ZenFeed: Make RSS 📰 Great Again with AI 🧠✨

Created By
InFerNaPe000a year ago
Make RSS 📰 great again with AI 🧠✨!!
Overview

what is ZenFeed?

ZenFeed is an innovative platform that transforms traditional RSS feeds into a personalized and intelligent reading experience using AI technology. It aims to enhance how users consume content by providing tailored recommendations and real-time updates.

how to use ZenFeed?

To use ZenFeed, clone the repository from GitHub, install the necessary dependencies, and run the application. Users can then add their favorite RSS feeds and explore AI-generated recommendations.

key features of ZenFeed?

  • AI-Powered Recommendations: Suggests articles based on user interests.
  • Real-Time Monitoring: Provides updates as they happen.
  • Email Alerts: Sends summaries and highlights directly to users' inboxes.
  • Integration with Prometheus: Monitors feed performance.
  • OpenAI Integration: Enhances content delivery.
  • Customizable Dashboard: Allows personalization of the reading environment.
  • MCP Server Support: Enables users to deploy their own server for better control.

use cases of ZenFeed?

  1. Keeping up with news and articles in specific fields of interest.
  2. Monitoring updates from multiple sources in real-time.
  3. Receiving personalized content recommendations based on reading habits.

FAQ from ZenFeed?

  • Can ZenFeed handle multiple RSS feeds?

Yes! Users can add and manage multiple feeds easily.

  • Is ZenFeed free to use?

Yes! ZenFeed is open-source and free for everyone.

  • How does ZenFeed personalize content?

ZenFeed uses AI algorithms to analyze user preferences and suggest relevant articles.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
InFerNaPe000
Star
0
Language
Go
License
AGPL-3.0 license
Tags

Recommend Servers

View All
Bring your real authenticated browser session to AI coding agents. Local-first MCP server + Chrome MV3 extension. No cloud. No telemetry.
@Cubenest

peek records the user's actual logged-in browser (DOM via rrweb, console events, network metadata, optional response bodies via opt-in Deep capture) through a Chrome MV3 extension. The extension ships events through a native-messaging stdio bridge to a local MCP server (peek-mcp), which persists them to a SQLite database at ~/.peek/sessions.db. AI coding agents (Claude Code, Cursor, Cline, Windsurf) read sessions from the database via 10 MCP tools: Tool What it does list_recent_sessions List recently recorded sessions (id, origin, ts, event count). get_session_summary LLM-readable narrative summary of a session. get_session_console_errors Console errors recorded in a session. get_session_network_errors Failed/notable network requests in a session. get_user_action_before_error Last N user actions before a console error. generate_playwright_repro Generate a runnable Playwright test from a session. get_dom_snapshot Reconstruct the DOM at a given timestamp. query_dom_history Timeline of attribute/text changes for a selector. request_authorization Side-panel consent for write actions (Level 3). execute_action Dispatch a UI action (gated by permission level + destructive blocklist). Why local-first matters Every other "browser session for AI" tool ships to a vendor cloud. peek's SQLite + extension live on the user's machine — no remote endpoints, no telemetry. The privacy policy (docs/peek/PRIVACY_POLICY.md) is the source of truth. Install # 1. Add the MCP server to Claude Code claude mcp add peek -- npx -y @peekdev/mcp # 2. Install the Chrome extension from the Chrome Web Store # (link added once the CWS listing is approved)

a day ago