agentic-ux-design---relationship-centric-interfaces by bencium/bencium-marketplace
npx skills add https://github.com/bencium/bencium-marketplace --skill 'Agentic UX Design - Relationship-Centric Interfaces'从以屏幕为中心到以关系为中心的设计范式转变。
传统的用户体验设计优化的是单个屏幕和孤立的交互。智能体化用户体验设计则着眼于持续发展的关系,在这种关系中,系统能够学习、记忆,并随着用户在多个会话、设备和情境中的使用而不断演进。
核心原则: 每一次交互都建立在已学习到的偏好和用户历史之上。系统不仅仅是做出响应——它们会发展出一种随着时间推移而不断加深的理解。
在开始时声明: "我正在使用关系设计技能来创建一个智能体化的、具备记忆感知能力的界面,该界面旨在与用户建立长期关系。"
在以下情况下使用此技能:
何时不应使用:
旧模式: 存储静态偏好(主题:深色,语言:英文)
新模式: 维护动态、不断演进的关系模型
设计目标:
广告位招租
在这里展示您的产品或服务
触达数万 AI 开发者,精准高效
关键问题: 如果这个体验能记住一切并随时间推移而变得更好,它会是什么样子?
设计通过渐进式信任获得自主权的界面:
阶段 1:透明度阶段
阶段 2:选择性披露阶段
阶段 3:自主行动阶段
设计模式:
关键问题: 用户如何能逐渐与这个系统建立信任?
设计持续的合作关系,而非孤立的交易。
从: 用户登录 → 完成任务 → 登出 → 系统遗忘
到: 系统持续保持对以下方面的感知:
实现模式:
关键问题: 用户真正想要实现的目标是什么?智能体化系统如何能更有效地帮助他们实现这些目标?
从: 明确设计每一条可能的用户路径
到: 设计目标对齐机制,让系统动态构建路径
智能体化系统:
设计目标:
关键问题: 系统能否帮助用户实现他们尚未完全阐明的目标?
传统的用户体验指标(会话时长、转化率、点击量)对于智能体化体验来说并不适用。
应衡量以下指标:
关系质量
复合价值
情境准确性
民主对齐
关键问题: 我们如何知道关系是在变得更好,而不仅仅是更频繁?
提出以下问题:
针对你的具体用例:
从每个类别中选择 2-3 个指标:
跟踪这些指标数周/数月,而不仅仅是单个会话。
情境时间线
情感状态指示器
动态建议面板
推理展示(透明度阶段)
置信度计
撤销/纠正模式
目标仪表板
规划画布
偏好演进图
问题: 将偏好存储为键值对(主题:深色),而不是不断演变的模式
修复: 设计能够理解行为模式、时间情境和随时间演变的动态模型
问题: 系统要么从一开始就完全透明,要么从一开始就完全自主
修复: 设计具有渐进自主性和用户可控信任级别的三阶段信任演进
问题: 为基于关系的系统衡量会话时长和转化率
修复: 跟踪数周/数月的关系质量、复合价值和情境准确性
问题: 系统记住一切,用户没有控制权
修复: 构建遗忘控制、记忆可视化和清晰的数据保留策略
问题: 专注于像素完美的界面,而忽略了关系架构
修复: 从关系模型开始,然后设计支持持续合作关系的屏幕
问题: 当系统出错时,用户永久性地失去所有信任
修复: 设计清晰的纠正路径、系统从错误中学习以及信任恢复协议
查看 EXAMPLES.md 了解:
查看 REFERENCE.md 了解:
查看 CHECKLIST.md 了解:
| 传统用户体验 | 智能体化用户体验 |
|---|---|
| 会话时长 | 数月的关系深度 |
| 转化率 | 信任分数和委托舒适度 |
| 点击率 | 复合价值(第 6 个月 vs 第 1 个月) |
| 孤立的屏幕 | 连续的关系情境 |
| 静态偏好 | 动态模式演进 |
| 一刀切 | 个体自适应界面 |
| 显式导航 | 目标对齐的路径构建 |
| 二元权限 | 渐进式信任演进 |
屏幕始终重要。但关系更重要。
每周安装次数
–
代码仓库
GitHub 星标数
110
首次出现
–
The paradigm shift from screen-centric to relationship-centric design.
