Learn R Programming In 5 min

What is R Programming?

What is R Programming

R is a language as well as an environment for statistical computing as well as graphics.
GNU Project, similar to the S language as well as an environment developed at Bell Laboratories by John Chambers as well as colleagues.

What Does GNU Means?

GNU is a recursive acronym for “GNU’s Not Unix!” chosen because GNU’s design is Unix-like, but differs from UNIX by being free software as well as containing no UNIX code.
The GNU project includes an operating system kernel, GNU Hurd, which was the original focus of the Free Software Foundation (FSF).

R is considered a different implementation of S. There are some important differences, but much code written for S runs unaltered under R.
R provides a wide variety of statistical i.e. linear as well as nonlinear modeling, classical statistical tests, time-series analysis, classification, clustering, etc. as well as graphical techniques, as well as is highly extensible.
The S language is often the vehicle of choice for research in statistical methodology as well as R provides an Open Source route to participation in that activity.

What is the Strength of R Programming?

One of R’s strengths with which well-designed publication-quality plots were produced, including mathematical symbols as well as formulae where needed.
Great care is taken over the defaults for the minor design choices in graphics, but the user retains full control.

R’s Availability

R is available as Free Software under the terms of the Free Software Foundation’s GNU General Public Licence in source code form.
It compiles as well as runs on a wide variety of UNIX platforms as well as similar systems including FreeBSD as well as Linux, Windows as well as macOS.

R- An In-Depth Learning

R is an integrated suite of software facilities for data manipulation, and calculation, as well as a graphical display. It includes:

  • An effective data handling as well as a storage facility,
  • A suite of operators for calculations on arrays, in particular, matrices,
  • A large, coherent, integrated collection of intermediate tools for data analysis,
  • Graphical facilities for data analysis as well as display either on-screen or on hardcopy, as well as
  • A well-developed, simple as well as and effective programming language that includes conditionals, loops, user-defined recursive functions as well as input as well as output facilities.

R- designed around a true computer language, as well as it allows users to add additional functionality by defining new functions. Much of the system itself is written in the R dialect, which makes it easy for users to follow the algorithmic choices made.
For computationally-intensive tasks, C, C++, as well as FORTRAN code, can be linked as well as called at run time. Advanced users can write C code to manipulate R objects directly.

What do other users think about R?

Many users think of R as a statistics system. We prefer to think of it as an environment within which statistical techniques- are implemented. R- extended easily via packages.
There are about eight packages supplied with the R distribution as well as much more available through the CRAN family of Internet sites covering a very wide range of modern statistics.

What does R have?

R has its Latex-like documentation format, which is used to supply comprehensive documentation, both online in several formats as well as in hardcopy.

Why do we use R?

  • Statistical inference
  • Data analysis
  • Machine learning algorithm

Data science is shaping the way companies run their businesses.
Without a doubt, staying away from Artificial Intelligence as well as Machines will lead the company to fail. The big question is which tool/language should you use?

Should you choose R?

A data scientist can use two excellent tools: R and Python.
You do not have time to learn them both, especially if you get started learning data science. Learning statistical modeling, as well as the algorithm, is far more important than learning a programming language. A programming language is a tool to compute as well as communicate your discovery.
The most important task in data science is the way you deal with the data: import, clean, prep, feature engineering, and feature selection. This should be your primary focus.
If you are trying to learn R as well as Python at the same time without a solid background in statistics, it’s plain stupid. Data scientists are not programmers.
Their job is to understand the data, manipulate it as well as expose the best approach.

Do you think R is difficult?

rust for data science

Years ago, R was a difficult language to master. The language was confusing as well as not as structured as the other programming tools. To overcome this major issue, a collection of packages called tidy verse was developed.
The best algorithms for machine learning, implemented with R. Packages like Keras as well as Tensor Flow allow the creation of high-end machine-learning techniques. R also has a package to perform Xgboost, one of the best algorithms for the Kaggle competition.

Which all languages can communicate with R?

R can communicate in the other language. It is possible to call Python, Java, and C++ in R. The world of big data is also accessible to R. You can connect R with different databases like Spark or Hadoop.

Evolution of R

Finally, R has evolved as well as allowed a parallelizing operation to speed up the computation. R was criticized for using only one CPU at a time. The parallel package lets you perform tasks in different cores of the machine.

FAQ's

What is the use of R language?

R offers a wide variety of statistics-related libraries and provides a favorable environment for statistical computing and design. In addition, the R programming language gets used by many quantitative analysts as a programming tool since it's useful for data importing and cleaning.

Why R language is popular?

R offers a wide variety of statistics-related libraries and provides a favorable environment for statistical computing and design. In addition, the R programming language gets used by many quantitative analysts as a programming tool since it's useful for data importing and cleaning.

Why do people consider working on R Language?

R is the most comprehensive statistical analysis package, as new technology and ideas often appear first in R. R is an open-source that's why you can run R anywhere any time, and even sell it under conditions of the license. It is cross-platform and runs on many operating systems.