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Biography
George Karypis is a Distinguished McKnight University Professor at the University of Minnestoa, Twin Cities and an Amazon Scholar amd Sr. Principal Scientist at Amazon Web Services (AWS). His research interests span the areas of data mining, high performance computing, information retrieval, collaborative filtering, bioinformatics, cheminformatics, and scientific computing. His research has resulted in the development of software libraries for serial and parallel graph partitioning (METIS and ParMETIS), hypergraph partitioning (hMETIS), for parallel Cholesky factorization (PSPASES), for collaborative filtering-based recommendation algorithms (SUGGEST), clustering high dimensional datasets (CLUTO), finding frequent patterns in diverse datasets (PAFI), and for protein secondary structure prediction (YASSPP). He has coauthored over 250 papers on these topics and two books (“Introduction to Protein Structure Prediction: Methods and Algorithms” (Wiley, 2010) and “Introduction to Parallel Computing” (Publ. Addison Wesley, 2003, 2nd edition)). In addition, he is serving on the program committees of many conferences and workshops on these topics, and on the editorial boards of the IEEE Transactions on Knowledge and Data Engineering, ACM Transactions on Knowledge Discovery from Data, Data Mining and Knowledge Discovery, Social Network Analysis and Data Mining Journal, International Journal of Data Mining and Bioinformatics, the journal on Current Proteomics, Advances in Bioinformatics, and Biomedicine and Biotechnology. At Amazon, his team works on areas such as large-scale distributed training of deep learning models, model compression, natural language processing (NLP), graph neural networks (GNNs), multi-modal representation learning and multi-task learning.
Presentations
Workshop
Applications
Distributed Computing
Compilers
Heterogeneous Computing
Message Passing
Programming Frameworks and System Software
Runtime Systems
Task Parallelism
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