[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"extension-skill-tasteray-elicitation-zh-CN":3,"guides-for-tasteray-elicitation":385,"similar-k17b3n1kewbjz52xp3wng1yxqh86n9w9-zh-CN":386},{"_creationTime":4,"_id":5,"children":6,"community":7,"display":9,"evaluation":15,"identity":241,"isFallback":227,"parentExtension":245,"providers":299,"relations":303,"repo":305,"tags":382,"workflow":383},1778698058858.7466,"k17b3n1kewbjz52xp3wng1yxqh86n9w9",[],{"reviewCount":8},0,{"description":10,"installMethods":11,"name":13,"sourceUrl":14},"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":12},"tasteray/skills","elicitation","https://github.com/tasteray/skills",{"_creationTime":16,"_id":17,"extensionId":5,"locale":18,"result":19,"trustSignals":225,"workflow":239},1778698058858.7468,"kn765gsmm5cwsf9d2rhpz7rmz986m0tk","zh-CN",{"checks":20,"evaluatedAt":196,"extensionSummary":197,"features":198,"nonGoals":204,"promptVersionExtension":208,"promptVersionScoring":209,"purpose":210,"rationale":211,"score":212,"summary":213,"tags":214,"tier":220,"useCases":221},[21,26,29,32,36,39,44,48,51,54,58,62,65,69,72,75,78,81,84,87,91,95,99,103,107,110,113,116,121,124,127,130,133,136,139,143,147,151,154,158,161,164,167,170,174,177,180,183,186,189,193],{"category":22,"check":23,"severity":24,"summary":25},"Practical Utility","Problem relevance","pass","描述清晰地指出了通过自然对话理解个人的用户问题，并以特定的研究传统为基础。",{"category":22,"check":27,"severity":24,"summary":28},"Unique selling proposition","该技能通过综合多种研究传统并专注于耐心、非侵入性的提取，提供了一种独特的心理画像方法，其价值超越了基础对话式 AI。",{"category":22,"check":30,"severity":24,"summary":31},"Production readiness","该技能已准备好投入生产，为通过对话理解用户提供了一个完整的生命周期，并具有明确的目标和技术。",{"category":33,"check":34,"severity":24,"summary":35},"Scope","Single responsibility principle","该技能具有清晰的单一职责，专注于通过对话进行心理画像和提取，避免了无关的领域。",{"category":33,"check":37,"severity":24,"summary":38},"Description quality","显示的描述准确地反映了该技能的能力、研究基础和预期用例。",{"category":40,"check":41,"severity":42,"summary":43},"Invocation","Scoped tools","not_applicable","此技能不以传统意义上公开工具，其功能通过其 SKILL.md 指令引导的对话交互来执行。",{"category":45,"check":46,"severity":42,"summary":47},"Documentation","Configuration & parameter reference","该技能没有可配置的参数或除了核心指令之外的显式配置。",{"category":33,"check":49,"severity":42,"summary":50},"Tool naming","由于这是一个对话式技能而不是基于工具的技能，因此工具命名不适用。",{"category":33,"check":52,"severity":42,"summary":53},"Minimal I/O surface","该技能通过自然语言对话运行，不公开具有输入/输出模式的工具/命令接口。",{"category":55,"check":56,"severity":24,"summary":57},"License","License usability","该扩展根据 MIT 许可证授权，这是一个宽松的开源许可证，如 LICENSE 文件和 README 中所述。",{"category":59,"check":60,"severity":24,"summary":61},"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":59,"check":63,"severity":42,"summary":64},"Dependency Management","该技能似乎没有任何需要管理的第三方依赖项。",{"category":66,"check":67,"severity":42,"summary":68},"Security","Secret Management","该技能不处理或公开机密信息。",{"category":66,"check":70,"severity":24,"summary":71},"Injection","该技能的内容被构建为 LLM 的指令，似乎不涉及加载或执行外部、不受信任的数据。",{"category":66,"check":73,"severity":24,"summary":74},"Transitive Supply-Chain Grenades","该技能的内容包含在存储库中，并且在运行时不会获取外部代码或数据。",{"category":66,"check":76,"severity":24,"summary":77},"Sandbox