learning-about-you by designnotdrum/brain-jar
npx skills add https://github.com/designnotdrum/brain-jar --skill learning-about-you此技能帮助我记住您是谁、您的偏好以及您喜欢的工作方式。目标是让我们的互动随着时间的推移变得更加个性化,同时让您掌控我所学习的内容。
get_user_profile 检查当前状态update_user_profile 存储答案meta.lastOnboardingPrompt - 如果 < 3 天,不要询问新问题广告位招租
在这里展示您的产品或服务
触达数万 AI 开发者,精准高效
留意以下信号:
明确陈述:
technical.languagestechnical.editorsknowledge.learningworkingStyle.verbosity: concise隐含信号:
workingStyle 可能为 'detailed'learningPace 可能为 'thorough'verbosity 很可能为 'concise'当您以中等或更高置信度检测到偏好时:
propose_profile_inference 并提供证据confirm_profile_updatereject_profile_update(将不再询问)当开始处理新项目时:
analyze_codebase_for_profile在回应用户时:
knowledge.expert 与 knowledge.learning 调整解释深度workingStyle.verbosity 匹配identity:
name, pronouns, timezone, location, role, organization
technical:
languages[], frameworks[], tools[], editors[], patterns[]
workingStyle:
verbosity (concise|detailed|adaptive)
learningPace (fast|thorough|adaptive)
priorities[]
knowledge:
expert[], proficient[], learning[], interests[]
personal:
interests[] (hobbies)
goals[] (personal/professional)
context[] (life context, freeform)
Agent: 您好!我很乐意个性化我们的互动。几个快速问题:
- 我应该怎么称呼您?
- 您的时区是什么?
- 您的主要角色是什么?
(如果您不想回答,可以随时跳过任何问题)
User: 我总是使用 TypeScript 进行新项目
Agent: 明白了!我应该记住您更喜欢 TypeScript 吗?
User: 是的
Agent: [调用 confirm_profile_update] 好的,我会记住这一点。
User: 我应该如何构建这个?
Agent: [检查个人资料:用户是 React 专家,正在学习 Go]
既然您对 React 很有经验,您可能会欣赏
基于组件的方法。对于 Go 后端,我会更详细地解释
模式,因为您提到正在学习它。
每周安装次数
1
代码仓库
GitHub 星标数
2
首次出现
今天
安全审计
安装于
zencoder1
amp1
cline1
openclaw1
opencode1
cursor1
This skill helps me remember who you are, what you prefer, and how you like to work. The goal is to make our interactions more personalized over time, while keeping you in control of what I learn.
get_user_profile to check current stateupdate_user_profilemeta.lastOnboardingPrompt - don't ask new questions if < 3 daysWatch for signals:
Explicit statements:
technical.languagestechnical.editorsknowledge.learningworkingStyle.verbosity: conciseImplicit signals:
workingStyle may be 'detailed'learningPace may be 'thorough'verbosity likely 'concise'When you detect a preference with medium+ confidence:
propose_profile_inference with evidenceconfirm_profile_updatereject_profile_update (won't ask again)When starting work in a new project:
analyze_codebase_for_profile with the project directoryWhen responding to the user:
knowledge.expert vs knowledge.learningworkingStyle.verbosityidentity:
name, pronouns, timezone, location, role, organization
technical:
languages[], frameworks[], tools[], editors[], patterns[]
workingStyle:
verbosity (concise|detailed|adaptive)
learningPace (fast|thorough|adaptive)
priorities[]
knowledge:
expert[], proficient[], learning[], interests[]
personal:
interests[] (hobbies)
goals[] (personal/professional)
context[] (life context, freeform)
Agent: Hi! I'd love to personalize our interactions. Quick questions:
- What name should I use for you?
- What's your timezone?
- What's your primary role?
(Feel free to skip any you'd rather not answer)
User: I always use TypeScript for new projects
Agent: Got it! Should I remember that you prefer TypeScript?
User: Yes
Agent: [calls confirm_profile_update] Perfect, I'll keep that in mind.
User: How should I structure this?
Agent: [checks profile: user is expert in React, learning Go]
Since you're experienced with React, you might appreciate
a component-based approach. For the Go backend, I'll explain
the patterns in more detail since you mentioned you're learning it.
Weekly Installs
1
Repository
GitHub Stars
2
First Seen
Today
Security Audits
Gen Agent Trust HubPassSocketPassSnykPass
Installed on
zencoder1
amp1
cline1
openclaw1
opencode1
cursor1
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60,400 周安装