sub-agent-decompose-worker-review
sub-agent-decompose-worker-review is a pipeline automation skill that decomposes tasks, executes them, and reviews the results using a chain of three agents: task-decomposer, task-worker, and reviewer.
Browse and install thousands of AI Agent skills in the Killer-Skills directory. Supports Claude Code, Windsurf, Cursor, and more.
sub-agent-decompose-worker-review is a pipeline automation skill that decomposes tasks, executes them, and reviews the results using a chain of three agents: task-decomposer, task-worker, and reviewer.
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