Isolation","该技能通过对话交互运行，不与文件系统或外部进程进行交互。",{"category":66,"check":79,"severity":24,"summary":80},"Sandbox escape primitives","该技能的对话指令集性质不涉及执行可能导致沙箱逃逸的代码。",{"category":66,"check":82,"severity":24,"summary":83},"Data Exfiltration","该技能的目的是进行对话提取，不涉及读取机密数据或进行外联以进行数据渗漏。",{"category":66,"check":85,"severity":24,"summary":86},"Hidden Text Tricks","捆绑的内容似乎没有隐藏的操纵技巧；描述是干净的 ASCII。",{"category":88,"check":89,"severity":24,"summary":90},"Hooks","Opaque code execution","该技能的内容是人类可读的文本和指令，而不是混淆的代码。",{"category":92,"check":93,"severity":24,"summary":94},"Portability","Structural Assumption","该技能不假设用户项目结构，因为它纯粹通过对话运行。",{"category":96,"check":97,"severity":24,"summary":98},"Trust","Issues Attention","在过去 90 天内有 0 个打开和 0 个关闭的 issue，表明缺乏近期参与或活动，但没有负面趋势。",{"category":100,"check":101,"severity":24,"summary":102},"Versioning","Release Management","该技能在其 frontmatter 中声明了一个版本（'1.0'），满足了有意义的版本信号要求。",{"category":104,"check":105,"severity":42,"summary":106},"Code Execution","Validation","此技能不执行代码或处理需要模式验证的结构化输入/输出。",{"category":66,"check":108,"severity":24,"summary":109},"Unguarded Destructive Operations","该技能纯粹是对话式和分析性的，不执行任何破坏性操作。",{"category":104,"check":111,"severity":42,"summary":112},"Error Handling","作为一个对话式技能，它没有传统意义上的需要错误处理的可执行代码路径。",{"category":104,"check":114,"severity":42,"summary":115},"Logging","此技能不执行需要本地审计日志记录的操作。",{"category":117,"check":118,"severity":119,"summary":120},"Compliance","GDPR","info","该技能处理的对话数据可能包括个人数据，但它不会将这些数据提交给第三方，也不会进行明确的清理（超出 LLM 提供的范围）。",{"category":117,"check":122,"severity":24,"summary":123},"Target market","该技能专注于心理提取和基于研究的对话技术，在全球范围内适用，没有地域限制。",{"category":92,"check":125,"severity":24,"summary":126},"Runtime stability","该技能在代理的对话环境中运行，并且不假设特定的编辑器、shell 或操作系统运行时。",{"category":45,"check":128,"severity":24,"summary":129},"README","README 文件清楚地说明了扩展的用途、其启用的功能以及安装说明。",{"category":33,"check":131,"severity":42,"summary":132},"Tool surface size","这是一个对话式技能，不公开多个工具或命令。",{"category":40,"check":134,"severity":42,"summary":135},"Overlapping near-synonym tools","此技能不公开多个工具，因此不适用重叠的近义词。",{"category":45,"check":137,"severity":24,"summary":138},"Phantom features","README 和 SKILL.md 中宣传的所有功能都通过该技能提供的对话指导和研究综合来实现。",{"category":140,"check":141,"severity":24,"summary":142},"Install","Installation instruction","README 提供了清晰、可复制粘贴的安装说明，使用 skills.sh 并提到了示例调用。",{"category":144,"check":145,"severity":42,"summary":146},"Errors","Actionable error messages","该技能通过对话运行，没有需要可操作消息的用户界面错误路径。",{"category":148,"check":149,"severity":42,"summary":150},"Execution","Pinned dependencies","该技能不使用第三方依赖项或执行具有外部解释器要求的脚本。",{"category":33,"check":152,"severity":42,"summary":153},"Dry-run preview","该技能纯粹是通过对话进行的，不执行状态更改操作或向外发送数据，因此不适用试运行功能。",{"category":155,"check":156,"severity":42,"summary":157},"Protocol","Idempotent retry & timeouts","该技能是对话式的，不涉及需要幂等性或超时处理的远程调用或状态更改操作。",{"category":117,"check":159,"severity":24,"summary":160},"Telemetry opt-in","没有迹象表明此技能会发出遥测数据，因此不需要也不存在选择退出或选择加入机制。",{"category":40,"check":162,"severity":24,"summary":163},"Precise Purpose","该技能的目的在其 frontmatter 和描述中已精确说明，概述了它的作用（通过对话进行心理画像）以及何时使用它（理解价值观、动机、形成性记忆等）。",{"category":40,"check":165,"severity":24,"summary":166},"Concise Frontmatter","Frontmatter 简洁且自包含，清晰地总结了该技能的核心功能和预期用例。",{"category":45,"check":168,"severity":24,"summary":169},"Concise