This time we’re going bigger than ever. Fabric, Power BI, SQL, AI and more. We're covering it all. You won't want to miss it.
Learn moreDid you hear? There's a new SQL AI Developer certification (DP-800). Start preparing now and be one of the first to get certified. Register now
Scalable analytics can be complex, fragmented, and expensive. With Microsoft Fabric, you don't have to spend all your time combining various services from different vendors. Instead, you can use a single product that is easy to understand, set up, create, and manage. Every data source and analytics service is connected, reshaping how you will access, manage and act on data and insights.
Fabric, a unified software-as-a-service (SaaS) offering, reshapes how you use data. Data is now stored in a single open format in OneLake, accessible by all the analytics engines in the platform. Fabric offers scalability, cost-effectiveness, accessibility from anywhere with an internet connection, and continuous updates and maintenance provided by Microsoft.
Fabric offers a set of analytics workloads that are designed to accomplish specific tasks and work together seamlessly. Fabric's workloads include:
| Introduction to Microsoft Fabric | |||
| Module | Summary | Learning objectives | |
| Introduction to end-to-end analytics using Microsoft Fabric | Discover how Microsoft Fabric can meet your enterprise's analytics needs in one platform. Learn about Microsoft Fabric, how it works, and identify how you can use it for your analytics needs. |
|
|
| Get started with Lakehouses | A Lakehouse combined the flexible and scalable storage of a data lake with the analytical querying and modeling capabilities of a data warehouse. Microsoft Fabric provides a lakehouse solution that powers end-to-end data analytics in a single software-as-a-service platform. |
|
|
| Use Apache Spark to work with files in a lakehouse | Apache Spark is a core technology for large-scale data analytics. Microsoft Fabric provides support for Spark clusters, enabling you to analyze and process data in a Lakehouse at scale. |
|
|
| Work with Delta Lake tables in Microsoft Fabric | Tables in a Microsoft Fabric lakehouse are based on the Delta Lake storage format commonly used in Apache Spark. By using the enhanced capabilities of delta tables, you can create advanced analytics solutions. |
|
|
| Use Data Factory pipelines in Microsoft Fabric | Microsoft Fabric includes Data Factory capabilities, including the ability to create pipelines that orchestrate data ingestion and transformation tasks. |
|
|
| Ingest data with Dataflows Gen2 in Microsoft Fabric | Ingesting data into an analytical store is a key workload in a data analytics solution. Microsoft Fabric's Data Factory capability includes Dataflows (Gen2), which enable you to visually build multi-step data ingestion and transformation solutions using Power Query. |
|
|
| Get started with data warehouses in Microsoft Fabric | Data warehouses are analytical stores built on a relational schema to support SQL queries. Microsoft Fabric enables you to create a relational data warehouse in your workspace and integrate it easily with other elements of your end-to-end analytics solution. |
|
|
| Get started with real-time analytics in Microsoft Fabric | Analysis of real-time data streams is a critical capability for any modern data analytics solution. You can use the Real-Time Analytics capabilities of Microsoft Fabric to ingest, query, and process streams of data. |
|
|
| Get started with data science in Microsoft Fabric | Data science is the foundation of machine learning and AI. In Microsoft Fabric, data scientists can manage data, notebooks, experiments, and models while easily accessing data from across the organization and collaborating with their fellow data professionals. |
|
|
| Administer Microsoft Fabric | Microsoft Fabric is a SaaS solution for end-to-end data analytics. As an administrator, you can configure features and manage access to suit your organization's needs. |
|
|
You must be a registered user to add a comment. If you've already registered, sign in. Otherwise, register and sign in.