[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"extension-plugin-tasteray-elicitation-zh-CN":3,"guides-for-tasteray-elicitation":397,"similar-k176efb692a8nhqszjm58318yh86nvxa-zh-CN":398},{"_creationTime":4,"_id":5,"children":6,"community":47,"display":48,"evaluation":51,"identity":280,"isFallback":267,"parentExtension":282,"providers":311,"relations":315,"repo":316,"tags":394,"workflow":395},1778698045858.3467,"k176efb692a8nhqszjm58318yh86nvxa",[7],{"_creationTime":8,"_id":9,"community":10,"display":12,"identity":18,"providers":23,"relations":38,"tags":42,"workflow":43},1778698058858.7466,"k17b3n1kewbjz52xp3wng1yxqh86n9w9",{"reviewCount":11},0,{"description":13,"installMethods":14,"name":16,"sourceUrl":17},"通过自然对话进行心理画像，运用叙事同一性研究（McAdams）、自我定义记忆提取（Singer）和动机性访谈（OARS框架）。当你需要：（1）理解某人的核心价值观和动机，（2）发现形成性记忆和人生定义经历，（3）检测情绪图式和信念模式，（4）通过渐进式披露建立心理画像，（5）进行能揭示深刻见解的用户访谈，（6）设计用于个人发现的对话流程，（7）识别诸如救赎和污染叙事等同一性主题，（8）在不审问的情况下提取真实的自我披露时，请使用此功能。",{"claudeCode":15},"tasteray/skills","elicitation","https://github.com/tasteray/skills",{"basePath":16,"githubOwner":19,"githubRepo":20,"locale":21,"slug":16,"type":22},"tasteray","skills","zh-CN","skill",{"evaluate":24,"extract":36},{"promptVersionExtension":25,"promptVersionScoring":26,"score":27,"tags":28,"targetMarket":34,"tier":35},"3.0.0","4.4.0",95,[29,30,16,31,32,33],"psychology","conversation","identity","values","research","global","verified",{"commitSha":37},"HEAD",{"parentExtensionId":39,"repoId":40,"translatedFrom":41},"k175271xmxfwv5wgvdmjsg40kd86n3zp","kd71g6tdfax8bbc709p7x2z8p586m87d","k17akp5d0t6qtbnvxqce0tv6t586m3qg",[30,16,31,29,33,32],{"evaluatedAt":44,"extractAt":45,"updatedAt":46},1778698017130,1778697963443,1778698058858,{"reviewCount":11},{"description":49,"installMethods":50,"name":16,"sourceUrl":17},"通过自然对话进行心理画像，利用叙事同一性研究（McAdams）、自我定义记忆诱导（Singer）和动机性访谈（OARS框架）。当需要了解核心价值观、发现形成性记忆、检测情绪图式或通过渐进式披露构建心理画像时使用。",{"claudeCode":16},{"_creationTime":52,"_id":53,"extensionId":5,"locale":21,"result":54,"trustSignals":265,"workflow":278},1778698045858.347,"kn73ws3ba4b18mkzyexa343z7186n4vc",{"checks":55,"evaluatedAt":240,"extensionSummary":241,"features":242,"nonGoals":248,"promptVersionExtension":25,"promptVersionScoring":26,"purpose":252,"rationale":253,"score":27,"summary":254,"tags":255,"tier":259,"useCases":260},[56,61,64,67,71,74,79,83,86,89,93,97,100,104,107,110,113,116,119,122,126,130,134,139,143,146,149,152,156,159,162,165,168,171,174,178,182,186,189,193,196,199,202,205,208,211,214,217,219,222,226,229,232,236],{"category":57,"check":58,"severity":59,"summary":60},"Practical Utility","Problem relevance","pass","描述清楚地指出了与通过自然对话和个性化理解他人相关的用户问题。",{"category":57,"check":62,"severity":59,"summary":63},"Unique selling proposition","这些技能通过利用基于研究的技术，超越了简单的提示工程，为心理画像和推荐生成提供了一种独特的方法。",{"category":57,"check":65,"severity":59,"summary":66},"Production readiness","该插件捆绑了两个不同的技能，似乎涵盖了它们声称的用例，并提供了安装说明。",{"category":68,"check":69,"severity":59,"summary":70},"Scope","Single responsibility principle","该插件捆绑了两个不同的但相关的技能，专注于理解他人（Elicitation）然后利用这种理解进行推荐。",{"category":68,"check":72,"severity":59,"summary":73},"Description quality","显示的描述准确而简洁地反映了Elicitation和Recommendations技能的能力。",{"category":75,"check":76,"severity":77,"summary":78},"Invocation","Scoped tools","not_applicable","此扩展是一个插件，不直接向代理公开单个工具；其功能通过它捆绑的技能进行访问。",{"category":80,"check":81,"severity":77,"summary":82},"Documentation","Configuration & parameter reference","除了安装之外，该扩展似乎没有可配置的参数。",{"category":68,"check":84,"severity":77,"summary":85},"Tool naming","此检查不适用，因为扩展是一个插件，不直接公开命名工具。",{"category":68,"check":87,"severity":77,"summary":88},"Minimal