Mathematics - Course Descriptions
MA 105 Calculus A 5R-0L-5C F
Graduate Studies Eligible: No
Prerequisites: There are no prerequisites for this course.
Corequisites: There are no corequisites for this course.
Calculus and analytic geometry in the plane. Algebraic and trigonometric functions. Limits and continuity. Differentiation, geometric and physical interpretations of the derivative. Introduction to integration and the Fundamental Theorem of Calculus. A student cannot earn credit for both MA 105 and MA 111.
Graduate Studies Eligible: No
Prerequisites: There are no prerequisites for this course.
Corequisites: There are no corequisites for this course.
Calculus and analytic geometry in the plane. Algebraic and trigonometric functions. Limits and continuity. Differentiation, geometric and physical interpretations of the derivative. Introduction to integration and the Fundamental Theorem of Calculus. A student cannot earn credit for both MA 105 and MA 111.
MA 106 Calculus B 4R-0L-4C W
Graduate Studies Eligible: No
Prerequisites: MA 105
Corequisites: There are no corequisites for this course.
Definitions, properties, and derivatives of exponentials and logarithms. Antiderivatives, integral properties, integration by substitution, integration by parts, integrals of transcendental functions, numerical integration, applications of integration, and improper integrals. Applications of integration, e.g. area, displacement, volumes of revolution, arc length, surface area of revolution, and work. Newton’s method. Computer algebra systems.
Graduate Studies Eligible: No
Prerequisites: MA 105
Corequisites: There are no corequisites for this course.
Definitions, properties, and derivatives of exponentials and logarithms. Antiderivatives, integral properties, integration by substitution, integration by parts, integrals of transcendental functions, numerical integration, applications of integration, and improper integrals. Applications of integration, e.g. area, displacement, volumes of revolution, arc length, surface area of revolution, and work. Newton’s method. Computer algebra systems.
MA 107 Calculus C 4R-0L-4C S
Graduate Studies Eligible: No
Prerequisites: MA 106
Corequisites: There are no corequisites for this course.
Partial fractions and Integration. Hyperbolic functions. Separable first order differential equations, applications of separable first order differential equations. Series of constants, power series, Taylor polynomials, Taylor and McLaurin series. Computer algebra systems.
Graduate Studies Eligible: No
Prerequisites: MA 106
Corequisites: There are no corequisites for this course.
Partial fractions and Integration. Hyperbolic functions. Separable first order differential equations, applications of separable first order differential equations. Series of constants, power series, Taylor polynomials, Taylor and McLaurin series. Computer algebra systems.
MA 111 Calculus I 5R-0L-5C F,W
Graduate Studies Eligible: No
Prerequisites: There are no prerequisites for this course.
Corequisites: There are no corequisites for this course.
Calculus and analytic geometry in the plane. Algebraic and transcendental functions. Limits and continuity. Differentiation, geometric and physical interpretations of the derivative, Newton’s method. Introduction to integration and the Fundamental Theorem of Calculus. A student cannot earn credit for both MA 105 and MA 111.
Graduate Studies Eligible: No
Prerequisites: There are no prerequisites for this course.
Corequisites: There are no corequisites for this course.
Calculus and analytic geometry in the plane. Algebraic and transcendental functions. Limits and continuity. Differentiation, geometric and physical interpretations of the derivative, Newton’s method. Introduction to integration and the Fundamental Theorem of Calculus. A student cannot earn credit for both MA 105 and MA 111.
MA 112 Calculus II 5R-0L-5C F,W,S
Graduate Studies Eligible: No
Prerequisites: MA 111
Corequisites: There are no corequisites for this course.
Techniques of integration, numerical integration, applications of integration. L’Hopital’s rule and improper integrals. Separable first order differential equations, applications of separable first order differential equations. Series of constants, power series, Taylor polynomials, Taylor and McLaurin series.
Graduate Studies Eligible: No
Prerequisites: MA 111
Corequisites: There are no corequisites for this course.
Techniques of integration, numerical integration, applications of integration. L’Hopital’s rule and improper integrals. Separable first order differential equations, applications of separable first order differential equations. Series of constants, power series, Taylor polynomials, Taylor and McLaurin series.
MA 113 Calculus III 5R-0L-5C F,W,S
Graduate Studies Eligible: No
Prerequisites: MA 112 or MA 107
Corequisites: There are no corequisites for this course.
Vectors and parametric equations in three dimensions. Functions of several variables, partial derivatives, maxima and minima of functions of several variables, multiple integrals, and other coordinate systems. Applications of partial derivatives and multiple integrals.
Graduate Studies Eligible: No
Prerequisites: MA 112 or MA 107
Corequisites: There are no corequisites for this course.
Vectors and parametric equations in three dimensions. Functions of several variables, partial derivatives, maxima and minima of functions of several variables, multiple integrals, and other coordinate systems. Applications of partial derivatives and multiple integrals.
MA 190 Contemporary Mathematical Problems 2R-0L-2C S
Graduate Studies Eligible: No
Prerequisites: There are no prerequisites for this course.
Corequisites: MA 113
A seminar-style course consisting of an overview of selected contemporary problems and areas in the mathematical sciences. Problems to be discussed will be selected from recent publications in research and applications, famous problems, and outstanding problems of great significance.
Graduate Studies Eligible: No
Prerequisites: There are no prerequisites for this course.
Corequisites: MA 113
A seminar-style course consisting of an overview of selected contemporary problems and areas in the mathematical sciences. Problems to be discussed will be selected from recent publications in research and applications, famous problems, and outstanding problems of great significance.
MA 195 Topics in Mathematics 1-4C See Dept
Graduate Studies Eligible: No
Prerequisites: There are no prerequisites for this course.
Corequisites: There are no corequisites for this course.
This course will cover introductory-level topics in mathematics not offered in listed courses. A student may take the course for credit more than once provided the topics are different.
Graduate Studies Eligible: No
Prerequisites: There are no prerequisites for this course.
Corequisites: There are no corequisites for this course.
This course will cover introductory-level topics in mathematics not offered in listed courses. A student may take the course for credit more than once provided the topics are different.
MA 199 Professional Experience 1R-0L-1C
Graduate Studies Eligible: No
Prerequisites: There are no prerequisites for this course.
Corequisites: There are no corequisites for this course.
The professional experiences course captures the practical work experiences related to the student’s academic discipline. Students are required to submit a formal document of their reflections, which communicates how their employment opportunity reinforced and enhanced their academic studies. The course will be graded as “S” satisfactory, or “U” unsatisfactory based on the written report of the professional experience.
Graduate Studies Eligible: No
Prerequisites: There are no prerequisites for this course.
Corequisites: There are no corequisites for this course.
The professional experiences course captures the practical work experiences related to the student’s academic discipline. Students are required to submit a formal document of their reflections, which communicates how their employment opportunity reinforced and enhanced their academic studies. The course will be graded as “S” satisfactory, or “U” unsatisfactory based on the written report of the professional experience.
MA 200 Career Preparation 1R-0L-1C W
Graduate Studies Eligible: No
Prerequisites: There are no prerequisites for this course.
Corequisites: There are no corequisites for this course.
This course is for mathematics majors to be taken in the second year. The course addresses career choices, summer opportunities, employment and graduate school preparation, and curriculum vitae and resumes preparation. Cross-listed with CHEM 200 and PH200.
Graduate Studies Eligible: No
Prerequisites: There are no prerequisites for this course.
Corequisites: There are no corequisites for this course.
This course is for mathematics majors to be taken in the second year. The course addresses career choices, summer opportunities, employment and graduate school preparation, and curriculum vitae and resumes preparation. Cross-listed with CHEM 200 and PH200.
MA 221 Matrix Algebra & Differential Equations I 4R-0L-4C F,W,S
Graduate Studies Eligible: No
Prerequisites: MA 113
Corequisites: There are no corequisites for this course.
First order scalar differential equations including basic solution techniques and numerical methods. Second order linear, constant coefficient differential equations, including both the homogeneous and non-homogeneous cases. Basic matrix algebra with emphasis on understanding systems of linear equations from algebraic and geometric viewpoints, and eigenvalues and eigenvectors. Introduction to complex arithmetic. Applications to problems in science and engineering.
Graduate Studies Eligible: No
Prerequisites: MA 113
Corequisites: There are no corequisites for this course.
First order scalar differential equations including basic solution techniques and numerical methods. Second order linear, constant coefficient differential equations, including both the homogeneous and non-homogeneous cases. Basic matrix algebra with emphasis on understanding systems of linear equations from algebraic and geometric viewpoints, and eigenvalues and eigenvectors. Introduction to complex arithmetic. Applications to problems in science and engineering.
MA 222 Matrix Algebra & Differential Equations II 4R-0L-4C F,W,S
Graduate Studies Eligible: No
Prerequisites: MA 221
Corequisites: There are no corequisites for this course.
