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dense linear algebra
Dalal Sukkari
Ph.D.,
Applied Mathematics and Computational Sciences
polar decomposition
svd
dense linear algebra
High Performance Computing
symmetric eigenvalue problem
Research interests and present research project. Dalal's research centers on a new high performance implementation of the QR-based Dynamically Weighted Halley iterations (QDWH) to compute the polar decomposition and its application to the SVD (QDWH-SVD). She has introduced a high performance QDWH-SVD implementation on multicore architecture enhanced with multiple GPUs, and on distributed memory based on the state-of-the-art vendor-optimized numerical library ScaLAPACK, and has presented the first asynchronous, task-based formulation of the polar decomposition QDWH and its corresponding