Home /Research /Prediction of Permissioned Blockchain Performance for Resource Scaling Configurations
OTHER

Prediction of Permissioned Blockchain Performance for Resource Scaling Configurations

Seungwoo Jung, Yeonho Yoo, Gyeongsik Yang, Chuck Yoo

Year
2025
Access
Open access

Abstract

Blockchain is increasingly offered as blockchain-as-a-service (BaaS) by cloud service providers. However, configuring BaaS appropriately for optimal performance and reliability resorts to try-and-error. A key challenge is that BaaS is often perceived as a ``black-box,'' leading to uncertainties in performance and resource provisioning. Previous studies attempted to address this challenge; however, the impacts of both vertical and horizontal scaling remain elusive. To this end, we present machine learning-based models to predict network reliability and throughput based on scaling configurations. In our evaluation, the models exhibit prediction errors of ~1.9%, which is highly accurate and can be applied in the real-world.

Keywords

cs.DCcs.LGeess.SY

Related papers

Browse all OTHER papers