https://store-images.s-microsoft.com/image/apps.49917.8970defb-d2fd-4edf-ad17-109257665868.bb029000-8254-4ec6-b6de-3c5b7f25caa9.a75a84d2-1f34-46c8-bb3b-5337bbdc06a7

Mlflow on Windows Server 2022

Apps4Rent LLC

Mlflow on Windows Server 2022

Apps4Rent LLC

MLflow is an open-source platform to manage the ML lifecycle.

MLflow is an open-source platform to manage the ML lifecycle, including experimentation, reproducibility, deployment, and a central model registry. MLflow currently offers four components which are MLflow Tracking, MLflow Projects, MLflow Models, Model Registry. MLflow is library agnostic. You can use it with any machine learning library, and in any programming language, since all functions are accessible through a REST API and CLI. For convenience, the project also includes a Python API, R API, and Java API. It has built-in integrations with many popular ML libraries, but can be used with any library, algorithm, or deployment tool. It is designed to be extensible, so you can write plugins to support new workflows, libraries, and tools.

Key features of MLflow:

  • Tracking: MLflow allows you to track your ML experiments by logging parameters, metrics, and artifacts. This data can then be used to visualize and compare runs, identify the best models, and reproduce experiments.
  • Packaging: MLflow provides a standard format for packaging ML models. This makes it easy to share and deploy models to different environments.
  • Deployment: MLflow includes a number of tools for deploying ML models to production, including a model registry, a REST API, and a CLI.
  • Open source.

Disclaimer: Apps4Rent does not offer commercial licenses of any of the products mentioned above. The products come with open source licenses. 

Default ports:

  • RDP: 3389
  • HTTP: 80
  • HTTPS: 443

Learn More:

Managed Azure services
Solutions on Microsoft Azure