![]() MATLAB users who require their code to run faster can use the presented techniques as a starting point for code optimization, keeping in mind that many other speedup techniques can be applied. In his presentation, Yair discusses using the built-in Profiler tool in MATLAB, as well as simple yet effective loop optimizations, data caching, graphics rendering and interaction, and various tradeoffs that should be considered with code optimization. The presentation showcases several common use cases where simple MATLAB code changes and techniques can result in significant run-time speedups. To dispel these misconceptions, Yair presents a small taste of the numerous potential speedup methods that can be applied to MATLAB code in a short whirlwind overview of several diverse speedup techniques. Moreover, many users assume that MATLAB code can only be sped up using vectorization and parallelization, and in cases where these are not possible or applicable for any reason, then nothing significant can be done to improve the code’s run time. Much of this misconception arises from suboptimal user code, as well as inefficient use of available MATLAB tools and functions.
0 Comments
Leave a Reply. |
AuthorWrite something about yourself. No need to be fancy, just an overview. ArchivesCategories |