Body","SKILL.md 的主体结构良好，将更深层次的材料委托给参考文件，并且长度适中。",{"category":171,"check":172,"severity":24,"summary":173},"Context","Progressive Disclosure","SKILL.md 使用相对链接来分隔详细技术的参考文件，遵循渐进式披露原则。",{"category":171,"check":175,"severity":42,"summary":176},"Forked exploration","此技能不涉及代码或外部文档的深度探索，因此不需要分叉上下文。",{"category":22,"check":178,"severity":119,"summary":179},"Usage examples","README 提供了通用的调用示例，但 SKILL.md 本身不包含展示每个功能的确切输入、调用和输出的端到端示例。",{"category":22,"check":181,"severity":119,"summary":182},"Edge cases","SKILL.md 记录了限制和反模式，但没有明确列出所有潜在对话状态的具体失败模式及其症状和恢复步骤。",{"category":104,"check":184,"severity":42,"summary":185},"Tool Fallback","此技能不依赖 MCP 服务器等外部工具，因此不需要回退。",{"category":92,"check":187,"severity":24,"summary":188},"Stack assumptions","该技能在代理的对话环境中运行，并且不声明任何特定的堆栈假设。",{"category":190,"check":191,"severity":24,"summary":192},"Safety","Halt on unexpected state","该技能的指令暗示了结构化的对话方法，并且反模式部分警告了过早的深度或审问，表明了对对话状态的谨慎处理。",{"category":92,"check":194,"severity":24,"summary":195},"Cross-skill coupling","该技能是独立的，并且不隐式依赖于其他技能；其重点仅在于对话提取。",1778698017024,"此技能指导 AI 代理通过自然对话进行心理画像，利用叙事同一性、自我定义记忆提取和动机访谈的研究成果。其目标是揭示核心价值观、动机、形成性记忆和信念模式，以建立心理画像并进行有见地的用户访谈。",[199,200,201,202,203],"通过对话进行心理画像","提取核心价值观和动机","发现形成性记忆和人生定义经历","检测情绪图式和信念模式","通过渐进式披露建立画像",[205,206,207],"进行治疗或诊断","审问用户","通过生硬的提问来建立画像","3.0.0","4.4.0","使 AI 代理能够通过耐心、基于研究的对话深入了解个人，促进真实的自我披露，并揭示核心价值观和动机。","该技能文档齐全，遵循最佳实践，并且具有明确的目的。关于用法示例和边缘情况文档的一些信息级发现阻止了获得满分。",95,"一项出色的技能，可通过基于研究的对话进行心理画像。",[215,216,13,217,218,219],"psychology","conversation","identity","values","research","verified",[222,201,223,224],"理解某人的核心价值观和动机","进行能揭示深刻见解的用户访谈","设计用于个人发现的对话流程",{"codeQuality":226,"collectedAt":228,"documentation":229,"maintenance":232,"security":236,"testCoverage":238},{"hasLockfile":227},false,1778698004524,{"descriptionLength":230,"readmeSize":231},684,4085,{"closedIssues90d":8,"forks":8,"hasChangelog":227,"manifestVersion":233,"openIssues90d":8,"pushedAt":234,"stars":235},"1.0",1776340097000,16,{"hasNpmPackage":227,"license":237,"smitheryVerified":227},"MIT",{"hasCi":227,"hasTests":227},{"updatedAt":240},1778698058858,{"basePath":13,"githubOwner":242,"githubRepo":243,"locale":18,"slug":13,"type":244},"tasteray","skills","skill",{"_creationTime":246,"_id":247,"community":248,"display":249,"identity":252,"parentExtension":255,"providers":288,"relations":294,"tags":295,"workflow":296},1778697963443.4844,"k175271xmxfwv5wgvdmjsg40kd86n3zp",{"reviewCount":8},{"description":250,"installMethods":251,"name":13,"sourceUrl":14},"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":13},{"basePath":13,"githubOwner":242,"githubRepo":243,"locale":253,"slug":13,"type":254},"en","plugin",{"_creationTime":256,"_id":257,"community":258,"display":259,"identity":263,"providers":266,"relations":281,"tags":283,"workflow":284},1778697963443.4841,"k176abyf6zd0nraq60x6kn4cy186mya5",{"reviewCount":8},{"description":260,"installMethods":261,"name":262,"sourceUrl":14},"Psychological profiling skills for natural conversation using research-backed