Experimental Analysis of Dedicated GPU in Virtual Framework using vGPU

2021 
As the GPU technology is growing for quickening cloud computing work and graphic based calculations has prompted their incorporation in High Performance computing servers and Cloud frameworks. A few cloud service providers give virtual machine occurrences with GPU capacities.Using the appearance of virtualized GPU baremetal like NVIDIA’s series vGPUs, assigning also, sharing actual GPU in virtual framework has become simpler and available at low cost. The utilization rate and degree of utilization are controlled by the virtual GPU booking calculation and a installed virtual GPU machine. As a component of this work, we present an intensive experimental analysis of the dedicated GPU in virtualized environment. Specifically, we evaluate the virtualization workload activities, study the obstruction impacts of simultaneously executing similar and multi tenant activity burdens, and effect of vGPU algorithm for scheduling. We additionally show that the best vGPU design specification are subtle to the multiple of work activity attributes that measure the GPU. Our research also analyze execution of vGPU based virtual machines with PCI rooted direct GPU tasks. Based on our result using multiple tasks setups and with diverse GPU configurations, we notify that the overheads for VMs are 7 to 9% with less memory availability and up to 20 to 22% with increasing run time. We also analyze co-placing of multiple workloads and increase the utilization and efficiency of vGPU with less execution time up to 20%.
    • Correction
    • Source
    • Cite
    • Save
    • Machine Reading By IdeaReader
    26
    References
    0
    Citations
    NaN
    KQI
    []