Pocketpaw

COMMUNITY

Your AI agent in 30 seconds. Not 30 hours. Self-hosted, open-source personal AI with desktop installer, multi-agent Command Center(Deep Work), and 7-layer security. Anthropic, OpenAI, or Ollama.

Downloads 0
Stars 831
Version 1.0.0
Quality 86/100 · Excellent

Install with one command

$ npx skills add pocketpaw/pocketpaw

Decision summary

Production-ready for Coding agents

Use this as a leading candidate, then validate the README and install path in your own agent stack.

97
Readiness

Best for

  • Coding agents workflows
  • Claude Code teams
  • teams that value GitHub adoption signals

Not ideal for

  • teams that need a vendor-supported SLA
  • high-compliance environments without internal security review

Risk notes

  • No OpenAgentSkill engagement data yet

Quality profile

Excellent candidate for agent workflows

High-confidence pick with strong adoption and healthy maintenance signals.

86
GitHub stars
831
Freshness
Today
Install ready
Yes
License
MIT

Workflow fit

Use this skill in these scenarios

Stack fit

Add it to a complete workflow

Overview

Your AI agent in 30 seconds. Not 30 hours. Self-hosted, open-source personal AI with desktop installer, multi-agent Command Center(Deep Work), and 7-layer security. Anthropic, OpenAI, or Ollama.

Imported by the skill-only GitHub discovery pipeline because it matches agent skill, automation, RAG, or developer-tool signals. Protocol-server projects are excluded from automated imports.

Platform Compatibility

pythonFULL
ai-agentsFULL

Technical Details

Version
1.0.0
License
MIT
Last Updated
5/31/2026
Published
5/25/2026

Frameworks & Tools

PythonAI Agents

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Author

P

pocketpaw

@pocketpaw

Health Signals

GitHub stars
831
Quality score
54/100
Last GitHub push
May 31, 2026
Framework hints
2
OpenAgentSkill views
0
Install copies
0
Outbound clicks
0

Community Signal

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Trust & Safety

  • Open source (public GitHub repo)
  • AI static analysis passed
  • License: MIT