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Explore a cutting-edge approach to graph representation learning in this 57-minute conference talk by Xavier Bresson from the National University of Singapore. Delve into the innovative Graph MLP-Mixer architecture, designed to overcome limitations of standard Graph Neural Networks (GNNs) in molecular analysis. Discover how this new class of GNNs addresses over-squashing and poor long-range dependencies while maintaining computational efficiency. Learn about its ability to capture long-range dependencies, its memory and speed advantages, and its high expressivity in distinguishing isomorphic graphs. Gain insights into the architecture's superior performance on molecular datasets compared to traditional message-passing GNNs. Presented at IPAM's Learning and Emergence in Molecular Systems Workshop, this talk offers valuable knowledge for researchers and practitioners in the fields of machine learning, graph theory, and molecular analysis.