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coolkid0329

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投稿

A Comprehensive Comparison of Prompt Engineering, Finetuning and RAG

myscale.com
17 ポイント·投稿者 coolkid0329·2 年前·4 コメント

コメント

coolkid0329
·2 年前·議論
Thank you for your interest and question. Simply put, you may often get unrealistic answers when trying out chatbots, i.e. the "hallucination of a large language model". The integration of RAG and MyScale effectively solves this hallucination and improves the accuracy of answers. For a concrete example, please refer to this blog:Teach your LLM to Always Answer with Facts not Fiction(https://myscale.com/blog/teach-your-llm-vector-sql/). If you want to customize your personalized solution, please contact us(https://myscale.com/contact/) and we will give you the best price and the best quality.
coolkid0329
·2 年前·議論
Fine-tuning as a supervised learning process ensures that the model understands and generates content that is highly relevant to a particular task. For example, when I fine-tuned language models used for sentiment analysis, their accuracy improved significantly. Whereas RAG with MyScale provides models with a broader knowledge base, enabling them to generate more contextualized and accurate responses, it faces challenges related to the quality and relevance of the retrieved information.