Optimization Methods, Challenges, and Opportunities for Edge Inference: A Comprehensive Survey
Runhua Zhang, Hongxu Jiang, Wei Wang, Jinhao Liu
Abstract
Artificial intelligence (AI) continues to enhance production efficiency across various fields of society. Considering real-time requirements and privacy issues, edge inference (EI) is shifting from cloud scenarios to edge scenarios. As intelligent models grow in complexity and size, EI encounters significant challenges. To address these, existing research works have optimized EI from four aspects (model design, model compression, compilation toolchain, and collaborative inference) to ensure the advantages of edge intelligence. However, current works lack a comprehensive classification and discussion of existing research results. Thus, we conduct a comprehensive survey on their state-of-the-art research. Specifically, we first review the background and motivation of EI, then analyze the key issues, characteristics, and technologies of each direction. Finally, we analyze future development trends. This paper can help researchers quickly sort out the different directions of EI optimization and important related work. We hope it can bring inspiration to the researchers in these communities and motivate more follow-up works.