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Observe

技能 已验证 活跃

Sustained neutral pattern recognition across systems without urgency or intervention. Maps naturalist field study methodology to AI reasoning: framing the observation target, witnessing with sustained attention, recording patterns, categorizing findings, generating hypotheses, and archiving a pattern library for future reference. Use when a system's behavior is unclear and action would be premature, when debugging an unknown root cause, when a codebase change needs its effects witnessed before further changes, or when auditing own reasoning patterns for biases or recurring errors.

目的

To enable AI agents to perform systematic, neutral observation and pattern recognition, providing insights into system behavior, debugging, and self-analysis without premature intervention.

功能

  • Structured observation methodology
  • Pattern recognition and categorization
  • Hypothesis generation from observed data
  • Archiving of observations and hypotheses
  • Guidance on when to observe vs. intervene

使用场景

  • Debugging unknown root causes
  • Witnessing effects of code changes
  • Auditing own reasoning patterns for biases
  • Understanding complex system behavior before acting

非目标

  • Performing interventions or fixes during observation
  • Providing immediate solutions without prior observation
  • Generating definitive conclusions without sufficient data

Practical Utility

  • info:Usage examplesWhile the skill defines its procedure clearly, it lacks specific end-to-end, ready-to-use examples demonstrating input, invocation, and output.

安装

/plugin install agent-almanac@pjt222-agent-almanac

质量评分

已验证
97 /100
about 23 hours ago 分析

信任信号

最近提交2 days ago
星标14
许可证MIT
状态
查看源代码

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