Intel(R) Extension for Scikit-learn is a seamless way to speed up your Scikit-learn application

Overview

Intel(R) Extension for Scikit-learn*

Installation   |   Documentation   |   Examples   |   Support   |   FAQ   

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With Intel(R) Extension for Scikit-learn you can accelerate your Scikit-learn applications and still have full conformance with all Scikit-Learn APIs and algorithms. This is a free software AI accelerator that brings over 10-100X acceleration across a variety of applications. And you do not even need to change the existing code!

How it works?

Intel(R) Extension for Scikit-learn offers you a way to accelerate existing scikit-learn code. The acceleration is achieved through patching: replacing the stock scikit-learn algorithms with their optimized versions provided by the extension.

One of the ways to patch scikit-learn is by modifying the code. First, you import an additional Python package (sklearnex) and enable optimizations via sklearnex.patch_sklearn(). Then import scikit-learn estimators:

  • Enable Intel CPU optimizations

    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)
  • Enable Intel GPU optimizations

    import numpy as np
    import dpctl
    from sklearnex import patch_sklearn, config_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 config_context(target_offload="gpu:0"):
        clustering = DBSCAN(eps=3, min_samples=2).fit(X)

👀 Read about other ways to patch scikit-learn and other methods for offloading to GPU devices. Check out available notebooks for more examples.

This software acceleration is achieved through the use of vector instructions, IA hardware-specific memory optimizations, threading, and optimizations for all upcoming Intel platforms at launch time.

Supported Algorithms

The patching only affects selected algorithms and their parameters.

You may still use algorithms and parameters not supported by Intel(R) Extension for Scikit-learn in your code. You will not get an error if you do this. When you use algorithms or parameters not supported by the extension, the package fallbacks into original stock version of scikit-learn.

🚀 Acceleration

Configurations:

  • 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

Benchmarks code

🛠 Installation

System Requirements   |    Install via pip or conda   |   Build from sources

Intel(R) Extension for Scikit-learn is available at the Python Package Index, on Anaconda Cloud in Conda-Forge channel and in Intel channel. You can also build the extension from sources.

The extension is also available as a part of Intel® oneAPI AI Analytics Toolkit (AI Kit). If you already have AI Kit installed, you do not need to install the extension.

Installation via pip package manager is recommended by default:

pip install scikit-learn-intelex

🔗 Important Links

👀 Follow us on Medium

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:

FAQ

[See answers to frequently asked questions]

Are all algorithms affected by patching?

No. The patching only affects selected algorithms and their parameters.

What happens if I use parameters not supported by the extension?

In cases when unsupported parameters are used, the package fallbacks into original stock version of scikit-learn. You will not get an error.

What happens if I run algorithms not supported by the extension?

If you use algorithms for which no optimizations are available, their original version from the stock scikit-learn is used.

Can I see which implementation of the algorithm is currently used?

Yes. To find out which implementation of the algorithm is currently used (Intel(R) Extension for Scikit-learn or original Scikit-learn), use the verbose mode.

How much faster scikit-learn is after the patching?

We compare the performance of Intel(R) Extension for Scikit-Learn to other frameworks in Machine Learning Benchmarks. Read our blogs on Medium if you are interested in the detailed comparison.

What if the patching does not cover my scenario?

If the patching does not cover your scenarios, submit an issue on GitHub with the description of what you would want to have.

💬 Support

Report issues, ask questions, and provide suggestions using:

You may reach out to project maintainers privately at [email protected]

oneAPI

Intel(R) Extension for Scikit-learn is part of oneAPI and Intel® oneAPI AI Analytics Toolkit (AI Kit).

daalpy and oneDAL

The acceleration is achieved through the use of the Intel(R) oneAPI Data Analytics Library (oneDAL). Learn more:


⚠️ Intel(R) Extension for Scikit-learn contains scikit-learn patching functionality that was originally available in daal4py package. All future updates for the patches will be available only in Intel(R) Extension for Scikit-learn. We recommend you to use scikit-learn-intelex package instead of daal4py. You can learn more about daal4py in daal4py documentation.


Comments
  • Intel(R) Distribution for Python's sklearn patches

    Intel(R) Distribution for Python's sklearn patches

    of scikit-learn classes as a stand-alone module.

    @fschlimb @anton-malakhov @ogrisel

    They can be invoked via

    python -m daal4py.sklearn_patches  script.py args
    

    or by explicitly enabling them via

    import daal4py.sklearn_patches.dispatcher
    daal4py.sklearn_patches.dispatcher.enable()
    

    Names, design, etc. are up for discussion.

    opened by oleksandr-pavlyk 18
  • Intel oneDAL FATAL ERROR on Windows10

    Intel oneDAL FATAL ERROR on Windows10

    Describe the bug The windows wheel is unable to load the dll's needed to run the examples. I tried one of the examples and got the following when calling a library function

    Intel oneDAL FATAL ERROR: onedal_thread.1.dll. Error code is 0x80096005. Intel oneDAL FATAL ERROR: onedal_sequential.1.dll. Error code is 0x80096005. Intel oneDAL FATAL ERROR: Cannot load neither onedal_thread.1.dll nor onedal_sequential.1.dll. Intel oneDAL FATAL ERROR: onedal_thread.1.dll. Error code is 0x80096005. Intel oneDAL FATAL ERROR: onedal_sequential.1.dll. Error code is 0x80096005. Intel oneDAL FATAL ERROR: Cannot load neither onedal_thread.1.dll nor onedal_sequential.1.dll.

    To Reproduce Steps to reproduce the behavior:

    1. pip install daal4py pandas lightgbm on Windows10
    2. Alter the __init__.py to have path_to_libs = os.path.join(os.path.dirname(sys.executable), "..\\Library\\bin") (note the ..)
    3. Run the following script
    import lightgbm as lgb
    import numpy as np
    import daal4py as d4p
    
    
    def get_data(n, m):
        x_train = np.random.randn(n, m).astype(np.float32)
        A = np.random.randint(-5, 5, size=(m, 1))
        y_train = (x_train @ A).astype(np.float32)
    
        return x_train, y_train
    
    n = 1000
    m = 25
    x_train, y_train = get_data(n, m)
    
    params = {
        'task': 'train',
        'boosting_type': 'gbdt',
        'objective': 'regression',
        'metric': ['rmse'],
        'device': 'cpu',
        'num_leaves': 31,
        'bagging_fraction': 0.5,
        'feature_fraction': 0.5,
        'learning_rate': 0.001,
        'verbose': 2,
        'max_bin': 255,
    }
    ds_train = lgb.Dataset(x_train, y_train.ravel())#, free_raw_data=False)
    gbm = lgb.train(
        params,
        ds_train,
        num_boost_round=10,
        # keep_training_booster=args.keep_training_booster,
    )
    
    print("Converting...", flush=True)
    daal_model = d4p.get_gbt_model_from_lightgbm(gbm)
    print("Converted...", flush=True)
    daal_prediction = d4p.gbt_regression_prediction().compute(x_train, daal_model).prediction
    
    1. See output
    [LightGBM] [Debug] Dataset::GetMultiBinFromAllFeatures: sparse rate 0.000000
    [LightGBM] [Debug] init for col-wise cost 0.000021 seconds, init for row-wise cost 0.000844 seconds
    [LightGBM] [Warning] Auto-choosing col-wise multi-threading, the overhead of testing was 0.001624 seconds.
    You can set `force_col_wise=true` to remove the overhead.
    [LightGBM] [Info] Total Bins 6375
    [LightGBM] [Info] Number of data points in the train set: 1000, number of used features: 25
    [LightGBM] [Info] Start training from score 0.386410
    [LightGBM] [Debug] Trained a tree with leaves = 31 and max_depth = 8
    [LightGBM] [Debug] Trained a tree with leaves = 31 and max_depth = 9
    [LightGBM] [Debug] Trained a tree with leaves = 31 and max_depth = 7
    [LightGBM] [Debug] Trained a tree with leaves = 31 and max_depth = 7
    [LightGBM] [Debug] Trained a tree with leaves = 31 and max_depth = 9
    [LightGBM] [Debug] Trained a tree with leaves = 31 and max_depth = 9
    [LightGBM] [Debug] Trained a tree with leaves = 31 and max_depth = 9
    [LightGBM] [Debug] Trained a tree with leaves = 31 and max_depth = 6
    [LightGBM] [Debug] Trained a tree with leaves = 31 and max_depth = 7
    [LightGBM] [Debug] Trained a tree with leaves = 31 and max_depth = 8
    Converting...
    Converted...
    Intel oneDAL FATAL ERROR: onedal_thread.1.dll. Error code is 0x80096005.
    Intel oneDAL FATAL ERROR: onedal_sequential.1.dll. Error code is 0x80096005.
    Intel oneDAL FATAL ERROR: Cannot load neither onedal_thread.1.dll nor onedal_sequential.1.dll.
    Intel oneDAL FATAL ERROR: onedal_thread.1.dll. Error code is 0x80096005.
    Intel oneDAL FATAL ERROR: onedal_sequential.1.dll. Error code is 0x80096005.
    Intel oneDAL FATAL ERROR: Cannot load neither onedal_thread.1.dll nor onedal_sequential.1.dll.
    

