Data Science Job Seekers: Best R Programming Certifications You Absolutely Need

09 June 2023

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Data Science Job Seekers: Best R Programming Certifications You Absolutely Need

In today's data-driven world, data science has emerged as one of the most sought-after fields. R programming skills are essential for data scientists, as they allow them to manipulate, analyze, and visualize data effectively. In this article, we will explore the importance of R programming skills in the data science industry, the ways to acquire these skills, and the best R programming certifications that can help you gain expertise in R programming. Additionally, we will highlight the various career paths you can pursue with these certifications, making it a must-read for anyone interested in a career in data science. So let’s get started.

Features

Table of Contents

  • Description

  • Growing Demand Worldwide

  • Necessary Qualifications

  • Utility of R Programming Language in Data Science

  • Decoding the Basics of R

  • Key Takeaways

In today's data-driven world, data science has emerged as one of the most sought-after fields. R programming skills are essential for data scientists, as they allow them to manipulate, analyze, and visualize data effectively. In this article, we will explore the importance of R programming skills in the data science industry, the ways to acquire these skills, and the best R programming certifications that can help you gain expertise in R programming. Additionally, we will highlight the various career paths you can pursue with these certifications, making it a must-read for anyone interested in a career in data science. So let’s get started.

Description

Contemporary enterprises are swamped with data, and there is a profusion of technologies that can gather and store data automatically. Internet systems and payment gateways keep collecting data through e-commerce, medical, banking, and other means. Thus, we have massive amounts of text, audio, video, and image data.

This is why data science is significant because it integrates tools, methodologies, and technology to derive meaning from data. It is a multidisciplinary approach that integrates ideas and methods from mathematics, statistics, artificial intelligence, and computer engineering. Data scientists ask and answer questions such as what occurred, why it occurred, what will occur, and what can be done with the information.

While the phrase "data science" is not new, its definitions and implications have evolved throughout time. The term initially originated as an alternate term for statistics in the 1960s. Computer science experts established the phrase in the late 1990s. According to one proposed definition, data science is a distinct subject with three components: data design, data collecting, and data analysis. It took another decade for the word to become popular outside of academia.

The evolution of data science has led to its increasing importance in today's world, with applications in various fields. We can definitely say that data science is changing the world, the way we approach problem-solving and decision-making. From predicting stock prices to developing personalized healthcare plans, data science is revolutionizing many industries. Understanding the history and development of data science is crucial for professionals looking to enter this field.

Growing Demand Worldwide

Companies all around the globe are struggling to manage the massive volumes of data at their disposal, and an even greater difficulty is figuring out how to manage future datasets that will be exponentially larger. The following statistics demonstrate the growing demand for data science skills and the lucrative opportunities available in this field.

  • According to LinkedIn, one of the top 15 emerging jobs in the U.S. is that of a data scientist with demand for data science professionals growing at an annual growth rate of 37%.
  • A World Economic Forum (WEF) report predicts that data-related jobs, including that of data scientists, will be among the most in-demand roles globally by 2026.
  • The U.S. Bureau of Labor Statistics (BLS) predicts that employment of computer and information research scientists, which includes data scientists, will grow by 19% between 2020 and 2030, much faster than the average for all occupations.
  • A report by Burning Glass Technologies found that the demand for data science skills is growing faster than the supply of talent, with a projected shortage of 250,000 data scientists in the United States alone by 2024.

According to Glassdoor, the national average salary for a data scientist in the United States is $113,309 per year, with some top-paying companies offering salaries well over $200,000 per year.  

The following infographics illustrate the average salary of data scientists in USA:

The following infographics illustrate the average salary of data scientists in India:

The following infographics illustrate the average salary of data scientists in the U.K:

Companies all around the globe are struggling to manage the massive volumes of data at their disposal, and an even greater difficulty is figuring out how to manage future datasets that will be exponentially larger. The following statistics demonstrate the growing demand for data science skills and the lucrative opportunities available in this field.

  • According to LinkedIn, one of the top 15 emerging jobs in the U.S. is that of a data scientist with demand for data science professionals growing at an annual growth rate of 37%.
  • A World Economic Forum (WEF) report predicts that data-related jobs, including that of data scientists, will be among the most in-demand roles globally by 2026.
  • The U.S. Bureau of Labor Statistics (BLS) predicts that employment of computer and information research scientists, which includes data scientists, will grow by 19% between 2020 and 2030, much faster than the average for all occupations.
  • A report by Burning Glass Technologies found that the demand for data science skills is growing faster than the supply of talent, with a projected shortage of 250,000 data scientists in the United States alone by 2024.

According to Glassdoor, the national average salary for a data scientist in the United States is $113,309 per year, with some top-paying companies offering salaries well over $200,000 per year.  

The following infographics illustrate the average salary of data scientists in USA:

The following infographics illustrate the average salary of data scientists in India:

The following infographics illustrate the average salary of data scientists in the U.K:

Necessary Qualifications

Professionals and students with no connection to computer science, engineering, mathematics/statistics, or general science cannot work in this field. This is because, data science is an interdisciplinary field that needs expertise in one or more of these fields.

