# P³LS³ **P**redictable **P**arallel **P**atterns **L**ibrary for **S**calable **S**mart **S**ystems [![pipeline status](http://lab.las3.de/gitlab/las3/development/scheduling/predictable_parallel_patterns/badges/master/pipeline.svg)](http://lab.las3.de/gitlab/las3/development/scheduling/predictable_parallel_patterns/commits/master) ## Project Structure The project uses [CMAKE](https://cmake.org/) as it's build system, the recommended IDE is either a simple text editor or [CLion](https://www.jetbrains.com/clion/). We divide the project into subtargets to separate for the library itself, testing and example code. The library itself can be found in `lib/pls`, testing related code is in `test`, example and playground apps are in `app`. ### Buiding To build the project first create a folder for the build (typically as a subfolder to the project) using `mkdir cmake-build-debug`. Change to the new folder `cd cmake-build-debug` and init the cmake project using `cmake ../ -DCMAKE_BUILD_TYPE=DEBUG`. For realease builds do the same only with build type `RELEASE`. Other build time settings can also be passed at this setup step. After this is done you can use normal `make` commands like `make` to build everything `make ` to build a target or `make install` to install the library globally. ### Testing Testing is done using [Catch2](https://github.com/catchorg/Catch2/) in the test subfolder. Tests are build into a target called `tests` and can be executed simply by building this executabe and running it. ### Data Race Detection As this project contains a lot concurrent code we use [Thread Sanitizer](https://github.com/google/sanitizers/wiki/ThreadSanitizerCppManual) in our CI process and optional in other builds. To setup CMake builds with sanitizer enabled add the cmake option `-DTHREAD_SANITIZER=ON`. Please regularly test with thread sanitizer enabled and make sure to not keep the repository in a state where the sanitizer reports errors. Consider reading [the section on common data races](https://github.com/google/sanitizers/wiki/ThreadSanitizerPopularDataRaces) to get an idea of what we try to avoid in our code. ### Profiling To make profiling portable and allow us to later analyze the logs programaticly we use [easy_profiler](https://github.com/yse/easy_profiler) for capturing data. To enable profiling install the library on your system (best building it and then running `make install`) and set the cmake option `-DEASY_PROFILER=ON`. After that see the `invoke_parallel` example app for activating the profiler. This will generate a trace file that can be viewed with the `profiler_gui ` command. Please note that the profiler adds overhead when looking at sub millisecond method invokations as we do and it can not replace a seperate profiler like `gperf` or `valgrind` for detailed analysis. We still think it makes sense to add it in as an optional feature, as the customizable colors and fine grained events (including collection of variables) can be used to visualize the `big picture` of program execution. Also, we hope to use it to log 'events' like successful and failed steals in the future, as the general idea of logging information per thread efficiently might be helpful for further analysis.