☰
← Library
Part V: Agentic AI
A−
A+
☽
Contents
Disclaimer
About the Author
Preface
Introduction
Part I: Foundations
LLM Architecture and Optimization Methods
Systems Foundations for LLMs
Introduction to Reinforcement Learning
Part II: RL Methods for LLMs
RL Foundations for Language Models
PPO — Proximal Policy Optimization
DPO — Direct Preference Optimization
GRPO — Group Relative Policy Optimization
Preference Optimization Variants
Reward Model Training
SFT Best Practices and Techniques
System Architecture & Infrastructure at Scale
LLM Agentic Training
Part III: Reasoning
RL for Large Reasoning Models
Part IV: Evaluation
LLM Evaluation
Part V: Agentic AI
Introduction to Agentic AI
Retrieval-Augmented Generation (RAG)
Agentic Memory Systems
Agent Harness – Context Management and Orchestration
Agent Design Patterns
Agentic Environments and Benchmarks
Model Context Protocol (MCP)
Agent Skills
Agent-to-Agent Communication (A2A)
Multi-Agent Systems
Agent Development Frameworks
Agentic UI Frameworks
Part VI: Assessment & Reference
Quiz Questions & Detailed Answers
Quick Reference
Conclusion and Future Directions
Part V: Agentic AI
Chapter 24 of 40 · Haggai Roitman
Part V: Agentic AI
Part V
Agentic AI
Chapter 15
← Previous
LLM Evaluation
Next →
Introduction to Agentic AI