Twister2 Demonstrations for BDEC2
No Thumbnail Available
Can’t use the file because of accessibility barriers? Contact us
Date
2019-03-06
Journal Title
Journal ISSN
Volume Title
Publisher
Permanent Link
Abstract
Data-driven applications are essential to handle the ever-increasing volume, velocity, and veracity of data generated by sources such as the Web and Internet of Things (IoT) devices. Simulta- neously, an event-driven computational paradigm is emerging as the core of modern systems designed for database queries, data analytics, and on-demand applications. Modern big data pro- cessing runtimes and asynchronous many task (AMT) systems from high performance computing (HPC) community have adopted dataflow event-driven model. The services are increasingly mov- ing to an event-driven model in the form of Function as a Service (FaaS) to compose services. An event-driven runtime designed for data processing consists of well-understood components such as communication, scheduling, and fault tolerance. Different design choices adopted by these components determine the type of applications a system can support efficiently. We find that modern systems are limited to specific sets of applications because they have been designed with fixed choices that cannot be changed easily. In this paper, we present a loosely coupled component-based design of a big data toolkit where each component can have different imple- mentations to support various applications. Such a polymorphic design would allow services and data analytics to be integrated seamlessly and expand from edge to cloud to HPC environments.
Description
Keywords
Citation
Kamburugamuve, Supun, et al. "Twister2 Demonstrations for BDEC2." Concurrency and Computation: Practice and Experience, 2019-03-06, https://doi.org/10.1002/cpe.5189.
Journal
Concurrency and Computation: Practice and Experience