The following publications are possibly variants of this publication:
- A Reliable Service Function Chain Orchestration Method Based on Federated Reinforcement LearningZhiwen Xiao, Tao Tao, Zhuo Chen, Meng Yang, Jing Shang, Zhihui Wu, Zhiwei Guo. colcom 2022: 173-189 [doi]
- Service dependency mining method based on service call chain analysisYuanyuan Lan, Lei Fang, Mingzhu Zhang, Jianhua Su, Zhongguo Yang, Han Li. service 2021: 84-89 [doi]
- Dynamic Service Function Chain Orchestration for NFV/MEC-Enabled IoT Networks: A Deep Reinforcement Learning ApproachYicen Liu, Hao Lu, Xi Li, Yang Zhang, Leiping Xi, Donghao Zhao. iotj, 8(9):7450-7465, 2021. [doi]
- A Feature Tree and Dynamic QoS based Service Integration and Customization Model for Multi-tenant SaaS ApplicationXuequan Zhou, Chunshan Li, Hua Zhang, Fanchao Meng, Dianhui Chu. service 2020: 107-114 [doi]
- Research on Quantity-Discount Contract Based Two-Stage Supply Chain Coordination in the Environment of Discrete Multi-cycle DemandTing He, Yangyang Zhao, Tianyang Li, Dianhui Chu. service 2016: 82-87 [doi]
- QoS-Driven Dynamic Reconfiguration of the SOA Based SoftwareYing Li, Xiaorong Zhang, Yuyu Yin, Jian Wu. service 2010: 99-104 [doi]
- Cache Replacement Algorithm Based on Dynamic Constraints in Microservice PlatformLiwen Li, Chunyang Ye, Hui Zhou. service 2022: 167-174 [doi]
- Distributed machine learning based link allocation strategyYi Yang, Mingkang Song, Jianming Zhou, Peng Dai, Tenghui Ke, Weidong Li, Zhengguang Wu, Xiayan Zheng, Xijin Li. service 2022: 237-240 [doi]