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Becoming An Ai Engineer With Langchain
![]() Becoming An Ai Engineer With Langchain Published 1/2025 Created by Mark Chen MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch Level: All | Genre: eLearning | Language: English | Duration: 44 Lectures ( 1h 40m ) | Size: 692 MB Develop your Generative AI Application with LangChain What you'll learn Learn to use LangChain to develop generative AI applications Learn to use LangChain and its platforms to develop RAG applications Learn to use LangChain and LangGraph to develop LLM agents Learn the fundamental of LLM application development and prompting techniques Requirements Have a basic understanding to Python programming Have an account to OpenAI API and its API Key Have an account to Anthropic API and its API Key A free or premium LangSmith account Description Becoming an AI Engineer with LangChainAbout the Course "Becoming an AI Engineer with LangChain" is a hands-on course designed to provide a thorough understanding of LangChain, a robust framework for developing applications with large language models (LLMs). Led by Mark Chen, founder of Mindify AI, this course is crafted to take you from the basics of generative AI to advanced LangChain components and integrations. By the end, you'll have practical experience building applications that use LangChain to streamline data handling, model interactions, and AI deployment processes.About the Instructor Mark Chen, the founder of Mindify AI, is an experienced AI engineer and entrepreneur dedicated to creating generative AI solutions. His expertise spans building LLM-driven applications, developing AI agent-based applications, and navigating the LangChain framework. Mark's background in developing real-world AI applications gives this course a unique, practical focus that combines foundational knowledge with insights from the cutting edge of AI technology.Course Outline - Chapter 1: Introduction to Generative AI and LangChain - Chapter 2: Working with LLMs - From Embedding to Chat Models - Chapter 3: Document Handling - Using Document Loaders in LangChain - Chapter 4: Data Storage - Vector Data Stores and Context Retrieval - Chapter 5: Essential Tools - LangChain Tooling and Code Integration - Chapter 6: Agents and Decision-Making - LangGraph Agent Applications - Chapter 7: LangChain on Platforms - Integrating LLMs across platforms - Chapter 8: Building Applications - LangChain APIs for Chatbots, RAG, and Agentic Models What Will You Learn from This Course Understand the Architecture of LangChain: Get familiar with its structure, components, and modular integrations. - Master Prompt Engineering: Learn zero-shot, few-shot, and chain-of-thought prompting to improve model accuracy and utility. - Implement Real-World Applications: Create LLM applications that handle documents, search data, and interact through custom agents. - Build and Deploy AI Models: Learn how to utilize LangChain's APIs for chat models, data stores, and agents in deployable applications.Who Will Be Suitable for This Course This course is ideal for: - Aspiring AI Engineers and Developers who want hands-on experience with LLM-driven applications. - Software Engineers interested in transitioning to AI by building practical applications with a comprehensive framework. - Tech Enthusiasts and Researchers looking to deepen their understanding of generative AI and LangChain's framework. - Anyone interested in AI development who wants to leverage the power of LLMs and AI agents to build robust, scalable applications. Take this course to kickstart your journey as an AI engineer and gain the skills to create real-world applications that push the boundaries of what AI can achieve. Who this course is for People with needed to develop context-aware AI application Computer science students People with deep interests in generative AI People who wants to become an AI engineer in the future Homepage Цитата:
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