+1 (Non-binding). Looking forward to see it grows a bigger community and possibly cover more scenarios like public cloud. :D
BR, Zhankun Willem Jiang <willem.ji...@gmail.com>于2022年5月25日 周三下午8:59写道: > +1 (binding). > > Willem Jiang > > Twitter: willemjiang > Weibo: 姜宁willem > > On Wed, May 25, 2022 at 12:05 AM Jerry Shao <js...@apache.org> wrote: > > > > Hi all, > > > > Due to the name issue in thread ( > > https://lists.apache.org/thread/y07xjkqzvpchncym9zr1hgm3c4l4ql0f), we > > figured out a new project name "Uniffle" and created a new Thread. Please > > help to discuss. > > > > We would like to propose Uniffle[1] as a new Apache incubator project, > you > > can find the proposal here [2] for more details. > > > > Uniffle is a high performance, general purpose Remote Shuffle Service for > > distributed compute engines like Apache Spark > > <https://spark.apache.org/>, Apache > > Hadoop MapReduce <https://hadoop.apache.org/>, Apache Flink > > <https://flink.apache.org/> and so on. We are aiming to make Firestorm a > > universal shuffle service for distributed compute engines. > > > > Shuffle is the key part for a distributed compute engine to exchange the > > data between distributed tasks, the performance and stability of shuffle > > will directly affect the whole job. Current “local file pull-like shuffle > > style” has several limitations: > > > > 1. Current shuffle is hard to support super large workloads, > especially > > in a high load environment, the major problem is IO problem (random > disk IO > > issue, network congestion and timeout). > > 2. Current shuffle is hard to deploy on the disaggregated compute > > storage environment, as disk capacity is quite limited on compute > nodes. > > 3. The constraint of storing shuffle data locally makes it hard to > scale > > elastically. > > > > Remote Shuffle Service is the key technology for enterprises to build big > > data platforms, to expand big data applications to disaggregated, > > online-offline hybrid environments, and to solve above problems. > > > > The implementation of Remote Shuffle Service - “Uniffle” - is heavily > > adopted in Tencent, and shows its advantages in production. Other > > enterprises also adopted or prepared to adopt Firestorm in their > > environments. > > > > Uniffle's key idea is brought from Salfish shuffle > > < > https://www.researchgate.net/publication/262241541_Sailfish_a_framework_for_large_scale_data_processing > >, > > it has several key design goals: > > > > 1. High performance. Firestorm’s performance is close enough to local > > file based shuffle style for small workloads. For large workloads, it > is > > far better than the current shuffle style. > > 2. Fault tolerance. Firestorm provides high availability for > Coordinated > > nodes, and failover for Shuffle nodes. > > 3. Pluggable. Firestorm is highly pluggable, which could be suited to > > different compute engines, different backend storages, and different > > wire-protocols. > > > > We believe that Uniffle project will provide the great value for the > > community if it is accepted by the Apache incubator. > > > > I will help this project as champion and many thanks to the 3 mentors: > > > > - > > > > Felix Cheung (felixche...@apache.org) > > - Junping du (junping...@apache.org) > > - Weiwei Yang (w...@apache.org) > > - Xun liu (liu...@apache.org) > > - Zhankun Tang (zt...@apache.org) > > > > > > [1] https://github.com/Tencent/Firestorm > > [2] > https://cwiki.apache.org/confluence/display/INCUBATOR/UniffleProposal > > > > Best regards, > > Jerry > > --------------------------------------------------------------------- > To unsubscribe, e-mail: general-unsubscr...@incubator.apache.org > For additional commands, e-mail: general-h...@incubator.apache.org > >