On Sat, Jan 27, 2018 at 4:09 AM, Davor Bonaci <da...@apache.org> wrote:
> Great work -- I think this technology has a lot of promise, and I'd love to > see its evolution inside the Foundation. > > Thanks, Davor! > Parts of it, like the Onyx Intermediate Representation [1], overlap with > the work-in-progress inside the Apache Beam project ("portability"). We'd > love to work together on this -- would you be open to such collaboration? > If so, it may not be necessary to start from scratch, and leverage the work > already done. > > Sure. We're open to collaboration. > Regarding the name, Onyx would likely have to be renamed, due to a conflict > with a related technology [2]. > > Thanks for pointing it out. It's difficult to come up with a good short name. :) Do you have any suggestion? Thanks! -Gon --- Byung-Gon Chun > Davor > > [1] https://snuspl.github.io/onyx/docs/ir/ > [2] http://www.onyxplatform.org/ > > On Thu, Jan 25, 2018 at 3:28 PM, Byung-Gon Chun <bgc...@gmail.com> wrote: > > > Dear Apache Incubator Community, > > > > Please accept the following proposal for presentation and discussion: > > https://wiki.apache.org/incubator/OnyxProposal > > > > Onyx is a data processing system that aims to flexibly control the > runtime > > behaviors of a job to adapt to varying deployment characteristics (e.g., > > harnessing transient resources in datacenters, cross-datacenter > deployment, > > changing runtime based on job characteristics, etc.). Onyx provides ways > to > > extend the system’s capabilities and incorporate the extensions to the > > flexible job execution. > > Onyx translates a user program (e.g., Apache Beam, Apache Spark) into an > > Intermediate Representation (IR) DAG, which Onyx optimizes and deploys > > based on a deployment policy. > > > > I've attached the proposal below. > > > > Best regards, > > Byung-Gon Chun > > > > = OnyxProposal = > > > > == Abstract == > > Onyx is a data processing system for flexible employment with > > different execution scenarios for various deployment characteristics > > on clusters. > > > > == Proposal == > > Today, there is a wide variety of data processing systems with > > different designs for better performance and datacenter efficiency. > > They include processing data on specific resource environments and > > running jobs with specific attributes. Although each system > > successfully solves the problems it targets, most systems are designed > > in the way that runtime behaviors are built tightly inside the system > > core to hide the complexity of distributed computing. This makes it > > hard for a single system to support different deployment > > characteristics with different runtime behaviors without substantial > > effort. > > > > Onyx is a data processing system that aims to flexibly control the > > runtime behaviors of a job to adapt to varying deployment > > characteristics. Moreover, it provides a means of extending the > > system’s capabilities and incorporating the extensions to the flexible > > job execution. > > > > In order to be able to easily modify runtime behaviors to adapt to > > varying deployment characteristics, Onyx exposes runtime behaviors to > > be flexibly configured and modified at both compile-time and runtime > > through a set of high-level graph pass interfaces. > > > > We hope to contribute to the big data processing community by enabling > > more flexibility and extensibility in job executions. Furthermore, we > > can benefit more together as a community when we work together as a > > community to mature the system with more use cases and understanding > > of diverse deployment characteristics. The Apache Software Foundation > > is the perfect place to achieve these aspirations. > > > > == Background == > > Many data processing systems have distinctive runtime behaviors > > optimized and configured for specific deployment characteristics like > > different resource environments and for handling special job > > attributes. > > > > For example, much research have been conducted to overcome the > > challenge of running data processing jobs on cheap, unreliable > > transient resources. Likewise, techniques for disaggregating different > > types of resources, like memory, CPU and GPU, are being actively > > developed to use datacenter resources more efficiently. Many > > researchers are also working to run data processing jobs in even more > > diverse environments, such as across distant datacenters. Similarly, > > for special job attributes, many works take different approaches, such > > as runtime optimization, to solve problems like data skew, and to > > optimize systems for data processing jobs with small-scale input data. > > > > Although each of the systems performs well with the jobs and in the > > environments they target, they perform poorly with unconsidered cases, > > and do not consider supporting multiple deployment characteristics on > > a single system in their designs. > > > > For an