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Queryable expert from commit history using LLM and embeddings

Project description

Expert Among Us ඞ

MCP which indexes commit history, then uses secondary inference to form a queryable "expert".

Why?

SDEs with practitioner-level knowledge of sprawling legacy codebases have instincts and thought processes not well represented in the final code structure. High-level documentation also fails to fully capture their experience (if such documentation even exists). A software expert's experience and instincts are often implied in their raw commit messages and code review comment discussions.

Beyond Semantic File Searches

Traditional semantic code search tools focus on finding relevant files and functions based on current codebase state. Expert Among Us goes deeper by indexing your repository's entire commit history in addition to current state. This unlocks a trove of unintended expert documentation, all written in natural language specifically to communicate intent to humans. By performing semantic search on commit messages alongside code diffs, Expert Among Us can:

  • Better match natural language queries to the developer's original explanation of their changes
  • Surface relevant context even when the code itself uses technical jargon or domain-specific terminology
  • Find conceptual matches (e.g., "authentication" finds commits about "login", "security", "user verification")
  • Understand intent beyond just matching function names or variable names in code

This makes searches like "How do I handle authentication?" far more accurate than searching code alone, since developers naturally describe these concepts clearly in their commit messages. The result is key contextual insights that naive file search cannot provide:

  • Historical Context: Understand not just what the code does, but why decisions were made and how solutions evolved over time
  • Hidden Insights: Discover patterns in bug fixes, regressions, performance optimizations, and architectural changes that aren't visible in the final code
  • Thought Processes: Capture the reasoning behind technical decisions through commit messages and diff patterns, even when formal documentation is lacking
  • Test Cases & Edge Cases: Learn from past bug fixes and edge case handling that shaped the current implementation
  • Future Plans: Identify intended directions and planned improvements mentioned in commit messages but not yet implemented
  • Evolution Patterns: See how similar problems were solved across different parts of the codebase over time

Key Differences from Traditional Search Approaches

Static File Search Traditional Semantic Search Expert Among Us
Keyword/regex matching Searches current file contents Searches historical commit patterns
Shows matching code lines Shows what code does Shows why and how code evolved
No context understanding Static snapshot Temporal context and progression
Fast but literal File-level relevance Change-level insights
No semantic understanding Limited to current codebase Captures individual expert's style
Documentation-independent Documentation-dependent Can generate deep documentation
File paths and code only Code semantics Natural language text
No authorship context No authorship context Preserves expert's decision-making patterns

Case Study Validation

A blind comparative analysis of the expert-among-us MCP was conducted on the OpenRA game engine, comparing outcomes with and without the MCP across four technical scenarios. The analysis was performed without prior knowledge of expert-among-us or its purpose, including stripping the tool description from the conversation history. This provides an unbiased (albeit AI-generated) evaluation.

Key Findings:

  • Completed all scenarios with roughly 20% fewer actions overall, and context sizes comparable to non-MCP completion
  • Successfully identified regressions and key patterns that standard exploration missed
  • Provided historical context and design rationale not available through code inspection alone

The case study demonstrates measurable efficiency gains and qualitative improvements in debugging and architecture understanding. For the detailed comparison, see case-studies/summary.md and the raw conversation files.

Synthetic Commit Context

Not all commit messages are created equal. Fortunately, transformer LLMs are excellent at filling in the blanks. When run with --impostor mode, Expert Among Us generates additional commit message content. This is presented as an ordered chain of user prompt -> assistant response entries, where the user is the generated prompts, and the real commits are the assistant responses. The actual user prompt is the final message. Effectively, a conversation is presented as if the LLM has authored all commits by itself. The AI acts as an impostor of the human experts.

Overview

Expert Among Us creates a queryable "expert" from your repository's commit history using AI-powered semantic search and vector embeddings. It combines your complete commit history with the current codebase state, enabling insights not possible with either approach alone. It helps you understand development patterns, find relevant changes, and get AI-powered recommendations based on historical code changes.

