资源介绍
We present Mesos, a platform for sharing commodity clusters between multiple diverse cluster computing
frameworks, such as Hadoop and MPI. Sharing improves
cluster utilization and avoids per-framework data replication. Mesos shares resources in a fine-grained manner, allowing frameworks to achieve data locality by
taking turns reading data stored on each machine. To
support the sophisticated schedulers of today’s frameworks, Mesos introduces a distributed two-level scheduling mechanism called resource offers. Mesos decides
how many resources to offer each framework, while
frameworks decide which resources to accept and which
computations to run on them. Our results show that
Mesos can achieve near-optimal data locality when sharing the cluster among diverse frameworks, can scale to
50,000 (emulated) nodes, and is resilient to failures.
- 上一篇: m3u8播放器实现
- 下一篇: 阿里巴巴编码规范基础技能认证考题分析(考题答案).pdf