Building AI Agents with LLMs, RAG, and Knowledge Graphs by Salvatore Raieli (Author)
- Publisher: COMPUTER SCIENCE
- Availability: In Stock
- SKU: 60627 R1 0600
- Number of Pages: 560
Rs.1,290.00
Rs.1,595.00
Tags: AI agent tutorials , AI architecture , AI automation , AI best practices , AI case studies , AI data science , AI deployment strategies , AI design principles , AI engineering , AI for beginners , AI for developers , AI implementation , AI innovation , AI knowledge integration , AI model integration , AI programming guide , AI project guide , AI reasoning , AI research , AI software development , AI system optimization , AI technology , AI tools guide , autonomous AI systems , best books , Best Price , Best Selling Books , Building AI Agents book , Building AI Agents with LLMs , Building AI Agents with LLMs RAG , Building AI Agents with LLMs RAG and Graphs , Gabriele Iuculano , intelligent agents , knowledge graphs AI , large language models , LLM AI agents , machine learning applications , modern AI development , Online Bookshop , practical AI guide , RAG AI , Salvatore Raieli
📖 Title Name: Building AI Agents with LLMs, RAG, and Knowledge Graphs: A Practical Guide to Autonomous and Modern AI Agents
✍️ Authors: Salvatore Raieli, Gabriele Iuculano
📦 Quality: White Paper Pakistan Print
🔹 Introduction:
Building AI Agents with LLMs, RAG, and Knowledge Graphs provides a practical roadmap for designing autonomous AI systems using modern tools like large language models (LLMs), retrieval-augmented generation (RAG), and knowledge graphs. The book equips developers, data scientists, and AI enthusiasts with actionable strategies to build intelligent agents capable of understanding, reasoning, and interacting effectively.
🔑 Key Points:
-
Explains how to integrate LLMs with RAG techniques for smarter AI responses.
-
Demonstrates the use of knowledge graphs to structure and enhance AI reasoning.
-
Provides hands-on guidance for creating autonomous AI agents with real-world applications.
-
Covers best practices for scaling, maintaining, and optimizing AI systems.
-
Includes case studies and practical examples to bridge theory and implementation.
🕌 Conclusion:
This book serves as a comprehensive guide for anyone looking to build modern AI agents. By combining LLMs, RAG, and knowledge graphs, readers gain the skills to develop intelligent systems that are both autonomous and contextually aware.