Key Capabilities

  • Semantic Search: Find commits by meaning, not just keywords, using vector embeddings
  • Dual Indexing: Seamlessly combines full commit history with current codebase state for comprehensive insights
  • AI-Powered Reranking: Cross-encoder reranking dramatically improves search result relevance
  • Smart Text Sanitization: Automatically removes high-entropy patterns (API keys, UUIDs, binary data) to improve search quality
  • Metadata Extraction: Index commit messages, authors, files, and code diffs
  • Vector Embeddings: Supports local (GPU-accelerated) or cloud (AWS Bedrock) embedding models
  • Flexible Filtering: Search by author, files, or time period
  • Version Control Support: Works with Git and Perforce repositories
  • Commit Enhancement: Optionally adds LLM-generated analysis of a commit to its context

Search Quality Features

Expert Among Us includes several features that significantly improve search quality and relevance:

Cross-Encoder Reranking

  • Uses modern cross-encoder models to re-rank search results
  • Provides dramatically better relevance than vector search alone
  • Works seamlessly with all search scopes (metadata, diffs, files)

Smart Text Sanitization

  • Automatically removes high-entropy patterns like API keys, UUIDs, and binary data
  • Preserves semantic meaning while reducing noise in embeddings
  • Improves search quality by focusing on meaningful code patterns

Dual-Source Indexing

  • Indexes both historical commit patterns and current file content
  • Seamlessly combines insights from development history with present-day code structure
  • Enables queries that span both "how we got here" and "what's here now"

Installation

Prerequisites

Install uv if you don't have it:

# Linux/macOS
curl -LsSf https://astral.sh/uv/install.sh | sh
# Windows (PowerShell)
irm https://astral.sh/uv/install.ps1 | iex

End-Users (Recommended)

Install as a persistent tool with GPU support (NVIDIA CUDA):

uv tool install expert-among-us --index pytorch-cu130=https://download.pytorch.org/whl/cu130

If you don't have an NVIDIA GPU, install without the index flag (CPU-only):

uv tool install expert-among-us

After installation, expert-among-us is available directly on your PATH:

expert-among-us --help

Updating

uv tool upgrade expert-among-us

This retains the CUDA index setting from the original install.

GPU Notes

  • Prerequisites: NVIDIA GPU with compatible drivers (nvidia-smi should show your GPU). A separate CUDA toolkit install is not required — the PyTorch wheel bundles its own CUDA runtime.
  • Performance: GPU embeddings run ~8x faster (~0.5s vs ~4s per commit batch).
  • Why not uvx? uvx resolves dependencies from PyPI, which only ships CPU-only PyTorch wheels on Windows and macOS. The --index flag on uv tool install directs torch to the CUDA wheel index.

Local Development

For contributors working from a clone:

# Linux/macOS
./install.sh

# Windows (PowerShell)
.\install.ps1

These scripts install uv if needed, then run uv sync to set up the environment with CUDA-enabled PyTorch (configured via [tool.uv.sources] in pyproject.toml). Use uv run to execute commands:

uv run expert-among-us --help

Quick Start

1. Index a Repository

Create an expert index from your git repository:

# Index entire repository (uses local embeddings by default)
expert-among-us populate MyExpert /path/to/repo

# Use AWS Bedrock embeddings instead
expert-among-us --embedding-provider bedrock populate MyExpert /path/to/repo

# Index specific subdirectories only
expert-among-us populate MyExpert /path/to/repo src/main/ src/resources/

# Limit the number of commits to index
expert-among-us populate MyExpert /path/to/repo --max-commits 5000

Note: On first run with local embeddings, the Jina Code model (~1.2GB) will be downloaded automatically. This is a one-time download.

The first indexing will take some time depending on repository size. Subsequent runs are incremental and only process new commits.

2. Search for Similar Changes

Find commits similar to your query:

# Basic search
expert-among-us query MyExpert "How to add a new feature?"

# Search with filters
expert-among-us query MyExpert "Bug fix for memory leak" \
    --users john,jane \
    --files src/main.py,src/utils.py \
    --max-changes 20

# Save results to JSON
expert-among-us query MyExpert "API endpoint implementation" \
    --output results.json

Important: Use the same --embedding-provider for querying as you used during indexing.

