Stay ahead by continuously learning and advancing your career. Learn More

Data Analytics (with R) Exam

Practice Exam
Take Free Test

Certificate in Data Analytics (with R)

Data analytics with R involves the process of analyzing large datasets to derive meaningful insights and make informed decisions using the R programming language. R is a powerful tool for statistical analysis and data visualization, making it ideal for tasks such as data cleaning, transformation, and modeling. Data analytics with R allows analysts to perform complex analyses, such as predictive modeling and machine learning, to uncover patterns and trends in data. R's extensive library of packages provides a wide range of tools for data manipulation and visualization, making it a popular choice for data analysts and data scientists alike.

Why is Data Analytics (with R) important?

  • Advanced Statistical Analysis: R offers a wide range of statistical tools and techniques, allowing for advanced analysis of large datasets.
  • Data Visualization: R provides powerful visualization libraries like ggplot2, enabling users to create informative and visually appealing plots and charts to understand data patterns.
  • Predictive Modeling: With R, analysts can build predictive models using machine learning algorithms, helping organizations forecast trends and make data-driven decisions.
  • Data Cleaning and Transformation: R facilitates data preprocessing tasks such as cleaning, transforming, and organizing data, ensuring data quality for analysis.
  • Open-Source and Cost-Effective: R is open-source software, making it freely available for use, which reduces the cost of implementing data analytics solutions compared to proprietary software.
  • Community Support: R has a large and active user community, providing access to extensive documentation, tutorials, and online forums for assistance and collaboration.
  • Integration Capabilities: R can easily integrate with other data analysis tools and platforms, enhancing its flexibility and interoperability within existing data ecosystems.
  • Customization and Extensibility: R allows for customization and extension through the development and integration of additional packages, tailored to specific data analytics needs and requirements.
  • Decision Support: By leveraging data analytics with R, organizations can gain valuable insights into their operations, customers, and markets, empowering informed decision-making and strategic planning.

Who should take the Data Analytics (with R) Exam?

  • Data Analyst
  • Data Scientist
  • Business Analyst
  • Statistician
  • Research Analyst
  • Data Engineer
  • Database Administrator
  • Financial Analyst
  • Marketing Analyst
  • Healthcare Analyst

Data Analytics (with R) Certification Course Outline

  1. Introduction to Data Analytics

  2. R Programming Basics

  3. Data Manipulation with R

  4. Data Visualization with R

  5. Statistical Analysis with R

  6. Predictive Analytics

  7. Machine Learning with R

  8. Data Mining Techniques

  9. Time Series Analysis

  10. Big Data Analytics with R

  11. Text Mining and Sentiment Analysis

  12. Web Scraping and API Integration

  13. Advanced Data Visualization

  14. Data Ethics and Privacy


Data Analytics (with R) Exam FAQs

Exam has been built with the focus on - 

  • Module 1 - Introduction
  • Module 2 - Descriptive Statistical Measures
  • Module 3 - Probability Distributions
  • Module 4 - Sampling and Estimation
  • Module 5 - Statistical Inference
  • Module 6 - R Programming Language Introduction
  • Module 7- Reading Data from files
  • Module 8 - Probability Distributions
  • Module 9 - Statistical Models in R
  • Module 10 - R Graphics Facilities
  • Module 11 - R Data Import/Export

  • Data Scientist.
  • Data Engineer.
  • Data Analyst.
  • Machine Learning Engineer.
  • Data Journalist.
  • Database Admin.
  • Financial Analyst.
  • Business Analyst.

  • Microsoft Excel.
  • Critical Thinking
  • R or Python–Statistical Programming.
  • Data Visualization.
  • Presentation Skills.
  • Machine Learning.
  • SQL


R-Software is one of the most important as well as a popular programming tools that is used by almost every organisation. Data analysis professionals are the ones with all the basic knowledge of R. They are responsible for providing simulations, data analyses and data visualizations with the R package. These professionals are highly in demand by every sector to design and develop their technical architecture as well as for preparing scripts for proper data access and formulation.

  • Software engineers
  • Web developers
  • Programmers
  • Bachelor’s in science and CS