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Databricks Runtime 8.3 voor ML (niet ondersteund)

Databricks heeft deze afbeelding uitgebracht in juni 2021.

Databricks Runtime 8.3 voor Machine Learning biedt een kant-en-klare omgeving voor machine learning en gegevenswetenschap op basis van Databricks Runtime 8.3 (niet ondersteund). Databricks Runtime ML bevat veel populaire machine learning-bibliotheken, waaronder TensorFlow, PyTorch en XGBoost. Het biedt ook ondersteuning voor gedistribueerde deep learning-training met behulp van Horovod.

Zie AI en Machine Learning op Databricks voor meer informatie, waaronder instructies voor het maken van een Databricks Runtime ML-cluster.

Nieuwe functies en verbeteringen

Databricks Runtime 8.3 ML is gebouwd op Databricks Runtime 8.3. Zie de releaseopmerkingen van Databricks Runtime 8.3, waaronder Apache Spark MLlib en SparkR, voor informatie over wat er nieuw is in Databricks Runtime 8.3 (niet-ondersteund ).

Databricks Runtime 8.3 ML bevat ook de volgende nieuwe pakketten:

Belangrijke wijzigingen in de Python-omgeving van Databricks Runtime ML

Zie Databricks Runtime 8.3 (niet ondersteund) voor de belangrijkste wijzigingen in de Python-omgeving van Databricks Runtime. Zie Python-bibliotheken voor een volledige lijst met geïnstalleerde Python-pakketten en hun versies.

Python-pakketten bijgewerkt

  • koalas 1.7.0 -> 1.8.0
  • mlflow 1.15.0 -> 1.17.0
  • pandas 1.1.3 -> 1.1.5
  • petastorm 0.9.8 -> 0.10.0
  • xgboost 1.3.3 -> 1.4.1

Python-pakketten toegevoegd

  • feestdagen: 0.10.5.2

Shiny gebruiken in R-notebooks

U kunt nu Shiny-toepassingen rechtstreeks ontwikkelen, hosten en delen vanuit een Azure Databricks R-notebook, vergelijkbaar met gehoste RStudio. Zie Shiny in Azure Databricks voor meer informatie.

Afgeschafte onderdelen

Conda-omgevingen, samen met de %conda opdracht, worden nu afgeschaft en pipvirtualenv worden verwijderd in een toekomstige primaire release. Daarnaast worden aangepaste installatiekopieën die gebruikmaken van Op Conda gebaseerde omgevingen met Databricks Container Services nog steeds ondersteund, maar hebben geen bibliotheekmogelijkheden binnen het notebookbereik. Databricks raadt aan om omgevingen op basis van databricks te gebruiken virtualenvmet Databricks Container Services en %pip voor alle bibliotheken met notebookbereik.

Systeemomgeving

De systeemomgeving in Databricks Runtime 8.3 ML verschilt als volgt van Databricks Runtime 8.3:

Bibliotheken

In de volgende secties worden de bibliotheken vermeld die zijn opgenomen in Databricks Runtime 8.3 ML die verschillen van de bibliotheken die zijn opgenomen in Databricks Runtime 8.3.

In deze sectie:

Bibliotheken met de hoogste laag

Databricks Runtime 8.3 ML bevat de volgende bibliotheken met de hoogste laag:

Python-bibliotheken

Databricks Runtime 8.3 ML maakt gebruik van Conda voor Python-pakketbeheer en bevat veel populaire ML-pakketten.

Naast de pakketten die zijn opgegeven in de Conda-omgevingen in de volgende secties, bevat Databricks Runtime 8.3 ML ook de volgende pakketten:

  • hyperopt 0.2.5.db1
  • sparkdl 2.1.0.db4
  • feature_store 0.3.1
  • automl 1.0.0

