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dotData Announces Enhancements Across Its Entire Product Suite

dotData Announces Enhancements Across Its Entire Product Suite

Press Release

Enhanced functionality for dotData Ops, dotData Enterprise, and dotData Feature Factory.

SAN MATEO, Calif., DEC 06, 2023 – dotData, a pioneer and leading provider of platforms for feature discovery, today announced enhancements to several products. dotData’s enhanced product suite now includes improved support for Microsoft’s Azure platform, enhancements to the award-winning dotData Enterprise No-Code AI automation solution, and increased integration between dotData Ops and dotData Feature Factory.

“These enhancements to our product lineup continue our ongoing commitment to clients and to the market by introducing exciting and innovative new functionalities across our entire portfolio,” said Walter Paliska, dotData’s VP of Marketing.

dotData Expands its Support for Microsoft Azure

With the new releases of dotData Ops and dotData Cloud, dotData is expanding its support for Microsoft’s Azure platform. Clients can now deploy dotData Ops to Microsoft Azure private cloud deployments, bringing the power and automation of dotData Ops to Microsoft Azure. Additionally, the dotData Cloud Private offering now provides a fully managed private cloud hosting solution on Microsoft Azure, offering clients a comprehensive means of deploying and utilizing dotData products on Microsoft’s platform.

Enhancements to dotData Enterprise, dotData’s Award-Winning No-Code AI Platform

The new release of dotData Enterprise introduces three key enhancements to dotData’s no-code AI Automation platform. A visual Entity Relationship map simplifies the process of creating multi-table feature engineering, making it more intuitive for all dotData users. New table transformer functionality allows users to modify imported tables using standard Structured Query Language (SQL), significantly improving the ability to cleanse and prepare data for feature discovery and engineering within the application. Lastly, various API improvements and a new Python SDK expedite feature and model development automation in mixed environments where clients may use No-Code and Python-based Machine Learning platforms.

Integration Between dotData Ops and Feature Factory Streamlines Model and Feature Deployments

The latest release of dotData’s revolutionary feature discovery platform, Feature Factory, enables data science and data engineering teams to seamlessly and automatically push feature pipelines and models developed from Feature Factory to dotData Ops. This integration simplifies the deployment and monitoring of feature pipelines and models, making the process more straightforward and robust.

Contact Us

E-mail: contact@dotdata.com

Media Contact

E-mail: marketing@dotdata.com
Phone: 415-460-7844

About dotData

dotData's pioneering automated feature discovery and engineering platform addresses the most complex challenge of AI/ML projects. Our Feature Factory technology uncovers hidden gems, providing transparent, explainable features by connecting the dots within large-scale data sets in hours, eliminating human bias. It allows data scientists to explore up to 100X more features, including those yet to be imagined, and augments AI/ML projects in an agile manner, delivering business value faster. In an era of rapid change, insights discovered through AI can be a game-changer for business growth and innovation across industries. The power of dotData’s platform to provide game-changing insights is why Fortune 500 organizations worldwide trust dotData.

For more information, visit https://dotdata.com/ and join the conversation on X/Twitter and LinkedIn.

dotData
dotData

dotData Automated Feature Engineering powers our full-cycle data science automation platform to help enterprise organizations accelerate ML and AI projects and deliver more business value by automating the hardest part of the data science and AI process - feature engineering and operationalization. Learn more at dotdata.com, and join us on Twitter and LinkedIn.