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omen

io.github.panbanda/omen

Multi-language code analysis for complexity, debt, hotspots, ownership, and defect prediction

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Omen

Omen - Code Analysis CLI

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Your AI writes code without knowing where the landmines are.

Omen gives AI assistants the context they need: complexity hotspots, hidden dependencies, defect-prone files, and self-admitted debt. One command surfaces what's invisible.

Why "Omen"? An omen is a sign of things to come - good or bad. Your codebase is full of omens: low complexity and clean architecture signal smooth sailing ahead, while high churn, technical debt, and code clones warn of trouble brewing. Omen surfaces these signals so you can act before that "temporary fix" celebrates its third anniversary in production.


Features

Complexity Analysis - How hard your code is to understand and test

There are two types of complexity:

  • Cyclomatic Complexity counts the number of different paths through your code. Every if, for, while, or switch creates a new path. A function with cyclomatic complexity of 10 means there are 10 different ways to run through it. The higher the number, the more test cases you need to cover all scenarios.

  • Cognitive Complexity measures how hard code is for a human to read. It penalizes deeply nested code (like an if inside a for inside another if) more than flat code. Two functions can have the same cyclomatic complexity, but the one with deeper nesting will have higher cognitive complexity because it's harder to keep track of.

Why it matters: Research shows that complex code has more bugs and takes longer to fix. McCabe's original 1976 paper found that functions with complexity over 10 are significantly harder to maintain. SonarSource's cognitive complexity builds on this by measuring what actually confuses developers.

[!TIP] Keep cyclomatic complexity under 10 and cognitive complexity under 15 per function.

Self-Admitted Technical Debt (SATD) - Comments where developers admit they took shortcuts

When developers write TODO: fix this later or HACK: this is terrible but works, they're creating technical debt and admitting it. Omen finds these comments and groups them by type:

CategoryMarkersWhat it means
DesignHACK, KLUDGE, SMELLArchitecture shortcuts that need rethinking
DefectBUG, FIXME, BROKENKnown bugs that haven't been fixed
RequirementTODO, FEATMissing features or incomplete implementations
TestFAILING, SKIP, DISABLEDTests that are broken or turned off
PerformanceSLOW, OPTIMIZE, PERFCode that works but needs to be faster
SecuritySECURITY, VULN, UNSAFEKnown security issues

Why it matters: Potdar and Shihab's 2014 study found that SATD comments often stay in codebases for years. The longer they stay, the harder they are to fix because people forget the context. Maldonado and Shihab (2015) showed that design debt is the most common and most dangerous type.

[!TIP] Review SATD weekly. If a TODO is older than 6 months, either fix it or delete it.

Dead Code Detection - Code that exists but never runs

Dead code includes:

  • Functions that are never called
  • Variables that are assigned but never used
  • Classes that are never instantiated
  • Code after a return statement that can never execute

Why it matters: Dead code isn't just clutter. It confuses new developers who think it must be important. It increases build times and binary sizes. Worst of all, it can hide bugs - if someone "fixes" dead code thinking it runs, they've wasted time. Romano et al. (2020) found that dead code is a strong predictor of other code quality problems.

[!TIP] Delete dead code. Version control means you can always get it back if needed.

Git Churn Analysis - How often files change over time

Churn looks at your git history and counts:

  • How many times each file was modified
  • How many lines were added and deleted
  • Which files change together

Files with high churn are "hotspots" - they're constantly being touched, which could mean they're:

  • Central to the system (everyone needs to modify them)
  • Poorly designed (constant bug fixes)
  • Missing good abstractions (features keep getting bolted on)

Why it matters: Nagappan and Ball's 2005 research at Microsoft found that code churn is one of the best predictors of bugs. Files that change a lot tend to have more defects. Combined with complexity data, churn helps you find the files that are both complicated AND frequently modified - your highest-risk code.

[!TIP] If a file has high churn AND high complexity, prioritize refactoring it.

Code Clone Detection - Duplicated code that appears in multiple places

There are three types of clones:

TypeDescriptionExample
Type-1Exact copies (maybe different whitespace/comments)Copy-pasted code
Type-2Same structure, different namesSame function with renamed variables
Type-3Similar code with some modificationsFunctions that do almost the same thing

Why it matters: When you fix a bug in one copy, you have to remember to fix all the other copies too. Juergens et al. (2009) found that cloned code has significantly more bugs because fixes don't get applied consistently. The more clones you have, the more likely you'll miss one during updates.

[!TIP] Anything copied more than twice should probably be a shared function. Aim for duplication ratio under 5%.