techniques",{"claudeCode":12},"tasteray-skills",{"basePath":264,"githubOwner":242,"githubRepo":243,"locale":253,"slug":243,"type":265},"","marketplace",{"evaluate":267,"extract":275},{"promptVersionExtension":268,"promptVersionScoring":209,"score":269,"tags":270,"targetMarket":274,"tier":220},"3.1.0",96,[215,271,216,272,273],"recommendations","personalization","user-understanding","global",{"commitSha":276,"marketplace":277,"plugin":279},"HEAD",{"name":262,"pluginCount":278},2,{"mcpCount":8,"provider":280,"skillCount":8},"classify",{"repoId":282},"kd71g6tdfax8bbc709p7x2z8p586m87d",[216,272,215,271,273],{"evaluatedAt":285,"extractAt":286,"updatedAt":287},1778697974234,1778697963443,1778698069708,{"evaluate":289,"extract":293},{"promptVersionExtension":208,"promptVersionScoring":209,"score":212,"tags":290,"targetMarket":274,"tier":292},[215,216,271,291,272,219],"profiling","community",{"commitSha":276},{"parentExtensionId":257,"repoId":282},[216,272,291,215,271,219],{"evaluatedAt":297,"extractAt":286,"updatedAt":298},1778697987967,1778698069882,{"evaluate":300,"extract":302},{"promptVersionExtension":208,"promptVersionScoring":209,"score":212,"tags":301,"targetMarket":274,"tier":220},[215,216,13,217,218,219],{"commitSha":276},{"parentExtensionId":247,"repoId":282,"translatedFrom":304},"k17akp5d0t6qtbnvxqce0tv6t586m3qg",{"_creationTime":306,"_id":282,"identity":307,"providers":308,"workflow":378},1778697959310.8623,{"githubOwner":242,"githubRepo":243,"sourceUrl":14},{"classify":309,"discover":369,"github":372},{"commitSha":276,"extensions":310},[311,324,330,336,357],{"basePath":264,"description":260,"displayName":262,"installMethods":312,"rationale":313,"selectedPaths":314,"source":323,"sourceLanguage":253,"type":265},{"claudeCode":12},"marketplace.json at .claude-plugin/marketplace.json",[315,318,320],{"path":316,"priority":317},".claude-plugin/marketplace.json","mandatory",{"path":319,"priority":317},"README.md",{"path":321,"priority":322},"LICENSE","high","rule",{"basePath":13,"description":250,"displayName":13,"installMethods":325,"rationale":326,"selectedPaths":327,"source":323,"sourceLanguage":253,"type":254},{"claudeCode":13},"inline plugin source from marketplace.json at elicitation",[328],{"path":329,"priority":322},"SKILL.md",{"basePath":271,"description":331,"displayName":271,"installMethods":332,"rationale":333,"selectedPaths":334,"source":323,"sourceLanguage":253,"type":254},"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":271},"inline plugin source from marketplace.json at recommendations",[335],{"path":329,"priority":322},{"basePath":13,"description":337,"displayName":13,"installMethods":338,"rationale":339,"selectedPaths":340,"source":323,"sourceLanguage":253,"type":244},"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":12},"SKILL.md frontmatter at elicitation/SKILL.md",[341,342,345,347,349,351,353,355],{"path":329,"priority":317},{"path":343,"priority":344},"references/language-inference.md","medium",{"path":346,"priority":344},"references/motivational-interviewing.md",{"path":348,"priority":344},"references/narrative-identity.md",{"path":350,"priority":344},"references/question-sequences.md",{"path":352,"priority":344},"references/schema-detection.md",{"path":354,"priority":344},"references/self-defining-memories.md",{"path":356,"priority":344},"references/values-elicitation.md",{"basePath":271,"description":358,"displayName":271,"installMethods":359,"rationale":360,"selectedPaths":361,"source":323,"sourceLanguage":253,"type":244},"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":12},"SKILL.md