Timeroom: Fall 2024

Displaying 2871 - 2880 of 4556 Results for: %20Subject = HDFS
Durham   Engineering&Physical Sciences :: Mathematics&Statistics

MATH 832 (01) - Introduction to the R Software

Intro to the R Software

Credits: 1.0
Term: Fall 2024 - Full Term (08/26/2024 - 12/09/2024)
Grade Mode: Graduate Credit/Fail grading
Class Size:   5  
CRN: 16964
This course provides a basic introduction to the open-sources statistical software R for students who have never used this software or have never formally learned the basics of it. Topics include: Numeric calculations, simple and advanced graphics, object management and work-flow, RStudio, user-contributed packages, basic programming, writing of functions, statistical modeling and related graphs, distributed computing, reproducible research and document production via markup language.
Registration Approval Required. Contact Instructor or Academic Department for permission then register through Webcat.
Equivalent(s): MATH 859
Cross listed with : MATH 732.01
Instructors: Sanam Sanei
Start Date End Date Days Time Location
8/26/2024 12/9/2024 W 4:10pm - 5:00pm KING N345
Durham   Engineering&Physical Sciences :: Mathematics&Statistics

MATH 834 (01) - Statistical Computing

Statistical Computing

Credits: 3.0
Term: Fall 2024 - Full Term (08/26/2024 - 12/09/2024)
Grade Mode: Letter Grading
Class Size:   5  
CRN: 13617
This is a course on statistics-oriented programming and common computational methodologies used in statistics. Students will learn principles and techniques of sample-splitting, cross-validation, simulation, bootstrap, and optimization, and how to implement them in R. The students will gain experience of reading/modifying, writing and debugging code, and how to speed up computation.
Registration Approval Required. Contact Instructor or Academic Department for permission then register through Webcat.
Prerequisite(s): MATH 835 with minimum grade of B- or MATH 838 with minimum grade of B- or MATH 839 with minimum grade of B-
Cross listed with : MATH 734.01
Instructors: Qi Zhang
Start Date End Date Days Time Location
8/26/2024 12/9/2024 MWF 11:10am - 12:30pm MURK G01
Durham   Engineering&Physical Sciences :: Mathematics&Statistics

MATH 834 (02) - Statistical Computing

Statistical Computing

Online Course Delivery Method: Online Synchronous
Credits: 3.0
Term: Fall 2024 - Full Term (08/26/2024 - 12/09/2024)
Grade Mode: Letter Grading
Class Size:   5  
CRN: 13618
This is a course on statistics-oriented programming and common computational methodologies used in statistics. Students will learn principles and techniques of sample-splitting, cross-validation, simulation, bootstrap, and optimization, and how to implement them in R. The students will gain experience of reading/modifying, writing and debugging code, and how to speed up computation.
Registration Approval Required. Contact Instructor or Academic Department for permission then register through Webcat.
Prerequisite(s): MATH 835 with minimum grade of B- or MATH 838 with minimum grade of B- or MATH 839 with minimum grade of B-
Cross listed with : MATH 734.02
Instructors: Qi Zhang
Start Date End Date Days Time Location
8/26/2024 12/9/2024 MWF 11:10am - 12:30pm ONLINE
Durham   Engineering&Physical Sciences :: Mathematics&Statistics

MATH 835 (01) - Statistical Methods for Research

Statistical Mthds for Research

Credits: 3.0
Term: Fall 2024 - Full Term (08/26/2024 - 12/09/2024)
Grade Mode: Letter Grading
Class Size:   10  
CRN: 10522
This course provides a solid grounding in modern applications of statistics to a wide range of disciplines by providing an overview of the fundamental concepts of statistical inference and analysis, including t-tests and confidence intervals. Additional topics include: ANOVA, multiple linear regression, analysis of cross classified categorical data, logistic regression, nonparametric statistics and data mining using CART. The use of statistical software, such as JMP. S PLUS, or R, is fully integrated into the course.
Registration Approval Required. Contact Instructor or Academic Department for permission then register through Webcat.
Instructors: Qi Zhang
Start Date End Date Days Time Location
8/26/2024 12/9/2024 MW 9:40am - 11:00am HAALND 105
Durham   Engineering&Physical Sciences :: Mathematics&Statistics

MATH 835 (02) - Statistical Methods for Research

Statistical Mthds for Research

Online Course Delivery Method: Online Synchronous
Credits: 3.0
Term: Fall 2024 - Full Term (08/26/2024 - 12/09/2024)
Grade Mode: Letter Grading
Class Size:   5  
CRN: 12906
This course provides a solid grounding in modern applications of statistics to a wide range of disciplines by providing an overview of the fundamental concepts of statistical inference and analysis, including t-tests and confidence intervals. Additional topics include: ANOVA, multiple linear regression, analysis of cross classified categorical data, logistic regression, nonparametric statistics and data mining using CART. The use of statistical software, such as JMP. S PLUS, or R, is fully integrated into the course.
Registration Approval Required. Contact Instructor or Academic Department for permission then register through Webcat.
Instructors: Qi Zhang
Start Date End Date Days Time Location
8/26/2024 12/9/2024 MW 9:40am - 11:00am ONLINE
Durham   Engineering&Physical Sciences :: Mathematics&Statistics

