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mlops-pipeline

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A complete production-ready MLOps framework with built-in distributed training, monitoring, and CI/CD. Deploy ML models to production with confidence using our battle-tested infrastructure.

  • Updated May 30, 2025
  • Python

Developed an image classification web app using CNN to differentiate cats and dogs. Achieved high accuracy, precision, recall, and F1 score. Pipeline involves data preprocessing, model training, Docker deployment on AWS ECS, user-friendly interface, and reliable CI/CD. Showcases deep learning's potential in image analysis.

  • Updated Jan 22, 2024
  • Jupyter Notebook

End-to-end ML platform for Yelp business recommendations and sentiment analysis. Features collaborative filtering (ALS), NLP classification, FastAPI REST API, PySpark data processing, MLflow tracking, Docker deployment, and CI/CD automation. Academic/research project demonstrating production ML engineering.

  • Updated Jun 3, 2026
  • Jupyter Notebook

Production-ready MLOps pipeline on AWS using SageMaker, Lambda, CodePipeline, and IaC (Terraform/CDK). Automates training, evaluation, & continuous retraining.

  • Updated Jan 14, 2025
  • Python

AI-powered document chat application built with Retrieval-Augmented Generation (RAG), enabling users to upload documents, extract relevant context, and ask natural language questions through an intelligent conversational interface. Designed for efficient knowledge retrieval, accurate responses, and scalable real-world use cases.

  • Updated Apr 29, 2026
  • Python

Welcome to this MLOps project, designed to demonstrate a robust pipeline for managing vehicle insurance data. This project aims to showcase skills that go into building and deploying a machine learning pipeline for real-world data management. Follow along to learn about project setup, data processing, model deployment, and CI/CD automation!

  • Updated Dec 28, 2025
  • Jupyter Notebook

End-to-end MLOps pipeline for hotel booking demand forecasting. Includes modular components for data ingestion, model training, evaluation, versioning, and deployment. Features configuration-based execution, CI/CD with GitHub Actions, and automated logging and testing.

  • Updated Apr 20, 2025
  • Jupyter Notebook

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