YoVDO

Statistical Methods for Scientists and Engineers

Offered By: NIOS via YouTube

Tags

Statistics & Probability Courses Multivariate Analysis Courses Statistical Analysis Courses Statistical Methods Courses Continuous Random Variables Courses

Course Description

Overview

Explore a comprehensive course on statistical methods tailored for scientists and engineers. Delve into both parametric and non-parametric techniques, covering a wide range of topics including multivariate analysis and continuous random variables. Master essential statistical tools through in-depth modules on various non-parametric methods and multivariate analysis techniques. Gain practical knowledge applicable to scientific research and engineering problems over the course of 26 hours. Enhance your ability to analyze complex data sets and make informed decisions based on statistical evidence.

Syllabus

Non parametric Methods - III.
Multivariate Analysis - XI.
Non parametric methods - II.
Multivariate Analysis-III.
Multivariate Analysis - X.
Non parametric methods - I.
Multivariate Analysis-II.
Multivariate Analysis - IX.
Multivariate Analysis-I.
Multivariate Analysis - VIII.
Multivariate Analysis - XII.
Non parametric Methods - VI.
Parametric methods - VII (CH_30).
Multivariate Analysis - VII.
Non parametric Methods - V.
Multivariate Analysis -VI.
Multivariate Analysis-V.
Non parametric Methods - IV.
Multivariate Analysis - IV.
Non parametric Methods - XI.
Non parametric Methods - X.
Non parametric Methods - IX.
Non parametric Methods - VIII.
Non parametric Methods - VII.
Non Parametric Methods - XII.
Non Parametric Methods - XIII.
Continuous random variables and their distributions.


Taught by

Ch 30 NIOS: Gyanamrit

Related Courses

Random Variables & Distributions
Brilliant
Introduction to Probability: Part 1 - The Fundamentals
Massachusetts Institute of Technology via edX
Probabilistic Systems Analysis and Applied Probability
Massachusetts Institute of Technology via MIT OpenCourseWare
頑想學概率:機率二 (Probability (2))
National Taiwan University via Coursera
Probability: Distribution Models & Continuous Random Variables
Purdue University via edX