On Metaverse Application Dependability Analysis
Metaverse as-a-Service (MaaS) enables Metaverse tenants to execute their APPlications (MetaAPP) by allocating Metaverse resources in the form of Metaverse service functions (MSF). Usually, each MSF is deployed in a virtual machine (VM) for better resiliency and security. However, these MSFs along wi...
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Zusammenfassung: | Metaverse as-a-Service (MaaS) enables Metaverse tenants to execute their
APPlications (MetaAPP) by allocating Metaverse resources in the form of
Metaverse service functions (MSF). Usually, each MSF is deployed in a virtual
machine (VM) for better resiliency and security. However, these MSFs along with
VMs and virtual machine monitors (VMM) running them may encounter software
aging after prolonged continuous operation. Then, there is a decrease in
MetaAPP dependability, namely, the dependability of the MSF chain (MSFC),
consisting of MSFs allocated to MetaAPP. This paper aims to investigate the
impact of both software aging and rejuvenation techniques on MetaAPP
dependability in the scenarios, where both active components (MSF, VM and VMM)
and their backup components are subject to software aging. We develop a
hierarchical model to capture behaviors of aging, failure, and recovery by
applying Semi-Markov process and reliability block diagram. Numerical analysis
and simulation experiments are conducted to evaluate the approximation accuracy
of the proposed model and dependability metrics. We then identify the key
parameters for improving the MetaAPP/MSFC dependability through sensitivity
analysis. The investigation is also made about the influence of various
parameters on MetaAPP/MSFC dependability. |
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DOI: | 10.48550/arxiv.2310.03318 |