Laplace transforms. Solution of systems of first order linear differential equations by matrix methods and investigation of their solution structure determined by eigensystems. Phase portrait analysis and classification of the nature of the stability of critical points for linear and nonlinear systems. Fourier series and application to solving elementary boundary value problems. Applications to problems in science and engineering.
Graduate Studies Eligible: No
Prerequisites: MA 221
Corequisites: There are no corequisites for this course.
Laplace transforms. Solution of systems of first order linear differential equations by matrix methods and investigation of their solution structure determined by eigensystems. Phase portrait analysis and classification of the nature of the stability of critical points for linear and nonlinear systems. Fourier series and application to solving elementary boundary value problems. Applications to problems in science and engineering.
MA 223 Engineering Statistics I 4R-0L-4C F,W,S
Graduate Studies Eligible: No
Prerequisites: MA 111 or MA 105, and ENGL H100 or ENGD 100 or HUM H190
Corequisites: There are no corequisites for this course.
This is an introductory course in applied statistics emphasizing data analysis. The course is designed to support the research cycle including the formulation of a question of interest, effective data collection techniques, informative data summaries, and appropriate inferences from data. Communication of results and statistical concepts is emphasized. Statistical software will be used for the data analysis throughout, including analysis of variance and simple linear regression. A student cannot take both MA223 and MA382 for credit.
Graduate Studies Eligible: No
Prerequisites: MA 111 or MA 105, and ENGL H100 or ENGD 100 or HUM H190
Corequisites: There are no corequisites for this course.
This is an introductory course in applied statistics emphasizing data analysis. The course is designed to support the research cycle including the formulation of a question of interest, effective data collection techniques, informative data summaries, and appropriate inferences from data. Communication of results and statistical concepts is emphasized. Statistical software will be used for the data analysis throughout, including analysis of variance and simple linear regression. A student cannot take both MA223 and MA382 for credit.
MA 276 Introduction to Proofs 4R-0L-4C F, W
Graduate Studies Eligible: No
Prerequisites: MA 113
Corequisites: There are no corequisites for this course.
Introduction to writing mathematical proofs. Logic: direct proof, contradiction, contrapositive, counterexamples. Induction. Recursion. Sets: relations (order, equivalence), functions. Properties of infinite sets. Basic number theory. Important preparation for further courses in theoretical mathematics.
Graduate Studies Eligible: No
Prerequisites: MA 113
Corequisites: There are no corequisites for this course.
Introduction to writing mathematical proofs. Logic: direct proof, contradiction, contrapositive, counterexamples. Induction. Recursion. Sets: relations (order, equivalence), functions. Properties of infinite sets. Basic number theory. Important preparation for further courses in theoretical mathematics.
MA 290 Topics in Mathematics Variable 1-4 Hours See Dept
Graduate Studies Eligible: No
Prerequisites: There are no prerequisites for this course.
Corequisites: There are no corequisites for this course.
Variable Topics in Mathematics
Graduate Studies Eligible: No
Prerequisites: There are no prerequisites for this course.
Corequisites: There are no corequisites for this course.
Variable Topics in Mathematics
MA 323 Geometric Modeling 4R-0L-4C W (Even years)
Graduate Studies Eligible: No
Prerequisites: MA 113
Corequisites: There are no corequisites for this course.
Covers some of the mathematical methods for describing physical or virtual objects in computer aided geometric design (CAGD) and computer graphics. Emphasizes methods for curve and surface modeling, and discusses both the underlying geometric concepts and the practical aspects of constructing geometric models of objects. Topics covered include Bezier curves, Hermite curves, B-splines, Bezier patches, subdivision surfaces. In discussing these, ideas from analytic geometry, differential geometry, affine geometry, combinatorial geometry, and projective geometry will be introduced.
Graduate Studies Eligible: No
Prerequisites: MA 113
Corequisites: There are no corequisites for this course.
Covers some of the mathematical methods for describing physical or virtual objects in computer aided geometric design (CAGD) and computer graphics. Emphasizes methods for curve and surface modeling, and discusses both the underlying geometric concepts and the practical aspects of constructing geometric models of objects. Topics covered include Bezier curves, Hermite curves, B-splines, Bezier patches, subdivision surfaces. In discussing these, ideas from analytic geometry, differential geometry, affine geometry, combinatorial geometry, and projective geometry will be introduced.
MA 327 Low Dimensional Topology 4R-0L-4C W (odd years)
Graduate Studies Eligible: No
Prerequisites: MA 113 or consent of instructor
Corequisites: There are no corequisites for this course.
An introduction to the topology of one-, two-, and three-dimensional manifolds and its application to other areas of mathematics and science. Topics may include, but are not restricted to, classification of curves and surfaces, Euler characteristic, tiling and coloring theorems, graph embeddings, vector fields, knots and links, and elementary algebraic topology. Intended for science and engineering majors as well as mathematics majors.
Graduate Studies Eligible: No
Prerequisites: MA 113 or consent of instructor
Corequisites: There are no corequisites for this course.
An introduction to the topology of one-, two-, and three-dimensional manifolds and its application to other areas of mathematics and science. Topics may include, but are not restricted to, classification of curves and surfaces, Euler characteristic, tiling and coloring theorems, graph embeddings, vector fields, knots and links, and elementary algebraic topology. Intended for science and engineering majors as well as mathematics majors.
MA 330 Vector Calculus 4R-0L-4C F,S
Graduate Studies Eligible: No
Prerequisites: MA 222
Corequisites: There are no corequisites for this course.
Calculus of vector- valued functions of one and several variables. Topics include differentiation (divergence, gradient and curl of a vector field) and integration (line integrals and surface integrals). Applications of Green’s theorem, Stokes’ theorem and the divergence theorem to potential theory and/or fluid mechanics will be provided.
Graduate Studies Eligible: No
Prerequisites: MA 222
Corequisites: There are no corequisites for this course.
Calculus of vector- valued functions of one and several variables. Topics include differentiation (divergence, gradient and curl of a vector field) and integration (line integrals and surface integrals). Applications of Green’s theorem, Stokes’ theorem and the divergence theorem to potential theory and/or fluid mechanics will be provided.
MA 332 Introduction to Computational Science 4R-0L-4C F,W
Graduate Studies Eligible: No
Prerequisites: MA 221
Corequisites: There are no corequisites for this course.
An introduction to Computational Science using Matlab. Floating point arithmetic, Matlab programming, solution of nonlinear equations, interpolation, least squares problems, numerical differentiation and integration, solution of linear systems.
Graduate Studies Eligible: No
Prerequisites: MA 221
Corequisites: There are no corequisites for this course.
An introduction to Computational Science using Matlab. Floating point arithmetic, Matlab programming, solution of nonlinear equations, interpolation, least squares problems, numerical differentiation and integration, solution of linear systems.
MA 335 Introduction to Parallel Computing 4R-0L-4C S
Graduate Studies Eligible: No
Prerequisites: MA 221 and programming experience
Corequisites: There are no corequisites for this course.
Principles of scientific computation on parallel computers. Algorithms for the solution of linear systems and other scientific computing problems on parallel machines. Course includes a major project on RHIT's parallel cluster. Same as CSSE 335.
Graduate Studies Eligible: No
Prerequisites: MA 221 and programming experience
Corequisites: There are no corequisites for this course.
Principles of scientific computation on parallel computers. Algorithms for the solution of linear systems and other scientific computing problems on parallel machines. Course includes a major project on RHIT's parallel cluster. Same as CSSE 335.
MA 336 Boundary Value Problems 4R-0L-4C F,S
Graduate Studies Eligible: No
Prerequisites: MA 222
Corequisites: There are no corequisites for this course.
Introduction to boundary value problems and partial differential equations. Emphasis on boundary values problems that arise from the wave equation, diffusion equation, and Laplace’s equation in one, two and three dimensions. Solutions to such boundary value problems will be discussed using Fourier series, numerical techniques, and integral transforms.
Graduate Studies Eligible: No
Prerequisites: MA 222
Corequisites: There are no corequisites for this course.
Introduction to boundary value problems and partial differential equations. Emphasis on boundary values problems that arise from the wave equation, diffusion equation, and Laplace’s equation in one, two and three dimensions. Solutions to such boundary value problems will be discussed using Fourier series, numerical techniques, and integral transforms.
MA 341 Topics in Mathematical Modeling 4R-0L-4C W
Graduate Studies Eligible: No
Prerequisites: MA 222
Corequisites: There are no corequisites for this course.
An introduction to techniques of mathematical modeling involved in the analysis of meaningful and practical problems arising in many disciplines including mathematical sciences, operations research, engineering, and the management and life sciences. Topics may include creative and empirical model construction, model fitting, models requiring optimization, and modeling dynamic behavior. Student participation in significant individual and group projects will be emphasized.