Further, being a data science expert needs far more than a basic understanding of programming or coding. You must be skilled in the use of technologies such as Spark, Hadoop, and NoSQL. It is also important to be well-versed in machine learning, programming, and statistical modeling. Knowledge of the R programming language is also a great advantage. If you are looking to break into the data science industry, it is important to know how to learn R programming and adding it to your skill set.

In fact, learning R programming can be a game-changer for your career. It is one of the top skills in demand in the data science industry. It is a popular programming language used for statistical computing and graphics, and can help in data analysis, data visualization, and data manipulation. With the right expertise and knowledge, you can take advantage of the growing opportunities in this field and build a successful career.

Professionals and students with no connection to computer science, engineering, mathematics/statistics, or general science cannot work in this field. This is because, data science is an interdisciplinary field that needs expertise in one or more of these fields.

Further, being a data science expert needs far more than a basic understanding of programming or coding. You must be skilled in the use of technologies such as Spark, Hadoop, and NoSQL. It is also important to be well-versed in machine learning, programming, and statistical modeling. Knowledge of the R programming language is also a great advantage. If you are looking to break into the data science industry, it is important to know how to learn R programming and adding it to your skill set.

In fact, learning R programming can be a game-changer for your career. It is one of the top skills in demand in the data science industry. It is a popular programming language used for statistical computing and graphics, and can help in data analysis, data visualization, and data manipulation. With the right expertise and knowledge, you can take advantage of the growing opportunities in this field and build a successful career.

Utility of R Programming Language in Data Science

R is a programming language developed by University of Auckland faculty members Ross Ihaka and Robert Gentleman. It is a statistical programming language that is commonly used by data scientists and business executives to understand data.

Numerous computer languages may be used for data science processes, but R makes data assessment and collection fun and unique. R is a sophisticated programming language capable of doing a broad variety of complex statistical computations and calculations. As a result, it is widely used by data scientists and business leaders across a wide range of industries, from academia to industry.

Additionally, R graphically interprets the data, making it easy to study and comprehend. R also offers a number of options for advanced data analysis techniques such as machine learning, algorithms, and so on. Lastly, R makes it simple to do many data science operations since it excels at data wrangling, data visualization, statistical computations without vectors, and web applications, among other things, allowing you to swiftly collect and analyze massive quantities of data.

Mastering R programming skills are essential for a career in data science. According to recent reports, R is one of the top 10 recession-proof data science skills to master in 2023. By mastering R programming, data scientists can efficiently manipulate, analyze, and visualize large sets of data, making it a valuable skill to have in today's job market. Additionally, learning R can help you stay up to date with the latest tools and techniques in data science, enabling you to build a successful career in this field.

Let us take a deeper look at the R programming language's working mechanism, foundations, and features now that we've shown that R is the most powerful computer language for data research.

R is a programming language developed by University of Auckland faculty members Ross Ihaka and Robert Gentleman. It is a statistical programming language that is commonly used by data scientists and business executives to understand data.

Numerous computer languages may be used for data science processes, but R makes data assessment and collection fun and unique. R is a sophisticated programming language capable of doing a broad variety of complex statistical computations and calculations. As a result, it is widely used by data scientists and business leaders across a wide range of industries, from academia to industry.

Additionally, R graphically interprets the data, making it easy to study and comprehend. R also offers a number of options for advanced data analysis techniques such as machine learning, algorithms, and so on. Lastly, R makes it simple to do many data science operations since it excels at data wrangling, data visualization, statistical computations without vectors, and web applications, among other things, allowing you to swiftly collect and analyze massive quantities of data.

Mastering R programming skills are essential for a career in data science. According to recent reports, R is one of the top 10 recession-proof data science skills to master in 2023. By mastering R programming, data scientists can efficiently manipulate, analyze, and visualize large sets of data, making it a valuable skill to have in today's job market. Additionally, learning R can help you stay up to date with the latest tools and techniques in data science, enabling you to build a successful career in this field.

Let us take a deeper look at the R programming language's working mechanism, foundations, and features now that we've shown that R is the most powerful computer language for data research.

Decoding the Basics of R

R is a programming language that is frequently used in data research and machine learning. This programming language was invented in the 1900s and has gained popularity among data scientists in the last decade. When employed in data analysis, R yields intriguing outcomes - powerful analytics, fascinating visualizations, exact statistics, and so on. These distinctive characteristics make it a popular option among data scientists and business leaders.

Characteristics of R 

  • R is free software that anybody can use. Additionally, the programming language is versatile, making integration with other applications and procedures simple. Despite the fact that it is free and open-source software, the programming language emanates quality and is both useful and adaptable.
  • Powerful graphics is one of the appealing aspects of R programming. R is used by many data scientists for data analysis because it offers static graphics that provide high-quality data visualizations. Moreover, the programming language has a large library that includes interactive visuals and makes data visualization and representation simple to understand.
  • R includes everything that makes data analysis intriguing and simple, from elaborative and interactive flow diagrams to bar graphs.
  • R creates its own community. Since it is an open-source computer system that fosters a feeling of community among its users, the programming language is extensively utilized by data scientists and business executives all over the world.
  • R can be used to do basic and complicated mathematical and statistical calculations.
  • R is interoperable with computer languages such as C, C++, Java, Python, and others. Its functionalities are simple to include into many computer applications.

