TL;DR
ODIN is a compact, energy-efficient digital neuromorphic processor in 28nm CMOS that supports online learning with high-density synapses, enabling low-power adaptive sensory data processing.
Contribution
This work introduces ODIN, a novel 28nm CMOS neuromorphic chip with integrated online learning, high-density synapses, and configurable neurons, achieving low energy per operation and high classification accuracy.
Findings
Achieves 12.7pJ per synaptic operation.
Classifies MNIST with 84.5% accuracy.
Consumes only 15nJ per inference.
Abstract
Shifting computing architectures from von Neumann to event-based spiking neural networks (SNNs) uncovers new opportunities for low-power processing of sensory data in applications such as vision or sensorimotor control. Exploring roads toward cognitive SNNs requires the design of compact, low-power and versatile experimentation platforms with the key requirement of online learning in order to adapt and learn new features in uncontrolled environments. However, embedding online learning in SNNs is currently hindered by high incurred complexity and area overheads. In this work, we present ODIN, a 0.086-mm 64k-synapse 256-neuron online-learning digital spiking neuromorphic processor in 28nm FDSOI CMOS achieving a minimum energy per synaptic operation (SOP) of 12.7pJ. It leverages an efficient implementation of the spike-driven synaptic plasticity (SDSP) learning rule for high-density…
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