system-prompts-and-models-o.../Open Source prompts/Guardian AI/README.md

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Guardian AI

Type: Multi-agent orchestration system (open source) Model: Claude (Opus/Sonnet), also works with GPT, Gemini, Llama, Mistral Agents: 57 specialized agents coordinated by a single orchestrator Production: 10,000+ tasks over 6+ months Source: https://github.com/milkomida77/guardian-agent-prompts

Prompts in this directory

File Description
orchestrator-system-prompt.txt The main orchestrator that routes all 57 specialized agents. Representative examples shown — the full system coordinates 57 specialized agents across 15+ domains. Handles task decomposition, anti-duplication, quality gates, and parallel agent execution.

Architecture

Guardian uses a hub-and-spoke model:

  • 1 Orchestrator (this prompt) routes ALL incoming tasks
  • 57 Specialized Agents handle specific domains (code, security, trading, OSINT, business, VRChat, cloud, memory, quality, and 15+ other categories)
  • Task Registry prevents duplicate work across agents
  • Quality Gates require verification evidence before marking tasks done
  • Knowledge Graph provides persistent memory across sessions

Key Patterns

  1. Identity + NOT-block: Each agent defines what it IS and what it IS NOT (~35% reduction observed in production testing)
  2. Task Registry: SQLite-based anti-duplication with similarity matching
  3. Setup Master: Every task gets a blueprint before delegation (agents, tools, risks, order)
  4. Quality Gate: Agent output is a CLAIM; test output is EVIDENCE
  5. 30-minute Heartbeat: Orchestrator checks progress and reassigns stale tasks

Differences from other agent systems

Feature Guardian Common Open-Source Agent Frameworks
Prompt length 200-800 lines 20-50 lines
Constraint ratio 20-30% <5%
NOT-blocks Every agent Rare
Task registry Built-in Not included
Quality gates Mandatory Optional
Error handling Explicit per failure mode Generic retry