Skip to main content

EvaDB AI-Relational Database System

Project description

EvaDB AI-SQL Database System

EvaDB is a database system for building simpler and faster AI-powered applications.

EvaDB is an AI-SQL database system for developing applications powered by AI models. We aim to simplify the development and deployment of AI-powered applications that operate on structured (tables, feature stores) and unstructured data (text documents, videos, PDFs, podcasts, etc.).

EvaDB accelerates AI pipelines by 10x using a collection of performance optimizations inspired by time-tested SQL database systems, including data-parallel query execution, function caching, sampling, and cost-based predicate reordering. EvaDB supports an AI-oriented query language tailored for analyzing both structured and unstructured data. It has first-class support for PyTorch, Hugging Face, YOLO, and Open AI models.

The high-level Python and SQL APIs allows even beginners to use EvaDB in a few lines of code. Advanced users can define custom user-defined functions that wrap around any AI model or Python library. EvaDB is fully implemented in Python and licensed under the Apache license.

Quick Links

Features

  • 🔮 Build simpler AI-powered applications using short Python or SQL queries
  • ⚡️ 10x faster applications using AI-centric query optimization
  • 💰 Save money spent on GPUs
  • 🚀 First-class support for your custom deep learning models through user-defined functions
  • 📦 Built-in caching to eliminate redundant model invocations across queries
  • ⌨️ First-class support for PyTorch, Hugging Face, YOLO, and Open AI models
  • 🐍 Installable via pip and fully implemented in Python

Illustrative Applications

Here are some illustrative EvaDB-powered applications (each Jupyter notebook can be opened on Google Colab):

Documentation

Quick Start

  • Install EvaDB using the pip package manager. EvaDB supports Python versions >= 3.8:
pip install evadb
cursor = connect_to_server()
  • Load a video onto the EvaDB server (we use ua_detrac.mp4 for illustration):
LOAD VIDEO "data/ua_detrac/ua_detrac.mp4" INTO TrafficVideo;
  • That's it! You can now run queries over the loaded video:
SELECT id, data FROM TrafficVideo WHERE id < 5;
  • Search for frames in the video that contain a car:
SELECT id, data FROM TrafficVideo WHERE ['car'] <@ Yolo(data).labels;
Source Video Query Result
Source Video Query Result
  • Search for frames in the video that contain a pedestrian and a car:
SELECT id, data FROM TrafficVideo WHERE ['pedestrian', 'car'] <@ Yolo(data).labels;
  • Search for frames with more than three cars:
SELECT id, data FROM TrafficVideo WHERE ArrayCount(Yolo(data).labels, 'car') > 3;
  • Use your custom deep learning model in queries with a user-defined function (UDF):
CREATE UDF IF NOT EXISTS Yolo
TYPE  ultralytics
'model' 'yolov8m.pt';
  • Chain multiple models in a single query to set up useful AI pipelines.
   -- Analyse emotions of faces in a video
   SELECT id, bbox, EmotionDetector(Crop(data, bbox)) 
   FROM MovieVideo JOIN LATERAL UNNEST(FaceDetector(data)) AS Face(bbox, conf)  
   WHERE id < 15;
  • EvaDB runs queries faster using its AI-centric query optimizer. Two key optimizations are:

    💾 Caching: EvaDB automatically caches and reuses previous query results (especially model inference results), eliminating redundant computation and reducing query processing time.

    🎯 Predicate Reordering: EvaDB optimizes the order in which the query predicates are evaluated (e.g., runs the faster, more selective model first), leading to faster queries and lower inference costs.

Consider these two exploratory queries on a dataset of dog images:

  -- Query 1: Find all images of black-colored dogs
  SELECT id, bbox FROM dogs 
  JOIN LATERAL UNNEST(Yolo(data)) AS Obj(label, bbox, score) 
  WHERE Obj.label = 'dog' 
    AND Color(Crop(data, bbox)) = 'black'; 

  -- Query 2: Find all Great Danes that are black-colored
  SELECT id, bbox FROM dogs 
  JOIN LATERAL UNNEST(Yolo(data)) AS Obj(label, bbox, score) 
  WHERE Obj.label = 'dog' 
    AND DogBreedClassifier(Crop(data, bbox)) = 'great dane' 
    AND Color(Crop(data, bbox)) = 'black';

By reusing the results of the first query and reordering the predicates based on the available cached inference results, EvaDB runs the second query 10x faster!

Architecture Diagram

This diagram presents the key components of EvaDB. EvaDB's AI-centric Query Optimizer takes a parsed query as input and generates a query plan that is then executed by the Query Engine. The Query Engine hits multiple storage engines to retrieve the data required for efficiently running the query:

  1. Structured data (SQL database system connected via sqlalchemy).
  2. Unstructured media data (on cloud buckets or local filesystem).
  3. Vector data (vector database system).
Architecture Diagram

Screenshots

🔮 Traffic Analysis (Object Detection Model)

Source Video Query Result
Source Video Query Result

🔮 PDF Question Answering (Question Answering Model)

App
Source Video

🔮 MNIST Digit Recognition (Image Classification Model)

Source Video Query Result
Source Video Query Result

🔮 Movie Emotion Analysis (Face Detection + Emotion Classification Models)

Source Video Query Result
Source Video Query Result

🔮 License Plate Recognition (Plate Detection + OCR Extraction Models)

Query Result
Query Result

Community and Support

👋 If you have general questions about EvaDB, want to say hello or just follow along, we'd like to invite you to join our Slack Community and to follow us on Twitter.

EvaDB Slack Channel

If you run into any problems or issues, please create a Github issue and we'll try our best to help.

Don't see a feature in the list? Search our issue tracker if someone has already requested it and add a comment to it explaining your use-case, or open a new issue if not. We prioritize our roadmap based on user feedback, so we'd love to hear from you.

Contributing

PyPI Version CI Status Documentation Status

EvaDB is the beneficiary of many contributors. All kinds of contributions to EvaDB are appreciated. To file a bug or to request a feature, please use GitHub issues. Pull requests are welcome.

For more information, see our contribution guide.

License

Copyright (c) 2018-present Georgia Tech Database Group. Licensed under Apache License.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

evadb-0.2.9.tar.gz (271.2 kB view details)

Uploaded Source

Built Distribution

evadb-0.2.9-py3-none-any.whl (541.0 kB view details)

Uploaded Python 3

File details

Details for the file evadb-0.2.9.tar.gz.

File metadata

  • Download URL: evadb-0.2.9.tar.gz
  • Upload date:
  • Size: 271.2 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.10.11

File hashes

Hashes for evadb-0.2.9.tar.gz
Algorithm Hash digest
SHA256 3381d6923b70f040922ff5eda9b9e9e9a9109429d27631a8efa4a0d15a09dc38
MD5 ea4f5ac8ad048347a9aa773ccfc818de
BLAKE2b-256 68aab19d3f45b9444660fe9c64189284d835a6d90d952d099c10945f6a3cec49

See more details on using hashes here.

File details

Details for the file evadb-0.2.9-py3-none-any.whl.

File metadata

  • Download URL: evadb-0.2.9-py3-none-any.whl
  • Upload date:
  • Size: 541.0 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.10.11

File hashes

Hashes for evadb-0.2.9-py3-none-any.whl
Algorithm Hash digest
SHA256 a59990321fbf07156d73080cf97b185446e4bcc7b1225aeef4a91e151209c29d
MD5 b18f163930568bd8e76b4506698218dd
BLAKE2b-256 d17c746dd98f0a00b8189d8a7e9080bd0f87a5b2514550f3cd49c25a4dbff31d

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page