Colloquium




Abstract
 
Computer simulation algorithms are a major tool in many areas of science and industry, particularly in areas where the behaviour of fluids or complex materials governs the physical processes of interest. A typical core of these tools is the numerical approximation of the solution to coupled nonlinear systems of partial differential equations, relying on nonlinear and linear solvers, such as Newton’s method and preconditioned Krylov iterations. Among the most effective preconditioners for these systems are multigrid and domain decomposition methods, which use multiscale representations of the systems to be solved to achieve linear-scaling complexity for the solution of these linear systems. These preconditioners typically rely on heuristics in their construction, to approximate solutions to underlying combinatorial (and other) optimization problems that specify parameters and other components of the preconditioners, based on the discrete problem to which they are being applied. In this talk, I will discuss the use of advanced optimization and machine learning techniques to approximately solve these optimization problems and the impact these techniques can have on advanced preconditioner design.


    2-2:30pm: talk for graduate students, co-hosted with the UH SIAM chapter

Title: What do I do once I graduate?
Abstract: While having a graduate degree qualifies you into many jobs, it isn’t always clear how you’re supposed to find those jobs, and how those jobs can lead to a career. In this talk, I’ll explain some of the lingo of academic job searches, how the process often unfolds, and what you can do to find success.


For future talks or to be added to the mailing list: www.math.uh.edu/colloquium