Building and managing a Data Platform in Azure
2022TL; DR
How to build a data platform in Azure
Session Details
Azure provides flexibility to instantiate services as and when they are needed, so you can change your platform capabilities as your progress. Data can be incredibly varied and there are different patterns for delivering specific analytics requirements, depending on whether you are doing data warehousing for BI, streaming real-time analytics, IoT analytics, AI/ML or managing a OLTP database in the cloud.
In this session we will build a platform that will showcase various techniques and processes native to Azure that allows us to manage this platform.
We will also look at various tooling in the demo which will include powershell, bicep, ARM templates and terraform as various ways to build the data platform.
This session is about managing your data platform - so that any Data Professional can easily build, scale and manage that platform using industry proven techniques.
Feedback link: https://sqlb.it/?7018
In this session we will build a platform that will showcase various techniques and processes native to Azure that allows us to manage this platform.
We will also look at various tooling in the demo which will include powershell, bicep, ARM templates and terraform as various ways to build the data platform.
This session is about managing your data platform - so that any Data Professional can easily build, scale and manage that platform using industry proven techniques.
Feedback link: https://sqlb.it/?7018
3 things you'll get out of this session
Speakers
Hamish Watson's previous sessions
Database Reliability Engineering - the new DBA?
A session for DBAs considering where their career needs to go.
Test Driven Development in SQL Server, safer code deploys
Testing data in SQL Server is hard, but it is easier than having to restore your database. This session will show how easy it is to test database code using industry frameworks, tools and processes
Culture is vital for DevOps Success.
Why do most DevOps projects fail? Typically it is not because of tool choice or cloud vs on-prem deployments
It is because people don't understand what culture is or how to work towards a common business goal.