Statistics Course

Description

This course provides a comprehensive introduction to the fundamental
concepts of statistics, equipping students with the tools necessary to
analyze and interpret data effectively. This course lays a strong
foundation for advanced studies and professional applications in fields
such as data science, data analyst, data engineering, AI and Machine
Learning, business analytics, and research.

Learning Outcomes

  • Understanding Fundamental Concepts of Statistics and data
    processing
  • Applying Analytical Techniques
  • Improving problem solving skills utilizing statistical methods.

Target Group

  • Undergraduate Students who need a strong foundation in statistics.
  • Learners entering advanced studies in data science, research, or
    analytics who require a refresher or deeper understanding of
    statistical concepts
  • Beginners aiming to enter data-centric roles such as data science,
    data analyst, data engineering, AI and Machine Learning, business analytics, and research and requiring essential knowledge of
    statistical methods.

Prerequisites

  • Interest in Data , Data Processing and Data Analysis

Duration

  • 20hrs (Sunday only)
  • 12:30 PM to 2:30 PM

Modules

Course Outlines
What is statistics?
  1. Descriptive and Inferential Statistics Variables and Types of Data, Data Collection and Sampling Techniques
    • Random Sampling
    • Systematic Sampling
    • Stratified Sampling
    • Cluster Sampling
  2. Frequency Distributions and Graphs
  3. Data Description
    • Measures of Central Tendency
    • Measures of Variation
    • Measures of Position
  4. Confidence Intervals and Sample Size
  5. Hypothesis Testing
  6. Correlation and Regression
Training Fees
250000