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Sadiq M. Sait

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Office of Industrial Collaboration, King Fahd University of Petroleum & Minerals, Dhahran, Saudi Arabia

Energy-Efficient Optimization of Multi-User NOMA-Assisted Cooperative THz-SIMO MEC Systems

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Apr 08, 2023
Omar Maraqa, Saad Al-Ahmadi, Aditya Rajasekaran, Hamza Sokun, Halim Yanikomeroglu, Sadiq M. Sait

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Optimization of FPGA-based CNN Accelerators Using Metaheuristics

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Sep 22, 2022
Sadiq M. Sait, Aiman El-Maleh, Mohammad Altakrouri, Ahmad Shawahna

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FxP-QNet: A Post-Training Quantizer for the Design of Mixed Low-Precision DNNs with Dynamic Fixed-Point Representation

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Mar 22, 2022
Ahmad Shawahna, Sadiq M. Sait, Aiman El-Maleh, Irfan Ahmad

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A Review of Open Source Software Tools for Time Series Analysis

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Mar 10, 2022
Yunus Parvej Faniband, Iskandar Ishak, Sadiq M. Sait

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On the Achievable Max-Min User Rates in Multi-Carrier Centralized NOMA-VLC Networks

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May 26, 2021
Omar Maraqa, Umair F. Siddiqi, Saad Al-Ahmadi, Sadiq M. Sait

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Energy-Efficient Coverage Enhancement of Indoor THz-MISO Systems: An FD-NOMA Approach

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Apr 12, 2021
Omar Maraqa, Aditya S. Rajasekaran, Hamza U. Sokun, Saad Al-Ahmadi, Halim Yanikomeroglu, Sadiq M. Sait

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FPGA-based Accelerators of Deep Learning Networks for Learning and Classification: A Review

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Jan 01, 2019
Ahmad Shawahna, Sadiq M. Sait, Aiman El-Maleh

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