Graduate

AM 200 Research and Teaching in Applied Mathematics

Basic teaching techniques for teaching assistants, including responsibilities and rights; resource materials; computer skills; leading discussions or lab sessions; presentation techniques; maintaining class records; and grading. Examines research and professional training, including use of library; technical writing; giving talks in seminars and conferences; and ethical issues in science and engineering. (Formerly AMS 200.)

Credits

3

Requirements

Enrollment is restricted to graduate students.

AM 211 Foundations of Applied Mathematics

Accelerated class reviewing fundamental applied mathematical methods for all sciences. Topics include: multivariate calculus, linear algebra, Fourier series and integral transform methods, complex analysis, and ordinary differential equations. (Formerly AMS 211.)

Credits

5

Requirements

Enrollment is restricted to graduate students.

AM 212A Applied Partial Differential Equations

Focuses on analytical methods for partial differential equations (PDEs), including: the method of characteristics for first-order PDEs; canonical forms of linear second-order PDEs; separation of variables; Sturm-Liouville theory; Green's functions. Illustrates each method using applications taken from examples in physics. AM 211 or equivalent is strongly recommended as preparation. Students cannot receive credit for this course and AM 112. (Formerly AMS 211, Applied Mathematical Methods I.)

Credits

5

Requirements

Enrollment is restricted to graduate students; undergraduates are encouraged to take this class with permission of instructor.

AM 212B Applied Mathematical Methods II

Covers perturbation methods: asymptotic series, stationary phase and expansion of integrals, matched asymptotic expansions, multiple scales and the WKB method, Pad approximants and improvements of series. (Formerly AMS 212B.)

Credits

5

Requirements

Prerequisite(s): Enrollment is restricted to graduate students. Undergraduates may enroll by permission of the instructor.

AM 213A Numerical Linear Algebra

Focuses on numerical solutions to classic problems of linear algebra. Topics include: LU, Cholesky, and QR factorizations; iterative methods for linear equations; least square, power methods, and QR algorithms for eigenvalue problems; and conditioning and stability of numerical algorithms. Provides hands-on experience in implementing numerical algorithms for solving engineering and scientific problems. Basic knowledge of mathematical linear algebra is assumed. (Formerly AMS 213A.)

Credits

5

Requirements

Enrollment is restricted to graduate students. Undergraduate students may enroll with permission of the instructor.

AM 213B Numerical Methods for the Solution of Differential Equations

Introduces the numerical solutions of ordinary and partial differential equations (ODEs and PDEs). Focuses on the derivation of discrete solution methods for a variety of differential equations, and their stability and convergence. Also provides hands-on experience in implementing such numerical algorithms for the solution of engineering and scientific problems using MATLAB software. The class consists of lectures and hands-on programming sections. Basic mathematical knowledge of ODEs and PDEs is assumed, and a basic working knowledge of programming in MATLAB is expected. (Formerly AMS 213B.)

Credits

5

Requirements

Enrollment is restricted to graduate students.

AM 214 Applied Dynamical Systems

Introduces continuous and discrete dynamical systems. Topics include: fixed points; stability; limit cycles; bifurcations; transition to and characterization of chaos; and fractals. Examples drawn from sciences and engineering; founding papers of the subject are studied. Students cannot receive credit for this course and AM 114 or MATH 145. (Formerly AMS 214.)

Credits

5

Requirements

Enrollment is restricted to graduate students; undergraduates may enroll by permission of instructor.

AM 215 Stochastic Modeling in Biology

Application of differential equations, probability, and stochastic processes to problems in cell, organismal, and population biology. Topics include systems biology, cellular processes, gene-regulation, and population biology. Students may not receive credit for this course and AM 115. (Formerly AMS 215.)

Credits

5

Requirements

Enrollment is restricted to graduate students; undergraduates may enroll by permission of the instructor.

AM 216 Stochastic Differential Equations

Introduction to stochastic differential equations and diffusion processes with applications to biology, biomolecular engineering, and chemical kinetics. Topics include Brownian motion and white noise, gambler's ruin, backward and forward equations, and the theory of boundary conditions. (Formerly AMS 216.)

