Intel Python
Grow your team on GitHub
GitHub is home to over 50 million developers working together. Join them to grow your own development teams, manage permissions, and collaborate on projects.
Sign up
Pinned repositories
Repositories
-
scikit-learn_bench
Benchmark for optimizations to scikit-learn in the Intel Distribution for Python*
-
-
dpctl
A library exposing a lightweight C-API for SYCL to use in Python applications including Numba.
-
sdc
Intel® Scalable Dataframe Compiler for Pandas*
-
bearysta
Pandas-based statistics aggregation tool
-
mkl_random
Python interface to Intel(R) Math Kernel Library's random number generation functionality
-
container-images
Dockerfiles for building docker images
-
scikit-ipp
A standalone package, provided scikit-image-like API to Intel® IPP
-
-
Numba_Extension_Proposals
The repository contains the proposal to add a new automatic offload feature to Numba
-
smp
Static partitioning and thread affinity for nestable Symmetric Multi-Processing
-
intel_repack-feedstock
Forked from conda-forge/intel_repack-feedstockA conda-smithy repository for intel_repack.
-
source-publish
Sources used in Intel Python that have a license that requires publication: GPL, LGPL, MPL
-
sdc-doc
Documentation pages for SDC.
-
mkl-service
Python hooks for Intel(R) Math Kernel Library runtime control settings.
-
ibench
Benchmarks for python
-
BlackScholes_bench
Benchmark computing Black Scholes formula using different technologies
-
optimizations_bench
Collection of performance benchmarks used to present optimizations implemented for Intel(R) Distribution for Python*
-
scikit-learn-bench-contrib
Forked from jeremiedbb/scikit-learn_benchmarksBenchmark suite for scikit-learn performances
-
virtual_machine_image_recipes
Packer build templates to create Virtual Machine Images with the Intel® Distribution for Python* built-in.
-
composability_bench
Show effects of over-subscription and ways to fix that
-
-
workshop
Getting Python Performance with Intel(R) Distribution for Python
-
examples
Examples and sample code showcasing features of the Intel(R) Distribution for Python