GTC ON-DEMAND

 
SEARCH SESSIONS
SEARCH SESSIONS

Search All
 
Refine Results:
 
Year(s)

SOCIAL MEDIA

EMAIL SUBSCRIPTION

 
 

GTC ON-DEMAND

Artificial Intelligence and Deep Learning
Presentation
Media
Adapting DL to New Data: An Evolutionary Algorithm for Optimizing Deep Networks
Abstract:
There has been a surge of success in using deep learning in imaging and speech applications for its relatively automatic feature generation and, in particular, for convolutional neural networks, high-accuracy classification abilities. While these models learn their parameters through data-driven methods, model selection (as architecture construction) through hyper-parameter choices remains a tedious and highly intuition driven task. To address this, multi-node evolutionary neural networks for deep learning (MENNDL) is proposed as a method for automating network selection on computational clusters through hyper-parameter optimization performed via genetic algorithms. MENNDL is capable of evolving not only the numeric hyper-parameters (for example, number of hidden nodes or convolutional kernel size), but is also capable of evolving the arrangement of layers within the network.
 
Topics:
Artificial Intelligence and Deep Learning, HPC and Supercomputing
Type:
Talk
Event:
GTC Silicon Valley
Year:
2017
Session ID:
S7435
Download:
Share: