


default search action
2nd MLHPC@SC 2016: Salt Lake City, UT, USA
- 2nd Workshop on Machine Learning in HPC Environments, MLHPC@SC, Salt Lake City, UT, USA, November 14, 2016. IEEE Computer Society 2016, ISBN 978-1-5090-3882-4

- Nikoli Dryden, Tim Moon, Sam Ade Jacobs, Brian Van Essen:

Communication Quantization for Data-Parallel Training of Deep Neural Networks. 1-8 - Yaohung M. Tsai, Piotr Luszczek, Jakub Kurzak, Jack J. Dongarra:

Performance-Portable Autotuning of OpenCL Kernels for Convolutional Layers of Deep Neural Networks. 9-18 - Janis Keuper, Franz-Josef Pfreundt:

Distributed Training of Deep Neural Networks: Theoretical and Practical Limits of Parallel Scalability. 19-26 - Miguel Camelo

, Jeroen Famaey, Steven Latré:
A Scalable Parallel Q-Learning Algorithm for Resource Constrained Decentralized Computing Environments. 27-35 - Catherine D. Schuman, Adam Disney, Susheela P. Singh, Grant Bruer

, J. Parker Mitchell, Aleksander Klibisz, James S. Plank:
Parallel Evolutionary Optimization for Neuromorphic Network Training. 36-46 - Thomas E. Potok, Catherine D. Schuman, Steven R. Young, Robert M. Patton, Federico M. Spedalieri, Jeremy Liu, Ke-Thia Yao, Garrett S. Rose

, Gangotree Chakma
:
A Study of Complex Deep Learning Networks on High Performance, Neuromorphic, and Quantum Computers. 47-55 - Onkar Bhardwaj, Guojing Cong:

Practical Efficiency of Asynchronous Stochastic Gradient Descent. 56-62

manage site settings
To protect your privacy, all features that rely on external API calls from your browser are turned off by default. You need to opt-in for them to become active. All settings here will be stored as cookies with your web browser. For more information see our F.A.Q.


Google
Google Scholar
Semantic Scholar
Internet Archive Scholar
CiteSeerX
ORCID














