Home/Technology/Data-Oriented C++ in Scientific Programming

Data-Oriented C++ in Scientific Programming

By CourseraBeginner★ 4.955 hours🎓 Certificate

Learn how to write efficient, maintainable C++ code for data-intensive applications in this hands-on course. Key application areas include scientific simulation software, statistical data processing, and computer graphics. You’ll begin by exploring how modern C++ supports high-efficiency programming and review the principles of a central piece of hardware in data-intensive applications: computer memory. Next, the course shifts to software design. You’ll examine performance shortcomings of traditional object-oriented programming and dive into data-oriented perspective, which improves performance by structuring code around the data itself. You’ll learn how this paradigm overcomes bottlenecks and leads to more scalable, high-performance solutions. Finally, you’ll apply these principles to modern multi-threaded systems. Through hands-on experience you will learn to use C++'s built-in parallel features to target both multi-core CPUs and GPUs.

Interested in this course?

Get free information from Coursera

By submitting this form, you agree that your enquiry details (name, email, phone) will be shared with Coursera to respond to your course enquiry. See our Privacy Policy.