BeClaude

feishu-bot-dev

New
16Community RegistryGeneralby yrzhe · MIT

飞书机器人配置与开发完整指南。支持零代码(机器人助手)和全代码(开放平台API)两种模式,包含发消息、创建文档、管理群组等功能。

Community PluginView Source

Overview

A collection of powerful Claude Code skills and plugins by @yrzhe.

Installation

Option 1: Via Plugin Marketplace

Add this marketplace to your Claude Code:

bash
/plugin marketplace add yrzhe/claude-skills

Then install any plugin you want:

bash
/plugin install intelligent-web-scraper@yrzhe-skills

Option 2: Manual Installation

If the plugin command doesn't work, you can manually copy the skill files:

  1. Clone or download this repository
  2. Copy the skill folder to your Claude skills directory:

macOS / Linux:

bash
cp -r plugins/intelligent-web-scraper/skills/intelligent-web-scraper ~/.claude/skills/

Windows (PowerShell):

powershell
Copy-Item -Recurse plugins\intelligent-web-scraper\skills\intelligent-web-scraper $env:USERPROFILE\.claude\skills\
  1. Restart Claude Code to load the new skill

Available Plugins

intelligent-web-scraper

Self-learning intelligent web scraper agent that automatically analyzes page structure, handles pagination, anti-blocking, and discovers article series. No user configuration needed - AI decides everything.

Features:

  • Intelligent page analysis and data extraction
  • Smart pagination handling (page numbers, infinite scroll, load more)
  • Detail link following for complete data
  • Anti-blocking with adaptive delays
  • Series/chapter discovery
  • Self-learning system that remembers successful patterns
  • Resume capability for interrupted scrapes
  • Concurrent scraping with rate limiting
  • Local browser support (preserve login sessions)

Usage:

code
/intelligent-web-scraper

Then provide a URL to scrape and let the AI handle everything.

lenny-advisor

Product and business diagnostic advisor powered by distilled wisdom from 289 Lenny's Podcast guests and 348 newsletter articles. Not a knowledge dump — an active advisor that diagnoses your real problem before delivering expert frameworks.

Features:

  • Diagnose → Probe → Deliver methodology (asks before answering)
  • 18 topic areas: growth, pricing, PMF, positioning, hiring, leadership, metrics, fundraising, marketplace, AI strategy, and more
  • 40 deep expert profiles (Shreyas Doshi, Elena Verna, April Dunford, Rahul Vohra, etc.)
  • 3-layer progressive loading (minimal token usage)
  • Companion workflow with dbskill and gstack

Install:

bash
/plugin install lenny-advisor@yrzhe-skills

Manual install:

bash
cp -r plugins/lenny-advisor/skills/lenny-advisor ~/.claude/skills/

The skill activates automatically when you discuss product decisions, business strategy, growth, pricing, or any product/business topic.

persona-sim

Simulate feedback from census-grounded virtual populations. Panel-score your product / copy / pricing, predict votes with IPF post-stratification, or run what-if social-sandbox experiments — before paying for real user research. Backed by NVIDIA Nemotron-Personas (1M US Census-aligned synthetic people) and methodology from Park et al. 2024.

Features:

  • 4 skills in one plugin: persona-sim (core engine) + product-feedback-sim (SGO A/B ranking) + vote-predict (policy/voting with IPF) + social-sandbox (what-if experiments)
  • SGO (Semantic Gradient Optimization) with anchored counterfactuals — causal attribution, not independent re-scoring
  • Persuadable-middle identification (score 4-7 only) to avoid wasting LLM calls on extremes
  • IPF post-stratification to reweight panels to real-population marginals (PUMS-ready)
  • Bias audit with 4 probe types (framing, acquiescence, order, authority) — flags when the simulation under-represents human biases
  • 6-suite eval score card (GSS attitudes, Big Five norms, test-retest, diversity, demo-correlation, bias-audit)
  • HuggingFace streaming — no local dataset download required for MVP
  • Multi-provider LLM routing: native Anthropic, Anthropic-compatible gateways, OpenAI-compatible gateways

Install:

bash
/plugin install persona-sim@yrzhe-skills

Manual install:

bash
cp -r plugins/persona-sim/skills/persona-sim ~/.claude/skills/
cp -r plugins/persona-sim/skills/product-feedback-sim ~/.claude/skills/
cp -r plugins/persona-sim/skills/vote-predict ~/.claude/skills/
cp -r plugins/persona-sim/skills/social-sandbox ~/.claude/skills/

First-time setup: see plugins/persona-sim/skills/persona-sim/SETUP.md — you need to create ~/.claude/data/personas/config.json (from the provided config.example.json) with your LLM API key, and a venv for Python dependencies.

Usage examples:

  • "Score this landing page copy with 30 software developers" → auto-triggers product-feedback-sim
  • "Predict US support for a $22 minimum wage, by age and education" → auto-triggers vote-predict
  • "If AI copilots got regulated tomorrow, what would developers do?" → auto-triggers social-sandbox
  • Direct Python use: from persona_sim import sampler, sim_engine

design-distiller

Scrape any website's design system into a structured Design MD + decomposed design tokens. Ships with 55 pre-analyzed brand references (Vercel, Stripe, Linear, Notion, Claude, Figma, Airbnb, Spotify, and more) and an 8-dimension Digest Pool for mix-and-match composition.

