风险评分

47/100 (Medium)

OpenClaw: suspicious
VirusTotal: suspicious
StaticScan: clean

llm-researcher

作者: runshengdu
Slug:llm-researcher
版本:1.0.1
更新时间:2026-03-24 13:49:10
风险信息

OpenClaw: suspicious

查看 OpenClaw 分析摘要(前 200 字预览)
The skill's behavior mostly matches its stated purpose (scraping and analyzing LLM papers/projects) but has some inconsistencies and runtime behaviors you should review before installing: it runs Pyth...

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静态扫描: clean

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原始 JSON 数据
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        "changelogSource": "user",
        "createdAt": 1773297110613,
        "version": "1.0.1"
    },
    "owner": {
        "_creationTime": 0,
        "_id": "publishers:missing",
        "displayName": "runshengdu",
        "handle": "runshengdu",
        "image": "https:\/\/avatars.githubusercontent.com\/u\/74289491?v=4",
        "kind": "user",
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    "ownerHandle": "runshengdu",
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        },
        "summary": "LLM 论文与项目研究员。分析LLM相关论文和Github项目, 并按指定类目进行分类整理。使用场景:(1) 获取 LLM 领域最新进展,(2) 追踪特定方向的最新研究,(3) 生成行业分析报告",
        "tags": {
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