application writer to optimize an application to perform well > > on a certain system engraved with its underlying behaviors, it > > requires a deep understanding of the system itself, which is an > > overhead that often requires a lot of time and effort. Moreover, for a > > developer to modify such system behaviors, it requires modifications > > of the system core, which requires an even deeper understanding of the > > system itself. > > > > With this background, Onyx is designed to represent all of its jobs as > > an Intermediate Representation (IR) DAG. In the Onyx compiler, user > > applications from various programming models (ex. Apache Beam) are > > submitted, transformed to an IR DAG, and optimized/customized for the > > deployment characteristics. In the IR DAG optimization phase, the DAG > > is modified through a series of compiler “passes” which reshape or > > annotate the DAG with an expression of the underlying runtime > > behaviors. The IR DAG is then submitted as an execution plan for the > > Onyx runtime. The runtime includes the unmodified parts of data > > processing in the backbone which is transparently integrated with > > configurable components exposed for further extension. > > > > == Rationale == > > Onyx’s vision lies in providing means for flexibly supporting a wide > > variety of job execution scenarios for users while facilitating system > > developers to extend the execution framework with various > > functionalities at the same time. The capabilities of the system can > > be extended as it grows to meet a more variety of execution scenarios. > > We require inputs from users and developers from diverse domains in > > order to make it a more thriving and useful project. The Apache > > Software Foundation provides the best tools and community to support > > this vision. > > > > == Initial Goals == > > Initial goals will be to move the existing codebase to Apache and > > integrate with the Apache development process. We further plan to > > develop our system to meet the needs for more execution scenarios for > > a more variety of deployment characteristics. > > > > == Current Status == > > Onyx codebase is currently hosted in a repository at github.com. The > > current version has been developed by system developers at Seoul > > National University, Viva Republica, Samsung, and LG. > > > > == Meritocracy == > > We plan to strongly support meritocracy. We will discuss the > > requirements in an open forum, and those that continuously contribute > > to Onyx with the passion to strengthen the system will be invited as > > committers. Contributors that enrich Onyx by providing various use > > cases, various implementations of the configurable components > > including ideas for optimization techniques will be especially > > welcome. Committers with a deep understanding of the system’s > > technical aspects as a whole and its philosophy will definitely be > > voted as the PMC. We will monitor community participation so that > > privileges can be extended to those that contribute. > > > > == Community == > > We hope to expand our contribution community by becoming an Apache > > incubator project. The contributions will come from both users and > > system developers interested in flexibility and extensibility of job > > executions that Onyx can support. We expect users to mainly contribute > > to diversify the use cases and deployment characteristics, and > > developers to contribute to implement them. > > > > == Alignment == > > Apache Spark is one of many popular data processing frameworks. The > > system is designed towards optimizing jobs using RDDs in memory and > > many other optimizations built tightly within the framework. In > > contrast to Spark, Onyx aims to provide more flexibility for job > > execution in an easy manner. > > > > Apache Tez enables developers to build complex task DAGs with control > > over the control plane of job execution. In Onyx, a high-level > > programming layer (ex. Apache Beam) is automatically converted to a > > basic IR DAG and can be converted to any IR DAG through a series of > > easy user writable passes, that can both reshape and modify the > > annotation (of execution properties) of the DAG. Moreover, Onyx leaves > > more parts of the job execution configurable, such as the scheduler > > and the data plane. As opposed to providing a set of properties for > > solid optimization, Onyx’s configurable parts can be easily extended > > and explored by implementing the pre-defined interfaces. For example, > > an arbitrary intermediate data store can be added. > > > > Onyx currently supports Apache Beam programs and we are working on > > supporting Apache Spark programs as well. Onyx also utilizes Apache > > REEF for container management, which allows Onyx to run in Apache YARN > > and Apache Mesos clusters. If necessary, we plan to contribute to and > > collaborate with these other Apache projects for the benefit of all. > > We plan to