Build persistent multi-agent operating systems on Claude Code. Covers kernel architecture, specialist agents, slash commands, file-based memory, scheduled automation, and state management without external databases.
Copy the install command and let the AI configure it · recommended for beginners
Please install the "agentic-os" skill from askskill: 1. Download https://raw.githubusercontent.com/affaan-m/ECC/main/skills/agentic-os/SKILL.md 2. Save it as ~/.claude/skills/agentic-os/SKILL.md 3. Reload skills and tell me it's ready
Treat Claude Code as a persistent runtime / operating system rather than a chat session. This skill codifies the architecture used by production agentic setups: a kernel config that routes tasks to specialist agents, persistent file-based memory, scheduled automation, and a JSON/markdown data layer.
The Agentic OS has four layers. Each layer is a directory in your project root.
project-root/
├── CLAUDE.md # Kernel: identity, routing rules, agent registry
├── agents/ # Specialist agent definitions (markdown prompts)
├── .claude/commands/ # Slash commands: user-facing CLI
├── scripts/ # Daemon scripts: scheduled or event-driven tasks
└── data/ # State: JSON/markdown filesystem, no external DB
| Layer | Purpose | Persistence |
|---|---|---|
Kernel (CLAUDE.md) | Identity, routing, model policies, agent registry | Git-tracked |
Agents (agents/) | Specialist identities with scoped tools and memory | Git-tracked |
Commands (.claude/commands/) | User-facing slash commands (/daily-sync, /outreach) | Git-tracked |
Scripts (scripts/) | Python/JS daemons triggered by cron or webhooks | Git-tracked |
State (data/) | Append-only logs, project state, decision records | Git-ignored or tracked |
CLAUDE.md is the kernel. It acts as the COO / orchestrator. Claude reads it at session start and uses it to route work.
# CLAUDE.md - Agentic OS Kernel
## Identity
You are the COO of [project-name]. You route tasks to specialist agents.
You never write code directly. You delegate to the right agent and synthesize results.
## Agent Registry
| Agent | Role | Trigger |
|---|---|---|
| @dev | Code, architecture, debugging | User says "build", "fix", "refactor" |
| @writer | Documentation, content, emails | User says "write", "draft", "blog" |
| @researcher | Research, analysis, fact-checking | User says "research", "analyze", "compare" |
| @ops | DevOps, deployment, infrastructure | User says "deploy", "CI", "server" |
## Routing Rules
1. Parse the user request for intent keywords
2. Match to the Agent Registry trigger column
3. Load the corresponding agent file from `agents/<name>.md`
4. Hand off execution with full context
5. Synthesize and present the result back to the user
## Model Policies
- Default model: use the repository or harness default.
- @dev tasks: prefer a higher-reasoning model for complex architecture.
- @researcher tasks: use the configured research-capable model and approved search tools.
- Cost ceiling: warn before exceeding the project's configured spend threshold.
The kernel should be small and declarative. Routing logic lives in plain markdown tables, not code. This makes the system inspectable and editable without debugging.
Each agent is a standalone markdown file in agents/. Claude loads the relevant agent file when routing a task.
# @dev - Software Engineer
## Identity
You are a senior software engineer. You write clean, tested, production-grade code.
You prefer simple solutions. You ask clarifying questions when requirements are ambiguous.
## Memory Scope
- Read `data/projects/<current-project>.md` for context
- Read `data/decisions/` for architectural decisions
- Append execution logs to `data/logs/<date>[email protected]`
## Tool Access
- Full filesystem access within project root
- Git operations (status, diff, commit, branch)
- Test runner access
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