Détail du document
Identifiant

oai:arXiv.org:2402.18114

Sujet
Computer Science - Hardware Archit...
Auteur
Li, Wanqian Sun, Xiaotian Wang, Xinyu Wang, Lei Han, Yinhe Chen, Xiaoming
Catégorie

Computer Science

Année

2024

Date de référencement

06/03/2024

Mots clés
pimsyn
Métrique

Résumé

Processing-in-memory architectures have been regarded as a promising solution for CNN acceleration.

Existing PIM accelerator designs rely heavily on the experience of experts and require significant manual design overhead.

Manual design cannot effectively optimize and explore architecture implementations.

In this work, we develop an automatic framework PIMSYN for synthesizing PIM-based CNN accelerators, which greatly facilitates architecture design and helps generate energyefficient accelerators.

PIMSYN can automatically transform CNN applications into execution workflows and hardware construction of PIM accelerators.

To systematically optimize the architecture, we embed an architectural exploration flow into the synthesis framework, providing a more comprehensive design space.

Experiments demonstrate that PIMSYN improves the power efficiency by several times compared with existing works.

PIMSYN can be obtained from https://github.com/lixixi-jook/PIMSYN-NN.

Li, Wanqian,Sun, Xiaotian,Wang, Xinyu,Wang, Lei,Han, Yinhe,Chen, Xiaoming, 2024, PIMSYN: Synthesizing Processing-in-memory CNN Accelerators

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