风险评分

94/100 (Very Low)

OpenClaw: benign
VirusTotal: benign
StaticScan: unknown

OpenClaw Memory Qdrant

作者: zuiho
Slug:memory-qdrant
版本:1.0.10
更新时间:2026-02-26 07:45:41
风险信息

OpenClaw: benign

查看 OpenClaw 分析摘要
The plugin appears to do what it says: a local semantic-memory module using Transformers.js embeddings and optional Qdrant storage; its requirements and behavior are proportionate and documented.

VirusTotal: benign VT 报告

静态扫描: unknown

README

README 未提供

文件列表

无文件信息

下载
下载官方 ZIP
原始 JSON 数据
{
    "latestVersion": {
        "_creationTime": 1771265629545,
        "_id": "k972jm9pce63x9qpb8xwbv6jg9818qyh",
        "changelog": "安全和一致性修复:正则表达式边界、输入清理、重试机制、健康检查。29个测试用例100%通过",
        "changelogSource": "user",
        "createdAt": 1771265629545,
        "parsed": {
            "clawdis": {
                "requires": {
                    "bins": [
                        "node",
                        "npm"
                    ]
                }
            }
        },
        "version": "1.0.10"
    },
    "owner": {
        "_creationTime": 0,
        "_id": "publishers:missing",
        "displayName": "zuiho",
        "handle": "zuiho-kai",
        "image": "https:\/\/avatars.githubusercontent.com\/u\/31877877?v=4",
        "kind": "user",
        "linkedUserId": "kn72xxw2hckht9fssqq6mdcgmd818w2e"
    },
    "ownerHandle": "zuiho-kai",
    "skill": {
        "_creationTime": 1771245320750,
        "_id": "kd7ax4w41mee2313f20kysfckh818w0j",
        "badges": [],
        "createdAt": 1771245320750,
        "displayName": "OpenClaw Memory Qdrant",
        "latestVersionId": "k972jm9pce63x9qpb8xwbv6jg9818qyh",
        "ownerUserId": "kn72xxw2hckht9fssqq6mdcgmd818w2e",
        "slug": "memory-qdrant",
        "stats": {
            "comments": 0,
            "downloads": 2808,
            "installsAllTime": 25,
            "installsCurrent": 23,
            "stars": 9,
            "versions": 11
        },
        "summary": "Local semantic memory with Qdrant and Transformers.js. Store, search, and recall conversation context using vector embeddings (fully local, no API keys).",
        "tags": {
            "latest": "k972jm9pce63x9qpb8xwbv6jg9818qyh"
        },
        "updatedAt": 1772063141850
    }
}