    Expected behavior Successfully converted lightgbm model

    Output/Screenshots Would note that I do see the dlls in the correct folder and the directory is added to PATH

    Environment:

    • OS: Windows10
    • Compiler: ?
    • Version: ?
    • Python: 3.6.6
    bug 
    opened by CHDev93 15
  • Ubuntu 18.04: ModuleNotFoundError: No module named 'daal4py'

    Ubuntu 18.04: ModuleNotFoundError: No module named 'daal4py'

    Hi When I try to run any sample example using Anaconda & jupyter notebook in Ubuntu 18.04, it says ModuleNotFoundError: No module named 'daal4py'

    But I can run the same code on python interpretor and Ubuntu 16.04 via anaconda & Jupyter notebook. Have anyone else identified this issue? I am experienceing this issue after I migrated to Ubuntu 18.04 itself. Any solution? Thank you

    opened by abhi-84 15
  • OneAPI ifaces for kNN Regression

    OneAPI ifaces for kNN Regression

    Description

    Please include a summary of the change. For large or complex changes please include enough information to introduce your change and explain motivation for it.

    Changes proposed in this pull request:

    opened by KalyanovD 14
  • Library crashes on sklearn >= 1.1.0

    Library crashes on sklearn >= 1.1.0

    Describe the bug Version 2021.5.3 of scikit-learn-intelex seems incompatible with latest 1.1.1 version of scikit-learn. Latest scikit-learn which works is 1.0.2, so I had to downgrade it.

    Moreover, I know that scikit-learn-intelex 2021.6.0 is suggested in my upgrades but pip gives an error every time it tries to download it ( #1003), so I am referring 2021.5.3 as the latest version.

    To Reproduce

    1. Install latest scikit-learn-intelex (2021.5.3) and scikit-learn (1.1.1)
    2. Import it to an existing sklearn python project file
    from sklearnex import patch_sklearn
    patch_sklearn()
    
    1. Run it and obtain this error:
    from sklearn.utils.fixes import sparse_lsqr
    ImportError: cannot import name 'sparse_lsqr' from 'sklearn.utils.fixes'
    

    Expected behavior Run it without any importing error.

    Output/Screenshots None.

    Environment:

    • OS: Linux Mint 20.3
    • Compiler: Python 3.8.10
    • Version: 2021.5.3
    bug 
    opened by gabrielication 12
  • Cannot import patch_sklearn

    Cannot import patch_sklearn

    Describe the bug Calling

    from sklearnex import patch_sklearn
    patch_sklearn()
    

    leads to the following error:

    Python 3.8.12 (default, Oct 12 2021, 06:23:56) 
    Type "copyright", "credits" or "license" for more information.
    
    IPython 7.29.0 -- An enhanced Interactive Python.
    
    from sklearnex import patch_sklearn
    patch_sklearn()
    Traceback (most recent call last):
    
      File "/var/folders/lg/d49pbfkx1mxg1y8v5l810v4w0000gn/T/ipykernel_2384/4125287122.py", line 1, in <module>
        from sklearnex import patch_sklearn
    
      File "/Users/muhlbach/opt/anaconda3/envs/main/lib/python3.8/site-packages/sklearnex/__init__.py", line 18, in <module>
        from .dispatcher import patch_sklearn
    
      File "/Users/muhlbach/opt/anaconda3/envs/main/lib/python3.8/site-packages/sklearnex/dispatcher.py", line 22, in <module>
        from daal4py.sklearn._utils import daal_check_version
    
      File "/Users/muhlbach/opt/anaconda3/envs/main/lib/python3.8/site-packages/daal4py/__init__.py", line 30, in <module>
        from _daal4py import *
    
    ImportError: dlopen(/Users/muhlbach/opt/anaconda3/envs/main/lib/python3.8/site-packages/_daal4py.cpython-38-darwin.so, 2): Library not loaded: @rpath/libonedal_core.dylib
      Referenced from: /Users/muhlbach/opt/anaconda3/envs/main/lib/python3.8/site-packages/_daal4py.cpython-38-darwin.so
      Reason: image not found
    

    This is despite having installed the requirements, for instance,

    % conda list | grep daal
    daal                      2021.3.0           hecd8cb5_555  
    daal4py                   2021.3.0         py38h01d92e1_0  
    

    and

    % conda list | grep scik
    scikit-learn              1.0.1            py38hae1ba45_0  
    scikit-learn-intelex      2021.3.0         py38hecd8cb5_0  
    scikit-lego               0.6.8              pyhd8ed1ab_0    conda-forge
    scikit-misc               0.1.3            py38h050221e_2    conda-forge
    scikit-optimize           0.9.0              pyhd8ed1ab_0    conda-forge
    

    Prior to running this, I updated all packages via conda update --all.

    Environment:

    • OS:
    ProductName:	macOS
    ProductVersion:	11.6
    BuildVersion:	20G165
    
    • Compiler: [e.g. GCC9.2]
    % gcc --version
    Configured with: --prefix=/Library/Developer/CommandLineTools/usr --with-gxx-include-dir=/Library/Developer/CommandLineTools/SDKs/MacOSX.sdk/usr/include/c++/4.2.1
    Apple clang version 12.0.5 (clang-1205.0.22.9)
    Target: arm64-apple-darwin20.6.0
    Thread model: posix
    InstalledDir: /Library/Developer/CommandLineTools/usr/bin
    
