This research investigates the embedded artificial intelligence (AI) capabilities within SAP HANA's in-memory computing platform, focusing on native machine learning functions for enterprise data science applications. As organizations increasingly rely on data-driven decision-making, the integration of AI capabilities directly within enterprise resource planning (ERP) systems has become critical. This study examines SAP HANA's Predictive Analytics Library (PAL), Automated Predictive Library (APL), and machine learning (ML) capabilities through comprehensive analysis of performance metrics, implementation patterns, and practical applications. Through experimental evaluation using real-world enterprise datasets, we demonstrate that embedded AI functions in SAP HANA provide significant advantages in terms of processing speed, data governance, and operational efficiency compared to traditional external analytics tools. Our findings indicate that native ML functions can reduce data processing time by up to 65% and improve model deployment efficiency by 40% in enterprise environments. The research contributes to understanding how embedded AI capabilities transform enterprise data science workflows and provides practical insights for organizations considering in-database analytics implementations.
Kanungo et al. (Fri,) studied this question.
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