antivibe

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Code learning and audit framework. Analyze any codebase — new, legacy, or AI-generated — and produce educational explanations or architectural audits. Use when the user wants to understand WHAT and WHY behind any code, not just accept it.

mohi-devhub By mohi-devhub schedule Updated 6/6/2026

name: antivibe description: Code learning and audit framework. Analyze any codebase — new, legacy, or AI-generated — and produce educational explanations or architectural audits. Use when the user wants to understand WHAT and WHY behind any code, not just accept it. triggers: - phrase: "/antivibe" - phrase: "deep dive" - phrase: "anti-vibecode" - phrase: "why did AI write" - phrase: "learn from this code" - phrase: "understand what AI wrote" - phrase: "explain what AI wrote" - phrase: "walk me through" - phrase: "explain this file" - phrase: "explain this codebase" - phrase: "analyze this module" - phrase: "audit this" - phrase: "just the trade-offs" - phrase: "what should I worry about" - phrase: "code review"

AntiVibe - Code Learning & Audit Framework

Purpose

AntiVibe generates learning-focused explanations or architectural audits of any code — AI-generated, legacy, or otherwise. It helps developers understand:

  • What the code does (functionality)
  • Why it was written this way (design decisions)
  • When to use these patterns (context)
  • What alternatives exist (broader knowledge)

Works on any codebase — you don't need recent git history or AI-authored files.

When to Use

Use AntiVibe when:

  1. Manual invocation: User types /antivibe or "deep dive"
  2. Post-task learning: After a feature/phase completes, user wants to learn from it
  3. Legacy codebases: User wants to understand existing code they didn't write
  4. Proactive: User says "explain what AI wrote", "walk me through", "audit this", or points at a file/directory

What AntiVibe Produces

Output saved to deep-dive/ folder as markdown:

deep-dive/
├── auth-system-2026-01-15.md
├── api-layer-2026-01-15.md
└── database-models-2026-01-15.md

The exact sections depend on the output mode (see Output Mode):

Section compact (default) full
Overview — what the code does and why it exists
Key Components / Concepts — design patterns, algorithms, CS concepts used
Code Walkthrough — file-by-file, line-by-line notes
Learning Resources — curated docs, tutorials, videos
Related Code — links to other files in the codebase

Configuration

Known Concepts (Skip List)

Concepts listed here will not be explained in full — the explainer will only note that they were used and in what context. Edit this list to match your current knowledge.

known_concepts:
  - async/await
  - React hooks
  - REST APIs

Output Mode

Controls how much detail is generated per run. Default is compact to keep token costs low.

output_mode: compact
Mode What's included
compact (default) Overview, key components (function-level, one line each), concepts (what + why only). No resources. No line-by-line. Max 5 files.
full Everything in compact, plus: line-by-line walkthrough, prerequisites, curated resources, Next Steps.

Override inline in your request:

  • "/antivibe full", "full deep dive", "include resources"full mode
  • Default: compact

Default Skill Level

Sets the explanation depth when no level is specified in the request. Options: junior, mid, senior. Default: mid.

default_level: mid
Level Behavior
junior Define all terms. Use analogies. Explain language features. Show full code snippets with inline comments.
mid Skip basics. Focus on design decisions and trade-offs. Brief code references only.
senior Skip obvious patterns. Focus only on non-obvious choices, edge cases, and architectural trade-offs.

Level can also be specified inline in the request:

  • "explain for a junior", "I'm new to this"junior
  • "I know the basics", "mid level"mid
  • "senior mode", "skip the basics", "just the trade-offs"senior

Workflow

Step 0: Apply User Configuration

Before analyzing, read the configuration above:

  • Load the known_concepts skip list. Any concept in this list will be acknowledged in one sentence instead of fully explained.
  • Detect the skill level: check the user's request first (inline phrases take priority), then fall back to default_level. Apply this level consistently throughout the entire output.
  • If level = senior, route to agents/auditor.md instead of continuing this workflow.

Step 1: Identify Code to Analyze

Use the first applicable mode:

  1. Explicit — User named specific files, a directory, or a module in their request → use those directly. No git needed. Example: "explain src/auth/" or "walk me through api/routes.py".

  2. Recent — No explicit target given, project is a git repo, and git diff HEAD has output → use those changed files (current behavior for post-AI-task learning).

  3. Scan — No explicit target, no usable git diff (legacy project, no recent changes, or not a git repo) → ask the user: "Which file, directory, or module would you like to analyze?" Do not attempt to guess.

The code does not need to be AI-generated. AntiVibe analyzes any code.

Step 2: Analyze Code Structure

For each file:

  • Identify main purpose and responsibilities
  • Note key functions, classes, modules
  • Identify design patterns used (factory, singleton, observer, etc.)
  • Find any complex logic or algorithms

Step 3: Explain Concepts

For each concept/pattern found:

  • What: Plain-language explanation
  • Why: Why this approach was chosen over alternatives
  • When: When to use this pattern (with context)
  • Alternatives: Other approaches and trade-offs
  • Prerequisites: 2–4 foundational concepts the developer must understand first (e.g., "To understand JWT, you need: HTTP request/response, Base64 encoding, cryptographic signing")

Step 4: Find External Resources

Only run this step in full mode. Skip entirely in compact mode.

Search for and include:

  • Official documentation for libraries/frameworks used
  • Quality tutorials or blog posts
  • Video resources (if available)
  • Related concepts for further learning

Step 5: Generate Output

Create markdown file in deep-dive/ folder:

  • Name format: [component]-[timestamp].md
  • Detect output mode from the request or output_mode config (default: compact)
  • Compact mode: Use the compact template. No line-by-line, no resources, no Next Steps. Max 5 files — if more are in scope, summarize extras in one line each and offer to go deeper.
  • Full mode: Use the full template from templates/deep-dive.md. Include all sections. No 5-file limit — analyze every file in scope; for very large inputs, split the output across multiple deep-dive files rather than truncating.
  • Make it educational, not just descriptive

Auto-Trigger Configuration

AntiVibe can be configured to auto-trigger via hooks:

  • SubagentStop: After a Task completes a feature
  • Stop: At session end

To enable auto-trigger, configure hooks in your project (see hooks/hooks.json).

Principles

  1. Why over what - Always explain design decisions
  2. Context matters - Explain when/why to use patterns
  3. Curated resources - Quality links, not random Google results
  4. Phase-aware - Group by implementation phase
  5. Learning path - Suggest next steps for deeper study
  6. Concept mapping - Connect code to underlying CS concepts

Dependencies

Optional scripts in scripts/ folder:

  • capture-phase.sh - Detect implementation phase boundaries
  • analyze-code.sh - Parse code structure
  • find-resources.sh - Search for external resources
  • generate-deep-dive.sh - Create markdown output

These are helpers - you can also do everything via direct code analysis.

Examples

Input: "Explain the auth system Claude wrote" (recent AI code) → Mode: Recent (git diff). Output: deep-dive/auth-system-2026-01-15.md

Input: "Walk me through src/payments/" (explicit target — legacy codebase) → Mode: Explicit. Analyzes files in that directory directly, no git needed.

Input: "Deep dive" (no target, legacy project with no recent changes) → Mode: Scan. Asks: "Which file or module would you like to analyze?"

Input: "Audit this, just the trade-offs" (senior mode) → Routes to agents/auditor.md. Produces architectural audit, not an explanation.

Install via CLI
npx skills add https://github.com/mohi-devhub/antivibe --skill antivibe
Repository Details
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