Intel(R) Extension for Scikit-learn is a seamless way to speed up your Scikit-learn application. The acceleration is achieved through the use of the Intel(R) oneAPI Data Analytics Library (oneDAL). Patching scikit-learn makes it a well-suited machine learning framework for dealing with real-life problems.
Running the latest scikit-learn test suite with Intel(R) Extension for Scikit-learn:
We publish blogs on Medium, so follow us to learn tips and tricks for more efficient data analysis with the help of Intel(R) Extension for Scikit-learn. Here are our latest blogs:
- Superior Machine Learning Performance on the Latest Intel Xeon Scalable Processors
- Leverage Intel Optimizations in Scikit-Learn
- Intel Gives Scikit-Learn the Performance Boost Data Scientists Need
- From Hours to Minutes: 600x Faster SVM
- Improve the Performance of XGBoost and LightGBM Inference
- Accelerate Kaggle Challenges Using Intel AI Analytics Toolkit
- Accelerate Your scikit-learn Applications
- Accelerate Linear Models for Machine Learning
- Accelerate K-Means Clustering
- Documentation
- scikit-learn API and patching
- Benchmark code
- Building from Sources
- About Intel(R) oneAPI Data Analytics Library
- About Intel(R) daal4py
Report issues, ask questions, and provide suggestions using:
You may reach out to project maintainers privately at [email protected]
Intel(R) Extension for Scikit-learn is available at the Python Package Index, on Anaconda Cloud in Conda-Forge channel and in Intel channel. Intel(R) Extension for Scikit-learn is also available as a part of Intel® oneAPI AI Analytics Toolkit (AI Kit).
# PyPi (recommended by default)
pip install scikit-learn-intelex
# Anaconda Cloud from Conda-Forge channel (recommended for conda users by default)
conda install scikit-learn-intelex -c conda-forge
# Anaconda Cloud from Intel channel (recommended for Intel® Distribution for Python users)
conda install scikit-learn-intelex -c intel
[Click to expand] ℹ️ Supported configurations
OS / Python version | Python 3.6 | Python 3.7 | Python 3.8 | Python 3.9 |
---|---|---|---|---|
Linux | [CPU, GPU] | [CPU, GPU] | [CPU, GPU] | ❌ |
Windows | [CPU, GPU] | [CPU, GPU] | [CPU, GPU] | ❌ |
OsX | [CPU] | [CPU] | [CPU] | ❌ |
OS / Python version | Python 3.6 | Python 3.7 | Python 3.8 | Python 3.9 |
---|---|---|---|---|
Linux | [CPU] | [CPU] | [CPU] | [CPU] |
Windows | [CPU] | [CPU] | [CPU] | [CPU] |
OsX | [CPU] | [CPU] | [CPU] | [CPU] |
OS / Python version | Python 3.6 | Python 3.7 | Python 3.8 | Python 3.9 |
---|---|---|---|---|
Linux | [CPU, GPU] | [CPU, GPU] | [CPU, GPU] | ❌ |
Windows | [CPU, GPU] | [CPU, GPU] | [CPU, GPU] | ❌ |
OsX | [CPU] | [CPU] | [CPU] | ❌ |
[Click to expand] ℹ️ How to install dpcpp_cpp_rt package
# PyPi
pip install --upgrade dpcpp_cpp_rt
# Anaconda Cloud
conda install dpcpp_cpp_rt -c intel
You can build the package from sources as well.
Intel CPU optimizations patching
import numpy as np
from sklearnex import patch_sklearn
patch_sklearn()
from sklearn.cluster import DBSCAN
X = np.array([[1., 2.], [2., 2.], [2., 3.],
[8., 7.], [8., 8.], [25., 80.]], dtype=np.float32)
clustering = DBSCAN(eps=3, min_samples=2).fit(X)
Intel GPU optimizations patching
import numpy as np
from sklearnex import patch_sklearn
from daal4py.oneapi import sycl_context
patch_sklearn()
from sklearn.cluster import DBSCAN
X = np.array([[1., 2.], [2., 2.], [2., 3.],
[8., 7.], [8., 8.], [25., 80.]], dtype=np.float32)
with sycl_context("gpu"):
clustering = DBSCAN(eps=3, min_samples=2).fit(X)
- HW: c5.24xlarge AWS EC2 Instance using an Intel Xeon Platinum 8275CL with 2 sockets and 24 cores per socket
- SW: scikit-learn version 0.24.2, scikit-learn-intelex version 2021.2.3, Python 3.8
[Click to expand] ℹ️ Reproduce results
# With Intel® Extension for Scikit-learn enabled:
python runner.py --configs configs/blogs/skl_conda_config.json –report
# With the original Scikit-learn:
python runner.py --configs configs/blogs/skl_conda_config.json –report --no-intel-optimized
Intel(R) Extension for Scikit-learn patching affects performance of specific Scikit-learn functionality. Refer to the list of supported algorithms and parameters for details. In cases when unsupported parameters are used, the package fallbacks into original Scikit-learn. If the patching does not cover your scenarios, submit an issue on GitHub.
To find out which implementation of the algorithm is currently used (Intel(R) Extension for Scikit-learn or original Scikit-learn), set the environment variable:
- On Linux and Mac OS:
export SKLEARNEX_VERBOSE=INFO
- On Windows:
set SKLEARNEX_VERBOSE=INFO
For example, for DBSCAN you get one of these print statements depending on which implementation is used:
SKLEARNEX INFO: sklearn.cluster.DBSCAN.fit: running accelerated version on CPU
SKLEARNEX INFO: sklearn.cluster.DBSCAN.fit: fallback to original Scikit-learn