frontmatter at recommendations/SKILL.md",[362,363,365,367],{"path":329,"priority":317},{"path":364,"priority":344},"references/api-reference.md",{"path":366,"priority":344},"references/context-patterns.md",{"path":368,"priority":344},"references/presentation-patterns.md",{"sources":370},[371],"manual",{"closedIssues90d":8,"description":373,"forks":8,"homepage":374,"license":237,"openIssues90d":8,"pushedAt":234,"readmeSize":231,"stars":235,"topics":375},"TasteRay skills for psychological profiling through natural conversation","https://api.tasteray.com",[13,376,271,377],"recommendation","system",{"classifiedAt":379,"discoverAt":380,"extractAt":381,"githubAt":381,"updatedAt":379},1778697963265,1778697959310,1778697961228,[216,13,217,215,219,218],{"evaluatedAt":384,"extractAt":286,"updatedAt":240},1778698017130,[],[387,419,449,474,503,533],{"_creationTime":388,"_id":389,"community":390,"display":391,"identity":397,"providers":401,"relations":410,"tags":414,"workflow":415},1778694990914.8232,"k170mmr549jkqghjyp3y2gxcr186nh6y",{"reviewCount":8},{"description":392,"installMethods":393,"name":395,"sourceUrl":396},"用于身份验证、用户注册、登录、密码恢复、OAuth 提供商、基于角色的访问控制或保护路由和函数。始终使用 `@netlify/identity`。切勿使用 `netlify-identity-widget` 或 `gotrue-js` — 它们已弃用。",{"claudeCode":394},"netlify/context-and-tools","netlify-identity","https://github.com/netlify/context-and-tools",{"basePath":398,"githubOwner":399,"githubRepo":400,"locale":18,"slug":395,"type":244},"skills/netlify-identity","netlify","context-and-tools",{"evaluate":402,"extract":409},{"promptVersionExtension":208,"promptVersionScoring":209,"score":403,"tags":404,"targetMarket":274,"tier":220},100,[405,399,217,406,407,408],"authentication","javascript","typescript","api",{"commitSha":276},{"parentExtensionId":411,"repoId":412,"translatedFrom":413},"k1714spp30a0rvg5y3yjga772n86nmps","kd7b1ncy2zzzfws29grdt8heb986ntzq","k17f1596a2t00btq1hfksssg0s86n6ej",[408,405,217,406,399,407],{"evaluatedAt":416,"extractAt":417,"updatedAt":418},1778694839805,1778694599571,1778694990914,{"_creationTime":420,"_id":421,"community":422,"display":423,"identity":429,"providers":432,"relations":442,"tags":445,"workflow":446},1778698867338.298,"k17eany15hcz465k5n1zhc55cd86nzs2",{"reviewCount":8},{"description":424,"installMethods":425,"name":427,"sourceUrl":428},"Apply the six principles of ethical persuasion (reciprocity, commitment, social proof, authority, liking, scarcity) to product design, copy, and sales. Use when the user mentions \"social proof\", \"persuasive copy\", \"why users dont convert\", \"ethical persuasion\", \"reciprocity\", \"scarcity tactics\", or \"commitment and consistency\". Also trigger when designing testimonial sections, crafting urgency messaging, or improving trust signals on landing pages. For deal negotiation tactics, see negotiation. For viral word-of-mouth, see contagious.",{"claudeCode":426},"wondelai/skills","Influence