The adversarial input generation problem has become central in establishing the robustness and trustworthiness of deep neural nets, especially when they are used in safety-critical application domains such as autonomous vehicles and precision medicine. This is also practically challenging for multiple reasons-scalability is a common issue owing to large-sized networks, and the generated adversarial inputs often lack important qualities such as naturalness and output-impartiality. We relate this problem to the task of patching neural nets, i.e. applying small changes in some of the network$'$s weights so that the modified net satisfies a given property. Intuitively, a patch can be used to produce an adversarial input because the effect of changing the weights can also be brought about by changing the inputs instead. This work presents a novel technique to patch neural networks and an innovative approach of using it to produce perturbations of inputs which are adversarial for the original net. We note that the proposed solution is significantly more effective than the prior state-of-the-art techniques.