Uniting Control and Data Parallelism: Towards Scalable Memory-Driven Dynamic Graph Processing

02/18/2022
by   Bibrak Qamar Chandio, et al.
0

Control parallelism and data parallelism is mostly reasoned and optimized as separate functions. Because of this, workloads that are irregular, fine-grain and dynamic such as dynamic graph processing become very hard to scale. An experimental research approach to computer architecture that synthesizes prior techniques of parallel computing along with new innovations is proposed in this paper. We establish the background and motivation of the research undertaking and provide a detailed description of the proposed omputing system that is highly parallel non-von Neumann, memory-centric and memory-driven. We also present a message-driven (or even-driven) programming model called "diffusive computation" and provide insights into its properties using SSSP and Triangle Counting problems as examples.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset