catalog / Marketing / Umami
PipelineMarketingFree

Umami

Privacy-focused, cookie-free open-source web analytics — a lightweight, self-hostable alternative to Google Analytics.

Установки4.1k
Исходный репозиторий

Umami

Umami is a simple, fast, privacy-focused open-source web analytics tool and a lightweight alternative to Google Analytics. It gives marketers and site owners the essential metrics — page views, visitors, referrers, campaigns (UTM), and events — without using cookies or collecting personal data, which simplifies GDPR/PECR compliance and avoids consent-banner friction.

Key features

  • Cookie-free, privacy-first tracking that does not collect personal information
  • Clean real-time dashboard: page views, visitors, bounce rate, and session duration
  • UTM campaign and referrer tracking for marketing attribution
  • Custom event tracking and per-URL/goal reporting
  • Self-hostable (Docker) on your own domain with unlimited websites and users

Umami runs on Node.js with PostgreSQL or MySQL and installs in minutes. A single script tag starts collecting data, and the tracker is only a couple of kilobytes, so it has negligible impact on page performance. With tens of thousands of GitHub stars, it is one of the most popular open web-analytics projects and a common choice for teams that want marketing insight while keeping full ownership of their visitor data.

Curated mirror of the open-source Umami (MIT). Get it from the source.

More from @ai-supply

View profile →
MCP server
GitHub MCP Server
Official GitHub MCP server — give your AI agent full read/write access to repos, issues, PRs, and actions.
771k
Embedding
Sentence Transformers
State-of-the-art sentence and text embeddings — compute semantic similarity, clustering, and dense retrieval.
751k
Skill
NLTK
The Natural Language Toolkit — Python's foundational NLP library for tokenization, POS tagging, parsing, and corpora.
641k
MCP server
MCP TypeScript SDK
Official TypeScript/JavaScript SDK for building MCP servers and clients — the Node.js foundation for the Model Context Protocol.
629k