TY - JOUR
T1 - 深度学习模型终端环境自适应方法研究
AU - Guo, Bin
AU - Wu, Yungang
AU - Wang, Hongli
AU - Wang, Hao
AU - Liu, Sicong
AU - Liu, Jiaqi
AU - Yu, Zhiwen
AU - Zhou, Xingshe
N1 - Publisher Copyright:
© 2020, Science China Press. All right reserved.
PY - 2020/11
Y1 - 2020/11
N2 - The rapid development of both Artificial Intelligence (AI) and the Internet of Things (IoT), has cultivated the new research area: the Artificial Intelligence of Things (AIoT). AIoT is used to deploy many different deep learning models on a variety of local IoT terminals including smartphones, wearables, and other embedded devices. Adapting to these dynamic and varied AIoT application scenarios, and the IoT platform resources (e.g., computation and storage resources) available in each diverse, requires a novel scheme for improving on device environmental adaptability. Deep learning models aim to dynamically adjust either the model structure, the calculation scheme, or both, of them specifically to adapt to the environment context. They must reduce costs and improve computational efficiency while creating negligible performance degradation. Specifically, an environmental adaptation evolution framework must actively and continuously assess the constantly changing environmental context including factors, such as application data, knowledge base, task-related performance requirements, and platform-imposed resource constraints. Then it must adopt on-demand model compression, model segmentation, and domain adaptation techniques to achieve a appropriate balance between the model's performance and the environment's budget. This paper focuses on making deep learning models for context-aware adaptation. We discuss the system architecture and core technologies solving this problem requires. We address research challenges in this area, and introduce our pilot research practice in this field.
AB - The rapid development of both Artificial Intelligence (AI) and the Internet of Things (IoT), has cultivated the new research area: the Artificial Intelligence of Things (AIoT). AIoT is used to deploy many different deep learning models on a variety of local IoT terminals including smartphones, wearables, and other embedded devices. Adapting to these dynamic and varied AIoT application scenarios, and the IoT platform resources (e.g., computation and storage resources) available in each diverse, requires a novel scheme for improving on device environmental adaptability. Deep learning models aim to dynamically adjust either the model structure, the calculation scheme, or both, of them specifically to adapt to the environment context. They must reduce costs and improve computational efficiency while creating negligible performance degradation. Specifically, an environmental adaptation evolution framework must actively and continuously assess the constantly changing environmental context including factors, such as application data, knowledge base, task-related performance requirements, and platform-imposed resource constraints. Then it must adopt on-demand model compression, model segmentation, and domain adaptation techniques to achieve a appropriate balance between the model's performance and the environment's budget. This paper focuses on making deep learning models for context-aware adaptation. We discuss the system architecture and core technologies solving this problem requires. We address research challenges in this area, and introduce our pilot research practice in this field.
KW - AIoT
KW - Context-aware adaptation
KW - Deep learning model compression
KW - Domain adaptation
KW - Edge-based model partition
KW - Model evolution
UR - http://www.scopus.com/inward/record.url?scp=85096493488&partnerID=8YFLogxK
U2 - 10.1360/SSI-2020-0067
DO - 10.1360/SSI-2020-0067
M3 - 文章
AN - SCOPUS:85096493488
SN - 1674-7267
VL - 50
SP - 1629
EP - 1644
JO - Scientia Sinica Informationis
JF - Scientia Sinica Informationis
IS - 11
ER -