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Bayesian-based Hyperparameter Optimization for Spiking Neuromorphic Systems...

Publication Type
Conference Paper
Book Title
2019 IEEE International Conference on Big Data (Big Data)
Publication Date
Page Numbers
4472 to 4478
Conference Name
2nd Workshop on Energy-Efficient Machine Learning and Big Data Analytics at IEEE International Conference on Big Data
Conference Location
Los Angeles, California, United States of America
Conference Sponsor
IEEE
Conference Date
-

Designing a neuromorphic computing system involves selection of several hyperparameters that not only affect the accuracy of the framework, but also the energy efficiency and speed of inference and training. These hyperparameters might be inherent to the training of the spiking neural network (SNN), the input/output encoding of the real-world data to spikes, or the underlying neuromorphic hardware. In this work, we present a Bayesian-based hyperparameter optimization approach for spiking neuromorphic systems, and we show how this optimization framework can lead to significant improvement in designing accurate neuromorphic computing systems. In particular, we show that this hyperparameter optimization approach can discover the same optimal hyperparameter set for input encoding as a grid search, but with far fewer evaluations and far less time. We also show the impact of hardware-specific hyperparameters on the performance of the system, and we demonstrate that by optimizing these hyperparameters, we can achieve significantly better application performance.