Alpine Chorus is a comprehensive platform for Advanced Analytics which provides the entire analytic lifecycle in one environment, and enable people to build, deploy and consume analytic applications and insights in an agile and collaborative manner.
Predictive Analytics Software
Alpine Chorus : Alpine Chorus is a comprehensive platform for Advanced Analytics which provides the entire analytic lifecycle in one environment, and enable people to build, deploy and consume analytic applications and insights in an agile and collaborative manner. Features include hypothesis testing and predictive modeling using full statistical functionality including Time-Series Analysis, Classification, Regression, Decision Trees and more, Data transformation, feature creation, and model building. Also curate and leverage data, models, and results securely to avoid data silos and provides end-to-end workflows cover extraction, transformation, modeling, and scoring.
Alpine Chorus’s visual drag-and-drop interface allows business users and data scientists to interrogate their data without writing SQL queries or writing MapReduce and R code. The interface contains specific operators for functions like value replacement and filtering, which allow the user to construct complex workflows to clean, blend, transform, and prepare their data process. The platform also contains a comprehensive collection of predictive data mining and modeling algorithms that empowers businesses to manipulate, model, and leverage big data in a business cycle.
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More Information on Predictive Analysis Process
For more information of predictive analytics process, please review the overview of each components in the predictive analytics process: data collection (data mining), data analysis, statistical analysis, predictive modeling and predictive model deployment.