Defect Prediction - The likelihood that a file contains bugs

Omen combines multiple signals to predict defect probability using PMAT-weighted metrics:

  • Process metrics (churn frequency, ownership diffusion)
  • Metrics (cyclomatic/cognitive complexity)
  • Age (code age and stability)
  • Total size (lines of code)

Each file gets a risk score from 0% to 100%.

Why it matters: You can't review everything equally. Menzies et al. (2007) showed that defect prediction helps teams focus testing and code review on the files most likely to have problems. Rahman et al. (2014) found that even simple models outperform random file selection for finding bugs.

[!TIP] Prioritize code review for files with >70% defect probability.

Change Risk Analysis (JIT) - Predict which commits are likely to introduce bugs

Just-in-Time (JIT) defect prediction analyzes recent commits to identify risky changes before they cause problems. Unlike file-level prediction, JIT operates at the commit level using factors from Kamei et al. (2013):

FactorNameWhat it measures
LALines AddedMore additions = more risk
LDLines DeletedDeletions are generally safer
LTLines in Touched FilesLarger files = more risk
FIXBug FixBug fix commits indicate problematic areas
NDEVNumber of DevelopersMore developers on files = more risk
AGEAverage File AgeFile stability indicator
NUCUnique ChangesChange entropy = higher risk
EXPDeveloper ExperienceLess experience = more risk

Each commit gets a risk score from 0.0 to 1.0:

  • High risk (>0.7): Prioritize careful review
  • Medium risk (0.4-0.7): Worth extra attention
  • Low risk (<0.4): Standard review process

Why it matters: Kamei et al. (2013) demonstrated that JIT prediction catches risky changes at commit time, before bugs propagate. Zeng et al. (2021) showed that simple JIT models match deep learning accuracy (~65%) with better interpretability.

[!TIP] Run omen analyze changes before merging PRs to identify commits needing extra review.

Technical Debt Gradient (TDG) - A composite "health score" for each file

TDG combines multiple metrics into a single score (0-100 scale, higher is better):

ComponentWeightWhat it measures
Structural Complexity20%Cyclomatic complexity and nesting depth
Semantic Complexity15%Cognitive complexity
Duplication15%Amount of cloned code
Coupling15%Dependencies on other modules
Hotspot10%Churn x complexity interaction
Temporal Coupling10%Co-change patterns with other files
Consistency10%Code style and pattern adherence
Documentation5%Comment coverage

Why it matters: Technical debt is like financial debt - a little is fine, too much kills you. Cunningham coined the term in 1992, and Kruchten et al. (2012) formalized how to measure and manage it. TDG gives you a single number to track over time and compare across files.

[!TIP] Fix files with scores below 70 before adding new features. Track average TDG over time - it should go up, not down.

Dependency Graph - How your modules connect to each other

Omen builds a graph showing which files import which other files, then calculates:

  • PageRank: Which files are most "central" (many things depend on them)
  • Betweenness: Which files are "bridges" between different parts of the codebase
  • Coupling: How interconnected modules are

Why it matters: Highly coupled code is fragile - changing one file breaks many others. Parnas's 1972 paper on modularity established that good software design minimizes dependencies between modules. The dependency graph shows you where your architecture is clean and where it's tangled.

[!TIP] Files with high PageRank should be especially stable and well-tested. Consider breaking up files that appear as "bridges" everywhere.

Hotspot Analysis - High-risk files where complexity meets frequent changes

Hotspots are files that are both complex AND frequently modified. A simple file that changes often is probably fine - it's easy to work with. A complex file that rarely changes is also manageable - you can leave it alone. But a complex file that changes constantly? That's where bugs breed.

Omen calculates hotspot scores using the geometric mean of normalized churn and complexity:

hotspot = sqrt(churn_percentile * complexity_percentile)

Both factors are normalized against industry benchmarks using empirical CDFs, so scores are comparable across projects:

  • Churn percentile - Where this file's commit count ranks against typical OSS projects
  • Complexity percentile - Where the average cognitive complexity ranks against industry benchmarks
Hotspot ScoreSeverityAction
>= 0.6CriticalPrioritize immediately
>= 0.4HighSchedule for review
>= 0.25ModerateMonitor
< 0.25LowHealthy

Why it matters: Adam Tornhill's "Your Code as a Crime Scene" introduced hotspot analysis as a way to find the most impactful refactoring targets. His research shows that a small percentage of files (typically 4-8%) contain most of the bugs. Graves et al. (2000) and Nagappan et al. (2005) demonstrated that relative code churn is a strong defect predictor.

