예제 #1
0
def train(args, run_opts):
    """ The main function for training.

    Args:
        args: a Namespace object with the required parameters
            obtained from the function process_args()
        run_opts: RunOpts object obtained from the process_args()
    """

    arg_string = pprint.pformat(vars(args))
    logger.info("Arguments for the experiment\n{0}".format(arg_string))

    # Set some variables.
    feat_dim = common_lib.get_feat_dim(args.feat_dir)
    ivector_dim = common_lib.get_ivector_dim(args.online_ivector_dir)
    ivector_id = common_lib.get_ivector_extractor_id(args.online_ivector_dir)

    if args.input_model is None:
        config_dir = '{0}/configs'.format(args.dir)
        var_file = '{0}/vars'.format(config_dir)

        variables = common_train_lib.parse_generic_config_vars_file(var_file)
    else:
        # If args.input_model is specified, the model left and right contexts
        # are computed using input_model.
        variables = common_train_lib.get_input_model_info(args.input_model)

    # Set some variables.
    try:
        model_left_context = variables['model_left_context']
        model_right_context = variables['model_right_context']
    except KeyError as e:
        raise Exception("KeyError {0}: Variables need to be defined in "
                        "{1}".format(str(e), '{0}/configs'.format(args.dir)))

    left_context = args.chunk_left_context + model_left_context
    right_context = args.chunk_right_context + model_right_context
    left_context_initial = (args.chunk_left_context_initial + model_left_context if
                            args.chunk_left_context_initial >= 0 else -1)
    right_context_final = (args.chunk_right_context_final + model_right_context if
                           args.chunk_right_context_final >= 0 else -1)

    # Initialize as "raw" nnet, prior to training the LDA-like preconditioning
    # matrix.  This first config just does any initial splicing that we do;
    # we do this as it's a convenient way to get the stats for the 'lda-like'
    # transform.

    if (args.stage <= -4) and os.path.exists(args.dir+"/configs/init.config") and \
       (args.input_model is None):
        logger.info("Initializing the network for computing the LDA stats")
        common_lib.execute_command(
            """{command} {dir}/log/nnet_init.log \
                    nnet3-init --srand=-2 {dir}/configs/init.config \
                    {dir}/init.raw""".format(command=run_opts.command,
                                             dir=args.dir))

    default_egs_dir = '{0}/egs'.format(args.dir)
    if (args.stage <= -3) and args.egs_dir is None:
        logger.info("Generating egs")

        if args.use_dense_targets:
            target_type = "dense"
            try:
                num_targets = int(variables['num_targets'])
                if (common_lib.get_feat_dim_from_scp(args.targets_scp)
                        != num_targets):
                    raise Exception("Mismatch between num-targets provided to "
                                    "script vs configs")
            except KeyError as e:
                num_targets = -1
        else:
            target_type = "sparse"
            try:
                num_targets = int(variables['num_targets'])
            except KeyError as e:
                raise Exception("KeyError {0}: Variables need to be defined "
                                "in {1}".format(
                                    str(e), '{0}/configs'.format(args.dir)))

        train_lib.raw_model.generate_egs_using_targets(
            data=args.feat_dir, targets_scp=args.targets_scp,
            egs_dir=default_egs_dir,
            left_context=left_context,
            right_context=right_context,
            left_context_initial=left_context_initial,
            right_context_final=right_context_final,
            run_opts=run_opts,
            frames_per_eg_str=args.chunk_width,
            srand=args.srand,
            egs_opts=args.egs_opts,
            cmvn_opts=args.cmvn_opts,
            online_ivector_dir=args.online_ivector_dir,
            samples_per_iter=args.samples_per_iter,
            stage=args.egs_stage,
            target_type=target_type,
            num_targets=num_targets)

    if args.egs_dir is None:
        egs_dir = default_egs_dir
    else:
        egs_dir = args.egs_dir

    [egs_left_context, egs_right_context,
     frames_per_eg_str, num_archives] = (
         common_train_lib.verify_egs_dir(egs_dir, feat_dim,
                                         ivector_dim, ivector_id,
                                         left_context, right_context,
                                         left_context_initial,
                                         right_context_final))
    if args.chunk_width != frames_per_eg_str:
        raise Exception("mismatch between --egs.chunk-width and the frames_per_eg "
                        "in the egs dir {0} vs {1}".format(args.chunk_width,
                                                           frames_per_eg_str))

    if args.num_jobs_final > num_archives:
        raise Exception('num_jobs_final cannot exceed the number of archives '
                        'in the egs directory')

    # copy the properties of the egs to dir for
    # use during decoding
    common_train_lib.copy_egs_properties_to_exp_dir(egs_dir, args.dir)

    if args.stage <= -2 and os.path.exists(args.dir+"/configs/init.config") and \
       (args.input_model is None):
        logger.info('Computing the preconditioning matrix for input features')

        train_lib.common.compute_preconditioning_matrix(
            args.dir, egs_dir, num_archives, run_opts,
            max_lda_jobs=args.max_lda_jobs,
            rand_prune=args.rand_prune)

    if args.stage <= -1:
        logger.info("Preparing the initial network.")
        common_train_lib.prepare_initial_network(args.dir, run_opts, args.srand, args.input_model)

    # set num_iters so that as close as possible, we process the data
    # $num_epochs times, i.e. $num_iters*$avg_num_jobs) ==
    # $num_epochs*$num_archives, where
    # avg_num_jobs=(num_jobs_initial+num_jobs_final)/2.
    num_archives_to_process = int(args.num_epochs * num_archives)
    num_archives_processed = 0
    num_iters = int((num_archives_to_process * 2) / (args.num_jobs_initial + args.num_jobs_final))

    # If do_final_combination is True, compute the set of models_to_combine.
    # Otherwise, models_to_combine will be none.
    if args.do_final_combination:
        models_to_combine = common_train_lib.get_model_combine_iters(
            num_iters, args.num_epochs,
            num_archives, args.max_models_combine,
            args.num_jobs_final)
    else:
        models_to_combine = None

    if (os.path.exists('{0}/valid_diagnostic.scp'.format(egs_dir))):
        if (os.path.exists('{0}/valid_diagnostic.egs'.format(egs_dir))):
            raise Exception('both {0}/valid_diagnostic.egs and '
                            '{0}/valid_diagnostic.scp exist.'
                            'This script expects only one of them to exist.'
                            ''.format(egs_dir))
        use_multitask_egs = True
    else:
        if (not os.path.exists('{0}/valid_diagnostic.egs'
                               ''.format(egs_dir))):
            raise Exception('neither {0}/valid_diagnostic.egs nor '
                            '{0}/valid_diagnostic.scp exist.'
                            'This script expects one of them.'
                            ''.format(egs_dir))
        use_multitask_egs = False

    min_deriv_time = None
    max_deriv_time_relative = None
    if args.deriv_truncate_margin is not None:
        min_deriv_time = -args.deriv_truncate_margin - model_left_context
        max_deriv_time_relative = \
           args.deriv_truncate_margin + model_right_context

    logger.info("Training will run for {0} epochs = "
                "{1} iterations".format(args.num_epochs, num_iters))

    for iter in range(num_iters):
        if (args.exit_stage is not None) and (iter == args.exit_stage):
            logger.info("Exiting early due to --exit-stage {0}".format(iter))
            return

        current_num_jobs = common_train_lib.get_current_num_jobs(
            iter, num_iters,
            args.num_jobs_initial, args.num_jobs_step, args.num_jobs_final)

        if args.stage <= iter:
            model_file = "{dir}/{iter}.raw".format(dir=args.dir, iter=iter)

            lrate = common_train_lib.get_learning_rate(iter, current_num_jobs,
                                                       num_iters,
                                                       num_archives_processed,
                                                       num_archives_to_process,
                                                       args.initial_effective_lrate,
                                                       args.final_effective_lrate)

