Python library for fast time-series analysis on CUDA GPUs
GPL-3.0 License
Published by johnh2o2 over 3 years ago
PyCUDA version requirement changed to >=2017.1.1, fixed memory leak in BLS.
>=2017.1.1
CUDA integration for Python, plus shiny features
Solutions to Advent of Code 2020 using Numba and CUDA
Rapid large-scale fractional differencing with NVIDIA RAPIDS and GPU to minimize memory loss whil...
NumPy & SciPy for GPU
Python interface to GPU-powered libraries
Implementation of the Apriori and Eclat algorithms, two of the best-known basic algorithms for mi...
A project demonstrating Lidar related AI solutions, including three GPU accelerated Lidar/camera ...
A brian2 extension to simulate spiking neural networks on GPUs
Spatial Sparse Convolution Library
A general cubic equation solver and quartic equation minimisation solver written for CPU and Nvid...
Unifying Python/C++/CUDA memory: Python buffered array ↔️ `std::vector` ↔️ CUDA managed memory
Robotics with GPU computing
GPU Accelerated t-SNE for CUDA with Python bindings
The fastest way to compute matrix profiles on CPU and GPU!
A suite of benchmarks for CPU and GPU performance of the most popular high-performance libraries ...