Businesses require near real-time insights from ever-larger sets of data. Large-scale data ingestion requires scale-out storage and processing in ways that allow fast response times. In addition to simply querying this data, organizations want full analysis and even predictive capabilities over their data.
Wide World Importers (WWI) is a traditional brick and mortar business with a long track record of success, generating profits through strong retail store sales of their unique offering of affordable products from around the world. Over the past few years, they have adopted an omni-channel strategy, meaning, different ways for consumers to purchase their products. These new platforms were added without integrating into the OLTP system data or Business Intelligence infrastructures. As a result, "silos" of data stores have developed.
Now, WWI is trying to cope with difficulties in combining these disparate data sources in varying formats into a single location where they can analyze the data in near real-time, joining related information where needed. They also want to be able to leverage AI to help their business grow and cut down maintenance costs. They would like to have all of these capabilities rolled into a single system, while minimizing code changes across their domain.
December 2019
- Database Administrator
- Data Engineer
- Data Scientist
- Database Developer
- Solution Architect
In this workshop, you will gain a better understanding of how new features of SQL Server 2019 enables more Big Data and analytics capabilities through the use of Big Data Clusters, data virtualization and orchestration, query processing enhancements, and through better scalability through distributed storage and compute.
At the end of this workshop, you will be better able to configure and manage SQL Server 2019 Big Data Clusters so you can combine, query, and transform disparate data sources for AI and advanced analytics scenarios.
In this whiteboard design session, you will work with a group to design a solution for modernizing your large-scale data processing and machine learning capabilities through the use of SQL Server Big Data Clusters. You will evaluate the customer scenario and requirements to decide the best architecture that will meet their needs, while unifying data from disparate sources into a platform that help the customer gain business insights and apply advanced analytics at scale.
At the end of this whiteboard design session, you will be better able to design a modernization plan for performing Big Data analytics centered around SQL Server 2019 capabilities.
In this hands-on lab, you will implement the steps to install and configure a SQL Server 2019 cluster to Linux-based containers in Azure. Using this cluster, you will use data virtualization to unify data from various sources, analyze the data, create and deploy a machine learning model, and finally detect and fix PII and GDPR compliance issues.
At the end of this hands-on lab, you will be better able to build solutions for conducting advanced data analytics at scale with scalable SQL Server 2019 Big Data clusters.
- Azure CLI
- Azure Data Studio
- Azure Kubernetes Service (AKS)
- PowerShell
- SQL Server Management Studio
- SQL Server 2019 Big Data Clusters (BDC)
We welcome feedback and comments from Microsoft SMEs & learning partners who deliver MCWs.
Having trouble?
- First, verify you have followed all written lab instructions (including the Before the Hands-on lab document).
- Next, submit an issue with a detailed description of the problem.
- Do not submit pull requests. Our content authors will make all changes and submit pull requests for approval.
If you are planning to present a workshop, review and test the materials early! We recommend at least two weeks prior.