    • Version: 2021.3.0
    • General environment
    % conda list
    # packages in environment at /Users/muhlbach/opt/anaconda3/envs/main:
    #
    # Name                    Version                   Build  Channel
    _ipyw_jlab_nb_ext_conf    0.1.0                    py38_0  
    _py-xgboost-mutex         2.0                       cpu_0  
    abseil-cpp                20210324.2           h23ab428_0  
    alabaster                 0.7.12             pyhd3eb1b0_0  
    anaconda-client           1.9.0            py38hecd8cb5_0  
    anyio                     2.2.0            py38hecd8cb5_1  
    appdirs                   1.4.4              pyhd3eb1b0_0  
    applaunchservices         0.2.1              pyhd3eb1b0_0  
    appnope                   0.1.2           py38hecd8cb5_1001  
    argh                      0.26.2                   py38_0  
    argon2-cffi               20.1.0           py38h9ed2024_1  
    arrow                     0.13.1                   py38_0  
    arrow-cpp                 4.0.1           py38h0e2c213_7_cpu    conda-forge
    arviz                     0.11.2             pyhd3eb1b0_0  
    astroid                   2.6.6            py38hecd8cb5_0  
    async_generator           1.10               pyhd3eb1b0_0  
    atomicwrites              1.4.0                      py_0  
    attrs                     21.2.0             pyhd3eb1b0_0  
    autograd                  1.3                pyhd3eb1b0_1  
    autopep8                  1.5.7              pyhd3eb1b0_0  
    aws-c-cal                 0.5.11               hd2e2f4b_0    conda-forge
    aws-c-common              0.6.2                h9ed2024_0  
    aws-c-event-stream        0.2.7               hb9330a7_13    conda-forge
    aws-c-io                  0.10.5               h35aa462_0    conda-forge
    aws-checksums             0.1.11               h0010a65_7    conda-forge
    aws-sdk-cpp               1.8.186              h766a74d_3    conda-forge
    babel                     2.9.1              pyhd3eb1b0_0  
    backcall                  0.2.0              pyhd3eb1b0_0  
    backports                 1.0                pyhd3eb1b0_2  
    backports.functools_lru_cache 1.6.4              pyhd3eb1b0_0  
    backports.tempfile        1.0                pyhd3eb1b0_1  
    backports.weakref         1.0.post1                  py_1  
    bats                      0.4.0                         1    bioconda
    beautifulsoup4            4.10.0             pyh06a4308_0  
    binaryornot               0.4.4              pyhd3eb1b0_1  
    black                     19.10b0                    py_0  
    blas                      1.0                    openblas  
    bleach                    4.0.0              pyhd3eb1b0_0  
    blosc                     1.21.0               he49afe7_0    conda-forge
    bokeh                     2.4.1            py38hecd8cb5_0  
    boost-cpp                 1.67.0               h1de35cc_4  
    bottleneck                1.3.2            py38hf1fa96c_1  
    brotli                    1.0.9                hb1e8313_2  
    brotlipy                  0.7.0           py38h9ed2024_1003  
    build                     0.7.0              pyhd8ed1ab_0    conda-forge
    bzip2                     1.0.8                h1de35cc_0  
    c-ares                    1.17.1               h9ed2024_0  
    ca-certificates           2021.10.26           hecd8cb5_2  
    cctools_osx-64            949.0.1             hc7db93f_23  
    certifi                   2021.10.8        py38hecd8cb5_0  
    cffi                      1.14.6           py38h2125817_0  
    cftime                    1.5.0            py38he3068b8_0  
    chardet                   4.0.0           py38hecd8cb5_1003  
    charset-normalizer        2.0.4              pyhd3eb1b0_0  
    clang                     11.1.0               h694c41f_1    conda-forge
    clang-11                  11.1.0          default_he082bbe_1    conda-forge
    clang_osx-64              11.1.0               hb91bd55_4    conda-forge
    clangxx                   11.1.0          default_he082bbe_1    conda-forge
    clangxx_osx-64            11.1.0               h7e1b574_4    conda-forge
    click                     8.0.3              pyhd3eb1b0_0  
    cloudpickle               2.0.0              pyhd3eb1b0_0  
    clyent                    1.2.2                    py38_1  
    cmarkgfm                  0.4.2            py38h9ed2024_0  
    colorama                  0.4.4              pyhd3eb1b0_0  
    compiler-rt               11.1.0               h654b07c_0    conda-forge
    compiler-rt_osx-64        11.1.0               h8c5fa43_0    conda-forge
    conda-content-trust       0.1.1              pyhd3eb1b0_0  
    conda-package-handling    1.7.3            py38h9ed2024_1  
    conda-repo-cli            1.0.4              pyhd3eb1b0_0  
    conda-verify              3.4.2                      py_1  
    convertdate               2.3.2              pyhd3eb1b0_0  
    cookiecutter              1.7.2              pyhd3eb1b0_0  
    cryptography              35.0.0           py38h2fd3fbb_0  
    curl                      7.78.0               h7bc2e8c_0  
    cvxpy                     1.1.17           py38h50d1736_1    conda-forge
    cvxpy-base                1.1.17           py38ha53d530_1    conda-forge
    cycler                    0.10.0                   py38_0  
    cython                    0.29.23          py38h23ab428_0  
    cytoolz                   0.11.0           py38haf1e3a3_0  
    daal                      2021.3.0           hecd8cb5_555  
    daal4py                   2021.3.0         py38h01d92e1_0  
    dal                       2021.3.0           hecd8cb5_555  
    dask                      2021.10.0          pyhd3eb1b0_0  
    dask-core                 2021.10.0          pyhd3eb1b0_0  
    dataclasses               0.8                pyh6d0b6a4_7  
    dbus                      1.13.18              h18a8e69_0  
    dcor                      0.5.3              pyhd8ed1ab_0    conda-forge
    debugpy                   1.5.1            py38he9d5cce_0  
    decorator                 5.1.0              pyhd3eb1b0_0  
    defusedxml                0.7.1              pyhd3eb1b0_0  
    deprecated                1.2.12             pyhd3eb1b0_0  
    deprecation               2.1.0              pyhd3eb1b0_0  
    descartes                 1.1.0              pyhd3eb1b0_4  
    diff-match-patch          20200713           pyhd3eb1b0_0  
    distributed               2021.10.0        py38hecd8cb5_0  
    docutils                  0.17.1           py38hecd8cb5_1  
    ecos                      2.0.7.post1      py38he3068b8_0  
    entrypoints               0.3                      py38_0  
    ephem                     4.0.0.2          py38h9ed2024_0  
    et_xmlfile                1.1.0            py38hecd8cb5_0  
    expat                     2.4.1                h23ab428_2  
    fastparquet               0.5.0            py38he3068b8_1  
    feature_engine            1.1.2              pyhd8ed1ab_0    conda-forge
    featuretools              0.27.1             pyhd3eb1b0_2  
    filelock                  3.3.1              pyhd3eb1b0_1  
    flake8                    3.9.2              pyhd3eb1b0_0  
    flask                     1.1.2              pyhd3eb1b0_0  
    fonttools                 4.25.0             pyhd3eb1b0_0  
    freetype                  2.11.0               hd8bbffd_0  
    freezegun                 1.1.0              pyhd3eb1b0_0  
    fsspec                    2021.10.1          pyhd3eb1b0_0  
    future                    0.18.2                   py38_1  
    gensim                    4.0.1            py38h23ab428_0  
    gettext                   0.21.0               h7535e17_0  
    gflags                    2.2.2                h0a44026_0  
    giflib                    5.2.1                haf1e3a3_0  
    glib                      2.69.1               hdf23fa2_0  
    glob2                     0.7                pyhd3eb1b0_0  
    glog                      0.5.0                h23ab428_0  
    greenlet                  1.1.1            py38h23ab428_0  
    grpc-cpp                  1.39.0               hbd5ceb7_2    conda-forge
    hcrystalball              0.1.10             pyhd8ed1ab_0    conda-forge
    hdf4                      4.2.13               h39711bb_2  
    hdf5                      1.10.6          nompi_hc5d9132_1114    conda-forge
    heapdict                  1.0.1              pyhd3eb1b0_0  
    hijri-converter           2.2.2              pyhd3eb1b0_0  
    holidays                  0.11.3.1           pyhd3eb1b0_0  
    html5lib                  1.1                pyhd3eb1b0_0  
    icu                       58.2                 h0a44026_3  
    idna                      3.2                pyhd3eb1b0_0  
    imagesize                 1.2.0              pyhd3eb1b0_0  
    importlib-metadata        4.8.1            py38hecd8cb5_0  
    importlib_metadata        4.8.1                hd3eb1b0_0  
    inflection                0.5.1            py38hecd8cb5_0  
    intel-openmp              2021.4.0          hecd8cb5_3538  
    intervaltree              3.1.0              pyhd3eb1b0_0  
    ipykernel                 6.4.1            py38hecd8cb5_1  
    ipython                   7.29.0           py38h01d92e1_0  
    ipython_genutils          0.2.0              pyhd3eb1b0_1  
    ipywidgets                7.6.5              pyhd3eb1b0_1  
    isort                     5.9.3              pyhd3eb1b0_0  
    itsdangerous              2.0.1              pyhd3eb1b0_0  
    jaydebeapi                1.2.3                      py_0  
    jbig                      2.1                  h4d881f8_0  
    jdcal                     1.4.1              pyhd3eb1b0_0  
    jedi                      0.18.0           py38hecd8cb5_1  
    jinja2                    2.11.3             pyhd3eb1b0_0  
    jinja2-time               0.2.0              pyhd3eb1b0_2  
    joblib                    1.1.0              pyhd3eb1b0_0  
    jpeg                      9d                   h9ed2024_0  
    jplephem                  2.15               pyh2f6353c_0    conda-forge
    jpype1                    1.2.1            py38hf7b0b51_0  
    json5                     0.9.6              pyhd3eb1b0_0  
    jsonschema                3.2.0              pyhd3eb1b0_2  
    jupyter-packaging         0.10.4             pyhd3eb1b0_0  
    jupyter_client            6.1.12             pyhd3eb1b0_0  
    jupyter_core              4.9.1            py38hecd8cb5_0  
    jupyter_server            1.4.1            py38hecd8cb5_0  
    jupyterlab                3.2.1              pyhd3eb1b0_1  
    jupyterlab_pygments       0.1.2                      py_0  
    jupyterlab_server         2.8.2              pyhd3eb1b0_0  
    jupyterlab_widgets        1.0.0              pyhd3eb1b0_1  
    keyring                   23.1.0           py38hecd8cb5_0  
    kiwisolver                1.3.1            py38h23ab428_0  
    korean_lunar_calendar     0.2.1              pyhd3eb1b0_0  
    krb5                      1.19.2               hcd88c3b_0  
    lazy-object-proxy         1.6.0            py38h9ed2024_0  
    lcms2                     2.12                 hf1fd2bf_0  
    ld64_osx-64               530                 he8994da_21    conda-forge
    ldid                      2.1.2                h2d21305_2  
    lerc                      2.2.1                h23ab428_0  
    libarchive                3.5.2                h2b60450_1    conda-forge
    libblas                   3.9.0           12_osx64_openblas    conda-forge
    libboost                  1.67.0               hebc422b_4  
    libbrotlicommon           1.0.9                h0d85af4_6    conda-forge
    libbrotlidec              1.0.9                h0d85af4_6    conda-forge
    libbrotlienc              1.0.9                h0d85af4_6    conda-forge
    libcblas                  3.9.0           12_osx64_openblas    conda-forge
    libclang-cpp11.1          11.1.0          default_he082bbe_1    conda-forge
    libcurl                   7.78.0               hb8e4fae_0  
    libcxx                    12.0.0               h2f01273_0  
    libdeflate                1.7                  h9ed2024_5  
    libedit                   3.1.20210910         hca72f7f_0  
    libev                     4.33                 h9ed2024_1  
    libevent                  2.1.8                hddc9c9b_1  
    libffi                    3.3                  hb1e8313_2  
    libgfortran               5.0.0           9_3_0_h6c81a4c_23    conda-forge
    libgfortran5              9.3.0               h6c81a4c_23    conda-forge
    libiconv                  1.16                 h1de35cc_0  
    liblapack                 3.9.0           12_osx64_openblas    conda-forge
    liblief                   0.10.1               h0a44026_0  
    libllvm10                 10.0.1               h76017ad_5  
    libllvm11                 11.1.0               hd011deb_2    conda-forge
    libllvm12                 12.0.0               h9b2ccf5_3  
    libnetcdf                 4.6.1                hfd9a460_4  
    libnghttp2                1.46.0               ha29bfda_0  
    libopenblas               0.3.18          openmp_h3351f45_0    conda-forge
    libpng                    1.6.37               ha441bb4_0  
    libprotobuf               3.16.0               hcf210ce_0    conda-forge
    libsodium                 1.0.18               h1de35cc_0  
    libspatialindex           1.9.3                h23ab428_0  
    libssh2                   1.9.0                ha12b0ac_1  
    libthrift                 0.14.2               h054ceb0_0  
    libtiff                   4.3.0                h1167814_1    conda-forge
    libutf8proc               2.6.1                h9ed2024_0  
    libwebp                   1.2.0                hacca55c_0  
    libwebp-base              1.2.0                h9ed2024_0  
    libxgboost                1.3.3                h23ab428_0  
    libxml2                   2.9.12               hcdb78fc_0  
    libxslt                   1.1.34               h83b36ba_0  
    lightgbm                  3.2.1            py38h23ab428_0  
    linearmodels              4.24             py38hbe852b5_3    conda-forge
    llvm-openmp               12.0.1               hda6cdc1_1    conda-forge
    llvm-tools                11.1.0               hd011deb_2    conda-forge
    llvmlite                  0.37.0           py38he4411ff_1  
    locket                    0.2.1            py38hecd8cb5_1  
