风险评分

47/100 (Medium)

OpenClaw: suspicious
VirusTotal: suspicious
StaticScan: clean

LX Agent Optimizer

作者: PaoloXiaMN
Slug:lx-agent-optimizer
版本:1.1.1
更新时间:2026-03-26 13:10:04
风险信息

OpenClaw: suspicious

查看 OpenClaw 分析摘要(前 200 字预览)
The skill's stated purpose (agent self‑improvement using local logs and cron scripts) mostly matches what it reads and writes, but its instructions allow broad file reads and committing workspace chan...

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原始 JSON 数据
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        "changelog": "v1.1.1: Added external memory rule — Success once ≠ Learned.\n\nCore problem: AI agents restart fresh each session. Even after successfully completing a task (e.g. reading Apple Calendar, fetching data), the agent may fumble the same task next time if the verified path is not written down.\n\nNew rule added to Core Rules (rule #7):\nA task is only truly learned after the verified path is written into external memory — TOOLS.md, improvement_log.md, or long-term MEMORY.md.\n\nTrigger: externalize any workflow that is (1) already verified, (2) likely to repeat, (3) has easy-to-forget details.\n\nThree-layer external memory structure:\n- TOOLS.md: verified tool paths, entry commands, do-not-detour conclusions\n- improvement_log.md: pit-fall records, weekly improvement notes\n- MEMORY.md: long-term rules and preferences explicitly requested by the user\n\nbehavior-learning.md updated: promotion rules now include — verified repeatable workflows promote immediately to TOOLS.md (no need to wait for 3 occurrences); user-explicit long-term preferences also sync to MEMORY.md.\n\nNew definition of done: task success + verified path externalized = truly learned.",
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