cuda-python 13.0.3


pip install cuda-python

  Latest version

Released: Oct 21, 2025


Meta
Author: NVIDIA Corporation

Classifiers

Operating System
  • POSIX :: Linux
  • Microsoft :: Windows

Topic
  • Software Development :: Libraries
  • Education
  • Scientific/Engineering

Intended Audience
  • Developers
  • Science/Research
  • End Users/Desktop

Programming Language
  • Python :: 3 :: Only
  • Python :: 3.9
  • Python :: 3.10
  • Python :: 3.11
  • Python :: 3.12
  • Python :: 3.13
  • Python :: Implementation :: CPython

Environment
  • GPU :: NVIDIA CUDA
  • GPU :: NVIDIA CUDA :: 12

CUDA Python is the home for accessing NVIDIA’s CUDA platform from Python. It consists of multiple components:

  • cuda.core: Pythonic access to CUDA Runtime and other core functionalities

  • cuda.bindings: Low-level Python bindings to CUDA C APIs

  • cuda.cooperative: A Python package providing CCCL’s reusable block-wide and warp-wide device primitives for use within Numba CUDA kernels

  • cuda.parallel: A Python package for easy access to CCCL’s highly efficient and customizable parallel algorithms, like sort, scan, reduce, transform, etc, that are callable on the host

  • numba.cuda: Numba’s target for CUDA GPU programming by directly compiling a restricted subset of Python code into CUDA kernels and device functions following the CUDA execution model.

For access to NVIDIA CPU & GPU Math Libraries, please refer to nvmath-python.

CUDA Python is currently undergoing an overhaul to improve existing and bring up new components. All of the previously available functionalities from the cuda-python package will continue to be available, please refer to the cuda.bindings documentation for installation guide and further detail.

cuda-python as a metapackage

cuda-python is now a metapackage that contains a collection of subpackages. Each subpackage is versioned independently, allowing installation of each component as needed.

Subpackage: cuda.core

The cuda.core package offers idiomatic, pythonic access to CUDA Runtime and other functionalities.

The goals are to

  1. Provide idiomatic (“pythonic”) access to CUDA Driver, Runtime, and JIT compiler toolchain

  2. Focus on developer productivity by ensuring end-to-end CUDA development can be performed quickly and entirely in Python

  3. Avoid homegrown Python abstractions for CUDA for new Python GPU libraries starting from scratch

  4. Ease developer burden of maintaining and catching up with latest CUDA features

  5. Flatten the learning curve for current and future generations of CUDA developers

Subpackage: cuda.bindings

The cuda.bindings package is a standard set of low-level interfaces, providing full coverage of and access to the CUDA host APIs from Python.

The list of available interfaces are:

  • CUDA Driver

  • CUDA Runtime

  • NVRTC

  • nvJitLink

  • NVVM

  • cuFile

Wheel compatibility matrix

Platform Python 3
any

Files in release

Extras:
Dependencies:
cuda-bindings (~=13.0.3)
cuda-pathfinder (~=1.1)