Bookkeeping Service Providers

  • Accounting
  • Bookkeeping
  • US Taxation
  • Financial Planning
  • Accounting Software
  • Small Business Finance
You are here: Home / CLOUD / New capabilities in Stream Analytics reduce development time for big data apps

New capabilities in Stream Analytics reduce development time for big data apps

July 16, 2019 by cbn Leave a Comment

Azure Stream Analytics is a fully managed PaaS offering that enables real-time analytics and complex event processing on fast moving data streams. Thanks to zero-code integration with over 15 Azure services, developers and data engineers can easily build complex pipelines for hot-path analytics within a few minutes. Today, at Inspire, we are announcing various new innovations in Stream Analytics that help further reduce time to value for solutions that are powered by real-time insights. These are as follows:

Bringing the power of real-time insights to Azure Event Hubs customers

Today, we are announcing one-click integration with Event Hubs. Available as a public preview feature, this allows an Event Hubs customer to visualize incoming data and start to write a Stream Analytics query with one click from the Event Hub portal. Once the query is ready, they will be able to operationalize it in few clicks and start deriving real time insights. This will significantly reduce the time and cost to develop real-time analytics solutions.

GIF showing the one-click integration between Event Hubs and Azure Stream Analytics

One-click integration between Event Hubs and Azure Stream Analytics

Augmenting streaming data with SQL reference data support

Reference data is a static or slow changing dataset used to augment real-time data streams to deliver more contextual insights. An example scenario would be currency exchange rates regularly updated to reflect market trends, and then converting a stream of billing events in different currencies to a common currency of choice.

Now generally available (GA), this feature provides out-of-the-box support for Azure SQL Database as reference data input. This includes the ability to automatically refresh your reference dataset periodically. Also, to preserve the performance of your Stream Analytics job, we provide the option to fetch incremental changes from your Azure SQL Database by writing a delta query. Finally, Stream Analytics leverages versioning of reference data to augment streaming data with the reference data that was valid at the time the event was generated. This ensures repeatability of results.

New analytics functions for stream processing

  • Pattern matching:

      With the new MATCH_RECOGNIZE function, you can easily define event patterns using regular expressions and aggregate methods to verify and extract values from the match. This enables you to easily express and run complex event processing (CEP) on your streams of data. For example, this function will enable users to easily author a query to detect “head and shoulder” patterns on the on a stock market feed.

      • Use of analytics function as aggregate:

          You can now use aggregates such as SUM, COUNT, AVG, MIN, and MAX directly with the OVER clause, without having to define a window. Analytics functions as Aggregates enables users to easily express queries such as “Is the latest temperature greater than the maximum temperature reported in the last 24 hours?”

          Egress to Azure Data Lake Storage Gen2

          Azure Stream Analytics is a central component within the Big Data analytics pipelines of Azure customers. While Stream Analytics focuses on the real-time or hot-path analytics, services like Azure Data Lake help enable batch processing and advanced machine learning. Azure Data Lake Storage Gen2 takes core capabilities from Azure Data Lake Storage Gen1 such as a Hadoop compatible file system, Azure Active Directory, and POSIX based ACLs and integrates them into Azure Blob Storage. This combination enables best in class analytics performance along with storage tiering and data lifecycle management capabilities and the fundamental availability, security, and durability capabilities of Azure Storage.

          Azure Stream Analytics now offers native zero-code integration with Azure Data Lake Storage Gen2 output (preview.)

          Enhancements to blob output

          • Native support for Apache parquet format:

              Native support for egress in Apache parquet format into Azure Blob Storage is now generally available. Parquet is a columnar format enabling efficient big data processing. By outputting data in parquet format into a blob store or a data lake, you can take advantage of Azure Stream Analytics to power large scale streaming extract, transfer, and load (ETL), to run batch processing, to train machine learning algorithms, or to run interactive queries on your historical data. We are now announcing general availability of this feature for egress to Azure Blob Storage.

