140 lines
4.7 KiB
Python
140 lines
4.7 KiB
Python
# Standard library imports
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import logging
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from typing import Dict, Optional
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# Third-party imports
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from torch.utils.data import IterableDataset
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import ray
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import ray.data
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import ray.train
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# Local imports
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from constants import DatasetKey
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from config import BenchmarkConfig
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from image_classification.factory import (
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ImageClassificationRayDataLoaderFactory,
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ImageClassificationTorchDataLoaderFactory,
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)
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from .imagenet import get_preprocess_map_fn
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from .parquet_iterable_dataset import S3ParquetImageIterableDataset
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from s3_parquet_reader import S3ParquetReader
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logger = logging.getLogger(__name__)
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class ImageClassificationParquetRayDataLoaderFactory(
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ImageClassificationRayDataLoaderFactory
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):
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"""Factory for creating Ray DataLoader for Parquet image classification.
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Features:
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- Parquet file reading with column selection
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- Image decoding and preprocessing
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- Resource allocation for concurrent validation
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- Row limits based on benchmark configuration
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"""
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def __init__(
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self, benchmark_config: BenchmarkConfig, data_dirs: Dict[str, str]
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) -> None:
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super().__init__(benchmark_config)
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self._data_dirs = data_dirs
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def get_ray_datasets(self) -> Dict[str, ray.data.Dataset]:
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"""Get Ray datasets for training and validation.
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Returns:
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Dictionary containing:
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- "train": Training dataset with random transforms
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- "val": Validation dataset without transforms
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"""
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# Create training dataset with image decoding and transforms
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train_ds = ray.data.read_parquet(
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self._data_dirs[DatasetKey.TRAIN],
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columns=["image", "label"],
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).map(get_preprocess_map_fn(decode_image=True, random_transforms=True))
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if self.get_dataloader_config().limit_training_rows > 0:
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train_ds = train_ds.limit(self.get_dataloader_config().limit_training_rows)
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# Create validation dataset without random transforms
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val_ds = ray.data.read_parquet(
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self._data_dirs[DatasetKey.TRAIN],
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columns=["image", "label"],
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).map(get_preprocess_map_fn(decode_image=True, random_transforms=False))
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if self.get_dataloader_config().limit_validation_rows > 0:
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val_ds = val_ds.limit(self.get_dataloader_config().limit_validation_rows)
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return {
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DatasetKey.TRAIN: train_ds,
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DatasetKey.VALID: val_ds,
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}
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class ImageClassificationParquetTorchDataLoaderFactory(
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ImageClassificationTorchDataLoaderFactory, S3ParquetReader
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):
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"""Factory for creating PyTorch DataLoaders for Parquet image classification.
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Features:
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- Parquet file reading with row count-based distribution
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- Worker-based file distribution for balanced workloads
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- Row limits per worker for controlled processing
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- Dataset instance caching for efficiency
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"""
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def __init__(
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self, benchmark_config: BenchmarkConfig, data_dirs: Dict[str, str]
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) -> None:
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"""Initialize factory with benchmark configuration.
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Args:
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benchmark_config: Configuration for benchmark parameters
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"""
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super().__init__(benchmark_config)
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S3ParquetReader.__init__(
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self
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) # Initialize S3ParquetReader to set up _s3_client
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self.train_url = data_dirs[DatasetKey.TRAIN]
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self._cached_datasets: Optional[Dict[str, IterableDataset]] = None
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def get_iterable_datasets(self) -> Dict[str, IterableDataset]:
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"""Get train and validation datasets with worker-specific configurations.
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Returns:
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Dictionary containing:
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- "train": Training dataset with random transforms
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- "val": Validation dataset without transforms
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"""
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if self._cached_datasets is not None:
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return self._cached_datasets
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# Get row limits for workers and total processing
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(
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limit_training_rows_per_worker,
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limit_validation_rows_per_worker,
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) = self._get_worker_row_limits()
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# Create training dataset
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train_file_urls = self._get_file_urls(self.train_url)
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train_ds = S3ParquetImageIterableDataset(
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file_urls=train_file_urls,
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random_transforms=True,
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limit_rows_per_worker=limit_training_rows_per_worker,
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)
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# Create validation dataset
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val_file_urls = train_file_urls
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val_ds = S3ParquetImageIterableDataset(
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file_urls=val_file_urls,
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random_transforms=False,
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limit_rows_per_worker=limit_validation_rows_per_worker,
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)
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self._cached_datasets = {
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DatasetKey.TRAIN: train_ds,
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DatasetKey.VALID: val_ds,
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}
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return self._cached_datasets
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