Psychology","https://github.com/wondelai/skills",{"basePath":430,"githubOwner":431,"githubRepo":243,"locale":253,"slug":430,"type":244},"influence-psychology","wondelai",{"evaluate":433,"extract":441},{"promptVersionExtension":208,"promptVersionScoring":209,"score":403,"tags":434,"targetMarket":274,"tier":220},[435,436,437,215,438,439,440],"marketing","copywriting","product-design","persuasion","ux","sales",{"commitSha":276,"license":237},{"parentExtensionId":443,"repoId":444},"k17bj16z8e1yp2wwfd2hxagjtd86m0fp","kd7aexggvp8qjwjtgjbetg0jch86mg5a",[436,435,438,437,215,440,439],{"evaluatedAt":447,"extractAt":448,"updatedAt":447},1778699285462,1778698867338,{"_creationTime":450,"_id":451,"community":452,"display":453,"identity":457,"providers":459,"relations":470,"tags":471,"workflow":472},1778698867338.2969,"k17eycez10awwb40pbfjr0je3986mqd0",{"reviewCount":8},{"description":454,"installMethods":455,"name":456,"sourceUrl":428},"Design motivation systems using Autonomy, Mastery, and Purpose (AMP) for products and teams. Use when the user mentions \"intrinsic motivation\", \"gamification isnt working\", \"team incentives\", \"autonomy\", \"mastery\", \"purpose-driven\", \"employee engagement\", or \"reward systems\". Also trigger when designing onboarding progression systems, fixing broken gamification, or building team structures that sustain high performance. Covers why carrot-and-stick fails and how to build progress systems. For habit-forming product loops, see hooked-ux. For retention behavior design, see improve-retention.",{"claudeCode":426},"Drive Motivation",{"basePath":458,"githubOwner":431,"githubRepo":243,"locale":253,"slug":458,"type":244},"drive-motivation",{"evaluate":460,"extract":469},{"promptVersionExtension":208,"promptVersionScoring":209,"score":403,"tags":461,"targetMarket":274,"tier":220},[462,463,464,465,215,466,467,468],"motivation","product-management","team-management","gamification","autonomy","mastery","purpose",{"commitSha":276,"license":237},{"parentExtensionId":443,"repoId":444},[466,465,467,462,463,215,468,464],{"evaluatedAt":473,"extractAt":448,"updatedAt":473},1778699189848,{"_creationTime":475,"_id":476,"community":477,"display":478,"identity":484,"providers":488,"relations":496,"tags":499,"workflow":500},1778699234184.6135,"k175frmf44tn80mcd6gvw1c1th86ngq9",{"reviewCount":8},{"description":479,"installMethods":480,"name":482,"sourceUrl":483},"Invoke parallel document-specialist agents for external web searches and documentation lookup",{"claudeCode":481},"Yeachan-Heo/oh-my-claudecode","external-context","https://github.com/Yeachan-Heo/oh-my-claudecode",{"basePath":485,"githubOwner":486,"githubRepo":487,"locale":253,"slug":482,"type":244},"skills/external-context","Yeachan-Heo","oh-my-claudecode",{"evaluate":489,"extract":495},{"promptVersionExtension":208,"promptVersionScoring":209,"score":403,"tags":490,"targetMarket":274,"tier":220},[491,492,219,493,494],"search","documentation","information-retrieval","multi-agent",{"commitSha":276},{"parentExtensionId":497,"repoId":498},"k17brg5egdw1jbncj1j4wfv3fh86n639","kd74zv63fryf9prygtq7gf4es986n22y",[492,493,494,219,491],{"evaluatedAt":501,"extractAt":502,"updatedAt":501},1778699449790,1778699234184,{"_creationTime":504,"_id":505,"community":506,"display":507,"identity":513,"providers":518,"relations":526,"tags":529,"workflow":530},1778695116697.199,"k17cex5hqwje7qgvts5evct1d186nd4m",{"reviewCount":8},{"description":508,"installMethods":509,"name":511,"sourceUrl":512},"Records