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.
Neural Brain: A Neuroscience-inspired Framework for Embodied Agents
Robotics
Robots learn to move and act like humans.
Enabling Physical AI through Biological Principles
Neural and Evolutionary Computing
Makes AI smarter by copying how brains work.