Skip to content

Latest commit

 

History

History
62 lines (42 loc) · 2.33 KB

README.md

File metadata and controls

62 lines (42 loc) · 2.33 KB

RAG Engine: Powerful Retrieval-Augmented Generation for Python

Python Tests

RAG Engine is a high-performance Python package for implementing Retrieval-Augmented Generation (RAG) using OpenAI's advanced embeddings and a SQLite database with efficient vector search capabilities. Enhance your natural language processing and machine learning projects with state-of-the-art semantic search and text generation.

Installation

You can install the RAG Engine package using pip:

pip install rag_engine

Usage

Here's a quick example of how to use RAG Engine:

from rag_engine import RAGEngine

# Initialize the RAG Engine
rag = RAGEngine("database.sqlite", api_key='...your OpenAI key...')
# or set OPENAI_API_KEY env var

# Add some sentences
sentences = ["This is a test sentence.", "Another example sentence."]
rag.add(sentences)

# Search for similar sentences
results = rag.search("test sentence", n=2)
print(results)

Key Features

  • Advanced Embedding Models: Supports multiple OpenAI embedding models including ADA_002, SMALL_3, and LARGE_3 for versatile text representation
  • High-Performance Asynchronous Operations: Optimized for speed and efficiency in handling large-scale data
  • Powerful Vector Similarity Search: Utilizes SQLite database with built-in vector search capabilities for fast and accurate retrieval
  • Flexible and Intuitive API: Easy-to-use interface for adding, searching, and managing embeddings in your RAG pipeline
  • Seamless Integration: Designed to work smoothly with existing NLP and machine learning workflows

Development and Contribution

We welcome contributions to enhance RAG Engine's capabilities. To set up the development environment:

  1. Clone the repository: git clone https://github.com/slava-vishnyakov/rag_engine.git
  2. Install the package with development dependencies:
    pip install -e .[dev]
    
  3. Run the comprehensive test suite:
    pytest
    

Note: Running tests requires a valid OpenAI API key. Set the OPENAI_API_KEY environment variable before executing the tests.

License

This project is licensed under the MIT License. See the LICENSE file for details.