Neuro-inspired Computing Using Resistive Synaptic Devices, (9783319853680) — Readings Books
Neuro-inspired Computing Using Resistive Synaptic Devices
Paperback

Neuro-inspired Computing Using Resistive Synaptic Devices

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This book summarizes the recent breakthroughs in hardware implementation of neuro-inspired computing using resistive synaptic devices. The authors describe how two-terminal solid-state resistive memories can emulate synaptic weights in a neural network. Readers will benefit from state-of-the-art summaries of resistive synaptic devices, from the individual cell characteristics to the large-scale array integration. This book also discusses peripheral neuron circuits design challenges and design strategies. Finally, the authors describe the impact of device non-ideal properties (e.g. noise, variation, yield) and their impact on the learning performance at the system-level, using a device-algorithm co-design methodology.

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Format
Paperback
Publisher
Springer International Publishing AG
Country
Switzerland
Date
25 July 2018
Pages
269
ISBN
9783319853680

This book summarizes the recent breakthroughs in hardware implementation of neuro-inspired computing using resistive synaptic devices. The authors describe how two-terminal solid-state resistive memories can emulate synaptic weights in a neural network. Readers will benefit from state-of-the-art summaries of resistive synaptic devices, from the individual cell characteristics to the large-scale array integration. This book also discusses peripheral neuron circuits design challenges and design strategies. Finally, the authors describe the impact of device non-ideal properties (e.g. noise, variation, yield) and their impact on the learning performance at the system-level, using a device-algorithm co-design methodology.

Read More
Format
Paperback
Publisher
Springer International Publishing AG
Country
Switzerland
Date
25 July 2018
Pages
269
ISBN
9783319853680