A strength if you're strictly looking to minimize squared L2 loss from each point to its closest mean -- but for a lot of other applications, it's a weakness! As the other poster mentioned, with KMedoids you can use arbitrary loss functions and cluster exotic objects (not restricted to metrics on a vector space)
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