Design AI with Apache Spark™-based analytics
Big data analytics and AI with optimized Apache Spark
Unlock insights from all your data and build artificial intelligence (AI) solutions with Azure Databricks, set up your Apache Spark™ environment in minutes, autoscale, and collaborate on shared projects in an interactive workspace. Azure Databricks supports Python, Scala, R, Java, and SQL, as well as data science frameworks and libraries including TensorFlow, PyTorch, and scikit-learn.
Apache Spark™ is a trademark of the Apache Software Foundation.
Reliable data engineeringLarge-scale data processing for batch and streaming workloads
Analytics for all your dataEnable analytics for the most complete and recent data
Collaborative data scienceSimplify and accelerate data science on large datasets
Rooted in open sourceFast, optimized Apache Spark environment
Start quickly with an optimized Apache Spark environment
Azure Databricks provides the latest versions of Apache Spark and allows you to seamlessly integrate with open source libraries. Spin up clusters and build quickly in a fully managed Apache Spark environment with the global scale and availability of Azure. Clusters are set up, configured, and fine-tuned to ensure reliability and performance without the need for monitoring. Take advantage of autoscaling and auto-termination to improve total cost of ownership (TCO).Read Azure Databricks documentation
Boost productivity with a shared workspace and common languages
Collaborate effectively on an open and unified platform to run all types of analytics workloads, whether you are a data scientist, data engineer, or a business analyst. Build with your choice of language, including Python, Scala, R, and SQL. Get easy version control of notebooks with GitHub and Azure DevOps.Learn how to create an Azure Databricks workspace
Turbocharge machine learning on big data
Access advanced automated machine learning capabilities using the integrated Azure Machine Learning to quickly identify suitable algorithms and hyperparameters. Simplify management, monitoring, and updating of machine learning models deployed from the cloud to the edge. Azure Machine Learning also provides a central registry for your experiments, machine learning pipelines, and models.Watch a webinar on Azure Databricks and Azure Machine Learning
Get high-performance modern data warehousing
Combine data at any scale and get insights through analytical dashboards and operational reports. Automate data movement using Azure Data Factory, then load data into Azure Data Lake Storage, transform and clean it using Azure Databricks, and make it available for analytics using Azure Synapse Analytics. Modernize your data warehouse in the cloud for unmatched levels of performance and scalability.Learn about cloud scale analytics on Azure
Key service capabilities
Optimized spark engine
Simple data processing on autoscaling infrastructure, powered by highly optimized Apache Spark™ for up to 50x performance gains.
Machine learning run time
One-click access to preconfigured machine learning environments for augmented machine learning with state-of-the-art and popular frameworks such as PyTorch, TensorFlow, and scikit-learn.
Track and share experiments, reproduce runs, and manage models collaboratively from a central repository.
Choice of language
Use your preferred language, including Python, Scala, R, Spark SQL and .Net—whether you use serverless or provisioned compute resources.
Quickly access and explore data, find and share new insights, and build models collaboratively with the languages and tools of your choice.
Bring data reliability and scalability to your existing data lake with an open source transactional storage layer designed for the full data lifecycle.
Native integrations with Azure services
Complete your end-to-end analytics and machine learning solution with deep integration with Azure services such as Azure Data Factory, Azure Data Lake Storage, Azure Machine Learning, and Power BI.
Enable seamless collaboration between data scientists, data engineers, and business analysts.
Effortless native security protects your data where it lives and creates compliant, private, and isolated analytics workspaces across thousands of users and datasets.
Run and scale your most mission-critical data workloads with confidence on a trusted data platform, with ecosystem integrations for CI/CD and monitoring.
Learn more from solution architecture examples
Get insights from live-streaming data with ease. Capture data continuously from any IoT device, or logs from website clickstreams, and process it in near-real time.
Transform your data into actionable insights using best-in-class machine learning tools. This architecture allows you to combine any data at any scale, and to build and deploy custom machine learning models at scale.
Accelerate and manage your end-to-end machine learning lifecycle with Azure Databricks, MLflow, and Azure Machine Learning to build, share, deploy, and manage machine learning applications.
Data security and privacy are non-negotiable
Secure, monitor, and manage your data and analytics solutions with a wide range of industry-leading security and compliance features.
Use single sign-on and Azure Active Directory integration to enable data professionals to spend more time discovering insights.
Azure has more certifications than any other cloud provider. View a comprehensive list.
Learn more about Azure Databricks products and services
Azure Databricks pricing
Spin up clusters quickly and autoscale up or down based on your usage needs. Explore all Azure Databricks pricing options.
Trusted by companies across industries
Identifying safety hazards using cloud-based deep learning
Shell uses Azure, AI, and machine vision to better protect customers and employees.
Accelerating performance and increasing cost savings
Data service renewablesAI uses Azure and Apache Spark to help build a stable and profitable solar energy market.
Enabling an end-to-end analytics solution in Azure
Logistics provider LINX Cargo Care Group drives companywide innovation using Azure Databricks.
Get started with Azure Databricks
Community and Azure support
Get the latest Azure Databricks news and resources
Explore Azure Databricks resources
Frequently asked questions about Azure Databricks
The Azure Databricks SLA guarantees 99.95 percent availability.
A Databricks unit, or DBU, is a unit of processing capability per hour, billed on per-second usage.
A data engineering workload is a job that automatically starts and terminates the cluster on which it runs. For example, a workload may be triggered by the Azure Databricks job scheduler, which launches an Apache Spark cluster solely for the job and automatically terminates the cluster after the job is complete.
The data analytics workload isn’t automated. For example, commands within Azure Databricks notebooks run on Apache Spark clusters until they’re manually terminated. Multiple users can share a cluster to analyze it collaboratively.