Graduate Studies Eligible: No
Prerequisites: MA 222
Corequisites: There are no corequisites for this course.
An introduction to techniques of mathematical modeling involved in the analysis of meaningful and practical problems arising in many disciplines including mathematical sciences, operations research, engineering, and the management and life sciences. Topics may include creative and empirical model construction, model fitting, models requiring optimization, and modeling dynamic behavior. Student participation in significant individual and group projects will be emphasized.
MA 342 Computational Modeling 4R-0L-4C S
Graduate Studies Eligible: No
Prerequisites: MA 222, and either CE 310 or CHE 310 or MA 332 or ME 327
Corequisites: There are no corequisites for this course.
Computational modeling and simulation of scientific problems using Matlab. Students will create and utilize computer-based models to solve practical problems. Monte Carlo methods, linear systems, solution of ODEs.
Graduate Studies Eligible: No
Prerequisites: MA 222, and either CE 310 or CHE 310 or MA 332 or ME 327
Corequisites: There are no corequisites for this course.
Computational modeling and simulation of scientific problems using Matlab. Students will create and utilize computer-based models to solve practical problems. Monte Carlo methods, linear systems, solution of ODEs.
MA 351 Problem Solving Seminar 1R-0L-1C F,W,S
Graduate Studies Eligible: No
Prerequisites: consent of instructor
Corequisites: There are no corequisites for this course.
An exposure to mathematical problems varying widely in both difficulty and content. Students will be expected to participate actively, not only in the solution process itself but also in the presentation of finished work, both orally and in writing. A student may earn a maximum of six credits in MA 351-6. Cannot count toward mathematics major core hours or the math minor.
Graduate Studies Eligible: No
Prerequisites: consent of instructor
Corequisites: There are no corequisites for this course.
An exposure to mathematical problems varying widely in both difficulty and content. Students will be expected to participate actively, not only in the solution process itself but also in the presentation of finished work, both orally and in writing. A student may earn a maximum of six credits in MA 351-6. Cannot count toward mathematics major core hours or the math minor.
MA 366 Introduction to Real Analysis 4R-0L-4C F, W
Graduate Studies Eligible: No
Prerequisites: MA 371, and MA 276
Corequisites: There are no corequisites for this course.
Calculus of functions of a single variable. A more careful development of the basic concepts of analysis, including sequences, limits, continuity, differentiability, integration, infinite series, power series, Taylor’s Theorem, and uniform convergence, with an emphasis on proof.
Graduate Studies Eligible: No
Prerequisites: MA 371, and MA 276
Corequisites: There are no corequisites for this course.
Calculus of functions of a single variable. A more careful development of the basic concepts of analysis, including sequences, limits, continuity, differentiability, integration, infinite series, power series, Taylor’s Theorem, and uniform convergence, with an emphasis on proof.
MA 367 Functions of a Complex Variable 4R-0L-4C S
Graduate Studies Eligible: No
Prerequisites: MA 221
Corequisites: There are no corequisites for this course.
Elementary properties of analytic functions including Cauchy’s theorem and its consequences, Laurent series, the Residue Theorem, and mapping properties of analytic functions.
Graduate Studies Eligible: No
Prerequisites: MA 221
Corequisites: There are no corequisites for this course.
Elementary properties of analytic functions including Cauchy’s theorem and its consequences, Laurent series, the Residue Theorem, and mapping properties of analytic functions.
MA 371 Linear Algebra I 4R-0L-4C F,S
Graduate Studies Eligible: No
Prerequisites: MA 221 or consent of instructor
Corequisites: There are no corequisites for this course.
Similar to MA373, but with an emphasis on the theory behind matrices and vector spaces. Systems of linear equations, Gaussian elimination, and the LU decomposition of a matrix. Projections, least squares approximations, and the Gram-Schmidt process. Eigenvalues and eigenvectors of a matrix. The diagonalization theorem. The singular value decomposition of a matrix. Introduction to vector spaces. Some proof writing will be required. Those interested in applications of matrices and vector spaces should take MA373. A student cannot take both MA 371 and MA 373 for credit.
Graduate Studies Eligible: No
Prerequisites: MA 221 or consent of instructor
Corequisites: There are no corequisites for this course.
Similar to MA373, but with an emphasis on the theory behind matrices and vector spaces. Systems of linear equations, Gaussian elimination, and the LU decomposition of a matrix. Projections, least squares approximations, and the Gram-Schmidt process. Eigenvalues and eigenvectors of a matrix. The diagonalization theorem. The singular value decomposition of a matrix. Introduction to vector spaces. Some proof writing will be required. Those interested in applications of matrices and vector spaces should take MA373. A student cannot take both MA 371 and MA 373 for credit.
MA 373 Applied Linear Algebra for Engineers 4R-0L-4C W
Graduate Studies Eligible: No
Prerequisites: MA 221 or consent of instructor
Corequisites: There are no corequisites for this course.
Similar to MA 371, but with emphasis on applications of matrices and vector spaces. Systems of linear equations, Gaussian elimination, and the LU decomposition of a matrix. Projections, least squares approximations, and the Gram-Schmidt process. Eigenvalues and eigenvectors of a matrix. The diagonalization theorem. The singular value decomposition of a matrix. Those interested in the theory behind matrices and vector spaces should take MA 371. A student cannot take both MA 371 and MA 373 for credit.
Graduate Studies Eligible: No
Prerequisites: MA 221 or consent of instructor
Corequisites: There are no corequisites for this course.
Similar to MA 371, but with emphasis on applications of matrices and vector spaces. Systems of linear equations, Gaussian elimination, and the LU decomposition of a matrix. Projections, least squares approximations, and the Gram-Schmidt process. Eigenvalues and eigenvectors of a matrix. The diagonalization theorem. The singular value decomposition of a matrix. Those interested in the theory behind matrices and vector spaces should take MA 371. A student cannot take both MA 371 and MA 373 for credit.
MA 374 Combinatorics 4R-0L-4C F, W, S
Graduate Studies Eligible: No
Prerequisites: MA 221
Corequisites: There are no corequisites for this course.
A first course in combinatorics. Basic counting principles, permutations, combinations. Combinatorial proof. The pigeonhole principle. The principle of inclusion/exclusion. Generating functions. Recurrence relations. Additional topics in combinatorics, which may include permutation groups and Burnside's Lemma, Polya enumeration, multivariate generating functions, combinatorial designs, Ramsey theory, order relations, or other topics at the discretion of the instructor.
Graduate Studies Eligible: No
Prerequisites: MA 221
Corequisites: There are no corequisites for this course.
A first course in combinatorics. Basic counting principles, permutations, combinations. Combinatorial proof. The pigeonhole principle. The principle of inclusion/exclusion. Generating functions. Recurrence relations. Additional topics in combinatorics, which may include permutation groups and Burnside's Lemma, Polya enumeration, multivariate generating functions, combinatorial designs, Ramsey theory, order relations, or other topics at the discretion of the instructor.
MA 376 Abstract Algebra 4R-0L-4C S
Graduate Studies Eligible: No
Prerequisites: MA 276
Corequisites: There are no corequisites for this course.
An introduction to Group Theory. Topics include: matrix groups, groups of integers modulo a natural number, symmetric and dihedral groups, homomorphisms, subgroups, cosets, quotient groups and group actions. Applications, possibly including games and puzzles, cryptography, and coding theory. Other topics may also be introduced according to time and student interest.
Graduate Studies Eligible: No
Prerequisites: MA 276
Corequisites: There are no corequisites for this course.
An introduction to Group Theory. Topics include: matrix groups, groups of integers modulo a natural number, symmetric and dihedral groups, homomorphisms, subgroups, cosets, quotient groups and group actions. Applications, possibly including games and puzzles, cryptography, and coding theory. Other topics may also be introduced according to time and student interest.
MA 378 Number Theory 4R-0L-4C S
Graduate Studies Eligible: No
Prerequisites: consent of instructor
Corequisites: There are no corequisites for this course.
Divisibility, congruences, prime numbers, factorization algorithms, RSA encryption, solutions of equations in integers, quadratic residues, reciprocity, generating functions, multiplicative and other important functions of elementary number theory. Mathematical conjecture and proof, mathematical induction.
Graduate Studies Eligible: No
Prerequisites: consent of instructor
Corequisites: There are no corequisites for this course.
Divisibility, congruences, prime numbers, factorization algorithms, RSA encryption, solutions of equations in integers, quadratic residues, reciprocity, generating functions, multiplicative and other important functions of elementary number theory. Mathematical conjecture and proof, mathematical induction.
MA 381 Introduction to Probability with Applications to Statistics 4R-0L-4C F,W,S
Graduate Studies Eligible: No
Prerequisites: MA 113
Corequisites: There are no corequisites for this course.