Python-bibliotheken op CPU-clusters

name: databricks-ml
channels:
  - pytorch
  - defaults
dependencies:
  - _libgcc_mutex=0.1=main
  - absl-py=0.11.0=pyhd3eb1b0_1
  - aiohttp=3.7.4=py38h27cfd23_1
  - asn1crypto=1.4.0=py_0
  - astor=0.8.1=py38h06a4308_0
  - async-timeout=3.0.1=py38h06a4308_0
  - attrs=20.3.0=pyhd3eb1b0_0
  - backcall=0.2.0=pyhd3eb1b0_0
  - bcrypt=3.2.0=py38h7b6447c_0
  - blas=1.0=mkl
  - blinker=1.4=py38h06a4308_0
  - boto3=1.16.7=pyhd3eb1b0_0
  - botocore=1.19.7=pyhd3eb1b0_0
  - brotlipy=0.7.0=py38h27cfd23_1003
  - bzip2=1.0.8=h7b6447c_0
  - c-ares=1.17.1=h27cfd23_0
  - ca-certificates=2021.4.13=h06a4308_1
  - cachetools=4.2.2=pyhd3eb1b0_0
  - certifi=2020.12.5=py38h06a4308_0
  - cffi=1.14.3=py38h261ae71_2
  - chardet=3.0.4=py38h06a4308_1003
  - click=7.1.2=pyhd3eb1b0_0
  - cloudpickle=1.6.0=py_0
  - configparser=5.0.1=py_0
  - cpuonly=1.0=0
  - cryptography=3.1.1=py38h1ba5d50_0
  - cycler=0.10.0=py38_0
  - cython=0.29.21=py38h2531618_0
  - decorator=4.4.2=pyhd3eb1b0_0
  - dill=0.3.2=py_0
  - docutils=0.15.2=py38h06a4308_1
  - entrypoints=0.3=py38_0
  - ffmpeg=4.2.2=h20bf706_0
  - flask=1.1.2=pyhd3eb1b0_0
  - freetype=2.10.4=h5ab3b9f_0
  - fsspec=0.8.3=py_0
  - future=0.18.2=py38_1
  - gitdb=4.0.7=pyhd3eb1b0_0
  - gitpython=3.1.12=pyhd3eb1b0_1
  - gmp=6.1.2=h6c8ec71_1
  - gnutls=3.6.15=he1e5248_0
  - google-auth=1.22.1=py_0
  - google-auth-oauthlib=0.4.2=pyhd3eb1b0_2
  - google-pasta=0.2.0=py_0
  - gunicorn=20.0.4=py38h06a4308_0
  - h5py=2.10.0=py38h7918eee_0
  - hdf5=1.10.4=hb1b8bf9_0
  - icu=58.2=he6710b0_3
  - idna=2.10=pyhd3eb1b0_0
  - importlib-metadata=2.0.0=py_1
  - intel-openmp=2019.4=243
  - ipykernel=5.3.4=py38h5ca1d4c_0
  - ipython=7.19.0=py38hb070fc8_1
  - ipython_genutils=0.2.0=pyhd3eb1b0_1
  - isodate=0.6.0=py_1
  - itsdangerous=1.1.0=pyhd3eb1b0_0
  - jedi=0.17.2=py38h06a4308_1
  - jinja2=2.11.2=pyhd3eb1b0_0
  - jmespath=0.10.0=py_0
  - joblib=0.17.0=py_0
  - jpeg=9b=h024ee3a_2
  - jupyter_client=6.1.7=py_0
  - jupyter_core=4.6.3=py38_0
  - kiwisolver=1.3.0=py38h2531618_0
  - krb5=1.17.1=h173b8e3_0
  - lame=3.100=h7b6447c_0
  - lcms2=2.11=h396b838_0
  - ld_impl_linux-64=2.33.1=h53a641e_7
  - libedit=3.1.20191231=h14c3975_1
  - libffi=3.3=he6710b0_2
  - libgcc-ng=9.1.0=hdf63c60_0
  - libgfortran-ng=7.3.0=hdf63c60_0
  - libidn2=2.3.0=h27cfd23_0
  - libopus=1.3.1=h7b6447c_0
  - libpng=1.6.37=hbc83047_0
  - libpq=12.2=h20c2e04_0
  - libprotobuf=3.13.0.1=hd408876_0
