Spiking Neural Networks - Models and Implementations: Exploring spiking neural network models and implementations for simulating biological neural networks and brain-inspired computing
Keywords:
Spiking Neural Networks, SNNsAbstract
Spiking Neural Networks (SNNs) represent a class of artificial neural networks that mimic the behavior of biological neurons, offering a promising avenue for brain-inspired computing. Unlike traditional neural networks, which use continuous-valued signals, SNNs communicate through discrete, asynchronous spikes, enabling more efficient and bio-plausible computation. This paper provides a comprehensive review of SNN models and implementations, covering key concepts, architectures, learning mechanisms, and applications. We discuss various SNN models, including the spike response model, integrate-and-fire model, and the more biologically detailed Hodgkin-Huxley model. Additionally, we examine spike-based learning algorithms such as Spike-Timing-Dependent Plasticity (STDP) and its variants, which enable SNNs to learn and adapt to stimuli. Furthermore, we review hardware and software implementations of SNNs, highlighting neuromorphic hardware platforms and simulation tools. Finally, we discuss current challenges and future directions in SNN research, emphasizing the potential of SNNs in neuromorphic computing, cognitive modeling, and brain-machine interfaces.
Downloads
References
Tatineni, Sumanth, and Anjali Rodwal. “Leveraging AI for Seamless Integration of DevOps and MLOps: Techniques for Automated Testing, Continuous Delivery, and Model Governance”. Journal of Machine Learning in Pharmaceutical Research, vol. 2, no. 2, Sept. 2022, pp. 9-41, https://pharmapub.org/index.php/jmlpr/article/view/17.
K. Joel Prabhod, “ASSESSING THE ROLE OF MACHINE LEARNING AND COMPUTER VISION IN IMAGE PROCESSING,” International Journal of Innovative Research in Technology, vol. 8, no. 3, pp. 195–199, Aug. 2021, [Online]. Available: https://ijirt.org/Article?manuscript=152346
Tatineni, Sumanth, and Venkat Raviteja Boppana. "AI-Powered DevOps and MLOps Frameworks: Enhancing Collaboration, Automation, and Scalability in Machine Learning Pipelines." Journal of Artificial Intelligence Research and Applications 1.2 (2021): 58-88.