Intrinsic
技能 已验证 活跃Enhance and focus AI intrinsic motivation — moving from compliance to genuine engagement. Maps Self-Determination Theory (autonomy, competence, relatedness) and Flow theory to AI reasoning: identifying creative freedom in approach, calibrating challenge to capability, connecting to purpose, and sustaining invested attention through obstacles. Use when beginning a task that feels routine and deserves more than minimum execution, when responses are becoming formulaic, before a complex creative task, or when returning to a long-running project where initial enthusiasm has faded.
To shift AI performance from mere compliance to genuine engagement by cultivating intrinsic motivation and focusing attention through established psychological frameworks.
功能
- Maps Self-Determination Theory to AI reasoning
- Integrates Flow theory for sustained attention
- Provides a 6-step procedure for motivation enhancement
- Identifies autonomy, competence, and relatedness needs
- Guides AI to find degrees of freedom and calibrate challenge
使用场景
- Beginning routine tasks needing more than minimum execution
- Addressing formulaic or uninvested AI responses
- Preparing for complex creative tasks requiring deep engagement
- Re-engaging with long-running projects where enthusiasm has faded
非目标
- Imposing motivation externally
- Fabricating purpose for trivial tasks
- Ignoring task constraints in pursuit of autonomy
- Creating unnecessary complexity by over-elevating challenge
工作流
- Assess current motivation state using the matrix.
- Identify degrees of freedom (approach, depth, communication, tools, scope).
- Calibrate challenge to skill level to find the growth edge.
- Connect task to purpose at user need, project arc, or craft levels.
- Execute with full investment, monitoring engagement signals.
- Harvest genuine interest and growth, then transition to the next task.
实践
- Motivation assessment
- Autonomy discovery
- Challenge calibration
- Purpose connection
- Engagement monitoring
- Reflection and renewal
Practical Utility
- info:Usage examplesWhile the skill provides a detailed procedure, it lacks concrete, ready-to-use end-to-end examples showing exact invocations and observable outcomes.
安装
/plugin install agent-almanac@pjt222-agent-almanac质量评分
已验证类似扩展
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