Course studying students under JNTUA, I year II semester
summarize the basic concepts of data science and its importance in engineering ● analyze the data quantitatively or categorically , measure of averages, variability ● adopt correlation methods and principle of least squares, regression analysis
define the terms trial, events, sample space, probability, and laws of probability ● make use of probabilities of events in finite sample spaces from experiments ● apply Baye’s theorem to real time problems ● explain the notion of random variable, distribution functions and expected value
apply Binomial and Poisson distributions for real data to compute probabilities, theoretical frequencies ● interpret the properties of normal distribution and its applications
explain the concept of estimation, interval estimation and confidence intervals ● apply the concept of hypothesis testing for large samples
apply the concept of testing hypothesis for small samples to draw the inferences ● estimate the goodness of fit
make use of the concepts of probability and their applications ● apply discrete and continuous probability distributions ● classify the concepts of data science and its importance ● interpret the association of characteristics and through correlation and regression tools ● design the components of a classical hypothesis test ● infer the statistical inferential methods based on small and large sampling tests