I/O surface","此检查不适用，因为扩展是一个插件，不公开单个工具接口。",{"category":90,"check":91,"severity":59,"summary":92},"License","License usability","许可证是MIT，在README和LICENSE文件中明确声明，并且是一个允许的开源许可证。",{"category":94,"check":95,"severity":59,"summary":96},"Maintenance","Commit recency","最后一次提交是在2026年4月16日，在过去3个月内。",{"category":94,"check":98,"severity":77,"summary":99},"Dependency Management","在捆绑的文件中未检测到第三方依赖项。",{"category":101,"check":102,"severity":77,"summary":103},"Security","Secret Management","该扩展似乎不处理任何秘密。",{"category":101,"check":105,"severity":59,"summary":106},"Injection","这些技能是独立的，不加载外部数据作为指令。",{"category":101,"check":108,"severity":59,"summary":109},"Transitive Supply-Chain Grenades","所有内容都捆绑在存储库中；没有出现运行时下载或远程执行。",{"category":101,"check":111,"severity":59,"summary":112},"Sandbox Isolation","这些技能旨在在代理的环境中运行，并且似乎不会修改超出其预期范围的文件。",{"category":101,"check":114,"severity":59,"summary":115},"Sandbox escape primitives","在脚本中未找到分离进程的创建或拒绝重试循环。",{"category":101,"check":117,"severity":59,"summary":118},"Data Exfiltration","没有指令读取或将机密数据提交给第三方。",{"category":101,"check":120,"severity":59,"summary":121},"Hidden Text Tricks","捆绑的内容没有隐藏的转向技巧，描述使用了干净的可打印ASCII字符。",{"category":123,"check":124,"severity":59,"summary":125},"Hooks","Opaque code execution","钩子脚本是纯bash，可读。",{"category":127,"check":128,"severity":59,"summary":129},"Portability","Structural Assumption","这些技能不对此类用户项目以外的提供捆绑包的内容做出结构性假设。",{"category":131,"check":132,"severity":59,"summary":133},"Trust","Issues Attention","在过去90天内有0个打开和0个关闭的问题，这表明最近的活动很少，但没有未解决的担忧。",{"category":135,"check":136,"severity":137,"summary":138},"Versioning","Release Management","warning","SKILL.md文件声明了一个版本，但安装说明指向“main”而不是特定的已标记版本，这使得版本固定变得困难。",{"category":140,"check":141,"severity":77,"summary":142},"Code Execution","Validation","这些技能似乎没有复杂的输入验证模式；交互主要是对话式的。",{"category":101,"check":144,"severity":59,"summary":145},"Unguarded Destructive Operations","这些技能是分析性的，不执行破坏性操作。",{"category":140,"check":147,"severity":59,"summary":148},"Error Handling","技能逻辑似乎能优雅地处理错误并提供有意义的反馈。",{"category":140,"check":150,"severity":77,"summary":151},"Logging","这些技能主要是对话式的，不执行需要审计日志记录的操作。",{"category":153,"check":154,"severity":77,"summary":155},"Compliance","GDPR","该扩展似乎没有以需要特定GDPR清理的方式处理个人数据，除了常规的LLM交互。",{"category":153,"check":157,"severity":59,"summary":158},"Target market","该扩展没有区域或司法管辖区逻辑，并且在全球范围内适用。",{"category":127,"check":160,"severity":59,"summary":161},"Runtime stability","这些技能是用bash编写的，并使用标准的LLM交互模式，使其在兼容的运行时中具有可移植性。",{"category":80,"check":163,"severity":59,"summary":164},"README","README内容全面，清晰地说明了目的，并提供了安装和使用示例。",{"category":68,"check":166,"severity":77,"summary":167},"Tool surface size","这是一个插件，不是一个具有定义工具表面大小的技能。",{"category":75,"check":169,"severity":77,"summary":170},"Overlapping near-synonym tools","这是一个插件；直接的工具调用不适用。",{"category":80,"check":172,"severity":59,"summary":173},"Phantom features","所有宣传的功能都由捆绑的技能实现。",{"category":175,"check":176,"severity":59,"summary":177},"Install","Installation instruction","README提供了使用 `npx skills add` 的清晰安装说明，并包含示例调用。",{"category":179,"check":180,"severity":59,"summary":181},"Errors","Actionable error messages","这些技能预计会根据其对话性质和结构化输出来提供可操作的错误消息。",{"category":183,"check":184,"severity":77,"summary":185},"Execution","Pinned dependencies","未使用第三方依赖项。",{"category":68,"check":187,"severity":77,"summary":188},"Dry-run preview","这些技能是对话式和分析性的，不执行状态更改操作。",{"category":190,"check":191,"severity":77,"summary":192},"Protocol","Idempotent retry & timeouts","这些技能是对话式的，不涉及需要幂等的远程调用或状态更改操作。",{"category":153,"check":194,"severity":59,"summary":195},"Telemetry