Introduction to probability theory; axioms of probability, sample spaces, and probability laws (including conditional probabilities). Univariate random variables (discrete and continuous) and their expectations including these distributions: binomial, Poisson, geometric, uniform, exponential, and normal. Introduction to moment generating functions. Introduction to jointly distributed random variables. Univariate and joint transformations of random variables. The distribution of linear combinations of random variables and an introduction to the Central Limit Theorem. Applications of probability to statistics.
Graduate Studies Eligible: No
Prerequisites: MA 113
Corequisites: There are no corequisites for this course.
Introduction to probability theory; axioms of probability, sample spaces, and probability laws (including conditional probabilities). Univariate random variables (discrete and continuous) and their expectations including these distributions: binomial, Poisson, geometric, uniform, exponential, and normal. Introduction to moment generating functions. Introduction to jointly distributed random variables. Univariate and joint transformations of random variables. The distribution of linear combinations of random variables and an introduction to the Central Limit Theorem. Applications of probability to statistics.
MA 382 Introduction to Statistics with Probability 4R-0L-4C F
Graduate Studies Eligible: No
Prerequisites: MA 381
Corequisites: There are no corequisites for this course.
This is an introductory course in statistics. Dual emphasis is placed on deriving statistical techniques and using the methods within data analyses. Study design and informative data summaries motivate the statistical inference techniques for linear models. Statistical thinking and communication skills are developed through analysis of data from a variety of fields. A statistical programming language is used for data visualization, analysis, and simulations. A student cannot take both MA 223 and MA 382 for credit.
Graduate Studies Eligible: No
Prerequisites: MA 381
Corequisites: There are no corequisites for this course.
This is an introductory course in statistics. Dual emphasis is placed on deriving statistical techniques and using the methods within data analyses. Study design and informative data summaries motivate the statistical inference techniques for linear models. Statistical thinking and communication skills are developed through analysis of data from a variety of fields. A statistical programming language is used for data visualization, analysis, and simulations. A student cannot take both MA 223 and MA 382 for credit.
MA 383 Engineering Statistics II 4R-0L-4C F
Graduate Studies Eligible: No
Prerequisites: MA 223 or MA 382
Corequisites: There are no corequisites for this course.
Hypothesis testing, confidence intervals, sample size determination, and power calculations for means and proportions; two factor analysis of variance (with and without interactions); analysis of several proportions; confidence and prediction intervals for estimated values using simple linear regression; Pearson (linear) correlation coefficient; introduction to multiple regression to include polynomial regression; review of fundamental prerequisite statistics will be included as necessary.
Graduate Studies Eligible: No
Prerequisites: MA 223 or MA 382
Corequisites: There are no corequisites for this course.
Hypothesis testing, confidence intervals, sample size determination, and power calculations for means and proportions; two factor analysis of variance (with and without interactions); analysis of several proportions; confidence and prediction intervals for estimated values using simple linear regression; Pearson (linear) correlation coefficient; introduction to multiple regression to include polynomial regression; review of fundamental prerequisite statistics will be included as necessary.
MA 384 Data Mining 4R–0L–4C
Graduate Studies Eligible: No
Prerequisites: CSSE 120, and MA 221, and either MA 223 or MA 381
Corequisites: There are no corequisites for this course.
An introduction to data mining for large data sets, include data preparation, exploration, aggregation/reduction, and visualization. Elementary methods for classification, association, and cluster analysis are covered. Significant attention will be given to presenting and reporting data mining results.
Graduate Studies Eligible: No
Prerequisites: CSSE 120, and MA 221, and either MA 223 or MA 381
Corequisites: There are no corequisites for this course.
An introduction to data mining for large data sets, include data preparation, exploration, aggregation/reduction, and visualization. Elementary methods for classification, association, and cluster analysis are covered. Significant attention will be given to presenting and reporting data mining results.
MA 386 Statistical Programming 4R-0L-4C
Graduate Studies Eligible: No
Prerequisites: MA 223 or MA 382 and previous programming course
Corequisites: There are no corequisites for this course.
Computational data analysis is an essential part of modern statistics. This course provides a practical foundation for students to compute with data. This course will introduce students to tools for data management, manipulation and analysis that are common in statistics and data science. The R computing language will be introduced. Topics will include data structures in R, writing functions, webscraping, data cleaning (both quantitative and textual data), processing unstructured data, static and interactive graphical presentations of data, and coding of modern algorithms for data analysis (bootstrapping and Monte Carlo methods).
Graduate Studies Eligible: No
Prerequisites: MA 223 or MA 382 and previous programming course
Corequisites: There are no corequisites for this course.
Computational data analysis is an essential part of modern statistics. This course provides a practical foundation for students to compute with data. This course will introduce students to tools for data management, manipulation and analysis that are common in statistics and data science. The R computing language will be introduced. Topics will include data structures in R, writing functions, webscraping, data cleaning (both quantitative and textual data), processing unstructured data, static and interactive graphical presentations of data, and coding of modern algorithms for data analysis (bootstrapping and Monte Carlo methods).
MA 390 Topics in the Mathematics of Engineering 1-4C Arranged
Graduate Studies Eligible: No
Prerequisites: Consent of instructor
Corequisites: There are no corequisites for this course.
A succinct mathematical study that is supportive of the engineering curricula. Topics could be chosen from signal processing, fluid dynamics, thermodynamics, as well as others. A student may take the course for credit more than once provided the topics are different.
Graduate Studies Eligible: No
Prerequisites: Consent of instructor
Corequisites: There are no corequisites for this course.
A succinct mathematical study that is supportive of the engineering curricula. Topics could be chosen from signal processing, fluid dynamics, thermodynamics, as well as others. A student may take the course for credit more than once provided the topics are different.
MA 415 Machine Learning 4R-0L-4C S
Graduate Studies Eligible: Yes
Prerequisites: MA 221*, and either MA 223 or MA 381, and either CHE 310 or CSSE 220 or ECE 230 or MA 332 or MA 386 or ME 327 Prerequisite Clarification for MA415: Junior standing and MA221, and either MA223 or MA381, and one of CHE310, CSSE220, ECE230, MA332, MA386 or (ME323 or ME327).
Corequisites: There are no corequisites for this course.
An introduction to machine learning. Topics include: error metrics, accuracy vs interpretability trade-off, feature selection, feature engineering, bias-variance trade-off, under-fitting vs. overfitting, regularization, cross-validation, the bootstrap method, the curse of dimensionality and dimensionality reduction using the singular value decomposition. Both parametric and nonparametric methods are covered including: k-nearest neighbors, linear and logistic regression, decision trees and random forests, and support vector machines. Same as CSSE415.
Graduate Studies Eligible: Yes
Prerequisites: MA 221*, and either MA 223 or MA 381, and either CHE 310 or CSSE 220 or ECE 230 or MA 332 or MA 386 or ME 327 Prerequisite Clarification for MA415: Junior standing and MA221, and either MA223 or MA381, and one of CHE310, CSSE220, ECE230, MA332, MA386 or (ME323 or ME327).
Corequisites: There are no corequisites for this course.
An introduction to machine learning. Topics include: error metrics, accuracy vs interpretability trade-off, feature selection, feature engineering, bias-variance trade-off, under-fitting vs. overfitting, regularization, cross-validation, the bootstrap method, the curse of dimensionality and dimensionality reduction using the singular value decomposition. Both parametric and nonparametric methods are covered including: k-nearest neighbors, linear and logistic regression, decision trees and random forests, and support vector machines. Same as CSSE415.
MA 416 Deep Learning 4R-0L-4C Arranged
Graduate Studies Eligible: Yes
Prerequisites: MA 221, and either MA 223 or MA 381, and either CHE 310 or CSSE 220 or ECE 230 or MA 332 or MA 386 or ME 327
Corequisites: There are no corequisites for this course.
An introduction to deep learning using both fully-connected and convolutional neural networks. Topics include: least squares estimation and mean square error, maximum likelihood estimation and cross-entropy, convexity, gradient descent and stochastic gradient descent algorithms, multivariate chain rule and gradient computation using back propagation, linear vs nonlinear operations, convolution, over-fitting vs under-fitting and hyper-parameter optimization, L2, early stopping and dropout regularization, data augmentation and transfer learning.
Graduate Studies Eligible: Yes
Prerequisites: MA 221, and either MA 223 or MA 381, and either CHE 310 or CSSE 220 or ECE 230 or MA 332 or MA 386 or ME 327
Corequisites: There are no corequisites for this course.
An introduction to deep learning using both fully-connected and convolutional neural networks. Topics include: least squares estimation and mean square error, maximum likelihood estimation and cross-entropy, convexity, gradient descent and stochastic gradient descent algorithms, multivariate chain rule and gradient computation using back propagation, linear vs nonlinear operations, convolution, over-fitting vs under-fitting and hyper-parameter optimization, L2, early stopping and dropout regularization, data augmentation and transfer learning.
