计算机科学
可扩展性
工作量
带宽(计算)
云计算
实时计算
编码(内存)
架空(工程)
背景(考古学)
服务质量
计算机网络
人工智能
操作系统
古生物学
生物
作者
Hyunho Yeo,Hwijoon Lim,Jae-Hong Kim,Youngmok Jung,Juncheol Ye,Dongsu Han
标识
DOI:10.1145/3544216.3544218
摘要
High-definition live streaming has experienced tremendous growth. However, the video quality of live video is often limited by the streamer's uplink bandwidth. Recently, neural-enhanced live streaming has shown great promise in enhancing the video quality by running neural super-resolution at the ingest server. Despite its benefit, it is too expensive to be deployed at scale. To overcome the limitation, we present NeuroScaler, a framework that delivers efficient and scalable neural enhancement for live streams. First, to accelerate end-to-end neural enhancement, we propose novel algorithms that significantly reduce the overhead of video super-resolution, encoding, and GPU context switching. Second, to maximize the overall quality gain, we devise a resource scheduler that considers the unique characteristics of the neural-enhancing workload. Our evaluation on a public cloud shows NeuroScaler reduces the overall cost by 22.3× and 3.0--11.1× compared to the latest per-frame and selective neural-enhancing systems, respectively.
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