


OpenRAG: An Open-Source GenAI Application to Supercharge Data Queries with Large Language Models
In the era of artificial intelligence, businesses and developers are increasingly leveraging Large Language Models (LLMs) to streamline data analysis and customer interactions. OpenRAG, an open-source Generative AI (GenAI) application, empowers users by combining the flexibility of LLMs with efficient data querying capabilities across various vector databases. Whether you are working with PDFs, querying large datasets, or seeking insights from stored data, OpenRAG makes it seamless to interact with your data using natural language queries.
Key Features of OpenRAG
Support for All Open-Source LLM Models OpenRAG is designed to integrate with a variety of open-source LLMs, giving users the freedom to choose the model that best fits their unique use case. The platform’s extensibility allows for future expansion, ensuring users can harness the latest advancements in the field of AI without any restrictions.
Multiple Open-Source Vector Database Integrations OpenRAG comes pre-configured to support popular open-source vector databases such as Chroma, FAISS, and Qdrant. These databases facilitate high-performance vector search and retrieval, ensuring users get precise results when querying their data.
PDF Upload and Data Querying One standout feature of OpenRAG is the ability to upload PDF files and convert them into structured data collections. This makes the application highly useful for professionals dealing with large volumes of PDF-based information. Once a PDF is uploaded, users can query the contents using an LLM of their choice, extracting insights quickly and efficiently.
Persistent Collection Names for Reusability OpenRAG assigns unique collection names to uploaded PDFs, allowing users to return and query the data without needing to re-upload the same files. This feature saves time and makes data management more seamless.
Consistency in Vector Database Usage OpenRAG maintains consistency by tying data collections to specific vector databases. Users cannot switch the database once it's selected for a collection, ensuring stable and accurate data retrieval every time.
Getting Started with OpenRAG
Before diving into the world of AI-driven data querying, make sure to meet the following prerequisites for a smooth installation:
Prerequisites
Python Version: Ensure you have Python 3.9 or greater installed.
Qdrant Docker Image: OpenRAG integrates with Qdrant, and the image should be running. Make sure port 6333 on localhost is accessible.
Installation
- Clone the Repo:
git clone https://github.com/yourrepo/openrag.git
- Create a Virtual Environment:
python3 -m venv openrag-env source openrag-env/bin/activate
- Install Dependencies:
pip install -r requirements.txt
- Download Spacy Language Model:
python3 -m spacy download en_core_web_sm
- Run the Application:
uvicorn main:app --reload
Dockerization for Easy Deployment
For developers who prefer using Docker for deployment, OpenRAG can be containerized:
- Build the Docker Image:
docker build -t openrag-app .
- Run the Container:
docker run -d -p 8000:8000 openrag-app
Once the app is running, access it via http://localhost:8000 in your browser.
Usage: Interact with OpenRAG via API
OpenRAG’s API-first architecture allows it to be integrated into various frontend applications. Here’s an example of how to upload a PDF and query its contents through an API:
Upload a PDF
curl -X POST "http://localhost:8000/upload" \ -H "accept: application/json" \ -H "Content-Type: multipart/form-data" \ -F "file=@yourfile.pdf" \ -F "model_name=GPT-3.5" \ -F "vector_db_name=qdrant"
Start a Chat Session
After uploading a PDF, you can initiate a chat-based query:
curl -X POST "http://localhost:8000/chat" \ -H "Content-Type: application/json" \ -d '{ "collection_name": "your_collection_name", "query": "your_query", "model_name": "GPT-3.5", "vector_db_name": "qdrant", "device": "cpu" }'
Scalability with OpenRAG
One of OpenRAG's greatest strengths is its scalability. While it can be run on a local machine using tools like uvicorn, it’s production-ready and can be deployed using cloud providers, Docker, or Kubernetes. In production environments, OpenRAG supports scaling through tools like Gunicorn, providing robust performance for high-traffic use cases.
Common Errors and Solutions
During development, users may encounter the following common error:
TypeError: Descriptors cannot be created directly.
To resolve this, consider downgrading the protobuf package to version 3.20.x or lower, or setting the environment variable
PROTOCOL_BUFFERS_PYTHON_IMPLEMENTATION=python
Conclusion
OpenRAG stands out as a flexible, open-source solution for users looking to leverage the power of LLMs and vector databases for data querying and insights. Whether you're a developer, researcher, or enterprise user, OpenRAG provides the tools to work with your data in a highly efficient and intuitive manner.
For detailed API documentation and more examples, visit OpenRAG's API Documentation.
Contributing to OpenRAG
We welcome contributions from the community! For details on how to contribute, submit issues, or request features, check out the CONTRIBUTING.md.
Github Repo Link
Open Rag Repo
The above is the detailed content of OpenRAG: An Open-Source GenAI Application to Supercharge Data Queries with Large Language Models. For more information, please follow other related articles on the PHP Chinese website!

Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

Video Face Swap
Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Article

Hot Tools

Notepad++7.3.1
Easy-to-use and free code editor

SublimeText3 Chinese version
Chinese version, very easy to use

Zend Studio 13.0.1
Powerful PHP integrated development environment

Dreamweaver CS6
Visual web development tools

SublimeText3 Mac version
God-level code editing software (SublimeText3)

Hot Topics











Python is suitable for data science, web development and automation tasks, while C is suitable for system programming, game development and embedded systems. Python is known for its simplicity and powerful ecosystem, while C is known for its high performance and underlying control capabilities.

Python excels in gaming and GUI development. 1) Game development uses Pygame, providing drawing, audio and other functions, which are suitable for creating 2D games. 2) GUI development can choose Tkinter or PyQt. Tkinter is simple and easy to use, PyQt has rich functions and is suitable for professional development.

You can learn basic programming concepts and skills of Python within 2 hours. 1. Learn variables and data types, 2. Master control flow (conditional statements and loops), 3. Understand the definition and use of functions, 4. Quickly get started with Python programming through simple examples and code snippets.

Python is easier to learn and use, while C is more powerful but complex. 1. Python syntax is concise and suitable for beginners. Dynamic typing and automatic memory management make it easy to use, but may cause runtime errors. 2.C provides low-level control and advanced features, suitable for high-performance applications, but has a high learning threshold and requires manual memory and type safety management.

You can learn the basics of Python within two hours. 1. Learn variables and data types, 2. Master control structures such as if statements and loops, 3. Understand the definition and use of functions. These will help you start writing simple Python programs.

To maximize the efficiency of learning Python in a limited time, you can use Python's datetime, time, and schedule modules. 1. The datetime module is used to record and plan learning time. 2. The time module helps to set study and rest time. 3. The schedule module automatically arranges weekly learning tasks.

Python excels in automation, scripting, and task management. 1) Automation: File backup is realized through standard libraries such as os and shutil. 2) Script writing: Use the psutil library to monitor system resources. 3) Task management: Use the schedule library to schedule tasks. Python's ease of use and rich library support makes it the preferred tool in these areas.

Python is widely used in the fields of web development, data science, machine learning, automation and scripting. 1) In web development, Django and Flask frameworks simplify the development process. 2) In the fields of data science and machine learning, NumPy, Pandas, Scikit-learn and TensorFlow libraries provide strong support. 3) In terms of automation and scripting, Python is suitable for tasks such as automated testing and system management.