3. Get AI Recommendations

Get AI-powered recommendations that impersonate the expert based on their historical commit patterns:

# Get recommendations (auto-detects LLM provider)
expert-among-us prompt MyExpert "How should I implement authentication?"

# With filters for specific context
expert-among-us prompt MyExpert "How to handle errors?" \
    --users alice,bob \
    --files src/handlers/

# With improved commit message context
expert-among-us prompt MyExpert "Add caching" --impostor

# With debug logging to inspect API calls
expert-among-us --debug prompt MyExpert "Optimize queries"

How It Works:

  1. Auto-detects available LLM provider (or use explicit --llm-provider)
  2. Searches for relevant commits using semantic similarity
  3. Generates conversational prompts from historical diffs
  4. Builds a conversation showing the expert's past work
  5. Streams an AI response impersonating the expert's style

CLI Command Reference

Note: All examples below assume expert-among-us is installed via uv tool install. When running from a local clone, prefix with uv run.

populate - Index Repository

Create or update an expert index from a repository.

expert-among-us populate EXPERT_NAME [WORKSPACE] [SUBDIRS...] [OPTIONS]

Arguments:

  • EXPERT_NAME: Unique name for this expert (used to identify the index)
  • WORKSPACE: Path to the repository root directory (required for new experts, optional for updates)
  • SUBDIRS: Optional subdirectories to filter (e.g., src/main/ src/resources/)

Options:

  • --max-commits INTEGER: Maximum number of commits to index (default: 60000)
  • --max-batches INTEGER: Maximum batches to run (returns exit code 2 if more remain)
  • --batch-size INTEGER: Maximum commits per embedding batch (default: 1000)
  • --start-at TEXT: Start indexing from a specific commit hash
  • --index-scope [metadata|diffs|files|all]: What to index (default: all)
  • --allowed-extensions TEXT: Comma-separated list of allowed file extensions
  • --compact-diffs: Reduce diff size by removing context (trades search quality for cost)
  • --custom-sanitize-pattern TEXT: Custom regex pattern to remove from text before embedding

Global Options (before command):

  • --embedding-provider [local|bedrock]: Embedding provider (default: local)
  • --data-dir PATH: Base directory for expert data storage (default: ~/.expert-among-us)
  • --gpu-memory-multiplier FLOAT: GPU memory scaling factor (default: 1.0)
  • --debug: Enable debug logging

Examples:

# Index entire repository with local embeddings (default)
expert-among-us populate AppExpert ~/projects/myapp

# Index with AWS Bedrock embeddings
expert-among-us --embedding-provider bedrock populate AppExpert ~/projects/myapp

# Index only backend code
expert-among-us populate BackendExpert ~/projects/myapp src/backend/ src/api/

# Update existing expert (workspace looked up automatically)
expert-among-us populate AppExpert

# Use custom data directory
expert-among-us --data-dir /mnt/data/experts populate AppExpert ~/projects/myapp

list - List Available Experts

Display all indexed experts and their metadata.

expert-among-us list

import - Import Expert via Symlink

Import an expert from an external directory by creating a symlink.

expert-among-us import SOURCE_PATH

query - Search History

Search for commits similar to your query using semantic search.

expert-among-us query EXPERT_NAME PROMPT [OPTIONS]

Arguments:

  • EXPERT_NAME: Name of the expert to query
  • PROMPT: Search query describing what you're looking for

Options:

