A weekly online deep-dive into AI and machine learning for medical imaging , from the ML cycle and SVMs all the way to UNet, HRNet, and state-of-the-art medical models.
A hands-on progression from ML foundations to the architectures powering modern medical AI systems.
Structured to fit busy professionals while keeping sessions deep and hands-on.
Live sessions streamed online. Join from anywhere in the world.
Consistent weekly schedule starting June 13, 2026 at 6:00 PM Beirut time.
Every session includes live coding, exercises, and real medical imaging examples.
Maximum 30 participants for a focused, interactive learning experience.
Ahmad is a doctoral researcher at AUB specializing in AI for medical imaging, with a focus on unsupervised deep learning, representation learning, and bias in medical AI systems. He has led and contributed to projects spanning X-ray disease detection, vehicle detection in the wild, and multi-service AI platforms. His mission is to make cutting-edge medical AI accessible to clinicians, researchers, and engineers alike.
Early-cohort pricing , spots are strictly limited.