Credits

5

Requirements

Enrollment is restricted to graduate students; undergraduates may enroll by permission of the instructor.

AM 217 Introduction to Fluid Dynamics

Covers fundamental topics in fluid dynamics at the graduate level: Euler and Lagrange descriptions of continuum dynamics; conservation laws for inviscid and viscous flows; potential flows; exact solutions of the Navier-Stokes equation; boundary layer theory; gravity waves. Students cannot receive credit for this course and AM 107. (Formerly AMS 217.)

Credits

5

Requirements

Enrollment is restricted to graduate students; undergraduates may enroll by permission of the instructor.

AM 227 Waves, Instabilities, and Turbulence in Fluids

Advanced fluid dynamics course introducing various types waves and instabilities that commonly arise in geophysical and astrophysical systems, as well as turbulence. Topics covered include, but are not limited to: pressure waves, gravity waves, convection, shear instabilities, and turbulence. Advanced mathematical methods are used to study each topic. Undergraduates are encouraged to take this course with permission of the instructor. (Formerly Waves and Instabilities in Fluids.)

Credits

5

Requirements

Prerequisite(s): AM 212A and AM 217.

AM 229 Convex Optimization

Focuses on recognizing, formulating, analyzing, and solving convex optimization problems encountered across science and engineering. Topics include: convex sets; convex functions; convex optimization problems; duality; subgradient calculus; algorithms for smooth and non-smooth convex optimization; applications to signal and image processing, machine learning, statistics, control, robotics and economics. Students are required to have knowledge of calculus and linear algebra, and exposure to probability. (Formerly AMS 229.)

Credits

5

Requirements

Enrollment is restricted to graduate students.

AM 230 Numerical Optimization

Introduces numerical optimization tools widely used in engineering, science, and economics. Topics include: line-search and trust-region methods for unconstrained optimization, fundamental theory of constrained optimization, simplex and interior-point methods for linear programming, and computational algorithms for nonlinear programming. (Formerly AMS 230.)

Credits

5

Requirements

Basic knowledge of linear algebra is assumed. Enrollment is restricted to graduate students. Undergraduates may enroll by permission of the instructor.

AM 231 Nonlinear Control Theory

Covers analysis and design of nonlinear control systems using Lyapunov theory and geometric methods. Includes properties of solutions of nonlinear systems, Lyapunov stability analysis, effects of perturbations, controllability, observability, feedback linearization, and nonlinear control design tools for stabilization. (Formerly AMS 231.)

Credits

5

Requirements

Prerequisite(s): basic knowledge of mathematical analysis and ordinary differential equations is assumed. Enrollment is restricted to graduate students; undergraduates may enroll by permission of the instructor.

AM 232 Applied Optimal Control

Introduces optimal control theory and computational optimal control algorithms. Topics include: calculus of variations, minimum principle, dynamic programming, HJB equation, linear-quadratic regulator, direct and indirect computational methods, and engineering application of optimal control. (Formerly AMS 232.)

Credits

5

Requirements

Prerequisite(s): AM 114 or AM 214, or ECE 240 or ECE 241, or MATH 145. Enrollment is restricted to graduate students. Undergraduates may enroll by permission of the instructor.

AM 238 Fundamentals of Uncertainty Quantification in Computational Science and Engineering

Computing the statistical properties of nonlinear random system is of fundamental importance in many areas of science and engineering. Introduces students to state-of-the-art methods for uncertainty propagation and quantification in model-based computations, focusing on the computational and algorithmic features of these methods most useful in dealing with systems specified in terms of stochastic ordinary and partial differential equations. Topics include: polynomial chaos methods (gPC and ME-gPC), probabilistic collocation methods (PCM and ME-PCM), Monte-Carlo methods (MC, quasi-MC, multi-level MC), sparse grids (SG), probability density function methods, and techniques for dimensional reduction. Basic knowledge of probability theory and elementary numerical methods for ODEs and PDEs is recommended. (Formerly AMS 238.)

Credits

5

Requirements

Prerequisite(s): STAT 203 or equivalent, and AM 213B or equivalent. Enrollment is restricted to graduate students.

