Skills you will learn

  • Scalars, matrices, and tensors
  • Basics of statistics
  • Understanding and interpreting data
  • Descriptive statistics
  • Probability concepts
  • Data visualization
  • Probability distributions
  • Sampling techniques
  • Inferential statistics
  • Relationship between variables
  • Business applications of statistics

Who should learn

  • Beginners in data science
  • Students
  • Aspiring data analysts
  • Business analysts
  • Beginners

What you will learn

  • Free Linear Algebra Online Course with Certificate

    • Lesson 01: Course Introduction

      06:48
      • 1.01 Course Introduction
        06:48
    • Lesson 02: Introduction to Scalars, Matrices and Tensors

      18:45
      • 2.01 Introduction to Linear Algebra and Scalars
        01:16
      • 2.02 Vectors
        05:31
      • 2.03 Matrix
        07:06
      • 2.04 Inverse of a matrix
        02:29
      • 2.05 Tensors
        02:23
      • 2.06 Introduction to Scalars, Matrices and Tensors I
      • 2.07 Introduction to Scalars, Matrices and Tensors II
    • Lesson 03: Introduction to Statistics

      44:18
      • 3.01 Introduction to Statistics
        04:40
      • 3.02 Why Statistics
        04:38
      • 3.03 Types of Statistics Descriptive Statistics
        02:51
      • 3.04 Inferential Statistics
        04:43
      • 3.05 Predictive Statistics
        02:42
      • 3.06 Importance of Statistical Concepts in Data Science Part 1
        03:07
      • 3.07 Importance of Statistical Concepts in Data Science Part 2
        07:19
      • 3.08 Importance of Statistical Techniques
        03:14
      • 3.09 Why Statistics Is Vital for Business Success​
        05:28
      • 3.10 Case Studies of Statistics Use in Business
        05:36
      • 3.11 Introduction to Statistics I
      • 3.12 Introduction to Statistics II
    • Lesson 04: Understanding the Data

      38:32
      • 4.01 Types of Data in Business Contexts
        04:52
      • 4.02 Data Classification
        02:23
      • 4.03 Data Collection and Its States
        04:02
      • 4.04 Types of Data
        04:51
      • 4.05 Structured vs Unstructured Data
        02:27
      • 4.06 Key Sources of Data
        07:07
      • 4.07 Data Quality Issues
        06:10
      • 4.08 Demo Understanding Data Part 1
        03:26
      • 4.09 Demo Understanding Data Part 2
        03:14
      • 4.10 Understanding the Data I
      • 4.11 Understanding the Data II
    • Lesson 05: Descriptive Statistics

      50:18
      • 5.01 Descriptive Statistics Data for Business
        01:15
      • 5.02 Central Tendency
        01:32
      • 5.03 Significance of Central Tendency
        02:47
      • 5.04 Mean
        01:46
      • 5.05 Median
        05:04
      • 5.06 Mode
        00:26
      • 5.07 Measures of Dispersion
        01:02
      • 5.08 Range
        03:46
      • 5.09 Outliers and Distortion of Mean
        03:29
      • 5.10 Mean Absolute Deviation Standard Deviation and Variance
        05:25
      • 5.11 Z Score or Standard Score and Empirical Rule
        03:45
      • 5.12 Coefficient of Variation and Its Application
        03:46
      • 5.13 Measures of Shape
        05:14
      • 5.14 Case Study Descriptive Statistics
        05:05
      • 5.15 Demo Descriptive Statistics
        05:56
      • 5.16 Descriptive Statistics Branching Scenario Central Tendency
      • 5.17 Descriptive Statistics Branching Scenario Dispersion
    • Lesson 06: Data Visualization

      39:25
      • 6.01 Introduction to Data Visualization
        02:02
      • 6.02 Basic Charts Bar Graph Pie Charts Histogram Box Plot
        05:32
      • 6.03 Advanced Charts Scatter Plot and Bubble Plot
        03:05
      • 6.04 Interpretation of the Charts
        03:00
      • 6.05 Selecting the Appropriate Chart
        02:53
      • 6.06 Data Preprocessing Dos and Donts
        06:13
      • 6.07 Case Study Deciding the Variables
        05:07
      • 6.08 Case Study Data Visualization
        04:37
      • 6.09 Demo Data Visualization
        06:56
      • 6.10 Histogram
      • 6.11 Scatter Diagram
    • Lesson 07: Probability