MA 421 Tensor Calculus & Riemannian Geometry 4R-0L-4C Fall (Odd years)
Graduate Studies Eligible: Yes
Prerequisites: MA 330
Corequisites: There are no corequisites for this course.
An introduction to the calculus of tensor fields and the local geometry of manifolds.Topics covered include: manifolds, tangent space, cotangent spaces, vector fields, differential forms, tensor fields, Riemannian metrics, covariant derivative and connections, parallel transport and geodesics, Ricci tensor, Riemannian curvature tensor. Applications will be given in physics (general relativity, mechanics, string theory) and engineering (continuum mechanics).
Graduate Studies Eligible: Yes
Prerequisites: MA 330
Corequisites: There are no corequisites for this course.
An introduction to the calculus of tensor fields and the local geometry of manifolds.Topics covered include: manifolds, tangent space, cotangent spaces, vector fields, differential forms, tensor fields, Riemannian metrics, covariant derivative and connections, parallel transport and geodesics, Ricci tensor, Riemannian curvature tensor. Applications will be given in physics (general relativity, mechanics, string theory) and engineering (continuum mechanics).
MA 423 Topics in Geometry 4R-0L-4C Arranged
Graduate Studies Eligible: No
Prerequisites: MA 371 or MA 373 or consent of instructor
Corequisites: There are no corequisites for this course.
An advanced geometry course with topics possibly chosen from the areas of projective geometry, computational geometry, differential geometry algebraic geometry, Euclidean geometry or non-Euclidean geometry. A student may take the course for credit more than once provided the topics are different.
Graduate Studies Eligible: No
Prerequisites: MA 371 or MA 373 or consent of instructor
Corequisites: There are no corequisites for this course.
An advanced geometry course with topics possibly chosen from the areas of projective geometry, computational geometry, differential geometry algebraic geometry, Euclidean geometry or non-Euclidean geometry. A student may take the course for credit more than once provided the topics are different.
MA 430 Topics in Applied Mathematics 4R-0L-4C Arranged
Graduate Studies Eligible: No
Prerequisites: Instructor permission
Corequisites: There are no corequisites for this course.
A topics course in the general area of continuous applied mathematics. Topics may include mathematical physics, mathematical biology, mathematical finance, mathematics of vision, PDEs, image processing methods, continuum mechanics, dynamical systems, and mathematical modeling. A student may take the course for credit more than once provided the topics are different.
Graduate Studies Eligible: No
Prerequisites: Instructor permission
Corequisites: There are no corequisites for this course.
A topics course in the general area of continuous applied mathematics. Topics may include mathematical physics, mathematical biology, mathematical finance, mathematics of vision, PDEs, image processing methods, continuum mechanics, dynamical systems, and mathematical modeling. A student may take the course for credit more than once provided the topics are different.
MA 431 Calculus of Variations 4R-0L-4C Arranged
Graduate Studies Eligible: Yes
Prerequisites: MA 330
Corequisites: There are no corequisites for this course.
Euler-Lagrange and Hamiltonian equations, with possible applications in mechanics, electrostatics, optics, quantum mechanics and elasticity theory. An introduction to “direct methods.” Applications will be chosen in accordance with the interest of the students. Both classical and numerical methods have their place in this course.
Graduate Studies Eligible: Yes
Prerequisites: MA 330
Corequisites: There are no corequisites for this course.
Euler-Lagrange and Hamiltonian equations, with possible applications in mechanics, electrostatics, optics, quantum mechanics and elasticity theory. An introduction to “direct methods.” Applications will be chosen in accordance with the interest of the students. Both classical and numerical methods have their place in this course.
MA 433 Numerical Analysis 4R-0L-4C W
Graduate Studies Eligible: Yes
Prerequisites: MA 332 or MA 366 or MA 371 or MA 435
Corequisites: There are no corequisites for this course.
Root-finding, computational matrix algebra, nonlinear optimization, polynomial interpolation, splines, numerical integration, numerical solution of ordinary differential equations. Principles of error analysis and scientific computation. Selection of appropriate algorithms based on the numerical problem and on the software and hardware (such as parallel machines) available.
Graduate Studies Eligible: Yes
Prerequisites: MA 332 or MA 366 or MA 371 or MA 435
Corequisites: There are no corequisites for this course.
Root-finding, computational matrix algebra, nonlinear optimization, polynomial interpolation, splines, numerical integration, numerical solution of ordinary differential equations. Principles of error analysis and scientific computation. Selection of appropriate algorithms based on the numerical problem and on the software and hardware (such as parallel machines) available.
MA 434 Topics in Numerical Analysis 4R-0L-4C Arranged
Graduate Studies Eligible: No
Prerequisites: MA 433
Corequisites: There are no corequisites for this course.
An extension of the material presented in MA433. Topics may include numerical problems, numerical solution of partial differential equations (finite differences, finite elements, spectral methods), sparse matrices, global optimization, approximation theory. A student may take the course for credit more than once provided the topics are different.
Graduate Studies Eligible: No
Prerequisites: MA 433
Corequisites: There are no corequisites for this course.
An extension of the material presented in MA433. Topics may include numerical problems, numerical solution of partial differential equations (finite differences, finite elements, spectral methods), sparse matrices, global optimization, approximation theory. A student may take the course for credit more than once provided the topics are different.
MA 435 Finite Difference Methods 4R-0L-4C W
Graduate Studies Eligible: Yes
Prerequisites: MA 332 or MA 371 or MA 373 or MA 433
Corequisites: There are no corequisites for this course.
An introduction to finite difference methods for linear parabolic, hyperbolic, and elliptic partial differential equations. Consistency, stability, convergence, and the Lax Equivalence Theorem. Solution techniques for the resulting linear systems.
Graduate Studies Eligible: Yes
Prerequisites: MA 332 or MA 371 or MA 373 or MA 433
Corequisites: There are no corequisites for this course.
An introduction to finite difference methods for linear parabolic, hyperbolic, and elliptic partial differential equations. Consistency, stability, convergence, and the Lax Equivalence Theorem. Solution techniques for the resulting linear systems.
MA 436 Introduction to Partial Differential Equations 4R-0L-4C F (even years)
Graduate Studies Eligible: Yes
Prerequisites: MA 330
Corequisites: There are no corequisites for this course.
Partial differential equations, elliptic, hyperbolic, and parabolic equations. Boundary and initial value problems. Separation of variables, special functions. Eigenfunction expansions. Existence and uniqueness of solutions. Sturm-Liouville theory, Green’s function.
Graduate Studies Eligible: Yes
Prerequisites: MA 330
Corequisites: There are no corequisites for this course.
Partial differential equations, elliptic, hyperbolic, and parabolic equations. Boundary and initial value problems. Separation of variables, special functions. Eigenfunction expansions. Existence and uniqueness of solutions. Sturm-Liouville theory, Green’s function.
MA 438 Advanced Engineering Mathematics 4R-0L-4C W
Graduate Studies Eligible: No
Prerequisites: MA 222 and senior standing
Corequisites: There are no corequisites for this course.
A fast-paced course in advanced applied mathematics for engineering and physics students that combines aspects of MA330, MA336, and MA373. Applied linear algebra, including abstract vector spaces, linear operators, eigentheory, diagonalization, and the matrix exponential; review of partial differentiation and multiple integration, including Lagrange multipliers and other optimization topics; vector analysis, including the Jacobian matrix and the del operator in standard coordinate systems; and Fourier series with application to the solution of partial differential equation boundary value problems. Students who receive credit for MA438 may only receive credit for at most one of MA330, MA336, MA371, and MA373.
Graduate Studies Eligible: No
Prerequisites: MA 222 and senior standing
Corequisites: There are no corequisites for this course.
A fast-paced course in advanced applied mathematics for engineering and physics students that combines aspects of MA330, MA336, and MA373. Applied linear algebra, including abstract vector spaces, linear operators, eigentheory, diagonalization, and the matrix exponential; review of partial differentiation and multiple integration, including Lagrange multipliers and other optimization topics; vector analysis, including the Jacobian matrix and the del operator in standard coordinate systems; and Fourier series with application to the solution of partial differential equation boundary value problems. Students who receive credit for MA438 may only receive credit for at most one of MA330, MA336, MA371, and MA373.
MA 439 Mathematical Methods of Image Processing 4R-0L-4C F (Odd years)
Graduate Studies Eligible: Yes
Prerequisites: MA 221
Corequisites: There are no corequisites for this course.
Mathematical formulation and development of methods used in image processing, especially compression. Vector space models of signals and images, one- and two-dimensional discrete Fourier transforms, the discrete cosine transform, and block transforms. Frequency domain, basis waveforms, and frequency domain representation of signals and images. Convolution and filtering. Filter banks, wavelets and the discrete wavelet transform. Application to Fourier based and wavelet based compression such as the JPEG compression standard. Compression concepts such as scalar quantization and measures of performance.
