Navigating These Docs
Documentation is organized into two main halves:
Foundational Topics
Core concepts and essential functionality:
- Installation
- Training and Sampling
- Loss Functions
- Saving and Loading
- Async Operations
- Model Lineup
The MinT Cookbook
Practical implementations and examples:
- Supervised Learning
- Reinforcement Learning
- Preferences (DPO/RLHF)
- Evaluations
- LoRA Primer
- Development Tips
The foundational topics provide the building blocks, while the Cookbook offers practical, ready-to-run implementations for common use cases.