              • Managed identities (formerly MSI) authentication:

                  Azure Stream Analytics now offers full support for Managed Identity based authentication with Azure Blob Storage on the output side. Customers can continue to use the connection string based authentication model. This feature is available as a public preview.

                  Many of these features just started rolling out worldwide and will be available in all regions within several weeks.

                  Feedback

                  The Azure Stream Analytics team is highly committed to listening to your feedback and letting the user voice influence our future investments. We welcome you to join the conversation and make your voice heard via our UserVoice page.

                  Share on FacebookShare on TwitterShare on Google+Share on LinkedinShare on Pinterest

                  Filed Under: CLOUD

                  Leave a Reply Cancel reply

                  Your email address will not be published. Required fields are marked *

                  Archives

                  • September 2025
                  • August 2025
                  • July 2025
                  • June 2025
                  • May 2025
                  • April 2025
                  • March 2025
                  • February 2025
                  • January 2025
                  • December 2024
                  • November 2024
                  • October 2024
                  • July 2024
                  • June 2024
                  • May 2024
                  • April 2024
                  • March 2024
                  • February 2024
                  • January 2024
                  • December 2023
                  • October 2023
                  • September 2023
                  • August 2023
                  • July 2023
                  • June 2023
                  • May 2023
                  • April 2023
                  • March 2023
                  • February 2023
                  • January 2023
                  • December 2022
                  • November 2022
                  • October 2022
                  • September 2022
                  • August 2022
                  • July 2022
                  • June 2022
                  • May 2022
                  • April 2022
                  • March 2022
                  • February 2022
                  • January 2022
                  • December 2021
                  • November 2021
                  • October 2021
                  • September 2021
                  • August 2021
                  • May 2021
                  • April 2021
                  • September 2020
                  • August 2020
                  • July 2020
                  • June 2020
                  • May 2020
                  • April 2020
                  • March 2020
                  • February 2020
                  • January 2020
                  • December 2019
                  • November 2019
                  • October 2019
                  • September 2019
                  • August 2019
                  • July 2019
                  • June 2019
                  • May 2019
                  • April 2019
                  • March 2019
                  • February 2019
                  • January 2019
                  • December 2018
                  • November 2018
                  • October 2018
                  • September 2018
                  • August 2018
                  • July 2018
                  • June 2018
                  • May 2018
                  • April 2018
                  • March 2018
                  • February 2018
                  • January 2018
                  • December 2017
                  • November 2017
                  • October 2017
                  • September 2017
                  • August 2017
                  • July 2017
                  • May 2017
                  • April 2017
                  • March 2017
                  • February 2017
                  • January 2017
                  • March 2016

                  Recent Posts

                  • FabCon Vienna: Build data-rich agents on an enterprise-ready foundation
                  • Agent Factory: Connecting agents, apps, and data with new open standards like MCP and A2A
                  • Azure mandatory multifactor authentication: Phase 2 starting in October 2025
                  • Microsoft Cost Management updates—July & August 2025
                  • Protecting Azure Infrastructure from silicon to systems

                  Recent Comments

                    Categories

                    • Accounting
                    • Accounting Software
                    • BlockChain
                    • Bookkeeping
                    • CLOUD
                    • Data Center
                    • Financial Planning
                    • IOT
                    • Machine Learning & AI
                    • SECURITY
                    • Uncategorized
                    • US Taxation

                    Categories

                    • Accounting (145)
                    • Accounting Software (27)
                    • BlockChain (18)
                    • Bookkeeping (205)
                    • CLOUD (1,321)
                    • Data Center (214)
                    • Financial Planning (345)
                    • IOT (260)
                    • Machine Learning & AI (41)
                    • SECURITY (620)
                    • Uncategorized (1,284)
                    • US Taxation (17)

                    Subscribe Our Newsletter

                     Subscribing I accept the privacy rules of this site

                    Copyright © 2025 · News Pro Theme on Genesis Framework · WordPress · Log in