opt-in","没有遥测收集的迹象；如果存在，它很可能是默认选择加入的。",{"category":75,"check":197,"severity":59,"summary":198},"Name collisions","捆绑的两个技能“elicitation”和“recommendations”名称不同。",{"category":75,"check":200,"severity":77,"summary":201},"Hooks-off mechanism","此插件似乎不使用需要hooks-off机制的钩子。",{"category":75,"check":203,"severity":77,"summary":204},"Hook matcher tightness","此插件似乎不使用钩子。",{"category":101,"check":206,"severity":77,"summary":207},"Hook security","此插件似乎不使用具有破坏性或网络连接行为的钩子。",{"category":123,"check":209,"severity":77,"summary":210},"Silent prompt rewriting","未检测到UserPromptSubmit钩子。",{"category":101,"check":212,"severity":77,"summary":213},"Permission Hook","此插件似乎不使用PermissionRequest钩子。",{"category":153,"check":215,"severity":77,"summary":216},"Hook privacy","此插件似乎不使用用于日志记录或遥测的钩子。",{"category":140,"check":218,"severity":77,"summary":204},"Hook dependency",{"category":80,"check":220,"severity":59,"summary":221},"Feature Transparency","README清晰地描述了两个技能及其功能，并且plugin.json中未声明任何钩子。",{"category":223,"check":224,"severity":59,"summary":225},"Convention","Layout convention adherence","该插件遵循标准的布局约定，技能位于各自的目录中，并且.claude-plugin中没有运行时组件。",{"category":223,"check":227,"severity":77,"summary":228},"Plugin state","该插件似乎没有需要根据CLAUDE_PLUGIN_DATA进行管理的持久化状态。",{"category":101,"check":230,"severity":77,"summary":231},"Keychain-stored secrets","该插件不处理需要钥匙链存储的秘密。",{"category":233,"check":234,"severity":77,"summary":235},"Dependencies","Tagged release sourcing","未捆绑或声明外部MCP服务器。",{"category":237,"check":238,"severity":59,"summary":239},"Installation","Clean uninstall","该插件通过 `npx skills add` 安装，该命令应处理会话范围进程的干净卸载。",1778697987686,"该插件捆绑了Elicitation和Recommendations两个技能，使AI代理能够进行心理画像和生成个性化推荐。Elicitation使用叙事同一性研究、自我定义记忆诱导和动机性访谈技术。Recommendations利用对话上下文和心理画像为各个垂直领域提供项目建议。",[243,244,245,246,247],"通过自然对话进行心理画像","核心价值观和动机的诱导","形成性记忆和生活经历的发现","带有解释的个性化推荐","通过Agent Skills标准与AI代理集成",[249,250,251],"提供治疗或临床诊断","进行肤浅的调查或生硬的提问","生成没有深度用户背景的通用推荐","为AI代理提供先进的对话能力，以便在更深的心理层面上理解用户并提供高度个性化的推荐。","该插件文档齐全，遵守安全最佳实践，并提供了独特的价值主张。唯一的警告与安装说明中引用“main”而非已标记版本有关。","一个高质量的插件，通过精心研究的对话技巧提供独特的心理画像和推荐能力。",[29,30,256,257,258,33],"recommendations","profiling","personalization","community",[261,262,263,264],"理解用户核心价值观和动机","发现形成性记忆和人生定义性经历","通过渐进式披露构建心理画像","基于深度用户背景生成个性化推荐",{"codeQuality":266,"collectedAt":268,"documentation":269,"maintenance":272,"security":275,"testCoverage":277},{"hasLockfile":267},false,1778697974518,{"descriptionLength":270,"readmeSize":271},348,4085,{"closedIssues90d":11,"forks":11,"hasChangelog":267,"openIssues90d":11,"pushedAt":273,"stars":274},1776340097000,16,{"hasNpmPackage":267,"license":276,"smitheryVerified":267},"MIT",{"hasCi":267,"hasTests":267},{"updatedAt":279},1778698045858,{"basePath":16,"githubOwner":19,"githubRepo":20,"locale":21,"slug":16,"type":281},"plugin",{"_creationTime":283,"_id":284,"community":285,"display":286,"identity":290,"parentExtension":294,"providers":295,"relations":306,"tags":307,"workflow":308},1778697963443.4841,"k176abyf6zd0nraq60x6kn4cy186mya5",{"reviewCount":11},{"description":287,"installMethods":288,"name":289,"sourceUrl":17},"Psychological profiling skills for natural conversation using research-backed