Skip to content

Vectorization strategy selection through Autotuning

Dominic Kempf requested to merge feature/autotuned-sumfact-kernel into master

This is the MR for #125 (closed)

Tasks:

  • Generate a standalone C++ file for benchmarking a given sum factorization kernel
  • Above with fastdg
  • Above with h/l
  • Implement a way to do JIT compilation of benchmark programs (codepy?)
  • Asynchronize the cost function evaluation (instead of using min)
  • Add a pickle-cache for benchmarking results
  • Add an autotune cost model implementation
  • Think of an interface how benchmark programs communicate their measurements to the code generator
  • Tests
Edited by Dominic Kempf

Merge request reports

Loading