Trace Id is missing
Skip to main content
Azure

Azure Machine Learning

Use an enterprise-grade AI service for the end-to-end machine learning (ML) lifecycle
OVERVIEW

Build business-critical ML models at scale

  • Streamline prompt engineering and ML model workflows. Accelerate model development with powerful AI infrastructure.
  • Reproduce end-to-end pipelines and automate workflows with continuous integration and continuous delivery (CI/CD).
  • Unify data and AI governance with built-in security and compliance. Run compute anywhere for hybrid machine learning.
  • Gain visibility into models and evaluate language model workflows. Mitigate fairness, biases, and harm with built-in safety system.
FEATURES

Take advantage of key features for the full ML lifecycle

Data preparation

Quickly iterate data preparation on Apache Spark clusters within Azure Machine Learning, interoperable with Microsoft Fabric.

Feature store

Increase agility in shipping your models by making features discoverable and reusable across workspaces.

AI infrastructure

Take advantage of purpose-built AI infrastructure uniquely designed to combine the latest GPUs and InfiniBand networking.

Automated machine learning

Rapidly create accurate machine learning models for tasks including classification, regression, vision, and natural language processing.

Responsible AI

Build responsible AI solutions with interpretability capabilities. Assess model fairness through disparity metrics and mitigate unfairness.

Model catalog

Discover, fine-tune, and deploy foundation models from Microsoft, OpenAI, Hugging Face, Meta, Cohere and more using the model catalog.

Prompt flow

Design, construct, evaluate, and deploy language model workflows with prompt flow.

Managed endpoints

Operationalize model deployment and scoring, log metrics, and perform safe model rollouts.

Built-in security and compliance

A person sitting on the chair and working with laptop
PRICING

Pay only for what you need, with no upfront cost

Use Azure Machine Learning with no extra cost. Charges apply only for the underlying compute resources utilized during model training or inference. You have the flexibility to select from a diverse range of machine types, spanning categories such as general-purpose CPUs and specialized GPUs.

What’s new in Azure Machine Learning

 Discover the latest features and announcements from Azure Machine Learning.
A light blue background
CUSTOMER STORIES

Customers are innovating with Azure Machine Learning

RESOURCES

Azure Machine Learning resources

Back to tabs

Frequently asked questions

  • The service is available in several Azure regions, with more on the way.
  • The SLA for Azure Machine Learning is 99.9 percent uptime.
  • Azure Machine Learning studio is the top-level resource for Azure Machine Learning. This capability provides a centralized place for data scientists and developers to work with all the artifacts for building, training, and deploying machine learning models.
  • Azure Machine Learning is a comprehensive machine learning platform that supports language model fine-tuning and deployment. Using the Azure Machine Learning model catalog, users can create an endpoint for Azure OpenAI Service and use RESI APIs to integrate models into applications.
  • There's no additional charge to use Azure Machine Learning. However, along with compute, you will incur separate charges for other Azure services consumed, including but not limited to Azure Blob Storage, Azure Key Vault, Azure Container Registry, and Azure Application Insights. See pricing details.
Two person's sitting at a table with a computer
ACCOUNT SIGNUP

Get started with a free account

Start with $200 Azure credit
A person looking at a computer
ACCOUNT SIGNUP

Get started with pay-as-you-go pricing

There’s no upfront commitment – cancel anytime.
#chatEngagement { color: #fff; background-color: #006abb; border: 1px solid #0078d4; border-radius: 4px; display: inline-block; font-size: 14px; font-weight: 600; padding: 10px 16px; } #chatEngagement:hover, #chatEngagement:active { text-decoration: underline; } #chatDisengagement { color: #0062ad; display: inline-block; font-size: 14px; font-weight: 600; padding-right: 1em; position: relative; text-decoration: none; border: none; background-color: transparent; } #chatEngagement:focus { outline: 1px solid #fff; outline-offset: -4px; text-decoration: underline; } #chatDisengagement:after { background-image: url("data:image/svg+xml,%3Csvg viewBox='0 0 12 12' fill='none' xmlns='http://www.w3.org/2000/svg'%3E%3Cpath d='M4 1L9 6L4 11' stroke='%230062ad'/%3E%3C/svg%3E"); content: ' '; height: 12px; width: 12px; display: inline-flex; vertical-align: middle; margin-left: .2em; transition: all .2s ease-in-out; position: absolute; bottom: -6px; background-color: transparent; } #chatDisengagement:focus { outline-offset: 10px; } #lp-iframe-container { border: 0; bottom: 0; box-shadow: 0 5px 15px 0 #00000033; height: 500px; left: auto !important; min-width: 300px; max-width: 350px; padding: 0; position: fixed; right: 0; top: auto !important; z-index: 1031; } #iFrame { height: 100%; width: 100%; border: 0; } #proactive-chat-dialog { position: fixed; z-index: 10400; bottom: -24px; right: 11px; } #proactive-chat-dialog .chatContainer { min-width: 272px; height: 277px; color: #000; line-height: 0; position: relative; border: 0 !important; background-repeat: no-repeat !important; background-color: #fff !important; margin: auto; padding: 12px; background-size: contain !important; box-shadow: 0 2.8px 2.2px rgba(0, 0, 0, 0.034), 0 6.7px 5.3px rgba(0, 0, 0, 0.048), 0 12.5px 10px rgba(0, 0, 0, 0.06), 0 22.3px 17.9px rgba(0, 0, 0, 0.072), 0 41.8px 33.4px rgba(0, 0, 0, 0.086), 0 100px 80px rgba(0, 0, 0, 0.12); } #proactive-chat-dialog .chatContainer .chat-cta { text-align: center; font-size: 24px; font-weight: 600; position: relative; top: 160px; } #proactive-chat-dialog .chatContainer .chat-buttons { position: relative; top: 185px; width: 100%; display: flex; gap: 1em; justify-content: center; flex-direction: column; } #proactive-chat-dialog .chatContainer .chat-buttons .arrow-link { width: auto; margin: auto; } #proactive-chat-dialog .chatContainer .chat-buttons .arrow-link:after { bottom: -6px; } @media only screen and (min-width: 33.75em) { #proactive-chat-dialog .chatContainer .chat-buttons { top: 200px; flex-direction: row; } } </style> <div id="proactive-chat-dialog" class="proactive-chat-hidden"> <div class="chatContainer" style="background: url('{{module.bg-img-src}}') no-repeat top left" > <div class="chat-cta">{{module.heading}}</div> <div class="chat-buttons"> <button type="button" id="chatEngagement" aria-label="{{chat-engagement.aria-label}}" class="button button--primary01 lp-chatnow" data-lp-event="click" data-bi-id="expand-chat" data-bi-an="chat" data-bi-chtid="azure chat 1" data-bi-chtnm="live person proactive chat" data-bi-bhvr="16" data-bi-tn="button button--primary01 lp-chatnow" > {{chat-engagement.btn-txt}} </button> <button type="button" id="chatDisengagement" aria-label="{{chat-disengagement.aria-label}}" class="arrow-link lp-nothanks" data-lp-event="close" data-bi-id="collapse-chat" data-bi-an="chat" data-bi-chtid="azure chat 1" data-bi-chtnm="live person proactive chat" data-bi-tn="arrow-link lp-nothanks" > {{chat-disengagement.btn-txt}} </button> </div> </div> </div> '/>
AI-powered assistant