What will you learn in Data Science with R Programming Certification Training Course
-
Master R programming fundamentals, including data types, operators, and functions
-
Perform data extraction, cleaning, and wrangling using dplyr and tidyr
-
Apply statistical inference techniques to draw insights from data
-
Implement supervised and unsupervised machine learning algorithms (e.g., linear/logistic regression, decision trees, clustering)
Program Overview
Module 1: Introduction to Data Science with R
⏳ 1 hour
-
Topics: What is Data Science; lifecycle stages; big data, Hadoop, Spark; R setup
-
Hands-on: Install R/RStudio; import and explore sample datasets
Module 2: Statistical Inference
⏳ 45 minutes
-
Topics: Measures of center and spread; probability distributions; hypothesis testing
-
Hands-on: Compute summary statistics and conduct t-tests in R
Module 3: Data Extraction, Wrangling & Exploration
⏳ 1 hour
-
Topics: Data pipelines; handling CSV/JSON/XML; exploratory data analysis; visualization basics
-
Hands-on: Clean and reshape datasets; generate plots with ggplot2
Module 4: Introduction to Machine Learning
⏳ 45 minutes
-
Topics: ML workflow; linear and logistic regression implementation
-
Hands-on: Train and evaluate regression models on real datasets
Module 5: Classification Techniques
⏳ 1 hour
-
Topics: Decision trees; random forests; Naive Bayes; support vector machines
-
Hands-on: Build and compare classification models in R
Module 6: Unsupervised Learning & Clustering
⏳ 45 minutes
-
Topics: K-means, C-means, hierarchical clustering; cluster evaluation
-
Hands-on: Perform clustering and visualize groupings
Module 7: Recommender Engines
⏳ 45 minutes
-
Topics: Association rules; user- vs. item-based filtering; recommendation use cases
-
Hands-on: Create a recommendation system using R packages
Module 8: Text Mining
⏳ 45 minutes
-
Topics: Bag of Words; TF-IDF; sentiment analysis workflows
-
Hands-on: Extract and analyze text data from Twitter
Module 9: Time Series Analysis
⏳ 1 hour
-
Topics: Time series components; ARIMA and ETS models; forecasting techniques
-
Hands-on: Decompose and forecast time series datasets
Module 10: Deep Learning Basics
⏳ 1 hour
-
Topics: Neural network fundamentals; reinforcement learning overview
-
Hands-on: Build a simple ANN for classification
Get certificate
Job Outlook
-
Median salary for experienced Data Scientists in the U.S.: $162,800 + $6,000 bonus
-
Data Science job openings are growing at over 30% annually
-
Roles include Data Scientist, Machine Learning Engineer, Data Analyst, Quantitative Analyst
-
Skills in R, machine learning, and statistical modeling are in high demand across tech, healthcare, finance, and retail
Explore More Learning Paths
Advance your data science career with these carefully selected programs designed to strengthen your R programming skills, analytical capabilities, and overall data expertise.
Related Courses
-
Tools for Data Science Course – Learn essential tools and technologies for data science, including data manipulation, visualization, and workflow optimization.
-
Foundations of Data Science Course – Build a strong foundation in data science concepts, statistical analysis, and problem-solving techniques.
-
Data Science Methodology Course – Understand the complete data science lifecycle and methodologies to approach real-world analytical problems effectively.
Related Reading
-
What Is Data Management – Gain insights into managing, processing, and leveraging data for business intelligence and analytics.