This is the Linux app named ClassyVision whose latest release can be downloaded as v0.7.0sourcecode.tar.gz. It can be run online in the free hosting provider OnWorks for workstations.
Download and run online this app named ClassyVision with OnWorks for free.
このアプリを実行するには、次の手順に従ってください。
-1。このアプリケーションをPCにダウンロードしました。
--2。ファイルマネージャーhttps://www.onworks.net/myfiles.php?username=XXXXXに必要なユーザー名を入力します。
-3。このアプリケーションをそのようなファイルマネージャにアップロードします。
-4。このWebサイトからOnWorksLinuxオンラインまたはWindowsオンラインエミュレーターまたはMACOSオンラインエミュレーターを起動します。
-5。起動したばかりのOnWorksLinux OSから、必要なユーザー名でファイルマネージャーhttps://www.onworks.net/myfiles.php?username=XXXXXにアクセスします。
-6。アプリケーションをダウンロードし、インストールして実行します。
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クラッシービジョン
DESCRIPTION
Classy Vision is a PyTorch-based framework designed for large-scale training and deployment of state-of-the-art image and video classification models. Developed by Facebook Research, it serves as an end-to-end system that simplifies the process of training at scale, reducing redundancy and friction in moving from research to production. Unlike traditional computer vision libraries that focus solely on modular components, Classy Vision provides a complete and unified framework, featuring distributed training, reproducible experiments, and flexible configuration tools. It offers high performance and scalability—capable of training models like ResNet-50 on ImageNet in just minutes—while remaining accessible to both researchers and production engineers. The library integrates seamlessly with PyTorch Hub for easy access to pretrained models and supports elastic training using PyTorch Elastic, making distributed training robust to changes in cluster resources or hardware failures.
オプション
- End-to-end PyTorch framework for large-scale image and video classification
- Modular design for fast setup, flexible configuration, and easy customization
- High-performance distributed training with demonstrated scaling efficiency
- Seamless PyTorch Hub integration for pretrained model access and fine-tuning
- Elastic training support with PyTorch Elastic for resource-adaptive training
- AWS integration for large-scale experiments and smooth research-to-production transition
プログラミング言語
JavaScript、Python
カテゴリー
This is an application that can also be fetched from https://sourceforge.net/projects/classyvision.mirror/. It has been hosted in OnWorks in order to be run online in an easiest way from one of our free Operative Systems.
