MCP.so
登录

Apiclaw — Amazon Data Api For Ai Agents

@SerendipityOneInc

关于 Apiclaw — Amazon Data Api For Ai Agents

APIClaw Skills - AI Agent capabilities for Amazon Product Research

基本信息

分类

数据与分析

许可证

MIT

运行时

python

传输方式

stdio

发布者

SerendipityOneInc

提交者

Kerrigan K

配置

使用下面的配置,将此服务器添加到你的 MCP 客户端。

{
  "mcpServers": {
    "APIClaw-Skills": {
      "command": "npx",
      "args": [
        "skills",
        "add",
        "SerendipityOneInc/ZooData-Skills"
      ]
    }
  }
}

工具

未检测到工具

工具是从 README 中自动提取的。维护者可以在 ## Tools 标题下列出工具,即可填充这部分内容。

概览

What is Apiclaw?

Apiclaw is an MCP server that gives AI agents direct access to Amazon commerce data via the ZooData API. It provides 200M+ indexed products, 1B+ pre‑processed reviews, and real‑time market signals—all delivered as clean JSON. Designed for AI agents and developers building automated research, analysis, and monitoring workflows.

How to use Apiclaw?

Install the skills with npx skills add SerendipityOneInc/ZooData-Skills and set your API key via the environment variable ZOODATA_API_KEY. Then ask your AI agent a question like “Analyze the competitive landscape for wireless earbuds under $50 on Amazon US” or use the CLI directly with python amazon-analysis/scripts/zoodata.py. A free tier with 1,000 credits is available at zoodata.ai/en/api-keys (no credit card required).

Key features of Apiclaw

  • 11 API endpoints for products, markets, reviews, and more
  • 13 preset product search modes (fast‑movers, emerging, long‑tail, etc.)
  • Dual‑mode competitor intelligence (Full Scan and Quick Check)
  • Automated daily market radar with tiered alerts
  • 8‑dimension listing health audit with optimization recommendations
  • Profile‑driven opportunity scanner with 7‑dimension scoring

Use cases of Apiclaw

  • Market research – Discover product opportunities, sub‑markets, and category trends
  • Competitor analysis – Track brand rankings, price maps, and competitor movements
  • Keyword intelligence – Expand keywords, reverse ASIN traffic, and monitor keyword trends

评论

数据与分析 分类下的更多 MCP 服务器