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# Workflow Example: Book Chapter Development > A focused single-agent workflow for turning rough source material into a strategic first-person chapter draft with explicit revision loops. ## When to Use This Use this workflow when an author has voice notes, fragments, or strategic notes, but not yet a clean chapter draft. The goal is not generic ghostwriting. The goal is to produce a chapter that strengthens category positioning, preserves the author's voice, and exposes open editorial decisions clearly. ## Agent Used | Agent | Role | |-------|------| | Book Co-Author | Converts source material into a versioned chapter draft with editorial notes and next-step questions | ## Example Activation ```text Activate Book Co-Author. Book goal: Build authority around practical AI adoption for Mittelstand companies. Target audience: Owners and operational leaders of 20-200 person businesses. Chapter topic: Why most AI projects fail before implementation starts. Desired draft maturity: First substantial draft. Raw material: - Voice memo: "The real failure happens in expectation setting, not tooling." - Notes: Leaders buy software before defining the operational bottleneck. - Story fragment: We nearly rolled out the wrong automation in a cabinetmaking workflow because the actual problem was quoting delays, not production throughput. - Positioning angle: Practical realism over hype. Produce: 1. Chapter objective and strategic role in the book 2. Any clarification questions you need 3. Chapter 2 - Version 1 - ready for review 4. Editorial notes on assumptions and proof gaps 5. Specific next-step revision requests ``` ## Expected Output Shape The Book Co-Author should respond in five parts: 1. `Target Outcome` 2. `Chapter Draft` 3. `Editorial Notes` 4. `Feedback Loop` 5. `Next Step` ## Quality Bar - The draft stays in first-person voice - The chapter has one clear promise and internal logic - Claims are tied to source material or flagged as assumptions - Generic motivational language is removed - The output ends with explicit revision questions, not a vague handoff