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목록2024/08/27 (2)
A Joyful AI Research Journey🌳😊
ChatGPT, OpenAIYes, using Retrieval-Augmented Generation (RAG) would indeed be a better choice for the scenario where you want to write prompts like "write a positive review about a certain movie" or "write a negative review about a certain movie." Here’s why RAG is more suitable for this task:1. Contextual Relevance and Specificity:RAG can retrieve specific reviews or information related to the..
ChatGPT, OpenAIPretraining GPT-2 with Rotten Tomatoes data and incorporating Retrieval-Augmented Generation (RAG) with the same data are two different approaches with distinct goals and outcomes. Here’s a breakdown of the differences:1. Pretraining or Fine-Tuning GPT-2 with Rotten Tomatoes DataWhat It Is:Pretraining: Training GPT-2 from scratch using a large corpus like Rotten Tomatoes data (not..