[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"extension-plugin-mnemox-ai-tradememory-plugin-zh-CN":3,"guides-for-mnemox-ai-tradememory-plugin":475,"similar-k17azh7cfwzsksfpebr7bewdas86n9m9-zh-CN":476},{"_creationTime":4,"_id":5,"children":6,"community":96,"display":97,"evaluation":101,"identity":330,"isFallback":326,"parentExtension":333,"providers":334,"relations":341,"repo":342,"tags":472,"workflow":473},1778693779277.0813,"k17azh7cfwzsksfpebr7bewdas86n9m9",[7,51,75],{"_creationTime":8,"_id":9,"community":10,"display":12,"identity":18,"providers":25,"relations":42,"tags":46,"workflow":47},1778693805112.8403,"k177f7s31ysk6nw1qw3sak1r3186n795",{"reviewCount":11},0,{"description":13,"installMethods":14,"name":16,"sourceUrl":17},"Evolution Engine 的领域知识 — 支持 LLM 从原始 OHLCV 数据中自主发现策略。涵盖生成-回测-选择-进化循环、向量化回测、样本外验证和策略梯度。在发现交易模式、运行回测、进化策略或审查进化日志时使用。由“evolve”、“discover patterns”、“backtest”、“evolution”、“strategy generation”、“candidate strategy”触发。",{"claudeCode":15},"mnemox-ai/tradememory-protocol","TradeMemory Protocol","https://github.com/mnemox-ai/tradememory-protocol",{"basePath":19,"githubOwner":20,"githubRepo":21,"locale":22,"slug":23,"type":24},"tradememory-plugin/skills/evolution-engine","mnemox-ai","tradememory-protocol","zh-CN","evolution-engine","skill",{"evaluate":26,"extract":39},{"promptVersionExtension":27,"promptVersionScoring":28,"score":29,"tags":30,"targetMarket":37,"tier":38},"3.0.0","4.4.0",100,[31,32,33,34,35,36],"trading","ai","memory","audit","compliance","llm","global","verified",{"commitSha":40,"license":41},"HEAD","MIT",{"parentExtensionId":43,"repoId":44,"translatedFrom":45},"k170vxkqee48k2xq1v55a025nh86nzn7","kd73z11kfekksxyrs8ds0snacs86ncdy","k171p5pgbfbm5g4k5sa3y4cj9s86m6hk",[32,34,35,36,33,31],{"evaluatedAt":48,"extractAt":49,"updatedAt":50},1778693678813,1778693539593,1778693805112,{"_creationTime":52,"_id":53,"community":54,"display":55,"identity":59,"providers":62,"relations":69,"tags":71,"workflow":72},1778693812982.432,"k174dr25ek7cpcrj3876epsnxd86msrb",{"reviewCount":11},{"description":56,"installMethods":57,"name":58,"sourceUrl":17},"交易代理的风险管理领域知识 — 情感状态监控、仓位调整、回撤管理、交易心态检测和行为控制。在交易前检查风险、管理回撤、检测行为漂移或强制执行纪律时使用。触发词包括“风险”、“回撤”、“心态”、“仓位大小”、“手数”、“信心”、“报复性交易”、“过度交易”、“纪律”。",{"claudeCode":15},"风险管理",{"basePath":60,"githubOwner":20,"githubRepo":21,"locale":22,"slug":61,"type":24},"tradememory-plugin/skills/risk-management","risk-management",{"evaluate":63,"extract":68},{"promptVersionExtension":27,"promptVersionScoring":28,"score":29,"tags":64,"targetMarket":37,"tier":38},[31,61,65,66,67],"ai-agent","behavioral-analysis","finance",{"commitSha":40,"license":41},{"parentExtensionId":43,"repoId":44,"translatedFrom":70},"k17bgwvhb6h29py715de1cm9xd86msq6",[65,66,67,61,31],{"evaluatedAt":73,"extractAt":49,"updatedAt":74},1778693700524,1778693812982,{"_creationTime":76,"_id":77,"community":78,"display":79,"identity":83,"providers":85,"relations":90,"tags":92,"workflow":93},1778693819389.531,"k174n8dznk7k8dr9drb7fwx01586nm5t",{"reviewCount":11},{"description":80,"installMethods":81,"name":82,"sourceUrl":17},"AI交易记忆的领域知识 — 结果加权记忆 (OWM) 架构、5种记忆类型、回忆评分和行为分析。用于记录交易、回忆相似的上下文、分析性能或检查行为漂移。