Is there a way we can grid-search multiple estimators at a time in Sklearn or any other library. For example can we pass SVM and Random Forest in one grid search ?.

  • What are you trying to achieve by that?
    – sascha
    Jul 24, 2016 at 19:15
  • 1
    I was trying to create a grid search for multiple algorithms at once
    – tj89
    Sep 14, 2016 at 3:21

5 Answers 5


Yes. Example:

pipeline = Pipeline([
    ('vect', CountVectorizer()),
    ('clf', SGDClassifier()),
parameters = [
        'vect__max_df': (0.5, 0.75, 1.0),
        'clf': (SGDClassifier(),),
        'clf__alpha': (0.00001, 0.000001),
        'clf__penalty': ('l2', 'elasticnet'),
        'clf__n_iter': (10, 50, 80),
    }, {
        'vect__max_df': (0.5, 0.75, 1.0),
        'clf': (LinearSVC(),),
        'clf__C': (0.01, 0.5, 1.0)
grid_search = GridSearchCV(pipeline, parameters)
  • 3
    Hi j-a, thanks for the answer. What I was rather looking for is how to create a pipeline where we can use two models like SGDClassifier and SVM in parallel. In this case the results from CountVectorizer is passed to SGDClassifier. Anyways I changes my approach a bit to solve the problem.
    – tj89
    Nov 4, 2016 at 14:18
  • 1
    @tj89 it will run in parallel, but I suppose you mean specifically that CountVectorizer should be run once and then its result reused for each classifier?. How did you change your approach?
    – j-a
    Nov 7, 2016 at 10:34
  • 1
    I found (sklearn==0.23.2) you can just put None for the 'clf' in the pipeline. No need for dummy SGDClassifier. Nov 10, 2021 at 23:02
    from sklearn.base import BaseEstimator
    from sklearn.model_selection import GridSearchCV
    class DummyEstimator(BaseEstimator):
        def fit(self): pass
        def score(self): pass
    # Create a pipeline
    pipe = Pipeline([('clf', DummyEstimator())]) # Placeholder Estimator
    # Candidate learning algorithms and their hyperparameters
    search_space = [{'clf': [LogisticRegression()], # Actual Estimator
                     'clf__penalty': ['l1', 'l2'],
                     'clf__C': np.logspace(0, 4, 10)},
                    {'clf': [DecisionTreeClassifier()],  # Actual Estimator
                     'clf__criterion': ['gini', 'entropy']}]
    # Create grid search 
    gs = GridSearchCV(pipe, search_space)
  • How would you proceed if using OneVsRestClassifier, where the estimators you are testing are called within OneVsRestClassifier ? You seem to be able to pass the different estimators/param grids to the external estimator, however I just can't find a way to pass parameters to the inner estimator. Just wandering if there is any magic to accomplish all together. Even if I do separate grid search for each inner estimator, I still face the issue I do not know how to pass parameters to the inner estimators, for grid search.
    – Julian C
    Oct 8, 2019 at 8:29
  • Think you can just put None in place of DummyEstimator. Nov 10, 2021 at 23:03

I think what you were looking for is this:

from sklearn.svm import LinearSVC
from sklearn.linear_model import LogisticRegression
from sklearn.ensemble import RandomForestClassifier
from sklearn.neural_network import MLPClassifier
from sklearn.model_selection import GridSearchCV
from sklearn.model_selection import train_test_split

X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2, random_state=42)

names = [
         "Naive Bayes",
         "Linear SVM",
         "Logistic Regression",
         "Random Forest",
         "Multilayer Perceptron"

classifiers = [

parameters = [
              {'vect__ngram_range': [(1, 1), (1, 2)],
              'clf__alpha': (1e-2, 1e-3)},
              {'vect__ngram_range': [(1, 1), (1, 2)],
              'clf__C': (np.logspace(-5, 1, 5))},
              {'vect__ngram_range': [(1, 1), (1, 2)],
              'clf__C': (np.logspace(-5, 1, 5))},
              {'vect__ngram_range': [(1, 1), (1, 2)],
              'clf__max_depth': (1, 2)},
              {'vect__ngram_range': [(1, 1), (1, 2)],
              'clf__alpha': (1e-2, 1e-3)}

for name, classifier, params in zip(names, classifiers, parameters):
    clf_pipe = Pipeline([
        ('vect', TfidfVectorizer(stop_words='english')),
        ('clf', classifier),
    gs_clf = GridSearchCV(clf_pipe, param_grid=params, n_jobs=-1)
    clf = gs_clf.fit(X_train, y_train)
    score = clf.score(X_test, y_test)
    print("{} score: {}".format(name, score))
  • why have you pre-fixed it with clf? can you call it anything you want
    – Maths12
    May 23, 2020 at 18:11
  • You can really call it anything you want, @Maths12, but by being consistent in the choice of prefix allows you to do parameter tuning with GridSearchCV for each estimator. You can get the same effect by using the name in the example above though.
    – Jakob
    May 26, 2020 at 22:31
  • This creates multiple grid searches but the question asked for 1 grid search. Nov 10, 2021 at 22:34

