Striim, provider of an enterprise-grade platform for
streaming data integration, today announced the general availability of
version 3.8.4 of the
Striim platform.
This new release strengthens the platform's capabilities in helping
organizations with their transition to, and use of, cloud-based
analytics by creating enterprise-grade, real-time data pipelines to feed
different layers of their cloud environment. Available as a cloud
service, Striim enables companies to reap the agility and cost-savings
benefits of cloud-based analytics with real-time data movement,
scalability, and faster time-to-market.
With the new 3.8.4 release, the Striim platform can support
organizations across all layers of their cloud-based analytical
environment by bringing real-time data to:
- Analytics services and data warehousing solutions, such as Azure SQL Data Warehouse and Google BigQuery, that directly support end users with timely intelligence
- Data management and analytics frameworks, such as Azure HDInsight, which support interactive analysis or creating machine learning models
- Storage solutions, such as Amazon S3 or Azure Data Lake Storage, from on-premises and other cloud-based data sources in real time
- Staging areas, such as HDFS, S3, ADLS which are used by other cloud services and components
"To deliver next generation digital transformation, businesses are
quickly moving to cloud-based analytics," said Alok Pareek, founder and
EVP of Products at Striim. "With Striim 3.8.4, users can set up
real-time and pre-processed data flows from on-premises and cloud
environments into different layers of their cloud solution to accelerate
their onboarding and increase the operational value gained from their
analytical solutions in the cloud."
In 3.8.4, the Striim platform automates its streaming data
integration to Hive solutions, deployed in the cloud or on-premises. It
also enhances its real-time data integration into Amazon S3 by adding
dynamic bucketing, object-level tagging, and support for file headers.
With an eye on ease of use, Striim added Schema Registry support for Apache Kafka,
helping end users to track and store schema evolution easily, and avoid
impacting existing applications due to schema changes. Striim also
introduced Open Processor - a platform component that is
accessible via the UI - to allow end users to bring any code they have
written into any part of the Striim platform. For example, companies
building machine learning (ML) models using R can quickly bring their ML
algorithms into Striim to extend its application logic.
Another new feature that enhances Striim's manageability and ease of use is Continuous Data Processing Validation.
Using pre-built dashboards that continuously monitor the behavior of
data pipelines, Striim users can easily trace and validate in real time
whether, and to what degree, the data ingested completed the required
processing steps as it is streaming within the platform.
With the new release, Striim continues to expand the list of sources and targets by introducing support for Microsoft Azure Database for PostgreSQL and Microsoft Azure Database for MySQL. Striim also offers a new adapter for delivering real-time data into the popular NoSQL database, Apache Cassandra.
Customers can use Striim to ingest real-time, pre-processed data from
diverse data sources, including enterprise databases - using real-time,
log-based CDC - log files, messaging systems, Hadoop, cloud-based data
stores, and sensors, add in-stream process and transformations, and
deliver the data to these targets.
To learn more, download a fully loaded 90-day trial of the Striim 3.8.4 platform.