The purpose of the paper is to develop and study new techniques for global optimization based on dynamical systems approach. This approach uses the notion of relationship between variables which describes influences of the changes of the variables to each other. A numerical algorithm for global optimization is introduced.
Several clustering methods based on optimisation have been developed recently. One of them is based on minimisation of the cluster function. This function is nonsmooth, nonconvex and extremely multi extremal. Minimisation of such functions is a challenging task. This process can be also very time consuming, especially if the dimension of the corresponding optimisation problem and the size of the dataset are large. In this paper we propose an approach which allows one to run programs in parallel using several CPUs simultaneously. We discuss several possible ways for design parallel implementations for the program and present results of numerical experiments.