在 \"record trade\"、\"remember trade\"、\"recall\"、\"similar trades\"、\"performance\"、\"behavioral\"、\"disposition\"、\"affective state\"、\"confidence\" 时触发。",{"claudeCode":15},"trading-memory",{"basePath":84,"githubOwner":20,"githubRepo":21,"locale":22,"slug":82,"type":24},"tradememory-plugin/skills/trading-memory",{"evaluate":86,"extract":89},{"promptVersionExtension":27,"promptVersionScoring":28,"score":29,"tags":87,"targetMarket":37,"tier":38},[31,32,33,67,88],"python",{"commitSha":40},{"parentExtensionId":43,"repoId":44,"translatedFrom":91},"k173a67a16bpq0e29wjd85v71986nx03",[32,67,33,88,31],{"evaluatedAt":94,"extractAt":49,"updatedAt":95},1778693719816,1778693819389,{"reviewCount":11},{"description":98,"installMethods":99,"name":100,"sourceUrl":17},"为 AI 交易者提供持久化内存 + 自主策略演进。200+ 个交易 MCP 服务器在运行。无一记得。TradeMemory 做到了。",{"claudeCode":100},"tradememory",{"_creationTime":102,"_id":103,"extensionId":5,"locale":22,"result":104,"trustSignals":313,"workflow":328},1778693779277.0815,"kn72bm3skavsr5m07hzhjxbgf586nj1s",{"checks":105,"evaluatedAt":289,"extensionSummary":290,"features":291,"nonGoals":297,"promptVersionExtension":27,"promptVersionScoring":28,"purpose":301,"rationale":302,"score":303,"summary":304,"tags":305,"tier":38,"useCases":308},[106,111,114,117,121,124,128,132,135,138,142,146,149,153,156,159,162,165,168,171,175,179,183,187,191,194,197,201,205,208,211,214,217,220,223,227,231,235,238,242,245,248,251,254,257,260,263,266,269,272,276,279,282,286],{"category":107,"check":108,"severity":109,"summary":110},"实际用途","问题相关性","pass","描述清楚地指出了 AI 交易者缺乏持久化内存和自主策略演进的问题，直接解决了痛点。",{"category":107,"check":112,"severity":109,"summary":113},"独特卖点","TradeMemory 通过提供强大的内存系统和 AI 交易者的自主策略演进，超越了基础提示，不仅仅是一个简单的封装。",{"category":107,"check":115,"severity":109,"summary":116},"生产就绪性","该插件为 AI 交易策略提供了完整的生命周期，从数据获取和演进到性能报告和风险管理，表明其已准备好投入生产。",{"category":118,"check":119,"severity":109,"summary":120},"范围","单一职责原则","该插件专注于 AI 交易内存和策略演进，相关的技能和工具在此领域内得到了连贯的集成。",{"category":118,"check":122,"severity":109,"summary":123},"描述质量","显示的描述准确地反映了插件为 AI 交易者提供持久化内存和自主策略演进的核心功能。",{"category":125,"check":126,"severity":109,"summary":127},"调用","作用域工具","该插件公开了一套全面的、狭窄的、动词-名词组合的工具，用于特定的交易内存和演进任务，避免了通用的命令执行。",{"category":129,"check":130,"severity":109,"summary":131},"文档","配置与参数参考","README 和命令/技能文档清楚地概述了所有功能的参数、默认值和工作流程步骤，包括可选的 API 密钥。",{"category":118,"check":133,"severity":109,"summary":134},"工具命名","工具名称具有描述性，并在交易域内遵循清晰的动词-名词模式。",{"category":118,"check":136,"severity":109,"summary":137},"最小 I/O 接口","工具参数和响应似乎是最小化且专注于所述任务的，避免了不必要的数据转储或自由格式的 blob。",{"category":139,"check":140,"severity":109,"summary":141},"许可证","许可证可用性","该扩展根据 MIT 许可证（一种宽松的开源许可证）获得许可，并附有专门的 LICENSE 文件。",{"category":143,"check":144,"severity":109,"summary":145},"维护","提交的近期性","最后一次提交是在 2026 年 4 月 10 日，这很近期，表明维护活跃。",{"category":143,"check":147,"severity":109,"summary":148},"依赖项管理","该插件使用 pip 管理 Python 依赖项，并且存在锁定文件（由信任信号检测到）表明了良好的依赖项管理实践。",{"category":150,"check":151,"severity":109,"summary":152},"安全","秘密管理","该插件正确使用了 ANTHROPIC_API_KEY 和 TRADEMEMORY_API 作为可配置的环境变量，通过用户配置来路由敏感密钥。",{"category":150,"check":154,"severity":109,"summary":155},"注入","该扩展似乎将外部数据视为数据，并且没有表现出执行来自外部源的不可信代码或指令的迹象。",{"category":150,"check":157,"severity":109,"summary":158},"传递式供应链危险","该插件依赖于已提交的代码和已发布的包作为其依赖项，避免了运行时代码或指令的获取。",{"category":150,"check":160,"severity":109,"summary":161},"沙箱隔离","该插件在其定义的范围内运行，并且似乎没有尝试修改超出预期项目或插件数据目录范围的内容。",{"category":150,"check":163,"severity":109,"summary":164},"沙箱逃逸原语","没有分离的进程产生或拒绝重试循环的证据，这些可能表明存在沙箱逃逸企图。",{"category":150,"check":166,"severity":109,"summary":167},"数据泄露","该插件的出站网络调用已记录（例如，Binance