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EcoTaskSched: a hybrid machine learning approach for energy-efficient task scheduling in IoT-based fog-cloud environments
Asfandyar Khan
Faizan Ullah
Dilawar Shah
Muhammad Haris Khan
Shujaat Ali
Muhammad Tahir
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Version published to 10.1038/s41598-025-96974-9
Apr 10, 2025
Version published to 10.21203/rs.3.rs-5775826/v1 on Research Square
Mar 28, 2025
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