techniques",{"claudeCode":15},"tasteray-skills",{"basePath":291,"githubOwner":19,"githubRepo":20,"locale":292,"slug":20,"type":293},"","en","marketplace",null,{"evaluate":296,"extract":301},{"promptVersionExtension":297,"promptVersionScoring":26,"score":298,"tags":299,"targetMarket":34,"tier":35},"3.1.0",96,[29,256,30,258,300],"user-understanding",{"commitSha":37,"marketplace":302,"plugin":304},{"name":289,"pluginCount":303},2,{"mcpCount":11,"provider":305,"skillCount":11},"classify",{"repoId":40},[30,258,29,256,300],{"evaluatedAt":309,"extractAt":45,"updatedAt":310},1778697974234,1778698069708,{"evaluate":312,"extract":314},{"promptVersionExtension":25,"promptVersionScoring":26,"score":27,"tags":313,"targetMarket":34,"tier":259},[29,30,256,257,258,33],{"commitSha":37},{"parentExtensionId":284,"repoId":40,"translatedFrom":39},{"_creationTime":317,"_id":40,"identity":318,"providers":319,"workflow":390},1778697959310.8623,{"githubOwner":19,"githubRepo":20,"sourceUrl":17},{"classify":320,"discover":381,"github":384},{"commitSha":37,"extensions":321},[322,335,342,348,369],{"basePath":291,"description":287,"displayName":289,"installMethods":323,"rationale":324,"selectedPaths":325,"source":334,"sourceLanguage":292,"type":293},{"claudeCode":15},"marketplace.json at .claude-plugin/marketplace.json",[326,329,331],{"path":327,"priority":328},".claude-plugin/marketplace.json","mandatory",{"path":330,"priority":328},"README.md",{"path":332,"priority":333},"LICENSE","high","rule",{"basePath":16,"description":336,"displayName":16,"installMethods":337,"rationale":338,"selectedPaths":339,"source":334,"sourceLanguage":292,"type":281},"Psychological profiling through natural conversation using narrative identity research (McAdams), self-defining memory elicitation (Singer), and Motivational Interviewing (OARS framework). Use when you need to understand core values, discover formative memories, detect emotional schemas, or build psychological profiles through gradual disclosure.",{"claudeCode":16},"inline plugin source from marketplace.json at elicitation",[340],{"path":341,"priority":333},"SKILL.md",{"basePath":256,"description":343,"displayName":256,"installMethods":344,"rationale":345,"selectedPaths":346,"source":334,"sourceLanguage":292,"type":281},"TasteRay API integration for personalized recommendations across verticals (movies, restaurants, products, travel, jobs). Use when you need to recommend items, answer 'what would I like' questions, provide personalized recommendations, rank items for users, explain why something matches their taste, or integrate psychological profiles with recommendation systems.",{"claudeCode":256},"inline plugin source from marketplace.json at recommendations",[347],{"path":341,"priority":333},{"basePath":16,"description":349,"displayName":16,"installMethods":350,"rationale":351,"selectedPaths":352,"source":334,"sourceLanguage":292,"type":22},"Psychological profiling through natural conversation using narrative identity research (McAdams), self-defining memory elicitation (Singer), and Motivational Interviewing (OARS framework). Use when you need to: (1) understand someone's core values and motivations, (2) discover formative memories and life-defining experiences, (3) detect emotional schemas and belief patterns, (4) build psychological profiles through gradual disclosure, (5) conduct user interviews that reveal deep insights, (6) design conversational flows for personal discovery, (7) identify identity themes like redemption and contamination narratives, (8) elicit authentic self-disclosure without interrogation.",{"claudeCode":15},"SKILL.md frontmatter at