I am sampling from a multivariate normal using numpy as follows.

mu = [0, 0]
cov = np.array([[1, 0.5], [0.5, 1]]).astype(np.float32)
np.random.multivariate_normal(mu, cov)

It gives me the following warning.

RuntimeWarning: covariance is not positive-semidefinite.

The matrix is clearly PSD. However, when I use a np.float64 array, it works fine. I need the covariance matrix to be np.float32. What am I doing wrong?

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This has been fixed in March 2019. If you still see the warning consider updating your numpy.

The warning is raised even for very small off-diagonal elements > 0. The default tolerance value does not seem to work well for 32 bit floats.

As a workaround pass a higher tolerance to the function:

np.random.multivariate_normal(mu, cov, tol=1e-6)


np.random.multivariate_normal checks if the covariance is PSD by first decomposing it with (u, s, v) = svd(cov), and then checking if the reconstruction np.dot(v.T * s, v) is close enough to the original cov.

With float32 the result of the reconstruction is further off than the default tolerance of 1e-8 allows, and the function raises a warning.

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  • Thanks! In that case, can I ignore the warning as "just a warning" and not worry about the "undefined behavior" the documentation warns about? – Abdul Fatir Apr 3 '18 at 8:07
  • 1
    @AbdulFatir Yes, I would think so. – kazemakase Apr 3 '18 at 8:09
  • I have posted this as an issue at numpy. Let's see what the experts have to say about it... this might actually be a tiny bug :) – kazemakase Apr 3 '18 at 8:18

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