LGAIPFJul 30, 2025

On the Sustainability of AI Inferences in the Edge

arXiv:2507.23093v11 citations
Originality Synthesis-oriented
AI Analysis

It provides practical guidance for selecting devices and models to meet application demands in IoT and edge AI deployments, though it is incremental as it fills a gap in existing benchmarking.

This study addresses the lack of comprehensive data on performance and energy usage for AI inferences on edge devices like Raspberry Pi and NVIDIA Jetson nano, by characterizing trade-offs in F1 score, inference time, power, and memory usage across traditional, neural network, and large language models.

The proliferation of the Internet of Things (IoT) and its cutting-edge AI-enabled applications (e.g., autonomous vehicles and smart industries) combine two paradigms: data-driven systems and their deployment on the edge. Usually, edge devices perform inferences to support latency-critical applications. In addition to the performance of these resource-constrained edge devices, their energy usage is a critical factor in adopting and deploying edge applications. Examples of such devices include Raspberry Pi (RPi), Intel Neural Compute Stick (INCS), NVIDIA Jetson nano (NJn), and Google Coral USB (GCU). Despite their adoption in edge deployment for AI inferences, there is no study on their performance and energy usage for informed decision-making on the device and model selection to meet the demands of applications. This study fills the gap by rigorously characterizing the performance of traditional, neural networks, and large language models on the above-edge devices. Specifically, we analyze trade-offs among model F1 score, inference time, inference power, and memory usage. Hardware and framework optimization, along with external parameter tuning of AI models, can balance between model performance and resource usage to realize practical edge AI deployments.

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