Block-Level Image Service for the CloudJust Accepted

Huiba Li, Zhihao Zhang, Yifan Yuan, Rui Du, Kai Ma, Lanzheng Liu,Yiming Zhang,Windsor Hsu

ACM Transactions on Storage(2022)

引用 0|浏览0
暂无评分
摘要
Businesses increasingly need agile and elastic computing infrastructure to respond quickly to real world situations. By offering efficient process-based virtualization and a layered image system, containers are designed to enable agile and elastic application deployment. However, creating or updating large container clusters is still slow due to the image downloading and unpacking process. In this paper, we present DADI Image Service, a block-level image service for increased agility and elasticity in deploying applications. DADI replaces the waterfall model of starting containers (downloading image, unpacking image, starting container) with fine-grained on-demand transfer of remote images, realizing instant start of containers. To accelerate the cold start of containers, DADI designs a pull-based prefetching mechanism which allows a host to read necessary image data beforehand at the granularity of image layers. We design a P2P-based decentralized image sharing architecture to balance traffic among all the participating hosts and propose a pull-push collaborative prefetching mechanism to accelerate cold start. DADI efficiently supports various kinds of runtimes including cgroups, QEMU, etc., further realizing “build once, run anywhere”. DADI has been deployed at scale in the production environment of Alibaba, serving one of the world’s largest ecommerce platforms. Performance results show that DADI can cold start 10,000 containers on 1,000 hosts within 4 seconds.
更多
查看译文
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要