I saw a talk by Keith Adams of Facebook comparing machine learning techniques to tuning code for improved performance in the real world. Are there examples of such automation techniques being applied in real projects? I
I know of profile guided optimizations in certain compilers and also some techniques JIT compilers use to improve performance, but I am thinking of more fundamental ways to improve code performance that could require changing the code itself and not code generation. Things like:
- Choosing the optimal buffer size in a particular network application or choosing the right stack size for particular application.
- Selecting the struct layout in a multi-threaded application that improves local cache performance while reducing false sharing.
- Selecting different data structures all together for a certain algorithm.
I read a paper on Halide, an image processing framework that uses genetic algorithms to auto-tune image processing pipelines to improve performance. Examples like this one or any pointers to research would be useful.