This paper addresses risk averse constrained optimization problems where the objective and constraint functions can only be computed by a blackbox subject to...
Improving neural network optimizer convergence speed is a long-standing priority.
Recently, there has been a focus on quasi-Newton optimization methods, whi...
Historically, the training of deep artificial neural networks has relied on parallel computing to achieve practical effectiveness.
However, with the increas...