skim

skill
SUMMARY

The most intelligent context optimization engine for coding agents. Code-aware AST parsing across 12 languages. Command rewriting. Test, build, and git output compression. Token budget cascading. Built in Rust.

README.md

Skim: The Most Intelligent Context Optimization Engine for Coding Agents

Code skimming. Command rewriting. Test, build, and git output compression. Token budget cascading. 17 languages. 14ms for 3,000 lines. Built in Rust.

Other tools filter terminal noise. Skim understands your code. It parses ASTs across 17 languages, strips implementation while preserving architecture, then optimizes every other type of context your agent consumes: test output, build errors, git diffs, and raw commands. 14ms for 3,000 lines. 48x faster on cache hits.

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License: MIT

Why Skim?

Context capacity is not the bottleneck. Attention is. Every token you send to an LLM dilutes its focus. Research consistently shows attention dilution in long contexts -- models lose track of critical details even within their window. More tokens means higher latency, degraded recall, and weaker reasoning. Past a threshold, adding context makes outputs worse. While other tools stop at filtering command output, Skim parses your actual code structure and optimizes the full spectrum of agent context: code, test output, build errors, git diffs, and commands. Deeper, broader, and smarter than anything else available.

Take a typical 80-file TypeScript project: 63,000 tokens. That contains maybe 5,000 tokens of actual signal. The rest is implementation noise the model doesn't need for architectural reasoning.

80% of the time, the model doesn't need implementation details. It doesn't care how you loop through users or validate emails. It needs to understand what your code does and how pieces connect.

That's where Skim comes in.

Mode Tokens Reduction Use Case
Full 63,198 0% Original source code
Structure 25,119 60.3% Understanding architecture
Signatures 7,328 88.4% API documentation
Types 5,181 91.8% Type system analysis

For example:

// Before: Full implementation (100 tokens)
export function processUser(user: User): Result {
    const validated = validateUser(user);
    if (!validated) throw new Error("Invalid");
    const normalized = normalizeData(user);
    return await saveToDatabase(normalized);
}

// After: Structure only (12 tokens)
export function processUser(user: User): Result { /* ... */ }

One command. 60-90% smaller. Your 63,000-token codebase? Now 5,000 tokens. Fits comfortably in a single prompt with room for your question.

That same 80-file project that wouldn't fit? Now you can ask: "Explain the entire authentication flow" or "How do these services interact?" β€” and the AI actually has enough context to answer.

Features

Code Skimming (the original, still unmatched)

  • 17 languages including TypeScript, JavaScript, Python, Rust, Go, Java, C, C++, C#, Ruby, SQL, Kotlin, Swift, Markdown, JSON, YAML, TOML
  • 6 transformation modes from full to minimal to pseudo to structure to signatures to types (15-95% reduction)
  • 14.6ms for 3,000-line files. 48x faster on cache hits
  • Token budget cascading that automatically selects the most aggressive mode fitting your budget
  • Parallel processing with multi-file globs via rayon

Command Rewriting (skim init)

  • PreToolUse hook rewrites cat, head, tail, cargo test, npm test, git diff into skim equivalents
  • Two-layer rule system with declarative prefix-swap and custom argument handlers
  • One command installs the hook for automatic, invisible context savings

Test Output Compression (skim test)

  • Parses and compresses output from cargo, go, vitest, jest, pytest
  • Extracts failures, assertions, pass/fail counts while stripping noise
  • Three-tier degradation from structured parse to regex fallback to passthrough

Build Output Compression (skim build)

  • Parses cargo, clippy, tsc build output
  • Extracts errors, warnings, and summaries

Git Output Compression (skim git)

  • Compresses git status, git diff, git log
  • Flag-aware passthrough when user already specifies compact formats

Intelligence

  • skim discover scans agent session history for optimization opportunities
  • skim learn detects CLI error-retry patterns and generates correction rules
  • Output guardrail ensures compressed output is never larger than the original

Installation

Try it (no install required)

npx rskim file.ts

Install globally (recommended for regular use)

# Via Homebrew (macOS/Linux)
brew install dean0x/tap/skim

# Via npm
npm install -g rskim

# Via Cargo
cargo install rskim

Note: Use npx for trying it out. For regular use, install globally to avoid npx overhead (~100-500ms per invocation).