Graduate Studies Eligible: Yes
Prerequisites: MA 221
Corequisites: There are no corequisites for this course.
Mathematical formulation and development of methods used in image processing, especially compression. Vector space models of signals and images, one- and two-dimensional discrete Fourier transforms, the discrete cosine transform, and block transforms. Frequency domain, basis waveforms, and frequency domain representation of signals and images. Convolution and filtering. Filter banks, wavelets and the discrete wavelet transform. Application to Fourier based and wavelet based compression such as the JPEG compression standard. Compression concepts such as scalar quantization and measures of performance.
MA 444 Deterministic Models in Operations Research 4R-0L-4C W
Graduate Studies Eligible: Yes
Prerequisites: MA 371 or MA 373 , and programming experience
Corequisites: There are no corequisites for this course.
Formulation of various deterministic problems as mathematical optimization models and the derivation of algorithms to solve them. Optimization models studied include linear programs, integer programs, and various network models. The course will emphasize modeling, algorithm design, and the associated mathematical theory, e.g. polyhedral, duality, convex analysis. Some computer programming is expected.
Graduate Studies Eligible: Yes
Prerequisites: MA 371 or MA 373 , and programming experience
Corequisites: There are no corequisites for this course.
Formulation of various deterministic problems as mathematical optimization models and the derivation of algorithms to solve them. Optimization models studied include linear programs, integer programs, and various network models. The course will emphasize modeling, algorithm design, and the associated mathematical theory, e.g. polyhedral, duality, convex analysis. Some computer programming is expected.
MA 445 Stochastic Models in Operations Research 4R-0L-4C S (even years)
Graduate Studies Eligible: Yes
Prerequisites: MA 381, and MA 221
Corequisites: There are no corequisites for this course.
Introduction to stochastic mathematical models and techniques that aid in the decision-making process. Topics covered include a review of conditional probability, discrete and continuous Markov chains, Poisson processes, queueing theory (waiting line problems), and reliability.
Graduate Studies Eligible: Yes
Prerequisites: MA 381, and MA 221
Corequisites: There are no corequisites for this course.
Introduction to stochastic mathematical models and techniques that aid in the decision-making process. Topics covered include a review of conditional probability, discrete and continuous Markov chains, Poisson processes, queueing theory (waiting line problems), and reliability.
MA 446 Combinatorial Optimization 4R-0L-4C S (odd years)
Graduate Studies Eligible: Yes
Prerequisites: MA 276, and CSSE 220
Corequisites: There are no corequisites for this course.
An introduction to graph- and network-based optimization models, including spanning trees, network flow, and matching problems. Focus is on the development of both models for real-world applications and algorithms for their solution.
Graduate Studies Eligible: Yes
Prerequisites: MA 276, and CSSE 220
Corequisites: There are no corequisites for this course.
An introduction to graph- and network-based optimization models, including spanning trees, network flow, and matching problems. Focus is on the development of both models for real-world applications and algorithms for their solution.
MA 450 Mathematics Seminar 1R-0L-1C F,W,S
Graduate Studies Eligible: No
Prerequisites: Consent of instructor
Corequisites: There are no corequisites for this course.
A student must attend at least 10 mathematics seminars or colloquia and present at one of the seminars, based on material mutually agreed upon by the instructor and the student. A successful presentation is required for a passing grade. As seminars may not be offered every week during the quarter a student may extend the course over more than one quarter, but it must be completed within two consecutive quarters. A student may take this course a maximum of four times.
Graduate Studies Eligible: No
Prerequisites: Consent of instructor
Corequisites: There are no corequisites for this course.
A student must attend at least 10 mathematics seminars or colloquia and present at one of the seminars, based on material mutually agreed upon by the instructor and the student. A successful presentation is required for a passing grade. As seminars may not be offered every week during the quarter a student may extend the course over more than one quarter, but it must be completed within two consecutive quarters. A student may take this course a maximum of four times.
MA 460 Topics in Analysis 4R-0L-4C Arranged
Graduate Studies Eligible: No
Prerequisites: Instructor permission
Corequisites: There are no corequisites for this course.
An advanced topics course in analysis. Topic of the course could be advanced topics in real analysis, advanced topics in complex analysis, analysis on manifolds, measure theory or an advanced course in applied analysis (differential equations). May be taken more than once provided topics are different
Graduate Studies Eligible: No
Prerequisites: Instructor permission
Corequisites: There are no corequisites for this course.
An advanced topics course in analysis. Topic of the course could be advanced topics in real analysis, advanced topics in complex analysis, analysis on manifolds, measure theory or an advanced course in applied analysis (differential equations). May be taken more than once provided topics are different
MA 461 Topics in Topology 4R-0L-4C Arranged
Graduate Studies Eligible: No
Prerequisites: MA 366 or consent of instructor
Corequisites: There are no corequisites for this course.
Introduction to selected topics from point-set topology or algebraic topology from a rigorous point of view. Possible topics include metric spaces, general topological spaces, compactness, connectedness, separation axioms, compactification and metrization theorems, homotopy and homology, and covering spaces. Intended for mathematics majors planning to pursue graduate study in mathematics.
Graduate Studies Eligible: No
Prerequisites: MA 366 or consent of instructor
Corequisites: There are no corequisites for this course.
Introduction to selected topics from point-set topology or algebraic topology from a rigorous point of view. Possible topics include metric spaces, general topological spaces, compactness, connectedness, separation axioms, compactification and metrization theorems, homotopy and homology, and covering spaces. Intended for mathematics majors planning to pursue graduate study in mathematics.
MA 466 Introduction to Functional Analysis 4R-0L-4C Arranged
Graduate Studies Eligible: Yes
Prerequisites: MA 366
Corequisites: There are no corequisites for this course.
An introduction to the theory of Banach spaces emphasizing properties of Hilbert spaces and linear operators. Special attention will be given to compact operators and integral equations.
Graduate Studies Eligible: Yes
Prerequisites: MA 366
Corequisites: There are no corequisites for this course.
An introduction to the theory of Banach spaces emphasizing properties of Hilbert spaces and linear operators. Special attention will be given to compact operators and integral equations.
MA 470 Topics in Algebra 4R-0L-4C Arranged
Graduate Studies Eligible: No
Prerequisites: Instructor permission
Corequisites: There are no corequisites for this course.
An advanced topics course in algebra. Topic of the course could be commutative algebra, Galois theory, algebraic geometry, Lie groups and algebras, or other advanced topics in algebra. May be taken more than once provided topics are different.
Graduate Studies Eligible: No
Prerequisites: Instructor permission
Corequisites: There are no corequisites for this course.
An advanced topics course in algebra. Topic of the course could be commutative algebra, Galois theory, algebraic geometry, Lie groups and algebras, or other advanced topics in algebra. May be taken more than once provided topics are different.
MA 471 Linear Algebra II 4R-0L-4C S (even years)
Graduate Studies Eligible: Yes
Prerequisites: MA 371 or MA 373
Corequisites: There are no corequisites for this course.
Continuation of Linear Algebra I. Properties of Hermitian and positive definite matrices and factorization theorems (LU, QR, spectral theorem, SVD). Linear transformations and vector spaces.
Graduate Studies Eligible: Yes
Prerequisites: MA 371 or MA 373
Corequisites: There are no corequisites for this course.
Continuation of Linear Algebra I. Properties of Hermitian and positive definite matrices and factorization theorems (LU, QR, spectral theorem, SVD). Linear transformations and vector spaces.
MA 473 Design & Analysis of Algorithms 4R-0L-4C W
Graduate Studies Eligible: Yes
Prerequisites: CSSE 230, and MA 276, and MA 374
Corequisites: There are no corequisites for this course.
Students study techniques for designing algorithms and for analyzing the time and space efficiency of algorithms. The algorithm design techniques include divide-and-conquer, greedy algorithms, dynamic programming, randomized algorithms and parallel algorithms. The algorithm analysis includes computational models, best/average/worst case analysis, and computational complexity (including lower bounds and NP-completeness). Same as CSSE 473.
Graduate Studies Eligible: Yes
Prerequisites: CSSE 230, and MA 276, and MA 374
Corequisites: There are no corequisites for this course.
Students study techniques for designing algorithms and for analyzing the time and space efficiency of algorithms. The algorithm design techniques include divide-and-conquer, greedy algorithms, dynamic programming, randomized algorithms and parallel algorithms. The algorithm analysis includes computational models, best/average/worst case analysis, and computational complexity (including lower bounds and NP-completeness). Same as CSSE 473.
MA 474 Theory of Computation 4R-0L-4C S
Graduate Studies Eligible: Yes
Prerequisites: CSSE 230, and MA 276, and MA 374
Corequisites: There are no corequisites for this course.
