Reasoning Models for LLM Engineers
Designing Agentic Reasoning, Tool Use, RAG, and Graph-Based Intelligence in Production AI Systems
by Finn Cordex
Unlock the full potential of large language models (LLMs) and agentic AI systems with this definitive guide for engineers, data scientists, and AI practitioners. Reasoning Models for LLM Engineers bridges the gap between theory and production, showing you how to design intelligent, autonomous systems that combine advanced reasoning, tool integration, retrieval-augmented generation (RAG), and graph-based intelligence.
Inside this book, you will discover:
How to architect agentic reasoning pipelines that make LLMs smarter, faster, and more reliable.
Practical strategies for integrating tools, APIs, and databases into LLM workflows.
Advanced RAG techniques for building AI systems that understand, recall, and act on complex data.
Graph-based intelligence methods for orchestrating reasoning, memory, and decision-making.
Hands-on Python, LangChain, and LangGraph implementations ready for production.
Best practices for debugging, testing, scaling, and securing AI systems in enterprise contexts.
Whether you are an experienced developer, ML engineer, or applied researcher, this book provides the conceptual depth, architectural insight, and actionable code examples you need to build next-generation AI applications. Move beyond basic prompts-master reasoning models, agentic workflows, and production-ready AI architectures.
Empower your LLMs. Transform your AI systems. Engineer intelligence that works in the real world.