In this work, we explore adversarial attacks on the Variational Autoencoders
(VAE). We show how to modify data point to obtain a prescribed latent code
(supervised attack) or just get a drastically different code (unsupervised
attack). We examine the influence of model modifications ($\beta$-VAE, NVAE) on
the robustness of VAEs and suggest metrics to quantify it.