Rishi Tripathi
Computation Offloading for Efficient Execution of AI applications in Edge Computing.
Rel. Luca Vassio. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Elettronica (Electronic Engineering), 2023
|
Preview |
PDF (Tesi_di_laurea)
- Tesi
Licenza: Creative Commons Attribution Non-commercial No Derivatives. Download (13MB) | Preview |
Abstract
With the dawn of powerful and energy-efficient hardware in the low-power computing space, there is the need to decide to go either for performance or for efficiency. Although not completely exclusive to each other there is usually a winner during practical applications. However, the chosen solution might not really work due to energy constraints set by the limited power sources of mobile devices. The performance capabilities of these edge devices are severely limited to thermal and energy constraints. For the sake of improving efficiency and accuracy in machine learning and running neural networks onboard such portable devices we are faced with the following simple yet brutal choice.
The first option involves wasting local resources in the form of energy and computational power for a low-accuracy output
Relatori
Anno Accademico
Tipo di pubblicazione
Numero di pagine
Corso di laurea
Classe di laurea
Aziende collaboratrici
URI
![]() |
Modifica (riservato agli operatori) |
