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5th IECC 2023: Osaka City, Japan
- Proceedings of the 2023 5th International Electronics Communication Conference, IECC 2023, Osaka City, Japan, July 21-23, 2023. ACM 2023
- Shibao Li, Longfei Li, Yunwu Zhang, Chenxu Ma, Chenghzhi Wang:
Sliding Window Kalman Filter-Based DCQCN for RDMA Congestion Control. 1-6 - Vo-Trung-Dung Huynh:
Performance Enhancement Using Adjacent Partitioning Scheme-Based Partial Transmit Sequence for Filtered-OFDM-Based 5G Systems. 7-13 - Yang Liu, Kui Xu, Nan Ma, Mi Zhang, Chengqian Ma, Yueyue Zhang:
IRS-assisted anti-jamming communication based on action space smooth Q-learning. 14-21 - Yuan-Hsun Liao, Hsiao-Hui Li, Po-Chun Chang, Chiao-Ti Hsu, Ruo-An Wang:
Design an Intelligent Candy Inspection System with AIoT. 22-26 - Eric Gamess, Mausam Parajuli:
Performance Evaluation of the Docker Technology on Different Raspberry Pi Models. 27-37 - Jianbiao Wan, Kar-Peo Yar, Chunling Du, Malcolm Yoke Hean Low:
Sensor Data Analytics for Tool Condition Anomaly Detection with Machine Learning Techniques. 38-45 - Mohana Preethi V, M. Prabhakar, N. Senthil Kumar:
Performance Analysis of Asymmetric High Gain Multi-Input Converter Under Widely Fluctuating Inputs. 46-52 - Hao-Wei Yang, Kai-Fu Yang, Chao-Hung Huang, Tzung-Je Tsai:
How to Painlessly Upgrade Traditional Stores to High-quality E-commerce through Digital Transformation - From the Perspective of Uncertainty in E-commerce Marketing. 53-62 - Yoji Yamato:
Study of Software Reconfiguration after Adapted Service Start. 63-68 - Chih-Chung Lin, Yuan-Cheng Lai, Ming-Huang Zheng, Chen-Hao Wang, Yan-Rong Chen, Li-An Gao:
The Candlestick-Tracking Trend Decision for Day Trading on Taiwan Index Futures Market. 69-77 - Hsiao-Hui Li, Yuan-Hsun Liao, Chiao-Ti Hsu:
Using Artificial Intelligence to Achieve Health Promotion for the Elderly by Utilizing the Power of Virtual Reality. 78-83 - Sangkeum Lee, Sarvar Hussain Nengroo, Hojun Jin, Yoonmee Doh, Chungho Lee, Taewook Heo, Dongsoo Har:
Power Management in Smart Residential Building with Deep Learning Model for Occupancy Detection by Usage Pattern of Electric Appliances. 84-92
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