API），并且没有证据表明存在机密数据泄露。",{"category":150,"check":169,"severity":109,"summary":170},"隐藏文本技巧","捆绑的内容似乎不包含隐藏的指令技巧、ANSI 转义序列或描述或代码中不寻常的 Unicode 字符。",{"category":172,"check":173,"severity":109,"summary":174},"挂钩","不透明代码执行","挂钩脚本似乎是纯粹、可读的 bash 或 mjs 文件，没有混淆证据，如 base64 编码或运行时获取。",{"category":176,"check":177,"severity":109,"summary":178},"可移植性","结构假设","该插件除了自身捆绑包外，不对用户项目组织做任何结构性假设，而是引用相对于插件或用户主目录的路径。",{"category":180,"check":181,"severity":109,"summary":182},"信任","问题关注度","在过去 90 天内有 0 个打开和 0 个关闭的问题，这表明问题跟踪器是新的或不活跃的，但没有立即被忽视的迹象。",{"category":184,"check":185,"severity":109,"summary":186},"版本控制","发布管理","在 plugin.json 中声明了一个有意义的 semver 版本（0.5.0）并且已更新，这表明发布管理得当。",{"category":188,"check":189,"severity":109,"summary":190},"代码执行","验证","工具和命令似乎接受具有清晰参数定义的结构化输入，这暗示了验证机制。",{"category":150,"check":192,"severity":109,"summary":193},"无保护的破坏性操作","该插件主要涉及数据分析和内存存储；没有明显存在破坏性操作。",{"category":188,"check":195,"severity":109,"summary":196},"错误处理","详细的工作流程描述暗示了错误将被妥善处理，并在这些结构化流程中指导用户发生了什么以及为什么。",{"category":188,"check":198,"severity":199,"summary":200},"日志记录","not_applicable","该插件不是一个主要的破坏性或网络交互工具，并且不需要或没有明确演示本地审计日志记录。",{"category":202,"check":203,"severity":109,"summary":204},"合规性","GDPR","该插件专注于交易数据和策略演进，而非个人数据，因此不构成 GDPR 风险。",{"category":202,"check":206,"severity":109,"summary":207},"目标市场","该插件在交易数据和通用市场原则上运行，未检测到区域或司法管辖区限制；它是全球性的。",{"category":176,"check":209,"severity":109,"summary":210},"运行时稳定性","该插件基于 Python，依赖于标准库和 API，表明其具有良好的跨平台稳定性。",{"category":129,"check":212,"severity":109,"summary":213},"README","README 内容全面，清楚地说明了插件的目的、安装、命令、技能和示例工作流程。",{"category":118,"check":215,"severity":109,"summary":216},"工具接口大小","该插件公开了 17 个 MCP 工具和 4 个命令，数量适中且管理良好。",{"category":125,"check":218,"severity":109,"summary":219},"重叠的近义词工具","工具名称清晰且涵盖特定功能，避免了可能使模型混淆的近义词重叠。",{"category":129,"check":221,"severity":109,"summary":222},"幻影功能","README 中提到的所有功能，如命令和技能，都在文档和 MCP 定义中有对应的实现说明。",{"category":224,"check":225,"severity":109,"summary":226},"安装","安装说明","提供了插件和独立 MCP 的清晰安装说明，包括复制代码示例和要求。",{"category":228,"check":229,"severity":109,"summary":230},"错误","可操作的错误消息","详细的工作流程描述暗示了错误将是可操作的，并指导用户了解何处失败以及为何失败。",{"category":232,"check":233,"severity":109,"summary":234},"执行","固定的依赖项","使用 pip 和锁定文件的存在（由信任信号表明）暗示了固定的依赖项和解释器声明。",{"category":118,"check":236,"severity":199,"summary":237},"试运行预览","该插件主要关注数据分析和内存存储，没有需要试运行模式的状态更改命令或出站数据发送。",{"category":239,"check":240,"severity":109,"summary":241},"协议","幂等重试和超时","插件的操作，如内存存储和数据检索，被设计为幂等或无状态的，支持重试。",{"category":202,"check":243,"severity":109,"summary":244},"遥测选择加入","没有迹象表明正在收集或发送遥测数据；因此，不需要选择加入/退出机制。",{"category":125,"check":246,"severity":109,"summary":247},"名称冲突","捆绑的扩展具有不同的名称和功能，避免了与 Claude Code 内置功能或其他扩展发生名称冲突。",{"category":125,"check":249,"severity":199,"summary":250},"挂钩关闭机制","该插件似乎不使用挂钩，因此挂钩关闭机制不适用。",{"category":125,"check":252,"severity":199,"summary":253},"挂钩匹配器严密性","该插件不使用挂钩，因此挂钩匹配器严密性不适用。",{"category":150,"check":255,"severity":199,"summary":256},"挂钩安全","该插件不使用挂钩，因此挂钩安全检查不适用。",{"category":172,"check":258,"severity":199,"summary":259},"静默提示重写","该插件不使用 `UserPromptSubmit` 