Abstract
In this paper, emerging memory devices are investigated for a promising synaptic device of neuromorphic computing. Because the neuromorphic computing hardware requires high memory density, fast speed, and low power as well as a unique characteristic that simulates the function of learning by imitating the process of the human brain, memristor devices are considered as a promising candidate because of their desirable characteristic. Among them, Phase-change RAM (PRAM) Resistive RAM (ReRAM), Magnetic RAM (MRAM), and Atomic Switch Network (ASN) are selected to review. Even if the memristor devices show such characteristics, the inherent error by their physical properties needs to be resolved. This paper suggests adopting an approximate computing approach to deal with the error without degrading the advantages of emerging memory devices.
Funder
Handong Global University
Korea Institute for Advancement of Technology
Ministry of Science and ICT, South Korea
Subject
Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering
Reference79 articles.
1. Artificial Intelligence: A Modern Approach;Russell,2002
2. Machines Who Think: A Personal Inquiry into the History and Prospects of Artificial Intelligence;McCorduck,2004
3. Machine learning: Trends, perspectives, and prospects
4. Neuromorphic Computing Gets Ready for the (Really) Big Time;Monroe,2014
5. Neuromorphic Silicon Neurons and Large-Scale Neural Networks: Challenges and Opportunities
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