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Visualising large-scale neural network models in real-time

Patterson, C. and Galluppi, F. and Rast, A. and Furber, S

In: Neural Networks (IJCNN), The 2012 International Joint Conference on: Neural Networks (IJCNN), The 2012 International Joint Conference on; 10 Jun 2012-15 Jun 2012; Brisbane, Australia. 2012. p. 1-8.

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Abstract

As models of neural networks scale in concert with increasing computational performance, gaining insight into their operation becomes increasingly important. This paper proposes an efficient and generalised method to access simulation data via in-system aggregation, providing visualised representation at all layers of the network in real-time. Enabling neural networks for real-time visualisation allows a user to gain insight into the network dynamics of their systems as they operate over time. This visibility also permits users (or a computational agent) to determine whether early intervention is required to adjust parameters, or even to terminate operation of experimental networks that are not operating correctly. Conventionally the determination of correctness would occur post-simulation, so with sufficient `in-flight' insight, a significant advantage may be obtained, and compute time minimised. For this paper we apply the real-time visualisation platform to the SpiNNaker programmable neuromimetic system and a variety of neural network models. The visualisation platform is shown to be capable across a range of diverse simulations, and at supporting differing layers of network abstraction, requiring minimal configuration to represent each model. The resulting general-purpose visualisation platform for neural networks, is effective at presenting data to users in order to aid their comprehension of the network dynamics during operation, and scales from small to biologically-significant network sizes.

Bibliographic metadata

Type of resource:
Content type:
Type of conference contribution:
Publication date:
Conference title:
Neural Networks (IJCNN), The 2012 International Joint Conference on
Conference venue:
Brisbane, Australia
Conference start date:
2012-06-10
Conference end date:
2012-06-15
Proceedings start page:
1
Proceedings end page:
8
Proceedings pagination:
1-8
Contribution total pages:
8
Abstract:
As models of neural networks scale in concert with increasing computational performance, gaining insight into their operation becomes increasingly important. This paper proposes an efficient and generalised method to access simulation data via in-system aggregation, providing visualised representation at all layers of the network in real-time. Enabling neural networks for real-time visualisation allows a user to gain insight into the network dynamics of their systems as they operate over time. This visibility also permits users (or a computational agent) to determine whether early intervention is required to adjust parameters, or even to terminate operation of experimental networks that are not operating correctly. Conventionally the determination of correctness would occur post-simulation, so with sufficient `in-flight' insight, a significant advantage may be obtained, and compute time minimised. For this paper we apply the real-time visualisation platform to the SpiNNaker programmable neuromimetic system and a variety of neural network models. The visualisation platform is shown to be capable across a range of diverse simulations, and at supporting differing layers of network abstraction, requiring minimal configuration to represent each model. The resulting general-purpose visualisation platform for neural networks, is effective at presenting data to users in order to aid their comprehension of the network dynamics during operation, and scales from small to biologically-significant network sizes.
Digtial Object Identifier:
10.1109/IJCNN.2012.6252490
Proceedings' ISBN:
978-1-4673-1489-3 / 978-1-4673-1488-6

Institutional metadata

University researcher(s):

Record metadata

Manchester eScholar ID:
uk-ac-man-scw:169392
Created by:
Woods, John
Created:
13th September, 2012, 14:20:11
Last modified by:
Woods, John
Last modified:
13th September, 2012, 14:20:11

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