Litcius/Paper detail

A compression strategy to accelerate LSTM meta-learning on FPGA

NianYi Wang, Jing Nie, Jingbin Li, Kang Wang, Shunkang Ling

2022ICT Express30 citationsDOIOpen Access PDF

Abstract

Driven by edge computing, how to efficiently deploy the meta-learner LSTM in the resource constrained FPGA terminal equipment has become a big problem. This paper proposes a compression strategy based on LSTM meta-learning model, which combined the structured pruning of the weight matrix and the mixed precision quantization. The weight matrix was pruned into a sparse matrix, then the weight was quantified to reduce resource consumption. Finally, a LSTM meta-learning accelerator was designed based on the idea of hardware–software cooperation. Experiments show that compared with mainstream hardware platforms, the proposed accelerator achieves at least 50.14 times increase in energy efficiency.

Topics & Concepts

Field-programmable gate arrayComputer scienceEdge deviceQuantization (signal processing)PruningComputer engineeringArtificial intelligenceComputer architectureEmbedded systemAlgorithmOperating systemCloud computingBiologyAgronomyDomain Adaptation and Few-Shot LearningAdvanced Neural Network ApplicationsAdvanced Image and Video Retrieval Techniques