divide-agentAI agent for divide agent tasks
Install via ClawdBot CLI:
clawdbot install alvinecarn/divide-agentGrade Fair — based on market validation, documentation quality, package completeness, maintenance status, and authenticity signals.
Calls external URL not in known-safe list
https://zhida.zhihu.com/search?content_id=245774722&content_type=Article&match_oAudited Apr 17, 2026 · audit v1.0
Generated Mar 21, 2026
A company considering entering a new industry uses this skill to decompose the decision into first-layer sub-problems like competitive forces and market attractiveness, then further into second-layer sub-problems such as supplier power and buyer power, applying Porter's Five Forces Model for MECE decomposition.
A marketing team plans a new campaign by decomposing the task into first-layer sub-problems like product, price, promotion, and place, then breaks these down into second-layer sub-problems such as pricing strategies and distribution channels, using the 4P model for structured analysis.
An organization undergoing restructuring uses this skill to decompose the problem into first-layer sub-problems like strategy, structure, and systems, then further into second-layer sub-problems such as leadership styles and operational processes, applying the 7S framework for comprehensive decomposition.
A business manages its product portfolio by decomposing the task into first-layer sub-problems like market growth and relative market share, then into second-layer sub-problems such as star products and cash cows, using the PPM Matrix for MECE-based decision-making.
A manufacturing firm optimizes production by decomposing the process into first-layer sub-problems like input, processing, and output stages, then into second-layer sub-problems such as raw material handling and quality control, using process decomposition principles for efficiency analysis.
Offers ongoing access to divide agent services for businesses needing regular problem decomposition, with tiered pricing based on usage frequency and complexity. Revenue is generated through monthly or annual subscription fees.
Provides basic divide agent functionality for free to attract users, with premium features like advanced MECE models and integration tools available for a one-time project fee. Revenue comes from upsells to paid projects.
Licenses the divide agent skill to large organizations for internal use, including customization and training support. Revenue is generated through annual licensing contracts and additional service fees.
💬 Integration Tip
Integrate this skill with project management tools to automatically generate decomposition trees for task planning, ensuring MECE principles are applied consistently across workflows.
Scored Apr 19, 2026
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