Analyze Data Using R for Statistical Analytics
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Analyze Data Using R for Statistical Analytics
This course is part of Analyze and Apply R for Data Analytics Specialization
Instructor: EDUCBA
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What you'll learn
Use R programming to analyze data and perform exploratory data analysis.
Apply core statistical techniques and build analytical models in R.
Interpret insights using visualizations and real-world data analytics use cases.
Skills you'll gain
- Exploratory Data Analysis
- Analytical Skills
- Data Structures
- Analytics
- Predictive Analytics
- Data Analysis
- Statistical Methods
- Statistical Programming
- Statistical Analysis
- Business Analytics
- Data Visualization
- Statistical Modeling
- Statistical Visualization
- Regression Analysis
- Data Manipulation
- Time Series Analysis and Forecasting
- Analysis
Tools you'll learn
Details to know
February 2026
16 assignments
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There are 4 modules in this course
Learners will analyze data using R, apply core statistical techniques, build analytical models, and interpret insights through visualization and real-world use cases. By the end of this course, learners will be able to confidently use R programming to perform data analysis, statistical modeling, and exploratory analytics.
This beginner-friendly course provides a structured, end-to-end introduction to Data Analytics using R, starting from Rβs origin, architecture, and syntax, and progressing through vectors, data frames, visualization, and statistical methods. Learners gain hands-on exposure to essential programming concepts, data handling techniques, and analytical workflows that are widely used in academia and industry. What makes this course unique is its subtitles-driven, concept-aligned curriculum, ensuring every topic directly reflects real instructional explanations rather than abstract theory. The course emphasizes practical analytics, including regression, decision trees, time series analysis, and business-focused case studies such as insurance analytics. Designed for aspiring data analysts, students, and professionals, this course builds a strong foundation in R programming while developing analytical thinking skills that are transferable to real-world data science and statistical problem-solving scenarios.
This module introduces learners to the R programming language, covering its origin, architecture, file types, syntax rules, and core data types used in data analytics and statistical computing.
What's included
6 videos4 assignments
6 videosβ’Total 50 minutes
- Comprehensice Course on Rβ’7 minutes
- Origination of Rβ’8 minutes
- Introduction to Architecture of Rβ’8 minutes
- Different File Types in Rβ’9 minutes
- Basic Syntaxβ’6 minutes
- Different Data Typesβ’13 minutes
4 assignmentsβ’Total 60 minutes
- Course Overview and Origin of Rβ’10 minutes
- Architecture and File Types in Rβ’10 minutes
- Basic Syntax and Core Data Typesβ’10 minutes
- Introduction to R Programming Fundamentalsβ’30 minutes
This module focuses on essential R programming constructs, including vectors, variables, functions, operators, control structures, and string manipulation techniques required for efficient data processing.
What's included
6 videos4 assignments
6 videosβ’Total 45 minutes
- Creating Vectorsβ’7 minutes
- Creating Vectors Continuesβ’8 minutes
- Functions and Variables in Rβ’5 minutes
- Operators in Rβ’7 minutes
- Loops and Functions in Rβ’13 minutes
- Manipulation with Stringsβ’6 minutes
4 assignmentsβ’Total 60 minutes
- Vector Creation and Usageβ’10 minutes
- Variables, Functions, and Operatorsβ’10 minutes
- Control Structures and String Manipulationβ’10 minutes
- Core Programming Concepts in Rβ’30 minutes
This module introduces data frames and visualization techniques in R, enabling learners to organize data and create meaningful graphical representations for exploratory data analysis.
What's included
6 videos4 assignments
6 videosβ’Total 55 minutes
- Concept of Data Frameβ’10 minutes
- Executing with Valuesβ’10 minutes
- Charts in Rβ’12 minutes
- Functions of Chartsβ’8 minutes
- Performing Analytics in Rβ’7 minutes
- Data Exploration and Preparationβ’8 minutes
4 assignmentsβ’Total 60 minutes
- Data Frames and Data Handlingβ’10 minutes
- Introduction to Chartsβ’10 minutes
- Performing Analytics with Visual Dataβ’10 minutes
- Data Structures and Visualizationβ’30 minutes
This module covers statistical methods, regression models, decision trees, time series analysis, and real-world business applications to perform predictive and descriptive analytics using R.
What's included
7 videos4 assignments
7 videosβ’Total 67 minutes
- Statistical Analyticsβ’10 minutes
- Distribution Functionsβ’10 minutes
- Linear and Logistic Regressionβ’7 minutes
- Multiple Linear Regressionβ’9 minutes
- Decision Treeβ’8 minutes
- Time Seriesβ’12 minutes
- Problems Faced by Life Insurance Coβ’12 minutes
4 assignmentsβ’Total 60 minutes
- Statistical Foundations and Distributionsβ’10 minutes
- Regression Techniquesβ’10 minutes
- Advanced Models and Business Applicationsβ’10 minutes
- Statistical Analysis and Real-World Analyticsβ’30 minutes
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