research provenance as a post-task epilogue, scanning conversation history at the end of a coding or research session to extract decisions, experiments, dead ends, claims, heuristics, and pivots, and writing them into the ara/ directory with user-vs-AI provenance tags. Use as a session epilogue — never during execution — to maintain a faithful, auditable trace of how a research project actually evolved.",{"claudeCode":510},"Orchestra-Research/AI-Research-SKILLs","ARA Research Manager","https://github.com/Orchestra-Research/AI-Research-SKILLs",{"basePath":514,"githubOwner":515,"githubRepo":516,"locale":253,"slug":517,"type":244},"22-agent-native-research-artifact/research-manager","Orchestra-Research","AI-Research-SKILLs","research-manager",{"evaluate":519,"extract":525},{"promptVersionExtension":208,"promptVersionScoring":209,"score":403,"tags":520,"targetMarket":274,"tier":220},[219,521,522,523,524],"provenance","knowledge-management","session-logging","ara",{"commitSha":276,"license":237},{"parentExtensionId":527,"repoId":528},"k17155ws9qc0hw7a568bg79sfd86max8","kd70hj1y80mhra5xm5g188j5n586mg18",[524,522,521,219,523],{"evaluatedAt":531,"extractAt":532,"updatedAt":531},1778697541177,1778695116697,{"_creationTime":534,"_id":535,"community":536,"display":537,"identity":543,"providers":547,"relations":555,"tags":557,"workflow":558},1778696113180.8188,"k17c5zp0g9ej845h70sjh0z6rd86n8ta",{"reviewCount":8},{"description":538,"installMethods":539,"name":541,"sourceUrl":542},"Build customer journey maps and service blueprints that visualize the end-to-end user experience including touchpoints, emotions, friction, and underlying systems. Use this skill whenever the user wants to map a customer journey, build a service blueprint, identify friction across an experience, align teams on the user experience, or visualize touchpoints and pain points. Triggers on customer journey, journey map, service blueprint, user journey, experience map, touchpoint analysis, friction map, journey audit, end-to-end experience, customer experience map. Also triggers when the team has departmental views of users but no shared map of what the experience actually feels like.",{"claudeCode":540},"rampstackco/claude-skills","journey-mapping","https://github.com/rampstackco/claude-skills",{"basePath":544,"githubOwner":545,"githubRepo":546,"locale":253,"slug":541,"type":244},"skills/journey-mapping","rampstackco","claude-skills",{"evaluate":548,"extract":554},{"promptVersionExtension":208,"promptVersionScoring":209,"score":403,"tags":549,"targetMarket":274,"tier":220},[550,551,552,219,553],"user-experience","customer-journey","service-blueprint","design-thinking",{"commitSha":276},{"repoId":556},"kd7bebccrrd1xf6w868aggftrd86m86v",[551,553,219,552,550],{"evaluatedAt":559,"extractAt":560,"updatedAt":559},1778697107949,1778696113180]