International Journal of Innovative Research in Engineering & Multidisciplinary Physical Sciences
E-ISSN: 2349-7300Impact Factor - 9.907

A Widely Indexed Open Access Peer Reviewed Online Scholarly International Journal

Call for Paper Volume 13 Issue 2 March-April 2025 Submit your research for publication

Conversion of SAP Legacy Applications to S4 & BW4 HANA for Improved Performance for Faster Data Processing and Real-Time Analysis

Authors: Naresh Kumar Rapolu

DOI: https://doi.org/10.5281/zenodo.14951098

Short DOI: https://doi.org/g86q39

Country: India

Full-text Research PDF File:   View   |   Download


Abstract: The transition from SAP legacy applications to S4 and BW4 HANA marks a substantial technological leap, significantly optimizing data processing and real-time analytics performance. By harnessing the advanced in-memory computing power of SAP HANA, data retrieval and processing times are drastically reduced, resulting in more responsive and agile systems. The adoption of S4 and BW4 HANA not only enhances resource allocation but also significantly improves system scalability, allowing organizations to efficiently manage larger volumes of data. This technological shift supports faster data handling and empowers enterprises with real-time analytical capabilities, facilitating more informed and timely decision-making processes. The transition underscores the importance of evolving from traditional systems to advanced platforms that provide superior performance and operational efficiency. As organizations integrate S4 and BW4 HANA into their operations, they can expect notable improvements in data management practices, contributing to enhanced overall system performance and offering a competitive edge in their respective industries. This advancement in technology is pivotal for enterprises seeking to modernize their infrastructure and improve the accuracy and speed of their data-driven decisions, ultimately driving better business outcomes.

Keywords: SAP Legacy Applications, S4 HANA, BW4 HANA, Data Processing Performance, Real-Time Analytics, In-Memory Computing, System Scalability


Paper Id: 232193

Published On: 2020-01-08

Published In: Volume 8, Issue 1, January-February 2020

Share this