Unifying Python/C++/CUDA memory: Python buffered array -> C++11 `std::vector` -> CUDA managed memory


Keywords
Python, C, C++, buffer, vector, array, CUDA, CPython, SWIG, pybind11, extensions, API, cpp, cpu, cpython-api, cpython-extensions, cxx, gpu, hacktoberfest
License
MPL-2.0
Install
pip install cuvec==6.0.0

Documentation

CuVec

Unifying Python/C++/CUDA memory: Python buffered array ↔ C++11 std::vector ↔ CUDA managed memory.

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Why

Data should be manipulated using the existing functionality and design paradigms of each programming language. Python code should be Pythonic. CUDA code should be... CUDActic? C code should be... er, Clean.

However, in practice converting between data formats across languages can be a pain.

Other libraries which expose functionality to convert/pass data formats between these different language spaces tend to be bloated, unnecessarily complex, and relatively unmaintainable. By comparison, cuvec uses the latest functionality of Python, C/C++11, and CUDA to keep its code (and yours) as succinct as possible. "Native" containers are exposed so your code follows the conventions of your language. Want something which works like a numpy.ndarray? Not a problem. Want to convert it to a std::vector? Or perhaps a raw float * to use in a CUDA kernel? Trivial.

  • Less boilerplate code (fewer bugs, easier debugging, and faster prototyping)
  • Fewer memory copies (faster execution)
  • Lower memory usage (do more with less hardware)

Anything to do with mathematical functionality. The aim is to expose functionality, not (re)create it.

Even something as simple as setting element values is left to the user and/or pre-existing features - for example:

  • Python: arr[:] = value
  • NumPy: arr.fill(value)
  • CuPy: cupy.asarray(arr).fill(value)
  • C++: std::fill(vec.begin(), vec.end(), value)
  • C & CUDA: memset(vec.data(), value, sizeof(T) * vec.size())

Requirements:

  • Python 3.7 or greater (e.g. via Anaconda or Miniconda, or via python3-dev)
  • (optional) CUDA SDK/Toolkit (including drivers for an NVIDIA GPU)
    • note that if the CUDA SDK/Toolkit is installed after CuVec, then CuVec must be re-installed to enable CUDA support
pip install cuvec

See the usage documentation and quick examples of how to upgrade a Python ↔ C++ ↔ CUDA interface.

See also NumCu, a minimal stand-alone Python package built using CuVec.

For integration into Python, C++, CUDA, CMake, pybind11, and general SWIG projects, see the external project documentation. Full and explicit example modules using the CPython API, pybind11 API, and SWIG are also provided.

See CONTRIBUTING.md.

Licence DOI

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