Azure Stream Analytics at SQL PASS


PASS Summit 2014 is just around the corner!  Make sure to catch the Azure Stream Analytics team if you’re attending – we look forward to seeing you there.

Booth

The Stream Analytics team will be at the Integration & Analytics booth in the PASS Summit Expo Hall, where we’ll be able to discuss Stream Analytics and answer any questions you may have.

Sessions

Introducing Microsoft Azure Stream Analytics [BIA-210-M]

November 07, 2:30 PM - 3:45 PM

Room 608

Speakers:  Santosh Balasubramanian, Judy Meyer

Level: 200

Azure Stream Analytics is a fully managed real-time stream computation service in the cloud providing highly resilient, low latency, and scalable processing of streaming data. Stream Analytics enables developers to easily combine streams of data – such as click-streams, logs, metering data or device-generated events – with historic records or reference data to derive business insights easily and quickly.  Integrated with Azure Event Hub, Azure Storage and Azure Database for easy ingestion and consumption, Azure Stream Analytics jobs can power dashboards, detect anomalous conditions, as well as drive real-time decisions. Come to this session to learn more about Stream Analytics and what it can do for you.

Deep Dive Into Azure Stream Analytics [BIA-317-M]

November 07, 4:00 PM - 5:15 PM

Room 3AB

Speakers:  Dipanjan Banik, Janet Yeilding

Level: 300

Azure Stream Analytics is taking out the complexity of stream processing for developers by providing a SQL like language for writing queries. Learn various capabilities such as filtering, performing windowing functions on streaming data, join multiple streams, add reference data (or static) with streaming data, detect patterns or the lack of patterns in event or data streams etc. Walk out with the knowledge to create your first stream processing job in minutes. 

Instructor Led Workshop

Get real time insights setup & running in minutes using Azure Stream Analytics

November 06, 1:00 PM - 2:15 PM

Room 204

Comments (0)

Skip to main content