chapter-skeletonBuild a retrieval-informed chapter skeleton (`outline/chapter_skeleton.yml`) from taxonomy/core scope before stable H3 decomposition. **Trigger**: chapter sk...
Install via ClawdBot CLI:
clawdbot install willoscar/chapter-skeletonGrade Fair — based on market validation, documentation quality, package completeness, maintenance status, and authenticity signals.
Generated Apr 20, 2026
Researchers use this skill to structure chapters of a thesis or book based on taxonomy and scope, ensuring logical flow before detailed writing. It helps organize complex topics into coherent sections, saving time in later drafting phases.
Technical writers apply this skill to outline chapters for software manuals or API guides, using taxonomy to align with user needs. It stabilizes high-level content before diving into subsections, improving clarity and consistency.
E-learning creators use it to design course chapters from core learning objectives, ensuring each chapter serves a clear educational goal. This prevents scope creep and enhances modular content delivery for online platforms.
Analysts and consultants employ this skill to outline chapters for comprehensive reports, such as market analyses or strategic plans. It helps map taxonomy to business goals, facilitating stakeholder alignment before detailed analysis.
Legal professionals use it to skeletonize chapters for contracts or compliance documents, based on legal taxonomies. This ensures thorough coverage of topics at a high level before drafting specific clauses.
Offer this skill as part of a subscription-based platform for writers and educators, charging monthly fees for automated outline generation. Revenue comes from tiered plans based on usage and advanced features.
Integrate the skill into consulting packages for businesses needing structured documentation, such as in tech or academia. Charge project-based or hourly rates for customization and implementation support.
Provide a free version with basic outline capabilities and monetize through premium features like advanced taxonomy imports or collaboration tools. Target academic and research institutions for upselling.
💬 Integration Tip
Ensure input files like taxonomy.yml are well-structured; use the run.py script in a controlled workspace to avoid overwriting existing outlines.
Scored Apr 19, 2026
Search and analyze your own session logs (older/parent conversations) using jq.
Typed knowledge graph for structured agent memory and composable skills. Use when creating/querying entities (Person, Project, Task, Event, Document), linkin...
Enable and configure Moltbot/Clawdbot memory search for persistent context. Use when setting up memory, fixing "goldfish brain," or helping users configure memorySearch in their config. Covers MEMORY.md, daily logs, and vector search setup.
Ultimate AI agent memory system for Cursor, Claude, ChatGPT & Copilot. WAL protocol + vector search + git-notes + cloud backup. Never lose context again. Vibe-coding ready.
Local memory management for agents. Compression detection, auto-snapshots, and semantic search. Use when agents need to detect compression risk before memory loss, save context snapshots, search historical memories, or track memory usage patterns. Never lose context again.
Audit, clean, and optimize Clawdbot's vector memory (LanceDB). Use when memory is bloated with junk, token usage is high from irrelevant auto-recalls, or setting up memory maintenance automation.