From Source

git clone https://github.com/dean0x/skim.git
cd skim
cargo build --release
# Binary at target/release/skim

Quick Start

# Try it with npx (no install)
npx rskim src/app.ts

# Or install globally for better performance
npm install -g rskim

# Extract structure from single file (auto-detects language)
skim src/app.ts

# Process entire directory recursively (auto-detects all languages)
skim src/

# Process current directory
skim .

# Process multiple files with glob patterns
skim 'src/**/*.ts'

# Process all TypeScript files with custom parallelism
skim '*.{js,ts}' --jobs 4

# Get only function signatures from multiple files
skim 'src/*.ts' --mode signatures --no-header

# Extract type definitions
skim src/types.ts --mode types

# Extract markdown headers (H1-H3 for structure, H1-H6 for signatures/types)
skim README.md --mode structure

# Pipe to other tools
skim src/app.ts | bat -l typescript

# Read from stdin (REQUIRES --language flag)
cat app.ts | skim - --language=typescript

# Override language detection for unusual file extensions
skim weird.inc --language=typescript

# Clear cache
skim --clear-cache

# Disable caching for pure transformation
skim file.ts --no-cache

# Show token reduction statistics
skim file.ts --show-stats

Usage

# Basic usage (auto-detects language)
skim file.ts                    # Single file
skim src/                       # Directory (recursive)
skim 'src/**/*.ts'             # Glob pattern

# With options
skim file.ts --mode signatures  # Different mode
skim src/ --jobs 8             # Parallel processing
skim - --language typescript   # Stdin (requires --language)

Common options:

  • -m, --mode - Transformation mode: structure (default), signatures, types, full, minimal, pseudo
  • -l, --language - Override auto-detection (required for stdin only)
  • -j, --jobs - Parallel processing threads (default: CPU cores)
  • --no-cache - Disable caching
  • --show-stats - Show token reduction stats
  • --disable-analytics - Disable analytics recording

πŸ“– Full Usage Guide β†’

Transformation Modes

Skim offers six modes with different levels of aggressiveness:

Mode Reduction What's Kept Use Case
Full 0% Everything (original source) Testing/comparison
Minimal 15-30% All code, doc comments Light cleanup
Pseudo 30-50% Logic flow, names, values LLM context with logic
Structure 70-80% Signatures, types, classes, imports Understanding architecture
Signatures 85-92% Only callable signatures API documentation
Types 90-95% Only type definitions Type system analysis
skim file.ts --mode structure   # Default
skim file.ts --mode pseudo      # Pseudocode (strips types, visibility, decorators)
skim file.ts --mode signatures  # More aggressive
skim file.ts --mode types       # Most aggressive
skim file.ts --mode full        # No transformation

Note on JSON/YAML/TOML files: JSON, YAML, and TOML always use structure extraction regardless of mode. Since they are data (not code), there are no "signatures" or "types" to extractβ€”only structure. All modes produce identical output for these file types.

πŸ“– Detailed Mode Guide β†’

Supported Languages

Language Status Extensions Notes
TypeScript βœ… .ts, .tsx Excellent grammar
JavaScript βœ… .js, .jsx Full ES2024 support
Python βœ… .py, .pyi Complete coverage
Rust βœ… .rs Up-to-date grammar
Go βœ… .go Stable
Java βœ… .java Good coverage
C βœ… .c, .h Full C11 support
C++ βœ… .cpp, .hpp, .cc, .hh, .cxx, .hxx C++20 support
Markdown βœ… .md, .markdown Header extraction
JSON βœ… .json Structure extraction (serde)
YAML βœ… .yaml, .yml Multi-document support (serde)
TOML βœ… .toml Structure extraction (toml)
C# βœ… .cs Full grammar, structs/interfaces
Ruby βœ… .rb Classes, modules, methods
SQL βœ… .sql DDL/DML via tree-sitter-sequel
Kotlin βœ… .kt, .kts Data classes, coroutines, sealed classes
Swift βœ… .swift Protocols, generics, SwiftUI structs

Examples

TypeScript

// Input
class UserService {
    async findUser(id: string): Promise<User> {
        const user = await db.users.findOne({ id });
        if (!user) throw new NotFoundError();
        return user;
    }
}

// Output (structure mode)
class UserService {
    async findUser(id: string): Promise<User> { /* ... */ }
}

Python

# Input
def process_data(items: List[Item]) -> Dict[str, Any]:
    """Process items and return statistics"""
    results = {}
    for item in items:
        results[item.id] = calculate_metrics(item)
    return results

# Output (structure mode)
def process_data(items: List[Item]) -> Dict[str, Any]: { /* ... */ }

JSON

// Input
{
  "user": {
    "profile": {
      "name": "Jane Smith",
      "age": 28,
      "tags": ["admin", "verified"]
    },
    "settings": {
      "theme": "dark",
      "notifications": true
    }
  },
  "items": [
    {"id": 1, "price": 100},
    {"id": 2, "price": 200}
  ]
}

