no code implementations • 26 Dec 2023 • Saria Al Laham, Bobak H. Baghi, Pierre-Yves Lajoie, Amal Feriani, Sachini Herath, Steve Liu, Gregory Dudek
We make use of the channel impulse response (CIR) measurements from the UWB sensors to estimate the human state - comprised of location and activity - in a given area.
no code implementations • 1 Nov 2023 • Dmitriy Rivkin, Francois Hogan, Amal Feriani, Abhisek Konar, Adam Sigal, Steve Liu, Greg Dudek
The common sense reasoning abilities and vast general knowledge of Large Language Models (LLMs) make them a natural fit for interpreting user requests in a Smart Home assistant context.
no code implementations • 25 Aug 2023 • Firas Fredj, Amal Feriani, Amine Mezghani, Ekram Hossain
In RIS-aided systems, channel estimation involves estimating two channels for the user-RIS (UE-RIS) and RIS-base station (RIS-BS) links.
1 code implementation • 23 Jun 2023 • Amal Feriani, Di wu, Steve Liu, Greg Dudek
This work offers a comprehensive and unified framework to help researchers evaluate and design data-driven channel estimation algorithms.
no code implementations • 13 Mar 2023 • Mohamed Akrout, Amal Feriani, Faouzi Bellili, Amine Mezghani, Ekram Hossain
Data-driven machine learning (ML) is promoted as one potential technology to be used in next-generations wireless systems.
no code implementations • 26 Mar 2022 • Mohamed Akrout, Amal Feriani, Bob McLeod
We study the benefits of reinforcement learning (RL) environments based on agent-based models (ABM).
no code implementations • 17 Jul 2021 • Amal Feriani, Amine Mezghani, Ekram Hossain
We consider an Intelligent Reflecting Surface (IRS)-aided multiple-input single-output (MISO) system for downlink transmission.
no code implementations • 16 Jul 2021 • Yuanchao Xu, Amal Feriani, Ekram Hossain
The stability and the robustness of deep MARL to practical challenges is still an open research problem.
Multi-agent Reinforcement Learning
reinforcement-learning
+2
no code implementations • 6 Nov 2020 • Amal Feriani, Ekram Hossain
In this context, this tutorial focuses on the role of DRL with an emphasis on deep Multi-Agent Reinforcement Learning (MARL) for AI-enabled 6G networks.
no code implementations • 3 Mar 2019 • Ismail Akrout, Amal Feriani, Mohamed Akrout
We present a Reinforcement Learning (RL) methodology to bypass Google reCAPTCHA v3.
1 code implementation • ICLR 2019 • Guillaume Michel, Mohammed Amine Alaoui, Alice Lebois, Amal Feriani, Mehdi Felhi
Amongst these models one architecture has the same Top-1 accuracy on ImageNet as NASNet-A mobile with 8% less floating point operations and another one has a Top-1 accuracy of 75. 28% on ImageNet exceeding by 0. 28% the best MobileNetV2 model for the same computational resources.