Azure Data Lake Reference Architecture
3 cleansed and transformed data can be moved to azure synapse analytics to combine with existing structured data.
Azure data lake reference architecture. Data lake storage is designed for fault tolerance infinite scalability and high throughput ingestion of data with varying shapes and sizes. Typical uses for a data lake. Microservices architecture on azure service fabric. Still part of the azure data factory pipeline use azure data lake store gen 2 to save the original data copied from the semi structured data source.
Azure data explorer fast and highly scalable data exploration service. The data may be processed in batch or in real time. It removes the complexities of ingesting and storing all of your data while making it faster to get up and. These storage services are exposed to databricks users via dbfs to provide caching and optimized analysis over existing data.
It is an in depth data analytics tool for users to write business logic for data processing. 2 leverage data in azure blob storage to perform scalable analytics with azure databricks and achieve cleansed and transformed data. This kind of store is often called a data lake. File storage file shares that use the standard smb 3 0 protocol.
Data for batch processing operations is typically stored in a distributed file store that can hold high volumes of large files in various formats. Azure data lake storage massively scalable secure data lake functionality built on azure blob storage. Options for implementing this storage include azure data lake store or blob containers in azure storage. 1 combine all your structured unstructured and semi structured data logs files and media using azure data factory to azure blob storage.
Azure netapp files enterprise grade azure file shares powered by netapp. Data lake processing involves one or more processing engines built with these goals in mind and can operate on data stored in a data lake at scale. Azure data lake includes all the capabilities required to make it easy for developers data scientists and analysts to store data of any size shape and speed and do all types of processing and analytics across platforms and languages. Azure data lake analytics is the latest microsoft data lake offering.
Users can connect power bi directly to their databricks clusters using jdbc in order to query data interactively at massive scale using familiar tools. Azure storage and azure data lake integration. When to use a data lake. Big data solutions typically involve a large amount of non relational data such as key value data json documents or time series data.
Azure data factory mapping data flows or azure databricks notebooks can now be used to process the semi structured data and apply the necessary transformations before data can be used for reporting. The most important feature of data lake analytics is its ability to process unstructured data by applying schema on reading logic which imposes a structure on the data as you.