This course covers advanced topics in R programming that are necessary for developing powerful, robust, and reusable data science tools.
Topics covered include functional programming in R, robust error handling, object oriented programming, profiling and benchmarking, debugging, and proper design of functions. Upon completing this course you will be able to identify and abstract common data analysis tasks and to encapsulate them in user-facing functions. Because every data science environment encounters unique data challenges, there is always a need to develop custom software specific to your organization’s mission.
You will also be able to define new data types in R and to develop a universe of functionality specific to those data types to enable cleaner execution of data science tasks and stronger re-usability within a team. For more information related online courses you can visit John Hopkins University Courses.
It’s a tough reality: every year, over 14.1 million workers suffer from work-related injuries. For…
If you’ve ever wanted to learn how to cook, but didn’t know where to start,…
Choosing the right career path can be a daunting task, especially with the myriad of…
Believe it or not, the concept of human resources has existed for more than 100…
Web3 managed to change the gaming industry by leveraging blockchain technology. It offers a decentralized…
College is often fun and is filled with lots of activities, especially in the first…