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A Comprehensive Comparison of Prompt Engineering, Finetuning and RAG

myscale.com
17 points·by coolkid0329·2 yıl önce·4 comments

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coolkid0329
·2 yıl önce·discuss
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 yıl önce·discuss
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.