
    steps_per_epoch = int(
        N / (args.batch_size * args.iter_per_step * args.num_gpus))
    logger.info('Have {0} examples to train on.'.format(N))

    data_preprocessor = nemo_asr.AudioToMelSpectrogramPreprocessor(
        sample_rate=sample_rate,
        **jasper_params["AudioToMelSpectrogramPreprocessor"])

    multiply_batch_config = jasper_params.get('MultiplyBatch', None)
    if multiply_batch_config:
        multiply_batch = nemo_asr.MultiplyBatch(**multiply_batch_config)

    spectr_augment_config = jasper_params.get('SpectrogramAugmentation', None)
    if spectr_augment_config:
        data_spectr_augmentation = nemo_asr.SpectrogramAugmentation(
            **spectr_augment_config)

    eval_dl_params = copy.deepcopy(jasper_params["AudioToTextDataLayer"])
    eval_dl_params.update(jasper_params["AudioToTextDataLayer"]["eval"])
    del eval_dl_params["train"]
    del eval_dl_params["eval"]
    data_layers_eval = []

    if args.eval_datasets:
        for eval_datasets in args.eval_datasets:
            data_layer_eval = nemo_asr.AudioToTextDataLayer(
                manifest_filepath=eval_datasets,
                sample_rate=sample_rate,
                labels=vocab,
                batch_size=args.eval_batch_size,
                num_workers=cpu_per_traindl,
                **eval_dl_params,
            )

            data_layers_eval.append(data_layer_eval)
    else:
        neural_factory.logger.info("There were no val datasets passed")

    jasper_encoder = nemo_asr.JasperEncoder(
        feat_in=jasper_params["AudioToMelSpectrogramPreprocessor"]["features"],
        **jasper_params["JasperEncoder"])

    jasper_decoder = nemo_asr.JasperDecoderForCTC(
        feat_in=jasper_params["JasperEncoder"]["jasper"][-1]["filters"],
        num_classes=len(vocab),
        factory=neural_factory)

    ctc_loss = nemo_asr.CTCLossNM(
        num_classes=len(vocab))

    greedy_decoder = nemo_asr.GreedyCTCDecoder()

    logger.info('================================')
    logger.info(
        f"Number of parameters in encoder: {jasper_encoder.num_weights}")
    logger.info(
        f"Number of parameters in decoder: {jasper_decoder.num_weights}")
    logger.info(
        f"Total number of parameters in decoder: "
        f"{jasper_decoder.num_weights + jasper_encoder.num_weights}")
    logger.info('================================')

    # Train DAG
    audio_signal_t, a_sig_length_t, \
        transcript_t, transcript_len_t = data_layer()
    processed_signal_t, p_length_t = data_preprocessor(
        input_signal=audio_signal_t,
        length=a_sig_length_t)

    if multiply_batch_config:
        processed_signal_t, p_length_t, transcript_t, transcript_len_t = \
            multiply_batch(
                in_x=processed_signal_t, in_x_len=p_length_t,
                in_y=transcript_t,
                in_y_len=transcript_len_t)

    if spectr_augment_config:
        processed_signal_t = data_spectr_augmentation(
            input_spec=processed_signal_t)

    encoded_t, encoded_len_t = jasper_encoder(
        audio_signal=processed_signal_t,
        length=p_length_t)
    log_probs_t = jasper_decoder(encoder_output=encoded_t)
    predictions_t = greedy_decoder(log_probs=log_probs_t)
    loss_t = ctc_loss(
        log_probs=log_probs_t,
        targets=transcript_t,
        input_length=encoded_len_t,
        target_length=transcript_len_t)

    # Callbacks needed to print info to console and Tensorboard
    train_callback = nemo.core.SimpleLossLoggerCallback(
        tensors=[loss_t, predictions_t, transcript_t, transcript_len_t],
        print_func=partial(
            monitor_asr_train_progress,
            labels=vocab,
            logger=logger),
        get_tb_values=lambda x: [("loss", x[0])],
        tb_writer=neural_factory.tb_writer,
    )

    chpt_callback = nemo.core.CheckpointCallback(
        folder=neural_factory.checkpoint_dir,
        step_freq=args.checkpoint_save_freq)

    callbacks = [train_callback, chpt_callback]

    # assemble eval DAGs
    for i, eval_dl in enumerate(data_layers_eval):
        audio_signal_e, a_sig_length_e, transcript_e, transcript_len_e = \
            eval_dl()
        processed_signal_e, p_length_e = data_preprocessor(
            input_signal=audio_signal_e,
            length=a_sig_length_e)
        encoded_e, encoded_len_e = jasper_encoder(
            audio_signal=processed_signal_e,
            length=p_length_e)
        log_probs_e = jasper_decoder(encoder_output=encoded_e)
        predictions_e = greedy_decoder(log_probs=log_probs_e)
        loss_e = ctc_loss(
            log_probs=log_probs_e,
            targets=transcript_e,
            input_length=encoded_len_e,
            target_length=transcript_len_e)

        # create corresponding eval callback
        tagname = os.path.basename(args.eval_datasets[i]).split(".")[0]
        eval_callback = nemo.core.EvaluatorCallback(
            eval_tensors=[loss_e, predictions_e,
                          transcript_e, transcript_len_e],
            user_iter_callback=partial(
                process_evaluation_batch,
                labels=vocab),
            user_epochs_done_callback=partial(
                process_evaluation_epoch,
                tag=tagname,
                logger=logger),
            eval_step=args.eval_freq,
            tb_writer=neural_factory.tb_writer)

        callbacks.append(eval_callback)
    return loss_t, callbacks, steps_per_epoch
# Path to our validation manifest
eval_datasets = "./dataset/label/scripts.json"

# Jasper Model definition
from ruamel.yaml import YAML

# Here we will be using separable convolutions
# with 12 blocks (k=12 repeated once r=1 from the picture above)
yaml = YAML(typ="safe")
with open("./NeMo/examples/asr/configs/jasper12x1SEP.yaml") as f:
    jasper_model_definition = yaml.load(f)
labels = jasper_model_definition['labels']

# Instantiate neural modules
data_layer = nemo_asr.AudioToTextDataLayer(manifest_filepath=train_dataset,
                                           labels=labels,
                                           batch_size=32)
data_layer_val = nemo_asr.AudioToTextDataLayer(manifest_filepath=eval_datasets,
                                               labels=labels,
                                               batch_size=32,
                                               shuffle=False)

data_preprocessor = nemo_asr.AudioToMelSpectrogramPreprocessor()
spec_augment = nemo_asr.SpectrogramAugmentation(rect_masks=5)

jasper_encoder = nemo_asr.JasperEncoder(
    feat_in=64, **jasper_model_definition['JasperEncoder'])
jasper_decoder = nemo_asr.JasperDecoderForCTC(feat_in=1024,
                                              num_classes=len(labels))
ctc_loss = nemo_asr.CTCLossNM(num_classes=len(labels))
greedy_decoder = nemo_asr.GreedyCTCDecoder()