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| """Dataset and Loader for Wikipedia Image-Text (WIT) dataset for retrieval training. |
| |
| Only prepare <image, caption> paired with knowledge (contextualalized passages) |
| """ |
|
|
| import functools |
| from typing import Optional |
|
|
| from absl import logging |
| import jax |
| import jax.numpy as jnp |
| import ml_collections |
| from scenic.dataset_lib import dataset_utils |
| from scenic.dataset_lib import datasets |
| from scenic.dataset_lib.big_transfer import builder |
| from scenic.dataset_lib.big_transfer import registry |
|
|
| from scenic.dataset_lib import web_image_text_dataset |
|
|
|
|
| from scenic.projects.knowledge_visual_language.data import data_utils |
|
|
| import tensorflow as tf |
|
|
| SPAN_MAX_LENGTH = 5 |
| OUTPUT_MAX_LENGTH = 36 |
| KNOWLEDGE_MAX_LENGTH = 320 |
| IMAGE_SIZE = 224 |
|
|
|
|
| @registry.Registry.register('preprocess_ops.get_vqa_knowledge', 'function') |
| def get_vqa_knowledge(): |
| """Concat title passage and document together to form knowledge.""" |
|
|
| def get_vqa_knowledge_fn(data): |
| """Prepare Knowledge by concating hierarchy, passage and first-paragraph.""" |
|
|
| questions = data['question/answers']['question_text'] |
| answers = tf.strings.reduce_join( |
| data['question/answers']['top_answers'] + ', ', axis=1 |
| ) |
| q_prefix = tf.repeat(['Question: '], repeats=tf.shape(questions)[0]) |
| a_prefix = tf.repeat([' Answer: '], repeats=tf.shape(questions)[0]) |
| sep_token = tf.repeat([' <extra_id_99> '], repeats=tf.shape(questions)[0]) |
| knowledges = tf.strings.join( |
| [q_prefix, questions, a_prefix, answers, sep_token] |
| ) |
| |
| data['knowledge'] = tf.strings.reduce_join(knowledges, axis=0) |
| return data |
|
|
| return get_vqa_knowledge_fn |
|
|
|
|
| def get_default_dataset_config(): |
| """Gets default configs for wit_internal (en) dataset.""" |
| dataset_configs = ml_collections.ConfigDict() |
| dataset_configs.dataset = 'vqa' |
| |
| dataset_configs.dataset_dir = '' |
| dataset_configs.train_split = 'train+validation' |
| dataset_configs.output_max_num_tokens = OUTPUT_MAX_LENGTH |
| dataset_configs.knowledge_max_num_tokens = OUTPUT_MAX_LENGTH |
| dataset_configs.image_size = IMAGE_SIZE |
| dataset_configs.pp_train = ( |
| f'get_vqa_knowledge|decode|resize(resize_size={IMAGE_SIZE})|value_range(-1,1)|t5_tokenize(max_num_tokens={KNOWLEDGE_MAX_LENGTH},' |
| ' inkey="knowledge", outkey="knowledge_tokens",' |
| f' prompt="{data_utils.KNOWLEDGE_PREFIX}")|keep("image",' |
| ' "knowledge_tokens")' |
| ) |
| dataset_configs.vocab_size = data_utils.VOCAB_SIZE_T5 |
| dataset_configs.prefetch_to_device = 2 |
| return dataset_configs |
|
|
|
|
| @datasets.add_dataset('vqa_table') |
| def get_dataset( |
| *, |
| batch_size, |
| eval_batch_size, |
| num_shards, |
| dtype_str='float32', |
| shuffle_seed=None, |
| rng=None, |
| dataset_configs=None, |
| dataset_service_address: Optional[str] = None, |
| ): |
| """Returns generators for the CC12M train, validation and test sets. |
| |
| Args: |
| batch_size: int; Determines the train batch size. |
| eval_batch_size: int; Determines the evaluation batch size. |
| num_shards: int; Number of shards --> batch shape: [num_shards, bs, ...]. |
