code :

import numpy
from matplotlib.mlab import PCA
file_name = "store1_pca_matrix.txt"
ori_data = numpy.loadtxt(file_name,dtype='float', comments='#', delimiter=None,                 converters=None, skiprows=0, usecols=None, unpack=False, ndmin=0)
result = PCA(ori_data)

this is my code. though my input matrix is devoid of the nan and inf, i do get the error stated below.

raise LinAlgError("SVD did not converge") LinAlgError: SVD did not converge

what's the problem?

  • this gives me an error AttributeError: 'numpy.ndarray' object has no attribute 'dropna', how did you made it work? Nov 15, 2021 at 18:28

10 Answers 10


This can happen when there are inf or nan values in the data.

Use this to remove nan values:

  • 10
    I ve checked my data thorouhly.. there are no inf and nans in the data.. what other possibilities does this error gets raised ? Mar 20, 2014 at 4:46
  • 1
    @user3317704 either you have missing values, or invalid ones, might have different types in the same column, etc. Is there a way that we can see your file to validate it? Have you tried this answer, and using the "dropna" function and still getting the error?
    – c-chavez
    Aug 23, 2017 at 21:38
  • 1
    @user3317704 I had the same problem, but during debugging, I noticed that I concatenated two data frames incorrectly, so new data frame contains only NaN values
    – 32cupo
    Apr 6, 2018 at 13:17
  • I don't get it, where do I run ori_data.dropna(inplace=True) before the input to SVD or when? Nov 15, 2021 at 18:19
  • this gives me an error AttributeError: 'numpy.ndarray' object has no attribute 'dropna' Nov 15, 2021 at 18:28

I know this post is old, but in case someone else encounters the same problem. @jseabold was right when he said that the problem is nan or inf and the op was probably right when he said that the data did not have nan's or inf. However, if one of the columns in ori_data has always the same value, the data will get Nans, since the implementation of PCA in mlab normalizes the input data by doing

ori_data = (ori_data - mean(ori_data)) / std(ori_data).

The solution is to do:

result = PCA(ori_data, standardize=False)

In this way, only the mean will be subtracted without dividing by the standard deviation.


If there are no inf or NaN values, possibly that is a memory issue. Please try in a machine with higher RAM.

  • This was my problem, I had no nan values but opening task manager showed that I maxed out on RAM. Sep 9, 2020 at 18:51
  • why wouldn't the error message mention the memory or OMM? Seems mysterious that it would warn about svd instead... Nov 15, 2021 at 18:18

I do not have an answer to this question but I have the reproduction scenario with no nans and infs. Unfortunately the datataset is pretty large (96MB gzipped).

import numpy as np
from StringIO import StringIO
from scipy import linalg
import urllib2
import gzip

url = 'http://physics.muni.cz/~vazny/gauss/X.gz'
X = np.loadtxt(gzip.GzipFile(fileobj=StringIO(urllib2.urlopen(url).read())), delimiter=',')
linalg.svd(X, full_matrices=False)

which rise:

LinAlgError: SVD did not converge


>>> np.__version__
>>> import scipy
>>> scipy.__version__

but did not raise an exception on:

>>> np.__version__
>>> import scipy
>>> scipy.__version__
  • 1
    Can you file a bug report?
    – jseabold
    Oct 8, 2014 at 4:40
  • so what was the source of the bug? Nov 15, 2021 at 18:19

Following on @c-chavez answer, what worked for me was first replacing inf and -inf to nan, then removing nan. For example:

data = data.replace(np.inf, np.nan).replace(-np.inf, np.nan).dropna()

Even if your data is correct, it may happen because it runs out of memory. In my case, moving from a 32-bit machine to a 64-bit machine with bigger memory solved the problem.


This may be due to the singular nature of your input datamatrix (which you are feeding to PCA)


This happened to me when I accidentally resized an image dataset to (0, 64, 3). Try checking the shape of your dataset to see if one of the dimensions is 0.


I had this error multiple times:

  • If the length of data is 1. Then it can't fit anything
  • If a value is infinity. You divided by 0 in your processing ?
  • If a value is None. This is very common.

I am using numpy 1.11.0. If the matrix has more than 1 eigvalues equal to 0, then 'SVD did not converge' is raised.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.