April 6, 2024, 10 a.m. | Nikhil

MarkTechPost www.marktechpost.com

A critical challenge in Artificial intelligence, specifically regarding large language models (LLMs), is balancing model performance and practical constraints like privacy, cost, and device compatibility. While large cloud-based models offer high accuracy, their reliance on constant internet connectivity, potential privacy breaches, and high costs pose limitations. Moreover, deploying these models on edge devices introduces challenges […]


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