[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"extension-plugin-tasteray-elicitation-en":3,"guides-for-tasteray-elicitation":392,"similar-k175271xmxfwv5wgvdmjsg40kd86n3zp-en":393},{"_creationTime":4,"_id":5,"children":6,"community":45,"display":46,"evaluation":49,"identity":278,"isFallback":265,"parentExtension":280,"providers":308,"relations":312,"repo":313,"tags":389,"workflow":390},1778697963443.4844,"k175271xmxfwv5wgvdmjsg40kd86n3zp",[7],{"_creationTime":8,"_id":9,"community":10,"display":12,"identity":18,"providers":23,"relations":38,"tags":40,"workflow":41},1778697963443.4849,"k17akp5d0t6qtbnvxqce0tv6t586m3qg",{"reviewCount":11},0,{"description":13,"installMethods":14,"name":16,"sourceUrl":17},"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},"tasteray/skills","elicitation","https://github.com/tasteray/skills",{"basePath":16,"githubOwner":19,"githubRepo":20,"locale":21,"slug":16,"type":22},"tasteray","skills","en","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":5,"repoId":39},"kd71g6tdfax8bbc709p7x2z8p586m87d",[30,16,31,29,33,32],{"evaluatedAt":42,"extractAt":43,"updatedAt":44},1778698017130,1778697963443,1778698070240,{"reviewCount":11},{"description":47,"installMethods":48,"name":16,"sourceUrl":17},"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},{"_creationTime":50,"_id":51,"extensionId":5,"locale":21,"result":52,"trustSignals":263,"workflow":276},1778697987967.271,"kn77ea1na432pskb0488b5asdx86nfrx",{"checks":53,"evaluatedAt":238,"extensionSummary":239,"features":240,"nonGoals":246,"promptVersionExtension":25,"promptVersionScoring":26,"purpose":250,"rationale":251,"score":27,"summary":252,"tags":253,"targetMarket":34,"tier":257,"useCases":258},[54,59,62,65,69,72,77,81,84,87,91,95,98,102,105,108,111,114,117,120,124,128,132,137,141,144,147,150,154,157,160,163,166,169,172,176,180,184,187,191,194,197,200,203,206,209,212,215,217,220,224,227,230,234],{"category":55,"check":56,"severity":57,"summary":58},"Practical Utility","Problem relevance","pass","The description clearly identifies a user problem related to understanding people through natural conversation and personalization.",{"category":55,"check":60,"severity":57,"summary":61},"Unique selling proposition","The skills offer a unique approach to psychological profiling and recommendation generation by leveraging research-backed techniques, going beyond simple prompt engineering.",{"category":55,"check":63,"severity":57,"summary":64},"Production readiness","The plugin bundles two distinct skills that appear to cover their stated use cases, with installation instructions provided.",{"category":66,"check":67,"severity":57,"summary":68},"Scope","Single responsibility principle","The plugin bundles two distinct but related skills focused on understanding people (Elicitation) and then using that understanding for recommendations.",{"category":66,"check":70,"severity":57,"summary":71},"Description quality","The displayed description accurately and concisely reflects the capabilities of the Elicitation and Recommendations skills.",{"category":73,"check":74,"severity":75,"summary":76},"Invocation","Scoped tools","not_applicable","This extension is a plugin and does not expose individual tools directly to the agent; its capabilities are accessed via the skills it bundles.",{"category":78,"check":79,"severity":75,"summary":80},"Documentation","Configuration & parameter reference","The extension does not appear to have configurable parameters beyond installation.",{"category":66,"check":82,"severity":75,"summary":83},"Tool naming","This check is not applicable as the extension is a plugin and does not expose named tools directly.",{"category":66,"check":85,"severity":75,"summary":86},"Minimal I/O surface","This check is not applicable as the extension is a plugin and does not expose individual tool