            # shrinkage_value is a scale on the parameters.
            shrinkage_value = 1.0 - (args.proportional_shrink * lrate)
            if shrinkage_value <= 0.5:
                raise Exception("proportional-shrink={0} is too large, it gives "
                                "shrink-value={1}".format(args.proportional_shrink,
                                                          shrinkage_value))
            if args.shrink_value < shrinkage_value:
                shrinkage_value = (args.shrink_value
                                   if common_train_lib.should_do_shrinkage(
                                           iter, model_file,
                                           args.shrink_saturation_threshold,
                                           get_raw_nnet_from_am=False)
                                   else shrinkage_value)

            percent = num_archives_processed * 100.0 / num_archives_to_process
            epoch = (num_archives_processed * args.num_epochs
                     / num_archives_to_process)
            shrink_info_str = ''
            if shrinkage_value != 1.0:
                shrink_info_str = 'shrink: {0:0.5f}'.format(shrinkage_value)
            logger.info("Iter: {0}/{1}   Jobs: {2}   "
                        "Epoch: {3:0.2f}/{4:0.1f} ({5:0.1f}% complete)   "
                        "lr: {6:0.6f}   {7}".format(iter, num_iters - 1,
                                                    current_num_jobs,
                                                    epoch, args.num_epochs,
                                                    percent,
                                                    lrate, shrink_info_str))

            train_lib.common.train_one_iteration(
                dir=args.dir,
                iter=iter,
                srand=args.srand,
                egs_dir=egs_dir,
                num_jobs=current_num_jobs,
                num_archives_processed=num_archives_processed,
                num_archives=num_archives,
                learning_rate=lrate,
                dropout_edit_string=common_train_lib.get_dropout_edit_string(
                    args.dropout_schedule,
                    float(num_archives_processed) / num_archives_to_process,
                    iter),
                train_opts=' '.join(args.train_opts),
                shrinkage_value=shrinkage_value,
                minibatch_size_str=args.num_chunk_per_minibatch,
                min_deriv_time=min_deriv_time,
                max_deriv_time_relative=max_deriv_time_relative,
                momentum=args.momentum,
                max_param_change=args.max_param_change,
                shuffle_buffer_size=args.shuffle_buffer_size,
                run_opts=run_opts,
                get_raw_nnet_from_am=False,
                use_multitask_egs=use_multitask_egs,
                compute_per_dim_accuracy=args.compute_per_dim_accuracy)

            if args.cleanup:
                # do a clean up everythin but the last 2 models, under certain
                # conditions
                common_train_lib.remove_model(
                    args.dir, iter-2, num_iters, models_to_combine,
                    args.preserve_model_interval,
                    get_raw_nnet_from_am=False)

            if args.email is not None:
                reporting_iter_interval = num_iters * args.reporting_interval
                if iter % reporting_iter_interval == 0:
                    # lets do some reporting
                    [report, times, data] = (
                        nnet3_log_parse.generate_acc_logprob_report(args.dir))
                    message = report
                    subject = ("Update : Expt {dir} : "
                               "Iter {iter}".format(dir=args.dir, iter=iter))
                    common_lib.send_mail(message, subject, args.email)

        num_archives_processed = num_archives_processed + current_num_jobs

    if args.stage <= num_iters:
        if args.do_final_combination:
            logger.info("Doing final combination to produce final.raw")
            train_lib.common.combine_models(
                dir=args.dir, num_iters=num_iters,
                models_to_combine=models_to_combine, egs_dir=egs_dir,
                minibatch_size_str=args.num_chunk_per_minibatch,
                run_opts=run_opts, chunk_width=args.chunk_width,
                get_raw_nnet_from_am=False,
                compute_per_dim_accuracy=args.compute_per_dim_accuracy,
                max_objective_evaluations=args.max_objective_evaluations,
                use_multitask_egs=use_multitask_egs)
        else:
            common_lib.force_symlink("{0}.raw".format(num_iters),
                                     "{0}/final.raw".format(args.dir))

    if args.compute_average_posteriors and args.stage <= num_iters + 1:
        logger.info("Getting average posterior for purposes of "
                    "adjusting the priors.")
        train_lib.common.compute_average_posterior(
            dir=args.dir, iter='final', egs_dir=egs_dir,
            num_archives=num_archives,
            prior_subset_size=args.prior_subset_size, run_opts=run_opts,
            get_raw_nnet_from_am=False)

    if args.cleanup:
        logger.info("Cleaning up the experiment directory "
                    "{0}".format(args.dir))
        remove_egs = args.remove_egs
        if args.egs_dir is not None:
            # this egs_dir was not created by this experiment so we will not
            # delete it
            remove_egs = False

        common_train_lib.clean_nnet_dir(
            nnet_dir=args.dir, num_iters=num_iters, egs_dir=egs_dir,
            preserve_model_interval=args.preserve_model_interval,
            remove_egs=remove_egs,
            get_raw_nnet_from_am=False)

    # do some reporting
    [report, times, data] = nnet3_log_parse.generate_acc_logprob_report(args.dir)
    if args.email is not None:
        common_lib.send_mail(report, "Update : Expt {0} : "
                                     "complete".format(args.dir), args.email)

    with open("{dir}/accuracy.report".format(dir=args.dir), "w") as f:
        f.write(report)

    common_lib.execute_command("subtools/kaldi/steps/info/nnet3_dir_info.pl "
                               "{0}".format(args.dir))
예제 #2
0
def train(args, run_opts):
    """ The main function for training.

    Args:
        args: a Namespace object with the required parameters
            obtained from the function process_args()
        run_opts: RunOpts object obtained from the process_args()
    """

    arg_string = pprint.pformat(vars(args))
    logger.info("Arguments for the experiment\n{0}".format(arg_string))

    # Set some variables.

    # note, feat_dim gets set to 0 if args.feat_dir is unset (None).
    feat_dim = common_lib.get_feat_dim(args.feat_dir)
    ivector_dim = common_lib.get_ivector_dim(args.online_ivector_dir)
    ivector_id = common_lib.get_ivector_extractor_id(args.online_ivector_dir)

    config_dir = '{0}/configs'.format(args.dir)
    var_file = '{0}/vars'.format(config_dir)

    variables = common_train_lib.parse_generic_config_vars_file(var_file)

    # Set some variables.
    try:
        model_left_context = variables['model_left_context']
        model_right_context = variables['model_right_context']

    except KeyError as e:
        raise Exception("KeyError {0}: Variables need to be defined in "
                        "{1}".format(str(e), '{0}/configs'.format(args.dir)))

    left_context = model_left_context
    right_context = model_right_context

    # Initialize as "raw" nnet, prior to training the LDA-like preconditioning
    # matrix.  This first config just does any initial splicing that we do;
    # we do this as it's a convenient way to get the stats for the 'lda-like'
    # transform.
    if (args.stage <= -5) and os.path.exists(args.dir +
                                             "/configs/init.config"):
        logger.info("Initializing the network for computing the LDA stats")
        common_lib.execute_command("""{command} {dir}/log/nnet_init.log \
                    nnet3-init --srand=-2 {dir}/configs/init.config \
                    {dir}/init.raw""".format(command=run_opts.command,
                                             dir=args.dir))

    default_egs_dir = '{0}/egs'.format(args.dir)
    if (args.stage <= -4) and args.egs_dir is None:
        if args.targets_scp is None or args.feat_dir is None:
            raise Exception(
                "If you don't supply the --egs-dir option, the "
                "--targets-scp and --feat-dir options are required.")

