# `debug-info-for-profiling --- ## Introduction Automatic Feedback Directed Optimization (AFDO) is a method for using sampling based profiles to guide optimizations. This is contrasted with other methods of FDO or profile-guided optimization (PGO) which use instrumented profiling. Unlike PGO (controlled by the `rustc` flags `-Cprofile-generate` and `-Cprofile-use`), a binary being profiled does not perform significantly worse, and thus it's possible to profile binaries used in real workflows and not necessary to construct artificial workflows. ## Use In order to use AFDO, the target platform must be Linux running on an `x86_64` architecture with the performance profiler `perf` available. In addition, the external tool `create_llvm_prof` from [this repository] must be used. Given a Rust file `main.rs`, we can produce an optimized binary as follows: ```shell rustc -O -Zdebug-info-for-profiling main.rs -o main perf record -b ./main create_llvm_prof --binary=main --out=code.prof rustc -O -Zprofile-sample-use=code.prof main.rs -o main2 ``` The `perf` command produces a profile `perf.data`, which is then used by the `create_llvm_prof` command to create `code.prof`. This final profile is then used by `rustc` to guide optimizations in producing the binary `main2`. [this repository]: https://github.com/google/autofdo