reminder-agent

by anhducna

>

3.8kAI 与智能体未扫描2026年4月6日

安装

claude skill add --url https://github.com/openclaw/skills

文档

Reminder Agent Skill

Convert human reminder requests into structured JSON. Always follow the steps below in order.


Step 1 — Extract Information

Parse the user's message for:

FieldRequiredDefault
title✅ Yes
datetime✅ Yes
recurrence✅ Yes"once"
priority✅ Yes"medium"
note❌ Optionalnull

Vague time-of-day mappings (Vietnamese):

WordTime
sáng08:00
trưa12:00
chiều15:00
tối20:00
  • "ngày mai" = tomorrow, "hôm nay" = today — resolve relative to the current date.
  • Never assume a specific time if the user gave none (not even a vague word).

Step 2 — Lunar Date Detection

If the user's message contains any of: âm lịch, âm, AL, tháng âm, ngày âm, lịch âm

Invoke the lunar-convert skill immediately. → Use the iso_date value it returns as the datetime date. → Never self-calculate lunar-to-solar conversion.

Read /mnt/skills/user/lunar-convert/SKILL.md for full usage.


Step 3 — Detect Custom Output Format

Trigger custom format mode when user says any of:

Vietnamese: trả về theo format, dữ liệu trả về theo, format:, với các trường, trả về các field English: return as, response with fields, format:, output fields, return only

Custom format rules:

  • Extract exactly the field names the user listed.
  • Map them to internal values using the table below.
  • Output only those fields, using exactly the user's field names (preserve typos like tittle).

Field name mapping:

User's field nameInternal value
tittle, title, tên, tiêu đềtitle
scheduled_at, datetime, time, thời gian, ngày giờdatetime (ISO 8601 solar)
repeat, recurrence, lặp lại, tần suấtrecurrence
priority, ưu tiên, độ ưu tiênpriority
note, ghi chú, description, mô tảnote

No custom format detected:

Use the default schema (see Step 5).


Step 4 — Clarification

Ask ONE concise question if any required field is unclear or missing.

  • Missing datetime → ask for the specific date and/or time.
  • Unclear title → ask what the reminder is for.
  • Clarification priority: datetime > title > others
  • Never ask about recurrence, priority, or note — apply defaults silently.
  • Once all required fields are resolved → proceed immediately to Step 5.

Step 5 — Output JSON

Return ONLY the raw JSON object. Rules:

  • ❌ No explanation, no markdown, no code blocks, no backticks.
  • datetime is always Gregorian ISO 8601 — never output a lunar date.
  • Apply custom format if detected (Step 3), otherwise use default schema.

Default schema:

code
{
  "title": "string",
  "datetime": "ISO 8601 Gregorian — e.g. 2026-04-02T14:00:00",
  "recurrence": "once | daily | weekly | monthly",
  "priority": "low | medium | high",
  "note": "string or null"
}

Custom format example:

Input: "Đặt lịch 9h ngày mai họp team. Dữ liệu trả về theo format tittle, scheduled_at, note"

code
{
  "tittle": "Họp team",
  "scheduled_at": "2026-03-20T09:00:00",
  "note": null
}

Quick Decision Tree

code
User sends reminder request
        │
        ▼
Lunar date mentioned?
   YES → invoke lunar-convert skill → get iso_date
   NO  → parse date/time directly
        │
        ▼
Custom format detected?
   YES → extract user's field names → map to internal values
   NO  → use default schema
        │
        ▼
All required fields available?
   NO  → ask ONE clarifying question (datetime > title)
   YES → output raw JSON immediately

相关 Skills

Claude接口

by anthropics

Universal
热门

面向接入 Claude API、Anthropic SDK 或 Agent SDK 的开发场景,自动识别项目语言并给出对应示例与默认配置,快速搭建 LLM 应用。

想把Claude能力接进应用或智能体,用claude-api上手快、兼容Anthropic与Agent SDK,集成路径清晰又省心

AI 与智能体
未扫描111.1k

计算机视觉

by alirezarezvani

Universal
热门

聚焦目标检测、图像分割与视觉系统落地,覆盖 YOLO、DETR、Mask R-CNN、SAM 等方案,适合定制数据集训练、推理优化及 ONNX/TensorRT 部署。

把目标检测、图像分割到推理部署串成完整工程链路,主流框架与 YOLO、DETR、SAM 等方案都覆盖,落地视觉 AI 会省心很多。

AI 与智能体
未扫描9.6k

提示工程专家

by alirezarezvani

Universal
热门

覆盖Prompt优化、Few-shot设计、结构化输出、RAG评测与Agent工作流编排,适合分析token成本、评估LLM输出质量,并搭建可落地的AI智能体系统。

把提示优化、LLM评测到RAG与智能体设计串成一套方法,适合想系统提升AI开发效率的人。

AI 与智能体
未扫描9.6k

相关 MCP 服务

顺序思维

编辑精选

by Anthropic

热门

Sequential Thinking 是让 AI 通过动态思维链解决复杂问题的参考服务器。

这个服务器展示了如何让 Claude 像人类一样逐步推理,适合开发者学习 MCP 的思维链实现。但注意它只是个参考示例,别指望直接用在生产环境里。

AI 与智能体
83.0k

知识图谱记忆

编辑精选

by Anthropic

热门

Memory 是一个基于本地知识图谱的持久化记忆系统,让 AI 记住长期上下文。

帮 AI 和智能体补上“记不住”的短板,用本地知识图谱沉淀长期上下文,连续对话更聪明,数据也更可控。

AI 与智能体
83.0k

PraisonAI

编辑精选

by mervinpraison

热门

PraisonAI 是一个支持自反思和多 LLM 的低代码 AI 智能体框架。

如果你需要快速搭建一个能 24/7 运行的 AI 智能体团队来处理复杂任务(比如自动研究或代码生成),PraisonAI 的低代码设计和多平台集成(如 Telegram)让它上手极快。但作为非官方项目,它的生态成熟度可能不如 LangChain 等主流框架,适合愿意尝鲜的开发者。

AI 与智能体
6.7k

评论