  • --max-changes INTEGER: Maximum changelist results (default: 20)
  • --max-file-chunks INTEGER: Maximum file chunk results (default: 10)
  • --users TEXT: Filter by commit authors (comma-separated)
  • --files TEXT: Filter by file paths (comma-separated)
  • --search-scope [all|metadata|diffs|files]: Search scope (default: all)
  • --no-reranking: Disable cross-encoder reranking (faster but less accurate)
  • --min-score FLOAT: Minimum similarity score threshold (default: 0.1)
  • --relative-threshold FLOAT: Relative score threshold as fractional drop from top result (default: 0.8)
  • --expansion-candidate-multiplier INTEGER: Multiplier for candidate retrieval during expansion (default: 5)
  • --expansion-passes INTEGER: Number of expansion iterations (default: 1)
  • --output PATH: Save results to JSON file

Examples:

# Find commits about authentication
expert-among-us query AppExpert "authentication implementation"

# Search with author filter
expert-among-us query AppExpert "database optimization" --users alice,bob

# Search only current file content
expert-among-us query AppExpert "function implementation" --search-scope files

# Strict filtering
expert-among-us query AppExpert "exact pattern" --min-score 0.3 --relative-threshold 0.2

prompt - AI Recommendations

Get AI-powered recommendations that impersonate the expert based on their historical commit patterns.

expert-among-us [GLOBAL OPTIONS] prompt EXPERT_NAME PROMPT [OPTIONS]

Global Options (must come before command):

  • --llm-provider [auto|openai|openrouter|ollama|bedrock|claude-code|kiro-cli]: LLM provider (auto-detects by default)
  • --base-url-override TEXT: Override base URL for OpenAI-compatible providers
  • --expert-model TEXT: Override default expert model
  • --promptgen-model TEXT: Override default promptgen model
  • --debug: Enable debug logging

Arguments:

  • EXPERT_NAME: Name of the expert to query
  • PROMPT: Question or task description for the AI

Options:

  • --max-changes INTEGER: Maximum context changes to use (default: 20)
  • --users TEXT: Filter by commit authors (comma-separated)
  • --files TEXT: Filter by file paths (comma-separated)
  • --impostor: Generate synthetic prompts for each commit (improves poor commit messages)
  • --amogus: Enable Among Us mode
  • --temperature FLOAT: LLM temperature (0.0–1.0, default: 0.7)

Examples:

# Basic usage (auto-detects provider)
expert-among-us prompt AppExpert "How to implement caching?"

# Explicitly specify OpenAI
expert-among-us --llm-provider openai prompt AppExpert "How to implement caching?"

# With impostor mode for better context
expert-among-us prompt AppExpert "Add caching" --impostor

# With debug logging
expert-among-us --debug prompt AppExpert "Optimize queries"

Configuration

Storage Location

By default, expert indexes are stored in: ~/.expert-among-us/data/

Customize with the --data-dir global option. Always use the same --data-dir for all operations on the same expert.

Each expert creates:

  • ChromaDB: Vector embeddings ({data-dir}/data/{expert-name}/chroma/)
  • SQLite: Metadata ({data-dir}/data/{expert-name}/metadata.db)
  • Debug Logs: API call logs when --debug is enabled ({data-dir}/logs/)

Embedding Models

Expert Among Us supports two embedding providers. Use --embedding-provider to switch. Important: You must use the same provider for both indexing and querying.

Local (Default):

  • Model: jinaai/jina-code-embeddings-0.5b (code2code task)
  • Dimension: 512 (Matryoshka truncation from 896)
  • Max tokens: 32,768
  • Download: ~1.2GB (one-time, automatic)
  • Advantages: No API costs, works offline, GPU-accelerated

AWS Bedrock:

  • Model: amazon.titan-embed-text-v2:0
  • Dimension: 1024
  • Max tokens: 8,000
  • Requirements: AWS credentials and Bedrock access

LLM Providers

Expert Among Us supports multiple LLM providers for prompt generation. By default, it auto-detects an available provider.