        logger.info("Generating egs")

        if args.use_dense_targets:
            target_type = "dense"
            try:
                num_targets = int(variables['num_targets'])
                if (common_lib.get_feat_dim_from_scp(args.targets_scp) !=
                        num_targets):
                    raise Exception("Mismatch between num-targets provided to "
                                    "script vs configs")
            except KeyError as e:
                num_targets = -1
        else:
            target_type = "sparse"
            try:
                num_targets = int(variables['num_targets'])
            except KeyError as e:
                raise Exception("KeyError {0}: Variables need to be defined "
                                "in {1}".format(str(e), '{0}/configs'.format(
                                    args.dir)))

        train_lib.raw_model.generate_egs_using_targets(
            data=args.feat_dir,
            targets_scp=args.targets_scp,
            egs_dir=default_egs_dir,
            left_context=left_context,
            right_context=right_context,
            run_opts=run_opts,
            frames_per_eg_str=str(args.frames_per_eg),
            srand=args.srand,
            egs_opts=args.egs_opts,
            cmvn_opts=args.cmvn_opts,
            online_ivector_dir=args.online_ivector_dir,
            samples_per_iter=args.samples_per_iter,
            transform_dir=args.transform_dir,
            stage=args.egs_stage,
            target_type=target_type,
            num_targets=num_targets)

    if args.egs_dir is None:
        egs_dir = default_egs_dir
    else:
        egs_dir = args.egs_dir

    [egs_left_context, egs_right_context, frames_per_eg_str,
     num_archives] = (common_train_lib.verify_egs_dir(egs_dir, feat_dim,
                                                      ivector_dim, ivector_id,
                                                      left_context,
                                                      right_context))
    assert str(args.frames_per_eg) == frames_per_eg_str

    if args.num_jobs_final > num_archives:
        raise Exception('num_jobs_final cannot exceed the number of archives '
                        'in the egs directory')

    # copy the properties of the egs to dir for
    # use during decoding
    common_train_lib.copy_egs_properties_to_exp_dir(egs_dir, args.dir)

    if args.stage <= -3 and os.path.exists(args.dir + "/configs/init.config"):
        logger.info('Computing the preconditioning matrix for input features')

        train_lib.common.compute_preconditioning_matrix(
            args.dir,
            egs_dir,
            num_archives,
            run_opts,
            max_lda_jobs=args.max_lda_jobs,
            rand_prune=args.rand_prune)

    if args.stage <= -1:
        logger.info("Preparing the initial network.")
        common_train_lib.prepare_initial_network(args.dir, run_opts)

    # set num_iters so that as close as possible, we process the data
    # $num_epochs times, i.e. $num_iters*$avg_num_jobs) ==
    # $num_epochs*$num_archives, where
    # avg_num_jobs=(num_jobs_initial+num_jobs_final)/2.
    num_archives_expanded = num_archives * args.frames_per_eg
    num_archives_to_process = int(args.num_epochs * num_archives_expanded)
    num_archives_processed = 0
    num_iters = ((num_archives_to_process * 2) /
                 (args.num_jobs_initial + args.num_jobs_final))

    # If do_final_combination is True, compute the set of models_to_combine.
    # Otherwise, models_to_combine will be none.
    if args.do_final_combination:
        models_to_combine = common_train_lib.get_model_combine_iters(
            num_iters, args.num_epochs, num_archives_expanded,
            args.max_models_combine, args.num_jobs_final)
    else:
        models_to_combine = None

    if os.path.exists('{0}/valid_diagnostic.scp'.format(egs_dir)):
        if os.path.exists('{0}/valid_diagnostic.egs'.format(egs_dir)):
            raise Exception('both {0}/valid_diagnostic.egs and '
                            '{0}/valid_diagnostic.scp exist.'
                            'This script expects only one of them to exist.'
                            ''.format(egs_dir))
        use_multitask_egs = True
    else:
        if not os.path.exists('{0}/valid_diagnostic.egs'.format(egs_dir)):
            raise Exception('neither {0}/valid_diagnostic.egs nor '
                            '{0}/valid_diagnostic.scp exist.'
                            'This script expects one of them.'
                            ''.format(egs_dir))
        use_multitask_egs = False

    logger.info("Training will run for {0} epochs = "
                "{1} iterations".format(args.num_epochs, num_iters))

    for iter in range(num_iters):
        if (args.exit_stage is not None) and (iter == args.exit_stage):
            logger.info("Exiting early due to --exit-stage {0}".format(iter))
            return
        current_num_jobs = int(0.5 + args.num_jobs_initial +
                               (args.num_jobs_final - args.num_jobs_initial) *
                               float(iter) / num_iters)

        if args.stage <= iter:
            lrate = common_train_lib.get_learning_rate(
                iter, current_num_jobs, num_iters, num_archives_processed,
                num_archives_to_process, args.initial_effective_lrate,
                args.final_effective_lrate)

            shrinkage_value = 1.0 - (args.proportional_shrink * lrate)
            if shrinkage_value <= 0.5:
                raise Exception(
                    "proportional-shrink={0} is too large, it gives "
                    "shrink-value={1}".format(args.proportional_shrink,
                                              shrinkage_value))

            train_lib.common.train_one_iteration(
                dir=args.dir,
                iter=iter,
                srand=args.srand,
                egs_dir=egs_dir,
                num_jobs=current_num_jobs,
                num_archives_processed=num_archives_processed,
                num_archives=num_archives,
                learning_rate=lrate,
                dropout_edit_string=common_train_lib.get_dropout_edit_string(
                    args.dropout_schedule,
                    float(num_archives_processed) / num_archives_to_process,
                    iter),
                minibatch_size_str=args.minibatch_size,
                frames_per_eg=args.frames_per_eg,
                momentum=args.momentum,
                max_param_change=args.max_param_change,
                shrinkage_value=shrinkage_value,
                shuffle_buffer_size=args.shuffle_buffer_size,
                run_opts=run_opts,
                get_raw_nnet_from_am=False,
                image_augmentation_opts=args.image_augmentation_opts,
                use_multitask_egs=use_multitask_egs,
                backstitch_training_scale=args.backstitch_training_scale,
                backstitch_training_interval=args.backstitch_training_interval)

            if args.cleanup:
                # do a clean up everything but the last 2 models, under certain
                # conditions
                common_train_lib.remove_model(args.dir,
                                              iter - 2,
                                              num_iters,
                                              models_to_combine,
                                              args.preserve_model_interval,
                                              get_raw_nnet_from_am=False)

            if args.email is not None:
                reporting_iter_interval = num_iters * args.reporting_interval
                if iter % reporting_iter_interval == 0:
                    # lets do some reporting
                    [report, times,
                     data] = (nnet3_log_parse.generate_acc_logprob_report(
                         args.dir))
                    message = report
                    subject = ("Update : Expt {dir} : "
                               "Iter {iter}".format(dir=args.dir, iter=iter))
                    common_lib.send_mail(message, subject, args.email)

        num_archives_processed = num_archives_processed + current_num_jobs

    if args.stage <= num_iters:
        if args.do_final_combination:
            logger.info("Doing final combination to produce final.raw")
            train_lib.common.combine_models(
                dir=args.dir,
                num_iters=num_iters,
                models_to_combine=models_to_combine,
                egs_dir=egs_dir,
                minibatch_size_str=args.minibatch_size,
                run_opts=run_opts,
                get_raw_nnet_from_am=False,
                max_objective_evaluations=args.max_objective_evaluations,
                use_multitask_egs=use_multitask_egs)
        else:
            common_lib.force_symlink("{0}.raw".format(num_iters),
                                     "{0}/final.raw".format(args.dir))

    if args.compute_average_posteriors and args.stage <= num_iters + 1:
        logger.info("Getting average posterior for output-node 'output'.")
        train_lib.common.compute_average_posterior(
            dir=args.dir,
            iter='final',
            egs_dir=egs_dir,
            num_archives=num_archives,
            prior_subset_size=args.prior_subset_size,
            run_opts=run_opts,
            get_raw_nnet_from_am=False)

    if args.cleanup:
        logger.info("Cleaning up the experiment directory "
                    "{0}".format(args.dir))
        remove_egs = args.remove_egs
        if args.egs_dir is not None:
            # this egs_dir was not created by this experiment so we will not
            # delete it
            remove_egs = False

        common_train_lib.clean_nnet_dir(
            nnet_dir=args.dir,
            num_iters=num_iters,
            egs_dir=egs_dir,
            preserve_model_interval=args.preserve_model_interval,
            remove_egs=remove_egs,
            get_raw_nnet_from_am=False)

    # do some reporting
    outputs_list = common_train_lib.get_outputs_list(
        "{0}/final.raw".format(args.dir), get_raw_nnet_from_am=False)
    if 'output' in outputs_list:
        [report, times,
         data] = nnet3_log_parse.generate_acc_logprob_report(args.dir)
        if args.email is not None:
            common_lib.send_mail(
                report, "Update : Expt {0} : "
                "complete".format(args.dir), args.email)

        with open(
                "{dir}/accuracy.{output_name}.report".format(
                    dir=args.dir, output_name="output"), "w") as f:
            f.write(report)

    common_lib.execute_command("steps/info/nnet3_dir_info.pl "
                               "{0}".format(args.dir))
예제 #3
0
def train(args, run_opts):
    """ The main function for training.

