These labels were automatically added by AI and may be inaccurate. For details, see About Literature Database.
Abstract
In the rapidly evolving landscape of digital assets and blockchain
technologies, the necessity for robust, scalable, and secure data management
platforms has never been more critical. This paper introduces a novel software
architecture designed to meet these demands by leveraging the inherent
strengths of cloud-native technologies and modular micro-service based
architectures, to facilitate efficient data management, storage and access,
across different stakeholders. We detail the architectural design, including
its components and interactions, and discuss how it addresses common challenges
in managing blockchain data and digital assets, such as scalability, data
siloing, and security vulnerabilities. We demonstrate the capabilities of the
platform by employing it into multiple real-life scenarios, namely providing
data in near real-time to scientists in help with their research. Our results
indicate that the proposed architecture not only enhances the efficiency and
scalability of distributed data management but also opens new avenues for
innovation in the research reproducibility area. This work lays the groundwork
for future research and development in machine learning operations systems,
offering a scalable and secure framework for the burgeoning digital economy.