Fine-Tuning, RAG, or Prompt Engineering? The Ultimate LLM Showdown Explained!
Patralekh Satyam Patralekh Satyam
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 Published On Sep 25, 2024

In this video, we dive into the world of Large Language Models (LLMs) with a showdown between three powerful approaches: Fine-Tuning, Retrieval-Augmented Generation (RAG), and Prompt Engineering. Whether you’re building a financial services tool or enhancing your AI suite, choosing the right approach is key to success!

We break down each method, explore the decision-making process, and offer insights into factors like cost, scalability, and complexity. Watch to find out which strategy is your secret sauce for crafting a killer LLM-powered product. Don’t miss out on this essential guide for AI enthusiasts and developers!

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