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Llm Artifacts Detection

by Kevin Anderson · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ Security Clean
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Install in OpenClaw
/install llm-artifacts-detection
Description
Detects common LLM coding agent artifacts in codebases. Identifies test quality issues, dead code, over-abstraction, and verbose LLM style patterns. Use when...
README (SKILL.md)

LLM Artifacts Detection

Detect and flag common patterns introduced by LLM coding agents that reduce code quality.

Detection Categories

Category Reference Key Issues
Tests references/tests-criteria.md DRY violations, library testing, mock boundaries
Dead Code references/dead-code-criteria.md Unused code, TODO/FIXME, backwards compat cruft
Abstraction references/abstraction-criteria.md Over-abstraction, copy-paste drift, over-configuration
Style references/style-criteria.md Obvious comments, defensive overkill, unnecessary types

Agent Prompts

Use these prompts to spawn focused detection agents:

Tests Agent

Analyze the test files for LLM-introduced test quality issues:

1. **DRY Violations**: Look for setup/teardown code repeated across multiple test functions instead of using fixtures or shared helpers. Flag patterns like:
   - Identical object creation in multiple tests
   - Repeated mock configurations
   - Copy-pasted database setup

2. **Library Testing**: Identify tests that validate standard library or framework behavior rather than application code. Signs:
   - No imports from the application codebase
   - Testing built-in functions or third-party library methods
   - Assertions about stdlib behavior

3. **Mock Boundaries**: Flag mocking that's too deep or too shallow:
   - Too deep: Mocking internal implementation details, private methods
   - Too shallow: Mocking at the wrong layer, missing integration points
   - Wrong level: Unit test mocks in integration tests or vice versa

For each issue found, report: [FILE:LINE] ISSUE_TITLE

Dead Code Agent

Scan the codebase for dead code and cleanup opportunities:

1. **Unused Code**: Find functions, classes, and variables with no references:
   - Functions never called
   - Classes never instantiated
   - Module-level variables never read
   - Unreachable code after returns

2. **TODO/FIXME Comments**: Flag all TODO, FIXME, HACK, XXX comments that indicate incomplete work

3. **Backwards Compat Cruft**: Look for patterns suggesting removed features:
   - Variables renamed with _unused, _old, _deprecated suffixes
   - Re-exports only for backwards compatibility
   - Comments like "# removed", "# legacy", "# deprecated"
   - Empty functions/classes kept "for compatibility"

4. **Orphaned Tests**: Tests for code that no longer exists:
   - Test files with no corresponding source
   - Test functions testing deleted features

For each issue found, report: [FILE:LINE] ISSUE_TITLE

Abstraction Agent

Review the codebase for over-engineering introduced by LLM agents:

1. **Over-Abstraction**: Identify unnecessary abstraction layers:
   - Wrapper classes that just delegate to one method
   - Interfaces/protocols with only one implementation
   - Abstract base classes with single concrete class
   - Factory functions that always return the same type

2. **Copy-Paste Drift**: Find 3+ similar code blocks that should be parameterized:
   - Nearly identical functions with minor variations
   - Repeated patterns that could be a single function with parameters
   - Similar class methods across multiple classes

3. **Over-Configuration**: Flag configuration for non-configurable things:
   - Feature flags that are never toggled
   - Environment variables always set to one value
   - Config options with no production variation
   - Overly generic code for single use case

For each issue found, report: [FILE:LINE] ISSUE_TITLE

Style Agent

Check for verbose LLM-style patterns that reduce code clarity:

1. **Obvious Comments**: Comments that restate what the code clearly does:
   - "# increment counter" above counter += 1
   - "# return the result" above return result
   - Docstrings that repeat the function name

2. **Over-Documentation**: Excessive documentation on trivial code:
   - Full docstrings on simple getters/setters
   - Parameter descriptions for obvious args
   - Return value docs for self-evident returns

