numpy / numpy-user-dtypesLinks
Repository for example user DTypes using the new API
☆38Updated 3 weeks ago
Alternatives and similar repositories for numpy-user-dtypes
Users that are interested in numpy-user-dtypes are comparing it to the libraries listed below
Sorting:
- Manipulating ragged arrays in an Array API compliant way.☆45Updated last month
- Developer tool for scientific Python libraries☆127Updated 2 weeks ago
- Experimental Typing Stubs for NumPy☆72Updated last week
- Multi-dimensional data arrays with labeled dimensions☆139Updated this week
- Compatibility layer for common array libraries to support the Array API☆112Updated last week
- Static typing support for the array API standard☆21Updated last week
- Extra array functions built on top of the array API standard.☆25Updated this week
- Meson PEP 517 Python build backend☆174Updated last week
- Strict implementation of the Python array API (previously numpy.array_api)☆29Updated this week
- ☆35Updated last year
- Scientific Python Ecosystem Coordination (SPEC) documents☆100Updated last month
- Native Dask collection for awkward arrays, and the library to use it.☆69Updated this week
- A profiler for Numba☆87Updated 11 months ago
- Framework that can run checks on repos☆86Updated this week
- Creates performance portable libraries with embedded source representations.☆29Updated last year
- Set of compression filters for h5py☆78Updated 2 weeks ago
- Python bindings for the C++14 Boost::Histogram library☆156Updated this week
- Histograms with task scheduling.☆25Updated last week
- Typing Stubs for SciPy☆82Updated this week
- Explore HDF5 files in terminal & HTML views☆81Updated last year
- Vector classes and utilities☆97Updated this week
- Populate library namespace without incurring immediate import costs☆202Updated last month
- Scientific Python Library Development Guide and Cookiecutter☆380Updated this week
- Masked versions of array API compatible arrays☆28Updated last month
- Special function implementations☆27Updated 3 weeks ago
- RFC document, tooling and other content related to the array API standard☆264Updated last month
- Set up your GitHub Actions workflow to use MPI☆37Updated last month
- Parallel NumPy seamlessly speeds up NumPy for large arrays (64K+ elements) with no change required to existing code.☆66Updated 5 years ago
- Meta-package providing the oldest supported Numpy for a given Python version and platform☆54Updated last year
- In-situ analysis with Python, C/C++ simulation, and Jupyter☆21Updated last month