Folgen
Brian Van Essen
Brian Van Essen
Bestätigte E-Mail-Adresse bei llnl.gov - Startseite
Titel
Zitiert von
Zitiert von
Jahr
Communication quantization for data-parallel training of deep neural networks
N Dryden, SA Jacobs, T Moon, B Van Essen
Proceedings of the Workshop on Machine Learning in High Performance …, 2016
2092016
Accelerating a random forest classifier: Multi-core, GP-GPU, or FPGA?
B Van Essen, C Macaraeg, M Gokhale, R Prenger
Field-Programmable Custom Computing Machines (FCCM), 2012 IEEE 20th Annual …, 2012
2052012
SPR: an architecture-adaptive CGRA mapping tool
S Friedman, A Carroll, B Van Essen, B Ylvisaker, C Ebeling, S Hauck
Proceedings of the ACM/SIGDA international symposium on Field programmable …, 2009
1462009
Truenorth ecosystem for brain-inspired computing: scalable systems, software, and applications
J Sawada, F Akopyan, AS Cassidy, B Taba, MV Debole, P Datta, ...
High Performance Computing, Networking, Storage and Analysis, SC16 …, 2016
972016
TrueNorth Ecosystem for Brain-Inspired Computing: Scalable Systems, Software, and Applications
BC Van Essen, EX Wang, DP Widemann, Q Wu, WE Murphy, ...
97*2016
LBANN: Livermore big artificial neural network HPC toolkit
B Van Essen, H Kim, R Pearce, K Boakye, B Chen
Proceedings of the Workshop on Machine Learning in High-Performance …, 2015
932015
DI-MMAP—a scalable memory-map runtime for out-of-core data-intensive applications
B Van Essen, H Hsieh, S Ames, R Pearce, M Gokhale
Cluster Computing 18 (1), 15-28, 2015
672015
On the role of NVRAM in data-intensive architectures: an evaluation
B Van Essen, R Pearce, S Ames, M Gokhale
Parallel & Distributed Processing Symposium (IPDPS), 2012 IEEE 26th …, 2012
622012
Large-scale deep learning on the YFCC100M dataset
K Ni, R Pearce, K Boakye, B Van Essen, D Borth, B Chen, E Wang
arXiv preprint arXiv:1502.03409, 2015
382015
Method of securing programmable logic configuration data
BC Van Essen, JW Kidd, CM Petersen, HH Schmit
US Patent 7,197,647, 2007
372007
DI-MMAP: A high performance memory-map runtime for data-intensive applications
B Van Essen, H Hsieh, S Ames, M Gokhale
High Performance Computing, Networking, Storage and Analysis (SCC), 2012 SC …, 2012
362012
Quadratic Unconstrained Binary Optimization (QUBO) on neuromorphic computing system
MZ Alom, B Van Essen, AT Moody, DP Widemann, TM Taha
Neural Networks (IJCNN), 2017 International Joint Conference on, 3922-3929, 2017
332017
Method of securing programmable logic configuration data
BC Van Essen, JW Kidd, CM Petersen, HH Schmit
US Patent 7,711,964, 2010
332010
Designing a coarse-grained reconfigurable architecture for power efficiency
A Carroll, S Friedman, B Van Essen, A Wood, B Ylvisaker, C Ebeling, ...
Department of Energy NA-22 University Information Technical Interchange …, 2007
332007
Static versus scheduled interconnect in coarse-grained reconfigurable arrays
B Van Essen, A Wood, A Carroll, S Friedman, R Panda, B Ylvisaker, ...
Field Programmable Logic and Applications, 2009. FPL 2009. International …, 2009
322009
Towards a distributed large-scale dynamic graph data store
K Iwabuchi, S Sallinen, R Pearce, B Van Essen, M Gokhale, S Matsuoka
Parallel and Distributed Processing Symposium Workshops, 2016 IEEE …, 2016
312016
Integrated in-system storage architecture for high performance computing
D Kimpe, K Mohror, A Moody, B Van Essen, M Gokhale, R Ross, ...
Proceedings of the 2nd International Workshop on Runtime and Operating …, 2012
292012
A container-based approach to OS specialization for exascale computing
JA Zounmevo, S Perarnau, K Iskra, K Yoshii, R Gioiosa, BC Van Essen, ...
Cloud Engineering (IC2E), 2015 IEEE International Conference on, 359-364, 2015
242015
A Spike-Based Long Short-Term Memory on a Neurosynaptic Processor
A Shrestha, K Ahmed, Y Wang, DP Widemann, AT Moody, BC Van Essen, ...
22*
Argo NodeOS: Toward Unified Resource Management for Exascale
S Perarnau, JA Zounmevo, M Dreher, BC Van Essen, R Gioiosa, K Iskra, ...
Parallel and Distributed Processing Symposium (IPDPS), 2017 IEEE …, 2017
192017
Das System kann den Vorgang jetzt nicht ausführen. Versuchen Sie es später erneut.
Artikel 1–20