Advanced R Programming Training Course
This course is designed for data scientists and statisticians who already possess fundamental knowledge of R and C++ coding, as well as experience with R scripts, and now require advanced R programming skills.
The aim is to provide a practical, advanced R programming course tailored for participants who wish to apply these methods in their professional work.
Industry-specific examples are utilized to ensure the training is highly relevant to the audience's needs.
This course is available as onsite live training in Kenya or online live training.Course Outline
- R's environment
- Object oriented programming in R
- S3
- S4
- Reference classes
- Performance profiling
- Exception handling
- Debugging R code
- Creating R packages
- Unit testing
- C/C++ coding in R
- SEXPRs
- Calling dynamically loaded libraries from R
- Writing and compiling C/C++ code from R
- Improving R's performance with C++ linear algebra library
Requirements
Linux Operating System
Need help picking the right course?
southafrica@nobleprog.co.za or +27 (0)10 005 5793
Advanced R Programming Training Course - Enquiry
Testimonials (3)
Wasn't boring, the trainer could keep the attention, the topics were covered in depth.
Marta - Ministerstwo Zdrowia
Course - Advanced R Programming
ogical explanation of the issues discussed
Anna - Ministerstwo Zdrowia
Course - Advanced R Programming
Many examples and exercises related to the topic of the training.
Tomasz - Ministerstwo Zdrowia
Course - Advanced R Programming
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