    lunarcalendar             0.0.9                      py_0    conda-forge
    lunardate                 0.2.0                      py_0    conda-forge
    lxml                      4.6.3            py38h26b266a_0  
    lz4-c                     1.9.3                h23ab428_1  
    lzo                       2.10                 haf1e3a3_2  
    markupsafe                1.1.1            py38h1de35cc_1  
    matplotlib                3.4.3            py38hecd8cb5_0  
    matplotlib-base           3.4.3            py38h0a11d32_0  
    matplotlib-inline         0.1.2              pyhd3eb1b0_2  
    mccabe                    0.6.1                    py38_1  
    mistune                   0.8.4           py38h1de35cc_1001  
    mizani                    0.7.3              pyhd8ed1ab_0    conda-forge
    mkl                       2021.4.0           hecd8cb5_637  
    mkl-service               2.4.0            py38h9ed2024_0  
    mkl_fft                   1.3.1            py38h0834169_1    conda-forge
    mkl_random                1.2.2            py38h1f261ad_0    conda-forge
    mlregression              0.1.0                    pypi_0    pypi
    mlxtend                   0.19.0             pyhd8ed1ab_0    conda-forge
    mock                      4.0.3              pyhd3eb1b0_0  
    more-itertools            8.10.0             pyhd3eb1b0_0  
    mpi                       1.0                       mpich  
    mpich                     3.3.2                external_0  
    msgpack-python            1.0.2            py38hf7b0b51_1  
    munkres                   1.1.4                      py_0  
    mypy_extensions           0.4.3                    py38_0  
    navigator-updater         0.2.1                    py38_0  
    nbclassic                 0.2.6              pyhd3eb1b0_0  
    nbclient                  0.5.3              pyhd3eb1b0_0  
    nbconvert                 6.1.0            py38hecd8cb5_0  
    nbformat                  5.1.3              pyhd3eb1b0_0  
    ncurses                   6.3                  hca72f7f_2  
    nest-asyncio              1.5.1              pyhd3eb1b0_0  
    netcdf4                   1.5.7            py38h1695cb1_0  
    nltk                      3.6.5              pyhd3eb1b0_0  
    notebook                  6.4.6            py38hecd8cb5_0  
    numba                     0.54.1           py38hae1ba45_0  
    numexpr                   2.7.3            py38h7ec9b2a_1  
    numpy                     1.19.5           py38had91d27_2    conda-forge
    numpy-base                1.19.1           py38h68fea81_0    anaconda
    numpydoc                  1.1.0              pyhd3eb1b0_1  
    olefile                   0.46               pyhd3eb1b0_0  
    openjpeg                  2.4.0                h66ea3da_0  
    openpyxl                  3.0.9              pyhd3eb1b0_0  
    openssl                   1.1.1l               h9ed2024_0  
    orc                       1.6.9                hfe4c36d_0    conda-forge
    osqp                      0.6.2.post0      py38ha53d530_3    conda-forge
    packaging                 21.0               pyhd3eb1b0_0  
    palettable                3.3.0              pyhd3eb1b0_0  
    pandas                    1.3.4            py38h743cdd8_0  
    pandocfilters             1.4.3            py38hecd8cb5_1  
    parso                     0.8.2              pyhd3eb1b0_0  
    partd                     1.2.0              pyhd3eb1b0_0  
    pathspec                  0.7.0                      py_0  
    patsy                     0.5.2            py38hecd8cb5_0  
    pcre                      8.45                 h23ab428_0  
    pep517                    0.12.0           py38h50d1736_1    conda-forge
    pexpect                   4.8.0              pyhd3eb1b0_3  
    pickleshare               0.7.5           pyhd3eb1b0_1003  
    pillow                    8.4.0            py38h98e4679_0  
    pip                       21.2.4           py38hecd8cb5_0  
    pkginfo                   1.7.1            py38hecd8cb5_0  
    plotly                    5.1.0              pyhd3eb1b0_0  
    plotnine                  0.8.0              pyhd8ed1ab_0    conda-forge
    pluggy                    1.0.0            py38hecd8cb5_0  
    pmdarima                  1.8.2            py38h96a0964_3    conda-forge
    poyo                      0.5.0              pyhd3eb1b0_0  
    prometheus_client         0.12.0             pyhd3eb1b0_0  
    prompt-toolkit            3.0.20             pyhd3eb1b0_0  
    property-cached           1.6.4                      py_0    conda-forge
    property_cached           1.6.4                         0    conda-forge
    prophet                   1.0.1            py38h6c79ece_3    conda-forge
    psutil                    5.8.0            py38h9ed2024_1  
    ptyprocess                0.7.0              pyhd3eb1b0_2  
    py-lief                   0.10.1           py38haf313ee_0  
    py-xgboost                1.3.3            py38hecd8cb5_0  
    pyaml                     20.4.0             pyhd3eb1b0_0  
    pyarrow                   4.0.1            py38hdf3e9eb_3  
    pycalverter               1.6.1                      py_0    conda-forge
    pycodestyle               2.7.0              pyhd3eb1b0_0  
    pycosat                   0.6.3            py38h1de35cc_1  
    pycparser                 2.21               pyhd3eb1b0_0  
    pydocstyle                6.1.1              pyhd3eb1b0_0  
    pyflakes                  2.3.1              pyhd3eb1b0_0  
    pygments                  2.10.0             pyhd3eb1b0_0  
    pyhdfe                    0.1.0              pyhd8ed1ab_0    conda-forge
    pylint                    2.9.6            py38hecd8cb5_1  
    pyls-spyder               0.4.0              pyhd3eb1b0_0  
    pyluach                   1.3.0              pyhd8ed1ab_0    conda-forge
    pymeeus                   0.5.11             pyhd3eb1b0_1  
    pynndescent               0.5.4              pyhd3eb1b0_0  
    pyodbc                    4.0.31           py38h23ab428_0  
    pyopenssl                 21.0.0             pyhd3eb1b0_1  
    pyparsing                 3.0.4              pyhd3eb1b0_0  
    pypyodbc                  1.3.5            py38h50d1736_3    conda-forge
    pyqt                      5.9.2            py38h655552a_2  
    pyrsistent                0.18.0           py38hca72f7f_0  
    pysocks                   1.7.1                    py38_1  
    pystan                    2.19.1.1         py38h1f261ad_3    conda-forge
    pytables                  3.6.1            py38hfb086ad_3    conda-forge
    python                    3.8.12               h88f2d9e_0  
    python-dateutil           2.8.2              pyhd3eb1b0_0  
    python-jsonrpc-server     0.4.0                      py_0  
    python-libarchive-c       2.9                pyhd3eb1b0_1  
    python-lsp-black          1.0.0              pyhd3eb1b0_0  
    python-lsp-jsonrpc        1.0.0              pyhd3eb1b0_0  
    python-lsp-server         1.2.4              pyhd3eb1b0_0  
    python-slugify            5.0.2              pyhd3eb1b0_0  
    python.app                3                py38hca72f7f_0  
    python_abi                3.8                      2_cp38    conda-forge
    pytz                      2021.3             pyhd3eb1b0_0  
    pyyaml                    6.0              py38hca72f7f_1  
    pyzmq                     22.2.1           py38h23ab428_1  
    qdarkstyle                3.0.2              pyhd3eb1b0_0  
    qdldl-python              0.1.5            py38ha53d530_2    conda-forge
    qstylizer                 0.1.10             pyhd3eb1b0_0  
    qt                        5.9.7                h468cd18_1  
    qtawesome                 1.0.2              pyhd3eb1b0_0  
    qtconsole                 5.1.1              pyhd3eb1b0_0  
    qtpy                      1.10.0             pyhd3eb1b0_0  
    re2                       2021.08.01           he49afe7_0    conda-forge
    readline                  8.1                  h9ed2024_0  
    readme_renderer           24.0             py38hecd8cb5_0  
    regex                     2021.8.3         py38h9ed2024_0  
    requests                  2.26.0             pyhd3eb1b0_0  
    requests-toolbelt         0.9.1              pyhd3eb1b0_0  
    rfc3986                   1.4.0              pyhd3eb1b0_0  
    ripgrep                   12.1.1                        0  
    rope                      0.21.1             pyhd3eb1b0_0  
    rtree                     0.9.7            py38hecd8cb5_1  
    ruamel_yaml               0.15.100         py38h9ed2024_0  
    scikit-learn              1.0.1            py38hae1ba45_0  
    scikit-learn-intelex      2021.3.0         py38hecd8cb5_0  
    scikit-lego               0.6.8              pyhd8ed1ab_0    conda-forge
    scikit-misc               0.1.3            py38h050221e_2    conda-forge
    scikit-optimize           0.9.0              pyhd8ed1ab_0    conda-forge
    scipy                     1.7.2            py38hd329d04_0    conda-forge
    scs                       3.0.0            py38hd383344_1    conda-forge
    seaborn                   0.11.2             pyhd3eb1b0_0  
    send2trash                1.8.0              pyhd3eb1b0_1  
    setuptools                49.6.0           py38h50d1736_3    conda-forge
    sgp4                      2.20             py38hb0f0857_1    conda-forge
    sip                       4.19.8           py38h0a44026_0  
    six                       1.15.0           py38hecd8cb5_0  
    skorch                    0.10.0             pyh59e0f4d_0    conda-forge
    sktime                    0.8.1            py38hffa2396_0    conda-forge
    skyfield                  1.40               pyh6c4a22f_0    conda-forge
    skyfield-data             3.0.0              pyhd3deb0d_0    conda-forge
    smart_open                5.2.1              pyhd8ed1ab_0    conda-forge
    snappy                    1.1.8                hb1e8313_0  
    sniffio                   1.2.0            py38hecd8cb5_1  
    snowballstemmer           2.1.0              pyhd3eb1b0_0  
    sortedcontainers          2.4.0              pyhd3eb1b0_0  
    soupsieve                 2.3.1              pyhd3eb1b0_0  
    sphinx                    4.2.0              pyhd3eb1b0_1  
    sphinxcontrib-applehelp   1.0.2              pyhd3eb1b0_0  
    sphinxcontrib-devhelp     1.0.2              pyhd3eb1b0_0  
    sphinxcontrib-htmlhelp    2.0.0              pyhd3eb1b0_0  
    sphinxcontrib-jsmath      1.0.1              pyhd3eb1b0_0  
    sphinxcontrib-qthelp      1.0.3              pyhd3eb1b0_0  
    sphinxcontrib-serializinghtml 1.1.5              pyhd3eb1b0_0  
    spyder                    5.1.5            py38hecd8cb5_1  
    spyder-kernels            2.1.3            py38hecd8cb5_0  
    sqlalchemy                1.4.22           py38h9ed2024_0  
    sqlite                    3.36.0               hce871da_0  
    statsmodels               0.12.2           py38h9ed2024_0  
    tabulate                  0.8.9            py38hecd8cb5_0  
    tapi                      1100.0.11            h0025ef7_0  
    tbb                       2021.4.0             haf03e11_0  
    tblib                     1.7.0              pyhd3eb1b0_0  
    tenacity                  8.0.1            py38hecd8cb5_0  
    terminado                 0.9.4            py38hecd8cb5_0  
    testfixtures              6.18.0             pyhd3eb1b0_0  
    testpath                  0.5.0              pyhd3eb1b0_0  
    text-unidecode            1.3                pyhd3eb1b0_0  
    textdistance              4.2.1              pyhd3eb1b0_0  
    threadpoolctl             2.2.0              pyh0d69192_0  
    three-merge               0.1.1              pyhd3eb1b0_0  
    thrift                    0.11.0           py38h23ab428_0  
    tinycss                   0.4             pyhd3eb1b0_1002  
    tk                        8.6.11               h7bc2e8c_0  
    toml                      0.10.2             pyhd3eb1b0_0  
    tomli                     1.2.2              pyhd8ed1ab_0    conda-forge
    tomlkit                   0.7.2            py38hecd8cb5_1  
    toolz                     0.11.2             pyhd3eb1b0_0  
    tornado                   6.1              py38h9ed2024_0  
    tqdm                      4.62.3             pyhd3eb1b0_1  
    traitlets                 5.1.1              pyhd3eb1b0_0  
    treebased-synthetic-controls 0.1.10                   pypi_0    pypi
    tslearn                   0.5.2            py38hbe852b5_0    conda-forge
    twine                     3.4.1            py38hecd8cb5_1  
    typed-ast                 1.4.3            py38h9ed2024_1  
    typing-extensions         3.10.0.2             hd3eb1b0_0  
    typing_extensions         3.10.0.2           pyh06a4308_0  
    ujson                     4.0.2            py38h23ab428_0  
    umap-learn                0.5.2            py38h50d1736_0    conda-forge
    unidecode                 1.2.0              pyhd3eb1b0_0  
    unixodbc                  2.3.9                haf1e3a3_0  
    urllib3                   1.26.7             pyhd3eb1b0_0  
    watchdog                  2.1.3            py38hd5f6b7e_0  
    wcwidth                   0.2.5              pyhd3eb1b0_0  
    webencodings              0.5.1                    py38_1  
    werkzeug                  2.0.2              pyhd3eb1b0_0  
    wheel                     0.37.0             pyhd3eb1b0_1  
    whichcraft                0.6.1              pyhd3eb1b0_0  
    widgetsnbextension        3.5.1                    py38_0  
    workalendar               16.1.0             pyhd8ed1ab_0    conda-forge
    wrapt                     1.12.1           py38haf1e3a3_1  
    wurlitzer                 2.1.1            py38hecd8cb5_0  
    xarray                    0.19.0             pyhd3eb1b0_1  
    xgboost                   1.3.3            py38hecd8cb5_0  
    xlrd                      2.0.1              pyhd3eb1b0_0  
    xmltodict                 0.12.0             pyhd3eb1b0_0  
    xz                        5.2.5                h1de35cc_0  
    yaml                      0.2.5                haf1e3a3_0  
    yapf                      0.31.0             pyhd3eb1b0_0  
    zeromq                    4.3.4                h23ab428_0  
    zict                      2.0.0              pyhd3eb1b0_0  
    zipp                      3.6.0              pyhd3eb1b0_0  
    zlib                      1.2.11               h1de35cc_3  
    zstd                      1.5.0                hcb37349_1  
    
