top of page

Microsoft Fabric Real-time Intelligence

Exploring and implementing all the Experiences in the Real-time Intelligence Hub.
Microsoft Fabric Real-time Intelligence
Course Overview

The velocity of data is getting faster across many industries, fuelled by the business demand to gain insights and value from sources in near real-time. This necessity is then allowing decision makers to pivot and ultimately stay ahead of the competition. Furthermore, the growth of the internet of things and ‘smart’ devices now means the volume of that high velocity data has exploded. Meeting this demand requires new concepts and new designs for data/solution architects, with high throughput ingestion endpoints and query stream tools that can perform aggregations ‘on the fly’. Microsoft Fabric answers this challenges with the Real-time Hub and Real-time Intelligence Experiences, bringing data streams together to rapid handling and serving with a full compliment of downstream events to Data Activator, but other Fabric Items as well.

In this full day of training, we will address the above requirements head on. Discussing and designing architectures that can scale and burst for high throughput events. Querying using both SQL and KQL to blend stream and batch data feeds for downstream reporting. Our unified tool of choice to deliver these capabilities will be Microsoft Fabric. Working with Event Streams, Event House, and the Real-time Intelligence Hub to deliver analytics at speed and scale. Building a connected solution in Microsoft Fabric.

Course Objectives

o The theory and history behind lambda and kappa architecture design patterns.
o The role of structured and semi-structured data as part of streaming solution.
o How technology has evolved to simplify our designs when handling data at any velocity.
o What ingestion resources are needed for both batch and stream data handling.
o How to combine batch and stream datasets into a comprehensive data model, supporting the serving of both source input types.
o Aggregating streaming datasets using sliding, hoping, and tumbling compute windows.
o How to create a common serving endpoint for business users.

Training Format

• 1 Day Course
• All Training Materials Provided
• Mixed Theory and Labs
• Patterns And Best Practice

Technology Covered
Notes

Combining use cases and data streams using the Real-time Intelligence Hub.

Book Now to Start Your Learning Journey
bottom of page