      42:52
      • 7.01 Probability
        07:32
      • 7.02 Key Terms of Probability
        04:42
      • 7.03 Conditional Probability
        06:41
      • 7.04 Independent and Dependent Events
        01:56
      • 7.05 Addition Theorem of Probability
        05:36
      • 7.06 Multiplication Theorem of Probability
        03:03
      • 7.07 Bayes Theorem
        06:54
      • 7.08 Demo Probabibilty
        06:28
      • 7.09 Probability I
      • 7.10 Probability II
    • Lesson 08: Probability Distributions

      37:24
      • 8.01 Random Variable
        04:01
      • 8.02 Probability Distribution
        07:26
      • 8.03 Discrete Probability Distributions
        03:04
      • 8.04 Binomial Distribution
        05:09
      • 8.05 Poisson Distribution and Continuous Probability Distribution
        06:05
      • 8.06 Normal Probability Distribution
        05:37
      • 8.07 Uniform Probability Distribution
        06:02
      • 8.08 Probability Distributions
      • 8.09 Binomial Exponential and Uniform Distributions
    • Lesson 09: Sampling and Sampling Techniques

      17:04
      • 9.01 Introduction to Sampling and Sampling Errors
        04:12
      • 9.02 Advantages and Disadvantages of Sampling
        01:27
      • 9.03 Probability Sampling Methods
        01:48
      • 9.04 Non Probability Sampling Methods
        02:07
      • 9.05 Sampling
        01:25
      • 9.06 Sampling Distribution
        01:21
      • 9.07 Central Limit Theorem
        00:55
      • 9.08 Case Study Sample and Sampling Techniques
        01:23
      • 9.09 Demo Sampling and Sampling Techniques
        02:26
      • 9.10 Sampling Bias Random Selection Proportional Representation
      • 9.11 Simple Random Sampling Stratified Sampling and Systematic Sampling
    • Lesson 10: Inferential Statistics and its Application

      01:50:59
      • 10.01 What Is Inferential Statistics
        08:16
      • 10.02 Hypothesis
        03:35
      • 10.03 Types of Hypothesis
        04:33
      • 10.04 Components of Hypothesis
        03:59
      • 10.05 Hypothesis Validation
        02:34
      • 10.06 Hypothesis Testing
        04:42
      • 10.07 Statistical Methods of Hypothesis Testing
        01:54
      • 10.08 T Test Critical Value
        03:05
      • 10.09 Two Tailed Test
        03:00
      • 10.10 Knowledge Check Match The Graph
      • 10.11 One Sample T Test
        03:48
      • 10.12 Two Sample Test Independent Samples
        05:51
      • 10.13 Knoweldge Check Formula
      • 10.14 P Value
        03:27
      • 10.15 Z Test
        09:31
      • 10.16 Analysis of Variance ANOVA
        03:27
      • 10.17 One Way ANOVA
        02:35
      • 10.18 Two Way ANOVA
        02:05
      • 10.19 Type I and Type II Errors
        02:08
      • 10.20 Decision and Outcomes of Hypothesis Testing
        01:49
      • 10.21 Probability of Error
        02:48
      • 10.22 Chi Squared Test
        03:40
      • 10.23 Fishers Exact Test
        00:54
      • 10.24 Sign Test
        04:39
      • 10.25 Kruskal Wallis Test
        05:16
      • 10.26 Mann Whitney Wilcoxon Test
        02:33
      • 10.27 Run Test
        06:40
      • 10.28 Regression Analysis
        04:56
      • 10.29 Drag and Drop Group
      • 10.30 Demo Inferential Statistics
        09:14
      • 10.31 Inferential Test
      • 10.32 Type of Hypothesis
    • Lesson 11: Relation Between Variables