    bug 
    opened by muhlbach 10
  • Estimators memory leak testing

    Estimators memory leak testing

    Description

    Changes proposed in this pull request:

    • Move memory leak tests from unittest to pytest
    • Enable memory leak testing for all patched estimators except TSNE
    testing 
    opened by Alexsandruss 10
  • Device information in patching, option to fallback on host

    Device information in patching, option to fallback on host

    • Scikit-learn patching messages reformulated to mention Intel(R) Extension for Scikit-learn* instead of oneDAL
    • SKLEARNEX INFO: <estimator.method>: running accelerated version on [CPU/GPU]
    • SKLEARNEX INFO: <estimator.method>: fallback to original Scikit-learn
    • SKLEARNEX INFO: <estimator.method>: failed to run accelerated version, fallback to original Scikit-learn
    • Logging information extended with basic device information where accelerated code runs.
    • New parameter host_offload_on_fail added to sycl_execution_context that allows to fallback on the host if GPU execution is failed.
    oneAPI sklearn-patch 
    opened by michael-smirnov 9
  • python -m sklearnex my_application.py VERSUS patch_sklearn()

    python -m sklearnex my_application.py VERSUS patch_sklearn()

    Hi developers and maintainers! First of all, I love this improvement and it really speeds up my programs by 100x! It's amazing.

