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Databricks Runtime 7,5 para (EoS) ML

nota

O suporte para essa versão do Databricks Runtime foi encerrado. Para saber a data do fim do suporte, consulte Histórico do fim do suporte. Para conhecer todas as versões compatíveis do site Databricks Runtime, consulte Databricks Runtime notas sobre as versões e a compatibilidade.

A Databricks lançou essa versão em dezembro de 2020.

O Databricks Runtime 7.5 for Machine Learning oferece um ambiente pronto para uso para aprendizado de máquina e ciência de dados com base no Databricks Runtime 7.5 (EoS). Databricks Runtime ML Contém muitas bibliotecas populares de aprendizado de máquina, incluindo TensorFlow, PyTorch, e XGBoost. Ele também oferece suporte ao treinamento de aprendizagem profunda distribuída usando o Horovod.

Para obter mais informações, incluindo instruções para criar um cluster Databricks Runtime ML , consulte AI e aprendizado de máquina em Databricks.

Novo recurso e grandes mudanças

O Databricks Runtime 7.5 ML foi desenvolvido com base no Databricks Runtime 7.5. Para obter informações sobre as novidades do Databricks Runtime 7.5, incluindo Apache Spark MLlib e SparkR, , consulte as notas sobre a versão Databricks Runtime 7.5 (EoS).

Depreciações

  • O pacote gorilla está obsoleto e será removido em uma próxima versão principal do Databricks Runtime ML.

Principais mudanças no ambiente do Databricks Runtime ML Python

Consulte o Databricks Runtime 7.5 (EoS) para conhecer as principais alterações no ambiente Python do Databricks Runtime. Para obter uma lista completa do pacote Python instalado e suas versões, consulte Python biblioteca.

Python pacote atualizado

  • databricks-CLI 0.13.0 -> 0.14.0
  • Hyperopt 0.2.4.db2 -> 0.2.5.db1
  • coalas 1.2.0 - > 1.4.0
  • mlflow 1.11.0 - > 1.12.1
  • petastorm 0.9.6 - > 0.9.7
  • trama 4.10.0 - > 4.12.0
  • PyTorch 1.6.0 - > 1,7,0
  • torchvision 0.7.0 - > 0.8.1
  • xgboost 1.2.0 - > 1.2.1

Ambiente do sistema

O ambiente do sistema no Databricks Runtime 7.5 ML difere do Databricks Runtime 7.5 da seguinte forma:

biblioteca

As seções a seguir listam as bibliotecas incluídas no Databricks Runtime 7.5 ML que diferem daquelas incluídas no Databricks Runtime 7.5.

Nesta secção:

Biblioteca de primeira linha

Databricks Runtime 7,5 O site ML inclui as seguintes bibliotecas de primeira linha:

Python biblioteca

Databricks Runtime 7.5 O ML usa o Conda para o gerenciamento do pacote Python e inclui muitos pacotes populares do ML.

Além do pacote especificado nos ambientes Conda nas seções a seguir, o Databricks Runtime 7.5 ML também instala o seguinte pacote:

  • Hyperopt 0.2.5.db1
  • sparkdl 2.1.0-db2

Python biblioteca sobre clustering de CPU

YAML
name: databricks-ml
channels:
- pytorch
- defaults
dependencies:
- _libgcc_mutex=0.1=main
- absl-py=0.9.0=py37_0
- asn1crypto=1.3.0=py37_1
- astor=0.8.0=py37_0
- backcall=0.1.0=py37_0
- backports=1.0=pyhd3eb1b0_2
- bcrypt=3.2.0=py37h7b6447c_0
- blas=1.0=mkl
- blinker=1.4=py37_0
- boto3=1.12.0=py_0
- botocore=1.15.0=py_0
- c-ares=1.17.1=h27cfd23_0
- ca-certificates=2020.10.14=h06a4308_1 # (updated from 0 in May 26, 2021 maintenance update)
- cachetools=4.1.1=py_0
- certifi=2020.11.8=py37h06a4308_0
- cffi=1.14.0=py37he30daa8_1 # (updated from py37h2e261b9_0 in May 26, 2021 maintenance update)
- chardet=3.0.4=py37h06a4308_1003
- click=7.0=py37_0
- cloudpickle=1.4.1=py_0
- configparser=3.7.4=py37_0
- cpuonly=1.0=0
- cryptography=2.8=py37h1ba5d50_0
- cycler=0.10.0=py37_0
- cython=0.29.15=py37he6710b0_0
- decorator=4.4.1=py_0
- dill=0.3.1.1=py37_1
- docutils=0.15.2=py37_0
- entrypoints=0.3=py37_0
- flask=1.1.1=py_1
- freetype=2.9.1=h8a8886c_1
- future=0.18.2=py37_1
- gast=0.3.3=py_0
- gitdb=4.0.5=py_0
- gitpython=3.1.0=py_0
- google-auth=1.11.2=py_0
- google-auth-oauthlib=0.4.1=py_2
- google-pasta=0.2.0=py_0
- grpcio=1.27.2=py37hf8bcb03_0
- gunicorn=20.0.4=py37_0
- h5py=2.10.0=py37h7918eee_0
- hdf5=1.10.4=hb1b8bf9_0
- icu=58.2=he6710b0_3
- idna=2.8=py37_0
- intel-openmp=2020.0=166
- ipykernel=5.1.4=py37h39e3cac_0
- ipython=7.12.0=py37h5ca1d4c_0
- ipython_genutils=0.2.0=pyhd3eb1b0_1
- isodate=0.6.0=py_1
- itsdangerous=1.1.0=py37_0
- jedi=0.17.2=py37_0
- jinja2=2.11.1=py_0
- jmespath=0.10.0=py_0
- joblib=0.14.1=py_0
- jpeg=9b=h024ee3a_2
- jupyter_client=5.3.4=py37_0
- jupyter_core=4.6.1=py37_0
- kiwisolver=1.1.0=py37he6710b0_0
- krb5=1.17.1=h173b8e3_0 # (updated from 1.16.4 in May 26, 2021 maintenance update)
- ld_impl_linux-64=2.33.1=h53a641e_7
- libedit=3.1.20181209=hc058e9b_0
- libffi=3.3=he6710b0_2 # (updated from 3.2.1 in May 26, 2021 maintenance update)
- 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 # (updated from 11.2 in May 26, 2021 maintenance update)
- libprotobuf=3.11.4=hd408876_0
- libsodium=1.0.16=h1bed415_0
- libstdcxx-ng=9.1.0=hdf63c60_0
- libtiff=4.1.0=h2733197_0
- libuv=1.40.0=h7b6447c_0
- lightgbm=2.3.0=py37he6710b0_0
- lz4-c=1.8.1.2=h14c3975_0
- mako=1.1.2=py_0
- markdown=3.1.1=py37_0
- markupsafe=1.1.1=py37h14c3975_1
- matplotlib-base=3.1.3=py37hef1b27d_0
- mkl=2020.0=166
- mkl-service=2.3.0=py37he904b0f_0
- mkl_fft=1.0.15=py37ha843d7b_0
- mkl_random=1.1.0=py37hd6b4f25_0
- ncurses=6.2=he6710b0_1
- networkx=2.4=py_1
- ninja=1.10.2=py37hff7bd54_0
- nltk=3.4.5=py37_0
- numpy=1.18.1=py37h4f9e942_0
- numpy-base=1.18.1=py37hde5b4d6_1
- oauthlib=3.1.0=py_0
- olefile=0.46=py37_0
