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Samples that illustrate the usage of Intel Extension for Scikit-learn
🛠️ Library Engineering
Introduced a new Python package, Intel® Extension for Scikit-learn*. The scikit-learn-intelex package contains scikit-learn patching functionality that was originally available in daal4py package. All future updates for the patches will be available only in Intel® Extension for Scikit-learn. We recommend using scikit-learn-intelex package instead of daal4py.
Download the extension using one of the following commands:
pip install scikit-learn-intelex
conda install scikit-learn-intelex -c conda-forge
Enable Scikit-learn patching:
from sklearnex import patch_sklearn
patch_sklearn()
Introduced optional dependencies on DPC++ runtime to daal4py. To enable DPC++ backend, install dpcpp_cpp_rt package. It reduces the default package size with all dependencies from 1.2GB to 400 MB.
Added the support of building oneDAL-based applications with /MD and /MDd options on Windows. The -d suffix is used in the names of oneDAL libraries that are built with debug run-time (/MDd).
🚨 What's New
Introduced new oneDAL and daal4py functionality:
CPU:
SVM Regression algorithm
NuSVM algorithm for both Classification and Regression tasks
Polynomial kernel support for all SVM algorithms (SVC, SVR, NuSVC, NuSVR)
Minkowski and Chebyshev distances for kNN Brute-force
The brute-force method and the voting mode support for kNN algorithm in oneDAL interfaces
Multiclass support for SVM algorithms in oneDAL interfaces
CSR-matrix support for SVM algorithms in oneDAL interfaces
Subgraph Isomorphism algorithm technical preview
Single Source Shortest Path (SSSP) algorithm technical preview
Improved oneDAL and daal4py performance for the following algorithms:
CPU:
Support Vector Machines training and prediction
Linear, Ridge, ElasticNet, and LASSO regressions prediction
GPU:
Decision Forest training and prediction
Principal Components Analysis training
Introduced the support of scikit-learn 1.0 version in Intel Extension for Scikit-learn. The 2021.3 release of Intel Extension for Scikit-learn supports the latest scikit-learn releases: 0.22.X, 0.23.X, 0.24.X and 1.0.X.
Introduced new functionality for Intel Extension for Scikit-learn:
General:
The support of patch_sklearn for all algorithms
CPU:
Acceleration of SVR estimator
Acceleration of NuSVC and NuSVR estimators
Polynomial kernel support in SVM algorithms
Improved the performance of the following scikit-learn estimators via scikit-learn patching:
SVM algorithms training and prediction
Linear, Ridge, ElasticNet, and Lasso regressions prediction
Fixed the following issues:
General:
Fixed binary incompatibility for the versions of numpy earlier than 1.19.4
Fixed an issue with a very large number of trees (> 7000) for Random Forest algorithm.
Fixed patch_sklearn to patch both fit and predict methods of Logistic Regression when the algorithm is given as a single parameter to patch_sklearn
CPU:
Improved numerical stability of training for Alternating Least Squares (ALS) and Linear and Ridge regressions with Normal Equations method
Reduced the memory consumption of SVM prediction
GPU:
Fixed an issue with kernel compilation on the platforms without hardware FP64 support
❗ Known Issues
Intel® Extension for Scikit-learn and daal4py packages installed from PyPI repository can’t be found on Debian systems (including Google Collab). Mitigation: add “site-packages” folder into Python packages searching before importing the packages:
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The release introduces the following changes:
📚 Support Materials
The following additional materials were created:
Medium blogs:
Kaggle kernels:
Samples that illustrate the usage of Intel Extension for Scikit-learn
🛠️ Library Engineering
pip install scikit-learn-intelex
conda install scikit-learn-intelex -c conda-forge
from sklearnex import patch_sklearn
patch_sklearn()
🚨 What's New
patch_sklearn
for all algorithmspatch_sklearn
to patch both fit and predict methods of Logistic Regression when the algorithm is given as a single parameter topatch_sklearn
❗ Known Issues
This discussion was created from the release Intel® oneAPI Data Analytics Library 2021.3.
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