This skill should be used when the user wants to add one or more skills from GitHub repositories to the kilo-marketplace. It handles parsing GitHub URLs, cloning skill directories, and updating SKILL.md frontmatter with source metadata.
- 📄 reference.md
- 📄 SKILL.md
Account, balance, positions, leverage, margin type, isolated margin, spot–futures transfer for Aster Futures API v1/v2/v4. Use when reading/updating balance, positions, or transferring. Signed; see aster-api-auth-v1. Prefer user data stream for real-time.
REST API design patterns including resource naming, status codes, pagination, filtering, error responses, versioning, and rate limiting for production APIs.
바선생 성장 리포트 — AI 활용 세션 데이터를 분석하여 성장 리포트를 자동 생성합니다. v2 레벨 시스템(6축×7단계, 0.5 단위)으로 분석합니다. "성장 리포트", "성장 분석", "얼마나 성장했는지", "레벨 체크", "성장 트래킹", "growth" 같은 요청에 사용됩니다.
Align-and-Do Protocol (AAD). Use for smaller tasks that don't need formal specs or plans.
- 📁 hm-deploy/
- 📁 hm-designer/
- 📁 hm-engineer/
- 📄 .gitignore
- 📄 CHANGELOG.md
- 📄 CLAUDE.md.template
Cinco modos cognitivos de execução pro Claude Code, construídos na filosofia Higher Mind.
Use when an agent needs the visible local Grasp browser runtime for multi-step web tasks or public-web extraction through one interface: confirm the runtime instance, enter URLs, inspect/extract/share page content, switch visible tabs, interact with live pages, fill forms, operate authenticated workspaces, capture screenshots, and recover through handoff after login or CAPTCHA checkpoints.
- 📁 deps/
- 📁 docs/
- 📁 platforms/
- 📄 .gitignore
- 📄 AGENTS.md
- 📄 CHANGELOG.md
个人知识库构建系统(基于 Karpathy llm-wiki 方法论)。让 AI 持续构建和维护你的知识库, 支持多种素材源(网页、推特、公众号、小红书、知乎、YouTube、PDF、本地文件), 自动整理为结构化的 wiki。 触发条件:用户明确提到"知识库"、"wiki"、"llm-wiki",或要求对已初始化的知识库执行 消化、查询、健康检查等操作。不要在用户只是要求"总结这篇文章"时触发——必须是明确的 知识库相关意图。 --- # llm-wiki — 个人知识库构建系统 > 把碎片化的信息变成持续积累、互相链接的知识库。你只需要提供素材,AI 做所有的整理工作。 ## 这个 skill 做什么 llm-wiki 帮你构建一个**持续增长的个人知识库**。它不是传统的笔记软件,而是一个让 AI 帮你维护的 wiki 系统: - 你给素材(链接、文件、文本),AI 提取核心知识并整理成互相链接的 wiki 页面 - 知识库随着每次使用变得越来越丰富,而不是每次重新开始 - 所有内容都是本地 markdown 文件,用 Obsidian 或任何编辑器都能查看 ## 核心理念 传统方式(RAG/聊天记录)的问题:每次问问题,AI 都要从头阅读原始文件,没有积累。知识库的价值在于**知识被编译一次,然后持续维护**,而不是每次重新推导。 ## 快速开始 告诉用户这两步就够了: 1. **初始化**:说"帮我初始化一个知识库" 2. **添加素材**:给一个链接或文件,说"帮我消化这篇" --- ## Script Directory Scripts located in `scripts/` subdirectory. **Path Resolution**: 1. `SKILL_DIR` = this SKILL.md's directory 2. Script path = `${SKILL_DIR}/scripts/<script-name>` --- ## 依赖检查 首次使用时,检查以下依赖是否已安装。如果缺失,提示用户运行安装: ```bash bash ${SKILL_DIR}/setup.sh ``` 依赖 skill / 工具: - `baoyu-url-to-markdown` — 普通网页、X/Twitter、部分知乎提取 - `wechat-article-to-markdown` — 微信公众号提取 - `youtube-transcript` — YouTube 字幕提取 即使部分依赖缺失,skill 仍可工作(用户可以手动粘贴文本内容)。 --- ## 工作流路由 根据用户的意图,路由到对应的工作流: | 用户意图关键词 | 工作流 | |---|---| | "初始化知识库"、"新建 wiki"、"创建知识库" | → **init** | | URL / 文件路径 / "添加素材"、"消化"、"整理" / 直接给链接 | → **ingest** | | "批量消化"、"把这些都整理" / 给了文件夹路径 | → **batch-ingest** | | "关于 XX"、"查询"、"XX 是什么"、"总结一下" | → **query** | | "给我讲讲 XX"、"深度分析 XX"、"综述 XX"、"digest XX" | → **digest** | | "检查知识库"、"健康检查"、"lint" | → **lint** | | "知识库状态"、"现在有什么"、"有多少素材" | → **status** | | "画个知识图谱"、"看看关联图"、"graph"、"知识库地图" | → **graph** | **重要**:如果用户直接给了一个 URL 或文件,但没有明确说要做什么,默认走 **ingest** 工作流。如果知识库还不存在,先自动走 **init** 再走 **ingest**。 --- ## 通用前置检查 除 `init` 外,其他工作流默认先执行这段检查: 1. 先检查**当前工作目录**是否包含 `.wiki-schema.md` - 如果包含 → 用当前目录作为知识库根路径 - 如果不包含 → 回退到读取 `~/.llm-wiki-path` 2. 如果两者都没有: - `ingest` / `batch-ingest` → 先运行 `init` - `query` / `lint` / `status` / `digest` / `graph` → 提示用户先初始化知识库 3. 读取知识库根目录下的 `.wiki-schema.md` 4. 从 `.wiki-schema.md` 的"语言"字段判断 `WIKI_LANG` - `语言:中文` → `WIKI
Browse Bilibili pages using agent-browser for visual exploration and DOM interaction.
Bitbucket CLI for Data Center and Cloud. Use when users need to manage repositories, pull requests, branches, issues, webhooks, or pipelines in Bitbucket. Triggers include "bitbucket", "bkt", "pull request", "PR", "repo list", "branch create", "Bitbucket Data Center", "Bitbucket Cloud", "keyring timeout".
Guide for building React applications with Apollo Client 4.x. Use this skill when: (1) setting up Apollo Client in a React project, (2) writing GraphQL queries or mutations with hooks, (3) configuring caching or cache policies, (4) managing local state with reactive variables, (5) troubleshooting Apollo Client errors or performance issues.
This skill should be used when the user asks to "develop a feature", "implement a ticket", "build PROJ-123", "run the development pipeline", "develop this ticket end to end", or wants fully autonomous feature implementation with parallel research agents, planning, phased implementation, review, and PR creation. Zero checkpoints; pauses only on blockers.