Deep Learning Workspace
Перейти к файлу
Hongzhi Li 27d3a3a82e Set up CI with Azure Pipelines
[skip ci]
2020-06-18 14:54:08 -07:00
docs fix bugs and add docs (#1111) 2020-05-14 14:52:51 -07:00
src Merge branch 'v1.6' 2020-05-28 00:15:18 +00:00
.gitignore repair manager - added ECC Reboot Node Rule (#798) 2020-02-12 16:29:12 -08:00
.style.yapf format (#929) 2020-03-17 14:11:41 -07:00
.travis.yml Use markdown in insight diagnostics (#1122) 2020-05-19 20:50:55 -07:00
DevDocker.md format (#929) 2020-03-17 14:11:41 -07:00
License.md format (#929) 2020-03-17 14:11:41 -07:00
README.md format (#929) 2020-03-17 14:11:41 -07:00
azure-pipelines-codesync.yml Set up CI with Azure Pipelines 2020-06-18 14:54:08 -07:00
azure-pipelines.yml format (#929) 2020-03-17 14:11:41 -07:00
install_prerequisites.sh optimization debian package manager tweaks (#905) 2020-03-09 11:09:38 -07:00

README.md

Build Status Coverage Status

Project Overview

Deep Learning Workspace (DLWorkspace) is an open source toolkit that allows AI scientists to spin up an AI cluster in turn-key fashion. Once setup, the DLWorkspace provides web UI and/or restful API that allows AI scientist to run job (interactive exploration, training, inferencing, data analystics) on the cluster with resource allocated by DL Workspace cluster for each job (e.g., a single node job with a couple of GPUs with GPU Direct connection, or a distributed job with multiple GPUs per node). DLWorkspace also provides unified job template and operating environment that allows AI scientists to easily share their job and setting among themselves and with outside community. DLWorkspace out-of-box supports all major deep learning toolkits (PyTorch, TensorFlow, CNTK, Caffe, MxNet, etc..), and supports popular big data analytic toolkit such as hadoop/spark.

Documentations

DLWorkspace Cluster Deployment

Frequently Asked Questions