Skip to content
GCC AI Research

Search

Results for "Wei Wang"

From Individual to Society: Social Simulation Driven by LLM-based Agent

MBZUAI ·

Fudan University's Zhongyu Wei presented research on social simulation driven by LLMs, covering individual and large-scale social movement simulation. Wei directs the Data Intelligence and Social Computing Lab (Fudan DISC) and has published extensively on multimodal large models and social computing. His work includes the Volcano multimodal model, DISC-MedLLM, and ElectionSim. Why it matters: Using LLMs for social simulation could provide new tools for understanding and potentially predicting social dynamics in the Arab world.

Decoding biology’s future

KAUST ·

Michael Waterman, professor at USC, and Wei Wang, director at UCLA, gave keynote addresses at KAUST. Charlotte Hauser, KAUST professor of bioscience, also gave a keynote lecture. Peer Bork (EMBL) and Martin Noble spoke with Vladimir Bajic at the event. Why it matters: This indicates KAUST's ongoing engagement with international experts to advance research in computational biology.

Unlocking the Potential of Large Models for Vision Related Tasks

MBZUAI ·

Yanwei Fu from Fudan University will present research on multimodal models, robotic grasping, and fMRI neural decoding. Topics include few-shot learning, object-centered self-supervised learning, image manipulation, and visual-language alignment. The research also covers Transformer compression and applications of large models with MVS 3D modeling in robotic arm grasping. Why it matters: While the talk is not directly about Middle East AI, the topics covered are core to advancing AI research and applications in the region.

Wang wins PSIPW award

KAUST ·

KAUST Professor Peng Wang has been awarded the 2020 Prince Sultan Bin Abdulaziz International Prize for Water (PSIPW). Wang's research focuses on using solar energy for fresh-water generation, industrial brine treatment, atmospheric water harvesting, and solar PV cooling. His recent work involves a hydrogel cooling panel for solar cells to improve efficiency in hot climates. Why it matters: This award recognizes impactful research addressing water scarcity and energy challenges in arid regions like Saudi Arabia through innovative solar-driven technologies.

Alumni Focus: Zhenwei Wang (Ph.D. '18)

KAUST ·

KAUST alumnus Zhenwei Wang (Ph.D. '18), who studied under Professor Husam Alshareef, focused on developing oxide semiconductors for transparent electronics during his time at KAUST. Currently a postdoctoral researcher at the Okinawa Institute of Science and Technology (OIST), he is now developing novel biological sensing devices using nanoparticles. Wang credits KAUST's facilities and support for enabling him to overcome research challenges. Why it matters: The story highlights KAUST's role in fostering materials science talent and contributing to advancements in bio-sensing technology, with implications for future medical diagnostics.

Diffusion-BBO: Diffusion-Based Inverse Modeling for Online Black-Box Optimization

arXiv ·

This paper introduces Diffusion-BBO, a new online black-box optimization (BBO) framework that uses a conditional diffusion model as an inverse surrogate model. The framework employs an Uncertainty-aware Exploration (UaE) acquisition function to propose scores in the objective space for conditional sampling. The approach is shown theoretically to achieve a near-optimal solution and empirically outperforms existing online BBO baselines across 6 scientific discovery tasks.

Proceedings of Symposium on Data Mining Applications 2014

arXiv ·

The Symposium on Data Mining and Applications (SDMA 2014) was organized by MEGDAM to foster collaboration among data mining and machine learning researchers in Saudi Arabia, GCC countries, and the Middle East. The symposium covered areas such as statistics, computational intelligence, pattern recognition, databases, Big Data Mining and visualization. Acceptance was based on originality, significance and quality of contribution.

KAUST Ph.D. student wins best student presentation

KAUST ·

KAUST Ph.D. student Zhaolun Liu won the best student presentation at the 2017 Society of Exploration Geophysicists (SEG) Full-Waveform Inversion (FWI) and Beyond Workshop in Beijing. Liu's presentation was on "3D Wave-Equation Dispersion Inversion of Surface Waves," based on a paper co-authored with Jing Li and Professor Gerard Schuster. The paper describes a new method called wave equation dispersion inversion (WD) for inverting surface waves. Why it matters: This award recognizes KAUST's contributions to geophysics and seismic imaging, highlighting the university's research capabilities and access to high-performance computing.