Brain-Inspired Computing: A Systematic Survey and Future Trends
G. Li, L. Deng, H. Tang, G. Pan, Y. Tian, K. Roy, and W. Maass
Abstract:
Brain-inspired computing (BIC) is an emerging research field that aims to build
fundamental theories, models, hardware architectures, and application systems
toward more general artificial intelligence (AI) by learning from the
information processing mechanisms or structures/functions of biological
nervous systems. It is regarded as one of the most promising research
directions for future intelligent computing in the post-Moore era. In the
past few years, various new schemes in this field have sprung up to explore
more general AI. These works are quite divergent in the aspects of
modeling/algorithm, software tool, hardware platform, and benchmark data
since BIC is an interdisciplinary field that consists of many different
domains, including computational neuroscience, AI, computer science,
statistical physics, material science, and microelectronics. This situation
greatly impedes researchers from obtaining a clear picture and getting
started in the right way. Hence, there is an urgent requirement to do a
comprehensive survey in this field to help correctly recognize and analyze
such bewildering methodologies. What are the key issues to enhance the
development of BIC? What roles do the current mainstream technologies play in
the general framework of BIC? Which techniques are truly useful in real-world
applications? These questions largely remain open. To address the above
issues, in this survey, we first clarify the biggest challenge of BIC: how
can AI models benefit from the recent advancements in computational
neuroscience? With this challenge in mind, we will focus on discussing the
concept of BIC and summarize four components of BIC infrastructure
development: 1) modeling/algorithm; 2) hardware platform; 3) software tool;
and 4) benchmark data. For each component, we will summarize its recent
progress, main challenges to resolve, and future trends. Based on these
studies, we present a general framework for the real-world applications of
BIC systems, which is promising to benefit both AI and brain science.
Finally, we claim that it is extremely important to build a research ecology
to promote prosperity continuously in this field.
Reference: G. Li, L. Deng, H. Tang, G. Pan, Y. Tian, K. Roy, and
W. Maass.
Brain-inspired computing: A systematic survey and future trends.
Proceedings of the IEEE, 112(6):544–584, 2024.