Here's a common and flexible directory structure that you can use as a starting point for any MLOPS project.
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Updated
Jan 17, 2024 - Python
Here's a common and flexible directory structure that you can use as a starting point for any MLOPS project.
An end-to-end MLOps pipeline(CI/CD/CT/CM) project for training, versioning, deploying, and monitoring machine learning models using FastAPI, Kubernetes, MLflow, DVC, Prometheus, and Grafana.
🍪 Cookiecutter template for MLOps Project. Based on: https://mlops-guide.github.io/
A project to kickstart your ML development
Azure MLOps (v2) solution accelerators. Enterprise ready templates to deploy your machine learning models on the Azure Platform.
Azure MLOps (v2) solution accelerators. Enterprise ready templates to deploy your machine learning models on the Azure Platform.
GenAIOps with Prompt Flow is a "GenAIOps template and guidance" to help you build LLM-infused apps using Prompt Flow. It offers a range of features including Centralized Code Hosting, Lifecycle Management, Variant and Hyperparameter Experimentation, A/B Deployment, reporting for all runs and experiments and so on.
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