The easiest way to serve AI apps and models - Build Model Inference APIs, Job queues, LLM apps, Multi-model pipelines, and more!
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Updated
Jul 30, 2025 - Python
The easiest way to serve AI apps and models - Build Model Inference APIs, Job queues, LLM apps, Multi-model pipelines, and more!
An AI-powered data science team of agents to help you perform common data science tasks 10X faster.
Scaffolding for serving ml model APIs using FastAPI
Kafka variant of the MLOps Level 1 stack
Fast, private data connectors for AI ⚡️🤖
An easy-to-use tool for making web service with API from your own Python functions.
Crack SWE (ML) / DS MAANG Interviews
A task queue for serving machine learning models to a website -- RabbitMQ, Celery, all the good stuff.
A playground for building and serving Retrieval-Augmented Generation (RAG) systems using best practices in MLOps and LLMOps, with open-source tools.
Incremental learning with CatBoost and Ray for scalable training, tuning, and serving of large ML models
Classification of scientific articles from Frontiers publisher. Deployment ready. Usable as template for text-classification use-cases.
Kids Care AI IOT Device - RaspberryPi USB Mic voice detection and Picamera fall detection.
Demonstrate the key features and benefits of using CircleCI for continuous integration and continuous deployment (CI/CD).
BentoML is a high-performance model serving framework it provides various scripts and configurations to help streamline and deployment process.
ML Project Generator – A simple and efficient CLI tool that automates the setup of machine learning projects. Instantly create a well-structured ML project with the right folders, boilerplate code, and dependencies in just one command! 🚀
This neural network can help determine the correspondence of the attached video topic to the video topics recommended by YouTube.
A simple Python script to check the strength of a password based on length, the inclusion of numbers, special characters, and upper/lower case letters.
Built a production-grade machine learning system for real-time ride fare and ETA prediction, inspired by Uber and Lyft infrastructure. https://rajesh1804.medium.com/%EF%B8%8F-ridecastai-2-0-c68dfac54dbd
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