mkl
Here are 90 public repositories matching this topic...
Deep Learning With C++
-
Updated
Oct 2, 2017 - Makefile
This program is used for solving Poisson Equation with several methods. And each methods are parallelized with openMP, MPI and GPU
-
Updated
Oct 25, 2017 - C
Multiple Kernel Learning Model for Relating Structural and Functional Connectivity in the Brain
-
Updated
Feb 14, 2018 - MATLAB
End-to-end speech recognition using TensorFlow
-
Updated
Apr 2, 2018 - Python
This is an implementation of unsupervised multiple kernel learning (U-MKL) for dimensionality reduction, which builds upon a supervised MKL technique by Lin et al (10.1109/TPAMI.2010.183).
-
Updated
Jun 27, 2018 - MATLAB
A fortran 90 implementation of a parallel eigensolver for symmetric tridiagonal matrices
-
Updated
Jul 4, 2018 - Fortran
Optimized tensorflow wheels binaries build for macos
-
Updated
Jul 19, 2018 - Shell
A third-party distribution of Multiwfn for gfortran, 100% free!
-
Updated
Jul 31, 2018 - Fortran
-
Updated
Mar 10, 2019 - C
The repository targets the OpenCL gemm function performance optimization. It compares several libraries clBLAS, clBLAST, MIOpenGemm, Intel MKL(CPU) and cuBLAS(CUDA) on different matrix sizes/vendor's hardwares/OS. Out-of-the-box easy as MSVC, MinGW, Linux(CentOS) x86_64 binary provided. 在不同矩阵大小/硬件/操作系统下比较几个BLAS库的sgemm函数性能,提供binary,开盒即用。
-
Updated
Mar 28, 2019 - C
Basic Linear Algebra Subprograms for .Net
-
Updated
Apr 23, 2019 - C#
Containerized Intel's Optimized Tools and Frameworks for Machine Learning and Deep Learning
-
Updated
May 7, 2019 - Opa
Fully setting up and installing R in Windows / Debian / Ubuntu (Version: 3.5.1)
-
Updated
May 19, 2019
This repository houses the Statslabs.Matrix Linear Algebra Library for use while learning C++ from Bjarne Stroustrup's book 'The C++ Programming Language (4th Edition)'
-
Updated
May 30, 2019 - C++
Improve this page
Add a description, image, and links to the mkl topic page so that developers can more easily learn about it.
Add this topic to your repo
To associate your repository with the mkl topic, visit your repo's landing page and select "manage topics."