Students study mathematical models by which to answer three questions: What is a computer? What limits exist on what problems computers can solve? What does it mean for a problem to be hard? Topics include models of computation (including Turing machines), undecidability (including the Halting Problem) and computational complexity (including NP-completeness). Same as CSSE 474.
Graduate Studies Eligible: Yes
Prerequisites: CSSE 230, and MA 276, and MA 374
Corequisites: There are no corequisites for this course.
Students study mathematical models by which to answer three questions: What is a computer? What limits exist on what problems computers can solve? What does it mean for a problem to be hard? Topics include models of computation (including Turing machines), undecidability (including the Halting Problem) and computational complexity (including NP-completeness). Same as CSSE 474.
MA 475 Topics in Discrete Mathematics 4R-0L-4C Arranged
Graduate Studies Eligible: No
Prerequisites: MA 276, and MA 374 ; additional prerequisites may be required at the discretion of the instructor
Corequisites: There are no corequisites for this course.
An extension of the material presented in MA 276 and 374. Topics may include combinatorial design, Fibonacci numbers, or the Probabilistic Method, among others. A student may take the course for credit more than once provided the topics are different.
Graduate Studies Eligible: No
Prerequisites: MA 276, and MA 374 ; additional prerequisites may be required at the discretion of the instructor
Corequisites: There are no corequisites for this course.
An extension of the material presented in MA 276 and 374. Topics may include combinatorial design, Fibonacci numbers, or the Probabilistic Method, among others. A student may take the course for credit more than once provided the topics are different.
MA 476 Algebraic Codes 4R-0L-4C S (odd years)
Graduate Studies Eligible: Yes
Prerequisites: MA 276, and MA 374
Corequisites: There are no corequisites for this course.
Construction and theory of linear and nonlinear error correcting codes. Generator matrices, parity check matrices, and the dual code. Cyclic codes, quadratic residue codes, BCH codes, Reed-Solomon codes, and derived codes. Weight enumeration and information rate of optimum codes.
Graduate Studies Eligible: Yes
Prerequisites: MA 276, and MA 374
Corequisites: There are no corequisites for this course.
Construction and theory of linear and nonlinear error correcting codes. Generator matrices, parity check matrices, and the dual code. Cyclic codes, quadratic residue codes, BCH codes, Reed-Solomon codes, and derived codes. Weight enumeration and information rate of optimum codes.
MA 477 Graph Theory 4R-0L-4C S (even years)
Graduate Studies Eligible: Yes
Prerequisites: MA 276, and MA 374
Corequisites: There are no corequisites for this course.
An introduction to the theory and applications of directed and undirected graphs. Possible topics include the following: Connectivity, subgraphs, graph isomorphism, Euler trails and circuits, planarity and the theorems of Kuratowski and Euler, Hamilton paths and cycles, graph coloring and chromatic polynomials, matchings, trees with applications to searching and coding, and algorithms dealing with minimal spanning trees, articulation points, and transport networks
Graduate Studies Eligible: Yes
Prerequisites: MA 276, and MA 374
Corequisites: There are no corequisites for this course.
An introduction to the theory and applications of directed and undirected graphs. Possible topics include the following: Connectivity, subgraphs, graph isomorphism, Euler trails and circuits, planarity and the theorems of Kuratowski and Euler, Hamilton paths and cycles, graph coloring and chromatic polynomials, matchings, trees with applications to searching and coding, and algorithms dealing with minimal spanning trees, articulation points, and transport networks
MA 478 Topics in Number Theory 4R-0L-4C Arranged
Graduate Studies Eligible: No
Prerequisites: MA 378 or MA 374 or consent of the instructor
Corequisites: There are no corequisites for this course.
Advanced topics in Number Theory. Topics may include elliptic curve cryptography, the Fermat-Wiles Theorem, elliptic curves, modular forms, p-adic numbers, Galois theory, diophantine approximations, analytic number theory, algebraic number theory. A student may take the course for credit more than once provided the topics are different.
Graduate Studies Eligible: No
Prerequisites: MA 378 or MA 374 or consent of the instructor
Corequisites: There are no corequisites for this course.
Advanced topics in Number Theory. Topics may include elliptic curve cryptography, the Fermat-Wiles Theorem, elliptic curves, modular forms, p-adic numbers, Galois theory, diophantine approximations, analytic number theory, algebraic number theory. A student may take the course for credit more than once provided the topics are different.
MA 479 Cryptography 4R-0L-4C S
Graduate Studies Eligible: Yes
Prerequisites: CSSE 220, and MA 276
Corequisites: There are no corequisites for this course.
Introduction to basic ideas of modern cryptography with emphasis on mathematical background and practical implementation. Topics include: the history of cryptography and cryptanalysis, public and private key cryptography, digital signatures, and limitations of modern cryptography. Touches upon some of the societal issues of cryptography (same as CSSE 479)
Graduate Studies Eligible: Yes
Prerequisites: CSSE 220, and MA 276
Corequisites: There are no corequisites for this course.
Introduction to basic ideas of modern cryptography with emphasis on mathematical background and practical implementation. Topics include: the history of cryptography and cryptanalysis, public and private key cryptography, digital signatures, and limitations of modern cryptography. Touches upon some of the societal issues of cryptography (same as CSSE 479)
MA 480 Topics in Probability or Statistics 4R-0L-4C Arranged
Graduate Studies Eligible: No
Prerequisites: Instructor permission
Corequisites: There are no corequisites for this course.
An advanced course in probability or statistics. Possible topics include (but are not restricted to) reliability, discrete event simulation, multivariate statistics, Bayesian statistics, actuarial science, nonparametric statistics, categorical data analysis, and time series analysis. May be taken more than once provided topics are different.
Graduate Studies Eligible: No
Prerequisites: Instructor permission
Corequisites: There are no corequisites for this course.
An advanced course in probability or statistics. Possible topics include (but are not restricted to) reliability, discrete event simulation, multivariate statistics, Bayesian statistics, actuarial science, nonparametric statistics, categorical data analysis, and time series analysis. May be taken more than once provided topics are different.
MA 481 Mathematical Statistics 4R-0L-4C W (even years)
Graduate Studies Eligible: Yes
Prerequisites: MA 382, or both MA 381 and consent of instructor
Corequisites: There are no corequisites for this course.
An introduction to mathematical statistics. Review of distributions of functions of random variables. Moment generating functions. Limiting distributions. Point estimation and sufficient statistics. Fisher information and Rao-Cramer inequality. Theory of statistical tests.
Graduate Studies Eligible: Yes
Prerequisites: MA 382, or both MA 381 and consent of instructor
Corequisites: There are no corequisites for this course.
An introduction to mathematical statistics. Review of distributions of functions of random variables. Moment generating functions. Limiting distributions. Point estimation and sufficient statistics. Fisher information and Rao-Cramer inequality. Theory of statistical tests.
MA 482 Biostatistics 4R-0L-4C S
Graduate Studies Eligible: No
Prerequisites: MA 223 or MA 382
Corequisites: There are no corequisites for this course.
This course introduces statistical techniques for addressing the challenges that arise in the analysis of data from the biological sciences (including biology, biomedical engineering, and the medical community). Topics include linear regression modeling, nonlinear regression, repeated measures analysis (including mixed models), and survival/reliability analysis (analysis of time-to-event data). Flexible modeling strategies including relaxing linearity and distributional assumptions are discussed. Additional topics are introduced when discussing articles found in the literature, including properties of study design, power, meta-analysis, missing data, and causal inference. No prerequisite knowledge of biology is assumed. Review of fundamental prerequisite statistics will be included as necessary.
Graduate Studies Eligible: No
Prerequisites: MA 223 or MA 382
Corequisites: There are no corequisites for this course.
This course introduces statistical techniques for addressing the challenges that arise in the analysis of data from the biological sciences (including biology, biomedical engineering, and the medical community). Topics include linear regression modeling, nonlinear regression, repeated measures analysis (including mixed models), and survival/reliability analysis (analysis of time-to-event data). Flexible modeling strategies including relaxing linearity and distributional assumptions are discussed. Additional topics are introduced when discussing articles found in the literature, including properties of study design, power, meta-analysis, missing data, and causal inference. No prerequisite knowledge of biology is assumed. Review of fundamental prerequisite statistics will be included as necessary.
MA 483 Bayesian Data Analysis 4R-0L-4C W (Odd years)
Graduate Studies Eligible: Yes
Prerequisites: MA 381
Corequisites: There are no corequisites for this course.
This course offers an introduction to statistical inference under the Bayesian framework in addition to elements of basic study design. Building from Bayes' Rule for probability computations, we develop a framework of estimation, hypothesis testing and prediction. Topics include the construction of prior distributions to quantify a priori beliefs about unknown parameters, modeling available data, and using data to update beliefs about parameters. Applications include inference for a single response, comparing groups, and regression models; modern applications will be covered, time permitting. The course will make use of heavy use of computational tools for Bayesian inference, including Markov Chain Monte Carlo (MCMC) methods.
