『Build an AI Swarm with Claude Code Opus 4.6』のカバーアート

Build an AI Swarm with Claude Code Opus 4.6

How to Build AI Multi-Agent Systems That Build Production Ready Software in Days, Not Months

プレビューの再生

聴き放題対象外タイトルです。Audibleプレミアムプラン登録で、非会員価格の30%OFFで購入できます。

¥1,330で会員登録し購入
オーディオブック・ポッドキャスト・オリジナル作品など数十万以上の対象作品が聴き放題。
オーディオブックをお得な会員価格で購入できます。
30日間の無料体験後は月額¥1500で自動更新します。いつでも退会できます。

Build an AI Swarm with Claude Code Opus 4.6

著者: Michael Patterson
ナレーター: Jon Mills's voice replica
¥1,330で会員登録し購入

30日間の無料体験後は月額¥1500で自動更新します。いつでも退会できます。

¥1,900 で購入

¥1,900 で購入

Background images

この作品は、デジタルナレーションを使用しています

デジタルナレーションとは、ナレーターが提供した本人の声を元にコンピューターで生成された朗読です

概要

Turn One Developer Into a 16-Person AI Engineering Team

In February 2026, sixteen autonomous AI agents built a complete C compiler in just 14 days. They wrote 100,000 lines of production code, compiled the Linux kernel and PostgreSQL, and managed their own Git workflows without human intervention. This wasn't a research experiment. It was proof that AI agent swarms can deliver enterprise-grade software faster than traditional development teams.

Build an AI Swarm with Claude Code Opus 4.6 is the definitive guide for developers and technical leaders ready to harness multi-agent AI systems for real software engineering. Written by Michael Patterson, an AI engineering leader managing 120+ engineers at a Fortune 500 company, this book provides the architecture patterns, infrastructure code, and orchestration strategies you need to deploy production Claude AI coding assistants at scale.

Master the Complete AI Swarm Stack:

Learn proven multi-agent system architecture patterns that coordinate specialized agents for frontend, backend, database, testing, and deployment work. Implement the Model Context Protocol (MCP) for standardized agent communication and tool access. Set up production infrastructure with Docker containers, Git coordination, cost controls, and monitoring systems.

Scale From 3 to 16 Agents Systematically:

Start with a practical three-agent starter swarm, building real applications. Scale to eight agents handling complex web development projects. Master 16-agent production swarms capable of building full-stack applications, processing massive datasets, and executing large-scale refactoring projects in days instead of months.

©2026 Michael Patterson (P)2026 Michael Patterson
コンピュータサイエンス 事業開発・起業 機械理論・人工知能 起業家精神
まだレビューはありません