Skip to content

Visual Studio Tools for AI is a free Visual Studio extension to build, test, and deploy deep learning / AI solutions. It seamlessly integrates with Azure Machine Learning for robust experimentation capabilities, including but not limited to submitting data preparation and model training jobs transparently to different compute targets. Additional…

Notifications You must be signed in to change notification settings

jayramankumar/vs-tools-for-ai

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

66 Commits
 
 
 
 
 
 
 
 

Repository files navigation

Visual Studio Tools for AI

Visual Studio Tools for AI is an extension to build, test, and deploy Deep Learning / AI solutions. It seamlessly integrates with Azure Machine Learning for robust experimentation capabilities, including but not limited to submitting data preparation and model training jobs transparently to different compute targets. Additionally, it provides support for custom metrics and run history tracking, enabling data science reproducibility and auditing. Enterprise ready collaboration, allow to securely work on project with other people.

Get started with deep learning using Microsoft Cognitive Toolkit (CNTK), Google TensorFlow, or other deep-learning frameworks today.

Quick Links

Getting Started

Quickstarts

Tutorials

Supported Operating Systems

Currently this extension supports 64-bit Windows operating systems. Windows 10 is recommended for the best compatibility.

Note

32-bit Windows are not supported.

Supported Visual Studio versions

Visual Studio Tools for AI works with both Visual Studio 2017 and 2015 on Windows. Community, Professional and Enterprise editions are supported.

This extension is hosted on Visual Studio MarketPlace in two VS 2017, and VS 2015 packages. When downloading, the package file name may incorrectly end with ".zip". Please save it as ".vsix" and then install locally.

For the Visual Studio Code version please see Visual Studio Code Tools for AI

Develop, debug and deploy deep learning models and AI solutions

Use the productivity features of Visual Studio to accelerate AI innovation today. Use built-in code editor features like syntax highlighting, IntelliSense and text auto formatting. You can interactively test your deep learning application in your local environment using step-through debugging on local variables and models.

Learn more about creating deep learning projects in Visual Studio

deep learning ide

Get started quickly with the Azure Machine Learning Sample Gallery

Visual Studio Tools for AI is integrated with Azure Machine Learning to make it easy to browse through a gallery of sample experiments using CNTK, TensorFlow, MMLSpark and more.

Learn more about creating projects from the sample gallery

sample explorer

Scale out deep learning model training and/or inferencing to the cloud

This extension makes it easy to train models on your local computer or you can submit jobs to the cloud by using our integration with Azure Machine Learning. You can submit jobs to different compute targets like Spark clusters, Azure GPU virtual machines and more

Learn more about training models in the cloud

submit job

Support

Support for this extension is provided on our GitHub Issue Tracker. You can submit a bug report, a feature suggestion or participate in discussions.

Code of Conduct

This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact [email protected] with any additional questions or comments.

Privacy Statement

The Microsoft Enterprise and Developer Privacy Statement describes the privacy statement of this software.

License

This extension is licensed under the MIT License and subject to the terms of the End User License Agreement

About

Visual Studio Tools for AI is a free Visual Studio extension to build, test, and deploy deep learning / AI solutions. It seamlessly integrates with Azure Machine Learning for robust experimentation capabilities, including but not limited to submitting data preparation and model training jobs transparently to different compute targets. Additional…

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published