3975826_69

R Programming for Data Science & Machine Learning

15,00 

R is a high-level programming language for statistical analysis, graphics representation and reporting. R is freely available under the GNU General Public License, and pre-compiled binary versions are provided for various operating systems like Linux, Windows and Mac. R is a powerful language for data analysis, data visualization, machine learning, statistics. Originally developed for statistical programming, it is now one of the most popular languages in data science.

Categories , , , ,

Description

R Programming for Data Science & Machine Learning – Course Curriculum

1.1. FUNDAMENTALS OF R

  • Installation of R & R Studio
  • Features of R
  • Variables in R
  • Constants in R
  • Operators in R
  • Datatypes and R Objects
  • Accepting Input from keyboard
  • Important Built-in functions

1.2. VECTORS

  • Creating Vectors
  • Accessing elements of a Vector
  • Operations on Vectors
  • Vector Arithmetic

1.3. CONTROL STATEMENTS

  • I statement
  • if…else statement
  • if else() function
  • switch() function
  • repeat loop
  • while loop
  • for loop
  • break statement
  • next statement

1.4. FUNCTIONS IN R

  • Formal and Actual arguments
  • Named arguments
  • Global and local variables
  • Argument and lazy evaluation of functions
  • Recursive functions

1.5. MATRICES

  • Creating matrices
  • Accessing elements of a Matrix
  • Operations on Matrices
  • Matrix transpose

1.6. STRINGS

  • Creating strings
  • paste() and paste0()
  • Formatting numbers and string using format()
  • String manipulation

1.7. LISTS

  • Creating lists
  • Manipulating list elements
  • Merging lists
  • Converting lists to vectors

1.8. ARRAYS IN R

  • Creating arrays
  • Accessing array elements
  • Calculations across array elements

1.9. R FACTORS

  • Understanding factors
  • Modifying factors
  • Factors in Data frames

1.10. DATA FRAMES IN R

  • Creating data frame
  • Operations on data frames
  • Accessing data frames
  • Creating data frames from various sources

1.11. DATA VISUALIZATION IN R

  • Need for data visualization
  • Bar plot
  • Plotting categorical data
  • Stacked bar plot
  • Histogram
  • plot() function and line plot
  • pie chart / 3D pie chart
  • Scatter plot
  • Box plot

1.12. STRINGR PACKAGE

  • Important functions in stringr
  • Regular expressions

1.13. DPLYR PACKAGE

Who is this course for?

Everyone

Requirements

Passion and determination to achieve your goals!

Additional information

Hours · Self-Paced

8.7

Language

English

Related Products