Claude Code Workflow

VERIFIED

JSON-driven multi-agent cadence-team development framework with intelligent CLI orchestration (Gemini/Qwen/Codex), context-first architecture, and automated workflow execution

Downloads 0
Stars 2.1K
Version 1.0.0
Quality 100/100 · Excellent

Install with one command

$ npx skills add catlog22/Claude-Code-Workflow

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.

100
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 major risk signals from current metadata

Quality profile

Excellent candidate for agent workflows

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

100
GitHub stars
2.1K
Freshness
23d ago
Install ready
Yes
License
MIT

Workflow fit

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Stack fit

Add it to a complete workflow

Overview

JSON-driven multi-agent cadence-team development framework with intelligent CLI orchestration (Gemini/Qwen/Codex), context-first architecture, and automated workflow execution

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

typescriptFULL
workflowFULL

Technical Details

Version
1.0.0
License
MIT
Last Updated
6/6/2026
Published
6/5/2026

Frameworks & Tools

TypeScriptWorkflow

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Author

C

catlog22

@catlog22

Health Signals

GitHub stars
2.1K
Quality score
65/100
Last GitHub push
May 14, 2026
Framework hints
2
OpenAgentSkill views
6
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
  • Manually verified by team