  - libsodium=1.0.18=h7b6447c_0
  - libstdcxx-ng=9.1.0=hdf63c60_0
  - libtasn1=4.16.0=h27cfd23_0
  - libtiff=4.1.0=h2733197_1
  - libunistring=0.9.10=h27cfd23_0
  - libuv=1.40.0=h7b6447c_0
  - libvpx=1.7.0=h439df22_0
  - lightgbm=3.1.1=py38h2531618_0
  - lz4-c=1.9.2=heb0550a_3
  - mako=1.1.3=py_0
  - markdown=3.3.3=py38h06a4308_0
  - markupsafe=1.1.1=py38h7b6447c_0
  - matplotlib-base=3.2.2=py38hef1b27d_0
  - mkl=2019.4=243
  - mkl-service=2.3.0=py38he904b0f_0
  - mkl_fft=1.2.0=py38h23d657b_0
  - mkl_random=1.1.0=py38h962f231_0
  - more-itertools=8.6.0=pyhd3eb1b0_0
  - multidict=5.1.0=py38h27cfd23_2
  - ncurses=6.2=he6710b0_1
  - nettle=3.7.2=hbbd107a_1
  - networkx=2.5.1=pyhd3eb1b0_0
  - ninja=1.10.2=hff7bd54_1
  - nltk=3.5=py_0
  - numpy=1.19.2=py38h54aff64_0
  - numpy-base=1.19.2=py38hfa32c7d_0
  - oauthlib=3.1.0=py_0
  - olefile=0.46=py_0
  - openh264=2.1.0=hd408876_0
  - openssl=1.1.1k=h27cfd23_0
  - packaging=20.4=py_0
  - pandas=1.1.5=py38ha9443f7_0
  - paramiko=2.7.2=py_0
  - parso=0.7.0=py_0
  - patsy=0.5.1=py38_0
  - pexpect=4.8.0=pyhd3eb1b0_3
  - pickleshare=0.7.5=pyhd3eb1b0_1003
  - pillow=8.0.1=py38he98fc37_0
  - pip=20.2.4=py38h06a4308_0
  - plotly=4.14.3=pyhd3eb1b0_0
  - prompt-toolkit=3.0.8=py_0
  - prompt_toolkit=3.0.8=0
  - protobuf=3.13.0.1=py38he6710b0_1
  - psutil=5.7.2=py38h7b6447c_0
  - psycopg2=2.8.5=py38h3c74f83_1
  - ptyprocess=0.6.0=pyhd3eb1b0_2
  - pyasn1=0.4.8=py_0
  - pyasn1-modules=0.2.8=py_0
  - pycparser=2.20=py_2
  - pygments=2.7.2=pyhd3eb1b0_0
  - pyjwt=1.7.1=py38_0
  - pynacl=1.4.0=py38h7b6447c_1
  - pyodbc=4.0.30=py38he6710b0_0
  - pyopenssl=19.1.0=pyhd3eb1b0_1
  - pyparsing=2.4.7=pyhd3eb1b0_0
  - pysocks=1.7.1=py38h06a4308_0
  - python=3.8.8=hdb3f193_4
  - python-dateutil=2.8.1=pyhd3eb1b0_0
  - python-editor=1.0.4=py_0
  - pytorch=1.8.1=py3.8_cpu_0
  - pytz=2020.5=pyhd3eb1b0_0
  - pyzmq=19.0.2=py38he6710b0_1
  - readline=8.0=h7b6447c_0
  - regex=2020.10.15=py38h7b6447c_0
  - requests=2.24.0=py_0
  - requests-oauthlib=1.3.0=py_0
  - retrying=1.3.3=py_2
  - rsa=4.7.2=pyhd3eb1b0_1
  - s3transfer=0.3.6=pyhd3eb1b0_0
  - scikit-learn=0.23.2=py38h0573a6f_0
  - scipy=1.5.2=py38h0b6359f_0
  - setuptools=50.3.1=py38h06a4308_1
  - simplejson=3.17.2=py38h27cfd23_2
  - six=1.15.0=py38h06a4308_0
  - smmap=3.0.5=pyhd3eb1b0_0
  - sqlite=3.33.0=h62c20be_0
  - sqlparse=0.4.1=py_0
  - statsmodels=0.12.0=py38h7b6447c_0
  - tabulate=0.8.7=py38h06a4308_0
  - threadpoolctl=2.1.0=pyh5ca1d4c_0
