On a fresh installation of Anaconda under Ubuntu... I am preprocessing my data in various ways prior to a classification task using Scikit-Learn.

from sklearn import preprocessing

scaler = preprocessing.MinMaxScaler().fit(train)
train = scaler.transform(train)    
test = scaler.transform(test)

This all works fine but if I have a new sample (temp below) that I want to classify (and thus I want to preprocess in the same way then I get

temp = [1,2,3,4,5,5,6,....................,7]
temp = scaler.transform(temp)

Then I get a deprecation warning...

DeprecationWarning: Passing 1d arrays as data is deprecated in 0.17 
and will raise ValueError in 0.19. Reshape your data either using 
X.reshape(-1, 1) if your data has a single feature or X.reshape(1, -1)
if it contains a single sample. 

So the question is how should I be rescaling a single sample like this?

I suppose an alternative (not very good one) would be...

temp = [temp, temp]
temp = scaler.transform(temp)
temp = temp[0]

But I'm sure there are better ways.

  • 3
    Well... you just answered yourself. It's in the warning: Reshape your data either using X.reshape(-1, 1) if your data has a single feature or X.reshape(1, -1) if it contains a single sample. If your data is not a numpy array then use np.array(data) first.
    – pzelasko
    Jan 29 '16 at 10:28

Just listen to what the warning is telling you:

Reshape your data either X.reshape(-1, 1) if your data has a single feature/column and X.reshape(1, -1) if it contains a single sample.

For your example type(if you have more than one feature/column):

temp = temp.reshape(1,-1) 

For one feature/column:

temp = temp.reshape(-1,1)
  • 2
    I don't understand what do they mean by a single sample. X.shape returns (891, 158) . Any of the 2 solutions they propose give an error but I still get that warning if I don't reshape it. May 12 '17 at 21:21
  • 3
    Dont reshape X! its about y (target) !! y obviously has only one column. Had the same problem some days ago. Cost me an hour trying to reshape X ;-)
    – Florian H
    Jul 12 '17 at 13:45
  • So... I wonder how many projects will break the day this finally becomes an error.
    – sudo
    Jul 19 '17 at 23:59
  • except that doing as it says (or supplying any valid input whatseover, as far as I can tell) does not make the warning go away.
    – hwrd
    Sep 1 '17 at 16:00
  • I appreciated seeing this response. I received the similar error, but being new to python and numpy, the solution wasn't obvious.
    – joe5
    Nov 29 '18 at 1:54

Well, it actually looks like the warning is telling you what to do.

As part of sklearn.pipeline stages' uniform interfaces, as a rule of thumb:

  • when you see X, it should be an np.array with two dimensions

  • when you see y, it should be an np.array with a single dimension.

Here, therefore, you should consider the following:

temp = [1,2,3,4,5,5,6,....................,7]
# This makes it into a 2d array
temp = np.array(temp).reshape((len(temp), 1))
temp = scaler.transform(temp)
  • What is 'np' object? Apr 14 '16 at 1:03
  • 2
    @Tajchert Sorry about that - import numpy as np.
    – Ami Tavory
    Apr 14 '16 at 5:38
  • thanks :) Just starting Python so that wan't obvious Apr 14 '16 at 10:01
  • #This makes it into a 2d array temp = [1,2,3,4,5,5,6,....................,7] #an instance temp = np.array(temp).reshape((1, -1)) print(model.predict(temp)) Jul 25 '16 at 10:58
  • 2
    Does it mean that sklearn decided to discourage python native lists? Is there still a way to not use numpy?
    – Eb Abadi
    Feb 8 '17 at 21:34

This might help

temp = ([[1,2,3,4,5,6,.....,7]])

.values.reshape(-1,1) will be accepted without alerts/warnings

.reshape(-1,1) will be accepted, but with deprecation war


I faced the same issue and got the same deprecation warning. I was using a numpy array of [23, 276] when I got the message. I tried reshaping it as per the warning and end up in nowhere. Then I select each row from the numpy array (as I was iterating over it anyway) and assigned it to a list variable. It worked then without any warning.

array = []

Then you can use the python list object (here 'array') as an input to sk-learn functions. Not the most efficient solution, but worked for me.


You can always, reshape like:

temp = [1,2,3,4,5,5,6,7]

temp = temp.reshape(len(temp), 1)

Because, the major issue is when your, temp.shape is: (8,)

and you need (8,1)

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