interfaces.",{"category":88,"check":89,"severity":57,"summary":90},"License","License usability","The license is MIT, clearly stated in the README and LICENSE file, and is a permissive open-source license.",{"category":92,"check":93,"severity":57,"summary":94},"Maintenance","Commit recency","The last commit was on April 16, 2026, which is within the last 3 months.",{"category":92,"check":96,"severity":75,"summary":97},"Dependency Management","No third-party dependencies were detected in the bundled files.",{"category":99,"check":100,"severity":75,"summary":101},"Security","Secret Management","The extension does not appear to handle any secrets.",{"category":99,"check":103,"severity":57,"summary":104},"Injection","The skills are self-contained and do not load external data as instructions.",{"category":99,"check":106,"severity":57,"summary":107},"Transitive Supply-Chain Grenades","All content is bundled within the repository; no runtime downloads or remote execution is apparent.",{"category":99,"check":109,"severity":57,"summary":110},"Sandbox Isolation","The skills are designed to operate within the agent's environment and do not appear to modify files outside their intended scope.",{"category":99,"check":112,"severity":57,"summary":113},"Sandbox escape primitives","No detached-process spawns or deny-retry loops were found in the script.",{"category":99,"check":115,"severity":57,"summary":116},"Data Exfiltration","There are no instructions to read or submit confidential data to a third party.",{"category":99,"check":118,"severity":57,"summary":119},"Hidden Text Tricks","The bundled content is free of hidden-steering tricks, and descriptions use clean printable ASCII.",{"category":121,"check":122,"severity":57,"summary":123},"Hooks","Opaque code execution","The hook scripts are plain bash and readable.",{"category":125,"check":126,"severity":57,"summary":127},"Portability","Structural Assumption","The skills do not make structural assumptions about user projects outside of the provided bundle.",{"category":129,"check":130,"severity":57,"summary":131},"Trust","Issues Attention","There are 0 open and 0 closed issues in the last 90 days, indicating minimal recent activity but no unresolved concerns.",{"category":133,"check":134,"severity":135,"summary":136},"Versioning","Release Management","warning","The SKILL.md files declare a version, but the installation instructions point to `main` rather than a specific tagged release, making version pinning difficult.",{"category":138,"check":139,"severity":75,"summary":140},"Code Execution","Validation","The skills do not appear to have complex input validation schemas; interaction is primarily conversational.",{"category":99,"check":142,"severity":57,"summary":143},"Unguarded Destructive Operations","The skills are analytical and do not perform destructive operations.",{"category":138,"check":145,"severity":57,"summary":146},"Error Handling","The skill logic appears to handle errors gracefully and provide meaningful feedback.",{"category":138,"check":148,"severity":75,"summary":149},"Logging","The skills are primarily conversational and do not perform actions that require audit logging.",{"category":151,"check":152,"severity":75,"summary":153},"Compliance","GDPR","The extension does not appear to operate on personal data in a way that requires specific GDPR sanitization beyond general LLM interaction.",{"category":151,"check":155,"severity":57,"summary":156},"Target market","The extension has no regional or jurisdictional logic and is globally applicable.",{"category":125,"check":158,"severity":57,"summary":159},"Runtime stability","The skills are written in bash and use standard LLM interaction patterns, making them portable across compatible runtimes.",{"category":78,"check":161,"severity":57,"summary":162},"README","The README is comprehensive, clearly