These and other qualities make R a popular option among data scientists. Surprisingly, R is used in data research by web apps such as Twitter, Google Analytics, BBC, and others. They utilize it to collect data and develop understandable data visualizations or graphs from which to derive conclusions and implement business decisions. 


Using R 

R is free to download and install since it is open-source software. The program may be downloaded and installed from the Comprehensive R Archive Network (CRAN) website. It may be quickly and easily installed in your operating system. You may also install RStudio, a package that simplifies R programming.

Don't forget to download add-on packages, which are pre-assembled collections of functions and objects that make running R easier and less time-consuming. Popular add-on packages include DBI, RMySQL, and RSQLite. Each package is simply available on the CRAN repository and may be downloaded.


R Analytics 

It refers to the process of analyzing data using R programming. For analyzing data, business executives and data science pioneers choose to utilize the R programming language because it generates error-free graphs and visuals. It is flawless in every way and is ready for publication right away. Furthermore, R is well-known for its visualizations, and we all know that drawings and graphs are simpler to understand for the average layperson. As a result, R is widely used in data science and data analysis.

R is a programming language that is frequently used in data research and machine learning. This programming language was invented in the 1900s and has gained popularity among data scientists in the last decade. When employed in data analysis, R yields intriguing outcomes - powerful analytics, fascinating visualizations, exact statistics, and so on. These distinctive characteristics make it a popular option among data scientists and business leaders.

Characteristics of R 

  • R is free software that anybody can use. Additionally, the programming language is versatile, making integration with other applications and procedures simple. Despite the fact that it is free and open-source software, the programming language emanates quality and is both useful and adaptable.
  • Powerful graphics is one of the appealing aspects of R programming. R is used by many data scientists for data analysis because it offers static graphics that provide high-quality data visualizations. Moreover, the programming language has a large library that includes interactive visuals and makes data visualization and representation simple to understand.
  • R includes everything that makes data analysis intriguing and simple, from elaborative and interactive flow diagrams to bar graphs.
  • R creates its own community. Since it is an open-source computer system that fosters a feeling of community among its users, the programming language is extensively utilized by data scientists and business executives all over the world.
  • R can be used to do basic and complicated mathematical and statistical calculations.
  • R is interoperable with computer languages such as C, C++, Java, Python, and others. Its functionalities are simple to include into many computer applications.

These and other qualities make R a popular option among data scientists. Surprisingly, R is used in data research by web apps such as Twitter, Google Analytics, BBC, and others. They utilize it to collect data and develop understandable data visualizations or graphs from which to derive conclusions and implement business decisions. 


Using R 

R is free to download and install since it is open-source software. The program may be downloaded and installed from the Comprehensive R Archive Network (CRAN) website. It may be quickly and easily installed in your operating system. You may also install RStudio, a package that simplifies R programming.

Don't forget to download add-on packages, which are pre-assembled collections of functions and objects that make running R easier and less time-consuming. Popular add-on packages include DBI, RMySQL, and RSQLite. Each package is simply available on the CRAN repository and may be downloaded.


R Analytics 

It refers to the process of analyzing data using R programming. For analyzing data, business executives and data science pioneers choose to utilize the R programming language because it generates error-free graphs and visuals. It is flawless in every way and is ready for publication right away. Furthermore, R is well-known for its visualizations, and we all know that drawings and graphs are simpler to understand for the average layperson. As a result, R is widely used in data science and data analysis.

Key Takeaways

In conclusion, getting an R programming certification can greatly benefit your career growth in 2023. The demand for professionals with data science skills continues to rise, and having a certification in R programming can set you apart from other candidates and lead to a wide range of career opportunities. These days, a lot of leading course providers offer various R programming courses online that facilitate learning for working professionals. It allows exploring endless career opportunities from data analysts and statisticians to machine learning engineers and data scientists and much more. So don't hesitate to invest in yourself and take the first step towards mastering R programming and unlocking a successful career in the field of data science.

In conclusion, getting an R programming certification can greatly benefit your career growth in 2023. The demand for professionals with data science skills continues to rise, and having a certification in R programming can set you apart from other candidates and lead to a wide range of career opportunities. These days, a lot of leading course providers offer various R programming courses online that facilitate learning for working professionals. It allows exploring endless career opportunities from data analysts and statisticians to machine learning engineers and data scientists and much more. So don't hesitate to invest in yourself and take the first step towards mastering R programming and unlocking a successful career in the field of data science.

Features

Table of Contents

  • Description

  • Growing Demand Worldwide

  • Necessary Qualifications

  • Utility of R Programming Language in Data Science

  • Decoding the Basics of R

  • Key Takeaways