oaxino Posted June 6, 2024 Report Share Posted June 6, 2024 LLMs with LangChain - Beginner friendlyPublished 6/2024MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 ChLanguage: English | Duration: 1h 13m | Size: 522 MBUnderstand Prompts, Chains and Agents. Build your first LLM App.What you'll learnBuild an LLM based App from scratch using Streamlit.Learn how Agents work. Understand the 3 components of Agents and code an Agent in LangChainLearn how Chains work. Understand and build Simple and Sequential Chains.Learn what are Prompts and how to use its structureUnderstand how LangChain works. What are the components that make this library so effectiveRequirementsThere is no pre-requisite. I assume no knowledge of Langchain or Large Language ModelsDescriptionThis beginner-friendly course will help you start using LangChain to develop LLM applications with NO prior experience! We will understand the concepts by coding up examples. I see LangChain becoming what Pandas is to Data Science. It will be the core library that Data Scientists and Machine Learning professionals will use to build applications using Large Language Models. The goal of this course is to provide an understanding of how to navigate LangChain. There is no expectation of understanding of Natural Language Processing or Large Language Models. We will leverage the power of LangChain to build our use cases. Step-by-Step we will build up the key components of LangChain. Prompts, Chains, and then Agents. We will build our understanding with easy-to-follow code. Topics covered are 1. Prompts - We will see what is a Prompt and how can we build Prompt templates to automate prompt inputs2. Chains - This is the Chain part of LangChain. We will see how Prompts roll up to Chains and explore Simple and Sequential Chains3. Agents - The most important and powerful feature of LangChain. We will see the 3 components that make up Agents- Tools, LLMs, and Agent type. We will explore Tools - Wikipedia, SerpAPI, LLMmath - to see how to best extract the power of Agents. 4. Build an LLM App. Use your knowledge to solve a real-world problem.Who this course is forBeginner A.I. enthusiasts who want to understand how Large Language Models can be used by using LangchainServe LLM based app using StreamlitHomepage:https://www.udemy.com/course/llms-with-langchain-beginner-friendly/Screenshotsrapidgator.net:https://rapidgator.net/file/368acf0e60d5b87ab7b6af0574435ab7/ttuhw.LLMs.with.LangChain..Beginner.friendly.rar.html Link to comment Share on other sites More sharing options...
Recommended Posts
Please sign in to comment
You will be able to leave a comment after signing in
Sign In Now