4- Course Content :-
| Topic | No. of hours | Lecture | Tutorial/Practical | 
| Sample space, probability axioms(Part I). | 3 | 3 | - | 
| Sample space, probability axioms(Part II). | 3 | 3 | - | 
| Sample space, probability axioms(Part III). | 3 | 3 | - | 
| Conditional probability, independence and Bayes' theorem.(Part I). | 3 | 3 | - | 
| Conditional probability, independence and Bayes' theorem.(Part II). | 3 | 3 | - | 
| Random variables; distribution functions, moments and generating function. Some probability distributions(Part I). | 3 | 3 | - | 
| Random variables; distribution functions, moments and generating function. Some probability distributions(Part II). | 3 | 3 | - | 
| Random variables; distribution functions, moments and generating function. Some probability distributions(Part III). | 3 | 3 | - | 
| Random variables; distribution functions, moments and generating function. Some probability distributions(Part V). | 3 | 3 | - | 
| Joint distribution, the Chebychev inequality and the law of large numbers.(Part I). | 3 | 3 | - | 
| Joint distribution, the Chebychev inequality and the law of large numbers.(Part II). | 3 | 3 | - | 
| The central limit theorem and sampling distributions.(Part I). | 3 | 3 | - | 
| The central limit theorem and sampling distributions.(Part II). | 3 | 3 | - | 
| The central limit theorem and sampling distributions.(Part III). | 3 | 3 | - | 
