From prompt-architecture
Designs chain-of-thought reasoning chains for improved AI outputs in complex reasoning, ambiguous inputs, high-stakes tasks, analysis, and creative exploration.
npx claudepluginhub owl-listener/ai-design-skills --plugin prompt-architectureThis skill uses the workspace's default tool permissions.
Chain-of-thought prompting asks the AI to show its reasoning step by step before arriving at an answer. When designed well, this produces more accurate, more nuanced, and more trustworthy outputs. When designed poorly, it produces verbose justification of bad answers.
Crafts advanced LLM prompts with chain-of-thought, constitutional AI, meta-prompting, and optimization techniques. Use for AI features, agent performance, system prompts.
Strips AI-slop patterns from chain-of-thought, extended thinking, and agent decomposition traces—not final prose. Targets over-explaining questions, hedging plans, trivial over-decomposition, infinite-loop rationalization.
Implements critical thinking framework for AI agents: reasoning router (CoT/ToT/GoT), metacognitive monitoring, self-verification, bias detection. For complex tasks needing self-correction and reliability.
Share bugs, ideas, or general feedback.
Chain-of-thought prompting asks the AI to show its reasoning step by step before arriving at an answer. When designed well, this produces more accurate, more nuanced, and more trustworthy outputs. When designed poorly, it produces verbose justification of bad answers.
A reasoning chain has structure. Design it deliberately: 1. Problem decomposition "First, break this problem into its component parts." 2. Evidence gathering "For each part, identify what you know and what you're uncertain about." 3. Analysis "Analyse each component, noting assumptions and limitations." 4. Synthesis "Combine your analysis into an overall assessment." 5. Conclusion "State your conclusion and your confidence level."