    Args:
        args: a Namespace object with the required parameters
            obtained from the function process_args()
        run_opts: RunOpts object obtained from the process_args()
    """

    arg_string = pprint.pformat(vars(args))
    logger.info("Arguments for the experiment\n{0}".format(arg_string))

    # Set some variables.
    feat_dim = common_lib.get_feat_dim(args.feat_dir)
    ivector_dim = common_lib.get_ivector_dim(args.online_ivector_dir)
    ivector_id = common_lib.get_ivector_extractor_id(args.online_ivector_dir)


    config_dir = '{0}/configs'.format(args.dir)
    var_file = '{0}/vars'.format(config_dir)

    variables = common_train_lib.parse_generic_config_vars_file(var_file)

    # Set some variables.
    try:
        model_left_context = variables['model_left_context']
        model_right_context = variables['model_right_context']
    except KeyError as e:
        raise Exception("KeyError {0}: Variables need to be defined in "
                        "{1}".format(str(e), '{0}/configs'.format(args.dir)))

    left_context = args.chunk_left_context + model_left_context
    right_context = args.chunk_right_context + model_right_context
    left_context_initial = (args.chunk_left_context_initial + model_left_context if
                            args.chunk_left_context_initial >= 0 else -1)
    right_context_final = (args.chunk_right_context_final + model_right_context if
                           args.chunk_right_context_final >= 0 else -1)

    # Initialize as "raw" nnet, prior to training the LDA-like preconditioning
    # matrix.  This first config just does any initial splicing that we do;
    # we do this as it's a convenient way to get the stats for the 'lda-like'
    # transform.

    if (args.stage <= -4) and os.path.exists(args.dir+"/configs/init.config"):
        logger.info("Initializing the network for computing the LDA stats")
        common_lib.execute_command(
            """{command} {dir}/log/nnet_init.log \
                    nnet3-init --srand=-2 {dir}/configs/init.config \
                    {dir}/init.raw""".format(command=run_opts.command,
                                             dir=args.dir))

    default_egs_dir = '{0}/egs'.format(args.dir)
    if (args.stage <= -3) and args.egs_dir is None:
        logger.info("Generating egs")

        if args.use_dense_targets:
            target_type = "dense"
            try:
                num_targets = int(variables['num_targets'])
                if (common_lib.get_feat_dim_from_scp(args.targets_scp)
                        != num_targets):
                    raise Exception("Mismatch between num-targets provided to "
                                    "script vs configs")
            except KeyError as e:
                num_targets = -1
        else:
            target_type = "sparse"
            try:
                num_targets = int(variables['num_targets'])
            except KeyError as e:
                raise Exception("KeyError {0}: Variables need to be defined "
                                "in {1}".format(
                                    str(e), '{0}/configs'.format(args.dir)))

        train_lib.raw_model.generate_egs_using_targets(
            data=args.feat_dir, targets_scp=args.targets_scp,
            egs_dir=default_egs_dir,
            left_context=left_context,
            right_context=right_context,
            left_context_initial=left_context_initial,
            right_context_final=right_context_final,
            run_opts=run_opts,
            frames_per_eg_str=args.chunk_width,
            srand=args.srand,
            egs_opts=args.egs_opts,
            cmvn_opts=args.cmvn_opts,
            online_ivector_dir=args.online_ivector_dir,
            samples_per_iter=args.samples_per_iter,
            stage=args.egs_stage,
            target_type=target_type,
            num_targets=num_targets)

    if args.egs_dir is None:
        egs_dir = default_egs_dir
    else:
        egs_dir = args.egs_dir

    [egs_left_context, egs_right_context,
     frames_per_eg_str, num_archives] = (
         common_train_lib.verify_egs_dir(egs_dir, feat_dim,
                                         ivector_dim, ivector_id,
                                         left_context, right_context,
                                         left_context_initial,
                                         right_context_final))
    if args.chunk_width != frames_per_eg_str:
        raise Exception("mismatch between --egs.chunk-width and the frames_per_eg "
                        "in the egs dir {0} vs {1}".format(args.chunk_width,
                                                           frames_per_eg_str))

    if args.num_jobs_final > num_archives:
        raise Exception('num_jobs_final cannot exceed the number of archives '
                        'in the egs directory')

    # copy the properties of the egs to dir for
    # use during decoding
    common_train_lib.copy_egs_properties_to_exp_dir(egs_dir, args.dir)

    if args.stage <= -2 and os.path.exists(args.dir+"/configs/init.config"):
        logger.info('Computing the preconditioning matrix for input features')

        train_lib.common.compute_preconditioning_matrix(
            args.dir, egs_dir, num_archives, run_opts,
            max_lda_jobs=args.max_lda_jobs,
            rand_prune=args.rand_prune)

    if args.stage <= -1:
        logger.info("Preparing the initial network.")
        common_train_lib.prepare_initial_network(args.dir, run_opts)

    # set num_iters so that as close as possible, we process the data
    # $num_epochs times, i.e. $num_iters*$avg_num_jobs) ==
    # $num_epochs*$num_archives, where
    # avg_num_jobs=(num_jobs_initial+num_jobs_final)/2.
    num_archives_to_process = int(args.num_epochs * num_archives)
    num_archives_processed = 0
    num_iters = ((num_archives_to_process * 2)
                 / (args.num_jobs_initial + args.num_jobs_final))

    # If do_final_combination is True, compute the set of models_to_combine.
    # Otherwise, models_to_combine will be none.
    if args.do_final_combination:
        models_to_combine = common_train_lib.get_model_combine_iters(
            num_iters, args.num_epochs,
            num_archives, args.max_models_combine,
            args.num_jobs_final)
    else:
        models_to_combine = None

    if (os.path.exists('{0}/valid_diagnostic.scp'.format(egs_dir))):
        if (os.path.exists('{0}/valid_diagnostic.egs'.format(egs_dir))):
            raise Exception('both {0}/valid_diagnostic.egs and '
                            '{0}/valid_diagnostic.scp exist.'
                            'This script expects only one of them to exist.'
                            ''.format(egs_dir))
        use_multitask_egs = True
    else:
        if (not os.path.exists('{0}/valid_diagnostic.egs'
                               ''.format(egs_dir))):
            raise Exception('neither {0}/valid_diagnostic.egs nor '
                            '{0}/valid_diagnostic.scp exist.'
                            'This script expects one of them.'
                            ''.format(egs_dir))
        use_multitask_egs = False

    min_deriv_time = None
    max_deriv_time_relative = None
    if args.deriv_truncate_margin is not None:
        min_deriv_time = -args.deriv_truncate_margin - model_left_context
        max_deriv_time_relative = \
           args.deriv_truncate_margin + model_right_context

    logger.info("Training will run for {0} epochs = "
                "{1} iterations".format(args.num_epochs, num_iters))

    for iter in range(num_iters):
        if (args.exit_stage is not None) and (iter == args.exit_stage):
            logger.info("Exiting early due to --exit-stage {0}".format(iter))
            return
        current_num_jobs = int(0.5 + args.num_jobs_initial
                               + (args.num_jobs_final - args.num_jobs_initial)
                               * float(iter) / num_iters)

        if args.stage <= iter:
            model_file = "{dir}/{iter}.raw".format(dir=args.dir, iter=iter)

            lrate = common_train_lib.get_learning_rate(iter, current_num_jobs,
                                                       num_iters,
                                                       num_archives_processed,
                                                       num_archives_to_process,
                                                       args.initial_effective_lrate,
                                                       args.final_effective_lrate)

