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Azure Machine Learning vs BigML: What are the differences?
Introduction
In this article, we will discuss the key differences between Azure Machine Learning and BigML. Both Azure Machine Learning and BigML are popular platforms for machine learning and predictive analytics. However, there are several factors that differentiate them from each other.
Pricing and Deployment Options: Azure Machine Learning provides a flexible pricing model with different pricing tiers based on usage and resource allocation. It offers various deployment options, including cloud, on-premises, and hybrid environments. On the other hand, BigML offers a subscription-based pricing model with different plans based on the number of users and features required. It primarily operates in the cloud and does not support on-premises or hybrid deployments.
Integration with Other Azure Services: Azure Machine Learning seamlessly integrates with other Azure services such as Azure Databricks, Azure Data Lake Storage, and Azure Kubernetes Service. It provides an extensive ecosystem of tools and services for data preprocessing, model training, and deployment. BigML also offers integrations with popular platforms like Excel, Google Sheets, and Zapier, but it does not have the same level of integration with the Azure ecosystem.
AutoML Capabilities: Azure Machine Learning includes AutoML capabilities that automate the machine learning process, allowing users to easily train and deploy models without extensive manual intervention. It provides automated feature engineering, model selection, and hyperparameter tuning. BigML also offers AutoML functionality but with fewer automated features compared to Azure Machine Learning.
Support for Advanced Analytics: Azure Machine Learning provides support for advanced analytics tasks such as deep learning, natural language processing, and time series forecasting. It offers pre-built models and frameworks for these specialized tasks, making it suitable for complex machine learning scenarios. BigML, on the other hand, focuses more on traditional machine learning algorithms and does not have the same level of support for advanced analytics tasks.
Collaboration and Model Versioning: Azure Machine Learning provides collaboration features that allow multiple users to work together on machine learning projects. It supports versioning of models, datasets, and pipelines, making it easier to track and manage changes over time. BigML also supports collaboration but with limited versioning capabilities, making it more challenging to track and manage changes to models and datasets.
Community and Documentation: Azure Machine Learning benefits from Microsoft's vast community and extensive documentation resources. It provides comprehensive documentation, tutorials, and sample code, making it easier for users to learn and adopt the platform. BigML also has a supportive community but with comparatively fewer resources and documentation available.
In summary, Azure Machine Learning and BigML differ in terms of pricing and deployments options, integration with other services, AutoML capabilities, support for advanced analytics, collaboration features, and available community and documentation resources.
Pros of Azure Machine Learning
Pros of BigML
- Ease of use, great REST API and ML workflow automation1