[Privacy Enhancing Computing] Towards an Efficient Dataflow-flexible Accelerator by Finding Optimal Dataflows of DNNs, Future Generation Computer Systems, Sep 2025

Towards an Efficient Dataflow-flexible Accelerator by Finding Optimal Dataflows of DNNs

Hyunjun Kim*, Whoi Ree Ha*, Yongseok Lee, Dongju Lee, Jongwon Lee, Deumji Woo, Jonghee Yoon, Jemin Lee, Yongin Kwon†, Yunheung Paek†

Future Generation Computer Systems

*: co-first authors

† : Correspondence should be addressed to Y. Kwon and Y. Paek

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International Papers

Privacy Enhancing Computing Towards an Efficient Dataflow-flexible Accelerator by Finding Optimal Dataflows of DNNs, Future Generation Computer Systems, Sep 2025
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