I am using sklearn and having a problem with the affinity propagation. I have built an input matrix and I keep getting the following error.

ValueError: Input contains NaN, infinity or a value too large for dtype('float64').

I have run

np.isnan(mat.any()) #and gets False
np.isfinite(mat.all()) #and gets True

I tried using

mat[np.isfinite(mat) == True] = 0

to remove the infinite values but this did not work either. What can I do to get rid of the infinite values in my matrix, so that I can use the affinity propagation algorithm?

I am using anaconda and python 2.7.9.

  • 3
    I'm voting to close this, as the author says himself that his data was invalid and though everything pointed to it, he didn't validate -- the data equivalent to a typo, which is a closing reason. Sep 6 '15 at 18:55
  • 22
    I had this same issue with my dataset. Ultimately: a data mistake, not a scikit learn bug. Most of the answers below are helpful but misleading. Check check check your data, make sure that when converted to float64 it is both finite and not nan. The error message is apt - this is almost certainly the issue for anyone who finds themselves here.
    – Owen
    Dec 7 '16 at 13:52
  • 1
    For the record and +1 for @Owen, check your input data and make sure you do not have any missing value in any row or grid. You can use the Imputer class to avoid this problem.
    – abautista
    Jun 20 '18 at 21:29

17 Answers 17


This might happen inside scikit, and it depends on what you're doing. I recommend reading the documentation for the functions you're using. You might be using one which depends e.g. on your matrix being positive definite and not fulfilling that criteria.

EDIT: How could I miss that:

np.isnan(mat.any()) #and gets False
np.isfinite(mat.all()) #and gets True

is obviously wrong. Right would be:




You want to check wheter any of the element is NaN, and not whether the return value of the any function is a number...

  • 6
    The docs dont mention anything about this error I need a way of getting rid of the infinite values from my nupy array Jul 9 '15 at 17:19
  • 5
    As I said: They are maybe not in your input array. They might occur in the math that happens between input and magical output. The point is that all this math depends on certain conditions for the input. You have to carefully read the docs to find out whether your input satisifies these conditions. Jul 10 '15 at 7:54
  • 2
    @MarcusMüller could you point me to the location of this document where they specify the requirements of the input matrix? I can't seem to find the "docs" you are referring to. Thank you :) Feb 23 '17 at 21:35

I got the same error message when using sklearn with pandas. My solution is to reset the index of my dataframe df before running any sklearn code:

df = df.reset_index()

I encountered this issue many times when I removed some entries in my df, such as

df = df[df.label=='desired_one']
  • 2
    I love you! That's a rare instance of me finding the right solution despite not knowing what's the cause of the error! Aug 9 '18 at 14:25
  • 3
    By doing the df.reset_index() it will add the "index" as a column in the resulting df. Which may not be useful for all scenario. If the df.reset_index(drop=True) ran then it will throw the same error.
    – smm
    Sep 18 '18 at 18:19

This is my function (based on this) to clean the dataset of nan, Inf, and missing cells (for skewed datasets):

import pandas as pd

def clean_dataset(df):
    assert isinstance(df, pd.DataFrame), "df needs to be a pd.DataFrame"
    indices_to_keep = ~df.isin([np.nan, np.inf, -np.inf]).any(1)
    return df[indices_to_keep].astype(np.float64)
  • 1
    Why do you drop the nan two times? First time with dropna then a second time when dropping inf.
    – luca
    Jun 25 '18 at 9:04
  • 1
    I loss some data when I use this function to clean my dataset. Any sugetions why??? Sep 17 '19 at 17:10
  • 4
    This is the only answer that worked. I tried 20 other answers on SO that did not work. I think this one needs more upvotes.
    – Contango
    Jul 5 '20 at 13:23

This is the check on which it fails:

Which says

def _assert_all_finite(X):
    """Like assert_all_finite, but only for ndarray."""
    X = np.asanyarray(X)
    # First try an O(n) time, O(1) space solution for the common case that
    # everything is finite; fall back to O(n) space np.isfinite to prevent
    # false positives from overflow in sum method.
    if (X.dtype.char in np.typecodes['AllFloat'] and not np.isfinite(X.sum())
            and not np.isfinite(X).all()):
        raise ValueError("Input contains NaN, infinity"
                         " or a value too large for %r." % X.dtype)

So make sure that you have non NaN values in your input. And all those values are actually float values. None of the values should be Inf either.


The Dimensions of my input array were skewed, as my input csv had empty spaces.


In most cases getting rid of infinite and null values solve this problem.

get rid of infinite values.

df.replace([np.inf, -np.inf], np.nan, inplace=True)

get rid of null values the way you like, specific value such as 999, mean, or create your own function to impute missing values

df.fillna(999, inplace=True)

With this version of python 3:

/opt/anaconda3/bin/python --version
Python 3.6.0 :: Anaconda 4.3.0 (64-bit)

Looking at the details of the error, I found the lines of codes causing the failure:

/opt/anaconda3/lib/python3.6/site-packages/sklearn/utils/validation.py in _assert_all_finite(X)
     56             and not np.isfinite(X).all()):
     57         raise ValueError("Input contains NaN, infinity"
---> 58                          " or a value too large for %r." % X.dtype)

ValueError: Input contains NaN, infinity or a value too large for dtype('float64').

