FeaturizersLibrary/Readme.md

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Data Pipelines

Data Pipelines are used to convert from arbitrary data into a matrix/tensor that can be consumed by machine learning algorithms.

Developer Quick Start

Note that these commands should be invoked within the root of the repository.

Linux

  1. Run sudo bootstrap.sh ..

    This will need to happen once per machine or after a repository has moved to a different directory. Note that sudo is not necessary when running within a Docker container.

  2. Run source ./Activate.sh x64

    This will need to happen each time a new terminal window is opened.

Windows

  1. Run bootstrap.cmd ..

    This will need to happen once per machine or after a repository has moved to a different directory.

  2. Run Activate.cmd x64

    This will need to happen each time a new terminal window is opened.

Useful Development Commands

The following commands are available within an activated terminal window.

Name Command Description
DevEnvScripts `DevEnvScripts.sh .cmd`
Builder `Builder.sh .cmd`
Tester `Tester.sh .cmd`
Formatter `Formatter.sh .cmd`

Invoking CMake

Native code is built via CMake. The following commands can be used to build any folder that contains a CMakeLists.txt file. In each example, create a build directory that will contain the generated CMake content and eventual binaries.

Assumed directory structure:

| - <Workspace dir>
    | - CMakeLists.txt
    | - ...
    | - build
        | - <Initially empty>

Within <Workspace Dir>/build run...

  • [Debug] cmake -G Ninja ..
  • [Debug with Code Coverage] cmake -G Ninja -D CppCommon_CODE_COVERAGE=ON ..
  • [Release] cmake -G Ninja -D CMAKE_BUILD_TYPE=Release ..

Once CMake has generated the build files, within <WorkSpace Dir>/build run...

  • [Build] cmake --build . or ninja -v (if the build generator was Ninja)
  • [Test] ctest --parallel