Minerva: Enabling Low-Power, Highly-Accurate Deep Neural Network Accelerators B Reagen, PN Whatmough, R Adolf, S Rama, H Lee, SK Lee, ... International Symposium on Computer Architecture (ISCA), Proceedings of the …, 2016 | 735 | 2016 |
Federated learning based on dynamic regularization DAE Acar, Y Zhao, RM Navarro, M Mattina, PN Whatmough, V Saligrama arXiv preprint arXiv:2111.04263, 2021 | 669 | 2021 |
Ares: A framework for quantifying the resilience of deep neural networks B Reagen, U Gupta, L Pentecost, PN Whatmough, SK Lee, N Mulholland, ... 2018 55th ACM/ESDA/IEEE Design Automation Conference (DAC), 1-6, 2018 | 338 | 2018 |
Scale-Sim: Systolic CNN Accelerator Simulator A Samajdar, Y Zhu, PN Whatmough, M Mattina, T Krishna arXiv preprint arXiv:1811.02883, 2018 | 296 | 2018 |
MicroNets: Neural Network Architectures for Deploying tinyML Applications on Commodity Microcontrollers C Banbury, C Zhou, I Fedorov, R Matas, U Thakker, D Gope, ... Proceedings of Machine Learning and Systems 3, 2021 | 241 | 2021 |
A 28nm SoC with a 1.2 GHz 568nJ/prediction Sparse Deep-Neural-Network Engine with >0.1 Timing Error Rate Tolerance for IoT Applications PN Whatmough, SK Lee, H Lee, S Rama, D Brooks, GY Wei Solid-State Circuits Conference (ISSCC), 2017 IEEE International, 242-243, 2017 | 201 | 2017 |
SpArSe: Sparse Architecture Search for CNNs on Resource-Constrained Microcontrollers I Fedorov, RP Adams, M Mattina, P Whatmough Advances in Neural Information Processing Systems (NeurIPS), 4978-4990, 2019 | 173 | 2019 |
A Systematic Methodology for Characterizing Scalability of DNN Accelerators using SCALE-Sim A Samajdar, JM Joseph, Y Zhu, P Whatmough, M Mattina, T Krishna IEEE International Symposium on Performance Analysis of Systems and Software …, 2020 | 157 | 2020 |
VLSI Architecture for a Reconfigurable Spectrally Efficient FDM Baseband Transmitter PN Whatmough, MR Perrett, S Isam, I Darwazeh IEEE Transactions on Circuits and Systems I: Regular Papers (TCAS-I) 59 (5 …, 2012 | 111 | 2012 |
VLSI Architecture for a Reconfigurable Spectrally Efficient FDM Baseband Transmitter PN Whatmough, MR Perrett, S Isam, I Darwazeh Circuits and Systems (ISCAS), 2011 IEEE International Symposium on, 1688-1691, 2011 | 111 | 2011 |
Euphrates: Algorithm-SoC Co-Design for Low-Power Mobile Continuous Vision Y Zhu, A Samajdar, M Mattina, P Whatmough 45th Annual International Symposium on Computer Architecture (ISCA), 547-560, 2018 | 105 | 2018 |
DNN ENGINE: A 28-nm Timing-Error Tolerant Sparse Deep Neural Network Processor for IoT Applications PN Whatmough, SK Lee, D Brooks, GY Wei IEEE Journal of Solid-State Circuits (JSSC) 53 (9), 2722-2731, 2018 | 100 | 2018 |
A case for efficient accelerator design space exploration via bayesian optimization B Reagen, JM Hernández-Lobato, R Adolf, M Gelbart, P Whatmough, ... 2017 IEEE/ACM International Symposium on Low Power Electronics and Design …, 2017 | 99 | 2017 |
TinyLSTMs: Efficient neural speech enhancement for hearing aids I Fedorov, M Stamenovic, C Jensen, LC Yang, A Mandell, Y Gan, ... arXiv preprint arXiv:2005.11138, 2020 | 91 | 2020 |
EdgeBERT: Sentence-level energy optimizations for latency-aware multi-task nlp inference T Tambe, C Hooper, L Pentecost, T Jia, EY Yang, M Donato, V Sanh, ... MICRO-54: 54th Annual IEEE/ACM International Symposium on Microarchitecture …, 2021 | 85 | 2021 |
Scale-sim: Systolic CNN accelerator A Samajdar, Y Zhu, PN Whatmough, M Mattina, T Krishna arXiv preprint arXiv:1811.02883 57, 2018 | 85 | 2018 |
Systolic Tensor Array: An Efficient Structured-Sparse GEMM Accelerator for Mobile CNN Inference ZG Liu, PN Whatmough, M Mattina IEEE Computer Architecture Letters 19 (1), 34-37, 2020 | 72 | 2020 |
Circuit-Level Timing Error Tolerance for Low-Power DSP Filters and Transforms PN Whatmough, S Das, DM Bull, I Darwazeh IEEE Transactions on Very Large Scale Integration (VLSI) Systems 21 (6), 989-999, 2013 | 69 | 2013 |
FixyNN: Efficient Hardware for Mobile Computer Vision via Transfer Learning PN Whatmough, C Zhou, P Hansen, SK Venkataramanaiah, J Seo, ... The 2nd Conference on Systems and Machine Learning (SysML) 2019, Palo Alto …, 2019 | 63 | 2019 |
Debiasing model updates for improving personalized federated training DAE Acar, Y Zhao, R Zhu, R Matas, M Mattina, P Whatmough, ... International conference on machine learning, 21-31, 2021 | 62 | 2021 |