Auto-Detection Order

  1. Environment Variables (must be exactly one):
    • AWS_ACCESS_KEY_ID → AWS Bedrock
    • OPENROUTER_API_KEY → OpenRouter
    • OPENAI_API_KEY → OpenAI
  2. AWS Default Credentials → Bedrock
  3. Claude Code CLI (claude on PATH) → Claude Code
  4. Ollama Server (localhost:11434) → Ollama

Provider Setup

Provider Required Notes
openai OPENAI_API_KEY Get key
openrouter OPENROUTER_API_KEY Get key — free models available
ollama Ollama running locally Default: http://127.0.0.1:11434/v1
bedrock AWS credentials AWS_ACCESS_KEY_ID, AWS_SECRET_ACCESS_KEY, AWS_REGION
claude-code claude CLI on PATH Install
kiro-cli Kiro IDE running Used within Kiro sessions

Default Models (Bedrock):

  • Prompt Generation: us.amazon.nova-lite-v1:0
  • Expert Analysis: global.anthropic.claude-sonnet-4-5-20250929-v1:0

Use --promptgen-model and --expert-model to override.

MCP Integration

Expert Among Us provides a fully implemented MCP (Model Context Protocol) server, allowing AI assistants to query your codebase history directly.

Available MCP Tools

  1. experts-list - List all available experts with metadata
  2. experts-import - Import external experts via symlink
  3. expert-query - Get raw commit details for manual analysis
  4. expert-prompt - Get AI-powered recommendations based on expert's historical patterns

Starting the MCP Server

expert-among-us mcp

# With options
expert-among-us --debug mcp --impostor

# From a local clone
uv run expert-among-us mcp

MCP Server CLI Arguments

  • --data-dir: Custom data directory location
  • --impostor: Enable impostor mode for all queries
  • --debug: Enable debug logging
  • --llm-provider: Choose LLM provider
  • --embedding-provider: Choose embedding provider (default: local)
  • --max-response-tokens: Maximum tokens for expert response (default: 4096)
  • --prompt-timeout-seconds: Maximum seconds for expert-prompt operations (default: no timeout)

Configuration for MCP Clients

Example: Claude Desktop (Linux/macOS)

Config: ~/Library/Application Support/Claude/claude_desktop_config.json

{
  "mcpServers": {
    "expert-among-us": {
      "command": "expert-among-us",
      "args": ["mcp"],
      "timeout": 120,
      "alwaysAllow": ["experts-list", "expert-prompt", "expert-query"],
      "env": {
        "OPENAI_API_KEY": "your-key-here"
      }
    }
  }
}

Example: Claude Desktop (Windows)

Config: %APPDATA%\Claude\claude_desktop_config.json

{
  "mcpServers": {
    "expert-among-us": {
      "command": "expert-among-us",
      "args": ["--debug", "mcp"],
      "timeout": 120,
      "alwaysAllow": ["experts-list", "expert-prompt", "expert-query"],
      "env": {
        "AWS_PROFILE": "your-profile-here"
      }
    }
  }
}

Example: With Impostor Mode

{
  "mcpServers": {
    "expert-among-us": {
      "command": "expert-among-us",
      "args": ["mcp", "--impostor"],
      "timeout": 120,
      "alwaysAllow": ["experts-list", "expert-prompt", "expert-query"],
      "env": {
        "OPENAI_API_KEY": "your-key-here"
      }
    }
  }
}

Example: Kiro MCP Configuration

.kiro/settings/mcp.json:

{
  "mcpServers": {
    "expert-among-us": {
      "command": "expert-among-us",
      "args": ["--data-dir", "/path/to/shared/experts", "mcp"],
      "timeout": 120,
      "autoApprove": ["experts-list", "expert-query", "expert-prompt"],
      "env": {
        "AWS_PROFILE": "your-profile-here"
      }
    }
  }
}

Important Notes:

  • These examples assume expert-among-us is installed via uv tool install (see Installation)
  • Set required environment variables in the env section
  • Restart your MCP client after updating the configuration

Development

Running Tests

uv run pytest

# With coverage
uv run pytest --cov=expert_among_us --cov-report=html

Code Quality

# Format code
uv run black src/ tests/

# Lint
uv run ruff check src/ tests/

# Type checking
uv run mypy src/

License

MIT License - see LICENSE file for details

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