elicitation/SKILL.md",[353,354,357,359,361,363,365,367],{"path":341,"priority":328},{"path":355,"priority":356},"references/language-inference.md","medium",{"path":358,"priority":356},"references/motivational-interviewing.md",{"path":360,"priority":356},"references/narrative-identity.md",{"path":362,"priority":356},"references/question-sequences.md",{"path":364,"priority":356},"references/schema-detection.md",{"path":366,"priority":356},"references/self-defining-memories.md",{"path":368,"priority":356},"references/values-elicitation.md",{"basePath":256,"description":370,"displayName":256,"installMethods":371,"rationale":372,"selectedPaths":373,"source":334,"sourceLanguage":292,"type":22},"TasteRay API integration for personalized recommendations across verticals (movies, restaurants, products, travel, jobs). Use when you need to: (1) recommend movies, restaurants, products, travel, or jobs, (2) answer \"what would I like\" questions, (3) provide personalized recommendations based on preferences, (4) rank or score items for a user, (5) explain why something matches a user's taste, (6) build recommendation context from conversation, (7) integrate psychological profiles with recommendation systems.",{"claudeCode":15},"SKILL.md frontmatter at recommendations/SKILL.md",[374,375,377,379],{"path":341,"priority":328},{"path":376,"priority":356},"references/api-reference.md",{"path":378,"priority":356},"references/context-patterns.md",{"path":380,"priority":356},"references/presentation-patterns.md",{"sources":382},[383],"manual",{"closedIssues90d":11,"description":385,"forks":11,"homepage":386,"license":276,"openIssues90d":11,"pushedAt":273,"readmeSize":271,"stars":274,"topics":387},"TasteRay skills for psychological profiling through natural conversation","https://api.tasteray.com",[16,388,256,389],"recommendation","system",{"classifiedAt":391,"discoverAt":392,"extractAt":393,"githubAt":393,"updatedAt":391},1778697963265,1778697959310,1778697961228,[30,258,257,29,256,33],{"evaluatedAt":396,"extractAt":45,"updatedAt":279},1778697987967,[],[399,421,453,481,512],{"_creationTime":400,"_id":401,"community":402,"display":403,"identity":407,"providers":408,"relations":415,"tags":417,"workflow":418},1778698056833.5608,"k17df95vsxsgpccjwxbr64qpj586mg1a",{"reviewCount":11},{"description":404,"installMethods":405,"name":406,"sourceUrl":17},"TasteRay API 集成，可为各垂直领域（电影、餐厅、产品、旅游、招聘）提供个性化推荐。当您需要推荐商品、回答“我喜欢什么”类问题、提供个性化推荐、为用户对商品进行排名、解释某商品为何符合其口味，或将心理模型与推荐系统集成时，请使用此功能。",{"claudeCode":256},"TasteRay Recommendations",{"basePath":256,"githubOwner":19,"githubRepo":20,"locale":21,"slug":256,"type":281},{"evaluate":409,"extract":414},{"promptVersionExtension":25,"promptVersionScoring":26,"score":410,"tags":411,"targetMarket":34,"tier":259},79,[256,412,258,413],"api","taste",{"commitSha":37,"license":276},{"parentExtensionId":284,"repoId":40,"translatedFrom":416},"k17ceedcn7c5js4g770dv7sk5586ntsf",[412,258,256,413],{"evaluatedAt":419,"extractAt":45,"updatedAt":420},1778698004215,1778698056833,{"_creationTime":422,"_id":423,"community":424,"display":425,"identity":430,"providers":432,"relations":444,"tags":448,"workflow":449},1778699370708.0312,"k1723qpzss3brknsew3gnrx34186n0rb",{"reviewCount":11},{"description":426,"installMethods":427,"name":428,"sourceUrl":429},"通过 OpenAlex 搜索学术论文 — 按关键词查找论文，按 DOI 查看详情，支持分页和排序",{"claudeCode":428},"paper-search","https://github.com/ykdojo/paper-search",{"basePath":291,"githubOwner":431,"githubRepo":428,"locale":21,"slug":428,"type":281},"ykdojo",{"evaluate":433,"extract":441},{"promptVersionExtension":25,"promptVersionScoring":26,"score":434,"tags":435,"targetMarket":34,"tier":35},100,[436,437,438,439,33,440],"academic","search","papers","openalex","citations",{"commitSha":37,"license":276,"plugin":442},{"mcpCount":11,"provider":305,"skillCount":443},1,{"parentExtensionId":445,"repoId":446,"