Azure Machine Learning
Enterprise-grade machine learning service to build and deploy models faster
Accelerate the end-to-end machine learning lifecycle
Empower developers and data scientists with a wide range of productive experiences for building, training, and deploying machine learning models faster. Accelerate time to market and foster team collaboration with industry-leading MLOps—DevOps for machine learning. Innovate on a secure, trusted platform, designed for responsible ML.
Productivity for all skill levels, with code-first and drag-and-drop designer, and automated machine learning
Robust MLOps capabilities that integrate with existing DevOps processes and help manage the complete ML lifecycle
Understand your models and eliminate bias with interpretability and fairness capabilities. Protect data with differential privacy and confidential computing. Use policies, audit trials and cost management for governance and control
Best-in-class support for open-source frameworks and languages including MLflow, Kubeflow, ONNX, PyTorch, TensorFlow, Python, and R
Boost productivity and access ML for all skills
Rapidly build and deploy machine learning models using tools that meet your needs regardless of skill level. Use the no-code designer to get started, or use built-in Jupyter notebooks for a code-first experience. Accelerate model creation with the automated machine learning UI, and access built-in feature engineering, algorithm selection, and hyperparameter sweeping to develop highly accurate models.
Operationalize at scale with robust MLOps
MLOps, or DevOps for machine learning, streamlines the machine learning lifecycle, from building models to deployment and management. Use ML pipelines to build repeatable workflows, and use a rich model registry to track your assets. Manage production workflows at scale using advanced alerts and machine learning automation capabilities. Profile, validate, and deploy machine learning models anywhere, from the cloud to the edge, to manage production ML workflows at scale in an enterprise-ready fashion.
Build responsible ML solutions
Access state-of-the-art responsible ML capabilities to understand protect and control your data, models and processes. Explain model behavior during training and inferencing and build for fairness by detecting and mitigating model bias. Preserve data privacy throughout the machine learning lifecycle with differential privacy techniques and use confidential computing to secure ML assets. Apply policies, use lineage and manage and control resources to meet regulatory standards.
Innovate on an open and flexible platform
Get built-in support for open-source tools and frameworks for machine learning model training and inferencing. Use familiar frameworks like PyTorch, TensorFlow, and scikit-learn, or the open and interoperable ONNX format. Choose the development tools that best meet your needs, including popular IDEs, Jupyter notebooks, and CLIs—or languages such as Python and R. Use ONNX Runtime to optimize and accelerate inferencing across cloud and edge devices.
Advanced security and governance
- Get the security from the ground up and build on the trusted cloud with Azure.
- Protect access to your resources with granular role-based access, custom roles and built-in mechanisms for identity authentication.
- Build train and deploy models securely by isolating your network with virtual networks and private links.
- Manage governance with policies, audit trails, quota and cost management.
- Streamline compliance with a comprehensive portfolio spanning 60 certifications including FedRAMP High and DISA IL5.
Pay only for what you need, with no upfront cost
For details, go to the Azure Machine Learning pricing page.
How to use Azure Machine Learning
Go to your studio web experience
Build and train
Deploy and manage
You can author new models and store your compute targets, models, deployments, metrics, and run histories in the cloud.
Start using Azure Machine Learning today
Customers using Azure Machine Learning
Dean Riddlesden, Senior Data Scientist, Global Analytics, Walgreens Boots Alliance
"If I have 200 models to train—I can just do this all at once. It can be farmed out to a huge compute cluster, and it can be done in minutes. So I'm not waiting for days."
Matthieu Boujonnier, Analytics Application Architect and Data Scientist, Schneider Electric
"With Azure Machine Learning, we can focus our testing on the most accurate models and avoid testing a large range of less valuable models. That saves months of time."
Diana Kennedy, Vice President for IT Strategy, Architecture and Planning, BP
"A key part of our transformation has been to embrace the cloud and the digital solutions and services that come with it. This includes a deep dive into AI and machine learning."
Naeem Khedarun, Principal Software Engineer (AI), ASOS
"By unifying our tech stack and bringing our engineers in Big Data and online software together with data scientists, we got our development time down from months to just a few weeks."
Phil Harris, assistant professor of physics, MIT
"The [Large Hadron Collider in Europe] pushes technology on many fronts...and produces data rates that are the largest in the world. We are an example of how to do analysis of large datasets."
Borrowell helps consumers improve credit using AI
Borrowell’s innovative AI technology uses credit scores to deliver recommendations that improve the credit and financial well-being of its Canadian customers.
Azure Machine Learning updates, blogs, and announcements
Azure Open Datasets, now in preview, offers access to curated datasets.
May 21, 2020
Meeting the challenges of today and tomorrow with Azure AI
New Responsible ML innovation in Azure Machine Learning
May 19, 2020
Build AI you can trust with responsible ML
Azure Machine Learning—New log streaming feature is now available
Azure Machine Learning available in US Gov
Integrate Azure Stream Analytics with Azure Machine Learning (in preview)
January 21, 2020
MLOps—the path to building a competitive edge
Frequently asked questions about Azure Machine Learning
The service is generally available in several countries/regions, with more on the way.
The service-level agreement (SLA) for Azure Machine Learning is 99.9 percent.
The Azure Machine Learning studio is the top-level resource for the machine learning service. It provides a centralized place for data scientists and developers to work with all the artifacts for building, training and deploying machine learning models.