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arxiv:2312.12472

A Performance Evaluation of a Quantized Large Language Model on Various Smartphones

Published on Dec 19, 2023
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Abstract

Study assesses the feasibility and performance of large language models on iPhone devices, focusing on thermal effects and inference speeds across smartphone generations.

This paper explores the feasibility and performance of on-device large language model (LLM) inference on various Apple iPhone models. Amidst the rapid evolution of generative AI, on-device LLMs offer solutions to privacy, security, and connectivity challenges inherent in cloud-based models. Leveraging existing literature on running multi-billion parameter LLMs on resource-limited devices, our study examines the thermal effects and interaction speeds of a high-performing LLM across different smartphone generations. We present real-world performance results, providing insights into on-device inference capabilities.

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