AM 250 An Introduction to High Performance Computing

Designed for STEM students and others. Through hands-on practice, this course introduces high-performance parallel computing, including the concepts of multiprocessor machines and parallel computation, and the hardware and software tools associated with them. Students become familiar with parallel concepts and the use of MPI and OpenMP together with some insight into the use of heterogeneous architectures (CPU, CUDA, OpenCL), and some case-study problems. (Formerly AMS 250.)

Credits

5

Requirements

Enrollment is restricted to graduate students; undergraduates may enroll by permission of the instructor.

AM 260 Computational Fluid Dynamics

Introduces modern computational approaches to solving the differential equations that arise in fluid dynamics, particularly for problems involving discontinuities and shock waves. Examines the fundamentals of the mathematical foundations and computation methods to obtain solutions. Focuses on writing practical numerical codes and analyzing their results for a full understanding of fluid phenomena. (Formerly AMS 260.)

Credits

5

Requirements

Prerequisite(s): Basic knowledge of computer programming languages is assumed. Enrollment is restricted to graduate students.

AM 275 Magnetohydrodynamics

Studies the interaction of fluid motion and magnetic fields in electrically conducting fluids, with applications in many natural and man-made flows ranging from, for example, planetary physics and astrophysics to industrial metallurgic engineering. (Formerly AMS 275.)

Credits

5

Cross Listed Courses

EART 275

Requirements

Prerequisite(s): AM 107 or AM 217. AM 227 suggested. Enrollment is restricted to graduate students.

AM 280A Seminar in Mathematical and Computational Biology

Weekly seminar on mathematical and computational biology. Participants present research findings in organized and critical fashion, framed in context of current literature. Students present own research on a regular basis. (Formerly AMS 280A.)

Credits

2

Requirements

Enrollment is restricted to graduate students.

Repeatable for credit

Yes

AM 280B Seminar in Applied Mathematical Modeling

Weekly seminar series covering topics of current research in applied mathematics and statistics. Permission of instructor required. Enrollment is restricted to graduate students. (Formerly AMS 280B.)

Credits

2

Repeatable for credit

Yes

AM 280C Seminar in Geophysical and Astrophysical Fluid Dynamics

Weekly seminar/discussion group on geophysical and astrophysical fluid dynamics covering both analytical and computational approaches. Participants present research progress and findings in semiformal discussions. Students must present their own research on a regular basis. (Formerly AMS 280C.)

Credits

2

Requirements

Enrollment is restricted to graduate students; undergraduates may enroll by permission of the instructor.

Repeatable for credit

Yes

AM 296 Masters Project

Independent completion of a masters project under faculty supervision. Students submit petition to sponsoring agency. Enrollment is restricted to graduate students.

Credits

2

Repeatable for credit

Yes

AM 297A Independent Study or Research

Independent study or research under faculty supervision. Students submit petition to sponsoring agency. Enrollment is restricted to graduate students.

Credits

5

Repeatable for credit

Yes

AM 297B Independent Study or Research

Independent study or research under faculty supervision. Students submit petition to sponsoring agency. Enrollment is restricted to graduate students.

Credits

10

Repeatable for credit

Yes

AM 297C Independent Study or Research

Independent study or research under faculty supervision. Students submit petition to sponsoring agency. Enrollment is restricted to graduate students.

Credits

15

Repeatable for credit

Yes

AM 297F Independent Study

Independent study or research under faculty supervision. Students submit petition to sponsoring agency. Enrollment is restricted to graduate students.

Credits

2

Repeatable for credit

Yes

AM 299A Thesis Research

Thesis research under faculty supervision. Students submit petition to sponsoring agency. Enrollment restricted to graduate students.

Credits

5

Repeatable for credit

Yes

AM 299B Thesis Research

Thesis research under faculty supervision. Students submit petition to sponsoring agency. Enrollment restricted to graduate students.

Credits

10

Repeatable for credit

Yes

AM 299C Thesis Research

Thesis research under faculty supervision. Students submit petition to sponsoring agency. Enrollment restricted to graduate students.

Credits

15

Repeatable for credit

Yes