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Kirjailija

Vikram Jain

Kirjat ja teokset yhdessä paikassa: 2 kirjaa, julkaisuja vuosilta 2023-2024, suosituimpien joukossa Towards Heterogeneous Multi-core Systems-on-Chip for Edge Machine Learning. Vertaile teosten hintoja ja tarkista saatavuus suomalaisista kirjakaupoista.

2 kirjaa

Kirjojen julkaisuhaarukka 2023-2024.

Towards Heterogeneous Multi-core Systems-on-Chip for Edge Machine Learning

Towards Heterogeneous Multi-core Systems-on-Chip for Edge Machine Learning

Vikram Jain; Marian Verhelst

Springer International Publishing AG
2024
nidottu
This book explores and motivates the need for building homogeneous and heterogeneous multi-core systems for machine learning to enable flexibility and energy-efficiency. Coverage focuses on a key aspect of the challenges of (extreme-)edge-computing, i.e., design of energy-efficient and flexible hardware architectures, and hardware-software co-optimization strategies to enable early design space exploration of hardware architectures. The authors investigate possible design solutions for building single-core specialized hardware accelerators for machine learning and motivates the need for building homogeneous and heterogeneous multi-core systems to enable flexibility and energy-efficiency. The advantages of scaling to heterogeneous multi-core systems are shown through the implementation of multiple test chips and architectural optimizations.
Towards Heterogeneous Multi-core Systems-on-Chip for Edge Machine Learning

Towards Heterogeneous Multi-core Systems-on-Chip for Edge Machine Learning

Vikram Jain; Marian Verhelst

Springer International Publishing AG
2023
sidottu
This book explores and motivates the need for building homogeneous and heterogeneous multi-core systems for machine learning to enable flexibility and energy-efficiency. Coverage focuses on a key aspect of the challenges of (extreme-)edge-computing, i.e., design of energy-efficient and flexible hardware architectures, and hardware-software co-optimization strategies to enable early design space exploration of hardware architectures. The authors investigate possible design solutions for building single-core specialized hardware accelerators for machine learning and motivates the need for building homogeneous and heterogeneous multi-core systems to enable flexibility and energy-efficiency. The advantages of scaling to heterogeneous multi-core systems are shown through the implementation of multiple test chips and architectural optimizations.