Litcius/Paper detail

NoCeption: A Fast PPA Prediction Framework for Network-on-Chips Using Graph Neural Network

Fuping Li, Ying Wang, Cheng Liu, Huawei Li, Xiaowei Li

20222022 Design, Automation & Test in Europe Conference & Exhibition (DATE)16 citationsDOI

Abstract

Network-on-Chips (NoCs) have been viewed as a promising alternative to traditional on-chip communication architecture for the increasing number of IPs in modern chips. To support the vast design space exploration of application-specific NoC characteristics with arbitrary topologies, in this paper, we propose a fast estimation framework to predict power, performance, and area (PPA) of NoCs based on graph neural networks (GNNs). We present a general way of modeling the application and the NoC with user-defined parameters as an attributed graph, which can be learned by the GNN model. Experimental results show that on the unseen realistic applications, the proposed method achieves the accuracy of 97.36% on power estimation, 97.83% on area estimation, and improves the accuracy of the network-level and system-level performance predictor over the topology-constrained baseline method by 6.52% and 4.73% respectively.

Topics & Concepts

Computer scienceNetwork topologyGraphArtificial neural networkNetwork on a chipDesign space explorationNetwork architectureComputer engineeringComputer architectureTheoretical computer scienceEmbedded systemArtificial intelligenceComputer networkInterconnection Networks and SystemsSupercapacitor Materials and FabricationAdvancements in Battery Materials