挂钩，因此静默提示重写不适用。",{"category":150,"check":261,"severity":199,"summary":262},"权限挂钩","该插件不使用 `PermissionRequest` 挂钩，因此此检查不适用。",{"category":202,"check":264,"severity":199,"summary":265},"挂钩隐私","该插件不使用挂钩进行日志记录或遥测，因此挂钩隐私不适用。",{"category":188,"check":267,"severity":199,"summary":268},"挂钩依赖","该插件不使用挂钩，因此此检查不适用。",{"category":129,"check":270,"severity":109,"summary":271},"功能透明度","所有声明的挂钩和关键功能都在 README 中得到解释，并且没有未声明的挂钩。",{"category":273,"check":274,"severity":109,"summary":275},"约定","布局约定遵守","该插件遵循 Claude Code 约定，`.claude-plugin/` 目录下有 `plugin.json`，并且 README 中记录了 `bin/` 条目。",{"category":273,"check":277,"severity":109,"summary":278},"插件状态","任何持久化状态都应保存在 `${CLAUDE_PLUGIN_DATA}` 下，这符合标准实践。",{"category":150,"check":280,"severity":109,"summary":281},"钥匙串存储的秘密","敏感 API 密钥通过 `userConfig` 声明，`sensitive: true`，表明它们存储在操作系统钥匙串中。",{"category":283,"check":284,"severity":109,"summary":285},"依赖项","已标记发布源","捆绑的 MCP 服务器（`tradememory-protocol`）来自已发布的 PyPI 包，版本清晰，而非浮动分支或 fork。",{"category":224,"check":287,"severity":109,"summary":288},"干净卸载","该插件似乎不启动后台守护进程或注册系统服务，表明可以进行干净卸载。",1778693569868,"该插件为 AI 交易代理提供持久化内存和自主策略演进功能，利用跨越五种内存类型的详细 OWM 架构，并通过进化引擎支持策略发现。",[292,293,294,295,296],"AI 交易者的持久化内存","自主交易策略演进","结果加权内存（OWM）回忆","LLM 驱动的策略发现和回测","行为分析和风险管理",[298,299,300],"完全取代人工交易而无需监督","提供财务建议或保证利润","在没有明确用户命令的情况下直接执行交易","通过持久化内存和自主策略演进来赋能 AI 交易者，使他们能够从过去的交易中学习并发现新的、健壮的交易策略。","该插件文档齐全、实现安全且符合最佳实践。所有检查均以高严重性通过，为其赢得了顶级评分。",98,"一款高质量的 AI 交易者插件，提供持久化内存和自主策略演进能力。",[31,32,33,306,67,307],"strategy","automation",[309,310,311,312],"记录和分析过去的交易","回忆类似的市场状况和过往结果","自主生成和验证新的交易策略","监控和管理交易风险及行为模式",{"codeQuality":314,"collectedAt":316,"documentation":317,"maintenance":320,"security":325,"testCoverage":327},{"hasLockfile":315},true,1778693552361,{"descriptionLength":318,"readmeSize":319},132,10941,{"closedIssues90d":11,"forks":321,"hasChangelog":315,"manifestVersion":322,"openIssues90d":11,"pushedAt":323,"stars":324},116,"0.5.0",1775836242000,877,{"hasNpmPackage":326,"license":41,"smitheryVerified":326},false,{"hasCi":315,"hasTests":315},{"updatedAt":329},1778693779277,{"basePath":331,"githubOwner":20,"githubRepo":21,"locale":22,"slug":331,"type":332},"tradememory-plugin","plugin",null,{"evaluate":335,"extract":337},{"promptVersionExtension":27,"promptVersionScoring":28,"score":303,"tags":336,"targetMarket":37,"tier":38},[31,32,33,306,67,307],{"commitSha":40,"plugin":338},{"mcpCount":11,"provider":339,"skillCount":340},"classify",3,{"repoId":44,"translatedFrom":43},{"_creationTime":343,"_id":44,"identity":344,"providers":345,"workflow":468},1778693533831.6553,{"githubOwner":20,"githubRepo":21,"sourceUrl":17},{"classify":346,"discover":454,"github":457},{"commitSha":40,"extensions":347},[348,380,389,401,409,417,423,429,435],{"basePath":331,"description":349,"displayName":100,"installMethods":350,"rationale":351,"selectedPaths":352,"source":378,"sourceLanguage":379,"type":332},"Persistent memory + autonomous strategy evolution for AI traders. 