Santosh K. Kurinec, Sumeet Walia
February 15, 2019 Forthcoming
Reference - 456 Pages - 319 B/W Illustrations
ISBN 9781138710368 - CAT# K32210
Series: Devices, Circuits, and Systems
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In our abundant computing infrastructure, performance improvements across most all application spaces are now severely limited by the energy dissipation involved in processing, storing, and moving data. The exponential increase in the volume of data to be handled by our computational infrastructure is driven in large part by unstructured data from countless sources. This book explores revolutionary device concepts, associated circuits, and architectures that will greatly extend the practical engineering limits of energy-efficient computation from device to circuit to system level. With chapters are written by international experts in their corresponding field, the text investigates new approaches to lower energy requirement in computing.
A FinFET Based Framework for VLSI Design at the 7 nm Node. Molecular Phenomena in MOSFET Gate Dielectrics and Interfaces. Tunneling Field Effect Transistors. Exploitation of the Spin-Transfer Torque Effect for CMOS Compatible Beyond Von Neumann Computing. Ferroelectric Tunnel Junctions as Ultra-Low-Power Computing Devices. X-ray Sensors Based on Chromium Compensated Gallium Arsenide (HR GaAs). Surface-Emitting Lasers for Interconnects. Low Power Optoelectronic Interconnects on Two Dimensional Semiconductors. GaN Based Schottky Barriers for Low Turn-on Voltage Rectifiers. Compound Semiconductor Oscillation Device Fabricated by Stoichiometry Controlled-Epitaxial Growth and its Application to Terahertz and Infrared Imaging and Spectroscopy. Low Power Biosensor Design Techniques Based on Information Theoretic Principles. Low-Power Processor Design Methodology: High-level Estimation and Optimization via Processor Description Language. Spatio-Temporal Multi Application Request Scheduling in Energy-Efficient Data. Ultra-Low-Voltage Implementation of Neural Networks. Multi-Pattern Matching Based Dynamic Malware Detection in Smart Phones.