| NeMo (**Ne**ural **Mo**dules) is a toolkit for creating AI applications built around **neural modules**, conceptual blocks of neural networks that take *typed* inputs and produce *typed* outputs. |
|
|
| ## **collections/** |
| * **ASR** - Collection of modules and models for building speech recognition networks. |
| * **TTS** - Collection of modules and models for building speech synthesis networks. |
| * **Audio** - Collection of modules and models for building audio processing networks. |
| * **SpeechLM2** - Collection of modules and models for building multimodal LLM. |
|
|
| ## **core/** |
| Provides fundamental APIs and utilities for NeMo modules, including: |
| - **Classes** - Base classes for datasets, models, and losses. |
| - **Config** - Configuration management utilities. |
| - **Neural Types** - Typed inputs/outputs for module interaction. |
| - **Optim** - Optimizers and learning rate schedulers. |
|
|
| ## **lightning/** |
| Integration with PyTorch Lightning for training and distributed execution: |
| - **Strategies & Plugins** - Custom Lightning strategies. |
| - **Fabric** - Lightweight wrapper for model training. |
| - **Checkpointing & Logging** - Utilities for managing model states. |
|
|
| ## **utils/** |
| General utilities for debugging, distributed training, logging, and model management: |
| - **callbacks/** - Hooks for training processes. |
| - **loggers/** - Logging utilities for different backends. |
| - **debugging & profiling** - Performance monitoring tools. |
|
|