200+ trading MCP servers execute. None remember. TradeMemory does.",{"claudeCode":100},"plugin manifest at tradememory-plugin/.claude-plugin/plugin.json",[353,356,358,361,363,365,367,370,372,374,376],{"path":354,"priority":355},".claude-plugin/plugin.json","mandatory",{"path":357,"priority":355},"README.md",{"path":359,"priority":360},"skills/evolution-engine/SKILL.md","medium",{"path":362,"priority":360},"skills/risk-management/SKILL.md",{"path":364,"priority":360},"skills/trading-memory/SKILL.md",{"path":366,"priority":355},".mcp.json",{"path":368,"priority":369},"commands/daily-review.md","high",{"path":371,"priority":369},"commands/evolve.md",{"path":373,"priority":369},"commands/performance.md",{"path":375,"priority":369},"commands/recall.md",{"path":377,"priority":369},"commands/record-trade.md","rule","en",{"basePath":381,"description":382,"displayName":383,"installMethods":384,"rationale":385,"selectedPaths":386,"source":378,"sourceLanguage":379,"type":24},".skills/strategy-validator","Validate trading strategies for overfitting using 4 statistical tests (DSR, Walk-Forward, Regime, CPCV)","strategy-validator",{"claudeCode":15},"SKILL.md frontmatter at .skills/strategy-validator/SKILL.md",[387],{"path":388,"priority":355},"SKILL.md",{"basePath":390,"description":391,"displayName":100,"installMethods":392,"rationale":393,"selectedPaths":394,"source":378,"sourceLanguage":379,"type":24},".skills/tradememory","AI trading memory with outcome-weighted recall and autonomous strategy evolution. 17 MCP tools, 1,233 tests, works with any trading platform.",{"claudeCode":15},"SKILL.md frontmatter at .skills/tradememory/SKILL.md",[395,396,399],{"path":388,"priority":355},{"path":397,"priority":398},"scripts/install.sh","low",{"path":400,"priority":398},"scripts/setup_mt5.sh",{"basePath":402,"description":403,"displayName":404,"installMethods":405,"rationale":406,"selectedPaths":407,"source":378,"sourceLanguage":379,"type":24},"skills/binance-skills-hub/trade-memory","Compliance-grade decision audit trail for AI trading agents. Records every trading decision with full context (conditions, filters, indicators, risk state), SHA-256 tamper detection, and structured export for MiFID II / EU AI Act readiness. Works alongside Binance Spot, Futures, and Web3 skills — they execute trades, TradeMemory records why.","trade-memory",{"claudeCode":15},"SKILL.md frontmatter at skills/binance-skills-hub/trade-memory/SKILL.md",[408],{"path":388,"priority":355},{"basePath":410,"description":411,"displayName":412,"installMethods":413,"rationale":414,"selectedPaths":415,"source":378,"sourceLanguage":379,"type":24},"skills/tradememory-bridge","Bridge between Binance trading events and TradeMemory Protocol.\nAutomatically journals trades, recalls similar past setups, detects behavioral biases,\nand provides outcome-weighted recall for AI trading agents.\nUse this skill after executing Binance spot trades to build persistent memory.\n","tradememory-bridge",{"claudeCode":15},"SKILL.md frontmatter at skills/tradememory-bridge/SKILL.md",[416],{"path":388,"priority":355},{"basePath":19,"description":418,"displayName":23,"installMethods":419,"rationale":420,"selectedPaths":421,"source":378,"sourceLanguage":379,"type":24},"Domain knowledge for the Evolution Engine — LLM-powered autonomous strategy discovery from raw OHLCV data. Covers the generate-backtest-select-evolve loop, vectorized backtesting, out-of-sample validation, and strategy graduation. Use when discovering trading patterns, running backtests, evolving strategies, or reviewing evolution