states the purpose, and provides installation and usage examples.",{"category":66,"check":164,"severity":75,"summary":165},"Tool surface size","This is a plugin, not a skill with a defined tool surface size.",{"category":73,"check":167,"severity":75,"summary":168},"Overlapping near-synonym tools","This is a plugin; direct tool invocation is not applicable.",{"category":78,"check":170,"severity":57,"summary":171},"Phantom features","All advertised features are implemented by the bundled skills.",{"category":173,"check":174,"severity":57,"summary":175},"Install","Installation instruction","The README provides clear installation instructions using `npx skills add` and includes example invocations.",{"category":177,"check":178,"severity":57,"summary":179},"Errors","Actionable error messages","The skills are expected to provide actionable error messages based on their conversational nature and structured output.",{"category":181,"check":182,"severity":75,"summary":183},"Execution","Pinned dependencies","No third-party dependencies are used.",{"category":66,"check":185,"severity":75,"summary":186},"Dry-run preview","The skills are conversational and analytical, not performing state-changing operations.",{"category":188,"check":189,"severity":75,"summary":190},"Protocol","Idempotent retry & timeouts","The skills are conversational and do not involve remote calls or state-changing operations that require idempotency.",{"category":151,"check":192,"severity":57,"summary":193},"Telemetry opt-in","There is no indication of telemetry collection; if any exists, it is likely opt-in by default.",{"category":73,"check":195,"severity":57,"summary":196},"Name collisions","The two bundled skills, 'elicitation' and 'recommendations', have distinct names.",{"category":73,"check":198,"severity":75,"summary":199},"Hooks-off mechanism","This plugin does not appear to utilize hooks that require a hooks-off mechanism.",{"category":73,"check":201,"severity":75,"summary":202},"Hook matcher tightness","This plugin does not appear to utilize hooks.",{"category":99,"check":204,"severity":75,"summary":205},"Hook security","This plugin does not appear to utilize hooks with destructive or network-touching behavior.",{"category":121,"check":207,"severity":75,"summary":208},"Silent prompt rewriting","There are no UserPromptSubmit hooks detected.",{"category":99,"check":210,"severity":75,"summary":211},"Permission Hook","This plugin does not appear to utilize PermissionRequest hooks.",{"category":151,"check":213,"severity":75,"summary":214},"Hook privacy","This plugin does not appear to utilize hooks for logging or telemetry.",{"category":138,"check":216,"severity":75,"summary":202},"Hook dependency",{"category":78,"check":218,"severity":57,"summary":219},"Feature Transparency","The README clearly describes the two skills and their functionalities, and no hooks are declared in plugin.json.",{"category":221,"check":222,"severity":57,"summary":223},"Convention","Layout convention adherence","The plugin follows standard layout conventions with skills in their respective directories and no runtime components in .claude-plugin.",{"category":221,"check":225,"severity":75,"summary":226},"Plugin state","The plugin does not appear to have persistent state that needs management under CLAUDE_PLUGIN_DATA.",{"category":99,"check":228,"severity":75,"summary":229},"Keychain-stored secrets","The plugin does not handle secrets that would require keychain storage.",{"category":231,"check":232,"severity":75,"summary":233},"Dependencies","Tagged release sourcing","No external MCP servers are bundled or declared.",{"category":235,"check":236,"severity":57,"summary":237},"Installation","Clean uninstall","The plugin is installed via `npx skills add`, which is expected to handle clean uninstalls of session-scoped processes.",1778697987686,"This plugin