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I have a peculiar case of slow model training while trying to train using a generator. The reason I need to use a generator is because I have multiple parquet files that cannot be loaded into memory at once. Here is the code snippet without a generator

d_df = pd.read_parquet("..")
    label = pd_df.pop("label")
    dataset = tf.data.Dataset.from_tensor_slices((dict(pd_df), label))
    # alternate
    # dataset = createDataset(bucket,prefix)

    def is_test(x, y):
        return x % 4 == 0


    def is_train(x, y):
        return not is_test(x, y)


    recover = lambda x, y: y

    val_dataset = dataset.enumerate() \
            .filter(is_test) \
            .map(recover).batch(batch_size)

    train_dataset = dataset.enumerate() \
            .filter(is_train) \
            .map(recover).batch(batch_size)

    feature_columns = _create_feature_columns()
    feature_layer = tf.keras.layers.DenseFeatures(feature_columns)

    model = tf.keras.Sequential([
            feature_layer,
            layers.Dense(1280, activation='relu'),
            layers.Dense(512, activation='relu'),
            layers.Dense(1280, activation='relu'),
            layers.Dense(1)
        ])

    model.compile(optimizer='adam',
                         loss=tf.keras.losses.MeanSquaredError(),
                         metrics=['accuracy', 'mean_absolute_error'])

    om_model.fit(train_dataset, epochs=10, validation_data=val_dataset, verbose=1)

This runs with each steps 295ms. Naturally since its not possible to load all my data in one go I wrote the following generator ( P.S. I'm new to TF and my generator may be off but from what I could find online it looks good to me).

def getSplit(original_list, n):
    return [original_list[i:i + n] for i in range(0, len(original_list), n)]


#
# 200 files -> 48 Mb (1 file)
# 15 files in memory at a time
# 5 generators
# 3 files per generator
#
def pandasGenerator(s3files, n=3):
    print(f"Processing: {s3files} to : {tf.get_static_value(s3files)}")
    s3files = tf.get_static_value(s3files)
    s3files = [str(s3file)[2:-1] for s3file in s3files]
    batches = getSplit(s3files, n)
    for batch in batches:
        t = time.process_time()
        print(f"Processing Batch: {batch}")
        panda_ds = pd.concat([pd.read_parquet(s3file) for s3file in batch], ignore_index=True)
        elapsed_time = time.process_time() - t
        print(f"base_read_time: {elapsed_time}")
        for row in panda_ds.itertuples(index=False):
            pan_row = dict(row._asdict())
            labels = pan_row.pop('label')
            yield dict(pan_row), labels
    return



def createDS(s3bucket, s3prefix):
    s3files = getFileLists(bucket=s3bucket, prefix=s3prefix)
    dataset = (tf.data.Dataset.from_tensor_slices(getSplit(s3files, 40))
        .interleave(
        lambda files: tf.data.Dataset.from_generator(pandasGenerator, output_signature=(
            {
            }, tf.TensorSpec(shape=(), dtype=tf.float64)),
                                                     args=(files, 3)),
        num_parallel_calls=tf.data.AUTOTUNE
    )).prefetch(tf.data.AUTOTUNE)
    return dataset

When using the generator the per step jumps to 2s.

I'd appreciate any help in improving the generator. Thanks.

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