logs. Triggers on \"evolve\", \"discover patterns\", \"backtest\", \"evolution\", \"strategy generation\", \"candidate strategy\".",{"claudeCode":15},"SKILL.md frontmatter at tradememory-plugin/skills/evolution-engine/SKILL.md",[422],{"path":388,"priority":355},{"basePath":60,"description":424,"displayName":61,"installMethods":425,"rationale":426,"selectedPaths":427,"source":378,"sourceLanguage":379,"type":24},"Risk management domain knowledge for trading agents — affective state monitoring, position sizing, drawdown management, tilt detection, and behavioral guardrails. Use when checking risk before trades, managing drawdowns, detecting behavioral drift, or enforcing discipline. Triggers on \"risk\", \"drawdown\", \"tilt\", \"position size\", \"lot size\", \"confidence\", \"revenge trading\", \"overtrading\", \"discipline\".",{"claudeCode":15},"SKILL.md frontmatter at tradememory-plugin/skills/risk-management/SKILL.md",[428],{"path":388,"priority":355},{"basePath":84,"description":430,"displayName":82,"installMethods":431,"rationale":432,"selectedPaths":433,"source":378,"sourceLanguage":379,"type":24},"Domain knowledge for AI trading memory — Outcome-Weighted Memory (OWM) architecture, 5 memory types, recall scoring, and behavioral analysis. Use when recording trades, recalling similar contexts, analyzing performance, or checking behavioral drift. Triggers on \"record trade\", \"remember trade\", \"recall\", \"similar trades\", \"performance\", \"behavioral\", \"disposition\", \"affective state\", \"confidence\".",{"claudeCode":15},"SKILL.md frontmatter at tradememory-plugin/skills/trading-memory/SKILL.md",[434],{"path":388,"priority":355},{"basePath":436,"displayName":21,"installMethods":437,"rationale":438,"selectedPaths":439,"source":378,"sourceLanguage":379,"type":453},"",{"pypi":21},"server.json with namespace/server name at server.json",[440,442,444,445,447,449,451],{"path":441,"priority":355},"server.json",{"path":443,"priority":355},"pyproject.toml",{"path":357,"priority":355},{"path":446,"priority":369},"LICENSE",{"path":448,"priority":360},"src/tradememory/cli.py",{"path":450,"priority":360},"src/tradememory/server.py",{"path":452,"priority":398},"hosted/server.py","mcp",{"sources":455},[456],"manual",{"closedIssues90d":11,"description":458,"forks":321,"homepage":459,"license":41,"openIssues90d":11,"pushedAt":323,"readmeSize":319,"stars":324,"topics":460},"Decision audit trail + persistent memory for AI trading agents. Outcome-weighted recall, SHA-256 tamper detection, 17 MCP tools.","https://mnemox.ai/tradememory/",[461,462,453,33,463,31,464,465,23,466,467],"claude","forex","mt5","ai-agents","crypto","mcp-server","outcome-weighted-memory",{"classifiedAt":469,"discoverAt":470,"extractAt":471,"githubAt":471,"updatedAt":469},1778693539413,1778693533831,1778693537570,[32,307,67,33,306,31],{"evaluatedAt":474,"extractAt":49,"updatedAt":329},1778693569977,[],[477,509,539,567,602,628],{"_creationTime":478,"_id":479,"community":480,"display":481,"identity":486,"providers":488,"relations":500,"tags":504,"workflow":505},1778693887244.665,"k174v4m2d0ncx0vw8gs57bn98n86nh9z",{"reviewCount":11},{"description":482,"installMethods":483,"name":484,"sourceUrl":485},"使助手输出听起来更人性化。