Cluster Computing | 2019

Low-overhead dynamic sharing of graphics memory space in GPU virtualization environments

 
 
 
 

Abstract


The proliferation of GPU intensive workloads has created a new challenge for low-overhead and efficient GPU virtualization solutions over GPU clouds. gVirt is a full GPU virtualization solution for Intel’s integrated GPUs that share system’s on-board memory for graphics memory. In order to solve the inherent scalability limitation on the number of simultaneous virtual machines (VM) in gVirt, gScale proposed a dynamic sharing scheme for global graphics memory among VMs by copying the entries in a private graphics translation table (GTT) to a physical GTT along with a GPU context switch. However, copying entries between private GTT and physical GTT often causes significant overhead, which becomes worse when the global graphics memory space shared by each VM is overlapped. This paper identifies that the copy overhead caused by GPU context switch is one of the major bottlenecks in performance improvement and proposes a low-overhead dynamic memory management scheme called DymGPU. DymGPU provides two memory allocation algorithms such as size-based and utilization-based algorithms. While the size-based algorithm allocates memory space based on the memory size required by each VM, the utilization-based algorithm considers GPU utilization of each VM to allocate memory space. DymGPU is also dynamic in the sense that the global graphics memory space used by each VM is rearranged at runtime by periodically checking idle VMs and GPU utilization of each runnable VM. We have implemented our proposed approach in gVirt and confirmed that the proposed scheme reduces GPU context switch time by up to 53% and improved the overall performance of various GPU applications by up to 39%.

Volume None
Pages 1 - 12
DOI 10.1007/s10586-019-02967-5
Language English
Journal Cluster Computing

Full Text