Traditional UX optimizes individual screens and isolated interactions. Agentic UX designs for ongoing relationships where systems learn, remember, and evolve alongside users across sessions, devices, and contexts.
Core principle: Every interaction builds on learned preferences and user history. Systems don't just respond—they develop understanding that compounds over time.
Announce at start: "I'm using the Relationship Design skill to create an agentic, memory-aware interface that builds long-term relationships with users."
Use this skill when:
When NOT to use:
Old model: Store static preferences (theme: dark, language: EN)
New model: Maintain dynamic, evolving relationship models
Design for:
Key question: What would this experience look like if it remembered everything and got better over time?
Design interfaces that earn autonomy through graduated trust:
Stage 1: Transparency Phase
Stage 2: Selective Disclosure Phase
Stage 3: Autonomous Action Phase
Design patterns:
Key question: How might users develop trust with this system gradually?
Design ongoing partnerships, not isolated transactions.
From: User logs in → completes task → logs out → system forgets
To: System maintains continuous awareness of:
Implementation patterns:
Key question: What goals are users really trying to achieve, and how could an agentic system help them get there more effectively?
From: Design every possible user path explicitly
To: Design goal-alignment mechanisms where system dynamically constructs paths
Agentic systems:
Design for:
Key question: Can the system help users achieve goals they haven't fully articulated yet?
Traditional UX metrics (session duration, conversion rates, clicks) miss the point for agentic experiences.
Measure instead:
Relationship Quality
Compounding Value
Context Accuracy
Democratic Alignment
Key question: How do we know if the relationship is getting better, not just more frequent?
Ask these questions:
For your specific use case:
Choose 2-3 metrics from each category:
Track these over weeks/months, not just sessions.
Contextual Timeline
Emotional State Indicators
Dynamic Suggestions Panel
Reasoning Display (Transparency Phase)
Confidence Meter
Undo/Correct Patterns
Goal Dashboard
Planning Canvas
Preference Evolution Map
Problem: Storing preferences as key-value pairs (theme: dark) instead of evolving patterns
Fix: Design dynamic models that understand behavioral patterns, temporal context, and evolution over time
Problem: System is either fully transparent or fully autonomous from day one
Fix: Design three-stage trust evolution with gradual autonomy and user-controlled trust levels
Problem: Measuring session duration and conversion rates for relationship-based systems
Fix: Track relationship quality, compounding value, context accuracy over weeks/months
Problem: System remembers everything with no user control
Fix: Build forgetting controls, memory visualization, and clear data retention policies
Problem: Focusing on pixel-perfect interfaces without relationship architecture
Fix: Start with relationship model, then design screens that support ongoing partnership
Problem: When system makes mistakes, users lose all trust permanently
Fix: Design clear correction paths, system learning from mistakes, and trust recovery protocols
SeeEXAMPLES.md for:
SeeREFERENCE.md for:
SeeCHECKLIST.md for:
| Traditional UX | Agentic UX |
|---|---|
| Session duration | Relationship depth over months |
| Conversion rates | Trust scores and delegation comfort |
| Click-through rates | Compounding value (Month 6 vs Month 1) |
| Isolated screens | Continuous relationship context |
| Static preferences | Dynamic pattern evolution |
| One-size-fits-all | Individually adaptive interfaces |
| Explicit navigation | Goal-aligned path construction |
| Binary permissions | Graduated trust evolution |
The screens will always matter. But the relationships matter more.
Weekly Installs
–
Repository
GitHub Stars
110
First Seen
–
AI Elements:基于shadcn/ui的AI原生应用组件库,快速构建对话界面
60,400 周安装