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Results 21 - 30 of 159 for pipe (0.08 sec)

  1. preprocessing.rst.txt

    random_state=42) >>> pipe = make_pipeline(StandardScaler(),..., LogisticRegression()) >>> pipe.fit(X_train, y_train) # apply...
    scikit-learn.org/stable/_sources/modules/preprocessing.rst.txt
    Fri May 31 14:06:06 UTC 2024
      53K bytes
     
  2. Replace Splunk with Elastic for Logs, Security ...

    visualizations or our lightning fast piped query language to get insights...language ES|QL is Elastic's new piped query language and engine that...
    www.elastic.co/splunk-replacement
    Sun Jun 02 00:50:32 UTC 2024
      557.3K bytes
      2 views
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  3. Pipelining: chaining a PCA and a logistic regre...

    1 ) pipe = Pipeline ( steps = [( "scaler"...), } search = GridSearchCV ( pipe , param_grid , n_jobs = 2 )...
    scikit-learn.org/stable/auto_examples/compose/plot_digits_pipe.html
    Fri May 31 14:06:06 UTC 2024
      96.4K bytes
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  4. Selecting dimensionality reduction with Pipelin...

    load_digits ( return_X_y = True ) pipe = Pipeline ( [ ( "scaling" ,...f)" ] grid = GridSearchCV ( pipe , n_jobs = 1 , param_grid =...
    scikit-learn.org/stable/auto_examples/compose/plot_compare_reduction.html
    Fri May 31 14:06:06 UTC 2024
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  5. Getting Started — scikit-learn 1.6.dev0 documen...

    create a pipeline object >>> pipe = make_pipeline ( ... StandardScaler...# fit the whole pipeline >>> pipe . fit ( X_train , y_train )...
    scikit-learn.org/dev/getting_started.html
    Fri May 31 14:06:06 UTC 2024
      49.4K bytes
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      Similar Results (1)
     
  6. Balance model complexity and cross-validated sc...

    argmin () ] return best_idx pipe = Pipeline ( [ ( "reduce_dim"...14 ]} grid = GridSearchCV ( pipe , cv = 10 , n_jobs = 1 , param_grid...
    scikit-learn.org/stable/auto_examples/model_selection/plot_grid_search_refit_callable.html
    Fri May 31 14:06:04 UTC 2024
      98.9K bytes
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  7. Recursive feature elimination — scikit-learn 1....

    ] ) pipe . fit ( X , y ) ranking = pipe . named_steps...), - 1 )) y = digits . target pipe = Pipeline ( [ ( "scaler" ,...
    scikit-learn.org/stable/auto_examples/feature_selection/plot_rfe_digits.html
    Fri May 31 14:06:06 UTC 2024
      91.1K bytes
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  8. getting_started.rst.txt

    create a pipeline object >>> pipe = make_pipeline( ... StandardScaler(),...# fit the whole pipeline >>> pipe.fit(X_train, y_train) Pipel...
    scikit-learn.org/stable/_sources/getting_started.rst.txt
    Fri May 31 14:06:06 UTC 2024
      10K bytes
     
  9. Categorical Feature Support in Gradient Boostin...

    for pipe in ( hist_dropped , hist_one_hot...hist_ordinal , hist_native ): if pipe is hist_native : # The native...
    scikit-learn.org/stable/auto_examples/ensemble/plot_gradient_boosting_categorical.html
    Fri May 31 14:06:04 UTC 2024
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  10. Introducing the set_output API — scikit-learn 1...

    transform_output = "pandas" ) num_pipe = make_pipeline ( SimpleImputer...ColumnTransformer ( ( ( "numerical" , num_pipe , num_cols ), ( "categorical"...
    scikit-learn.org/stable/auto_examples/miscellaneous/plot_set_output.html
    Fri May 31 14:06:06 UTC 2024
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