| dtype_str: Data type of the image (e.g. 'float32'). |
| shuffle_seed: int; Seed for shuffling the training data. Not used. |
| rng: JAX rng key, which can be used for augmentation, shuffling, etc. |
| dataset_configs: dict; Dataset specific configurations. |
| dataset_service_address: If set, will distribute the training dataset using |
| the given tf.data service at the given address. |
| |
| Returns: |
| A dataset_utils.Dataset() which includes a train_iter, a valid_iter, |
| a test_iter, and a dict of meta_data. |
| """ |
| del batch_size |
| default_dataset_config = get_default_dataset_config() |
| if dataset_configs: |
| default_dataset_config.update(dataset_configs) |
|
|
| dataset_configs = default_dataset_config |
|
|
| del rng |
| assert dataset_configs is not None |
| logging.info('Loading train split of the %s', dataset_configs.dataset) |
|
|
| def pp_fn(x, how): |
| pp = builder.get_preprocess_fn(how, remove_tpu_dtypes=False) |
| example = pp(x) |
| example['image'] = tf.cast(example['image'], dtype=dtype_str) |
| return example |
|
|
| |
| shuffle_buffer_size = None |
|
|
| train_ds = data_utils.get_data( |
| dataset=dataset_configs.dataset, |
| split=dataset_configs.train_split, |
| data_dir=dataset_configs.get('dataset_dir'), |
| batch_size=eval_batch_size, |
| preprocess_fn=functools.partial(pp_fn, how=dataset_configs.pp_train), |
| shuffle_buffer_size=None, |
| shuffle_files=False, |
| prefetch=dataset_configs.get('prefetch_to_host', 2), |
| cache='loaded', |
| ignore_errors=False, |
| drop_remainder=True, |
| ) |
|
|
| if dataset_service_address: |
| if shuffle_seed is not None: |
| raise ValueError( |
| 'Using dataset service with a random seed causes each ' |
| 'worker to produce exactly the same data. Add ' |
| 'config.shuffle_seed = None to your config if you ' |
| 'want to run with dataset service.' |
| ) |
| logging.info('Using the tf.data service at %s', dataset_service_address) |
| assert shuffle_buffer_size is not None |
| train_ds = dataset_utils.distribute(train_ds, dataset_service_address) |
|
|
| n_train_ex = dataset_utils.get_num_examples( |
| dataset_configs.dataset, |
| dataset_configs.train_split, |
| data_dir=dataset_configs.get('dataset_dir'), |
| ) |
|
|
| maybe_pad_batches_train = functools.partial( |
| dataset_utils.maybe_pad_batch, |
| inputs_key='image', |
| train=True, |
| batch_size=eval_batch_size, |
| ) |
| shard_batches = functools.partial(dataset_utils.shard, n_devices=num_shards) |
|
|
| train_iter = iter(train_ds) |
| train_iter = map(dataset_utils.tf_to_numpy, train_iter) |
| train_iter = map(maybe_pad_batches_train, train_iter) |
| if num_shards > 0: |
| train_iter = map(shard_batches, train_iter) |
|
|
| meta_data = { |
| 'num_train_examples': n_train_ex, |
| 'example_per_shard': int(n_train_ex // jax.process_count()), |
| 'batch_size': eval_batch_size, |
| } |
|
|
| image_shape = (dataset_configs.image_size, dataset_configs.image_size, 3) |
| knowledge_shape = (KNOWLEDGE_MAX_LENGTH + data_utils.PROMPT_LENGTH,) |
|
|
| meta_data['image_spec'] = (image_shape, getattr(jnp, dtype_str)) |
| meta_data['knowledge_spec'] = (knowledge_shape, jnp.int16) |
| return dataset_utils.Dataset(train_iter, None, None, meta_data) |
|
|