Machine Learning Acceleration for Tightly Energy-Constrained Devices von Renzo Andri | ISBN 9783866286931

Machine Learning Acceleration for Tightly Energy-Constrained Devices

von Renzo Andri, herausgegeben von Qiuting Huang, Andreas Schenk, Mathieu Maurice Luisier und Bernd Witzigmann
Mitwirkende
Autor / AutorinRenzo Andri
Herausgegeben vonQiuting Huang
Herausgegeben vonAndreas Schenk
Herausgegeben vonMathieu Maurice Luisier
Herausgegeben vonBernd Witzigmann
Buchcover Machine Learning Acceleration for Tightly Energy-Constrained Devices | Renzo Andri | EAN 9783866286931 | ISBN 3-86628-693-7 | ISBN 978-3-86628-693-1

Machine Learning Acceleration for Tightly Energy-Constrained Devices

von Renzo Andri, herausgegeben von Qiuting Huang, Andreas Schenk, Mathieu Maurice Luisier und Bernd Witzigmann
Mitwirkende
Autor / AutorinRenzo Andri
Herausgegeben vonQiuting Huang
Herausgegeben vonAndreas Schenk
Herausgegeben vonMathieu Maurice Luisier
Herausgegeben vonBernd Witzigmann
Neural Networks have revolutionized the artificial intelligence and machine learning field in recent years, enabling human and even super-human performance on several challenging tasks in a plethora of different applications. Unfortunately, these networks have dozens of millions of parameters and need billions of complex floating-point operations, which does not fit the requirements of rising Internet-of-Things (IoT) end nodes. In this work, these challenges are tackled on three levels: Efficient design and implementation of embedded hardware, the design of existing low-power microcontrollers and their underlying instruction set architecture, and full-custom hardware accelerator design. Meanwhile, we are investigating novel algorithmic approaches of extreme quantization of neural networks, and analyze their performance and energy efficiency trade-off.