Statistical and Probabilistic Foundations of AI
By providing learners with a comprehensive understanding of statistical analysis and modeling, this course enables them to extract valuable insights from data using R.
Description for Statistical and Probabilistic Foundations of AI
Descriptive Statistics: Acquire the ability to summarize and describe data through the use of statistical measures and visualizations.
Probabilistic Modeling: Investigate the fundamental principles of probability theory and employ probabilistic techniques to simulate random events.
Statistical Inference: Enhance one's capacity to derive dependable conclusions from data by employing confidence interval estimation and hypothesis testing.
Regression Analysis: Develop the ability to evaluate the quality of models and master the art of modeling relationships between variables using linear regression.
Level: Intermediate
Certification Degree: Yes
Languages the Course is Available: 1
Offered by: On edX provided by RWTHx
Duration: 6�7 hours per week approx 7 weeks
Schedule: Flexible
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