    To my question (not a bug): Say I have a program (my_application.py) that imports packages from Scikit-learn, e.g., from sklearn.ensemble import RandomForestRegressor and runs some subsequent code.

    Question: What is the difference between executing the program via the Terminal by calling python -m sklearnex my_application.py OR editing the program itself, e.g. by

    from sklearnex import patch_sklearn  
    patch_sklearn()  
    from sklearn.ensemble import RandomForestRegressor
    

    Looking forward to hearing from you!

    bug 
    opened by muhlbach 8
  • added tests for RandomForestClassifier class_weight and sample_weight & tests for KNN

    added tests for RandomForestClassifier class_weight and sample_weight & tests for KNN

    Added tests which are testing accuracy ratio RandomForestClassifier between Scikit-learn and daal4py on the next parameters: sample_weight, class_weight.

    opened by OnlyDeniko 8
  • Python 3.8 support

    Python 3.8 support

    Is there a target date on this?

    2020-06-04T17:01:20.6412343Z + conda install -y -c intel daal4py
    2020-06-04T17:01:22.7290486Z Collecting package metadata (current_repodata.json): ...working... done
    2020-06-04T17:01:26.3949643Z Solving environment: ...working... failed with initial frozen solve. Retrying with flexible solve.
    2020-06-04T17:01:31.4115908Z Solving environment: ...working... failed with repodata from current_repodata.json, will retry with next repodata source.
    2020-06-04T17:01:51.7151675Z Collecting package metadata (repodata.json): ...working... done
    2020-06-04T17:02:13.9808483Z Solving environment: ...working... failed with initial frozen solve. Retrying with flexible solve.
    2020-06-04T17:02:44.0945912Z 
    2020-06-04T17:02:44.0947250Z Building graph of deps:   0%|          | 0/3 [00:00<?, ?it/s]
    2020-06-04T17:02:45.2639035Z Examining daal4py:   0%|          | 0/3 [00:00<?, ?it/s]     
    2020-06-04T17:02:45.2641419Z Examining @/linux-64::__glibc==2.27=0:  33%|███▎      | 1/3 [00:01<00:02,  1.17s/it]
    2020-06-04T17:02:45.2642511Z Examining @/linux-64::__glibc==2.27=0:  67%|██████▋   | 2/3 [00:01<00:00,  1.71it/s]
    2020-06-04T17:02:45.8060030Z Examining python=3.8:  67%|██████▋   | 2/3 [00:01<00:00,  1.71it/s]                 
    2020-06-04T17:02:45.8069291Z                                                                    
    2020-06-04T17:02:45.8069895Z 
    2020-06-04T17:02:45.8070659Z Determining conflicts:   0%|          | 0/3 [00:00<?, ?it/s]
    2020-06-04T17:02:46.2331334Z Examining conflict for daal4py python:   0%|          | 0/3 [00:00<?, ?it/s]
    2020-06-04T17:02:46.2480019Z                                                                             
    2020-06-04T17:02:46.2480327Z UnsatisfiableError: The following specifications were found
    2020-06-04T17:02:46.2480556Z to be incompatible with the existing python installation in your environment:
    2020-06-04T17:02:46.2480693Z 
    2020-06-04T17:02:46.2480886Z Specifications:
    2020-06-04T17:02:46.2481004Z 
    2020-06-04T17:02:46.2482075Z   - daal4py -> python[version='>=2.7,<2.8.0a0|>=3.6,<3.7.0a0|>=3.7,<3.8.0a0']
    2020-06-04T17:02:46.2482226Z 
    2020-06-04T17:02:46.2482420Z Your python: python=3.8
    2020-06-04T17:02:46.2482525Z 
    2020-06-04T17:02:46.2483077Z If python is on the left-most side of the chain, that's the version you've asked for.
    2020-06-04T17:02:46.2483330Z When python appears to the right, that indicates that the thing on the left is somehow
    2020-06-04T17:02:46.2483606Z not available for the python version you are constrained to. Note that conda will not
    2020-06-04T17:02:46.2483868Z change your python version to a different minor version unless you explicitly specify
    2020-06-04T17:02:46.2484089Z that.
    2020-06-04T17:02:46.2484188Z 
    2020-06-04T17:02:46.2484283Z 
    2020-06-04T17:02:46.2484394Z 
    2020-06-04T17:02:46.2484596Z Solving environment: ...working... 
    2020-06-04T17:02:46.2484806Z Found conflicts! Looking for incompatible packages.
    2020-06-04T17:02:46.2485296Z This can take several minutes.  Press CTRL-C to abort.
    2020-06-04T17:02:46.2485507Z failed
    
    enhancement 
    opened by pdxjohnny 8
  • chore(deps): update dependency jupyter-core to v5.1.2

    chore(deps): update dependency jupyter-core to v5.1.2

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    jupyter/jupyter_core

    v5.1.2

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    (Full Changelog)

    Maintenance and upkeep improvements
    Documentation improvements
    Contributors to this release

    (GitHub contributors page for this release)

    @​blink1073 | @​Carreau


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  • chore(deps): update dependency importlib-resources to v5.10.2

    chore(deps): update dependency importlib-resources to v5.10.2

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    python/importlib_resources

    v5.10.2

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    =======


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  • chore(deps): update dependency nbconvert to v7

    chore(deps): update dependency nbconvert to v7

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  • chore(deps): update dependency charset-normalizer to v3

    chore(deps): update dependency charset-normalizer to v3

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    Release Notes

    Ousret/charset_normalizer

    v3.0.1

    Compare Source

    Fixed
    • Multi-bytes cutter/chunk generator did not always cut correctly (PR #​233)
    Changed
    • Speedup provided by mypy/c 0.990 on Python >= 3.7

    v3.0.0

    Compare Source

    Added
    • Extend the capability of explain=True when cp_isolation contains at most two entries (min one), will log in details of the Mess-detector results
    • Support for alternative language frequency set in charset_normalizer.assets.FREQUENCIES
    • Add parameter language_threshold in from_bytes, from_path and from_fp to adjust the minimum expected coherence ratio
    • normalizer --version now specify if current version provide extra speedup (meaning mypyc compilation whl)
    Changed
    • Build with static metadata using 'build' frontend
    • Make the language detection stricter
    • Optional: Module md.py can be compiled using Mypyc to provide an extra speedup up to 4x faster than v2.1
    Fixed
    • CLI with opt --normalize fail when using full path for files
    • TooManyAccentuatedPlugin induce false positive on the mess detection when too few alpha character have been fed to it
    • Sphinx warnings when generating the documentation
    Removed
    • Coherence detector no longer return 'Simple English' instead return 'English'
    • Coherence detector no longer return 'Classical Chinese' instead return 'Chinese'
    • Breaking: Method first() and best() from CharsetMatch
    • UTF-7 will no longer appear as "detected" without a recognized SIG/mark (is unreliable/conflict with ASCII)
    • Breaking: Class aliases CharsetDetector, CharsetDoctor, CharsetNormalizerMatch and CharsetNormalizerMatches
    • Breaking: Top-level function normalize
    • Breaking: Properties chaos_secondary_pass, coherence_non_latin and w_counter from CharsetMatch
    • Support for the backport unicodedata2

