Probabilistic systems analysis: an introduction to probabilistic models, decisions, and applications of random processes
Elementary probability; Engineering applications of probability; Random variables; Expected values; Distribution of functions of Random variables; Applications of Random variables to systems problems; Distributions from data; Estimation; Engineering decisions; Introduction to Random processes; Systems and Random signals.
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ENGINEERING APPLICATIONS OF PROBABILITY
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