AI Bibliography |
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Cao, B., Zhang, L., Li, Y., Feng, D., & Cao, W. (2019). Intelligent offloading in multi-access edge computing: A state-of-the-art review and framework. IEEE Communications Magazine, 57(3), 56–62. |
Resource type: Journal Article BibTeX citation key: Cao2019 View all bibliographic details |
Categories: Artificial Intelligence, Cognitive Science, Computer Science, Engineering, General Subcategories: 5G, Augmented cognition, Cloud computing, Edge AI, Internet of things, Machine learning, Psychology of human-AI interaction Creators: Cao, Cao, Feng, Li, Zhang Publisher: Collection: IEEE Communications Magazine |
Attachments |
Abstract |
Multi-access edge computing (MEC), which is deployed in the proximity area of the mobile user side as a supplement to the traditional remote cloud center, has been regarded as a promising technique for 5G heterogeneous networks. With the assistance of MEC, mobile users can access computing resource effectively. Also, congestion in the core network can be alleviated by offload- ing. To adapt in stochastic and constantly vary- ing environments, augmented intelligence (AI) is introduced in MEC for intelligent decision making. For this reason, several recent works have focused on intelligent offloading in MEC to harvest its potential benefits. Therefore, machine learning (ML)-based approaches, including reinforcement learning, supervised/unsupervised learning, deep learning, as well as deep reinforcement learning for AI in MEC have become hot topics. Howev- er, many technical challenges still remain to be addressed for AI in MEC. In this article, the basic concept of MEC and main applications are intro- duced, and existing fundamental works using various ML-based approaches are reviewed. Fur- thermore, some potential issues of AI in MEC for future work are discussed. |