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  • chore(deps): update dependency sphinx-tabs to v3.4.1

    chore(deps): update dependency sphinx-tabs to v3.4.1

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    executablebooks/sphinx-tabs

    v3.4.1

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    Added
    • Weekly scheduled testing, to catch breaking changes in unpinned dependencies
    Changed
    • docutils version pin to allow use of verison 0.18.x
    Removed
    • sphinx version pinning - only the latest version of sphinx will now be fully supported, but previous versions will work if sphinx dependencies (i.e. jinja2) are managed correctly. This is inline with the approach at sphinx
    • tests that were specific to older versions of sphinx and pygments
    • jinja2 version pinning, as this is now pinned in latest version of sphinx

    v3.4.0

    Compare Source

    Added
    • Testing for sphinx 5
    • Tesing for python 3.10
    Fixed
    • Fixed parsing of MyST content, where first line was being stripped
    • Typos in documentation
    • Failing regression tests
    Changed
    • Testing to use an up-to-date pytest version
    Removed
    • Testing for python 3.6 and sphinx versions 2 and 4 (see #​164). Note that the package will likely continue to work fine with these, but this won't be assured by tests

    v3.3.1

    Compare Source

    Fixed
    • Inserting CSS at the start of the static path list, so that it can be overwritten
    • Assume light theme is the default, even when browser setting prefers dark. Necessary when most sphinx themes don't set data-theme.

    v3.3.0

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    • Testing for Python 3.9 and a few pygments versions
    • Dark theme selectors
    Changed
    • Bumped docutils dependency to 0.17
    • Remaining string formatting to use f-strings

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  • chore(deps): update dependency jinja2 to v3.1.2

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Releases(2021.7.1)
  • 2021.7.1(Dec 1, 2022)

  • 2021.6.0(Aug 18, 2022)

    The release Intel® Extension for Scikit-learn 2021.6 introduces the following changes:

    📚 Support Materials

    Kaggle kernels:

    🛠️ Library Engineering

    • Reduced the size of oneDAL python run-time package by approximately 8%
    • Added Python 3.10 support for daal4py and Intel(R) Extension for Scikit-learn packages

    🚨 What's new

    • Improved performance for the following Intel® Extension for Scikit-learn algorithms:

      • t-SNE for “Burnes-Hut” algorithm
    • Introduced new functionality for Intel® Extension for Scikit-learn:

      • Manhattan, Minkowski, Chebyshev and Cosine distances for KNeighborsClassifier and NearestNeighbors with “brute” algorithm
    • Fixed the following issues in Intel® Extension for Scikit-learn:

      • An issue with the search of common data type in pandas DataFrame
      • Patching overhead of finiteness checker for specific small data sizes
      • Incorrect values in a tree visualization with plot_tree function in RandomForestClassifier
      • Unexpected error for device strings in {device}:{device_index} format while using config context
    Source code(tar.gz)
    Source code(zip)
  • 2021.5.0(Dec 22, 2021)

    The release Intel® Extension for Scikit-learn 2021.5 introduces the following changes:

    📚 Support Materials

    🛠️ Library Engineering

    • Reduced the size of oneDAL library by approximately ~15%, this is a required dependency of Intel® extension for scikit learn.

    🚨 New Features

    • Scikit-learn 1.0 support

    🚀 ​Improved performance

    • [GPU] KNN algorithm prediction
    • [GPU] SVC and SVR algorithms training

    🐛 Bug Fixes

    • Stabilized the results of Linear Regression in oneDAL and Intel® Extension for Scikit-learn
    • Fixed an issue with RPATH on MacOS
    Source code(tar.gz)
    Source code(zip)
  • 2021.4.0(Oct 14, 2021)

    The release Intel(R) Extension for Scikit-learn 2021.4 introduces the following changes:

    📚 Support Materials

    🛠️ Library Engineering

    • Introduced new functionality for Intel® Extension for Scikit-learn*:
      • Enabled patching for all Scikit-learn applications at once:
      • Added the support of Python 3.9 for both Intel® Extension for Scikit-learn and daal4py. The packages are available from PyPI and the Intel Channel on Anaconda Cloud.

    🚨 New Features

    • Enabled the global patching of all Scikit-learn applications
    • Provided an integration with dpctl for heterogeneous computing (the support of dpctl.tensor.usm_ndarray for input and output)
    • Extended API with set_config and get_config methods. Added the support of target_offload and allow_fallback_to_host options for device offloading scenarios
    • Added the support of predict_proba in RandomForestClassifier estimator
    • [CPU] Added the support of Sigmoid kernel in SVM algorithms
    • [GPU] Added binary SVC support with Linear and RBF kernels

    🚀 ​Improved performance

    • [CPU] SVR algorithm training
    • [CPU] NuSVC and NuSVR algorithms training
    • [CPU] RandomForestRegression and RandomForestClassifier algorithms training and prediction
    • [CPU] KMeans algorithm training

    🐛 Bug Fixes

    • Fixed an incorrectly raised exception during the patching of Random Forest algorithm when the number of trees was more than 7000.
    • [CPU] Fixed an accuracy issue in Random Forest algorithm caused by the exclusion of constant features.
    • [CPU] Fixed an issue in NuSVC Multiclass.
    • [CPU] Fixed an issue with KMeans convergence inconsistency.
    • [CPU] Fixed incorrect work of train_test_split with specific subset sizes.
    • [GPU] Fixed incorrect bias calculation in SVM.

    ❗ Known Issues

    • [GPU] For most algorithms, performance degradations were observed when the 2021.4 version of Intel® oneAPI DPC++ Compiler was used.
    • [GPU] Examples are failing when run with Visual Studio Solutions on hardware that does not support double precision floating-point operations.
    Source code(tar.gz)
    Source code(zip)
  • 2021.3.0(Jul 5, 2021)

    The release Intel(R) Extension for Scikit-learn 2021.3 introduces the following changes:

    📚 Support Materials

    🛠️ Library Engineering

    • Introduced optional dependencies on DPC++ runtime to Intel Extension for Scikit-learn and 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.

    🚨 New Features

    • Introduced the support of scikit-learn 1.0 version in Intel(R) Extension for Scikit-learn. The 2021.3 release of Intel(R) Extension for Scikit-learn supports the latest scikit-learn releases: 0.22.X, 0.23.X, 0.24.X and 1.0.X.
    • The support of patch_sklearn for several algorithms: patch_sklearn(["SVC", "DBSCAN"])
    • [CPU] Acceleration of SVR estimator
    • [CPU] Acceleration of NuSVC and NuSVR estimators
    • [CPU] Polynomial kernel support in SVM algorithms

    🚀 ​Improved performance

    • [CPU] SVM algorithms training and prediction
    • [CPU] Linear, Ridge, ElasticNet, and Lasso regressions prediction

    🐛 Bug Fixes

    • 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] Reduced the memory consumption of SVM prediction
    • [GPU] Fixed an issue with kernel compilation on the platforms without hardware FP64 support

    ❗ Known Issues

    • Intel(R) Extension for Scikit-learn package 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:
    import sys 
    import os 
    import site 
    sys.path.append(os.path.join(os.path.dirname(site.getsitepackages()[0]), "site-packages")) 
    
    Source code(tar.gz)
    Source code(zip)
  • 2021.2.3(May 27, 2021)

  • 2021.2.2(Mar 30, 2021)

    ⚡️ New package - Intel(R) Extension for Scikit-learn*

    • Intel(R) Extension for Scikit-learn* contains scikit-learn patching functionality originally available in daal4py package. All future updates for the patching will be available in Intel(R) Extension for Scikit-learn only. Please use the package instead of daal4py.

    ⚠️ Deprecations

    • Scikit-learn patching functionality in daal4py was deprecated and moved to a separate package - Intel(R) Extension for Scikit-learn*. All future updates for the patching will be available in Intel(R) Extension for Scikit-learn only. Please use the package instead of daal4py for the Scikit-learn acceleration.