            # shrinkage_value is a scale on the parameters.
            shrinkage_value = 1.0 - (args.proportional_shrink * lrate)
            if shrinkage_value <= 0.5:
                raise Exception("proportional-shrink={0} is too large, it gives "
                                "shrink-value={1}".format(args.proportional_shrink,
                                                          shrinkage_value))
            if args.shrink_value < shrinkage_value:
                shrinkage_value = (args.shrink_value
                                   if common_train_lib.should_do_shrinkage(
                                           iter, model_file,
                                           args.shrink_saturation_threshold,
                                           get_raw_nnet_from_am=False)
                                   else shrinkage_value)

            percent = num_archives_processed * 100.0 / num_archives_to_process
            epoch = (num_archives_processed * args.num_epochs
                     / num_archives_to_process)
            shrink_info_str = ''
            if shrinkage_value != 1.0:
                shrink_info_str = 'shrink: {0:0.5f}'.format(shrinkage_value)
            logger.info("Iter: {0}/{1}    "
                        "Epoch: {2:0.2f}/{3:0.1f} ({4:0.1f}% complete)    "
                        "lr: {5:0.6f}    {6}".format(iter, num_iters - 1,
                                                     epoch, args.num_epochs,
                                                     percent,
                                                     lrate, shrink_info_str))

            train_lib.common.train_one_iteration(
                dir=args.dir,
                iter=iter,
                srand=args.srand,
                egs_dir=egs_dir,
                num_jobs=current_num_jobs,
                num_archives_processed=num_archives_processed,
                num_archives=num_archives,
                learning_rate=lrate,
                dropout_edit_string=common_train_lib.get_dropout_edit_string(
                    args.dropout_schedule,
                    float(num_archives_processed) / num_archives_to_process,
                    iter),
                train_opts=' '.join(args.train_opts),
                shrinkage_value=shrinkage_value,
                minibatch_size_str=args.num_chunk_per_minibatch,
                min_deriv_time=min_deriv_time,
                max_deriv_time_relative=max_deriv_time_relative,
                momentum=args.momentum,
                max_param_change=args.max_param_change,
                shuffle_buffer_size=args.shuffle_buffer_size,
                run_opts=run_opts,
                get_raw_nnet_from_am=False,
                use_multitask_egs=use_multitask_egs,
                compute_per_dim_accuracy=args.compute_per_dim_accuracy)

            if args.cleanup:
                # do a clean up everythin but the last 2 models, under certain
                # conditions
                common_train_lib.remove_model(
                    args.dir, iter-2, num_iters, models_to_combine,
                    args.preserve_model_interval,
                    get_raw_nnet_from_am=False)

            if args.email is not None:
                reporting_iter_interval = num_iters * args.reporting_interval
                if iter % reporting_iter_interval == 0:
                    # lets do some reporting
                    [report, times, data] = (
                        nnet3_log_parse.generate_acc_logprob_report(args.dir))
                    message = report
                    subject = ("Update : Expt {dir} : "
                               "Iter {iter}".format(dir=args.dir, iter=iter))
                    common_lib.send_mail(message, subject, args.email)

        num_archives_processed = num_archives_processed + current_num_jobs

    if args.stage <= num_iters:
        if args.do_final_combination:
            logger.info("Doing final combination to produce final.raw")
            train_lib.common.combine_models(
                dir=args.dir, num_iters=num_iters,
                models_to_combine=models_to_combine, egs_dir=egs_dir,
                minibatch_size_str=args.num_chunk_per_minibatch,
                run_opts=run_opts, chunk_width=args.chunk_width,
                get_raw_nnet_from_am=False,
                compute_per_dim_accuracy=args.compute_per_dim_accuracy,
                max_objective_evaluations=args.max_objective_evaluations)
        else:
            common_lib.force_symlink("{0}.raw".format(num_iters),
                                     "{0}/final.raw".format(args.dir))

    if args.compute_average_posteriors and args.stage <= num_iters + 1:
        logger.info("Getting average posterior for purposes of "
                    "adjusting the priors.")
        train_lib.common.compute_average_posterior(
            dir=args.dir, iter='final', egs_dir=egs_dir,
            num_archives=num_archives,
            prior_subset_size=args.prior_subset_size, run_opts=run_opts,
            get_raw_nnet_from_am=False)

    if args.cleanup:
        logger.info("Cleaning up the experiment directory "
                    "{0}".format(args.dir))
        remove_egs = args.remove_egs
        if args.egs_dir is not None:
            # this egs_dir was not created by this experiment so we will not
            # delete it
            remove_egs = False

        common_train_lib.clean_nnet_dir(
            nnet_dir=args.dir, num_iters=num_iters, egs_dir=egs_dir,
            preserve_model_interval=args.preserve_model_interval,
            remove_egs=remove_egs,
            get_raw_nnet_from_am=False)

    # do some reporting
    [report, times, data] = nnet3_log_parse.generate_acc_logprob_report(args.dir)
    if args.email is not None:
        common_lib.send_mail(report, "Update : Expt {0} : "
                                     "complete".format(args.dir), args.email)

    with open("{dir}/accuracy.report".format(dir=args.dir), "w") as f:
        f.write(report)

    common_lib.execute_command("steps/info/nnet3_dir_info.pl "
                               "{0}".format(args.dir))
예제 #4
0
def train(args, run_opts, background_process_handler):
    """ The main function for training.

    Args:
        args: a Namespace object with the required parameters
            obtained from the function process_args()
        run_opts: RunOpts object obtained from the process_args()
    """

    arg_string = pprint.pformat(vars(args))
    logger.info("Arguments for the experiment\n{0}".format(arg_string))

    # Set some variables.
    feat_dim = common_lib.get_feat_dim(args.feat_dir)
    ivector_dim = common_lib.get_ivector_dim(args.online_ivector_dir)
    ivector_id = common_lib.get_ivector_extractor_id(args.online_ivector_dir)


    config_dir = '{0}/configs'.format(args.dir)
    var_file = '{0}/vars'.format(config_dir)

    variables = common_train_lib.parse_generic_config_vars_file(var_file)

    # Set some variables.
    try:
        model_left_context = variables['model_left_context']
        model_right_context = variables['model_right_context']
        # this is really the number of times we add layers to the network for
        # discriminative pretraining
        num_hidden_layers = variables['num_hidden_layers']
        add_lda = common_lib.str_to_bool(variables['add_lda'])
        include_log_softmax = common_lib.str_to_bool(
            variables['include_log_softmax'])
    except KeyError as e:
        raise Exception("KeyError {0}: Variables need to be defined in "
                        "{1}".format(str(e), '{0}/configs'.format(args.dir)))

    left_context = args.chunk_left_context + model_left_context
    right_context = args.chunk_right_context + model_right_context
    left_context_initial = (args.chunk_left_context_initial + model_left_context if
                            args.chunk_left_context_initial >= 0 else -1)
    right_context_final = (args.chunk_right_context_final + model_right_context if
                           args.chunk_right_context_final >= 0 else -1)

    # Initialize as "raw" nnet, prior to training the LDA-like preconditioning
    # matrix.  This first config just does any initial splicing that we do;
    # we do this as it's a convenient way to get the stats for the 'lda-like'
    # transform.

