Modules / Lectures
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Week 3noc22-ma34_week-3
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noc21_ma35_assignment_Week_1noc21_ma35_assignment_Week_1
noc21_ma35_assignment_Week_10noc21_ma35_assignment_Week_10
noc21_ma35_assignment_Week_11noc21_ma35_assignment_Week_11
noc21_ma35_assignment_Week_12noc21_ma35_assignment_Week_12
noc21_ma35_assignment_Week_2noc21_ma35_assignment_Week_2
noc21_ma35_assignment_Week_3noc21_ma35_assignment_Week_3
noc21_ma35_assignment_Week_4noc21_ma35_assignment_Week_4
noc21_ma35_assignment_Week_5noc21_ma35_assignment_Week_5
noc21_ma35_assignment_Week_6noc21_ma35_assignment_Week_6
noc21_ma35_assignment_Week_7noc21_ma35_assignment_Week_7
noc21_ma35_assignment_Week_8noc21_ma35_assignment_Week_8
noc21_ma35_assignment_Week_9noc21_ma35_assignment_Week_9


Sl.No Chapter Name MP4 Download
1Lecture 01: Data Science- Why, What, and How? Download
2Lecture 02: Installation and Working with RDownload
3Lecture 03: Installation and Working with R Studio Download
4Lecture 04: Calculations with R as a Calculator Download
5Lecture 05: Calculations with Data Vectors Download
6Lecture 06: Built-in Commands and Bivariate Plots Download
7Lecture 07: Logical Operators and Selection of Sample Download
8Lecture 8: Introduction to Probability Download
9Lecture 9: Sample Space and Events Download
10Lecture 10: Set Theory and Events using Venn Diagrams Download
11Lecture 11: Relative Frequency and Probability Download
12Lecture 12: Probability and Relative Frequency - An Example Download
13Lecture 13: Axiomatic Definition of Probability Download
14Lecture 14: Some Rules of Probability Download
15Lecture 15: Basic Principles of Counting- Ordered Set, Unordered Set, and Permutations Download
16Lecture 16: Basic Principles of Counting- Combination Download
17Lecture 17: Conditional Probability Download
18Lecture 18: Multiplication Theorem of Probability Download
19Lecture 19: Bayes' Theorem Download
20Lecture 20: Independent Events Download
21Lecture 21: Computation of Probability using R Download
22Lecture 22: Random Variables - Discrete and Continuous Download
23Lecture 23: Cumulative Distribution and Probability Density Function Download
24Lecture 24: Discrete Random Variables, Probability Mass Function and Cumulative Distribution Function Download
25Lecture 25: Expectation of Variables Download
26Lecture 26: Moments and Variance Download
27Lecture 27: Data Based Moments and Variance in R Software Download
28Lecture 28: Skewness and Kurtosis Download
29Lecture 29: Quantiles and Tschebyschev’s Inequality Download
30Lecture 30: Degenerate and Discrete Uniform Distributions Download
31Lecture 31: Discrete Uniform Distribution in R Download
32Lecture 32: Bernoulli and Binomial Distribution Download
33Lecture 33: Binomial Distribution in R Download
34Lecture 34: Poisson Distribution Download
35Lecture 35: Poisson Distribution in R Download
36Lecture 36: Geometric Distribution Download
37Lecture 37: Geometric Distribution in R Download
38Lecture 38: Continuous Random Variables and Uniform Distribution Download
39Lecture 39: Normal Distribution Download
40Lecture 40: Normal Distribution in R Download
41Lecture 41: Normal Distribution – More Results Download
42Lecture 42: Exponential Distribution Download
43Lecture 43: Bivariate Probability Distribution for Discrete Random Variables Download
44Lecture 44: Bivariate Probability Distribution in R Software Download
45Lecture 45: Bivariate Probability Distribution for Continuous Random Variables Download
46Lecture 46: Examples in Bivariate Probability Distribution Functions Download
47Lecture 47: Covariance and Correlation Download
48Lecture 48: Covariance and Correlation ‐ Examples and R Software Download
49Lecture 49: Bivariate Normal Distribution Download
50Lecture 50: Chi square Distribution Download
51Lecture 51: t - Distribution Download
52Lecture 52: F - Distribution Download
53Lecture 53: Distribution of Sample Mean, Convergence in Probability and Weak Law of Large Numbers Download
54Lecture 54: Central Limit Theorem Download
55Lecture 55: Needs for Drawing Statistical Inferences Download
56Lecture 56: Unbiased Estimators Download
57Lecture 57: Efficiency of Estimators Download
58Lecture 58: Cram?©r‚ÄìRao Lower Bound and Efficiency of EstimatorsDownload
59Lecture 59: Consistency and Sufficiency of EstimatorsDownload
60Lecture 60: Method of MomentsDownload
61Lecture 61: Method of Maximum Likelihood and Rao Blackwell TheoremDownload
62Lecture 62: Basic Concepts of Confidence Interval EstimationDownload
63Lecture 63: Confidence Interval for Mean in One Sample with Known VarianceDownload
64Lecture 64: Confidence Interval for Mean and VarianceDownload
65Lecture 65: Basics of Tests of Hypothesis and Decision RulesDownload
66Lecture 66: Test Procedures for One Sample Test for Mean with Known VarianceDownload
67Lecture 67: One Sample Test for Mean with Unknown VarianceDownload
68Lecture 68: Two Sample Test for Mean with Known and Unknown VariancesDownload
69Lecture 69: Test of Hypothesis for Variance in One and Two SamplesDownload

