Building Smarter Real-World Generative Ai Systems - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: Building Smarter Real-World Generative Ai Systems (/Thread-Building-Smarter-Real-World-Generative-Ai-Systems) |
Building Smarter Real-World Generative Ai Systems - AD-TEAM - 11-10-2024 Building Smarter Real-World Generative Ai Systems Published 10/2024 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz Language: English | Size: 582.33 MB | Duration: 1h 48m Building Smarter Real-World Generative AI Systems with LangGraph and LangChain [b]What you'll learn[/b] Explore Lang graph and Build Agentic Applications Learn Generative AI using Langchain and Lang Graph Explore Lang graph and Build Agentic Applications Provides End to end tutorial for LangChain [b]Requirements[/b] Basic python programming and NLP [b]Description[/b] Welcome to Building a Generative AI Application with LangGraph by Learner's Spot! This course is designed to equip you with the knowledge and skills needed to create your very own Generative AI application. Whether you're a beginner or looking to deepen your understanding, we've structured this course to guide you step-by-step through essential concepts and practical applications.What You'll Learn:Introduction to Generative AI & LLMs: Kick off your journey with a comprehensive overview of Generative AI and Large Language Models. Understand the fundamental principles behind these technologies and how they empower intelligent applications.Exploring the Langchain Framework: Dive into the components of the Langchain Framework and discover how data flows within it. We'll prepare you for hands-on work by setting up your development environment with Python and Langchain.Utilizing Langchain's Tools: Learn how to leverage Langchain's built-in tools and how to create custom ones tailored to your unique needs.Understanding Agents: We'll introduce you to the concept of Agents, with a special focus on the REACT agent, discussing its advantages and limitations.Deep Dive into LangGraph: The heart of this course is LangGraph. Explore its key features, advanced functionalities like the multi-agent approach, and smart planning through real-world examples.Mastering Key Terminologies: Get familiar with essential LangGraph terminologies, such as states, nodes, and edges, and understand their significance in building structured AI systems.Building Your First AI-Driven Chatbot: Apply what you've learned by constructing your first chatbot using LangGraph. This hands-on project will provide practical experience with the framework.Exploring Retrieval-Augmented Generation Applications: Discover how Retrieval-Augmented Generation (RAG) applications enhance language models by integrating external information retrieval before response generation.Hands-On RAG Application Session: Participate in a guided session to create a RAG application, solidifying your understanding of this powerful approach. Overview Section 1: Introduction Lecture 1 Introduction Section 2: Generative AI & LLMs: A Comprehensive Guide Lecture 2 Generative AI Lecture 3 LLM Section 3: Introduction to LangChain Lecture 4 LangChain FrameWork Lecture 5 LangChain Dataflow Section 4: Setting Up Environment Lecture 6 Python Installation Lecture 7 LangChain and LangGraph Installation Lecture 8 Setting up OpenAI Account Lecture 9 Setting up Jupyter notebook Lecture 10 Setting API Key in Environment File Section 5: Tools and Agents Lecture 11 What is Tools Lecture 12 Types of Tools Lecture 13 Built-in Tools Lecture 14 Components of a Tool Lecture 15 Custom Tools Lecture 16 Agents Lecture 17 ReAct Agent Lecture 18 ReAct Agent in detail Lecture 19 Building ReAct Agent Lecture 20 Disadvantages of Agent Section 6: Introduction to LangGraph Lecture 21 What is LangGraph Lecture 22 Key Features of LangGraph Lecture 23 LangGraph in Action: A Real-World Example Lecture 24 Salvation by Multi-Agent Approach Lecture 25 Smarter Planning with Stateful Systems Lecture 26 Optimizing Decisions with Cycles and Persistence Lecture 27 Interactive and Real-Time Systems Lecture 28 LangGraph's Inspiration Section 7: LangGraph Key Terminologies Lecture 29 Introduction to LangGraph World Lecture 30 Understanding State in LangGraph Lecture 31 State Definition in Python Lecture 32 Node Activation and Execution Lecture 33 Understanding Edges : Connecting the Dots Lecture 34 Exploring State Graph: Managing Communication and Workflow Lecture 35 Enhancing AI Interactions with Message Graph Section 8: Creating Your First Graph Lecture 36 First Graph Preview Lecture 37 Building a basic Chatbot Lecture 38 Enhancing Chatbot with Tools Section 9: Introducing RAG World Lecture 39 Introduction to RAG Lecture 40 RAG Pipeline Lecture 41 Components of RAG Section 10: Real-world applications - RAG Lecture 42 Simple RAG App Overview Lecture 43 Building a Retriever Lecture 44 Agentic RAG : App Overview Lecture 45 Building Agent Node Lecture 46 Buildng Generate Node Lecture 47 Constructing Graph Lecture 48 Visualize the RAG Graph Lecture 49 Experiment the RAG Section 11: Conclusion Lecture 50 Conclusion Who is interested to develop GenAI Application using LangGraph
RapidGator
FileAxa FileStore TurboBit |