Testing out NannyML
- Updated
Mar 2, 2025 - Jupyter Notebook
Testing out NannyML
Minimal MLOps regression skeleton (California Housing) with training pipeline, Evidently drift/performance report, FastAPI prediction service, Dockerized training/serving environments, ready for CI/CD extension
Production-ready NLP classifier: fine-tuned DistilBERT across 19 e-commerce categories with FastAPI serving, real-time drift detection via Evidently AI, and a React analytics dashboard. Fully containerized with Docker + CI/CD.
ML Project END to END
This repository hosts a machine learning tool for breast cancer classification, emphasizing model interpretability. It is deployed on Streamlit Cloud, with a PostgreSQL database for tracking results and data drift, and includes an automated retraining workflow.
DriftSiren is a production-grade platform for real-time data drift and quality monitoring. Built with Next.js, FastAPI, and Docker, it tracks feature drift, provides live alerts, and visualizes metrics on a sleek dashboard. Includes agent, APIs, Celery workers, and Kubernetes-ready setup.
Exploring what a real-time distributed model serving and data drift monitoring solution could look like within MLOps
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