// Output (structure mode)
{
  user: {
    profile: {
      name,
      age,
      tags
    },
    settings: {
      theme,
      notifications
    }
  },
  items: {
    id,
    price
  }
}

YAML (Multi-Document)

# Input (Kubernetes manifests)
---
apiVersion: v1
kind: ConfigMap
metadata:
  name: app-config
data:
  database_url: postgres://localhost:5432
---
apiVersion: apps/v1
kind: Deployment
metadata:
  name: web-app
spec:
  replicas: 3

# Output (structure mode)
apiVersion
kind
metadata:
  name
data:
  database_url
---
apiVersion
kind
metadata:
  name
spec:
  replicas

πŸ“– More Examples (All Languages) β†’

Use Cases

LLM Context Optimization

Reduce codebase size by 60-90% to fit in LLM context windows:

skim src/ --no-header | llm "Analyze this codebase"
skim src/app.ts | llm "Review this architecture"

API Documentation

Extract function signatures for documentation:

skim src/ --mode signatures > api-docs.txt
skim 'lib/**/*.py' --mode signatures > python-api.txt

Type System Analysis

Focus on type definitions and interfaces:

skim src/ --mode types --no-header
skim 'src/**/*.ts' --mode types

Code Navigation

Quick overview without implementation details:

skim large-file.py | less
skim src/auth/ | less

πŸ“– 10 Detailed Use Cases β†’

Claude Code Plugin

Skim includes a Skimmer plugin for Claude Code β€” a codebase orientation agent that maps project structure, finds task-relevant code, and generates integration plans.

Install

Option A: Via the skim marketplace

/plugin marketplace add dean0x/skim
/plugin install skimmer

Option B: Direct from the standalone repo

/plugin marketplace add dean0x/skimmer

Note: dean0x/skim is a custom marketplace. Unlike the official Claude Code plugin directory, custom marketplaces must be added explicitly before plugins become available.

Usage

# Orient for a specific task
/skim add JWT authentication

# General codebase orientation
/skim

The Skimmer agent uses rskim to extract code structure, then maps relevant files, signatures, and integration points for your task.

Caching

Caching is enabled by default for 40-50x faster repeated processing.

Performance Impact

Scenario Time Speedup
First run (no cache) 244ms 1.0x
Second run (cached) 5ms 48.8x faster!

Cache Management

ls ~/.cache/skim/           # View cache
skim --clear-cache          # Clear cache
skim file.ts --no-cache     # Disable for one run

How it works:

  • Cache key: SHA256(file path + mtime + mode)
  • Automatic invalidation when files change
  • Platform-specific cache directory

When to disable caching:

  • One-time LLM transformations
  • Stdin processing
  • Disk-constrained environments

πŸ“– Caching Internals β†’

Token Counting

See exactly how much context you're saving with --show-stats:

skim file.ts --show-stats
# [skim] 1,000 tokens β†’ 200 tokens (80.0% reduction)

skim 'src/**/*.ts' --show-stats
# [skim] 15,000 tokens β†’ 3,000 tokens (80.0% reduction) across 50 file(s)

Uses OpenAI's tiktoken (cl100k_base for GPT-3.5/GPT-4). Output to stderr for clean piping.

Analytics

Skim automatically tracks token savings from every invocation in a local SQLite database (~/.cache/skim/analytics.db). View your savings with the stats subcommand:

skim stats                       # All-time dashboard
skim stats --since 7d            # Last 7 days
skim stats --format json         # Machine-readable output
skim stats --cost                # Include cost savings estimates
skim stats --clear               # Reset analytics data

Environment variables:

Variable Description
SKIM_DISABLE_ANALYTICS Set to 1, true, or yes to disable recording
SKIM_INPUT_COST_PER_MTOK Override $/MTok for cost estimates (default: 3.0)
SKIM_ANALYTICS_DB Override analytics database path

Analytics recording is fire-and-forget (non-blocking) and does not affect command performance. Data is automatically pruned after 90 days.

Security

Skim includes built-in DoS protections:

  • Max recursion depth: 500 levels
  • Max input size: 50MB per file
  • Max AST nodes: 100,000 nodes
  • Path traversal protection: Rejects malicious paths
  • No code execution: Only parses, never runs code

πŸ“– Security Details & Best Practices β†’
πŸ”’ Vulnerability Disclosure β†’

Architecture

Skim uses a clean, streaming architecture:

Language Detection β†’ tree-sitter Parser β†’ Transformation β†’ Streaming Output

Design principles:

  • Streaming-first: Output to stdout, no intermediate files
  • Zero-copy: Uses &str slices to minimize allocations
  • Error-tolerant: Handles incomplete/broken code gracefully
  • Type-safe: Explicit error handling, no panics

