Analook — Competitor Intelligence
БесплатноНе проверенCompetitor intelligence for AI agents — SEO, traffic, social, Product Hunt, pricing, AI insights.
Описание
Competitor intelligence for AI agents — SEO, traffic, social, Product Hunt, pricing, AI insights.
README
Analook — 竞品情报分析工具
30 秒看透任何竞品 · AI-powered competitor intelligence for indie hackers & growth teams
License: MIT Website Skills on ClawHub Deployed on Railway
English | 中文 · 🤖 MCP Server · 📖 Docs
🤖 Remote MCP Server
Analook is available as a Remote MCP server — use it from Claude Desktop, Cursor, or any MCP-compatible client. No install, no local process.
{
"mcpServers": {
"analook": {
"url": "https://www.analook.com/mcp",
"headers": { "Authorization": "Bearer <YOUR_ANALOOK_TOKEN>" }
}
}
}
5 tools: analyze_competitor, get_report_status, get_report, get_report_markdown, list_my_reports.
Full docs & token instructions → analook.com/docs/mcp
💡 出海增长咨询 · 1v1 Session 约课 $200 — Telegram @Iris_carrot
或访问 gingiris.tools — Iris 的出海增长咨询,1:1 指导、开源项目运营、企业顾问服务
Table of Contents
- What is Analook
- Live Demo
- Analysis Modules
- AI Insights Depth
- Quick Start
- Deploy Your Own
- API Integrations
- Work With Iris
- About the Author
- 中文版
🌱 Philosophy
"做竞品分析不是为了抄,是为了找到别人没做好的地方。" — Competitor research isn't about copying — it's about finding the gaps they left open.
"数据会说话,但你得先知道问对问题。" — Data speaks, but only if you ask the right questions.
"30 秒看懂一个产品,30 天超越它。" — Understand a product in 30 seconds. Surpass it in 30 days.
💼 Work With Iris
1. Strategic Consultation (1v1)
Session Price Best For Quick Call (30 min) $150 USD Specific questions, quick diagnosis Deep Dive (60 min) $300 USD Full strategy review, detailed roadmap 2. Advisory Retainer
Plan Price Includes Monthly Retainer $1,500 USD/mo Up to 5 hours strategic consultation + milestone reviews 3. Playbooks & Templates
Package Price Contents Starter Pack $29 USD Core methodology + essential tools Flagship Bundle $199 USD Complete SOP, competitor research framework, templates 📩 Contact @Iris_carrot on Telegram — Crypto/USDT and Wire Transfer accepted
What is Analook?
Analook is an open-source AI-powered competitor intelligence tool built by Iris, former cofounder & COO of AFFiNE (60k+ stars).
Enter any product URL. In ~30 seconds, Analook runs a 7-module parallel analysis pipeline and returns a structured deep-dive report — growth strategy, traffic signals, social footprint, ProductHunt history, AI insights, and more.
Built for:
- Indie hackers validating a market before building
- Growth teams benchmarking against competitors
- Investors doing quick pre-DD intelligence
- Founders preparing a launch in a crowded niche
Analysis Results Include
| Signal | What You Learn |
|---|---|
| 🌐 Website History | When launched, how fast it grew, Wayback timeline |
| 📈 Traffic & SEO | Monthly visits, top channels, keyword gaps |
| 🐦 Twitter / X | Followers, engagement rate, content strategy |
| 🚀 Product Hunt | Launch scores, positioning, community response |
| 💡 AI Deep Dive | ICP, business model, growth flywheel, tactical recs |
| 📡 Propagation | Peak traffic events, viral moments, channel breakdown |
| 🧠 Growth Strategy | Early-stage strategy reconstruction from public signals |
What's Inside
This repo is the production backend powering analook.com:
app.py— FastAPI orchestrator: parallel analysis pipeline, job state, streaming, credit gatingmodules/— analysis engines (traffic, social, Product Hunt, growth analysis, AI summary) plus the Supabase client, payment integrations, and the MCP server (mcp_app.py)migrations/— Supabase SQL migrations (auth/credits/promo codes/attribution)scripts/— operational tooling: user metrics, attribution reports, EDM campaignsstatic/— the web UI served at analook.comtests/+Dockerfile— regression suite and container build
Stack: FastAPI + Supabase (auth, credits, report storage), deployed via Docker.
🔗 Live Demo
analook.com — Free to use. No login required.
Try with: lovable.dev · linear.app · notion.so · cursor.com
📦 Analysis Modules
| Module | File | Description |
|---|---|---|
| Website History | modules/website_history.py |
Wayback Machine CDX API, first-seen date, snapshot timeline |
| Traffic & SEO | modules/traffic_analysis.py |
DataForSEO — monthly visits, channels, top pages, keywords |
| Social Media | modules/social.py |
Apify Twitter scraper — followers, engagement, recent content |
| Product Hunt | modules/producthunt.py |
PH GraphQL API — launches, scores, upvotes, reviews |
| Growth Analysis | modules/growth_analysis.py |
Traffic peak detection, event correlation, growth stage |
| AI Summary | modules/ai_summary.py |
7-section structured analysis via TeamoRouter + DeepSeek fallback |
| Report Builder | app.py |
FastAPI orchestrator — parallel pipeline, job state, streaming |
🧠 AI Insights Depth
Analook's AI module goes beyond surface-level summaries. Each report includes:
- 产品定位与 ICP — Target user profiles, market positioning, who actually pays
- 商业模式拆解 — Pricing model, conversion hypothesis, revenue estimate range
- 增长密码 — 4–6 data-backed growth strategies with evidence
- 增长飞轮 — Product-specific flywheel reconstruction
- 内容与传播策略 — Channel mix, content types, launch propagation model
- 给后来者的战术建议 — 5 actionable recommendations you can execute this week
- 风险与机会 — Red flags and market gaps, with data citations
Powered by TeamoRouter (primary) and DeepSeek (fallback), with max 4,000 token output per report.
