Brain-Inspired Neuromorphic Chips for Ultra-Low-Power AI

We design neuromorphic integrated circuits that combine memory, computation and learning directly in hardware, enabling real-time intelligent processing at very low power.

The Engineering Challenge: AI Hardware Is Power Hungry

Current AI hardware relies on high energy consumption and external training infrastructure. This limits their use in edge systems, defence platforms, robotics and embedded healthcare devices where power, latency and size are constrained.

Our Technical Approach: Hardware-Embedded Learning

MindSilicaAI develops a neuromorphic chip architecture inspired by neural signalling in the human brain.

By co-designing CMOS circuits with emerging devices, we enable:

Event-Driven Parallel Processing

Processes information only when signals occur, reducing wasted energy.
Multiple operations run simultaneously for faster response times.

On-Chip Adaptive Learning

Learning mechanisms are embedded directly in hardware.
The system adapts in real time without external retraining.

Reduced Data Movement

Memory and computation are co-located on the chip.
Minimises energy loss and latency caused by constant data transfer.

Real-Time Edge Operation

Operates independently without reliance on cloud infrastructure.
Enables low-latency intelligence in power-constrained environments.

Let’s Discuss Your Application

If you are developing next-generation AI hardware or embedded intelligent systems, we would welcome a technical conversation.

Meet The Team

Supported By

University of Glasgow
ICURe Disocver
Innovate UK

Contact Us

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