[!TIP] Start refactoring with your top 3 hotspots. Reducing complexity in high-churn files has the highest ROI.

Temporal Coupling - Files that change together reveal hidden dependencies

When two files consistently change in the same commits, they're temporally coupled. This often reveals:

  • Hidden dependencies not visible in import statements
  • Logical coupling where a change in one file requires a change in another
  • Accidental coupling from copy-paste or inconsistent abstractions

Omen analyzes your git history to find file pairs that change together:

Coupling StrengthMeaning
> 80%Almost always change together - likely tight dependency
50-80%Frequently coupled - investigate the relationship
20-50%Moderately coupled - may be coincidental
< 20%Weakly coupled - probably independent

Why it matters: Ball et al. (1997) first studied co-change patterns at AT&T and found they reveal architectural violations invisible to static analysis. Beyer and Noack (2005) showed that temporal coupling predicts future changes - if files changed together before, they'll likely change together again.

[!TIP] If two files have >50% temporal coupling but no import relationship, consider extracting a shared module or merging them.

Code Ownership/Bus Factor - Knowledge concentration and team risk

Bus factor asks: "How many people would need to be hit by a bus before this code becomes unmaintainable?" Low bus factor means knowledge is concentrated in too few people.

Omen uses git blame to calculate:

  • Primary owner - Who wrote most of the code
  • Ownership ratio - What percentage one person owns
  • Contributor count - How many people have touched the file
  • Bus factor - Number of major contributors (>5% of code)
Ownership RatioRisk LevelWhat it means
> 90%High riskSingle point of failure
70-90%Medium riskLimited knowledge sharing
50-70%Low riskHealthy distribution
< 50%Very lowBroad ownership

Why it matters: Bird et al. (2011) found that code with many minor contributors has more bugs than code with clear ownership, but code owned by a single person creates organizational risk. The sweet spot is 2-4 significant contributors per module. Nagappan et al. (2008) showed that organizational metrics (like ownership) predict defects better than code metrics alone.

[!TIP] Files with >80% single ownership should have documented knowledge transfer. Critical files should have at least 2 people who understand them.

CK Metrics - Object-oriented design quality measurements

The Chidamber-Kemerer (CK) metrics suite measures object-oriented design quality:

MetricNameWhat it measuresThreshold
WMCWeighted Methods per ClassSum of method complexities< 20
CBOCoupling Between ObjectsNumber of other classes used< 10
RFCResponse for ClassMethods that can be invoked< 50
LCOMLack of Cohesion in MethodsMethods not sharing fields< 3
DITDepth of Inheritance TreeInheritance chain length< 5
NOCNumber of ChildrenDirect subclasses< 6

LCOM (Lack of Cohesion) is particularly important. Low LCOM means methods in a class use similar instance variables - the class is focused. High LCOM means the class is doing unrelated things and should probably be split.

Why it matters: Chidamber and Kemerer's 1994 paper established these metrics as the foundation of OO quality measurement. Basili et al. (1996) validated them empirically, finding that WMC and CBO strongly correlate with fault-proneness. These metrics have been cited thousands of times and remain the standard for OO design analysis.

[!TIP] Classes violating multiple CK thresholds are candidates for refactoring. High WMC + high LCOM often indicates a "god class" that should be split.

Repository Map - PageRank-ranked symbol index for LLM context

Repository maps provide a compact summary of your codebase's important symbols, ranked by structural importance using PageRank. This is designed for LLM context windows - you get the most important functions and types first.

For each symbol, the map includes:

  • Name and kind (function, class, method, interface)
  • File location and line number
  • Signature for quick understanding
  • PageRank score based on how many other symbols depend on it
  • In/out degree showing dependency connections

Why it matters: LLMs have limited context windows. Stuffing them with entire files wastes tokens on less important code. PageRank, developed by Brin and Page (1998), identifies structurally important nodes in a graph. Applied to code, it surfaces the symbols that are most central to understanding the codebase.

Scalability: Omen uses a sparse power iteration algorithm for PageRank computation, scaling linearly with the number of edges O(E) rather than quadratically with nodes O(V^2). This enables fast analysis of large monorepos with 25,000+ symbols in under 30 seconds.

Example output:

# Repository Map (Top 20 symbols by PageRank)

## parser.ParseFile (function) - pkg/parser/parser.go:45
  PageRank: 0.0823 | In: 12 | Out: 5
  func ParseFile(path string) (*Result, error)

## models.TdgScore (struct) - pkg/models/tdg.go:28
  PageRank: 0.0651 | In: 8 | Out: 3
  type TdgScore struct

[!TIP] Use omen context --repo-map --top 50 to generate context for LLM prompts. The top 50 symbols usually capture the essential architecture.

