Exemple #1
0
def train_sckit_dirregression(architecture, config, runconfig):
    """
    Training process for architecture with direct regression of ahead time steps

    :return:
    """

    if type(config['data']['ahead']) == list:
        iahead, sahead = config['data']['ahead']
    else:
        iahead, sahead = 1, config['data']['ahead']

    lresults = []
    for ahead in range(iahead, sahead + 1):

        if runconfig.verbose:
            print(
                '************************************************************')
            print(f'Steps Ahead = {ahead} ')

        # Dataset
        dataset = Dataset(config=config['data'], data_path=wind_data_path)
        dataset.generate_dataset(ahead=ahead,
                                 mode=architecture.data_mode,
                                 remote=runconfig.remote)
        train_x, train_y, val_x, val_y, test_x, test_y = dataset.get_data_matrices(
        )

        ############################################
        # Model

        arch = architecture(config, runconfig)
        arch.generate_model()

        if runconfig.verbose:
            arch.summary()
            dataset.summary()
            print()

        ############################################
        # Training
        arch.train(train_x, train_y, val_x, val_y)

        ############################################
        # Results
        if 'descale' not in config['training'] or config['training']['descale']:
            lresults.append([ahead] + arch.evaluate(
                val_x, val_y, test_x, test_y, scaler=dataset.scaler))
        else:
            lresults.append([ahead] +
                            arch.evaluate(val_x, val_y, test_x, test_y))

        print(strftime('%Y-%m-%d %H:%M:%S'))

        if config is not None:
            updateprocess(config, ahead)

    arch.log_result(lresults)

    return lresults
def train_sckit_sequence2sequence(architecture, config, runconfig):
    """
    Training process for architecture with direct regression of ahead time steps
    :return:
    """

    ahead = config['data']['ahead'] if (type(config['data']['ahead']) == list) else [1, config['data']['ahead']]
    if type(config['data']['ahead']) == list:
        iahead, sahead = config['data']['ahead']
    else:
        iahead, sahead = 1, config['data']['ahead']

    # lresults = []


    # Dataset
    dataset = Dataset(config=config['data'], data_path=wind_data_path)
    dataset.generate_dataset(ahead=ahead, mode=architecture.data_mode, remote=runconfig.remote)
    train_x, train_y, val_x, val_y, test_x, test_y = dataset.get_data_matrices()

    ############################################
    # Model

    arch = architecture(config, runconfig)
    arch.generate_model()

    if runconfig.verbose:
        arch.summary()
        dataset.summary()
        print()

    ############################################
    # Training
    arch.train(train_x, train_y, val_x, val_y)

    ############################################
    saverrors = None
    print('scikit')
    print(config['training'])
    print(config['training']['saverrors'])
    
    if 'saverrors' in config['training'] and config['training']['saverrors']:
 #      saverrors = f'-{ahead[0]}-{ahead[1]}-R{iter}' ¿?por que no va?
       saverrors = f'-{ahead[0]}-{ahead[1]}'
    # Results
    if 'descale' not  in config['training'] or config['training']['descale']:
        lresults = arch.evaluate(val_x, val_y, test_x, test_y, scaler=dataset.scaler,save_errors=saverrors)
    else:
        lresults = arch.evaluate(val_x, val_y, test_x, test_y, save_errors=saverrors)

    print(strftime('%Y-%m-%d %H:%M:%S'))

    if config is not None:
        updateprocess(config, ahead)

    arch.log_result(lresults)

    return lresults
Exemple #3
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def train_persistence(architecture, config, runconfig):
    """
    Training process for architecture with direct regression of ahead time steps

    :return:
    """

    if type(config['data']['ahead']) == list:
        iahead, sahead = config['data']['ahead']
    else:
        iahead, sahead = 1, config['data']['ahead']

    lresults = []
    for ahead in range(iahead, sahead + 1):

        if runconfig.verbose:
            print(
                "-----------------------------------------------------------------------------"
            )
            print(f"Steps Ahead = {ahead}")

        # Dataset
        dataset = Dataset(config=config['data'], data_path=wind_data_path)
        dataset.generate_dataset(ahead=[ahead, ahead],
                                 mode=architecture.data_mode,
                                 remote=runconfig.remote)
        train_x, train_y, val_x, val_y, test_x, test_y = dataset.get_data_matrices(
        )

        # Architecture
        arch = architecture(config, runconfig)

        if runconfig.verbose:
            dataset.summary()

        if 'descale' not in config['training'] or config['training']['descale']:
            lresults.append([ahead] + arch.evaluate(
                val_x, val_y, test_x, test_y, scaler=dataset.scaler))
        else:
            lresults.append([ahead] +
                            arch.evaluate(val_x, val_y, test_x, test_y))

        print(strftime('%Y-%m-%d %H:%M:%S'))

        # Update result in db
        if config is not None:
            updateprocess(config, ahead)

        del dataset

    arch.log_result(lresults)
    return lresults
Exemple #4
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def train_sckit_sequence2sequence(architecture, config, runconfig):
    """
    Training process for architecture with direct regression of ahead time steps

    :return:
    """

    ahead = config['data']['ahead'] if (type(config['data']['ahead']) == list) else [1, config['data']['ahead']]
    if type(config['data']['ahead']) == list:
        iahead, sahead = config['data']['ahead']
    else:
        iahead, sahead = 1, config['data']['ahead']

    # lresults = []


    # Dataset
    dataset = Dataset(config=config['data'], data_path=wind_data_path)
    dataset.generate_dataset(ahead=ahead, mode=architecture.data_mode, remote=runconfig.remote)
    train_x, train_y, val_x, val_y, test_x, test_y = dataset.get_data_matrices()