πŸ“– Architecture Deep Dive β†’

Performance

Target: <50ms for 1000-line files βœ… Exceeded (14.6ms for 3000-line files)

Benchmark Results

File Size Lines Time Speed
Small 300 1.3ms 4.3Β΅s/line
Medium 1500 6.4ms 4.3Β΅s/line
Large 3000 14.6ms 4.9Β΅s/line

Real-World Token Reduction

Production TypeScript Codebase:

Mode Tokens Reduction LLM Context Multiplier
Full 63,198 0% 1.0x
Structure 25,119 60.3% 2.5x more code
Signatures 7,328 88.4% 8.6x more code
Types 5,181 91.8% 12.2x more code

πŸ“– Full Performance Benchmarks β†’

Development

Quick Start

# Build and test
cargo build --release
cargo test --all-features

# Lint
cargo clippy -- -D warnings
cargo fmt -- --check

# Benchmark
cargo bench

Adding New Languages

~30 minutes per language:

  1. Add tree-sitter grammar to Cargo.toml
  2. Update Language enum in src/types.rs
  3. Add file extension mapping
  4. Add test fixtures
  5. Run tests

πŸ“– Development Guide β†’

Project Status

Current: v2.0.0 β€” Stable

βœ… Core β€” Code Reading (17 languages):

  • TypeScript/JavaScript/Python/Rust/Go/Java/C/C++/C#/Ruby/SQL/Markdown/JSON/YAML/TOML
  • 5 transformation modes: structure, signatures, types, minimal, full
  • Token budget (--tokens N), max lines (--max-lines N), last lines (--last-lines N)
  • Multi-file glob support, parallel processing, caching (40-50x speedup)

βœ… Command Output Compression:

  • Test runners: cargo test, pytest, vitest/jest, go test
  • Build tools: cargo build, cargo clippy, tsc
  • Git: status, diff, log
  • Three-tier degradation: Structured β†’ Regex β†’ Passthrough

βœ… Agent Integration:

  • skim init β€” hook installation for Claude Code, Cursor, Codex, Gemini, Copilot, OpenCode
  • skim rewrite β€” command rewriting engine with --hook mode
  • MCP server mode for agent-native workflows

βœ… Analytics & Intelligence:

  • skim stats β€” persistent SQLite dashboard with cost estimation
  • skim discover β€” missed optimization finder across agent sessions
  • skim learn β€” CLI error pattern detection and correction rules

βœ… Distribution:

  • cargo (cargo install rskim), npm (npx rskim), Homebrew (brew install dean0x/tap/skim)
  • 1,594 tests passing, 14.6ms performance (3x under target)

See CHANGELOG.md for version history.

Documentation

Comprehensive guides for all aspects of Skim:

  • πŸ“– Usage Guide - Complete CLI reference and options
  • 🎯 Transformation Modes - Detailed mode comparison and examples
  • πŸ’‘ Examples - Language-specific transformation examples
  • πŸš€ Use Cases - 10 practical scenarios with commands
  • ⚑ Caching - Caching internals and best practices
  • πŸ”’ Security - DoS protections and security best practices
  • πŸ—οΈ Architecture - System design and technical details
  • ⏱️ Performance - Benchmarks and optimization guide
  • πŸ› οΈ Development - Contributing and adding languages

Part of the AI Development Stack

Tool Role What It Does
Skim Context Optimization Code-aware AST parsing across 17 languages, command rewriting, test/build/git output compression
DevFlow Quality Orchestration 18 parallel reviewers, working memory, self-learning, composable plugin system
Autobeat Agent Orchestration Autonomous orchestration. Eval loops, multi-agent pipelines, DAG dependencies, crash-proof persistence

Skim optimizes every byte of context. DevFlow enforces production-grade quality. Autobeat scales execution across agents. No other stack covers all three.

Contributing

Contributions welcome! Please:

  1. Check issues for existing work
  2. Open an issue to discuss major changes
  3. Follow existing code style (cargo fmt, cargo clippy)
  4. Add tests for new features
  5. Update documentation

πŸ“– See Development Guide for detailed instructions

Project Structure

skim/
β”œβ”€β”€ crates/
β”‚   β”œβ”€β”€ rskim-core/    # Core library (language-agnostic)
β”‚   └── rskim/         # CLI binary (I/O layer)
β”œβ”€β”€ tests/fixtures/    # Test files for each language
└── benches/           # Performance benchmarks (planned)

License

MIT License - see LICENSE for details.

Acknowledgments

  • tree-sitter - Fast, incremental parsing library
  • clap - Command-line argument parsing
  • ripgrep, bat, fd - Inspiration for Rust CLI design

Links


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