I have a dataset with 10000 samples, and 4 classes (0, 1, 2, 3) label.

(10000, 250)

and, I wonder are there any API that could split the data into training and test data and shuffle?

for example:

(training_data, training_label, test_data, test_label) = split_shuffle(data, label, 80) # 80 means 80% training, 20% test

What is the most efficient way to achieve such functions?

Further, what if we want 5-fold (straight) cross validation data?

closed as off-topic by DavidG, E_net4, Martin James, Machavity, tripleee Mar 14 at 13:49

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  • 3
    Possible duplicate of Split inputs into training and test sets – Seljuk Gülcan Mar 14 at 13:10
  • 1
    why is this downvoted? The fact that it is duplicated does not mean the question is irrelevant, right? – famargar Mar 14 at 13:30
  • @famargar Requesting an API is roughly equivalent to a request for an off-site resource, and therefore off-topic. The question also doesn't seem to show an actual attempt at solving the problem. – E_net4 Mar 14 at 13:40
  • @E_net4 OK. This is an user with 28 points. I think people here have to realise that this community isn't exactly welcoming for newcomers. Most of the times one could simply suggest/help the OP rephrase the question before jumping on the downvote button. – famargar Mar 14 at 13:56
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    @famargar: maybe, though that debate has been done to death on Meta! The difficulty we have here is the gap between the purpose of the site (collecting questions that will be useful for future readers) and the purpose of each question author (asking about something that will only be useful to them). – halfer Mar 14 at 14:00

SKLearn's train_test_split is what you're looking for, using the following:

from sklearn.model_selection import train_test_split
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.33, random_state=42)

If you want to shuffle your data you can use either numpy.shuffle (for numpy array) or df.sample (for pandas df). About splittinf see KonstatinosKokos's answer or play with np.split.

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