| File Name: | Statistics for Data Science: A Comprehensive Journey |
| Content Source: | https://www.udemy.com/course/statistics-for-data-science-a-comprehensive-journey/ |
| Genre / Category: | Programming |
| File Size : | 1.4 GB |
| Publisher: | Pralhad Teggi |
| Updated and Published: | January 3, 2026 |
Statistics is the backbone of Data Science, Machine Learning, and AI, yet it remains one of the most misunderstood topics. This course is designed to take you on a clear, structured, and application-driven journey, helping you build strong statistical intuition and hands-on problem-solving skills—without unnecessary math overload.
In this course, you’ll move step by step from fundamental statistical concepts to hypothesis testing and ANOVA, using real-time examples and practical datasets, including water quality data to connect theory with real-world decision-making. Whether you are a student, data science aspirant, working professional, or researcher, this course will give you the statistical confidence needed to analyze data, interpret results, and build reliable AI/ML models.
What You’ll Learn:
- Understand population, samples, and sampling techniques
- Perform descriptive statistical analysis and interpret results
- Apply probability concepts with solved examples
- Work with marginal, joint, and conditional probabilities
- Master Bayes’ Theorem with step-by-step problem solving
- Understand random variables and probability distributions
- Apply Binomial, Uniform, and Normal distributions
- Generate and interpret Normal distributions using sample data
- Understand variance, statistical significance, and hypothesis testing
- Perform t-tests and ANOVA with real examples
- Execute t-tests using Excel
- Develop statistical thinking for Data Science and AI applications
Why This Course is Different:
- Real-world examples (including environmental & water quality data)
- Step-by-step solved problems
- Concept-first approach (no blind formula memorization)
- Hands-on Excel-based statistical testing
- Perfect bridge between statistics and machine learning
Who This Course Is For:
- Aspiring Data Scientists & Machine Learning Engineers
- Students in AI, ML, Data Science, and Engineering
- Professionals transitioning into analytics roles
- Researchers needing strong statistical foundations
- Anyone struggling to understand probability and hypothesis testing