Sl.No Chapter Name English
1Lecture 01: Data Science- Why, What, and How? Download
Verified
2Lecture 02: Installation and Working with RDownload
Verified
3Lecture 03: Installation and Working with R Studio Download
Verified
4Lecture 04: Calculations with R as a Calculator Download
Verified
5Lecture 05: Calculations with Data Vectors Download
Verified
6Lecture 06: Built-in Commands and Bivariate Plots Download
Verified
7Lecture 07: Logical Operators and Selection of Sample Download
Verified
8Lecture 8: Introduction to Probability Download
Verified
9Lecture 9: Sample Space and Events Download
Verified
10Lecture 10: Set Theory and Events using Venn Diagrams Download
Verified
11Lecture 11: Relative Frequency and Probability Download
Verified
12Lecture 12: Probability and Relative Frequency - An Example Download
Verified
13Lecture 13: Axiomatic Definition of Probability Download
Verified
14Lecture 14: Some Rules of Probability Download
Verified
15Lecture 15: Basic Principles of Counting- Ordered Set, Unordered Set, and Permutations Download
Verified
16Lecture 16: Basic Principles of Counting- Combination Download
Verified
17Lecture 17: Conditional Probability Download
Verified
18Lecture 18: Multiplication Theorem of Probability Download
Verified
19Lecture 19: Bayes' Theorem Download
Verified
20Lecture 20: Independent Events Download
Verified
21Lecture 21: Computation of Probability using R Download
Verified
22Lecture 22: Random Variables - Discrete and Continuous Download
Verified
23Lecture 23: Cumulative Distribution and Probability Density Function Download
Verified
24Lecture 24: Discrete Random Variables, Probability Mass Function and Cumulative Distribution Function Download
Verified
25Lecture 25: Expectation of Variables Download
Verified
26Lecture 26: Moments and Variance Download
Verified
27Lecture 27: Data Based Moments and Variance in R Software Download
Verified
28Lecture 28: Skewness and Kurtosis Download
Verified
29Lecture 29: Quantiles and Tschebyschev’s Inequality Download
Verified
30Lecture 30: Degenerate and Discrete Uniform Distributions Download
Verified
31Lecture 31: Discrete Uniform Distribution in R Download
Verified
32Lecture 32: Bernoulli and Binomial Distribution Download
Verified
33Lecture 33: Binomial Distribution in R Download
Verified
34Lecture 34: Poisson Distribution Download
Verified
35Lecture 35: Poisson Distribution in R Download
Verified
36Lecture 36: Geometric Distribution Download
Verified
37Lecture 37: Geometric Distribution in R Download
Verified
38Lecture 38: Continuous Random Variables and Uniform Distribution PDF unavailable
39Lecture 39: Normal Distribution PDF unavailable
40Lecture 40: Normal Distribution in R PDF unavailable
41Lecture 41: Normal Distribution – More Results Download
Verified
42Lecture 42: Exponential Distribution Download
Verified
43Lecture 43: Bivariate Probability Distribution for Discrete Random Variables Download
Verified
44Lecture 44: Bivariate Probability Distribution in R Software Download
Verified
45Lecture 45: Bivariate Probability Distribution for Continuous Random Variables PDF unavailable
46Lecture 46: Examples in Bivariate Probability Distribution Functions Download
Verified
47Lecture 47: Covariance and Correlation Download
Verified
48Lecture 48: Covariance and Correlation ‐ Examples and R Software Download
Verified
49Lecture 49: Bivariate Normal Distribution Download
Verified
50Lecture 50: Chi square Distribution Download
Verified
51Lecture 51: t - Distribution Download
Verified
52Lecture 52: F - Distribution Download
Verified
53Lecture 53: Distribution of Sample Mean, Convergence in Probability and Weak Law of Large Numbers Download
Verified
54Lecture 54: Central Limit Theorem Download
Verified
55Lecture 55: Needs for Drawing Statistical Inferences Download
Verified
56Lecture 56: Unbiased Estimators Download
Verified
57Lecture 57: Efficiency of Estimators Download
Verified
58Lecture 58: Cram?©r‚ÄìRao Lower Bound and Efficiency of EstimatorsDownload
Verified
59Lecture 59: Consistency and Sufficiency of EstimatorsDownload
Verified
60Lecture 60: Method of MomentsDownload
Verified
61Lecture 61: Method of Maximum Likelihood and Rao Blackwell TheoremDownload
Verified
62Lecture 62: Basic Concepts of Confidence Interval EstimationDownload
Verified
63Lecture 63: Confidence Interval for Mean in One Sample with Known VarianceDownload
Verified
64Lecture 64: Confidence Interval for Mean and VarianceDownload
Verified
65Lecture 65: Basics of Tests of Hypothesis and Decision RulesDownload
Verified
66Lecture 66: Test Procedures for One Sample Test for Mean with Known VarianceDownload
Verified
67Lecture 67: One Sample Test for Mean with Unknown VarianceDownload
Verified
68Lecture 68: Two Sample Test for Mean with Known and Unknown VariancesDownload
Verified
69Lecture 69: Test of Hypothesis for Variance in One and Two SamplesDownload
Verified


Sl.No Language Book link
1EnglishDownload
2BengaliNot Available
3GujaratiNot Available
4HindiNot Available
5KannadaNot Available
6MalayalamNot Available
7MarathiNot Available
8TamilNot Available
9TeluguNot Available