SAN MATEO, Calif. and BOSTON, July 17, 2019 (GLOBE NEWSWIRE) -- AtScale, the data warehouse virtualization company, today announced its new 2019.2 platform release. The latest release augments AtScale’s autonomous data engineering innovations with the introduction of a sophisticated time-series and time-relative analysis capability for large volumes of data across disparate databases and platforms. This new capability enables data analyst and data science teams to have unencumbered access to large volumes of dispersed operational time-series data. Data consumers can quickly query and configure data for their specific business definitions using the business intelligence (BI), artificial intelligence (AI) or machine learning (ML) tools of their choice.
AtScale enables scalable and governed self-service analytics, utilizing its native security and performance functionality, with no need to move data or perform memory limited operations.
Leveraging the high performance optimization technologies developed by AtScale for distributed shared-computing platforms such as Hadoop, AtScale continues to make significant advancements in the virtualization of data platforms, now including Teradata, Oracle, Snowflake, Redshift, BigQuery, Greenplum, and Postgres.
“We’ve built on over 150 combined person-years mastering the challenges of on-premise and cloud data platforms to reinvent how enterprise teams drive performance for multidimensional analytics,” shares Matthew Baird, co-founder, and CTO of AtScale. “For companies to manage big data at the scale, complexity and security enterprises require, AtScale has completely reinvented how analytical queries are answered, taking full advantage of the various platforms’ native optimizations.”
AtScale’s 2019.2 release solves pervasive data management issues plaguing enterprise analytics and data science teams who spend 90 percent of their work week on data-related activities, with searching for and preparing data as the most common tasks for data engineering teams (IDC). Data workers waste over 40 percent of their time every week and are unsuccessful in their activities, juggling four to seven different tools to source, query, model and analyze data.
To solve for these issues and automate the design of intelligent and secure data structures, AtScale applies expert systems and machine learning algorithms, including:
AtScale’s 2019.2 platform release comes on the heels of a record-breaking 125 percent increase in new business during the first quarter of its fiscal year 2019, driven by unrivaled innovation enabling seamless migration to any cloud data platform without disrupting BI, AI and ML applications. By virtualizing data warehouse infrastructure, AtScale creates a single, secure view of an enterprise’s analytical data with rich context and metadata for consumption by any BI tool.
To learn more about AtScale’s revolutionary approach to data warehouse virtualization, read our White Paper: Cloud Transformation: The Next Virtualized Data Frontier for BI, ML, and AI here.
About AtScale
The Global 2000 relies on AtScale, the data warehouse virtualization company, to provide unified, secured and governed access to data wherever it resides. The company’s Universal Semantic Layer™ virtualizes data across disparate systems bridging the gap for business intelligence and machine learning, enabling faster and more accurate business decisions at scale.
For additional information, visit www.atscale.com.
Contact info: Shannon Mullins shannon@scratchmm.com 2039233143