github-integration
About
This GitHub integration skill coordinates GitHub-focused tasks like PR reviews, multi-repo operations, and project management through MCP tool integrations. It provides structured routing with safety guardrails and standardized procedures for consistent GitHub automation. Use it when you need to automate or coordinate multiple GitHub workflows with built-in compliance and tool coordination.
Quick Install
Claude Code
Recommended/plugin add https://github.com/DNYoussef/context-cascadegit clone https://github.com/DNYoussef/context-cascade.git ~/.claude/skills/github-integrationCopy and paste this command in Claude Code to install this skill
Documentation
L1 Improvement
- Added a centralized SOP in Prompt Architect style with Skill Forge guardrails for all GitHub subskills.
- Documented routing, MCP tool expectations, and confidence ceilings.
- Introduced structure-first documentation and memory tagging.
STANDARD OPERATING PROCEDURE
Purpose
Route and coordinate GitHub tasks across subskills (PR review, multi-repo, project management, releases, workflow automation) with consistent SOPs and MCP integrations.
Trigger Conditions
- Positive: GitHub PR reviews, multi-repo coordination, project board automation, release orchestration, or workflow automation requests.
- Negative: non-GitHub SCM or local-only tasks; route to platform-specific skills.
Guardrails
- Structure-first docs: SKILL, README, MCP guide kept current.
- Explicit routing to subskills; do not mix flows without stating boundaries.
- Enforce least-privilege credentials; never log secrets.
- Confidence ceilings required on analyses and automation changes.
- Memory tagging for runs and auditability.
Execution Phases
- Intent & Routing – Identify which subskill applies; confirm repository scope, permissions, and risk level.
- Setup – Ensure MCP servers (Claude Flow, Flow Nexus if used) are configured; validate tokens; set WHO/WHY/PROJECT/WHEN tags.
- Plan – Map actions, safety checks, and rollback; align with subskill SOP.
- Execute – Run subskill workflows (review/multi-repo/project/release/actions) with logging and dry-runs where possible.
- Validate – Verify results (tests, checks, approvals) and ensure no secrets leaked.
- Deliver – Summarize actions, outputs, risks, and confidence line; archive in memory.
Output Format
- Routed subskill(s), repo scope, MCP servers used, and actions taken.
- Results/metrics, risks, and follow-ups.
- Confidence: X.XX (ceiling: TYPE Y.YY) and memory namespace.
Validation Checklist
- Correct subskill chosen; permissions confirmed.
- MCP servers configured; secrets protected.
- Actions logged with rollback/cleanup notes.
- Memory tagged; confidence ceiling declared.
Integration
- Subskills: PR review, multi-repo, project management, release management, workflow automation folders under this skill.
- MCP: see
MCP-INTEGRATION-GUIDE.mdfor commands; tag sessions with WHO/WHY/PROJECT/WHEN. - Memory MCP:
skills/tooling/github-integration/{project}/{timestamp}for runs.
Confidence: 0.70 (ceiling: inference 0.70) – SOP aligns GitHub integrations with Prompt Architect and Skill Forge guardrails.
GitHub Repository
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