2023
DOI: 10.36227/techrxiv.22338757.v1
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HASP: Hierarchical Asynchronous Parallelism for Multi-NN Tasks

Abstract: <p>The rapid development of deep learning has propelled many real-world artificial intelligence (AI) applications. Many of these applications integrate multiple neural network (multi-NN) models to cater to various functionalities. Although a number of multi-NN acceleration technologies have been explored, few can fully fulfill the flexibility and scalability required by emerging and diverse AI workloads, especially for mobile. Among these, homogeneous multi-core architectures have great potential to supp… Show more

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