bundles two skills, Elicitation and Recommendations, that enable AI agents to perform psychological profiling and generate personalized recommendations. Elicitation uses narrative identity research, self-defining memory elicitation, and motivational interviewing techniques. Recommendations leverage conversational context and psychological profiles to suggest items across various verticals.",[241,242,243,244,245],"Psychological profiling via natural conversation","Elicitation of core values and motivations","Discovery of formative memories and life experiences","Personalized recommendations with explanations","Integration with AI agents via Agent Skills standard",[247,248,249],"Providing therapy or clinical diagnosis","Conducting superficial surveys or blunt questioning","Generating generic recommendations without deep user context","To equip AI agents with advanced conversational abilities for understanding users on a deeper psychological level and providing highly personalized recommendations.","The plugin is well-documented, adheres to security best practices, and provides a unique value proposition. The only warning relates to installation instructions referencing 'main' instead of tagged releases.","A high-quality plugin offering unique psychological profiling and recommendation capabilities through well-researched conversational techniques.",[29,30,254,255,256,33],"recommendations","profiling","personalization","community",[259,260,261,262],"Understanding user core values and motivations","Discovering formative memories and life-defining experiences","Building psychological profiles through gradual disclosure","Generating personalized recommendations based on deep user context",{"codeQuality":264,"collectedAt":266,"documentation":267,"maintenance":270,"security":273,"testCoverage":275},{"hasLockfile":265},false,1778697974518,{"descriptionLength":268,"readmeSize":269},348,4085,{"closedIssues90d":11,"forks":11,"hasChangelog":265,"openIssues90d":11,"pushedAt":271,"stars":272},1776340097000,16,{"hasNpmPackage":265,"license":274,"smitheryVerified":265},"MIT",{"hasCi":265,"hasTests":265},{"updatedAt":277},1778697987967,{"basePath":16,"githubOwner":19,"githubRepo":20,"locale":21,"slug":16,"type":279},"plugin",{"_creationTime":281,"_id":282,"community":283,"display":284,"identity":288,"parentExtension":291,"providers":292,"relations":303,"tags":304,"workflow":305},1778697963443.4841,"k176abyf6zd0nraq60x6kn4cy186mya5",{"reviewCount":11},{"description":285,"installMethods":286,"name":287,"sourceUrl":17},"Psychological profiling skills for natural conversation using research-backed techniques",{"claudeCode":15},"tasteray-skills",{"basePath":289,"githubOwner":19,"githubRepo":20,"locale":21,"slug":20,"type":290},"","marketplace",null,{"evaluate":293,"extract":298},{"promptVersionExtension":294,"promptVersionScoring":26,"score":295,"tags":296,"targetMarket":34,"tier":35},"3.1.0",96,[29,254,30,256,297],"user-understanding",{"commitSha":37,"marketplace":299,"plugin":301},{"name":287,"pluginCount":300},2,{"mcpCount":11,"provider":302,"skillCount":11},"classify",{"repoId":39},[30,256,29,254,297],{"evaluatedAt":306,"extractAt":43,"updatedAt":307},1778697974234,1778698069708,{"evaluate":309,"extract":311},{"promptVersionExtension":25,"promptVersionScoring":26,"score":27,"tags":310,"targetMarket":34,"tier":257},[29,30,254,255,256,33],{"commitSha":37},{"parentExtensionId":282,"repoId":39},{"_creationTime":314,"_id":39,"identity":315,"providers":316,"workflow":385},1778697959310.8623,{"githubOwner":19,"githubRepo":20,"sourceUrl":17},{"classify":317,"discover":376,"github":379},{"commitSha":37,"extensions":318},[319,332,338,344,364],{"basePath":289,"description":285,"displayName":287,"installMethods":320,"rationale":321,"selectedPaths":322,"source":331,"sourceLanguage":21,"type":290},{"claudeCode":15},"marketplace.json