
A Simple Guide to Retrieval Augmented Generation
Original price was: $49.99.$19.95Current price is: $19.95.
(52 Video: 7 Hours 05 Minutes • 1 Book: Pages: 258)
RAG Mastery Bundle: The Simple Guide to Retrieval Augmented Generation + Video Edition
Elevate your AI literacy and practical skills with a comprehensive bundle that blends a thorough, human-friendly guide on Retrieval Augmented Generation (RAG) with a hands-on video course. This unified offering takes you from foundational concepts to building and evaluating real-world RAG systems, using Python and popular tools like LangChain.
Overview
Retrieval Augmented Generation augments an LLM’s outputs by grounding responses in external knowledge sources. This bundle combines:
- The book: A plain-English, beginner-to-advanced introduction to RAG, with realistic Python code examples and end-to-end guidance.
- The video edition: A practical, beginner-friendly course that walks you through indexing, generation pipelines, advanced RAG strategies, and building a complete RAG system—capable of handling multimodal data and real-world workflows.
Together, they provide a cohesive path from theory to practice, enabling you to design, implement, evaluate, and refine RAG solutions for proprietary content, up-to-date information, and dynamic conversations.
What’s Included
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The Simple Guide to Retrieval Augmented Generation (Book)
- Core concepts: RAG components, system design, and real-world applications.
- Knowledge-base creation: Indexing strategies, vector databases, and document management.
- Pipelines: Separation of indexing (knowledge input) and generation (contextual output) workflows.
- Evaluation: Techniques for measuring accuracy, relevance, and faithfulness.
- Advanced approaches: Progression from naïve to modular and multimodal RAG variants.
- Tools and frameworks: Practical guidance on LangChain and related Python libraries.
- Hands-on Python examples: Clear, annotated code to implement RAG steps end-to-end.
- Scope: From beginner-friendly concepts to advanced RAG strategies and architecture.
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A Simple Guide to Retrieval Augmented Generation, Video Edition (Course)
- Beginner-friendlyINTRO and progressive deep-dive: From fundamentals to advanced methods.
- Practical workflows: Building a complete RAG system with indexing and generation pipelines.
- Multimodal and modular RAG: Handling images, spreadsheets, and other data types.
- Hands-on Python implementation: Step-by-step code tutorials using LangChain and common tooling.
- Assessment-ready content: Exercises and examples to validate understanding and build confidence.
- Course length: ~7 hours and 5 minutes of video instruction.
- Hands-on outcomes: Concrete, running example projects you can adapt to your own data.
Why This Bundle Is Valuable
- Cohesive learning journey: Seamlessly connects theoretical foundations with practical implementation, enabling you to move from reading to building in one sitting.
- Beginner-friendly yet future-proof: Designed for data scientists, engineers, and technology managers with no prior LLM experience, while also covering advanced strategies for continued growth.
- Hands-on realism: Realistic Python code, practical tooling (e.g., LangChain), and a guided path to deployable RAG systems.
- Holistic coverage: Addresses indexing and generation pipelines, evaluation, RAG evolution (naïve to modular), and multimodal variants, including a practical framework for ongoing RAGOps and lifecycle management.
- Direct applicability: Learn to create a RAG knowledge base from your own data, select appropriate retrieval backends, and craft responses that are accurate, relevant, and faithful.
Who Should Consider This Bundle
- Data scientists, software engineers, and technology managers who want to deploy RAG in real business scenarios.
- AI newcomers seeking a structured, hands-on introduction to RAG concepts and tooling.
- Teams looking to upskill in building end-to-end RAG workflows with practical Python examples.
How the Bundle Helps You Learn and Build
- Step-by-step guidance: Start with core ideas, proceed to building a knowledge base, then implement an end-to-end RAG system.
- Hands-on practice: Implement indexing, generation, and evaluation pipelines with Python code you can adapt to your data.
- Risk reduction: Learn to ground model outputs with retrieved content to improve accuracy, relevance, and faithfulness.
- Scalability and variants: Explore modular architectures and multimodal data integration for more sophisticated solutions.
Technical Requirements (Recommended)
- Python 3.8+ (or later)
- Access to a vector database or embedding store (e.g., Pinecone, FAISS, or similar)
- LangChain and related Python libraries (as demonstrated in the course and book)
- Access to the internet or a local dataset for building your knowledge base
- Basic familiarity with Python programming (variables, functions, notebooks or scripts)
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