

Microsoft Azure Machine Learning Studio and Google Vertex AI are leading solutions in the machine learning sector. Google Vertex AI appears to have an edge in simplicity and integration with pre-trained models, beneficial for a broader audience, whereas Azure stands out in integration with Microsoft services, ideal for users within that ecosystem.
Features: Microsoft Azure Machine Learning Studio offers a user-friendly drag-and-drop interface, extensive integration with Microsoft services, and robust cognitive services for data management. Google Vertex AI shines with simplicity and flexibility, providing a wide range of pre-trained models, multi-model capabilities, and excellent integration within the Google ecosystem.
Room for Improvement: Microsoft Azure Machine Learning Studio could enhance model deployment capabilities, integrate better with non-Microsoft services, and expand machine learning algorithms. User customization and pricing structure improvements are also suggested. Google Vertex AI requires optimization enhancements, better ease of use for non-technical users, and more comprehensive documentation.
Ease of Deployment and Customer Service: Microsoft Azure Machine Learning Studio supports public, private, and hybrid cloud deployments with well-received technical support, though initial support may be less efficient. Google Vertex AI focuses on public and hybrid cloud environments, with effective support and detailed documentation. Google's ease of use in deployment is noted as an advantage.
Pricing and ROI: Microsoft Azure Machine Learning Studio offers varied pricing based on usage and scalability through pay-per-use and subscription models, but the complexity of pricing can be challenging. Google Vertex AI's pricing is seen as moderate with clear and flexible models. Both platforms provide considerable ROI by improving operational efficiency and reducing project delivery times.
| Product | Market Share (%) |
|---|---|
| Google Vertex AI | 8.1% |
| Microsoft Azure Machine Learning Studio | 3.5% |
| Other | 88.4% |

| Company Size | Count |
|---|---|
| Small Business | 5 |
| Midsize Enterprise | 3 |
| Large Enterprise | 7 |
| Company Size | Count |
|---|---|
| Small Business | 23 |
| Midsize Enterprise | 6 |
| Large Enterprise | 30 |
Build, deploy, and scale ML models faster, with pre-trained and custom tooling within a unified artificial intelligence platform.
Azure Machine Learning is a cloud predictive analytics service that makes it possible to quickly create and deploy predictive models as analytics solutions.
It has everything you need to create complete predictive analytics solutions in the cloud, from a large algorithm library, to a studio for building models, to an easy way to deploy your model as a web service. Quickly create, test, operationalize, and manage predictive models.
Microsoft Azure Machine Learning Will Help You:
With Microsoft Azure Machine Learning You Can:
Microsoft Azure Machine Learning Features:
Microsoft Azure Machine Learning Benefits:
Reviews from Real Users:
"The ability to do the templating and be able to transfer it so that I can easily do multiple types of models and data mining is a valuable aspect of this solution. You only have to set up the flows, the templates, and the data once and then you can make modifications and test different segmentations throughout.” - Channing S.l, Owner at Channing Stowell Associates
"The most valuable feature is the knowledge bank, which allows us to ask questions and the AI will automatically pull the pre-prescribed responses.” - Chris P., Tech Lead at a tech services company
"The UI is very user-friendly and the AI is easy to use.” - Mikayil B., CRM Consultant at a computer software company
"The solution is very fast and simple for a data science solution.” - Omar A., Big Data & Cloud Manager at a tech services company
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