Sparrow: Scalable Scheduling for Sub-Second Parallel Jobs
Article 2013 en
Authors
KO
Kay Ousterhout
PW
Patrick Wendell
MZ
Matei Zaharia
Abstract
1 min read
Large-scale data analytics frameworks are shifting towards shorter task durations and larger degrees of parallelism to provide low latency. However, scheduling highly parallel jobs that complete in hundreds of milliseconds poses a major challenge for cluster schedulers, which will need to place millions of tasks per second on appropriate nodes while offering millisecond-level latency and high availability. We demonstrate that a decentralized, randomized sampling approach provides nearoptimal performance while avoiding the throughput and availability limitations of a centralized design. We implement and deploy our scheduler, Sparrow, on a real cluster and demonstrate that Sparrow performs within 14% of an ideal scheduler.
Discussion(0)
No comments yet. Be the first to comment.