Week of Events
Manalapan High School Hackathon STEM Mentors: Careers in Technology Special Live Event
January 18, 2025 Manalapan High School 20 Church Lane Englishtown, NJ 07726 This promises to be an exciting and interesting day for everyone. Mentors are sought for this Event that begins at 9am on Saturday January 18th, and runs until midnight with an anticipated group of 130 to 150 Pre-U STEM student participants. Mentors will participate by walking around, touching base with students, asking about their projects, and engaging. Judge Volunteers are needed between 8-10pm. Please follow this (https://docs.google.com/forms/d/e/1FAIpQLSeT2gKTBkOKrmjDD-BdUwTt-9p-fDEKAb7gJ0TjQPxykgBAiw/viewform?usp=sharing) to sign up. In addition to the projects, workshops, and activities, there is an exciting session with Manalapan High School Science and Engineering Alumni: Demystifying College and Early Career Planning + Q&A Justin Nguyen ~ Systems Engineer @ The Johns Hopkins Applied Physics Laboratory Jiebin Liang ~ Software Engineer @ AT&T Anshul Mittal ~ Software Engineer @ Lockheed Martin Are you looking for mentorship or have pressing questions about college, internships, launching your career, navigating salaries, or more? Join us for an engaging workshop where you can get real answers and valuable insights tailored to your journey! We are Manalapan High School Science and Engineering Alumni. We’re excited to share our personal experiences from high school to college and beyond and provide guidance to help you succeed. Topics could include: resume building, securing internships, finding a path, salary discussion and/or more. This is a unique opportunity to learn from those who’ve walked the path before you. Whether you are just beginning to explore your options or preparing to take the next big step, this workshop is designed to help you feel confident and informed about your future. All are welcome! Agenda: Manalapan High School, 20 Church Lane, Manalapan, New Jersey, United States, 07726
How are we moving towards 6G? Highlights and Takeaways from FNWF 2024
How are we moving towards 6G? Highlights and Takeaways from FNWF 2024
IEEE Future Networks World Forum: How are we moving towards 6G? We are hosting a special event to discuss how IEEE Future Networks held a very successful event , 15-17 October 2024 with focus on "Advancing 5G Towards 6G". A panel of organizers and presenters will cover aspects of 2024 event, including: - Keynotes - Technical Program - Special sessions (WIE, YP, Student Leadership, etc) Join us as we recap our flagship event! *This event is being recorded Thank you to our (https://fnwf2024.ieee.org/) sponsoring Societies Virtual: https://events.vtools.ieee.org/m/460718
Generative Diffusion Models for Network Optimization
Generative Diffusion Models for Network Optimization
Special Presentation by Dr. Mérouane Debbah (Khalifa U., UAE) Hosted by the Future Networks Artificial Intelligence & Machine Learning (AIML) Working Group Date/Time: Thursday, January 16th, 2025 @ 12:00 UTC Topic: Generative Diffusion Models for Network Optimization Abstract: Network optimization is a fundamental challenge in Internet-of-Things (IoT) networks, often characterized by complex features that make it difficult to solve these problems. Recently, generative diffusion models (GDMs) have emerged as a promising new approach to network optimization, with the potential to directly address these optimization problems. However, the application of GDMs in this field is still in its early stages, and there is a noticeable lack of theoretical research and empirical findings. In this study, we first explore the intrinsic characteristics of generative models. Next, we provide a concise theoretical proof and intuitive demonstration of the advantages of generative models over discriminative models in network optimization. Based on this exploration, we implement GDMs as optimizers aimed at learning high-quality solution distributions for given inputs, sampling from these distributions during inference to approximate or achieve optimal solutions. Specifically, we utilize denoising diffusion probabilistic models (DDPMs) and employ a classifier-free guidance mechanism to manage conditional guidance based on input parameters. We conduct extensive experiments across three challenging network optimization problems. By investigating various model configurations and the principles of GDMs as optimizers, we demonstrate the ability to overcome prediction errors and validate the convergence of generated solutions to optimal solutions. Speaker: Dr. Mérouane Debbah is a Professor at the Khalifa University of Science and Technology in Abu Dhabi and founding Director of the KU 6G Research Center. He is a frequent keynote speaker at international events in the field of telecommunication and AI. His research has been lying at the interface of fundamental mathematics, algorithms, statistics, information and communication sciences with a special focus on random matrix theory and learning algorithms. In the Communication field, he has been at the heart of the development of small cells (4G), Massive MIMO (5G) and Large Intelligent Surfaces (6G) technologies. In the AI field, he is known for his work on Large Language Models, distributed AI systems for networks and semantic communications. He received multiple prestigious distinctions, prizes and best paper awards (more than 40 IEEE best paper awards) for his contributions to both fields and according to research.com he is ranked as the best scientist in France in the field of Electronics and Electrical Engineering. He is an IEEE Fellow, a WWRF Fellow, a Eurasip Fellow, an AAIA Fellow, an Institut Louis Bachelier Fellow, an AIIA Fellow, and a Membre émérite SEE. He is chair of the IEEE Large Generative AI Models in Telecom (GenAINet) Emerging Technology Initiative and a member of the Marconi Prize Selection Advisory Committee. Co-sponsored by: Artificial Intelligence & Machine Learning (AIML) Working Group Virtual: https://events.vtools.ieee.org/m/453702