Feature Flag Detection - Find and track feature flags across your codebase

Feature flags are powerful but dangerous. They let you ship code without enabling it, run A/B tests, and roll out features gradually. But they accumulate. That "temporary" flag from 2019 is still in production. The flag you added for a one-week experiment is now load-bearing infrastructure.

Omen detects feature flag usage across popular providers:

ProviderLanguagesWhat it finds
LaunchDarklyJS/TS, Python, Go, Java, Rubyvariation(), boolVariation() calls
SplitJS/TS, Python, Go, Java, RubygetTreatment() calls
UnleashJS/TS, Python, Go, Java, RubyisEnabled(), getVariant() calls
PostHogJS/TS, Python, Go, RubyisFeatureEnabled(), getFeatureFlag() calls
FlipperRubyenabled?(), Flipper.enabled?() calls

For each flag, Omen reports:

  • Flag key - The identifier used in code
  • Provider - Which SDK is being used
  • References - All locations where the flag is checked
  • Staleness - When the flag was first and last modified (with git history)

Custom providers: For in-house feature flag systems, define custom tree-sitter queries in your omen.toml:

[[feature_flags.custom_providers]]
name = "feature"
languages = ["ruby"]
query = '''
(call
  receiver: (constant) @receiver
  (#eq? @receiver "Feature")
  method: (identifier) @method
  (#match? @method "^(enabled\\?|get_feature_flag)$")
  arguments: (argument_list
    .
    (simple_symbol) @flag_key))
'''

Why it matters: Meinicke et al. (2020) studied feature flags across open-source projects and found that flag ownership (the developer who introduces a flag also removes it) correlates with shorter flag lifespans, helping keep technical debt in check. Rahman et al. (2018) studied Google Chrome's 12,000+ feature toggles and found that while they enable rapid releases and flexible deployment, they also introduce technical debt and additional maintenance burden. Regular flag audits prevent your codebase from becoming a maze of unused toggles.

[!TIP] Audit feature flags monthly. Remove flags older than 90 days for experiments, 14 days for release flags. Track flag staleness in your CI pipeline.

Repository Score - Composite health score (0-100)

Omen computes a composite repository health score (0-100) that combines multiple analysis dimensions. This provides a quick overview of codebase quality and enables quality gates in CI/CD.

Score Components:

ComponentWeightWhat it measures
Complexity25%% of functions exceeding complexity thresholds
Duplication20%Code clone ratio with non-linear penalty curve
Defect Risk25%Average defect probability across files
Technical Debt15%Severity-weighted SATD density per 1K LOC
Coupling10%Cyclic deps, SDP violations, and instability
Smells5%Architectural smells relative to codebase size

Normalization Philosophy:

Each component metric is normalized to a 0-100 scale where higher is always better. The normalization functions are designed to be:

  1. Fair - Different metrics with similar severity produce similar scores
  2. Calibrated - Based on industry benchmarks from SonarQube, CodeClimate, and CISQ
  3. Non-linear - Gentle penalties for minor issues, steep for severe ones
  4. Severity-aware - Weight items by impact, not just count

For example, technical debt uses severity-weighted scoring:

  • Critical (SECURITY, VULN): 4x weight
  • High (FIXME, BUG): 2x weight
  • Medium (HACK, REFACTOR): 1x weight
  • Low (TODO, NOTE): 0.25x weight

This prevents low-severity items (like documentation TODOs) from unfairly dragging down scores.

Usage:

# Compute repository score
omen score .

# JSON output for CI integration
omen score . -f json

Adjusting thresholds:

Achieving a score of 100 is nearly impossible for real-world codebases. Set realistic thresholds in omen.toml based on your codebase:

[score.thresholds]
score = 80        # Overall score minimum
complexity = 85   # Function complexity
duplication = 65  # Code clone ratio (often the hardest to improve)
defect = 80       # Defect probability
debt = 75         # Technical debt density
coupling = 70     # Module coupling
smells = 90       # Architectural smells

Run omen score to see your current scores, then set thresholds slightly below those values. Gradually increase them over time.

Enforcing on commit with Lefthook:

Add to lefthook.yml:

pre-push:
  commands:
    omen-score:
      run: omen score

This prevents pushing code that fails your quality thresholds.

Why it matters: A single health score enables quality gates, tracks trends over time, and provides quick codebase assessment. The weighted composite ensures that critical issues (defects, complexity) have more impact than cosmetic ones.