Graduate Studies Eligible: Yes
Prerequisites: MA 381
Corequisites: There are no corequisites for this course.
This course offers an introduction to statistical inference under the Bayesian framework in addition to elements of basic study design. Building from Bayes' Rule for probability computations, we develop a framework of estimation, hypothesis testing and prediction. Topics include the construction of prior distributions to quantify a priori beliefs about unknown parameters, modeling available data, and using data to update beliefs about parameters. Applications include inference for a single response, comparing groups, and regression models; modern applications will be covered, time permitting. The course will make use of heavy use of computational tools for Bayesian inference, including Markov Chain Monte Carlo (MCMC) methods.
MA 485 Applied Linear Regression 4R-0L-4C W (odd years)
Graduate Studies Eligible: Yes
Prerequisites: MA 221, and either MA 223 or MA 382
Corequisites: There are no corequisites for this course.
This is an applied course in multiple linear regression. The techniques presented, all with respect to linear models, develop skills in selecting an appropriate model and performing statistical inference. The use of data from a variety of fields helps demonstrate method implementation and the communication of results in practice. A statistical programming language aids in creating reproducible analysis results.
Graduate Studies Eligible: Yes
Prerequisites: MA 221, and either MA 223 or MA 382
Corequisites: There are no corequisites for this course.
This is an applied course in multiple linear regression. The techniques presented, all with respect to linear models, develop skills in selecting an appropriate model and performing statistical inference. The use of data from a variety of fields helps demonstrate method implementation and the communication of results in practice. A statistical programming language aids in creating reproducible analysis results.
MA 487 Design of Experiments 4R-0L-4C W (even years)
Graduate Studies Eligible: Yes
Prerequisites: MA 223 or MA 382
Corequisites: There are no corequisites for this course.
This is an applied course in design of experiments. Emphasis is placed on designing statistical studies to solve problems in engineering and science. A variety of designs are presented, including the full factorial, screening, response surface, and split plot. It is demonstrated how constraints on the randomization process due to the design are related to the appropriate analysis method and meaning of the results. Statistical software is used for data analysis throughout.
Graduate Studies Eligible: Yes
Prerequisites: MA 223 or MA 382
Corequisites: There are no corequisites for this course.
This is an applied course in design of experiments. Emphasis is placed on designing statistical studies to solve problems in engineering and science. A variety of designs are presented, including the full factorial, screening, response surface, and split plot. It is demonstrated how constraints on the randomization process due to the design are related to the appropriate analysis method and meaning of the results. Statistical software is used for data analysis throughout.
MA 490 Topics in Mathematics Variable credit
Graduate Studies Eligible: No
Prerequisites: Consent of instructor
Corequisites: There are no corequisites for this course.
This course will cover advanced topics in mathematics not offered in listed courses.
Graduate Studies Eligible: No
Prerequisites: Consent of instructor
Corequisites: There are no corequisites for this course.
This course will cover advanced topics in mathematics not offered in listed courses.
MA 491 Introduction to Mathematical Modeling 2C F
Graduate Studies Eligible: No
Prerequisites: Senior Standing or permission of the instructor
Corequisites: There are no corequisites for this course.
An introduction to the process of mathematically modeling a problem, including data collection, defining the appropriate mathematical model and interpreting the results of the proposed model. Emphasis placed on the modeling process, using examples from both continuous and discrete mathematics.
Graduate Studies Eligible: No
Prerequisites: Senior Standing or permission of the instructor
Corequisites: There are no corequisites for this course.
An introduction to the process of mathematically modeling a problem, including data collection, defining the appropriate mathematical model and interpreting the results of the proposed model. Emphasis placed on the modeling process, using examples from both continuous and discrete mathematics.
MA 495 Research Project in Mathematics Variable Credit
Graduate Studies Eligible: No
Prerequisites: Consent of instructor
Corequisites: There are no corequisites for this course.
An undergraduate research project in mathematics or the application of mathematics to other areas. Students may work independently or in teams as determined by the instructor. Though the instructor will offer appropriate guidance in the conduct of the research, students will be expected to perform independent work and collaborative work if on a team. The course may be taken more than once provided that the research or project is different.
Graduate Studies Eligible: No
Prerequisites: Consent of instructor
Corequisites: There are no corequisites for this course.
An undergraduate research project in mathematics or the application of mathematics to other areas. Students may work independently or in teams as determined by the instructor. Though the instructor will offer appropriate guidance in the conduct of the research, students will be expected to perform independent work and collaborative work if on a team. The course may be taken more than once provided that the research or project is different.
MA 496 Senior Capstone I 2C or 4C See Department
Graduate Studies Eligible: No
Prerequisites: Senior Standing or permission of the instructor
Corequisites: There are no corequisites for this course.
Individual study and research of a topic in mathematics. Topic is expected to be at an advanced level.
Graduate Studies Eligible: No
Prerequisites: Senior Standing or permission of the instructor
Corequisites: There are no corequisites for this course.
Individual study and research of a topic in mathematics. Topic is expected to be at an advanced level.
MA 497 Senior Capstone II 2C See Department
Graduate Studies Eligible: No
Prerequisites: MA 496 or permission of instructor
Corequisites: There are no corequisites for this course.
Individual study and research of a topic in mathematics. Topic is expected to be at an advanced level.
Graduate Studies Eligible: No
Prerequisites: MA 496 or permission of instructor
Corequisites: There are no corequisites for this course.
Individual study and research of a topic in mathematics. Topic is expected to be at an advanced level.
MA 498 Senior Capstone III 2C See Department
Graduate Studies Eligible: No
Prerequisites: MA 497 or permission of instructor
Corequisites: There are no corequisites for this course.
Individual study and research of a topic in mathematics. Topic is expected to be at an advanced level.
Graduate Studies Eligible: No
Prerequisites: MA 497 or permission of instructor
Corequisites: There are no corequisites for this course.
Individual study and research of a topic in mathematics. Topic is expected to be at an advanced level.
MA 538 Advanced Engineering Mathematics 4R-0L-4C W
Graduate Studies Eligible: No
Prerequisites: Graduate standing
Corequisites: There are no corequisites for this course.
A fast-paced course in advanced applied mathematics for graduate-level engineering students. Applied linear algebra, including abstract vector spaces, linear operators, eigentheory, diagonalization, and the matrix exponential; review of partial differentiation and multiple integration, including Lagrange multipliers and other optimization topics; vector analysis, including the Jacobian matrix, the del operator in standard coordinate systems, and line integrals; and Fourier series with application to the solution of partial differential equation boundary value problems. Students may not receive credit for both MA438 and MA538.
Graduate Studies Eligible: No
Prerequisites: Graduate standing
Corequisites: There are no corequisites for this course.
A fast-paced course in advanced applied mathematics for graduate-level engineering students. Applied linear algebra, including abstract vector spaces, linear operators, eigentheory, diagonalization, and the matrix exponential; review of partial differentiation and multiple integration, including Lagrange multipliers and other optimization topics; vector analysis, including the Jacobian matrix, the del operator in standard coordinate systems, and line integrals; and Fourier series with application to the solution of partial differential equation boundary value problems. Students may not receive credit for both MA438 and MA538.
MA 580 Topics in Advanced Probability Theory & Its Applications 4R-0L-4C Arranged
Graduate Studies Eligible: No
Prerequisites: MA 381
Corequisites: There are no corequisites for this course.
Advanced topics in probability theory as well as applications that are not offered in the listed courses.
Graduate Studies Eligible: No
Prerequisites: MA 381
Corequisites: There are no corequisites for this course.
Advanced topics in probability theory as well as applications that are not offered in the listed courses.
MA 581 Topics in Advanced Statistics 4R-0L-4C Arranged
Graduate Studies Eligible: No
Prerequisites: MA 223 or MA 381 and Consent of instructor
Corequisites: There are no corequisites for this course.
This course will cover advanced topics in mathematical statistics as well as applied statistics that are not offered in the listed courses.
Graduate Studies Eligible: No
Prerequisites: MA 223 or MA 381 and Consent of instructor
Corequisites: There are no corequisites for this course.
This course will cover advanced topics in mathematical statistics as well as applied statistics that are not offered in the listed courses.
MA 590 Graduate Topics in Mathematics Variable Credit
Graduate Studies Eligible: No
Prerequisites: Consent of instructor
Corequisites: There are no corequisites for this course.
This course will cover graduate-level topics in mathematics not offered in listed courses.
Graduate Studies Eligible: No
Prerequisites: Consent of instructor
Corequisites: There are no corequisites for this course.
This course will cover graduate-level topics in mathematics not offered in listed courses.