  - tk=8.6.10=hbc83047_0
  - torchvision=0.9.1=py38_cpu
  - tornado=6.0.4=py38h7b6447c_1
  - tqdm=4.50.2=py_0
  - traitlets=5.0.5=pyhd3eb1b0_0
  - typing-extensions=3.7.4.3=hd3eb1b0_0
  - typing_extensions=3.7.4.3=pyh06a4308_0
  - unixodbc=2.3.9=h7b6447c_0
  - urllib3=1.25.11=py_0
  - wcwidth=0.2.5=py_0
  - websocket-client=0.57.0=py38_2
  - werkzeug=1.0.1=pyhd3eb1b0_0
  - wheel=0.35.1=pyhd3eb1b0_0
  - wrapt=1.12.1=py38h7b6447c_1
  - x264=1!157.20191217=h7b6447c_0
  - xz=5.2.5=h7b6447c_0
  - yarl=1.6.3=py38h27cfd23_0
  - zeromq=4.3.3=he6710b0_3
  - zipp=3.4.0=pyhd3eb1b0_0
  - zlib=1.2.11=h7b6447c_3
  - zstd=1.4.5=h9ceee32_0
  - pip:
    - argon2-cffi==20.1.0
    - astunparse==1.6.3
    - async-generator==1.10
    - azure-core==1.11.0
    - azure-storage-blob==12.7.1
    - bleach==3.3.0
    - confuse==1.4.0
    - convertdate==2.3.2
    - databricks-cli==0.14.3
    - defusedxml==0.7.1
    - diskcache==5.2.1
    - docker==4.4.4
    - facets-overview==1.0.0
    - flatbuffers==1.12
    - gast==0.3.3
    - grpcio==1.32.0
    - hijri-converter==2.1.1
    - holidays==0.10.5.2
    - horovod==0.21.3
    - htmlmin==0.1.12
    - imagehash==4.2.0
    - ipywidgets==7.6.3
    - joblibspark==0.3.0
    - jsonschema==3.2.0
    - jupyterlab-pygments==0.1.2
    - jupyterlab-widgets==1.0.0
    - keras-preprocessing==1.1.2
    - koalas==1.8.0
    - korean-lunar-calendar==0.2.1
    - llvmlite==0.36.0
    - missingno==0.4.2
    - mistune==0.8.4
    - mleap==0.16.1
    - mlflow-skinny==1.17.0
    - msrest==0.6.21
    - nbclient==0.5.3
    - nbconvert==6.0.7
    - nbformat==5.1.3
    - nest-asyncio==1.5.1
    - notebook==6.4.0
    - numba==0.53.1
    - opt-einsum==3.3.0
    - pandas-profiling==2.11.0
    - pandocfilters==1.4.3
    - petastorm==0.10.0
    - phik==0.11.2
    - prometheus-client==0.10.1
    - pyarrow==1.0.1
    - pymeeus==0.5.11
    - pyrsistent==0.17.3
    - pywavelets==1.1.1
    - pyyaml==5.4.1
    - querystring-parser==1.2.4
    - seaborn==0.10.0
    - send2trash==1.5.0
    - shap==0.39.0
    - slicer==0.0.7
    - spark-tensorflow-distributor==0.1.0
    - tangled-up-in-unicode==0.1.0
    - tensorboard==2.4.1
    - tensorboard-plugin-wit==1.8.0
    - tensorflow-cpu==2.4.1
    - tensorflow-estimator==2.4.0
    - termcolor==1.1.0
    - terminado==0.9.5
    - testpath==0.5.0
    - visions==0.6.0
    - webencodings==0.5.1
    - widgetsnbextension==3.5.1
    - xgboost==1.4.1
prefix: /databricks/conda/envs/databricks-ml

