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Dijital Cüzdan: Güvenli ve Maliyet Etkin Bir Altyapı Yaklaşımı

Ferhat Musa Uysal1
1Turkcell Ödeme ve Elektronik Para Hizmetleri A.Ş. (Paycell Ar-Ge Merkezi)
Published:December 31, 2023
DOI: 10.56038/oprd.v3i1.362
Vol. 3, No. 1 · pp. 490–501

Abstract

Bu çalışma, dijital cüzdan için yenilikçi bir altyapı geliştirme hedefini taşımaktadır. Projede, hem kurumsal hem de bireysel kullanıcıların ihtiyaçlarına yönelik bir çözüm geliştirilmesi amaçlanmaktadır. Ana odak, dijital bir cüzdan geliştirerek dijital varlıkların yönetiminin ve saklanmasının kolaylaştırılması üzerinedir. Bu bağlamda, projenin temel hedefleri arasında, yüksek işlem ücretlerine alternatif olarak yerli çözümler sunmak, dijital cüzdan ile varlıkların yerli bulut sistemleri üzerinde güvenle saklanmasını sağlamak ve Paycell ile iş ortaklarının ihtiyaçlarını karşılayacak uygulama geliştirmek bulunmaktadır. Projede, kullanıcıların dijital varlık yönetim yazılımları üzerindeki etkileşimlerinin gerçek zamanlı olarak izlenmesi ve bu verilerin analizi yoluyla anlık eylemler üretmek de bu çalışmanın kapsamı içerisindedir. Böylece, dijital varlık işlemlerinin güvenliğini, verimliliğini ve maliyet etkinliğini artırmak ve genel olarak dijital cüzdan kullanımında kullanıcı deneyimini iyileştirmek amaçlanmaktadır. Sonuç olarak, bu proje, dijital varlık yönetimi ve saklama alanında, güvenlik, kullanılabilirlik ve maliyet etkinliği gibi önemli avantajlar sunmayı hedefleyen, kapsamlı bir çözüm sunmayı amaçlamaktadır. Bu girişimin, dijital cüzdan ekosisteminin genişlemesine ve kullanıcıların dijital varlık yönetimindeki deneyimlerine önemli katkılar sağlaması beklenmektedir.

Keywords
Dijital Varlık YönetimiDijital CüzdanGerçek Zamanlı Veri AnaliziFinansal Teknolojiler

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Cite This Article
Uysal, F. M. (2023). Dijital Cüzdan: Güvenli ve Maliyet Etkin Bir Altyapı Yaklaşımı. *Orclever Proceedings of Research and Development*, 3(1), 490-501. https://doi.org/10.56038/oprd.v3i1.362

Bibliographic Info

JournalOrclever Proceedings of Research and Development
Volume3
Issue1
Pages490–501
PublishedDecember 31, 2023
eISSN2980-020X