data-apis / array-api-strictLinks
Strict implementation of the Python array API (previously numpy.array_api)
☆25Updated this week
Alternatives and similar repositories for array-api-strict
Users that are interested in array-api-strict are comparing it to the libraries listed below
Sorting:
- Static typing support for the array API standard☆12Updated last week
- Extra array functions built on top of the array API standard.☆19Updated last week
- Compatibility layer for common array libraries to support the Array API☆98Updated last week
- Manipulating ragged arrays in an Array API compliant way.☆44Updated last week
- ☆35Updated 4 months ago
- Developer tool for scientific Python libraries☆114Updated last month
- Upload a Jupyter notebook as a Gist with the click of a button.☆20Updated last year
- xarray data creation by data classes☆80Updated 5 months ago
- Special function implementations☆17Updated 2 weeks ago
- Creates performance portable libraries with embedded source representations.☆25Updated 6 months ago
- Framework that can run checks on repos☆81Updated 2 weeks ago
- [DEPRECATED] Use setup-micromamba instead☆74Updated 2 years ago
- Histograms with task scheduling.☆24Updated 2 weeks ago
- Typing Stubs for SciPy☆50Updated this week
- Masked versions of array API compatible arrays☆22Updated this week
- ☆84Updated 9 months ago
- Experimental Typing Stubs for NumPy☆39Updated last week
- ☆12Updated last week
- Scientific Python Ecosystem Coordination (SPEC) documents☆92Updated 2 months ago
- A Sphinx extension that integrates JupyterLite within your Sphinx documentation☆78Updated this week
- Sanity checking for numerical properties/traits☆37Updated 9 years ago
- Opinionated typing package for precise type hints in Python☆44Updated 2 weeks ago
- Numerical derivatives for Python☆45Updated this week
- NumPy ufuncs and utilities.☆52Updated last week
- Prototype for mpl-gui module☆14Updated 5 months ago
- Decorators to make it easier to write SciPy LowLevelCallables☆22Updated 4 years ago
- Parallel NumPy seamlessly speeds up NumPy for large arrays (64K+ elements) with no change required to existing code.☆63Updated 4 years ago
- For when your data won't fit in your dataframe☆46Updated 2 months ago
- pyOpenSci's guidebook for package authors, reviewers, and editors☆69Updated 2 weeks ago
- Convert conda-forge feedstock to rattler-build☆21Updated 3 weeks ago