去除 AI 术语（谄媚、陈词滥调、敷衍的说法、连用的破折号），营造自然的爆发力，恢复语音。保留代码、URL 和技术准确性。",{"claudeCode":484},"unslop","https://github.com/MohamedAbdallah-14/unslop",{"basePath":436,"githubOwner":487,"githubRepo":484,"locale":22,"slug":484,"type":332},"MohamedAbdallah-14",{"evaluate":489,"extract":497},{"promptVersionExtension":27,"promptVersionScoring":28,"score":29,"tags":490,"targetMarket":37,"tier":38},[32,491,492,493,494,495,496],"text","writing","editor","code","nlp","humanizer",{"commitSha":40,"plugin":498},{"mcpCount":11,"provider":339,"skillCount":499},5,{"parentExtensionId":501,"repoId":502,"translatedFrom":503},"k175vxsqnmn2ye2xkw62x4enkh86n8eb","kd727xcarpnqcat3wd68ms466s86mwkb","k177fsagh49r77m9y4755zc1mn86m1jm",[32,494,493,496,495,491,492],{"evaluatedAt":506,"extractAt":507,"updatedAt":508},1778693722676,1778693661691,1778693887244,{"_creationTime":510,"_id":511,"community":512,"display":513,"identity":519,"providers":523,"relations":532,"tags":535,"workflow":536},1778690773482.4834,"k179sm2kkyd7r7nz9jsx62jm9x86mw4a",{"reviewCount":11},{"description":514,"installMethods":515,"name":517,"sourceUrl":518},"Look up and read Hugging Face paper pages in markdown, and use the papers API for structured metadata like authors, linked models, datasets, Spaces, and media URLs when needed.",{"claudeCode":516},"huggingface-papers","Hugging Face Papers","https://github.com/huggingface/skills",{"basePath":520,"githubOwner":521,"githubRepo":522,"locale":379,"slug":516,"type":332},"skills/huggingface-papers","huggingface","skills",{"evaluate":524,"extract":530},{"promptVersionExtension":27,"promptVersionScoring":28,"score":29,"tags":525,"targetMarket":37,"tier":38},[521,526,527,32,528,529],"papers","arxiv","research","metadata",{"commitSha":40,"license":531},"Apache-2.0",{"parentExtensionId":533,"repoId":534},"k17es3r8wd37t5rrwqcpp5kwrh86mxx8","kd72xwt5xnc0ktc4p7smzfcp3986m959",[32,527,521,529,526,528],{"evaluatedAt":537,"extractAt":538,"updatedAt":537},1778690901306,1778690773482,{"_creationTime":540,"_id":541,"community":542,"display":543,"identity":548,"providers":551,"relations":558,"tags":562,"workflow":563},1778685915634.952,"k178sazsw9mc93tarpmxx6wwf586ncry",{"reviewCount":11},{"description":544,"installMethods":545,"name":546,"sourceUrl":547},"创建、更新和修复 Cypress 测试。连接到 Cypress Cloud 以查看测试结果并利用数据来管理您的测试套件。",{"claudeCode":546},"cypress","https://github.com/cypress-io/ai-toolkit",{"basePath":436,"githubOwner":549,"githubRepo":550,"locale":22,"slug":550,"type":332},"cypress-io","ai-toolkit",{"evaluate":552,"extract":556},{"promptVersionExtension":27,"promptVersionScoring":28,"score":29,"tags":553,"targetMarket":37,"tier":38},[546,554,307,32,555],"testing","qa",{"commitSha":40,"license":41,"plugin":557},{"mcpCount":11,"provider":339,"skillCount":340},{"parentExtensionId":559,"repoId":560,"translatedFrom":561},"k170k28hx0d93ds1md7v66h33986nap6","kd778b5hp7aqcpb58zn9yj8xas86meqd","k17a80t18qpe9tmapz3fnw597986mpsy",[32,307,546,555,554],{"evaluatedAt":564,"extractAt":565,"updatedAt":566},1778685834132,1778685765056,1778685915635,{"_creationTime":568,"_id":569,"community":570,"display":571,"identity":577,"providers":580,"relations":595,"tags":598,"workflow":599},1778683100520.2961,"k1754vkdjckrkqvz9x7tjrvhzn86n1gc",{"reviewCount":11},{"description":572,"installMethods":573,"name":575,"sourceUrl":576},"AI