You can use TransformedTargetRegressor. This class is designed for transforming the target variable before fitting, taking a regressor and a set of transformers as parameters. But you may give no transformer, then the identity transformer (i.e. no transformation) is applied. Since regressor is a class parameter, we can change it by grid search objects.

import numpy as np
from sklearn.compose import TransformedTargetRegressor
from sklearn.linear_model import LinearRegression
from sklearn.neural_network import MLPRegressor
from sklearn.model_selection import GridSearchCV

Y = np.array([1,2,3,4,5,6,7,8,9,10])
X = np.array([0,1,3,5,3,5,7,9,8,9]).reshape((-1, 1))

For doing grid search, we should specify the param_grid as a list of dict, each for different estimator. This is because different estimators use different set of parameters (e.g. setting fit_intercept with MLPRegressor causes error). Note that the name "regressor" is automatically given to the regressor.

model = TransformedTargetRegressor()
params = [
        "regressor": [LinearRegression()],
        "regressor__fit_intercept": [True, False]
        "regressor": [MLPRegressor()],
        "regressor__hidden_layer_sizes": [1, 5, 10]

We can fit as usual.

g = GridSearchCV(model, params)
g.fit(X, Y)

g.best_estimator_, g.best_score_, g.best_params_

# results in like
(TransformedTargetRegressor(check_inverse=True, func=None, inverse_func=None,
               regressor=LinearRegression(copy_X=True, fit_intercept=False, n_jobs=None,
 {'regressor': LinearRegression(copy_X=True, fit_intercept=False, n_jobs=None,
           normalize=False), 'regressor__fit_intercept': False})

What you can do is create a class that takes in any classifier and for each classifier any setting of parameters.

Create a switcher class that works for any estimator

from sklearn.base import BaseEstimator
class ClfSwitcher(BaseEstimator):

def __init__(
    estimator = SGDClassifier(),
    A Custom BaseEstimator that can switch between classifiers.
    :param estimator: sklearn object - The classifier

    self.estimator = estimator

def fit(self, X, y=None, **kwargs):
    self.estimator.fit(X, y)
    return self

def predict(self, X, y=None):
    return self.estimator.predict(X)

def predict_proba(self, X):
    return self.estimator.predict_proba(X)

def score(self, X, y):
    return self.estimator.score(X, y)

Now you can pre-train your tfidf however you like.

from sklearn.feature_extraction.text import TfidfVectorizer
tfidf = TfidfVectorizer()
tfidf.fit(data, labels)

Now create a pipeline with this pre-trained tfidf

from sklearn.pipeline import Pipeline

pipeline = Pipeline([
    ('tfidf',tfidf), # Already pretrained/fit
    ('clf', ClfSwitcher()),

Perform hyper-parameter optimization

from sklearn.naive_bayes import MultinomialNB
from sklearn.linear_model import SGDClassifier
from sklearn.model_selection import GridSearchCV

parameters = [
        'clf__estimator': [SGDClassifier()], # SVM if hinge loss / logreg if log loss
        'clf__estimator__penalty': ('l2', 'elasticnet', 'l1'),
        'clf__estimator__max_iter': [50, 80],
        'clf__estimator__tol': [1e-4],
        'clf__estimator__loss': ['hinge', 'log', 'modified_huber'],
        'clf__estimator': [MultinomialNB()],
        'clf__estimator__alpha': (1e-2, 1e-3, 1e-1),

gscv = GridSearchCV(pipeline, parameters, cv=5, n_jobs=12, verbose=3)
# param optimization
gscv.fit(train_data, train_labels)

How to interpret clf__estimator__loss

clf__estimator__loss is interpreted as the loss parameter for whatever estimator is, where estimator = SGDClassifier() in the top most example and is itself a parameter of clf which is a ClfSwitcher object.


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