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04 March 2021
Machine learning requires strong statistical foundations. In this module, we solidify that groundwork by reviewing probability concepts such as important distributions, Bayes' Rule, and conditional expectation. We then move on to rigorous statistical analysis — parameter estimation, hypothesis testing, p-values, z-scores, and other core concepts in statistical inference. We extend this basis of statistical knowledge into machine learning basics such as regression, regularization, overfitting, and important learning metrics. Students put these concepts into practice on real-world datasets using Python’s stats-oriented libraries to ask interesting, relevant questions and draw concrete inferences from population data.
Basic Python, basic statistics, and/or successful completion of the Introduction to Data Wrangling in Python course
Beginning programmers who want an applied statistics introduction, including how to implement that theory into code
Analysts who have completed Data Wrangling in Python and want to take their skill-set to the next level
The fundamentals of probability and statistical inference
How to utilize those fundamentals in Python to analyze large, real-world datasets
Machine-learning basics that derive from statistical principles
Join our public courses in our Istanbul, London and Ankara facilities. Private class trainings will be organized at the location of your preference, according to your schedule.