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A small package for all useful ML things

Project description

Kowalsky, analysis!

A simple package for handful ML things and more.

What's new? [v0.0.29]

  • add feature package with two types of analysis + support для остальных функций
    • Recursive Feature Elimination
    • Sequential Feature Selection
  • add apply_with_progress for ability to track the progress of dataframe transformation
  • improve optimize:
    • EarlyStopping mechanism
    • optimization graph
    • multitasks with n_jobs=-1

What's inside?

  1. analysis - method for evaluation of specified model with given dataframe. With export_test_set=True it exports ready for submission predictions.

  2. df - module for working with dataframe:

    • corr - sort all correlated features.
    • handle_outliers - fill or drop columns with outliers.
    • log_transform - transform columns with log function.
    • group_by_mean - make additional columns with aggregated mean
    • group_by_max - make additional columns with aggregated max
    • group_by_min - make additional columns with aggregated min
    • apply_with_progress - apply heavy function for each row of dataset.
    • scale - scale columns with Standard of MinMax scalers
  3. kaggle:

    • submit - make submit-file for kaggle based on sample
  4. metrics:

    • rmse - RMSE scorer
    • rmsle - RMSLE scorer
  5. optuna - handful methods for working with optuna:

    • optimize - optimize model with given dataframe
    • optimize_super_learner - optimize super learner configuration with given set of models and set of heads (meta_model)
  6. colab:

    • csv - read csv file located at Google Drive with specified id
    • path - get path to Google Drive file
  7. feature:

    • rfe_analysis - Recursive Feature Elimination analysis
    • sfs_analysis - Sequential Feature Selection analysis

Example:

!pip install kowalsky --upgrade
from kowalsky.optuna import optimize
optimize('RFR',
         path='../input/project/feed.csv',
         scorer='acc',
         y_label='y_label',
         trials=3000)

Avaliable models:

Gradient Boosts

    'XGBR': XGBRegressor
    'XGBC': XGBClassifier
    'LGBR': LGBMRegressor
    'LGBC': LGBMClassifier

Trees

    'RFR': RandomForestRegressor
    'RFC': RandomForestClassifier
    'DTR': DecisionTreeRegressor
    'DTC': DecisionTreeClassifier
    'ETR': ExtraTreeRegressor
    'ETC': ExtraTreeClassifier

Ensemble

    'BC': BaggingClassifier
    'BR': BaggingRegressor
    'ADAR': AdaBoostRegressor
    'ADAC': AdaBoostClassifier
    'CBR': CatBoostRegressor
    'CBC': CatBoostClassifier

KNeighbors

    'KNC': KNeighborsClassifier
    'KNR': KNeighborsRegressor

SVM

    'SVR': SVR
    'SVC': SVC

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