RAG vs. Prompt Engineering: The Hidden Key to AI Mastery [ENG SUB]

Поделиться
HTML-код
  • Опубликовано: 18 ноя 2024
  • 📝Summary
    In this podcast, we have Teddy, and it will be great content to help you understand langchain and rag.
    RAG is a technique that helps large language models (LLMs) provide higher quality answers.
    If you convert your PDF document to Markdown format, GPT can easily process it.
    Additionally, the performance of GPT can be improved through methods such as leveraging databases and using search algorithms.
    This video shows you how to use rag and GPT.
    -------------------------------------------------- -------------------------------------------------- -------------------------------------------------- --------
    📌AI Utilization Peak Podcast is with @yuniquekr.
    -------------------------------------------------- -------------------------------------------------- -------------------------------------------------- --------
    ⏰Time stamp
    00:00:00 🎙️Teddy’s story about data analysis and artificial intelligence.
    00:04:16 👀Sharing insights on Langchain programming and service production
    00:08:01 🤖Difference in usability and development background between chat gpt and rag
    00:10:02 💡Using rag in business: storing information and creating personalized GPTs.
    00:12:13 💻ChatGPT upgrade and Wag system analysis
    00:14:33 📄Convert PDF to Markdown format to make it easier to understand GPT.
    00:17:31 🌐Website processing, natural language processing, and consideration of Korean language specialties
    00:16:37 🧠Corporate data processing: PDF and word document conversion, vector DB
    00:21:16 Understanding Pangyo restaurant keywords, GPT search method, and similarity search
    00:26:06 ️💻Coding, AI services, language comparison: GPT vs Claude 3
    00:30:19 ️📊Looking at the potential benefits of detailed corporate rag utilization and analysis.
    00:37:14 ️🚘Introducing rag software that operates without coding related to autonomous driving
    00:40:53 Tunable options in source text.
    00:43:10 ️💻How to utilize the features and integration of automatic translation and summary services
    00:47:42 💻Sampling tools using coding, prompts, LLM programs, etc.
    00:50:26 🔬Prompt Engineering Methodology and the Importance of Model Optimization
    00:52:36 🧩The importance of transparency, improved performance, and fine-tuning of answers using RAG
    00:57:22 Coding academy registration and understanding of Prompt Engineering
    01:02:04 🔍Comparison of GPT model and rag model, emphasizing the importance of experience through rag
    01:03:08 🎙️RUclips trends and content strategy
    01:08:05 📄The importance of utilizing Relive documents and collecting and arranging information
    01:11:15 💬Importance of document summarization and similarity to human behavior
    -------------------------------------------------- -------------------------------------------------- -------------------------------------------------- --------
    ✅Tag
    -------------------------------------------------- -------------------------------------------------- -------------------------------------------------- --------
    🚀 If you sign up for a RUclips channel membership, you can view members-only content and, depending on your membership level, participate in live broadcasts that deliver the hottest news related to RUclips and ChatGPT every month.
    Subscribe to membership: / @ordinary Businessman/join
  • НаукаНаука

Комментарии •