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Title Poster: MLess: Deep Learning Application Platform for Smart Cities
ID_Doc 43732
Authors Makino, S; Okoshi, T; Nakazawa, J
Title Poster: MLess: Deep Learning Application Platform for Smart Cities
Year 2024
Published
Abstract Many smart city applications utilize deep learning technologies to process the data generated by sensors and smart devices. However, current application hosting platforms are not suitable for deep learning applications, because of their special requirements, including GPU and large trained model data. We propose a smart city application hosting platform named MLess, which serves and scales deep-learning applications across servers. MLess adds an extra abstraction layer between applications and executing hosts, thus it allows developers to write applications in a serverless manner. We developed a Proof-of-Concept implementation of MLess and made preliminary evaluations against it. In future work, we plan to add QoS support like inference accuracy or throughput.
PDF https://dl.acm.org/doi/pdf/10.1145/3643832.3661394

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