AI agents are shifting from synchronous support tools to autonomous contributors that can refactor code, generate tests, and run maintenance work asynchronously. But once teams adopt parallel, multi-agent workflows, constraints change: preventing drift, duplicated effort, merge conflicts, and inconsistent architectural decisions becomes the real work.
This guide illustrates how to orchestrate agents with clear specs, repo-level guardrails, real-time observability, and a repeatable review loop—so organizations can scale throughput without sacrificing reliability, security, or governance.
In this ebook you’ll learn how to: