Graduate Courses

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Students adhere to the drop and refund policies and deadlines of their home university.
Course Information
Applied Variance Component Estimation

Course Description
This course will extend upon content covered in linear models and genetic prediction, with specific emphasis on estimation of (co)variance components and genetic parameters required to solve mixed models typical in livestock genetics. Upon successful completion of this course, students should have an applied knowledge of approaches used to estimate the G and R submatrices of the mixed model equations. Several tools will be used to demonstrate the models and approaches most commonly used in parameter estimation. Where appropriate, scientific literature that explains their implementation, and some attributes of the solutions obtained will be used. A general knowledge of linear models, matrix algebra, moment statistics, rules of expectation and familiarity with UNIX/Linux Operating Systems will be assumed, including scripting tools such as awk, octave, join, sort, paste, wc, etc. This course will begin in a somewhat historical manner, proceeding on to methods and software currently used for research and field data implementation. Prerequisite: Genetic Prediction
Contacts
Instructor

Scott Speidel
Office: 970-491-5419
scott.speidel@colostate.edu

Campus Coordinator

For course access questions, contact the teaching university’s campus coordinator. For enrollment questions, contact your home university campus coordinator.
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Disability Support Services

To request accommodations for this course, contact the disability support office at your home university. You must register each semester and for each course. Read more about the Great Plains IDEA process for requesting accommodations.


Textbooks

Not Required


Course Access
 
Approximately three weeks before the first day of class at Colorado State University, the CSU campus coordinator, Mary Colasanti, emails course access instructions to students for courses taught by CSU. Using these instructions, students create their Colorado State eID (electronic identity). Students meeting all deadlines for eID creation and submission will have access to RamCT by the first day of class.

Exam Proctor

This course does not require an exam proctor.

Synchronous Components

This course does not include synchronous components.

University Members
Members of the Great Plains IDEA are universities accredited by a regional accrediting agency recognized by the U.S. Department of Education. Member universities recruit, admit and graduate students, teach in an academic program and contribute to the leadership and maintenance of the alliance. Membership in the alliance is a selective process that engages institutional leadership at all levels.

Alison Eddy is a student in the Dietetics program at KUMC.Great Plains IDEA has so many benefits for its students. The ability to continue my education while working full-time and growing my family has been a huge benefit for me. Earning the Student Excellence Award will greatly benefit my family as we begin our lives with our new daughter because we can use it to pay for the rest of my tuition and will not have to budget in finishing my degree.

– – Alison Eddy, Dietetics and Nutrition Master's Degree Student,
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