Toward Automated Hypervisor Scenario Generation Based on VM Workload Profiling for Resource-Constrained Environments
- URL: http://arxiv.org/abs/2508.08952v1
- Date: Tue, 12 Aug 2025 14:06:06 GMT
- Title: Toward Automated Hypervisor Scenario Generation Based on VM Workload Profiling for Resource-Constrained Environments
- Authors: Hyunwoo Kim, Jaeseong Lee, Sunpyo Hong, Changmin Han,
- Abstract summary: This paper presents an automated scenario generation framework, which helps automotive vendors to allocate hardware resources efficiently.<n>By profiling runtime behavior and integrating both theoretical models and vendors, the proposed tool generates optimized configurations tailored to system constraints.
- Score: 3.861132936894187
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In the automotive industry, the rise of software-defined vehicles (SDVs) has driven a shift toward virtualization-based architectures that consolidate diverse automotive workloads on a shared hardware platform. To support this evolution, chipset vendors provide board support packages (BSPs), hypervisor setups, and resource allocation guidelines. However, adapting these static configurations to varying system requirements and workloads remain a significant challenge for Tier 1 integrators. This paper presents an automated scenario generation framework, which helps automotive vendors to allocate hardware resources efficiently across multiple VMs. By profiling runtime behavior and integrating both theoretical models and vendor heuristics, the proposed tool generates optimized hypervisor configurations tailored to system constraints. We compare two main approaches for modeling target QoS based on profiled data and resource allocation: domain-guided parametric modeling and deep learning-based modeling. We further describe our optimization strategy using the selected QoS model to derive efficient resource allocations. Finally, we report on real-world deployments to demonstrate the effectiveness of our framework in improving integration efficiency and reducing development time in resource-constrained environments.
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