extend such integrations with more Apache softwares. Apache > > software foundation already hosts many major big-data systems, and we > > expect to help further growth of the big-data community by having Onyx > > within the Apache foundation. > > > > == Known Risks == > > === Orphaned Products === > > The risk of the Onyx project being orphaned is minimal. There is > > already plenty of work that arduously support different deployment > > characteristics, and we propose a general way to implement them with > > flexible and extensible configuration knobs. The domain of data > > processing is already of high interest, and this domain is expected to > > evolve continuously with various other purposes, such as resource > > disaggregation and using transient resources for better datacenter > > resource utilization. > > > > === Inexperience with Open Source === > > The initial committers include PMC members and committers of other > > Apache projects. They have experience with open source projects, > > starting from their incubation to the top-level. They have been > > involved in the open source development process, and are familiar with > > releasing code under an open source license. > > > > === Homogeneous Developers === > > The initial set of committers is from a limited set of organizations, > > but we expect to attract new contributors from diverse organizations > > and will thus grow organically once approved for incubation. Our prior > > experience with other open source projects will help various > > contributors to actively participate in our project. > > > > === Reliance on Salaried Developers === > > Many developers are from Seoul National University. This is not > applicable. > > > > === Relationships with Other Apache Products === > > Onyx positions itself among multiple Apache products. It runs on > > Apache REEF for container management. It also utilizes many useful > > development tools including Apache Maven, Apache Log4J, and multiple > > Apache Commons components. Onyx supports the Apache Beam programming > > model for user applications. We are currently working on supporting > > the Apache Spark programming APIs as well. > > > > === An Excessive Fascination with the Apache Brand === > > We hope to make Onyx a powerful system for data processing, meeting > > various needs for different deployment characteristics, under a more > > variety of environments. We see the limitations of simply putting code > > on GitHub, and we believe the Apache community will help the growth of > > Onyx for the project to become a positively impactful and innovative > > open source software. We believe Onyx is a great fit for the Apache > > Software Foundation due to the collaboration it aims to achieve from > > the big data processing community. > > > > == Documentation == > > The current documentation for Onyx is at https://snuspl.github.io/onyx/. > > > > == Initial Source == > > The Onyx codebase is currently hosted at https://github.com/snuspl/onyx. > > > > == External Dependencies == > > To the best of our knowledge, all Onyx dependencies are distributed > > under Apache compatible licenses. Upon acceptance to the incubator, we > > would begin a thorough analysis of all transitive dependencies to > > verify this fact and further introduce license checking into the build > > and release process. > > > > == Cryptography == > > Not applicable. > > > > == Required Resources == > > === Mailing Lists === > > We will operate two mailing lists as follows: > > * Onyx PMC discussions: priv...@onyx.incubator.apache.org > > * Onyx developers: d...@onyx.incubator.apache.org > > > > === Git Repositories === > > Upon incubation: https://github.com/apache/incubator-onyx. > > After the incubation, we would like to move the existing repo > > https://github.com/snuspl/onyx to the Apache infrastructure > > > > === Issue Tracking === > > Onyx currently tracks its issues using the Github issue tracker: > > https://github.com/snuspl/onyx/issues. We plan to migrate to Apache > > JIRA. > > > > == Initial Committers == > > * Byung-Gon Chun > > * Jeongyoon Eo > > * Geon-Woo Kim > > * Joo Yeon Kim > > * Gyewon Lee > > * Jung-Gil Lee > > * Sanha Lee > > * Wooyeon Lee > > * Yunseong Lee > > * JangHo Seo > > * Won Wook Song > > * Taegeon Um > > * Youngseok Yang > > > > == Affiliations == > > * SNU (Seoul National University) > > * Byung-Gon Chun > > * Jeongyoon Eo > > * Geon-Woo Kim > > * Gyewon Lee > > * Sanha Lee > > * Wooyeon Lee > > * Yunseong Lee > > * JangHo Seo > > * Won Wook Song > > * Taegeon Um > > * Youngseok Yang > > > > * LG > > * Jung-Gil Lee > > > > * Samsung > > * Joo Yeon Kim > > > > * Viva Republica > > * Geon-Woo Kim > > > > == Sponsors == > > === Champions === > > Byung-Gon Chun > > > > === Mentors === > > * Hyunsik Choi > > * Byung-Gon Chun > > * Markus Weimer > > * Reynold Xin > > > > === Sponsoring Entity === > > The Apache Incubator > > > > > > > > -- > > Byung-Gon Chun > > > -- Byung-Gon Chun