Features:

  • 4-phase pipeline: Scrape → Analyze → Generate → Digest
  • Multi-tier browser support: Browser Use Cloud / Playwright / Chrome Headless / WebFetch fallback
  • 9-module Design MD format following awesome-design-md standard
  • 55 pre-loaded brand references with full design system documentation
  • 8-dimension Digest Pool (typography, colors, spacing, components, depth, motion, layouts, philosophy)
  • Compose command: mix-and-match from Digest Pool to generate new design systems
  • Machine-friendly cross-reference tags for programmatic matching
  • Confidence tagging: High (CSS var) / Medium (computed) / Low (visual estimate)

Install:

bash
/plugin install design-distiller@yrzhe-skills

Manual install:

bash
cp -r plugins/design-distiller/skills/design-distiller ~/.claude/skills/

Usage:

code
/design-distiller https://vercel.com              # Full pipeline
/design-distiller compose "Vercel typography + Stripe colors + Linear components"
/design-distiller compare vercel stripe            # Side-by-side comparison
/design-distiller list                             # List all 55 references

seed

Build-in-public activity recorder. A Stop hook mechanically logs every Claude Code turn (user prompt + tools used + full assistant output) to a per-session markdown file. When you're ready to tweet, /seed reads the log and helps you synthesize draft tweets from real evidence — no more "wait, what did I actually do today?"

Features:

  • Zero-cost Stop hook — mechanical turn capture, no LLM calls, no scoring, zero latency
  • De-duped by user-prompt uuid (Stop hook fires per-turn, so dedup matters)
  • Per-session markdown logs with full assistant output + tool summaries
  • /seed shot — screenshot capture bound to the current session (interactive window-pick OR headless Chrome URL mode)
  • /seed — Claude reads the log and proposes tweet drafts tied to real evidence (skips routine sessions)

Install:

bash
/plugin install seed@yrzhe-skills

Manual install:

bash
cp -r plugins/seed/skills/seed ~/.claude/skills/seed
chmod +x ~/.claude/skills/seed/scripts/*.py

Hook setup (one-time, see plugins/seed/skills/seed/README.md for full instructions):

bash
cp ~/.claude/skills/seed/hooks/capture-session-seed.sh ~/.claude/hooks/
chmod +x ~/.claude/hooks/capture-session-seed.sh

Then add to ~/.claude/settings.json:

json
{ "hooks": { "Stop": [{ "matcher": ".*", "hooks": [{ "type": "command", "command": "~/.claude/hooks/capture-session-seed.sh" }] }] } }

Usage:

code
/seed                                # synthesize current session → tweet drafts
/seed shot                           # interactive window pick
/seed shot localhost:3000            # headless Chrome screenshot
/seed list                           # list all session logs
/seed done                           # archive current session

chef

Cooking assistant for Chinese and Western cuisine — recipes are pulled from real sources, never fabricated. LLMs have no taste buds; specific quantities, timings, and heat levels must come from real recipe data or be fetched live. Ships with 604 pre-fetched recipes as evidence.

Sources (all real): xiachufang, douguo, meishij (下厨房/豆果美食/美食杰 — Chinese), allrecipes, BBC Good Food, Food Network, TheMealDB, Serious Eats, Epicurious, and 10+ others. Zero fabrication — if a source doesn't have it, the agent says "let me fetch it" before answering.

Features:

  • Hard rule: no data = no answer. Every quantity/technique traceable to a source URL
  • Chinese cuisines: 川/粤/鲁/苏/闽/浙/湘/徽/家常
  • Western cuisines: 意/法/美式/地中海/英伦 + categories (mains/baking/soups/salads/breakfast)
  • Recipe walkthroughs with ingredients (name + gram weight), steps (timing/heat/key moments), doneness cues, common pitfalls
  • Ingredient-based suggestions (prioritize recipes covering ≥2 of what you have)
  • Pairing analysis via local co-occurrence + theory (not vibes)
  • Nutrition lookup (Open Food Facts) + substitution advice
  • 604 pre-cached recipes in data/recipes/*.md — search before fetch

Install:

bash
/plugin install chef@yrzhe-skills

Manual install:

bash
cp -r plugins/chef/skills/chef ~/.claude/skills/chef

Usage:

code
"怎么做西湖醋鱼"            → local search → walkthrough with source URL
"家里有鸡蛋西红柿土豆能做啥"  → ingredient-match suggestions
"X 和 Y 搭不搭"            → co-occurrence + pairing theory
"how do I make carbonara"   → allrecipes/BBC Good Food lookup
"这菜多少卡路里"            → nutrition from frontmatter or OpenFoodFacts

Contributing

Feel free to open issues or submit pull requests to improve these skills.

License

MIT License - see individual plugins for details.

Author

yrzhe - @yrzhe_top

Install & Usage

1
Create the skills directory
mkdir -p .claude/skills
2
Download the skill file
mkdir -p .claude/skills && curl -o .claude/skills/feishu-bot-dev.md https://raw.githubusercontent.com/yrzhe/claude-skills/main/SKILL.md
3
Invoke in Claude Code
/feishu-bot-dev
View source on GitHub
apifeishularkbot飞书机器人消息群组

Frequently Asked Questions

What is feishu-bot-dev?

飞书机器人配置与开发完整指南。支持零代码(机器人助手)和全代码(开放平台API)两种模式,包含发消息、创建文档、管理群组等功能。

How to install feishu-bot-dev?

To install feishu-bot-dev, create the .claude/skills directory in your project, then run the curl command to download the skill file. Once installed, invoke it in Claude Code with /feishu-bot-dev.

What is feishu-bot-dev best for?

feishu-bot-dev is a community categorized under General. It is designed for: api, feishu, lark, bot, 飞书, 机器人, 消息, 群组. Created by yrzhe.