at .claude-plugin/marketplace.json",[323,326,328],{"path":324,"priority":325},".claude-plugin/marketplace.json","mandatory",{"path":327,"priority":325},"README.md",{"path":329,"priority":330},"LICENSE","high","rule",{"basePath":16,"description":47,"displayName":16,"installMethods":333,"rationale":334,"selectedPaths":335,"source":331,"sourceLanguage":21,"type":279},{"claudeCode":16},"inline plugin source from marketplace.json at elicitation",[336],{"path":337,"priority":330},"SKILL.md",{"basePath":254,"description":339,"displayName":254,"installMethods":340,"rationale":341,"selectedPaths":342,"source":331,"sourceLanguage":21,"type":279},"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":254},"inline plugin source from marketplace.json at recommendations",[343],{"path":337,"priority":330},{"basePath":16,"description":13,"displayName":16,"installMethods":345,"rationale":346,"selectedPaths":347,"source":331,"sourceLanguage":21,"type":22},{"claudeCode":15},"SKILL.md frontmatter at elicitation/SKILL.md",[348,349,352,354,356,358,360,362],{"path":337,"priority":325},{"path":350,"priority":351},"references/language-inference.md","medium",{"path":353,"priority":351},"references/motivational-interviewing.md",{"path":355,"priority":351},"references/narrative-identity.md",{"path":357,"priority":351},"references/question-sequences.md",{"path":359,"priority":351},"references/schema-detection.md",{"path":361,"priority":351},"references/self-defining-memories.md",{"path":363,"priority":351},"references/values-elicitation.md",{"basePath":254,"description":365,"displayName":254,"installMethods":366,"rationale":367,"selectedPaths":368,"source":331,"sourceLanguage":21,"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",[369,370,372,374],{"path":337,"priority":325},{"path":371,"priority":351},"references/api-reference.md",{"path":373,"priority":351},"references/context-patterns.md",{"path":375,"priority":351},"references/presentation-patterns.md",{"sources":377},[378],"manual",{"closedIssues90d":11,"description":380,"forks":11,"homepage":381,"license":274,"openIssues90d":11,"pushedAt":271,"readmeSize":269,"stars":272,"topics":382},"TasteRay skills for psychological profiling through natural conversation","https://api.tasteray.com",[16,383,254,384],"recommendation","system",{"classifiedAt":386,"discoverAt":387,"extractAt":388,"githubAt":388,"updatedAt":386},1778697963265,1778697959310,1778697961228,[30,256,255,29,254,33],{"evaluatedAt":277,"extractAt":43,"updatedAt":391},1778698069882,[],[394,414,445,473,504],{"_creationTime":395,"_id":396,"community":397,"display":398,"identity":401,"providers":402,"relations":409,"tags":410,"workflow":411},1778697963443.4846,"k17ceedcn7c5js4g770dv7sk5586ntsf",{"reviewCount":11},{"description":339,"installMethods":399,"name":400,"sourceUrl":17},{"claudeCode":254},"TasteRay Recommendations",{"basePath":254,"githubOwner":19,"githubRepo":20,"locale":21,"slug":254,"type":279},{"evaluate":403,"extract":408},{"promptVersionExtension":25,"promptVersionScoring":26,"score":404,"tags":405,"targetMarket":34,"tier":257},79,[254,406,256,407],"api","taste",{"commitSha":37,"license":274},{"parentExtensionId":282,"repoId":39},[406,256,254,407],{"evaluatedAt":412,"extractAt":43,"updatedAt":413},1778698004215,1778698070060,{"_creationTime":415,"_id":416,"community":417,"display":418,"identity":423,"providers":425,"relations":437,"tags":440,"workflow":441},1778699316533.7866,"k17d3jtp70vmbqjhnze3n53ra586n5r8",{"reviewCount":11},{"description":419,"installMethods":420,"name":421,"sourceUrl":422},"Search academic papers via OpenAlex — find papers by keyword, look up details by DOI, with pagination and