The Technology Innovation Institute (TII) is hosting an AI seminar by Kajetan Schweighofer on October 28, 2025, from 11:00 AM to 12:00 PM GST. TII describes itself as a global research center focused on discovery science and transformative technologies. The seminar series is part of TII's efforts to share its developments and research. Why it matters: Such seminars contribute to the growth of the AI ecosystem in the UAE by facilitating knowledge sharing and collaboration.
This seminar explores vision systems through self-supervised representation learning, addressing challenges and solutions in mainstream vision self-supervised learning methods. It discusses developing versatile representations across modalities, tasks, and architectures to propel the evolution of the vision foundation model. Tong Zhang from EPFL, with a background from Beihang University, New York University, and Australian National University, will lead the talk. Why it matters: Advancing vision foundation models is crucial for expanding AI applications, especially in the Middle East where computer vision can address challenges in areas like urban planning, agriculture, and environmental monitoring.
Patrick van der Smagt, Director of AI Research at Volkswagen Group, discussed the use of generative machine learning models for predicting and controlling complex stochastic systems in robotics. The talk highlighted examples in robotics and beyond and addressed the challenges of achieving quality and trust in AI systems. He also mentioned his involvement in a European industry initiative on trust in AI and his membership in the AI Council of the State of Bavaria. Why it matters: Understanding control in robotics, along with trust in AI, are key issues for further development of autonomous systems, especially in industrial applications within the GCC region.
Nobuyuki Umetani from the University of Tokyo presented a talk on using AI to accelerate simulations and optimization for 3D shape designs. The talk covered interactive approaches integrating physical simulation into geometric modeling. Specific applications discussed included musical instruments, garment design, aerodynamic design, and floor plan design. Why it matters: This highlights growing interest in AI techniques at MBZUAI and across the GCC for streamlining engineering design and simulation processes.
Dr. Munawar Hayat from Monash University gave a talk on the history of AI, recent breakthroughs in deep learning, and future research directions. The talk covered computer vision, NLP, autonomous driving, and reinforcement learning. Dr. Hayat also discussed the limitations of AI and challenges in the field. Why it matters: This lecture helps contextualize the rapid progress of AI for students in the region.
The Technology Innovation Institute (TII) is hosting a seminar by Dr. Matthias Troyer as part of its QRC Seminar Series. TII describes itself as a leading global research center focused on discovery science and transformative technologies. The institute's teams work in an open environment to deliver scientific breakthroughs. Why it matters: Such seminars contribute to the development of the AI ecosystem in the UAE by facilitating knowledge sharing and collaboration.
The article discusses the importance of sample correlations in computer graphics, vision, and machine learning, highlighting how tailored randomness can improve the efficiency of existing models. It covers various correlations studied in computer graphics and tools to characterize them, including the use of neural networks for developing different correlations. Gurprit Singh from the Max Planck Institute for Informatics will be presenting on the topic. Why it matters: Optimizing sampling techniques via understanding and applying correlations can lead to significant advancements and efficiency gains across multiple AI fields.
Paul Liang from CMU presented on machine learning foundations for multisensory AI, discussing a theoretical framework for modality interactions. The talk covered cross-modal attention and multimodal transformer architectures, and applications in mental health, pathology, and robotics. Liang's research aims to enable AI systems to integrate and learn from diverse real-world sensory modalities. Why it matters: This highlights the growing importance of multimodal AI research and its potential for advancements across various sectors in the region, including healthcare and robotics.