R Programming Tutorial
R Programming Tutorial is designed for both beginners and professionals. Our tutorial provides all the basic and advanced concepts of data analysis and visualization. R is a software environment which is used to analyze statistical information and graphical representation. R allows us to do modular programming using functions. Our R tutorial includes all topics of R such as introduction, features, installation, rstudio ide, variables, datatypes, operators, if statement, vector, data handing, graphics, statistical modelling, etc. This programming language was named R, based on the first name letter of the two authors (Robert Gentleman and Ross Ihaka). What is R Programming"R is an interpreted computer programming language which was created by Ross Ihaka and Robert Gentleman at the University of Auckland, New Zealand." The R Development Core Team currently develops R. It is also a software environment used to analyze statistical information, graphical representation, reporting, and data modeling. R is the implementation of the S programming language, which is combined with lexical scoping semantics. R not only allows us to do branching and looping but also allows to do modular programming using functions. R allows integration with the procedures written in the C, C++, .Net, Python, and FORTRAN languages to improve efficiency. In the present era, R is one of the most important tool which is used by researchers, data analyst, statisticians, and marketers for retrieving, cleaning, analyzing, visualizing, and presenting data. History of R ProgrammingThe history of R goes back about 2030 years ago. R was developed by Ross lhaka and Robert Gentleman in the University of Auckland, New Zealand, and the R Development Core Team currently develops it. This programming language name is taken from the name of both the developers. The first project was considered in 1992. The initial version was released in 1995, and in 2000, a stable beta version was released. The following table shows the release date, version, and description of R language: 另类的图片在线观看 另类的图片无删减 琪琪看片网 另类的图片在线观看 另类的图片无删减 琪琪看片网 ,啊哦快到了再用力一点在线观看 啊哦快到了再用力一点无删 啊哦快到了再用力一点在线观看 啊哦快到了再用力一点无删 ,唐馨BABY在线观看 唐馨BABY无删减 琪琪看片网 唐馨BABY在线观看 唐馨BABY无删减 琪琪看片网 另类的图片在线观看 另类的图片无删减 琪琪看片网 另类的图片在线观看 另类的图片无删减 琪琪看片网 ,啊哦快到了再用力一点在线观看 啊哦快到了再用力一点无删 啊哦快到了再用力一点在线观看 啊哦快到了再用力一点无删 ,唐馨BABY在线观看 唐馨BABY无删减 琪琪看片网 唐馨BABY在线观看 唐馨BABY无删减 琪琪看片网
Features of R programmingR is a domainspecific programming language which aims to do data analysis. It has some unique features which make it very powerful. The most important arguably being the notation of vectors. These vectors allow us to perform a complex operation on a set of values in a single command. There are the following features of R programming:
Why use R Programming?There are several tools available in the market to perform data analysis. Learning new languages is time taken. The data scientist can use two excellent tools, i.e., R and Python. We may not have time to learn them both at the time when we get started to learn data science. Learning statistical modeling and algorithm is more important than to learn a programming language. A programming language is used to compute and communicate our discovery. The important task in data science is the way we deal with the data: clean, feature engineering, feature selection, and import. It should be our primary focus. Data scientist job is to understand the data, manipulate it, and expose the best approach. For machine learning, the best algorithms can be implemented with R. Keras and TensorFlow allow us to create highend machine learning techniques. R has a package to perform Xgboost. Xgboost is one of the best algorithms for Kaggle competition. R communicate with the other languages and possibly calls Python, Java, C++. The big data world is also accessible to R. We can connect R with different databases like Spark or Hadoop. In brief, R is a great tool to investigate and explore the data. The elaborate analysis such as clustering, correlation, and data reduction are done with R. Comparison between R and PythonData science deals with identifying, extracting, and representing meaningful information from the data source. R, Python, SAS, SQL, Tableau, MATLAB, etc. are the most useful tools for data science. R and Python are the most used ones. But still, it becomes confusing to choose the better or the most suitable one among the two, R and Python.
Applications of RThere are severalapplications available in realtime. Some of the popular applications are as follows:
PrerequisiteR programming is used for statistical information and data representation. So it is required that we should have the knowledge of statistical theory in mathematics. Understanding of different types of graphs for data representation and most important is that we should have prior knowledge of any programming. AudienceThis tutorial is helpful for those students who are interested in gaining the knowledge of how data analysis projects are implemented. This tutorial covers all the basics of R and how data analysis is done using R. ProblemsWe assure you that you will not find any problem with this R Programming Tutorial. But if there is any mistake, please post the problem in the contact form.
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