Azure Stream Analytics

Microsoft Azure Stream Analytics is a serverless scalable complex event processing engine by Microsoft that enables users to develop and run real-time analytics on multiple streams of data from sources such as devices, sensors, web sites, social media, and other applications.[1] Users can set up alerts to detect anomalies, predict trends, trigger necessary workflows when certain conditions are observed, and make data available to other downstream applications and services for presentation, archiving, or further analysis.[2]

Query Language

Users can author real-time analytics using a simple declarative SQL-like language with embedded support for temporal logic. Callouts to custom code with JavaScript user defined functions extend the streaming logic written in SQL.[3] Callouts to Azure Machine Learning helps with predictive scoring on streaming data.

Scalability

Azure Stream Analytics is a serverless job service on Azure that eliminates the need for infrastructure, servers, virtual machines, or managed clusters. Users only for the processing used for the running jobs.[1]

IoT applications

Azure Stream Analytics integrates with Azure IoT Hub to enable real-time analytics on data from IoT devices and applications.[3]

Real-time Dashboards

Users can build real-time dashboards with Power BI for a live command and control view. Real-time dashboards help transform live data into actionable and insightful visuals.

Data Input Sources

Stream Analytics supports three different types of input sources - Azure Event Hubs, Azure IoT Hubs, and Azure Blob Storage.[2] Additionally, stream analytics supports Azure Blob storage as the input reference data to help augment fast moving event data streams with static data.[2]

Stream analytics supports a wide variety of output targets. Support for Power BI allows for real-time dashboarding.[3] Event Hub, Service bus topics and queues help trigger downstream workflows. Support for Azure Table Storage, Azure SQL Databases, Azure SQL Data Warehouse, Azure SQL, Document DB, Azure Data Lake Store enable a variety of downstream analysis and archiving capabilities.[3]

Sources

  1. ^ a b JennieHubbard. "Introduction to Stream Analytics". docs.microsoft.com. Retrieved . 
  2. ^ a b c "Microsoft Azure Stream Analytics - Simple Talk". Simple Talk. 2015-06-02. Retrieved . 
  3. ^ a b c d "Stream Analytics Query Language Reference". msdn.microsoft.com. Retrieved . 

  This article uses material from the Wikipedia page available here. It is released under the Creative Commons Attribution-Share-Alike License 3.0.

Azure_Stream_Analytics
 



 

Connect with defaultLogic
What We've Done
Led Digital Marketing Efforts of Top 500 e-Retailers.
Worked with Top Brands at Leading Agencies.
Successfully Managed Over $50 million in Digital Ad Spend.
Developed Strategies and Processes that Enabled Brands to Grow During an Economic Downturn.
Taught Advanced Internet Marketing Strategies at the graduate level.


Manage research, learning and skills at defaultLogic. Create an account using LinkedIn or facebook to manage and organize your Digital Marketing and Technology knowledge. defaultLogic works like a shopping cart for information -- helping you to save, discuss and share.

Visit defaultLogic's partner sites below:
PopFlock.com : Music Genres | Musicians | Musical Instruments | Music Industry
NCR Works : Retail Banking | Restaurant Industry | Retail Industry | Hospitality Industry

  Contact Us