- openssl=1.1.1k=h27cfd23_0 # (updated from 1.1.1h in May 26, 2021 maintenance update)
- packaging=20.1=py_0
- pandas=1.0.1=py37h0573a6f_0
- paramiko=2.7.1=py_0
- parso=0.7.0=py_0
- patsy=0.5.1=py37_0
- pexpect=4.8.0=pyhd3eb1b0_3
- pickleshare=0.7.5=py37_1001
- pillow=7.0.0=py37hb39fc2d_0
- pip=20.0.2=py37_3
- plotly=4.12.0=pyhd3eb1b0_0
- prompt_toolkit=3.0.3=py_0
- protobuf=3.11.4=py37he6710b0_0
- psutil=5.6.7=py37h7b6447c_0
- psycopg2=2.8.6=py37h3c74f83_1 # (updated from 2.8.4 in May 26, 2021 maintenance update)
- ptyprocess=0.6.0=pyhd3eb1b0_2
- pyasn1=0.4.8=py_0
- pyasn1-modules=0.2.8=py_0
- pycparser=2.19=py37_0
- pygments=2.5.2=py_0
- pyjwt=1.7.1=py37_0
- pynacl=1.3.0=py37h7b6447c_0
- pyodbc=4.0.30=py37he6710b0_0
- pyopenssl=19.1.0=pyhd3eb1b0_1
- pyparsing=2.4.6=py_0
- pysocks=1.7.1=py37_1
- python=3.7.10=hdb3f193_0 # (updated from 3.7.6 in May 26, 2021 maintenance update)
- python-dateutil=2.8.1=py_0
- python-editor=1.0.4=py_0
- pytorch=1.7.0=py3.7_cpu_0
- pytz=2019.3=py_0
- pyzmq=18.1.1=py37he6710b0_0
- readline=8.1=h27cfd23_0 # (updated from 7.0 in May 26, 2021 maintenance update)
- requests=2.22.0=py37_1
- requests-oauthlib=1.3.0=py_0
- retrying=1.3.3=py37_2
- rsa=4.0=py_0
- s3transfer=0.3.3=py37_1
- scikit-learn=0.22.1=py37hd81dba3_0
- scipy=1.4.1=py37h0b6359f_0
- setuptools=45.2.0=py37_0
- simplejson=3.17.0=py37h7b6447c_0
- six=1.14.0=py37h06a4308_0
- smmap=3.0.4=py_0
- sqlite=3.35.4=hdfb4753_0 # (updated from 3.31.1 in May 26, 2021 maintenance update)
- sqlparse=0.4.1=py_0
- statsmodels=0.11.0=py37h7b6447c_0
- tabulate=0.8.3=py37_0
- tk=8.6.10=hbc83047_0 # (updated from 8.6.8 in May 26, 2021 maintenance update)
- torchvision=0.8.1=py37_cpu
- tornado=6.0.3=py37h7b6447c_3
- tqdm=4.42.1=py_0
- traitlets=4.3.3=py37_0
- typing_extensions=3.7.4.3=py_0
- unixodbc=2.3.7=h14c3975_0
- urllib3=1.25.8=py37_0
- wcwidth=0.1.8=py_0
- websocket-client=0.56.0=py37_0
- werkzeug=1.0.0=py_0
- wheel=0.34.2=py37_0
- wrapt=1.11.2=py37h7b6447c_0
- xz=5.2.5=h7b6447c_0 # (updated from 5.2.4 in May 26, 2021 maintenance update)
- zeromq=4.3.1=he6710b0_3
- zlib=1.2.11=h7b6447c_3
- zstd=1.3.7=h0b5b093_0
- pip:
- astunparse==1.6.3
- azure-core==1.9.0
- azure-storage-blob==12.6.0
- databricks-cli==0.14.0
- diskcache==5.1.0
- docker==4.4.0
- gorilla==0.3.0
- horovod==0.20.3
- joblibspark==0.3.0
- keras-preprocessing==1.1.2
- koalas==1.4.0
- mleap==0.16.1
- mlflow==1.12.1
- msrest==0.6.19
- opt-einsum==3.3.0
- petastorm==0.9.7
- pyarrow==1.0.1
- pyyaml==5.3.1
- querystring-parser==1.2.4
- seaborn==0.10.0
- spark-tensorflow-distributor==0.1.0
- tensorboard==2.3.0
- tensorboard-plugin-wit==1.7.0
- tensorflow-cpu==2.3.1
- tensorflow-estimator==2.3.0
- termcolor==1.1.0
- xgboost==1.2.1
prefix: /databricks/conda/envs/databricks-ml

