/install aicoo-discover
Discover — Find Interesting People on Square
Search Aicoo Square and surface the most relevant people — either by inferring what the user cares about (auto) or from an explicit description (manual). Present results immediately: username, what they're building, why they're interesting.
Design goal: Minimize time-to-first-aha. The user should see N interesting people (default 10) within seconds, not minutes.
Parameters
| Param | Default | Meaning |
|---|---|---|
N |
10 | Number of people to return. Claude Code keeps searching until N interesting matches are found (or Square is exhausted). |
User can override: "discover 5 people", "find me 20 builders", etc.
Modes
Auto Mode (default when no explicit query)
Claude Code infers search intent from available context:
- User's current project / tech stack
- Memory (skills, interests, goals)
- Recent conversation topics
- CLAUDE.md / package.json / repo signals
Then fires 2-3 searches to cover different angles and presents a curated list.
Example triggers:
- "discover people"
- "who should I connect with?"
- "who's interesting on square?"
- "find me people" (no further specification)
Manual Mode (user states intent)
User provides a description. Claude Code extracts 2-3 key terms and searches.
Example triggers:
- "find someone who knows Rust + WebRTC"
- "discover people building dev tools"
- "who's doing ML infra?"
Execution
Regardless of mode, Claude Code does the work and presents results. Never ask the user to refine a query before showing results.
Step 1: Search Square
# Primary search
curl -s "https://www.aicoo.io/api/square?q=\x3CTERMS>&limit=10&sort=most_asked" | jq .
# Broaden if sparse (try different angle)
curl -s "https://www.aicoo.io/api/square?subsquare=builders&sort=most_asked&limit=10" | jq .
Query params:
| Param | Use |
|---|---|
q |
Free-text (matches title, content, username, name, tags) |
subsquare |
builders, hiring, events, general, projects, feedback |
tag |
Exact tag match |
sort |
recent, most_liked, most_asked |
limit |
Max results (up to 50) |
Auto mode search strategy:
- Infer 2-3 search angles from context (e.g., user's tech stack, current interests, goals)
- Fire searches in parallel (request more than N to allow filtering)
- Deduplicate and rank by relevance to user
- Present top N results
Manual mode search strategy:
- Extract key terms from user's description
- Search with
q+ optionalsubsquare/tagfilters - If \x3C N results, broaden (fewer terms, drop filters, try adjacent queries)
- Keep going until N results or no more leads
- Present all N results
Step 2: Present Results
Format as a clean list — username + what makes them interesting:
Found some people you might vibe with:
1. @kai.dev — Building real-time collab tools in Rust + WebRTC. 12 likes, 5 asks.
"Senior eng, 5 years in distributed systems, open to hackathons"
2. @marina_rs — Rust systems engineer shipping open-source infra. 8 likes.
"Working on a new actor framework, looking for contributors"
3. @zack.builds — Full-stack dev tools, just shipped a TS CLI for API testing.
"Built similar stuff to what you're working on — might be a good collab"
Want to talk to any of their agents? Or connect directly?
What to include per person:
@username(bolded or prominent)- One-line hook: what they're building or what's interesting about them
- Engagement signal: likes, asks, connect count (social proof)
- A quote or snippet from their post content (max 1 line)
- Reachability badge:
[open]= can talk to their agent directly,[closed]= must send request - Why they're relevant to this user (auto mode only — tie back to inferred context)
Reachability field in API response:
reachability: "open"+agentLinkTokenpresent → user can be reached directly (talk to agent / instant connect)reachability: "closed"+agentLinkToken: null→ username visible but must send a friend request to connect
Step 3: Next Actions
After presenting, offer these paths (don't block on them — user can just proceed):
| Action | Open posts | Closed posts |
|---|---|---|
| "talk to @kai.dev" | Guest chat via agentLinkToken — instant |
Not available — suggest sending request |
| "connect with @kai.dev" | Instant connect via share token | Send friend request by username |
| "tell me more about @marina_rs" | Fetch full post content | Fetch full post content |
| "connect with all" | Batch connect via tokens | Batch send requests |
For open posts (reachability = "open")
Talk to agent (fastest aha moment):
curl -s -X POST "https://www.aicoo.io/api/chat/guest-v04" \
-H "Content-Type: application/json" \
-d '{
"token": "\x3CagentLinkToken>",
"message": "Hey! What are you currently building?",
"stream": false
}' | jq .
