Hybrid on-chip communication architectures for heterogeneous manycore systems

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Abstract

The widespread adoption of big data has led to the search for high-performance and low-power computational platforms. Emerging heterogeneous manycore processing platforms consisting of CPU and GPU cores along with various types of accelerators offer power and area-efficient trade-offs for running these applications. However, heterogeneous manycore architectures need to satisfy the communication and memory requirements of the diverse computing elements that conventional Network-on-Chip (NoC) architectures are unable to handle effectively. Further, with increasing system sizes and level of heterogeneity, it becomes difficult to quickly explore the large design space and establish the appropriate design trade-offs. To address these challenges, machine learning-inspired heterogeneous manycore system design is a promising research direction to pursue. In this paper, we highlight various salient features of heterogeneous manycore architectures enabled by emerging interconnect technologies and machine learning techniques.

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APA

Joardar, B. K., Doppa, J. R., Pande, P. P., Marculescu, D., & Marculescu, R. (2018). Hybrid on-chip communication architectures for heterogeneous manycore systems. In IEEE/ACM International Conference on Computer-Aided Design, Digest of Technical Papers, ICCAD. Institute of Electrical and Electronics Engineers Inc. https://doi.org/10.1145/3240765.3243480

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