Python biblioteca sobre clustering de GPU

YAML
name: databricks-ml-gpu
channels:
- pytorch
- defaults
dependencies:
- _libgcc_mutex=0.1=main
- absl-py=0.9.0=py37_0
- asn1crypto=1.3.0=py37_1
- astor=0.8.0=py37_0
- backcall=0.1.0=py37_0
- backports=1.0=pyhd3eb1b0_2
- bcrypt=3.2.0=py37h7b6447c_0
- blas=1.0=mkl
- blinker=1.4=py37_0
- boto3=1.12.0=py_0
- botocore=1.15.0=py_0
- c-ares=1.17.1=h27cfd23_0
- ca-certificates=2020.10.14=h06a4308_1 # (updated from 0 in May 26, 2021 maintenance update)
- cachetools=4.1.1=py_0
- certifi=2020.11.8=py37h06a4308_0
- cffi=1.14.0=py37he30daa8_1 # (updated from py37h2e261b9_0 in May 26, 2021 maintenance update)
- chardet=3.0.4=py37h06a4308_1003
- click=7.0=py37_0
- cloudpickle=1.4.1=py_0
- configparser=3.7.4=py37_0
- cryptography=2.8=py37h1ba5d50_0
- cudatoolkit=10.1.243=h6bb024c_0
- cycler=0.10.0=py37_0
- cython=0.29.15=py37he6710b0_0
- decorator=4.4.1=py_0
- dill=0.3.1.1=py37_1
- docutils=0.15.2=py37_0
- entrypoints=0.3=py37_0
- flask=1.1.1=py_1
- freetype=2.9.1=h8a8886c_1
- future=0.18.2=py37_1
- gast=0.3.3=py_0
- gitdb=4.0.5=py_0
- gitpython=3.1.0=py_0
- google-auth=1.11.2=py_0
- google-auth-oauthlib=0.4.1=py_2
- google-pasta=0.2.0=py_0
- grpcio=1.27.2=py37hf8bcb03_0
- gunicorn=20.0.4=py37_0
- h5py=2.10.0=py37h7918eee_0
- hdf5=1.10.4=hb1b8bf9_0
- icu=58.2=he6710b0_3
- idna=2.8=py37_0
- intel-openmp=2020.0=166
- ipykernel=5.1.4=py37h39e3cac_0
- ipython=7.12.0=py37h5ca1d4c_0
- ipython_genutils=0.2.0=pyhd3eb1b0_1
- isodate=0.6.0=py_1
- itsdangerous=1.1.0=py37_0
- jedi=0.17.2=py37_0
- jinja2=2.11.1=py_0
- jmespath=0.10.0=py_0
- joblib=0.14.1=py_0
- jpeg=9b=h024ee3a_2
- jupyter_client=5.3.4=py37_0
- jupyter_core=4.6.1=py37_0
- kiwisolver=1.1.0=py37he6710b0_0
- krb5=1.17.1=h173b8e3_0 # (updated from 1.16.4 in May 26, 2021 maintenance update)
- ld_impl_linux-64=2.33.1=h53a641e_7
- libedit=3.1.20181209=hc058e9b_0
- libffi=3.3=he6710b0_2 # (updated from 3.2.1 in May 26, 2021 maintenance update)
- 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 # (updated from 11.2 in May 26, 2021 maintenance update)
- libprotobuf=3.11.4=hd408876_0
- libsodium=1.0.16=h1bed415_0
- libstdcxx-ng=9.1.0=hdf63c60_0
- libtiff=4.1.0=h2733197_0
- libuv=1.40.0=h7b6447c_0
- lightgbm=2.3.0=py37he6710b0_0
- lz4-c=1.8.1.2=h14c3975_0
- mako=1.1.2=py_0
- markdown=3.1.1=py37_0
- markupsafe=1.1.1=py37h14c3975_1
- matplotlib-base=3.1.3=py37hef1b27d_0
- mkl=2020.0=166
- mkl-service=2.3.0=py37he904b0f_0
- mkl_fft=1.0.15=py37ha843d7b_0
- mkl_random=1.1.0=py37hd6b4f25_0
- ncurses=6.2=he6710b0_1
- networkx=2.4=py_1
- ninja=1.10.2=py37hff7bd54_0
- nltk=3.4.5=py37_0
- numpy=1.18.1=py37h4f9e942_0
- numpy-base=1.18.1=py37hde5b4d6_1
- oauthlib=3.1.0=py_0
- olefile=0.46=py37_0
- openssl=1.1.1k=h27cfd23_0 # (updated from 1.1.1h in May 26, 2021 maintenance update)
- packaging=20.1=py_0
- pandas=1.0.1=py37h0573a6f_0
- paramiko=2.7.1=py_0
- parso=0.7.0=py_0
- patsy=0.5.1=py37_0
- pexpect=4.8.0=pyhd3eb1b0_3
- pickleshare=0.7.5=py37_1001
- pillow=7.0.0=py37hb39fc2d_0
- pip=20.0.2=py37_3
- plotly=4.12.0=pyhd3eb1b0_0
- prompt_toolkit=3.0.3=py_0
- protobuf=3.11.4=py37he6710b0_0
- psutil=5.6.7=py37h7b6447c_0
- psycopg2=2.8.6=py37h3c74f83_1 # (updated from 2.8.4 in May 26, 2021 maintenance update)
- ptyprocess=0.6.0=pyhd3eb1b0_2
- pyasn1=0.4.8=py_0
- pyasn1-modules=0.2.8=py_0
- pycparser=2.19=py37_0
- pygments=2.5.2=py_0
- pyjwt=1.7.1=py37_0
- pynacl=1.3.0=py37h7b6447c_0
- pyodbc=4.0.30=py37he6710b0_0
- pyopenssl=19.1.0=pyhd3eb1b0_1
- pyparsing=2.4.6=py_0
- pysocks=1.7.1=py37_1
- python=3.7.10=hdb3f193_0 # (updated from 3.7.6 in May 26, 2021 maintenance update)
- python-dateutil=2.8.1=py_0
- python-editor=1.0.4=py_0
- pytorch=1.7.0=py3.7_cuda10.1.243_cudnn7.6.3_0
- pytz=2019.3=py_0
- pyzmq=18.1.1=py37he6710b0_0
- readline=8.1=h27cfd23_0 # (updated from 7.0 in May 26, 2021 maintenance update)
- requests=2.22.0=py37_1
- requests-oauthlib=1.3.0=py_0
- retrying=1.3.3=py37_2
- rsa=4.0=py_0
- s3transfer=0.3.3=py37_1
- scikit-learn=0.22.1=py37hd81dba3_0
- scipy=1.4.1=py37h0b6359f_0
- setuptools=45.2.0=py37_0
- simplejson=3.17.0=py37h7b6447c_0
- six=1.14.0=py37h06a4308_0
- smmap=3.0.4=py_0
- sqlite=3.35.4=hdfb4753_0 # (updated from 3.31.1 in May 26, 2021 maintenance update)
- sqlparse=0.4.1=py_0
- statsmodels=0.11.0=py37h7b6447c_0
- tabulate=0.8.3=py37_0
- tk=8.6.10=hbc83047_0 # (updated from 8.6.8 in May 26, 2021 maintenance update)
- torchvision=0.8.1=py37_cu101
- tornado=6.0.3=py37h7b6447c_3
- tqdm=4.42.1=py_0
- traitlets=4.3.3=py37_0
- typing_extensions=3.7.4.3=py_0
- unixodbc=2.3.7=h14c3975_0
- urllib3=1.25.8=py37_0
- wcwidth=0.1.8=py_0
- websocket-client=0.56.0=py37_0
- werkzeug=1.0.0=py_0
- wheel=0.34.2=py37_0
- wrapt=1.11.2=py37h7b6447c_0
- xz=5.2.5=h7b6447c_0 # (updated from 5.2.4 in May 26, 2021 maintenance update)
- zeromq=4.3.1=he6710b0_3
- zlib=1.2.11=h7b6447c_3
- zstd=1.3.7=h0b5b093_0
- pip:
- astunparse==1.6.3
- azure-core==1.9.0
- azure-storage-blob==12.6.0
- databricks-cli==0.14.0
- diskcache==5.1.0
- docker==4.4.0
- gorilla==0.3.0
- horovod==0.20.3
- joblibspark==0.3.0
- keras-preprocessing==1.1.2
- koalas==1.4.0
- mleap==0.16.1
- mlflow==1.12.1
- msrest==0.6.19
- opt-einsum==3.3.0
- petastorm==0.9.7
- pyarrow==1.0.1
- pyyaml==5.3.1
- querystring-parser==1.2.4
- seaborn==0.10.0
- spark-tensorflow-distributor==0.1.0
- tensorboard==2.3.0
- tensorboard-plugin-wit==1.7.0
- tensorflow==2.3.1
- tensorflow-estimator==2.3.0
- termcolor==1.1.0
- xgboost==1.2.1
prefix: /databricks/conda/envs/databricks-ml-gpu

