Microsoft Fabric Updates Blog

Webinar 12/11: Introduction to the Power BI Home & Global Search Experience with Nikhil Gaekwad

December 11th, Program Manager Nikhil Gaekwad hosts a live webinar demoing and answer your Power BI Home and Search questions. The improved Power BI home navigation experience makes it easy to monitor and analyze your key business metrics. The Power BI Home landing page and our new Global Search feature in the Power BI service provide a one-stop shop for all your Power BI content and a quicker way to dive into your insights. One of the best parts is the new Power BI Home automatically surface your most important content and let you search for it in a single page!

When:  12/11/2018 10AM PST

Where: https://www.youtube.com/watch?v=79-gMM8Pir0 

About Nikhil Gaekwad

Nikhil Gaekwad is a Product Manager on the Power BI service team at Microsoft. His journey at the company started off in 2015 on the Windows Wireless team, where he spent two years envisioning, building, and shipping features in the Wi-Fi and IoT space to millions of customers around the world. He has always had a strong passion for working with data and transforming it into actionable business insights. With an aspiration to be influential in the Business Intelligence community, Nikhil joined Power BI in 2017. Most of you will already recognize him from the recent blogs, videos, and presentations from many conferences.

Related blog posts

Webinar 12/11: Introduction to the Power BI Home & Global Search Experience with Nikhil Gaekwad

June 16, 2024 by bagweb

Testing Cascading Messaging portal changes

November 20, 2023 by Anshul Sharma

As part of the One logical copy effort, we’re excited to announce that you can now enable availability of KQL Database in Delta Lake format. Delta Lake  is the unified data lake table format chosen to achieve seamless data access across all compute engines in Microsoft Fabric. The data streamed into KQL Database is stored … Continue reading “Announcing Delta Lake support in Real-Time Analytics KQL Database”