🛟 The Ultimate Guide to Fine-Tuning LLMs
*To whom it may concern...
A 115-page guide covers everything you need to fine-tune LLMs, from fundamentals to advanced techniques.
What's covered:
  • Task- and domain-specific fine-tuning
  • Parameter-efficient methods: PEFT, LoRA, QLoRA, DoRA, HFT
  • Expert-based architectures: MoE, Lamini Memory Tuning, MoA
  • Alignment and optimization: PPO, DPO
  • Model simplification: Pruning
If you’re serious about mastering LLM fine-tuning, this is one of the most comprehensive open resources available.
10
10 comments
Mišel Čupković
6
🛟 The Ultimate Guide to Fine-Tuning LLMs
AI Automation Society
skool.com/ai-automation-society
A community built to master no-code AI automations. Join to learn, discuss, and build the systems that will shape the future of work.
Leaderboard (30-day)
Powered by