| Crates.io | luckyshot |
| lib.rs | luckyshot |
| version | 0.5.1 |
| created_at | 2025-02-15 21:15:36.161544+00 |
| updated_at | 2025-02-17 07:12:43.568408+00 |
| description | A CLI tool for one-shot code generations using RAG and file watching |
| homepage | |
| repository | |
| max_upload_size | |
| id | 1557098 |
| size | 93,219 |
A powerful CLI tool that enhances code understanding and automation by finding the most relevant files in your codebase for AI-assisted programming.
Finding the right files to manipulate with AI is crucial for effective code generation and modification. Traditional approaches like grep or fuzzy finding often miss semantically relevant files that don't contain exact keyword matches.
This tool uses a hybrid approach combining two powerful search techniques:
BM25 Ranking: A battle-tested information retrieval algorithm (used by search engines) that excels at keyword matching while accounting for term frequency and document length. It's particularly good at finding files containing specific technical terms or function names.
RAG (Retrieval Augmented Generation) with Embedding Distance: Uses OpenAI's embeddings to capture the semantic meaning of both your query and codebase. By measuring vector dot product distances, it can find conceptually related files even when they use different terminology.
The hybrid scoring system combines both approaches:
This dual approach helps ensure you don't miss important context when using AI to modify your codebase.
⚠️ This tool is alpha and not thoroughly evaluated with real-world tests. Be aware of the costs of embedding vectors!
The tool allows for the adjustment of several hyperparameters to fine-tune its performance:
These hyperparameters can be adjusted via command-line options to suit different use cases and codebases. Experimenting with these values can help optimize the tool's performance for your specific needs.
cargo install luckyshot
Generate embeddings for your codebase using the scan command:
# Basic scan of all Rust files
luckyshot scan -p "**/*.rs"
# Basic scan of all Rust and Markdown files
luckyshot scan -p "**/*{.rs,.md}"
# Scan with chunking enabled
luckyshot scan --chunk-size 1000 --chunk-overlap 100 -p "src/**/*.rs"
# Include file metadata in embeddings
luckyshot scan --embed-metadata "*.{rs,md}"
# Scan with all options
luckyshot scan --chunk-size 1000 --chunk-overlap 100 --embed-metadata -p "**/*.rs"
The scan command:
.luckyshot.file.vectors.v1To find files related to a topic or question:
# Basic file suggestion
luckyshot suggest-files -p "how does the scanning work?"
# Using piped input
echo "how does error handling work?" | luckyshot suggest-files
# Filter results by similarity score (matches >= specified value, range 0.0 to 1.0)
luckyshot suggest-files -p "error handling" --filter-similarity 0.5
# Show detailed information including similarity scores
luckyshot suggest-files -p "file scanning" --verbose
# Show file contents of matches
luckyshot suggest-files -p "metadata handling" --file-contents
# Limit number of results
luckyshot suggest-files -p "openai" --count 5
# Combine options
luckyshot suggest-files -p "embedding" --verbose --file-contents --filter-similarity 0.7 --count 3
# Chain commands Unix-style
echo "what openai url am I using" | \
luckyshot expand "you are a rust expert who describes their \
question and the files you are looking for" | \
luckyshot suggest-files --verbose
This will:
To expand a query with additional context:
luckyshot expand --system-prompt "You are a helpful assistant" --prompt "describe the implementation"
You'll need an OpenAI API key. Either:
export OPENAI_API_KEY="your-api-key"
Or create a .env file:
OPENAI_API_KEY=your-api-key
The tool uses a novel hybrid approach combining BM25 and embedding-based similarity:
BM25 Scoring: Produces both positive and negative scores
Embedding Dot Product: Always produces positive scores
Score Normalization:
Hybrid Scoring:
This hybrid approach helps balance exact keyword matching (BM25) with semantic understanding (embeddings).
Contributions are welcome! Please fork the repository and submit a pull request. For major changes, please open an issue first to discuss what you would like to change.
MIT
For more details, see the LICENSE file.