Python-bibliotheken op GPU-clusters

name: databricks-ml-gpu
channels:
  - defaults
dependencies:
  - _libgcc_mutex=0.1=main
  - absl-py=0.11.0=pyhd3eb1b0_1
  - aiohttp=3.7.4=py38h27cfd23_1
  - asn1crypto=1.4.0=py_0
  - astor=0.8.1=py38h06a4308_0
  - async-timeout=3.0.1=py38h06a4308_0
  - attrs=20.3.0=pyhd3eb1b0_0
  - backcall=0.2.0=pyhd3eb1b0_0
  - bcrypt=3.2.0=py38h7b6447c_0
  - blas=1.0=mkl
  - blinker=1.4=py38h06a4308_0
  - boto3=1.16.7=pyhd3eb1b0_0
  - botocore=1.19.7=pyhd3eb1b0_0
  - brotlipy=0.7.0=py38h27cfd23_1003
  - c-ares=1.17.1=h27cfd23_0
  - ca-certificates=2021.4.13=h06a4308_1
  - cachetools=4.2.2=pyhd3eb1b0_0
  - certifi=2020.12.5=py38h06a4308_0
  - cffi=1.14.3=py38h261ae71_2
  - chardet=3.0.4=py38h06a4308_1003
  - click=7.1.2=pyhd3eb1b0_0
  - cloudpickle=1.6.0=py_0
  - configparser=5.0.1=py_0
  - cryptography=3.1.1=py38h1ba5d50_0
  - cycler=0.10.0=py38_0
  - cython=0.29.21=py38h2531618_0
  - decorator=4.4.2=pyhd3eb1b0_0
  - dill=0.3.2=py_0
  - docutils=0.15.2=py38h06a4308_1
  - entrypoints=0.3=py38_0
  - flask=1.1.2=pyhd3eb1b0_0
  - freetype=2.10.4=h5ab3b9f_0
  - fsspec=0.8.3=py_0
  - future=0.18.2=py38_1
  - gitdb=4.0.7=pyhd3eb1b0_0
  - gitpython=3.1.12=pyhd3eb1b0_1
  - google-auth=1.22.1=py_0
  - google-auth-oauthlib=0.4.2=pyhd3eb1b0_2
  - google-pasta=0.2.0=py_0
  - grpcio=1.31.0=py38hf8bcb03_0
  - gunicorn=20.0.4=py38h06a4308_0
  - h5py=2.10.0=py38h7918eee_0
  - hdf5=1.10.4=hb1b8bf9_0
  - icu=58.2=he6710b0_3
  - idna=2.10=pyhd3eb1b0_0
  - importlib-metadata=2.0.0=py_1
  - intel-openmp=2019.4=243
  - ipykernel=5.3.4=py38h5ca1d4c_0
  - ipython=7.19.0=py38hb070fc8_1
  - ipython_genutils=0.2.0=pyhd3eb1b0_1
  - isodate=0.6.0=py_1
  - itsdangerous=1.1.0=pyhd3eb1b0_0
  - jedi=0.17.2=py38h06a4308_1
  - jinja2=2.11.2=pyhd3eb1b0_0
  - jmespath=0.10.0=py_0
  - joblib=0.17.0=py_0
  - jpeg=9b=h024ee3a_2
  - jupyter_client=6.1.7=py_0
  - jupyter_core=4.6.3=py38_0
  - kiwisolver=1.3.0=py38h2531618_0
  - krb5=1.17.1=h173b8e3_0
  - lcms2=2.11=h396b838_0
  - ld_impl_linux-64=2.33.1=h53a641e_7
  - libedit=3.1.20191231=h14c3975_1
  - libffi=3.3=he6710b0_2
  - libgcc-ng=9.1.0=hdf63c60_0
  - libgfortran-ng=7.3.0=hdf63c60_0
  - libpng=1.6.37=hbc83047_0
  - libpq=12.2=h20c2e04_0
  - libprotobuf=3.13.0.1=hd408876_0
  - libsodium=1.0.18=h7b6447c_0
  - libstdcxx-ng=9.1.0=hdf63c60_0
  - libtiff=4.1.0=h2733197_1
  - lightgbm=3.1.1=py38h2531618_0
  - lz4-c=1.9.2=heb0550a_3
  - mako=1.1.3=py_0
  - markdown=3.3.3=py38h06a4308_0
  - markupsafe=1.1.1=py38h7b6447c_0
  - matplotlib-base=3.2.2=py38hef1b27d_0
  - mkl=2019.4=243
  - mkl-service=2.3.0=py38he904b0f_0
  - mkl_fft=1.2.0=py38h23d657b_0
  - mkl_random=1.1.0=py38h962f231_0
  - more-itertools=8.6.0=pyhd3eb1b0_0
  - multidict=5.1.0=py38h27cfd23_2
  - ncurses=6.2=he6710b0_1
  - networkx=2.5.1=pyhd3eb1b0_0
  - nltk=3.5=py_0
  - numpy=1.19.2=py38h54aff64_0
  - numpy-base=1.19.2=py38hfa32c7d_0
  - oauthlib=3.1.0=py_0
  - olefile=0.46=py_0
  - openssl=1.1.1k=h27cfd23_0
  - packaging=20.4=py_0
  - pandas=1.1.5=py38ha9443f7_0
  - paramiko=2.7.2=py_0
  - parso=0.7.0=py_0
  - patsy=0.5.1=py38_0
  - pexpect=4.8.0=pyhd3eb1b0_3
  - pickleshare=0.7.5=pyhd3eb1b0_1003
  - pillow=8.0.1=py38he98fc37_0
  - pip=20.2.4=py38h06a4308_0
  - plotly=4.14.3=pyhd3eb1b0_0
  - prompt-toolkit=3.0.8=py_0
  - prompt_toolkit=3.0.8=0
  - protobuf=3.13.0.1=py38he6710b0_1
  - psutil=5.7.2=py38h7b6447c_0
  - psycopg2=2.8.5=py38h3c74f83_1
