A Computational Perspective on NeuroAI and Synthetic Biological Intelligence
By: Dhruvik Patel , Md Sayed Tanveer , Jesus Gonzalez-Ferrer and more
Potential Business Impact:
Builds smart machines using brain-like parts.
NeuroAI is an emerging field at the intersection of neuroscience and artificial intelligence, where insights from brain function guide the design of intelligent systems. A central area within this field is synthetic biological intelligence (SBI), which combines the adaptive learning properties of biological neural networks with engineered hardware and software. SBI systems provide a platform for modeling neural computation, developing biohybrid architectures, and enabling new forms of embodied intelligence. In this review, we organize the NeuroAI landscape into three interacting domains: hardware, software, and wetware. We outline computational frameworks that integrate biological and non-biological systems and highlight recent advances in organoid intelligence, neuromorphic computing, and neuro-symbolic learning. These developments collectively point toward a new class of systems that compute through interactions between living neural tissue and digital algorithms.
Similar Papers
A Computational Perspective on NeuroAI and Synthetic Biological Intelligence
Neurons and Cognition
Builds smart machines using brain-like parts.
Enabling Physical AI through Biological Principles
Neural and Evolutionary Computing
Makes AI smarter by copying how brains work.
Neural Brain: A Neuroscience-inspired Framework for Embodied Agents
Robotics
Robots learn to move and act like humans.