⚡ Quick Start
git clone https://github.com/Gingiris-1031/Competitor-analysis-tool.git
cd Competitor-analysis-tool
pip install -r requirements.txt
Create a .env file:
TEAMOROUTER_API_KEY=sk-teamo-...
DEEPSEEK_API_KEY=sk-...
DATAFORSEO_B64=base64(email:password)
PRODUCTHUNT_TOKEN=...
APIFY_API_TOKEN=apify_api_...
Run locally:
uvicorn app:app --reload --port 8000
Visit http://localhost:8000
🚀 Deploy Your Own
One-click deploy on Railway:
Steps:
- Fork this repo
- Create a new Railway project → connect your fork
- Add the environment variables above in Railway → Settings → Variables
- Railway auto-deploys on every push to
main
The app is Dockerized and uses Nixpacks on Railway (Python 3.13).
🔌 API Integrations
| Service | Purpose | Notes |
|---|---|---|
| TeamoRouter | Primary LLM | Routes to best available model |
| DeepSeek | Fallback LLM | Cost-efficient backup |
| DataForSEO | Traffic & SEO data | Monthly visits, channels, keywords |
| Apify | Twitter/X scraping | apidojo/twitter-profile-scraper actor |
| ProductHunt | Launch history | PH GraphQL API |
| Wayback Machine | Website history | CDX API + timemap |
⭐ Star This Repo
If Analook saved you hours of manual research, a ⭐ helps others discover it!
About the Author
Iris (生姜iris) — Former cofounder & COO of AFFiNE (60k+ GitHub stars). Now running Gingiris — an open-source go-to-market and global expansion consulting practice.
- 🐦 Twitter: @WeiYipei
- 💬 Telegram: @Iris_carrot
- 🌐 Website: gingiris.tools
Related Playbooks (now on ClawHub):
- @gingiris on ClawHub — GTM strategy, B2B SaaS PLG/SLG growth, open source launch marketing, and other AI-agent skills
中文版
Analook 是什么?
Analook 是一个开源 AI 竞品情报工具,由 AFFiNE(60k+ stars)联创 & 前 COO Iris 构建。
输入任意产品网址,30 秒内生成一份结构化竞品深度报告——包含增长策略、流量信号、社交足迹、ProductHunt 历史、AI 洞察等全套数据。
适合谁用?
- 独立开发者 — 开始动手前快速验证市场
- 增长团队 — 对标竞品,找到差距
- 投资人 — Pre-DD 快速情报收集
- 创始人 — 在红海市场找到进攻角度
核心分析模块
| 模块 | 数据来源 | 输出内容 |
|---|---|---|
| 🌐 网站历史 | Wayback Machine | 上线时间、成长速度、快照时间线 |
| 📈 流量 & SEO | DataForSEO | 月访问量、流量渠道、关键词矩阵 |
| 🐦 Twitter/X | Apify | 粉丝数、互动率、内容策略 |
| 🚀 Product Hunt | PH GraphQL | 发布记录、评分、社区反馈 |
| 💡 AI 深度分析 | TeamoRouter | ICP 画像、商业模式、增长飞轮、战术建议 |
| 📡 传播分析 | 综合 | 流量峰值事件、渠道来源、传播节点 |
| 🧠 早期增长策略 | 综合 | 从公开信号反推产品早期增长路径 |
快速部署
git clone https://github.com/Gingiris-1031/Competitor-analysis-tool.git
cd Competitor-analysis-tool
pip install -r requirements.txt
# 配置 .env 文件后:
uvicorn app:app --reload --port 8000
Railway 一键部署: Fork 本 repo → Railway 连接 → 添加环境变量 → 自动部署 ✅
关于作者
Iris(生姜iris),AFFiNE 联创 & 前 COO,现运营 Gingiris 开源出海增长咨询。
- 出海咨询预约:gingiris.tools
- Telegram:@Iris_carrot
- Twitter:@WeiYipei
License
MIT — free to use, modify, and redistribute.
Установка Analook — Competitor Intelligence
У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.
▸ github.com/Gingiris-1031/Competitor-analysis-toolFAQ
Analook — Competitor Intelligence MCP бесплатный?
Да, Analook — Competitor Intelligence MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для Analook — Competitor Intelligence?
Нет, Analook — Competitor Intelligence работает без API-ключей и переменных окружения.
Analook — Competitor Intelligence — hosted или self-hosted?
Доступен hosted-вариант: Unyly запускает сервер в облаке, локальная установка не обязательна.
Как установить Analook — Competitor Intelligence в Claude Desktop, Claude Code или Cursor?
Открой Analook — Competitor Intelligence на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.
Похожие MCP
Fetch
Web content fetching and conversion for efficient LLM usage.
AWS KB Retrieval
Retrieval from AWS Knowledge Base using Bedrock Agent Runtime.
автор: modelcontextprotocolSpring AI MCP Server
Provides auto-configuration for setting up an MCP server in Spring Boot applications.
llm-analysis-assistant
A very streamlined mcp client that supports calling and monitoring stdio/sse/streamableHttp, and can also view request responses through the /logs page. It also
автор: xuzexin-hzCompare Analook — Competitor Intelligence with
Не уверен что выбрать?
Найди свой стек за 60 секунд
Автор?
Embed-бейдж для README
Похожее
Все в категории ai