      18:46
      • 11.01 Correlation
        04:22
      • 11.02 Types of Correlation Coefficients
        01:36
      • 11.03 Karl Pearsons Correlation Coefficient Use Cases
        01:14
      • 11.04 Spearmans Rank Correlation Coefficient
        02:14
      • 11.05 Causation
        02:37
      • 11.06 Regression
        02:04
      • 11.07 Coefficient of Determination
        02:13
      • 11.08 Demo Relation Between Variables
        02:26
      • 11.09 Relation Between Variables I
      • 11.10 Relation Between Variables II
    • Lesson 12: Applications of Statistics in Business

      24:49
      • 12.01 How to Use Statistics in Day to Day Business
        11:19
      • 12.02 How Not to Lie with Statistics​
        03:12
      • 12.03 Example How Not to Lie with Statistics​
        02:08
      • 12.04 How Not to Lie with Visualizations
        02:51
      • 12.05 How Not to Lie About Relationship in The Data
        03:26
      • 12.06 Analytics​
        01:53
      • 12.07 Applications of Statistics in Business I
      • 12.08 Applications of Statistics in Business II
About the Course

Linear algebra and statistics are important for anyone interested in data, analytics, AI, or machine learning. This course explains key math and statistics ideas step by step, making it easier to see how data is displayed, analyzed, and understood.

You will start with basics like scalars, matrices, and tensors, then continue with topics such as statistics, probability, sampling, data visualization, and how variables are related. The course also explains how statistics is used in business, giving you both clear concepts an

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FAQs

  • How does this course support data science learners?

    Data science is built on a strong mathematical foundation. This course helps learners understand essential concepts such as scalars, matrices, tensors, statistics, probability, and distributions. These topics explain how data is represented, measured, interpreted, and analyzed in real-world data science workflows.

  • Is the course limited to linear algebra?

    No. Although the course starts with the fundamentals of linear algebra, it also covers statistics, probability, sampling, data visualization, and business applications. This provides learners with a well-rounded foundation in data science and related fields.

  • Do I need strong math skills before taking this course?

    No. You do not need an advanced math background. The course explains each concept step by step, making it suitable for learners who want to strengthen, refresh, or build their mathematical foundation.

  • Can this course help me understand machine learning better?

    Yes. Machine learning uses mathematical ideas such as matrices, tensors, probability, distributions, and statistics. This course helps you understand the building blocks before moving on to advanced ML concepts.

  • Why are matrices and tensors covered in this course?

    Matrices and tensors are widely used to store and process data in AI, machine learning, deep learning, and image-based applications. Learning them helps you understand how data is handled behind the scenes.

  • Does the course include statistics?

    Yes. The course covers core statistics topics, including descriptive statistics, inferential statistics, probability, sampling, and relationships between variables.

  • Will I learn how to visualize data?

    Yes. The course introduces data visualization and explains how charts and graphs can help reveal patterns, trends, comparisons, and insights.

  • Is this course useful for business analytics learners?

    Yes. The course connects statistics with business use cases such as forecasting, performance analysis, trend identification, customer insights, and decision-making.

  • What practical skills will I build?

    You’ll learn how to read data, summarize it, identify patterns, understand probability, compare variables, and use statistical thinking to support better analysis.

  • Can students take this course?

    Yes. This course is useful for students from mathematics, engineering, computer science, statistics, business, economics, or any data-related background.

  • Is this course helpful for aspiring data analysts?

    Yes. Data analysts often work with statistics, probability, visualization, and data interpretation. This course helps build those core skills before moving into tools like Excel, SQL, Python, Tableau, or Power BI.

  • Will I receive a certificate?

    Yes, you will receive a certificate upon successful completion of the course.

  • Can I add this certificate to my resume or LinkedIn profile?

    Yes. You can add it to your resume or LinkedIn profile to show that you have learned foundational concepts in linear algebra, statistics, and data analysis.

  • What should I learn after completing this course?

    After this course, you can move on to Python, NumPy, Pandas, SQL, Excel, data analytics, machine learning, Power BI, Tableau, or other data visualization tools.

  • How should I practice these concepts?

    Start with small datasets. Calculate averages, compare values, create charts, study distributions, check relationships between variables, and apply sampling or probability concepts to simple real-world examples.

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  • Career Impact Results vary based on experience and numerous factors.