Artificial Intelligence (AI) and Deep Learning (DL) are pervasive today, with applications spanning from personal assistants to healthcare. Nowadays, the accelerated migration towards mobile computing and Internet of Things, where a huge amount of data is generated by widespread end devices, is determining the rise of the edge computing paradigm, where computing resources are distributed among devices with highly heterogeneous capacities. In this fragmented scenario, efficient component placement and resource allocation algorithms are crucial to orchestrate at best the computing continuum resources. In this paper, we propose a tool to effectively address the component placement problem for AI applications at design time. Through a randomized greedy algorithm, it identifies the placement of minimum cost providing performance guarantees across heterogeneous resources including edge devices, cloud GPU-based Virtual Machines and Function as a Service solutions.

Sedghani, H., Filippini, F., Ardagna, D. (2021). A Randomized Greedy Method for AI Applications Component Placement and Resource Selection in Computing Continua. In 2021 IEEE International Conference on Joint Cloud Computing (JCC) (pp.65-70). Institute of Electrical and Electronics Engineers Inc. [10.1109/JCC53141.2021.00022].

A Randomized Greedy Method for AI Applications Component Placement and Resource Selection in Computing Continua

Filippini F.;
2021

Abstract

Artificial Intelligence (AI) and Deep Learning (DL) are pervasive today, with applications spanning from personal assistants to healthcare. Nowadays, the accelerated migration towards mobile computing and Internet of Things, where a huge amount of data is generated by widespread end devices, is determining the rise of the edge computing paradigm, where computing resources are distributed among devices with highly heterogeneous capacities. In this fragmented scenario, efficient component placement and resource allocation algorithms are crucial to orchestrate at best the computing continuum resources. In this paper, we propose a tool to effectively address the component placement problem for AI applications at design time. Through a randomized greedy algorithm, it identifies the placement of minimum cost providing performance guarantees across heterogeneous resources including edge devices, cloud GPU-based Virtual Machines and Function as a Service solutions.
paper
Application components; Computing paradigm; Edge computing; End-devices; Greedy method; Mobile Internet; Mobile-computing; Personal assistants; Placement selection; Resources selections
English
12th IEEE International Conference on Joint Cloud Computing, JCC 2021 and 2021 9th IEEE International Conference on Mobile Cloud Computing, Services, and Engineering, MobileCloud 2021 - 23-26 August 2021
2021
2021 IEEE International Conference on Joint Cloud Computing (JCC)
9781665434799
2021
65
70
open
Sedghani, H., Filippini, F., Ardagna, D. (2021). A Randomized Greedy Method for AI Applications Component Placement and Resource Selection in Computing Continua. In 2021 IEEE International Conference on Joint Cloud Computing (JCC) (pp.65-70). Institute of Electrical and Electronics Engineers Inc. [10.1109/JCC53141.2021.00022].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/601081
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