    ############################################
    # Model

    arch = architecture(config, runconfig)
    arch.generate_model()

    if runconfig.verbose:
        arch.summary()
        dataset.summary()
        print()

    ############################################
    # Training
    arch.train(train_x, train_y, val_x, val_y)

    ############################################
    # Results
    lresults = arch.evaluate(val_x, val_y, test_x, test_y)

    print(strftime('%Y-%m-%d %H:%M:%S'))

    if config is not None:
        updateprocess(config, ahead)

    arch.log_result(lresults)

    return lresults
Exemple #5
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def train_dirregression(architecture, config, runconfig):
    """
    Training process for architecture with direct regression of ahead time steps

    :return:
    """

    if type(config['data']['ahead']) == list:
        iahead, sahead = config['data']['ahead']
    else:
        iahead, sahead = 1, config['data']['ahead']

    lresults = []
    if 'iter' in config['training']:
        niter = config['training']['iter']
    else:
        niter = 1

    for iter in range(niter):

        for ahead in range(iahead, sahead + 1):

            if runconfig.verbose:
                print('-----------------------------------------------------------------------------')
                print(f"Steps Ahead = {ahead}")

            # Dataset
            dataset = Dataset(config=config['data'], data_path=wind_data_path)
            dataset.generate_dataset(ahead=[ahead, ahead], mode=architecture.data_mode, remote=runconfig.remote)
            train_x, train_y, val_x, val_y, test_x, test_y = dataset.get_data_matrices()

            ############################################
            # Model
            config['idimensions'] = train_x.shape[1:]

            arch = architecture(config, runconfig)

            if runconfig.multi == 1:
                arch.generate_model()
            else:
                with tf.device('/cpu:0'):
                    arch.generate_model()

            if runconfig.verbose:
                arch.summary()
                arch.plot()
                dataset.summary()
                print()

            ############################################
            # Training
            arch.train(train_x, train_y, val_x, val_y)

            ############################################
            # Results

            lresults.append([ahead] + arch.evaluate(val_x, val_y, test_x, test_y))

            print(strftime('%Y-%m-%d %H:%M:%S'))

            # Update result in db
            if config is not None and not runconfig.proxy:
                from Wind.DataBaseConfigurations import updateprocess
                updateprocess(config, ahead)

            arch.save('-A%d-R%02d' % (ahead, iter))
            del dataset

    arch.log_result(lresults)

    return lresults
Exemple #6
0
def train_sjoint_sequence2sequence(architecture, config, runconfig):
    """
    Training process for architecture with multiple blocks of horizons

    Multihorizon SJOINT strategy

    The training is done separately for blocks of horizons (if block size is 1 this is dirregression)

    :return:
    """

    if type(config['data']['ahead']) == list:
        iahead, sahead = config['data']['ahead']
    else:
        iahead, sahead = 1, config['data']['ahead']

    # Number of consecutive horizon elements to join in a prediction
    slice = config['data']['slice']

    # if (sahead - (iahead-1)) % slice != 0:
    #     raise NameError("SJOINT: slice has to be a divisor of the horizon length")

    lresults = []
    if 'iter' in config['training']:
        niter = config['training']['iter']
    else:
        niter = 1

    lmodels = []
    steps = [[
        i, j
    ] for i, j in zip(range(iahead, sahead +
                            1, slice), range(slice, sahead + slice + 1, slice))
             ]
    steps[-1][1] = sahead

    for iter in range(niter):
        # Loads the dataset once and slices the y matrix for training and evaluation
        dataset = Dataset(config=config['data'], data_path=wind_data_path)
        dataset.generate_dataset(ahead=[iahead, sahead],
                                 mode=architecture.data_mode,
                                 remote=runconfig.remote)

        train_x, train_y, val_x, val_y, test_x, test_y = dataset.get_data_matrices(
        )

        for recit, ahead in enumerate(steps):
            if runconfig.verbose:
                print(
                    '-----------------------------------------------------------------------------'
                )
                print(f"Steps Ahead = {ahead}")

            ############################################
            # Model
            config['idimensions'] = train_x.shape[1:]
            config['odimensions'] = ahead[1] - ahead[0] + 1

            nconfig = deepcopy(config)
            nconfig['data']['ahead'] = ahead
            arch = architecture(nconfig, runconfig)

            if runconfig.multi == 1:
                arch.generate_model()
            else:
                with tf.device('/cpu:0'):
                    arch.generate_model()

            if runconfig.verbose:
                arch.summary()
                arch.plot()
                dataset.summary()
                print()

            ############################################
            # Training with the current slice
            arch.train(train_x, train_y[:, ahead[0] - 1:ahead[1]], val_x,
                       val_y[:, ahead[0] - 1:ahead[1]])
            ############################################
            # Results
            if 'descale' not in config['training'] or config['training'][
                    'descale']:
                lresults.extend(
                    arch.evaluate(val_x,
                                  val_y[:, ahead[0] - 1:ahead[1]],
                                  test_x,
                                  test_y[:, ahead[0] - 1:ahead[1]],
                                  scaler=dataset.scaler))
            else:
                lresults.extend(
                    arch.evaluate(val_x, val_y[:, ahead[0] - 1:ahead[1]],
                                  test_x, test_y[:, ahead[0] - 1:ahead[1]]))

            print(strftime('%Y-%m-%d %H:%M:%S'))

            # Update result in db
            if config is not None and not runconfig.proxy:
                from Wind.DataBaseConfigurations import updateprocess
                updateprocess(config, ahead)

            arch.save(f"-{ahead[0]}-{ahead[1]}-S{recit:02d}-R{iter:02d}")

    arch.log_result(lresults)

    return lresults