Migration of Batch Processing Systems in Financial Sectors to Near Real-Time Processing

Vigneshwaran Kennady, P. Mayilsamy
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Abstract

- Technology has evolved and has become part of people’s lives today. Information systems (IS) are now embraced in all spheres of management. Essentially, this is because of its efficiency and reliability in different fields. Knowledge of IS has enabled the control of advanced sectors (1). IS helps distinguish raw and factual data, which are helpful to any firm. A company must always follow a specific protocol while handling these transactions, whether placing orders for a customer or processing many invoices. The two most popular methods are batch and real-time processing. Batch processing is the procedure to process a large volume of data all at once whereas real time is the procedure to process data instantaneously record by record usually in a matter of seconds or milliseconds. They both solve different needs in financial sector and the industry chose one vs other depending on the criticality and complexity of the need, users of the outcome (internal vs external) and overall customer satisfaction index. In addition to above two methods, near real time processing is the process of being able to almost instantaneously analyze data that is streaming from one device to another. The financial sector is looking for solution to migrate batch processing system to near real time systems using streaming solutions like Apache Kafka and AWS Kinesis and re-use real time systems wherever possible for better customer experience
金融部门批处理系统向近实时处理的迁移
-科技不断发展,已成为人们生活的一部分。信息系统(IS)现在被纳入管理的所有领域。从本质上讲,这是因为它在不同领域的效率和可靠性。对信息系统的了解使得对先进部门的控制成为可能(1)。信息系统有助于区分原始数据和事实数据,这对任何公司都有帮助。公司在处理这些交易时必须始终遵循特定的协议,无论是为客户下订单还是处理许多发票。两种最流行的方法是批处理和实时处理。批处理是指一次处理大量数据的过程,而实时处理是指一个记录一个记录地处理数据的过程,通常在几秒钟或几毫秒内完成。它们都解决了金融部门的不同需求,行业根据需求的重要性和复杂性,结果的用户(内部与外部)和整体客户满意度指数选择其中一个。除了上述两种方法之外,近实时处理是能够几乎即时地分析从一个设备流到另一个设备的数据的过程。金融部门正在寻找解决方案,使用Apache Kafka和AWS Kinesis等流解决方案将批处理系统迁移到接近实时的系统,并尽可能重用实时系统以获得更好的客户体验
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