Evaluating and optimizing neural network models with neuromorphic capable and non-capable hardware
The main objective of this project is to evaluate and optimize Spiking Neural Network with the Novena Chip to achieve high accuracy, low processing time, and low power consumption. The integrated pair (Spiking Neural Network with Novena) will be benchmarked against other conventional convolution neu...
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Nanyang Technological University
2021
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sg-ntu-dr.10356-1496572023-07-07T17:14:11Z Evaluating and optimizing neural network models with neuromorphic capable and non-capable hardware Cheong, Gordon Chin Loong Leong Wei Lin School of Electrical and Electronic Engineering Agency for Science, Technology and Research Jiang Wenyu wlleong@ntu.edu.sg Engineering::Computer science and engineering Engineering::Electrical and electronic engineering The main objective of this project is to evaluate and optimize Spiking Neural Network with the Novena Chip to achieve high accuracy, low processing time, and low power consumption. The integrated pair (Spiking Neural Network with Novena) will be benchmarked against other conventional convolution neural networks running on non-neuromorphic hardware. The conventional convolution neural networks used in this paper will be ResNet-50, Inception V4, and MobileNet. The non-neuromorphic hardware used will be Nvidia’s NanoJetson, Raspberry Pi 4B with Intel’s Neural Compute Stick 2, Raspberry Pi 4B with Coral’s USB Accelerator, and ASUS Tinker Edge T. All experiments will be making use of the same dataset for both visual and audio component. Bachelor of Engineering (Electrical and Electronic Engineering) 2021-06-06T14:07:05Z 2021-06-06T14:07:05Z 2021 Final Year Project (FYP) Cheong, G. C. L. (2021). Evaluating and optimizing neural network models with neuromorphic capable and non-capable hardware. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/149657 https://hdl.handle.net/10356/149657 en B2120-201 application/pdf Nanyang Technological University |
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Engineering::Computer science and engineering Engineering::Electrical and electronic engineering Cheong, Gordon Chin Loong Evaluating and optimizing neural network models with neuromorphic capable and non-capable hardware |
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The main objective of this project is to evaluate and optimize Spiking Neural Network with the Novena Chip to achieve high accuracy, low processing time, and low power consumption. The integrated pair (Spiking Neural Network with Novena) will be benchmarked against other conventional convolution neural networks running on non-neuromorphic hardware. The conventional convolution neural networks used in this paper will be ResNet-50, Inception V4, and MobileNet. The non-neuromorphic hardware used will be Nvidia’s NanoJetson, Raspberry Pi 4B with Intel’s Neural Compute Stick 2, Raspberry Pi 4B with Coral’s USB Accelerator, and ASUS Tinker Edge T. All experiments will be making use of the same dataset for both visual and audio component. |
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Leong Wei Lin |
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Leong Wei Lin Cheong, Gordon Chin Loong |
format |
Final Year Project |
author |
Cheong, Gordon Chin Loong |
author_sort |
Cheong, Gordon Chin Loong |
title |
Evaluating and optimizing neural network models with neuromorphic capable and non-capable hardware |
title_short |
Evaluating and optimizing neural network models with neuromorphic capable and non-capable hardware |
title_full |
Evaluating and optimizing neural network models with neuromorphic capable and non-capable hardware |
title_fullStr |
Evaluating and optimizing neural network models with neuromorphic capable and non-capable hardware |
title_full_unstemmed |
Evaluating and optimizing neural network models with neuromorphic capable and non-capable hardware |
title_sort |
evaluating and optimizing neural network models with neuromorphic capable and non-capable hardware |
publisher |
Nanyang Technological University |
publishDate |
2021 |
url |
https://hdl.handle.net/10356/149657 |
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1772827362401976320 |