Nov 24, 2024  
2024-2025 Undergraduate Academic Catalog-June 
    
2024-2025 Undergraduate Academic Catalog-June
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IND 2030 - Applied Statistics for Industrial Engineers

2 lecture hours 2 lab hours 3 credits
Course Description
This course emphasizes the importance and relevance of statistics in the field of Industrial Engineering. The purpose of the course is to further student understanding of applications of statistics in engineering. The course will concentrate on data collection, analysis and inference using statistical methods. State-of-the-art software will be used so that meaningful problems can be addressed. The course will provide instruction in the use of these tools and laboratory time to practice their use while deepening understanding and expertise.
Prereq: MTH 2680  (quarter system prereq: MA 262)
Note: This course is not available to students with credit for MTH 2480 .
This course meets the following Raider Core CLO Requirement: None
Course Learning Outcomes
Upon successful completion of this course, the student will be able to:
  • Describe and utilize basic statistical terminology
  • Utilize inverse cumulative distribution functions as part of statistical analysis and random number generation 
  • Create and utilize graphical tools to visualize data
  • Identify probability distributions
  • Draw inferences from data obtained by testing components and systems, using applicable statistical tests
  • Clearly and concisely define a problem statement from a practical and statistical perspective.
  • Create a coherent hypothesis statement tied to the problem statement
  • Statistically analyze and evaluate the data using probability distributions and make a strongly defendable statistical and practical decision 
  • Explain findings using learned communication skills, both written and verbal  

Prerequisites by Topic
  • Sound understanding of mathematics and probability

Course Topics
  • Minitab or other statistical software (graphical and analytical application)
  • Basic sampling theory
  • Data types (continuous versus discrete, etc.)
  • Measures of central tendency and dispersion
  • Discrete probability distributions: binomial and Poisson, normal approximations of
  • Introduction to the Central Limit Theorem
  • Continuous probability distributions: normal, uniform, gamma/exponential/Weibull, t, chi-square*, and F*
  • One-sample hypothesis testing and statistical inference (normal, binomial, and Poisson)
  • One-sample confidence intervals and statistical inference (normal and proportion)
  • Two-sample confidence intervals and statistical inference
  • Two-sample hypothesis testing and statistical inference (normal and proportion)
  • Sample size calculations
  • One way analysis of variance
  • One way chi-squared testing
  • Medians hypothesis testing for non-normal data

Laboratory Topics
  • A weekly two-hour lab will use defined projects to exercise student skills as defined in the Course Outcomes section

Coordinator
Dr. Douglas Grabenstetter



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