# ML Batch Processing Learn how to use TorchFX for batch processing audio data in machine learning pipelines. ## Overview This tutorial covers: - Loading and preprocessing audio datasets - Applying effects and filters in batch mode - GPU acceleration for large-scale processing - Integration with PyTorch DataLoaders ## Prerequisites - Basic Python knowledge - Familiarity with PyTorch - Understanding of audio signal processing basics ## Tutorial Content ```{todo} *Coming soon! This tutorial is currently under development.* ``` ## What You'll Learn - How to efficiently process large audio datasets - Best practices for batch audio augmentation - Memory management techniques for GPU processing - Creating custom preprocessing pipelines ## Example Code ```python import torch from torchfx import Wave, FX from torchfx.filter import LoButterworth # Example code will be added here ``` ## Next Steps After completing this tutorial, you may want to explore: - [Real-time Processing](real-time-processing.md) - [Filters Design](filters-design.md) - [Custom Effects](custom-effects.md)