Home / Technology / AI's Brainpower Bottleneck Solved?
AI's Brainpower Bottleneck Solved?
17 Dec
Summary
- New study proposes brain-inspired architecture for AI models.
- This approach could significantly reduce energy costs for AI.
- The 'memory wall' limits AI performance by separating processing and memory.

Artificial intelligence faces a significant challenge due to the inefficiency of current computer architecture, where data constantly moves between memory and processing units. This "memory wall" creates a bottleneck, especially as AI models grow exponentially in size and data demands.
A new study published in Frontiers in Science introduces a novel solution: building AI computer architecture inspired by the human brain. Researchers propose utilizing algorithms like spiking neural networks and a concept called compute-in-memory, which integrates processing directly within the memory system.
This brain-inspired approach promises to drastically cut the energy required by AI, moving it beyond data centers and into everyday devices. Such advancements could lead to more efficient medical devices, transportation systems, and drones with longer-lasting batteries.




