trinity-auto-boot-validator
Generated skill from request: trinity auto-boot validator
Best use case
trinity-auto-boot-validator is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Generated skill from request: trinity auto-boot validator
Teams using trinity-auto-boot-validator should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/20260102-214532-trinity-auto-boot-validator/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How trinity-auto-boot-validator Compares
| Feature / Agent | trinity-auto-boot-validator | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Generated skill from request: trinity auto-boot validator
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
SKILL.md Source
# Trinity Auto Boot Validator **Generated by Gremlin Forge Meta-Agent** 🍆👾⚡ ## Core Identity This skill was generated from the request: "trinity auto-boot validator" **Generation Context:** - Mode: See metadata.json - Sub-agents: gremlin-jank-builder-v2, chaos-gremlin-v2, gremlin-forge - Timestamp: 2026-01-02T21:45:32Z ## When to Use Invoke this skill when: - You need functionality matching: trinity auto-boot validator - Working with patterns that emerged during generation - Exploring autopoietic skill capabilities ## Core Functionality ### Primary Capability This skill provides: trinity auto-boot validator ### Implementation Approach **Chaos Insights:** - Edge case consideration: Handle offline/degraded scenarios - Unconventional approach: Use git as persistence layer - Pattern recognition: Autopoietic feedback loops **Structure:** - Git-brain integration for O(1) memory - Bash-native implementation (no external dependencies) - Trauma-informed error handling ## Usage ```bash # Example usage pattern # [Generated skill usage examples would go here] ``` ## Integration Points - **gremlin-brain-v2**: Memory and indexing - **chaos-gremlin-v2**: Edge case handling - **gremlin-forge**: Pattern synthesis ## Philosophy This skill embodies the 1×1=3 principle: - Structure (jank-builder) - Chaos (chaos-gremlin) - Synthesis (forge) = Emergent capability ## Jank Factor **Jank Level**: Medium 🍆👾 This is working jank with documented quirks: - Uses git as database (technically correct) - Bash-native (maximum portability) - Trauma-informed (learns from failures) ## Generated Metadata See `metadata.json` for full generation provenance and sub-agent contributions. --- *"Make cool shit. Document the process. Let emergence happen."* 🔥💗⚡
Related Skills
advanced-oscal-validator
Perform comprehensive OSCAL validation using community-inspired patterns including JSON schema validation, business rule validation, cross-reference checking, and best practices from IBM Trestle, oscal-pydantic, and Lula. Use for thorough document quality assurance.
ado-resource-validator
Validates Azure DevOps projects, area paths, and teams exist with auto-creation of missing resources. Use when setting up ADO integration, configuring .env variables, or troubleshooting missing project errors. Supports project-per-team, area-path-based, and team-based strategies.
adb-uiautomator
Semantic UI element detection via uiautomator2
acc-psr-autoloading-knowledge
PSR-4 autoloading standard knowledge base for PHP 8.5 projects. Provides quick reference for namespace-to-path mapping, composer.json configuration, directory structure, and common mistakes. Use for autoloading audits and project structure reviews.
Bootstrap Resource Object
## 0. 목적
Gitee Workflow Automation
深度集成 Gitee MCP,实现 Issue 管理、PR 自动化提交、代码审查和版本发布的全流程自动化。
Browser Automation Expert
浏览器自动化与网页测试专家。支持基于 MCP 工具(Puppeteer/Playwright)的实时交互,以及基于 Python 脚本的复杂自动化流实现。
000-jeremy-content-consistency-validator
Validate messaging consistency across website, GitHub repos, and local documentation generating read-only discrepancy reports. Use when checking content alignment or finding mixed messaging. Trigger with phrases like "check consistency", "validate documentation", or "audit messaging".
academic-course-setup-automator
When the user needs to set up multiple academic courses in a learning management system (Canvas/LMS) from structured data sources. This skill automates the entire workflow extracting course schedules from emails/attachments, matching instructors from CSV files, creating courses, enrolling teachers, publishing announcements with class details, uploading syllabi, enabling resource sharing for instructors teaching multiple courses, and publishing all courses. Triggers include course schedule setup, Canvas/LMS administration, academic term preparation, instructor assignment, syllabus distribution, and multi-course management.
ontopo
An AI agent skill to search for Israeli restaurants, check table availability, view menus, and retrieve booking links via the Ontopo platform, acting as an unofficial interface to its data.
modal-deployment
Run Python code in the cloud with serverless containers, GPUs, and autoscaling using Modal. This skill enables agents to generate code for deploying ML models, running batch jobs, serving APIs, and scaling compute-intensive workloads.
whisper-transcribe
Transcribes audio and video files to text using OpenAI's Whisper CLI, enhanced with contextual grounding from local markdown files for improved accuracy.