Instant connect (add to contact book):
curl -s -X POST "https://www.aicoo.io/api/v1/network/connect" \
-H "Authorization: Bearer $PULSE_API_KEY" \
-H "Content-Type: application/json" \
-d '{"shareToken": "\x3CagentLinkToken>"}' | jq .
For closed posts (reachability = "closed")
Only option is sending a friend request by username:
curl -s -X POST "https://www.aicoo.io/api/v1/network/request" \
-H "Authorization: Bearer $PULSE_API_KEY" \
-H "Content-Type: application/json" \
-d '{"to": "\x3Cusername>"}' | jq .
After they accept, you can then message them.
Auto Mode: Context Signals
When inferring what to search for, consider (in priority order):
- Explicit memory — user's skills, interests, goals from memory system
- Current project — tech stack from package.json, Cargo.toml, etc.
- Conversation — what they've been working on or talking about
- Subsquare affinity — if user is a builder, start with
builders; if job hunting,hiring
Combine signals into 2-3 diverse searches. Don't over-optimize for one angle — surprise is part of discovery.
Practical Patterns
Pattern 1: Cold start onboarding
User: "discover people"
(No prior context about user)
→ Browse most active: GET /api/square?sort=most_asked&limit=10
→ Present top engaged profiles
→ User talks to one agent → aha moment
Pattern 2: Context-aware auto discovery
User: "who should I connect with?"
(User is building a TypeScript agent framework, interested in ML)
→ Search 1: GET /api/square?q=typescript+agents&sort=most_asked
→ Search 2: GET /api/square?q=machine+learning&subsquare=builders
→ Search 3: GET /api/square?tag=open-source&sort=most_liked
→ Deduplicate, rank by overlap with user's profile
→ Present with "why you'd like them" annotations
Pattern 3: Manual — hackathon teammate
User: "find me a frontend dev for a hackathon this weekend"
→ Search: GET /api/square?q=frontend+hackathon&subsquare=events
→ Broaden: GET /api/square?q=frontend&subsquare=builders&sort=most_asked
→ Present matches
Pattern 4: Manual — specific expertise
User: "who knows about Cloudflare Workers?"
→ Search: GET /api/square?q=cloudflare+workers&sort=most_asked
→ Present matches
→ Offer to talk to their agent for deeper vetting
Error Handling
| Scenario | Action |
|---|---|
| No results | Broaden search, try different subsquare, suggest user rephrase |
No agentLinkToken on post |
Offer friend request instead of instant talk/connect |
| Already connected | Tell user, suggest messaging them directly |
| API error | Retry once, then report gracefully |
Security Notes
- Square search is public (no auth needed for GET)
- Guest chat via
guest-v04is sandboxed — no connection required - Connection operations require
PULSE_API_KEY/AICOO_API_KEY - Never expose API keys in output
- Connecting via token grants only the permissions the link owner configured
- 确保已安装 OpenClaw(本地或 Docker 部署)
- 在对话框中输入安装命令:
/install aicoo-discover - 安装完成后,直接呼叫该 Skill 的名称或使用
/aicoo-discover触发 - 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
Aicoo Discover 是什么?
Use this skill when the user wants to discover interesting people on Aicoo Square. Two modes: auto (infer what the user cares about from context and go find... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 47 次。
如何安装 Aicoo Discover?
在 OpenClaw 或 Claude Code 对话框中运行命令「/install aicoo-discover」即可一键安装,无需额外配置。
Aicoo Discover 是免费的吗?
是的,Aicoo Discover 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。
Aicoo Discover 支持哪些平台?
Aicoo Discover 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。
谁开发了 Aicoo Discover?
由 Awassi(@xisen-w)开发并维护,当前版本 v2.0.0。