TM 605: Probability for Telecom Managers

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TM 605: Probability for Telecom Managers School of Business Stevens Institute of Technology M. Daneshmand Mahmoud.Daneshmand@stevens.edu Syllabus, Resources, Lectures Schedule, Office Hours, and Assignments

TM 605: Probability for Telecom Managers Schedule TM 605: Probability for Telecom Managers Stevens Institute of Technology M. Daneshmand Text: Probability and Stochastic Processes: A Friendly Introduction for Electrical and Computer Engineers, 3rd Edition, R. Yates, D. Goodman, John Wiley, January 2014, ©2014 Lecture Slides will be included in CANVAS Introduction , Schedule and Assignments Lecture 1 Set Theory, Probability Definition and Axioms Lecture 2 Tree Diagrams and Counting Lecture 3 Random Variables: Discrete and Continuous Lecture 4 Probability Density and Distribution Functions Lecture 5 Important Discrete and Continuous Distributions Lecture 6

Stevens Institute of Technology Schedule (contd.) TM 605 Stevens Institute of Technology M. Daneshmand Conditional Distributional and R.V. Lecture 7 Multivariate Random Variables and Distributions Lecture 8 Expectations Lecture 9 Sample and Statistical Inference: Estimation Lecture 10 Statistical Inference: Hypothesis Testing Lecture 11 Stochastic Processes Lecture 12 Markova Chains Lecture 13 Poisson Process Lecture 14

Lectures Schedule, Assignments, and Office Hours TM 605 Stevens Institute of Technology Lectures Schedule, Assignments, and Office Hours Homework 20% Mid-term 40% Final 40% Office Hours: Tuesdays 2-3 PM US EST