3. **Defensive Overkill**: Unnecessary defensive programming:
   - try/except around code that cannot fail
   - Null checks on values that can't be null
   - Type checks after type hints guarantee the type
   - Validation of already-validated inputs

4. **Unnecessary Type Hints**: Type hints that add no value:
   - Type hints on obvious literal assignments
   - Redundant hints on variables immediately clear from context
   - Over-annotated internal/local variables

For each issue found, report: [FILE:LINE] ISSUE_TITLE

Gates (reporting)

Run these in order so findings are evidence-bound, not inferred. This is the detection-side instance of the Anti-confabulation gate in the review-verification-protocol skill: every [FILE:LINE] must be echoed from a freshly read buffer in this turn, never inferred from the branch name, directory, or memory.

  1. Anchor — Set FILE and LINE from an opened buffer, read_file, or equivalent; do not rely only on stale search snippets. Pass: LINE is in range for FILE, and the described issue is visible on that line or its immediate neighbors.
  2. TitleISSUE_TITLE states the defect in plain language (about one short sentence), not a proposed fix. Pass: someone opening FILE at LINE can see why the title applies.
  3. Dedup — Before final output, merge rows that share the same FILE:LINE and root cause. Pass: at most one [FILE:LINE] ISSUE_TITLE per distinct defect at that anchor.

Usage

  1. Load this skill when reviewing AI-generated code
  2. If the agent supports subagents, dispatch one per detection category in parallel; otherwise work through the categories sequentially yourself, producing the same [FILE:LINE] ISSUE_TITLE findings.
  3. Use reference files for detailed criteria and examples
  4. Apply Gates (reporting) above, then emit findings as [FILE:LINE] ISSUE_TITLE

When to Apply

  • Cleaning up code written by AI coding agents
  • Post-generation code review
  • Reducing code bloat from iterative AI generation
  • Identifying patterns that reduce maintainability
Usage Guidance
Before installing, understand that this skill is meant to guide an agent through reading code and producing review findings. It does not appear to execute commands, modify files, collect credentials, or send data externally.
Capability Assessment
Purpose & Capability
The stated purpose is detecting LLM-introduced code quality artifacts, and the artifacts contain markdown criteria and prompts for tests, dead code, abstraction, and style review.
Instruction Scope
The skill asks the agent to inspect relevant code and optionally use parallel subagents, but the scope is limited to review findings with evidence-backed file and line anchors.
Install Mechanism
The package contains only markdown files, declares no dependencies, and has no install hooks, scripts, or executable components.
Credentials
Reading project files is proportionate to the code-review purpose; no network access, credential access, broad local indexing beyond the target codebase, or mutation instructions were found.
Persistence & Privilege
No persistence, privilege escalation, background worker setup, credential/session use, or automatic file modification behavior is present.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install llm-artifacts-detection
  3. After installation, invoke the skill by name or use /llm-artifacts-detection
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
Initial release of llm-artifacts-detection. - Detects code artifacts commonly introduced by LLM coding agents, including test issues, dead code, over-abstraction, and verbose/unnatural style patterns. - Provides focused agent prompts for identifying defects in tests, dead code, abstraction, and style. - Ensures findings are evidence-bound, using a reporting protocol with clear anchoring, titling, and deduplication requirements. - Supports both parallel (subagent) and sequential review processes. - Includes reference files for precise detection criteria and examples.
Metadata
Slug llm-artifacts-detection
Version 1.0.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is Llm Artifacts Detection?

Detects common LLM coding agent artifacts in codebases. Identifies test quality issues, dead code, over-abstraction, and verbose LLM style patterns. Use when... It is an AI Agent Skill for Claude Code / OpenClaw, with 30 downloads so far.

How do I install Llm Artifacts Detection?

Run "/install llm-artifacts-detection" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Llm Artifacts Detection free?

Yes, Llm Artifacts Detection is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Llm Artifacts Detection support?

Llm Artifacts Detection is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Llm Artifacts Detection?

It is built and maintained by Kevin Anderson (@anderskev); the current version is v1.0.0.

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