michaelnowotny / cocos
Numeric and scientific computing on GPUs for Python with a NumPy-like API
☆93Updated 3 years ago
Alternatives and similar repositories for cocos:
Users that are interested in cocos are comparing it to the libraries listed below
- An augmented version of cProfile and Snakeviz☆27Updated 7 years ago
- Pyculib - Python bindings for CUDA libraries☆97Updated 6 years ago
- Subsumed into xnd☆81Updated last year
- Automatic parallelization of Python/NumPy, C, and C++ codes on Linux and MacOSX☆220Updated 4 years ago
- A Python library for manipulating indices of ndarrays☆102Updated 5 months ago
- Cookiecutter for a Python project making use of xtensor☆31Updated 5 years ago
- Cython interface for the GNU Scientific Library (GSL).☆121Updated 2 years ago
- Make your Python code fly at transonic speeds!☆121Updated 2 weeks ago
- IPython magic for parallel profiling (like `%time`, but parallel)☆71Updated 7 years ago
- Python implementation of Mathematics of Arrays (MOA)☆23Updated 4 years ago
- A backend-dispatchable version of NumPy.☆19Updated 4 years ago
- AlgoPy is a Research Prototype for Algorithmic Differentation in Python☆83Updated 8 months ago
- Subsumed into xnd☆25Updated last year
- ArrayViews: creating specific views to array storage objects☆17Updated 6 years ago
- Python histogram library - histograms as updateable, fully semantic objects with visualization tools. [P]ython [HYST]ograms.☆133Updated 3 weeks ago
- Module for supporting writing in a single source file a python module and a corresponding cython module. Contrary to cython pure python m…☆26Updated 8 years ago
- Press conda packages into wheels☆115Updated last year
- ☆76Updated 6 months ago
- Perform high-speed calculations on columnar data without creating intermediate objects.☆81Updated 6 years ago
- A general dispatch and override mechanism for Python.☆105Updated this week
- JET is a different approach to make numeric python substantially faster☆66Updated 7 years ago
- Domain Specific Languages in Python☆96Updated last year
- Parallel NumPy seamlessly speeds up NumPy for large arrays (64K+ elements) with no change required to existing code.☆61Updated 4 years ago
- MPI parallel map and cluster scheduling☆60Updated last week
- Python exposure of dynd☆120Updated 2 years ago
- Numba tutorial materials for Scipy 2016☆144Updated 7 years ago
- Accurate sums and dot products for Python.☆105Updated 3 years ago
- Fast, transparent calculations of first and second-order automatic differentiation☆46Updated last year
- Easy Plot - A thin matplotlib wrapper for generating fast, easy and reusable plots in Python☆166Updated 6 years ago
- A collection of scientific kernels using the numpy module for benchmarking purpose☆38Updated 4 years ago