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Scaling LLM Agents Distributed Cognition & Multi-Agent Ecosystems A Practical Guide to Architecting Collaborative, - Nyomtatható verzió +- HHW.hu (https://hhwforum.hu) +-- Fórum: Letöltések (https://hhwforum.hu/forumdisplay.php?fid=9) +--- Fórum: E-könyvek (https://hhwforum.hu/forumdisplay.php?fid=57) +---- Fórum: Külföldi könyvek (https://hhwforum.hu/forumdisplay.php?fid=64) +---- Téma: Scaling LLM Agents Distributed Cognition & Multi-Agent Ecosystems A Practical Guide to Architecting Collaborative, (/showthread.php?tid=428139) |
RE: Scaling LLM Agents Distributed Cognition & Multi-Agent Ecosystems A Practical Guide to Architecting Collaborative, - book24h - 2026-01-25 ![]() Free Download Scaling LLM Agents: Distributed Cognition & Multi-Agent Ecosystems: A Practical Guide to Architecting Collaborative, Tool-Driven, and Self-Optimizing AI Systems English | December 1, 2025 | ASIN: B0G4NR1XRW | 271 pages | EPUB (True) | 2.08 MB Build AI systems that don't just respond-they collaborate, adapt, and evolve. Large Language Models changed the world. Multi-agent LLM ecosystems will redefine it. In Scaling LLM Agents, Mira S. Devlin takes you inside the next revolution of AI architecture-where networks of specialized LLM agents coordinate, reason, reflect, and self-optimize to accomplish what a single model could never do alone. This is not another "prompting" book. This is a systems-engineering blueprint for building scalable, resilient, and tool-driven AI ecosystems that behave more like distributed organizations than standalone chatbots. Drawing from modern AI orchestration frameworks, emerging research on distributed cognition, and real-world production patterns, this book shows you how to design agent clusters, shared memory fabrics, routing layers, evaluators, and tool hubs that dynamically adapt and continuously improve. What You'll Learn How to structure LLM agents into clusters with clear roles, capabilities, and communication protocols Coordinator and scheduler patterns for robust multi-agent task execution Decentralized routing fabrics for fast, scalable message passing Shared vector memory systems for persistent state, grounding, and context fusion Reflection and optimization loops that help agents correct themselves and learn from outcomes Tool-driven orchestration using APIs, function calling, and external workflows Monitoring, evaluation, and telemetry layers to keep your multi-agent system safe, reliable, and transparent Scalable system topologies for production workloads, real-time reasoning, and enterprise automation Who This Book Is For AI engineers designing intelligent, high-performance systems Software architects modernizing applications with agentic patterns Founders and CTOs building AI-first products Researchers exploring distributed cognition and emergent behaviors Developers wanting to go beyond prompts and learn real LLM engineering If you've mastered prompting, tinkered with agents, or built early prototypes-this is the book that takes you into the next era: true multi-agent AI ecosystems that scale. Why This Book Matters The future will not belong to the biggest model... but to the best-organized constellation of collaborating models. This book gives you the architecture, patterns, and practical frameworks to build them. Buy Premium From My Links To Get Resumable Support,Max Speed & Support Me Idézet:A kódrészlet megtekintéséhez be kell jelentkezned, vagy nincs jogosultságod a tartalom megtekintéséhez.Links are Interchangeable - Single Extraction |