What
You’ll Learn
You’ll Learn
- Fundamental concepts and importance of statistics in various fields.
- How to use statistics for effective data analysis and decision-making.
- Introduction to Python for statistical analysis
- including data manipulation and visualization.
- Different types of data and their significance in statistical analysis.
- Measures of central tendency
- spread
- dependence
- shape
- and position.
- How to calculate and interpret standard scores and probabilities.
- Key concepts in probability theory
- set theory
- and conditional probability.
- “Understanding Bayes Theorem and its applications.”
- Permutations
- combinations
- and their role in solving real-world problems.
- Practical knowledge of various statistical tests
- including t-tests
- chi-squared tests
- and ANOVA
- for hypothesis testing and inference.
Requirements
- Access to a computer with internet connectivity.
- A basic understanding of mathematics
- including algebra and arithmetic.
- Familiarity with fundamental concepts in data analysis and problem-solving.
- A willingness to learn and engage with statistical concepts and Python programming.
- Basic knowledge of Python is a plus but not mandatory.
Description
Welcome to “Statistics and Hypothesis Testing for Data Science” – a comprehensive Udemy course that will empower you with the essential statistical knowledge and data analysis skills needed for success in the world of data science.
Here’s what you’ll learn:
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Delve into the world of data-driven insights and discover how statistics plays a pivotal role in shaping our understanding of information.
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Equip yourself with the essential Python skills required for effective data manipulation and visualization.
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Learn to categorize data, setting the stage for meaningful analysis.
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Discover how to summarize data with measures like mean, median, and mode.
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Explore the variability in data using concepts like range, variance, and standard deviation.
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Understand relationships between variables with correlation and covariance.
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Grasp the shape and distribution of data using techniques like quartiles and percentiles.
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Learn to standardize data and calculate z-scores.
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Dive into probability theory and its practical applications.
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Lay the foundation for probability calculations with set theory.
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Explore the probability of events under certain conditions.
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Uncover the power of Bayesian probability in real-world scenarios.
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Solve complex counting problems with ease.
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Understand the concept of random variables and their role in probability.
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Explore various probability distributions and their applications.
This course will empower you with the knowledge and skills needed to analyze data effectively, make informed decisions, and apply statistical methods in a data science context. Whether you’re a beginner or looking to deepen your statistical expertise, this course is your gateway to mastering statistics for data science. Enroll now and start your Journey!
Who this course is for:
- Students or professionals in various fields
- including business
- science
- social sciences
- and healthcare
- who want to enhance their data analysis skills.
- Data analysts
- researchers
- and scientists seeking to strengthen their statistical foundations and Python programming skills.
- Anyone interested in gaining a deeper understanding of statistical concepts and their practical applications.
- Beginners with no prior statistical knowledge but with a curiosity to learn and apply statistical methods.
- Professionals looking to advance their career by acquiring valuable statistical and data analysis skills.
- Individuals preparing for standardized tests or exams that include statistical and data analysis components.