  - ptyprocess=0.6.0=pyhd3eb1b0_2
  - pyasn1=0.4.8=py_0
  - pyasn1-modules=0.2.8=py_0
  - pycparser=2.20=py_2
  - pygments=2.7.2=pyhd3eb1b0_0
  - pyjwt=1.7.1=py38_0
  - pynacl=1.4.0=py38h7b6447c_1
  - pyodbc=4.0.30=py38he6710b0_0
  - pyopenssl=19.1.0=pyhd3eb1b0_1
  - pyparsing=2.4.7=pyhd3eb1b0_0
  - pysocks=1.7.1=py38h06a4308_0
  - python=3.8.8=hdb3f193_4
  - python-dateutil=2.8.1=pyhd3eb1b0_0
  - python-editor=1.0.4=py_0
  - pytz=2020.5=pyhd3eb1b0_0
  - pyzmq=19.0.2=py38he6710b0_1
  - readline=8.0=h7b6447c_0
  - regex=2020.10.15=py38h7b6447c_0
  - requests=2.24.0=py_0
  - requests-oauthlib=1.3.0=py_0
  - retrying=1.3.3=py_2
  - rsa=4.7.2=pyhd3eb1b0_1
  - s3transfer=0.3.6=pyhd3eb1b0_0
  - scikit-learn=0.23.2=py38h0573a6f_0
  - scipy=1.5.2=py38h0b6359f_0
  - setuptools=50.3.1=py38h06a4308_1
  - simplejson=3.17.2=py38h27cfd23_2
  - six=1.15.0=py38h06a4308_0
  - smmap=3.0.5=pyhd3eb1b0_0
  - sqlite=3.33.0=h62c20be_0
  - sqlparse=0.4.1=py_0
  - statsmodels=0.12.0=py38h7b6447c_0
  - tabulate=0.8.7=py38h06a4308_0
  - threadpoolctl=2.1.0=pyh5ca1d4c_0
  - tk=8.6.10=hbc83047_0
  - tornado=6.0.4=py38h7b6447c_1
  - tqdm=4.50.2=py_0
  - traitlets=5.0.5=pyhd3eb1b0_0
  - typing-extensions=3.7.4.3=hd3eb1b0_0
  - typing_extensions=3.7.4.3=pyh06a4308_0
  - unixodbc=2.3.9=h7b6447c_0
  - urllib3=1.25.11=py_0
  - wcwidth=0.2.5=py_0
  - websocket-client=0.57.0=py38_2
  - werkzeug=1.0.1=pyhd3eb1b0_0
  - wheel=0.35.1=pyhd3eb1b0_0
  - wrapt=1.12.1=py38h7b6447c_1
  - xz=5.2.5=h7b6447c_0
  - yarl=1.6.3=py38h27cfd23_0
  - zeromq=4.3.3=he6710b0_3
  - zipp=3.4.0=pyhd3eb1b0_0
  - zlib=1.2.11=h7b6447c_3
  - zstd=1.4.5=h9ceee32_0
  - pip:
    - argon2-cffi==20.1.0
    - astunparse==1.6.3
    - async-generator==1.10
    - azure-core==1.11.0
    - azure-storage-blob==12.7.1
    - bleach==3.3.0
    - confuse==1.4.0
    - convertdate==2.3.2
    - databricks-cli==0.14.3
    - defusedxml==0.7.1
    - diskcache==5.2.1
    - docker==4.4.4
    - facets-overview==1.0.0
    - flatbuffers==1.12
    - gast==0.3.3
    - hijri-converter==2.1.1
    - holidays==0.10.5.2
    - horovod==0.21.3
    - htmlmin==0.1.12
    - imagehash==4.2.0
    - ipywidgets==7.6.3
    - joblibspark==0.3.0
    - jsonschema==3.2.0
    - jupyterlab-pygments==0.1.2
    - jupyterlab-widgets==1.0.0
    - keras-preprocessing==1.1.2
    - koalas==1.8.0
    - korean-lunar-calendar==0.2.1
    - llvmlite==0.36.0
    - missingno==0.4.2
    - mistune==0.8.4
    - mleap==0.16.1
    - mlflow-skinny==1.17.0
    - msrest==0.6.21
    - nbclient==0.5.3
    - nbconvert==6.0.7
    - nbformat==5.1.3
    - nest-asyncio==1.5.1
    - notebook==6.4.0
    - numba==0.53.1
    - opt-einsum==3.3.0
    - pandas-profiling==2.11.0
    - pandocfilters==1.4.3
    - petastorm==0.10.0
    - phik==0.11.2
    - pyarrow==1.0.1
    - pymeeus==0.5.11
    - pyrsistent==0.17.3
    - pywavelets==1.1.1
    - pyyaml==5.4.1
    - querystring-parser==1.2.4
    - seaborn==0.10.0
    - send2trash==1.5.0
    - shap==0.39.0
    - slicer==0.0.7
    - spark-tensorflow-distributor==0.1.0
    - tangled-up-in-unicode==0.1.0
    - tensorboard==2.4.1
    - tensorboard-plugin-wit==1.8.0
    - tensorflow==2.4.1
    - tensorflow-estimator==2.4.0
    - termcolor==1.1.0
    - terminado==0.9.5
    - testpath==0.5.0
    - torch==1.8.1
    - torchvision==0.9.1
    - visions==0.6.0
    - webencodings==0.5.1
    - widgetsnbextension==3.5.1
    - xgboost==1.4.1
prefix: /databricks/conda/envs/databricks-ml-gpu