    📚 Support Materials

    🛠️ Library Engineering

    • Enabled new PyPI distribution channel for Intel(R) Extension for Scikit-learn and daal4py:
      • Four latest Python versions (3.6, 3.7, 3.8) are supported on Linux, Windows and MacOS.
      • Support of both CPU and GPU is included in the package.
      • You can download daal4py using the following command: pip install daal4py
      • You can download Intel(R) Extension for Scikit-learn using the following command: pip install scikit-learn-intelex

    🚨 New Features

    • Patches for four latest scikit-learn releases: 0.21.X, 0.22.X, 0.23.X and 0.24.X
    • [CPU] Acceleration of roc_auc_score function
    • [CPU] Bit-to-bit results reproducibility for: LinearRegression, Ridge, SVC, KMeans, PCA, Lasso, ElasticNet, tSNE, KNeighborsClassifier, KNeighborsRegressor, NearestNeighbors, RandomForestClassifier, RandomForestRegressor

    🚀 ​Improved performance

    • [CPU] RandomForestClassifier and RandomForestRegressor scikit-learn estimators: training and prediction
    • [CPU] Principal Component Analysis (PCA) scikit-learn estimator: training
    • [CPU] Support Vector Classification (SVC) scikit-learn estimators: training and prediction
    • [CPU] Support Vector Classification (SVC) scikit-learn estimator with the probability==True parameter: training and prediction

    🐛 Bug Fixes

    • [CPU] Improved accuracy of RandomForestClassifier and RandomForestRegressor scikit-learn estimators
    • [CPU] Fixed patching issues with pairwise_distances
    • [CPU] Fixed the behavior of the patch_sklearn and unpatch_sklearn functions
    • [CPU] Fixed unexpected behavior that made accelerated functionality unavailable through scikit-learn patching if the input was not of float32 or float64 data types. Scikit-learn patching now works with all numpy data types.
    • [CPU] Fixed a memory leak that appeared when DataFrame from pandas was used as an input type
    • [CPU] Fixed performance issue for interoperability with Modin
    Source code(tar.gz)
    Source code(zip)
  • 2020.3.1(Dec 25, 2020)

  • 2021.1(Dec 14, 2020)

    What's New

    Introduced new daal4py functionality:

    • GPU:
      • Batch algorithms: K-means, Covariance, PCA, Logistic Regression, Linear Regression, Random Forest Classification and Regression, Gradient Boosting Classification and Regression, kNN, SVM, DBSCAN and Low-order moments
      • Online algorithms: Covariance, PCA, Linear Regression and Low-order moments

    Improved daal4py performance for the following algorithms:

    • CPU:
      • Logistic Regression training and prediction
      • k-Nearest Neighbors prediction with Brute Force method
      • Logistic Loss and Cross Entropy objective functions

    Introduced new functionality for scikit-learn patching through daal4py:

    • CPU:
      • Acceleration of NearestNeighbors and KNeighborsRegressor scikit-learn estimators with Brute Force and K-D tree methods
      • Acceleration of TSNE scikit-learn estimator
    • GPU:
      • Intel GPU support in scikit-learn for DBSCAN, K-means, Linear and Logistic Regression

    Improved performance of the following scikit-learn estimators via scikit-learn patching:

    • CPU:
      • LogisticRegression fit, predict and predict_proba methods
      • KNeighborsClassifier predict, predict_proba and kneighbors methods with “brute” method

    Known Issues

    • train_test_split in daal4py patches for Scikit-learn can produce incorrect shuffling on Windows*

    Installation

    To install this package with conda run the following:

    conda install -c intel daal4py
    
    Source code(tar.gz)
    Source code(zip)
  • 2020.3(Nov 6, 2020)

    What's New in Intel® daal4py 2020 Update 3:

    Introduced new daal4py functionality:

    • Conversion of trained XGBoost* and LightGBM* models into a daal4py Gradient Boosted Trees model for fast prediction
    • Support of Modin* DataFrame as an input
    • Brute Force method for k-Nearest Neighbors classification algorithm, which for datasets with more than 13 features demonstrates a better performance than the existing K-D tree method
    • k-Nearest Neighbors search for K-D tree and Brute Force methods with computation of distances to nearest neighbors and their indices

    Extended existing daal4py functionality:

    • Voting methods for prediction in k-Nearest Neighbors classification and search: based on inverse-distance and uniform weighting
    • New parameters in Decision Forest classification and regression: minObservationsInSplitNode, minWeightFractionInLeafNode, minImpurityDecreaseInSplitNode, maxLeafNodes with best-first strategy and sample weights
    • Support of Support Vector Machine (SVM) decision function for Multi-class Classifier

    Improved daal4py performance for the following algorithms:

    • SVM training and prediction
    • Decision Forest classification training
    • RBF and Linear kernel functions

    Introduced new functionality for scikit-learn patching through daal4py:

    • Acceleration of KNeighborsClassifier scikit-learn estimator with Brute Force and K-D tree methods
    • Acceleration of RandomForestClassifier and RandomForestRegressor scikit-learn estimators
    • Sparse input support for KMeans and Support Vector Classification (SVC) scikit-learn estimators
    • Prediction of probabilities for SVC scikit-learn estimator
    • Support of ‘normalize’ parameter for Lasso and ElasticNet scikit-learn estimators

    Improved performance of the following functionality for scikit-learn patching through daal4py:

    • train_test_split()
    • Support Vector Classification (SVC) fit and prediction

    To install this package with conda run the following: conda install -c intel daal4py

    Source code(tar.gz)
    Source code(zip)
  • 2020.2(Aug 17, 2020)

    Introduced new functionality:

    • Thunder method for Support Vector Machine (SVM) training algorithm, which demonstrates better training time than the existing sequential minimal optimization method

    Extended existing functionality:

    • Training with the number of features greater than the number of observations for Linear Regression, Ridge Regression, and Principal Component Analysis
    • New sample_weights parameter for SVM algorithm
    • New parameter in K-Means algorithm, resultsToEvaluate, which controls computation of centroids, assignments, and exact objective function

    Improved performance for the following:

    • Support Vector Machine training and prediction, Elastic Net and LASSO training, Principal Component Analysis training and transform, K-D tree based k-Nearest Neighbors prediction
    • K-Means algorithm in batch computation mode
    • RBF kernel function

    Deprecated 32-bit support:

    • 2020 product line will be the last one to support 32-bit

    Introduced improvements to daal4py library:

    • Performance optimizations for pandas input format
    • Scikit-learn compatible API for AdaBoost classifier, Decision Tree classifier, and Gradient Boosted Trees classifier and regressor

    Improved performance of the following Intel Scikit-learn algorithms and functions:

    • fit and prediction in K-Means and Support Vector Classification (SVC), fit in Elastic Net and LASSO, fit and transform in PCA
    • Support Vector Classification (SVC) with non-default weights of samples and classes
    • train_test_split() and assert_all_finite()

    To install this package with conda run the following: conda install -c intel daal4py

    Source code(tar.gz)
    Source code(zip)
  • 2020.1(Aug 17, 2020)

    Introduced new functionality:

    • Elastic Net algorithm with L1 and L2 regularization in batch computation mode. The algorithm supports various optimization solvers that handle non-smooth functions.
    • Probabilistic classification for Decision Forest Classification algorithm with a choice voting method to calculate probabilities.

    Extended existing functionality:

    • Performance optimizations for distributed Spark samples, K-means algorithm for some input dimensions, Gradient Boosted Trees training stage for large datasets on multi-core platforms and Decision Forest prediction stage for datasets with a small number of observations on processors that support Intel® Advanced Vector Extensions 2 (Intel® AVX2) and Intel® Advanced Vector Extensions 512 (Intel® AVX-512)
    • Performance optimizations across algorithms that use SOA (Structure Of Arrays) NumericTable as an input on processors that support Intel® Advanced Vector Extensions 512 (Intel® AVX-512)
    Source code(tar.gz)
    Source code(zip)
  • 2020.0(Dec 19, 2019)

    Added support for Brownboost, Logistboost as well as Stump regression and Stump classification algorithms to daal4py. Added support for Adaboost classification algorithm, including support for method="SAMME" or "SAMMER" for multi-class data. "Variable Importance" feature has been added in Gradient Boosting Trees. Ability to compute class prediction probabilities has been added to appropriate classifiers, including logistic regression, tree-based classifiers, etc.

    Source code(tar.gz)
    Source code(zip)
  • 2019.5(Oct 5, 2019)

    Single node support for DBSCAN, LASSO, Coordinate Descent (CD) solver algorithms Distributed model support for SVD, QR, K-means init++ and parallel++ algorithms

    Source code(tar.gz)
    Source code(zip)
  • 2019.3(Apr 2, 2019)

A repository for collating all the resources such as articles, blogs, papers, and books related to Bayesian Statistics.

A repository for collating all the resources such as articles, blogs, papers, and books related to Bayesian Statistics.

Aayush Malik 80 Dec 12, 2022
Probabilistic time series modeling in Python

GluonTS - Probabilistic Time Series Modeling in Python GluonTS is a Python toolkit for probabilistic time series modeling, built around Apache MXNet (

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AP1 Transcription Factor Binding Site Prediction

A machine learning project that predicted binding sites of AP1 transcription factor, using ChIP-Seq data and local DNA shape information.

1 Jan 21, 2022
Given the names and grades for each student in a class N of students, store them in a nested list and print the name(s) of any student(s) having the second lowest grade.

Hackerank-Nested-List Given the names and grades for each student in a class N of students, store them in a nested list and print the name(s) of any s

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Graphsignal is a machine learning model monitoring platform.

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