Data warehousing in Azure
Kumar Preeti Lata
Microsoft Certified: Senior Data Analyst/ Senior Data Engineer | Prompt Engineer | Gen AI | SQL, Python, R, PowerBI, Tableau, ETL| DataBricks, ADF, Azure Synapse Analytics | PGP Cloud Computing | MSc Data Science
Data warehousing in Azure involves using cloud-based services to store, manage, and analyze large volumes of data. Azure provides several services tailored for data warehousing and analytics. Here’s a detailed overview of the key Azure services related to data warehousing:
1. Azure Synapse Analytics
Azure Synapse Analytics (formerly known as Azure SQL Data Warehouse) is an integrated analytics service that combines big data and data warehousing. It offers a unified experience for ingesting, preparing, managing, and serving data for business intelligence and analytics.
2. Azure SQL Database
Azure SQL Database is a fully managed relational database service that offers scalability, performance, and advanced features. It’s often used for applications that require high availability and mission-critical workloads.
3. Azure Data Lake Storage (ADLS)
Azure Data Lake Storage is designed for big data analytics. It provides a scalable and secure data lake that can store large volumes of structured and unstructured data.
4. Azure Databricks
Azure Databricks is an Apache Spark-based analytics platform optimized for the Azure cloud. It provides collaborative environments for data engineering, data science, and machine learning.
领英推荐
5. Azure Data Factory
Azure Data Factory is a data integration service that allows you to create, schedule, and orchestrate data pipelines.
6. Azure Analysis Services
Azure Analysis Services provides enterprise-grade analytics capabilities with semantic data models.
7. Power BI
Power BI is a business analytics service that provides interactive visualizations and business intelligence capabilities.
Integration and Workflow
Azure’s data warehousing ecosystem provides a comprehensive set of tools and services to handle various data storage, processing, and analytical needs, making it suitable for a wide range of enterprise scenarios.