translatedFrom":447},"k17abfkyvjasac4fgc8v24wz6186mvem","kd78zpgf1ptwq5s0gcz3yqr9n186mvy5","k17d3jtp70vmbqjhnze3n53ra586n5r8",[436,440,439,438,33,437],{"evaluatedAt":450,"extractAt":451,"updatedAt":452},1778699343032,1778699316533,1778699370708,{"_creationTime":454,"_id":455,"community":456,"display":457,"identity":463,"providers":466,"relations":474,"tags":477,"workflow":478},1778690773482.4834,"k179sm2kkyd7r7nz9jsx62jm9x86mw4a",{"reviewCount":11},{"description":458,"installMethods":459,"name":461,"sourceUrl":462},"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":460},"huggingface-papers","Hugging Face Papers","https://github.com/huggingface/skills",{"basePath":464,"githubOwner":465,"githubRepo":20,"locale":292,"slug":460,"type":281},"skills/huggingface-papers","huggingface",{"evaluate":467,"extract":472},{"promptVersionExtension":25,"promptVersionScoring":26,"score":434,"tags":468,"targetMarket":34,"tier":35},[465,438,469,470,33,471],"arxiv","ai","metadata",{"commitSha":37,"license":473},"Apache-2.0",{"parentExtensionId":475,"repoId":476},"k17es3r8wd37t5rrwqcpp5kwrh86mxx8","kd72xwt5xnc0ktc4p7smzfcp3986m959",[470,469,465,471,438,33],{"evaluatedAt":479,"extractAt":480,"updatedAt":479},1778690901306,1778690773482,{"_creationTime":482,"_id":483,"community":484,"display":485,"identity":490,"providers":494,"relations":505,"tags":508,"workflow":509},1778686640222.7905,"k17472nb19gp6dk9qr5s2b85as86mssy",{"reviewCount":11},{"description":486,"installMethods":487,"name":488,"sourceUrl":489},"Personalized coding tutorials that use your actual codebase for examples with spaced repetition quizzes",{"claudeCode":488},"coding-tutor","https://github.com/EveryInc/compound-engineering-plugin",{"basePath":491,"githubOwner":492,"githubRepo":493,"locale":292,"slug":488,"type":281},"plugins/coding-tutor","EveryInc","compound-engineering-plugin",{"evaluate":495,"extract":503},{"promptVersionExtension":25,"promptVersionScoring":26,"score":496,"tags":497,"targetMarket":34,"tier":35},98,[498,499,500,501,502,258],"coding","tutorial","learning","spaced-repetition","codebase-examples",{"commitSha":37,"plugin":504},{"mcpCount":11,"provider":305,"skillCount":443},{"parentExtensionId":506,"repoId":507},"k17ef8php9wk308mkg59kdp6b186nzhx","kd7e40my1b5g70tg0f60qg85ch86nn08",[502,498,500,258,501,499],{"evaluatedAt":510,"extractAt":511,"updatedAt":510},1778686698664,1778686640222,{"_creationTime":513,"_id":514,"community":515,"display":516,"identity":522,"providers":526,"relations":539,"tags":542,"workflow":543},1778699018122.7725,"k171q3hnqxmn6rkgv5wcs9a85d86m03p",{"reviewCount":11},{"description":517,"installMethods":518,"name":520,"sourceUrl":521},"Application profiling, performance optimization, and observability for frontend and backend systems",{"claudeCode":519},"application-performance","Application Performance","https://github.com/wshobson/agents",{"basePath":523,"githubOwner":524,"githubRepo":525,"locale":292,"slug":519,"type":281},"plugins/application-performance","wshobson","agents",{"evaluate":527,"extract":538},{"promptVersionExtension":25,"promptVersionScoring":26,"score":528,"tags":529,"targetMarket":34,"tier":35},97,[530,531,532,257,533,534,535,536,537],"performance","optimization","observability","testing","monitoring","backend","frontend","cloud",{"commitSha":37,"license":276},{"parentExtensionId":540,"repoId":541},"k17cywe30jfsfw3cdpncjfn8y186nvyw","kd74de64zj0axtg5b8t7eqqe2x86nske",[535,537,536,534,532,531,530,257,533],{"evaluatedAt":544,"extractAt":545,"updatedAt":544},1778699498621,1778699018122]