AI-powered multi-platform C2C resale toolkit — 8 Claude Code skills + MCP server for automating second-hand selling
# Add to your Claude Code skills
git clone https://github.com/madguyevans-creator/resale-agent-skill-hubGuides for using ai agents skills like resale-agent-skill-hub.
Last scanned: 5/30/2026
{
"issues": [],
"status": "PASSED",
"scannedAt": "2026-05-30T17:02:08.423Z",
"npmAuditRan": true,
"pipAuditRan": true
}resale-agent-skill-hub is an open-source ai agents skill for AI coding assistants such as Claude Code, Codex CLI, and ChatGPT, built by madguyevans-creator. AI-powered multi-platform C2C resale toolkit — 8 Claude Code skills + MCP server for automating second-hand selling. It has 104 GitHub stars.
Yes. resale-agent-skill-hub passed SkillsLLM's automated security scan — a dependency vulnerability audit plus prompt-injection heuristics — with no high-severity issues. You can read the full report in the Security Report section on this page.
Clone the repository with "git clone https://github.com/madguyevans-creator/resale-agent-skill-hub" and add it to your Claude Code skills directory (see the Installation section above).
resale-agent-skill-hub is primarily written in Python. It is open-source under madguyevans-creator on GitHub, so you can review or fork the full source.
Yes. SkillsLLM lists many other AI Agents skills you can browse and compare side by side. Open the AI Agents category from the badge at the top of this page, or use the Related Skills and comparison links further down to weigh resale-agent-skill-hub against similar tools.
No comments yet. Be the first to share your thoughts!
A collection of 8 Claude Code skills + an MCP Server implementing a Multi-Platform Smart Resale Agent: an AI-powered conversational workflow for C2C second-hand resale that reduces the barriers to listing and selling pre-owned goods.
v2: Now runs as a standard MCP server (JSON-RPC over stdio) that any MCP-compatible client can call — Claude Desktop, Cursor, VS Code, or custom web frontends.
skillhub/
├── broker_core/ # Shared engine (pip install -e .)
│ ├── session_manager.py # Browser login → cookie persistence
│ ├── platform_client.py # Authenticated platform API clients
│ ├── state_manager.py # Listing lifecycle state (~/.broker/listings.json)
│ ├── scheduler.py # launchd (macOS) / cron (Linux) registration
│ ├── audit_logger.py # Append-only Transparency Log (~/.broker/audit.jsonl)
│ └── mcp_server.py # ★ MCP Server — 7 tools via JSON-RPC
├── guardrails/ # ★ Prompt framework (v2)
│ ├── Omni-Agent-Guardrails.yaml
│ └── README.md
├── skills/ # 8 Claude Code skills
│ ├── personal-broker/ # Hub: orchestrates the 7-step pipeline
│ ├── broker-recognize/ # Step 1: Photo → product info
│ ├── broker-auth/ # Step 3: Bind platform accounts
│ ├── broker-price/ # Step 2: Authenticated price research
│ ├── broker-card/ # Step 4: Listing cards → auto-publish
│ ├── broker-schedule/ # Step 5: Repricing interval & cron/launchd
│ ├── broker-fuse/ # Step 6: Price Shield (floor price)
│ └── broker-delist/ # Step 7: Auto-detect sale → delist all
├── tests/ # 41 tests
└── docs/ # Setup guides for MCP clients
📷 broker-recognize → Photo → structured product info
🔐 broker-auth → Open browser → log in once → session persisted
🔍 broker-price → Search platforms with session → transparency report
🛡️ broker-fuse → ⚠️ GLOBAL INTERCEPTOR — set unbreachable floor price BEFORE publishing
📋 broker-card → Generate cards → validate floor → user confirms → auto-publish
⏰ broker-schedule → Register launchd/cron for daily repricing checks (floor-gated)
✅ broker-delist → Scheduler detects sale → auto-delist all platforms (no confirmation)
Each skill can also be invoked standalone (e.g., /broker-price for pricing only).
broker-recognize uses the Anthropic API (Claude Vision) to analyze product photos. Set your API key:
export ANTHROPIC_API_KEY="sk-ant-..."
Without this key, photo recognition will fail.
Pick one path. Path A is recommended for most users.
Step 1: Install
git clone https://github.com/madguyevans-creator/skillhub.git
cd skillhub && pip install -e .
pip install playwright && playwright install chromium
Step 2: Get API key (one-time) Go to console.anthropic.com → API Keys → create key. Save it once:
echo 'sk-ant-your-key' > ~/.broker/api_key
Step 3: Configure Claude Desktop
Add to ~/Library/Application Support/Claude/claude_desktop_config.json:
{
"mcpServers": {
"skillhub": {
"command": "python3",
"args": ["/path/to/skillhub/broker_core/mcp_server.py"],
"env": { "BROKER_MOCK_MODE": "true" }
}
}
}
Step 4: Restart Claude Desktop. Done.
Open Claude Desktop, say "帮我卖掉这双鞋" + upload photo. Claude automatically calls 7 MCP tools in the correct order.
git clone https://github.com/madguyevans-creator/skillhub.git
cd skillhub && pip install -e .
cp -r skills/* ~/.claude/skills/
Use inside Claude Code:
/personal-broker — full pipeline/broker-recognize — analyze product photo/broker-price — price research/broker-fuse — set floor priceBy default BROKER_MOCK_MODE=true. Everything works with realistic simulated data — no API key, no platform accounts needed. Photo recognition returns a demo Nike sneaker.
git clone https://github.com/madguyevans-creator/skillhub.git
cd skillhub && pip install -e .
# Done — you're in mock mode. Use Path A or B above.
export BROKER_MOCK_MODE=false
# Then bind platform accounts:
python3 skills/broker-auth/scripts/auth.py --all
# This opens a browser. Log into each platform once. Cookies persist.
By default, BROKER_MOCK_MODE=true — all platform API calls (search, publish, delist) return realistic simulated data. No real HTTP requests are made. This allows:
To use real platform APIs, set BROKER_MOCK_MODE=false in your environment. Requires platform accounts bound via broker-auth.
Every AI-assisted decision is recorded to ~/.broker/audit.jsonl — an append-only, immutable JSONL file. You can always audit what the agent did and why.
What gets logged:
log_pricing)log_fuse_check)log_publish)log_repricing)log_delist)log_schedule_registered)How to view:
from broker_core import audit_logger
print(audit_logger.format_trail("item_abc123")) # Human-readable timeline
trail = audit_logger.get_audit_trail("item_abc123") # Raw JSON array
When every action is recorded with rationale, there is no "black box" — the user can always audit what happened and why.
| Decision | Rationale |
|---|---|
| Not web scraping | Uses user's own session cookies. Searching as a logged-in user, not crawling. |
| Bind once, reuse | Platform login happens once via browser. Session persisted until expiry (~30 days). |
| Sold median pricing | Recommended price = median of actually-sold comparables. Falls back to 5% below active median. |
| Price shield as global interceptor | Every price-mutating action (publish, repricing) validates against the floor. Blocked actions are logged to audit trail. |
| Auto-execute after confirm | Once user confirms card + floor + schedule, the system auto-publishes and auto-reprices without re-confirmation. |
| No confirmation on delist | When scheduler detects sale on any platform, auto-delist all others immediately. |
| launchd / cron | System-level scheduling, no daemon process needed. |
| Mock mode | BROKER_MOCK_MODE=true by default — safe demo without real accounts or anti-scraping risk. |
| Append-only Transparency Log | Immutable JSONL log of every decision. The user can always audit what happened. |
MIT — see LICENSE