    if (args.stage <= -4):
        logger.info("Initializing a basic network")
        common_lib.run_job(
            """{command} {dir}/log/nnet_init.log \
                    nnet3-init --srand=-2 {dir}/configs/init.config \
                    {dir}/init.raw""".format(command=run_opts.command,
                                             dir=args.dir))

    default_egs_dir = '{0}/egs'.format(args.dir)
    if (args.stage <= -3) and args.egs_dir is None:
        logger.info("Generating egs")

        if args.use_dense_targets:
            target_type = "dense"
            try:
                num_targets = int(variables['num_targets'])
                if (common_lib.get_feat_dim_from_scp(args.targets_scp)
                        != num_targets):
                    raise Exception("Mismatch between num-targets provided to "
                                    "script vs configs")
            except KeyError as e:
                num_targets = -1
        else:
            target_type = "sparse"
            try:
                num_targets = int(variables['num_targets'])
            except KeyError as e:
                raise Exception("KeyError {0}: Variables need to be defined "
                                "in {1}".format(
                                    str(e), '{0}/configs'.format(args.dir)))

        train_lib.raw_model.generate_egs_using_targets(
            data=args.feat_dir, targets_scp=args.targets_scp,
            egs_dir=default_egs_dir,
            left_context=left_context,
            right_context=right_context,
            left_context_initial=left_context_initial,
            right_context_final=right_context_final,
            run_opts=run_opts,
            frames_per_eg_str=args.chunk_width,
            srand=args.srand,
            egs_opts=args.egs_opts,
            cmvn_opts=args.cmvn_opts,
            online_ivector_dir=args.online_ivector_dir,
            samples_per_iter=args.samples_per_iter,
            transform_dir=args.transform_dir,
            stage=args.egs_stage,
            target_type=target_type,
            num_targets=num_targets)

    if args.egs_dir is None:
        egs_dir = default_egs_dir
    else:
        egs_dir = args.egs_dir

    [egs_left_context, egs_right_context,
     frames_per_eg_str, num_archives] = (
        common_train_lib.verify_egs_dir(egs_dir, feat_dim,
                                        ivector_dim, ivector_id,
                                        left_context, right_context))
    if args.chunk_width != frames_per_eg_str:
        raise Exception("mismatch between --egs.chunk-width and the frames_per_eg "
                        "in the egs dir {0} vs {1}".format(args.chunk_width,
                                                     frames_per_eg_str))

    if (args.num_jobs_final > num_archives):
        raise Exception('num_jobs_final cannot exceed the number of archives '
                        'in the egs directory')

    # copy the properties of the egs to dir for
    # use during decoding
    common_train_lib.copy_egs_properties_to_exp_dir(egs_dir, args.dir)

    if (add_lda and args.stage <= -2):
        logger.info('Computing the preconditioning matrix for input features')

        train_lib.common.compute_preconditioning_matrix(
            args.dir, egs_dir, num_archives, run_opts,
            max_lda_jobs=args.max_lda_jobs,
            rand_prune=args.rand_prune)

    if (args.stage <= -1):
        logger.info("Preparing the initial network.")
        common_train_lib.prepare_initial_network(args.dir, run_opts)

    # set num_iters so that as close as possible, we process the data
    # $num_epochs times, i.e. $num_iters*$avg_num_jobs) ==
    # $num_epochs*$num_archives, where
    # avg_num_jobs=(num_jobs_initial+num_jobs_final)/2.
    num_archives_to_process = int(args.num_epochs * num_archives)
    num_archives_processed = 0
    num_iters = ((num_archives_to_process * 2)
                 / (args.num_jobs_initial + args.num_jobs_final))

    models_to_combine = common_train_lib.verify_iterations(
        num_iters, args.num_epochs,
        num_hidden_layers, num_archives,
        args.max_models_combine, args.add_layers_period,
        args.num_jobs_final)

    def learning_rate(iter, current_num_jobs, num_archives_processed):
        return common_train_lib.get_learning_rate(iter, current_num_jobs,
                                                  num_iters,
                                                  num_archives_processed,
                                                  num_archives_to_process,
                                                  args.initial_effective_lrate,
                                                  args.final_effective_lrate)

    min_deriv_time = None
    max_deriv_time_relative = None
    if args.deriv_truncate_margin is not None:
        min_deriv_time = -args.deriv_truncate_margin - model_left_context
        max_deriv_time_relative = \
           args.deriv_truncate_margin + model_right_context

    logger.info("Training will run for {0} epochs = "
                "{1} iterations".format(args.num_epochs, num_iters))

    for iter in range(num_iters):
        if (args.exit_stage is not None) and (iter == args.exit_stage):
            logger.info("Exiting early due to --exit-stage {0}".format(iter))
            return
        current_num_jobs = int(0.5 + args.num_jobs_initial
                               + (args.num_jobs_final - args.num_jobs_initial)
                               * float(iter) / num_iters)

        if args.stage <= iter:
            model_file = "{dir}/{iter}.raw".format(dir=args.dir, iter=iter)

            shrinkage_value = 1.0
            if args.shrink_value != 1.0:
                shrinkage_value = (args.shrink_value
                                   if common_train_lib.do_shrinkage(
                                        iter, model_file,
                                        args.shrink_saturation_threshold,
                                        get_raw_nnet_from_am=False)
                                   else 1
                                   )

            train_lib.common.train_one_iteration(
                dir=args.dir,
                iter=iter,
                srand=args.srand,
                egs_dir=egs_dir,
                num_jobs=current_num_jobs,
                num_archives_processed=num_archives_processed,
                num_archives=num_archives,
                learning_rate=learning_rate(iter, current_num_jobs,
                                            num_archives_processed),
                dropout_edit_string=common_train_lib.get_dropout_edit_string(
                    args.dropout_schedule,
                    float(num_archives_processed) / num_archives_to_process,
                    iter),
                shrinkage_value=shrinkage_value,
                minibatch_size_str=args.num_chunk_per_minibatch,
                num_hidden_layers=num_hidden_layers,
                add_layers_period=args.add_layers_period,
                left_context=left_context,
                right_context=right_context,
                min_deriv_time=min_deriv_time,
                max_deriv_time_relative=max_deriv_time_relative,
                momentum=args.momentum,
                max_param_change=args.max_param_change,
                shuffle_buffer_size=args.shuffle_buffer_size,
                run_opts=run_opts,
                get_raw_nnet_from_am=False,
                background_process_handler=background_process_handler)

            if args.cleanup:
                # do a clean up everythin but the last 2 models, under certain
                # conditions
                common_train_lib.remove_model(
                    args.dir, iter-2, num_iters, models_to_combine,
                    args.preserve_model_interval,
                    get_raw_nnet_from_am=False)

            if args.email is not None:
                reporting_iter_interval = num_iters * args.reporting_interval
                if iter % reporting_iter_interval == 0:
                    # lets do some reporting
                    [report, times, data] = (
                        nnet3_log_parse.generate_acc_logprob_report(args.dir))
                    message = report
                    subject = ("Update : Expt {dir} : "
                               "Iter {iter}".format(dir=args.dir, iter=iter))
                    common_lib.send_mail(message, subject, args.email)

        num_archives_processed = num_archives_processed + current_num_jobs

    if args.stage <= num_iters:
        logger.info("Doing final combination to produce final.raw")
        train_lib.common.combine_models(
            dir=args.dir, num_iters=num_iters,
            models_to_combine=models_to_combine, egs_dir=egs_dir,
            left_context=left_context, right_context=right_context,
            minibatch_size_str=args.num_chunk_per_minibatch,
            run_opts=run_opts, chunk_width=args.chunk_width,
            background_process_handler=background_process_handler,
            get_raw_nnet_from_am=False,
            sum_to_one_penalty=args.combine_sum_to_one_penalty)

    if include_log_softmax and args.stage <= num_iters + 1:
        logger.info("Getting average posterior for purposes of "
                    "adjusting the priors.")
        train_lib.common.compute_average_posterior(
            dir=args.dir, iter='final', egs_dir=egs_dir,
            num_archives=num_archives,
            left_context=left_context, right_context=right_context,
            prior_subset_size=args.prior_subset_size, run_opts=run_opts,
            get_raw_nnet_from_am=False)

    if args.cleanup:
        logger.info("Cleaning up the experiment directory "
                    "{0}".format(args.dir))
        remove_egs = args.remove_egs
        if args.egs_dir is not None:
            # this egs_dir was not created by this experiment so we will not
            # delete it
            remove_egs = False

        common_train_lib.clean_nnet_dir(
            nnet_dir=args.dir, num_iters=num_iters, egs_dir=egs_dir,
            preserve_model_interval=args.preserve_model_interval,
            remove_egs=remove_egs,
            get_raw_nnet_from_am=False)

    # do some reporting
    [report, times, data] = nnet3_log_parse.generate_acc_logprob_report(args.dir)
    if args.email is not None:
        common_lib.send_mail(report, "Update : Expt {0} : "
                                     "complete".format(args.dir), args.email)

    with open("{dir}/accuracy.report".format(dir=args.dir), "w") as f:
        f.write(report)

    common_lib.run_job("steps/info/nnet3_dir_info.pl "
                       "{0}".format(args.dir))
예제 #5
0
def train(args, run_opts, background_process_handler):
    """ The main function for training.

