Placeholder text
Building LLM Agents with RAG, Knowledge Graphs & Reflection
0 - Default Title
Description
Retrieval-Augmented Generation (RAG)Master the techniques that make models factually grounded and transparent.Implement retrievers, rankers, and generators using open-source frameworks.Evaluate accuracy with metrics like Recall@K, Precision@K, and grounding quality.
Knowledge Graphs and Structured ReasoningDesign and query graph-based knowledge systems using Neo4j, ArangoDB, or GraphRAG.Combine structured knowledge with unstructured language for explainable AI.
Reflection and Cognitive LoopsBuild agents that evaluate their own outputs and correct themselves.Implement Plan ¿ Act ¿ Reflect ¿ Revise cycles for self-improving intelligence.Explore short-term and long-term memory systems for continuous learning.
Multi-Agent CollaborationUse frameworks like CrewAI, LangGraph, and AutoGPT2 to orchestrate coordination.
Key FeaturesEnd-to-end coverage: From LLM fundamentals to advanced RAG and reflection architectures.Practical code labs: Step-by-step walkthroughs in Python with modular components.Visual clarity: Concept diagrams, data flow maps, and evaluation schematics throughout.Debugging insights: Identify hallucinations, reasoning gaps, and retrieval errors with real-world examples.Scalable design patterns: Extend single-agent models into multi-agent collaborative systems.
This book is written for:AI developers, data scientists, and engineers who want to move beyond simple LLM prompts.Architects and product innovators building intelligent, explainable, and adaptive AI systems.Researchers and students seeking a structured understanding of retrieval-based reasoning and reflection.Tech leaders and educators integrating agentic AI into enterprise or academic environments.
You don't need a supercomputer-just intermediate Python skills, a working knowledge of APIs, and curiosity. Every example can be run on a standard laptop or cloud environment.Order Now.
Product details
Binding:
Paperback
Number of Pages:
278
Release Date:
2025-11-09
Publication Date:
2025-11-09
Publisher:
Richa Publishing Minds
Languages:
Original:
English
ISBN13:
9798232017378
GPSR Manufacturer Reference:
Weight:
525 g
Height:
191 cm
Width:
235 cm
Thickness:
15 cm
Currently sold out