Statistics For Data Science and Machine Learning with Python
Practical Statistics with Python for Data Science & Machine Learning Statistical Modeling Using Sci-kit Learn and Scipy
4.77 (35 reviews)

2,157
students
7.5 hours
content
Oct 2022
last update
$54.99
regular price
What you will learn
You will learn to use data exploratory analysis in data science.
You will learn the most common data types such as continuous and categorical data.
You will learn the central tendency measures and the dispersion measures in statistics.
You will learn the concepts of population data vs sample data.
You will learn what random sampling means and how it affects data analysis.
You will learn about outliers and sampling errors and how they are related to data analysis.
You will learn how to visualize data distribution using boxplots, violin plots, histograms, and density plots.
You will learn how to visualize categorical data using bar plots and pie charts.
You will learn how to calculate correlation and covariance between features in the dataset.
You will learn how to visualize a correlation matrix using heat maps.
You will learn the most common probability distributions such as normal distribution and binomial distribution.
You will learn how to perform normality tests to check for deviation from normality.
You will learn how to test skewed distributions in real-world data.
You will learn how to standardize and normalize data to have the same scale.
You will learn how to transform skewed data to be normally distributed using different transformation methods such as log, square root, and power transformation
You will learn how to calculate confidence intervals for statistical estimates such as model accuracy.
You will learn bootstrapping in statistics and how it is used in machine learning.
You will learn how to evaluate machine learning models.
You will practically understand the concepts of bias and variance in data modeling.
You will understand what we mean by underfitting and overfitting in machine leaning and statistical modeling.
You will learn the most common evaluation metrics for regression models in machine learning.
You will learn the evaluation metrics for classification models.
You will learn how to validate predictive machine learning such as regression and classification models.
You will learn how to use different validation techniques for machine learning such as hold-out validation and cross-validation techniques.
Screenshots




Related Topics
4903290
udemy ID
9/28/2022
course created date
10/18/2022
course indexed date
Bot
course submited by