Feb. 2, 2024, 9:47 p.m. | Akrit Mudvari Antero Vainio Iason Ofeidis Sasu Tarkoma Leandros Tassiulas

cs.LG updates on arXiv.org arxiv.org

The growing number of AI-driven applications in mobile devices has led to solutions that integrate deep learning models with the available edge-cloud resources. Due to multiple benefits such as reduction in on-device energy consumption, improved latency, improved network usage, and certain privacy improvements, split learning, where deep learning models are split away from the mobile device and computed in a distributed manner, has become an extensively explored topic. Incorporating compression-aware methods (where learning adapts to compression level of the communicated …

applications benefits cloud compression consumption cs.lg cs.ni deep learning devices edge efficiency energy improvements inference latency mobile mobile devices multiple network privacy resources solutions usage

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