•1 min read•from Towards Data Science
AWS vs. Azure: A Deep Dive into Model Training – Part 2

This article covers how Azure ML's persistent, workspace-centric compute resources differ from AWS SageMaker's on-demand, job-specific approach. Additionally, we explored environment customization options, from Azure's curated environments and custom environments to SageMaker's three level of customizations.
The post AWS vs. Azure: A Deep Dive into Model Training – Part 2 appeared first on Towards Data Science.
Want to read more?
Check out the full article on the original site
Tagged with
#big data management in spreadsheets
#generative AI for data analysis
#enterprise-level spreadsheet solutions
#conversational data analysis
#rows.com
#Excel alternatives for data analysis
#real-time data collaboration
#intelligent data visualization
#AWS
#Azure
#model training
#SageMaker
#ML
#Azure ML
#compute resources
#environment customization
#workspace-centric
#curated environments
#custom environments
#on-demand