ME3255 - Quantitative Descriptions on Monte Carlo Models
Offered By: Prof. Ryan C. Cooper via YouTube
Course Description
Overview
Explore the fundamentals of Monte Carlo models in this 25-minute lecture by Prof. Ryan C. Cooper. Gain insights into quantitative descriptions and applications of Monte Carlo simulations, a powerful computational technique used in various fields of engineering and science. Learn how these models can be employed to solve complex problems involving uncertainty and randomness, and understand their importance in decision-making processes. Discover the key principles behind Monte Carlo methods, including random sampling, probability distributions, and statistical analysis. Enhance your understanding of this versatile tool for risk assessment, optimization, and predictive modeling in mechanical engineering and related disciplines.
Syllabus
ME3255 - Quantitative descriptions on Monte Carlo models
Taught by
Prof. Ryan C. Cooper
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