2023
DOI: 10.36227/techrxiv.22724099.v1
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BCEdge: SLO-Aware DNN Inference Services with Adaptive Batching on Edge Platforms

Abstract: <p>As deep neural networks (DNNs) are being applied to a wide range of edge intelligent applications, it is critical for edge inference platforms to have both high-throughput and low-latency at the same time. Such edge platforms with multiple DNN models pose new challenges for scheduler designs. First, each request may have different service level objectives (SLOs) to improve quality of service (QoS). Second, the edge platforms should be able to efficiently schedule multiple heterogeneous DNN models so t… Show more

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