    Args:
        args: a Namespace object with the required parameters
            obtained from the function process_args()
        run_opts: RunOpts object obtained from the process_args()
    """

    arg_string = pprint.pformat(vars(args))
    logger.info("Arguments for the experiment\n{0}".format(arg_string))

    # Set some variables.
    feat_dim = common_lib.get_feat_dim(args.feat_dir)
    ivector_dim = common_lib.get_ivector_dim(args.online_ivector_dir)

    config_dir = '{0}/configs'.format(args.dir)
    var_file = '{0}/vars'.format(config_dir)

    variables = common_train_lib.parse_generic_config_vars_file(var_file)

    # Set some variables.
    try:
        model_left_context = variables['model_left_context']
        model_right_context = variables['model_right_context']
        # this is really the number of times we add layers to the network for
        # discriminative pretraining
        num_hidden_layers = variables['num_hidden_layers']
        add_lda = common_lib.str_to_bool(variables['add_lda'])
        include_log_softmax = common_lib.str_to_bool(
            variables['include_log_softmax'])
    except KeyError as e:
        raise Exception("KeyError {0}: Variables need to be defined in "
                        "{1}".format(str(e), '{0}/configs'.format(args.dir)))

    left_context = args.chunk_left_context + model_left_context
    right_context = args.chunk_right_context + model_right_context

    # Initialize as "raw" nnet, prior to training the LDA-like preconditioning
    # matrix.  This first config just does any initial splicing that we do;
    # we do this as it's a convenient way to get the stats for the 'lda-like'
    # transform.

    if (args.stage <= -5):
        logger.info("Initializing a basic network")
        common_lib.run_job(
            """{command} {dir}/log/nnet_init.log \
                    nnet3-init --srand=-2 {dir}/configs/init.config \
                    {dir}/init.raw""".format(command=run_opts.command,
                                             dir=args.dir))

    default_egs_dir = '{0}/egs'.format(args.dir)
    if (args.stage <= -4) and args.egs_dir is None:
        logger.info("Generating egs")

        if args.use_dense_targets:
            target_type = "dense"
            try:
                num_targets = int(variables['num_targets'])
                if (common_lib.get_feat_dim_from_scp(args.targets_scp)
                        != num_targets):
                    raise Exception("Mismatch between num-targets provided to "
                                    "script vs configs")
            except KeyError as e:
                num_targets = -1
        else:
            target_type = "sparse"
            try:
                num_targets = int(variables['num_targets'])
            except KeyError as e:
                raise Exception("KeyError {0}: Variables need to be defined "
                                "in {1}".format(
                                    str(e), '{0}/configs'.format(args.dir)))

        train_lib.raw_model.generate_egs_using_targets(
            data=args.feat_dir, targets_scp=args.targets_scp,
            egs_dir=default_egs_dir,
            left_context=left_context, right_context=right_context,
            valid_left_context=left_context, valid_right_context=right_context,
            run_opts=run_opts,
            frames_per_eg=args.frames_per_eg,
            srand=args.srand,
            egs_opts=args.egs_opts,
            cmvn_opts=args.cmvn_opts,
            online_ivector_dir=args.online_ivector_dir,
            samples_per_iter=args.samples_per_iter,
            transform_dir=args.transform_dir,
            stage=args.egs_stage,
            target_type=target_type,
            num_targets=num_targets)

    if args.egs_dir is None:
        egs_dir = default_egs_dir
    else:
        egs_dir = args.egs_dir

    [egs_left_context, egs_right_context,
     frames_per_eg, num_archives] = (
        common_train_lib.verify_egs_dir(egs_dir, feat_dim, ivector_dim,
                                        left_context, right_context))
    assert(args.frames_per_eg == frames_per_eg)

    if (args.num_jobs_final > num_archives):
        raise Exception('num_jobs_final cannot exceed the number of archives '
                        'in the egs directory')

    # copy the properties of the egs to dir for
    # use during decoding
    common_train_lib.copy_egs_properties_to_exp_dir(egs_dir, args.dir)

    if (add_lda and args.stage <= -3):
        logger.info('Computing the preconditioning matrix for input features')

        train_lib.common.compute_preconditioning_matrix(
            args.dir, egs_dir, num_archives, run_opts,
            max_lda_jobs=args.max_lda_jobs,
            rand_prune=args.rand_prune)

    if (args.stage <= -1):
        logger.info("Preparing the initial network.")
        common_train_lib.prepare_initial_network(args.dir, run_opts)

    # set num_iters so that as close as possible, we process the data
    # $num_epochs times, i.e. $num_iters*$avg_num_jobs) ==
    # $num_epochs*$num_archives, where
    # avg_num_jobs=(num_jobs_initial+num_jobs_final)/2.
    num_archives_expanded = num_archives * args.frames_per_eg
    num_archives_to_process = args.num_epochs * num_archives_expanded
    num_archives_processed = 0
    num_iters = ((num_archives_to_process * 2)
                 / (args.num_jobs_initial + args.num_jobs_final))

    models_to_combine = common_train_lib.verify_iterations(
        num_iters, args.num_epochs,
        num_hidden_layers, num_archives_expanded,
        args.max_models_combine, args.add_layers_period,
        args.num_jobs_final)

    def learning_rate(iter, current_num_jobs, num_archives_processed):
        return common_train_lib.get_learning_rate(iter, current_num_jobs,
                                                  num_iters,
                                                  num_archives_processed,
                                                  num_archives_to_process,
                                                  args.initial_effective_lrate,
                                                  args.final_effective_lrate)

    logger.info("Training will run for {0} epochs = "
                "{1} iterations".format(args.num_epochs, num_iters))

    for iter in range(num_iters):
        if (args.exit_stage is not None) and (iter == args.exit_stage):
            logger.info("Exiting early due to --exit-stage {0}".format(iter))
            return
        current_num_jobs = int(0.5 + args.num_jobs_initial
                               + (args.num_jobs_final - args.num_jobs_initial)
                               * float(iter) / num_iters)

        if args.stage <= iter:
            train_lib.common.train_one_iteration(
                dir=args.dir,
                iter=iter,
                srand=args.srand,
                egs_dir=egs_dir,
                num_jobs=current_num_jobs,
                num_archives_processed=num_archives_processed,
                num_archives=num_archives,
                learning_rate=learning_rate(iter, current_num_jobs,
                                            num_archives_processed),
                dropout_edit_string=common_lib.get_dropout_edit_string(
                    args.dropout_schedule,
                    float(num_archives_processed) / num_archives_to_process,
                    iter),
                minibatch_size=args.minibatch_size,
                frames_per_eg=args.frames_per_eg,
                num_hidden_layers=num_hidden_layers,
                add_layers_period=args.add_layers_period,
                left_context=left_context,
                right_context=right_context,
                momentum=args.momentum,
                max_param_change=args.max_param_change,
                shuffle_buffer_size=args.shuffle_buffer_size,
                run_opts=run_opts,
                get_raw_nnet_from_am=False,
                background_process_handler=background_process_handler)

