This four-day course is designed for existing R users who want to extend their knowledge of the language beyond the use of existing CRAN packages. Perhaps with the aim of increasing the depth of your understanding into how different functions work, or in order to progress into developing your own algorithms and packaged software.
This course introduces engineering and software development concepts with practical programming exercises and covers essential topics such as the range of built-in data structures and data types, controlling the flow of a program with selection and iteration, creating your own methods and data structures, creating programs following development best practices, and assessing and improving the performance of your code.
You will also have the opportunity to tackle a consolidation project in which time series data is analysed with differing decision signals to simulate the past effect that a decision making strategy would have had – these skills and knowledge are transferable to many other simulated situations in a multitude of sectors.
For those wishing to certify as Data Scientists this course is aligned with many certifications and professional frameworks in order to support you on your learning journey. In particular for experienced Data Science or Data Analysts, Machine Learning Engineers, Software Developers, and those with similar responsibilities.
It is expected that you will have experience with R and R Studio (or another IDE) previously or experience with another programming language for Software Development. We offer many R courses and would suggest QADHR Data Handling with R as a starting point for anyone not already comfortable with the base R language and Tidyverse.
Target Audience
This course is for individuals who have experience with Python or R in the context of a Data Science or related field.
Delegates must be existing R users who have attended:
R for Data Handling (QADHR) or Python Programming (QAPYTH3)
or have a similar level of knowledge in another programming language.
Introduction to R for Programmers
Atomic Datatypes and Fundamental Operations
Heterogeneous Datatype Containers and Addressing
Homogeneous Datatype Containers, Casting, and Piecewise Operations
Selection
Iteration
Creating Subroutines
Programming Paradigms
Development Practices
Performance Enhancement
Developer Tools and Packaging
Practice Project – Strategy Testing
Related learning
Data Science Learning Pathways can be selected by choosing either Python or R and a Cloud Platform certification:
Suggested Certifications:
Join our public courses in our Sweden facilities. Private class trainings will be organized at the location of your preference, according to your schedule.