ZENTRUN - Automation AI Agents Built with Vibe Coding & MCPs

Created By
Andrew Skya year ago
Build and automate your own AI team. Just like building a website with vibe coding, build your AI team the same way. Automation, analytics, execution — your custom AI agents handle it all for you. Zentrun lets you vibe-code real, executable AI agents. With a single sentence, you create actions that run, remember, analyze, and evolve — powered by MCP and designed for automation at scale.
Overview

What is Zentrun?

Zentrun is an open-source Software 3.0 platform where you build AI agents that create and run their own features using vibe coding.
These agents aren’t just static scripts or chatbots — they evolve. Each one has its own database, executes code, and defines automation, analytics, or UI with natural language.

Just describe what you want — the agent builds, stores, and reuses that functionality like a real SaaS app.


Explore more in github repo


How to use Zentrun?

  1. Download the Zentrun app (Windows, macOS, Linux supported).
  2. Use vibe coding: describe what your agent should do — like “Scrape job listings and analyze salary trends.”
  3. Zentrun converts that into executable logic, stores it, and lets the agent run it anytime.
  4. Keep adding new features — your agent grows into a real product.

Key features of Zentrun

  • Software 3.0 agents: Not just one-time bots — they evolve by building new features over time.
  • Vibe coding interface: No drag & drop. Just describe — Zentrun handles UI, logic, and execution.
  • Embedded DB + code: Each agent remembers, stores data, and executes structured workflows.
  • Zent-based modular logic: Reusable, composable automation blocks.
  • ZPilot orchestration: Build multi-agent workflows with shared state and role-based logic.
  • Open marketplace: Share your agents or monetize them as Agent-as-a-Service (AaaS).

Use cases of Zentrun

  • Launch SaaS-like AI services that scrape, analyze, visualize, and automate.
  • Build internal tools that grow smarter with each action — sales agents, data bots, research copilots.
  • Create recurring revenue from workflows, prompts, or expertise packaged as agents.

Zentrun FAQ

Do I need to code?
No. Just describe in natural language — Zentrun turns it into running logic.

How is it different from chatbots?
Zentrun agents don’t just talk — they act. They execute code, access data, and build new capabilities over time.

Is Zentrun open-source?
Yes, the core platform is open-source and free to use.

What platforms are supported?
Windows, macOS, and Linux — fully cross-platform.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
Andrew Sky
Star
-
Category

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