Edge AI Inference in Heterogeneous Constrained Computing: Feasibility
and Opportunities
- URL: http://arxiv.org/abs/2311.03375v1
- Date: Fri, 27 Oct 2023 16:46:59 GMT
- Title: Edge AI Inference in Heterogeneous Constrained Computing: Feasibility
and Opportunities
- Authors: Roberto Morabito, Mallik Tatipamula, Sasu Tarkoma, Mung Chiang
- Abstract summary: The proliferation of AI inference accelerators showcases innovation but also underscores challenges.
This paper outlines the requirements and components of a framework that accommodates hardware diversity.
Next, we assess the impact of device heterogeneity on AI inference performance, identifying strategies to optimize outcomes without compromising service quality.
- Score: 9.156192191794567
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The network edge's role in Artificial Intelligence (AI) inference processing
is rapidly expanding, driven by a plethora of applications seeking
computational advantages. These applications strive for data-driven efficiency,
leveraging robust AI capabilities and prioritizing real-time responsiveness.
However, as demand grows, so does system complexity. The proliferation of AI
inference accelerators showcases innovation but also underscores challenges,
particularly the varied software and hardware configurations of these devices.
This diversity, while advantageous for certain tasks, introduces hurdles in
device integration and coordination. In this paper, our objectives are
three-fold. Firstly, we outline the requirements and components of a framework
that accommodates hardware diversity. Next, we assess the impact of device
heterogeneity on AI inference performance, identifying strategies to optimize
outcomes without compromising service quality. Lastly, we shed light on the
prevailing challenges and opportunities in this domain, offering insights for
both the research community and industry stakeholders.
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