[!TIP] Start with achievable thresholds and increase them as you improve your codebase. Duplication is often the hardest metric to improve in legacy code.

MCP Server - LLM tool integration via Model Context Protocol

Omen includes a Model Context Protocol (MCP) server that exposes all analyzers as tools for LLMs like Claude. This enables AI assistants to analyze codebases directly through standardized tool calls.

Available tools:

  • analyze_complexity - Cyclomatic and cognitive complexity
  • analyze_satd - Self-admitted technical debt detection
  • analyze_deadcode - Unused functions and variables
  • analyze_churn - Git file change frequency
  • analyze_duplicates - Code clones detection
  • analyze_defect - File-level defect probability (PMAT)
  • analyze_changes - Commit-level change risk (JIT)
  • analyze_tdg - Technical Debt Gradient scores
  • analyze_graph - Dependency graph generation
  • analyze_hotspot - High churn + complexity files
  • analyze_temporal_coupling - Files that change together
  • analyze_ownership - Code ownership and bus factor
  • analyze_cohesion - CK OO metrics
  • analyze_repo_map - PageRank-ranked symbol map
  • analyze_smells - Architectural smell detection
  • analyze_flags - Feature flag detection and staleness

Each tool includes detailed descriptions with interpretation guidance, helping LLMs understand what metrics mean and when to use each analyzer.

Tool outputs default to TOON (Token-Oriented Object Notation) format, a compact serialization designed for LLM workflows that reduces token usage by 30-60% compared to JSON while maintaining high comprehension accuracy. JSON and Markdown formats are also available.

Why it matters: LLMs work best when they have access to structured tools rather than parsing unstructured output. MCP is the emerging standard for LLM tool integration, supported by Claude Desktop and other AI assistants. TOON output maximizes the information density within context windows.

[!TIP] Configure omen as an MCP server in your AI assistant to enable natural language queries like "find the most complex functions" or "show me technical debt hotspots."

Supported Languages

Go, Rust, Python, TypeScript, JavaScript, TSX/JSX, Java, C, C++, C#, Ruby, PHP, Bash, and any other tree-sitter supported language

Installation

Homebrew (macOS/Linux)

brew install panbanda/omen/omen

Go Install

go install github.com/panbanda/omen/cmd/omen@latest

Download Binary

Download pre-built binaries from the releases page.

Build from Source

git clone https://github.com/panbanda/omen.git
cd omen
go build -o omen ./cmd/omen

Quick Start

# Run all analyzers
omen analyze

# Check out the analyzers
omen analyze --help

Configuration

Create omen.toml or .omen/omen.toml (supports yaml, json and toml):

omen init

See omen.example.toml for all options.

MCP Server

Omen includes a Model Context Protocol (MCP) server that exposes all analyzers as tools for LLMs like Claude. This enables AI assistants to analyze codebases directly.

Claude Desktop

Add to your Claude Desktop config (~/Library/Application Support/Claude/claude_desktop_config.json on macOS):

{
  "mcpServers": {
    "omen": {
      "command": "omen",
      "args": ["mcp"]
    }
  }
}

Claude Code

claude mcp add omen -- omen mcp

Example Usage

Once configured, you can ask Claude:

  • "Analyze the complexity of this codebase"
  • "Find technical debt in the src directory"
  • "What are the hotspot files that need refactoring?"
  • "Show me the bus factor risk for this project"
  • "Find stale feature flags that should be removed"

Claude Code Plugin

Omen is available as a Claude Code plugin, providing analysis-driven skills that guide Claude through code analysis workflows.

Installation

/plugin install panbanda/omen

Verify installation with /skills to see available Omen skills.

Prerequisites

Skills require the Omen MCP server to be configured (see MCP Server section above).

Contributing

  1. Fork the repository
  2. Create your feature branch (git checkout -b feature/amazing-feature)
  3. Commit your changes (git commit -am 'Add amazing feature')
  4. Push to the branch (git push origin feature/amazing-feature)
  5. Create a Pull Request

Acknowledgments

Omen draws heavy inspiration from paiml-mcp-agent-toolkit - a fantastic CLI and comprehensive suite of code analysis tools for LLM workflows. If you're doing serious AI-assisted development, it's worth checking out. Omen exists as a streamlined alternative for teams who want a focused subset of analyzers without the additional dependencies. If you're looking for a Rust-focused MCP/agent generator as an alternative to Python, it's definitely worth checking out.

License

MIT License - see LICENSE for details.

OCI
ghcr.io/panbanda/omen:1.5.0
Install Command
docker pull ghcr.io/panbanda/omen:1.5.0:undefined