Neural Architecture Search
Neural Architecture Search (NAS) automates the design of optimal neural network architectures, aiming to replace the time-consuming and often suboptimal process of manual design. Current research focuses on improving efficiency, exploring various search algorithms (including reinforcement learning, evolutionary algorithms, and gradient-based methods), and developing effective zero-cost proxies to reduce computational demands. This field is significant because it promises to accelerate the development of high-performing models across diverse applications, from image recognition and natural language processing to resource-constrained environments like microcontrollers and in-memory computing.
Papers
MGAS: Multi-Granularity Architecture Search for Trade-Off Between Model Effectiveness and Efficiency
Xiaoyun Liu, Divya Saxena, Jiannong Cao, Yuqing Zhao, Penghui Ruan
Cascaded Multi-task Adaptive Learning Based on Neural Architecture Search
Yingying Gao, Shilei Zhang, Zihao Cui, Chao Deng, Junlan Feng