Home>IT Tests>Questions>Azure Machine Learning Studio enables management of endpoints associated with model deployments, Loading datasets is done in the Azure Machine Learning Studio environment, The Designer tool is part of the Azure Machine Learning Studio environment, Azure Machine Learning Studio enables the creation and management of compute resources that are consumed by Pipelines
Question from the Azure Machine Learning Studio test
Azure Machine Learning Studio enables management of endpoints associated with model deployments, Loading datasets is done in the Azure Machine Learning Studio environment, The Designer tool is part of the Azure Machine Learning Studio environment, Azure Machine Learning Studio enables the creation and management of compute resources that are consumed by Pipelines
Medium
Which of the statements below are true?
Author: W3D TeamStatus: PublishedQuestion passed 14 times
Edit
0
Community EvaluationsNo one has reviewed this question yet, be the first!
0
Why does loading a Dataset with Azure ML Studio's built-in Dataset Loader containing records defined on multiple rows take longer than loading a Dataset of equivalent size but containing only records defined on rows? unique lines?1
How many records are used by the SMOTE module algorithm to calculate new records?1
Load data from locally stored files using Azure ML Studio's Datasets tab.0
How to use a Dataset in a Pipeline developed using the Designer tool in Azure Ml Studio0
List of data normalization methods offered by the Normalize Data module in Azure0
Remove duplicate records in Azure Data Factory0
The operations associated with a Clip Values module are necessarily applied to all the variables of a Dataset.