整合 TOGAF 和大数据,实现数字化转型:贷款行业案例研究

Andreas Yudhistira, A. Fajar
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引用次数: 0

摘要

在当今的数字化时代,企业架构框架与大数据技术的战略整合对于推动数字化转型至关重要,尤其是在贷款行业。本研究旨在确定和分析如何将开放组架构框架(TOGAF)与大数据相结合,以提高贷款行业的创新、运营效率和决策水平。本研究通过定性案例研究对印度尼西亚的金融机构进行考察,探索 TOGAF 与大数据相结合的复杂实践、挑战和优势。定性方法侧重于深入访谈和文档分析,以收集有关这些技术的实施动态和影响的背景资料。研究结果表明,整合 TOGAF 和大数据不仅能简化工作流程,还能显著提高数据安全性和风险管理,这些都是贷款行业的关键要素。本研究的一个重要成果是开发了一个强大的集成模型,可作为类似行业的公司进行数字化转型的蓝图。此外,本研究还提供了克服集成和实施挑战的战略建议。这些指导方针有助于向更具凝聚力、更强大的数字架构过渡,使金融机构能够有效管理现代数字经济的复杂性。最终,本研究提供了一个全面的框架,丰富了理论理解,并为金融服务领域有效的技术整合提供了实用的见解。
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Integrating TOGAF and Big Data for Digital Transformation: Case Study on the Lending Industry
In today’s digital era, the strategic integration of enterprise architecture frameworks with Big Data technologies is crucial in driving digital transformation, especially within the lending industry. This research aims to identify and analyze how The Open Group Architecture Framework (TOGAF) can be integrated with Big Data to enhance innovation, operational efficiency, and decision-making in the lending sector. This study examines Indonesian financial institutions using qualitative case studies, exploring the intricate practices, challenges, and benefits of the combination of TOGAF and Big Data. The qualitative methodology focuses on in-depth interviews and document analysis to gather contextual insights into the implementation dynamics and impacts of these technologies. Findings indicate that integrating TOGAF and Big Data not only streamlines workflows but also significantly enhances data security and risk management—critical elements in the lending industry. A vital outcome of this study is the development of a robust integration model that serves as a blueprint for companies in similar sectors to navigate their digital transformation journeys. Additionally, this research provides strategic recommendations to overcome integration and implementation challenges. These guidelines facilitate the transition to a more cohesive and strengthened digital architecture, equipping financial institutions to manage the complexities of modern digital economies effectively. Ultimately, this study delivers a comprehensive framework that enriches theoretical understanding and offers practical insights for effective technology integration in financial services.
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204
审稿时长
4 weeks
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