Mastering Data Science With R: From Beginner To Master.
Published 3/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 19.16 GB | Duration: 29h 49m
Published 3/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 19.16 GB | Duration: 29h 49m
R programming for Data Science
What you'll learn
Introduction to data science and R Programming
Intermediate R Programming and working with files
Data Visualization and Comparing means with Statistics
Machine Learning
Time Series Analysis, working with Dashboards and Reporting in R
Requirements
No Programming Experience needed
You need a little understanding of Statistics
Description
Data Science with R is a comprehensive course designed to equip learners with the essential skills and knowledge to perform data analysis, machine learning, and time series analysis using the R programming language. Participants will start with an introduction to R and its data types, followed by learning data preparation techniques using dplyr functions. The course will then delve into programming concepts, data analysis, and machine learning with a strong emphasis on hands-on practice. Throughout the course, participants will explore various statistical methods, such as regression analysis, decision trees, random forest, and clustering, to make data-driven decisions and gain insights from data. Furthermore, learners will be guided through the end-to-end machine learning process, including data preprocessing, model selection, training, evaluation, and tuning. The course will also cover advanced topics, including time series analysis, where participants will learn to work with temporal data, detect trends, and seasonality, and make predictions using time series models. Additionally, learners will discover how to create interactive dashboards.Course Objectives: 1. Master R Programming: Develop a strong foundation in R programming, including data manipulation, control structures, importing and exporting data, and working with various data structures. 2. Data Analysis Techniques: Learn essential data analysis techniques, such as scatter plots, box plots, bar charts, histograms, and correlation, to explore and visualize data for insights. 3. Regression Analysis: Understand the principles of simple and multiple linear regression, stepwise regression, and generalized linear models to make predictions and understand relationships between variables. 4. Decision Trees and Random Forest: Explore classification trees, build decision trees, and implement random forests for predictive modeling and ensemble learning. 5. Unsupervised Machine Learning: Master unsupervised learning algorithms, including k-means clustering and hierarchical clustering, to discover patterns and groups within data. 6. End-to-End Machine Learning Project: Gain hands-on experience in the complete machine learning process, from data preprocessing to model training, evaluation, and tuning, culminating in a comprehensive machine learning project. 7. Time Series Analysis: Acquire skills in handling time series data, decomposing time series, forecasting with exponential smoothing and Holt-Winters method, and modeling stationary time series using autoregressive (AR) and moving average (MA) models. 8. Interactive Dashboards and Reporting: Learn to create interactive dashboards using R Shiny and build dynamic reports with R Markdown for reproducible and visually engaging data presentations.
Overview
Section 1: Introduction
Lecture 1 Introduction to Data Science and R Programming
Lecture 2 Introduction to Data Preparation
Lecture 3 Data and Introduction to Functions
Lecture 4 Functions
Section 2: Intermediate R
Lecture 5 Introduction to R statements
Lecture 6 Data Import
Lecture 7 Data Export and missing Values
Lecture 8 Correlations
Section 3: Data Visualization and Comparing Means
Lecture 9 Introduction to Visualization
Lecture 10 Charts
Lecture 11 Comparing Means
Lecture 12 Introduction to ANOVA
Section 4: Machine Learning
Lecture 13 Regression Analysis
Lecture 14 Decision Trees and Random Forest
Lecture 15 Unsupervised Machine Learning
Lecture 16 End-to-end Machine Learning project in R
Section 5: Time Series, Working with Dashboards and reporting
Lecture 17 Time Series Analysis
Lecture 18 Time Series Analysis Continued
Lecture 19 Dashboards In R
Lecture 20 R Markdown and Notebooks
Beginner R programming and Data Science Enthusiasts