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Machine Learning Acceleration for Tightly Energy-Constrained Devices

Huang, Qiuting / Schenk, Andreas / Luisier, Mathieu Maurice / Witzigmann, Bernd
Erschienen am 18.12.2020
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Bibliografische Daten
ISBN/EAN: 9783866286931
Sprache: Englisch
Umfang: 232
Format (T/L/B): 21.0 x 14.0 cm
Auflage: 2020

Beschreibung

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.

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