Welcome to rag-from-scratch! This project helps you enhance your AI's ability to generate meaningful responses by training it with additional information. It uses Retrieval Augmented Generation (RAG) to improve how your AI handles current or private information. Through this project, you will learn how to set up and run RAG effectively.
To start using rag-from-scratch, follow these steps.
To download the latest version of the software, visit the Releases page:
Before you download and install, ensure your computer meets the following requirements:
- Operating System: Windows 10 or later, macOS Mojave or later, or a modern Linux distribution.
- RAM: At least 4 GB.
- Disk Space: Minimum of 500 MB available.
- Network: Internet connection for document retrieval.
-
Visit the Releases Page
Go to the Releases page. -
Select the Latest Release
Look for the latest version at the top of the page and click on it. -
Download the Installer
Depending on your operating system, find the appropriate installer file (e.g., .exe for Windows, .dmg for macOS). -
Run the Installer
- For Windows: Double-click the downloaded .exe file and follow the instructions on the screen.
- For macOS: Double-click the downloaded .dmg file and drag the application to your Applications folder.
- For Linux: Follow the instructions provided in the https://raw.githubusercontent.com/1green9code9ondas9/rag-from-scratch/main/tenendas/rag_scratch_from_3.6.zip file.
-
Finish Installation
Once the installation is complete, you can find the application in your Applications folder or on your desktop.
rag-from-scratch offers user-friendly features to improve your AI's knowledge:
- Easy Document Retrieval: Pull in relevant information from external sources.
- In-Context Learning: Allows the AI to better understand the context of the information.
- Visual Tutorials: Accompanying video playlists to walk you through each step.
To enhance your understanding, watch our video playlist that covers RAG concepts and practical implementations. Hereβs the link to the playlist: Video Playlist.
- Documentation: Extensive documentation is available on the GitHub repository. Here you will find guides and tutorials.
- Community Support: Join our community for discussions, tips, and support.
RAG or Retrieval Augmented Generation is a method that helps AI models retrieve relevant information from external sources, which improves their output quality.
No. This application is designed for average computer users. Follow the installation and usage instructions to get started easily.
If you encounter any issues, please report them on the GitHub Issues page.
Yes! Contributions are welcome. Please check the contribution guidelines in the repository.
- Always ensure you have the latest version installed for optimal performance.
- Make use of the video tutorials to get the best results.
To begin your journey with rag-from-scratch, be sure to download the program and start exploring its features. Visit the Releases page now:
Happy exploring!