Euro-training Center
 R Programming 20 Jan Amsterdam Netherlands QR Code
Inquiry PDF (37) Like Share   Print

IT Management

R Programming


REF : B1738 DATES: 20 - 24 Jan 2025 VENUE: Amsterdam (Netherlands) FEE : 6145 

Overview:

Introduction:

This training program provides participants with essential knowledge and skills in R programming. It empowers them to use R for data analysis, statistical computing, and data visualization effectively.

Program Objectives:

At the end of this program, participants will be able to:

  • Understand the basics of R programming language.

  • Perform data manipulation and analysis using R.

  • Create visualizations to represent data insights.

  • Apply statistical methods and models using R.

  • Utilize R for reproducible research and reporting.

Targeted Audience:

  • Data Analysts.

  • Statisticians.

  • Data Scientists.

  • Researchers.

  • Professionals interested in data analysis.

Program Outline:

Unit 1:

Introduction to R Programming:

  • Overview of R and its applications.

  • Setting up the R environment.

  • Basic syntax and data types in R.

  • Working with vectors, matrices, and lists.

  • Introduction to R packages and libraries.

Unit 2:

Data Manipulation in R:

  • Importing and exporting data.

  • Data cleaning and preprocessing.

  • Using dplyr for data manipulation.

  • Handling missing values and outliers.

  • Summarizing and aggregating data.

Unit 3:

Data Visualization with R:

  • Introduction to data visualization principles.

  • Creating basic plots using base R.

  • Advanced visualizations with ggplot2.

  • Customizing and saving plots.

  • Interactive visualizations with plotly.

Unit 4:

Statistical Analysis with R:

  • Descriptive statistics and exploratory data analysis.

  • Inferential statistics: hypothesis testing, t-tests, chi-square tests.

  • Correlation and regression analysis.

  • Analysis of variance (ANOVA).

  • Time series analysis.

Unit 5:

Advanced Topics and Best Practices:

  • Writing and debugging R scripts.

  • Functional programming in R.

  • Reproducible research with RMarkdown.

  • Introduction to Shiny for building web applications.

  • Best practices for efficient R programming.