Spark-pakketten met Python-modules

Spark-pakket Python-module Versie
graphframes graphframes 0.8.1-db3-spark3.1

R-bibliotheken

De R-bibliotheken zijn identiek aan de R-bibliotheken in Databricks Runtime 8.3.

Java- en Scala-bibliotheken (Scala 2.12-cluster)

Naast Java- en Scala-bibliotheken in Databricks Runtime 8.3 bevat Databricks Runtime 8.3 ML de volgende JAR's:

CPU-clusters

Groeps-id Artefact-id Versie
com.typesafe.akka akka-actor_2.12 2.5.23
ml.combust.mleap mleap-databricks-runtime_2.12 0.17.3-4882dc3
ml.dmlc xgboost4j-spark_2.12 1.4.1
ml.dmlc xgboost4j_2.12 1.4.1
org.mlflow mlflow-client 1.17.0
org.scala-lang.modules scala-java8-compat_2.12 0.8.0
org.tensorflow spark-tensorflow-connector_2.12 1.15.0

GPU-clusters

Groeps-id Artefact-id Versie
com.typesafe.akka akka-actor_2.12 2.5.23
ml.combust.mleap mleap-databricks-runtime_2.12 0.17.3-4882dc3
ml.dmlc xgboost4j-spark-gpu_2.12 1.4.1
ml.dmlc xgboost4j-gpu_2.12 1.4.1
org.mlflow mlflow-client 1.17.0
org.scala-lang.modules scala-java8-compat_2.12 0.8.0
org.tensorflow spark-tensorflow-connector_2.12 1.15.0