How to Parameterize Notebooks for Automation in Azure Data Studio | Data Exposed

Jupyter Notebooks bring a wonderful capability to hand someone a single file that contains both code, and instructions on how to run that code. This is great and can be used in many different ways, one of which is to help new team members get up to speed. But what happens when you need to do the same thing as one of your existing Notebooks, but now you need to do it at scale? What if you could take your existing Notebook and add parameters for things like Server name & Database? In this episode with Aaron Nelson, take a look at how new features in Azure Data Studio can help you take your Notebooks to the next level of re-usability. [00:58]​ Notebooks overview[02:54]​ Create a Parameterized Notebook- Demo[03:51]​ SQL-on-Linux instance in a Docker container - Demo[09:00]​ Export Power BI Workspace Assets with PowerShell - Demo[12:22]​ Getting started Resources:Parameterization of Notebooks in Azure Data Studio - Azure Data Studio | Microsoft DocsUse Invoke-ExecuteNotebook to build a SQL-on-Linux instance in a Docker container, by calling Invoke-ExecuteNotebook to execute the Notebook, and passing in the sa_password & digits for the name/port number to the Notebook as a parameter

Om Podcasten

Channel 9 is a community. We bring forward the people behind our products and connect them with those who use them. We think there is a great future in software and we're excited about it. We want the community to participate in the ongoing conversation. This is the heart of Channel 9. We talk about our work but listen to the customer.