May 6, 2024, 2:21 p.m. | Selina Li

Towards AI - Medium pub.towardsai.net

Exploring LLM Strategies: A Journey through Prompt Engineering, Functional Calling, RAG, and Fine-Tuning

What they are, how they are related and how to select one for your use case

Author: Selina Li, Tianyi Li

· Introduction
· Recap on how LLM works
· What are the strategies, and how are they related to each other?
1. Pure Prompt
2. Agent + Function Calling
3. RAG (Retrieval Augmented Generation)
4. Fine Tuning
· When to use …

engineering fine-tuning functional introduction journey llm openai-function-calling prompt prompt-engineering rag recap retrieval-augmented strategies through

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