EvaDB AI-Relational Database System
Project description
Database system for AI-powered apps
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EvaDB enables software developers to build AI apps in a few lines of code. Its powerful SQL API simplifies AI app development for both structured and unstructured data. EvaDB's benefits include:
- 🔮 Easy to connect EvaDB with your SQL database system and build AI-powered apps with SQL queries
- 🤝 Query your data with a pre-trained AI model from Hugging Face, OpenAI, YOLO, PyTorch, and other AI frameworks
- ⚡️ Faster queries thanks to AI-centric query optimization
- 💰 Save money spent on running models by efficient CPU/GPU use
- 🔧 Fine-tune your AI models to achieve better results
👋 Hey! If you're excited about our vision of bringing AI inside database systems, show some ❤️ by:
- ⭐ starring our GitHub 🐙 Repo
- 📟 joining our Slack Community
- 🐦 following us on Twitter
- 📝 following us on Medium
Quick Links
- Quick Links
- Documentation
- Why EvaDB
- How does EvaDB work
- Illustrative Queries
- Illustrative Apps
- More Illustrative Queries
- Architecture of EvaDB
- Community and Support
- Contributing
- Star History
- License
Documentation
You can find the complete documentation of EvaDB at evadb.ai/docs 📚✨🚀
Why EvaDB
In the world of AI, we've reached a stage where many AI tasks that were traditionally handled by AI or ML engineers can now be automated. EvaDB enables software developers with the ability to perform advanced AI tasks without needing to delve into the intricate details.
EvaDB covers many AI applications, including regression, classification, image recognition, question answering, and many other generative AI applications. EvaDB targets 99% of AI problems that are often repetitive and can be automated with a simple function call in an SQL query. Until now, there is no comprehensive open-source framework for bringing AI into an existing SQL database system with a principled AI optimization framework, and that's where EvaDB comes in.
Our target audience is software developers who may not necessarily have a background in AI but require AI capabilities to solve specific problems. We target programmers who write simple SQL queries inside their CRUD apps. With EvaDB, it is possible to easily add AI features to these apps by calling built-in AI functions in the queries.
How does EvaDB work
- Connect EvaDB to your SQL and vector database systems with the `CREATE DATABASE` and `CREATE INDEX` statements.
- Write SQL queries with AI functions to get inference results:
- Pick a pre-trained AI model from Hugging Face, Open AI, Ultralytics, PyTorch, and built-in AI frameworks for generative AI, NLP, and vision applications;
- or pick from a variety of state-of-the-art ML engines for classic ML use-cases (classification, regression, etc.);
- or bring your custom model built with any AI/ML framework using `CREATE FUNCTION`.
Follow the getting started guide to get on-boarded as fast as possible.
Illustrative Queries
- Get insights about Github stargazers using GPT4.
SELECT name, country, email, programming_languages, social_media, GPT4(prompt,topics_of_interest)
FROM gpt4all_StargazerInsights;
--- Prompt to GPT-4
You are given 10 rows of input, each row is separated by two new line characters.
Categorize the topics listed in each row into one or more of the following 3 technical areas - Machine Learning, Databases, and Web development. If the topics listed are not related to any of these 3 areas, output a single N/A. Do not miss any input row. Do not add any additional text or numbers to your output.
The output rows must be separated by two new line characters. Each input row must generate exactly one output row. For example, the input row [Recommendation systems, Deep neural networks, Postgres] must generate only the output row [Machine Learning, Databases].
The input row [enterpreneurship, startups, venture capital] must generate the output row N/A.
- Build a vector index on the feature embeddings returned by the SIFT Feature Extractor on a collection of Reddit images. Return the top-5 similar images for a given image.
CREATE INDEX reddit_sift_image_index
ON reddit_dataset (SiftFeatureExtractor(data))
USING FAISS
SELECT name FROM reddit_dataset ORDER BY
Similarity(
SiftFeatureExtractor(Open('reddit-images/g1074_d4mxztt.jpg')),
SiftFeatureExtractor(data)
)
LIMIT 5
Illustrative Apps
Here are some illustrative AI apps built using EvaDB (each notebook can be opened on Google Colab):
- 🔮 Sentiment Analysis using LLM within PostgreSQL
- 🔮 ChatGPT-based Video Question Answering
- 🔮 Text Summarization on PDF Documents
- 🔮 Analysing Traffic Flow with YOLO
- 🔮 Examining Emotions of Movie
- 🔮 Image Similarity Search
More Illustrative Queries
- Get a transcript from a video stored in a table using a Speech Recognition model. Then, ask questions on the extracted transcript using ChatGPT.
CREATE TABLE text_summary AS
SELECT SpeechRecognizer(audio) FROM ukraine_video;
SELECT ChatGPT('Is this video summary related to Ukraine russia war', text)
FROM text_summary;
- Train a classic ML model for prediction using the Ludwig AI engine.
CREATE FUNCTION IF NOT EXISTS PredictHouseRent FROM
(SELECT * FROM HomeRentals)
TYPE Ludwig
PREDICT 'rental_price'
TIME_LIMIT 120;
Architecture of EvaDB
Community and Support
If you run into any bugs or have any comments, you can reach us on our Slack Community 📟 or create a Github Issue :bug:.
Here is EvaDB's public roadmap 🛤️. We prioritize features based on user feedback, so we'd love to hear from you!
Contributing
We are a lean team on a mission to bring AI inside database systems! All kinds of contributions to EvaDB are appreciated 🙌 If you'd like to get involved, here's information on where we could use your help: contribution guide 🤗
Star History
License
Copyright (c) Georgia Tech Database Group. Licensed under an Apache License.
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