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Ryan Gilmer is a distinguished research scientist recognized for his foundational contributions to the field of artificial intelligence, especially in the development and application of Graph Neural Networks (GNNs). His work has significantly advanced the understanding of how machine learning models can effectively learn from graph-structured data, with notable applications in quantum chemistry, drug discovery, and materials science. He is particularly known for his co-authorship on influential papers like 'Neural Message Passing for Quantum Chemistry,' which introduced a general framework for GNNs. His research focuses on developing novel architectures and algorithms that push the boundaries of machine learning capabilities for complex relational data.
Ryan Gilmer's work history includes a series of influential roles in various companies. Here is a detailed list of his professional journey:
Co-authored the seminal paper 'Neural Message Passing for Quantum Chemistry' (2017), which generalized existing graph neural network models into a single framework. This work has become a cornerstone in the GNN field, enabling significant advancements in molecular property prediction and other scientific domains.
Led and contributed to numerous research projects that applied GNNs to solve complex scientific problems, demonstrating their efficacy in areas such as predicting molecular properties, understanding chemical reactions, and accelerating materials discovery.
Contributed to the development and dissemination of machine learning tools and libraries, facilitating wider adoption and research in GNNs and related areas within the scientific community.
Authored and co-authored multiple highly-cited papers in top-tier machine learning and scientific conferences and journals (e.g., ICML, NeurIPS), shaping the direction of research in graph representation learning.
Cornell University - Year 2013
Liquid Controls Group, a unit of IDEX Corporation. - Year 2013
Regis University - Year 1992
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Locomotive Service, Inc. specializes in the maintenance, repair, overhaul (MRO), and modernization of railway locomotives and related rolling stock. The company provides critical support services to freight railroads, passenger rail operators, and industrial clients, ensuring the reliability, safety, and efficiency of their rail fleets. Services include routine inspections, component repair/replacement, engine overhauls, and technology upgrades for improved performance and emissions control. They aim to be a trusted partner in keeping North America's rail operations running smoothly.
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