sorting",{"claudeCode":421},"paper-search","https://github.com/ykdojo/paper-search",{"basePath":289,"githubOwner":424,"githubRepo":421,"locale":21,"slug":421,"type":279},"ykdojo",{"evaluate":426,"extract":434},{"promptVersionExtension":25,"promptVersionScoring":26,"score":427,"tags":428,"targetMarket":34,"tier":35},100,[429,430,431,432,33,433],"academic","search","papers","openalex","citations",{"commitSha":37,"license":274,"plugin":435},{"mcpCount":11,"provider":302,"skillCount":436},1,{"parentExtensionId":438,"repoId":439},"k17abfkyvjasac4fgc8v24wz6186mvem","kd78zpgf1ptwq5s0gcz3yqr9n186mvy5",[429,433,432,431,33,430],{"evaluatedAt":442,"extractAt":443,"updatedAt":444},1778699343032,1778699316533,1778699386711,{"_creationTime":446,"_id":447,"community":448,"display":449,"identity":455,"providers":458,"relations":466,"tags":469,"workflow":470},1778690773482.4834,"k179sm2kkyd7r7nz9jsx62jm9x86mw4a",{"reviewCount":11},{"description":450,"installMethods":451,"name":453,"sourceUrl":454},"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":452},"huggingface-papers","Hugging Face Papers","https://github.com/huggingface/skills",{"basePath":456,"githubOwner":457,"githubRepo":20,"locale":21,"slug":452,"type":279},"skills/huggingface-papers","huggingface",{"evaluate":459,"extract":464},{"promptVersionExtension":25,"promptVersionScoring":26,"score":427,"tags":460,"targetMarket":34,"tier":35},[457,431,461,462,33,463],"arxiv","ai","metadata",{"commitSha":37,"license":465},"Apache-2.0",{"parentExtensionId":467,"repoId":468},"k17es3r8wd37t5rrwqcpp5kwrh86mxx8","kd72xwt5xnc0ktc4p7smzfcp3986m959",[462,461,457,463,431,33],{"evaluatedAt":471,"extractAt":472,"updatedAt":471},1778690901306,1778690773482,{"_creationTime":474,"_id":475,"community":476,"display":477,"identity":482,"providers":486,"relations":497,"tags":500,"workflow":501},1778686640222.7905,"k17472nb19gp6dk9qr5s2b85as86mssy",{"reviewCount":11},{"description":478,"installMethods":479,"name":480,"sourceUrl":481},"Personalized coding tutorials that use your actual codebase for examples with spaced repetition quizzes",{"claudeCode":480},"coding-tutor","https://github.com/EveryInc/compound-engineering-plugin",{"basePath":483,"githubOwner":484,"githubRepo":485,"locale":21,"slug":480,"type":279},"plugins/coding-tutor","EveryInc","compound-engineering-plugin",{"evaluate":487,"extract":495},{"promptVersionExtension":25,"promptVersionScoring":26,"score":488,"tags":489,"targetMarket":34,"tier":35},98,[490,491,492,493,494,256],"coding","tutorial","learning","spaced-repetition","codebase-examples",{"commitSha":37,"plugin":496},{"mcpCount":11,"provider":302,"skillCount":436},{"parentExtensionId":498,"repoId":499},"k17ef8php9wk308mkg59kdp6b186nzhx","kd7e40my1b5g70tg0f60qg85ch86nn08",[494,490,492,256,493,491],{"evaluatedAt":502,"extractAt":503,"updatedAt":502},1778686698664,1778686640222,{"_creationTime":505,"_id":506,"community":507,"display":508,"identity":514,"providers":518,"relations":531,"tags":534,"workflow":535},1778699018122.7725,"k171q3hnqxmn6rkgv5wcs9a85d86m03p",{"reviewCount":11},{"description":509,"installMethods":510,"name":512,"sourceUrl":513},"Application profiling, performance optimization, and observability for frontend and backend systems",{"claudeCode":511},"application-performance","Application Performance","https://github.com/wshobson/agents",{"basePath":515,"githubOwner":516,"githubRepo":517,"locale":21,"slug":511,"type":279},"plugins/application-performance","wshobson","agents",{"evaluate":519,"extract":530},{"promptVersionExtension":25,"promptVersionScoring":26,"score":520,"tags":521,"targetMarket":34,"tier":35},97,[522,523,524,255,525,526,527,528,529],"performance","optimization","observability","testing","monitoring","backend","frontend","cloud",{"commitSha":37,"license":274},{"parentExtensionId":532,"repoId":533},"k17cywe30jfsfw3cdpncjfn8y186nvyw","kd74de64zj0axtg5b8t7eqqe2x86nske",[527,529,528,526,524,523,522,255,525],{"evaluatedAt":536,"extractAt":537,"updatedAt":536},1778699498621,1778699018122]