Microsoft Fabric Updates Blog

Accelerate time-to-value for your intelligent apps with Power BI Embedded accelerator offer

Power BI Embedded is now generally available.

Today we are excited to announce the Power BI Embedded accelerator offer for Independent Software Vendors (ISVs).  Power BI Embedded is an Azure service that enables ISV/application developers to embed compelling, fully interactive reports without the time and expense of having to build their own controls from the ground up. We are making it easy for you to get started with Power BI Embedded and helping you to accelerate your time-to-value through the Power BI Embedded accelerator offer. The Power BI Embedded accelerator program is scheduled to run from July 11, 2016 to December 31, 2016.  The program allows you to speed up the process for integrating Power BI Embedded in your app.  Through the Power BI Embedded accelerator program, participating members become eligible to receive technical readiness, architectural guidance, access to Power BI Engineering, Azure credit for dev & test, and Go-to-Market guidance.

What do you need to do to join the program?

Here’s how: 

Seats are limited and enrollment to this offer will be available on a first-come, first-serve basis subjected to Microsoft approval. 

We look forward to onboarding you and help you to bring data to life inside your app -faster!

Submit your information here: https://www.pbieaccelerator.com

Related blog posts

Accelerate time-to-value for your intelligent apps with Power BI Embedded accelerator offer

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”