Energy-efficient computing research focuses on designing and optimizing computing systems to minimize energy consumption while maintaining performance. As a vital area within distributed computing and systems software, this field addresses challenges from sustainable massive IoT networks to green computing initiatives. Researchers and students benefit from exploring a wide scope of topics, such as hybrid computing and spatial computing, enhanced through JoVE Visualize’s pairing of PubMed articles with experiment videos that provide a richer understanding of research techniques and outcomes.
Established approaches in energy-efficient computing include algorithms and hardware optimizations aimed at reducing power use across distributed systems. Techniques like dynamic voltage and frequency scaling (DVFS), energy-aware scheduling, and resource allocation form essential practices. Researchers also investigate green computing examples, focusing on sustainable data centers and efficient IoT deployments to improve overall system energy profiles. These methods often guide the development and evaluation of energy-efficient computing companies’ products and practices.
Recent advancements highlight hybrid computing models that integrate traditional and energy-efficient architectures to balance workload and power consumption dynamically. Spatial computing and machine learning methods are increasingly explored for their potential to optimize system-level energy use. Additionally, comprehensive surveys on energy-efficient computing aim to enable sustainable massive IoT networks by addressing scalability and environmental impact. Such innovative trends reflect a broader emphasis on green computing principles aligned with initiatives like the MIT Energy Initiative, pushing the envelope for the most energy efficient computing solutions.
Gizelle Francis, Youssef Omar, Alexander Moise, Kalpesh Hathi, Dorsa Mavedatnia, Elysia Grose, Timothy Phillips
Miles G Gibson, Zachary T Terrell, Jackson G Burns, Samuel E Neher, Stephanie L Bradley, Paul P Potnuru
Feila Liu, Tingting Liang, Jun Liu, Peng Qu, Shiqi Han, Dayu Sun, Yansha Hao, Yue Zhou, Xue Li, Cui Ma, Hongyan Zhang, Yunbo Luo, Yali Wang, Ju Tan, Qian Lei, Chuhong Zhu, Panke Cheng
Yuka Adachi Katayama, Yoshinari Imaura, Masao Inoue, Shunsuke Okamoto, Yoshihiko Sako, Ryoma Kamikawa, Takashi Yoshida
Zsombor I Hegedűs, Márk E Jakab, Tamás G Gergely, Nabil V Sayour, Andrea Kovács, Sára Antal, Tamás Kovács, Péter Ferdinandy, Zoltán V Varga, Viktória E Tóth
Xuemei Dong, Zhongfei Hu, Xuan Xiao, Keying Zhang, Yujie Ding
Iain F Davidson, Roman Barth, Kota Nagasaka, Wen Tang, Gordana Wutz, Sabrina Horn, Richard Janissen, Roman R Stocsits, Emilia Chlosta, Benedikt W Bauer, Cees Dekker, Jan-Michael Peters
Ying Wang, Qingshuo Li, Yahui Li, Bincheng Xu, Jianping Yang