Samenvatting
Always-ON accelerators running TinyML applications are strongly limited by the memory and computation resources available in edge devices. Compute-In-Memory (CIM) architectures based on non-volatile memories (NVM) promise to bring the required compute and memory demands of Deep Neural Networks (DNN) to the edge while consuming extremely low power. However, their system-level design is constrained by the device and periphery noise which strongly impacts and compromises the accuracy of the DNN workload. In this paper SACA, a framework for simulating host & CIM accelerator systems, is presented. The simulator quantifies the system reliability by taking into account device-level non-idealities. The accuracy of two representative TinyML workloads is analyzed based on the crossbar characteristics -NVM technology, crossbar size, periphery characteristics. To demonstrate the capabilities of SACA, extensive experiments are carried out. We have characterized a convolutional network tackling CIFAR10 image classification and a fully connected network performing Human Activity Recognition. The results lead to optimal energy/performance/accuracy profiles, while the overall analysis highlights the dramatic effects of IR-drop on larger crossbars, degrading the system's accuracy and compromising its reliability.
Originele taal-2 | Engels |
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Titel | DCIS 2022 |
Subtitel | Proceedings of the 37th Conference on Design of Circuits and Integrated Systems |
Uitgeverij | Institute of Electrical and Electronics Engineers |
Aantal pagina's | 6 |
ISBN van elektronische versie | 978-1-6654-5950-1 |
DOI's | |
Status | Gepubliceerd - 2022 |
Evenement | 37th Conference on Design of Circuits and Integrated Systems, DCIS 2022 - Pamplona, Spanje Duur: 16 nov. 2022 → 18 nov. 2022 |
Congres
Congres | 37th Conference on Design of Circuits and Integrated Systems, DCIS 2022 |
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Land/Regio | Spanje |
Stad | Pamplona |
Periode | 16/11/22 → 18/11/22 |
Bibliografische nota
Funding Information:Research supported by EU Horizon 2020 Research and Innovation Program through MNEMOSENE project under Grant 780215.