From this, I was able to extract the correct way to test what was going on with my data using the same test which fails given by the error message: np.isfinite(X)

Then with a quick and dirty loop, I was able to find that my data indeed contains nans:

index = 0
for i in p[:,0]:
    if not np.isfinite(i):
        print(index, i)
    index +=1

4454 nan
6940 nan
10868 nan
12753 nan
14855 nan
15678 nan
24954 nan
30251 nan
31108 nan
51455 nan
59055 nan

Now all I have to do is remove the values at these indexes.


I had the error after trying to select a subset of rows:

df = df.reindex(index=my_index)

Turns out that my_index contained values that were not contained in df.index, so the reindex function inserted some new rows and filled them with nan.


I had the same error, and in my case X and y were dataframes so I had to convert them to matrices first:

X = X.values.astype(np.float)
y = y.values.astype(np.float)

Edit: The originally suggested X.as_matrix() is Deprecated


Remove all infinite values:

(and replace with min or max for that column)

import numpy as np

# generate example matrix
matrix = np.random.rand(5,5)
matrix[0,:] = np.inf
matrix[2,:] = -np.inf
>>> matrix
array([[       inf,        inf,        inf,        inf,        inf],
       [0.87362809, 0.28321499, 0.7427659 , 0.37570528, 0.35783064],
       [      -inf,       -inf,       -inf,       -inf,       -inf],
       [0.72877665, 0.06580068, 0.95222639, 0.00833664, 0.68779902],
       [0.90272002, 0.37357483, 0.92952479, 0.072105  , 0.20837798]])

# find min and max values for each column, ignoring nan, -inf, and inf
mins = [np.nanmin(matrix[:, i][matrix[:, i] != -np.inf]) for i in range(matrix.shape[1])]
maxs = [np.nanmax(matrix[:, i][matrix[:, i] != np.inf]) for i in range(matrix.shape[1])]

# go through matrix one column at a time and replace  + and -infinity 
# with the max or min for that column
for i in range(matrix.shape[1]):
    matrix[:, i][matrix[:, i] == -np.inf] = mins[i]
    matrix[:, i][matrix[:, i] == np.inf] = maxs[i]

>>> matrix
array([[0.90272002, 0.37357483, 0.95222639, 0.37570528, 0.68779902],
       [0.87362809, 0.28321499, 0.7427659 , 0.37570528, 0.35783064],
       [0.72877665, 0.06580068, 0.7427659 , 0.00833664, 0.20837798],
       [0.72877665, 0.06580068, 0.95222639, 0.00833664, 0.68779902],
       [0.90272002, 0.37357483, 0.92952479, 0.072105  , 0.20837798]])
  • This worked perfectly for me. Thanks!
    – Danny
    Dec 9 '20 at 22:24

None of the answers here worked for me. This was what worked.

Test_y = np.nan_to_num(Test_y)

It replaces the infinity values with high finite values and the nan values with numbers


i got the same error. it worked with df.fillna(-99999, inplace=True) before doing any replacement, substitution etc

  • 4
    This is a dirty fix. There is a reason why your array contains nan values; you should find it. Jun 25 '18 at 15:31
  • the data could contain nan and this gives a way to replace it with data with values that he/she finds acceptable Sep 9 '18 at 21:37

In my case the problem was that many scikit functions return numpy arrays, which are devoid of pandas index. So there was an index mismatch when I used those numpy arrays to build new DataFrames and then I tried to mix them with the original data.


I would like to propose a solution for numpy that worked well for me. The line

from numpy import inf
inputArray[inputArray == inf] = np.finfo(np.float64).max

substitues all infite values of a numpy array with the maximum float64 number.

dataset = dataset.dropna(axis=0, how='any', thresh=None, subset=None, inplace=False)

This worked for me


If you're running an estimator, it could be that your learning rate is too high. I passed in the wrong array too a grid search by accident and ended up training with a learning rate of 500, which I could see causing issues with the training process.

Basically it's not necessarily only your inputs that have to all be valid, but the intermediate data as well.




If the sum of your data is infinity (greater that the max float value which is 3.402823e+38) you will get that error.

see the _assert_all_finite function in validation.py from the scikit source code:

if is_float and np.isfinite(X.sum()):
elif is_float:
    msg_err = "Input contains {} or a value too large for {!r}."
    if (allow_nan and np.isinf(X).any() or
            not allow_nan and not np.isfinite(X).all()):
        type_err = 'infinity' if allow_nan else 'NaN, infinity'
        # print(X.sum())
        raise ValueError(msg_err.format(type_err, X.dtype))

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