The workspace the top-level resource Azure Machine Learning. keeps history all training runs, logs, metrics, output, a snapshot your scripts.
Overview Azure Monitor workspace, is unique environment data collected Azure Monitor.
Microsoft radically simplifying cloud dev ops first-of-its-kind Azure Preview portal portal.azure.com
A workspace. use Azure Machine Learning, you'll need workspace. workspace the central place view manage the artifacts resources create. compute instance. compute instance a pre-configured cloud-computing resource you use train, automate, manage, track machine learning models. compute instance the quickest to start the .
The workspace: workspace the top-level resource Azure Machine Learning. Data scientists need access the workspace train track models, to deploy models endpoints
Cloud Workspace Azure (CWA) Cloud Workspace Management Suite the quintessential tools simplifying deployment ongoing administration environments Azure. Administrators ANY industry easily provision, manage optimizes servers, desktop-centric Windows workspaces (RDS, WVD, VDI) Azure ANY user.
Arguments Reference following arguments supported: - (Required) Specifies name should used this Azure Monitor Workspace. Changing forces new resource be created. resource_group_name - (Required) Specifies name the Resource Group the Azure Monitor Workspace exist.
We excited announce general availability workspaces Azure API Management! Workspaces enable organizations manage APIs productively, securely, reliably a federated approach.
Defines Azure Machine Learning resource managing training deployment artifacts. Workspace a fundamental resource machine learning Azure Machine Learning. use workspace experiment, train, deploy machine learning models. workspace tied an Azure subscription resource group, has associated SKU. more information workspaces, .
An Azure Monitor workspace a unique environment data collected Azure Monitor. workspace its data repository, configuration, permissions.
What is Azure Databricks | A Complete Guide with Best Practices