            if args.cleanup:
                # do a clean up everythin but the last 2 models, under certain
                # conditions
                common_train_lib.remove_model(
                    args.dir, iter-2, num_iters, models_to_combine,
                    args.preserve_model_interval,
                    get_raw_nnet_from_am=False)

            if args.email is not None:
                reporting_iter_interval = num_iters * args.reporting_interval
                if iter % reporting_iter_interval == 0:
                    # lets do some reporting
                    [report, times, data] = (
                        nnet3_log_parse.generate_accuracy_report(args.dir))
                    message = report
                    subject = ("Update : Expt {dir} : "
                               "Iter {iter}".format(dir=args.dir, iter=iter))
                    common_lib.send_mail(message, subject, args.email)

        num_archives_processed = num_archives_processed + current_num_jobs

    if args.stage <= num_iters:
        logger.info("Doing final combination to produce final.raw")
        train_lib.common.combine_models(
            dir=args.dir, num_iters=num_iters,
            models_to_combine=models_to_combine, egs_dir=egs_dir,
            left_context=left_context, right_context=right_context,
            run_opts=run_opts,
            background_process_handler=background_process_handler,
            get_raw_nnet_from_am=False)

    if include_log_softmax and args.stage <= num_iters + 1:
        logger.info("Getting average posterior for purposes of "
                    "adjusting the priors.")
        train_lib.common.compute_average_posterior(
            dir=args.dir, iter='final', egs_dir=egs_dir,
            num_archives=num_archives,
            left_context=left_context, right_context=right_context,
            prior_subset_size=args.prior_subset_size, run_opts=run_opts,
            get_raw_nnet_from_am=False)

    if args.cleanup:
        logger.info("Cleaning up the experiment directory "
                    "{0}".format(args.dir))
        remove_egs = args.remove_egs
        if args.egs_dir is not None:
            # this egs_dir was not created by this experiment so we will not
            # delete it
            remove_egs = False

        common_train_lib.clean_nnet_dir(
            nnet_dir=args.dir, num_iters=num_iters, egs_dir=egs_dir,
            preserve_model_interval=args.preserve_model_interval,
            remove_egs=remove_egs,
            get_raw_nnet_from_am=False)

    # do some reporting
    [report, times, data] = nnet3_log_parse.generate_accuracy_report(args.dir)
    if args.email is not None:
        common_lib.send_mail(report, "Update : Expt {0} : "
                                     "complete".format(args.dir), args.email)

    with open("{dir}/accuracy.report".format(dir=args.dir), "w") as f:
        f.write(report)

    common_lib.run_job("steps/info/nnet3_dir_info.pl "
                       "{0}".format(args.dir))
예제 #6
0
def generate_egs_using_targets(data,
                               targets_scp,
                               egs_dir,
                               left_context,
                               right_context,
                               valid_left_context,
                               valid_right_context,
                               run_opts,
                               stage=0,
                               feat_type='raw',
                               online_ivector_dir=None,
                               target_type='dense',
                               num_targets=-1,
                               samples_per_iter=20000,
                               frames_per_eg=20,
                               srand=0,
                               egs_opts=None,
                               cmvn_opts=None,
                               transform_dir=None):
    """ Wrapper for calling steps/nnet3/get_egs_targets.sh

    This method generates egs directly from an scp file of targets, instead of
    getting them from the alignments (as with the method generate_egs() in
    module nnet3.train.frame_level_objf.acoustic_model).

    Args:
        target_type: "dense" if the targets are in matrix format
                     "sparse" if the targets are in posterior format
        num_targets: must be explicitly specified for "sparse" targets.
            For "dense" targets, this option is ignored and the target dim
            is computed from the target matrix dimension
        For other options, see the file steps/nnet3/get_egs_targets.sh
    """

    if target_type == 'dense':
        num_targets = common_lib.get_feat_dim_from_scp(targets_scp)
    else:
        if num_targets == -1:
            raise Exception("--num-targets is required if "
                            "target-type is sparse")

    common_lib.run_job("""steps/nnet3/get_egs_targets.sh {egs_opts} \
                --cmd "{command}" \
                --cmvn-opts "{cmvn_opts}" \
                --feat-type {feat_type} \
                --transform-dir "{transform_dir}" \
                --online-ivector-dir "{ivector_dir}" \
                --left-context {left_context} --right-context {right_context} \
                --valid-left-context {valid_left_context} \
                --valid-right-context {valid_right_context} \
                --stage {stage} \
                --samples-per-iter {samples_per_iter} \
                --frames-per-eg {frames_per_eg} \
                --srand {srand} \
                --target-type {target_type} \
                --num-targets {num_targets} \
                {data} {targets_scp} {egs_dir}
        """.format(
        command=run_opts.egs_command,
        cmvn_opts=cmvn_opts if cmvn_opts is not None else '',
        feat_type=feat_type,
        transform_dir=(transform_dir if transform_dir is not None else ''),
        ivector_dir=(online_ivector_dir
                     if online_ivector_dir is not None else ''),
        left_context=left_context,
        right_context=right_context,
        valid_left_context=valid_left_context,
        valid_right_context=valid_right_context,
        stage=stage,
        samples_per_iter=samples_per_iter,
        frames_per_eg=frames_per_eg,
        srand=srand,
        num_targets=num_targets,
        data=data,
        targets_scp=targets_scp,
        target_type=target_type,
        egs_dir=egs_dir,
        egs_opts=egs_opts if egs_opts is not None else ''))
예제 #7
0
파일: raw_model.py 프로젝트: LvHang/kaldi
def generate_egs_using_targets(data, targets_scp, egs_dir,
                               left_context, right_context,
                               run_opts, stage=0,
                               left_context_initial=-1, right_context_final=-1,
                               online_ivector_dir=None,
                               target_type='dense', num_targets=-1,
                               samples_per_iter=20000, frames_per_eg_str="20",
                               srand=0, egs_opts=None, cmvn_opts=None):
    """ Wrapper for calling steps/nnet3/get_egs_targets.sh

    This method generates egs directly from an scp file of targets, instead of
    getting them from the alignments (as with the method generate_egs() in
    module nnet3.train.frame_level_objf.acoustic_model).

    Args:
        target_type: "dense" if the targets are in matrix format
                     "sparse" if the targets are in posterior format
        num_targets: must be explicitly specified for "sparse" targets.
            For "dense" targets, this option is ignored and the target dim
            is computed from the target matrix dimension
        For other options, see the file steps/nnet3/get_egs_targets.sh
    """

    if target_type == 'dense':
        num_targets = common_lib.get_feat_dim_from_scp(targets_scp)
    else:
        if num_targets == -1:
            raise Exception("--num-targets is required if "
                            "target-type is sparse")

    common_lib.execute_command(
        """steps/nnet3/get_egs_targets.sh {egs_opts} \
                --cmd "{command}" \
                --cmvn-opts "{cmvn_opts}" \
                --online-ivector-dir "{ivector_dir}" \
                --left-context {left_context} \
                --right-context {right_context} \
                --left-context-initial {left_context_initial} \
                --right-context-final {right_context_final} \
                --stage {stage} \
                --samples-per-iter {samples_per_iter} \
                --frames-per-eg {frames_per_eg_str} \
                --srand {srand} \
                --target-type {target_type} \
                --num-targets {num_targets} \
                {data} {targets_scp} {egs_dir}
        """.format(command=run_opts.egs_command,
                   cmvn_opts=cmvn_opts if cmvn_opts is not None else '',
                   ivector_dir=(online_ivector_dir
                                if online_ivector_dir is not None
                                else ''),
                   left_context=left_context,
                   right_context=right_context,
                   left_context_initial=left_context_initial,
                   right_context_final=right_context_final,
                   stage=stage, samples_per_iter=samples_per_iter,
                   frames_per_eg_str=frames_per_eg_str, srand=srand,
                   num_targets=num_targets,
                   data=data,
                   targets_scp=targets_scp, target_type=target_type,
                   egs_dir=egs_dir,
                   egs_opts=egs_opts if egs_opts is not None else ''))