The No-BS Agentic AI Engineering Manual: Build Autonomous LLM Agents That Actually Work, 20+ Copy-Paste Templates, Framework Comparisons, Debugging Workflows Without Fragile Demos or Glued APIs
Format:
Paperback
En stock
0.76 kg
Sí
Nuevo
Amazon
USA
- Stop Building Fragile AI Demos. Start Shipping Real Autonomous Agents That Actually Work. Are you tired of “agentic AI” tutorials that look brilliant in theory but collapse in production? Have you lost hours trying to untangle endless framework chaos—LangGraph, CrewAI, AutoGen—without ever getting a stable agent to run? Do you feel stuck watching others talk about “autonomy” while your prototypes still crash, loop, or forget? Let’s face it: most of what’s called “agentic AI” today is smoke and mirrors—over-glorified chatbots with no real autonomy, no memory, and zero reliability under real-world load. You build a demo, it wobbles, you patch it, it breaks again. Costs rise, performance drops, and confidence evaporates. It’s not your fault. The problem is that the AI field rewards hype over engineering. The No-BS Agentic AI Engineering Manual is your antidote to that chaos. Written by applied AI systems engineer Alec Rennford, this book delivers a hard-hitting, field-tested playbook for building, scaling, and debugging autonomous LLM agents that actually perform in production. It’s not theory—it’s engineering. Inside, you’ll discover the real-world architectures, workflows, and templates that turn fragile experiments into resilient, intelligent systems that think, act, and improve. You will learn: The truth about what separates chatbots from true autonomous agents—and how to design for reliability and scale from day one.Proven frameworks for orchestrators, planners, tool routers, evaluators, and memory managers that collaborate seamlessly.How to choose and combine LangGraph, CrewAI, and AutoGen using practical, ready-to-run engineering templates.How to implement memory architectures—short-term, episodic, semantic—that prevent your agents from “forgetting” or looping.How to trace, debug, and evaluate every reasoning step with measurable metrics and real observability.How to implement full AgentOps—versioning, rollback systems, red-teaming, sandboxing, and CI/CD—for continuous, safe improvement.Even if you’ve struggled to get a single agent working—or if you’re overwhelmed by the complexity of LLM frameworks—this book gives you a step-by-step, engineering-grade roadmap to move from broken prototypes to production-ready systems. You don’t need to be an AI researcher to make it work; you just need a builder’s mindset and the right blueprint. Don’t waste another sprint gluing APIs together and calling it autonomy. Learn how to build agents that reason, plan, and deliver measurable business results. Scroll to the top of the page and click “Buy Now” to start building autonomous LLM agents that actually work—today.
IMPORT EASILY
By purchasing this product you can deduct VAT with your RUT number