Joel Hestness
Joel Hestness
Research Scientist, Cerebras Systems
cs.wisc.edu의 이메일 확인됨 - 홈페이지
제목
인용
인용
연도
The gem5 simulator
N Binkert, B Beckmann, G Black, SK Reinhardt, A Saidi, A Basu, ...
ACM SIGARCH computer architecture news 39 (2), 1-7, 2011
43462011
Kilo-NOC: A heterogeneous network-on-chip architecture for scalability and service guarantees
B Grot, J Hestness, SW Keckler, O Mutlu
2011 38th Annual International Symposium on Computer Architecture (ISCA …, 2011
2572011
Express cube topologies for on-chip interconnects
B Grot, J Hestness, SW Keckler, O Mutlu
2009 IEEE 15th International Symposium on High Performance Computer …, 2009
2422009
gem5-gpu: A heterogeneous cpu-gpu simulator
J Power, J Hestness, MS Orr, MD Hill, DA Wood
IEEE Computer Architecture Letters 14 (1), 34-36, 2014
2252014
Deep learning scaling is predictable, empirically
J Hestness, S Narang, N Ardalani, G Diamos, H Jun, H Kianinejad, ...
arXiv preprint arXiv:1712.00409, 2017
1562017
Netrace: dependency-driven trace-based network-on-chip simulation
J Hestness, B Grot, SW Keckler
Proceedings of the Third International Workshop on Network on Chip …, 2010
1392010
Running PARSEC 2.1 on M5
M Gebhart, J Hestness, E Fatehi, P Gratz, SW Keckler
The University of Texas at Austin, Department of Computer Science, Tech. Rep, 2009
872009
Convolutional Recurrent Neural Networks for Small-Footprint Keyword Spotting
SO Arik, M Kliegl, R Child, J Hestness, A Gibiansky, C Fougner, ...
Interspeech 2017, 2017
802017
A comparative analysis of microarchitecture effects on CPU and GPU memory system behavior
J Hestness, SW Keckler, DA Wood
2014 IEEE International Symposium on Workload Characterization (IISWC), 150-160, 2014
492014
Netrace: Dependency-tracking traces for efficient network-on-chip experimentation
J Hestness, SW Keckler
The University of Texas at Austin, Dept. of Computer Science, Tech. Rep, 2011
482011
GPU computing pipeline inefficiencies and optimization opportunities in heterogeneous CPU-GPU processors
J Hestness, SW Keckler, DA Wood
2015 IEEE International Symposium on Workload Characterization, 87-97, 2015
412015
Compositional generalization for primitive substitutions
Y Li, L Zhao, J Wang, J Hestness
arXiv preprint arXiv:1910.02612, 2019
222019
Beyond human-level accuracy: Computational challenges in deep learning
J Hestness, N Ardalani, G Diamos
Proceedings of the 24th Symposium on Principles and Practice of Parallel …, 2019
162019
Fftw and complex ambiguity function performance on the maestro processor
K Singh, JP Walters, J Hestness, J Suh, CM Rogers, SP Crago
2011 Aerospace Conference, 1-8, 2011
152011
A qos-enabled on-die interconnect fabric for kilo-node chips
B Grot, J Hestness, S Keckler, O Mutlu
Ieee Micro 32 (3), 17-25, 2012
142012
Deep Learning Scaling is Predictable
J Hestness, S Narang, N Ardalani, G Diamos, H Jun, H Kianinejad, ...
Empirically. arXiv 1712, 2017
102017
Deep Learning Scaling is Predictable, Empirically. arXiv 2017
J Hestness, S Narang, N Ardalani, G Diamos, H Jun, H Kianinejad, ...
arXiv preprint arXiv:1712.00409, 0
9
Convolutional recurrent neural networks for small-footprint keyword spotting
S Arik, M Kliegl, R Child, J Hestness, A Gibiansky, C Fougner, R Prenger, ...
US Patent 10,540,961, 2020
42020
Pipelined Backpropagation at Scale: Training Large Models without Batches
A Kosson, V Chiley, A Venigalla, J Hestness, U Köster
arXiv preprint arXiv:2003.11666, 2020
12020
A survey of 25 years of evaluation
KW Church, J Hestness
Natural Language Engineering 25 (6), 753-767, 2019
12019
현재 시스템이 작동되지 않습니다. 나중에 다시 시도해 주세요.
학술자료 1–20