music generation workflow for Suno - album concepts, lyrics, prompts, mastering, release",{"claudeCode":574},"bitwize-music","Claude AI Music Skills","https://github.com/bitwize-music-studio/claude-ai-music-skills",{"basePath":436,"githubOwner":578,"githubRepo":579,"locale":379,"slug":579,"type":332},"bitwize-music-studio","claude-ai-music-skills",{"evaluate":581,"extract":591},{"promptVersionExtension":27,"promptVersionScoring":28,"score":29,"tags":582,"targetMarket":37,"tier":38},[583,32,584,585,586,587,588,589,88,590],"music-generation","suno","audio-production","workflow","lyrics","mastering","cli","claude-code",{"commitSha":40,"license":592,"plugin":593},"CC0-1.0",{"mcpCount":11,"provider":339,"skillCount":594},54,{"parentExtensionId":596,"repoId":597},"k17bfryzkzywswf1bkgrtch16d86n8t9","kd70cgrajsrnk5gmq60rhq30zd86nyc0",[32,585,590,589,587,588,583,88,584,586],{"evaluatedAt":600,"extractAt":601,"updatedAt":600},1778683131031,1778683100520,{"_creationTime":603,"_id":604,"community":605,"display":606,"identity":611,"providers":614,"relations":620,"tags":623,"workflow":624},1778692332046.7363,"k175g0s5m6x20esmy3pj5az35x86nhhs",{"reviewCount":11},{"description":607,"installMethods":608,"name":609,"sourceUrl":610},"在 Cowork 项目之间共享记忆。停止教 Claude 同样的事情两次。",{"claudeCode":609},"memory-bridge","https://github.com/LewenW/claude-memory-bridge",{"basePath":436,"githubOwner":612,"githubRepo":613,"locale":22,"slug":613,"type":332},"LewenW","claude-memory-bridge",{"evaluate":615,"extract":619},{"promptVersionExtension":27,"promptVersionScoring":28,"score":29,"tags":616,"targetMarket":37,"tier":38},[33,617,618,453],"knowledge-sharing","cross-project",{"commitSha":40},{"repoId":621,"translatedFrom":622},"kd727a9x2mehgp2rexv2n03pqd86mvqz","k178rawx14btktbv4ynsp9zvpx86mstq",[618,617,453,33],{"evaluatedAt":625,"extractAt":626,"updatedAt":627},1778692269825,1778692245333,1778692332046,{"_creationTime":629,"_id":630,"community":631,"display":632,"identity":637,"providers":642,"relations":653,"tags":656,"workflow":657},1778675056600.2026,"k171b5pw3erme9qy3334r4gbv586mzhf",{"reviewCount":11},{"description":633,"installMethods":634,"name":635,"sourceUrl":636},"Self-Improving Agent: curate auto-memory, promote learnings to CLAUDE.md and rules, extract proven patterns into reusable skills. Provides /si:review, /si:promote, /si:extract, /si:status, and /si:remember slash commands.",{"claudeCode":635},"si","https://github.com/alirezarezvani/claude-skills",{"basePath":638,"githubOwner":639,"githubRepo":640,"locale":379,"slug":641,"type":332},"engineering-team/self-improving-agent","alirezarezvani","claude-skills","self-improving-agent",{"evaluate":643,"extract":650},{"promptVersionExtension":27,"promptVersionScoring":28,"score":29,"tags":644,"targetMarket":37,"tier":38},[33,645,646,647,648,522,649],"auto-memory","self-improvement","learning","rules","code-curation",{"commitSha":40,"license":41,"plugin":651},{"mcpCount":11,"provider":339,"skillCount":652},4,{"parentExtensionId":654,"repoId":655},"k17dce6sbramb6sxm7ksr3928x86ncfs","kd7ff9s1w43mfyy1n7hf87816186m6px",[645,649,647,33,648,646,522],{"evaluatedAt":658,"extractAt":659,"updatedAt":658},1778675366945,1778675056600]