MATH 837 (01) - Statistical Methods for Quality Improvement and Design

Stat Methods for QI & Design

Online Course Delivery Method: Online Asynchronous
Credits: 3.0
Term: Fall 2024 - Full Term (08/26/2024 - 12/09/2024)
Grade Mode: Letter Grading
Class Size:   15  
CRN: 11773
Six Sigma is a popular, data-focused methodology used worldwide by organizations to achieve continuous improvement of their existing processes, products and services or to design new ones. This course provides a thorough introduction to the Six Sigma principles, methods, and applications for continuous improvement (DMAIC process) and an overview of Design for Six Sigma (DFSS). Both manufacturing and non-manufacturing (transactional Six Sigma) applications will be included. Emphasis is placed on the use of case studies to motivate the use of, as well as the proper application of, the Six Sigma methodology. Formal Six Sigma Green Belt certification from UNH may be attained by successfully completing TECH 696. Students must have completed a calculus-based introductory statistics course.
Registration Approval Required. Contact Instructor or Academic Department for permission then register through Webcat.
Cross listed with : MATH 737.01
Instructors: Philip Ramsey
Start Date End Date Days Time Location
8/26/2024 12/9/2024 Hours Arranged ONLINE
Durham   Engineering&Physical Sciences :: Mathematics&Statistics

MATH 839 (01) - Applied Regression Analysis

Applied Regression Analysis

Credits: 3.0
Term: Fall 2024 - Full Term (08/26/2024 - 12/09/2024)
Grade Mode: Letter Grading
Class Size:   10  
CRN: 10215
Statistical methods for the analysis of relationships between response and input variables: simple linear regression, multiple regression analysis, residual analysis model selection, multi-collinearity, nonlinear curve fitting, categorical predictors, introduction to analysis of variance, analysis of covariance, examination of validity of underlying assumptions, logistic regression analysis. Emphasizes real applications with use of statistical software. Students must have completed an introductory statistics course.
Registration Approval Required. Contact Instructor or Academic Department for permission then register through Webcat.
Cross listed with : MATH 739.01
Instructors: Pei Geng
Start Date End Date Days Time Location
8/26/2024 12/9/2024 MWF 8:10am - 9:30am KING S320
Durham   Engineering&Physical Sciences :: Mathematics&Statistics

MATH 839 (02) - Applied Regression Analysis

Applied Regression Analysis

Online Course Delivery Method: Online Synchronous
Credits: 3.0
Term: Fall 2024 - Full Term (08/26/2024 - 12/09/2024)
Grade Mode: Letter Grading
Class Size:   5  
CRN: 12907
Statistical methods for the analysis of relationships between response and input variables: simple linear regression, multiple regression analysis, residual analysis model selection, multi-collinearity, nonlinear curve fitting, categorical predictors, introduction to analysis of variance, analysis of covariance, examination of validity of underlying assumptions, logistic regression analysis. Emphasizes real applications with use of statistical software. Students must have completed an introductory statistics course.
Registration Approval Required. Contact Instructor or Academic Department for permission then register through Webcat.
Cross listed with : MATH 739.02
Instructors: Pei Geng
Start Date End Date Days Time Location
8/26/2024 12/9/2024 MWF 8:10am - 9:30am ONLINE
Durham   Engineering&Physical Sciences :: Mathematics&Statistics

MATH 840 (01) - Design of Experiments I

Design of Experiments I

Online Course Delivery Method: Online Asynchronous
Credits: 3.0
Term: Fall 2024 - Full Term (08/26/2024 - 12/09/2024)
Grade Mode: Letter Grading
Class Size:   15  
CRN: 11194
First course in design of experiments with applications to quality improvement in industrial manufacturing, engineering research and development, or research in physical and biological sciences. Experimental factor identification, statistical analysis and modeling of experimental results, randomization and blocking, full factorial designs, random and mixed effects models, replication and sub-sampling strategies, fractional factorial designs, response surface methods, mixture designs, and screening designs. Focuses on various treatment structures for designed experimentation and the associated statistical analyses. Use of statistical software. Students must have completed an introductory statistics course.
Registration Approval Required. Contact Instructor or Academic Department for permission then register through Webcat.
Cross listed with : MATH 740.01
Instructors: Michelle Capozzoli
Start Date End Date Days Time Location
8/26/2024 12/9/2024 Hours Arranged ONLINE
Durham   Engineering&Physical Sciences :: Mathematics&Statistics

MATH 845 (01) - Foundations of Applied Mathematics I

Foundations of Applied Math

Online Course Delivery Method: Online Synchronous
Credits: 3.0
Term: Fall 2024 - Full Term (08/26/2024 - 12/09/2024)
Grade Mode: Letter Grading
Class Size:   5  
CRN: 10657
An introduction to Partial Differential Equations (PDEs) and associated mathematical methods and the analytical foundation for applied mathematics. Topics include: PDE classification, superposition, separation of variables, orthonormal functions, completeness, convergence, Fourier Series, Sturm-Liouville eigenvalue problems, and eigenfunctions. Methods are introduced for the analysis and solution of boundary value problems, in particular, the Heat, Wave, and Laplace equations. Students are required to have a mastery of differential equations and ordinary differential equations.
Registration Approval Required. Contact Instructor or Academic Department for permission then register through Webcat.
Cross listed with : MATH 745.01
Instructors: Marianna Shubov
Start Date End Date Days Time Location
8/26/2024 12/9/2024 TR 12:40pm - 2:00pm ONLINE