In scikit-learn, some clustering algorithms have both predict(X) and fit_predict(X) methods, like KMeans and MeanShift, while others only have the latter, like SpectralClustering. According to the doc:

fit_predict(X[, y]):    Performs clustering on X and returns cluster labels.
predict(X): Predict the closest cluster each sample in X belongs to.

I don't really understand the difference between the two, they seem equivalent to me.

  • does predict returns the same thing as kmeans.labels_ or more accurate ones ?
    – Jack
    Commented Feb 5, 2020 at 17:16

3 Answers 3


In order to use the 'predict' you must use the 'fit' method first. So using 'fit()' and then 'predict()' is definitely the same as using 'fit_predict()'. However, one could benefit from using only 'fit()' in such cases where you need to know the initialization parameters of your models rather than if you use 'fit_predict()', where you will just be obtained the labeling results of running your model on the data.

  • 5
    this doesn't quite answer the question. they're asking "why does KMeans have a predict method, but SpectralClustering doesn't ... and i actually can't work out the answer to this ... maybe it's a bug/missing feature? my understanding is that as part of the scikit-learn API design all classifiers should have a fit and a predict method ...
    – maxymoo
    Commented May 9, 2016 at 5:05
  • Yeah, you are right. My answer was going more towards the 'I don't really understand the difference between the two, they seem equivalent to me.' part.
    – Oer
    Commented May 9, 2016 at 5:24
  • 2
    So... do we have an answer to @maxymoo 's question?
    – MattS
    Commented Jan 10, 2020 at 21:14
  • This does not answer the question.
    – PeterBe
    Commented Sep 13, 2022 at 15:44

fit_predict is usually used for unsupervised machine learning transductive estimator.

Basically, fit_predict(x) is equivalent to fit(x).predict(x).

  • 1
    from a comp-sci point of view fit() will affect the state of your object/model yes/no? where as predict() will use the existing model to label the input data (and no change will be made to the object/model, yes/no? Commented Jun 11, 2020 at 20:41

This might be very late to add an answer here, It just that someone might get benefitted in future

The reason I could relate for having predict in kmeans and only fit_predict in dbscan is

  • In kmeans you get centroids based on the number of clusters considered. So once you trained your datapoints using fit(), you can use that to predict() a new single datapoint to assign to a specific cluster.

  • In dbscan you don't have centroids , based on the min_samples and eps (min distance between two points to be considered as neighbors) you define, clusters are formed . This algorithm returns cluster labels for all the datapoints. This behavior explains why there is no predict() method to predict a single datapoint. Difference between fit() and fit_predict() was already explained by other user -

In another spatial clustering algorithm hdbscan gives us an option to predict using approximate_predict(). Its worth to explore that.

Again its my understanding based on the source code I explored. Any experts can highlight any difference.

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