A Study on Frame Work of H2O For Data Science
AUTHORS
Ch Apoorva,Department of Computer Science & Engineering Vignan’s Institute of Information Technology (A) Visakhapatnam, AP, India
ABSTRACT
H2O.ai is centered around conveying AI to organizations through programming. Its leader item is H2O, the main open source stage that makes it simple for money related administrations, protection and medicinal services organizations to convey AI and profound figuring out how to tackle complex issues.H2O is an open source, in-memory, disseminated, quick, and adaptable machine learning and prescient investigation stage that enables you to construct machine learning models on enormous information and gives simple productionalization of those models in a venture situation. In this paper we are going to discuss about the components involved in H2O design, frame work requirements and Life cycle of data science.
KEYWORDS
Artificial intelligent, h2o, data science,
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