Peter Zhang
Apr 23, 2025 13:20
NVIDIA has open-sourced cuPyNumeric 25.03, enhancing its accessibility with PIP set up and native HDF5 help, fostering transparency and collaboration in multi-GPU computing.
NVIDIA has introduced that its cuPyNumeric 25.03 library is now utterly open supply, marking a major milestone in its improvement. The replace introduces highly effective new capabilities, together with help for PIP set up and native HDF5 IO, in keeping with NVIDIA.
Full Open Supply Transition
With this newest launch, NVIDIA has open-sourced your complete stack of cuPyNumeric, together with the Legate framework and runtime layer that powers it, beneath the Apache 2 license. This transition underscores NVIDIA’s dedication to fostering transparency, reproducibility, and collaboration within the improvement group. The open-source nature permits contributors to discover, audit, and improve the system with out obstacles.
PIP Set up Assist
Beforehand installable solely through conda, cuPyNumeric can now be put in utilizing PIP, simplifying the setup course of considerably. This enhancement facilitates simpler integration into workflows, digital environments, and CI pipelines. The cuPyNumeric package deal on PyPI is multinode and multirank succesful, supporting each single-node a number of GPUs and multi-GPU multinode clusters.
Native HDF5 IO Assist
One other notable function of cuPyNumeric 25.03 is its native help for HDF5 by GPU Direct Storage, which optimizes the dealing with of huge datasets. This function ensures environment friendly IO operations, vital for high-performance computing and data-intensive purposes. Customers can now handle complicated knowledge constructions with improved efficiency and portability.
Set up and Utilization
The set up course of has been streamlined to incorporate a easy PIP command: pip set up nvidia-cupynumeric
. This replace bundles all main dependencies besides MPI, that are in any other case simply resolvable by PyPI. NVIDIA supplies detailed steering on organising and operating cuPyNumeric on SLURM clusters, emphasizing the benefit of use in multinode and multirank environments.
For additional particulars and to discover the excellent capabilities of cuPyNumeric 25.03, NVIDIA encourages customers to evaluate the official launch notes and contribute to the continued improvement through the GitHub repository.
Picture supply: Shutterstock