Hadoop in Banking: Event-Driven Performance Evaluation

In today’s data-intensive atmosphere, performance evaluation in the banking industry depends on timely and accurate insights, leading to better decision making and operational efficiency. Traditional methods for assessing bank performance often need to be improved to handle the volume, velocity, and...

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Main Authors: Monalisa Panda, Mamata Garnayak, Mitrabinda Ray, Smita Rath, Anuradha Mohanta, Sushree Bibhuprada B. Priyadarshini
Format: Article
Language:English
Published: Wiley 2025-01-01
Series:The Scientific World Journal
Online Access:http://dx.doi.org/10.1155/tswj/4375194
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author Monalisa Panda
Mamata Garnayak
Mitrabinda Ray
Smita Rath
Anuradha Mohanta
Sushree Bibhuprada B. Priyadarshini
author_facet Monalisa Panda
Mamata Garnayak
Mitrabinda Ray
Smita Rath
Anuradha Mohanta
Sushree Bibhuprada B. Priyadarshini
author_sort Monalisa Panda
collection DOAJ
description In today’s data-intensive atmosphere, performance evaluation in the banking industry depends on timely and accurate insights, leading to better decision making and operational efficiency. Traditional methods for assessing bank performance often need to be improved to handle the volume, velocity, and variety of data generated in real time. This study proposes an event-driven approach for performance evaluation in banking alongside a Hadoop-based architecture. Infused with real-time event analytics, this scalable framework can process and analyze fast-moving transactional data. Hence, the framework allows banks to monitor key performance indicators and detect real-time operational anomalies. This is supported by the Hadoop ecosystem, which provides distribution of the processing and storage, making it fit for handling large datasets with high fault tolerance and parallel computation levels. This study analyzes transaction and user engagement data using Hive queries, focusing on credit card transactions via MasterCard. Two cases are examined: a detailed snapshot of individual transactions and a five-day trend analysis. Metrics like active users, card registrations, and retention are visualized through dashboards. Findings reveal user activity patterns and areas for improvement, emphasizing scalable, data-driven approaches for transaction analytics. This framework conceives a functional approach for banks to exploit extensive data-analytic capabilities to strive for competitive advantage and survivability of a business by adding any required metrics. The findings signify that the Hadoop-integrated event-driven analytics method could act as a game changer for performance evaluation in the banking sector.
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spelling doaj-art-84aef971816046b0a1b7fc5827925fc42025-01-29T05:00:01ZengWileyThe Scientific World Journal1537-744X2025-01-01202510.1155/tswj/4375194Hadoop in Banking: Event-Driven Performance EvaluationMonalisa Panda0Mamata Garnayak1Mitrabinda Ray2Smita Rath3Anuradha Mohanta4Sushree Bibhuprada B. Priyadarshini5Department of Computer Science and EngineeringDepartment of Computer ScienceDepartment of Computer Science and EngineeringDepartment of Computer Science and Information TechnologyDepartment of Computer Science and EngineeringDepartment of Computer Science and Information TechnologyIn today’s data-intensive atmosphere, performance evaluation in the banking industry depends on timely and accurate insights, leading to better decision making and operational efficiency. Traditional methods for assessing bank performance often need to be improved to handle the volume, velocity, and variety of data generated in real time. This study proposes an event-driven approach for performance evaluation in banking alongside a Hadoop-based architecture. Infused with real-time event analytics, this scalable framework can process and analyze fast-moving transactional data. Hence, the framework allows banks to monitor key performance indicators and detect real-time operational anomalies. This is supported by the Hadoop ecosystem, which provides distribution of the processing and storage, making it fit for handling large datasets with high fault tolerance and parallel computation levels. This study analyzes transaction and user engagement data using Hive queries, focusing on credit card transactions via MasterCard. Two cases are examined: a detailed snapshot of individual transactions and a five-day trend analysis. Metrics like active users, card registrations, and retention are visualized through dashboards. Findings reveal user activity patterns and areas for improvement, emphasizing scalable, data-driven approaches for transaction analytics. This framework conceives a functional approach for banks to exploit extensive data-analytic capabilities to strive for competitive advantage and survivability of a business by adding any required metrics. The findings signify that the Hadoop-integrated event-driven analytics method could act as a game changer for performance evaluation in the banking sector.http://dx.doi.org/10.1155/tswj/4375194
spellingShingle Monalisa Panda
Mamata Garnayak
Mitrabinda Ray
Smita Rath
Anuradha Mohanta
Sushree Bibhuprada B. Priyadarshini
Hadoop in Banking: Event-Driven Performance Evaluation
The Scientific World Journal
title Hadoop in Banking: Event-Driven Performance Evaluation
title_full Hadoop in Banking: Event-Driven Performance Evaluation
title_fullStr Hadoop in Banking: Event-Driven Performance Evaluation
title_full_unstemmed Hadoop in Banking: Event-Driven Performance Evaluation
title_short Hadoop in Banking: Event-Driven Performance Evaluation
title_sort hadoop in banking event driven performance evaluation
url http://dx.doi.org/10.1155/tswj/4375194
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