Spark pacote contendo os módulos Python

Spark pacote

Módulo Python

Versão

graphframes

graphframes

0.8.1-db1-spark3.0

R biblioteca

A biblioteca R é idêntica à biblioteca R em Databricks Runtime 7.5.

Java e biblioteca ( 2.12 clustering) Scala Scala

Além de Java e Scala biblioteca em Databricks Runtime 7.5, Databricks Runtime 7.5 ML contém os seguintes JARs:

Agrupamento de CPU

ID do grupo

ID do artefato

Versão

com.typesafe.akka

também conhecido como actor_2.12

2.5.23

ml.combust.mleap

mleap-databricks-runtime_2.12

0,17.3-4882dc3

ml.dmlc

xgboost4j-spark_2.12

1.2.0

ml.dmlc

xgboost4j_2,12

1.2.0

org.mlflow

cliente mlflow

1.12.1

org.Scala-lang.modules

Scala-java8-compat_2.12

0,8.0

org.tensorflow

spark-tensorflow-connector_2.12

1,15.0

Agrupamento de GPU

ID do grupo

ID do artefato

Versão

com.typesafe.akka

também conhecido como 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

1.2.0

ml.dmlc

xgboost4j-gpu_2,12

1.2.0

org.mlflow

cliente mlflow

1.12.1

org.Scala-lang.modules

Scala-java8-compat_2.12

0,8.0

org.tensorflow

spark-tensorflow-connector_2.12

1,15.0